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from ..utils import ( OptionalDependencyNotAvailable, is_flax_available, is_scipy_available, is_torch_available, is_torchsde_available, ) try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: from ..utils.dummy_pt_objects import * # noqa F403 else: from .scheduling_consistency_models import CMStochasticIterativeScheduler from .scheduling_ddim import DDIMScheduler from .scheduling_ddim_inverse import DDIMInverseScheduler from .scheduling_ddim_parallel import DDIMParallelScheduler from .scheduling_ddpm import DDPMScheduler from .scheduling_ddpm_parallel import DDPMParallelScheduler from .scheduling_deis_multistep import DEISMultistepScheduler from .scheduling_dpmsolver_multistep import DPMSolverMultistepScheduler from .scheduling_dpmsolver_multistep_inverse import DPMSolverMultistepInverseScheduler from .scheduling_dpmsolver_singlestep import DPMSolverSinglestepScheduler from .scheduling_euler_ancestral_discrete import EulerAncestralDiscreteScheduler from .scheduling_euler_discrete import EulerDiscreteScheduler from .scheduling_heun_discrete import HeunDiscreteScheduler from .scheduling_ipndm import IPNDMScheduler from .scheduling_k_dpm_2_ancestral_discrete import KDPMaAncestralDiscreteScheduler from .scheduling_k_dpm_2_discrete import KDPMaDiscreteScheduler from .scheduling_karras_ve import KarrasVeScheduler from .scheduling_pndm import PNDMScheduler from .scheduling_repaint import RePaintScheduler from .scheduling_sde_ve import ScoreSdeVeScheduler from .scheduling_sde_vp import ScoreSdeVpScheduler from .scheduling_unclip import UnCLIPScheduler from .scheduling_unipc_multistep import UniPCMultistepScheduler from .scheduling_utils import KarrasDiffusionSchedulers, SchedulerMixin from .scheduling_vq_diffusion import VQDiffusionScheduler try: if not is_flax_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: from ..utils.dummy_flax_objects import * # noqa F403 else: from .scheduling_ddim_flax import FlaxDDIMScheduler from .scheduling_ddpm_flax import FlaxDDPMScheduler from .scheduling_dpmsolver_multistep_flax import FlaxDPMSolverMultistepScheduler from .scheduling_karras_ve_flax import FlaxKarrasVeScheduler from .scheduling_lms_discrete_flax import FlaxLMSDiscreteScheduler from .scheduling_pndm_flax import FlaxPNDMScheduler from .scheduling_sde_ve_flax import FlaxScoreSdeVeScheduler from .scheduling_utils_flax import ( FlaxKarrasDiffusionSchedulers, FlaxSchedulerMixin, FlaxSchedulerOutput, broadcast_to_shape_from_left, ) try: if not (is_torch_available() and is_scipy_available()): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: from ..utils.dummy_torch_and_scipy_objects import * # noqa F403 else: from .scheduling_lms_discrete import LMSDiscreteScheduler try: if not (is_torch_available() and is_torchsde_available()): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: from ..utils.dummy_torch_and_torchsde_objects import * # noqa F403 else: from .scheduling_dpmsolver_sde import DPMSolverSDEScheduler
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def __lowercase ( snake_case ): """simple docstring""" return "".join([hex(snake_case )[2:].zfill(2 ).upper() for byte in list(snake_case )] ) def __lowercase ( snake_case ): """simple docstring""" if (len(snake_case ) % 2) != 0: raise ValueError( '''Base16 encoded data is invalid: Data does not have an even number of hex digits.''' ) # Check the character set - the standard base16 alphabet # is uppercase according to RFC3548 section 6 if not set(snake_case ) <= set('''0123456789ABCDEF''' ): raise ValueError( '''Base16 encoded data is invalid: Data is not uppercase hex or it contains invalid characters.''' ) # For every two hexadecimal digits (= a byte), turn it into an integer. # Then, string the result together into bytes, and return it. return bytes(int(data[i] + data[i + 1], 1_6 ) for i in range(0, len(snake_case ), 2 ) ) if __name__ == "__main__": import doctest doctest.testmod()
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"""simple docstring""" def a__ ( lowerCAmelCase__ ): if isinstance(lowerCAmelCase__ , lowerCAmelCase__ ): raise TypeError("'float' object cannot be interpreted as an integer" ) if isinstance(lowerCAmelCase__ , lowerCAmelCase__ ): raise TypeError("'str' object cannot be interpreted as an integer" ) if num == 0: return "0b0" UpperCAmelCase_ = False if num < 0: UpperCAmelCase_ = True UpperCAmelCase_ = -num UpperCAmelCase_ = [] while num > 0: binary.insert(0 , num % 2 ) num >>= 1 if negative: return "-0b" + "".join(str(lowerCAmelCase__ ) for e in binary ) return "0b" + "".join(str(lowerCAmelCase__ ) for e in binary ) if __name__ == "__main__": import doctest doctest.testmod()
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import pytest import requests from datasets.utils.file_utils import http_head from .utils import OfflineSimulationMode, RequestWouldHangIndefinitelyError, offline @pytest.mark.integration def __lowercase ( ): """simple docstring""" with offline(OfflineSimulationMode.CONNECTION_TIMES_OUT ): with pytest.raises(snake_case ): requests.request('''GET''', '''https://huggingface.co''' ) with pytest.raises(requests.exceptions.ConnectTimeout ): requests.request('''GET''', '''https://huggingface.co''', timeout=1.0 ) @pytest.mark.integration def __lowercase ( ): """simple docstring""" with offline(OfflineSimulationMode.CONNECTION_FAILS ): with pytest.raises(requests.exceptions.ConnectionError ): requests.request('''GET''', '''https://huggingface.co''' ) def __lowercase ( ): """simple docstring""" with offline(OfflineSimulationMode.HF_DATASETS_OFFLINE_SET_TO_1 ): with pytest.raises(snake_case ): http_head('''https://huggingface.co''' )
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"""simple docstring""" from typing import TYPE_CHECKING # rely on isort to merge the imports from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_torch_available lowerCAmelCase__ = {'''configuration_focalnet''': ['''FOCALNET_PRETRAINED_CONFIG_ARCHIVE_MAP''', '''FocalNetConfig''']} try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: lowerCAmelCase__ = [ '''FOCALNET_PRETRAINED_MODEL_ARCHIVE_LIST''', '''FocalNetForImageClassification''', '''FocalNetForMaskedImageModeling''', '''FocalNetBackbone''', '''FocalNetModel''', '''FocalNetPreTrainedModel''', ] if TYPE_CHECKING: from .configuration_focalnet import FOCALNET_PRETRAINED_CONFIG_ARCHIVE_MAP, FocalNetConfig try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_focalnet import ( FOCALNET_PRETRAINED_MODEL_ARCHIVE_LIST, FocalNetBackbone, FocalNetForImageClassification, FocalNetForMaskedImageModeling, FocalNetModel, FocalNetPreTrainedModel, ) else: import sys lowerCAmelCase__ = _LazyModule(__name__, globals()['''__file__'''], _import_structure, module_spec=__spec__)
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import math from collections.abc import Iterator from itertools import takewhile def __lowercase ( snake_case ): """simple docstring""" if 1 < number < 4: # 2 and 3 are primes return True elif number < 2 or number % 2 == 0 or number % 3 == 0: # Negatives, 0, 1, all even numbers, all multiples of 3 are not primes return False # All primes number are in format of 6k +/- 1 for i in range(5, int(math.sqrt(snake_case ) + 1 ), 6 ): if number % i == 0 or number % (i + 2) == 0: return False return True def __lowercase ( ): """simple docstring""" __magic_name__ :str = 2 while True: if is_prime(snake_case ): yield num num += 1 def __lowercase ( snake_case = 2_0_0_0_0_0_0 ): """simple docstring""" return sum(takewhile(lambda snake_case : x < n, prime_generator() ) ) if __name__ == "__main__": print(f"{solution() = }")
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from typing import Dict, Optional, Union import numpy as np from ...image_processing_utils import BaseImageProcessor, BatchFeature, get_size_dict from ...image_transforms import flip_channel_order, resize, to_channel_dimension_format, to_pil_image from ...image_utils import ( ChannelDimension, ImageInput, PILImageResampling, make_list_of_images, to_numpy_array, valid_images, ) from ...utils import TensorType, is_pytesseract_available, is_vision_available, logging, requires_backends if is_vision_available(): import PIL # soft dependency if is_pytesseract_available(): import pytesseract UpperCAmelCase = logging.get_logger(__name__) def UpperCAmelCase_ ( __SCREAMING_SNAKE_CASE , __SCREAMING_SNAKE_CASE , __SCREAMING_SNAKE_CASE ): return [ int(1000 * (box[0] / width) ), int(1000 * (box[1] / height) ), int(1000 * (box[2] / width) ), int(1000 * (box[3] / height) ), ] def UpperCAmelCase_ ( __SCREAMING_SNAKE_CASE , __SCREAMING_SNAKE_CASE , __SCREAMING_SNAKE_CASE = None ): lowercase = tesseract_config if tesseract_config is not None else '' # apply OCR lowercase = to_pil_image(__SCREAMING_SNAKE_CASE ) lowercase , lowercase = pil_image.size lowercase = pytesseract.image_to_data(__SCREAMING_SNAKE_CASE , lang=__SCREAMING_SNAKE_CASE , output_type='dict' , config=__SCREAMING_SNAKE_CASE ) lowercase , lowercase , lowercase , lowercase , lowercase = data['text'], data['left'], data['top'], data['width'], data['height'] # filter empty words and corresponding coordinates lowercase = [idx for idx, word in enumerate(__SCREAMING_SNAKE_CASE ) if not word.strip()] lowercase = [word for idx, word in enumerate(__SCREAMING_SNAKE_CASE ) if idx not in irrelevant_indices] lowercase = [coord for idx, coord in enumerate(__SCREAMING_SNAKE_CASE ) if idx not in irrelevant_indices] lowercase = [coord for idx, coord in enumerate(__SCREAMING_SNAKE_CASE ) if idx not in irrelevant_indices] lowercase = [coord for idx, coord in enumerate(__SCREAMING_SNAKE_CASE ) if idx not in irrelevant_indices] lowercase = [coord for idx, coord in enumerate(__SCREAMING_SNAKE_CASE ) if idx not in irrelevant_indices] # turn coordinates into (left, top, left+width, top+height) format lowercase = [] for x, y, w, h in zip(__SCREAMING_SNAKE_CASE , __SCREAMING_SNAKE_CASE , __SCREAMING_SNAKE_CASE , __SCREAMING_SNAKE_CASE ): lowercase = [x, y, x + w, y + h] actual_boxes.append(__SCREAMING_SNAKE_CASE ) # finally, normalize the bounding boxes lowercase = [] for box in actual_boxes: normalized_boxes.append(normalize_box(__SCREAMING_SNAKE_CASE , __SCREAMING_SNAKE_CASE , __SCREAMING_SNAKE_CASE ) ) assert len(__SCREAMING_SNAKE_CASE ) == len(__SCREAMING_SNAKE_CASE ), "Not as many words as there are bounding boxes" return words, normalized_boxes class A_ ( __lowerCamelCase ): '''simple docstring''' _UpperCamelCase : List[str] = ["""pixel_values"""] def __init__( self , snake_case = True , snake_case = None , snake_case = PILImageResampling.BILINEAR , snake_case = True , snake_case = None , snake_case = "" , **snake_case , ): super().__init__(**snake_case ) lowercase = size if size is not None else {'height': 224, 'width': 224} lowercase = get_size_dict(snake_case ) lowercase = do_resize lowercase = size lowercase = resample lowercase = apply_ocr lowercase = ocr_lang lowercase = tesseract_config def SCREAMING_SNAKE_CASE__ ( self , snake_case , snake_case , snake_case = PILImageResampling.BILINEAR , snake_case = None , **snake_case , ): lowercase = get_size_dict(snake_case ) if "height" not in size or "width" not in size: raise ValueError(F'''The size dictionary must contain the keys \'height\' and \'width\'. Got {size.keys()}''' ) lowercase = (size['height'], size['width']) return resize(snake_case , size=snake_case , resample=snake_case , data_format=snake_case , **snake_case ) def SCREAMING_SNAKE_CASE__ ( self , snake_case , snake_case = None , snake_case = None , snake_case = None , snake_case = None , snake_case = None , snake_case = None , snake_case = None , snake_case = ChannelDimension.FIRST , **snake_case , ): lowercase = do_resize if do_resize is not None else self.do_resize lowercase = size if size is not None else self.size lowercase = get_size_dict(snake_case ) lowercase = resample if resample is not None else self.resample lowercase = apply_ocr if apply_ocr is not None else self.apply_ocr lowercase = ocr_lang if ocr_lang is not None else self.ocr_lang lowercase = tesseract_config if tesseract_config is not None else self.tesseract_config lowercase = make_list_of_images(snake_case ) if not valid_images(snake_case ): raise ValueError( 'Invalid image type. Must be of type PIL.Image.Image, numpy.ndarray, ' 'torch.Tensor, tf.Tensor or jax.ndarray.' ) if do_resize and size is None: raise ValueError('Size must be specified if do_resize is True.' ) # All transformations expect numpy arrays. lowercase = [to_numpy_array(snake_case ) for image in images] if apply_ocr: requires_backends(self , 'pytesseract' ) lowercase = [] lowercase = [] for image in images: lowercase , lowercase = apply_tesseract(snake_case , snake_case , snake_case ) words_batch.append(snake_case ) boxes_batch.append(snake_case ) if do_resize: lowercase = [self.resize(image=snake_case , size=snake_case , resample=snake_case ) for image in images] # flip color channels from RGB to BGR (as Detectron2 requires this) lowercase = [flip_channel_order(snake_case ) for image in images] lowercase = [to_channel_dimension_format(snake_case , snake_case ) for image in images] lowercase = BatchFeature(data={'pixel_values': images} , tensor_type=snake_case ) if apply_ocr: lowercase = words_batch lowercase = boxes_batch return data
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import unittest import numpy as np from transformers.testing_utils import require_flax, require_tf, require_torch from transformers.utils import ( expand_dims, flatten_dict, is_flax_available, is_tf_available, is_torch_available, reshape, squeeze, transpose, ) if is_flax_available(): import jax.numpy as jnp if is_tf_available(): import tensorflow as tf if is_torch_available(): import torch class lowerCamelCase_ ( unittest.TestCase ): def A ( self ): """simple docstring""" __magic_name__ :List[Any] = { '''task_specific_params''': { '''summarization''': {'''length_penalty''': 1.0, '''max_length''': 1_2_8, '''min_length''': 1_2, '''num_beams''': 4}, '''summarization_cnn''': {'''length_penalty''': 2.0, '''max_length''': 1_4_2, '''min_length''': 5_6, '''num_beams''': 4}, '''summarization_xsum''': {'''length_penalty''': 1.0, '''max_length''': 6_2, '''min_length''': 1_1, '''num_beams''': 6}, } } __magic_name__ :List[str] = { '''task_specific_params.summarization.length_penalty''': 1.0, '''task_specific_params.summarization.max_length''': 1_2_8, '''task_specific_params.summarization.min_length''': 1_2, '''task_specific_params.summarization.num_beams''': 4, '''task_specific_params.summarization_cnn.length_penalty''': 2.0, '''task_specific_params.summarization_cnn.max_length''': 1_4_2, '''task_specific_params.summarization_cnn.min_length''': 5_6, '''task_specific_params.summarization_cnn.num_beams''': 4, '''task_specific_params.summarization_xsum.length_penalty''': 1.0, '''task_specific_params.summarization_xsum.max_length''': 6_2, '''task_specific_params.summarization_xsum.min_length''': 1_1, '''task_specific_params.summarization_xsum.num_beams''': 6, } self.assertEqual(flatten_dict(__lowerCAmelCase ) , __lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = np.random.randn(3 , 4 ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , x.transpose() ) ) __magic_name__ :List[Any] = np.random.randn(3 , 4 , 5 ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , x.transpose((1, 2, 0) ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = np.random.randn(3 , 4 ) __magic_name__ :Tuple = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , transpose(__lowerCAmelCase ).numpy() ) ) __magic_name__ :int = np.random.randn(3 , 4 , 5 ) __magic_name__ :Union[str, Any] = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , transpose(__lowerCAmelCase , axes=(1, 2, 0) ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :int = np.random.randn(3 , 4 ) __magic_name__ :Optional[Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , transpose(__lowerCAmelCase ).numpy() ) ) __magic_name__ :List[str] = np.random.randn(3 , 4 , 5 ) __magic_name__ :Optional[Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , transpose(__lowerCAmelCase , axes=(1, 2, 0) ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :int = np.random.randn(3 , 4 ) __magic_name__ :Dict = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , np.asarray(transpose(__lowerCAmelCase ) ) ) ) __magic_name__ :Dict = np.random.randn(3 , 4 , 5 ) __magic_name__ :Dict = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , np.asarray(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) ) ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = np.random.randn(3 , 4 ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , np.reshape(__lowerCAmelCase , (4, 3) ) ) ) __magic_name__ :Union[str, Any] = np.random.randn(3 , 4 , 5 ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , np.reshape(__lowerCAmelCase , (1_2, 5) ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :Dict = np.random.randn(3 , 4 ) __magic_name__ :Tuple = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , reshape(__lowerCAmelCase , (4, 3) ).numpy() ) ) __magic_name__ :Union[str, Any] = np.random.randn(3 , 4 , 5 ) __magic_name__ :List[str] = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , reshape(__lowerCAmelCase , (1_2, 5) ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :Dict = np.random.randn(3 , 4 ) __magic_name__ :Union[str, Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , reshape(__lowerCAmelCase , (4, 3) ).numpy() ) ) __magic_name__ :List[Any] = np.random.randn(3 , 4 , 5 ) __magic_name__ :Optional[int] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , reshape(__lowerCAmelCase , (1_2, 5) ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :List[str] = np.random.randn(3 , 4 ) __magic_name__ :Any = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , np.asarray(reshape(__lowerCAmelCase , (4, 3) ) ) ) ) __magic_name__ :List[Any] = np.random.randn(3 , 4 , 5 ) __magic_name__ :List[str] = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , np.asarray(reshape(__lowerCAmelCase , (1_2, 5) ) ) ) ) def A ( self ): """simple docstring""" __magic_name__ :List[Any] = np.random.randn(1 , 3 , 4 ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , np.squeeze(__lowerCAmelCase ) ) ) __magic_name__ :Optional[Any] = np.random.randn(1 , 4 , 1 , 5 ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , np.squeeze(__lowerCAmelCase , axis=2 ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :Dict = np.random.randn(1 , 3 , 4 ) __magic_name__ :List[Any] = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , squeeze(__lowerCAmelCase ).numpy() ) ) __magic_name__ :List[str] = np.random.randn(1 , 4 , 1 , 5 ) __magic_name__ :str = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , squeeze(__lowerCAmelCase , axis=2 ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :int = np.random.randn(1 , 3 , 4 ) __magic_name__ :Tuple = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , squeeze(__lowerCAmelCase ).numpy() ) ) __magic_name__ :Tuple = np.random.randn(1 , 4 , 1 , 5 ) __magic_name__ :Optional[int] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , squeeze(__lowerCAmelCase , axis=2 ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :Tuple = np.random.randn(1 , 3 , 4 ) __magic_name__ :Optional[Any] = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , np.asarray(squeeze(__lowerCAmelCase ) ) ) ) __magic_name__ :List[Any] = np.random.randn(1 , 4 , 1 , 5 ) __magic_name__ :Optional[Any] = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , np.asarray(squeeze(__lowerCAmelCase , axis=2 ) ) ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = np.random.randn(3 , 4 ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , np.expand_dims(__lowerCAmelCase , axis=1 ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :List[Any] = np.random.randn(3 , 4 ) __magic_name__ :Any = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , expand_dims(__lowerCAmelCase , axis=1 ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :Union[str, Any] = np.random.randn(3 , 4 ) __magic_name__ :Union[str, Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , expand_dims(__lowerCAmelCase , axis=1 ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :List[str] = np.random.randn(3 , 4 ) __magic_name__ :Tuple = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , np.asarray(expand_dims(__lowerCAmelCase , axis=1 ) ) ) )
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from collections import OrderedDict from typing import Any, Mapping, Optional from ... import PreTrainedTokenizer, TensorType, is_torch_available from ...configuration_utils import PretrainedConfig from ...onnx import OnnxConfigWithPast from ...utils import logging SCREAMING_SNAKE_CASE__ : List[Any] = logging.get_logger(__name__) SCREAMING_SNAKE_CASE__ : str = { "EleutherAI/gpt-neo-1.3B": "https://huggingface.co/EleutherAI/gpt-neo-1.3B/resolve/main/config.json", # See all GPTNeo models at https://huggingface.co/models?filter=gpt_neo } class snake_case ( UpperCamelCase_ ): lowercase_ = 'gpt_neo' lowercase_ = ['past_key_values'] lowercase_ = {'num_attention_heads': 'num_heads', 'num_hidden_layers': 'num_layers'} def __init__( self : List[Any] , a_ : Union[str, Any]=5_0257 , a_ : Any=2048 , a_ : Dict=2048 , a_ : Optional[Any]=24 , a_ : List[str]=[[["global", "local"], 12]] , a_ : List[Any]=16 , a_ : List[Any]=None , a_ : Tuple=256 , a_ : List[Any]="gelu_new" , a_ : Optional[Any]=0.0 , a_ : Optional[Any]=0.0 , a_ : Dict=0.0 , a_ : Any=0.1 , a_ : List[Any]=1e-5 , a_ : List[str]=0.02 , a_ : List[str]=True , a_ : Tuple=5_0256 , a_ : str=5_0256 , **a_ : str , )-> Optional[int]: """simple docstring""" SCREAMING_SNAKE_CASE__ : Optional[Any] = vocab_size SCREAMING_SNAKE_CASE__ : Union[str, Any] = max_position_embeddings SCREAMING_SNAKE_CASE__ : int = hidden_size SCREAMING_SNAKE_CASE__ : int = num_layers SCREAMING_SNAKE_CASE__ : Union[str, Any] = num_heads SCREAMING_SNAKE_CASE__ : Tuple = intermediate_size SCREAMING_SNAKE_CASE__ : Optional[int] = window_size SCREAMING_SNAKE_CASE__ : str = activation_function SCREAMING_SNAKE_CASE__ : List[str] = resid_dropout SCREAMING_SNAKE_CASE__ : str = embed_dropout SCREAMING_SNAKE_CASE__ : Optional[Any] = attention_dropout SCREAMING_SNAKE_CASE__ : Optional[Any] = classifier_dropout SCREAMING_SNAKE_CASE__ : Dict = layer_norm_epsilon SCREAMING_SNAKE_CASE__ : List[str] = initializer_range SCREAMING_SNAKE_CASE__ : List[str] = use_cache SCREAMING_SNAKE_CASE__ : Union[str, Any] = bos_token_id SCREAMING_SNAKE_CASE__ : Optional[Any] = eos_token_id SCREAMING_SNAKE_CASE__ : Union[str, Any] = attention_types SCREAMING_SNAKE_CASE__ : Union[str, Any] = self.expand_attention_types_params(a_ ) if len(self.attention_layers ) != self.num_layers: raise ValueError( 'Configuration for convolutional module is incorrect. ' 'It is required that `len(config.attention_layers)` == `config.num_layers` ' F'''but is `len(config.attention_layers) = {len(self.attention_layers )}`, ''' F'''`config.num_layers = {self.num_layers}`. ''' '`config.attention_layers` is prepared using `config.attention_types`. ' 'Please verify the value of `config.attention_types` argument.' ) super().__init__(bos_token_id=a_ , eos_token_id=a_ , **a_ ) @staticmethod def __lowercase( a_ : Tuple )-> Any: """simple docstring""" SCREAMING_SNAKE_CASE__ : Union[str, Any] = [] for item in attention_types: for _ in range(item[1] ): attentions.extend(item[0] ) return attentions def _a ( lowercase__ : List[str] , lowercase__ : str , lowercase__ : Optional[int] , lowercase__ : str ): '''simple docstring''' import torch SCREAMING_SNAKE_CASE__ : Any = input.size() SCREAMING_SNAKE_CASE__ : Dict = len(lowercase__ ) SCREAMING_SNAKE_CASE__ : List[str] = shape[dimension] SCREAMING_SNAKE_CASE__ : List[Any] = torch.arange(0 , lowercase__ , lowercase__ ) SCREAMING_SNAKE_CASE__ : List[str] = torch.div(sizedim - size , lowercase__ , rounding_mode='floor' ) + 1 SCREAMING_SNAKE_CASE__ : int = torch.arange(lowercase__ ) + low_indices[:min_length][:, None] SCREAMING_SNAKE_CASE__ : Any = [slice(lowercase__ )] * rank SCREAMING_SNAKE_CASE__ : List[str] = indices SCREAMING_SNAKE_CASE__ : Tuple = input[s] SCREAMING_SNAKE_CASE__ : List[str] = list(range(0 , rank + 1 ) ) perm.append(perm.pop(dimension + 1 ) ) return sliced.permute(lowercase__ ) def _a ( lowercase__ : str , lowercase__ : str ): '''simple docstring''' import torch SCREAMING_SNAKE_CASE__ : Any = torch.arange(1 , lowercase__ ) SCREAMING_SNAKE_CASE__ : Any = torch.remainder(lowercase__ , lowercase__ ) SCREAMING_SNAKE_CASE__ : Any = remainders == 0 SCREAMING_SNAKE_CASE__ : str = candidates[divisor_indices] SCREAMING_SNAKE_CASE__ : Any = torch.max(lowercase__ ) return largest_divisor, torch.div(lowercase__ , lowercase__ , rounding_mode='floor' ) class snake_case ( UpperCamelCase_ ): @property def __lowercase( self : Optional[int] )-> Mapping[str, Mapping[int, str]]: """simple docstring""" SCREAMING_SNAKE_CASE__ : List[Any] = OrderedDict({'input_ids': {0: 'batch', 1: 'sequence'}} ) if self.use_past: self.fill_with_past_key_values_(a_ , direction='inputs' ) SCREAMING_SNAKE_CASE__ : List[Any] = {0: 'batch', 1: 'past_sequence + sequence'} else: SCREAMING_SNAKE_CASE__ : str = {0: 'batch', 1: 'sequence'} return common_inputs @property def __lowercase( self : str )-> int: """simple docstring""" return self._config.num_heads def __lowercase( self : Optional[int] , a_ : PreTrainedTokenizer , a_ : int = -1 , a_ : int = -1 , a_ : bool = False , a_ : Optional[TensorType] = None , )-> Mapping[str, Any]: """simple docstring""" SCREAMING_SNAKE_CASE__ : Tuple = super(a_ , self ).generate_dummy_inputs( a_ , batch_size=a_ , seq_length=a_ , is_pair=a_ , framework=a_ ) # We need to order the input in the way they appears in the forward() SCREAMING_SNAKE_CASE__ : Optional[Any] = OrderedDict({'input_ids': common_inputs['input_ids']} ) # Need to add the past_keys if self.use_past: if not is_torch_available(): raise ValueError('Cannot generate dummy past_keys inputs without PyTorch installed.' ) else: import torch SCREAMING_SNAKE_CASE__ , SCREAMING_SNAKE_CASE__ : Tuple = common_inputs['input_ids'].shape # Not using the same length for past_key_values SCREAMING_SNAKE_CASE__ : Union[str, Any] = seqlen + 2 SCREAMING_SNAKE_CASE__ : str = ( batch, self.num_attention_heads, past_key_values_length, self._config.hidden_size // self.num_attention_heads, ) SCREAMING_SNAKE_CASE__ : Any = [ (torch.zeros(a_ ), torch.zeros(a_ )) for _ in range(self.num_layers ) ] SCREAMING_SNAKE_CASE__ : Optional[Any] = common_inputs['attention_mask'] if self.use_past: SCREAMING_SNAKE_CASE__ : Tuple = ordered_inputs['attention_mask'].dtype SCREAMING_SNAKE_CASE__ : List[str] = torch.cat( [ordered_inputs['attention_mask'], torch.ones(a_ , a_ , dtype=a_ )] , dim=1 ) return ordered_inputs @property def __lowercase( self : Dict )-> int: """simple docstring""" return 13
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from pathlib import PurePosixPath from typing import Optional import fsspec from fsspec import AbstractFileSystem from huggingface_hub.hf_api import DatasetInfo from ..utils.file_utils import get_authentication_headers_for_url from ..utils.hub import hf_hub_url class lowerCamelCase_ ( lowerCamelCase ): a__ = '''''' a__ = '''hf-legacy''' # "hf://"" is reserved for hffs def __init__( self , __lowerCAmelCase = None , __lowerCAmelCase = None , **__lowerCAmelCase , ): """simple docstring""" super().__init__(self , **__lowerCAmelCase ) __magic_name__ :List[Any] = repo_info __magic_name__ :Dict = token __magic_name__ :Optional[Any] = None def A ( self ): """simple docstring""" if self.dir_cache is None: __magic_name__ :Any = {} for hf_file in self.repo_info.siblings: # TODO(QL): add sizes __magic_name__ :Optional[int] = { '''name''': hf_file.rfilename, '''size''': None, '''type''': '''file''', } self.dir_cache.update( { str(__lowerCAmelCase ): {'''name''': str(__lowerCAmelCase ), '''size''': None, '''type''': '''directory'''} for d in list(PurePosixPath(hf_file.rfilename ).parents )[:-1] } ) def A ( self , __lowerCAmelCase , __lowerCAmelCase = "rb" , **__lowerCAmelCase , ): """simple docstring""" if not isinstance(self.repo_info , __lowerCAmelCase ): raise NotImplementedError(F'''Open is only implemented for dataset repositories, but got {self.repo_info}''' ) __magic_name__ :Union[str, Any] = hf_hub_url(self.repo_info.id , __lowerCAmelCase , revision=self.repo_info.sha ) return fsspec.open( __lowerCAmelCase , mode=__lowerCAmelCase , headers=get_authentication_headers_for_url(__lowerCAmelCase , use_auth_token=self.token ) , client_kwargs={'''trust_env''': True} , ).open() def A ( self , __lowerCAmelCase , **__lowerCAmelCase ): """simple docstring""" self._get_dirs() __magic_name__ :str = self._strip_protocol(__lowerCAmelCase ) if path in self.dir_cache: return self.dir_cache[path] else: raise FileNotFoundError(__lowerCAmelCase ) def A ( self , __lowerCAmelCase , __lowerCAmelCase=False , **__lowerCAmelCase ): """simple docstring""" self._get_dirs() __magic_name__ :Union[str, Any] = PurePosixPath(path.strip('''/''' ) ) __magic_name__ :Dict = {} for p, f in self.dir_cache.items(): __magic_name__ :int = PurePosixPath(p.strip('''/''' ) ) __magic_name__ :Tuple = p.parent if root == path: __magic_name__ :Optional[Any] = f __magic_name__ :List[Any] = list(paths.values() ) if detail: return out else: return sorted(f['''name'''] for f in out )
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import unittest from transformers.testing_utils import require_bsa from transformers.utils import is_bsa_available from ...test_feature_extraction_common import FeatureExtractionSavingTestMixin if is_bsa_available(): from transformers import MarkupLMFeatureExtractor class _a ( unittest.TestCase ): """simple docstring""" def __init__( self : Optional[int] , UpperCAmelCase : Union[str, Any] ): A_ = parent def __A ( self : List[str] ): return {} def __snake_case ( ): """simple docstring""" A_ = "<HTML>\n\n <HEAD>\n <TITLE>sample document</TITLE>\n </HEAD>\n\n <BODY BGCOLOR=\"FFFFFF\">\n <HR>\n <a href=\"http://google.com\">Goog</a>\n <H1>This is one header</H1>\n <H2>This is a another Header</H2>\n <P>Travel from\n <P>\n <B>SFO to JFK</B>\n <BR>\n <B><I>on May 2, 2015 at 2:00 pm. For details go to confirm.com </I></B>\n <HR>\n <div style=\"color:#0000FF\">\n <h3>Traveler <b> name </b> is\n <p> John Doe </p>\n </div>" A_ = "\n <!DOCTYPE html>\n <html>\n <body>\n\n <h1>My First Heading</h1>\n <p>My first paragraph.</p>\n\n </body>\n </html>\n " return [html_string_a, html_string_a] @require_bsa class _a ( snake_case_ , unittest.TestCase ): """simple docstring""" _lowerCamelCase : Dict = MarkupLMFeatureExtractor if is_bsa_available() else None def __A ( self : int ): A_ = MarkupLMFeatureExtractionTester(self ) @property def __A ( self : List[str] ): return self.feature_extract_tester.prepare_feat_extract_dict() def __A ( self : Tuple ): # Initialize feature_extractor A_ = self.feature_extraction_class() # Test not batched input A_ = get_html_strings()[0] A_ = feature_extractor(UpperCAmelCase ) # fmt: off A_ = [["sample document", "Goog", "This is one header", "This is a another Header", "Travel from", "SFO to JFK", "on May 2, 2015 at 2:00 pm. For details go to confirm.com", "Traveler", "name", "is", "John Doe"]] A_ = [["/html/head/title", "/html/body/a", "/html/body/h1", "/html/body/h2", "/html/body/p", "/html/body/p/p/b[1]", "/html/body/p/p/b[2]/i", "/html/body/p/p/div/h3", "/html/body/p/p/div/h3/b", "/html/body/p/p/div/h3", "/html/body/p/p/div/h3/p"]] # fmt: on self.assertEqual(encoding.nodes , UpperCAmelCase ) self.assertEqual(encoding.xpaths , UpperCAmelCase ) # Test batched A_ = get_html_strings() A_ = feature_extractor(UpperCAmelCase ) # fmt: off A_ = expected_nodes + [["My First Heading", "My first paragraph."]] A_ = expected_xpaths + [["/html/body/h1", "/html/body/p"]] self.assertEqual(len(encoding.nodes ) , 2 ) self.assertEqual(len(encoding.xpaths ) , 2 ) self.assertEqual(encoding.nodes , UpperCAmelCase ) self.assertEqual(encoding.xpaths , UpperCAmelCase )
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import pyarrow.parquet as pq import pytest from datasets import Audio, Dataset, DatasetDict, Features, NamedSplit, Sequence, Value, config from datasets.features.image import Image from datasets.io.parquet import ParquetDatasetReader, ParquetDatasetWriter, get_writer_batch_size from ..utils import assert_arrow_memory_doesnt_increase, assert_arrow_memory_increases def __lowercase ( snake_case, snake_case ): """simple docstring""" assert isinstance(snake_case, snake_case ) assert dataset.num_rows == 4 assert dataset.num_columns == 3 assert dataset.column_names == ["col_1", "col_2", "col_3"] for feature, expected_dtype in expected_features.items(): assert dataset.features[feature].dtype == expected_dtype @pytest.mark.parametrize('''keep_in_memory''', [False, True] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :Tuple = tmp_path / '''cache''' __magic_name__ :int = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} with assert_arrow_memory_increases() if keep_in_memory else assert_arrow_memory_doesnt_increase(): __magic_name__ :Optional[Any] = ParquetDatasetReader(snake_case, cache_dir=snake_case, keep_in_memory=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) @pytest.mark.parametrize( '''features''', [ None, {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''}, {'''col_1''': '''string''', '''col_2''': '''string''', '''col_3''': '''string'''}, {'''col_1''': '''int32''', '''col_2''': '''int32''', '''col_3''': '''int32'''}, {'''col_1''': '''float32''', '''col_2''': '''float32''', '''col_3''': '''float32'''}, ], ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :List[str] = tmp_path / '''cache''' __magic_name__ :int = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :Tuple = features.copy() if features else default_expected_features __magic_name__ :Union[str, Any] = ( Features({feature: Value(snake_case ) for feature, dtype in features.items()} ) if features is not None else None ) __magic_name__ :int = ParquetDatasetReader(snake_case, features=snake_case, cache_dir=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) @pytest.mark.parametrize('''split''', [None, NamedSplit('''train''' ), '''train''', '''test'''] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :str = tmp_path / '''cache''' __magic_name__ :List[Any] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :int = ParquetDatasetReader(snake_case, cache_dir=snake_case, split=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) assert dataset.split == split if split else "train" @pytest.mark.parametrize('''path_type''', [str, list] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" if issubclass(snake_case, snake_case ): __magic_name__ :Union[str, Any] = parquet_path elif issubclass(snake_case, snake_case ): __magic_name__ :Union[str, Any] = [parquet_path] __magic_name__ :Optional[int] = tmp_path / '''cache''' __magic_name__ :Optional[int] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :str = ParquetDatasetReader(snake_case, cache_dir=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) def __lowercase ( snake_case, snake_case, snake_case=("train",) ): """simple docstring""" assert isinstance(snake_case, snake_case ) for split in splits: __magic_name__ :Optional[Any] = dataset_dict[split] assert dataset.num_rows == 4 assert dataset.num_columns == 3 assert dataset.column_names == ["col_1", "col_2", "col_3"] for feature, expected_dtype in expected_features.items(): assert dataset.features[feature].dtype == expected_dtype @pytest.mark.parametrize('''keep_in_memory''', [False, True] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :Any = tmp_path / '''cache''' __magic_name__ :Optional[int] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} with assert_arrow_memory_increases() if keep_in_memory else assert_arrow_memory_doesnt_increase(): __magic_name__ :Tuple = ParquetDatasetReader( {'''train''': parquet_path}, cache_dir=snake_case, keep_in_memory=snake_case ).read() _check_parquet_datasetdict(snake_case, snake_case ) @pytest.mark.parametrize( '''features''', [ None, {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''}, {'''col_1''': '''string''', '''col_2''': '''string''', '''col_3''': '''string'''}, {'''col_1''': '''int32''', '''col_2''': '''int32''', '''col_3''': '''int32'''}, {'''col_1''': '''float32''', '''col_2''': '''float32''', '''col_3''': '''float32'''}, ], ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :Optional[Any] = tmp_path / '''cache''' __magic_name__ :Dict = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :int = features.copy() if features else default_expected_features __magic_name__ :List[Any] = ( Features({feature: Value(snake_case ) for feature, dtype in features.items()} ) if features is not None else None ) __magic_name__ :Optional[int] = ParquetDatasetReader({'''train''': parquet_path}, features=snake_case, cache_dir=snake_case ).read() _check_parquet_datasetdict(snake_case, snake_case ) @pytest.mark.parametrize('''split''', [None, NamedSplit('''train''' ), '''train''', '''test'''] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" if split: __magic_name__ :Dict = {split: parquet_path} else: __magic_name__ :Optional[int] = '''train''' __magic_name__ :Dict = {'''train''': parquet_path, '''test''': parquet_path} __magic_name__ :List[Any] = tmp_path / '''cache''' __magic_name__ :Optional[Any] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :Optional[Any] = ParquetDatasetReader(snake_case, cache_dir=snake_case ).read() _check_parquet_datasetdict(snake_case, snake_case, splits=list(path.keys() ) ) assert all(dataset[split].split == split for split in path.keys() ) def __lowercase ( snake_case, snake_case ): """simple docstring""" __magic_name__ :str = ParquetDatasetWriter(snake_case, tmp_path / '''foo.parquet''' ) assert writer.write() > 0 __magic_name__ :List[Any] = pq.ParquetFile(tmp_path / '''foo.parquet''' ) __magic_name__ :List[Any] = pf.read() assert dataset.data.table == output_table def __lowercase ( snake_case, snake_case ): """simple docstring""" __magic_name__ :List[str] = str(shared_datadir / '''test_image_rgb.jpg''' ) __magic_name__ :Tuple = {'''image''': [image_path]} __magic_name__ :List[Any] = Features({'''image''': Image()} ) __magic_name__ :Tuple = Dataset.from_dict(snake_case, features=snake_case ) __magic_name__ :Union[str, Any] = ParquetDatasetWriter(snake_case, tmp_path / '''foo.parquet''' ) assert writer.write() > 0 __magic_name__ :List[str] = Dataset.from_parquet(str(tmp_path / '''foo.parquet''' ) ) assert dataset.features == reloaded_dataset.features __magic_name__ :List[str] = ParquetDatasetReader(str(tmp_path / '''foo.parquet''' ), streaming=snake_case ).read() assert dataset.features == reloaded_iterable_dataset.features @pytest.mark.parametrize( '''feature, expected''', [ (Features({'''foo''': Value('''int32''' )} ), None), (Features({'''image''': Image(), '''foo''': Value('''int32''' )} ), config.PARQUET_ROW_GROUP_SIZE_FOR_IMAGE_DATASETS), (Features({'''nested''': Sequence(Audio() )} ), config.PARQUET_ROW_GROUP_SIZE_FOR_AUDIO_DATASETS), ], ) def __lowercase ( snake_case, snake_case ): """simple docstring""" assert get_writer_batch_size(snake_case ) == expected
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def SCREAMING_SNAKE_CASE ( lowercase_ = 100 ) -> int: """simple docstring""" A__ = (n * (n + 1) // 2) ** 2 A__ = n * (n + 1) * (2 * n + 1) // 6 return sum_cubes - sum_squares if __name__ == "__main__": print(F'''{solution() = }''')
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def __lowercase ( snake_case ): """simple docstring""" if not isinstance(snake_case, snake_case ): raise ValueError('''multiplicative_persistence() only accepts integral values''' ) if num < 0: raise ValueError('''multiplicative_persistence() does not accept negative values''' ) __magic_name__ :str = 0 __magic_name__ :Dict = str(snake_case ) while len(snake_case ) != 1: __magic_name__ :Optional[Any] = [int(snake_case ) for i in num_string] __magic_name__ :Dict = 1 for i in range(0, len(snake_case ) ): total *= numbers[i] __magic_name__ :int = str(snake_case ) steps += 1 return steps def __lowercase ( snake_case ): """simple docstring""" if not isinstance(snake_case, snake_case ): raise ValueError('''additive_persistence() only accepts integral values''' ) if num < 0: raise ValueError('''additive_persistence() does not accept negative values''' ) __magic_name__ :str = 0 __magic_name__ :Union[str, Any] = str(snake_case ) while len(snake_case ) != 1: __magic_name__ :str = [int(snake_case ) for i in num_string] __magic_name__ :Optional[int] = 0 for i in range(0, len(snake_case ) ): total += numbers[i] __magic_name__ :int = str(snake_case ) steps += 1 return steps if __name__ == "__main__": import doctest doctest.testmod()
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"""simple docstring""" from math import factorial class lowercase__ : def __init__( self , SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE) -> Optional[int]: _lowerCamelCase : List[Any] = real if isinstance(SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE): _lowerCamelCase : Tuple = [1] * rank else: _lowerCamelCase : Any = rank def __repr__( self) -> Optional[Any]: return ( F'{self.real}+' F'{"+".join(str(SCREAMING_SNAKE_CASE)+"E"+str(n+1)for n,dual in enumerate(self.duals))}' ) def UpperCamelCase_ ( self) -> Any: _lowerCamelCase : Optional[int] = self.duals.copy() while cur[-1] == 0: cur.pop(-1) return Dual(self.real , SCREAMING_SNAKE_CASE) def __add__( self , SCREAMING_SNAKE_CASE) -> List[str]: if not isinstance(SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE): return Dual(self.real + other , self.duals) _lowerCamelCase : Optional[int] = self.duals.copy() _lowerCamelCase : List[Any] = other.duals.copy() if len(SCREAMING_SNAKE_CASE) > len(SCREAMING_SNAKE_CASE): o_dual.extend([1] * (len(SCREAMING_SNAKE_CASE) - len(SCREAMING_SNAKE_CASE))) elif len(SCREAMING_SNAKE_CASE) < len(SCREAMING_SNAKE_CASE): s_dual.extend([1] * (len(SCREAMING_SNAKE_CASE) - len(SCREAMING_SNAKE_CASE))) _lowerCamelCase : Any = [] for i in range(len(SCREAMING_SNAKE_CASE)): new_duals.append(s_dual[i] + o_dual[i]) return Dual(self.real + other.real , SCREAMING_SNAKE_CASE) __UpperCAmelCase = __add__ def __sub__( self , SCREAMING_SNAKE_CASE) -> Optional[int]: return self + other * -1 def __mul__( self , SCREAMING_SNAKE_CASE) -> Optional[Any]: if not isinstance(SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE): _lowerCamelCase : Union[str, Any] = [] for i in self.duals: new_duals.append(i * other) return Dual(self.real * other , SCREAMING_SNAKE_CASE) _lowerCamelCase : List[Any] = [0] * (len(self.duals) + len(other.duals) + 1) for i, item in enumerate(self.duals): for j, jtem in enumerate(other.duals): new_duals[i + j + 1] += item * jtem for k in range(len(self.duals)): new_duals[k] += self.duals[k] * other.real for index in range(len(other.duals)): new_duals[index] += other.duals[index] * self.real return Dual(self.real * other.real , SCREAMING_SNAKE_CASE) __UpperCAmelCase = __mul__ def __truediv__( self , SCREAMING_SNAKE_CASE) -> Optional[int]: if not isinstance(SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE): _lowerCamelCase : Union[str, Any] = [] for i in self.duals: new_duals.append(i / other) return Dual(self.real / other , SCREAMING_SNAKE_CASE) raise ValueError def __floordiv__( self , SCREAMING_SNAKE_CASE) -> int: if not isinstance(SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE): _lowerCamelCase : List[Any] = [] for i in self.duals: new_duals.append(i // other) return Dual(self.real // other , SCREAMING_SNAKE_CASE) raise ValueError def __pow__( self , SCREAMING_SNAKE_CASE) -> Optional[Any]: if n < 0 or isinstance(SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE): raise ValueError("""power must be a positive integer""") if n == 0: return 1 if n == 1: return self _lowerCamelCase : int = self for _ in range(n - 1): x *= self return x def _snake_case ( __snake_case : List[Any] , __snake_case : Dict , __snake_case : Dict ): """simple docstring""" if not callable(__snake_case ): raise ValueError("""differentiate() requires a function as input for func""" ) if not isinstance(__snake_case , (float, int) ): raise ValueError("""differentiate() requires a float as input for position""" ) if not isinstance(__snake_case , __snake_case ): raise ValueError("""differentiate() requires an int as input for order""" ) _lowerCamelCase : Any = Dual(__snake_case , 1 ) _lowerCamelCase : Tuple = func(__snake_case ) if order == 0: return result.real return result.duals[order - 1] * factorial(__snake_case ) if __name__ == "__main__": import doctest doctest.testmod() def _snake_case ( __snake_case : Tuple ): """simple docstring""" return y**2 * y**4 print(differentiate(f, 9, 2))
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import math import os import re import sys import unittest from pathlib import Path from typing import Tuple from unittest.mock import patch from parameterized import parameterized from transformers.testing_utils import ( CaptureStderr, ExtendSysPath, TestCasePlus, execute_subprocess_async, get_gpu_count, get_torch_dist_unique_port, require_apex, require_bitsandbytes, require_fairscale, require_torch, require_torch_gpu, require_torch_multi_gpu, require_torch_non_multi_gpu, slow, ) from transformers.trainer_callback import TrainerState from transformers.trainer_utils import set_seed SCREAMING_SNAKE_CASE__ : List[Any] = os.path.abspath(os.path.dirname(__file__)) with ExtendSysPath(f"{bindir}/../../examples/pytorch/translation"): from run_translation import main # noqa set_seed(42) SCREAMING_SNAKE_CASE__ : Optional[Any] = """sshleifer/student_marian_en_ro_6_1""" SCREAMING_SNAKE_CASE__ : List[Any] = """sshleifer/tiny-mbart""" @require_torch class lowerCamelCase_ ( lowerCamelCase ): def A ( self , __lowerCAmelCase=False , __lowerCAmelCase=None , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , ): """simple docstring""" __magic_name__ :List[Any] = self.run_trainer( eval_steps=1 , max_len=1_2 , model_name=__lowerCAmelCase , num_train_epochs=1 , distributed=__lowerCAmelCase , extra_args_str=__lowerCAmelCase , predict_with_generate=__lowerCAmelCase , do_train=__lowerCAmelCase , do_eval=__lowerCAmelCase , do_predict=__lowerCAmelCase , ) __magic_name__ :Any = TrainerState.load_from_json(os.path.join(__lowerCAmelCase , '''trainer_state.json''' ) ).log_history if not do_eval: return __magic_name__ :Any = [log for log in logs if '''eval_loss''' in log.keys()] __magic_name__ :str = eval_metrics[0] if predict_with_generate: assert "eval_bleu" in first_step_stats __magic_name__ :Tuple = eval_metrics[-1] assert isinstance(last_step_stats['''eval_bleu'''] , __lowerCAmelCase ) assert not math.isnan(float(last_step_stats['''eval_loss'''] ) ), "eval_loss must not be `nan`" @require_torch_non_multi_gpu def A ( self ): """simple docstring""" self.run_seqaseq_quick() @require_torch_multi_gpu def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase ) @require_torch_multi_gpu def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp simple''' ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp simple --fp16''' ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp zero_dp_2''' , predict_with_generate=__lowerCAmelCase ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick( distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp zero_dp_2 --fp16''' , predict_with_generate=__lowerCAmelCase ) @require_apex @require_torch_gpu def A ( self ): """simple docstring""" # XXX: apex breaks the trainer if it's run twice e.g. run_seq2seq.main() from the same # program and it breaks other tests that run from the same pytest worker, therefore until this is # sorted out it must be run only in an external program, that is distributed=True in this # test and only under one or more gpus - if we want cpu will need to make a special test # # specifically to the problem traced it to self.optimizer.step() - if it's run 2nd time via # 2nd main() call it botches the future eval. # self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--fp16 --fp16_backend=apex''' ) # test 2nd time - was getting eval_loss': nan' # to reproduce the problem set distributed=False self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--fp16 --fp16_backend=apex''' ) @parameterized.expand(['''base''', '''low''', '''high''', '''mixed'''] ) @require_torch_multi_gpu def A ( self , __lowerCAmelCase ): """simple docstring""" # as each sub-test is slow-ish split into multiple sub-tests to avoid CI timeout __magic_name__ :Any = { # test with the default log_level - should be info and thus log info once '''base''': {'''extra_args_str''': '''''', '''n_matches''': 1}, # test with low log_level and log_level_replica - should be noisy on all processes # now the info string should appear twice on 2 processes '''low''': {'''extra_args_str''': '''--log_level debug --log_level_replica debug''', '''n_matches''': 2}, # test with high log_level and low log_level_replica # now the info string should appear once only on the replica '''high''': {'''extra_args_str''': '''--log_level error --log_level_replica debug''', '''n_matches''': 1}, # test with high log_level and log_level_replica - should be quiet on all processes '''mixed''': {'''extra_args_str''': '''--log_level error --log_level_replica error''', '''n_matches''': 0}, } __magic_name__ :Optional[Any] = experiments[experiment_id] __magic_name__ :List[Any] = {'''distributed''': True, '''predict_with_generate''': False, '''do_eval''': False, '''do_predict''': False} __magic_name__ :Optional[int] = '''Running training''' with CaptureStderr() as cl: self.run_seqaseq_quick(**__lowerCAmelCase , extra_args_str=data['''extra_args_str'''] ) __magic_name__ :int = len(re.findall(__lowerCAmelCase , cl.err ) ) self.assertEqual(__lowerCAmelCase , data['''n_matches'''] ) @slow def A ( self ): """simple docstring""" __magic_name__ :List[str] = self.run_trainer( eval_steps=2 , max_len=1_2_8 , model_name=__lowerCAmelCase , learning_rate=3E-4 , num_train_epochs=1_0 , distributed=__lowerCAmelCase , ) # Check metrics __magic_name__ :Optional[int] = TrainerState.load_from_json(os.path.join(__lowerCAmelCase , '''trainer_state.json''' ) ).log_history __magic_name__ :List[str] = [log for log in logs if '''eval_loss''' in log.keys()] __magic_name__ :Any = eval_metrics[0] __magic_name__ :int = eval_metrics[-1] assert first_step_stats["eval_loss"] > last_step_stats["eval_loss"], "model learned nothing" assert isinstance(last_step_stats['''eval_bleu'''] , __lowerCAmelCase ) # test if do_predict saves generations and metrics __magic_name__ :List[Any] = os.listdir(__lowerCAmelCase ) __magic_name__ :List[str] = {os.path.basename(__lowerCAmelCase ) for p in contents} assert "generated_predictions.txt" in contents assert "predict_results.json" in contents @slow @require_bitsandbytes def A ( self ): """simple docstring""" from transformers.training_args import OptimizerNames def train_and_return_metrics(__lowerCAmelCase ) -> Tuple[int, float]: __magic_name__ :str = '''--skip_memory_metrics 0''' __magic_name__ :Dict = self.run_trainer( max_len=1_2_8 , model_name=__lowerCAmelCase , learning_rate=3E-4 , num_train_epochs=1 , optim=__lowerCAmelCase , distributed=__lowerCAmelCase , extra_args_str=__lowerCAmelCase , do_eval=__lowerCAmelCase , do_predict=__lowerCAmelCase , n_gpus_to_use=1 , ) # Check metrics __magic_name__ :Optional[Any] = TrainerState.load_from_json(Path(__lowerCAmelCase , '''trainer_state.json''' ) ).log_history __magic_name__ :int = int(logs[0]['''train_mem_gpu_peaked_delta'''] / 2**2_0 ) __magic_name__ :Optional[Any] = int(logs[0]['''train_mem_gpu_alloc_delta'''] / 2**2_0 ) __magic_name__ :Any = logs[0]['''train_loss'''] return gpu_peak_mem_mb, gpu_alloc_mem_mb, loss __magic_name__ , __magic_name__ , __magic_name__ :int = train_and_return_metrics(OptimizerNames.ADAMW_TORCH.value ) __magic_name__ , __magic_name__ , __magic_name__ :Tuple = train_and_return_metrics(OptimizerNames.ADAMW_BNB.value ) __magic_name__ :Tuple = gpu_alloc_mem_orig - gpu_alloc_mem_bnb __magic_name__ :Tuple = gpu_peak_mem_orig + gpu_alloc_mem_orig __magic_name__ :List[Any] = gpu_peak_mem_bnb + gpu_alloc_mem_bnb __magic_name__ :Optional[int] = gpu_total_mem_orig - gpu_total_mem_bnb # sshleifer/student_marian_en_ro_6_1 has 54M parameter, 29M of which is `nn.Embedding` which # doesn't get quantized and remains in fp32. Therefore we only have 25M parameters quantized # in 2 bytes and the diff in optim memory usage is derived as so: # # - normal 25*8=~200MB (8 bytes per param) # - bnb 25*2= ~50MB (2 bytes per param) # # Thus we should expect ~150MB total memory saved. # # Peak memory should be the same - the total should be different by about that same margin # # After leaving a small margin to accommodate for differences between gpus let's check # that we have at least 120MB in savings __magic_name__ :Optional[Any] = 1_2_0 # uncomment the following if this test starts failing - requires py38 for a new print feature # gpu_peak_mem_diff = gpu_peak_mem_orig - gpu_peak_mem_bnb # print(f"{gpu_alloc_mem_orig=}MB {gpu_peak_mem_orig=}MB {gpu_alloc_mem_orig+gpu_peak_mem_orig=}MB") # print(f" {gpu_alloc_mem_bnb=}MB {gpu_peak_mem_bnb=}MB {gpu_alloc_mem_bnb+gpu_peak_mem_bnb=}MB") # print(f"{gpu_alloc_mem_diff=}MB") # print(f"{gpu_peak_mem_diff=}MB") # print(f"{gpu_total_mem_orig=}MB, {gpu_total_mem_bnb=}MB") # print(f"{gpu_total_mem_diff=}MB, {gpu_total_mem_diff=}MB") self.assertGreater( __lowerCAmelCase , __lowerCAmelCase , '''should use ~150MB less alloc gpu memory with BNB, compared to without it for this model but got''' F''' a difference of {gpu_alloc_mem_diff}MB, with gpu_alloc_mem_orig={gpu_alloc_mem_orig}MB and''' F''' gpu_alloc_mem_bnb={gpu_alloc_mem_bnb}MB''' , ) self.assertGreater( __lowerCAmelCase , __lowerCAmelCase , '''should use ~150MB less total gpu memory with BNB, compared to without it for this model but got''' F''' a difference of {gpu_total_mem_diff}MB, with gpu_total_mem_orig={gpu_total_mem_orig}MB and''' F''' gpu_total_mem_bnb={gpu_total_mem_bnb}MB''' , ) self.assertEqual( __lowerCAmelCase , __lowerCAmelCase , F'''loss should be the same, but got loss_orig={loss_orig}, loss_bnb={loss_bnb}''' ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase = 3E-3 , __lowerCAmelCase = "adafactor" , __lowerCAmelCase = False , __lowerCAmelCase = None , __lowerCAmelCase = 0 , __lowerCAmelCase = True , __lowerCAmelCase = True , __lowerCAmelCase = True , __lowerCAmelCase = True , __lowerCAmelCase = None , ): """simple docstring""" __magic_name__ :int = self.test_file_dir / '''../fixtures/tests_samples/wmt_en_ro''' __magic_name__ :Dict = self.get_auto_remove_tmp_dir() __magic_name__ :Tuple = F''' --model_name_or_path {model_name} --train_file {data_dir}/train.json --validation_file {data_dir}/val.json --test_file {data_dir}/test.json --output_dir {output_dir} --overwrite_output_dir --max_train_samples 8 --max_source_length {max_len} --max_target_length {max_len} --do_train --num_train_epochs {str(__lowerCAmelCase )} --per_device_train_batch_size 4 --learning_rate {learning_rate} --warmup_steps 8 --logging_steps 0 --logging_strategy no --save_steps {str(__lowerCAmelCase )} --group_by_length --label_smoothing_factor 0.1 --target_lang ro_RO --source_lang en_XX '''.split() __magic_name__ :str = F''' --do_eval --per_device_eval_batch_size 4 --max_eval_samples 8 --val_max_target_length {max_len} --evaluation_strategy steps --eval_steps {str(__lowerCAmelCase )} '''.split() __magic_name__ :Dict = ''' --do_predict '''.split() __magic_name__ :Optional[int] = [] if do_train: args += args_train if do_eval: args += args_eval if do_predict: args += args_predict if predict_with_generate: args += "--predict_with_generate".split() if do_train: if optim == "adafactor": args += "--adafactor".split() else: args += F'''--optim {optim}'''.split() if extra_args_str is not None: args += extra_args_str.split() if distributed: if n_gpus_to_use is None: __magic_name__ :List[Any] = get_gpu_count() __magic_name__ :Tuple = get_torch_dist_unique_port() __magic_name__ :Union[str, Any] = F''' -m torch.distributed.run --nproc_per_node={n_gpus_to_use} --master_port={master_port} {self.examples_dir_str}/pytorch/translation/run_translation.py '''.split() __magic_name__ :Any = [sys.executable] + distributed_args + args # keep for quick debug # print(" ".join([f"\nPYTHONPATH={self.src_dir_str}"] +cmd)); die execute_subprocess_async(__lowerCAmelCase , env=self.get_env() ) else: __magic_name__ :List[Any] = ['''run_translation.py'''] + args with patch.object(__lowerCAmelCase , '''argv''' , __lowerCAmelCase ): main() return output_dir
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import datasets import faiss import numpy as np import streamlit as st import torch from elasticsearch import Elasticsearch from elia_utils import ( embed_questions_for_retrieval, make_qa_sas_model, qa_sas_generate, query_es_index, query_qa_dense_index, ) import transformers from transformers import AutoModel, AutoModelForSeqaSeqLM, AutoTokenizer SCREAMING_SNAKE_CASE : Dict = "bart" SCREAMING_SNAKE_CASE : str = True @st.cache(allow_output_mutation=lowerCamelCase_ ) def UpperCamelCase_( ) -> Dict: if LOAD_DENSE_INDEX: _lowercase : str = AutoTokenizer.from_pretrained('yjernite/retribert-base-uncased' ) _lowercase : Any = AutoModel.from_pretrained('yjernite/retribert-base-uncased' ).to('cuda:0' ) _lowercase : str = qar_model.eval() else: _lowercase , _lowercase : str = (None, None) if MODEL_TYPE == "bart": _lowercase : Any = AutoTokenizer.from_pretrained('yjernite/bart_eli5' ) _lowercase : Tuple = AutoModelForSeqaSeqLM.from_pretrained('yjernite/bart_eli5' ).to('cuda:0' ) _lowercase : Dict = torch.load('seq2seq_models/eli5_bart_model_blm_2.pth' ) sas_model.load_state_dict(save_dict['model'] ) _lowercase : int = sas_model.eval() else: _lowercase , _lowercase : int = make_qa_sas_model( model_name='t5-small' , from_file='seq2seq_models/eli5_t5_model_1024_4.pth' , device='cuda:0' ) return (qar_tokenizer, qar_model, sas_tokenizer, sas_model) @st.cache(allow_output_mutation=lowerCamelCase_ ) def UpperCamelCase_( ) -> Optional[Any]: if LOAD_DENSE_INDEX: _lowercase : List[Any] = faiss.StandardGpuResources() _lowercase : List[Any] = datasets.load_dataset(path='wiki_snippets' , name='wiki40b_en_100_0' )['train'] _lowercase : Dict = np.memmap( 'wiki40b_passages_reps_32_l-8_h-768_b-512-512.dat' , dtype='float32' , mode='r' , shape=(wikiaab_passages.num_rows, 128) , ) _lowercase : Any = faiss.IndexFlatIP(128 ) _lowercase : Optional[int] = faiss.index_cpu_to_gpu(lowerCamelCase_ , 1 , lowerCamelCase_ ) wikiaab_gpu_index_flat.add(lowerCamelCase_ ) # TODO fix for larger GPU else: _lowercase , _lowercase : Union[str, Any] = (None, None) _lowercase : Optional[int] = Elasticsearch([{'host': 'localhost', 'port': '9200'}] ) return (wikiaab_passages, wikiaab_gpu_index_flat, es_client) @st.cache(allow_output_mutation=lowerCamelCase_ ) def UpperCamelCase_( ) -> List[Any]: _lowercase : Tuple = datasets.load_dataset('eli5' , name='LFQA_reddit' ) _lowercase : int = elia['train_eli5'] _lowercase : Any = np.memmap( 'eli5_questions_reps.dat' , dtype='float32' , mode='r' , shape=(elia_train.num_rows, 128) ) _lowercase : Any = faiss.IndexFlatIP(128 ) eli5_train_q_index.add(lowerCamelCase_ ) return (elia_train, eli5_train_q_index) SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE : Optional[int] = load_indexes() SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE : Tuple = load_models() SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE : str = load_train_data() def UpperCamelCase_( lowerCamelCase_ , lowerCamelCase_=10 ) -> List[Any]: _lowercase : Any = embed_questions_for_retrieval([question] , lowerCamelCase_ , lowerCamelCase_ ) _lowercase , _lowercase : Any = eli5_train_q_index.search(lowerCamelCase_ , lowerCamelCase_ ) _lowercase : Any = [elia_train[int(lowerCamelCase_ )] for i in I[0]] return nn_examples def UpperCamelCase_( lowerCamelCase_ , lowerCamelCase_="wiki40b" , lowerCamelCase_="dense" , lowerCamelCase_=10 ) -> Dict: if source == "none": _lowercase , _lowercase : List[Any] = (' <P> '.join(['' for _ in range(11 )] ).strip(), []) else: if method == "dense": _lowercase , _lowercase : Optional[Any] = query_qa_dense_index( lowerCamelCase_ , lowerCamelCase_ , lowerCamelCase_ , lowerCamelCase_ , lowerCamelCase_ , lowerCamelCase_ ) else: _lowercase , _lowercase : List[str] = query_es_index( lowerCamelCase_ , lowerCamelCase_ , index_name='english_wiki40b_snippets_100w' , n_results=lowerCamelCase_ , ) _lowercase : int = [ (res['article_title'], res['section_title'].strip(), res['score'], res['passage_text']) for res in hit_lst ] _lowercase : Tuple = 'question: {} context: {}'.format(lowerCamelCase_ , lowerCamelCase_ ) return question_doc, support_list @st.cache( hash_funcs={ torch.Tensor: (lambda lowerCamelCase_ : None), transformers.models.bart.tokenization_bart.BartTokenizer: (lambda lowerCamelCase_ : None), } ) def UpperCamelCase_( lowerCamelCase_ , lowerCamelCase_ , lowerCamelCase_ , lowerCamelCase_=64 , lowerCamelCase_=256 , lowerCamelCase_=False , lowerCamelCase_=2 , lowerCamelCase_=0.95 , lowerCamelCase_=0.8 ) -> List[str]: with torch.no_grad(): _lowercase : Dict = qa_sas_generate( lowerCamelCase_ , lowerCamelCase_ , lowerCamelCase_ , num_answers=1 , num_beams=lowerCamelCase_ , min_len=lowerCamelCase_ , max_len=lowerCamelCase_ , do_sample=lowerCamelCase_ , temp=lowerCamelCase_ , top_p=lowerCamelCase_ , top_k=lowerCamelCase_ , max_input_length=1024 , device='cuda:0' , )[0] return (answer, support_list) st.title("Long Form Question Answering with ELI5") # Start sidebar SCREAMING_SNAKE_CASE : List[Any] = "<img src='https://huggingface.co/front/assets/huggingface_logo.svg'>" SCREAMING_SNAKE_CASE : Dict = "\n<html>\n <head>\n <style>\n .img-container {\n padding-left: 90px;\n padding-right: 90px;\n padding-top: 50px;\n padding-bottom: 50px;\n background-color: #f0f3f9;\n }\n </style>\n </head>\n <body>\n <span class=\"img-container\"> <!-- Inline parent element -->\n %s\n </span>\n </body>\n</html>\n" % ( header_html, ) st.sidebar.markdown( header_full, unsafe_allow_html=True, ) # Long Form QA with ELI5 and Wikipedia SCREAMING_SNAKE_CASE : str = "\nThis demo presents a model trained to [provide long-form answers to open-domain questions](https://yjernite.github.io/lfqa.html).\nFirst, a document retriever fetches a set of relevant Wikipedia passages given the question from the [Wiki40b](https://research.google/pubs/pub49029/) dataset,\na pre-processed fixed snapshot of Wikipedia.\n" st.sidebar.markdown(description, unsafe_allow_html=True) SCREAMING_SNAKE_CASE : Union[str, Any] = [ "Answer the question", "View the retrieved document only", "View the most similar ELI5 question and answer", "Show me everything, please!", ] SCREAMING_SNAKE_CASE : str = st.sidebar.checkbox("Demo options") if demo_options: SCREAMING_SNAKE_CASE : Union[str, Any] = st.sidebar.selectbox( "", action_list, index=3, ) SCREAMING_SNAKE_CASE : Any = action_list.index(action_st) SCREAMING_SNAKE_CASE : Union[str, Any] = st.sidebar.selectbox( "", ["Show full text of passages", "Show passage section titles"], index=0, ) SCREAMING_SNAKE_CASE : Union[str, Any] = show_type == "Show full text of passages" else: SCREAMING_SNAKE_CASE : Any = 3 SCREAMING_SNAKE_CASE : List[Any] = True SCREAMING_SNAKE_CASE : Tuple = st.sidebar.checkbox("Retrieval options") if retrieval_options: SCREAMING_SNAKE_CASE : str = "\n ### Information retriever options\n\n The **sparse** retriever uses ElasticSearch, while the **dense** retriever uses max-inner-product search between a question and passage embedding\n trained using the [ELI5](https://arxiv.org/abs/1907.09190) questions-answer pairs.\n The answer is then generated by sequence to sequence model which takes the question and retrieved document as input.\n " st.sidebar.markdown(retriever_info) SCREAMING_SNAKE_CASE : List[Any] = st.sidebar.selectbox("Which Wikipedia format should the model use?", ["wiki40b", "none"]) SCREAMING_SNAKE_CASE : str = st.sidebar.selectbox("Which Wikipedia indexer should the model use?", ["dense", "sparse", "mixed"]) else: SCREAMING_SNAKE_CASE : Optional[int] = "wiki40b" SCREAMING_SNAKE_CASE : List[Any] = "dense" SCREAMING_SNAKE_CASE : str = "beam" SCREAMING_SNAKE_CASE : List[str] = 2 SCREAMING_SNAKE_CASE : int = 64 SCREAMING_SNAKE_CASE : List[Any] = 256 SCREAMING_SNAKE_CASE : Union[str, Any] = None SCREAMING_SNAKE_CASE : int = None SCREAMING_SNAKE_CASE : str = st.sidebar.checkbox("Generation options") if generate_options: SCREAMING_SNAKE_CASE : Tuple = "\n ### Answer generation options\n\n The sequence-to-sequence model was initialized with [BART](https://huggingface.co/facebook/bart-large)\n weights and fine-tuned on the ELI5 QA pairs and retrieved documents. You can use the model for greedy decoding with\n **beam** search, or **sample** from the decoder's output probabilities.\n " st.sidebar.markdown(generate_info) SCREAMING_SNAKE_CASE : Dict = st.sidebar.selectbox("Would you like to use beam search or sample an answer?", ["beam", "sampled"]) SCREAMING_SNAKE_CASE : str = st.sidebar.slider( "Minimum generation length", min_value=8, max_value=256, value=64, step=8, format=None, key=None ) SCREAMING_SNAKE_CASE : Union[str, Any] = st.sidebar.slider( "Maximum generation length", min_value=64, max_value=512, value=256, step=16, format=None, key=None ) if sampled == "beam": SCREAMING_SNAKE_CASE : Dict = st.sidebar.slider("Beam size", min_value=1, max_value=8, value=2, step=None, format=None, key=None) else: SCREAMING_SNAKE_CASE : Union[str, Any] = st.sidebar.slider( "Nucleus sampling p", min_value=0.1, max_value=1.0, value=0.95, step=0.01, format=None, key=None ) SCREAMING_SNAKE_CASE : Dict = st.sidebar.slider( "Temperature", min_value=0.1, max_value=1.0, value=0.7, step=0.01, format=None, key=None ) SCREAMING_SNAKE_CASE : List[Any] = None # start main text SCREAMING_SNAKE_CASE : Optional[int] = [ "<MY QUESTION>", "How do people make chocolate?", "Why do we get a fever when we are sick?", "How can different animals perceive different colors?", "What is natural language processing?", "What's the best way to treat a sunburn?", "What exactly are vitamins ?", "How does nuclear energy provide electricity?", "What's the difference between viruses and bacteria?", "Why are flutes classified as woodwinds when most of them are made out of metal ?", "Why do people like drinking coffee even though it tastes so bad?", "What happens when wine ages? How does it make the wine taste better?", "If an animal is an herbivore, where does it get the protein that it needs to survive if it only eats grass?", "How can we set a date to the beginning or end of an artistic period? Doesn't the change happen gradually?", "How does New Zealand have so many large bird predators?", ] SCREAMING_SNAKE_CASE : Optional[Any] = st.selectbox( "What would you like to ask? ---- select <MY QUESTION> to enter a new query", questions_list, index=1, ) if question_s == "<MY QUESTION>": SCREAMING_SNAKE_CASE : int = st.text_input("Enter your question here:", "") else: SCREAMING_SNAKE_CASE : int = question_s if st.button("Show me!"): if action in [0, 1, 3]: if index_type == "mixed": SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE : Any = make_support(question, source=wiki_source, method="dense", n_results=10) SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE : Union[str, Any] = make_support(question, source=wiki_source, method="sparse", n_results=10) SCREAMING_SNAKE_CASE : Dict = [] for res_d, res_s in zip(support_list_dense, support_list_sparse): if tuple(res_d) not in support_list: support_list += [tuple(res_d)] if tuple(res_s) not in support_list: support_list += [tuple(res_s)] SCREAMING_SNAKE_CASE : int = support_list[:10] SCREAMING_SNAKE_CASE : Dict = "<P> " + " <P> ".join([res[-1] for res in support_list]) else: SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE : List[str] = make_support(question, source=wiki_source, method=index_type, n_results=10) if action in [0, 3]: SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE : Optional[Any] = answer_question( question_doc, sas_model, sas_tokenizer, min_len=min_len, max_len=int(max_len), sampling=(sampled == "sampled"), n_beams=n_beams, top_p=top_p, temp=temp, ) st.markdown("### The model generated answer is:") st.write(answer) if action in [0, 1, 3] and wiki_source != "none": st.markdown("--- \n ### The model is drawing information from the following Wikipedia passages:") for i, res in enumerate(support_list): SCREAMING_SNAKE_CASE : int = "https://en.wikipedia.org/wiki/{}".format(res[0].replace(" ", "_")) SCREAMING_SNAKE_CASE : str = res[1].strip() if sec_titles == "": SCREAMING_SNAKE_CASE : Optional[int] = "[{}]({})".format(res[0], wiki_url) else: SCREAMING_SNAKE_CASE : Dict = sec_titles.split(" & ") SCREAMING_SNAKE_CASE : Union[str, Any] = " & ".join( ["[{}]({}#{})".format(sec.strip(), wiki_url, sec.strip().replace(" ", "_")) for sec in sec_list] ) st.markdown( "{0:02d} - **Article**: {1:<18} <br> _Section_: {2}".format(i + 1, res[0], sections), unsafe_allow_html=True, ) if show_passages: st.write( "> <span style=\"font-family:arial; font-size:10pt;\">" + res[-1] + "</span>", unsafe_allow_html=True ) if action in [2, 3]: SCREAMING_SNAKE_CASE : List[str] = find_nearest_training(question) SCREAMING_SNAKE_CASE : Optional[int] = nn_train_list[0] st.markdown( "--- \n ### The most similar question in the ELI5 training set was: \n\n {}".format(train_exple["title"]) ) SCREAMING_SNAKE_CASE : Any = [ "{}. {}".format(i + 1, " \n".join([line.strip() for line in ans.split("\n") if line.strip() != ""])) for i, (ans, sc) in enumerate(zip(train_exple["answers"]["text"], train_exple["answers"]["score"])) if i == 0 or sc > 2 ] st.markdown("##### Its answers were: \n\n {}".format("\n".join(answers_st))) SCREAMING_SNAKE_CASE : str = "\n---\n\n**Disclaimer**\n\n*The intent of this app is to provide some (hopefully entertaining) insights into the behavior of a current LFQA system.\nEvaluating biases of such a model and ensuring factual generations are still very much open research problems.\nTherefore, until some significant progress is achieved, we caution against using the generated answers for practical purposes.*\n" st.sidebar.markdown(disclaimer, unsafe_allow_html=True)
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import sys SCREAMING_SNAKE_CASE__ : Optional[Any] = ( """73167176531330624919225119674426574742355349194934""" """96983520312774506326239578318016984801869478851843""" """85861560789112949495459501737958331952853208805511""" """12540698747158523863050715693290963295227443043557""" """66896648950445244523161731856403098711121722383113""" """62229893423380308135336276614282806444486645238749""" """30358907296290491560440772390713810515859307960866""" """70172427121883998797908792274921901699720888093776""" """65727333001053367881220235421809751254540594752243""" """52584907711670556013604839586446706324415722155397""" """53697817977846174064955149290862569321978468622482""" """83972241375657056057490261407972968652414535100474""" """82166370484403199890008895243450658541227588666881""" """16427171479924442928230863465674813919123162824586""" """17866458359124566529476545682848912883142607690042""" """24219022671055626321111109370544217506941658960408""" """07198403850962455444362981230987879927244284909188""" """84580156166097919133875499200524063689912560717606""" """05886116467109405077541002256983155200055935729725""" """71636269561882670428252483600823257530420752963450""" ) def __lowercase ( snake_case = N ): """simple docstring""" __magic_name__ :Optional[int] = -sys.maxsize - 1 for i in range(len(snake_case ) - 1_2 ): __magic_name__ :List[Any] = 1 for j in range(1_3 ): product *= int(n[i + j] ) if product > largest_product: __magic_name__ :str = product return largest_product if __name__ == "__main__": print(f"{solution() = }")
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'''simple docstring''' import warnings from diffusers import StableDiffusionInpaintPipeline as StableDiffusionInpaintPipeline # noqa F401 warnings.warn( '''The `inpainting.py` script is outdated. Please use directly `from diffusers import''' ''' StableDiffusionInpaintPipeline` instead.''' )
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SCREAMING_SNAKE_CASE__ : Tuple = { """a""": """AAAAA""", """b""": """AAAAB""", """c""": """AAABA""", """d""": """AAABB""", """e""": """AABAA""", """f""": """AABAB""", """g""": """AABBA""", """h""": """AABBB""", """i""": """ABAAA""", """j""": """BBBAA""", """k""": """ABAAB""", """l""": """ABABA""", """m""": """ABABB""", """n""": """ABBAA""", """o""": """ABBAB""", """p""": """ABBBA""", """q""": """ABBBB""", """r""": """BAAAA""", """s""": """BAAAB""", """t""": """BAABA""", """u""": """BAABB""", """v""": """BBBAB""", """w""": """BABAA""", """x""": """BABAB""", """y""": """BABBA""", """z""": """BABBB""", """ """: """ """, } SCREAMING_SNAKE_CASE__ : Union[str, Any] = {value: key for key, value in encode_dict.items()} def __lowercase ( snake_case ): """simple docstring""" __magic_name__ :Tuple = '''''' for letter in word.lower(): if letter.isalpha() or letter == " ": encoded += encode_dict[letter] else: raise Exception('''encode() accepts only letters of the alphabet and spaces''' ) return encoded def __lowercase ( snake_case ): """simple docstring""" if set(snake_case ) - {"A", "B", " "} != set(): raise Exception('''decode() accepts only \'A\', \'B\' and spaces''' ) __magic_name__ :Dict = '''''' for word in coded.split(): while len(snake_case ) != 0: decoded += decode_dict[word[:5]] __magic_name__ :int = word[5:] decoded += " " return decoded.strip() if __name__ == "__main__": from doctest import testmod testmod()
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"""simple docstring""" _lowercase = { "km/h": 1.0, "m/s": 3.6, "mph": 1.609_344, "knot": 1.852, } _lowercase = { "km/h": 1.0, "m/s": 0.277_777_778, "mph": 0.621_371_192, "knot": 0.539_956_803, } def _snake_case ( snake_case__ : float , snake_case__ : str , snake_case__ : str ): if unit_to not in speed_chart or unit_from not in speed_chart_inverse: A = ( F'Incorrect \'from_type\' or \'to_type\' value: {unit_from!r}, {unit_to!r}\n' F'Valid values are: {", ".join(snake_case__ )}' ) raise ValueError(snake_case__ ) return round(speed * speed_chart[unit_from] * speed_chart_inverse[unit_to] , 3 ) if __name__ == "__main__": import doctest doctest.testmod()
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import argparse import torch from torch import nn from transformers import MaMaaaConfig, MaMaaaForConditionalGeneration def __lowercase ( snake_case ): """simple docstring""" __magic_name__ :Optional[Any] = [ '''encoder.version''', '''decoder.version''', '''model.encoder.version''', '''model.decoder.version''', '''decoder.output_projection.weight''', '''_float_tensor''', '''encoder.embed_positions._float_tensor''', '''decoder.embed_positions._float_tensor''', ] for k in ignore_keys: state_dict.pop(snake_case, snake_case ) def __lowercase ( snake_case ): """simple docstring""" __magic_name__ , __magic_name__ :Tuple = emb.weight.shape __magic_name__ :int = nn.Linear(snake_case, snake_case, bias=snake_case ) __magic_name__ :str = emb.weight.data return lin_layer def __lowercase ( snake_case ): """simple docstring""" __magic_name__ :int = torch.load(snake_case, map_location='''cpu''' ) __magic_name__ :Optional[Any] = mam_aaa['''args'''] or mam_aaa['''cfg''']['''model'''] __magic_name__ :List[Any] = mam_aaa['''model'''] remove_ignore_keys_(snake_case ) __magic_name__ :Tuple = state_dict['''encoder.embed_tokens.weight'''].shape[0] __magic_name__ :List[str] = MaMaaaConfig( vocab_size=snake_case, max_position_embeddings=1_0_2_4, encoder_layers=args.encoder_layers, decoder_layers=args.decoder_layers, encoder_attention_heads=args.encoder_attention_heads, decoder_attention_heads=args.decoder_attention_heads, encoder_ffn_dim=args.encoder_ffn_embed_dim, decoder_ffn_dim=args.decoder_ffn_embed_dim, d_model=args.encoder_embed_dim, encoder_layerdrop=args.encoder_layerdrop, decoder_layerdrop=args.decoder_layerdrop, dropout=args.dropout, attention_dropout=args.attention_dropout, activation_dropout=args.activation_dropout, activation_function='''relu''', ) __magic_name__ :int = state_dict['''decoder.embed_tokens.weight'''] __magic_name__ :List[str] = MaMaaaForConditionalGeneration(snake_case ) model.model.load_state_dict(snake_case, strict=snake_case ) __magic_name__ :List[str] = make_linear_from_emb(model.model.shared ) return model if __name__ == "__main__": SCREAMING_SNAKE_CASE__ : Optional[Any] = argparse.ArgumentParser() # Required parameters parser.add_argument("""fairseq_path""", type=str, help="""path to a model.pt on local filesystem.""") parser.add_argument("""pytorch_dump_folder_path""", default=None, type=str, help="""Path to the output PyTorch model.""") SCREAMING_SNAKE_CASE__ : int = parser.parse_args() SCREAMING_SNAKE_CASE__ : Any = convert_fairseq_mamaaa_checkpoint_from_disk(args.fairseq_pathß) model.save_pretrained(args.pytorch_dump_folder_path)
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'''simple docstring''' import doctest from collections import deque import numpy as np class __SCREAMING_SNAKE_CASE : def __init__( self : int ): '''simple docstring''' lowercase : List[str] =[2, 1, 2, -1] lowercase : Tuple =[1, 2, 3, 4] def lowerCamelCase_ ( self : List[str] ): '''simple docstring''' lowercase : int =len(self.first_signal ) lowercase : Any =len(self.second_signal ) lowercase : Optional[Any] =max(UpperCAmelCase__ , UpperCAmelCase__ ) # create a zero matrix of max_length x max_length lowercase : Any =[[0] * max_length for i in range(UpperCAmelCase__ )] # fills the smaller signal with zeros to make both signals of same length if length_first_signal < length_second_signal: self.first_signal += [0] * (max_length - length_first_signal) elif length_first_signal > length_second_signal: self.second_signal += [0] * (max_length - length_second_signal) for i in range(UpperCAmelCase__ ): lowercase : Any =deque(self.second_signal ) rotated_signal.rotate(UpperCAmelCase__ ) for j, item in enumerate(UpperCAmelCase__ ): matrix[i][j] += item # multiply the matrix with the first signal lowercase : Optional[Any] =np.matmul(np.transpose(UpperCAmelCase__ ) , np.transpose(self.first_signal ) ) # rounding-off to two decimal places return [round(UpperCAmelCase__ , 2 ) for i in final_signal] if __name__ == "__main__": doctest.testmod()
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from typing import TYPE_CHECKING from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tokenizers_available, is_torch_available SCREAMING_SNAKE_CASE__ : Dict = { """configuration_canine""": ["""CANINE_PRETRAINED_CONFIG_ARCHIVE_MAP""", """CanineConfig"""], """tokenization_canine""": ["""CanineTokenizer"""], } try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: SCREAMING_SNAKE_CASE__ : str = [ """CANINE_PRETRAINED_MODEL_ARCHIVE_LIST""", """CanineForMultipleChoice""", """CanineForQuestionAnswering""", """CanineForSequenceClassification""", """CanineForTokenClassification""", """CanineLayer""", """CanineModel""", """CaninePreTrainedModel""", """load_tf_weights_in_canine""", ] if TYPE_CHECKING: from .configuration_canine import CANINE_PRETRAINED_CONFIG_ARCHIVE_MAP, CanineConfig from .tokenization_canine import CanineTokenizer try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_canine import ( CANINE_PRETRAINED_MODEL_ARCHIVE_LIST, CanineForMultipleChoice, CanineForQuestionAnswering, CanineForSequenceClassification, CanineForTokenClassification, CanineLayer, CanineModel, CaninePreTrainedModel, load_tf_weights_in_canine, ) else: import sys SCREAMING_SNAKE_CASE__ : Union[str, Any] = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
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"""simple docstring""" from collections import Counter import numpy as np from sklearn import datasets from sklearn.model_selection import train_test_split __A = datasets.load_iris() __A = np.array(data["""data"""]) __A = np.array(data["""target"""]) __A = data["""target_names"""] __A , __A , __A , __A = train_test_split(X, y) def __A (_SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE ) ->Dict: """simple docstring""" return np.linalg.norm(np.array(_SCREAMING_SNAKE_CASE ) - np.array(_SCREAMING_SNAKE_CASE ) ) def __A (_SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE=5 ) ->Optional[Any]: """simple docstring""" lowerCAmelCase__ :str = zip(_SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE ) # List of distances of all points from the point to be classified lowerCAmelCase__ :Optional[Any] = [] for data_point in data: lowerCAmelCase__ :Tuple = euclidean_distance(data_point[0] , _SCREAMING_SNAKE_CASE ) distances.append((distance, data_point[1]) ) # Choosing 'k' points with the least distances. lowerCAmelCase__ :str = [i[1] for i in sorted(_SCREAMING_SNAKE_CASE )[:k]] # Most commonly occurring class among them # is the class into which the point is classified lowerCAmelCase__ :Optional[int] = Counter(_SCREAMING_SNAKE_CASE ).most_common(1 )[0][0] return classes[result] if __name__ == "__main__": print(classifier(X_train, y_train, classes, [4.4, 3.1, 1.3, 1.4]))
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import warnings from ...processing_utils import ProcessorMixin from ...tokenization_utils_base import BatchEncoding class lowerCamelCase_ ( lowerCamelCase ): a__ = ['''image_processor''', '''tokenizer'''] a__ = '''ChineseCLIPImageProcessor''' a__ = ('''BertTokenizer''', '''BertTokenizerFast''') def __init__( self , __lowerCAmelCase=None , __lowerCAmelCase=None , **__lowerCAmelCase ): """simple docstring""" __magic_name__ :Tuple = None if "feature_extractor" in kwargs: warnings.warn( '''The `feature_extractor` argument is deprecated and will be removed in v5, use `image_processor`''' ''' instead.''' , __lowerCAmelCase , ) __magic_name__ :Optional[Any] = kwargs.pop('''feature_extractor''' ) __magic_name__ :Tuple = image_processor if image_processor is not None else feature_extractor if image_processor is None: raise ValueError('''You need to specify an `image_processor`.''' ) if tokenizer is None: raise ValueError('''You need to specify a `tokenizer`.''' ) super().__init__(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :List[Any] = self.image_processor def __call__( self , __lowerCAmelCase=None , __lowerCAmelCase=None , __lowerCAmelCase=None , **__lowerCAmelCase ): """simple docstring""" if text is None and images is None: raise ValueError('''You have to specify either text or images. Both cannot be none.''' ) if text is not None: __magic_name__ :int = self.tokenizer(__lowerCAmelCase , return_tensors=__lowerCAmelCase , **__lowerCAmelCase ) if images is not None: __magic_name__ :Dict = self.image_processor(__lowerCAmelCase , return_tensors=__lowerCAmelCase , **__lowerCAmelCase ) if text is not None and images is not None: __magic_name__ :Union[str, Any] = image_features.pixel_values return encoding elif text is not None: return encoding else: return BatchEncoding(data=dict(**__lowerCAmelCase ) , tensor_type=__lowerCAmelCase ) def A ( self , *__lowerCAmelCase , **__lowerCAmelCase ): """simple docstring""" return self.tokenizer.batch_decode(*__lowerCAmelCase , **__lowerCAmelCase ) def A ( self , *__lowerCAmelCase , **__lowerCAmelCase ): """simple docstring""" return self.tokenizer.decode(*__lowerCAmelCase , **__lowerCAmelCase ) @property def A ( self ): """simple docstring""" __magic_name__ :List[Any] = self.tokenizer.model_input_names __magic_name__ :Any = self.image_processor.model_input_names return list(dict.fromkeys(tokenizer_input_names + image_processor_input_names ) ) @property def A ( self ): """simple docstring""" warnings.warn( '''`feature_extractor_class` is deprecated and will be removed in v5. Use `image_processor_class` instead.''' , __lowerCAmelCase , ) return self.image_processor_class
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'''simple docstring''' from typing import List, Union from ..utils import ( add_end_docstrings, is_tf_available, is_torch_available, is_vision_available, logging, requires_backends, ) from .base import PIPELINE_INIT_ARGS, Pipeline if is_vision_available(): from PIL import Image from ..image_utils import load_image if is_tf_available(): import tensorflow as tf from ..models.auto.modeling_tf_auto import TF_MODEL_FOR_IMAGE_CLASSIFICATION_MAPPING from ..tf_utils import stable_softmax if is_torch_available(): from ..models.auto.modeling_auto import MODEL_FOR_IMAGE_CLASSIFICATION_MAPPING SCREAMING_SNAKE_CASE = logging.get_logger(__name__) @add_end_docstrings(__A ) class UpperCAmelCase_ ( __A ): """simple docstring""" def __init__( self : Tuple , *UpperCAmelCase : int , **UpperCAmelCase : Optional[Any] ) -> Dict: '''simple docstring''' super().__init__(*UpperCAmelCase , **UpperCAmelCase ) requires_backends(self , '''vision''' ) self.check_model_type( TF_MODEL_FOR_IMAGE_CLASSIFICATION_MAPPING if self.framework == '''tf''' else MODEL_FOR_IMAGE_CLASSIFICATION_MAPPING ) def A__ ( self : str , UpperCAmelCase : str=None ) -> Union[str, Any]: '''simple docstring''' lowercase : Dict ={} if top_k is not None: lowercase : Union[str, Any] =top_k return {}, {}, postprocess_params def __call__( self : str , UpperCAmelCase : Union[str, List[str], "Image.Image", List["Image.Image"]] , **UpperCAmelCase : str ) -> Optional[Any]: '''simple docstring''' return super().__call__(UpperCAmelCase , **UpperCAmelCase ) def A__ ( self : str , UpperCAmelCase : Optional[int] ) -> int: '''simple docstring''' lowercase : List[Any] =load_image(UpperCAmelCase ) lowercase : Optional[Any] =self.image_processor(images=UpperCAmelCase , return_tensors=self.framework ) return model_inputs def A__ ( self : Union[str, Any] , UpperCAmelCase : Optional[Any] ) -> Any: '''simple docstring''' lowercase : str =self.model(**UpperCAmelCase ) return model_outputs def A__ ( self : int , UpperCAmelCase : Optional[Any] , UpperCAmelCase : Any=5 ) -> str: '''simple docstring''' if top_k > self.model.config.num_labels: lowercase : Any =self.model.config.num_labels if self.framework == "pt": lowercase : Dict =model_outputs.logits.softmax(-1 )[0] lowercase , lowercase : Dict =probs.topk(UpperCAmelCase ) elif self.framework == "tf": lowercase : Tuple =stable_softmax(model_outputs.logits , axis=-1 )[0] lowercase : Dict =tf.math.top_k(UpperCAmelCase , k=UpperCAmelCase ) lowercase , lowercase : Any =topk.values.numpy(), topk.indices.numpy() else: raise ValueError(f'Unsupported framework: {self.framework}' ) lowercase : str =scores.tolist() lowercase : Dict =ids.tolist() return [{"score": score, "label": self.model.config.idalabel[_id]} for score, _id in zip(UpperCAmelCase , UpperCAmelCase )]
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from sklearn.metrics import matthews_corrcoef import datasets SCREAMING_SNAKE_CASE__ : Optional[Any] = """ Compute the Matthews correlation coefficient (MCC) The Matthews correlation coefficient is used in machine learning as a measure of the quality of binary and multiclass classifications. It takes into account true and false positives and negatives and is generally regarded as a balanced measure which can be used even if the classes are of very different sizes. The MCC is in essence a correlation coefficient value between -1 and +1. A coefficient of +1 represents a perfect prediction, 0 an average random prediction and -1 an inverse prediction. The statistic is also known as the phi coefficient. [source: Wikipedia] """ SCREAMING_SNAKE_CASE__ : Union[str, Any] = """ Args: predictions (list of int): Predicted labels, as returned by a model. references (list of int): Ground truth labels. sample_weight (list of int, float, or bool): Sample weights. Defaults to `None`. Returns: matthews_correlation (dict containing float): Matthews correlation. Examples: Example 1, a basic example with only predictions and references as inputs: >>> matthews_metric = datasets.load_metric(\"matthews_correlation\") >>> results = matthews_metric.compute(references=[1, 3, 2, 0, 3, 2], ... predictions=[1, 2, 2, 0, 3, 3]) >>> print(round(results['matthews_correlation'], 2)) 0.54 Example 2, the same example as above, but also including sample weights: >>> matthews_metric = datasets.load_metric(\"matthews_correlation\") >>> results = matthews_metric.compute(references=[1, 3, 2, 0, 3, 2], ... predictions=[1, 2, 2, 0, 3, 3], ... sample_weight=[0.5, 3, 1, 1, 1, 2]) >>> print(round(results['matthews_correlation'], 2)) 0.1 Example 3, the same example as above, but with sample weights that cause a negative correlation: >>> matthews_metric = datasets.load_metric(\"matthews_correlation\") >>> results = matthews_metric.compute(references=[1, 3, 2, 0, 3, 2], ... predictions=[1, 2, 2, 0, 3, 3], ... sample_weight=[0.5, 1, 0, 0, 0, 1]) >>> print(round(results['matthews_correlation'], 2)) -0.25 """ SCREAMING_SNAKE_CASE__ : int = """\ @article{scikit-learn, title={Scikit-learn: Machine Learning in {P}ython}, author={Pedregosa, F. and Varoquaux, G. and Gramfort, A. and Michel, V. and Thirion, B. and Grisel, O. and Blondel, M. and Prettenhofer, P. and Weiss, R. and Dubourg, V. and Vanderplas, J. and Passos, A. and Cournapeau, D. and Brucher, M. and Perrot, M. and Duchesnay, E.}, journal={Journal of Machine Learning Research}, volume={12}, pages={2825--2830}, year={2011} } """ @datasets.utils.file_utils.add_start_docstrings(_DESCRIPTION , _KWARGS_DESCRIPTION ) class lowerCamelCase_ ( datasets.Metric ): def A ( self ): """simple docstring""" return datasets.MetricInfo( description=_DESCRIPTION , citation=_CITATION , inputs_description=_KWARGS_DESCRIPTION , features=datasets.Features( { '''predictions''': datasets.Value('''int32''' ), '''references''': datasets.Value('''int32''' ), } ) , reference_urls=[ '''https://scikit-learn.org/stable/modules/generated/sklearn.metrics.matthews_corrcoef.html''' ] , ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase=None ): """simple docstring""" return { "matthews_correlation": float(matthews_corrcoef(__lowerCAmelCase , __lowerCAmelCase , sample_weight=__lowerCAmelCase ) ), }
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"""simple docstring""" from typing import List from ...configuration_utils import PretrainedConfig from ...utils import logging lowerCamelCase_ = logging.get_logger(__name__) lowerCamelCase_ = { '''snap-research/efficientformer-l1-300''': ( '''https://huggingface.co/snap-research/efficientformer-l1-300/resolve/main/config.json''' ), } class UpperCamelCase_ (__A ): __magic_name__ = '''efficientformer''' def __init__( self : int , lowerCAmelCase_ : List[int] = [3, 2, 6, 4] , lowerCAmelCase_ : List[int] = [48, 96, 224, 448] , lowerCAmelCase_ : List[bool] = [True, True, True, True] , lowerCAmelCase_ : int = 448 , lowerCAmelCase_ : int = 32 , lowerCAmelCase_ : int = 4 , lowerCAmelCase_ : int = 7 , lowerCAmelCase_ : int = 5 , lowerCAmelCase_ : int = 8 , lowerCAmelCase_ : int = 4 , lowerCAmelCase_ : float = 0.0 , lowerCAmelCase_ : int = 16 , lowerCAmelCase_ : int = 3 , lowerCAmelCase_ : int = 3 , lowerCAmelCase_ : int = 3 , lowerCAmelCase_ : int = 2 , lowerCAmelCase_ : int = 1 , lowerCAmelCase_ : float = 0.0 , lowerCAmelCase_ : int = 1 , lowerCAmelCase_ : bool = True , lowerCAmelCase_ : bool = True , lowerCAmelCase_ : float = 1e-5 , lowerCAmelCase_ : str = "gelu" , lowerCAmelCase_ : float = 0.0_2 , lowerCAmelCase_ : float = 1e-12 , lowerCAmelCase_ : int = 224 , lowerCAmelCase_ : float = 1e-05 , **lowerCAmelCase_ : List[str] , ) -> None: super().__init__(**lowerCAmelCase_ ) UpperCAmelCase_ : int = hidden_act UpperCAmelCase_ : Optional[int] = hidden_dropout_prob UpperCAmelCase_ : Any = hidden_sizes UpperCAmelCase_ : Dict = num_hidden_layers UpperCAmelCase_ : List[Any] = num_attention_heads UpperCAmelCase_ : int = initializer_range UpperCAmelCase_ : Any = layer_norm_eps UpperCAmelCase_ : Any = patch_size UpperCAmelCase_ : Optional[int] = num_channels UpperCAmelCase_ : Any = depths UpperCAmelCase_ : Optional[Any] = mlp_expansion_ratio UpperCAmelCase_ : Tuple = downsamples UpperCAmelCase_ : List[Any] = dim UpperCAmelCase_ : Tuple = key_dim UpperCAmelCase_ : Tuple = attention_ratio UpperCAmelCase_ : Any = resolution UpperCAmelCase_ : Any = pool_size UpperCAmelCase_ : str = downsample_patch_size UpperCAmelCase_ : Optional[Any] = downsample_stride UpperCAmelCase_ : Tuple = downsample_pad UpperCAmelCase_ : Optional[Any] = drop_path_rate UpperCAmelCase_ : List[str] = num_metaad_blocks UpperCAmelCase_ : Optional[Any] = distillation UpperCAmelCase_ : Optional[Any] = use_layer_scale UpperCAmelCase_ : Dict = layer_scale_init_value UpperCAmelCase_ : Any = image_size UpperCAmelCase_ : Optional[Any] = batch_norm_eps
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from __future__ import annotations def __lowercase ( snake_case, snake_case ): """simple docstring""" print(f'''Vertex\tShortest Distance from vertex {src}''' ) for i, d in enumerate(snake_case ): print(f'''{i}\t\t{d}''' ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" for j in range(snake_case ): __magic_name__ , __magic_name__ , __magic_name__ :Tuple = (graph[j][k] for k in ['''src''', '''dst''', '''weight''']) if distance[u] != float('''inf''' ) and distance[u] + w < distance[v]: return True return False def __lowercase ( snake_case, snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :List[Any] = [float('''inf''' )] * vertex_count __magic_name__ :Tuple = 0.0 for _ in range(vertex_count - 1 ): for j in range(snake_case ): __magic_name__ , __magic_name__ , __magic_name__ :Dict = (graph[j][k] for k in ['''src''', '''dst''', '''weight''']) if distance[u] != float('''inf''' ) and distance[u] + w < distance[v]: __magic_name__ :Tuple = distance[u] + w __magic_name__ :Tuple = check_negative_cycle(snake_case, snake_case, snake_case ) if negative_cycle_exists: raise Exception('''Negative cycle found''' ) return distance if __name__ == "__main__": import doctest doctest.testmod() SCREAMING_SNAKE_CASE__ : Tuple = int(input("""Enter number of vertices: """).strip()) SCREAMING_SNAKE_CASE__ : Any = int(input("""Enter number of edges: """).strip()) SCREAMING_SNAKE_CASE__ : list[dict[str, int]] = [{} for _ in range(E)] for i in range(E): print("""Edge """, i + 1) SCREAMING_SNAKE_CASE__ , SCREAMING_SNAKE_CASE__ , SCREAMING_SNAKE_CASE__ : Dict = ( int(x) for x in input("""Enter source, destination, weight: """).strip().split(""" """) ) SCREAMING_SNAKE_CASE__ : Dict = {"""src""": src, """dst""": dest, """weight""": weight} SCREAMING_SNAKE_CASE__ : List[Any] = int(input("""\nEnter shortest path source:""").strip()) SCREAMING_SNAKE_CASE__ : List[str] = bellman_ford(graph, V, E, source) print_distance(shortest_distance, 0)
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"""simple docstring""" from ... import PretrainedConfig __lowerCamelCase = { 'sijunhe/nezha-cn-base': 'https://huggingface.co/sijunhe/nezha-cn-base/resolve/main/config.json', } class __A ( SCREAMING_SNAKE_CASE_ ): UpperCAmelCase__ = NEZHA_PRETRAINED_CONFIG_ARCHIVE_MAP UpperCAmelCase__ = "nezha" def __init__( self : Optional[Any] , __snake_case : Union[str, Any]=2_1_1_2_8 , __snake_case : Optional[int]=7_6_8 , __snake_case : Dict=1_2 , __snake_case : Union[str, Any]=1_2 , __snake_case : Tuple=3_0_7_2 , __snake_case : List[str]="gelu" , __snake_case : Union[str, Any]=0.1 , __snake_case : List[Any]=0.1 , __snake_case : Tuple=5_1_2 , __snake_case : str=6_4 , __snake_case : Optional[Any]=2 , __snake_case : List[Any]=0.02 , __snake_case : List[str]=1E-12 , __snake_case : List[Any]=0.1 , __snake_case : Optional[int]=0 , __snake_case : Any=2 , __snake_case : int=3 , __snake_case : Any=True , **__snake_case : Tuple , ) -> List[Any]: super().__init__(pad_token_id=__snake_case , bos_token_id=__snake_case , eos_token_id=__snake_case , **__snake_case ) __magic_name__: List[str] = vocab_size __magic_name__: Optional[int] = hidden_size __magic_name__: Optional[Any] = num_hidden_layers __magic_name__: Union[str, Any] = num_attention_heads __magic_name__: str = hidden_act __magic_name__: Optional[int] = intermediate_size __magic_name__: Dict = hidden_dropout_prob __magic_name__: Dict = attention_probs_dropout_prob __magic_name__: List[Any] = max_position_embeddings __magic_name__: Any = max_relative_position __magic_name__: Tuple = type_vocab_size __magic_name__: Optional[Any] = initializer_range __magic_name__: str = layer_norm_eps __magic_name__: Tuple = classifier_dropout __magic_name__: Tuple = use_cache
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from __future__ import annotations import unittest from transformers import RoFormerConfig, is_tf_available from transformers.testing_utils import require_tf, slow from ...test_configuration_common import ConfigTester from ...test_modeling_tf_common import TFModelTesterMixin, ids_tensor, random_attention_mask from ...test_pipeline_mixin import PipelineTesterMixin if is_tf_available(): import tensorflow as tf from transformers import ( TFRoFormerForCausalLM, TFRoFormerForMaskedLM, TFRoFormerForMultipleChoice, TFRoFormerForQuestionAnswering, TFRoFormerForSequenceClassification, TFRoFormerForTokenClassification, TFRoFormerModel, ) from transformers.models.roformer.modeling_tf_roformer import ( TFRoFormerSelfAttention, TFRoFormerSinusoidalPositionalEmbedding, ) class lowerCamelCase_ : def __init__( self , __lowerCAmelCase , __lowerCAmelCase=1_3 , __lowerCAmelCase=7 , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=9_9 , __lowerCAmelCase=3_2 , __lowerCAmelCase=2 , __lowerCAmelCase=4 , __lowerCAmelCase=3_7 , __lowerCAmelCase="gelu" , __lowerCAmelCase=0.1 , __lowerCAmelCase=0.1 , __lowerCAmelCase=5_1_2 , __lowerCAmelCase=1_6 , __lowerCAmelCase=2 , __lowerCAmelCase=0.02 , __lowerCAmelCase=3 , __lowerCAmelCase=4 , __lowerCAmelCase=None , ): """simple docstring""" __magic_name__ :Optional[int] = parent __magic_name__ :List[Any] = 1_3 __magic_name__ :Union[str, Any] = 7 __magic_name__ :Optional[Any] = True __magic_name__ :Tuple = True __magic_name__ :List[str] = True __magic_name__ :List[Any] = True __magic_name__ :int = 9_9 __magic_name__ :Any = 3_2 __magic_name__ :Union[str, Any] = 2 __magic_name__ :List[str] = 4 __magic_name__ :List[Any] = 3_7 __magic_name__ :Tuple = '''gelu''' __magic_name__ :Any = 0.1 __magic_name__ :str = 0.1 __magic_name__ :List[str] = 5_1_2 __magic_name__ :int = 1_6 __magic_name__ :Any = 2 __magic_name__ :List[Any] = 0.02 __magic_name__ :Optional[Any] = 3 __magic_name__ :Tuple = 4 __magic_name__ :Optional[Any] = None def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = ids_tensor([self.batch_size, self.seq_length] , self.vocab_size ) __magic_name__ :str = None if self.use_input_mask: __magic_name__ :Optional[int] = random_attention_mask([self.batch_size, self.seq_length] ) __magic_name__ :str = None if self.use_token_type_ids: __magic_name__ :List[Any] = ids_tensor([self.batch_size, self.seq_length] , self.type_vocab_size ) __magic_name__ :Union[str, Any] = None __magic_name__ :Tuple = None __magic_name__ :str = None if self.use_labels: __magic_name__ :List[Any] = ids_tensor([self.batch_size] , self.type_sequence_label_size ) __magic_name__ :List[Any] = ids_tensor([self.batch_size, self.seq_length] , self.num_labels ) __magic_name__ :List[Any] = ids_tensor([self.batch_size] , self.num_choices ) __magic_name__ :str = RoFormerConfig( vocab_size=self.vocab_size , hidden_size=self.hidden_size , num_hidden_layers=self.num_hidden_layers , num_attention_heads=self.num_attention_heads , intermediate_size=self.intermediate_size , hidden_act=self.hidden_act , hidden_dropout_prob=self.hidden_dropout_prob , attention_probs_dropout_prob=self.attention_probs_dropout_prob , max_position_embeddings=self.max_position_embeddings , type_vocab_size=self.type_vocab_size , initializer_range=self.initializer_range , return_dict=__lowerCAmelCase , ) return config, input_ids, token_type_ids, input_mask, sequence_labels, token_labels, choice_labels def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :int = TFRoFormerModel(config=__lowerCAmelCase ) __magic_name__ :Optional[Any] = {'''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids} __magic_name__ :List[str] = [input_ids, input_mask] __magic_name__ :Any = model(__lowerCAmelCase ) __magic_name__ :List[str] = model(__lowerCAmelCase ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, self.seq_length, self.hidden_size) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Dict = True __magic_name__ :List[str] = TFRoFormerForCausalLM(config=__lowerCAmelCase ) __magic_name__ :str = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :Optional[Any] = model(__lowerCAmelCase )['''logits'''] self.parent.assertListEqual( list(prediction_scores.numpy().shape ) , [self.batch_size, self.seq_length, self.vocab_size] ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[Any] = TFRoFormerForMaskedLM(config=__lowerCAmelCase ) __magic_name__ :Any = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :Dict = model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :int = self.num_labels __magic_name__ :str = TFRoFormerForSequenceClassification(config=__lowerCAmelCase ) __magic_name__ :Optional[int] = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :str = model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.num_labels) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Union[str, Any] = self.num_choices __magic_name__ :Tuple = TFRoFormerForMultipleChoice(config=__lowerCAmelCase ) __magic_name__ :int = tf.tile(tf.expand_dims(__lowerCAmelCase , 1 ) , (1, self.num_choices, 1) ) __magic_name__ :Optional[Any] = tf.tile(tf.expand_dims(__lowerCAmelCase , 1 ) , (1, self.num_choices, 1) ) __magic_name__ :Union[str, Any] = tf.tile(tf.expand_dims(__lowerCAmelCase , 1 ) , (1, self.num_choices, 1) ) __magic_name__ :str = { '''input_ids''': multiple_choice_inputs_ids, '''attention_mask''': multiple_choice_input_mask, '''token_type_ids''': multiple_choice_token_type_ids, } __magic_name__ :Tuple = model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.num_choices) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[int] = self.num_labels __magic_name__ :Any = TFRoFormerForTokenClassification(config=__lowerCAmelCase ) __magic_name__ :str = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :Dict = model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.num_labels) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :List[str] = TFRoFormerForQuestionAnswering(config=__lowerCAmelCase ) __magic_name__ :List[str] = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :Union[str, Any] = model(__lowerCAmelCase ) self.parent.assertEqual(result.start_logits.shape , (self.batch_size, self.seq_length) ) self.parent.assertEqual(result.end_logits.shape , (self.batch_size, self.seq_length) ) def A ( self ): """simple docstring""" __magic_name__ :Union[str, Any] = self.prepare_config_and_inputs() ( ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ) :Union[str, Any] = config_and_inputs __magic_name__ :Optional[Any] = {'''input_ids''': input_ids, '''token_type_ids''': token_type_ids, '''attention_mask''': input_mask} return config, inputs_dict @require_tf class lowerCamelCase_ ( lowerCamelCase , lowerCamelCase , unittest.TestCase ): a__ = ( ( TFRoFormerModel, TFRoFormerForCausalLM, TFRoFormerForMaskedLM, TFRoFormerForQuestionAnswering, TFRoFormerForSequenceClassification, TFRoFormerForTokenClassification, TFRoFormerForMultipleChoice, ) if is_tf_available() else () ) a__ = ( { '''feature-extraction''': TFRoFormerModel, '''fill-mask''': TFRoFormerForMaskedLM, '''question-answering''': TFRoFormerForQuestionAnswering, '''text-classification''': TFRoFormerForSequenceClassification, '''text-generation''': TFRoFormerForCausalLM, '''token-classification''': TFRoFormerForTokenClassification, '''zero-shot''': TFRoFormerForSequenceClassification, } if is_tf_available() else {} ) a__ = False a__ = False def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" if pipeline_test_casse_name == "TextGenerationPipelineTests": return True return False def A ( self ): """simple docstring""" __magic_name__ :List[str] = TFRoFormerModelTester(self ) __magic_name__ :List[str] = ConfigTester(self , config_class=__lowerCAmelCase , hidden_size=3_7 ) def A ( self ): """simple docstring""" self.config_tester.run_common_tests() def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_model(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Union[str, Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_masked_lm(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Tuple = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_lm_head(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_multiple_choice(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Tuple = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_question_answering(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_sequence_classification(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_token_classification(*__lowerCAmelCase ) @slow def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = TFRoFormerModel.from_pretrained('''junnyu/roformer_chinese_base''' ) self.assertIsNotNone(__lowerCAmelCase ) @require_tf class lowerCamelCase_ ( unittest.TestCase ): @slow def A ( self ): """simple docstring""" __magic_name__ :int = TFRoFormerForMaskedLM.from_pretrained('''junnyu/roformer_chinese_base''' ) __magic_name__ :Dict = tf.constant([[0, 1, 2, 3, 4, 5]] ) __magic_name__ :Optional[Any] = model(__lowerCAmelCase )[0] # TODO Replace vocab size __magic_name__ :int = 5_0_0_0_0 __magic_name__ :Tuple = [1, 6, vocab_size] self.assertEqual(output.shape , __lowerCAmelCase ) print(output[:, :3, :3] ) # TODO Replace values below with what was printed above. __magic_name__ :Any = tf.constant( [ [ [-0.12053341, -1.0264901, 0.29221946], [-1.5133783, 0.197433, 0.15190607], [-5.0135403, -3.900256, -0.84038764], ] ] ) tf.debugging.assert_near(output[:, :3, :3] , __lowerCAmelCase , atol=1E-4 ) @require_tf class lowerCamelCase_ ( unittest.TestCase ): a__ = 1e-4 def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = tf.constant([[4, 1_0]] ) __magic_name__ :Optional[int] = TFRoFormerSinusoidalPositionalEmbedding(num_positions=6 , embedding_dim=6 ) __magic_name__ :Optional[Any] = emba(input_ids.shape ) __magic_name__ :List[str] = tf.constant( [[0.0000, 0.0000, 0.0000, 1.0000, 1.0000, 1.0000], [0.8415, 0.0464, 0.0022, 0.5403, 0.9989, 1.0000]] ) tf.debugging.assert_near(__lowerCAmelCase , __lowerCAmelCase , atol=self.tolerance ) def A ( self ): """simple docstring""" __magic_name__ :Tuple = tf.constant( [ [0.0000, 0.0000, 0.0000, 0.0000, 0.0000], [0.8415, 0.8219, 0.8020, 0.7819, 0.7617], [0.9093, 0.9364, 0.9581, 0.9749, 0.9870], ] ) __magic_name__ :Union[str, Any] = TFRoFormerSinusoidalPositionalEmbedding(num_positions=5_1_2 , embedding_dim=5_1_2 ) emba([2, 1_6, 5_1_2] ) __magic_name__ :Optional[int] = emba.weight[:3, :5] tf.debugging.assert_near(__lowerCAmelCase , __lowerCAmelCase , atol=self.tolerance ) @require_tf class lowerCamelCase_ ( unittest.TestCase ): a__ = 1e-4 def A ( self ): """simple docstring""" # 2,12,16,64 __magic_name__ :int = tf.reshape(tf.range(2 * 1_2 * 1_6 * 6_4 , dtype=tf.floataa ) , shape=(2, 1_2, 1_6, 6_4) ) / 1_0_0 __magic_name__ :str = -tf.reshape(tf.range(2 * 1_2 * 1_6 * 6_4 , dtype=tf.floataa ) , shape=(2, 1_2, 1_6, 6_4) ) / 1_0_0 __magic_name__ :int = TFRoFormerSinusoidalPositionalEmbedding(num_positions=3_2 , embedding_dim=6_4 ) __magic_name__ :List[str] = embed_positions([2, 1_6, 7_6_8] )[None, None, :, :] __magic_name__ , __magic_name__ :Union[str, Any] = TFRoFormerSelfAttention.apply_rotary_position_embeddings( __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :Tuple = tf.constant( [ [0.0000, 0.0100, 0.0200, 0.0300, 0.0400, 0.0500, 0.0600, 0.0700], [-0.2012, 0.8897, 0.0263, 0.9401, 0.2074, 0.9463, 0.3481, 0.9343], [-1.7057, 0.6271, -1.2145, 1.3897, -0.6303, 1.7647, -0.1173, 1.8985], [-2.1731, -1.6397, -2.7358, 0.2854, -2.1840, 1.7183, -1.3018, 2.4871], [0.2717, -3.6173, -2.9206, -2.1988, -3.6638, 0.3858, -2.9155, 2.2980], [3.9859, -2.1580, -0.7984, -4.4904, -4.1181, -2.0252, -4.4782, 1.1253], ] ) __magic_name__ :List[str] = tf.constant( [ [0.0000, -0.0100, -0.0200, -0.0300, -0.0400, -0.0500, -0.0600, -0.0700], [0.2012, -0.8897, -0.0263, -0.9401, -0.2074, -0.9463, -0.3481, -0.9343], [1.7057, -0.6271, 1.2145, -1.3897, 0.6303, -1.7647, 0.1173, -1.8985], [2.1731, 1.6397, 2.7358, -0.2854, 2.1840, -1.7183, 1.3018, -2.4871], [-0.2717, 3.6173, 2.9206, 2.1988, 3.6638, -0.3858, 2.9155, -2.2980], [-3.9859, 2.1580, 0.7984, 4.4904, 4.1181, 2.0252, 4.4782, -1.1253], ] ) tf.debugging.assert_near(query_layer[0, 0, :6, :8] , __lowerCAmelCase , atol=self.tolerance ) tf.debugging.assert_near(key_layer[0, 0, :6, :8] , __lowerCAmelCase , atol=self.tolerance )
0
0
import json import os from typing import Dict, List, Optional, Tuple from ...tokenization_utils import PreTrainedTokenizer from ...utils import logging __a = logging.get_logger(__name__) __a = { 'vocab_file': 'vocab.json', 'tokenizer_config_file': 'tokenizer_config.json', 'merges_file': 'merges.txt', } __a = { 'vocab_file': { 'facebook/s2t-wav2vec2-large-en-de': ( 'https://huggingface.co/facebook/s2t-wav2vec2-large-en-de/resolve/main/vocab.json' ), }, 'tokenizer_config_file': { 'facebook/s2t-wav2vec2-large-en-de': ( 'https://huggingface.co/facebook/s2t-wav2vec2-large-en-de/resolve/main/tokenizer_config.json' ), }, 'merges_file': { 'facebook/s2t-wav2vec2-large-en-de': ( 'https://huggingface.co/facebook/s2t-wav2vec2-large-en-de/resolve/main/merges.txt' ), }, } __a = '</w>' __a = '@@ ' def a ( snake_case__: Dict ): '''simple docstring''' lowercase_ = set() lowercase_ = word[0] for char in word[1:]: pairs.add((prev_char, char) ) lowercase_ = char return pairs # Speech2Text2 has no max input length __a = {'facebook/s2t-wav2vec2-large-en-de': 1_0_2_4} class lowercase__( UpperCAmelCase ): """simple docstring""" a :int = VOCAB_FILES_NAMES a :Optional[int] = PRETRAINED_VOCAB_FILES_MAP a :List[str] = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES a :Tuple = ['input_ids', 'attention_mask'] def __init__( self : List[str] , SCREAMING_SNAKE_CASE_ : str , SCREAMING_SNAKE_CASE_ : List[Any]="<s>" , SCREAMING_SNAKE_CASE_ : Tuple="<pad>" , SCREAMING_SNAKE_CASE_ : int="</s>" , SCREAMING_SNAKE_CASE_ : int="<unk>" , SCREAMING_SNAKE_CASE_ : Optional[Any]=False , SCREAMING_SNAKE_CASE_ : Optional[Any]=None , **SCREAMING_SNAKE_CASE_ : str , ) -> Optional[int]: super().__init__( unk_token=SCREAMING_SNAKE_CASE_ , bos_token=SCREAMING_SNAKE_CASE_ , eos_token=SCREAMING_SNAKE_CASE_ , pad_token=SCREAMING_SNAKE_CASE_ , do_lower_case=SCREAMING_SNAKE_CASE_ , **SCREAMING_SNAKE_CASE_ , ) lowercase_ = do_lower_case with open(SCREAMING_SNAKE_CASE_ , encoding='''utf-8''' ) as vocab_handle: lowercase_ = json.load(SCREAMING_SNAKE_CASE_ ) lowercase_ = {v: k for k, v in self.encoder.items()} if merges_file is None: logger.info(f'''No merges files provided. {self.__class__.__name__} can only be used for decoding.''' ) lowercase_ = None lowercase_ = None else: with open(SCREAMING_SNAKE_CASE_ , encoding='''utf-8''' ) as merges_handle: lowercase_ = merges_handle.read().split('''\n''' )[:-1] lowercase_ = [tuple(merge.split()[:2] ) for merge in merges] lowercase_ = dict(zip(SCREAMING_SNAKE_CASE_ , range(len(SCREAMING_SNAKE_CASE_ ) ) ) ) lowercase_ = {} @property def _lowercase ( self : Any ) -> int: return len(self.decoder ) def _lowercase ( self : List[str] ) -> Dict: return dict(self.encoder , **self.added_tokens_encoder ) def _lowercase ( self : List[str] , SCREAMING_SNAKE_CASE_ : Any ) -> int: lowercase_ = tuple(token[:-1] ) + (token[-1] + BPE_TOKEN_MERGES,) if token in self.cache: return self.cache[token] lowercase_ = get_pairs(SCREAMING_SNAKE_CASE_ ) if not pairs: return token while True: lowercase_ = min(SCREAMING_SNAKE_CASE_ , key=lambda SCREAMING_SNAKE_CASE_ : self.bpe_ranks.get(SCREAMING_SNAKE_CASE_ , float('''inf''' ) ) ) if bigram not in self.bpe_ranks: break lowercase_ , lowercase_ = bigram lowercase_ = [] lowercase_ = 0 while i < len(SCREAMING_SNAKE_CASE_ ): try: lowercase_ = word.index(SCREAMING_SNAKE_CASE_ , SCREAMING_SNAKE_CASE_ ) except ValueError: new_word.extend(word[i:] ) break else: new_word.extend(word[i:j] ) lowercase_ = j if word[i] == first and i < len(SCREAMING_SNAKE_CASE_ ) - 1 and word[i + 1] == second: new_word.append(first + second ) i += 2 else: new_word.append(word[i] ) i += 1 lowercase_ = tuple(SCREAMING_SNAKE_CASE_ ) lowercase_ = new_word if len(SCREAMING_SNAKE_CASE_ ) == 1: break else: lowercase_ = get_pairs(SCREAMING_SNAKE_CASE_ ) lowercase_ = ''' '''.join(SCREAMING_SNAKE_CASE_ ) if word == "\n " + BPE_TOKEN_MERGES: lowercase_ = '''\n''' + BPE_TOKEN_MERGES if word.endswith(SCREAMING_SNAKE_CASE_ ): lowercase_ = word.replace(SCREAMING_SNAKE_CASE_ , '''''' ) lowercase_ = word.replace(''' ''' , SCREAMING_SNAKE_CASE_ ) lowercase_ = word return word def _lowercase ( self : Optional[Any] , SCREAMING_SNAKE_CASE_ : List[Any] ) -> Tuple: if self.bpe_ranks is None: raise ValueError( '''This tokenizer was instantiated without a `merges.txt` file, so''' ''' that it can only be used for decoding, not for encoding.''' '''Make sure to provide `merges.txt` file at instantiation to enable ''' '''encoding.''' ) if self.do_lower_case: lowercase_ = text.lower() lowercase_ = text.split() lowercase_ = [] for token in text: if token: split_tokens.extend(list(self.bpe(SCREAMING_SNAKE_CASE_ ).split(''' ''' ) ) ) return split_tokens def _lowercase ( self : Tuple , SCREAMING_SNAKE_CASE_ : str ) -> int: return self.encoder.get(SCREAMING_SNAKE_CASE_ , self.encoder.get(self.unk_token ) ) def _lowercase ( self : List[str] , SCREAMING_SNAKE_CASE_ : int ) -> str: lowercase_ = self.decoder.get(SCREAMING_SNAKE_CASE_ , self.unk_token ) return result def _lowercase ( self : Any , SCREAMING_SNAKE_CASE_ : List[str] ) -> str: lowercase_ = ''' '''.join(SCREAMING_SNAKE_CASE_ ) # make sure @@ tokens are concatenated lowercase_ = ''''''.join(string.split(SCREAMING_SNAKE_CASE_ ) ) return string def _lowercase ( self : Any , SCREAMING_SNAKE_CASE_ : str , SCREAMING_SNAKE_CASE_ : Optional[str] = None ) -> Tuple[str]: if not os.path.isdir(SCREAMING_SNAKE_CASE_ ): logger.error(f'''Vocabulary path ({save_directory}) should be a directory''' ) return lowercase_ = os.path.join( SCREAMING_SNAKE_CASE_ , (filename_prefix + '''-''' if filename_prefix else '''''') + VOCAB_FILES_NAMES['''vocab_file'''] ) lowercase_ = os.path.join( SCREAMING_SNAKE_CASE_ , (filename_prefix + '''-''' if filename_prefix else '''''') + VOCAB_FILES_NAMES['''merges_file'''] ) with open(SCREAMING_SNAKE_CASE_ , '''w''' , encoding='''utf-8''' ) as f: f.write(json.dumps(self.encoder , indent=2 , sort_keys=SCREAMING_SNAKE_CASE_ , ensure_ascii=SCREAMING_SNAKE_CASE_ ) + '''\n''' ) lowercase_ = 0 if self.bpe_ranks is None: return (vocab_file,) with open(SCREAMING_SNAKE_CASE_ , '''w''' , encoding='''utf-8''' ) as writer: for bpe_tokens, token_index in sorted(self.bpe_ranks.items() , key=lambda SCREAMING_SNAKE_CASE_ : kv[1] ): if index != token_index: logger.warning( f'''Saving vocabulary to {merges_file}: BPE merge indices are not consecutive.''' ''' Please check that the tokenizer is not corrupted!''' ) lowercase_ = token_index writer.write(''' '''.join(SCREAMING_SNAKE_CASE_ ) + '''\n''' ) index += 1 return (vocab_file, merges_file)
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from typing import TYPE_CHECKING from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tokenizers_available SCREAMING_SNAKE_CASE__ : Optional[int] = {"""tokenization_herbert""": ["""HerbertTokenizer"""]} try: if not is_tokenizers_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: SCREAMING_SNAKE_CASE__ : Optional[Any] = ["""HerbertTokenizerFast"""] if TYPE_CHECKING: from .tokenization_herbert import HerbertTokenizer try: if not is_tokenizers_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .tokenization_herbert_fast import HerbertTokenizerFast else: import sys SCREAMING_SNAKE_CASE__ : Union[str, Any] = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
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0
'''simple docstring''' import math import time from transformers import Trainer, is_torch_tpu_available from transformers.trainer_utils import PredictionOutput, speed_metrics if is_torch_tpu_available(check_device=False): import torch_xla.core.xla_model as xm import torch_xla.debug.metrics as met class __lowerCAmelCase ( __magic_name__ ): """simple docstring""" def __init__( self : Optional[Any] , *lowerCAmelCase__ : Union[str, Any] , lowerCAmelCase__ : Any=None , lowerCAmelCase__ : Tuple=None , **lowerCAmelCase__ : Any ) -> List[str]: '''simple docstring''' super().__init__(*lowerCAmelCase__ , **lowerCAmelCase__ ) _UpperCamelCase = eval_examples _UpperCamelCase = post_process_function def snake_case__ ( self : List[Any] , lowerCAmelCase__ : Tuple=None , lowerCAmelCase__ : Any=None , lowerCAmelCase__ : str=None , lowerCAmelCase__ : str = "eval" ) -> Union[str, Any]: '''simple docstring''' _UpperCamelCase = self.eval_dataset if eval_dataset is None else eval_dataset _UpperCamelCase = self.get_eval_dataloader(lowerCAmelCase__ ) _UpperCamelCase = self.eval_examples if eval_examples is None else eval_examples # Temporarily disable metric computation, we will do it in the loop here. _UpperCamelCase = self.compute_metrics _UpperCamelCase = None _UpperCamelCase = self.prediction_loop if self.args.use_legacy_prediction_loop else self.evaluation_loop _UpperCamelCase = time.time() try: _UpperCamelCase = eval_loop( lowerCAmelCase__ , description='''Evaluation''' , prediction_loss_only=True if compute_metrics is None else None , ignore_keys=lowerCAmelCase__ , metric_key_prefix=lowerCAmelCase__ , ) finally: _UpperCamelCase = compute_metrics _UpperCamelCase = self.args.eval_batch_size * self.args.world_size if f"""{metric_key_prefix}_jit_compilation_time""" in output.metrics: start_time += output.metrics[f"""{metric_key_prefix}_jit_compilation_time"""] output.metrics.update( speed_metrics( lowerCAmelCase__ , lowerCAmelCase__ , num_samples=output.num_samples , num_steps=math.ceil(output.num_samples / total_batch_size ) , ) ) if self.post_process_function is not None and self.compute_metrics is not None and self.args.should_save: # Only the main node write the results by default _UpperCamelCase = self.post_process_function(lowerCAmelCase__ , lowerCAmelCase__ , output.predictions ) _UpperCamelCase = self.compute_metrics(lowerCAmelCase__ ) # Prefix all keys with metric_key_prefix + '_' for key in list(metrics.keys() ): if not key.startswith(f"""{metric_key_prefix}_""" ): _UpperCamelCase = metrics.pop(lowerCAmelCase__ ) metrics.update(output.metrics ) else: _UpperCamelCase = output.metrics if self.args.should_log: # Only the main node log the results by default self.log(lowerCAmelCase__ ) if self.args.tpu_metrics_debug or self.args.debug: # tpu-comment: Logging debug metrics for PyTorch/XLA (compile, execute times, ops, etc.) xm.master_print(met.metrics_report() ) _UpperCamelCase = self.callback_handler.on_evaluate(self.args , self.state , self.control , lowerCAmelCase__ ) return metrics def snake_case__ ( self : Dict , lowerCAmelCase__ : Optional[Any] , lowerCAmelCase__ : Optional[int] , lowerCAmelCase__ : int=None , lowerCAmelCase__ : str = "test" ) -> str: '''simple docstring''' _UpperCamelCase = self.get_test_dataloader(lowerCAmelCase__ ) # Temporarily disable metric computation, we will do it in the loop here. _UpperCamelCase = self.compute_metrics _UpperCamelCase = None _UpperCamelCase = self.prediction_loop if self.args.use_legacy_prediction_loop else self.evaluation_loop _UpperCamelCase = time.time() try: _UpperCamelCase = eval_loop( lowerCAmelCase__ , description='''Prediction''' , prediction_loss_only=True if compute_metrics is None else None , ignore_keys=lowerCAmelCase__ , metric_key_prefix=lowerCAmelCase__ , ) finally: _UpperCamelCase = compute_metrics _UpperCamelCase = self.args.eval_batch_size * self.args.world_size if f"""{metric_key_prefix}_jit_compilation_time""" in output.metrics: start_time += output.metrics[f"""{metric_key_prefix}_jit_compilation_time"""] output.metrics.update( speed_metrics( lowerCAmelCase__ , lowerCAmelCase__ , num_samples=output.num_samples , num_steps=math.ceil(output.num_samples / total_batch_size ) , ) ) if self.post_process_function is None or self.compute_metrics is None: return output _UpperCamelCase = self.post_process_function(lowerCAmelCase__ , lowerCAmelCase__ , output.predictions , '''predict''' ) _UpperCamelCase = self.compute_metrics(lowerCAmelCase__ ) # Prefix all keys with metric_key_prefix + '_' for key in list(metrics.keys() ): if not key.startswith(f"""{metric_key_prefix}_""" ): _UpperCamelCase = metrics.pop(lowerCAmelCase__ ) metrics.update(output.metrics ) return PredictionOutput(predictions=predictions.predictions , label_ids=predictions.label_ids , metrics=lowerCAmelCase__ )
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import argparse import gdown import numpy as np import torch from huggingface_hub import hf_hub_download from transformers import ( CLIPTokenizer, CLIPTokenizerFast, VideoMAEImageProcessor, XCLIPConfig, XCLIPModel, XCLIPProcessor, XCLIPTextConfig, XCLIPVisionConfig, ) def __lowercase ( snake_case, snake_case ): """simple docstring""" __magic_name__ :str = XCLIPTextConfig() # derive patch size from model name __magic_name__ :Union[str, Any] = model_name.find('''patch''' ) __magic_name__ :Optional[Any] = int(model_name[start_idx + len('''patch''' ) : start_idx + len('''patch''' ) + 2] ) __magic_name__ :int = XCLIPVisionConfig(patch_size=snake_case, num_frames=snake_case ) if "large" in model_name: __magic_name__ :Dict = 7_6_8 __magic_name__ :int = 3_0_7_2 __magic_name__ :List[Any] = 1_2 __magic_name__ :str = 1_0_2_4 __magic_name__ :Any = 4_0_9_6 __magic_name__ :Optional[Any] = 1_6 __magic_name__ :Union[str, Any] = 2_4 __magic_name__ :Union[str, Any] = 7_6_8 __magic_name__ :Tuple = 3_0_7_2 if model_name == "xclip-large-patch14-16-frames": __magic_name__ :List[str] = 3_3_6 __magic_name__ :Any = XCLIPConfig.from_text_vision_configs(snake_case, snake_case ) if "large" in model_name: __magic_name__ :str = 7_6_8 return config def __lowercase ( snake_case ): """simple docstring""" if name == "token_embedding.weight": __magic_name__ :Any = name.replace('''token_embedding.weight''', '''text_model.embeddings.token_embedding.weight''' ) if name == "positional_embedding": __magic_name__ :Any = name.replace('''positional_embedding''', '''text_model.embeddings.position_embedding.weight''' ) if "ln_1" in name: __magic_name__ :List[str] = name.replace('''ln_1''', '''layer_norm1''' ) if "ln_2" in name: __magic_name__ :str = name.replace('''ln_2''', '''layer_norm2''' ) if "c_fc" in name: __magic_name__ :List[Any] = name.replace('''c_fc''', '''fc1''' ) if "c_proj" in name: __magic_name__ :Any = name.replace('''c_proj''', '''fc2''' ) if name.startswith('''transformer.resblocks''' ): __magic_name__ :Any = name.replace('''transformer.resblocks''', '''text_model.encoder.layers''' ) if "attn.out_proj" in name and "message" not in name: __magic_name__ :Union[str, Any] = name.replace('''attn.out_proj''', '''self_attn.out_proj''' ) if "ln_final" in name: __magic_name__ :Tuple = name.replace('''ln_final''', '''text_model.final_layer_norm''' ) # visual encoder if name == "visual.class_embedding": __magic_name__ :List[Any] = name.replace('''visual.class_embedding''', '''vision_model.embeddings.class_embedding''' ) if name == "visual.positional_embedding": __magic_name__ :Any = name.replace('''visual.positional_embedding''', '''vision_model.embeddings.position_embedding.weight''' ) if name.startswith('''visual.transformer.resblocks''' ): __magic_name__ :Union[str, Any] = name.replace('''visual.transformer.resblocks''', '''vision_model.encoder.layers''' ) if "visual.conv1" in name: __magic_name__ :Tuple = name.replace('''visual.conv1''', '''vision_model.embeddings.patch_embedding''' ) if "visual.ln_pre" in name: __magic_name__ :Tuple = name.replace('''visual.ln_pre''', '''vision_model.pre_layernorm''' ) if "visual.ln_post" in name: __magic_name__ :Optional[Any] = name.replace('''visual.ln_post''', '''vision_model.post_layernorm''' ) if "visual.proj" in name: __magic_name__ :Tuple = name.replace('''visual.proj''', '''visual_projection.weight''' ) if "text_projection" in name: __magic_name__ :int = name.replace('''text_projection''', '''text_projection.weight''' ) # things on top if "prompts_visual_proj" in name: __magic_name__ :int = name.replace('''prompts_visual_proj''', '''prompts_visual_projection''' ) if "prompts_visual_ln" in name: __magic_name__ :Dict = name.replace('''prompts_visual_ln''', '''prompts_visual_layernorm''' ) # mit if name == "mit.positional_embedding": __magic_name__ :List[Any] = name.replace('''positional''', '''position''' ) if name.startswith('''mit.resblocks''' ): __magic_name__ :Union[str, Any] = name.replace('''mit.resblocks''', '''mit.encoder.layers''' ) # prompts generator if name.startswith('''prompts_generator.norm''' ): __magic_name__ :str = name.replace('''prompts_generator.norm''', '''prompts_generator.layernorm''' ) return name def __lowercase ( snake_case, snake_case ): """simple docstring""" for key in orig_state_dict.copy().keys(): __magic_name__ :Any = orig_state_dict.pop(snake_case ) if "attn.in_proj" in key: __magic_name__ :str = key.split('''.''' ) if key.startswith('''visual''' ): __magic_name__ :List[Any] = key_split[3] __magic_name__ :List[Any] = config.vision_config.hidden_size if "message_attn" in key: if "weight" in key: __magic_name__ :List[Any] = val[ :dim, : ] __magic_name__ :List[str] = val[ dim : dim * 2, : ] __magic_name__ :List[str] = val[ -dim:, : ] else: __magic_name__ :str = val[ :dim ] __magic_name__ :Optional[int] = val[ dim : dim * 2 ] __magic_name__ :Any = val[ -dim: ] else: if "weight" in key: __magic_name__ :int = val[ :dim, : ] __magic_name__ :Union[str, Any] = val[ dim : dim * 2, : ] __magic_name__ :List[Any] = val[ -dim:, : ] else: __magic_name__ :Union[str, Any] = val[:dim] __magic_name__ :str = val[ dim : dim * 2 ] __magic_name__ :Dict = val[-dim:] elif key.startswith('''mit''' ): __magic_name__ :List[Any] = key_split[2] __magic_name__ :Any = config.vision_config.mit_hidden_size if "weight" in key: __magic_name__ :Union[str, Any] = val[:dim, :] __magic_name__ :Optional[int] = val[dim : dim * 2, :] __magic_name__ :int = val[-dim:, :] else: __magic_name__ :Tuple = val[:dim] __magic_name__ :Optional[int] = val[dim : dim * 2] __magic_name__ :Optional[int] = val[-dim:] else: __magic_name__ :Any = key_split[2] __magic_name__ :List[Any] = config.text_config.hidden_size if "weight" in key: __magic_name__ :Union[str, Any] = val[:dim, :] __magic_name__ :Tuple = val[ dim : dim * 2, : ] __magic_name__ :str = val[-dim:, :] else: __magic_name__ :int = val[:dim] __magic_name__ :Any = val[ dim : dim * 2 ] __magic_name__ :str = val[-dim:] else: __magic_name__ :Tuple = rename_key(snake_case ) if new_key_name in ["visual_projection.weight", "text_projection.weight"]: __magic_name__ :List[Any] = val.T __magic_name__ :Optional[Any] = val return orig_state_dict def __lowercase ( snake_case ): """simple docstring""" if num_frames == 8: __magic_name__ :Any = '''eating_spaghetti_8_frames.npy''' elif num_frames == 1_6: __magic_name__ :List[Any] = '''eating_spaghetti.npy''' elif num_frames == 3_2: __magic_name__ :Tuple = '''eating_spaghetti_32_frames.npy''' __magic_name__ :str = hf_hub_download( repo_id='''hf-internal-testing/spaghetti-video''', filename=snake_case, repo_type='''dataset''', ) __magic_name__ :List[Any] = np.load(snake_case ) return list(snake_case ) def __lowercase ( snake_case, snake_case=None, snake_case=False ): """simple docstring""" __magic_name__ :Union[str, Any] = { # fully supervised kinetics-400 checkpoints '''xclip-base-patch32''': '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k400_32_8.pth''', '''xclip-base-patch32-16-frames''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k400_32_16.pth''' ), '''xclip-base-patch16''': '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k400_16_8.pth''', '''xclip-base-patch16-16-frames''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k400_16_16.pth''' ), '''xclip-large-patch14''': '''https://drive.google.com/u/0/uc?id=1NUOImq0o5DlQTST17iIP3vG7DgmHQuCx&amp;export=download&amp;confirm=t&amp;uuid=b26caedc-88e2-473e-830a-9d158b653cdb''', '''xclip-large-patch14-16-frames''': '''https://drive.google.com/u/0/uc?id=1FOYgnJc097OJ4lGwtRCCydQyVPJEOH7d&amp;export=download&amp;confirm=t&amp;uuid=538fa810-e671-4050-b385-9a623f89804f''', # fully supervised kinetics-600 checkpoints '''xclip-base-patch16-kinetics-600''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k600_16_8.pth''' ), '''xclip-base-patch16-kinetics-600-16-frames''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k600_16_16.pth''' ), '''xclip-large-patch14-kinetics-600''': '''https://drive.google.com/u/0/uc?id=1FV8C1INuM91sLAN4ImjzePLIlpMSihwV&amp;export=download&amp;confirm=t&amp;uuid=141d4977-4a65-44ae-864f-4b0c19f838be''', # few shot '''xclip-base-patch16-hmdb-2-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_hmdb_2.pth''' ), '''xclip-base-patch16-hmdb-4-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_hmdb_4.pth''' ), '''xclip-base-patch16-hmdb-8-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_hmdb_8.pth''' ), '''xclip-base-patch16-hmdb-16-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_hmdb_16.pth''' ), '''xclip-base-patch16-ucf-2-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_ucf_2.pth''' ), '''xclip-base-patch16-ucf-4-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_ucf_4.pth''' ), '''xclip-base-patch16-ucf-8-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_ucf_8.pth''' ), '''xclip-base-patch16-ucf-16-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_ucf_16.pth''' ), # zero shot '''xclip-base-patch16-zero-shot''': '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/zero.pth''', } __magic_name__ :Optional[int] = model_to_url[model_name] __magic_name__ :List[str] = 8 if "16-frames" in model_name: __magic_name__ :List[Any] = 1_6 elif "shot" in model_name: __magic_name__ :Dict = 3_2 __magic_name__ :str = get_xclip_config(snake_case, snake_case ) __magic_name__ :List[Any] = XCLIPModel(snake_case ) model.eval() if "drive" in checkpoint_url: __magic_name__ :Any = '''pytorch_model.bin''' gdown.cached_download(snake_case, snake_case, quiet=snake_case ) __magic_name__ :Optional[Any] = torch.load(snake_case, map_location='''cpu''' )['''model'''] else: __magic_name__ :Optional[int] = torch.hub.load_state_dict_from_url(snake_case )['''model'''] __magic_name__ :List[str] = convert_state_dict(snake_case, snake_case ) __magic_name__ :List[Any] = XCLIPModel(snake_case ) __magic_name__ , __magic_name__ :Optional[Any] = model.load_state_dict(snake_case, strict=snake_case ) assert missing_keys == ["text_model.embeddings.position_ids", "vision_model.embeddings.position_ids"] model.eval() __magic_name__ :str = 3_3_6 if model_name == '''xclip-large-patch14-16-frames''' else 2_2_4 __magic_name__ :Optional[int] = VideoMAEImageProcessor(size=snake_case ) __magic_name__ :Optional[int] = CLIPTokenizer.from_pretrained('''openai/clip-vit-base-patch32''' ) __magic_name__ :Tuple = CLIPTokenizerFast.from_pretrained('''openai/clip-vit-base-patch32''' ) __magic_name__ :Optional[int] = XCLIPProcessor(image_processor=snake_case, tokenizer=snake_case ) __magic_name__ :List[Any] = prepare_video(snake_case ) __magic_name__ :str = processor( text=['''playing sports''', '''eating spaghetti''', '''go shopping'''], videos=snake_case, return_tensors='''pt''', padding=snake_case ) print('''Shape of pixel values:''', inputs.pixel_values.shape ) with torch.no_grad(): __magic_name__ :Tuple = model(**snake_case ) # Verify outputs __magic_name__ :Any = outputs.logits_per_video __magic_name__ :str = logits_per_video.softmax(dim=1 ) print('''Probs:''', snake_case ) # kinetics-400 if model_name == "xclip-base-patch32": __magic_name__ :Dict = torch.tensor([[0.0019, 0.9951, 0.0030]] ) elif model_name == "xclip-base-patch32-16-frames": __magic_name__ :str = torch.tensor([[7.0_9_9_9E-0_4, 9.9_8_8_3E-0_1, 4.5_5_8_0E-0_4]] ) elif model_name == "xclip-base-patch16": __magic_name__ :Tuple = torch.tensor([[0.0083, 0.9681, 0.0236]] ) elif model_name == "xclip-base-patch16-16-frames": __magic_name__ :Tuple = torch.tensor([[7.6_9_3_7E-0_4, 9.9_7_2_8E-0_1, 1.9_4_7_3E-0_3]] ) elif model_name == "xclip-large-patch14": __magic_name__ :str = torch.tensor([[0.0062, 0.9864, 0.0075]] ) elif model_name == "xclip-large-patch14-16-frames": __magic_name__ :Optional[int] = torch.tensor([[3.3_8_7_7E-0_4, 9.9_9_3_7E-0_1, 2.8_8_8_8E-0_4]] ) # kinetics-600 elif model_name == "xclip-base-patch16-kinetics-600": __magic_name__ :Optional[int] = torch.tensor([[0.0555, 0.8914, 0.0531]] ) elif model_name == "xclip-base-patch16-kinetics-600-16-frames": __magic_name__ :List[str] = torch.tensor([[3.8_5_5_4E-0_4, 9.9_9_2_9E-0_1, 3.2_7_5_4E-0_4]] ) elif model_name == "xclip-large-patch14-kinetics-600": __magic_name__ :List[str] = torch.tensor([[0.0036, 0.9920, 0.0045]] ) # few shot elif model_name == "xclip-base-patch16-hmdb-2-shot": __magic_name__ :Tuple = torch.tensor([[7.1_8_9_0E-0_6, 9.9_9_9_4E-0_1, 5.6_5_5_9E-0_5]] ) elif model_name == "xclip-base-patch16-hmdb-4-shot": __magic_name__ :List[str] = torch.tensor([[1.0_3_2_0E-0_5, 9.9_9_9_3E-0_1, 6.2_4_3_5E-0_5]] ) elif model_name == "xclip-base-patch16-hmdb-8-shot": __magic_name__ :Optional[int] = torch.tensor([[4.1_3_7_7E-0_6, 9.9_9_9_0E-0_1, 9.8_3_8_6E-0_5]] ) elif model_name == "xclip-base-patch16-hmdb-16-shot": __magic_name__ :Optional[int] = torch.tensor([[4.1_3_4_7E-0_5, 9.9_9_6_2E-0_1, 3.3_4_1_1E-0_4]] ) elif model_name == "xclip-base-patch16-ucf-2-shot": __magic_name__ :Union[str, Any] = torch.tensor([[8.5_8_5_7E-0_5, 9.9_9_2_8E-0_1, 6.3_2_9_1E-0_4]] ) elif model_name == "xclip-base-patch16-ucf-4-shot": __magic_name__ :Union[str, Any] = torch.tensor([[8.5_8_5_7E-0_5, 9.9_9_2_8E-0_1, 6.3_2_9_1E-0_4]] ) elif model_name == "xclip-base-patch16-ucf-8-shot": __magic_name__ :Optional[int] = torch.tensor([[0.0027, 0.9904, 0.0070]] ) elif model_name == "xclip-base-patch16-ucf-16-shot": __magic_name__ :Any = torch.tensor([[9.8_2_1_9E-0_4, 9.9_5_9_3E-0_1, 3.0_8_6_3E-0_3]] ) # zero shot elif model_name == "xclip-base-patch16-zero-shot": __magic_name__ :Optional[int] = torch.tensor([[3.5_0_8_2E-0_4, 9.9_7_8_5E-0_1, 1.7_9_6_6E-0_3]] ) else: raise ValueError(f'''Model name {model_name} not supported''' ) assert torch.allclose(snake_case, snake_case, atol=1E-3 ) print('''Looks ok!''' ) if pytorch_dump_folder_path is not None: print(f'''Saving model {model_name} to {pytorch_dump_folder_path}''' ) model.save_pretrained(snake_case ) if push_to_hub: print('''Pushing model, processor and slow tokenizer files to the hub...''' ) model.push_to_hub(snake_case, organization='''nielsr''' ) processor.push_to_hub(snake_case, organization='''nielsr''' ) slow_tokenizer.push_to_hub(snake_case, organization='''nielsr''' ) if __name__ == "__main__": SCREAMING_SNAKE_CASE__ : Optional[Any] = argparse.ArgumentParser() # Required parameters parser.add_argument( """--model_name""", default="""xclip-base-patch32""", type=str, help="""Name of the model.""", ) parser.add_argument( """--pytorch_dump_folder_path""", default=None, type=str, help="""Path to the output PyTorch model directory.""" ) parser.add_argument( """--push_to_hub""", action="""store_true""", help="""Whether or not to push the converted model to the 🤗 hub.""" ) SCREAMING_SNAKE_CASE__ : List[Any] = parser.parse_args() convert_xclip_checkpoint(args.model_name, args.pytorch_dump_folder_path, args.push_to_hub)
0
0
def a (lowerCAmelCase__ ): __a = [] if len(lowerCAmelCase__ ) == 1: return [nums.copy()] for _ in range(len(lowerCAmelCase__ ) ): __a = nums.pop(0 ) __a = permute(lowerCAmelCase__ ) for perm in permutations: perm.append(lowerCAmelCase__ ) result.extend(lowerCAmelCase__ ) nums.append(lowerCAmelCase__ ) return result def a (lowerCAmelCase__ ): def backtrack(lowerCAmelCase__ ): if start == len(lowerCAmelCase__ ) - 1: output.append(nums[:] ) else: for i in range(lowerCAmelCase__ , len(lowerCAmelCase__ ) ): __a , __a = nums[i], nums[start] backtrack(start + 1 ) __a , __a = nums[i], nums[start] # backtrack __a = [] backtrack(0 ) return output if __name__ == "__main__": import doctest # use res to print the data in permute2 function SCREAMING_SNAKE_CASE = permutea([1, 2, 3]) print(res) doctest.testmod()
99
import numpy as np import torch from torch.utils.data import Dataset from utils import logger class lowerCamelCase_ ( lowerCamelCase ): def __init__( self , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[int] = params __magic_name__ :Any = np.array(__lowerCAmelCase ) __magic_name__ :Optional[Any] = np.array([len(__lowerCAmelCase ) for t in data] ) self.check() self.remove_long_sequences() self.remove_empty_sequences() self.remove_unknown_sequences() self.check() self.print_statistics() def __getitem__( self , __lowerCAmelCase ): """simple docstring""" return (self.token_ids[index], self.lengths[index]) def __len__( self ): """simple docstring""" return len(self.lengths ) def A ( self ): """simple docstring""" assert len(self.token_ids ) == len(self.lengths ) assert all(self.lengths[i] == len(self.token_ids[i] ) for i in range(len(self.lengths ) ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = self.params.max_model_input_size __magic_name__ :int = self.lengths > max_len logger.info(F'''Splitting {sum(__lowerCAmelCase )} too long sequences.''' ) def divide_chunks(__lowerCAmelCase , __lowerCAmelCase ): return [l[i : i + n] for i in range(0 , len(__lowerCAmelCase ) , __lowerCAmelCase )] __magic_name__ :Optional[int] = [] __magic_name__ :List[Any] = [] if self.params.mlm: __magic_name__ , __magic_name__ :Optional[Any] = self.params.special_tok_ids['''cls_token'''], self.params.special_tok_ids['''sep_token'''] else: __magic_name__ , __magic_name__ :Tuple = self.params.special_tok_ids['''bos_token'''], self.params.special_tok_ids['''eos_token'''] for seq_, len_ in zip(self.token_ids , self.lengths ): assert (seq_[0] == cls_id) and (seq_[-1] == sep_id), seq_ if len_ <= max_len: new_tok_ids.append(seq_ ) new_lengths.append(len_ ) else: __magic_name__ :int = [] for sub_s in divide_chunks(seq_ , max_len - 2 ): if sub_s[0] != cls_id: __magic_name__ :List[Any] = np.insert(__lowerCAmelCase , 0 , __lowerCAmelCase ) if sub_s[-1] != sep_id: __magic_name__ :Union[str, Any] = np.insert(__lowerCAmelCase , len(__lowerCAmelCase ) , __lowerCAmelCase ) assert len(__lowerCAmelCase ) <= max_len assert (sub_s[0] == cls_id) and (sub_s[-1] == sep_id), sub_s sub_seqs.append(__lowerCAmelCase ) new_tok_ids.extend(__lowerCAmelCase ) new_lengths.extend([len(__lowerCAmelCase ) for l in sub_seqs] ) __magic_name__ :Tuple = np.array(__lowerCAmelCase ) __magic_name__ :Optional[int] = np.array(__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = len(self ) __magic_name__ :int = self.lengths > 1_1 __magic_name__ :List[str] = self.token_ids[indices] __magic_name__ :Union[str, Any] = self.lengths[indices] __magic_name__ :List[str] = len(self ) logger.info(F'''Remove {init_size - new_size} too short (<=11 tokens) sequences.''' ) def A ( self ): """simple docstring""" if "unk_token" not in self.params.special_tok_ids: return else: __magic_name__ :Tuple = self.params.special_tok_ids['''unk_token'''] __magic_name__ :Dict = len(self ) __magic_name__ :Tuple = np.array([np.count_nonzero(a == unk_token_id ) for a in self.token_ids] ) __magic_name__ :int = (unk_occs / self.lengths) < 0.5 __magic_name__ :str = self.token_ids[indices] __magic_name__ :str = self.lengths[indices] __magic_name__ :Any = len(self ) logger.info(F'''Remove {init_size - new_size} sequences with a high level of unknown tokens (50%).''' ) def A ( self ): """simple docstring""" if not self.params.is_master: return logger.info(F'''{len(self )} sequences''' ) # data_len = sum(self.lengths) # nb_unique_tokens = len(Counter(list(chain(*self.token_ids)))) # logger.info(f'{data_len} tokens ({nb_unique_tokens} unique)') # unk_idx = self.params.special_tok_ids['unk_token'] # nb_unknown = sum([(t==unk_idx).sum() for t in self.token_ids]) # logger.info(f'{nb_unknown} unknown tokens (covering {100*nb_unknown/data_len:.2f}% of the data)') def A ( self , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[Any] = [t[0] for t in batch] __magic_name__ :List[Any] = [t[1] for t in batch] assert len(__lowerCAmelCase ) == len(__lowerCAmelCase ) # Max for paddings __magic_name__ :Tuple = max(__lowerCAmelCase ) # Pad token ids if self.params.mlm: __magic_name__ :Any = self.params.special_tok_ids['''pad_token'''] else: __magic_name__ :str = self.params.special_tok_ids['''unk_token'''] __magic_name__ :Any = [list(t.astype(__lowerCAmelCase ) ) + [pad_idx] * (max_seq_len_ - len(__lowerCAmelCase )) for t in token_ids] assert len(tk_ ) == len(__lowerCAmelCase ) assert all(len(__lowerCAmelCase ) == max_seq_len_ for t in tk_ ) __magic_name__ :Optional[int] = torch.tensor(tk_ ) # (bs, max_seq_len_) __magic_name__ :Optional[int] = torch.tensor(__lowerCAmelCase ) # (bs) return tk_t, lg_t
0
0
import importlib import sys from argparse import REMAINDER, ArgumentParser from pathlib import Path import torch_xla.distributed.xla_multiprocessing as xmp def __snake_case ( ) -> Union[str, Any]: SCREAMING_SNAKE_CASE__ = ArgumentParser( description=( '''PyTorch TPU distributed training launch helper utility that will spawn up multiple distributed processes''' ) ) # Optional arguments for the launch helper parser.add_argument('''--num_cores''' , type=lowerCAmelCase_ , default=1 , help='''Number of TPU cores to use (1 or 8).''' ) # positional parser.add_argument( '''training_script''' , type=lowerCAmelCase_ , help=( '''The full path to the single TPU training ''' '''program/script to be launched in parallel, ''' '''followed by all the arguments for the ''' '''training script''' ) , ) # rest from the training program parser.add_argument('''training_script_args''' , nargs=lowerCAmelCase_ ) return parser.parse_args() def __snake_case ( ) -> int: SCREAMING_SNAKE_CASE__ = parse_args() # Import training_script as a module. SCREAMING_SNAKE_CASE__ = Path(args.training_script ) sys.path.append(str(script_fpath.parent.resolve() ) ) SCREAMING_SNAKE_CASE__ = script_fpath.stem SCREAMING_SNAKE_CASE__ = importlib.import_module(lowerCAmelCase_ ) # Patch sys.argv SCREAMING_SNAKE_CASE__ = [args.training_script] + args.training_script_args + ['''--tpu_num_cores''', str(args.num_cores )] xmp.spawn(mod._mp_fn , args=() , nprocs=args.num_cores ) if __name__ == "__main__": main()
100
import os from shutil import copyfile from typing import Any, Dict, List, Optional, Tuple import sentencepiece as spm from ...tokenization_utils import PreTrainedTokenizer from ...utils import logging SCREAMING_SNAKE_CASE__ : str = logging.get_logger(__name__) SCREAMING_SNAKE_CASE__ : Tuple = """▁""" SCREAMING_SNAKE_CASE__ : Union[str, Any] = {"""vocab_file""": """spiece.model"""} SCREAMING_SNAKE_CASE__ : List[Any] = { """vocab_file""": { """google/reformer-crime-and-punishment""": ( """https://huggingface.co/google/reformer-crime-and-punishment/resolve/main/spiece.model""" ) } } SCREAMING_SNAKE_CASE__ : Optional[int] = { """google/reformer-crime-and-punishment""": 52_42_88, } class lowerCamelCase_ ( lowerCamelCase ): a__ = VOCAB_FILES_NAMES a__ = PRETRAINED_VOCAB_FILES_MAP a__ = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES a__ = ['''input_ids''', '''attention_mask'''] def __init__( self , __lowerCAmelCase , __lowerCAmelCase="</s>" , __lowerCAmelCase="<unk>" , __lowerCAmelCase=[] , __lowerCAmelCase = None , **__lowerCAmelCase , ): """simple docstring""" __magic_name__ :int = {} if sp_model_kwargs is None else sp_model_kwargs super().__init__( eos_token=__lowerCAmelCase , unk_token=__lowerCAmelCase , additional_special_tokens=__lowerCAmelCase , sp_model_kwargs=self.sp_model_kwargs , **__lowerCAmelCase , ) __magic_name__ :Optional[Any] = vocab_file __magic_name__ :int = spm.SentencePieceProcessor(**self.sp_model_kwargs ) self.sp_model.Load(__lowerCAmelCase ) @property def A ( self ): """simple docstring""" return self.sp_model.get_piece_size() def A ( self ): """simple docstring""" __magic_name__ :str = {self.convert_ids_to_tokens(__lowerCAmelCase ): i for i in range(self.vocab_size )} vocab.update(self.added_tokens_encoder ) return vocab def __getstate__( self ): """simple docstring""" __magic_name__ :Optional[Any] = self.__dict__.copy() __magic_name__ :Optional[Any] = None return state def __setstate__( self , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Any = d # for backward compatibility if not hasattr(self , '''sp_model_kwargs''' ): __magic_name__ :Optional[int] = {} __magic_name__ :Union[str, Any] = spm.SentencePieceProcessor(**self.sp_model_kwargs ) self.sp_model.Load(self.vocab_file ) def A ( self , __lowerCAmelCase ): """simple docstring""" return self.sp_model.encode(__lowerCAmelCase , out_type=__lowerCAmelCase ) def A ( self , __lowerCAmelCase ): """simple docstring""" return self.sp_model.piece_to_id(__lowerCAmelCase ) def A ( self , __lowerCAmelCase ): """simple docstring""" if index < self.sp_model.get_piece_size(): __magic_name__ :int = self.sp_model.IdToPiece(__lowerCAmelCase ) return token def A ( self , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[Any] = [] __magic_name__ :Tuple = '''''' for token in tokens: # make sure that special tokens are not decoded using sentencepiece model if token in self.all_special_tokens: out_string += self.sp_model.decode(__lowerCAmelCase ) + token __magic_name__ :Optional[Any] = [] else: current_sub_tokens.append(__lowerCAmelCase ) out_string += self.sp_model.decode(__lowerCAmelCase ) return out_string.strip() def A ( self , __lowerCAmelCase , __lowerCAmelCase = None ): """simple docstring""" if not os.path.isdir(__lowerCAmelCase ): logger.error(F'''Vocabulary path ({save_directory}) should be a directory''' ) return __magic_name__ :Optional[int] = os.path.join( __lowerCAmelCase , (filename_prefix + '''-''' if filename_prefix else '''''') + VOCAB_FILES_NAMES['''vocab_file'''] ) if os.path.abspath(self.vocab_file ) != os.path.abspath(__lowerCAmelCase ) and os.path.isfile(self.vocab_file ): copyfile(self.vocab_file , __lowerCAmelCase ) elif not os.path.isfile(self.vocab_file ): with open(__lowerCAmelCase , '''wb''' ) as fi: __magic_name__ :Dict = self.sp_model.serialized_model_proto() fi.write(__lowerCAmelCase ) return (out_vocab_file,)
0
0
from ...processing_utils import ProcessorMixin from ...tokenization_utils_base import BatchEncoding class __lowercase (__SCREAMING_SNAKE_CASE ): """simple docstring""" _UpperCAmelCase = """ClapFeatureExtractor""" _UpperCAmelCase = ("""RobertaTokenizer""", """RobertaTokenizerFast""") def __init__( self , lowerCAmelCase__ , lowerCAmelCase__ ): """simple docstring""" super().__init__(lowerCAmelCase__ , lowerCAmelCase__ ) def __call__( self , lowerCAmelCase__=None , lowerCAmelCase__=None , lowerCAmelCase__=None , **lowerCAmelCase__ ): """simple docstring""" SCREAMING_SNAKE_CASE_ : Any = kwargs.pop('sampling_rate' , lowerCAmelCase__ ) if text is None and audios is None: raise ValueError('You have to specify either text or audios. Both cannot be none.' ) if text is not None: SCREAMING_SNAKE_CASE_ : Union[str, Any] = self.tokenizer(lowerCAmelCase__ , return_tensors=lowerCAmelCase__ , **lowerCAmelCase__ ) if audios is not None: SCREAMING_SNAKE_CASE_ : Tuple = self.feature_extractor( lowerCAmelCase__ , sampling_rate=lowerCAmelCase__ , return_tensors=lowerCAmelCase__ , **lowerCAmelCase__ ) if text is not None and audios is not None: SCREAMING_SNAKE_CASE_ : Union[str, Any] = audio_features.input_features return encoding elif text is not None: return encoding else: return BatchEncoding(data=dict(**lowerCAmelCase__ ) , tensor_type=lowerCAmelCase__ ) def UpperCamelCase__ ( self , *lowerCAmelCase__ , **lowerCAmelCase__ ): """simple docstring""" return self.tokenizer.batch_decode(*lowerCAmelCase__ , **lowerCAmelCase__ ) def UpperCamelCase__ ( self , *lowerCAmelCase__ , **lowerCAmelCase__ ): """simple docstring""" return self.tokenizer.decode(*lowerCAmelCase__ , **lowerCAmelCase__ ) @property def UpperCamelCase__ ( self ): """simple docstring""" SCREAMING_SNAKE_CASE_ : str = self.tokenizer.model_input_names SCREAMING_SNAKE_CASE_ : List[str] = self.feature_extractor.model_input_names return list(dict.fromkeys(tokenizer_input_names + feature_extractor_input_names ) )
101
import os import unittest from transformers import MobileBertTokenizer, MobileBertTokenizerFast from transformers.models.bert.tokenization_bert import ( VOCAB_FILES_NAMES, BasicTokenizer, WordpieceTokenizer, _is_control, _is_punctuation, _is_whitespace, ) from transformers.testing_utils import require_tokenizers, slow from ...test_tokenization_common import TokenizerTesterMixin, filter_non_english @require_tokenizers class lowerCamelCase_ ( lowerCamelCase , unittest.TestCase ): a__ = MobileBertTokenizer a__ = MobileBertTokenizerFast a__ = True a__ = True a__ = filter_non_english a__ = '''google/mobilebert-uncased''' def A ( self ): """simple docstring""" super().setUp() __magic_name__ :Tuple = [ '''[UNK]''', '''[CLS]''', '''[SEP]''', '''[PAD]''', '''[MASK]''', '''want''', '''##want''', '''##ed''', '''wa''', '''un''', '''runn''', '''##ing''', ''',''', '''low''', '''lowest''', ] __magic_name__ :Dict = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES['''vocab_file'''] ) with open(self.vocab_file , '''w''' , encoding='''utf-8''' ) as vocab_writer: vocab_writer.write(''''''.join([x + '''\n''' for x in vocab_tokens] ) ) __magic_name__ :List[str] = [ (tokenizer_def[0], self.pre_trained_model_path, tokenizer_def[2]) # else the 'google/' prefix is stripped for tokenizer_def in self.tokenizers_list ] def A ( self , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Union[str, Any] = '''UNwant\u00E9d,running''' __magic_name__ :int = '''unwanted, running''' return input_text, output_text def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = self.tokenizer_class(self.vocab_file ) __magic_name__ :List[Any] = tokenizer.tokenize('''UNwant\u00E9d,running''' ) self.assertListEqual(__lowerCAmelCase , ['''un''', '''##want''', '''##ed''', ''',''', '''runn''', '''##ing'''] ) self.assertListEqual(tokenizer.convert_tokens_to_ids(__lowerCAmelCase ) , [9, 6, 7, 1_2, 1_0, 1_1] ) def A ( self ): """simple docstring""" if not self.test_rust_tokenizer: return __magic_name__ :int = self.get_tokenizer() __magic_name__ :Tuple = self.get_rust_tokenizer() __magic_name__ :List[str] = '''UNwant\u00E9d,running''' __magic_name__ :Optional[Any] = tokenizer.tokenize(__lowerCAmelCase ) __magic_name__ :List[Any] = rust_tokenizer.tokenize(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :int = tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :str = rust_tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :List[Any] = self.get_rust_tokenizer() __magic_name__ :Any = tokenizer.encode(__lowerCAmelCase ) __magic_name__ :Any = rust_tokenizer.encode(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) # With lower casing __magic_name__ :Any = self.get_tokenizer(do_lower_case=__lowerCAmelCase ) __magic_name__ :List[Any] = self.get_rust_tokenizer(do_lower_case=__lowerCAmelCase ) __magic_name__ :Dict = '''UNwant\u00E9d,running''' __magic_name__ :Tuple = tokenizer.tokenize(__lowerCAmelCase ) __magic_name__ :Union[str, Any] = rust_tokenizer.tokenize(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :Optional[Any] = tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :Dict = rust_tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :Tuple = self.get_rust_tokenizer() __magic_name__ :Dict = tokenizer.encode(__lowerCAmelCase ) __magic_name__ :List[Any] = rust_tokenizer.encode(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = BasicTokenizer() self.assertListEqual(tokenizer.tokenize('''ah\u535A\u63A8zz''' ) , ['''ah''', '''\u535A''', '''\u63A8''', '''zz'''] ) def A ( self ): """simple docstring""" __magic_name__ :List[Any] = BasicTokenizer(do_lower_case=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHeLLo!how \n Are yoU? ''' ) , ['''hello''', '''!''', '''how''', '''are''', '''you''', '''?'''] ) self.assertListEqual(tokenizer.tokenize('''H\u00E9llo''' ) , ['''hello'''] ) def A ( self ): """simple docstring""" __magic_name__ :Union[str, Any] = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''hällo''', '''!''', '''how''', '''are''', '''you''', '''?'''] ) self.assertListEqual(tokenizer.tokenize('''H\u00E9llo''' ) , ['''h\u00E9llo'''] ) def A ( self ): """simple docstring""" __magic_name__ :Dict = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''hallo''', '''!''', '''how''', '''are''', '''you''', '''?'''] ) self.assertListEqual(tokenizer.tokenize('''H\u00E9llo''' ) , ['''hello'''] ) def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = BasicTokenizer(do_lower_case=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''hallo''', '''!''', '''how''', '''are''', '''you''', '''?'''] ) self.assertListEqual(tokenizer.tokenize('''H\u00E9llo''' ) , ['''hello'''] ) def A ( self ): """simple docstring""" __magic_name__ :List[str] = BasicTokenizer(do_lower_case=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHeLLo!how \n Are yoU? ''' ) , ['''HeLLo''', '''!''', '''how''', '''Are''', '''yoU''', '''?'''] ) def A ( self ): """simple docstring""" __magic_name__ :int = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''HäLLo''', '''!''', '''how''', '''Are''', '''yoU''', '''?'''] ) def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''HaLLo''', '''!''', '''how''', '''Are''', '''yoU''', '''?'''] ) def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = BasicTokenizer(do_lower_case=__lowerCAmelCase , never_split=['''[UNK]'''] ) self.assertListEqual( tokenizer.tokenize(''' \tHeLLo!how \n Are yoU? [UNK]''' ) , ['''HeLLo''', '''!''', '''how''', '''Are''', '''yoU''', '''?''', '''[UNK]'''] ) def A ( self ): """simple docstring""" __magic_name__ :int = ['''[UNK]''', '''[CLS]''', '''[SEP]''', '''want''', '''##want''', '''##ed''', '''wa''', '''un''', '''runn''', '''##ing'''] __magic_name__ :Union[str, Any] = {} for i, token in enumerate(__lowerCAmelCase ): __magic_name__ :Tuple = i __magic_name__ :List[Any] = WordpieceTokenizer(vocab=__lowerCAmelCase , unk_token='''[UNK]''' ) self.assertListEqual(tokenizer.tokenize('''''' ) , [] ) self.assertListEqual(tokenizer.tokenize('''unwanted running''' ) , ['''un''', '''##want''', '''##ed''', '''runn''', '''##ing'''] ) self.assertListEqual(tokenizer.tokenize('''unwantedX running''' ) , ['''[UNK]''', '''runn''', '''##ing'''] ) def A ( self ): """simple docstring""" self.assertTrue(_is_whitespace(''' ''' ) ) self.assertTrue(_is_whitespace('''\t''' ) ) self.assertTrue(_is_whitespace('''\r''' ) ) self.assertTrue(_is_whitespace('''\n''' ) ) self.assertTrue(_is_whitespace('''\u00A0''' ) ) self.assertFalse(_is_whitespace('''A''' ) ) self.assertFalse(_is_whitespace('''-''' ) ) def A ( self ): """simple docstring""" self.assertTrue(_is_control('''\u0005''' ) ) self.assertFalse(_is_control('''A''' ) ) self.assertFalse(_is_control(''' ''' ) ) self.assertFalse(_is_control('''\t''' ) ) self.assertFalse(_is_control('''\r''' ) ) def A ( self ): """simple docstring""" self.assertTrue(_is_punctuation('''-''' ) ) self.assertTrue(_is_punctuation('''$''' ) ) self.assertTrue(_is_punctuation('''`''' ) ) self.assertTrue(_is_punctuation('''.''' ) ) self.assertFalse(_is_punctuation('''A''' ) ) self.assertFalse(_is_punctuation(''' ''' ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = self.get_tokenizer() __magic_name__ :Any = self.get_rust_tokenizer() # Example taken from the issue https://github.com/huggingface/tokenizers/issues/340 self.assertListEqual([tokenizer.tokenize(__lowerCAmelCase ) for t in ['''Test''', '''\xad''', '''test''']] , [['''[UNK]'''], [], ['''[UNK]''']] ) self.assertListEqual( [rust_tokenizer.tokenize(__lowerCAmelCase ) for t in ['''Test''', '''\xad''', '''test''']] , [['''[UNK]'''], [], ['''[UNK]''']] ) @slow def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = self.tokenizer_class.from_pretrained('''google/mobilebert-uncased''' ) __magic_name__ :Optional[int] = tokenizer.encode('''sequence builders''' , add_special_tokens=__lowerCAmelCase ) __magic_name__ :List[Any] = tokenizer.encode('''multi-sequence build''' , add_special_tokens=__lowerCAmelCase ) __magic_name__ :Union[str, Any] = tokenizer.build_inputs_with_special_tokens(__lowerCAmelCase ) __magic_name__ :List[Any] = tokenizer.build_inputs_with_special_tokens(__lowerCAmelCase , __lowerCAmelCase ) assert encoded_sentence == [1_0_1] + text + [1_0_2] assert encoded_pair == [1_0_1] + text + [1_0_2] + text_a + [1_0_2] def A ( self ): """simple docstring""" for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F'''{tokenizer.__class__.__name__} ({pretrained_name})''' ): __magic_name__ :Optional[Any] = self.rust_tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Optional[int] = F'''A, naïve {tokenizer_r.mask_token} AllenNLP sentence.''' __magic_name__ :Optional[Any] = tokenizer_r.encode_plus( __lowerCAmelCase , return_attention_mask=__lowerCAmelCase , return_token_type_ids=__lowerCAmelCase , return_offsets_mapping=__lowerCAmelCase , add_special_tokens=__lowerCAmelCase , ) __magic_name__ :Any = tokenizer_r.do_lower_case if hasattr(__lowerCAmelCase , '''do_lower_case''' ) else False __magic_name__ :Optional[int] = ( [ ((0, 0), tokenizer_r.cls_token), ((0, 1), '''A'''), ((1, 2), ''','''), ((3, 5), '''na'''), ((5, 6), '''##ï'''), ((6, 8), '''##ve'''), ((9, 1_5), tokenizer_r.mask_token), ((1_6, 2_1), '''Allen'''), ((2_1, 2_3), '''##NL'''), ((2_3, 2_4), '''##P'''), ((2_5, 3_3), '''sentence'''), ((3_3, 3_4), '''.'''), ((0, 0), tokenizer_r.sep_token), ] if not do_lower_case else [ ((0, 0), tokenizer_r.cls_token), ((0, 1), '''a'''), ((1, 2), ''','''), ((3, 8), '''naive'''), ((9, 1_5), tokenizer_r.mask_token), ((1_6, 2_1), '''allen'''), ((2_1, 2_3), '''##nl'''), ((2_3, 2_4), '''##p'''), ((2_5, 3_3), '''sentence'''), ((3_3, 3_4), '''.'''), ((0, 0), tokenizer_r.sep_token), ] ) self.assertEqual( [e[1] for e in expected_results] , tokenizer_r.convert_ids_to_tokens(tokens['''input_ids'''] ) ) self.assertEqual([e[0] for e in expected_results] , tokens['''offset_mapping'''] ) def A ( self ): """simple docstring""" __magic_name__ :Dict = ['''的''', '''人''', '''有'''] __magic_name__ :Any = ''''''.join(__lowerCAmelCase ) for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F'''{tokenizer.__class__.__name__} ({pretrained_name})''' ): __magic_name__ :Optional[Any] = True __magic_name__ :Optional[int] = self.tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Tuple = self.rust_tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Dict = tokenizer_p.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :List[str] = tokenizer_r.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :Dict = tokenizer_r.convert_ids_to_tokens(__lowerCAmelCase ) __magic_name__ :Union[str, Any] = tokenizer_p.convert_ids_to_tokens(__lowerCAmelCase ) # it is expected that each Chinese character is not preceded by "##" self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :List[str] = False __magic_name__ :Tuple = self.rust_tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :List[str] = self.tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Optional[Any] = tokenizer_r.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :Union[str, Any] = tokenizer_p.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :List[str] = tokenizer_r.convert_ids_to_tokens(__lowerCAmelCase ) __magic_name__ :Optional[int] = tokenizer_p.convert_ids_to_tokens(__lowerCAmelCase ) # it is expected that only the first Chinese character is not preceded by "##". __magic_name__ :Dict = [ F'''##{token}''' if idx != 0 else token for idx, token in enumerate(__lowerCAmelCase ) ] self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase )
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"""simple docstring""" import logging from pathlib import Path import numpy as np import pytorch_lightning as pl import torch from pytorch_lightning.callbacks import EarlyStopping, ModelCheckpoint from pytorch_lightning.utilities import rank_zero_only from utils_rag import save_json def UpperCamelCase (SCREAMING_SNAKE_CASE ): UpperCamelCase : Tuple = filter(lambda SCREAMING_SNAKE_CASE : p.requires_grad , model.parameters() ) UpperCamelCase : List[str] = sum([np.prod(p.size() ) for p in model_parameters] ) return params __magic_name__ : Tuple = logging.getLogger(__name__) def UpperCamelCase (SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE ): if metric == "rouge2": UpperCamelCase : Tuple = """{val_avg_rouge2:.4f}-{step_count}""" elif metric == "bleu": UpperCamelCase : int = """{val_avg_bleu:.4f}-{step_count}""" elif metric == "em": UpperCamelCase : Union[str, Any] = """{val_avg_em:.4f}-{step_count}""" elif metric == "loss": UpperCamelCase : Tuple = """{val_avg_loss:.4f}-{step_count}""" else: raise NotImplementedError( f"""seq2seq callbacks only support rouge2 and bleu, got {metric}, You can make your own by adding to this""" """ function.""" ) UpperCamelCase : int = ModelCheckpoint( dirpath=SCREAMING_SNAKE_CASE , filename=SCREAMING_SNAKE_CASE , monitor=f"""val_{metric}""" , mode="""max""" , save_top_k=1 , every_n_epochs=1 , ) return checkpoint_callback def UpperCamelCase (SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE ): return EarlyStopping( monitor=f"""val_{metric}""" , mode="""min""" if """loss""" in metric else """max""" , patience=SCREAMING_SNAKE_CASE , verbose=SCREAMING_SNAKE_CASE , ) class lowercase__ ( pl.Callback ): """simple docstring""" def _a ( self , _A , _A ): '''simple docstring''' UpperCamelCase : str = {f"""lr_group_{i}""": param["""lr"""] for i, param in enumerate(pl_module.trainer.optimizers[0].param_groups )} pl_module.logger.log_metrics(_A ) @rank_zero_only def _a ( self , _A , _A , _A , _A=True ): '''simple docstring''' logger.info(f"""***** {type_path} results at step {trainer.global_step:05d} *****""" ) UpperCamelCase : List[Any] = trainer.callback_metrics trainer.logger.log_metrics({k: v for k, v in metrics.items() if k not in ["""log""", """progress_bar""", """preds"""]} ) # Log results UpperCamelCase : int = Path(pl_module.hparams.output_dir ) if type_path == "test": UpperCamelCase : Tuple = od / """test_results.txt""" UpperCamelCase : List[str] = od / """test_generations.txt""" else: # this never gets hit. I prefer not to save intermediate generations, and results are in metrics.json # If people want this it will be easy enough to add back. UpperCamelCase : int = od / f"""{type_path}_results/{trainer.global_step:05d}.txt""" UpperCamelCase : str = od / f"""{type_path}_generations/{trainer.global_step:05d}.txt""" results_file.parent.mkdir(exist_ok=_A ) generations_file.parent.mkdir(exist_ok=_A ) with open(_A , """a+""" ) as writer: for key in sorted(_A ): if key in ["log", "progress_bar", "preds"]: continue UpperCamelCase : int = metrics[key] if isinstance(_A , torch.Tensor ): UpperCamelCase : Optional[int] = val.item() UpperCamelCase : Union[str, Any] = f"""{key}: {val:.6f}\n""" writer.write(_A ) if not save_generations: return if "preds" in metrics: UpperCamelCase : int = """\n""".join(metrics["""preds"""] ) generations_file.open("""w+""" ).write(_A ) @rank_zero_only def _a ( self , _A , _A ): '''simple docstring''' try: UpperCamelCase : Any = pl_module.model.model.num_parameters() except AttributeError: UpperCamelCase : Any = pl_module.model.num_parameters() UpperCamelCase : Any = count_trainable_parameters(_A ) # mp stands for million parameters trainer.logger.log_metrics({"""n_params""": npars, """mp""": npars / 1e6, """grad_mp""": n_trainable_pars / 1e6} ) @rank_zero_only def _a ( self , _A , _A ): '''simple docstring''' save_json(pl_module.metrics , pl_module.metrics_save_path ) return self._write_logs(_A , _A , """test""" ) @rank_zero_only def _a ( self , _A , _A ): '''simple docstring''' save_json(pl_module.metrics , pl_module.metrics_save_path ) # Uncommenting this will save val generations # return self._write_logs(trainer, pl_module, "valid")
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import logging import os import quant_trainer import torch from torch.utils.data import DataLoader from transformers import Trainer, is_torch_tpu_available from transformers.trainer_utils import PredictionOutput SCREAMING_SNAKE_CASE__ : List[str] = logging.getLogger(__name__) if is_torch_tpu_available(check_device=False): import torch_xla.core.xla_model as xm import torch_xla.debug.metrics as met class lowerCamelCase_ ( lowerCamelCase ): def __init__( self , *__lowerCAmelCase , __lowerCAmelCase=None , __lowerCAmelCase=None , __lowerCAmelCase=None , **__lowerCAmelCase ): """simple docstring""" super().__init__(*__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Any = eval_examples __magic_name__ :str = post_process_function __magic_name__ :int = quant_trainer_args __magic_name__ :List[str] = 1_2_8 # default number of calibration samples def A ( self , __lowerCAmelCase=None ): """simple docstring""" if calib_dataset is None and self.calib_dataset is None: raise ValueError('''Trainer: calibration requires an calib_dataset.''' ) __magic_name__ :Optional[Any] = calib_dataset if calib_dataset is not None else self.calib_dataset __magic_name__ :Optional[int] = self._remove_unused_columns(__lowerCAmelCase , description='''Calibration''' ) return DataLoader( __lowerCAmelCase , batch_size=self.args.eval_batch_size , collate_fn=self.data_collator , drop_last=self.args.dataloader_drop_last , num_workers=self.args.dataloader_num_workers , pin_memory=self.args.dataloader_pin_memory , shuffle=__lowerCAmelCase , ) def A ( self , __lowerCAmelCase=None ): """simple docstring""" __magic_name__ :Dict = self.train_dataset if calib_dataset is None else calib_dataset __magic_name__ :Any = self.get_calib_dataloader(__lowerCAmelCase ) __magic_name__ :List[str] = self.model quant_trainer.configure_model(__lowerCAmelCase , self.quant_trainer_args , calib=__lowerCAmelCase ) model.eval() quant_trainer.enable_calibration(__lowerCAmelCase ) logger.info('''***** Running calibration *****''' ) logger.info(F''' Num examples = {self.calib_num}''' ) logger.info(F''' Batch size = {calib_dataloader.batch_size}''' ) for step, inputs in enumerate(__lowerCAmelCase ): # Prediction step __magic_name__ , __magic_name__ , __magic_name__ :str = self.prediction_step(__lowerCAmelCase , __lowerCAmelCase , prediction_loss_only=__lowerCAmelCase ) if (step + 1) * calib_dataloader.batch_size >= self.calib_num: break quant_trainer.finish_calibration(__lowerCAmelCase , self.quant_trainer_args ) __magic_name__ :Any = model def A ( self , __lowerCAmelCase=None , __lowerCAmelCase=None , __lowerCAmelCase=None , __lowerCAmelCase = "eval" ): """simple docstring""" __magic_name__ :Tuple = self.eval_dataset if eval_dataset is None else eval_dataset __magic_name__ :Optional[Any] = self.get_eval_dataloader(__lowerCAmelCase ) __magic_name__ :str = self.eval_examples if eval_examples is None else eval_examples # Temporarily disable metric computation, we will do it in the loop here. __magic_name__ :Any = self.compute_metrics __magic_name__ :List[Any] = None __magic_name__ :List[str] = self.prediction_loop if self.args.use_legacy_prediction_loop else self.evaluation_loop try: __magic_name__ :Optional[Any] = eval_loop( __lowerCAmelCase , description='''Evaluation''' , prediction_loss_only=True if compute_metrics is None else None , ignore_keys=__lowerCAmelCase , ) finally: __magic_name__ :Union[str, Any] = compute_metrics if self.post_process_function is not None and self.compute_metrics is not None: __magic_name__ :Union[str, Any] = self.post_process_function(__lowerCAmelCase , __lowerCAmelCase , output.predictions ) __magic_name__ :int = self.compute_metrics(__lowerCAmelCase ) # Prefix all keys with metric_key_prefix + '_' for key in list(metrics.keys() ): if not key.startswith(F'''{metric_key_prefix}_''' ): __magic_name__ :Dict = metrics.pop(__lowerCAmelCase ) self.log(__lowerCAmelCase ) else: __magic_name__ :List[str] = {} if self.args.tpu_metrics_debug or self.args.debug: # tpu-comment: Logging debug metrics for PyTorch/XLA (compile, execute times, ops, etc.) xm.master_print(met.metrics_report() ) __magic_name__ :Optional[Any] = self.callback_handler.on_evaluate(self.args , self.state , self.control , __lowerCAmelCase ) return metrics def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase=None , __lowerCAmelCase = "test" ): """simple docstring""" __magic_name__ :int = self.get_test_dataloader(__lowerCAmelCase ) # Temporarily disable metric computation, we will do it in the loop here. __magic_name__ :Dict = self.compute_metrics __magic_name__ :str = None __magic_name__ :Optional[int] = self.prediction_loop if self.args.use_legacy_prediction_loop else self.evaluation_loop try: __magic_name__ :int = eval_loop( __lowerCAmelCase , description='''Prediction''' , prediction_loss_only=True if compute_metrics is None else None , ignore_keys=__lowerCAmelCase , ) finally: __magic_name__ :List[Any] = compute_metrics if self.post_process_function is None or self.compute_metrics is None: return output __magic_name__ :Optional[Any] = self.post_process_function(__lowerCAmelCase , __lowerCAmelCase , output.predictions , '''predict''' ) __magic_name__ :Dict = self.compute_metrics(__lowerCAmelCase ) # Prefix all keys with metric_key_prefix + '_' for key in list(metrics.keys() ): if not key.startswith(F'''{metric_key_prefix}_''' ): __magic_name__ :List[str] = metrics.pop(__lowerCAmelCase ) return PredictionOutput(predictions=predictions.predictions , label_ids=predictions.label_ids , metrics=__lowerCAmelCase ) def A ( self , __lowerCAmelCase="./" ): """simple docstring""" __magic_name__ :List[Any] = self.eval_dataset __magic_name__ :Any = self.get_eval_dataloader(__lowerCAmelCase ) __magic_name__ :int = next(iter(__lowerCAmelCase ) ) # saving device - to make it consistent __magic_name__ :str = torch.device('''cuda''' if torch.cuda.is_available() else '''cpu''' ) # convert to tuple __magic_name__ :int = tuple(v.to(__lowerCAmelCase ) for k, v in batch.items() ) logger.info('''Converting model to be onnx compatible''' ) from pytorch_quantization.nn import TensorQuantizer __magic_name__ :Any = True __magic_name__ :Optional[int] = self.model.to(__lowerCAmelCase ) model.eval() model.float() __magic_name__ :Any = model.module if hasattr(__lowerCAmelCase , '''module''' ) else model quant_trainer.configure_model(__lowerCAmelCase , self.quant_trainer_args ) __magic_name__ :int = os.path.join(__lowerCAmelCase , '''model.onnx''' ) logger.info(F'''exporting model to {output_model_file}''' ) __magic_name__ :Dict = {0: '''batch_size''', 1: '''seq_len'''} torch.onnx.export( __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , export_params=__lowerCAmelCase , opset_version=1_3 , do_constant_folding=__lowerCAmelCase , input_names=['''input_ids''', '''attention_mask''', '''token_type_ids'''] , output_names=['''output_start_logits''', '''output_end_logits'''] , dynamic_axes={ '''input_ids''': axes, '''attention_mask''': axes, '''token_type_ids''': axes, '''output_start_logits''': axes, '''output_end_logits''': axes, } , verbose=__lowerCAmelCase , ) logger.info('''onnx export finished''' )
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"""simple docstring""" from typing import List, Optional, Union import numpy as np import torch import torchaudio.compliance.kaldi as ta_kaldi from ...feature_extraction_sequence_utils import SequenceFeatureExtractor from ...feature_extraction_utils import BatchFeature from ...utils import PaddingStrategy, TensorType, logging snake_case = logging.get_logger(__name__) class UpperCAmelCase ( __SCREAMING_SNAKE_CASE ): A__ : Any = ['''input_features''', '''attention_mask'''] def __init__( self : List[Any] , __lowerCamelCase : str=8_0 , __lowerCamelCase : str=1_6_0_0_0 , __lowerCamelCase : List[str]=8_0 , __lowerCamelCase : Dict=0.0 , __lowerCamelCase : int=True , __lowerCamelCase : Tuple=True , __lowerCamelCase : Tuple=True , **__lowerCamelCase : List[str] , ): """simple docstring""" super().__init__(feature_size=__lowerCamelCase , sampling_rate=__lowerCamelCase , padding_value=__lowerCamelCase , **__lowerCamelCase ) _snake_case = num_mel_bins _snake_case = do_ceptral_normalize _snake_case = normalize_means _snake_case = normalize_vars _snake_case = True def __UpperCAmelCase ( self : Optional[int] , __lowerCamelCase : np.ndarray , ): """simple docstring""" _snake_case = waveform * (2**1_5) # Kaldi compliance: 16-bit signed integers _snake_case = torch.from_numpy(__lowerCamelCase ).unsqueeze(0 ) _snake_case = ta_kaldi.fbank(__lowerCamelCase , num_mel_bins=self.num_mel_bins , sample_frequency=self.sampling_rate ) return features.numpy() @staticmethod def __UpperCAmelCase ( __lowerCamelCase : np.ndarray , __lowerCamelCase : int , __lowerCamelCase : Optional[bool] = True , __lowerCamelCase : Optional[bool] = True , __lowerCamelCase : float = 0.0 , ): """simple docstring""" # make sure we normalize float32 arrays if normalize_means: _snake_case = x[:input_length].mean(axis=0 ) _snake_case = np.subtract(__lowerCamelCase , __lowerCamelCase ) if normalize_vars: _snake_case = x[:input_length].std(axis=0 ) _snake_case = np.divide(__lowerCamelCase , __lowerCamelCase ) if input_length < x.shape[0]: _snake_case = padding_value # make sure array is in float32 _snake_case = x.astype(np.floataa ) return x def __UpperCAmelCase ( self : Tuple , __lowerCamelCase : List[np.ndarray] , __lowerCamelCase : Optional[np.ndarray] = None ): """simple docstring""" _snake_case = attention_mask.sum(-1 ) if attention_mask is not None else [x.shape[0] for x in input_features] return [ self.utterance_cmvn(__lowerCamelCase , __lowerCamelCase , self.normalize_means , self.normalize_vars , self.padding_value ) for x, n in zip(__lowerCamelCase , __lowerCamelCase ) ] def __call__( self : int , __lowerCamelCase : Union[np.ndarray, List[float], List[np.ndarray], List[List[float]]] , __lowerCamelCase : Union[bool, str, PaddingStrategy] = False , __lowerCamelCase : Optional[int] = None , __lowerCamelCase : bool = False , __lowerCamelCase : Optional[int] = None , __lowerCamelCase : Optional[Union[str, TensorType]] = None , __lowerCamelCase : Optional[int] = None , __lowerCamelCase : Optional[bool] = None , **__lowerCamelCase : Dict , ): """simple docstring""" if sampling_rate is not None: if sampling_rate != self.sampling_rate: raise ValueError( f"""The model corresponding to this feature extractor: {self} was trained using a sampling rate of""" f""" {self.sampling_rate}. Please make sure that the provided `raw_speech` input was sampled with""" f""" {self.sampling_rate} and not {sampling_rate}.""" ) else: logger.warning( '''It is strongly recommended to pass the `sampling_rate` argument to this function. ''' '''Failing to do so can result in silent errors that might be hard to debug.''' ) _snake_case = isinstance(__lowerCamelCase , np.ndarray ) and len(raw_speech.shape ) > 1 if is_batched_numpy and len(raw_speech.shape ) > 2: raise ValueError(f"""Only mono-channel audio is supported for input to {self}""" ) _snake_case = is_batched_numpy or ( isinstance(__lowerCamelCase , (list, tuple) ) and (isinstance(raw_speech[0] , (np.ndarray, tuple, list) )) ) if is_batched: _snake_case = [np.asarray(__lowerCamelCase , dtype=np.floataa ) for speech in raw_speech] elif not is_batched and not isinstance(__lowerCamelCase , np.ndarray ): _snake_case = np.asarray(__lowerCamelCase , dtype=np.floataa ) elif isinstance(__lowerCamelCase , np.ndarray ) and raw_speech.dtype is np.dtype(np.floataa ): _snake_case = raw_speech.astype(np.floataa ) # always return batch if not is_batched: _snake_case = [raw_speech] # extract fbank features _snake_case = [self._extract_fbank_features(__lowerCamelCase ) for waveform in raw_speech] # convert into correct format for padding _snake_case = BatchFeature({'''input_features''': features} ) _snake_case = self.pad( __lowerCamelCase , padding=__lowerCamelCase , max_length=__lowerCamelCase , truncation=__lowerCamelCase , pad_to_multiple_of=__lowerCamelCase , return_attention_mask=__lowerCamelCase , **__lowerCamelCase , ) # make sure list is in array format _snake_case = padded_inputs.get('''input_features''' ) if isinstance(input_features[0] , __lowerCamelCase ): _snake_case = [np.asarray(__lowerCamelCase , dtype=np.floataa ) for feature in input_features] _snake_case = padded_inputs.get('''attention_mask''' ) if attention_mask is not None: _snake_case = [np.asarray(__lowerCamelCase , dtype=np.intaa ) for array in attention_mask] # Utterance-level cepstral mean and variance normalization if self.do_ceptral_normalize: _snake_case = ( np.array(__lowerCamelCase , dtype=np.intaa ) if self._get_padding_strategies(__lowerCamelCase , max_length=__lowerCamelCase ) is not PaddingStrategy.DO_NOT_PAD else None ) _snake_case = self.normalize( padded_inputs['''input_features'''] , attention_mask=__lowerCamelCase ) if return_tensors is not None: _snake_case = padded_inputs.convert_to_tensors(__lowerCamelCase ) return padded_inputs
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def __lowercase ( snake_case ): """simple docstring""" return "".join([hex(snake_case )[2:].zfill(2 ).upper() for byte in list(snake_case )] ) def __lowercase ( snake_case ): """simple docstring""" if (len(snake_case ) % 2) != 0: raise ValueError( '''Base16 encoded data is invalid: Data does not have an even number of hex digits.''' ) # Check the character set - the standard base16 alphabet # is uppercase according to RFC3548 section 6 if not set(snake_case ) <= set('''0123456789ABCDEF''' ): raise ValueError( '''Base16 encoded data is invalid: Data is not uppercase hex or it contains invalid characters.''' ) # For every two hexadecimal digits (= a byte), turn it into an integer. # Then, string the result together into bytes, and return it. return bytes(int(data[i] + data[i + 1], 1_6 ) for i in range(0, len(snake_case ), 2 ) ) if __name__ == "__main__": import doctest doctest.testmod()
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"""simple docstring""" from .imports import is_tqdm_available if is_tqdm_available(): from tqdm.auto import tqdm as _tqdm from ..state import PartialState def _lowerCamelCase ( UpperCAmelCase_ : bool = True, *UpperCAmelCase_ : List[Any], **UpperCAmelCase_ : List[Any] ) -> Any: """simple docstring""" if not is_tqdm_available(): raise ImportError("Accelerate's `tqdm` module requires `tqdm` to be installed. Please run `pip install tqdm`." ) A__ = False if main_process_only: A__ = PartialState().local_process_index == 0 return _tqdm(*UpperCAmelCase_, **UpperCAmelCase_, disable=UpperCAmelCase_ )
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import pytest import requests from datasets.utils.file_utils import http_head from .utils import OfflineSimulationMode, RequestWouldHangIndefinitelyError, offline @pytest.mark.integration def __lowercase ( ): """simple docstring""" with offline(OfflineSimulationMode.CONNECTION_TIMES_OUT ): with pytest.raises(snake_case ): requests.request('''GET''', '''https://huggingface.co''' ) with pytest.raises(requests.exceptions.ConnectTimeout ): requests.request('''GET''', '''https://huggingface.co''', timeout=1.0 ) @pytest.mark.integration def __lowercase ( ): """simple docstring""" with offline(OfflineSimulationMode.CONNECTION_FAILS ): with pytest.raises(requests.exceptions.ConnectionError ): requests.request('''GET''', '''https://huggingface.co''' ) def __lowercase ( ): """simple docstring""" with offline(OfflineSimulationMode.HF_DATASETS_OFFLINE_SET_TO_1 ): with pytest.raises(snake_case ): http_head('''https://huggingface.co''' )
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from typing import Any def __UpperCAmelCase ( lowerCamelCase_ : list ) -> list[Any]: """simple docstring""" if not input_list: return [] SCREAMING_SNAKE_CASE_ : Any = [input_list.count(lowerCamelCase_ ) for value in input_list] SCREAMING_SNAKE_CASE_ : Dict = max(lowerCamelCase_ ) # Gets the maximum count in the input list. # Gets values of modes return sorted({input_list[i] for i, value in enumerate(lowerCamelCase_ ) if value == y} ) if __name__ == "__main__": import doctest doctest.testmod()
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import math from collections.abc import Iterator from itertools import takewhile def __lowercase ( snake_case ): """simple docstring""" if 1 < number < 4: # 2 and 3 are primes return True elif number < 2 or number % 2 == 0 or number % 3 == 0: # Negatives, 0, 1, all even numbers, all multiples of 3 are not primes return False # All primes number are in format of 6k +/- 1 for i in range(5, int(math.sqrt(snake_case ) + 1 ), 6 ): if number % i == 0 or number % (i + 2) == 0: return False return True def __lowercase ( ): """simple docstring""" __magic_name__ :str = 2 while True: if is_prime(snake_case ): yield num num += 1 def __lowercase ( snake_case = 2_0_0_0_0_0_0 ): """simple docstring""" return sum(takewhile(lambda snake_case : x < n, prime_generator() ) ) if __name__ == "__main__": print(f"{solution() = }")
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from ...configuration_utils import PretrainedConfig from ...utils import logging __snake_case :Union[str, Any] =logging.get_logger(__name__) __snake_case :List[Any] ={ 'facebook/nllb-moe-54B': 'https://huggingface.co/facebook/nllb-moe-54b/resolve/main/config.json', } class lowerCAmelCase__ ( _lowerCamelCase ): A_ : Dict = 'nllb-moe' A_ : Optional[int] = ['past_key_values'] A_ : Any = {'num_attention_heads': 'encoder_attention_heads', 'hidden_size': 'd_model'} def __init__( self : int , __UpperCamelCase : int=128_112 , __UpperCamelCase : str=1_024 , __UpperCamelCase : Optional[Any]=12 , __UpperCamelCase : str=4_096 , __UpperCamelCase : Tuple=16 , __UpperCamelCase : List[str]=12 , __UpperCamelCase : Optional[Any]=4_096 , __UpperCamelCase : int=16 , __UpperCamelCase : str=0.0_5 , __UpperCamelCase : Optional[Any]=0.0_5 , __UpperCamelCase : Dict=True , __UpperCamelCase : List[Any]=True , __UpperCamelCase : Any="relu" , __UpperCamelCase : Any=1_024 , __UpperCamelCase : Dict=0.1 , __UpperCamelCase : Union[str, Any]=0.1 , __UpperCamelCase : int=0.0 , __UpperCamelCase : int=0.0_2 , __UpperCamelCase : str=2 , __UpperCamelCase : str=True , __UpperCamelCase : Dict=False , __UpperCamelCase : List[Any]="float32" , __UpperCamelCase : Tuple=False , __UpperCamelCase : Any=128 , __UpperCamelCase : Optional[int]=64 , __UpperCamelCase : List[str]=4 , __UpperCamelCase : Dict=4 , __UpperCamelCase : int=0.0_0_1 , __UpperCamelCase : Dict=0.0_0_1 , __UpperCamelCase : Optional[Any]="all" , __UpperCamelCase : List[str]=False , __UpperCamelCase : Tuple=False , __UpperCamelCase : Any=1.0 , __UpperCamelCase : List[str]=0.2 , __UpperCamelCase : str=1 , __UpperCamelCase : Optional[int]=0 , __UpperCamelCase : Union[str, Any]=2 , __UpperCamelCase : Dict=False , **__UpperCamelCase : Optional[Any] , ) -> Optional[int]: A = vocab_size A = max_position_embeddings A = d_model A = encoder_ffn_dim A = encoder_layers A = encoder_attention_heads A = decoder_ffn_dim A = decoder_layers A = decoder_attention_heads A = dropout A = attention_dropout A = activation_dropout A = activation_function A = init_std A = encoder_layerdrop A = decoder_layerdrop A = use_cache A = encoder_layers A = scale_embedding # scale factor will be sqrt(d_model) if True A = router_z_loss_coef A = router_aux_loss_coef A = decoder_sparse_step A = encoder_sparse_step A = num_experts A = expert_capacity A = router_bias if router_dtype not in ["float32", "float16", "bfloat16"]: raise ValueError(f'''`router_dtype` must be one of \'float32\', \'float16\' or \'bfloat16\', got {router_dtype}''' ) A = router_dtype A = router_ignore_padding_tokens A = batch_prioritized_routing A = second_expert_policy A = normalize_router_prob_before_dropping A = moe_eval_capacity_token_fraction A = moe_token_dropout A = output_router_logits super().__init__( pad_token_id=__UpperCamelCase , bos_token_id=__UpperCamelCase , eos_token_id=__UpperCamelCase , is_encoder_decoder=__UpperCamelCase , decoder_start_token_id=__UpperCamelCase , **__UpperCamelCase , )
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import unittest import numpy as np from transformers.testing_utils import require_flax, require_tf, require_torch from transformers.utils import ( expand_dims, flatten_dict, is_flax_available, is_tf_available, is_torch_available, reshape, squeeze, transpose, ) if is_flax_available(): import jax.numpy as jnp if is_tf_available(): import tensorflow as tf if is_torch_available(): import torch class lowerCamelCase_ ( unittest.TestCase ): def A ( self ): """simple docstring""" __magic_name__ :List[Any] = { '''task_specific_params''': { '''summarization''': {'''length_penalty''': 1.0, '''max_length''': 1_2_8, '''min_length''': 1_2, '''num_beams''': 4}, '''summarization_cnn''': {'''length_penalty''': 2.0, '''max_length''': 1_4_2, '''min_length''': 5_6, '''num_beams''': 4}, '''summarization_xsum''': {'''length_penalty''': 1.0, '''max_length''': 6_2, '''min_length''': 1_1, '''num_beams''': 6}, } } __magic_name__ :List[str] = { '''task_specific_params.summarization.length_penalty''': 1.0, '''task_specific_params.summarization.max_length''': 1_2_8, '''task_specific_params.summarization.min_length''': 1_2, '''task_specific_params.summarization.num_beams''': 4, '''task_specific_params.summarization_cnn.length_penalty''': 2.0, '''task_specific_params.summarization_cnn.max_length''': 1_4_2, '''task_specific_params.summarization_cnn.min_length''': 5_6, '''task_specific_params.summarization_cnn.num_beams''': 4, '''task_specific_params.summarization_xsum.length_penalty''': 1.0, '''task_specific_params.summarization_xsum.max_length''': 6_2, '''task_specific_params.summarization_xsum.min_length''': 1_1, '''task_specific_params.summarization_xsum.num_beams''': 6, } self.assertEqual(flatten_dict(__lowerCAmelCase ) , __lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = np.random.randn(3 , 4 ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , x.transpose() ) ) __magic_name__ :List[Any] = np.random.randn(3 , 4 , 5 ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , x.transpose((1, 2, 0) ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = np.random.randn(3 , 4 ) __magic_name__ :Tuple = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , transpose(__lowerCAmelCase ).numpy() ) ) __magic_name__ :int = np.random.randn(3 , 4 , 5 ) __magic_name__ :Union[str, Any] = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , transpose(__lowerCAmelCase , axes=(1, 2, 0) ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :int = np.random.randn(3 , 4 ) __magic_name__ :Optional[Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , transpose(__lowerCAmelCase ).numpy() ) ) __magic_name__ :List[str] = np.random.randn(3 , 4 , 5 ) __magic_name__ :Optional[Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , transpose(__lowerCAmelCase , axes=(1, 2, 0) ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :int = np.random.randn(3 , 4 ) __magic_name__ :Dict = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , np.asarray(transpose(__lowerCAmelCase ) ) ) ) __magic_name__ :Dict = np.random.randn(3 , 4 , 5 ) __magic_name__ :Dict = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , np.asarray(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) ) ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = np.random.randn(3 , 4 ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , np.reshape(__lowerCAmelCase , (4, 3) ) ) ) __magic_name__ :Union[str, Any] = np.random.randn(3 , 4 , 5 ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , np.reshape(__lowerCAmelCase , (1_2, 5) ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :Dict = np.random.randn(3 , 4 ) __magic_name__ :Tuple = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , reshape(__lowerCAmelCase , (4, 3) ).numpy() ) ) __magic_name__ :Union[str, Any] = np.random.randn(3 , 4 , 5 ) __magic_name__ :List[str] = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , reshape(__lowerCAmelCase , (1_2, 5) ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :Dict = np.random.randn(3 , 4 ) __magic_name__ :Union[str, Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , reshape(__lowerCAmelCase , (4, 3) ).numpy() ) ) __magic_name__ :List[Any] = np.random.randn(3 , 4 , 5 ) __magic_name__ :Optional[int] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , reshape(__lowerCAmelCase , (1_2, 5) ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :List[str] = np.random.randn(3 , 4 ) __magic_name__ :Any = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , np.asarray(reshape(__lowerCAmelCase , (4, 3) ) ) ) ) __magic_name__ :List[Any] = np.random.randn(3 , 4 , 5 ) __magic_name__ :List[str] = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , np.asarray(reshape(__lowerCAmelCase , (1_2, 5) ) ) ) ) def A ( self ): """simple docstring""" __magic_name__ :List[Any] = np.random.randn(1 , 3 , 4 ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , np.squeeze(__lowerCAmelCase ) ) ) __magic_name__ :Optional[Any] = np.random.randn(1 , 4 , 1 , 5 ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , np.squeeze(__lowerCAmelCase , axis=2 ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :Dict = np.random.randn(1 , 3 , 4 ) __magic_name__ :List[Any] = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , squeeze(__lowerCAmelCase ).numpy() ) ) __magic_name__ :List[str] = np.random.randn(1 , 4 , 1 , 5 ) __magic_name__ :str = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , squeeze(__lowerCAmelCase , axis=2 ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :int = np.random.randn(1 , 3 , 4 ) __magic_name__ :Tuple = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , squeeze(__lowerCAmelCase ).numpy() ) ) __magic_name__ :Tuple = np.random.randn(1 , 4 , 1 , 5 ) __magic_name__ :Optional[int] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , squeeze(__lowerCAmelCase , axis=2 ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :Tuple = np.random.randn(1 , 3 , 4 ) __magic_name__ :Optional[Any] = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , np.asarray(squeeze(__lowerCAmelCase ) ) ) ) __magic_name__ :List[Any] = np.random.randn(1 , 4 , 1 , 5 ) __magic_name__ :Optional[Any] = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , np.asarray(squeeze(__lowerCAmelCase , axis=2 ) ) ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = np.random.randn(3 , 4 ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , np.expand_dims(__lowerCAmelCase , axis=1 ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :List[Any] = np.random.randn(3 , 4 ) __magic_name__ :Any = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , expand_dims(__lowerCAmelCase , axis=1 ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :Union[str, Any] = np.random.randn(3 , 4 ) __magic_name__ :Union[str, Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , expand_dims(__lowerCAmelCase , axis=1 ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :List[str] = np.random.randn(3 , 4 ) __magic_name__ :Tuple = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , np.asarray(expand_dims(__lowerCAmelCase , axis=1 ) ) ) )
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'''simple docstring''' import logging from transformers.configuration_utils import PretrainedConfig _UpperCAmelCase : Dict = logging.getLogger(__name__) class lowercase_ ( _UpperCamelCase ): """simple docstring""" __lowerCAmelCase = "masked_bert" def __init__( self : Dict, UpperCamelCase__ : Optional[int]=3_05_22, UpperCamelCase__ : Dict=7_68, UpperCamelCase__ : Tuple=12, UpperCamelCase__ : str=12, UpperCamelCase__ : List[str]=30_72, UpperCamelCase__ : Tuple="gelu", UpperCamelCase__ : Dict=0.1, UpperCamelCase__ : List[Any]=0.1, UpperCamelCase__ : Optional[Any]=5_12, UpperCamelCase__ : Optional[Any]=2, UpperCamelCase__ : Optional[Any]=0.02, UpperCamelCase__ : str=1e-12, UpperCamelCase__ : Dict=0, UpperCamelCase__ : Optional[Any]="topK", UpperCamelCase__ : str="constant", UpperCamelCase__ : Any=0.0, **UpperCamelCase__ : Dict, ) -> List[Any]: super().__init__(pad_token_id=UpperCamelCase__, **UpperCamelCase__ ) _A = vocab_size _A = hidden_size _A = num_hidden_layers _A = num_attention_heads _A = hidden_act _A = intermediate_size _A = hidden_dropout_prob _A = attention_probs_dropout_prob _A = max_position_embeddings _A = type_vocab_size _A = initializer_range _A = layer_norm_eps _A = pruning_method _A = mask_init _A = mask_scale
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from pathlib import PurePosixPath from typing import Optional import fsspec from fsspec import AbstractFileSystem from huggingface_hub.hf_api import DatasetInfo from ..utils.file_utils import get_authentication_headers_for_url from ..utils.hub import hf_hub_url class lowerCamelCase_ ( lowerCamelCase ): a__ = '''''' a__ = '''hf-legacy''' # "hf://"" is reserved for hffs def __init__( self , __lowerCAmelCase = None , __lowerCAmelCase = None , **__lowerCAmelCase , ): """simple docstring""" super().__init__(self , **__lowerCAmelCase ) __magic_name__ :List[Any] = repo_info __magic_name__ :Dict = token __magic_name__ :Optional[Any] = None def A ( self ): """simple docstring""" if self.dir_cache is None: __magic_name__ :Any = {} for hf_file in self.repo_info.siblings: # TODO(QL): add sizes __magic_name__ :Optional[int] = { '''name''': hf_file.rfilename, '''size''': None, '''type''': '''file''', } self.dir_cache.update( { str(__lowerCAmelCase ): {'''name''': str(__lowerCAmelCase ), '''size''': None, '''type''': '''directory'''} for d in list(PurePosixPath(hf_file.rfilename ).parents )[:-1] } ) def A ( self , __lowerCAmelCase , __lowerCAmelCase = "rb" , **__lowerCAmelCase , ): """simple docstring""" if not isinstance(self.repo_info , __lowerCAmelCase ): raise NotImplementedError(F'''Open is only implemented for dataset repositories, but got {self.repo_info}''' ) __magic_name__ :Union[str, Any] = hf_hub_url(self.repo_info.id , __lowerCAmelCase , revision=self.repo_info.sha ) return fsspec.open( __lowerCAmelCase , mode=__lowerCAmelCase , headers=get_authentication_headers_for_url(__lowerCAmelCase , use_auth_token=self.token ) , client_kwargs={'''trust_env''': True} , ).open() def A ( self , __lowerCAmelCase , **__lowerCAmelCase ): """simple docstring""" self._get_dirs() __magic_name__ :str = self._strip_protocol(__lowerCAmelCase ) if path in self.dir_cache: return self.dir_cache[path] else: raise FileNotFoundError(__lowerCAmelCase ) def A ( self , __lowerCAmelCase , __lowerCAmelCase=False , **__lowerCAmelCase ): """simple docstring""" self._get_dirs() __magic_name__ :Union[str, Any] = PurePosixPath(path.strip('''/''' ) ) __magic_name__ :Dict = {} for p, f in self.dir_cache.items(): __magic_name__ :int = PurePosixPath(p.strip('''/''' ) ) __magic_name__ :Tuple = p.parent if root == path: __magic_name__ :Optional[Any] = f __magic_name__ :List[Any] = list(paths.values() ) if detail: return out else: return sorted(f['''name'''] for f in out )
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from collections import namedtuple import requests from lxml import html # type: ignore __a: List[str] = namedtuple('''covid_data''', '''cases deaths recovered''') def _SCREAMING_SNAKE_CASE ( __snake_case = "https://www.worldometers.info/coronavirus/" ) -> covid_data: _UpperCAmelCase = """//div[@class = \"maincounter-number\"]/span/text()""" return covid_data(*html.fromstring(requests.get(__snake_case ).content ).xpath(__snake_case ) ) __a: Tuple = '''Total COVID-19 cases in the world: {} Total deaths due to COVID-19 in the world: {} Total COVID-19 patients recovered in the world: {}''' print(fmt.format(*covid_stats()))
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import pyarrow.parquet as pq import pytest from datasets import Audio, Dataset, DatasetDict, Features, NamedSplit, Sequence, Value, config from datasets.features.image import Image from datasets.io.parquet import ParquetDatasetReader, ParquetDatasetWriter, get_writer_batch_size from ..utils import assert_arrow_memory_doesnt_increase, assert_arrow_memory_increases def __lowercase ( snake_case, snake_case ): """simple docstring""" assert isinstance(snake_case, snake_case ) assert dataset.num_rows == 4 assert dataset.num_columns == 3 assert dataset.column_names == ["col_1", "col_2", "col_3"] for feature, expected_dtype in expected_features.items(): assert dataset.features[feature].dtype == expected_dtype @pytest.mark.parametrize('''keep_in_memory''', [False, True] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :Tuple = tmp_path / '''cache''' __magic_name__ :int = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} with assert_arrow_memory_increases() if keep_in_memory else assert_arrow_memory_doesnt_increase(): __magic_name__ :Optional[Any] = ParquetDatasetReader(snake_case, cache_dir=snake_case, keep_in_memory=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) @pytest.mark.parametrize( '''features''', [ None, {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''}, {'''col_1''': '''string''', '''col_2''': '''string''', '''col_3''': '''string'''}, {'''col_1''': '''int32''', '''col_2''': '''int32''', '''col_3''': '''int32'''}, {'''col_1''': '''float32''', '''col_2''': '''float32''', '''col_3''': '''float32'''}, ], ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :List[str] = tmp_path / '''cache''' __magic_name__ :int = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :Tuple = features.copy() if features else default_expected_features __magic_name__ :Union[str, Any] = ( Features({feature: Value(snake_case ) for feature, dtype in features.items()} ) if features is not None else None ) __magic_name__ :int = ParquetDatasetReader(snake_case, features=snake_case, cache_dir=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) @pytest.mark.parametrize('''split''', [None, NamedSplit('''train''' ), '''train''', '''test'''] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :str = tmp_path / '''cache''' __magic_name__ :List[Any] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :int = ParquetDatasetReader(snake_case, cache_dir=snake_case, split=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) assert dataset.split == split if split else "train" @pytest.mark.parametrize('''path_type''', [str, list] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" if issubclass(snake_case, snake_case ): __magic_name__ :Union[str, Any] = parquet_path elif issubclass(snake_case, snake_case ): __magic_name__ :Union[str, Any] = [parquet_path] __magic_name__ :Optional[int] = tmp_path / '''cache''' __magic_name__ :Optional[int] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :str = ParquetDatasetReader(snake_case, cache_dir=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) def __lowercase ( snake_case, snake_case, snake_case=("train",) ): """simple docstring""" assert isinstance(snake_case, snake_case ) for split in splits: __magic_name__ :Optional[Any] = dataset_dict[split] assert dataset.num_rows == 4 assert dataset.num_columns == 3 assert dataset.column_names == ["col_1", "col_2", "col_3"] for feature, expected_dtype in expected_features.items(): assert dataset.features[feature].dtype == expected_dtype @pytest.mark.parametrize('''keep_in_memory''', [False, True] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :Any = tmp_path / '''cache''' __magic_name__ :Optional[int] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} with assert_arrow_memory_increases() if keep_in_memory else assert_arrow_memory_doesnt_increase(): __magic_name__ :Tuple = ParquetDatasetReader( {'''train''': parquet_path}, cache_dir=snake_case, keep_in_memory=snake_case ).read() _check_parquet_datasetdict(snake_case, snake_case ) @pytest.mark.parametrize( '''features''', [ None, {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''}, {'''col_1''': '''string''', '''col_2''': '''string''', '''col_3''': '''string'''}, {'''col_1''': '''int32''', '''col_2''': '''int32''', '''col_3''': '''int32'''}, {'''col_1''': '''float32''', '''col_2''': '''float32''', '''col_3''': '''float32'''}, ], ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :Optional[Any] = tmp_path / '''cache''' __magic_name__ :Dict = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :int = features.copy() if features else default_expected_features __magic_name__ :List[Any] = ( Features({feature: Value(snake_case ) for feature, dtype in features.items()} ) if features is not None else None ) __magic_name__ :Optional[int] = ParquetDatasetReader({'''train''': parquet_path}, features=snake_case, cache_dir=snake_case ).read() _check_parquet_datasetdict(snake_case, snake_case ) @pytest.mark.parametrize('''split''', [None, NamedSplit('''train''' ), '''train''', '''test'''] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" if split: __magic_name__ :Dict = {split: parquet_path} else: __magic_name__ :Optional[int] = '''train''' __magic_name__ :Dict = {'''train''': parquet_path, '''test''': parquet_path} __magic_name__ :List[Any] = tmp_path / '''cache''' __magic_name__ :Optional[Any] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :Optional[Any] = ParquetDatasetReader(snake_case, cache_dir=snake_case ).read() _check_parquet_datasetdict(snake_case, snake_case, splits=list(path.keys() ) ) assert all(dataset[split].split == split for split in path.keys() ) def __lowercase ( snake_case, snake_case ): """simple docstring""" __magic_name__ :str = ParquetDatasetWriter(snake_case, tmp_path / '''foo.parquet''' ) assert writer.write() > 0 __magic_name__ :List[Any] = pq.ParquetFile(tmp_path / '''foo.parquet''' ) __magic_name__ :List[Any] = pf.read() assert dataset.data.table == output_table def __lowercase ( snake_case, snake_case ): """simple docstring""" __magic_name__ :List[str] = str(shared_datadir / '''test_image_rgb.jpg''' ) __magic_name__ :Tuple = {'''image''': [image_path]} __magic_name__ :List[Any] = Features({'''image''': Image()} ) __magic_name__ :Tuple = Dataset.from_dict(snake_case, features=snake_case ) __magic_name__ :Union[str, Any] = ParquetDatasetWriter(snake_case, tmp_path / '''foo.parquet''' ) assert writer.write() > 0 __magic_name__ :List[str] = Dataset.from_parquet(str(tmp_path / '''foo.parquet''' ) ) assert dataset.features == reloaded_dataset.features __magic_name__ :List[str] = ParquetDatasetReader(str(tmp_path / '''foo.parquet''' ), streaming=snake_case ).read() assert dataset.features == reloaded_iterable_dataset.features @pytest.mark.parametrize( '''feature, expected''', [ (Features({'''foo''': Value('''int32''' )} ), None), (Features({'''image''': Image(), '''foo''': Value('''int32''' )} ), config.PARQUET_ROW_GROUP_SIZE_FOR_IMAGE_DATASETS), (Features({'''nested''': Sequence(Audio() )} ), config.PARQUET_ROW_GROUP_SIZE_FOR_AUDIO_DATASETS), ], ) def __lowercase ( snake_case, snake_case ): """simple docstring""" assert get_writer_batch_size(snake_case ) == expected
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0
'''simple docstring''' import argparse import json import os import sys import tempfile import unittest from argparse import Namespace from dataclasses import dataclass, field from enum import Enum from pathlib import Path from typing import List, Literal, Optional import yaml from transformers import HfArgumentParser, TrainingArguments from transformers.hf_argparser import make_choice_type_function, string_to_bool # Since Python 3.10, we can use the builtin `|` operator for Union types # See PEP 604: https://peps.python.org/pep-0604 a = sys.version_info >= (3, 10) def __magic_name__ ( __UpperCAmelCase=None , __UpperCAmelCase=None ) -> str: '''simple docstring''' return field(default_factory=lambda: default , metadata=__UpperCAmelCase ) @dataclass class __a : __UpperCamelCase : int __UpperCamelCase : float __UpperCamelCase : str __UpperCamelCase : bool @dataclass class __a : __UpperCamelCase : int = 42 __UpperCamelCase : str = field(default='toto', metadata={'help': 'help message'} ) @dataclass class __a : __UpperCamelCase : bool = False __UpperCamelCase : bool = True __UpperCamelCase : Optional[bool] = None class __a ( _snake_case ): __UpperCamelCase : Any = 'titi' __UpperCamelCase : Union[str, Any] = 'toto' class __a ( _snake_case ): __UpperCamelCase : Optional[int] = 'titi' __UpperCamelCase : int = 'toto' __UpperCamelCase : Optional[Any] = 42 @dataclass class __a : __UpperCamelCase : BasicEnum = "toto" def UpperCAmelCase__ ( self : int ): '''simple docstring''' __SCREAMING_SNAKE_CASE = BasicEnum(self.foo ) @dataclass class __a : __UpperCamelCase : MixedTypeEnum = "toto" def UpperCAmelCase__ ( self : Dict ): '''simple docstring''' __SCREAMING_SNAKE_CASE = MixedTypeEnum(self.foo ) @dataclass class __a : __UpperCamelCase : Optional[int] = None __UpperCamelCase : Optional[float] = field(default=_snake_case, metadata={'help': 'help message'} ) __UpperCamelCase : Optional[str] = None __UpperCamelCase : Optional[List[str]] = list_field(default=[] ) __UpperCamelCase : Optional[List[int]] = list_field(default=[] ) @dataclass class __a : __UpperCamelCase : List[int] = list_field(default=[] ) __UpperCamelCase : List[int] = list_field(default=[1, 2, 3] ) __UpperCamelCase : List[str] = list_field(default=['Hallo', 'Bonjour', 'Hello'] ) __UpperCamelCase : List[float] = list_field(default=[0.1, 0.2, 0.3] ) @dataclass class __a : __UpperCamelCase : List[int] = field() __UpperCamelCase : str = field() __UpperCamelCase : BasicEnum = field() def UpperCAmelCase__ ( self : Tuple ): '''simple docstring''' __SCREAMING_SNAKE_CASE = BasicEnum(self.required_enum ) @dataclass class __a : __UpperCamelCase : int __UpperCamelCase : "BasicEnum" = field() __UpperCamelCase : "Optional[bool]" = None __UpperCamelCase : "str" = field(default='toto', metadata={'help': 'help message'} ) __UpperCamelCase : "List[str]" = list_field(default=['Hallo', 'Bonjour', 'Hello'] ) if is_python_no_less_than_3_10: @dataclass class __a : __UpperCamelCase : bool = False __UpperCamelCase : bool = True __UpperCamelCase : bool | None = None @dataclass class __a : __UpperCamelCase : int | None = None __UpperCamelCase : float | None = field(default=_snake_case, metadata={'help': 'help message'} ) __UpperCamelCase : str | None = None __UpperCamelCase : list[str] | None = list_field(default=[] ) __UpperCamelCase : list[int] | None = list_field(default=[] ) class __a ( unittest.TestCase ): def UpperCAmelCase__ ( self : List[str] ,lowerCamelCase : argparse.ArgumentParser ,lowerCamelCase : argparse.ArgumentParser ): '''simple docstring''' self.assertEqual(len(a._actions ) ,len(b._actions ) ) for x, y in zip(a._actions ,b._actions ): __SCREAMING_SNAKE_CASE = {k: v for k, v in vars(lowerCamelCase ).items() if k != """container"""} __SCREAMING_SNAKE_CASE = {k: v for k, v in vars(lowerCamelCase ).items() if k != """container"""} # Choices with mixed type have custom function as "type" # So we need to compare results directly for equality if xx.get("""choices""" ,lowerCamelCase ) and yy.get("""choices""" ,lowerCamelCase ): for expected_choice in yy["choices"] + xx["choices"]: self.assertEqual(xx["""type"""](lowerCamelCase ) ,yy["""type"""](lowerCamelCase ) ) del xx["type"], yy["type"] self.assertEqual(lowerCamelCase ,lowerCamelCase ) def UpperCAmelCase__ ( self : int ): '''simple docstring''' __SCREAMING_SNAKE_CASE = HfArgumentParser(lowerCamelCase ) __SCREAMING_SNAKE_CASE = argparse.ArgumentParser() expected.add_argument("""--foo""" ,type=lowerCamelCase ,required=lowerCamelCase ) expected.add_argument("""--bar""" ,type=lowerCamelCase ,required=lowerCamelCase ) expected.add_argument("""--baz""" ,type=lowerCamelCase ,required=lowerCamelCase ) expected.add_argument("""--flag""" ,type=lowerCamelCase ,default=lowerCamelCase ,const=lowerCamelCase ,nargs="""?""" ) self.argparsersEqual(lowerCamelCase ,lowerCamelCase ) __SCREAMING_SNAKE_CASE = ["""--foo""", """1""", """--baz""", """quux""", """--bar""", """0.5"""] ((__SCREAMING_SNAKE_CASE) , ) = parser.parse_args_into_dataclasses(lowerCamelCase ,look_for_args_file=lowerCamelCase ) self.assertFalse(example.flag ) def UpperCAmelCase__ ( self : str ): '''simple docstring''' __SCREAMING_SNAKE_CASE = HfArgumentParser(lowerCamelCase ) __SCREAMING_SNAKE_CASE = argparse.ArgumentParser() expected.add_argument("""--foo""" ,default=42 ,type=lowerCamelCase ) expected.add_argument("""--baz""" ,default="""toto""" ,type=lowerCamelCase ,help="""help message""" ) self.argparsersEqual(lowerCamelCase ,lowerCamelCase ) def UpperCAmelCase__ ( self : Optional[Any] ): '''simple docstring''' __SCREAMING_SNAKE_CASE = argparse.ArgumentParser() expected.add_argument("""--foo""" ,type=lowerCamelCase ,default=lowerCamelCase ,const=lowerCamelCase ,nargs="""?""" ) expected.add_argument("""--baz""" ,type=lowerCamelCase ,default=lowerCamelCase ,const=lowerCamelCase ,nargs="""?""" ) # A boolean no_* argument always has to come after its "default: True" regular counter-part # and its default must be set to False expected.add_argument("""--no_baz""" ,action="""store_false""" ,default=lowerCamelCase ,dest="""baz""" ) expected.add_argument("""--opt""" ,type=lowerCamelCase ,default=lowerCamelCase ) __SCREAMING_SNAKE_CASE = [WithDefaultBoolExample] if is_python_no_less_than_3_10: dataclass_types.append(lowerCamelCase ) for dataclass_type in dataclass_types: __SCREAMING_SNAKE_CASE = HfArgumentParser(lowerCamelCase ) self.argparsersEqual(lowerCamelCase ,lowerCamelCase ) __SCREAMING_SNAKE_CASE = parser.parse_args([] ) self.assertEqual(lowerCamelCase ,Namespace(foo=lowerCamelCase ,baz=lowerCamelCase ,opt=lowerCamelCase ) ) __SCREAMING_SNAKE_CASE = parser.parse_args(["""--foo""", """--no_baz"""] ) self.assertEqual(lowerCamelCase ,Namespace(foo=lowerCamelCase ,baz=lowerCamelCase ,opt=lowerCamelCase ) ) __SCREAMING_SNAKE_CASE = parser.parse_args(["""--foo""", """--baz"""] ) self.assertEqual(lowerCamelCase ,Namespace(foo=lowerCamelCase ,baz=lowerCamelCase ,opt=lowerCamelCase ) ) __SCREAMING_SNAKE_CASE = parser.parse_args(["""--foo""", """True""", """--baz""", """True""", """--opt""", """True"""] ) self.assertEqual(lowerCamelCase ,Namespace(foo=lowerCamelCase ,baz=lowerCamelCase ,opt=lowerCamelCase ) ) __SCREAMING_SNAKE_CASE = parser.parse_args(["""--foo""", """False""", """--baz""", """False""", """--opt""", """False"""] ) self.assertEqual(lowerCamelCase ,Namespace(foo=lowerCamelCase ,baz=lowerCamelCase ,opt=lowerCamelCase ) ) def UpperCAmelCase__ ( self : List[str] ): '''simple docstring''' __SCREAMING_SNAKE_CASE = HfArgumentParser(lowerCamelCase ) __SCREAMING_SNAKE_CASE = argparse.ArgumentParser() expected.add_argument( """--foo""" ,default="""toto""" ,choices=["""titi""", """toto""", 42] ,type=make_choice_type_function(["""titi""", """toto""", 42] ) ,) self.argparsersEqual(lowerCamelCase ,lowerCamelCase ) __SCREAMING_SNAKE_CASE = parser.parse_args([] ) self.assertEqual(args.foo ,"""toto""" ) __SCREAMING_SNAKE_CASE = parser.parse_args_into_dataclasses([] )[0] self.assertEqual(enum_ex.foo ,MixedTypeEnum.toto ) __SCREAMING_SNAKE_CASE = parser.parse_args(["""--foo""", """titi"""] ) self.assertEqual(args.foo ,"""titi""" ) __SCREAMING_SNAKE_CASE = parser.parse_args_into_dataclasses(["""--foo""", """titi"""] )[0] self.assertEqual(enum_ex.foo ,MixedTypeEnum.titi ) __SCREAMING_SNAKE_CASE = parser.parse_args(["""--foo""", """42"""] ) self.assertEqual(args.foo ,42 ) __SCREAMING_SNAKE_CASE = parser.parse_args_into_dataclasses(["""--foo""", """42"""] )[0] self.assertEqual(enum_ex.foo ,MixedTypeEnum.fourtytwo ) def UpperCAmelCase__ ( self : Any ): '''simple docstring''' @dataclass class __a : __UpperCamelCase : Literal["titi", "toto", 42] = "toto" __SCREAMING_SNAKE_CASE = HfArgumentParser(lowerCamelCase ) __SCREAMING_SNAKE_CASE = argparse.ArgumentParser() expected.add_argument( """--foo""" ,default="""toto""" ,choices=("""titi""", """toto""", 42) ,type=make_choice_type_function(["""titi""", """toto""", 42] ) ,) self.argparsersEqual(lowerCamelCase ,lowerCamelCase ) __SCREAMING_SNAKE_CASE = parser.parse_args([] ) self.assertEqual(args.foo ,"""toto""" ) __SCREAMING_SNAKE_CASE = parser.parse_args(["""--foo""", """titi"""] ) self.assertEqual(args.foo ,"""titi""" ) __SCREAMING_SNAKE_CASE = parser.parse_args(["""--foo""", """42"""] ) self.assertEqual(args.foo ,42 ) def UpperCAmelCase__ ( self : Optional[int] ): '''simple docstring''' __SCREAMING_SNAKE_CASE = HfArgumentParser(lowerCamelCase ) __SCREAMING_SNAKE_CASE = argparse.ArgumentParser() expected.add_argument("""--foo_int""" ,nargs="""+""" ,default=[] ,type=lowerCamelCase ) expected.add_argument("""--bar_int""" ,nargs="""+""" ,default=[1, 2, 3] ,type=lowerCamelCase ) expected.add_argument("""--foo_str""" ,nargs="""+""" ,default=["""Hallo""", """Bonjour""", """Hello"""] ,type=lowerCamelCase ) expected.add_argument("""--foo_float""" ,nargs="""+""" ,default=[0.1, 0.2, 0.3] ,type=lowerCamelCase ) self.argparsersEqual(lowerCamelCase ,lowerCamelCase ) __SCREAMING_SNAKE_CASE = parser.parse_args([] ) self.assertEqual( lowerCamelCase ,Namespace(foo_int=[] ,bar_int=[1, 2, 3] ,foo_str=["""Hallo""", """Bonjour""", """Hello"""] ,foo_float=[0.1, 0.2, 0.3] ) ,) __SCREAMING_SNAKE_CASE = parser.parse_args("""--foo_int 1 --bar_int 2 3 --foo_str a b c --foo_float 0.1 0.7""".split() ) self.assertEqual(lowerCamelCase ,Namespace(foo_int=[1] ,bar_int=[2, 3] ,foo_str=["""a""", """b""", """c"""] ,foo_float=[0.1, 0.7] ) ) def UpperCAmelCase__ ( self : str ): '''simple docstring''' __SCREAMING_SNAKE_CASE = argparse.ArgumentParser() expected.add_argument("""--foo""" ,default=lowerCamelCase ,type=lowerCamelCase ) expected.add_argument("""--bar""" ,default=lowerCamelCase ,type=lowerCamelCase ,help="""help message""" ) expected.add_argument("""--baz""" ,default=lowerCamelCase ,type=lowerCamelCase ) expected.add_argument("""--ces""" ,nargs="""+""" ,default=[] ,type=lowerCamelCase ) expected.add_argument("""--des""" ,nargs="""+""" ,default=[] ,type=lowerCamelCase ) __SCREAMING_SNAKE_CASE = [OptionalExample] if is_python_no_less_than_3_10: dataclass_types.append(lowerCamelCase ) for dataclass_type in dataclass_types: __SCREAMING_SNAKE_CASE = HfArgumentParser(lowerCamelCase ) self.argparsersEqual(lowerCamelCase ,lowerCamelCase ) __SCREAMING_SNAKE_CASE = parser.parse_args([] ) self.assertEqual(lowerCamelCase ,Namespace(foo=lowerCamelCase ,bar=lowerCamelCase ,baz=lowerCamelCase ,ces=[] ,des=[] ) ) __SCREAMING_SNAKE_CASE = parser.parse_args("""--foo 12 --bar 3.14 --baz 42 --ces a b c --des 1 2 3""".split() ) self.assertEqual(lowerCamelCase ,Namespace(foo=12 ,bar=3.14 ,baz="""42""" ,ces=["""a""", """b""", """c"""] ,des=[1, 2, 3] ) ) def UpperCAmelCase__ ( self : Union[str, Any] ): '''simple docstring''' __SCREAMING_SNAKE_CASE = HfArgumentParser(lowerCamelCase ) __SCREAMING_SNAKE_CASE = argparse.ArgumentParser() expected.add_argument("""--required_list""" ,nargs="""+""" ,type=lowerCamelCase ,required=lowerCamelCase ) expected.add_argument("""--required_str""" ,type=lowerCamelCase ,required=lowerCamelCase ) expected.add_argument( """--required_enum""" ,type=make_choice_type_function(["""titi""", """toto"""] ) ,choices=["""titi""", """toto"""] ,required=lowerCamelCase ,) self.argparsersEqual(lowerCamelCase ,lowerCamelCase ) def UpperCAmelCase__ ( self : Optional[int] ): '''simple docstring''' __SCREAMING_SNAKE_CASE = HfArgumentParser(lowerCamelCase ) __SCREAMING_SNAKE_CASE = argparse.ArgumentParser() expected.add_argument("""--foo""" ,type=lowerCamelCase ,required=lowerCamelCase ) expected.add_argument( """--required_enum""" ,type=make_choice_type_function(["""titi""", """toto"""] ) ,choices=["""titi""", """toto"""] ,required=lowerCamelCase ,) expected.add_argument("""--opt""" ,type=lowerCamelCase ,default=lowerCamelCase ) expected.add_argument("""--baz""" ,default="""toto""" ,type=lowerCamelCase ,help="""help message""" ) expected.add_argument("""--foo_str""" ,nargs="""+""" ,default=["""Hallo""", """Bonjour""", """Hello"""] ,type=lowerCamelCase ) self.argparsersEqual(lowerCamelCase ,lowerCamelCase ) def UpperCAmelCase__ ( self : Dict ): '''simple docstring''' __SCREAMING_SNAKE_CASE = HfArgumentParser(lowerCamelCase ) __SCREAMING_SNAKE_CASE = { """foo""": 12, """bar""": 3.14, """baz""": """42""", """flag""": True, } __SCREAMING_SNAKE_CASE = parser.parse_dict(lowerCamelCase )[0] __SCREAMING_SNAKE_CASE = BasicExample(**lowerCamelCase ) self.assertEqual(lowerCamelCase ,lowerCamelCase ) def UpperCAmelCase__ ( self : Any ): '''simple docstring''' __SCREAMING_SNAKE_CASE = HfArgumentParser(lowerCamelCase ) __SCREAMING_SNAKE_CASE = { """foo""": 12, """bar""": 3.14, """baz""": """42""", """flag""": True, """extra""": 42, } self.assertRaises(lowerCamelCase ,parser.parse_dict ,lowerCamelCase ,allow_extra_keys=lowerCamelCase ) def UpperCAmelCase__ ( self : Union[str, Any] ): '''simple docstring''' __SCREAMING_SNAKE_CASE = HfArgumentParser(lowerCamelCase ) __SCREAMING_SNAKE_CASE = { """foo""": 12, """bar""": 3.14, """baz""": """42""", """flag""": True, } with tempfile.TemporaryDirectory() as tmp_dir: __SCREAMING_SNAKE_CASE = os.path.join(lowerCamelCase ,"""temp_json""" ) os.mkdir(lowerCamelCase ) with open(temp_local_path + """.json""" ,"""w+""" ) as f: json.dump(lowerCamelCase ,lowerCamelCase ) __SCREAMING_SNAKE_CASE = parser.parse_yaml_file(Path(temp_local_path + """.json""" ) )[0] __SCREAMING_SNAKE_CASE = BasicExample(**lowerCamelCase ) self.assertEqual(lowerCamelCase ,lowerCamelCase ) def UpperCAmelCase__ ( self : List[Any] ): '''simple docstring''' __SCREAMING_SNAKE_CASE = HfArgumentParser(lowerCamelCase ) __SCREAMING_SNAKE_CASE = { """foo""": 12, """bar""": 3.14, """baz""": """42""", """flag""": True, } with tempfile.TemporaryDirectory() as tmp_dir: __SCREAMING_SNAKE_CASE = os.path.join(lowerCamelCase ,"""temp_yaml""" ) os.mkdir(lowerCamelCase ) with open(temp_local_path + """.yaml""" ,"""w+""" ) as f: yaml.dump(lowerCamelCase ,lowerCamelCase ) __SCREAMING_SNAKE_CASE = parser.parse_yaml_file(Path(temp_local_path + """.yaml""" ) )[0] __SCREAMING_SNAKE_CASE = BasicExample(**lowerCamelCase ) self.assertEqual(lowerCamelCase ,lowerCamelCase ) def UpperCAmelCase__ ( self : Tuple ): '''simple docstring''' __SCREAMING_SNAKE_CASE = HfArgumentParser(lowerCamelCase ) self.assertIsNotNone(lowerCamelCase )
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def __lowercase ( snake_case ): """simple docstring""" if not isinstance(snake_case, snake_case ): raise ValueError('''multiplicative_persistence() only accepts integral values''' ) if num < 0: raise ValueError('''multiplicative_persistence() does not accept negative values''' ) __magic_name__ :str = 0 __magic_name__ :Dict = str(snake_case ) while len(snake_case ) != 1: __magic_name__ :Optional[Any] = [int(snake_case ) for i in num_string] __magic_name__ :Dict = 1 for i in range(0, len(snake_case ) ): total *= numbers[i] __magic_name__ :int = str(snake_case ) steps += 1 return steps def __lowercase ( snake_case ): """simple docstring""" if not isinstance(snake_case, snake_case ): raise ValueError('''additive_persistence() only accepts integral values''' ) if num < 0: raise ValueError('''additive_persistence() does not accept negative values''' ) __magic_name__ :str = 0 __magic_name__ :Union[str, Any] = str(snake_case ) while len(snake_case ) != 1: __magic_name__ :str = [int(snake_case ) for i in num_string] __magic_name__ :Optional[int] = 0 for i in range(0, len(snake_case ) ): total += numbers[i] __magic_name__ :int = str(snake_case ) steps += 1 return steps if __name__ == "__main__": import doctest doctest.testmod()
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0
"""simple docstring""" import shutil import tempfile import unittest from transformers import SPIECE_UNDERLINE, BatchEncoding, MBartTokenizer, MBartTokenizerFast, is_torch_available from transformers.testing_utils import ( get_tests_dir, nested_simplify, require_sentencepiece, require_tokenizers, require_torch, ) from ...test_tokenization_common import TokenizerTesterMixin UpperCamelCase__ = get_tests_dir('fixtures/test_sentencepiece.model') if is_torch_available(): from transformers.models.mbart.modeling_mbart import shift_tokens_right UpperCamelCase__ = 25_00_04 UpperCamelCase__ = 25_00_20 @require_sentencepiece @require_tokenizers class a ( lowercase , unittest.TestCase ): UpperCamelCase : Tuple = MBartTokenizer UpperCamelCase : Union[str, Any] = MBartTokenizerFast UpperCamelCase : Optional[int] = True UpperCamelCase : Union[str, Any] = True def __snake_case ( self ): super().setUp() # We have a SentencePiece fixture for testing UpperCAmelCase__ : Dict = MBartTokenizer(UpperCamelCase_ , keep_accents=UpperCamelCase_ ) tokenizer.save_pretrained(self.tmpdirname ) def __snake_case ( self ): UpperCAmelCase__ : Dict = MBartTokenizer(UpperCamelCase_ , keep_accents=UpperCamelCase_ ) UpperCAmelCase__ : int = tokenizer.tokenize('This is a test' ) self.assertListEqual(UpperCamelCase_ , ['▁This', '▁is', '▁a', '▁t', 'est'] ) self.assertListEqual( tokenizer.convert_tokens_to_ids(UpperCamelCase_ ) , [value + tokenizer.fairseq_offset for value in [285, 46, 10, 170, 382]] , ) UpperCAmelCase__ : Optional[Any] = tokenizer.tokenize('I was born in 92000, and this is falsé.' ) self.assertListEqual( UpperCamelCase_ , [ SPIECE_UNDERLINE + 'I', SPIECE_UNDERLINE + 'was', SPIECE_UNDERLINE + 'b', 'or', 'n', SPIECE_UNDERLINE + 'in', SPIECE_UNDERLINE + '', '9', '2', '0', '0', '0', ',', SPIECE_UNDERLINE + 'and', SPIECE_UNDERLINE + 'this', SPIECE_UNDERLINE + 'is', SPIECE_UNDERLINE + 'f', 'al', 's', 'é', '.', ] , ) UpperCAmelCase__ : Dict = tokenizer.convert_tokens_to_ids(UpperCamelCase_ ) self.assertListEqual( UpperCamelCase_ , [ value + tokenizer.fairseq_offset for value in [8, 21, 84, 55, 24, 19, 7, 2, 602, 347, 347, 347, 3, 12, 66, 46, 72, 80, 6, 2, 4] # ^ unk: 2 + 1 = 3 unk: 2 + 1 = 3 ^ ] , ) UpperCAmelCase__ : List[str] = tokenizer.convert_ids_to_tokens(UpperCamelCase_ ) self.assertListEqual( UpperCamelCase_ , [ SPIECE_UNDERLINE + 'I', SPIECE_UNDERLINE + 'was', SPIECE_UNDERLINE + 'b', 'or', 'n', SPIECE_UNDERLINE + 'in', SPIECE_UNDERLINE + '', '<unk>', '2', '0', '0', '0', ',', SPIECE_UNDERLINE + 'and', SPIECE_UNDERLINE + 'this', SPIECE_UNDERLINE + 'is', SPIECE_UNDERLINE + 'f', 'al', 's', '<unk>', '.', ] , ) def __snake_case ( self ): if not self.test_slow_tokenizer: # as we don't have a slow version, we can't compare the outputs between slow and fast versions return UpperCAmelCase__ : Tuple = (self.rust_tokenizer_class, 'hf-internal-testing/tiny-random-mbart', {}) for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F'''{tokenizer.__class__.__name__} ({pretrained_name})''' ): UpperCAmelCase__ : int = self.rust_tokenizer_class.from_pretrained(UpperCamelCase_ , **UpperCamelCase_ ) UpperCAmelCase__ : Tuple = self.tokenizer_class.from_pretrained(UpperCamelCase_ , **UpperCamelCase_ ) UpperCAmelCase__ : Tuple = tempfile.mkdtemp() UpperCAmelCase__ : Optional[int] = tokenizer_r.save_pretrained(UpperCamelCase_ ) UpperCAmelCase__ : List[Any] = tokenizer_p.save_pretrained(UpperCamelCase_ ) # Checks it save with the same files + the tokenizer.json file for the fast one self.assertTrue(any('tokenizer.json' in f for f in tokenizer_r_files ) ) UpperCAmelCase__ : Optional[Any] = tuple(f for f in tokenizer_r_files if 'tokenizer.json' not in f ) self.assertSequenceEqual(UpperCamelCase_ , UpperCamelCase_ ) # Checks everything loads correctly in the same way UpperCAmelCase__ : Tuple = tokenizer_r.from_pretrained(UpperCamelCase_ ) UpperCAmelCase__ : Tuple = tokenizer_p.from_pretrained(UpperCamelCase_ ) # Check special tokens are set accordingly on Rust and Python for key in tokenizer_pp.special_tokens_map: self.assertTrue(hasattr(UpperCamelCase_ , UpperCamelCase_ ) ) # self.assertEqual(getattr(tokenizer_rp, key), getattr(tokenizer_pp, key)) # self.assertEqual(getattr(tokenizer_rp, key + "_id"), getattr(tokenizer_pp, key + "_id")) shutil.rmtree(UpperCamelCase_ ) # Save tokenizer rust, legacy_format=True UpperCAmelCase__ : int = tempfile.mkdtemp() UpperCAmelCase__ : Tuple = tokenizer_r.save_pretrained(UpperCamelCase_ , legacy_format=UpperCamelCase_ ) UpperCAmelCase__ : str = tokenizer_p.save_pretrained(UpperCamelCase_ ) # Checks it save with the same files self.assertSequenceEqual(UpperCamelCase_ , UpperCamelCase_ ) # Checks everything loads correctly in the same way UpperCAmelCase__ : Optional[Any] = tokenizer_r.from_pretrained(UpperCamelCase_ ) UpperCAmelCase__ : Dict = tokenizer_p.from_pretrained(UpperCamelCase_ ) # Check special tokens are set accordingly on Rust and Python for key in tokenizer_pp.special_tokens_map: self.assertTrue(hasattr(UpperCamelCase_ , UpperCamelCase_ ) ) shutil.rmtree(UpperCamelCase_ ) # Save tokenizer rust, legacy_format=False UpperCAmelCase__ : int = tempfile.mkdtemp() UpperCAmelCase__ : str = tokenizer_r.save_pretrained(UpperCamelCase_ , legacy_format=UpperCamelCase_ ) UpperCAmelCase__ : int = tokenizer_p.save_pretrained(UpperCamelCase_ ) # Checks it saved the tokenizer.json file self.assertTrue(any('tokenizer.json' in f for f in tokenizer_r_files ) ) # Checks everything loads correctly in the same way UpperCAmelCase__ : str = tokenizer_r.from_pretrained(UpperCamelCase_ ) UpperCAmelCase__ : List[Any] = tokenizer_p.from_pretrained(UpperCamelCase_ ) # Check special tokens are set accordingly on Rust and Python for key in tokenizer_pp.special_tokens_map: self.assertTrue(hasattr(UpperCamelCase_ , UpperCamelCase_ ) ) shutil.rmtree(UpperCamelCase_ ) @require_torch @require_sentencepiece @require_tokenizers class a ( unittest.TestCase ): UpperCamelCase : Optional[int] = """facebook/mbart-large-en-ro""" UpperCamelCase : Tuple = [ """ UN Chief Says There Is No Military Solution in Syria""", """ Secretary-General Ban Ki-moon says his response to Russia's stepped up military support for Syria is that \"there is no military solution\" to the nearly five-year conflict and more weapons will only worsen the violence and misery for millions of people.""", ] UpperCamelCase : int = [ """Şeful ONU declară că nu există o soluţie militară în Siria""", """Secretarul General Ban Ki-moon declară că răspunsul său la intensificarea sprijinului militar al Rusiei""" """ pentru Siria este că \"nu există o soluţie militară\" la conflictul de aproape cinci ani şi că noi arme nu vor""" """ face decât să înrăutăţească violenţele şi mizeria pentru milioane de oameni.""", ] UpperCamelCase : Tuple = [8_2_7_4, 1_2_7_8_7_3, 2_5_9_1_6, 7, 8_6_2_2, 2_0_7_1, 4_3_8, 6_7_4_8_5, 5_3, 1_8_7_8_9_5, 2_3, 5_1_7_1_2, 2, EN_CODE] @classmethod def __snake_case ( cls ): UpperCAmelCase__ : MBartTokenizer = MBartTokenizer.from_pretrained( cls.checkpoint_name , src_lang='en_XX' , tgt_lang='ro_RO' ) UpperCAmelCase__ : Tuple = 1 return cls def __snake_case ( self ): self.assertEqual(self.tokenizer.fairseq_tokens_to_ids['ar_AR'] , 250_001 ) self.assertEqual(self.tokenizer.fairseq_tokens_to_ids['en_EN'] , 250_004 ) self.assertEqual(self.tokenizer.fairseq_tokens_to_ids['ro_RO'] , 250_020 ) def __snake_case ( self ): UpperCAmelCase__ : Any = self.tokenizer.batch_encode_plus(self.src_text ).input_ids[0] self.assertListEqual(self.expected_src_tokens , UpperCamelCase_ ) def __snake_case ( self ): self.assertIn(UpperCamelCase_ , self.tokenizer.all_special_ids ) UpperCAmelCase__ : List[Any] = [RO_CODE, 884, 9_019, 96, 9, 916, 86_792, 36, 18_743, 15_596, 5, 2] UpperCAmelCase__ : Union[str, Any] = self.tokenizer.decode(UpperCamelCase_ , skip_special_tokens=UpperCamelCase_ ) UpperCAmelCase__ : int = self.tokenizer.decode(generated_ids[1:] , skip_special_tokens=UpperCamelCase_ ) self.assertEqual(UpperCamelCase_ , UpperCamelCase_ ) self.assertNotIn(self.tokenizer.eos_token , UpperCamelCase_ ) def __snake_case ( self ): UpperCAmelCase__ : Optional[Any] = ['this is gunna be a long sentence ' * 20] assert isinstance(src_text[0] , UpperCamelCase_ ) UpperCAmelCase__ : Tuple = 10 UpperCAmelCase__ : int = self.tokenizer(UpperCamelCase_ , max_length=UpperCamelCase_ , truncation=UpperCamelCase_ ).input_ids[0] self.assertEqual(ids[-2] , 2 ) self.assertEqual(ids[-1] , UpperCamelCase_ ) self.assertEqual(len(UpperCamelCase_ ) , UpperCamelCase_ ) def __snake_case ( self ): self.assertListEqual(self.tokenizer.convert_tokens_to_ids(['<mask>', 'ar_AR'] ) , [250_026, 250_001] ) def __snake_case ( self ): UpperCAmelCase__ : Dict = tempfile.mkdtemp() UpperCAmelCase__ : List[Any] = self.tokenizer.fairseq_tokens_to_ids self.tokenizer.save_pretrained(UpperCamelCase_ ) UpperCAmelCase__ : Union[str, Any] = MBartTokenizer.from_pretrained(UpperCamelCase_ ) self.assertDictEqual(new_tok.fairseq_tokens_to_ids , UpperCamelCase_ ) @require_torch def __snake_case ( self ): UpperCAmelCase__ : int = self.tokenizer(self.src_text , text_target=self.tgt_text , padding=UpperCamelCase_ , return_tensors='pt' ) UpperCAmelCase__ : Union[str, Any] = shift_tokens_right(batch['labels'] , self.tokenizer.pad_token_id ) # fairseq batch: https://gist.github.com/sshleifer/cba08bc2109361a74ac3760a7e30e4f4 assert batch.input_ids[1][-2:].tolist() == [2, EN_CODE] assert batch.decoder_input_ids[1][0].tolist() == RO_CODE assert batch.decoder_input_ids[1][-1] == 2 assert batch.labels[1][-2:].tolist() == [2, RO_CODE] @require_torch def __snake_case ( self ): UpperCAmelCase__ : Tuple = self.tokenizer( self.src_text , text_target=self.tgt_text , padding=UpperCamelCase_ , truncation=UpperCamelCase_ , max_length=len(self.expected_src_tokens ) , return_tensors='pt' , ) UpperCAmelCase__ : List[Any] = shift_tokens_right(batch['labels'] , self.tokenizer.pad_token_id ) self.assertIsInstance(UpperCamelCase_ , UpperCamelCase_ ) self.assertEqual((2, 14) , batch.input_ids.shape ) self.assertEqual((2, 14) , batch.attention_mask.shape ) UpperCAmelCase__ : Any = batch.input_ids.tolist()[0] self.assertListEqual(self.expected_src_tokens , UpperCamelCase_ ) self.assertEqual(2 , batch.decoder_input_ids[0, -1] ) # EOS # Test that special tokens are reset self.assertEqual(self.tokenizer.prefix_tokens , [] ) self.assertEqual(self.tokenizer.suffix_tokens , [self.tokenizer.eos_token_id, EN_CODE] ) def __snake_case ( self ): UpperCAmelCase__ : Optional[Any] = self.tokenizer(self.src_text , padding=UpperCamelCase_ , truncation=UpperCamelCase_ , max_length=3 , return_tensors='pt' ) UpperCAmelCase__ : List[str] = self.tokenizer( text_target=self.tgt_text , padding=UpperCamelCase_ , truncation=UpperCamelCase_ , max_length=10 , return_tensors='pt' ) UpperCAmelCase__ : int = targets['input_ids'] UpperCAmelCase__ : List[str] = shift_tokens_right(UpperCamelCase_ , self.tokenizer.pad_token_id ) self.assertEqual(batch.input_ids.shape[1] , 3 ) self.assertEqual(batch.decoder_input_ids.shape[1] , 10 ) @require_torch def __snake_case ( self ): UpperCAmelCase__ : Union[str, Any] = self.tokenizer._build_translation_inputs( 'A test' , return_tensors='pt' , src_lang='en_XX' , tgt_lang='ar_AR' ) self.assertEqual( nested_simplify(UpperCamelCase_ ) , { # A, test, EOS, en_XX 'input_ids': [[62, 3_034, 2, 250_004]], 'attention_mask': [[1, 1, 1, 1]], # ar_AR 'forced_bos_token_id': 250_001, } , )
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import math import os import re import sys import unittest from pathlib import Path from typing import Tuple from unittest.mock import patch from parameterized import parameterized from transformers.testing_utils import ( CaptureStderr, ExtendSysPath, TestCasePlus, execute_subprocess_async, get_gpu_count, get_torch_dist_unique_port, require_apex, require_bitsandbytes, require_fairscale, require_torch, require_torch_gpu, require_torch_multi_gpu, require_torch_non_multi_gpu, slow, ) from transformers.trainer_callback import TrainerState from transformers.trainer_utils import set_seed SCREAMING_SNAKE_CASE__ : List[Any] = os.path.abspath(os.path.dirname(__file__)) with ExtendSysPath(f"{bindir}/../../examples/pytorch/translation"): from run_translation import main # noqa set_seed(42) SCREAMING_SNAKE_CASE__ : Optional[Any] = """sshleifer/student_marian_en_ro_6_1""" SCREAMING_SNAKE_CASE__ : List[Any] = """sshleifer/tiny-mbart""" @require_torch class lowerCamelCase_ ( lowerCamelCase ): def A ( self , __lowerCAmelCase=False , __lowerCAmelCase=None , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , ): """simple docstring""" __magic_name__ :List[Any] = self.run_trainer( eval_steps=1 , max_len=1_2 , model_name=__lowerCAmelCase , num_train_epochs=1 , distributed=__lowerCAmelCase , extra_args_str=__lowerCAmelCase , predict_with_generate=__lowerCAmelCase , do_train=__lowerCAmelCase , do_eval=__lowerCAmelCase , do_predict=__lowerCAmelCase , ) __magic_name__ :Any = TrainerState.load_from_json(os.path.join(__lowerCAmelCase , '''trainer_state.json''' ) ).log_history if not do_eval: return __magic_name__ :Any = [log for log in logs if '''eval_loss''' in log.keys()] __magic_name__ :str = eval_metrics[0] if predict_with_generate: assert "eval_bleu" in first_step_stats __magic_name__ :Tuple = eval_metrics[-1] assert isinstance(last_step_stats['''eval_bleu'''] , __lowerCAmelCase ) assert not math.isnan(float(last_step_stats['''eval_loss'''] ) ), "eval_loss must not be `nan`" @require_torch_non_multi_gpu def A ( self ): """simple docstring""" self.run_seqaseq_quick() @require_torch_multi_gpu def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase ) @require_torch_multi_gpu def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp simple''' ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp simple --fp16''' ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp zero_dp_2''' , predict_with_generate=__lowerCAmelCase ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick( distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp zero_dp_2 --fp16''' , predict_with_generate=__lowerCAmelCase ) @require_apex @require_torch_gpu def A ( self ): """simple docstring""" # XXX: apex breaks the trainer if it's run twice e.g. run_seq2seq.main() from the same # program and it breaks other tests that run from the same pytest worker, therefore until this is # sorted out it must be run only in an external program, that is distributed=True in this # test and only under one or more gpus - if we want cpu will need to make a special test # # specifically to the problem traced it to self.optimizer.step() - if it's run 2nd time via # 2nd main() call it botches the future eval. # self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--fp16 --fp16_backend=apex''' ) # test 2nd time - was getting eval_loss': nan' # to reproduce the problem set distributed=False self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--fp16 --fp16_backend=apex''' ) @parameterized.expand(['''base''', '''low''', '''high''', '''mixed'''] ) @require_torch_multi_gpu def A ( self , __lowerCAmelCase ): """simple docstring""" # as each sub-test is slow-ish split into multiple sub-tests to avoid CI timeout __magic_name__ :Any = { # test with the default log_level - should be info and thus log info once '''base''': {'''extra_args_str''': '''''', '''n_matches''': 1}, # test with low log_level and log_level_replica - should be noisy on all processes # now the info string should appear twice on 2 processes '''low''': {'''extra_args_str''': '''--log_level debug --log_level_replica debug''', '''n_matches''': 2}, # test with high log_level and low log_level_replica # now the info string should appear once only on the replica '''high''': {'''extra_args_str''': '''--log_level error --log_level_replica debug''', '''n_matches''': 1}, # test with high log_level and log_level_replica - should be quiet on all processes '''mixed''': {'''extra_args_str''': '''--log_level error --log_level_replica error''', '''n_matches''': 0}, } __magic_name__ :Optional[Any] = experiments[experiment_id] __magic_name__ :List[Any] = {'''distributed''': True, '''predict_with_generate''': False, '''do_eval''': False, '''do_predict''': False} __magic_name__ :Optional[int] = '''Running training''' with CaptureStderr() as cl: self.run_seqaseq_quick(**__lowerCAmelCase , extra_args_str=data['''extra_args_str'''] ) __magic_name__ :int = len(re.findall(__lowerCAmelCase , cl.err ) ) self.assertEqual(__lowerCAmelCase , data['''n_matches'''] ) @slow def A ( self ): """simple docstring""" __magic_name__ :List[str] = self.run_trainer( eval_steps=2 , max_len=1_2_8 , model_name=__lowerCAmelCase , learning_rate=3E-4 , num_train_epochs=1_0 , distributed=__lowerCAmelCase , ) # Check metrics __magic_name__ :Optional[int] = TrainerState.load_from_json(os.path.join(__lowerCAmelCase , '''trainer_state.json''' ) ).log_history __magic_name__ :List[str] = [log for log in logs if '''eval_loss''' in log.keys()] __magic_name__ :Any = eval_metrics[0] __magic_name__ :int = eval_metrics[-1] assert first_step_stats["eval_loss"] > last_step_stats["eval_loss"], "model learned nothing" assert isinstance(last_step_stats['''eval_bleu'''] , __lowerCAmelCase ) # test if do_predict saves generations and metrics __magic_name__ :List[Any] = os.listdir(__lowerCAmelCase ) __magic_name__ :List[str] = {os.path.basename(__lowerCAmelCase ) for p in contents} assert "generated_predictions.txt" in contents assert "predict_results.json" in contents @slow @require_bitsandbytes def A ( self ): """simple docstring""" from transformers.training_args import OptimizerNames def train_and_return_metrics(__lowerCAmelCase ) -> Tuple[int, float]: __magic_name__ :str = '''--skip_memory_metrics 0''' __magic_name__ :Dict = self.run_trainer( max_len=1_2_8 , model_name=__lowerCAmelCase , learning_rate=3E-4 , num_train_epochs=1 , optim=__lowerCAmelCase , distributed=__lowerCAmelCase , extra_args_str=__lowerCAmelCase , do_eval=__lowerCAmelCase , do_predict=__lowerCAmelCase , n_gpus_to_use=1 , ) # Check metrics __magic_name__ :Optional[Any] = TrainerState.load_from_json(Path(__lowerCAmelCase , '''trainer_state.json''' ) ).log_history __magic_name__ :int = int(logs[0]['''train_mem_gpu_peaked_delta'''] / 2**2_0 ) __magic_name__ :Optional[Any] = int(logs[0]['''train_mem_gpu_alloc_delta'''] / 2**2_0 ) __magic_name__ :Any = logs[0]['''train_loss'''] return gpu_peak_mem_mb, gpu_alloc_mem_mb, loss __magic_name__ , __magic_name__ , __magic_name__ :int = train_and_return_metrics(OptimizerNames.ADAMW_TORCH.value ) __magic_name__ , __magic_name__ , __magic_name__ :Tuple = train_and_return_metrics(OptimizerNames.ADAMW_BNB.value ) __magic_name__ :Tuple = gpu_alloc_mem_orig - gpu_alloc_mem_bnb __magic_name__ :Tuple = gpu_peak_mem_orig + gpu_alloc_mem_orig __magic_name__ :List[Any] = gpu_peak_mem_bnb + gpu_alloc_mem_bnb __magic_name__ :Optional[int] = gpu_total_mem_orig - gpu_total_mem_bnb # sshleifer/student_marian_en_ro_6_1 has 54M parameter, 29M of which is `nn.Embedding` which # doesn't get quantized and remains in fp32. Therefore we only have 25M parameters quantized # in 2 bytes and the diff in optim memory usage is derived as so: # # - normal 25*8=~200MB (8 bytes per param) # - bnb 25*2= ~50MB (2 bytes per param) # # Thus we should expect ~150MB total memory saved. # # Peak memory should be the same - the total should be different by about that same margin # # After leaving a small margin to accommodate for differences between gpus let's check # that we have at least 120MB in savings __magic_name__ :Optional[Any] = 1_2_0 # uncomment the following if this test starts failing - requires py38 for a new print feature # gpu_peak_mem_diff = gpu_peak_mem_orig - gpu_peak_mem_bnb # print(f"{gpu_alloc_mem_orig=}MB {gpu_peak_mem_orig=}MB {gpu_alloc_mem_orig+gpu_peak_mem_orig=}MB") # print(f" {gpu_alloc_mem_bnb=}MB {gpu_peak_mem_bnb=}MB {gpu_alloc_mem_bnb+gpu_peak_mem_bnb=}MB") # print(f"{gpu_alloc_mem_diff=}MB") # print(f"{gpu_peak_mem_diff=}MB") # print(f"{gpu_total_mem_orig=}MB, {gpu_total_mem_bnb=}MB") # print(f"{gpu_total_mem_diff=}MB, {gpu_total_mem_diff=}MB") self.assertGreater( __lowerCAmelCase , __lowerCAmelCase , '''should use ~150MB less alloc gpu memory with BNB, compared to without it for this model but got''' F''' a difference of {gpu_alloc_mem_diff}MB, with gpu_alloc_mem_orig={gpu_alloc_mem_orig}MB and''' F''' gpu_alloc_mem_bnb={gpu_alloc_mem_bnb}MB''' , ) self.assertGreater( __lowerCAmelCase , __lowerCAmelCase , '''should use ~150MB less total gpu memory with BNB, compared to without it for this model but got''' F''' a difference of {gpu_total_mem_diff}MB, with gpu_total_mem_orig={gpu_total_mem_orig}MB and''' F''' gpu_total_mem_bnb={gpu_total_mem_bnb}MB''' , ) self.assertEqual( __lowerCAmelCase , __lowerCAmelCase , F'''loss should be the same, but got loss_orig={loss_orig}, loss_bnb={loss_bnb}''' ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase = 3E-3 , __lowerCAmelCase = "adafactor" , __lowerCAmelCase = False , __lowerCAmelCase = None , __lowerCAmelCase = 0 , __lowerCAmelCase = True , __lowerCAmelCase = True , __lowerCAmelCase = True , __lowerCAmelCase = True , __lowerCAmelCase = None , ): """simple docstring""" __magic_name__ :int = self.test_file_dir / '''../fixtures/tests_samples/wmt_en_ro''' __magic_name__ :Dict = self.get_auto_remove_tmp_dir() __magic_name__ :Tuple = F''' --model_name_or_path {model_name} --train_file {data_dir}/train.json --validation_file {data_dir}/val.json --test_file {data_dir}/test.json --output_dir {output_dir} --overwrite_output_dir --max_train_samples 8 --max_source_length {max_len} --max_target_length {max_len} --do_train --num_train_epochs {str(__lowerCAmelCase )} --per_device_train_batch_size 4 --learning_rate {learning_rate} --warmup_steps 8 --logging_steps 0 --logging_strategy no --save_steps {str(__lowerCAmelCase )} --group_by_length --label_smoothing_factor 0.1 --target_lang ro_RO --source_lang en_XX '''.split() __magic_name__ :str = F''' --do_eval --per_device_eval_batch_size 4 --max_eval_samples 8 --val_max_target_length {max_len} --evaluation_strategy steps --eval_steps {str(__lowerCAmelCase )} '''.split() __magic_name__ :Dict = ''' --do_predict '''.split() __magic_name__ :Optional[int] = [] if do_train: args += args_train if do_eval: args += args_eval if do_predict: args += args_predict if predict_with_generate: args += "--predict_with_generate".split() if do_train: if optim == "adafactor": args += "--adafactor".split() else: args += F'''--optim {optim}'''.split() if extra_args_str is not None: args += extra_args_str.split() if distributed: if n_gpus_to_use is None: __magic_name__ :List[Any] = get_gpu_count() __magic_name__ :Tuple = get_torch_dist_unique_port() __magic_name__ :Union[str, Any] = F''' -m torch.distributed.run --nproc_per_node={n_gpus_to_use} --master_port={master_port} {self.examples_dir_str}/pytorch/translation/run_translation.py '''.split() __magic_name__ :Any = [sys.executable] + distributed_args + args # keep for quick debug # print(" ".join([f"\nPYTHONPATH={self.src_dir_str}"] +cmd)); die execute_subprocess_async(__lowerCAmelCase , env=self.get_env() ) else: __magic_name__ :List[Any] = ['''run_translation.py'''] + args with patch.object(__lowerCAmelCase , '''argv''' , __lowerCAmelCase ): main() return output_dir
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'''simple docstring''' import os import unittest from transformers import MobileBertTokenizer, MobileBertTokenizerFast from transformers.models.bert.tokenization_bert import ( VOCAB_FILES_NAMES, BasicTokenizer, WordpieceTokenizer, _is_control, _is_punctuation, _is_whitespace, ) from transformers.testing_utils import require_tokenizers, slow from ...test_tokenization_common import TokenizerTesterMixin, filter_non_english @require_tokenizers class _snake_case ( a_ , unittest.TestCase ): SCREAMING_SNAKE_CASE : int = MobileBertTokenizer SCREAMING_SNAKE_CASE : Union[str, Any] = MobileBertTokenizerFast SCREAMING_SNAKE_CASE : Union[str, Any] = True SCREAMING_SNAKE_CASE : Optional[int] = True SCREAMING_SNAKE_CASE : List[str] = filter_non_english SCREAMING_SNAKE_CASE : Optional[Any] = '''google/mobilebert-uncased''' def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' super().setUp() lowerCAmelCase = [ '''[UNK]''', '''[CLS]''', '''[SEP]''', '''[PAD]''', '''[MASK]''', '''want''', '''##want''', '''##ed''', '''wa''', '''un''', '''runn''', '''##ing''', ''',''', '''low''', '''lowest''', ] lowerCAmelCase = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES['vocab_file'] ) with open(self.vocab_file , 'w' , encoding='utf-8' ) as vocab_writer: vocab_writer.write(''.join([x + '\n' for x in vocab_tokens] ) ) lowerCAmelCase = [ (tokenizer_def[0], self.pre_trained_model_path, tokenizer_def[2]) # else the 'google/' prefix is stripped for tokenizer_def in self.tokenizers_list ] def _SCREAMING_SNAKE_CASE ( self , _SCREAMING_SNAKE_CASE ): '''simple docstring''' lowerCAmelCase = '''UNwant\u00E9d,running''' lowerCAmelCase = '''unwanted, running''' return input_text, output_text def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = self.tokenizer_class(self.vocab_file ) lowerCAmelCase = tokenizer.tokenize('UNwant\u00E9d,running' ) self.assertListEqual(__lowerCAmelCase , ['un', '##want', '##ed', ',', 'runn', '##ing'] ) self.assertListEqual(tokenizer.convert_tokens_to_ids(__lowerCAmelCase ) , [9, 6, 7, 12, 10, 11] ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' if not self.test_rust_tokenizer: return lowerCAmelCase = self.get_tokenizer() lowerCAmelCase = self.get_rust_tokenizer() lowerCAmelCase = '''UNwant\u00E9d,running''' lowerCAmelCase = tokenizer.tokenize(__lowerCAmelCase ) lowerCAmelCase = rust_tokenizer.tokenize(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) lowerCAmelCase = tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) lowerCAmelCase = rust_tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) lowerCAmelCase = self.get_rust_tokenizer() lowerCAmelCase = tokenizer.encode(__lowerCAmelCase ) lowerCAmelCase = rust_tokenizer.encode(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) # With lower casing lowerCAmelCase = self.get_tokenizer(do_lower_case=__lowerCAmelCase ) lowerCAmelCase = self.get_rust_tokenizer(do_lower_case=__lowerCAmelCase ) lowerCAmelCase = '''UNwant\u00E9d,running''' lowerCAmelCase = tokenizer.tokenize(__lowerCAmelCase ) lowerCAmelCase = rust_tokenizer.tokenize(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) lowerCAmelCase = tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) lowerCAmelCase = rust_tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) lowerCAmelCase = self.get_rust_tokenizer() lowerCAmelCase = tokenizer.encode(__lowerCAmelCase ) lowerCAmelCase = rust_tokenizer.encode(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = BasicTokenizer() self.assertListEqual(tokenizer.tokenize('ah\u535A\u63A8zz' ) , ['ah', '\u535A', '\u63A8', 'zz'] ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = BasicTokenizer(do_lower_case=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(' \tHeLLo!how \n Are yoU? ' ) , ['hello', '!', 'how', 'are', 'you', '?'] ) self.assertListEqual(tokenizer.tokenize('H\u00E9llo' ) , ['hello'] ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(' \tHäLLo!how \n Are yoU? ' ) , ['hällo', '!', 'how', 'are', 'you', '?'] ) self.assertListEqual(tokenizer.tokenize('H\u00E9llo' ) , ['h\u00E9llo'] ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(' \tHäLLo!how \n Are yoU? ' ) , ['hallo', '!', 'how', 'are', 'you', '?'] ) self.assertListEqual(tokenizer.tokenize('H\u00E9llo' ) , ['hello'] ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = BasicTokenizer(do_lower_case=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(' \tHäLLo!how \n Are yoU? ' ) , ['hallo', '!', 'how', 'are', 'you', '?'] ) self.assertListEqual(tokenizer.tokenize('H\u00E9llo' ) , ['hello'] ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = BasicTokenizer(do_lower_case=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(' \tHeLLo!how \n Are yoU? ' ) , ['HeLLo', '!', 'how', 'Are', 'yoU', '?'] ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(' \tHäLLo!how \n Are yoU? ' ) , ['HäLLo', '!', 'how', 'Are', 'yoU', '?'] ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(' \tHäLLo!how \n Are yoU? ' ) , ['HaLLo', '!', 'how', 'Are', 'yoU', '?'] ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = BasicTokenizer(do_lower_case=__lowerCAmelCase , never_split=['[UNK]'] ) self.assertListEqual( tokenizer.tokenize(' \tHeLLo!how \n Are yoU? [UNK]' ) , ['HeLLo', '!', 'how', 'Are', 'yoU', '?', '[UNK]'] ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = ['''[UNK]''', '''[CLS]''', '''[SEP]''', '''want''', '''##want''', '''##ed''', '''wa''', '''un''', '''runn''', '''##ing'''] lowerCAmelCase = {} for i, token in enumerate(__lowerCAmelCase ): lowerCAmelCase = i lowerCAmelCase = WordpieceTokenizer(vocab=__lowerCAmelCase , unk_token='[UNK]' ) self.assertListEqual(tokenizer.tokenize('' ) , [] ) self.assertListEqual(tokenizer.tokenize('unwanted running' ) , ['un', '##want', '##ed', 'runn', '##ing'] ) self.assertListEqual(tokenizer.tokenize('unwantedX running' ) , ['[UNK]', 'runn', '##ing'] ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' self.assertTrue(_is_whitespace(' ' ) ) self.assertTrue(_is_whitespace('\t' ) ) self.assertTrue(_is_whitespace('\r' ) ) self.assertTrue(_is_whitespace('\n' ) ) self.assertTrue(_is_whitespace('\u00A0' ) ) self.assertFalse(_is_whitespace('A' ) ) self.assertFalse(_is_whitespace('-' ) ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' self.assertTrue(_is_control('\u0005' ) ) self.assertFalse(_is_control('A' ) ) self.assertFalse(_is_control(' ' ) ) self.assertFalse(_is_control('\t' ) ) self.assertFalse(_is_control('\r' ) ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' self.assertTrue(_is_punctuation('-' ) ) self.assertTrue(_is_punctuation('$' ) ) self.assertTrue(_is_punctuation('`' ) ) self.assertTrue(_is_punctuation('.' ) ) self.assertFalse(_is_punctuation('A' ) ) self.assertFalse(_is_punctuation(' ' ) ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = self.get_tokenizer() lowerCAmelCase = self.get_rust_tokenizer() # Example taken from the issue https://github.com/huggingface/tokenizers/issues/340 self.assertListEqual([tokenizer.tokenize(__lowerCAmelCase ) for t in ['Test', '\xad', 'test']] , [['[UNK]'], [], ['[UNK]']] ) self.assertListEqual( [rust_tokenizer.tokenize(__lowerCAmelCase ) for t in ['Test', '\xad', 'test']] , [['[UNK]'], [], ['[UNK]']] ) @slow def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = self.tokenizer_class.from_pretrained('google/mobilebert-uncased' ) lowerCAmelCase = tokenizer.encode('sequence builders' , add_special_tokens=__lowerCAmelCase ) lowerCAmelCase = tokenizer.encode('multi-sequence build' , add_special_tokens=__lowerCAmelCase ) lowerCAmelCase = tokenizer.build_inputs_with_special_tokens(__lowerCAmelCase ) lowerCAmelCase = tokenizer.build_inputs_with_special_tokens(__lowerCAmelCase , __lowerCAmelCase ) assert encoded_sentence == [1_01] + text + [1_02] assert encoded_pair == [1_01] + text + [1_02] + text_a + [1_02] def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F'{tokenizer.__class__.__name__} ({pretrained_name})' ): lowerCAmelCase = self.rust_tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) lowerCAmelCase = F'A, naïve {tokenizer_r.mask_token} AllenNLP sentence.' lowerCAmelCase = tokenizer_r.encode_plus( __lowerCAmelCase , return_attention_mask=__lowerCAmelCase , return_token_type_ids=__lowerCAmelCase , return_offsets_mapping=__lowerCAmelCase , add_special_tokens=__lowerCAmelCase , ) lowerCAmelCase = tokenizer_r.do_lower_case if hasattr(__lowerCAmelCase , 'do_lower_case' ) else False lowerCAmelCase = ( [ ((0, 0), tokenizer_r.cls_token), ((0, 1), '''A'''), ((1, 2), ''','''), ((3, 5), '''na'''), ((5, 6), '''##ï'''), ((6, 8), '''##ve'''), ((9, 15), tokenizer_r.mask_token), ((16, 21), '''Allen'''), ((21, 23), '''##NL'''), ((23, 24), '''##P'''), ((25, 33), '''sentence'''), ((33, 34), '''.'''), ((0, 0), tokenizer_r.sep_token), ] if not do_lower_case else [ ((0, 0), tokenizer_r.cls_token), ((0, 1), '''a'''), ((1, 2), ''','''), ((3, 8), '''naive'''), ((9, 15), tokenizer_r.mask_token), ((16, 21), '''allen'''), ((21, 23), '''##nl'''), ((23, 24), '''##p'''), ((25, 33), '''sentence'''), ((33, 34), '''.'''), ((0, 0), tokenizer_r.sep_token), ] ) self.assertEqual( [e[1] for e in expected_results] , tokenizer_r.convert_ids_to_tokens(tokens['input_ids'] ) ) self.assertEqual([e[0] for e in expected_results] , tokens['offset_mapping'] ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = ['''的''', '''人''', '''有'''] lowerCAmelCase = ''''''.join(__lowerCAmelCase ) for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F'{tokenizer.__class__.__name__} ({pretrained_name})' ): lowerCAmelCase = True lowerCAmelCase = self.tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) lowerCAmelCase = self.rust_tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) lowerCAmelCase = tokenizer_p.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) lowerCAmelCase = tokenizer_r.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) lowerCAmelCase = tokenizer_r.convert_ids_to_tokens(__lowerCAmelCase ) lowerCAmelCase = tokenizer_p.convert_ids_to_tokens(__lowerCAmelCase ) # it is expected that each Chinese character is not preceded by "##" self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) lowerCAmelCase = False lowerCAmelCase = self.rust_tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) lowerCAmelCase = self.tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) lowerCAmelCase = tokenizer_r.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) lowerCAmelCase = tokenizer_p.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) lowerCAmelCase = tokenizer_r.convert_ids_to_tokens(__lowerCAmelCase ) lowerCAmelCase = tokenizer_p.convert_ids_to_tokens(__lowerCAmelCase ) # it is expected that only the first Chinese character is not preceded by "##". lowerCAmelCase = [ F'##{token}' if idx != 0 else token for idx, token in enumerate(__lowerCAmelCase ) ] self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase )
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import sys SCREAMING_SNAKE_CASE__ : Optional[Any] = ( """73167176531330624919225119674426574742355349194934""" """96983520312774506326239578318016984801869478851843""" """85861560789112949495459501737958331952853208805511""" """12540698747158523863050715693290963295227443043557""" """66896648950445244523161731856403098711121722383113""" """62229893423380308135336276614282806444486645238749""" """30358907296290491560440772390713810515859307960866""" """70172427121883998797908792274921901699720888093776""" """65727333001053367881220235421809751254540594752243""" """52584907711670556013604839586446706324415722155397""" """53697817977846174064955149290862569321978468622482""" """83972241375657056057490261407972968652414535100474""" """82166370484403199890008895243450658541227588666881""" """16427171479924442928230863465674813919123162824586""" """17866458359124566529476545682848912883142607690042""" """24219022671055626321111109370544217506941658960408""" """07198403850962455444362981230987879927244284909188""" """84580156166097919133875499200524063689912560717606""" """05886116467109405077541002256983155200055935729725""" """71636269561882670428252483600823257530420752963450""" ) def __lowercase ( snake_case = N ): """simple docstring""" __magic_name__ :Optional[int] = -sys.maxsize - 1 for i in range(len(snake_case ) - 1_2 ): __magic_name__ :List[Any] = 1 for j in range(1_3 ): product *= int(n[i + j] ) if product > largest_product: __magic_name__ :str = product return largest_product if __name__ == "__main__": print(f"{solution() = }")
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class SCREAMING_SNAKE_CASE_ : '''simple docstring''' def __init__( self : Dict , __a : Optional[int] ) ->Optional[Any]: lowerCamelCase_ : Optional[Any] = size lowerCamelCase_ : Union[str, Any] = [0] * size lowerCamelCase_ : str = [0] * size @staticmethod def _lowerCAmelCase ( __a : Dict ) ->List[Any]: return index | (index + 1) @staticmethod def _lowerCAmelCase ( __a : List[str] ) ->Optional[Any]: return (index & (index + 1)) - 1 def _lowerCAmelCase ( self : List[str] , __a : Tuple , __a : Optional[Any] ) ->Tuple: lowerCamelCase_ : Union[str, Any] = value while index < self.size: lowerCamelCase_ : Optional[Any] = self.get_prev(__lowerCAmelCase ) + 1 if current_left_border == index: lowerCamelCase_ : Union[str, Any] = value else: lowerCamelCase_ : List[str] = max(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) lowerCamelCase_ : Optional[int] = self.get_next(__lowerCAmelCase ) def _lowerCAmelCase ( self : Tuple , __a : Union[str, Any] , __a : Union[str, Any] ) ->Tuple: right -= 1 # Because of right is exclusive lowerCamelCase_ : List[Any] = 0 while left <= right: lowerCamelCase_ : Tuple = self.get_prev(__lowerCAmelCase ) if left <= current_left: lowerCamelCase_ : Any = max(__lowerCAmelCase , self.tree[right] ) lowerCamelCase_ : List[str] = current_left else: lowerCamelCase_ : Dict = max(__lowerCAmelCase , self.arr[right] ) right -= 1 return result if __name__ == "__main__": import doctest doctest.testmod()
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SCREAMING_SNAKE_CASE__ : Tuple = { """a""": """AAAAA""", """b""": """AAAAB""", """c""": """AAABA""", """d""": """AAABB""", """e""": """AABAA""", """f""": """AABAB""", """g""": """AABBA""", """h""": """AABBB""", """i""": """ABAAA""", """j""": """BBBAA""", """k""": """ABAAB""", """l""": """ABABA""", """m""": """ABABB""", """n""": """ABBAA""", """o""": """ABBAB""", """p""": """ABBBA""", """q""": """ABBBB""", """r""": """BAAAA""", """s""": """BAAAB""", """t""": """BAABA""", """u""": """BAABB""", """v""": """BBBAB""", """w""": """BABAA""", """x""": """BABAB""", """y""": """BABBA""", """z""": """BABBB""", """ """: """ """, } SCREAMING_SNAKE_CASE__ : Union[str, Any] = {value: key for key, value in encode_dict.items()} def __lowercase ( snake_case ): """simple docstring""" __magic_name__ :Tuple = '''''' for letter in word.lower(): if letter.isalpha() or letter == " ": encoded += encode_dict[letter] else: raise Exception('''encode() accepts only letters of the alphabet and spaces''' ) return encoded def __lowercase ( snake_case ): """simple docstring""" if set(snake_case ) - {"A", "B", " "} != set(): raise Exception('''decode() accepts only \'A\', \'B\' and spaces''' ) __magic_name__ :Dict = '''''' for word in coded.split(): while len(snake_case ) != 0: decoded += decode_dict[word[:5]] __magic_name__ :int = word[5:] decoded += " " return decoded.strip() if __name__ == "__main__": from doctest import testmod testmod()
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def _lowerCamelCase( lowercase__ , lowercase__ ) -> Tuple: '''simple docstring''' __lowercase= (boundary[1] - boundary[0]) / steps __lowercase= boundary[0] __lowercase= boundary[1] __lowercase= make_points(lowercase__ , lowercase__ , lowercase__ ) __lowercase= 0.0 y += (h / 2.0) * f(lowercase__ ) for i in x_i: # print(i) y += h * f(lowercase__ ) y += (h / 2.0) * f(lowercase__ ) return y def _lowerCamelCase( lowercase__ , lowercase__ , lowercase__ ) -> Tuple: '''simple docstring''' __lowercase= a + h while x < (b - h): yield x __lowercase= x + h def _lowerCamelCase( lowercase__ ) -> Tuple: # enter your function here '''simple docstring''' __lowercase= (x - 0) * (x - 0) return y def _lowerCamelCase( ) -> int: '''simple docstring''' __lowercase= 0.0 # Lower bound of integration __lowercase= 1.0 # Upper bound of integration __lowercase= 10.0 # define number of steps or resolution __lowercase= [a, b] # define boundary of integration __lowercase= method_a(lowercase__ , lowercase__ ) print(F'y = {y}' ) if __name__ == "__main__": main()
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import argparse import torch from torch import nn from transformers import MaMaaaConfig, MaMaaaForConditionalGeneration def __lowercase ( snake_case ): """simple docstring""" __magic_name__ :Optional[Any] = [ '''encoder.version''', '''decoder.version''', '''model.encoder.version''', '''model.decoder.version''', '''decoder.output_projection.weight''', '''_float_tensor''', '''encoder.embed_positions._float_tensor''', '''decoder.embed_positions._float_tensor''', ] for k in ignore_keys: state_dict.pop(snake_case, snake_case ) def __lowercase ( snake_case ): """simple docstring""" __magic_name__ , __magic_name__ :Tuple = emb.weight.shape __magic_name__ :int = nn.Linear(snake_case, snake_case, bias=snake_case ) __magic_name__ :str = emb.weight.data return lin_layer def __lowercase ( snake_case ): """simple docstring""" __magic_name__ :int = torch.load(snake_case, map_location='''cpu''' ) __magic_name__ :Optional[Any] = mam_aaa['''args'''] or mam_aaa['''cfg''']['''model'''] __magic_name__ :List[Any] = mam_aaa['''model'''] remove_ignore_keys_(snake_case ) __magic_name__ :Tuple = state_dict['''encoder.embed_tokens.weight'''].shape[0] __magic_name__ :List[str] = MaMaaaConfig( vocab_size=snake_case, max_position_embeddings=1_0_2_4, encoder_layers=args.encoder_layers, decoder_layers=args.decoder_layers, encoder_attention_heads=args.encoder_attention_heads, decoder_attention_heads=args.decoder_attention_heads, encoder_ffn_dim=args.encoder_ffn_embed_dim, decoder_ffn_dim=args.decoder_ffn_embed_dim, d_model=args.encoder_embed_dim, encoder_layerdrop=args.encoder_layerdrop, decoder_layerdrop=args.decoder_layerdrop, dropout=args.dropout, attention_dropout=args.attention_dropout, activation_dropout=args.activation_dropout, activation_function='''relu''', ) __magic_name__ :int = state_dict['''decoder.embed_tokens.weight'''] __magic_name__ :List[str] = MaMaaaForConditionalGeneration(snake_case ) model.model.load_state_dict(snake_case, strict=snake_case ) __magic_name__ :List[str] = make_linear_from_emb(model.model.shared ) return model if __name__ == "__main__": SCREAMING_SNAKE_CASE__ : Optional[Any] = argparse.ArgumentParser() # Required parameters parser.add_argument("""fairseq_path""", type=str, help="""path to a model.pt on local filesystem.""") parser.add_argument("""pytorch_dump_folder_path""", default=None, type=str, help="""Path to the output PyTorch model.""") SCREAMING_SNAKE_CASE__ : int = parser.parse_args() SCREAMING_SNAKE_CASE__ : Any = convert_fairseq_mamaaa_checkpoint_from_disk(args.fairseq_pathß) model.save_pretrained(args.pytorch_dump_folder_path)
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"""simple docstring""" from __future__ import annotations import inspect import unittest import numpy as np from transformers import ResNetConfig from transformers.testing_utils import require_tf, require_vision, slow from transformers.utils import cached_property, is_tf_available, is_vision_available from ...test_configuration_common import ConfigTester from ...test_modeling_tf_common import TFModelTesterMixin, floats_tensor, ids_tensor from ...test_pipeline_mixin import PipelineTesterMixin if is_tf_available(): import tensorflow as tf from transformers import TFResNetForImageClassification, TFResNetModel from transformers.models.resnet.modeling_tf_resnet import TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST if is_vision_available(): from PIL import Image from transformers import AutoImageProcessor class __magic_name__ : def __init__( self , __magic_name__ , __magic_name__=3 , __magic_name__=3_2 , __magic_name__=3 , __magic_name__=1_0 , __magic_name__=[1_0, 2_0, 3_0, 4_0] , __magic_name__=[1, 1, 2, 1] , __magic_name__=True , __magic_name__=True , __magic_name__="relu" , __magic_name__=3 , __magic_name__=None , ): """simple docstring""" _lowerCAmelCase = parent _lowerCAmelCase = batch_size _lowerCAmelCase = image_size _lowerCAmelCase = num_channels _lowerCAmelCase = embeddings_size _lowerCAmelCase = hidden_sizes _lowerCAmelCase = depths _lowerCAmelCase = is_training _lowerCAmelCase = use_labels _lowerCAmelCase = hidden_act _lowerCAmelCase = num_labels _lowerCAmelCase = scope _lowerCAmelCase = len(__lowerCAmelCase ) def _lowerCamelCase ( self ): """simple docstring""" _lowerCAmelCase = floats_tensor([self.batch_size, self.num_channels, self.image_size, self.image_size] ) _lowerCAmelCase = None if self.use_labels: _lowerCAmelCase = ids_tensor([self.batch_size] , self.num_labels ) _lowerCAmelCase = self.get_config() return config, pixel_values, labels def _lowerCamelCase ( self ): """simple docstring""" return ResNetConfig( num_channels=self.num_channels , embeddings_size=self.embeddings_size , hidden_sizes=self.hidden_sizes , depths=self.depths , hidden_act=self.hidden_act , num_labels=self.num_labels , image_size=self.image_size , ) def _lowerCamelCase ( self , __magic_name__ , __magic_name__ , __magic_name__ ): """simple docstring""" _lowerCAmelCase = TFResNetModel(config=__lowerCAmelCase ) _lowerCAmelCase = model(__lowerCAmelCase ) # expected last hidden states: B, C, H // 32, W // 32 self.parent.assertEqual( result.last_hidden_state.shape , (self.batch_size, self.hidden_sizes[-1], self.image_size // 3_2, self.image_size // 3_2) , ) def _lowerCamelCase ( self , __magic_name__ , __magic_name__ , __magic_name__ ): """simple docstring""" _lowerCAmelCase = self.num_labels _lowerCAmelCase = TFResNetForImageClassification(__lowerCAmelCase ) _lowerCAmelCase = model(__lowerCAmelCase , labels=__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.num_labels) ) def _lowerCamelCase ( self ): """simple docstring""" _lowerCAmelCase = self.prepare_config_and_inputs() _lowerCAmelCase = config_and_inputs _lowerCAmelCase = {'''pixel_values''': pixel_values} return config, inputs_dict @require_tf class __magic_name__ ( _UpperCamelCase ,_UpperCamelCase ,unittest.TestCase ): UpperCamelCase : Any = (TFResNetModel, TFResNetForImageClassification) if is_tf_available() else () UpperCamelCase : List[str] = ( {"feature-extraction": TFResNetModel, "image-classification": TFResNetForImageClassification} if is_tf_available() else {} ) UpperCamelCase : Any = False UpperCamelCase : str = False UpperCamelCase : Union[str, Any] = False UpperCamelCase : int = False UpperCamelCase : str = False def _lowerCamelCase ( self ): """simple docstring""" _lowerCAmelCase = TFResNetModelTester(self ) _lowerCAmelCase = ConfigTester(self , config_class=__lowerCAmelCase , has_text_modality=__lowerCAmelCase ) def _lowerCamelCase ( self ): """simple docstring""" self.create_and_test_config_common_properties() self.config_tester.create_and_test_config_to_json_string() self.config_tester.create_and_test_config_to_json_file() self.config_tester.create_and_test_config_from_and_save_pretrained() self.config_tester.create_and_test_config_with_num_labels() self.config_tester.check_config_can_be_init_without_params() self.config_tester.check_config_arguments_init() def _lowerCamelCase ( self ): """simple docstring""" return @unittest.skip(reason='ResNet does not use inputs_embeds' ) def _lowerCamelCase ( self ): """simple docstring""" pass @unittest.skip(reason='ResNet does not support input and output embeddings' ) def _lowerCamelCase ( self ): """simple docstring""" pass def _lowerCamelCase ( self ): """simple docstring""" _lowerCAmelCase = self.model_tester.prepare_config_and_inputs_for_common() for model_class in self.all_model_classes: _lowerCAmelCase = model_class(__lowerCAmelCase ) _lowerCAmelCase = inspect.signature(model.call ) # signature.parameters is an OrderedDict => so arg_names order is deterministic _lowerCAmelCase = [*signature.parameters.keys()] _lowerCAmelCase = ['''pixel_values'''] self.assertListEqual(arg_names[:1] , __lowerCAmelCase ) def _lowerCamelCase ( self ): """simple docstring""" _lowerCAmelCase = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_model(*__lowerCAmelCase ) def _lowerCamelCase ( self ): """simple docstring""" def check_hidden_states_output(__magic_name__ , __magic_name__ , __magic_name__ ): _lowerCAmelCase = model_class(__lowerCAmelCase ) _lowerCAmelCase = model(**self._prepare_for_class(__lowerCAmelCase , __lowerCAmelCase ) ) _lowerCAmelCase = outputs.encoder_hidden_states if config.is_encoder_decoder else outputs.hidden_states _lowerCAmelCase = self.model_tester.num_stages self.assertEqual(len(__lowerCAmelCase ) , expected_num_stages + 1 ) # ResNet's feature maps are of shape (batch_size, num_channels, height, width) self.assertListEqual( list(hidden_states[0].shape[-2:] ) , [self.model_tester.image_size // 4, self.model_tester.image_size // 4] , ) _lowerCAmelCase = self.model_tester.prepare_config_and_inputs_for_common() _lowerCAmelCase = ['''basic''', '''bottleneck'''] for model_class in self.all_model_classes: for layer_type in layers_type: _lowerCAmelCase = layer_type _lowerCAmelCase = True check_hidden_states_output(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) # check that output_hidden_states also work using config del inputs_dict["output_hidden_states"] _lowerCAmelCase = True check_hidden_states_output(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) def _lowerCamelCase ( self ): """simple docstring""" _lowerCAmelCase = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_image_classification(*__lowerCAmelCase ) @slow def _lowerCamelCase ( self ): """simple docstring""" for model_name in TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST[:1]: _lowerCAmelCase = TFResNetModel.from_pretrained(__lowerCAmelCase ) self.assertIsNotNone(__lowerCAmelCase ) def A__ ( ): """simple docstring""" _lowerCAmelCase = Image.open('./tests/fixtures/tests_samples/COCO/000000039769.png' ) return image @require_tf @require_vision class __magic_name__ ( unittest.TestCase ): @cached_property def _lowerCamelCase ( self ): """simple docstring""" return ( AutoImageProcessor.from_pretrained(TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST[0] ) if is_vision_available() else None ) @slow def _lowerCamelCase ( self ): """simple docstring""" _lowerCAmelCase = TFResNetForImageClassification.from_pretrained(TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST[0] ) _lowerCAmelCase = self.default_image_processor _lowerCAmelCase = prepare_img() _lowerCAmelCase = image_processor(images=__lowerCAmelCase , return_tensors='tf' ) # forward pass _lowerCAmelCase = model(**__lowerCAmelCase ) # verify the logits _lowerCAmelCase = tf.TensorShape((1, 1_0_0_0) ) self.assertEqual(outputs.logits.shape , __lowerCAmelCase ) _lowerCAmelCase = tf.constant([-11.10_69, -9.78_77, -8.37_77] ) self.assertTrue(np.allclose(outputs.logits[0, :3].numpy() , __lowerCAmelCase , atol=1e-4 ) )
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from typing import TYPE_CHECKING from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tokenizers_available, is_torch_available SCREAMING_SNAKE_CASE__ : Dict = { """configuration_canine""": ["""CANINE_PRETRAINED_CONFIG_ARCHIVE_MAP""", """CanineConfig"""], """tokenization_canine""": ["""CanineTokenizer"""], } try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: SCREAMING_SNAKE_CASE__ : str = [ """CANINE_PRETRAINED_MODEL_ARCHIVE_LIST""", """CanineForMultipleChoice""", """CanineForQuestionAnswering""", """CanineForSequenceClassification""", """CanineForTokenClassification""", """CanineLayer""", """CanineModel""", """CaninePreTrainedModel""", """load_tf_weights_in_canine""", ] if TYPE_CHECKING: from .configuration_canine import CANINE_PRETRAINED_CONFIG_ARCHIVE_MAP, CanineConfig from .tokenization_canine import CanineTokenizer try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_canine import ( CANINE_PRETRAINED_MODEL_ARCHIVE_LIST, CanineForMultipleChoice, CanineForQuestionAnswering, CanineForSequenceClassification, CanineForTokenClassification, CanineLayer, CanineModel, CaninePreTrainedModel, load_tf_weights_in_canine, ) else: import sys SCREAMING_SNAKE_CASE__ : Union[str, Any] = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
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0
_A : Optional[Any] = 2_56 # Modulus to hash a string _A : Optional[Any] = 1_00_00_03 def _a ( UpperCAmelCase , UpperCAmelCase ) -> Dict: """simple docstring""" lowerCamelCase__ : Tuple = len(UpperCAmelCase ) lowerCamelCase__ : Any = len(UpperCAmelCase ) if p_len > t_len: return False lowerCamelCase__ : List[str] = 0 lowerCamelCase__ : Dict = 0 lowerCamelCase__ : Any = 1 # Calculating the hash of pattern and substring of text for i in range(UpperCAmelCase ): lowerCamelCase__ : Any = (ord(pattern[i] ) + p_hash * alphabet_size) % modulus lowerCamelCase__ : str = (ord(text[i] ) + text_hash * alphabet_size) % modulus if i == p_len - 1: continue lowerCamelCase__ : Any = (modulus_power * alphabet_size) % modulus for i in range(0 , t_len - p_len + 1 ): if text_hash == p_hash and text[i : i + p_len] == pattern: return True if i == t_len - p_len: continue # Calculate the https://en.wikipedia.org/wiki/Rolling_hash lowerCamelCase__ : Tuple = ( (text_hash - ord(text[i] ) * modulus_power) * alphabet_size + ord(text[i + p_len] ) ) % modulus return False def _a ( ) -> List[Any]: """simple docstring""" lowerCamelCase__ : Any = '''abc1abc12''' lowerCamelCase__ : Any = '''alskfjaldsabc1abc1abc12k23adsfabcabc''' lowerCamelCase__ : Optional[Any] = '''alskfjaldsk23adsfabcabc''' assert rabin_karp(UpperCAmelCase , UpperCAmelCase ) and not rabin_karp(UpperCAmelCase , UpperCAmelCase ) # Test 2) lowerCamelCase__ : Optional[Any] = '''ABABX''' lowerCamelCase__ : Tuple = '''ABABZABABYABABX''' assert rabin_karp(UpperCAmelCase , UpperCAmelCase ) # Test 3) lowerCamelCase__ : List[Any] = '''AAAB''' lowerCamelCase__ : str = '''ABAAAAAB''' assert rabin_karp(UpperCAmelCase , UpperCAmelCase ) # Test 4) lowerCamelCase__ : Tuple = '''abcdabcy''' lowerCamelCase__ : List[str] = '''abcxabcdabxabcdabcdabcy''' assert rabin_karp(UpperCAmelCase , UpperCAmelCase ) # Test 5) lowerCamelCase__ : Dict = '''Lü''' lowerCamelCase__ : Tuple = '''Lüsai''' assert rabin_karp(UpperCAmelCase , UpperCAmelCase ) lowerCamelCase__ : Optional[Any] = '''Lue''' assert not rabin_karp(UpperCAmelCase , UpperCAmelCase ) print('''Success.''' ) if __name__ == "__main__": test_rabin_karp()
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import warnings from ...processing_utils import ProcessorMixin from ...tokenization_utils_base import BatchEncoding class lowerCamelCase_ ( lowerCamelCase ): a__ = ['''image_processor''', '''tokenizer'''] a__ = '''ChineseCLIPImageProcessor''' a__ = ('''BertTokenizer''', '''BertTokenizerFast''') def __init__( self , __lowerCAmelCase=None , __lowerCAmelCase=None , **__lowerCAmelCase ): """simple docstring""" __magic_name__ :Tuple = None if "feature_extractor" in kwargs: warnings.warn( '''The `feature_extractor` argument is deprecated and will be removed in v5, use `image_processor`''' ''' instead.''' , __lowerCAmelCase , ) __magic_name__ :Optional[Any] = kwargs.pop('''feature_extractor''' ) __magic_name__ :Tuple = image_processor if image_processor is not None else feature_extractor if image_processor is None: raise ValueError('''You need to specify an `image_processor`.''' ) if tokenizer is None: raise ValueError('''You need to specify a `tokenizer`.''' ) super().__init__(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :List[Any] = self.image_processor def __call__( self , __lowerCAmelCase=None , __lowerCAmelCase=None , __lowerCAmelCase=None , **__lowerCAmelCase ): """simple docstring""" if text is None and images is None: raise ValueError('''You have to specify either text or images. Both cannot be none.''' ) if text is not None: __magic_name__ :int = self.tokenizer(__lowerCAmelCase , return_tensors=__lowerCAmelCase , **__lowerCAmelCase ) if images is not None: __magic_name__ :Dict = self.image_processor(__lowerCAmelCase , return_tensors=__lowerCAmelCase , **__lowerCAmelCase ) if text is not None and images is not None: __magic_name__ :Union[str, Any] = image_features.pixel_values return encoding elif text is not None: return encoding else: return BatchEncoding(data=dict(**__lowerCAmelCase ) , tensor_type=__lowerCAmelCase ) def A ( self , *__lowerCAmelCase , **__lowerCAmelCase ): """simple docstring""" return self.tokenizer.batch_decode(*__lowerCAmelCase , **__lowerCAmelCase ) def A ( self , *__lowerCAmelCase , **__lowerCAmelCase ): """simple docstring""" return self.tokenizer.decode(*__lowerCAmelCase , **__lowerCAmelCase ) @property def A ( self ): """simple docstring""" __magic_name__ :List[Any] = self.tokenizer.model_input_names __magic_name__ :Any = self.image_processor.model_input_names return list(dict.fromkeys(tokenizer_input_names + image_processor_input_names ) ) @property def A ( self ): """simple docstring""" warnings.warn( '''`feature_extractor_class` is deprecated and will be removed in v5. Use `image_processor_class` instead.''' , __lowerCAmelCase , ) return self.image_processor_class
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0
'''simple docstring''' def lowerCamelCase ( UpperCAmelCase__ : Optional[int] , UpperCAmelCase__ : List[str] = False ) -> List[str]: '''simple docstring''' if n == 2: return True if not n % 2 or n < 2: return False if n > 5 and n % 1_0 not in (1, 3, 7, 9): # can quickly check last digit return False if n > 3_3_1_7_0_4_4_0_6_4_6_7_9_8_8_7_3_8_5_9_6_1_9_8_1 and not allow_probable: raise ValueError( 'Warning: upper bound of deterministic test is exceeded. ' 'Pass allow_probable=True to allow probabilistic test. ' 'A return value of True indicates a probable prime.' ) # array bounds provided by analysis SCREAMING_SNAKE_CASE__ :Optional[int] = [ 2_0_4_7, 1_3_7_3_6_5_3, 2_5_3_2_6_0_0_1, 3_2_1_5_0_3_1_7_5_1, 2_1_5_2_3_0_2_8_9_8_7_4_7, 3_4_7_4_7_4_9_6_6_0_3_8_3, 3_4_1_5_5_0_0_7_1_7_2_8_3_2_1, 1, 3_8_2_5_1_2_3_0_5_6_5_4_6_4_1_3_0_5_1, 1, 1, 3_1_8_6_6_5_8_5_7_8_3_4_0_3_1_1_5_1_1_6_7_4_6_1, 3_3_1_7_0_4_4_0_6_4_6_7_9_8_8_7_3_8_5_9_6_1_9_8_1, ] SCREAMING_SNAKE_CASE__ :List[Any] = [2, 3, 5, 7, 1_1, 1_3, 1_7, 1_9, 2_3, 2_9, 3_1, 3_7, 4_1] for idx, _p in enumerate(UpperCAmelCase__ , 1 ): if n < _p: # then we have our last prime to check SCREAMING_SNAKE_CASE__ :int = primes[:idx] break SCREAMING_SNAKE_CASE__ :Tuple = n - 1, 0 # break up n -1 into a power of 2 (s) and # remaining odd component # essentially, solve for d * 2 ** s == n - 1 while d % 2 == 0: d //= 2 s += 1 for prime in plist: SCREAMING_SNAKE_CASE__ :str = False for r in range(UpperCAmelCase__ ): SCREAMING_SNAKE_CASE__ :List[Any] = pow(UpperCAmelCase__ , d * 2**r , UpperCAmelCase__ ) # see article for analysis explanation for m if (r == 0 and m == 1) or ((m + 1) % n == 0): SCREAMING_SNAKE_CASE__ :int = True # this loop will not determine compositeness break if pr: continue # if pr is False, then the above loop never evaluated to true, # and the n MUST be composite return False return True def lowerCamelCase ( ) -> Dict: '''simple docstring''' assert not miller_rabin(5_6_1 ) assert miller_rabin(5_6_3 ) # 2047 assert not miller_rabin(8_3_8_2_0_1 ) assert miller_rabin(8_3_8_2_0_7 ) # 1_373_653 assert not miller_rabin(1_7_3_1_6_0_0_1 ) assert miller_rabin(1_7_3_1_6_0_1_7 ) # 25_326_001 assert not miller_rabin(3_0_7_8_3_8_6_6_4_1 ) assert miller_rabin(3_0_7_8_3_8_6_6_5_3 ) # 3_215_031_751 assert not miller_rabin(1_7_1_3_0_4_5_5_7_4_8_0_1 ) assert miller_rabin(1_7_1_3_0_4_5_5_7_4_8_1_9 ) # 2_152_302_898_747 assert not miller_rabin(2_7_7_9_7_9_9_7_2_8_3_0_7 ) assert miller_rabin(2_7_7_9_7_9_9_7_2_8_3_2_7 ) # 3_474_749_660_383 assert not miller_rabin(1_1_3_8_5_0_0_2_3_9_0_9_4_4_1 ) assert miller_rabin(1_1_3_8_5_0_0_2_3_9_0_9_5_2_7 ) # 341_550_071_728_321 assert not miller_rabin(1_2_7_5_0_4_1_0_1_8_8_4_8_8_0_4_3_5_1 ) assert miller_rabin(1_2_7_5_0_4_1_0_1_8_8_4_8_8_0_4_3_9_1 ) # 3_825_123_056_546_413_051 assert not miller_rabin(7_9_6_6_6_4_6_4_4_5_8_5_0_7_7_8_7_7_9_1_8_6_7 ) assert miller_rabin(7_9_6_6_6_4_6_4_4_5_8_5_0_7_7_8_7_7_9_1_9_5_1 ) # 318_665_857_834_031_151_167_461 assert not miller_rabin(5_5_2_8_4_0_6_7_7_4_4_6_6_4_7_8_9_7_6_6_0_3_3_3 ) assert miller_rabin(5_5_2_8_4_0_6_7_7_4_4_6_6_4_7_8_9_7_6_6_0_3_5_9 ) # 3_317_044_064_679_887_385_961_981 # upper limit for probabilistic test if __name__ == "__main__": test_miller_rabin()
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from sklearn.metrics import matthews_corrcoef import datasets SCREAMING_SNAKE_CASE__ : Optional[Any] = """ Compute the Matthews correlation coefficient (MCC) The Matthews correlation coefficient is used in machine learning as a measure of the quality of binary and multiclass classifications. It takes into account true and false positives and negatives and is generally regarded as a balanced measure which can be used even if the classes are of very different sizes. The MCC is in essence a correlation coefficient value between -1 and +1. A coefficient of +1 represents a perfect prediction, 0 an average random prediction and -1 an inverse prediction. The statistic is also known as the phi coefficient. [source: Wikipedia] """ SCREAMING_SNAKE_CASE__ : Union[str, Any] = """ Args: predictions (list of int): Predicted labels, as returned by a model. references (list of int): Ground truth labels. sample_weight (list of int, float, or bool): Sample weights. Defaults to `None`. Returns: matthews_correlation (dict containing float): Matthews correlation. Examples: Example 1, a basic example with only predictions and references as inputs: >>> matthews_metric = datasets.load_metric(\"matthews_correlation\") >>> results = matthews_metric.compute(references=[1, 3, 2, 0, 3, 2], ... predictions=[1, 2, 2, 0, 3, 3]) >>> print(round(results['matthews_correlation'], 2)) 0.54 Example 2, the same example as above, but also including sample weights: >>> matthews_metric = datasets.load_metric(\"matthews_correlation\") >>> results = matthews_metric.compute(references=[1, 3, 2, 0, 3, 2], ... predictions=[1, 2, 2, 0, 3, 3], ... sample_weight=[0.5, 3, 1, 1, 1, 2]) >>> print(round(results['matthews_correlation'], 2)) 0.1 Example 3, the same example as above, but with sample weights that cause a negative correlation: >>> matthews_metric = datasets.load_metric(\"matthews_correlation\") >>> results = matthews_metric.compute(references=[1, 3, 2, 0, 3, 2], ... predictions=[1, 2, 2, 0, 3, 3], ... sample_weight=[0.5, 1, 0, 0, 0, 1]) >>> print(round(results['matthews_correlation'], 2)) -0.25 """ SCREAMING_SNAKE_CASE__ : int = """\ @article{scikit-learn, title={Scikit-learn: Machine Learning in {P}ython}, author={Pedregosa, F. and Varoquaux, G. and Gramfort, A. and Michel, V. and Thirion, B. and Grisel, O. and Blondel, M. and Prettenhofer, P. and Weiss, R. and Dubourg, V. and Vanderplas, J. and Passos, A. and Cournapeau, D. and Brucher, M. and Perrot, M. and Duchesnay, E.}, journal={Journal of Machine Learning Research}, volume={12}, pages={2825--2830}, year={2011} } """ @datasets.utils.file_utils.add_start_docstrings(_DESCRIPTION , _KWARGS_DESCRIPTION ) class lowerCamelCase_ ( datasets.Metric ): def A ( self ): """simple docstring""" return datasets.MetricInfo( description=_DESCRIPTION , citation=_CITATION , inputs_description=_KWARGS_DESCRIPTION , features=datasets.Features( { '''predictions''': datasets.Value('''int32''' ), '''references''': datasets.Value('''int32''' ), } ) , reference_urls=[ '''https://scikit-learn.org/stable/modules/generated/sklearn.metrics.matthews_corrcoef.html''' ] , ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase=None ): """simple docstring""" return { "matthews_correlation": float(matthews_corrcoef(__lowerCAmelCase , __lowerCAmelCase , sample_weight=__lowerCAmelCase ) ), }
0
0
import re import time from typing import Optional import IPython.display as disp from ..trainer_callback import TrainerCallback from ..trainer_utils import IntervalStrategy, has_length def __UpperCamelCase (lowerCAmelCase : Union[str, Any] ) -> List[Any]: A = int(lowerCAmelCase ) A = t // 3_600, (t // 60) % 60, t % 60 return f'''{h}:{m:02d}:{s:02d}''' if h != 0 else f'''{m:02d}:{s:02d}''' def __UpperCamelCase (lowerCAmelCase : List[Any], lowerCAmelCase : int, lowerCAmelCase : Any, lowerCAmelCase : str, lowerCAmelCase : List[str]=300 ) -> List[str]: return f''' <div> {prefix} <progress value=\'{value}\' max=\'{total}\' style=\'width:{width}px; height:20px; vertical-align: middle;\'></progress> {label} </div> ''' def __UpperCamelCase (lowerCAmelCase : Optional[int] ) -> str: A = '''<table border="1" class="dataframe">\n''' html_code += """ <thead>\n <tr style="text-align: left;">\n""" for i in items[0]: html_code += f''' <th>{i}</th>\n''' html_code += " </tr>\n </thead>\n <tbody>\n" for line in items[1:]: html_code += " <tr>\n" for elt in line: A = f'''{elt:.6f}''' if isinstance(lowerCAmelCase, lowerCAmelCase ) else str(lowerCAmelCase ) html_code += f''' <td>{elt}</td>\n''' html_code += " </tr>\n" html_code += " </tbody>\n</table><p>" return html_code class _UpperCAmelCase : '''simple docstring''' SCREAMING_SNAKE_CASE : Tuple = 5 SCREAMING_SNAKE_CASE : int = 0.2 def __init__( self : Any , UpperCamelCase__ : Dict , UpperCamelCase__ : Optional[int] = None , UpperCamelCase__ : List[Any] = True , UpperCamelCase__ : Dict = None , UpperCamelCase__ : int = 300 , ): A = total A = '''''' if prefix is None else prefix A = leave A = parent A = width A = None A = None A = None def UpperCamelCase ( self : Tuple , UpperCamelCase__ : Union[str, Any] , UpperCamelCase__ : Tuple = False , UpperCamelCase__ : Tuple = None ): A = value if comment is not None: A = comment if self.last_value is None: A = time.time() A = value A = None A = self.warmup A = 1 self.update_bar(__lowerCAmelCase ) elif value <= self.last_value and not force_update: return elif force_update or self.first_calls > 0 or value >= min(self.last_value + self.wait_for , self.total ): if self.first_calls > 0: self.first_calls -= 1 A = time.time() A = current_time - self.start_time # We could have value = self.start_value if the update is called twixe with the same start value. if value > self.start_value: A = self.elapsed_time / (value - self.start_value) else: A = None if value >= self.total: A = self.total A = None if not self.leave: self.close() elif self.average_time_per_item is not None: A = self.average_time_per_item * (self.total - value) self.update_bar(__lowerCAmelCase ) A = value A = current_time if self.average_time_per_item is None: A = 1 else: A = max(int(self.update_every / self.average_time_per_item ) , 1 ) def UpperCamelCase ( self : Dict , UpperCamelCase__ : List[str] , UpperCamelCase__ : Tuple=None ): A = ''' ''' * (len(str(self.total ) ) - len(str(__lowerCAmelCase ) )) + str(__lowerCAmelCase ) if self.elapsed_time is None: A = f'''[{spaced_value}/{self.total} : < :''' elif self.predicted_remaining is None: A = f'''[{spaced_value}/{self.total} {format_time(self.elapsed_time )}''' else: A = ( f'''[{spaced_value}/{self.total} {format_time(self.elapsed_time )} <''' f''' {format_time(self.predicted_remaining )}''' ) self.label += f''', {1/self.average_time_per_item:.2f} it/s''' self.label += "]" if self.comment is None or len(self.comment ) == 0 else f''', {self.comment}]''' self.display() def UpperCamelCase ( self : Any ): A = html_progress_bar(self.value , self.total , self.prefix , self.label , self.width ) if self.parent is not None: # If this is a child bar, the parent will take care of the display. self.parent.display() return if self.output is None: A = disp.display(disp.HTML(self.html_code ) , display_id=__lowerCAmelCase ) else: self.output.update(disp.HTML(self.html_code ) ) def UpperCamelCase ( self : List[Any] ): if self.parent is None and self.output is not None: self.output.update(disp.HTML('' ) ) class _UpperCAmelCase ( __lowercase ): '''simple docstring''' def __init__( self : Any , UpperCamelCase__ : List[Any] , UpperCamelCase__ : Union[str, Any]=None ): super().__init__(__lowerCAmelCase ) A = None if column_names is None else [column_names] A = None def UpperCamelCase ( self : List[Any] ): A = html_progress_bar(self.value , self.total , self.prefix , self.label , self.width ) if self.inner_table is not None: self.html_code += text_to_html_table(self.inner_table ) if self.child_bar is not None: self.html_code += self.child_bar.html_code if self.output is None: A = disp.display(disp.HTML(self.html_code ) , display_id=__lowerCAmelCase ) else: self.output.update(disp.HTML(self.html_code ) ) def UpperCamelCase ( self : Optional[int] , UpperCamelCase__ : List[str] ): if self.inner_table is None: A = [list(values.keys() ), list(values.values() )] else: A = self.inner_table[0] if len(self.inner_table ) == 1: # We give a chance to update the column names at the first iteration for key in values.keys(): if key not in columns: columns.append(__lowerCAmelCase ) A = columns self.inner_table.append([values[c] for c in columns] ) def UpperCamelCase ( self : Any , UpperCamelCase__ : Any , UpperCamelCase__ : Dict=None , UpperCamelCase__ : List[Any]=300 ): A = NotebookProgressBar(__lowerCAmelCase , prefix=__lowerCAmelCase , parent=self , width=__lowerCAmelCase ) return self.child_bar def UpperCamelCase ( self : Dict ): A = None self.display() class _UpperCAmelCase ( __lowercase ): '''simple docstring''' def __init__( self : Optional[Any] ): A = None A = None A = False def UpperCamelCase ( self : Union[str, Any] , UpperCamelCase__ : List[str] , UpperCamelCase__ : Dict , UpperCamelCase__ : int , **UpperCamelCase__ : Any ): A = '''Epoch''' if args.evaluation_strategy == IntervalStrategy.EPOCH else '''Step''' A = 0 A = 0 A = [self.first_column] + ['''Training Loss'''] if args.evaluation_strategy != IntervalStrategy.NO: column_names.append('Validation Loss' ) A = NotebookTrainingTracker(state.max_steps , __lowerCAmelCase ) def UpperCamelCase ( self : Dict , UpperCamelCase__ : Optional[Any] , UpperCamelCase__ : Tuple , UpperCamelCase__ : int , **UpperCamelCase__ : Union[str, Any] ): A = int(state.epoch ) if int(state.epoch ) == state.epoch else f'''{state.epoch:.2f}''' self.training_tracker.update( state.global_step + 1 , comment=f'''Epoch {epoch}/{state.num_train_epochs}''' , force_update=self._force_next_update , ) A = False def UpperCamelCase ( self : Optional[Any] , UpperCamelCase__ : Union[str, Any] , UpperCamelCase__ : List[str] , UpperCamelCase__ : List[str] , UpperCamelCase__ : Optional[int]=None , **UpperCamelCase__ : Dict ): if not has_length(__lowerCAmelCase ): return if self.prediction_bar is None: if self.training_tracker is not None: A = self.training_tracker.add_child(len(__lowerCAmelCase ) ) else: A = NotebookProgressBar(len(__lowerCAmelCase ) ) self.prediction_bar.update(1 ) else: self.prediction_bar.update(self.prediction_bar.value + 1 ) def UpperCamelCase ( self : Tuple , UpperCamelCase__ : Any , UpperCamelCase__ : Optional[Any] , UpperCamelCase__ : int , **UpperCamelCase__ : Tuple ): if self.prediction_bar is not None: self.prediction_bar.close() A = None def UpperCamelCase ( self : Tuple , UpperCamelCase__ : int , UpperCamelCase__ : Any , UpperCamelCase__ : Optional[Any] , UpperCamelCase__ : Optional[Any]=None , **UpperCamelCase__ : Optional[int] ): # Only for when there is no evaluation if args.evaluation_strategy == IntervalStrategy.NO and "loss" in logs: A = {'''Training Loss''': logs['''loss''']} # First column is necessarily Step sine we're not in epoch eval strategy A = state.global_step self.training_tracker.write_line(__lowerCAmelCase ) def UpperCamelCase ( self : Tuple , UpperCamelCase__ : Dict , UpperCamelCase__ : Union[str, Any] , UpperCamelCase__ : int , UpperCamelCase__ : List[str]=None , **UpperCamelCase__ : Tuple ): if self.training_tracker is not None: A = {'''Training Loss''': '''No log''', '''Validation Loss''': '''No log'''} for log in reversed(state.log_history ): if "loss" in log: A = log['''loss'''] break if self.first_column == "Epoch": A = int(state.epoch ) else: A = state.global_step A = '''eval''' for k in metrics: if k.endswith('_loss' ): A = re.sub(R'\_loss$' , '' , __lowerCAmelCase ) A = metrics.pop('total_flos' , __lowerCAmelCase ) A = metrics.pop('epoch' , __lowerCAmelCase ) A = metrics.pop(f'''{metric_key_prefix}_runtime''' , __lowerCAmelCase ) A = metrics.pop(f'''{metric_key_prefix}_samples_per_second''' , __lowerCAmelCase ) A = metrics.pop(f'''{metric_key_prefix}_steps_per_second''' , __lowerCAmelCase ) A = metrics.pop(f'''{metric_key_prefix}_jit_compilation_time''' , __lowerCAmelCase ) for k, v in metrics.items(): if k == f'''{metric_key_prefix}_loss''': A = v else: A = k.split('_' ) A = ''' '''.join([part.capitalize() for part in splits[1:]] ) A = v self.training_tracker.write_line(__lowerCAmelCase ) self.training_tracker.remove_child() A = None # Evaluation takes a long time so we should force the next update. A = True def UpperCamelCase ( self : int , UpperCamelCase__ : Optional[Any] , UpperCamelCase__ : List[Any] , UpperCamelCase__ : Dict , **UpperCamelCase__ : int ): self.training_tracker.update( state.global_step , comment=f'''Epoch {int(state.epoch )}/{state.num_train_epochs}''' , force_update=__lowerCAmelCase ) A = None
699
from __future__ import annotations def __lowercase ( snake_case, snake_case ): """simple docstring""" print(f'''Vertex\tShortest Distance from vertex {src}''' ) for i, d in enumerate(snake_case ): print(f'''{i}\t\t{d}''' ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" for j in range(snake_case ): __magic_name__ , __magic_name__ , __magic_name__ :Tuple = (graph[j][k] for k in ['''src''', '''dst''', '''weight''']) if distance[u] != float('''inf''' ) and distance[u] + w < distance[v]: return True return False def __lowercase ( snake_case, snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :List[Any] = [float('''inf''' )] * vertex_count __magic_name__ :Tuple = 0.0 for _ in range(vertex_count - 1 ): for j in range(snake_case ): __magic_name__ , __magic_name__ , __magic_name__ :Dict = (graph[j][k] for k in ['''src''', '''dst''', '''weight''']) if distance[u] != float('''inf''' ) and distance[u] + w < distance[v]: __magic_name__ :Tuple = distance[u] + w __magic_name__ :Tuple = check_negative_cycle(snake_case, snake_case, snake_case ) if negative_cycle_exists: raise Exception('''Negative cycle found''' ) return distance if __name__ == "__main__": import doctest doctest.testmod() SCREAMING_SNAKE_CASE__ : Tuple = int(input("""Enter number of vertices: """).strip()) SCREAMING_SNAKE_CASE__ : Any = int(input("""Enter number of edges: """).strip()) SCREAMING_SNAKE_CASE__ : list[dict[str, int]] = [{} for _ in range(E)] for i in range(E): print("""Edge """, i + 1) SCREAMING_SNAKE_CASE__ , SCREAMING_SNAKE_CASE__ , SCREAMING_SNAKE_CASE__ : Dict = ( int(x) for x in input("""Enter source, destination, weight: """).strip().split(""" """) ) SCREAMING_SNAKE_CASE__ : Dict = {"""src""": src, """dst""": dest, """weight""": weight} SCREAMING_SNAKE_CASE__ : List[Any] = int(input("""\nEnter shortest path source:""").strip()) SCREAMING_SNAKE_CASE__ : List[str] = bellman_ford(graph, V, E, source) print_distance(shortest_distance, 0)
0
0
import argparse import json from pathlib import Path import requests import torch from huggingface_hub import hf_hub_download from PIL import Image from transformers import BeitConfig, BeitForImageClassification, BeitForMaskedImageModeling, BeitImageProcessor from transformers.image_utils import PILImageResampling from transformers.utils import logging logging.set_verbosity_info() snake_case_ = logging.get_logger(__name__) def lowerCamelCase__ ( snake_case_ : List[Any] , snake_case_ : Optional[Any]=False , snake_case_ : Optional[int]=False ) -> int: __snake_case = '''backbone.''' if is_semantic else '''''' __snake_case = [] for i in range(config.num_hidden_layers ): # encoder layers: output projection, 2 feedforward neural networks and 2 layernorms rename_keys.append((f"""{prefix}blocks.{i}.norm1.weight""", f"""beit.encoder.layer.{i}.layernorm_before.weight""") ) rename_keys.append((f"""{prefix}blocks.{i}.norm1.bias""", f"""beit.encoder.layer.{i}.layernorm_before.bias""") ) rename_keys.append( (f"""{prefix}blocks.{i}.attn.proj.weight""", f"""beit.encoder.layer.{i}.attention.output.dense.weight""") ) rename_keys.append( (f"""{prefix}blocks.{i}.attn.proj.bias""", f"""beit.encoder.layer.{i}.attention.output.dense.bias""") ) rename_keys.append((f"""{prefix}blocks.{i}.norm2.weight""", f"""beit.encoder.layer.{i}.layernorm_after.weight""") ) rename_keys.append((f"""{prefix}blocks.{i}.norm2.bias""", f"""beit.encoder.layer.{i}.layernorm_after.bias""") ) rename_keys.append((f"""{prefix}blocks.{i}.mlp.fc1.weight""", f"""beit.encoder.layer.{i}.intermediate.dense.weight""") ) rename_keys.append((f"""{prefix}blocks.{i}.mlp.fc1.bias""", f"""beit.encoder.layer.{i}.intermediate.dense.bias""") ) rename_keys.append((f"""{prefix}blocks.{i}.mlp.fc2.weight""", f"""beit.encoder.layer.{i}.output.dense.weight""") ) rename_keys.append((f"""{prefix}blocks.{i}.mlp.fc2.bias""", f"""beit.encoder.layer.{i}.output.dense.bias""") ) # projection layer + position embeddings rename_keys.extend( [ (f"""{prefix}cls_token""", '''beit.embeddings.cls_token'''), (f"""{prefix}patch_embed.proj.weight""", '''beit.embeddings.patch_embeddings.projection.weight'''), (f"""{prefix}patch_embed.proj.bias""", '''beit.embeddings.patch_embeddings.projection.bias'''), (f"""{prefix}pos_embed""", '''beit.embeddings.position_embeddings'''), ] ) if has_lm_head: # mask token + layernorm rename_keys.extend( [ ('''mask_token''', '''beit.embeddings.mask_token'''), ('''norm.weight''', '''layernorm.weight'''), ('''norm.bias''', '''layernorm.bias'''), ] ) else: # layernorm + classification head rename_keys.extend( [ ('''fc_norm.weight''', '''beit.pooler.layernorm.weight'''), ('''fc_norm.bias''', '''beit.pooler.layernorm.bias'''), ('''head.weight''', '''classifier.weight'''), ('''head.bias''', '''classifier.bias'''), ] ) return rename_keys def lowerCamelCase__ ( snake_case_ : int , snake_case_ : Optional[Any] , snake_case_ : Tuple=False , snake_case_ : List[str]=False ) -> List[Any]: for i in range(config.num_hidden_layers ): __snake_case = '''backbone.''' if is_semantic else '''''' # queries, keys and values __snake_case = state_dict.pop(f"""{prefix}blocks.{i}.attn.qkv.weight""" ) __snake_case = state_dict.pop(f"""{prefix}blocks.{i}.attn.q_bias""" ) __snake_case = state_dict.pop(f"""{prefix}blocks.{i}.attn.v_bias""" ) __snake_case = in_proj_weight[ : config.hidden_size, : ] __snake_case = q_bias __snake_case = in_proj_weight[ config.hidden_size : config.hidden_size * 2, : ] __snake_case = in_proj_weight[ -config.hidden_size :, : ] __snake_case = v_bias # gamma_1 and gamma_2 # we call them lambda because otherwise they are renamed when using .from_pretrained __snake_case = state_dict.pop(f"""{prefix}blocks.{i}.gamma_1""" ) __snake_case = state_dict.pop(f"""{prefix}blocks.{i}.gamma_2""" ) __snake_case = gamma_a __snake_case = gamma_a def lowerCamelCase__ ( snake_case_ : Tuple , snake_case_ : int , snake_case_ : List[str] ) -> Tuple: __snake_case = dct.pop(snake_case_ ) __snake_case = val def lowerCamelCase__ ( ) -> Any: __snake_case = '''http://images.cocodataset.org/val2017/000000039769.jpg''' __snake_case = Image.open(requests.get(snake_case_ , stream=snake_case_ ).raw ) return im @torch.no_grad() def lowerCamelCase__ ( snake_case_ : List[str] , snake_case_ : str , snake_case_ : Any=False ) -> Optional[Any]: __snake_case = False if '''rvlcdip''' in checkpoint_url else True __snake_case = BeitConfig(use_absolute_position_embeddings=snake_case_ , use_mask_token=snake_case_ ) # size of the architecture if "large" in checkpoint_url or "dit-l" in checkpoint_url: __snake_case = 1024 __snake_case = 4096 __snake_case = 24 __snake_case = 16 # labels if "rvlcdip" in checkpoint_url: __snake_case = 16 __snake_case = '''huggingface/label-files''' __snake_case = '''rvlcdip-id2label.json''' __snake_case = json.load(open(hf_hub_download(snake_case_ , snake_case_ , repo_type='''dataset''' ) , '''r''' ) ) __snake_case = {int(snake_case_ ): v for k, v in idalabel.items()} __snake_case = idalabel __snake_case = {v: k for k, v in idalabel.items()} # load state_dict of original model, remove and rename some keys __snake_case = torch.hub.load_state_dict_from_url(snake_case_ , map_location='''cpu''' )['''model'''] __snake_case = create_rename_keys(snake_case_ , has_lm_head=snake_case_ ) for src, dest in rename_keys: rename_key(snake_case_ , snake_case_ , snake_case_ ) read_in_q_k_v(snake_case_ , snake_case_ , has_lm_head=snake_case_ ) # load HuggingFace model __snake_case = BeitForMaskedImageModeling(snake_case_ ) if has_lm_head else BeitForImageClassification(snake_case_ ) model.eval() model.load_state_dict(snake_case_ ) # Check outputs on an image __snake_case = BeitImageProcessor( size=config.image_size , resample=PILImageResampling.BILINEAR , do_center_crop=snake_case_ ) __snake_case = prepare_img() __snake_case = image_processor(images=snake_case_ , return_tensors='''pt''' ) __snake_case = encoding['''pixel_values'''] __snake_case = model(snake_case_ ) __snake_case = outputs.logits # verify logits __snake_case = [1, 16] if '''rvlcdip''' in checkpoint_url else [1, 196, 8192] assert logits.shape == torch.Size(snake_case_ ), "Shape of logits not as expected" Path(snake_case_ ).mkdir(exist_ok=snake_case_ ) print(f"""Saving model to {pytorch_dump_folder_path}""" ) model.save_pretrained(snake_case_ ) print(f"""Saving image processor to {pytorch_dump_folder_path}""" ) image_processor.save_pretrained(snake_case_ ) if push_to_hub: if has_lm_head: __snake_case = '''dit-base''' if '''base''' in checkpoint_url else '''dit-large''' else: __snake_case = '''dit-base-finetuned-rvlcdip''' if '''dit-b''' in checkpoint_url else '''dit-large-finetuned-rvlcdip''' image_processor.push_to_hub( repo_path_or_name=Path(snake_case_ , snake_case_ ) , organization='''nielsr''' , commit_message='''Add image processor''' , use_temp_dir=snake_case_ , ) model.push_to_hub( repo_path_or_name=Path(snake_case_ , snake_case_ ) , organization='''nielsr''' , commit_message='''Add model''' , use_temp_dir=snake_case_ , ) if __name__ == "__main__": snake_case_ = argparse.ArgumentParser() parser.add_argument( '--checkpoint_url', default='https://layoutlm.blob.core.windows.net/dit/dit-pts/dit-base-224-p16-500k-62d53a.pth', type=str, help='URL to the original PyTorch checkpoint (.pth file).', ) parser.add_argument( '--pytorch_dump_folder_path', default=None, type=str, help='Path to the folder to output PyTorch model.' ) parser.add_argument( '--push_to_hub', action='store_true', ) snake_case_ = parser.parse_args() convert_dit_checkpoint(args.checkpoint_url, args.pytorch_dump_folder_path, args.push_to_hub)
592
from __future__ import annotations import unittest from transformers import RoFormerConfig, is_tf_available from transformers.testing_utils import require_tf, slow from ...test_configuration_common import ConfigTester from ...test_modeling_tf_common import TFModelTesterMixin, ids_tensor, random_attention_mask from ...test_pipeline_mixin import PipelineTesterMixin if is_tf_available(): import tensorflow as tf from transformers import ( TFRoFormerForCausalLM, TFRoFormerForMaskedLM, TFRoFormerForMultipleChoice, TFRoFormerForQuestionAnswering, TFRoFormerForSequenceClassification, TFRoFormerForTokenClassification, TFRoFormerModel, ) from transformers.models.roformer.modeling_tf_roformer import ( TFRoFormerSelfAttention, TFRoFormerSinusoidalPositionalEmbedding, ) class lowerCamelCase_ : def __init__( self , __lowerCAmelCase , __lowerCAmelCase=1_3 , __lowerCAmelCase=7 , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=9_9 , __lowerCAmelCase=3_2 , __lowerCAmelCase=2 , __lowerCAmelCase=4 , __lowerCAmelCase=3_7 , __lowerCAmelCase="gelu" , __lowerCAmelCase=0.1 , __lowerCAmelCase=0.1 , __lowerCAmelCase=5_1_2 , __lowerCAmelCase=1_6 , __lowerCAmelCase=2 , __lowerCAmelCase=0.02 , __lowerCAmelCase=3 , __lowerCAmelCase=4 , __lowerCAmelCase=None , ): """simple docstring""" __magic_name__ :Optional[int] = parent __magic_name__ :List[Any] = 1_3 __magic_name__ :Union[str, Any] = 7 __magic_name__ :Optional[Any] = True __magic_name__ :Tuple = True __magic_name__ :List[str] = True __magic_name__ :List[Any] = True __magic_name__ :int = 9_9 __magic_name__ :Any = 3_2 __magic_name__ :Union[str, Any] = 2 __magic_name__ :List[str] = 4 __magic_name__ :List[Any] = 3_7 __magic_name__ :Tuple = '''gelu''' __magic_name__ :Any = 0.1 __magic_name__ :str = 0.1 __magic_name__ :List[str] = 5_1_2 __magic_name__ :int = 1_6 __magic_name__ :Any = 2 __magic_name__ :List[Any] = 0.02 __magic_name__ :Optional[Any] = 3 __magic_name__ :Tuple = 4 __magic_name__ :Optional[Any] = None def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = ids_tensor([self.batch_size, self.seq_length] , self.vocab_size ) __magic_name__ :str = None if self.use_input_mask: __magic_name__ :Optional[int] = random_attention_mask([self.batch_size, self.seq_length] ) __magic_name__ :str = None if self.use_token_type_ids: __magic_name__ :List[Any] = ids_tensor([self.batch_size, self.seq_length] , self.type_vocab_size ) __magic_name__ :Union[str, Any] = None __magic_name__ :Tuple = None __magic_name__ :str = None if self.use_labels: __magic_name__ :List[Any] = ids_tensor([self.batch_size] , self.type_sequence_label_size ) __magic_name__ :List[Any] = ids_tensor([self.batch_size, self.seq_length] , self.num_labels ) __magic_name__ :List[Any] = ids_tensor([self.batch_size] , self.num_choices ) __magic_name__ :str = RoFormerConfig( vocab_size=self.vocab_size , hidden_size=self.hidden_size , num_hidden_layers=self.num_hidden_layers , num_attention_heads=self.num_attention_heads , intermediate_size=self.intermediate_size , hidden_act=self.hidden_act , hidden_dropout_prob=self.hidden_dropout_prob , attention_probs_dropout_prob=self.attention_probs_dropout_prob , max_position_embeddings=self.max_position_embeddings , type_vocab_size=self.type_vocab_size , initializer_range=self.initializer_range , return_dict=__lowerCAmelCase , ) return config, input_ids, token_type_ids, input_mask, sequence_labels, token_labels, choice_labels def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :int = TFRoFormerModel(config=__lowerCAmelCase ) __magic_name__ :Optional[Any] = {'''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids} __magic_name__ :List[str] = [input_ids, input_mask] __magic_name__ :Any = model(__lowerCAmelCase ) __magic_name__ :List[str] = model(__lowerCAmelCase ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, self.seq_length, self.hidden_size) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Dict = True __magic_name__ :List[str] = TFRoFormerForCausalLM(config=__lowerCAmelCase ) __magic_name__ :str = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :Optional[Any] = model(__lowerCAmelCase )['''logits'''] self.parent.assertListEqual( list(prediction_scores.numpy().shape ) , [self.batch_size, self.seq_length, self.vocab_size] ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[Any] = TFRoFormerForMaskedLM(config=__lowerCAmelCase ) __magic_name__ :Any = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :Dict = model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :int = self.num_labels __magic_name__ :str = TFRoFormerForSequenceClassification(config=__lowerCAmelCase ) __magic_name__ :Optional[int] = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :str = model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.num_labels) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Union[str, Any] = self.num_choices __magic_name__ :Tuple = TFRoFormerForMultipleChoice(config=__lowerCAmelCase ) __magic_name__ :int = tf.tile(tf.expand_dims(__lowerCAmelCase , 1 ) , (1, self.num_choices, 1) ) __magic_name__ :Optional[Any] = tf.tile(tf.expand_dims(__lowerCAmelCase , 1 ) , (1, self.num_choices, 1) ) __magic_name__ :Union[str, Any] = tf.tile(tf.expand_dims(__lowerCAmelCase , 1 ) , (1, self.num_choices, 1) ) __magic_name__ :str = { '''input_ids''': multiple_choice_inputs_ids, '''attention_mask''': multiple_choice_input_mask, '''token_type_ids''': multiple_choice_token_type_ids, } __magic_name__ :Tuple = model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.num_choices) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[int] = self.num_labels __magic_name__ :Any = TFRoFormerForTokenClassification(config=__lowerCAmelCase ) __magic_name__ :str = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :Dict = model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.num_labels) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :List[str] = TFRoFormerForQuestionAnswering(config=__lowerCAmelCase ) __magic_name__ :List[str] = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :Union[str, Any] = model(__lowerCAmelCase ) self.parent.assertEqual(result.start_logits.shape , (self.batch_size, self.seq_length) ) self.parent.assertEqual(result.end_logits.shape , (self.batch_size, self.seq_length) ) def A ( self ): """simple docstring""" __magic_name__ :Union[str, Any] = self.prepare_config_and_inputs() ( ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ) :Union[str, Any] = config_and_inputs __magic_name__ :Optional[Any] = {'''input_ids''': input_ids, '''token_type_ids''': token_type_ids, '''attention_mask''': input_mask} return config, inputs_dict @require_tf class lowerCamelCase_ ( lowerCamelCase , lowerCamelCase , unittest.TestCase ): a__ = ( ( TFRoFormerModel, TFRoFormerForCausalLM, TFRoFormerForMaskedLM, TFRoFormerForQuestionAnswering, TFRoFormerForSequenceClassification, TFRoFormerForTokenClassification, TFRoFormerForMultipleChoice, ) if is_tf_available() else () ) a__ = ( { '''feature-extraction''': TFRoFormerModel, '''fill-mask''': TFRoFormerForMaskedLM, '''question-answering''': TFRoFormerForQuestionAnswering, '''text-classification''': TFRoFormerForSequenceClassification, '''text-generation''': TFRoFormerForCausalLM, '''token-classification''': TFRoFormerForTokenClassification, '''zero-shot''': TFRoFormerForSequenceClassification, } if is_tf_available() else {} ) a__ = False a__ = False def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" if pipeline_test_casse_name == "TextGenerationPipelineTests": return True return False def A ( self ): """simple docstring""" __magic_name__ :List[str] = TFRoFormerModelTester(self ) __magic_name__ :List[str] = ConfigTester(self , config_class=__lowerCAmelCase , hidden_size=3_7 ) def A ( self ): """simple docstring""" self.config_tester.run_common_tests() def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_model(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Union[str, Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_masked_lm(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Tuple = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_lm_head(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_multiple_choice(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Tuple = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_question_answering(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_sequence_classification(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_token_classification(*__lowerCAmelCase ) @slow def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = TFRoFormerModel.from_pretrained('''junnyu/roformer_chinese_base''' ) self.assertIsNotNone(__lowerCAmelCase ) @require_tf class lowerCamelCase_ ( unittest.TestCase ): @slow def A ( self ): """simple docstring""" __magic_name__ :int = TFRoFormerForMaskedLM.from_pretrained('''junnyu/roformer_chinese_base''' ) __magic_name__ :Dict = tf.constant([[0, 1, 2, 3, 4, 5]] ) __magic_name__ :Optional[Any] = model(__lowerCAmelCase )[0] # TODO Replace vocab size __magic_name__ :int = 5_0_0_0_0 __magic_name__ :Tuple = [1, 6, vocab_size] self.assertEqual(output.shape , __lowerCAmelCase ) print(output[:, :3, :3] ) # TODO Replace values below with what was printed above. __magic_name__ :Any = tf.constant( [ [ [-0.12053341, -1.0264901, 0.29221946], [-1.5133783, 0.197433, 0.15190607], [-5.0135403, -3.900256, -0.84038764], ] ] ) tf.debugging.assert_near(output[:, :3, :3] , __lowerCAmelCase , atol=1E-4 ) @require_tf class lowerCamelCase_ ( unittest.TestCase ): a__ = 1e-4 def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = tf.constant([[4, 1_0]] ) __magic_name__ :Optional[int] = TFRoFormerSinusoidalPositionalEmbedding(num_positions=6 , embedding_dim=6 ) __magic_name__ :Optional[Any] = emba(input_ids.shape ) __magic_name__ :List[str] = tf.constant( [[0.0000, 0.0000, 0.0000, 1.0000, 1.0000, 1.0000], [0.8415, 0.0464, 0.0022, 0.5403, 0.9989, 1.0000]] ) tf.debugging.assert_near(__lowerCAmelCase , __lowerCAmelCase , atol=self.tolerance ) def A ( self ): """simple docstring""" __magic_name__ :Tuple = tf.constant( [ [0.0000, 0.0000, 0.0000, 0.0000, 0.0000], [0.8415, 0.8219, 0.8020, 0.7819, 0.7617], [0.9093, 0.9364, 0.9581, 0.9749, 0.9870], ] ) __magic_name__ :Union[str, Any] = TFRoFormerSinusoidalPositionalEmbedding(num_positions=5_1_2 , embedding_dim=5_1_2 ) emba([2, 1_6, 5_1_2] ) __magic_name__ :Optional[int] = emba.weight[:3, :5] tf.debugging.assert_near(__lowerCAmelCase , __lowerCAmelCase , atol=self.tolerance ) @require_tf class lowerCamelCase_ ( unittest.TestCase ): a__ = 1e-4 def A ( self ): """simple docstring""" # 2,12,16,64 __magic_name__ :int = tf.reshape(tf.range(2 * 1_2 * 1_6 * 6_4 , dtype=tf.floataa ) , shape=(2, 1_2, 1_6, 6_4) ) / 1_0_0 __magic_name__ :str = -tf.reshape(tf.range(2 * 1_2 * 1_6 * 6_4 , dtype=tf.floataa ) , shape=(2, 1_2, 1_6, 6_4) ) / 1_0_0 __magic_name__ :int = TFRoFormerSinusoidalPositionalEmbedding(num_positions=3_2 , embedding_dim=6_4 ) __magic_name__ :List[str] = embed_positions([2, 1_6, 7_6_8] )[None, None, :, :] __magic_name__ , __magic_name__ :Union[str, Any] = TFRoFormerSelfAttention.apply_rotary_position_embeddings( __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :Tuple = tf.constant( [ [0.0000, 0.0100, 0.0200, 0.0300, 0.0400, 0.0500, 0.0600, 0.0700], [-0.2012, 0.8897, 0.0263, 0.9401, 0.2074, 0.9463, 0.3481, 0.9343], [-1.7057, 0.6271, -1.2145, 1.3897, -0.6303, 1.7647, -0.1173, 1.8985], [-2.1731, -1.6397, -2.7358, 0.2854, -2.1840, 1.7183, -1.3018, 2.4871], [0.2717, -3.6173, -2.9206, -2.1988, -3.6638, 0.3858, -2.9155, 2.2980], [3.9859, -2.1580, -0.7984, -4.4904, -4.1181, -2.0252, -4.4782, 1.1253], ] ) __magic_name__ :List[str] = tf.constant( [ [0.0000, -0.0100, -0.0200, -0.0300, -0.0400, -0.0500, -0.0600, -0.0700], [0.2012, -0.8897, -0.0263, -0.9401, -0.2074, -0.9463, -0.3481, -0.9343], [1.7057, -0.6271, 1.2145, -1.3897, 0.6303, -1.7647, 0.1173, -1.8985], [2.1731, 1.6397, 2.7358, -0.2854, 2.1840, -1.7183, 1.3018, -2.4871], [-0.2717, 3.6173, 2.9206, 2.1988, 3.6638, -0.3858, 2.9155, -2.2980], [-3.9859, 2.1580, 0.7984, 4.4904, 4.1181, 2.0252, 4.4782, -1.1253], ] ) tf.debugging.assert_near(query_layer[0, 0, :6, :8] , __lowerCAmelCase , atol=self.tolerance ) tf.debugging.assert_near(key_layer[0, 0, :6, :8] , __lowerCAmelCase , atol=self.tolerance )
0
0
# DISCLAIMER: This code is strongly influenced by https://github.com/pesser/pytorch_diffusion # and https://github.com/hojonathanho/diffusion import math from dataclasses import dataclass from typing import List, Optional, Tuple, Union import numpy as np import torch from diffusers.configuration_utils import ConfigMixin, register_to_config from diffusers.schedulers.scheduling_utils import SchedulerMixin from diffusers.utils import BaseOutput, deprecate @dataclass # Copied from diffusers.schedulers.scheduling_ddpm.DDPMSchedulerOutput with DDPM->DDIM class _lowercase ( _UpperCAmelCase ): """simple docstring""" lowerCAmelCase__ = 42 lowerCAmelCase__ = None def __lowerCAmelCase ( _A ,_A=0.9_9_9 ,_A="cosine" ,): """simple docstring""" if alpha_transform_type == "cosine": def alpha_bar_fn(_A ): return math.cos((t + 0.0_0_8) / 1.0_0_8 * math.pi / 2 ) ** 2 elif alpha_transform_type == "exp": def alpha_bar_fn(_A ): return math.exp(t * -1_2.0 ) else: raise ValueError(f'''Unsupported alpha_tranform_type: {alpha_transform_type}''' ) _lowercase = [] for i in range(_A ): _lowercase = i / num_diffusion_timesteps _lowercase = (i + 1) / num_diffusion_timesteps betas.append(min(1 - alpha_bar_fn(_A ) / alpha_bar_fn(_A ) ,_A ) ) return torch.tensor(_A ,dtype=torch.floataa ) class _lowercase ( _UpperCAmelCase , _UpperCAmelCase ): """simple docstring""" lowerCAmelCase__ = 1 @register_to_config def __init__( self , UpperCAmelCase = 1000 , UpperCAmelCase = 0.0_001 , UpperCAmelCase = 0.02 , UpperCAmelCase = "linear" , UpperCAmelCase = None , UpperCAmelCase = True , UpperCAmelCase = True , UpperCAmelCase = 0 , UpperCAmelCase = "epsilon" , UpperCAmelCase = 1.0 , **UpperCAmelCase , ): '''simple docstring''' if kwargs.get("""set_alpha_to_one""" , __lowerCAmelCase ) is not None: _lowercase = ( '''The `set_alpha_to_one` argument is deprecated. Please use `set_alpha_to_zero` instead.''' ) deprecate("""set_alpha_to_one""" , """1.0.0""" , __lowerCAmelCase , standard_warn=__lowerCAmelCase ) _lowercase = kwargs['''set_alpha_to_one'''] if trained_betas is not None: _lowercase = torch.tensor(__lowerCAmelCase , dtype=torch.floataa ) elif beta_schedule == "linear": _lowercase = torch.linspace(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , dtype=torch.floataa ) elif beta_schedule == "scaled_linear": # this schedule is very specific to the latent diffusion model. _lowercase = ( torch.linspace(beta_start**0.5 , beta_end**0.5 , __lowerCAmelCase , dtype=torch.floataa ) ** 2 ) elif beta_schedule == "squaredcos_cap_v2": # Glide cosine schedule _lowercase = betas_for_alpha_bar(__lowerCAmelCase ) else: raise NotImplementedError(F'''{beta_schedule} does is not implemented for {self.__class__}''' ) _lowercase = 1.0 - self.betas _lowercase = torch.cumprod(self.alphas , dim=0 ) # At every step in inverted ddim, we are looking into the next alphas_cumprod # For the final step, there is no next alphas_cumprod, and the index is out of bounds # `set_alpha_to_zero` decides whether we set this parameter simply to zero # in this case, self.step() just output the predicted noise # or whether we use the final alpha of the "non-previous" one. _lowercase = torch.tensor(0.0 ) if set_alpha_to_zero else self.alphas_cumprod[-1] # standard deviation of the initial noise distribution _lowercase = 1.0 # setable values _lowercase = None _lowercase = torch.from_numpy(np.arange(0 , __lowerCAmelCase ).copy().astype(np.intaa ) ) def _UpperCAmelCase ( self , UpperCAmelCase , UpperCAmelCase = None ): '''simple docstring''' return sample def _UpperCAmelCase ( self , UpperCAmelCase , UpperCAmelCase = None ): '''simple docstring''' if num_inference_steps > self.config.num_train_timesteps: raise ValueError( F'''`num_inference_steps`: {num_inference_steps} cannot be larger than `self.config.train_timesteps`:''' F''' {self.config.num_train_timesteps} as the unet model trained with this scheduler can only handle''' F''' maximal {self.config.num_train_timesteps} timesteps.''' ) _lowercase = num_inference_steps _lowercase = self.config.num_train_timesteps // self.num_inference_steps # creates integer timesteps by multiplying by ratio # casting to int to avoid issues when num_inference_step is power of 3 _lowercase = (np.arange(0 , __lowerCAmelCase ) * step_ratio).round().copy().astype(np.intaa ) _lowercase = torch.from_numpy(__lowerCAmelCase ).to(__lowerCAmelCase ) self.timesteps += self.config.steps_offset def _UpperCAmelCase ( self , UpperCAmelCase , UpperCAmelCase , UpperCAmelCase , UpperCAmelCase = 0.0 , UpperCAmelCase = False , UpperCAmelCase = None , UpperCAmelCase = True , ): '''simple docstring''' _lowercase = timestep + self.config.num_train_timesteps // self.num_inference_steps # 2. compute alphas, betas # change original implementation to exactly match noise levels for analogous forward process _lowercase = self.alphas_cumprod[timestep] _lowercase = ( self.alphas_cumprod[prev_timestep] if prev_timestep < self.config.num_train_timesteps else self.final_alpha_cumprod ) _lowercase = 1 - alpha_prod_t # 3. compute predicted original sample from predicted noise also called # "predicted x_0" of formula (12) from https://arxiv.org/pdf/2010.02502.pdf if self.config.prediction_type == "epsilon": _lowercase = (sample - beta_prod_t ** 0.5 * model_output) / alpha_prod_t ** 0.5 _lowercase = model_output elif self.config.prediction_type == "sample": _lowercase = model_output _lowercase = (sample - alpha_prod_t ** 0.5 * pred_original_sample) / beta_prod_t ** 0.5 elif self.config.prediction_type == "v_prediction": _lowercase = (alpha_prod_t**0.5) * sample - (beta_prod_t**0.5) * model_output _lowercase = (alpha_prod_t**0.5) * model_output + (beta_prod_t**0.5) * sample else: raise ValueError( F'''prediction_type given as {self.config.prediction_type} must be one of `epsilon`, `sample`, or''' """ `v_prediction`""" ) # 4. Clip or threshold "predicted x_0" if self.config.clip_sample: _lowercase = pred_original_sample.clamp( -self.config.clip_sample_range , self.config.clip_sample_range ) # 5. compute "direction pointing to x_t" of formula (12) from https://arxiv.org/pdf/2010.02502.pdf _lowercase = (1 - alpha_prod_t_prev) ** 0.5 * pred_epsilon # 6. compute x_t without "random noise" of formula (12) from https://arxiv.org/pdf/2010.02502.pdf _lowercase = alpha_prod_t_prev ** 0.5 * pred_original_sample + pred_sample_direction if not return_dict: return (prev_sample, pred_original_sample) return DDIMSchedulerOutput(prev_sample=__lowerCAmelCase , pred_original_sample=__lowerCAmelCase ) def __len__( self ): '''simple docstring''' return self.config.num_train_timesteps
398
from typing import TYPE_CHECKING from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tokenizers_available SCREAMING_SNAKE_CASE__ : Optional[int] = {"""tokenization_herbert""": ["""HerbertTokenizer"""]} try: if not is_tokenizers_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: SCREAMING_SNAKE_CASE__ : Optional[Any] = ["""HerbertTokenizerFast"""] if TYPE_CHECKING: from .tokenization_herbert import HerbertTokenizer try: if not is_tokenizers_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .tokenization_herbert_fast import HerbertTokenizerFast else: import sys SCREAMING_SNAKE_CASE__ : Union[str, Any] = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
0
0
def __A ( _A ): """simple docstring""" __a = 0 # if input_string is "aba" than new_input_string become "a|b|a" __a = '''''' __a = '''''' # append each character + "|" in new_string for range(0, length-1) for i in input_string[: len(_A ) - 1]: new_input_string += i + "|" # append last character new_input_string += input_string[-1] # we will store the starting and ending of previous furthest ending palindromic # substring __a = 0, 0 # length[i] shows the length of palindromic substring with center i __a = [1 for i in range(len(_A ) )] # for each character in new_string find corresponding palindromic string __a = 0 for j in range(len(_A ) ): __a = 1 if j > r else min(length[l + r - j] // 2 , r - j + 1 ) while ( j - k >= 0 and j + k < len(_A ) and new_input_string[k + j] == new_input_string[j - k] ): k += 1 __a = 2 * k - 1 # does this string is ending after the previously explored end (that is r) ? # if yes the update the new r to the last index of this if j + k - 1 > r: __a = j - k + 1 # noqa: E741 __a = j + k - 1 # update max_length and start position if max_length < length[j]: __a = length[j] __a = j # create that string __a = new_input_string[start - max_length // 2 : start + max_length // 2 + 1] for i in s: if i != "|": output_string += i return output_string if __name__ == "__main__": import doctest doctest.testmod()
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import argparse import gdown import numpy as np import torch from huggingface_hub import hf_hub_download from transformers import ( CLIPTokenizer, CLIPTokenizerFast, VideoMAEImageProcessor, XCLIPConfig, XCLIPModel, XCLIPProcessor, XCLIPTextConfig, XCLIPVisionConfig, ) def __lowercase ( snake_case, snake_case ): """simple docstring""" __magic_name__ :str = XCLIPTextConfig() # derive patch size from model name __magic_name__ :Union[str, Any] = model_name.find('''patch''' ) __magic_name__ :Optional[Any] = int(model_name[start_idx + len('''patch''' ) : start_idx + len('''patch''' ) + 2] ) __magic_name__ :int = XCLIPVisionConfig(patch_size=snake_case, num_frames=snake_case ) if "large" in model_name: __magic_name__ :Dict = 7_6_8 __magic_name__ :int = 3_0_7_2 __magic_name__ :List[Any] = 1_2 __magic_name__ :str = 1_0_2_4 __magic_name__ :Any = 4_0_9_6 __magic_name__ :Optional[Any] = 1_6 __magic_name__ :Union[str, Any] = 2_4 __magic_name__ :Union[str, Any] = 7_6_8 __magic_name__ :Tuple = 3_0_7_2 if model_name == "xclip-large-patch14-16-frames": __magic_name__ :List[str] = 3_3_6 __magic_name__ :Any = XCLIPConfig.from_text_vision_configs(snake_case, snake_case ) if "large" in model_name: __magic_name__ :str = 7_6_8 return config def __lowercase ( snake_case ): """simple docstring""" if name == "token_embedding.weight": __magic_name__ :Any = name.replace('''token_embedding.weight''', '''text_model.embeddings.token_embedding.weight''' ) if name == "positional_embedding": __magic_name__ :Any = name.replace('''positional_embedding''', '''text_model.embeddings.position_embedding.weight''' ) if "ln_1" in name: __magic_name__ :List[str] = name.replace('''ln_1''', '''layer_norm1''' ) if "ln_2" in name: __magic_name__ :str = name.replace('''ln_2''', '''layer_norm2''' ) if "c_fc" in name: __magic_name__ :List[Any] = name.replace('''c_fc''', '''fc1''' ) if "c_proj" in name: __magic_name__ :Any = name.replace('''c_proj''', '''fc2''' ) if name.startswith('''transformer.resblocks''' ): __magic_name__ :Any = name.replace('''transformer.resblocks''', '''text_model.encoder.layers''' ) if "attn.out_proj" in name and "message" not in name: __magic_name__ :Union[str, Any] = name.replace('''attn.out_proj''', '''self_attn.out_proj''' ) if "ln_final" in name: __magic_name__ :Tuple = name.replace('''ln_final''', '''text_model.final_layer_norm''' ) # visual encoder if name == "visual.class_embedding": __magic_name__ :List[Any] = name.replace('''visual.class_embedding''', '''vision_model.embeddings.class_embedding''' ) if name == "visual.positional_embedding": __magic_name__ :Any = name.replace('''visual.positional_embedding''', '''vision_model.embeddings.position_embedding.weight''' ) if name.startswith('''visual.transformer.resblocks''' ): __magic_name__ :Union[str, Any] = name.replace('''visual.transformer.resblocks''', '''vision_model.encoder.layers''' ) if "visual.conv1" in name: __magic_name__ :Tuple = name.replace('''visual.conv1''', '''vision_model.embeddings.patch_embedding''' ) if "visual.ln_pre" in name: __magic_name__ :Tuple = name.replace('''visual.ln_pre''', '''vision_model.pre_layernorm''' ) if "visual.ln_post" in name: __magic_name__ :Optional[Any] = name.replace('''visual.ln_post''', '''vision_model.post_layernorm''' ) if "visual.proj" in name: __magic_name__ :Tuple = name.replace('''visual.proj''', '''visual_projection.weight''' ) if "text_projection" in name: __magic_name__ :int = name.replace('''text_projection''', '''text_projection.weight''' ) # things on top if "prompts_visual_proj" in name: __magic_name__ :int = name.replace('''prompts_visual_proj''', '''prompts_visual_projection''' ) if "prompts_visual_ln" in name: __magic_name__ :Dict = name.replace('''prompts_visual_ln''', '''prompts_visual_layernorm''' ) # mit if name == "mit.positional_embedding": __magic_name__ :List[Any] = name.replace('''positional''', '''position''' ) if name.startswith('''mit.resblocks''' ): __magic_name__ :Union[str, Any] = name.replace('''mit.resblocks''', '''mit.encoder.layers''' ) # prompts generator if name.startswith('''prompts_generator.norm''' ): __magic_name__ :str = name.replace('''prompts_generator.norm''', '''prompts_generator.layernorm''' ) return name def __lowercase ( snake_case, snake_case ): """simple docstring""" for key in orig_state_dict.copy().keys(): __magic_name__ :Any = orig_state_dict.pop(snake_case ) if "attn.in_proj" in key: __magic_name__ :str = key.split('''.''' ) if key.startswith('''visual''' ): __magic_name__ :List[Any] = key_split[3] __magic_name__ :List[Any] = config.vision_config.hidden_size if "message_attn" in key: if "weight" in key: __magic_name__ :List[Any] = val[ :dim, : ] __magic_name__ :List[str] = val[ dim : dim * 2, : ] __magic_name__ :List[str] = val[ -dim:, : ] else: __magic_name__ :str = val[ :dim ] __magic_name__ :Optional[int] = val[ dim : dim * 2 ] __magic_name__ :Any = val[ -dim: ] else: if "weight" in key: __magic_name__ :int = val[ :dim, : ] __magic_name__ :Union[str, Any] = val[ dim : dim * 2, : ] __magic_name__ :List[Any] = val[ -dim:, : ] else: __magic_name__ :Union[str, Any] = val[:dim] __magic_name__ :str = val[ dim : dim * 2 ] __magic_name__ :Dict = val[-dim:] elif key.startswith('''mit''' ): __magic_name__ :List[Any] = key_split[2] __magic_name__ :Any = config.vision_config.mit_hidden_size if "weight" in key: __magic_name__ :Union[str, Any] = val[:dim, :] __magic_name__ :Optional[int] = val[dim : dim * 2, :] __magic_name__ :int = val[-dim:, :] else: __magic_name__ :Tuple = val[:dim] __magic_name__ :Optional[int] = val[dim : dim * 2] __magic_name__ :Optional[int] = val[-dim:] else: __magic_name__ :Any = key_split[2] __magic_name__ :List[Any] = config.text_config.hidden_size if "weight" in key: __magic_name__ :Union[str, Any] = val[:dim, :] __magic_name__ :Tuple = val[ dim : dim * 2, : ] __magic_name__ :str = val[-dim:, :] else: __magic_name__ :int = val[:dim] __magic_name__ :Any = val[ dim : dim * 2 ] __magic_name__ :str = val[-dim:] else: __magic_name__ :Tuple = rename_key(snake_case ) if new_key_name in ["visual_projection.weight", "text_projection.weight"]: __magic_name__ :List[Any] = val.T __magic_name__ :Optional[Any] = val return orig_state_dict def __lowercase ( snake_case ): """simple docstring""" if num_frames == 8: __magic_name__ :Any = '''eating_spaghetti_8_frames.npy''' elif num_frames == 1_6: __magic_name__ :List[Any] = '''eating_spaghetti.npy''' elif num_frames == 3_2: __magic_name__ :Tuple = '''eating_spaghetti_32_frames.npy''' __magic_name__ :str = hf_hub_download( repo_id='''hf-internal-testing/spaghetti-video''', filename=snake_case, repo_type='''dataset''', ) __magic_name__ :List[Any] = np.load(snake_case ) return list(snake_case ) def __lowercase ( snake_case, snake_case=None, snake_case=False ): """simple docstring""" __magic_name__ :Union[str, Any] = { # fully supervised kinetics-400 checkpoints '''xclip-base-patch32''': '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k400_32_8.pth''', '''xclip-base-patch32-16-frames''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k400_32_16.pth''' ), '''xclip-base-patch16''': '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k400_16_8.pth''', '''xclip-base-patch16-16-frames''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k400_16_16.pth''' ), '''xclip-large-patch14''': '''https://drive.google.com/u/0/uc?id=1NUOImq0o5DlQTST17iIP3vG7DgmHQuCx&amp;export=download&amp;confirm=t&amp;uuid=b26caedc-88e2-473e-830a-9d158b653cdb''', '''xclip-large-patch14-16-frames''': '''https://drive.google.com/u/0/uc?id=1FOYgnJc097OJ4lGwtRCCydQyVPJEOH7d&amp;export=download&amp;confirm=t&amp;uuid=538fa810-e671-4050-b385-9a623f89804f''', # fully supervised kinetics-600 checkpoints '''xclip-base-patch16-kinetics-600''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k600_16_8.pth''' ), '''xclip-base-patch16-kinetics-600-16-frames''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k600_16_16.pth''' ), '''xclip-large-patch14-kinetics-600''': '''https://drive.google.com/u/0/uc?id=1FV8C1INuM91sLAN4ImjzePLIlpMSihwV&amp;export=download&amp;confirm=t&amp;uuid=141d4977-4a65-44ae-864f-4b0c19f838be''', # few shot '''xclip-base-patch16-hmdb-2-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_hmdb_2.pth''' ), '''xclip-base-patch16-hmdb-4-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_hmdb_4.pth''' ), '''xclip-base-patch16-hmdb-8-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_hmdb_8.pth''' ), '''xclip-base-patch16-hmdb-16-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_hmdb_16.pth''' ), '''xclip-base-patch16-ucf-2-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_ucf_2.pth''' ), '''xclip-base-patch16-ucf-4-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_ucf_4.pth''' ), '''xclip-base-patch16-ucf-8-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_ucf_8.pth''' ), '''xclip-base-patch16-ucf-16-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_ucf_16.pth''' ), # zero shot '''xclip-base-patch16-zero-shot''': '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/zero.pth''', } __magic_name__ :Optional[int] = model_to_url[model_name] __magic_name__ :List[str] = 8 if "16-frames" in model_name: __magic_name__ :List[Any] = 1_6 elif "shot" in model_name: __magic_name__ :Dict = 3_2 __magic_name__ :str = get_xclip_config(snake_case, snake_case ) __magic_name__ :List[Any] = XCLIPModel(snake_case ) model.eval() if "drive" in checkpoint_url: __magic_name__ :Any = '''pytorch_model.bin''' gdown.cached_download(snake_case, snake_case, quiet=snake_case ) __magic_name__ :Optional[Any] = torch.load(snake_case, map_location='''cpu''' )['''model'''] else: __magic_name__ :Optional[int] = torch.hub.load_state_dict_from_url(snake_case )['''model'''] __magic_name__ :List[str] = convert_state_dict(snake_case, snake_case ) __magic_name__ :List[Any] = XCLIPModel(snake_case ) __magic_name__ , __magic_name__ :Optional[Any] = model.load_state_dict(snake_case, strict=snake_case ) assert missing_keys == ["text_model.embeddings.position_ids", "vision_model.embeddings.position_ids"] model.eval() __magic_name__ :str = 3_3_6 if model_name == '''xclip-large-patch14-16-frames''' else 2_2_4 __magic_name__ :Optional[int] = VideoMAEImageProcessor(size=snake_case ) __magic_name__ :Optional[int] = CLIPTokenizer.from_pretrained('''openai/clip-vit-base-patch32''' ) __magic_name__ :Tuple = CLIPTokenizerFast.from_pretrained('''openai/clip-vit-base-patch32''' ) __magic_name__ :Optional[int] = XCLIPProcessor(image_processor=snake_case, tokenizer=snake_case ) __magic_name__ :List[Any] = prepare_video(snake_case ) __magic_name__ :str = processor( text=['''playing sports''', '''eating spaghetti''', '''go shopping'''], videos=snake_case, return_tensors='''pt''', padding=snake_case ) print('''Shape of pixel values:''', inputs.pixel_values.shape ) with torch.no_grad(): __magic_name__ :Tuple = model(**snake_case ) # Verify outputs __magic_name__ :Any = outputs.logits_per_video __magic_name__ :str = logits_per_video.softmax(dim=1 ) print('''Probs:''', snake_case ) # kinetics-400 if model_name == "xclip-base-patch32": __magic_name__ :Dict = torch.tensor([[0.0019, 0.9951, 0.0030]] ) elif model_name == "xclip-base-patch32-16-frames": __magic_name__ :str = torch.tensor([[7.0_9_9_9E-0_4, 9.9_8_8_3E-0_1, 4.5_5_8_0E-0_4]] ) elif model_name == "xclip-base-patch16": __magic_name__ :Tuple = torch.tensor([[0.0083, 0.9681, 0.0236]] ) elif model_name == "xclip-base-patch16-16-frames": __magic_name__ :Tuple = torch.tensor([[7.6_9_3_7E-0_4, 9.9_7_2_8E-0_1, 1.9_4_7_3E-0_3]] ) elif model_name == "xclip-large-patch14": __magic_name__ :str = torch.tensor([[0.0062, 0.9864, 0.0075]] ) elif model_name == "xclip-large-patch14-16-frames": __magic_name__ :Optional[int] = torch.tensor([[3.3_8_7_7E-0_4, 9.9_9_3_7E-0_1, 2.8_8_8_8E-0_4]] ) # kinetics-600 elif model_name == "xclip-base-patch16-kinetics-600": __magic_name__ :Optional[int] = torch.tensor([[0.0555, 0.8914, 0.0531]] ) elif model_name == "xclip-base-patch16-kinetics-600-16-frames": __magic_name__ :List[str] = torch.tensor([[3.8_5_5_4E-0_4, 9.9_9_2_9E-0_1, 3.2_7_5_4E-0_4]] ) elif model_name == "xclip-large-patch14-kinetics-600": __magic_name__ :List[str] = torch.tensor([[0.0036, 0.9920, 0.0045]] ) # few shot elif model_name == "xclip-base-patch16-hmdb-2-shot": __magic_name__ :Tuple = torch.tensor([[7.1_8_9_0E-0_6, 9.9_9_9_4E-0_1, 5.6_5_5_9E-0_5]] ) elif model_name == "xclip-base-patch16-hmdb-4-shot": __magic_name__ :List[str] = torch.tensor([[1.0_3_2_0E-0_5, 9.9_9_9_3E-0_1, 6.2_4_3_5E-0_5]] ) elif model_name == "xclip-base-patch16-hmdb-8-shot": __magic_name__ :Optional[int] = torch.tensor([[4.1_3_7_7E-0_6, 9.9_9_9_0E-0_1, 9.8_3_8_6E-0_5]] ) elif model_name == "xclip-base-patch16-hmdb-16-shot": __magic_name__ :Optional[int] = torch.tensor([[4.1_3_4_7E-0_5, 9.9_9_6_2E-0_1, 3.3_4_1_1E-0_4]] ) elif model_name == "xclip-base-patch16-ucf-2-shot": __magic_name__ :Union[str, Any] = torch.tensor([[8.5_8_5_7E-0_5, 9.9_9_2_8E-0_1, 6.3_2_9_1E-0_4]] ) elif model_name == "xclip-base-patch16-ucf-4-shot": __magic_name__ :Union[str, Any] = torch.tensor([[8.5_8_5_7E-0_5, 9.9_9_2_8E-0_1, 6.3_2_9_1E-0_4]] ) elif model_name == "xclip-base-patch16-ucf-8-shot": __magic_name__ :Optional[int] = torch.tensor([[0.0027, 0.9904, 0.0070]] ) elif model_name == "xclip-base-patch16-ucf-16-shot": __magic_name__ :Any = torch.tensor([[9.8_2_1_9E-0_4, 9.9_5_9_3E-0_1, 3.0_8_6_3E-0_3]] ) # zero shot elif model_name == "xclip-base-patch16-zero-shot": __magic_name__ :Optional[int] = torch.tensor([[3.5_0_8_2E-0_4, 9.9_7_8_5E-0_1, 1.7_9_6_6E-0_3]] ) else: raise ValueError(f'''Model name {model_name} not supported''' ) assert torch.allclose(snake_case, snake_case, atol=1E-3 ) print('''Looks ok!''' ) if pytorch_dump_folder_path is not None: print(f'''Saving model {model_name} to {pytorch_dump_folder_path}''' ) model.save_pretrained(snake_case ) if push_to_hub: print('''Pushing model, processor and slow tokenizer files to the hub...''' ) model.push_to_hub(snake_case, organization='''nielsr''' ) processor.push_to_hub(snake_case, organization='''nielsr''' ) slow_tokenizer.push_to_hub(snake_case, organization='''nielsr''' ) if __name__ == "__main__": SCREAMING_SNAKE_CASE__ : Optional[Any] = argparse.ArgumentParser() # Required parameters parser.add_argument( """--model_name""", default="""xclip-base-patch32""", type=str, help="""Name of the model.""", ) parser.add_argument( """--pytorch_dump_folder_path""", default=None, type=str, help="""Path to the output PyTorch model directory.""" ) parser.add_argument( """--push_to_hub""", action="""store_true""", help="""Whether or not to push the converted model to the 🤗 hub.""" ) SCREAMING_SNAKE_CASE__ : List[Any] = parser.parse_args() convert_xclip_checkpoint(args.model_name, args.pytorch_dump_folder_path, args.push_to_hub)
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def _a ( lowerCamelCase ): if not isinstance(lowerCamelCase, lowerCamelCase ): raise ValueError("""multiplicative_persistence() only accepts integral values""" ) if num < 0: raise ValueError("""multiplicative_persistence() does not accept negative values""" ) lowerCamelCase : str = 0 lowerCamelCase : Dict = str(lowerCamelCase ) while len(lowerCamelCase ) != 1: lowerCamelCase : Optional[Any] = [int(lowerCamelCase ) for i in num_string] lowerCamelCase : Dict = 1 for i in range(0, len(lowerCamelCase ) ): total *= numbers[i] lowerCamelCase : int = str(lowerCamelCase ) steps += 1 return steps def _a ( lowerCamelCase ): if not isinstance(lowerCamelCase, lowerCamelCase ): raise ValueError("""additive_persistence() only accepts integral values""" ) if num < 0: raise ValueError("""additive_persistence() does not accept negative values""" ) lowerCamelCase : str = 0 lowerCamelCase : Union[str, Any] = str(lowerCamelCase ) while len(lowerCamelCase ) != 1: lowerCamelCase : str = [int(lowerCamelCase ) for i in num_string] lowerCamelCase : Optional[int] = 0 for i in range(0, len(lowerCamelCase ) ): total += numbers[i] lowerCamelCase : int = str(lowerCamelCase ) steps += 1 return steps if __name__ == "__main__": import doctest doctest.testmod()
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import numpy as np import torch from torch.utils.data import Dataset from utils import logger class lowerCamelCase_ ( lowerCamelCase ): def __init__( self , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[int] = params __magic_name__ :Any = np.array(__lowerCAmelCase ) __magic_name__ :Optional[Any] = np.array([len(__lowerCAmelCase ) for t in data] ) self.check() self.remove_long_sequences() self.remove_empty_sequences() self.remove_unknown_sequences() self.check() self.print_statistics() def __getitem__( self , __lowerCAmelCase ): """simple docstring""" return (self.token_ids[index], self.lengths[index]) def __len__( self ): """simple docstring""" return len(self.lengths ) def A ( self ): """simple docstring""" assert len(self.token_ids ) == len(self.lengths ) assert all(self.lengths[i] == len(self.token_ids[i] ) for i in range(len(self.lengths ) ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = self.params.max_model_input_size __magic_name__ :int = self.lengths > max_len logger.info(F'''Splitting {sum(__lowerCAmelCase )} too long sequences.''' ) def divide_chunks(__lowerCAmelCase , __lowerCAmelCase ): return [l[i : i + n] for i in range(0 , len(__lowerCAmelCase ) , __lowerCAmelCase )] __magic_name__ :Optional[int] = [] __magic_name__ :List[Any] = [] if self.params.mlm: __magic_name__ , __magic_name__ :Optional[Any] = self.params.special_tok_ids['''cls_token'''], self.params.special_tok_ids['''sep_token'''] else: __magic_name__ , __magic_name__ :Tuple = self.params.special_tok_ids['''bos_token'''], self.params.special_tok_ids['''eos_token'''] for seq_, len_ in zip(self.token_ids , self.lengths ): assert (seq_[0] == cls_id) and (seq_[-1] == sep_id), seq_ if len_ <= max_len: new_tok_ids.append(seq_ ) new_lengths.append(len_ ) else: __magic_name__ :int = [] for sub_s in divide_chunks(seq_ , max_len - 2 ): if sub_s[0] != cls_id: __magic_name__ :List[Any] = np.insert(__lowerCAmelCase , 0 , __lowerCAmelCase ) if sub_s[-1] != sep_id: __magic_name__ :Union[str, Any] = np.insert(__lowerCAmelCase , len(__lowerCAmelCase ) , __lowerCAmelCase ) assert len(__lowerCAmelCase ) <= max_len assert (sub_s[0] == cls_id) and (sub_s[-1] == sep_id), sub_s sub_seqs.append(__lowerCAmelCase ) new_tok_ids.extend(__lowerCAmelCase ) new_lengths.extend([len(__lowerCAmelCase ) for l in sub_seqs] ) __magic_name__ :Tuple = np.array(__lowerCAmelCase ) __magic_name__ :Optional[int] = np.array(__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = len(self ) __magic_name__ :int = self.lengths > 1_1 __magic_name__ :List[str] = self.token_ids[indices] __magic_name__ :Union[str, Any] = self.lengths[indices] __magic_name__ :List[str] = len(self ) logger.info(F'''Remove {init_size - new_size} too short (<=11 tokens) sequences.''' ) def A ( self ): """simple docstring""" if "unk_token" not in self.params.special_tok_ids: return else: __magic_name__ :Tuple = self.params.special_tok_ids['''unk_token'''] __magic_name__ :Dict = len(self ) __magic_name__ :Tuple = np.array([np.count_nonzero(a == unk_token_id ) for a in self.token_ids] ) __magic_name__ :int = (unk_occs / self.lengths) < 0.5 __magic_name__ :str = self.token_ids[indices] __magic_name__ :str = self.lengths[indices] __magic_name__ :Any = len(self ) logger.info(F'''Remove {init_size - new_size} sequences with a high level of unknown tokens (50%).''' ) def A ( self ): """simple docstring""" if not self.params.is_master: return logger.info(F'''{len(self )} sequences''' ) # data_len = sum(self.lengths) # nb_unique_tokens = len(Counter(list(chain(*self.token_ids)))) # logger.info(f'{data_len} tokens ({nb_unique_tokens} unique)') # unk_idx = self.params.special_tok_ids['unk_token'] # nb_unknown = sum([(t==unk_idx).sum() for t in self.token_ids]) # logger.info(f'{nb_unknown} unknown tokens (covering {100*nb_unknown/data_len:.2f}% of the data)') def A ( self , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[Any] = [t[0] for t in batch] __magic_name__ :List[Any] = [t[1] for t in batch] assert len(__lowerCAmelCase ) == len(__lowerCAmelCase ) # Max for paddings __magic_name__ :Tuple = max(__lowerCAmelCase ) # Pad token ids if self.params.mlm: __magic_name__ :Any = self.params.special_tok_ids['''pad_token'''] else: __magic_name__ :str = self.params.special_tok_ids['''unk_token'''] __magic_name__ :Any = [list(t.astype(__lowerCAmelCase ) ) + [pad_idx] * (max_seq_len_ - len(__lowerCAmelCase )) for t in token_ids] assert len(tk_ ) == len(__lowerCAmelCase ) assert all(len(__lowerCAmelCase ) == max_seq_len_ for t in tk_ ) __magic_name__ :Optional[int] = torch.tensor(tk_ ) # (bs, max_seq_len_) __magic_name__ :Optional[int] = torch.tensor(__lowerCAmelCase ) # (bs) return tk_t, lg_t
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0
'''simple docstring''' import argparse import math import traceback import dateutil.parser as date_parser import requests def snake_case ( snake_case : Optional[int] ) -> Union[str, Any]: """simple docstring""" lowerCAmelCase = {} lowerCAmelCase = job['''started_at'''] lowerCAmelCase = job['''completed_at'''] lowerCAmelCase = date_parser.parse(snake_case ) lowerCAmelCase = date_parser.parse(snake_case ) lowerCAmelCase = round((end_datetime - start_datetime).total_seconds() / 60.0 ) lowerCAmelCase = start lowerCAmelCase = end lowerCAmelCase = duration_in_min return job_info def snake_case ( snake_case : Optional[Any] , snake_case : Dict=None ) -> Tuple: """simple docstring""" lowerCAmelCase = None if token is not None: lowerCAmelCase = {'''Accept''': '''application/vnd.github+json''', '''Authorization''': F'Bearer {token}'} lowerCAmelCase = F'https://api.github.com/repos/huggingface/transformers/actions/runs/{workflow_run_id}/jobs?per_page=100' lowerCAmelCase = requests.get(snake_case , headers=snake_case ).json() lowerCAmelCase = {} try: job_time.update({job['name']: extract_time_from_single_job(snake_case ) for job in result['jobs']} ) lowerCAmelCase = math.ceil((result['total_count'] - 100) / 100 ) for i in range(snake_case ): lowerCAmelCase = requests.get(url + F'&page={i + 2}' , headers=snake_case ).json() job_time.update({job['name']: extract_time_from_single_job(snake_case ) for job in result['jobs']} ) return job_time except Exception: print(F'Unknown error, could not fetch links:\n{traceback.format_exc()}' ) return {} if __name__ == "__main__": _UpperCamelCase : int = argparse.ArgumentParser() # Required parameters parser.add_argument("--workflow_run_id", type=str, required=True, help="A GitHub Actions workflow run id.") _UpperCamelCase : Any = parser.parse_args() _UpperCamelCase : List[str] = get_job_time(args.workflow_run_id) _UpperCamelCase : Dict = dict(sorted(job_time.items(), key=lambda item: item[1]["duration"], reverse=True)) for k, v in job_time.items(): print(F"""{k}: {v['duration']}""")
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import os from shutil import copyfile from typing import Any, Dict, List, Optional, Tuple import sentencepiece as spm from ...tokenization_utils import PreTrainedTokenizer from ...utils import logging SCREAMING_SNAKE_CASE__ : str = logging.get_logger(__name__) SCREAMING_SNAKE_CASE__ : Tuple = """▁""" SCREAMING_SNAKE_CASE__ : Union[str, Any] = {"""vocab_file""": """spiece.model"""} SCREAMING_SNAKE_CASE__ : List[Any] = { """vocab_file""": { """google/reformer-crime-and-punishment""": ( """https://huggingface.co/google/reformer-crime-and-punishment/resolve/main/spiece.model""" ) } } SCREAMING_SNAKE_CASE__ : Optional[int] = { """google/reformer-crime-and-punishment""": 52_42_88, } class lowerCamelCase_ ( lowerCamelCase ): a__ = VOCAB_FILES_NAMES a__ = PRETRAINED_VOCAB_FILES_MAP a__ = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES a__ = ['''input_ids''', '''attention_mask'''] def __init__( self , __lowerCAmelCase , __lowerCAmelCase="</s>" , __lowerCAmelCase="<unk>" , __lowerCAmelCase=[] , __lowerCAmelCase = None , **__lowerCAmelCase , ): """simple docstring""" __magic_name__ :int = {} if sp_model_kwargs is None else sp_model_kwargs super().__init__( eos_token=__lowerCAmelCase , unk_token=__lowerCAmelCase , additional_special_tokens=__lowerCAmelCase , sp_model_kwargs=self.sp_model_kwargs , **__lowerCAmelCase , ) __magic_name__ :Optional[Any] = vocab_file __magic_name__ :int = spm.SentencePieceProcessor(**self.sp_model_kwargs ) self.sp_model.Load(__lowerCAmelCase ) @property def A ( self ): """simple docstring""" return self.sp_model.get_piece_size() def A ( self ): """simple docstring""" __magic_name__ :str = {self.convert_ids_to_tokens(__lowerCAmelCase ): i for i in range(self.vocab_size )} vocab.update(self.added_tokens_encoder ) return vocab def __getstate__( self ): """simple docstring""" __magic_name__ :Optional[Any] = self.__dict__.copy() __magic_name__ :Optional[Any] = None return state def __setstate__( self , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Any = d # for backward compatibility if not hasattr(self , '''sp_model_kwargs''' ): __magic_name__ :Optional[int] = {} __magic_name__ :Union[str, Any] = spm.SentencePieceProcessor(**self.sp_model_kwargs ) self.sp_model.Load(self.vocab_file ) def A ( self , __lowerCAmelCase ): """simple docstring""" return self.sp_model.encode(__lowerCAmelCase , out_type=__lowerCAmelCase ) def A ( self , __lowerCAmelCase ): """simple docstring""" return self.sp_model.piece_to_id(__lowerCAmelCase ) def A ( self , __lowerCAmelCase ): """simple docstring""" if index < self.sp_model.get_piece_size(): __magic_name__ :int = self.sp_model.IdToPiece(__lowerCAmelCase ) return token def A ( self , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[Any] = [] __magic_name__ :Tuple = '''''' for token in tokens: # make sure that special tokens are not decoded using sentencepiece model if token in self.all_special_tokens: out_string += self.sp_model.decode(__lowerCAmelCase ) + token __magic_name__ :Optional[Any] = [] else: current_sub_tokens.append(__lowerCAmelCase ) out_string += self.sp_model.decode(__lowerCAmelCase ) return out_string.strip() def A ( self , __lowerCAmelCase , __lowerCAmelCase = None ): """simple docstring""" if not os.path.isdir(__lowerCAmelCase ): logger.error(F'''Vocabulary path ({save_directory}) should be a directory''' ) return __magic_name__ :Optional[int] = os.path.join( __lowerCAmelCase , (filename_prefix + '''-''' if filename_prefix else '''''') + VOCAB_FILES_NAMES['''vocab_file'''] ) if os.path.abspath(self.vocab_file ) != os.path.abspath(__lowerCAmelCase ) and os.path.isfile(self.vocab_file ): copyfile(self.vocab_file , __lowerCAmelCase ) elif not os.path.isfile(self.vocab_file ): with open(__lowerCAmelCase , '''wb''' ) as fi: __magic_name__ :Dict = self.sp_model.serialized_model_proto() fi.write(__lowerCAmelCase ) return (out_vocab_file,)
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0
def __lowerCamelCase ( A__ : Any = 100_0000 ) -> str: lowerCamelCase_ : Dict = 1 lowerCamelCase_ : Tuple = 1 lowerCamelCase_ : Any = {1: 1} for inputa in range(2 , A__ ): lowerCamelCase_ : Dict = 0 lowerCamelCase_ : Optional[Any] = inputa while True: if number in counters: counter += counters[number] break if number % 2 == 0: number //= 2 counter += 1 else: lowerCamelCase_ : Tuple = (3 * number) + 1 counter += 1 if inputa not in counters: lowerCamelCase_ : int = counter if counter > pre_counter: lowerCamelCase_ : List[Any] = inputa lowerCamelCase_ : Dict = counter return largest_number if __name__ == "__main__": print(solution(int(input().strip())))
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import os import unittest from transformers import MobileBertTokenizer, MobileBertTokenizerFast from transformers.models.bert.tokenization_bert import ( VOCAB_FILES_NAMES, BasicTokenizer, WordpieceTokenizer, _is_control, _is_punctuation, _is_whitespace, ) from transformers.testing_utils import require_tokenizers, slow from ...test_tokenization_common import TokenizerTesterMixin, filter_non_english @require_tokenizers class lowerCamelCase_ ( lowerCamelCase , unittest.TestCase ): a__ = MobileBertTokenizer a__ = MobileBertTokenizerFast a__ = True a__ = True a__ = filter_non_english a__ = '''google/mobilebert-uncased''' def A ( self ): """simple docstring""" super().setUp() __magic_name__ :Tuple = [ '''[UNK]''', '''[CLS]''', '''[SEP]''', '''[PAD]''', '''[MASK]''', '''want''', '''##want''', '''##ed''', '''wa''', '''un''', '''runn''', '''##ing''', ''',''', '''low''', '''lowest''', ] __magic_name__ :Dict = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES['''vocab_file'''] ) with open(self.vocab_file , '''w''' , encoding='''utf-8''' ) as vocab_writer: vocab_writer.write(''''''.join([x + '''\n''' for x in vocab_tokens] ) ) __magic_name__ :List[str] = [ (tokenizer_def[0], self.pre_trained_model_path, tokenizer_def[2]) # else the 'google/' prefix is stripped for tokenizer_def in self.tokenizers_list ] def A ( self , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Union[str, Any] = '''UNwant\u00E9d,running''' __magic_name__ :int = '''unwanted, running''' return input_text, output_text def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = self.tokenizer_class(self.vocab_file ) __magic_name__ :List[Any] = tokenizer.tokenize('''UNwant\u00E9d,running''' ) self.assertListEqual(__lowerCAmelCase , ['''un''', '''##want''', '''##ed''', ''',''', '''runn''', '''##ing'''] ) self.assertListEqual(tokenizer.convert_tokens_to_ids(__lowerCAmelCase ) , [9, 6, 7, 1_2, 1_0, 1_1] ) def A ( self ): """simple docstring""" if not self.test_rust_tokenizer: return __magic_name__ :int = self.get_tokenizer() __magic_name__ :Tuple = self.get_rust_tokenizer() __magic_name__ :List[str] = '''UNwant\u00E9d,running''' __magic_name__ :Optional[Any] = tokenizer.tokenize(__lowerCAmelCase ) __magic_name__ :List[Any] = rust_tokenizer.tokenize(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :int = tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :str = rust_tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :List[Any] = self.get_rust_tokenizer() __magic_name__ :Any = tokenizer.encode(__lowerCAmelCase ) __magic_name__ :Any = rust_tokenizer.encode(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) # With lower casing __magic_name__ :Any = self.get_tokenizer(do_lower_case=__lowerCAmelCase ) __magic_name__ :List[Any] = self.get_rust_tokenizer(do_lower_case=__lowerCAmelCase ) __magic_name__ :Dict = '''UNwant\u00E9d,running''' __magic_name__ :Tuple = tokenizer.tokenize(__lowerCAmelCase ) __magic_name__ :Union[str, Any] = rust_tokenizer.tokenize(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :Optional[Any] = tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :Dict = rust_tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :Tuple = self.get_rust_tokenizer() __magic_name__ :Dict = tokenizer.encode(__lowerCAmelCase ) __magic_name__ :List[Any] = rust_tokenizer.encode(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = BasicTokenizer() self.assertListEqual(tokenizer.tokenize('''ah\u535A\u63A8zz''' ) , ['''ah''', '''\u535A''', '''\u63A8''', '''zz'''] ) def A ( self ): """simple docstring""" __magic_name__ :List[Any] = BasicTokenizer(do_lower_case=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHeLLo!how \n Are yoU? ''' ) , ['''hello''', '''!''', '''how''', '''are''', '''you''', '''?'''] ) self.assertListEqual(tokenizer.tokenize('''H\u00E9llo''' ) , ['''hello'''] ) def A ( self ): """simple docstring""" __magic_name__ :Union[str, Any] = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''hällo''', '''!''', '''how''', '''are''', '''you''', '''?'''] ) self.assertListEqual(tokenizer.tokenize('''H\u00E9llo''' ) , ['''h\u00E9llo'''] ) def A ( self ): """simple docstring""" __magic_name__ :Dict = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''hallo''', '''!''', '''how''', '''are''', '''you''', '''?'''] ) self.assertListEqual(tokenizer.tokenize('''H\u00E9llo''' ) , ['''hello'''] ) def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = BasicTokenizer(do_lower_case=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''hallo''', '''!''', '''how''', '''are''', '''you''', '''?'''] ) self.assertListEqual(tokenizer.tokenize('''H\u00E9llo''' ) , ['''hello'''] ) def A ( self ): """simple docstring""" __magic_name__ :List[str] = BasicTokenizer(do_lower_case=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHeLLo!how \n Are yoU? ''' ) , ['''HeLLo''', '''!''', '''how''', '''Are''', '''yoU''', '''?'''] ) def A ( self ): """simple docstring""" __magic_name__ :int = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''HäLLo''', '''!''', '''how''', '''Are''', '''yoU''', '''?'''] ) def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''HaLLo''', '''!''', '''how''', '''Are''', '''yoU''', '''?'''] ) def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = BasicTokenizer(do_lower_case=__lowerCAmelCase , never_split=['''[UNK]'''] ) self.assertListEqual( tokenizer.tokenize(''' \tHeLLo!how \n Are yoU? [UNK]''' ) , ['''HeLLo''', '''!''', '''how''', '''Are''', '''yoU''', '''?''', '''[UNK]'''] ) def A ( self ): """simple docstring""" __magic_name__ :int = ['''[UNK]''', '''[CLS]''', '''[SEP]''', '''want''', '''##want''', '''##ed''', '''wa''', '''un''', '''runn''', '''##ing'''] __magic_name__ :Union[str, Any] = {} for i, token in enumerate(__lowerCAmelCase ): __magic_name__ :Tuple = i __magic_name__ :List[Any] = WordpieceTokenizer(vocab=__lowerCAmelCase , unk_token='''[UNK]''' ) self.assertListEqual(tokenizer.tokenize('''''' ) , [] ) self.assertListEqual(tokenizer.tokenize('''unwanted running''' ) , ['''un''', '''##want''', '''##ed''', '''runn''', '''##ing'''] ) self.assertListEqual(tokenizer.tokenize('''unwantedX running''' ) , ['''[UNK]''', '''runn''', '''##ing'''] ) def A ( self ): """simple docstring""" self.assertTrue(_is_whitespace(''' ''' ) ) self.assertTrue(_is_whitespace('''\t''' ) ) self.assertTrue(_is_whitespace('''\r''' ) ) self.assertTrue(_is_whitespace('''\n''' ) ) self.assertTrue(_is_whitespace('''\u00A0''' ) ) self.assertFalse(_is_whitespace('''A''' ) ) self.assertFalse(_is_whitespace('''-''' ) ) def A ( self ): """simple docstring""" self.assertTrue(_is_control('''\u0005''' ) ) self.assertFalse(_is_control('''A''' ) ) self.assertFalse(_is_control(''' ''' ) ) self.assertFalse(_is_control('''\t''' ) ) self.assertFalse(_is_control('''\r''' ) ) def A ( self ): """simple docstring""" self.assertTrue(_is_punctuation('''-''' ) ) self.assertTrue(_is_punctuation('''$''' ) ) self.assertTrue(_is_punctuation('''`''' ) ) self.assertTrue(_is_punctuation('''.''' ) ) self.assertFalse(_is_punctuation('''A''' ) ) self.assertFalse(_is_punctuation(''' ''' ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = self.get_tokenizer() __magic_name__ :Any = self.get_rust_tokenizer() # Example taken from the issue https://github.com/huggingface/tokenizers/issues/340 self.assertListEqual([tokenizer.tokenize(__lowerCAmelCase ) for t in ['''Test''', '''\xad''', '''test''']] , [['''[UNK]'''], [], ['''[UNK]''']] ) self.assertListEqual( [rust_tokenizer.tokenize(__lowerCAmelCase ) for t in ['''Test''', '''\xad''', '''test''']] , [['''[UNK]'''], [], ['''[UNK]''']] ) @slow def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = self.tokenizer_class.from_pretrained('''google/mobilebert-uncased''' ) __magic_name__ :Optional[int] = tokenizer.encode('''sequence builders''' , add_special_tokens=__lowerCAmelCase ) __magic_name__ :List[Any] = tokenizer.encode('''multi-sequence build''' , add_special_tokens=__lowerCAmelCase ) __magic_name__ :Union[str, Any] = tokenizer.build_inputs_with_special_tokens(__lowerCAmelCase ) __magic_name__ :List[Any] = tokenizer.build_inputs_with_special_tokens(__lowerCAmelCase , __lowerCAmelCase ) assert encoded_sentence == [1_0_1] + text + [1_0_2] assert encoded_pair == [1_0_1] + text + [1_0_2] + text_a + [1_0_2] def A ( self ): """simple docstring""" for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F'''{tokenizer.__class__.__name__} ({pretrained_name})''' ): __magic_name__ :Optional[Any] = self.rust_tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Optional[int] = F'''A, naïve {tokenizer_r.mask_token} AllenNLP sentence.''' __magic_name__ :Optional[Any] = tokenizer_r.encode_plus( __lowerCAmelCase , return_attention_mask=__lowerCAmelCase , return_token_type_ids=__lowerCAmelCase , return_offsets_mapping=__lowerCAmelCase , add_special_tokens=__lowerCAmelCase , ) __magic_name__ :Any = tokenizer_r.do_lower_case if hasattr(__lowerCAmelCase , '''do_lower_case''' ) else False __magic_name__ :Optional[int] = ( [ ((0, 0), tokenizer_r.cls_token), ((0, 1), '''A'''), ((1, 2), ''','''), ((3, 5), '''na'''), ((5, 6), '''##ï'''), ((6, 8), '''##ve'''), ((9, 1_5), tokenizer_r.mask_token), ((1_6, 2_1), '''Allen'''), ((2_1, 2_3), '''##NL'''), ((2_3, 2_4), '''##P'''), ((2_5, 3_3), '''sentence'''), ((3_3, 3_4), '''.'''), ((0, 0), tokenizer_r.sep_token), ] if not do_lower_case else [ ((0, 0), tokenizer_r.cls_token), ((0, 1), '''a'''), ((1, 2), ''','''), ((3, 8), '''naive'''), ((9, 1_5), tokenizer_r.mask_token), ((1_6, 2_1), '''allen'''), ((2_1, 2_3), '''##nl'''), ((2_3, 2_4), '''##p'''), ((2_5, 3_3), '''sentence'''), ((3_3, 3_4), '''.'''), ((0, 0), tokenizer_r.sep_token), ] ) self.assertEqual( [e[1] for e in expected_results] , tokenizer_r.convert_ids_to_tokens(tokens['''input_ids'''] ) ) self.assertEqual([e[0] for e in expected_results] , tokens['''offset_mapping'''] ) def A ( self ): """simple docstring""" __magic_name__ :Dict = ['''的''', '''人''', '''有'''] __magic_name__ :Any = ''''''.join(__lowerCAmelCase ) for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F'''{tokenizer.__class__.__name__} ({pretrained_name})''' ): __magic_name__ :Optional[Any] = True __magic_name__ :Optional[int] = self.tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Tuple = self.rust_tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Dict = tokenizer_p.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :List[str] = tokenizer_r.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :Dict = tokenizer_r.convert_ids_to_tokens(__lowerCAmelCase ) __magic_name__ :Union[str, Any] = tokenizer_p.convert_ids_to_tokens(__lowerCAmelCase ) # it is expected that each Chinese character is not preceded by "##" self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :List[str] = False __magic_name__ :Tuple = self.rust_tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :List[str] = self.tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Optional[Any] = tokenizer_r.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :Union[str, Any] = tokenizer_p.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :List[str] = tokenizer_r.convert_ids_to_tokens(__lowerCAmelCase ) __magic_name__ :Optional[int] = tokenizer_p.convert_ids_to_tokens(__lowerCAmelCase ) # it is expected that only the first Chinese character is not preceded by "##". __magic_name__ :Dict = [ F'''##{token}''' if idx != 0 else token for idx, token in enumerate(__lowerCAmelCase ) ] self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase )
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0
def _lowerCamelCase( lowercase__ , lowercase__ , lowercase__ ) -> Dict: '''simple docstring''' return round(float(moles / volume ) * nfactor ) def _lowerCamelCase( lowercase__ , lowercase__ , lowercase__ ) -> int: '''simple docstring''' return round(float((moles * 0.0821 * temperature) / (volume) ) ) def _lowerCamelCase( lowercase__ , lowercase__ , lowercase__ ) -> Tuple: '''simple docstring''' return round(float((moles * 0.0821 * temperature) / (pressure) ) ) def _lowerCamelCase( lowercase__ , lowercase__ , lowercase__ ) -> Optional[int]: '''simple docstring''' return round(float((pressure * volume) / (0.0821 * moles) ) ) if __name__ == "__main__": import doctest doctest.testmod()
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import logging import os import quant_trainer import torch from torch.utils.data import DataLoader from transformers import Trainer, is_torch_tpu_available from transformers.trainer_utils import PredictionOutput SCREAMING_SNAKE_CASE__ : List[str] = logging.getLogger(__name__) if is_torch_tpu_available(check_device=False): import torch_xla.core.xla_model as xm import torch_xla.debug.metrics as met class lowerCamelCase_ ( lowerCamelCase ): def __init__( self , *__lowerCAmelCase , __lowerCAmelCase=None , __lowerCAmelCase=None , __lowerCAmelCase=None , **__lowerCAmelCase ): """simple docstring""" super().__init__(*__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Any = eval_examples __magic_name__ :str = post_process_function __magic_name__ :int = quant_trainer_args __magic_name__ :List[str] = 1_2_8 # default number of calibration samples def A ( self , __lowerCAmelCase=None ): """simple docstring""" if calib_dataset is None and self.calib_dataset is None: raise ValueError('''Trainer: calibration requires an calib_dataset.''' ) __magic_name__ :Optional[Any] = calib_dataset if calib_dataset is not None else self.calib_dataset __magic_name__ :Optional[int] = self._remove_unused_columns(__lowerCAmelCase , description='''Calibration''' ) return DataLoader( __lowerCAmelCase , batch_size=self.args.eval_batch_size , collate_fn=self.data_collator , drop_last=self.args.dataloader_drop_last , num_workers=self.args.dataloader_num_workers , pin_memory=self.args.dataloader_pin_memory , shuffle=__lowerCAmelCase , ) def A ( self , __lowerCAmelCase=None ): """simple docstring""" __magic_name__ :Dict = self.train_dataset if calib_dataset is None else calib_dataset __magic_name__ :Any = self.get_calib_dataloader(__lowerCAmelCase ) __magic_name__ :List[str] = self.model quant_trainer.configure_model(__lowerCAmelCase , self.quant_trainer_args , calib=__lowerCAmelCase ) model.eval() quant_trainer.enable_calibration(__lowerCAmelCase ) logger.info('''***** Running calibration *****''' ) logger.info(F''' Num examples = {self.calib_num}''' ) logger.info(F''' Batch size = {calib_dataloader.batch_size}''' ) for step, inputs in enumerate(__lowerCAmelCase ): # Prediction step __magic_name__ , __magic_name__ , __magic_name__ :str = self.prediction_step(__lowerCAmelCase , __lowerCAmelCase , prediction_loss_only=__lowerCAmelCase ) if (step + 1) * calib_dataloader.batch_size >= self.calib_num: break quant_trainer.finish_calibration(__lowerCAmelCase , self.quant_trainer_args ) __magic_name__ :Any = model def A ( self , __lowerCAmelCase=None , __lowerCAmelCase=None , __lowerCAmelCase=None , __lowerCAmelCase = "eval" ): """simple docstring""" __magic_name__ :Tuple = self.eval_dataset if eval_dataset is None else eval_dataset __magic_name__ :Optional[Any] = self.get_eval_dataloader(__lowerCAmelCase ) __magic_name__ :str = self.eval_examples if eval_examples is None else eval_examples # Temporarily disable metric computation, we will do it in the loop here. __magic_name__ :Any = self.compute_metrics __magic_name__ :List[Any] = None __magic_name__ :List[str] = self.prediction_loop if self.args.use_legacy_prediction_loop else self.evaluation_loop try: __magic_name__ :Optional[Any] = eval_loop( __lowerCAmelCase , description='''Evaluation''' , prediction_loss_only=True if compute_metrics is None else None , ignore_keys=__lowerCAmelCase , ) finally: __magic_name__ :Union[str, Any] = compute_metrics if self.post_process_function is not None and self.compute_metrics is not None: __magic_name__ :Union[str, Any] = self.post_process_function(__lowerCAmelCase , __lowerCAmelCase , output.predictions ) __magic_name__ :int = self.compute_metrics(__lowerCAmelCase ) # Prefix all keys with metric_key_prefix + '_' for key in list(metrics.keys() ): if not key.startswith(F'''{metric_key_prefix}_''' ): __magic_name__ :Dict = metrics.pop(__lowerCAmelCase ) self.log(__lowerCAmelCase ) else: __magic_name__ :List[str] = {} if self.args.tpu_metrics_debug or self.args.debug: # tpu-comment: Logging debug metrics for PyTorch/XLA (compile, execute times, ops, etc.) xm.master_print(met.metrics_report() ) __magic_name__ :Optional[Any] = self.callback_handler.on_evaluate(self.args , self.state , self.control , __lowerCAmelCase ) return metrics def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase=None , __lowerCAmelCase = "test" ): """simple docstring""" __magic_name__ :int = self.get_test_dataloader(__lowerCAmelCase ) # Temporarily disable metric computation, we will do it in the loop here. __magic_name__ :Dict = self.compute_metrics __magic_name__ :str = None __magic_name__ :Optional[int] = self.prediction_loop if self.args.use_legacy_prediction_loop else self.evaluation_loop try: __magic_name__ :int = eval_loop( __lowerCAmelCase , description='''Prediction''' , prediction_loss_only=True if compute_metrics is None else None , ignore_keys=__lowerCAmelCase , ) finally: __magic_name__ :List[Any] = compute_metrics if self.post_process_function is None or self.compute_metrics is None: return output __magic_name__ :Optional[Any] = self.post_process_function(__lowerCAmelCase , __lowerCAmelCase , output.predictions , '''predict''' ) __magic_name__ :Dict = self.compute_metrics(__lowerCAmelCase ) # Prefix all keys with metric_key_prefix + '_' for key in list(metrics.keys() ): if not key.startswith(F'''{metric_key_prefix}_''' ): __magic_name__ :List[str] = metrics.pop(__lowerCAmelCase ) return PredictionOutput(predictions=predictions.predictions , label_ids=predictions.label_ids , metrics=__lowerCAmelCase ) def A ( self , __lowerCAmelCase="./" ): """simple docstring""" __magic_name__ :List[Any] = self.eval_dataset __magic_name__ :Any = self.get_eval_dataloader(__lowerCAmelCase ) __magic_name__ :int = next(iter(__lowerCAmelCase ) ) # saving device - to make it consistent __magic_name__ :str = torch.device('''cuda''' if torch.cuda.is_available() else '''cpu''' ) # convert to tuple __magic_name__ :int = tuple(v.to(__lowerCAmelCase ) for k, v in batch.items() ) logger.info('''Converting model to be onnx compatible''' ) from pytorch_quantization.nn import TensorQuantizer __magic_name__ :Any = True __magic_name__ :Optional[int] = self.model.to(__lowerCAmelCase ) model.eval() model.float() __magic_name__ :Any = model.module if hasattr(__lowerCAmelCase , '''module''' ) else model quant_trainer.configure_model(__lowerCAmelCase , self.quant_trainer_args ) __magic_name__ :int = os.path.join(__lowerCAmelCase , '''model.onnx''' ) logger.info(F'''exporting model to {output_model_file}''' ) __magic_name__ :Dict = {0: '''batch_size''', 1: '''seq_len'''} torch.onnx.export( __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , export_params=__lowerCAmelCase , opset_version=1_3 , do_constant_folding=__lowerCAmelCase , input_names=['''input_ids''', '''attention_mask''', '''token_type_ids'''] , output_names=['''output_start_logits''', '''output_end_logits'''] , dynamic_axes={ '''input_ids''': axes, '''attention_mask''': axes, '''token_type_ids''': axes, '''output_start_logits''': axes, '''output_end_logits''': axes, } , verbose=__lowerCAmelCase , ) logger.info('''onnx export finished''' )
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"""simple docstring""" import functools import operator from ...configuration_utils import PretrainedConfig from ...utils import logging a__ : Tuple = logging.get_logger(__name__) a__ : Optional[Any] = { """microsoft/unispeech-sat-base-100h-libri-ft""": ( """https://huggingface.co/microsoft/unispeech-sat-base-100h-libri-ft/resolve/main/config.json""" ), # See all UniSpeechSat models at https://huggingface.co/models?filter=unispeech_sat } class __magic_name__ ( _UpperCamelCase ): UpperCamelCase : List[Any] = "unispeech-sat" def __init__( self , __magic_name__=3_2 , __magic_name__=7_6_8 , __magic_name__=1_2 , __magic_name__=1_2 , __magic_name__=3_0_7_2 , __magic_name__="gelu" , __magic_name__=0.1 , __magic_name__=0.1 , __magic_name__=0.1 , __magic_name__=0.0 , __magic_name__=0.0 , __magic_name__=0.1 , __magic_name__=0.1 , __magic_name__=0.02 , __magic_name__=1e-5 , __magic_name__="group" , __magic_name__="gelu" , __magic_name__=(5_1_2, 5_1_2, 5_1_2, 5_1_2, 5_1_2, 5_1_2, 5_1_2) , __magic_name__=(5, 2, 2, 2, 2, 2, 2) , __magic_name__=(1_0, 3, 3, 3, 3, 2, 2) , __magic_name__=False , __magic_name__=1_2_8 , __magic_name__=1_6 , __magic_name__=False , __magic_name__=True , __magic_name__=0.05 , __magic_name__=1_0 , __magic_name__=2 , __magic_name__=0.0 , __magic_name__=1_0 , __magic_name__=0 , __magic_name__=3_2_0 , __magic_name__=2 , __magic_name__=0.1 , __magic_name__=1_0_0 , __magic_name__=2_5_6 , __magic_name__=2_5_6 , __magic_name__=0.1 , __magic_name__="mean" , __magic_name__=False , __magic_name__=False , __magic_name__=2_5_6 , __magic_name__=(5_1_2, 5_1_2, 5_1_2, 5_1_2, 1_5_0_0) , __magic_name__=(5, 3, 3, 1, 1) , __magic_name__=(1, 2, 3, 1, 1) , __magic_name__=5_1_2 , __magic_name__=0 , __magic_name__=1 , __magic_name__=2 , __magic_name__=5_0_4 , **__magic_name__ , ): """simple docstring""" super().__init__(**__lowerCAmelCase , pad_token_id=__lowerCAmelCase , bos_token_id=__lowerCAmelCase , eos_token_id=__lowerCAmelCase ) _lowerCAmelCase = hidden_size _lowerCAmelCase = feat_extract_norm _lowerCAmelCase = feat_extract_activation _lowerCAmelCase = list(__lowerCAmelCase ) _lowerCAmelCase = list(__lowerCAmelCase ) _lowerCAmelCase = list(__lowerCAmelCase ) _lowerCAmelCase = conv_bias _lowerCAmelCase = num_conv_pos_embeddings _lowerCAmelCase = num_conv_pos_embedding_groups _lowerCAmelCase = len(self.conv_dim ) _lowerCAmelCase = num_hidden_layers _lowerCAmelCase = intermediate_size _lowerCAmelCase = hidden_act _lowerCAmelCase = num_attention_heads _lowerCAmelCase = hidden_dropout _lowerCAmelCase = attention_dropout _lowerCAmelCase = activation_dropout _lowerCAmelCase = feat_proj_dropout _lowerCAmelCase = final_dropout _lowerCAmelCase = layerdrop _lowerCAmelCase = layer_norm_eps _lowerCAmelCase = initializer_range _lowerCAmelCase = vocab_size _lowerCAmelCase = num_clusters _lowerCAmelCase = do_stable_layer_norm _lowerCAmelCase = use_weighted_layer_sum if ( (len(self.conv_stride ) != self.num_feat_extract_layers) or (len(self.conv_kernel ) != self.num_feat_extract_layers) or (len(self.conv_dim ) != self.num_feat_extract_layers) ): raise ValueError( 'Configuration for convolutional layers is incorrect. It is required that `len(config.conv_dim)` ==' ' `len(config.conv_stride)` == `len(config.conv_kernel)`, but is `len(config.conv_dim) =' F''' {len(self.conv_dim )}`, `len(config.conv_stride) = {len(self.conv_stride )}`,''' F''' `len(config.conv_kernel) = {len(self.conv_kernel )}`.''' ) # fine-tuning config parameters for SpecAugment: https://arxiv.org/abs/1904.08779 _lowerCAmelCase = apply_spec_augment _lowerCAmelCase = mask_time_prob _lowerCAmelCase = mask_time_length _lowerCAmelCase = mask_time_min_masks _lowerCAmelCase = mask_feature_prob _lowerCAmelCase = mask_feature_length _lowerCAmelCase = mask_feature_min_masks # parameters for pretraining with codevector quantized representations _lowerCAmelCase = num_codevectors_per_group _lowerCAmelCase = num_codevector_groups _lowerCAmelCase = contrastive_logits_temperature _lowerCAmelCase = feat_quantizer_dropout _lowerCAmelCase = num_negatives _lowerCAmelCase = codevector_dim _lowerCAmelCase = proj_codevector_dim _lowerCAmelCase = diversity_loss_weight # ctc loss _lowerCAmelCase = ctc_loss_reduction _lowerCAmelCase = ctc_zero_infinity # SequenceClassification-specific parameter. Feel free to ignore for other classes. _lowerCAmelCase = classifier_proj_size # XVector-specific parameters. Feel free to ignore for other classes. _lowerCAmelCase = list(__lowerCAmelCase ) _lowerCAmelCase = list(__lowerCAmelCase ) _lowerCAmelCase = list(__lowerCAmelCase ) _lowerCAmelCase = xvector_output_dim @property def _lowerCamelCase ( self ): """simple docstring""" return functools.reduce(operator.mul , self.conv_stride , 1 )
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def __lowercase ( snake_case ): """simple docstring""" return "".join([hex(snake_case )[2:].zfill(2 ).upper() for byte in list(snake_case )] ) def __lowercase ( snake_case ): """simple docstring""" if (len(snake_case ) % 2) != 0: raise ValueError( '''Base16 encoded data is invalid: Data does not have an even number of hex digits.''' ) # Check the character set - the standard base16 alphabet # is uppercase according to RFC3548 section 6 if not set(snake_case ) <= set('''0123456789ABCDEF''' ): raise ValueError( '''Base16 encoded data is invalid: Data is not uppercase hex or it contains invalid characters.''' ) # For every two hexadecimal digits (= a byte), turn it into an integer. # Then, string the result together into bytes, and return it. return bytes(int(data[i] + data[i + 1], 1_6 ) for i in range(0, len(snake_case ), 2 ) ) if __name__ == "__main__": import doctest doctest.testmod()
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import os import pytest from transformers.dynamic_module_utils import get_imports _A : List[Any] = """ import os """ _A : Any = """ def foo(): import os return False """ _A : int = """ def foo(): def bar(): if True: import os return False return bar() """ _A : Tuple = """ import os try: import bar except ImportError: raise ValueError() """ _A : Optional[Any] = """ import os def foo(): try: import bar except ImportError: raise ValueError() """ _A : Optional[Any] = """ import os try: import bar except (ImportError, AttributeError): raise ValueError() """ _A : Optional[int] = """ import os try: import bar except ImportError as e: raise ValueError() """ _A : Tuple = """ import os try: import bar except: raise ValueError() """ _A : int = """ import os try: import bar import baz except ImportError: raise ValueError() """ _A : Dict = """ import os try: import bar import baz except ImportError: x = 1 raise ValueError() """ _A : List[str] = [ TOP_LEVEL_IMPORT, IMPORT_IN_FUNCTION, DEEPLY_NESTED_IMPORT, TOP_LEVEL_TRY_IMPORT, GENERIC_EXCEPT_IMPORT, MULTILINE_TRY_IMPORT, MULTILINE_BOTH_IMPORT, MULTIPLE_EXCEPTS_IMPORT, EXCEPT_AS_IMPORT, TRY_IMPORT_IN_FUNCTION, ] @pytest.mark.parametrize('''case''' , UpperCAmelCase ) def _a ( UpperCAmelCase , UpperCAmelCase ) -> Dict: """simple docstring""" lowerCamelCase__ : Optional[Any] = os.path.join(UpperCAmelCase , '''test_file.py''' ) with open(UpperCAmelCase , '''w''' ) as _tmp_file: _tmp_file.write(UpperCAmelCase ) lowerCamelCase__ : Optional[Any] = get_imports(UpperCAmelCase ) assert parsed_imports == ["os"]
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import pytest import requests from datasets.utils.file_utils import http_head from .utils import OfflineSimulationMode, RequestWouldHangIndefinitelyError, offline @pytest.mark.integration def __lowercase ( ): """simple docstring""" with offline(OfflineSimulationMode.CONNECTION_TIMES_OUT ): with pytest.raises(snake_case ): requests.request('''GET''', '''https://huggingface.co''' ) with pytest.raises(requests.exceptions.ConnectTimeout ): requests.request('''GET''', '''https://huggingface.co''', timeout=1.0 ) @pytest.mark.integration def __lowercase ( ): """simple docstring""" with offline(OfflineSimulationMode.CONNECTION_FAILS ): with pytest.raises(requests.exceptions.ConnectionError ): requests.request('''GET''', '''https://huggingface.co''' ) def __lowercase ( ): """simple docstring""" with offline(OfflineSimulationMode.HF_DATASETS_OFFLINE_SET_TO_1 ): with pytest.raises(snake_case ): http_head('''https://huggingface.co''' )
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'''simple docstring''' from typing import List from ...configuration_utils import PretrainedConfig from ...utils import logging UpperCamelCase_ = logging.get_logger(__name__) UpperCamelCase_ = { """snap-research/efficientformer-l1-300""": ( """https://huggingface.co/snap-research/efficientformer-l1-300/resolve/main/config.json""" ), } class _SCREAMING_SNAKE_CASE( _SCREAMING_SNAKE_CASE ): A_ : List[Any] = 'efficientformer' def __init__( self : int , UpperCamelCase_ : Union[str, Any] = [3, 2, 6, 4] , UpperCamelCase_ : List[Any] = [48, 96, 2_24, 4_48] , UpperCamelCase_ : List[str] = [True, True, True, True] , UpperCamelCase_ : Any = 4_48 , UpperCamelCase_ : int = 32 , UpperCamelCase_ : Optional[int] = 4 , UpperCamelCase_ : str = 7 , UpperCamelCase_ : List[Any] = 5 , UpperCamelCase_ : Dict = 8 , UpperCamelCase_ : Optional[int] = 4 , UpperCamelCase_ : int = 0.0 , UpperCamelCase_ : Union[str, Any] = 16 , UpperCamelCase_ : Union[str, Any] = 3 , UpperCamelCase_ : Dict = 3 , UpperCamelCase_ : Optional[Any] = 3 , UpperCamelCase_ : Dict = 2 , UpperCamelCase_ : List[str] = 1 , UpperCamelCase_ : Union[str, Any] = 0.0 , UpperCamelCase_ : List[str] = 1 , UpperCamelCase_ : Dict = True , UpperCamelCase_ : Any = True , UpperCamelCase_ : Any = 1e-5 , UpperCamelCase_ : Optional[Any] = "gelu" , UpperCamelCase_ : List[str] = 0.02 , UpperCamelCase_ : Union[str, Any] = 1e-12 , UpperCamelCase_ : Any = 2_24 , UpperCamelCase_ : Any = 1e-05 , **UpperCamelCase_ : Dict , ) -> Union[str, Any]: super().__init__(**__lowerCAmelCase ) SCREAMING_SNAKE_CASE__ :Union[str, Any] = hidden_act SCREAMING_SNAKE_CASE__ :int = hidden_dropout_prob SCREAMING_SNAKE_CASE__ :List[Any] = hidden_sizes SCREAMING_SNAKE_CASE__ :Optional[Any] = num_hidden_layers SCREAMING_SNAKE_CASE__ :str = num_attention_heads SCREAMING_SNAKE_CASE__ :int = initializer_range SCREAMING_SNAKE_CASE__ :Optional[Any] = layer_norm_eps SCREAMING_SNAKE_CASE__ :Optional[Any] = patch_size SCREAMING_SNAKE_CASE__ :int = num_channels SCREAMING_SNAKE_CASE__ :Optional[int] = depths SCREAMING_SNAKE_CASE__ :List[Any] = mlp_expansion_ratio SCREAMING_SNAKE_CASE__ :int = downsamples SCREAMING_SNAKE_CASE__ :Dict = dim SCREAMING_SNAKE_CASE__ :List[Any] = key_dim SCREAMING_SNAKE_CASE__ :List[Any] = attention_ratio SCREAMING_SNAKE_CASE__ :str = resolution SCREAMING_SNAKE_CASE__ :Optional[int] = pool_size SCREAMING_SNAKE_CASE__ :List[Any] = downsample_patch_size SCREAMING_SNAKE_CASE__ :int = downsample_stride SCREAMING_SNAKE_CASE__ :Any = downsample_pad SCREAMING_SNAKE_CASE__ :Optional[Any] = drop_path_rate SCREAMING_SNAKE_CASE__ :List[str] = num_metaad_blocks SCREAMING_SNAKE_CASE__ :Any = distillation SCREAMING_SNAKE_CASE__ :Tuple = use_layer_scale SCREAMING_SNAKE_CASE__ :Dict = layer_scale_init_value SCREAMING_SNAKE_CASE__ :List[Any] = image_size SCREAMING_SNAKE_CASE__ :Optional[Any] = batch_norm_eps
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import math from collections.abc import Iterator from itertools import takewhile def __lowercase ( snake_case ): """simple docstring""" if 1 < number < 4: # 2 and 3 are primes return True elif number < 2 or number % 2 == 0 or number % 3 == 0: # Negatives, 0, 1, all even numbers, all multiples of 3 are not primes return False # All primes number are in format of 6k +/- 1 for i in range(5, int(math.sqrt(snake_case ) + 1 ), 6 ): if number % i == 0 or number % (i + 2) == 0: return False return True def __lowercase ( ): """simple docstring""" __magic_name__ :str = 2 while True: if is_prime(snake_case ): yield num num += 1 def __lowercase ( snake_case = 2_0_0_0_0_0_0 ): """simple docstring""" return sum(takewhile(lambda snake_case : x < n, prime_generator() ) ) if __name__ == "__main__": print(f"{solution() = }")
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from typing import Dict import numpy as np import torch from . import residue_constants as rc from .tensor_utils import tensor_tree_map, tree_map def __UpperCamelCase (lowerCAmelCase : List[Any] ) -> Optional[int]: A = [] A = [] A = [] for rt in rc.restypes: A = rc.restype_name_to_atomaa_names[rc.restype_atoa[rt]] restype_atomaa_to_atomaa_list.append([(rc.atom_order[name] if name else 0) for name in atom_names] ) A = {name: i for i, name in enumerate(lowerCAmelCase )} restype_atomaa_to_atomaa_list.append( [(atom_name_to_idxaa[name] if name in atom_name_to_idxaa else 0) for name in rc.atom_types] ) restype_atomaa_mask_list.append([(1.0 if name else 0.0) for name in atom_names] ) # Add dummy mapping for restype 'UNK' restype_atomaa_to_atomaa_list.append([0] * 14 ) restype_atomaa_to_atomaa_list.append([0] * 37 ) restype_atomaa_mask_list.append([0.0] * 14 ) A = torch.tensor( lowerCAmelCase, dtype=torch.intaa, device=protein['aatype'].device, ) A = torch.tensor( lowerCAmelCase, dtype=torch.intaa, device=protein['aatype'].device, ) A = torch.tensor( lowerCAmelCase, dtype=torch.floataa, device=protein['aatype'].device, ) A = protein['''aatype'''].to(torch.long ) # create the mapping for (residx, atom14) --> atom37, i.e. an array # with shape (num_res, 14) containing the atom37 indices for this protein A = restype_atomaa_to_atomaa[protein_aatype] A = restype_atomaa_mask[protein_aatype] A = residx_atomaa_mask A = residx_atomaa_to_atomaa.long() # create the gather indices for mapping back A = restype_atomaa_to_atomaa[protein_aatype] A = residx_atomaa_to_atomaa.long() # create the corresponding mask A = torch.zeros([21, 37], dtype=torch.floataa, device=protein['aatype'].device ) for restype, restype_letter in enumerate(rc.restypes ): A = rc.restype_atoa[restype_letter] A = rc.residue_atoms[restype_name] for atom_name in atom_names: A = rc.atom_order[atom_name] A = 1 A = restype_atomaa_mask[protein_aatype] A = residx_atomaa_mask return protein def __UpperCamelCase (lowerCAmelCase : Union[str, Any] ) -> List[Any]: A = tree_map(lambda lowerCAmelCase : torch.tensor(lowerCAmelCase, device=batch['aatype'].device ), lowerCAmelCase, np.ndarray ) A = tensor_tree_map(lambda lowerCAmelCase : np.array(lowerCAmelCase ), make_atomaa_masks(lowerCAmelCase ) ) return out
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import unittest import numpy as np from transformers.testing_utils import require_flax, require_tf, require_torch from transformers.utils import ( expand_dims, flatten_dict, is_flax_available, is_tf_available, is_torch_available, reshape, squeeze, transpose, ) if is_flax_available(): import jax.numpy as jnp if is_tf_available(): import tensorflow as tf if is_torch_available(): import torch class lowerCamelCase_ ( unittest.TestCase ): def A ( self ): """simple docstring""" __magic_name__ :List[Any] = { '''task_specific_params''': { '''summarization''': {'''length_penalty''': 1.0, '''max_length''': 1_2_8, '''min_length''': 1_2, '''num_beams''': 4}, '''summarization_cnn''': {'''length_penalty''': 2.0, '''max_length''': 1_4_2, '''min_length''': 5_6, '''num_beams''': 4}, '''summarization_xsum''': {'''length_penalty''': 1.0, '''max_length''': 6_2, '''min_length''': 1_1, '''num_beams''': 6}, } } __magic_name__ :List[str] = { '''task_specific_params.summarization.length_penalty''': 1.0, '''task_specific_params.summarization.max_length''': 1_2_8, '''task_specific_params.summarization.min_length''': 1_2, '''task_specific_params.summarization.num_beams''': 4, '''task_specific_params.summarization_cnn.length_penalty''': 2.0, '''task_specific_params.summarization_cnn.max_length''': 1_4_2, '''task_specific_params.summarization_cnn.min_length''': 5_6, '''task_specific_params.summarization_cnn.num_beams''': 4, '''task_specific_params.summarization_xsum.length_penalty''': 1.0, '''task_specific_params.summarization_xsum.max_length''': 6_2, '''task_specific_params.summarization_xsum.min_length''': 1_1, '''task_specific_params.summarization_xsum.num_beams''': 6, } self.assertEqual(flatten_dict(__lowerCAmelCase ) , __lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = np.random.randn(3 , 4 ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , x.transpose() ) ) __magic_name__ :List[Any] = np.random.randn(3 , 4 , 5 ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , x.transpose((1, 2, 0) ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = np.random.randn(3 , 4 ) __magic_name__ :Tuple = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , transpose(__lowerCAmelCase ).numpy() ) ) __magic_name__ :int = np.random.randn(3 , 4 , 5 ) __magic_name__ :Union[str, Any] = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , transpose(__lowerCAmelCase , axes=(1, 2, 0) ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :int = np.random.randn(3 , 4 ) __magic_name__ :Optional[Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , transpose(__lowerCAmelCase ).numpy() ) ) __magic_name__ :List[str] = np.random.randn(3 , 4 , 5 ) __magic_name__ :Optional[Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , transpose(__lowerCAmelCase , axes=(1, 2, 0) ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :int = np.random.randn(3 , 4 ) __magic_name__ :Dict = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , np.asarray(transpose(__lowerCAmelCase ) ) ) ) __magic_name__ :Dict = np.random.randn(3 , 4 , 5 ) __magic_name__ :Dict = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , np.asarray(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) ) ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = np.random.randn(3 , 4 ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , np.reshape(__lowerCAmelCase , (4, 3) ) ) ) __magic_name__ :Union[str, Any] = np.random.randn(3 , 4 , 5 ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , np.reshape(__lowerCAmelCase , (1_2, 5) ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :Dict = np.random.randn(3 , 4 ) __magic_name__ :Tuple = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , reshape(__lowerCAmelCase , (4, 3) ).numpy() ) ) __magic_name__ :Union[str, Any] = np.random.randn(3 , 4 , 5 ) __magic_name__ :List[str] = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , reshape(__lowerCAmelCase , (1_2, 5) ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :Dict = np.random.randn(3 , 4 ) __magic_name__ :Union[str, Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , reshape(__lowerCAmelCase , (4, 3) ).numpy() ) ) __magic_name__ :List[Any] = np.random.randn(3 , 4 , 5 ) __magic_name__ :Optional[int] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , reshape(__lowerCAmelCase , (1_2, 5) ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :List[str] = np.random.randn(3 , 4 ) __magic_name__ :Any = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , np.asarray(reshape(__lowerCAmelCase , (4, 3) ) ) ) ) __magic_name__ :List[Any] = np.random.randn(3 , 4 , 5 ) __magic_name__ :List[str] = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , np.asarray(reshape(__lowerCAmelCase , (1_2, 5) ) ) ) ) def A ( self ): """simple docstring""" __magic_name__ :List[Any] = np.random.randn(1 , 3 , 4 ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , np.squeeze(__lowerCAmelCase ) ) ) __magic_name__ :Optional[Any] = np.random.randn(1 , 4 , 1 , 5 ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , np.squeeze(__lowerCAmelCase , axis=2 ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :Dict = np.random.randn(1 , 3 , 4 ) __magic_name__ :List[Any] = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , squeeze(__lowerCAmelCase ).numpy() ) ) __magic_name__ :List[str] = np.random.randn(1 , 4 , 1 , 5 ) __magic_name__ :str = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , squeeze(__lowerCAmelCase , axis=2 ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :int = np.random.randn(1 , 3 , 4 ) __magic_name__ :Tuple = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , squeeze(__lowerCAmelCase ).numpy() ) ) __magic_name__ :Tuple = np.random.randn(1 , 4 , 1 , 5 ) __magic_name__ :Optional[int] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , squeeze(__lowerCAmelCase , axis=2 ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :Tuple = np.random.randn(1 , 3 , 4 ) __magic_name__ :Optional[Any] = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , np.asarray(squeeze(__lowerCAmelCase ) ) ) ) __magic_name__ :List[Any] = np.random.randn(1 , 4 , 1 , 5 ) __magic_name__ :Optional[Any] = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , np.asarray(squeeze(__lowerCAmelCase , axis=2 ) ) ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = np.random.randn(3 , 4 ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , np.expand_dims(__lowerCAmelCase , axis=1 ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :List[Any] = np.random.randn(3 , 4 ) __magic_name__ :Any = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , expand_dims(__lowerCAmelCase , axis=1 ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :Union[str, Any] = np.random.randn(3 , 4 ) __magic_name__ :Union[str, Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , expand_dims(__lowerCAmelCase , axis=1 ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :List[str] = np.random.randn(3 , 4 ) __magic_name__ :Tuple = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , np.asarray(expand_dims(__lowerCAmelCase , axis=1 ) ) ) )
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import argparse import datetime def lowerCamelCase__ ( snake_case_ : Dict ) -> Union[str, Any]: __snake_case = { '''0''': '''Sunday''', '''1''': '''Monday''', '''2''': '''Tuesday''', '''3''': '''Wednesday''', '''4''': '''Thursday''', '''5''': '''Friday''', '''6''': '''Saturday''', } __snake_case = {0: 1, 1: 2, 2: 3, 3: 4, 4: 5, 5: 6, 6: 0} # Validate if not 0 < len(snake_case_ ) < 11: raise ValueError('''Must be 10 characters long''' ) # Get month __snake_case = int(date_input[0] + date_input[1] ) # Validate if not 0 < m < 13: raise ValueError('''Month must be between 1 - 12''' ) __snake_case = date_input[2] # Validate if sep_a not in ["-", "/"]: raise ValueError('''Date separator must be \'-\' or \'/\'''' ) # Get day __snake_case = int(date_input[3] + date_input[4] ) # Validate if not 0 < d < 32: raise ValueError('''Date must be between 1 - 31''' ) # Get second separator __snake_case = date_input[5] # Validate if sep_a not in ["-", "/"]: raise ValueError('''Date separator must be \'-\' or \'/\'''' ) # Get year __snake_case = int(date_input[6] + date_input[7] + date_input[8] + date_input[9] ) # Arbitrary year range if not 45 < y < 8500: raise ValueError( '''Year out of range. There has to be some sort of limit...right?''' ) # Get datetime obj for validation __snake_case = datetime.date(int(snake_case_ ) , int(snake_case_ ) , int(snake_case_ ) ) # Start math if m <= 2: __snake_case = y - 1 __snake_case = m + 12 # maths var __snake_case = int(str(snake_case_ )[:2] ) __snake_case = int(str(snake_case_ )[2:] ) __snake_case = int(2.6 * m - 5.39 ) __snake_case = int(c / 4 ) __snake_case = int(k / 4 ) __snake_case = int(d + k ) __snake_case = int(t + u + v + x ) __snake_case = int(z - (2 * c) ) __snake_case = round(w % 7 ) # End math # Validate math if f != convert_datetime_days[dt_ck.weekday()]: raise AssertionError('''The date was evaluated incorrectly. Contact developer.''' ) # Response __snake_case = f"""Your date {date_input}, is a {days[str(snake_case_ )]}!""" return response if __name__ == "__main__": import doctest doctest.testmod() snake_case_ = argparse.ArgumentParser( description=( 'Find out what day of the week nearly any date is or was. Enter ' 'date as a string in the mm-dd-yyyy or mm/dd/yyyy format' ) ) parser.add_argument( 'date_input', type=str, help='Date as a string (mm-dd-yyyy or mm/dd/yyyy)' ) snake_case_ = parser.parse_args() zeller(args.date_input)
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from pathlib import PurePosixPath from typing import Optional import fsspec from fsspec import AbstractFileSystem from huggingface_hub.hf_api import DatasetInfo from ..utils.file_utils import get_authentication_headers_for_url from ..utils.hub import hf_hub_url class lowerCamelCase_ ( lowerCamelCase ): a__ = '''''' a__ = '''hf-legacy''' # "hf://"" is reserved for hffs def __init__( self , __lowerCAmelCase = None , __lowerCAmelCase = None , **__lowerCAmelCase , ): """simple docstring""" super().__init__(self , **__lowerCAmelCase ) __magic_name__ :List[Any] = repo_info __magic_name__ :Dict = token __magic_name__ :Optional[Any] = None def A ( self ): """simple docstring""" if self.dir_cache is None: __magic_name__ :Any = {} for hf_file in self.repo_info.siblings: # TODO(QL): add sizes __magic_name__ :Optional[int] = { '''name''': hf_file.rfilename, '''size''': None, '''type''': '''file''', } self.dir_cache.update( { str(__lowerCAmelCase ): {'''name''': str(__lowerCAmelCase ), '''size''': None, '''type''': '''directory'''} for d in list(PurePosixPath(hf_file.rfilename ).parents )[:-1] } ) def A ( self , __lowerCAmelCase , __lowerCAmelCase = "rb" , **__lowerCAmelCase , ): """simple docstring""" if not isinstance(self.repo_info , __lowerCAmelCase ): raise NotImplementedError(F'''Open is only implemented for dataset repositories, but got {self.repo_info}''' ) __magic_name__ :Union[str, Any] = hf_hub_url(self.repo_info.id , __lowerCAmelCase , revision=self.repo_info.sha ) return fsspec.open( __lowerCAmelCase , mode=__lowerCAmelCase , headers=get_authentication_headers_for_url(__lowerCAmelCase , use_auth_token=self.token ) , client_kwargs={'''trust_env''': True} , ).open() def A ( self , __lowerCAmelCase , **__lowerCAmelCase ): """simple docstring""" self._get_dirs() __magic_name__ :str = self._strip_protocol(__lowerCAmelCase ) if path in self.dir_cache: return self.dir_cache[path] else: raise FileNotFoundError(__lowerCAmelCase ) def A ( self , __lowerCAmelCase , __lowerCAmelCase=False , **__lowerCAmelCase ): """simple docstring""" self._get_dirs() __magic_name__ :Union[str, Any] = PurePosixPath(path.strip('''/''' ) ) __magic_name__ :Dict = {} for p, f in self.dir_cache.items(): __magic_name__ :int = PurePosixPath(p.strip('''/''' ) ) __magic_name__ :Tuple = p.parent if root == path: __magic_name__ :Optional[Any] = f __magic_name__ :List[Any] = list(paths.values() ) if detail: return out else: return sorted(f['''name'''] for f in out )
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from __future__ import annotations import numpy as np def __lowerCAmelCase ( _A ): """simple docstring""" _lowercase = np.shape(_A ) if rows != columns: _lowercase = ( '''\'table\' has to be of square shaped array but got a ''' f'''{rows}x{columns} array:\n{table}''' ) raise ValueError(_A ) _lowercase = np.zeros((rows, columns) ) _lowercase = np.zeros((rows, columns) ) for i in range(_A ): for j in range(_A ): _lowercase = sum(lower[i][k] * upper[k][j] for k in range(_A ) ) if upper[j][j] == 0: raise ArithmeticError("""No LU decomposition exists""" ) _lowercase = (table[i][j] - total) / upper[j][j] _lowercase = 1 for j in range(_A ,_A ): _lowercase = sum(lower[i][k] * upper[k][j] for k in range(_A ) ) _lowercase = table[i][j] - total return lower, upper if __name__ == "__main__": import doctest doctest.testmod()
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import pyarrow.parquet as pq import pytest from datasets import Audio, Dataset, DatasetDict, Features, NamedSplit, Sequence, Value, config from datasets.features.image import Image from datasets.io.parquet import ParquetDatasetReader, ParquetDatasetWriter, get_writer_batch_size from ..utils import assert_arrow_memory_doesnt_increase, assert_arrow_memory_increases def __lowercase ( snake_case, snake_case ): """simple docstring""" assert isinstance(snake_case, snake_case ) assert dataset.num_rows == 4 assert dataset.num_columns == 3 assert dataset.column_names == ["col_1", "col_2", "col_3"] for feature, expected_dtype in expected_features.items(): assert dataset.features[feature].dtype == expected_dtype @pytest.mark.parametrize('''keep_in_memory''', [False, True] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :Tuple = tmp_path / '''cache''' __magic_name__ :int = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} with assert_arrow_memory_increases() if keep_in_memory else assert_arrow_memory_doesnt_increase(): __magic_name__ :Optional[Any] = ParquetDatasetReader(snake_case, cache_dir=snake_case, keep_in_memory=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) @pytest.mark.parametrize( '''features''', [ None, {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''}, {'''col_1''': '''string''', '''col_2''': '''string''', '''col_3''': '''string'''}, {'''col_1''': '''int32''', '''col_2''': '''int32''', '''col_3''': '''int32'''}, {'''col_1''': '''float32''', '''col_2''': '''float32''', '''col_3''': '''float32'''}, ], ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :List[str] = tmp_path / '''cache''' __magic_name__ :int = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :Tuple = features.copy() if features else default_expected_features __magic_name__ :Union[str, Any] = ( Features({feature: Value(snake_case ) for feature, dtype in features.items()} ) if features is not None else None ) __magic_name__ :int = ParquetDatasetReader(snake_case, features=snake_case, cache_dir=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) @pytest.mark.parametrize('''split''', [None, NamedSplit('''train''' ), '''train''', '''test'''] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :str = tmp_path / '''cache''' __magic_name__ :List[Any] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :int = ParquetDatasetReader(snake_case, cache_dir=snake_case, split=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) assert dataset.split == split if split else "train" @pytest.mark.parametrize('''path_type''', [str, list] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" if issubclass(snake_case, snake_case ): __magic_name__ :Union[str, Any] = parquet_path elif issubclass(snake_case, snake_case ): __magic_name__ :Union[str, Any] = [parquet_path] __magic_name__ :Optional[int] = tmp_path / '''cache''' __magic_name__ :Optional[int] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :str = ParquetDatasetReader(snake_case, cache_dir=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) def __lowercase ( snake_case, snake_case, snake_case=("train",) ): """simple docstring""" assert isinstance(snake_case, snake_case ) for split in splits: __magic_name__ :Optional[Any] = dataset_dict[split] assert dataset.num_rows == 4 assert dataset.num_columns == 3 assert dataset.column_names == ["col_1", "col_2", "col_3"] for feature, expected_dtype in expected_features.items(): assert dataset.features[feature].dtype == expected_dtype @pytest.mark.parametrize('''keep_in_memory''', [False, True] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :Any = tmp_path / '''cache''' __magic_name__ :Optional[int] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} with assert_arrow_memory_increases() if keep_in_memory else assert_arrow_memory_doesnt_increase(): __magic_name__ :Tuple = ParquetDatasetReader( {'''train''': parquet_path}, cache_dir=snake_case, keep_in_memory=snake_case ).read() _check_parquet_datasetdict(snake_case, snake_case ) @pytest.mark.parametrize( '''features''', [ None, {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''}, {'''col_1''': '''string''', '''col_2''': '''string''', '''col_3''': '''string'''}, {'''col_1''': '''int32''', '''col_2''': '''int32''', '''col_3''': '''int32'''}, {'''col_1''': '''float32''', '''col_2''': '''float32''', '''col_3''': '''float32'''}, ], ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :Optional[Any] = tmp_path / '''cache''' __magic_name__ :Dict = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :int = features.copy() if features else default_expected_features __magic_name__ :List[Any] = ( Features({feature: Value(snake_case ) for feature, dtype in features.items()} ) if features is not None else None ) __magic_name__ :Optional[int] = ParquetDatasetReader({'''train''': parquet_path}, features=snake_case, cache_dir=snake_case ).read() _check_parquet_datasetdict(snake_case, snake_case ) @pytest.mark.parametrize('''split''', [None, NamedSplit('''train''' ), '''train''', '''test'''] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" if split: __magic_name__ :Dict = {split: parquet_path} else: __magic_name__ :Optional[int] = '''train''' __magic_name__ :Dict = {'''train''': parquet_path, '''test''': parquet_path} __magic_name__ :List[Any] = tmp_path / '''cache''' __magic_name__ :Optional[Any] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :Optional[Any] = ParquetDatasetReader(snake_case, cache_dir=snake_case ).read() _check_parquet_datasetdict(snake_case, snake_case, splits=list(path.keys() ) ) assert all(dataset[split].split == split for split in path.keys() ) def __lowercase ( snake_case, snake_case ): """simple docstring""" __magic_name__ :str = ParquetDatasetWriter(snake_case, tmp_path / '''foo.parquet''' ) assert writer.write() > 0 __magic_name__ :List[Any] = pq.ParquetFile(tmp_path / '''foo.parquet''' ) __magic_name__ :List[Any] = pf.read() assert dataset.data.table == output_table def __lowercase ( snake_case, snake_case ): """simple docstring""" __magic_name__ :List[str] = str(shared_datadir / '''test_image_rgb.jpg''' ) __magic_name__ :Tuple = {'''image''': [image_path]} __magic_name__ :List[Any] = Features({'''image''': Image()} ) __magic_name__ :Tuple = Dataset.from_dict(snake_case, features=snake_case ) __magic_name__ :Union[str, Any] = ParquetDatasetWriter(snake_case, tmp_path / '''foo.parquet''' ) assert writer.write() > 0 __magic_name__ :List[str] = Dataset.from_parquet(str(tmp_path / '''foo.parquet''' ) ) assert dataset.features == reloaded_dataset.features __magic_name__ :List[str] = ParquetDatasetReader(str(tmp_path / '''foo.parquet''' ), streaming=snake_case ).read() assert dataset.features == reloaded_iterable_dataset.features @pytest.mark.parametrize( '''feature, expected''', [ (Features({'''foo''': Value('''int32''' )} ), None), (Features({'''image''': Image(), '''foo''': Value('''int32''' )} ), config.PARQUET_ROW_GROUP_SIZE_FOR_IMAGE_DATASETS), (Features({'''nested''': Sequence(Audio() )} ), config.PARQUET_ROW_GROUP_SIZE_FOR_AUDIO_DATASETS), ], ) def __lowercase ( snake_case, snake_case ): """simple docstring""" assert get_writer_batch_size(snake_case ) == expected
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0
from operator import delitem, getitem, setitem import pytest from data_structures.hashing.hash_map import HashMap def __A ( _A ): """simple docstring""" return getitem, k def __A ( _A , _A ): """simple docstring""" return setitem, k, v def __A ( _A ): """simple docstring""" return delitem, k def __A ( _A , _A , *_A ): """simple docstring""" try: return fun(_A , *_A ), None except Exception as e: return None, e SCREAMING_SNAKE_CASE : List[str] = ( _set("""key_a""", """val_a"""), _set("""key_b""", """val_b"""), ) SCREAMING_SNAKE_CASE : Dict = [ _set("""key_a""", """val_a"""), _set("""key_a""", """val_b"""), ] SCREAMING_SNAKE_CASE : Dict = [ _set("""key_a""", """val_a"""), _set("""key_b""", """val_b"""), _del("""key_a"""), _del("""key_b"""), _set("""key_a""", """val_a"""), _del("""key_a"""), ] SCREAMING_SNAKE_CASE : str = [ _get("""key_a"""), _del("""key_a"""), _set("""key_a""", """val_a"""), _del("""key_a"""), _del("""key_a"""), _get("""key_a"""), ] SCREAMING_SNAKE_CASE : Dict = [ *[_set(x, x) for x in range(5)], # guaranteed upsize ] SCREAMING_SNAKE_CASE : Tuple = [ *[_set(x, x) for x in range(5)], # guaranteed upsize *[_del(x) for x in range(5)], _set("""key_a""", """val_b"""), ] @pytest.mark.parametrize( "operations" , ( pytest.param(_add_items , id="add items" ), pytest.param(_overwrite_items , id="overwrite items" ), pytest.param(_delete_items , id="delete items" ), pytest.param(_access_absent_items , id="access absent items" ), pytest.param(_add_with_resize_up , id="add with resize up" ), pytest.param(_add_with_resize_down , id="add with resize down" ), ) , ) def __A ( _A ): """simple docstring""" __a = HashMap(initial_block_size=4 ) __a = {} for _, (fun, *args) in enumerate(_A ): __a = _run_operation(_A , _A , *_A ) __a = _run_operation(_A , _A , *_A ) assert my_res == py_res assert str(_A ) == str(_A ) assert set(_A ) == set(_A ) assert len(_A ) == len(_A ) assert set(my.items() ) == set(py.items() ) def __A ( ): """simple docstring""" def is_public(_A ) -> bool: return not name.startswith("_" ) __a = {name for name in dir({} ) if is_public(_A )} __a = {name for name in dir(HashMap() ) if is_public(_A )} assert dict_public_names > hash_public_names
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def __lowercase ( snake_case ): """simple docstring""" if not isinstance(snake_case, snake_case ): raise ValueError('''multiplicative_persistence() only accepts integral values''' ) if num < 0: raise ValueError('''multiplicative_persistence() does not accept negative values''' ) __magic_name__ :str = 0 __magic_name__ :Dict = str(snake_case ) while len(snake_case ) != 1: __magic_name__ :Optional[Any] = [int(snake_case ) for i in num_string] __magic_name__ :Dict = 1 for i in range(0, len(snake_case ) ): total *= numbers[i] __magic_name__ :int = str(snake_case ) steps += 1 return steps def __lowercase ( snake_case ): """simple docstring""" if not isinstance(snake_case, snake_case ): raise ValueError('''additive_persistence() only accepts integral values''' ) if num < 0: raise ValueError('''additive_persistence() does not accept negative values''' ) __magic_name__ :str = 0 __magic_name__ :Union[str, Any] = str(snake_case ) while len(snake_case ) != 1: __magic_name__ :str = [int(snake_case ) for i in num_string] __magic_name__ :Optional[int] = 0 for i in range(0, len(snake_case ) ): total += numbers[i] __magic_name__ :int = str(snake_case ) steps += 1 return steps if __name__ == "__main__": import doctest doctest.testmod()
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import copy from dataclasses import dataclass from pathlib import Path from typing import Dict, Optional, Union @dataclass class A__ : _UpperCAmelCase : Optional[int] = None _UpperCAmelCase : Tuple = False _UpperCAmelCase : Tuple = False _UpperCAmelCase : Dict = False _UpperCAmelCase : List[Any] = None _UpperCAmelCase : Any = None _UpperCAmelCase : List[str] = False _UpperCAmelCase : List[str] = False _UpperCAmelCase : Tuple = False _UpperCAmelCase : Optional[Any] = True _UpperCAmelCase : Any = None _UpperCAmelCase : Any = 1 _UpperCAmelCase : Tuple = None _UpperCAmelCase : Optional[Any] = False _UpperCAmelCase : Any = None _UpperCAmelCase : Tuple = None def UpperCamelCase__ ( self ): return self.__class__(**{k: copy.deepcopy(__lowerCAmelCase ) for k, v in self.__dict__.items()} )
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import math import os import re import sys import unittest from pathlib import Path from typing import Tuple from unittest.mock import patch from parameterized import parameterized from transformers.testing_utils import ( CaptureStderr, ExtendSysPath, TestCasePlus, execute_subprocess_async, get_gpu_count, get_torch_dist_unique_port, require_apex, require_bitsandbytes, require_fairscale, require_torch, require_torch_gpu, require_torch_multi_gpu, require_torch_non_multi_gpu, slow, ) from transformers.trainer_callback import TrainerState from transformers.trainer_utils import set_seed SCREAMING_SNAKE_CASE__ : List[Any] = os.path.abspath(os.path.dirname(__file__)) with ExtendSysPath(f"{bindir}/../../examples/pytorch/translation"): from run_translation import main # noqa set_seed(42) SCREAMING_SNAKE_CASE__ : Optional[Any] = """sshleifer/student_marian_en_ro_6_1""" SCREAMING_SNAKE_CASE__ : List[Any] = """sshleifer/tiny-mbart""" @require_torch class lowerCamelCase_ ( lowerCamelCase ): def A ( self , __lowerCAmelCase=False , __lowerCAmelCase=None , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , ): """simple docstring""" __magic_name__ :List[Any] = self.run_trainer( eval_steps=1 , max_len=1_2 , model_name=__lowerCAmelCase , num_train_epochs=1 , distributed=__lowerCAmelCase , extra_args_str=__lowerCAmelCase , predict_with_generate=__lowerCAmelCase , do_train=__lowerCAmelCase , do_eval=__lowerCAmelCase , do_predict=__lowerCAmelCase , ) __magic_name__ :Any = TrainerState.load_from_json(os.path.join(__lowerCAmelCase , '''trainer_state.json''' ) ).log_history if not do_eval: return __magic_name__ :Any = [log for log in logs if '''eval_loss''' in log.keys()] __magic_name__ :str = eval_metrics[0] if predict_with_generate: assert "eval_bleu" in first_step_stats __magic_name__ :Tuple = eval_metrics[-1] assert isinstance(last_step_stats['''eval_bleu'''] , __lowerCAmelCase ) assert not math.isnan(float(last_step_stats['''eval_loss'''] ) ), "eval_loss must not be `nan`" @require_torch_non_multi_gpu def A ( self ): """simple docstring""" self.run_seqaseq_quick() @require_torch_multi_gpu def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase ) @require_torch_multi_gpu def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp simple''' ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp simple --fp16''' ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp zero_dp_2''' , predict_with_generate=__lowerCAmelCase ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick( distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp zero_dp_2 --fp16''' , predict_with_generate=__lowerCAmelCase ) @require_apex @require_torch_gpu def A ( self ): """simple docstring""" # XXX: apex breaks the trainer if it's run twice e.g. run_seq2seq.main() from the same # program and it breaks other tests that run from the same pytest worker, therefore until this is # sorted out it must be run only in an external program, that is distributed=True in this # test and only under one or more gpus - if we want cpu will need to make a special test # # specifically to the problem traced it to self.optimizer.step() - if it's run 2nd time via # 2nd main() call it botches the future eval. # self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--fp16 --fp16_backend=apex''' ) # test 2nd time - was getting eval_loss': nan' # to reproduce the problem set distributed=False self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--fp16 --fp16_backend=apex''' ) @parameterized.expand(['''base''', '''low''', '''high''', '''mixed'''] ) @require_torch_multi_gpu def A ( self , __lowerCAmelCase ): """simple docstring""" # as each sub-test is slow-ish split into multiple sub-tests to avoid CI timeout __magic_name__ :Any = { # test with the default log_level - should be info and thus log info once '''base''': {'''extra_args_str''': '''''', '''n_matches''': 1}, # test with low log_level and log_level_replica - should be noisy on all processes # now the info string should appear twice on 2 processes '''low''': {'''extra_args_str''': '''--log_level debug --log_level_replica debug''', '''n_matches''': 2}, # test with high log_level and low log_level_replica # now the info string should appear once only on the replica '''high''': {'''extra_args_str''': '''--log_level error --log_level_replica debug''', '''n_matches''': 1}, # test with high log_level and log_level_replica - should be quiet on all processes '''mixed''': {'''extra_args_str''': '''--log_level error --log_level_replica error''', '''n_matches''': 0}, } __magic_name__ :Optional[Any] = experiments[experiment_id] __magic_name__ :List[Any] = {'''distributed''': True, '''predict_with_generate''': False, '''do_eval''': False, '''do_predict''': False} __magic_name__ :Optional[int] = '''Running training''' with CaptureStderr() as cl: self.run_seqaseq_quick(**__lowerCAmelCase , extra_args_str=data['''extra_args_str'''] ) __magic_name__ :int = len(re.findall(__lowerCAmelCase , cl.err ) ) self.assertEqual(__lowerCAmelCase , data['''n_matches'''] ) @slow def A ( self ): """simple docstring""" __magic_name__ :List[str] = self.run_trainer( eval_steps=2 , max_len=1_2_8 , model_name=__lowerCAmelCase , learning_rate=3E-4 , num_train_epochs=1_0 , distributed=__lowerCAmelCase , ) # Check metrics __magic_name__ :Optional[int] = TrainerState.load_from_json(os.path.join(__lowerCAmelCase , '''trainer_state.json''' ) ).log_history __magic_name__ :List[str] = [log for log in logs if '''eval_loss''' in log.keys()] __magic_name__ :Any = eval_metrics[0] __magic_name__ :int = eval_metrics[-1] assert first_step_stats["eval_loss"] > last_step_stats["eval_loss"], "model learned nothing" assert isinstance(last_step_stats['''eval_bleu'''] , __lowerCAmelCase ) # test if do_predict saves generations and metrics __magic_name__ :List[Any] = os.listdir(__lowerCAmelCase ) __magic_name__ :List[str] = {os.path.basename(__lowerCAmelCase ) for p in contents} assert "generated_predictions.txt" in contents assert "predict_results.json" in contents @slow @require_bitsandbytes def A ( self ): """simple docstring""" from transformers.training_args import OptimizerNames def train_and_return_metrics(__lowerCAmelCase ) -> Tuple[int, float]: __magic_name__ :str = '''--skip_memory_metrics 0''' __magic_name__ :Dict = self.run_trainer( max_len=1_2_8 , model_name=__lowerCAmelCase , learning_rate=3E-4 , num_train_epochs=1 , optim=__lowerCAmelCase , distributed=__lowerCAmelCase , extra_args_str=__lowerCAmelCase , do_eval=__lowerCAmelCase , do_predict=__lowerCAmelCase , n_gpus_to_use=1 , ) # Check metrics __magic_name__ :Optional[Any] = TrainerState.load_from_json(Path(__lowerCAmelCase , '''trainer_state.json''' ) ).log_history __magic_name__ :int = int(logs[0]['''train_mem_gpu_peaked_delta'''] / 2**2_0 ) __magic_name__ :Optional[Any] = int(logs[0]['''train_mem_gpu_alloc_delta'''] / 2**2_0 ) __magic_name__ :Any = logs[0]['''train_loss'''] return gpu_peak_mem_mb, gpu_alloc_mem_mb, loss __magic_name__ , __magic_name__ , __magic_name__ :int = train_and_return_metrics(OptimizerNames.ADAMW_TORCH.value ) __magic_name__ , __magic_name__ , __magic_name__ :Tuple = train_and_return_metrics(OptimizerNames.ADAMW_BNB.value ) __magic_name__ :Tuple = gpu_alloc_mem_orig - gpu_alloc_mem_bnb __magic_name__ :Tuple = gpu_peak_mem_orig + gpu_alloc_mem_orig __magic_name__ :List[Any] = gpu_peak_mem_bnb + gpu_alloc_mem_bnb __magic_name__ :Optional[int] = gpu_total_mem_orig - gpu_total_mem_bnb # sshleifer/student_marian_en_ro_6_1 has 54M parameter, 29M of which is `nn.Embedding` which # doesn't get quantized and remains in fp32. Therefore we only have 25M parameters quantized # in 2 bytes and the diff in optim memory usage is derived as so: # # - normal 25*8=~200MB (8 bytes per param) # - bnb 25*2= ~50MB (2 bytes per param) # # Thus we should expect ~150MB total memory saved. # # Peak memory should be the same - the total should be different by about that same margin # # After leaving a small margin to accommodate for differences between gpus let's check # that we have at least 120MB in savings __magic_name__ :Optional[Any] = 1_2_0 # uncomment the following if this test starts failing - requires py38 for a new print feature # gpu_peak_mem_diff = gpu_peak_mem_orig - gpu_peak_mem_bnb # print(f"{gpu_alloc_mem_orig=}MB {gpu_peak_mem_orig=}MB {gpu_alloc_mem_orig+gpu_peak_mem_orig=}MB") # print(f" {gpu_alloc_mem_bnb=}MB {gpu_peak_mem_bnb=}MB {gpu_alloc_mem_bnb+gpu_peak_mem_bnb=}MB") # print(f"{gpu_alloc_mem_diff=}MB") # print(f"{gpu_peak_mem_diff=}MB") # print(f"{gpu_total_mem_orig=}MB, {gpu_total_mem_bnb=}MB") # print(f"{gpu_total_mem_diff=}MB, {gpu_total_mem_diff=}MB") self.assertGreater( __lowerCAmelCase , __lowerCAmelCase , '''should use ~150MB less alloc gpu memory with BNB, compared to without it for this model but got''' F''' a difference of {gpu_alloc_mem_diff}MB, with gpu_alloc_mem_orig={gpu_alloc_mem_orig}MB and''' F''' gpu_alloc_mem_bnb={gpu_alloc_mem_bnb}MB''' , ) self.assertGreater( __lowerCAmelCase , __lowerCAmelCase , '''should use ~150MB less total gpu memory with BNB, compared to without it for this model but got''' F''' a difference of {gpu_total_mem_diff}MB, with gpu_total_mem_orig={gpu_total_mem_orig}MB and''' F''' gpu_total_mem_bnb={gpu_total_mem_bnb}MB''' , ) self.assertEqual( __lowerCAmelCase , __lowerCAmelCase , F'''loss should be the same, but got loss_orig={loss_orig}, loss_bnb={loss_bnb}''' ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase = 3E-3 , __lowerCAmelCase = "adafactor" , __lowerCAmelCase = False , __lowerCAmelCase = None , __lowerCAmelCase = 0 , __lowerCAmelCase = True , __lowerCAmelCase = True , __lowerCAmelCase = True , __lowerCAmelCase = True , __lowerCAmelCase = None , ): """simple docstring""" __magic_name__ :int = self.test_file_dir / '''../fixtures/tests_samples/wmt_en_ro''' __magic_name__ :Dict = self.get_auto_remove_tmp_dir() __magic_name__ :Tuple = F''' --model_name_or_path {model_name} --train_file {data_dir}/train.json --validation_file {data_dir}/val.json --test_file {data_dir}/test.json --output_dir {output_dir} --overwrite_output_dir --max_train_samples 8 --max_source_length {max_len} --max_target_length {max_len} --do_train --num_train_epochs {str(__lowerCAmelCase )} --per_device_train_batch_size 4 --learning_rate {learning_rate} --warmup_steps 8 --logging_steps 0 --logging_strategy no --save_steps {str(__lowerCAmelCase )} --group_by_length --label_smoothing_factor 0.1 --target_lang ro_RO --source_lang en_XX '''.split() __magic_name__ :str = F''' --do_eval --per_device_eval_batch_size 4 --max_eval_samples 8 --val_max_target_length {max_len} --evaluation_strategy steps --eval_steps {str(__lowerCAmelCase )} '''.split() __magic_name__ :Dict = ''' --do_predict '''.split() __magic_name__ :Optional[int] = [] if do_train: args += args_train if do_eval: args += args_eval if do_predict: args += args_predict if predict_with_generate: args += "--predict_with_generate".split() if do_train: if optim == "adafactor": args += "--adafactor".split() else: args += F'''--optim {optim}'''.split() if extra_args_str is not None: args += extra_args_str.split() if distributed: if n_gpus_to_use is None: __magic_name__ :List[Any] = get_gpu_count() __magic_name__ :Tuple = get_torch_dist_unique_port() __magic_name__ :Union[str, Any] = F''' -m torch.distributed.run --nproc_per_node={n_gpus_to_use} --master_port={master_port} {self.examples_dir_str}/pytorch/translation/run_translation.py '''.split() __magic_name__ :Any = [sys.executable] + distributed_args + args # keep for quick debug # print(" ".join([f"\nPYTHONPATH={self.src_dir_str}"] +cmd)); die execute_subprocess_async(__lowerCAmelCase , env=self.get_env() ) else: __magic_name__ :List[Any] = ['''run_translation.py'''] + args with patch.object(__lowerCAmelCase , '''argv''' , __lowerCAmelCase ): main() return output_dir
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'''simple docstring''' import argparse import json import requests import torch from huggingface_hub import hf_hub_download from PIL import Image from transformers import ViTImageProcessor, ViTMSNConfig, ViTMSNModel from transformers.image_utils import IMAGENET_DEFAULT_MEAN, IMAGENET_DEFAULT_STD torch.set_grad_enabled(False) def snake_case ( snake_case : Union[str, Any] , snake_case : Tuple=False ) -> List[Any]: """simple docstring""" lowerCAmelCase = [] for i in range(config.num_hidden_layers ): # encoder layers: output projection, 2 feedforward neural networks and 2 layernorms rename_keys.append((F'module.blocks.{i}.norm1.weight', F'vit.encoder.layer.{i}.layernorm_before.weight') ) rename_keys.append((F'module.blocks.{i}.norm1.bias', F'vit.encoder.layer.{i}.layernorm_before.bias') ) rename_keys.append( (F'module.blocks.{i}.attn.proj.weight', F'vit.encoder.layer.{i}.attention.output.dense.weight') ) rename_keys.append((F'module.blocks.{i}.attn.proj.bias', F'vit.encoder.layer.{i}.attention.output.dense.bias') ) rename_keys.append((F'module.blocks.{i}.norm2.weight', F'vit.encoder.layer.{i}.layernorm_after.weight') ) rename_keys.append((F'module.blocks.{i}.norm2.bias', F'vit.encoder.layer.{i}.layernorm_after.bias') ) rename_keys.append((F'module.blocks.{i}.mlp.fc1.weight', F'vit.encoder.layer.{i}.intermediate.dense.weight') ) rename_keys.append((F'module.blocks.{i}.mlp.fc1.bias', F'vit.encoder.layer.{i}.intermediate.dense.bias') ) rename_keys.append((F'module.blocks.{i}.mlp.fc2.weight', F'vit.encoder.layer.{i}.output.dense.weight') ) rename_keys.append((F'module.blocks.{i}.mlp.fc2.bias', F'vit.encoder.layer.{i}.output.dense.bias') ) # projection layer + position embeddings rename_keys.extend( [ ('module.cls_token', 'vit.embeddings.cls_token'), ('module.patch_embed.proj.weight', 'vit.embeddings.patch_embeddings.projection.weight'), ('module.patch_embed.proj.bias', 'vit.embeddings.patch_embeddings.projection.bias'), ('module.pos_embed', 'vit.embeddings.position_embeddings'), ] ) if base_model: # layernorm + pooler rename_keys.extend( [ ('module.norm.weight', 'layernorm.weight'), ('module.norm.bias', 'layernorm.bias'), ] ) # if just the base model, we should remove "vit" from all keys that start with "vit" lowerCAmelCase = [(pair[0], pair[1][4:]) if pair[1].startswith('vit' ) else pair for pair in rename_keys] else: # layernorm + classification head rename_keys.extend( [ ('norm.weight', 'vit.layernorm.weight'), ('norm.bias', 'vit.layernorm.bias'), ('head.weight', 'classifier.weight'), ('head.bias', 'classifier.bias'), ] ) return rename_keys def snake_case ( snake_case : str , snake_case : Optional[Any] , snake_case : Union[str, Any]=False ) -> List[Any]: """simple docstring""" for i in range(config.num_hidden_layers ): if base_model: lowerCAmelCase = '''''' else: lowerCAmelCase = '''vit.''' # read in weights + bias of input projection layer (in timm, this is a single matrix + bias) lowerCAmelCase = state_dict.pop(F'module.blocks.{i}.attn.qkv.weight' ) lowerCAmelCase = state_dict.pop(F'module.blocks.{i}.attn.qkv.bias' ) # next, add query, keys and values (in that order) to the state dict lowerCAmelCase = in_proj_weight[ : config.hidden_size, : ] lowerCAmelCase = in_proj_bias[: config.hidden_size] lowerCAmelCase = in_proj_weight[ config.hidden_size : config.hidden_size * 2, : ] lowerCAmelCase = in_proj_bias[ config.hidden_size : config.hidden_size * 2 ] lowerCAmelCase = in_proj_weight[ -config.hidden_size :, : ] lowerCAmelCase = in_proj_bias[-config.hidden_size :] def snake_case ( snake_case : Any ) -> List[Any]: """simple docstring""" lowerCAmelCase = ['''head.weight''', '''head.bias'''] for k in ignore_keys: state_dict.pop(snake_case , snake_case ) def snake_case ( snake_case : Optional[int] ) -> Any: """simple docstring""" lowerCAmelCase = [ '''module.fc.fc1.weight''', '''module.fc.fc1.bias''', '''module.fc.bn1.weight''', '''module.fc.bn1.bias''', '''module.fc.bn1.running_mean''', '''module.fc.bn1.running_var''', '''module.fc.bn1.num_batches_tracked''', '''module.fc.fc2.weight''', '''module.fc.fc2.bias''', '''module.fc.bn2.weight''', '''module.fc.bn2.bias''', '''module.fc.bn2.running_mean''', '''module.fc.bn2.running_var''', '''module.fc.bn2.num_batches_tracked''', '''module.fc.fc3.weight''', '''module.fc.fc3.bias''', ] for k in ignore_keys: state_dict.pop(snake_case , snake_case ) def snake_case ( snake_case : Optional[Any] , snake_case : Dict , snake_case : Optional[int] ) -> Optional[Any]: """simple docstring""" lowerCAmelCase = dct.pop(snake_case ) lowerCAmelCase = val def snake_case ( snake_case : Optional[int] , snake_case : int ) -> Dict: """simple docstring""" lowerCAmelCase = ViTMSNConfig() lowerCAmelCase = 1000 lowerCAmelCase = '''datasets/huggingface/label-files''' lowerCAmelCase = '''imagenet-1k-id2label.json''' lowerCAmelCase = json.load(open(hf_hub_download(snake_case , snake_case ) , 'r' ) ) lowerCAmelCase = {int(snake_case ): v for k, v in idalabel.items()} lowerCAmelCase = idalabel lowerCAmelCase = {v: k for k, v in idalabel.items()} if "s16" in checkpoint_url: lowerCAmelCase = 384 lowerCAmelCase = 1536 lowerCAmelCase = 6 elif "l16" in checkpoint_url: lowerCAmelCase = 1024 lowerCAmelCase = 4096 lowerCAmelCase = 24 lowerCAmelCase = 16 lowerCAmelCase = 0.1 elif "b4" in checkpoint_url: lowerCAmelCase = 4 elif "l7" in checkpoint_url: lowerCAmelCase = 7 lowerCAmelCase = 1024 lowerCAmelCase = 4096 lowerCAmelCase = 24 lowerCAmelCase = 16 lowerCAmelCase = 0.1 lowerCAmelCase = ViTMSNModel(snake_case ) lowerCAmelCase = torch.hub.load_state_dict_from_url(snake_case , map_location='cpu' )['''target_encoder'''] lowerCAmelCase = ViTImageProcessor(size=config.image_size ) remove_projection_head(snake_case ) lowerCAmelCase = create_rename_keys(snake_case , base_model=snake_case ) for src, dest in rename_keys: rename_key(snake_case , snake_case , snake_case ) read_in_q_k_v(snake_case , snake_case , base_model=snake_case ) model.load_state_dict(snake_case ) model.eval() lowerCAmelCase = '''http://images.cocodataset.org/val2017/000000039769.jpg''' lowerCAmelCase = Image.open(requests.get(snake_case , stream=snake_case ).raw ) lowerCAmelCase = ViTImageProcessor( size=config.image_size , image_mean=snake_case , image_std=snake_case ) lowerCAmelCase = image_processor(images=snake_case , return_tensors='pt' ) # forward pass torch.manual_seed(2 ) lowerCAmelCase = model(**snake_case ) lowerCAmelCase = outputs.last_hidden_state # The following Colab Notebook was used to generate these outputs: # https://colab.research.google.com/gist/sayakpaul/3672419a04f5997827503fd84079bdd1/scratchpad.ipynb if "s16" in checkpoint_url: lowerCAmelCase = torch.tensor([[-1.0_915, -1.4_876, -1.1_809]] ) elif "b16" in checkpoint_url: lowerCAmelCase = torch.tensor([[14.2_889, -18.9_045, 11.7_281]] ) elif "l16" in checkpoint_url: lowerCAmelCase = torch.tensor([[41.5_028, -22.8_681, 45.6_475]] ) elif "b4" in checkpoint_url: lowerCAmelCase = torch.tensor([[-4.3_868, 5.2_932, -0.4_137]] ) else: lowerCAmelCase = torch.tensor([[-0.1_792, -0.6_465, 2.4_263]] ) # verify logits assert torch.allclose(last_hidden_state[:, 0, :3] , snake_case , atol=1e-4 ) print(F'Saving model to {pytorch_dump_folder_path}' ) model.save_pretrained(snake_case ) print(F'Saving image processor to {pytorch_dump_folder_path}' ) image_processor.save_pretrained(snake_case ) if __name__ == "__main__": _UpperCamelCase : List[Any] = argparse.ArgumentParser() # Required parameters parser.add_argument( "--checkpoint_url", default="https://dl.fbaipublicfiles.com/msn/vits16_800ep.pth.tar", type=str, help="URL of the checkpoint you'd like to convert.", ) parser.add_argument( "--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model directory." ) _UpperCamelCase : Optional[int] = parser.parse_args() convert_vit_msn_checkpoint(args.checkpoint_url, args.pytorch_dump_folder_path)
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import sys SCREAMING_SNAKE_CASE__ : Optional[Any] = ( """73167176531330624919225119674426574742355349194934""" """96983520312774506326239578318016984801869478851843""" """85861560789112949495459501737958331952853208805511""" """12540698747158523863050715693290963295227443043557""" """66896648950445244523161731856403098711121722383113""" """62229893423380308135336276614282806444486645238749""" """30358907296290491560440772390713810515859307960866""" """70172427121883998797908792274921901699720888093776""" """65727333001053367881220235421809751254540594752243""" """52584907711670556013604839586446706324415722155397""" """53697817977846174064955149290862569321978468622482""" """83972241375657056057490261407972968652414535100474""" """82166370484403199890008895243450658541227588666881""" """16427171479924442928230863465674813919123162824586""" """17866458359124566529476545682848912883142607690042""" """24219022671055626321111109370544217506941658960408""" """07198403850962455444362981230987879927244284909188""" """84580156166097919133875499200524063689912560717606""" """05886116467109405077541002256983155200055935729725""" """71636269561882670428252483600823257530420752963450""" ) def __lowercase ( snake_case = N ): """simple docstring""" __magic_name__ :Optional[int] = -sys.maxsize - 1 for i in range(len(snake_case ) - 1_2 ): __magic_name__ :List[Any] = 1 for j in range(1_3 ): product *= int(n[i + j] ) if product > largest_product: __magic_name__ :str = product return largest_product if __name__ == "__main__": print(f"{solution() = }")
0
0
import numpy as np def __lowerCamelCase ( A__ : Optional[int] , A__ : List[Any] , A__ : List[str] = 1e-12 , A__ : Union[str, Any] = 100 , ) -> Tuple: assert np.shape(A__ )[0] == np.shape(A__ )[1] # Ensure proper dimensionality. assert np.shape(A__ )[0] == np.shape(A__ )[0] # Ensure inputs are either both complex or both real assert np.iscomplexobj(A__ ) == np.iscomplexobj(A__ ) lowerCamelCase_ : List[str] = np.iscomplexobj(A__ ) if is_complex: # Ensure complex input_matrix is Hermitian assert np.array_equal(A__ , input_matrix.conj().T ) # Set convergence to False. Will define convergence when we exceed max_iterations # or when we have small changes from one iteration to next. lowerCamelCase_ : Any = False lowerCamelCase_ : List[Any] = 0 lowerCamelCase_ : str = 0 lowerCamelCase_ : Any = 1e12 while not convergence: # Multiple matrix by the vector. lowerCamelCase_ : Optional[Any] = np.dot(A__ , A__ ) # Normalize the resulting output vector. lowerCamelCase_ : str = w / np.linalg.norm(A__ ) # Find rayleigh quotient # (faster than usual b/c we know vector is normalized already) lowerCamelCase_ : str = vector.conj().T if is_complex else vector.T lowerCamelCase_ : str = np.dot(A__ , np.dot(A__ , A__ ) ) # Check convergence. lowerCamelCase_ : str = np.abs(lambda_ - lambda_previous ) / lambda_ iterations += 1 if error <= error_tol or iterations >= max_iterations: lowerCamelCase_ : Any = True lowerCamelCase_ : Optional[int] = lambda_ if is_complex: lowerCamelCase_ : str = np.real(lambda_ ) return lambda_, vector def __lowerCamelCase ( ) -> int: lowerCamelCase_ : str = np.array([[41, 4, 20], [4, 26, 30], [20, 30, 50]] ) lowerCamelCase_ : Optional[int] = np.array([41, 4, 20] ) lowerCamelCase_ : str = real_input_matrix.astype(np.complexaaa ) lowerCamelCase_ : int = np.triu(1J * complex_input_matrix , 1 ) complex_input_matrix += imag_matrix complex_input_matrix += -1 * imag_matrix.T lowerCamelCase_ : Optional[Any] = np.array([41, 4, 20] ).astype(np.complexaaa ) for problem_type in ["real", "complex"]: if problem_type == "real": lowerCamelCase_ : Tuple = real_input_matrix lowerCamelCase_ : List[str] = real_vector elif problem_type == "complex": lowerCamelCase_ : Dict = complex_input_matrix lowerCamelCase_ : Tuple = complex_vector # Our implementation. lowerCamelCase_ : Optional[Any] = power_iteration(A__ , A__ ) # Numpy implementation. # Get eigenvalues and eigenvectors using built-in numpy # eigh (eigh used for symmetric or hermetian matrices). lowerCamelCase_ : Any = np.linalg.eigh(A__ ) # Last eigenvalue is the maximum one. lowerCamelCase_ : Dict = eigen_values[-1] # Last column in this matrix is eigenvector corresponding to largest eigenvalue. lowerCamelCase_ : List[str] = eigen_vectors[:, -1] # Check our implementation and numpy gives close answers. assert np.abs(eigen_value - eigen_value_max ) <= 1e-6 # Take absolute values element wise of each eigenvector. # as they are only unique to a minus sign. assert np.linalg.norm(np.abs(A__ ) - np.abs(A__ ) ) <= 1e-6 if __name__ == "__main__": import doctest doctest.testmod() test_power_iteration()
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SCREAMING_SNAKE_CASE__ : Tuple = { """a""": """AAAAA""", """b""": """AAAAB""", """c""": """AAABA""", """d""": """AAABB""", """e""": """AABAA""", """f""": """AABAB""", """g""": """AABBA""", """h""": """AABBB""", """i""": """ABAAA""", """j""": """BBBAA""", """k""": """ABAAB""", """l""": """ABABA""", """m""": """ABABB""", """n""": """ABBAA""", """o""": """ABBAB""", """p""": """ABBBA""", """q""": """ABBBB""", """r""": """BAAAA""", """s""": """BAAAB""", """t""": """BAABA""", """u""": """BAABB""", """v""": """BBBAB""", """w""": """BABAA""", """x""": """BABAB""", """y""": """BABBA""", """z""": """BABBB""", """ """: """ """, } SCREAMING_SNAKE_CASE__ : Union[str, Any] = {value: key for key, value in encode_dict.items()} def __lowercase ( snake_case ): """simple docstring""" __magic_name__ :Tuple = '''''' for letter in word.lower(): if letter.isalpha() or letter == " ": encoded += encode_dict[letter] else: raise Exception('''encode() accepts only letters of the alphabet and spaces''' ) return encoded def __lowercase ( snake_case ): """simple docstring""" if set(snake_case ) - {"A", "B", " "} != set(): raise Exception('''decode() accepts only \'A\', \'B\' and spaces''' ) __magic_name__ :Dict = '''''' for word in coded.split(): while len(snake_case ) != 0: decoded += decode_dict[word[:5]] __magic_name__ :int = word[5:] decoded += " " return decoded.strip() if __name__ == "__main__": from doctest import testmod testmod()
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def _lowerCamelCase( lowercase__ , lowercase__ ) -> str: '''simple docstring''' while b: __lowercase= b, a % b return a def _lowerCamelCase( lowercase__ , lowercase__ ) -> Dict: '''simple docstring''' return a if b == 0 else euclidean_gcd_recursive(lowercase__ , a % b ) def _lowerCamelCase( ) -> Optional[Any]: '''simple docstring''' print(F'euclidean_gcd(3, 5) = {euclidean_gcd(3 , 5 )}' ) print(F'euclidean_gcd(5, 3) = {euclidean_gcd(5 , 3 )}' ) print(F'euclidean_gcd(1, 3) = {euclidean_gcd(1 , 3 )}' ) print(F'euclidean_gcd(3, 6) = {euclidean_gcd(3 , 6 )}' ) print(F'euclidean_gcd(6, 3) = {euclidean_gcd(6 , 3 )}' ) print(F'euclidean_gcd_recursive(3, 5) = {euclidean_gcd_recursive(3 , 5 )}' ) print(F'euclidean_gcd_recursive(5, 3) = {euclidean_gcd_recursive(5 , 3 )}' ) print(F'euclidean_gcd_recursive(1, 3) = {euclidean_gcd_recursive(1 , 3 )}' ) print(F'euclidean_gcd_recursive(3, 6) = {euclidean_gcd_recursive(3 , 6 )}' ) print(F'euclidean_gcd_recursive(6, 3) = {euclidean_gcd_recursive(6 , 3 )}' ) if __name__ == "__main__": main()
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import argparse import torch from torch import nn from transformers import MaMaaaConfig, MaMaaaForConditionalGeneration def __lowercase ( snake_case ): """simple docstring""" __magic_name__ :Optional[Any] = [ '''encoder.version''', '''decoder.version''', '''model.encoder.version''', '''model.decoder.version''', '''decoder.output_projection.weight''', '''_float_tensor''', '''encoder.embed_positions._float_tensor''', '''decoder.embed_positions._float_tensor''', ] for k in ignore_keys: state_dict.pop(snake_case, snake_case ) def __lowercase ( snake_case ): """simple docstring""" __magic_name__ , __magic_name__ :Tuple = emb.weight.shape __magic_name__ :int = nn.Linear(snake_case, snake_case, bias=snake_case ) __magic_name__ :str = emb.weight.data return lin_layer def __lowercase ( snake_case ): """simple docstring""" __magic_name__ :int = torch.load(snake_case, map_location='''cpu''' ) __magic_name__ :Optional[Any] = mam_aaa['''args'''] or mam_aaa['''cfg''']['''model'''] __magic_name__ :List[Any] = mam_aaa['''model'''] remove_ignore_keys_(snake_case ) __magic_name__ :Tuple = state_dict['''encoder.embed_tokens.weight'''].shape[0] __magic_name__ :List[str] = MaMaaaConfig( vocab_size=snake_case, max_position_embeddings=1_0_2_4, encoder_layers=args.encoder_layers, decoder_layers=args.decoder_layers, encoder_attention_heads=args.encoder_attention_heads, decoder_attention_heads=args.decoder_attention_heads, encoder_ffn_dim=args.encoder_ffn_embed_dim, decoder_ffn_dim=args.decoder_ffn_embed_dim, d_model=args.encoder_embed_dim, encoder_layerdrop=args.encoder_layerdrop, decoder_layerdrop=args.decoder_layerdrop, dropout=args.dropout, attention_dropout=args.attention_dropout, activation_dropout=args.activation_dropout, activation_function='''relu''', ) __magic_name__ :int = state_dict['''decoder.embed_tokens.weight'''] __magic_name__ :List[str] = MaMaaaForConditionalGeneration(snake_case ) model.model.load_state_dict(snake_case, strict=snake_case ) __magic_name__ :List[str] = make_linear_from_emb(model.model.shared ) return model if __name__ == "__main__": SCREAMING_SNAKE_CASE__ : Optional[Any] = argparse.ArgumentParser() # Required parameters parser.add_argument("""fairseq_path""", type=str, help="""path to a model.pt on local filesystem.""") parser.add_argument("""pytorch_dump_folder_path""", default=None, type=str, help="""Path to the output PyTorch model.""") SCREAMING_SNAKE_CASE__ : int = parser.parse_args() SCREAMING_SNAKE_CASE__ : Any = convert_fairseq_mamaaa_checkpoint_from_disk(args.fairseq_pathß) model.save_pretrained(args.pytorch_dump_folder_path)
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"""simple docstring""" from typing import List, Optional, Tuple, Union import torch from ...models import UNetaDModel from ...schedulers import ScoreSdeVeScheduler from ...utils import randn_tensor from ..pipeline_utils import DiffusionPipeline, ImagePipelineOutput class __magic_name__ ( _UpperCamelCase ): UpperCamelCase : Union[str, Any] = 42 UpperCamelCase : Tuple = 42 def __init__( self , __magic_name__ , __magic_name__ ): """simple docstring""" super().__init__() self.register_modules(unet=__lowerCAmelCase , scheduler=__lowerCAmelCase ) @torch.no_grad() def __call__( self , __magic_name__ = 1 , __magic_name__ = 2_0_0_0 , __magic_name__ = None , __magic_name__ = "pil" , __magic_name__ = True , **__magic_name__ , ): """simple docstring""" _lowerCAmelCase = self.unet.config.sample_size _lowerCAmelCase = (batch_size, 3, img_size, img_size) _lowerCAmelCase = self.unet _lowerCAmelCase = randn_tensor(__lowerCAmelCase , generator=__lowerCAmelCase ) * self.scheduler.init_noise_sigma _lowerCAmelCase = sample.to(self.device ) self.scheduler.set_timesteps(__lowerCAmelCase ) self.scheduler.set_sigmas(__lowerCAmelCase ) for i, t in enumerate(self.progress_bar(self.scheduler.timesteps ) ): _lowerCAmelCase = self.scheduler.sigmas[i] * torch.ones(shape[0] , device=self.device ) # correction step for _ in range(self.scheduler.config.correct_steps ): _lowerCAmelCase = self.unet(__lowerCAmelCase , __lowerCAmelCase ).sample _lowerCAmelCase = self.scheduler.step_correct(__lowerCAmelCase , __lowerCAmelCase , generator=__lowerCAmelCase ).prev_sample # prediction step _lowerCAmelCase = model(__lowerCAmelCase , __lowerCAmelCase ).sample _lowerCAmelCase = self.scheduler.step_pred(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , generator=__lowerCAmelCase ) _lowerCAmelCase = output.prev_sample, output.prev_sample_mean _lowerCAmelCase = sample_mean.clamp(0 , 1 ) _lowerCAmelCase = sample.cpu().permute(0 , 2 , 3 , 1 ).numpy() if output_type == "pil": _lowerCAmelCase = self.numpy_to_pil(__lowerCAmelCase ) if not return_dict: return (sample,) return ImagePipelineOutput(images=__lowerCAmelCase )
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from typing import TYPE_CHECKING from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tokenizers_available, is_torch_available SCREAMING_SNAKE_CASE__ : Dict = { """configuration_canine""": ["""CANINE_PRETRAINED_CONFIG_ARCHIVE_MAP""", """CanineConfig"""], """tokenization_canine""": ["""CanineTokenizer"""], } try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: SCREAMING_SNAKE_CASE__ : str = [ """CANINE_PRETRAINED_MODEL_ARCHIVE_LIST""", """CanineForMultipleChoice""", """CanineForQuestionAnswering""", """CanineForSequenceClassification""", """CanineForTokenClassification""", """CanineLayer""", """CanineModel""", """CaninePreTrainedModel""", """load_tf_weights_in_canine""", ] if TYPE_CHECKING: from .configuration_canine import CANINE_PRETRAINED_CONFIG_ARCHIVE_MAP, CanineConfig from .tokenization_canine import CanineTokenizer try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_canine import ( CANINE_PRETRAINED_MODEL_ARCHIVE_LIST, CanineForMultipleChoice, CanineForQuestionAnswering, CanineForSequenceClassification, CanineForTokenClassification, CanineLayer, CanineModel, CaninePreTrainedModel, load_tf_weights_in_canine, ) else: import sys SCREAMING_SNAKE_CASE__ : Union[str, Any] = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
0
0
import warnings from typing import List, Optional, Union from ...processing_utils import ProcessorMixin from ...tokenization_utils_base import BatchEncoding, PaddingStrategy, PreTokenizedInput, TextInput, TruncationStrategy from ...utils import TensorType class __SCREAMING_SNAKE_CASE ( lowerCAmelCase_ ): _UpperCAmelCase : Union[str, Any] = ["image_processor", "tokenizer"] _UpperCAmelCase : str = "LayoutLMv3ImageProcessor" _UpperCAmelCase : Tuple = ("LayoutLMv3Tokenizer", "LayoutLMv3TokenizerFast") def __init__( self : Any , A : Tuple=None , A : int=None , **A : List[Any] ) ->Union[str, Any]: lowerCamelCase__ : List[str] = None if "feature_extractor" in kwargs: warnings.warn( '''The `feature_extractor` argument is deprecated and will be removed in v5, use `image_processor`''' ''' instead.''' , __lowerCAmelCase , ) lowerCamelCase__ : Union[str, Any] = kwargs.pop('''feature_extractor''' ) lowerCamelCase__ : List[str] = image_processor if image_processor is not None else feature_extractor if image_processor is None: raise ValueError('''You need to specify an `image_processor`.''' ) if tokenizer is None: raise ValueError('''You need to specify a `tokenizer`.''' ) super().__init__(__lowerCAmelCase , __lowerCAmelCase ) def __call__( self : Optional[Any] , A : Any , A : int = None , A : Optional[int] = None , A : Optional[int] = None , A : Dict = None , A : List[str] = True , A : Tuple = False , A : Any = None , A : Optional[Any] = None , A : Any = 0 , A : Optional[Any] = None , A : List[str] = None , A : Optional[int] = None , A : int = False , A : Optional[Any] = False , A : Dict = False , A : Union[str, Any] = False , A : Tuple = True , A : Optional[Any] = None , **A : List[Any] , ) ->List[str]: # verify input if self.image_processor.apply_ocr and (boxes is not None): raise ValueError( '''You cannot provide bounding boxes if you initialized the image processor with apply_ocr set to True.''' ) if self.image_processor.apply_ocr and (word_labels is not None): raise ValueError( '''You cannot provide word labels if you initialized the image processor with apply_ocr set to True.''' ) # first, apply the image processor lowerCamelCase__ : Union[str, Any] = self.image_processor(images=__lowerCAmelCase , return_tensors=__lowerCAmelCase ) # second, apply the tokenizer if text is not None and self.image_processor.apply_ocr and text_pair is None: if isinstance(__lowerCAmelCase , __lowerCAmelCase ): lowerCamelCase__ : str = [text] # add batch dimension (as the image processor always adds a batch dimension) lowerCamelCase__ : Union[str, Any] = features['''words'''] lowerCamelCase__ : Dict = self.tokenizer( text=text if text is not None else features['''words'''] , text_pair=text_pair if text_pair is not None else None , boxes=boxes if boxes is not None else features['''boxes'''] , word_labels=__lowerCAmelCase , add_special_tokens=__lowerCAmelCase , padding=__lowerCAmelCase , truncation=__lowerCAmelCase , max_length=__lowerCAmelCase , stride=__lowerCAmelCase , pad_to_multiple_of=__lowerCAmelCase , return_token_type_ids=__lowerCAmelCase , return_attention_mask=__lowerCAmelCase , return_overflowing_tokens=__lowerCAmelCase , return_special_tokens_mask=__lowerCAmelCase , return_offsets_mapping=__lowerCAmelCase , return_length=__lowerCAmelCase , verbose=__lowerCAmelCase , return_tensors=__lowerCAmelCase , **__lowerCAmelCase , ) # add pixel values lowerCamelCase__ : List[str] = features.pop('''pixel_values''' ) if return_overflowing_tokens is True: lowerCamelCase__ : Any = self.get_overflowing_images(__lowerCAmelCase , encoded_inputs['''overflow_to_sample_mapping'''] ) lowerCamelCase__ : List[str] = images return encoded_inputs def __lowerCamelCase ( self : int , A : str , A : Any ) ->Optional[Any]: lowerCamelCase__ : Optional[int] = [] for sample_idx in overflow_to_sample_mapping: images_with_overflow.append(images[sample_idx] ) if len(__lowerCAmelCase ) != len(__lowerCAmelCase ): raise ValueError( '''Expected length of images to be the same as the length of `overflow_to_sample_mapping`, but got''' F" {len(__lowerCAmelCase )} and {len(__lowerCAmelCase )}" ) return images_with_overflow def __lowerCamelCase ( self : Union[str, Any] , *A : Any , **A : Any ) ->Union[str, Any]: return self.tokenizer.batch_decode(*__lowerCAmelCase , **__lowerCAmelCase ) def __lowerCamelCase ( self : Dict , *A : Optional[int] , **A : Any ) ->str: return self.tokenizer.decode(*__lowerCAmelCase , **__lowerCAmelCase ) @property def __lowerCamelCase ( self : Tuple ) ->str: return ["input_ids", "bbox", "attention_mask", "pixel_values"] @property def __lowerCamelCase ( self : Tuple ) ->Union[str, Any]: warnings.warn( '''`feature_extractor_class` is deprecated and will be removed in v5. Use `image_processor_class` instead.''' , __lowerCAmelCase , ) return self.image_processor_class @property def __lowerCamelCase ( self : str ) ->Tuple: warnings.warn( '''`feature_extractor` is deprecated and will be removed in v5. Use `image_processor` instead.''' , __lowerCAmelCase , ) return self.image_processor
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import warnings from ...processing_utils import ProcessorMixin from ...tokenization_utils_base import BatchEncoding class lowerCamelCase_ ( lowerCamelCase ): a__ = ['''image_processor''', '''tokenizer'''] a__ = '''ChineseCLIPImageProcessor''' a__ = ('''BertTokenizer''', '''BertTokenizerFast''') def __init__( self , __lowerCAmelCase=None , __lowerCAmelCase=None , **__lowerCAmelCase ): """simple docstring""" __magic_name__ :Tuple = None if "feature_extractor" in kwargs: warnings.warn( '''The `feature_extractor` argument is deprecated and will be removed in v5, use `image_processor`''' ''' instead.''' , __lowerCAmelCase , ) __magic_name__ :Optional[Any] = kwargs.pop('''feature_extractor''' ) __magic_name__ :Tuple = image_processor if image_processor is not None else feature_extractor if image_processor is None: raise ValueError('''You need to specify an `image_processor`.''' ) if tokenizer is None: raise ValueError('''You need to specify a `tokenizer`.''' ) super().__init__(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :List[Any] = self.image_processor def __call__( self , __lowerCAmelCase=None , __lowerCAmelCase=None , __lowerCAmelCase=None , **__lowerCAmelCase ): """simple docstring""" if text is None and images is None: raise ValueError('''You have to specify either text or images. Both cannot be none.''' ) if text is not None: __magic_name__ :int = self.tokenizer(__lowerCAmelCase , return_tensors=__lowerCAmelCase , **__lowerCAmelCase ) if images is not None: __magic_name__ :Dict = self.image_processor(__lowerCAmelCase , return_tensors=__lowerCAmelCase , **__lowerCAmelCase ) if text is not None and images is not None: __magic_name__ :Union[str, Any] = image_features.pixel_values return encoding elif text is not None: return encoding else: return BatchEncoding(data=dict(**__lowerCAmelCase ) , tensor_type=__lowerCAmelCase ) def A ( self , *__lowerCAmelCase , **__lowerCAmelCase ): """simple docstring""" return self.tokenizer.batch_decode(*__lowerCAmelCase , **__lowerCAmelCase ) def A ( self , *__lowerCAmelCase , **__lowerCAmelCase ): """simple docstring""" return self.tokenizer.decode(*__lowerCAmelCase , **__lowerCAmelCase ) @property def A ( self ): """simple docstring""" __magic_name__ :List[Any] = self.tokenizer.model_input_names __magic_name__ :Any = self.image_processor.model_input_names return list(dict.fromkeys(tokenizer_input_names + image_processor_input_names ) ) @property def A ( self ): """simple docstring""" warnings.warn( '''`feature_extractor_class` is deprecated and will be removed in v5. Use `image_processor_class` instead.''' , __lowerCAmelCase , ) return self.image_processor_class
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'''simple docstring''' def lowerCamelCase ( UpperCAmelCase__ : List[str] , UpperCAmelCase__ : List[str] , UpperCAmelCase__ : Tuple ) -> List[str]: '''simple docstring''' SCREAMING_SNAKE_CASE__ :Dict = (num_of_terms / 2) * (2 * first_term + (num_of_terms - 1) * common_diff) # formula for sum of series return total def lowerCamelCase ( ) -> Union[str, Any]: '''simple docstring''' print(sum_of_series(1 , 1 , 1_0 ) ) if __name__ == "__main__": import doctest doctest.testmod()
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from sklearn.metrics import matthews_corrcoef import datasets SCREAMING_SNAKE_CASE__ : Optional[Any] = """ Compute the Matthews correlation coefficient (MCC) The Matthews correlation coefficient is used in machine learning as a measure of the quality of binary and multiclass classifications. It takes into account true and false positives and negatives and is generally regarded as a balanced measure which can be used even if the classes are of very different sizes. The MCC is in essence a correlation coefficient value between -1 and +1. A coefficient of +1 represents a perfect prediction, 0 an average random prediction and -1 an inverse prediction. The statistic is also known as the phi coefficient. [source: Wikipedia] """ SCREAMING_SNAKE_CASE__ : Union[str, Any] = """ Args: predictions (list of int): Predicted labels, as returned by a model. references (list of int): Ground truth labels. sample_weight (list of int, float, or bool): Sample weights. Defaults to `None`. Returns: matthews_correlation (dict containing float): Matthews correlation. Examples: Example 1, a basic example with only predictions and references as inputs: >>> matthews_metric = datasets.load_metric(\"matthews_correlation\") >>> results = matthews_metric.compute(references=[1, 3, 2, 0, 3, 2], ... predictions=[1, 2, 2, 0, 3, 3]) >>> print(round(results['matthews_correlation'], 2)) 0.54 Example 2, the same example as above, but also including sample weights: >>> matthews_metric = datasets.load_metric(\"matthews_correlation\") >>> results = matthews_metric.compute(references=[1, 3, 2, 0, 3, 2], ... predictions=[1, 2, 2, 0, 3, 3], ... sample_weight=[0.5, 3, 1, 1, 1, 2]) >>> print(round(results['matthews_correlation'], 2)) 0.1 Example 3, the same example as above, but with sample weights that cause a negative correlation: >>> matthews_metric = datasets.load_metric(\"matthews_correlation\") >>> results = matthews_metric.compute(references=[1, 3, 2, 0, 3, 2], ... predictions=[1, 2, 2, 0, 3, 3], ... sample_weight=[0.5, 1, 0, 0, 0, 1]) >>> print(round(results['matthews_correlation'], 2)) -0.25 """ SCREAMING_SNAKE_CASE__ : int = """\ @article{scikit-learn, title={Scikit-learn: Machine Learning in {P}ython}, author={Pedregosa, F. and Varoquaux, G. and Gramfort, A. and Michel, V. and Thirion, B. and Grisel, O. and Blondel, M. and Prettenhofer, P. and Weiss, R. and Dubourg, V. and Vanderplas, J. and Passos, A. and Cournapeau, D. and Brucher, M. and Perrot, M. and Duchesnay, E.}, journal={Journal of Machine Learning Research}, volume={12}, pages={2825--2830}, year={2011} } """ @datasets.utils.file_utils.add_start_docstrings(_DESCRIPTION , _KWARGS_DESCRIPTION ) class lowerCamelCase_ ( datasets.Metric ): def A ( self ): """simple docstring""" return datasets.MetricInfo( description=_DESCRIPTION , citation=_CITATION , inputs_description=_KWARGS_DESCRIPTION , features=datasets.Features( { '''predictions''': datasets.Value('''int32''' ), '''references''': datasets.Value('''int32''' ), } ) , reference_urls=[ '''https://scikit-learn.org/stable/modules/generated/sklearn.metrics.matthews_corrcoef.html''' ] , ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase=None ): """simple docstring""" return { "matthews_correlation": float(matthews_corrcoef(__lowerCAmelCase , __lowerCAmelCase , sample_weight=__lowerCAmelCase ) ), }
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from typing import Any, Dict, List, Optional, Tuple, Union import torch from torch import nn from torch.utils.data import DistributedSampler, RandomSampler from transformers import PreTrainedModel, Trainer, logging from transformers.integrations import is_fairscale_available from transformers.models.fsmt.configuration_fsmt import FSMTConfig from transformers.optimization import ( Adafactor, AdamW, get_constant_schedule, get_constant_schedule_with_warmup, get_cosine_schedule_with_warmup, get_cosine_with_hard_restarts_schedule_with_warmup, get_linear_schedule_with_warmup, get_polynomial_decay_schedule_with_warmup, ) from transformers.trainer_pt_utils import get_tpu_sampler from transformers.training_args import ParallelMode from transformers.utils import is_torch_tpu_available if is_fairscale_available(): from fairscale.optim import OSS _UpperCAmelCase = logging.get_logger(__name__) _UpperCAmelCase = { """linear""": get_linear_schedule_with_warmup, """cosine""": get_cosine_schedule_with_warmup, """cosine_w_restarts""": get_cosine_with_hard_restarts_schedule_with_warmup, """polynomial""": get_polynomial_decay_schedule_with_warmup, """constant""": get_constant_schedule, """constant_w_warmup""": get_constant_schedule_with_warmup, } class _UpperCAmelCase ( __lowercase ): '''simple docstring''' def __init__( self : Dict , UpperCamelCase__ : Optional[int]=None , UpperCamelCase__ : List[str]=None , *UpperCamelCase__ : Optional[Any] , **UpperCamelCase__ : Tuple ): super().__init__(*__lowerCAmelCase , **__lowerCAmelCase ) if config is None: assert isinstance(self.model , __lowerCAmelCase ), ( "If no `config` is passed the model to be trained has to be of type `PreTrainedModel`, but is" f''' {self.model.__class__}''' ) A = self.model.config else: A = config A = data_args A = self.config.tgt_vocab_size if isinstance(self.config , __lowerCAmelCase ) else self.config.vocab_size if self.args.label_smoothing != 0 or (self.data_args is not None and self.data_args.ignore_pad_token_for_loss): assert self.config.pad_token_id is not None, ( "Make sure that `config.pad_token_id` is correcly defined when ignoring `pad_token` for loss" " calculation or doing label smoothing." ) if self.config.pad_token_id is None and self.config.eos_token_id is not None: logger.warning( f'''The `config.pad_token_id` is `None`. Using `config.eos_token_id` = {self.config.eos_token_id} for''' ' padding..' ) if self.args.label_smoothing == 0: A = torch.nn.CrossEntropyLoss(ignore_index=self.config.pad_token_id ) else: # dynamically import label_smoothed_nll_loss from utils import label_smoothed_nll_loss A = label_smoothed_nll_loss def UpperCamelCase ( self : List[str] , UpperCamelCase__ : Optional[Any] ): if self.optimizer is None: A = ['''bias''', '''LayerNorm.weight'''] A = [ { '''params''': [p for n, p in self.model.named_parameters() if not any(nd in n for nd in no_decay )], '''weight_decay''': self.args.weight_decay, }, { '''params''': [p for n, p in self.model.named_parameters() if any(nd in n for nd in no_decay )], '''weight_decay''': 0.0, }, ] A = Adafactor if self.args.adafactor else AdamW if self.args.adafactor: A = Adafactor A = {'''scale_parameter''': False, '''relative_step''': False} else: A = AdamW A = { '''betas''': (self.args.adam_betaa, self.args.adam_betaa), '''eps''': self.args.adam_epsilon, } A = self.args.learning_rate if self.sharded_ddp: A = OSS( params=__lowerCAmelCase , optim=__lowerCAmelCase , **__lowerCAmelCase , ) else: A = optimizer_cls(__lowerCAmelCase , **__lowerCAmelCase ) if self.lr_scheduler is None: A = self._get_lr_scheduler(__lowerCAmelCase ) else: # ignoring --lr_scheduler logger.warning('scheduler is passed to `Seq2SeqTrainer`, `--lr_scheduler` arg is ignored.' ) def UpperCamelCase ( self : int , UpperCamelCase__ : int ): A = arg_to_scheduler[self.args.lr_scheduler] if self.args.lr_scheduler == "constant": A = schedule_func(self.optimizer ) elif self.args.lr_scheduler == "constant_w_warmup": A = schedule_func(self.optimizer , num_warmup_steps=self.args.warmup_steps ) else: A = schedule_func( self.optimizer , num_warmup_steps=self.args.warmup_steps , num_training_steps=__lowerCAmelCase ) return scheduler def UpperCamelCase ( self : str ): if isinstance(self.train_dataset , torch.utils.data.IterableDataset ): return None elif is_torch_tpu_available(): return get_tpu_sampler(self.train_dataset ) else: if self.args.sortish_sampler: self.train_dataset.make_sortish_sampler( self.args.per_device_train_batch_size , distributed=(self.args.parallel_mode == ParallelMode.DISTRIBUTED) , ) return ( RandomSampler(self.train_dataset ) if self.args.local_rank == -1 else DistributedSampler(self.train_dataset ) ) def UpperCamelCase ( self : Dict , UpperCamelCase__ : int , UpperCamelCase__ : int , UpperCamelCase__ : Tuple ): if self.args.label_smoothing == 0: if self.data_args is not None and self.data_args.ignore_pad_token_for_loss: # force training to ignore pad token A = model(**__lowerCAmelCase , use_cache=__lowerCAmelCase )[0] A = self.loss_fn(logits.view(-1 , logits.shape[-1] ) , labels.view(-1 ) ) else: # compute usual loss via models A = model(**__lowerCAmelCase , labels=__lowerCAmelCase , use_cache=__lowerCAmelCase )[:2] else: # compute label smoothed loss A = model(**__lowerCAmelCase , use_cache=__lowerCAmelCase )[0] A = torch.nn.functional.log_softmax(__lowerCAmelCase , dim=-1 ) A = self.loss_fn(__lowerCAmelCase , __lowerCAmelCase , self.args.label_smoothing , ignore_index=self.config.pad_token_id ) return loss, logits def UpperCamelCase ( self : List[Any] , UpperCamelCase__ : int , UpperCamelCase__ : List[Any] ): A = inputs.pop('labels' ) A = self._compute_loss(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) return loss def UpperCamelCase ( self : Optional[Any] , UpperCamelCase__ : int , UpperCamelCase__ : Optional[Any] , UpperCamelCase__ : Any , UpperCamelCase__ : List[str] = None , ): A = self._prepare_inputs(__lowerCAmelCase ) A = { '''max_length''': self.data_args.val_max_target_length if self.data_args is not None else self.config.max_length, '''num_beams''': self.data_args.eval_beams if self.data_args is not None else self.config.num_beams, } if self.args.predict_with_generate and not self.args.prediction_loss_only: A = self.model.generate( inputs['input_ids'] , attention_mask=inputs['attention_mask'] , **__lowerCAmelCase , ) # in case the batch is shorter than max length, the output should be padded if generated_tokens.shape[-1] < gen_kwargs["max_length"]: A = self._pad_tensors_to_max_len(__lowerCAmelCase , gen_kwargs['max_length'] ) A = inputs.pop('labels' ) with torch.no_grad(): # compute loss on predict data A = self._compute_loss(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) A = loss.mean().detach() if self.args.prediction_loss_only: return (loss, None, None) A = generated_tokens if self.args.predict_with_generate else logits if labels.shape[-1] < gen_kwargs["max_length"]: A = self._pad_tensors_to_max_len(__lowerCAmelCase , gen_kwargs['max_length'] ) return (loss, logits, labels) def UpperCamelCase ( self : Optional[Any] , UpperCamelCase__ : List[Any] , UpperCamelCase__ : Union[str, Any] ): A = self.config.pad_token_id if self.config.pad_token_id is not None else self.config.eos_token_id if pad_token_id is None: raise ValueError( 'Make sure that either `config.pad_token_id` or `config.eos_token_id` is defined if tensor has to be' f''' padded to `max_length`={max_length}''' ) A = pad_token_id * torch.ones( (tensor.shape[0], max_length) , dtype=tensor.dtype , device=tensor.device ) A = tensor return padded_tensor
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from __future__ import annotations def __lowercase ( snake_case, snake_case ): """simple docstring""" print(f'''Vertex\tShortest Distance from vertex {src}''' ) for i, d in enumerate(snake_case ): print(f'''{i}\t\t{d}''' ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" for j in range(snake_case ): __magic_name__ , __magic_name__ , __magic_name__ :Tuple = (graph[j][k] for k in ['''src''', '''dst''', '''weight''']) if distance[u] != float('''inf''' ) and distance[u] + w < distance[v]: return True return False def __lowercase ( snake_case, snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :List[Any] = [float('''inf''' )] * vertex_count __magic_name__ :Tuple = 0.0 for _ in range(vertex_count - 1 ): for j in range(snake_case ): __magic_name__ , __magic_name__ , __magic_name__ :Dict = (graph[j][k] for k in ['''src''', '''dst''', '''weight''']) if distance[u] != float('''inf''' ) and distance[u] + w < distance[v]: __magic_name__ :Tuple = distance[u] + w __magic_name__ :Tuple = check_negative_cycle(snake_case, snake_case, snake_case ) if negative_cycle_exists: raise Exception('''Negative cycle found''' ) return distance if __name__ == "__main__": import doctest doctest.testmod() SCREAMING_SNAKE_CASE__ : Tuple = int(input("""Enter number of vertices: """).strip()) SCREAMING_SNAKE_CASE__ : Any = int(input("""Enter number of edges: """).strip()) SCREAMING_SNAKE_CASE__ : list[dict[str, int]] = [{} for _ in range(E)] for i in range(E): print("""Edge """, i + 1) SCREAMING_SNAKE_CASE__ , SCREAMING_SNAKE_CASE__ , SCREAMING_SNAKE_CASE__ : Dict = ( int(x) for x in input("""Enter source, destination, weight: """).strip().split(""" """) ) SCREAMING_SNAKE_CASE__ : Dict = {"""src""": src, """dst""": dest, """weight""": weight} SCREAMING_SNAKE_CASE__ : List[Any] = int(input("""\nEnter shortest path source:""").strip()) SCREAMING_SNAKE_CASE__ : List[str] = bellman_ford(graph, V, E, source) print_distance(shortest_distance, 0)
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from __future__ import annotations from math import pi def lowerCamelCase__ ( snake_case_ : Dict , snake_case_ : int , snake_case_ : Tuple ) -> Optional[int]: if (inductance, frequency, reactance).count(0 ) != 1: raise ValueError('''One and only one argument must be 0''' ) if inductance < 0: raise ValueError('''Inductance cannot be negative''' ) if frequency < 0: raise ValueError('''Frequency cannot be negative''' ) if reactance < 0: raise ValueError('''Inductive reactance cannot be negative''' ) if inductance == 0: return {"inductance": reactance / (2 * pi * frequency)} elif frequency == 0: return {"frequency": reactance / (2 * pi * inductance)} elif reactance == 0: return {"reactance": 2 * pi * frequency * inductance} else: raise ValueError('''Exactly one argument must be 0''' ) if __name__ == "__main__": import doctest doctest.testmod()
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from __future__ import annotations import unittest from transformers import RoFormerConfig, is_tf_available from transformers.testing_utils import require_tf, slow from ...test_configuration_common import ConfigTester from ...test_modeling_tf_common import TFModelTesterMixin, ids_tensor, random_attention_mask from ...test_pipeline_mixin import PipelineTesterMixin if is_tf_available(): import tensorflow as tf from transformers import ( TFRoFormerForCausalLM, TFRoFormerForMaskedLM, TFRoFormerForMultipleChoice, TFRoFormerForQuestionAnswering, TFRoFormerForSequenceClassification, TFRoFormerForTokenClassification, TFRoFormerModel, ) from transformers.models.roformer.modeling_tf_roformer import ( TFRoFormerSelfAttention, TFRoFormerSinusoidalPositionalEmbedding, ) class lowerCamelCase_ : def __init__( self , __lowerCAmelCase , __lowerCAmelCase=1_3 , __lowerCAmelCase=7 , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=9_9 , __lowerCAmelCase=3_2 , __lowerCAmelCase=2 , __lowerCAmelCase=4 , __lowerCAmelCase=3_7 , __lowerCAmelCase="gelu" , __lowerCAmelCase=0.1 , __lowerCAmelCase=0.1 , __lowerCAmelCase=5_1_2 , __lowerCAmelCase=1_6 , __lowerCAmelCase=2 , __lowerCAmelCase=0.02 , __lowerCAmelCase=3 , __lowerCAmelCase=4 , __lowerCAmelCase=None , ): """simple docstring""" __magic_name__ :Optional[int] = parent __magic_name__ :List[Any] = 1_3 __magic_name__ :Union[str, Any] = 7 __magic_name__ :Optional[Any] = True __magic_name__ :Tuple = True __magic_name__ :List[str] = True __magic_name__ :List[Any] = True __magic_name__ :int = 9_9 __magic_name__ :Any = 3_2 __magic_name__ :Union[str, Any] = 2 __magic_name__ :List[str] = 4 __magic_name__ :List[Any] = 3_7 __magic_name__ :Tuple = '''gelu''' __magic_name__ :Any = 0.1 __magic_name__ :str = 0.1 __magic_name__ :List[str] = 5_1_2 __magic_name__ :int = 1_6 __magic_name__ :Any = 2 __magic_name__ :List[Any] = 0.02 __magic_name__ :Optional[Any] = 3 __magic_name__ :Tuple = 4 __magic_name__ :Optional[Any] = None def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = ids_tensor([self.batch_size, self.seq_length] , self.vocab_size ) __magic_name__ :str = None if self.use_input_mask: __magic_name__ :Optional[int] = random_attention_mask([self.batch_size, self.seq_length] ) __magic_name__ :str = None if self.use_token_type_ids: __magic_name__ :List[Any] = ids_tensor([self.batch_size, self.seq_length] , self.type_vocab_size ) __magic_name__ :Union[str, Any] = None __magic_name__ :Tuple = None __magic_name__ :str = None if self.use_labels: __magic_name__ :List[Any] = ids_tensor([self.batch_size] , self.type_sequence_label_size ) __magic_name__ :List[Any] = ids_tensor([self.batch_size, self.seq_length] , self.num_labels ) __magic_name__ :List[Any] = ids_tensor([self.batch_size] , self.num_choices ) __magic_name__ :str = RoFormerConfig( vocab_size=self.vocab_size , hidden_size=self.hidden_size , num_hidden_layers=self.num_hidden_layers , num_attention_heads=self.num_attention_heads , intermediate_size=self.intermediate_size , hidden_act=self.hidden_act , hidden_dropout_prob=self.hidden_dropout_prob , attention_probs_dropout_prob=self.attention_probs_dropout_prob , max_position_embeddings=self.max_position_embeddings , type_vocab_size=self.type_vocab_size , initializer_range=self.initializer_range , return_dict=__lowerCAmelCase , ) return config, input_ids, token_type_ids, input_mask, sequence_labels, token_labels, choice_labels def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :int = TFRoFormerModel(config=__lowerCAmelCase ) __magic_name__ :Optional[Any] = {'''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids} __magic_name__ :List[str] = [input_ids, input_mask] __magic_name__ :Any = model(__lowerCAmelCase ) __magic_name__ :List[str] = model(__lowerCAmelCase ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, self.seq_length, self.hidden_size) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Dict = True __magic_name__ :List[str] = TFRoFormerForCausalLM(config=__lowerCAmelCase ) __magic_name__ :str = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :Optional[Any] = model(__lowerCAmelCase )['''logits'''] self.parent.assertListEqual( list(prediction_scores.numpy().shape ) , [self.batch_size, self.seq_length, self.vocab_size] ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[Any] = TFRoFormerForMaskedLM(config=__lowerCAmelCase ) __magic_name__ :Any = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :Dict = model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :int = self.num_labels __magic_name__ :str = TFRoFormerForSequenceClassification(config=__lowerCAmelCase ) __magic_name__ :Optional[int] = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :str = model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.num_labels) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Union[str, Any] = self.num_choices __magic_name__ :Tuple = TFRoFormerForMultipleChoice(config=__lowerCAmelCase ) __magic_name__ :int = tf.tile(tf.expand_dims(__lowerCAmelCase , 1 ) , (1, self.num_choices, 1) ) __magic_name__ :Optional[Any] = tf.tile(tf.expand_dims(__lowerCAmelCase , 1 ) , (1, self.num_choices, 1) ) __magic_name__ :Union[str, Any] = tf.tile(tf.expand_dims(__lowerCAmelCase , 1 ) , (1, self.num_choices, 1) ) __magic_name__ :str = { '''input_ids''': multiple_choice_inputs_ids, '''attention_mask''': multiple_choice_input_mask, '''token_type_ids''': multiple_choice_token_type_ids, } __magic_name__ :Tuple = model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.num_choices) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[int] = self.num_labels __magic_name__ :Any = TFRoFormerForTokenClassification(config=__lowerCAmelCase ) __magic_name__ :str = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :Dict = model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.num_labels) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :List[str] = TFRoFormerForQuestionAnswering(config=__lowerCAmelCase ) __magic_name__ :List[str] = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :Union[str, Any] = model(__lowerCAmelCase ) self.parent.assertEqual(result.start_logits.shape , (self.batch_size, self.seq_length) ) self.parent.assertEqual(result.end_logits.shape , (self.batch_size, self.seq_length) ) def A ( self ): """simple docstring""" __magic_name__ :Union[str, Any] = self.prepare_config_and_inputs() ( ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ) :Union[str, Any] = config_and_inputs __magic_name__ :Optional[Any] = {'''input_ids''': input_ids, '''token_type_ids''': token_type_ids, '''attention_mask''': input_mask} return config, inputs_dict @require_tf class lowerCamelCase_ ( lowerCamelCase , lowerCamelCase , unittest.TestCase ): a__ = ( ( TFRoFormerModel, TFRoFormerForCausalLM, TFRoFormerForMaskedLM, TFRoFormerForQuestionAnswering, TFRoFormerForSequenceClassification, TFRoFormerForTokenClassification, TFRoFormerForMultipleChoice, ) if is_tf_available() else () ) a__ = ( { '''feature-extraction''': TFRoFormerModel, '''fill-mask''': TFRoFormerForMaskedLM, '''question-answering''': TFRoFormerForQuestionAnswering, '''text-classification''': TFRoFormerForSequenceClassification, '''text-generation''': TFRoFormerForCausalLM, '''token-classification''': TFRoFormerForTokenClassification, '''zero-shot''': TFRoFormerForSequenceClassification, } if is_tf_available() else {} ) a__ = False a__ = False def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" if pipeline_test_casse_name == "TextGenerationPipelineTests": return True return False def A ( self ): """simple docstring""" __magic_name__ :List[str] = TFRoFormerModelTester(self ) __magic_name__ :List[str] = ConfigTester(self , config_class=__lowerCAmelCase , hidden_size=3_7 ) def A ( self ): """simple docstring""" self.config_tester.run_common_tests() def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_model(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Union[str, Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_masked_lm(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Tuple = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_lm_head(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_multiple_choice(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Tuple = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_question_answering(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_sequence_classification(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_token_classification(*__lowerCAmelCase ) @slow def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = TFRoFormerModel.from_pretrained('''junnyu/roformer_chinese_base''' ) self.assertIsNotNone(__lowerCAmelCase ) @require_tf class lowerCamelCase_ ( unittest.TestCase ): @slow def A ( self ): """simple docstring""" __magic_name__ :int = TFRoFormerForMaskedLM.from_pretrained('''junnyu/roformer_chinese_base''' ) __magic_name__ :Dict = tf.constant([[0, 1, 2, 3, 4, 5]] ) __magic_name__ :Optional[Any] = model(__lowerCAmelCase )[0] # TODO Replace vocab size __magic_name__ :int = 5_0_0_0_0 __magic_name__ :Tuple = [1, 6, vocab_size] self.assertEqual(output.shape , __lowerCAmelCase ) print(output[:, :3, :3] ) # TODO Replace values below with what was printed above. __magic_name__ :Any = tf.constant( [ [ [-0.12053341, -1.0264901, 0.29221946], [-1.5133783, 0.197433, 0.15190607], [-5.0135403, -3.900256, -0.84038764], ] ] ) tf.debugging.assert_near(output[:, :3, :3] , __lowerCAmelCase , atol=1E-4 ) @require_tf class lowerCamelCase_ ( unittest.TestCase ): a__ = 1e-4 def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = tf.constant([[4, 1_0]] ) __magic_name__ :Optional[int] = TFRoFormerSinusoidalPositionalEmbedding(num_positions=6 , embedding_dim=6 ) __magic_name__ :Optional[Any] = emba(input_ids.shape ) __magic_name__ :List[str] = tf.constant( [[0.0000, 0.0000, 0.0000, 1.0000, 1.0000, 1.0000], [0.8415, 0.0464, 0.0022, 0.5403, 0.9989, 1.0000]] ) tf.debugging.assert_near(__lowerCAmelCase , __lowerCAmelCase , atol=self.tolerance ) def A ( self ): """simple docstring""" __magic_name__ :Tuple = tf.constant( [ [0.0000, 0.0000, 0.0000, 0.0000, 0.0000], [0.8415, 0.8219, 0.8020, 0.7819, 0.7617], [0.9093, 0.9364, 0.9581, 0.9749, 0.9870], ] ) __magic_name__ :Union[str, Any] = TFRoFormerSinusoidalPositionalEmbedding(num_positions=5_1_2 , embedding_dim=5_1_2 ) emba([2, 1_6, 5_1_2] ) __magic_name__ :Optional[int] = emba.weight[:3, :5] tf.debugging.assert_near(__lowerCAmelCase , __lowerCAmelCase , atol=self.tolerance ) @require_tf class lowerCamelCase_ ( unittest.TestCase ): a__ = 1e-4 def A ( self ): """simple docstring""" # 2,12,16,64 __magic_name__ :int = tf.reshape(tf.range(2 * 1_2 * 1_6 * 6_4 , dtype=tf.floataa ) , shape=(2, 1_2, 1_6, 6_4) ) / 1_0_0 __magic_name__ :str = -tf.reshape(tf.range(2 * 1_2 * 1_6 * 6_4 , dtype=tf.floataa ) , shape=(2, 1_2, 1_6, 6_4) ) / 1_0_0 __magic_name__ :int = TFRoFormerSinusoidalPositionalEmbedding(num_positions=3_2 , embedding_dim=6_4 ) __magic_name__ :List[str] = embed_positions([2, 1_6, 7_6_8] )[None, None, :, :] __magic_name__ , __magic_name__ :Union[str, Any] = TFRoFormerSelfAttention.apply_rotary_position_embeddings( __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :Tuple = tf.constant( [ [0.0000, 0.0100, 0.0200, 0.0300, 0.0400, 0.0500, 0.0600, 0.0700], [-0.2012, 0.8897, 0.0263, 0.9401, 0.2074, 0.9463, 0.3481, 0.9343], [-1.7057, 0.6271, -1.2145, 1.3897, -0.6303, 1.7647, -0.1173, 1.8985], [-2.1731, -1.6397, -2.7358, 0.2854, -2.1840, 1.7183, -1.3018, 2.4871], [0.2717, -3.6173, -2.9206, -2.1988, -3.6638, 0.3858, -2.9155, 2.2980], [3.9859, -2.1580, -0.7984, -4.4904, -4.1181, -2.0252, -4.4782, 1.1253], ] ) __magic_name__ :List[str] = tf.constant( [ [0.0000, -0.0100, -0.0200, -0.0300, -0.0400, -0.0500, -0.0600, -0.0700], [0.2012, -0.8897, -0.0263, -0.9401, -0.2074, -0.9463, -0.3481, -0.9343], [1.7057, -0.6271, 1.2145, -1.3897, 0.6303, -1.7647, 0.1173, -1.8985], [2.1731, 1.6397, 2.7358, -0.2854, 2.1840, -1.7183, 1.3018, -2.4871], [-0.2717, 3.6173, 2.9206, 2.1988, 3.6638, -0.3858, 2.9155, -2.2980], [-3.9859, 2.1580, 0.7984, 4.4904, 4.1181, 2.0252, 4.4782, -1.1253], ] ) tf.debugging.assert_near(query_layer[0, 0, :6, :8] , __lowerCAmelCase , atol=self.tolerance ) tf.debugging.assert_near(key_layer[0, 0, :6, :8] , __lowerCAmelCase , atol=self.tolerance )
0
0
def __lowerCAmelCase ( _A ): """simple docstring""" if not isinstance(_A ,_A ): raise ValueError("""Input must be an integer""" ) if input_num <= 0: raise ValueError("""Input must be positive""" ) return sum( divisor for divisor in range(1 ,input_num // 2 + 1 ) if input_num % divisor == 0 ) if __name__ == "__main__": import doctest doctest.testmod()
398
from typing import TYPE_CHECKING from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tokenizers_available SCREAMING_SNAKE_CASE__ : Optional[int] = {"""tokenization_herbert""": ["""HerbertTokenizer"""]} try: if not is_tokenizers_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: SCREAMING_SNAKE_CASE__ : Optional[Any] = ["""HerbertTokenizerFast"""] if TYPE_CHECKING: from .tokenization_herbert import HerbertTokenizer try: if not is_tokenizers_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .tokenization_herbert_fast import HerbertTokenizerFast else: import sys SCREAMING_SNAKE_CASE__ : Union[str, Any] = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
0
0
from pathlib import PurePosixPath from typing import Optional import fsspec from fsspec import AbstractFileSystem from huggingface_hub.hf_api import DatasetInfo from ..utils.file_utils import get_authentication_headers_for_url from ..utils.hub import hf_hub_url class A_ ( a_ ): _SCREAMING_SNAKE_CASE = """""" _SCREAMING_SNAKE_CASE = """hf-legacy""" # "hf://"" is reserved for hffs def __init__( self : List[str] , __SCREAMING_SNAKE_CASE : List[Any] = None , __SCREAMING_SNAKE_CASE : Union[str, Any] = None , **__SCREAMING_SNAKE_CASE : Optional[int] , ): super().__init__(self , **__lowerCAmelCase ) __a = repo_info __a = token __a = None def _UpperCAmelCase ( self : Any ): if self.dir_cache is None: __a = {} for hf_file in self.repo_info.siblings: # TODO(QL): add sizes __a = { '''name''': hf_file.rfilename, '''size''': None, '''type''': '''file''', } self.dir_cache.update( { str(__lowerCAmelCase ): {"name": str(__lowerCAmelCase ), "size": None, "type": "directory"} for d in list(PurePosixPath(hf_file.rfilename ).parents )[:-1] } ) def _UpperCAmelCase ( self : Union[str, Any] , __SCREAMING_SNAKE_CASE : Any , __SCREAMING_SNAKE_CASE : Optional[Any] = "rb" , **__SCREAMING_SNAKE_CASE : int , ): if not isinstance(self.repo_info , __lowerCAmelCase ): raise NotImplementedError(f"""Open is only implemented for dataset repositories, but got {self.repo_info}""" ) __a = hf_hub_url(self.repo_info.id , __lowerCAmelCase , revision=self.repo_info.sha ) return fsspec.open( __lowerCAmelCase , mode=__lowerCAmelCase , headers=get_authentication_headers_for_url(__lowerCAmelCase , use_auth_token=self.token ) , client_kwargs={"trust_env": True} , ).open() def _UpperCAmelCase ( self : Optional[int] , __SCREAMING_SNAKE_CASE : List[Any] , **__SCREAMING_SNAKE_CASE : Optional[Any] ): self._get_dirs() __a = self._strip_protocol(__lowerCAmelCase ) if path in self.dir_cache: return self.dir_cache[path] else: raise FileNotFoundError(__lowerCAmelCase ) def _UpperCAmelCase ( self : Tuple , __SCREAMING_SNAKE_CASE : Optional[int] , __SCREAMING_SNAKE_CASE : Optional[Any]=False , **__SCREAMING_SNAKE_CASE : Tuple ): self._get_dirs() __a = PurePosixPath(path.strip("/" ) ) __a = {} for p, f in self.dir_cache.items(): __a = PurePosixPath(p.strip("/" ) ) __a = p.parent if root == path: __a = f __a = list(paths.values() ) if detail: return out else: return sorted(f["name"] for f in out )
197
import argparse import gdown import numpy as np import torch from huggingface_hub import hf_hub_download from transformers import ( CLIPTokenizer, CLIPTokenizerFast, VideoMAEImageProcessor, XCLIPConfig, XCLIPModel, XCLIPProcessor, XCLIPTextConfig, XCLIPVisionConfig, ) def __lowercase ( snake_case, snake_case ): """simple docstring""" __magic_name__ :str = XCLIPTextConfig() # derive patch size from model name __magic_name__ :Union[str, Any] = model_name.find('''patch''' ) __magic_name__ :Optional[Any] = int(model_name[start_idx + len('''patch''' ) : start_idx + len('''patch''' ) + 2] ) __magic_name__ :int = XCLIPVisionConfig(patch_size=snake_case, num_frames=snake_case ) if "large" in model_name: __magic_name__ :Dict = 7_6_8 __magic_name__ :int = 3_0_7_2 __magic_name__ :List[Any] = 1_2 __magic_name__ :str = 1_0_2_4 __magic_name__ :Any = 4_0_9_6 __magic_name__ :Optional[Any] = 1_6 __magic_name__ :Union[str, Any] = 2_4 __magic_name__ :Union[str, Any] = 7_6_8 __magic_name__ :Tuple = 3_0_7_2 if model_name == "xclip-large-patch14-16-frames": __magic_name__ :List[str] = 3_3_6 __magic_name__ :Any = XCLIPConfig.from_text_vision_configs(snake_case, snake_case ) if "large" in model_name: __magic_name__ :str = 7_6_8 return config def __lowercase ( snake_case ): """simple docstring""" if name == "token_embedding.weight": __magic_name__ :Any = name.replace('''token_embedding.weight''', '''text_model.embeddings.token_embedding.weight''' ) if name == "positional_embedding": __magic_name__ :Any = name.replace('''positional_embedding''', '''text_model.embeddings.position_embedding.weight''' ) if "ln_1" in name: __magic_name__ :List[str] = name.replace('''ln_1''', '''layer_norm1''' ) if "ln_2" in name: __magic_name__ :str = name.replace('''ln_2''', '''layer_norm2''' ) if "c_fc" in name: __magic_name__ :List[Any] = name.replace('''c_fc''', '''fc1''' ) if "c_proj" in name: __magic_name__ :Any = name.replace('''c_proj''', '''fc2''' ) if name.startswith('''transformer.resblocks''' ): __magic_name__ :Any = name.replace('''transformer.resblocks''', '''text_model.encoder.layers''' ) if "attn.out_proj" in name and "message" not in name: __magic_name__ :Union[str, Any] = name.replace('''attn.out_proj''', '''self_attn.out_proj''' ) if "ln_final" in name: __magic_name__ :Tuple = name.replace('''ln_final''', '''text_model.final_layer_norm''' ) # visual encoder if name == "visual.class_embedding": __magic_name__ :List[Any] = name.replace('''visual.class_embedding''', '''vision_model.embeddings.class_embedding''' ) if name == "visual.positional_embedding": __magic_name__ :Any = name.replace('''visual.positional_embedding''', '''vision_model.embeddings.position_embedding.weight''' ) if name.startswith('''visual.transformer.resblocks''' ): __magic_name__ :Union[str, Any] = name.replace('''visual.transformer.resblocks''', '''vision_model.encoder.layers''' ) if "visual.conv1" in name: __magic_name__ :Tuple = name.replace('''visual.conv1''', '''vision_model.embeddings.patch_embedding''' ) if "visual.ln_pre" in name: __magic_name__ :Tuple = name.replace('''visual.ln_pre''', '''vision_model.pre_layernorm''' ) if "visual.ln_post" in name: __magic_name__ :Optional[Any] = name.replace('''visual.ln_post''', '''vision_model.post_layernorm''' ) if "visual.proj" in name: __magic_name__ :Tuple = name.replace('''visual.proj''', '''visual_projection.weight''' ) if "text_projection" in name: __magic_name__ :int = name.replace('''text_projection''', '''text_projection.weight''' ) # things on top if "prompts_visual_proj" in name: __magic_name__ :int = name.replace('''prompts_visual_proj''', '''prompts_visual_projection''' ) if "prompts_visual_ln" in name: __magic_name__ :Dict = name.replace('''prompts_visual_ln''', '''prompts_visual_layernorm''' ) # mit if name == "mit.positional_embedding": __magic_name__ :List[Any] = name.replace('''positional''', '''position''' ) if name.startswith('''mit.resblocks''' ): __magic_name__ :Union[str, Any] = name.replace('''mit.resblocks''', '''mit.encoder.layers''' ) # prompts generator if name.startswith('''prompts_generator.norm''' ): __magic_name__ :str = name.replace('''prompts_generator.norm''', '''prompts_generator.layernorm''' ) return name def __lowercase ( snake_case, snake_case ): """simple docstring""" for key in orig_state_dict.copy().keys(): __magic_name__ :Any = orig_state_dict.pop(snake_case ) if "attn.in_proj" in key: __magic_name__ :str = key.split('''.''' ) if key.startswith('''visual''' ): __magic_name__ :List[Any] = key_split[3] __magic_name__ :List[Any] = config.vision_config.hidden_size if "message_attn" in key: if "weight" in key: __magic_name__ :List[Any] = val[ :dim, : ] __magic_name__ :List[str] = val[ dim : dim * 2, : ] __magic_name__ :List[str] = val[ -dim:, : ] else: __magic_name__ :str = val[ :dim ] __magic_name__ :Optional[int] = val[ dim : dim * 2 ] __magic_name__ :Any = val[ -dim: ] else: if "weight" in key: __magic_name__ :int = val[ :dim, : ] __magic_name__ :Union[str, Any] = val[ dim : dim * 2, : ] __magic_name__ :List[Any] = val[ -dim:, : ] else: __magic_name__ :Union[str, Any] = val[:dim] __magic_name__ :str = val[ dim : dim * 2 ] __magic_name__ :Dict = val[-dim:] elif key.startswith('''mit''' ): __magic_name__ :List[Any] = key_split[2] __magic_name__ :Any = config.vision_config.mit_hidden_size if "weight" in key: __magic_name__ :Union[str, Any] = val[:dim, :] __magic_name__ :Optional[int] = val[dim : dim * 2, :] __magic_name__ :int = val[-dim:, :] else: __magic_name__ :Tuple = val[:dim] __magic_name__ :Optional[int] = val[dim : dim * 2] __magic_name__ :Optional[int] = val[-dim:] else: __magic_name__ :Any = key_split[2] __magic_name__ :List[Any] = config.text_config.hidden_size if "weight" in key: __magic_name__ :Union[str, Any] = val[:dim, :] __magic_name__ :Tuple = val[ dim : dim * 2, : ] __magic_name__ :str = val[-dim:, :] else: __magic_name__ :int = val[:dim] __magic_name__ :Any = val[ dim : dim * 2 ] __magic_name__ :str = val[-dim:] else: __magic_name__ :Tuple = rename_key(snake_case ) if new_key_name in ["visual_projection.weight", "text_projection.weight"]: __magic_name__ :List[Any] = val.T __magic_name__ :Optional[Any] = val return orig_state_dict def __lowercase ( snake_case ): """simple docstring""" if num_frames == 8: __magic_name__ :Any = '''eating_spaghetti_8_frames.npy''' elif num_frames == 1_6: __magic_name__ :List[Any] = '''eating_spaghetti.npy''' elif num_frames == 3_2: __magic_name__ :Tuple = '''eating_spaghetti_32_frames.npy''' __magic_name__ :str = hf_hub_download( repo_id='''hf-internal-testing/spaghetti-video''', filename=snake_case, repo_type='''dataset''', ) __magic_name__ :List[Any] = np.load(snake_case ) return list(snake_case ) def __lowercase ( snake_case, snake_case=None, snake_case=False ): """simple docstring""" __magic_name__ :Union[str, Any] = { # fully supervised kinetics-400 checkpoints '''xclip-base-patch32''': '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k400_32_8.pth''', '''xclip-base-patch32-16-frames''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k400_32_16.pth''' ), '''xclip-base-patch16''': '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k400_16_8.pth''', '''xclip-base-patch16-16-frames''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k400_16_16.pth''' ), '''xclip-large-patch14''': '''https://drive.google.com/u/0/uc?id=1NUOImq0o5DlQTST17iIP3vG7DgmHQuCx&amp;export=download&amp;confirm=t&amp;uuid=b26caedc-88e2-473e-830a-9d158b653cdb''', '''xclip-large-patch14-16-frames''': '''https://drive.google.com/u/0/uc?id=1FOYgnJc097OJ4lGwtRCCydQyVPJEOH7d&amp;export=download&amp;confirm=t&amp;uuid=538fa810-e671-4050-b385-9a623f89804f''', # fully supervised kinetics-600 checkpoints '''xclip-base-patch16-kinetics-600''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k600_16_8.pth''' ), '''xclip-base-patch16-kinetics-600-16-frames''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k600_16_16.pth''' ), '''xclip-large-patch14-kinetics-600''': '''https://drive.google.com/u/0/uc?id=1FV8C1INuM91sLAN4ImjzePLIlpMSihwV&amp;export=download&amp;confirm=t&amp;uuid=141d4977-4a65-44ae-864f-4b0c19f838be''', # few shot '''xclip-base-patch16-hmdb-2-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_hmdb_2.pth''' ), '''xclip-base-patch16-hmdb-4-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_hmdb_4.pth''' ), '''xclip-base-patch16-hmdb-8-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_hmdb_8.pth''' ), '''xclip-base-patch16-hmdb-16-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_hmdb_16.pth''' ), '''xclip-base-patch16-ucf-2-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_ucf_2.pth''' ), '''xclip-base-patch16-ucf-4-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_ucf_4.pth''' ), '''xclip-base-patch16-ucf-8-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_ucf_8.pth''' ), '''xclip-base-patch16-ucf-16-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_ucf_16.pth''' ), # zero shot '''xclip-base-patch16-zero-shot''': '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/zero.pth''', } __magic_name__ :Optional[int] = model_to_url[model_name] __magic_name__ :List[str] = 8 if "16-frames" in model_name: __magic_name__ :List[Any] = 1_6 elif "shot" in model_name: __magic_name__ :Dict = 3_2 __magic_name__ :str = get_xclip_config(snake_case, snake_case ) __magic_name__ :List[Any] = XCLIPModel(snake_case ) model.eval() if "drive" in checkpoint_url: __magic_name__ :Any = '''pytorch_model.bin''' gdown.cached_download(snake_case, snake_case, quiet=snake_case ) __magic_name__ :Optional[Any] = torch.load(snake_case, map_location='''cpu''' )['''model'''] else: __magic_name__ :Optional[int] = torch.hub.load_state_dict_from_url(snake_case )['''model'''] __magic_name__ :List[str] = convert_state_dict(snake_case, snake_case ) __magic_name__ :List[Any] = XCLIPModel(snake_case ) __magic_name__ , __magic_name__ :Optional[Any] = model.load_state_dict(snake_case, strict=snake_case ) assert missing_keys == ["text_model.embeddings.position_ids", "vision_model.embeddings.position_ids"] model.eval() __magic_name__ :str = 3_3_6 if model_name == '''xclip-large-patch14-16-frames''' else 2_2_4 __magic_name__ :Optional[int] = VideoMAEImageProcessor(size=snake_case ) __magic_name__ :Optional[int] = CLIPTokenizer.from_pretrained('''openai/clip-vit-base-patch32''' ) __magic_name__ :Tuple = CLIPTokenizerFast.from_pretrained('''openai/clip-vit-base-patch32''' ) __magic_name__ :Optional[int] = XCLIPProcessor(image_processor=snake_case, tokenizer=snake_case ) __magic_name__ :List[Any] = prepare_video(snake_case ) __magic_name__ :str = processor( text=['''playing sports''', '''eating spaghetti''', '''go shopping'''], videos=snake_case, return_tensors='''pt''', padding=snake_case ) print('''Shape of pixel values:''', inputs.pixel_values.shape ) with torch.no_grad(): __magic_name__ :Tuple = model(**snake_case ) # Verify outputs __magic_name__ :Any = outputs.logits_per_video __magic_name__ :str = logits_per_video.softmax(dim=1 ) print('''Probs:''', snake_case ) # kinetics-400 if model_name == "xclip-base-patch32": __magic_name__ :Dict = torch.tensor([[0.0019, 0.9951, 0.0030]] ) elif model_name == "xclip-base-patch32-16-frames": __magic_name__ :str = torch.tensor([[7.0_9_9_9E-0_4, 9.9_8_8_3E-0_1, 4.5_5_8_0E-0_4]] ) elif model_name == "xclip-base-patch16": __magic_name__ :Tuple = torch.tensor([[0.0083, 0.9681, 0.0236]] ) elif model_name == "xclip-base-patch16-16-frames": __magic_name__ :Tuple = torch.tensor([[7.6_9_3_7E-0_4, 9.9_7_2_8E-0_1, 1.9_4_7_3E-0_3]] ) elif model_name == "xclip-large-patch14": __magic_name__ :str = torch.tensor([[0.0062, 0.9864, 0.0075]] ) elif model_name == "xclip-large-patch14-16-frames": __magic_name__ :Optional[int] = torch.tensor([[3.3_8_7_7E-0_4, 9.9_9_3_7E-0_1, 2.8_8_8_8E-0_4]] ) # kinetics-600 elif model_name == "xclip-base-patch16-kinetics-600": __magic_name__ :Optional[int] = torch.tensor([[0.0555, 0.8914, 0.0531]] ) elif model_name == "xclip-base-patch16-kinetics-600-16-frames": __magic_name__ :List[str] = torch.tensor([[3.8_5_5_4E-0_4, 9.9_9_2_9E-0_1, 3.2_7_5_4E-0_4]] ) elif model_name == "xclip-large-patch14-kinetics-600": __magic_name__ :List[str] = torch.tensor([[0.0036, 0.9920, 0.0045]] ) # few shot elif model_name == "xclip-base-patch16-hmdb-2-shot": __magic_name__ :Tuple = torch.tensor([[7.1_8_9_0E-0_6, 9.9_9_9_4E-0_1, 5.6_5_5_9E-0_5]] ) elif model_name == "xclip-base-patch16-hmdb-4-shot": __magic_name__ :List[str] = torch.tensor([[1.0_3_2_0E-0_5, 9.9_9_9_3E-0_1, 6.2_4_3_5E-0_5]] ) elif model_name == "xclip-base-patch16-hmdb-8-shot": __magic_name__ :Optional[int] = torch.tensor([[4.1_3_7_7E-0_6, 9.9_9_9_0E-0_1, 9.8_3_8_6E-0_5]] ) elif model_name == "xclip-base-patch16-hmdb-16-shot": __magic_name__ :Optional[int] = torch.tensor([[4.1_3_4_7E-0_5, 9.9_9_6_2E-0_1, 3.3_4_1_1E-0_4]] ) elif model_name == "xclip-base-patch16-ucf-2-shot": __magic_name__ :Union[str, Any] = torch.tensor([[8.5_8_5_7E-0_5, 9.9_9_2_8E-0_1, 6.3_2_9_1E-0_4]] ) elif model_name == "xclip-base-patch16-ucf-4-shot": __magic_name__ :Union[str, Any] = torch.tensor([[8.5_8_5_7E-0_5, 9.9_9_2_8E-0_1, 6.3_2_9_1E-0_4]] ) elif model_name == "xclip-base-patch16-ucf-8-shot": __magic_name__ :Optional[int] = torch.tensor([[0.0027, 0.9904, 0.0070]] ) elif model_name == "xclip-base-patch16-ucf-16-shot": __magic_name__ :Any = torch.tensor([[9.8_2_1_9E-0_4, 9.9_5_9_3E-0_1, 3.0_8_6_3E-0_3]] ) # zero shot elif model_name == "xclip-base-patch16-zero-shot": __magic_name__ :Optional[int] = torch.tensor([[3.5_0_8_2E-0_4, 9.9_7_8_5E-0_1, 1.7_9_6_6E-0_3]] ) else: raise ValueError(f'''Model name {model_name} not supported''' ) assert torch.allclose(snake_case, snake_case, atol=1E-3 ) print('''Looks ok!''' ) if pytorch_dump_folder_path is not None: print(f'''Saving model {model_name} to {pytorch_dump_folder_path}''' ) model.save_pretrained(snake_case ) if push_to_hub: print('''Pushing model, processor and slow tokenizer files to the hub...''' ) model.push_to_hub(snake_case, organization='''nielsr''' ) processor.push_to_hub(snake_case, organization='''nielsr''' ) slow_tokenizer.push_to_hub(snake_case, organization='''nielsr''' ) if __name__ == "__main__": SCREAMING_SNAKE_CASE__ : Optional[Any] = argparse.ArgumentParser() # Required parameters parser.add_argument( """--model_name""", default="""xclip-base-patch32""", type=str, help="""Name of the model.""", ) parser.add_argument( """--pytorch_dump_folder_path""", default=None, type=str, help="""Path to the output PyTorch model directory.""" ) parser.add_argument( """--push_to_hub""", action="""store_true""", help="""Whether or not to push the converted model to the 🤗 hub.""" ) SCREAMING_SNAKE_CASE__ : List[Any] = parser.parse_args() convert_xclip_checkpoint(args.model_name, args.pytorch_dump_folder_path, args.push_to_hub)
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from scipy.stats import pearsonr import datasets _lowerCamelCase =""" Pearson correlation coefficient and p-value for testing non-correlation. The Pearson correlation coefficient measures the linear relationship between two datasets. The calculation of the p-value relies on the assumption that each dataset is normally distributed. Like other correlation coefficients, this one varies between -1 and +1 with 0 implying no correlation. Correlations of -1 or +1 imply an exact linear relationship. Positive correlations imply that as x increases, so does y. Negative correlations imply that as x increases, y decreases. The p-value roughly indicates the probability of an uncorrelated system producing datasets that have a Pearson correlation at least as extreme as the one computed from these datasets. """ _lowerCamelCase =""" Args: predictions (`list` of `int`): Predicted class labels, as returned by a model. references (`list` of `int`): Ground truth labels. return_pvalue (`boolean`): If `True`, returns the p-value, along with the correlation coefficient. If `False`, returns only the correlation coefficient. Defaults to `False`. Returns: pearsonr (`float`): Pearson correlation coefficient. Minimum possible value is -1. Maximum possible value is 1. Values of 1 and -1 indicate exact linear positive and negative relationships, respectively. A value of 0 implies no correlation. p-value (`float`): P-value, which roughly indicates the probability of an The p-value roughly indicates the probability of an uncorrelated system producing datasets that have a Pearson correlation at least as extreme as the one computed from these datasets. Minimum possible value is 0. Maximum possible value is 1. Higher values indicate higher probabilities. Examples: Example 1-A simple example using only predictions and references. >>> pearsonr_metric = datasets.load_metric(\"pearsonr\") >>> results = pearsonr_metric.compute(predictions=[10, 9, 2.5, 6, 4], references=[1, 2, 3, 4, 5]) >>> print(round(results['pearsonr'], 2)) -0.74 Example 2-The same as Example 1, but that also returns the `p-value`. >>> pearsonr_metric = datasets.load_metric(\"pearsonr\") >>> results = pearsonr_metric.compute(predictions=[10, 9, 2.5, 6, 4], references=[1, 2, 3, 4, 5], return_pvalue=True) >>> print(sorted(list(results.keys()))) ['p-value', 'pearsonr'] >>> print(round(results['pearsonr'], 2)) -0.74 >>> print(round(results['p-value'], 2)) 0.15 """ _lowerCamelCase =""" @article{2020SciPy-NMeth, author = {Virtanen, Pauli and Gommers, Ralf and Oliphant, Travis E. and Haberland, Matt and Reddy, Tyler and Cournapeau, David and Burovski, Evgeni and Peterson, Pearu and Weckesser, Warren and Bright, Jonathan and {van der Walt}, St{\'e}fan J. and Brett, Matthew and Wilson, Joshua and Millman, K. Jarrod and Mayorov, Nikolay and Nelson, Andrew R. J. and Jones, Eric and Kern, Robert and Larson, Eric and Carey, C J and Polat, Ilhan and Feng, Yu and Moore, Eric W. and {VanderPlas}, Jake and Laxalde, Denis and Perktold, Josef and Cimrman, Robert and Henriksen, Ian and Quintero, E. A. and Harris, Charles R. and Archibald, Anne M. and Ribeiro, Antonio H. and Pedregosa, Fabian and {van Mulbregt}, Paul and {SciPy 1.0 Contributors}}, title = {{{SciPy} 1.0: Fundamental Algorithms for Scientific Computing in Python}}, journal = {Nature Methods}, year = {2020}, volume = {17}, pages = {261--272}, adsurl = {https://rdcu.be/b08Wh}, doi = {10.1038/s41592-019-0686-2}, } """ @datasets.utils.file_utils.add_start_docstrings(_DESCRIPTION , _KWARGS_DESCRIPTION) class A__ ( datasets.Metric): def UpperCamelCase__ ( self ): return datasets.MetricInfo( description=_DESCRIPTION , citation=_CITATION , inputs_description=_KWARGS_DESCRIPTION , features=datasets.Features( { """predictions""": datasets.Value("""float""" ), """references""": datasets.Value("""float""" ), } ) , reference_urls=["""https://docs.scipy.org/doc/scipy/reference/generated/scipy.stats.pearsonr.html"""] , ) def UpperCamelCase__ ( self , __magic_name__ , __magic_name__ , __magic_name__=False ): if return_pvalue: lowerCamelCase : str = pearsonr(__lowerCAmelCase , __lowerCAmelCase ) return {"pearsonr": results[0], "p-value": results[1]} else: return {"pearsonr": float(pearsonr(__lowerCAmelCase , __lowerCAmelCase )[0] )}
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import numpy as np import torch from torch.utils.data import Dataset from utils import logger class lowerCamelCase_ ( lowerCamelCase ): def __init__( self , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[int] = params __magic_name__ :Any = np.array(__lowerCAmelCase ) __magic_name__ :Optional[Any] = np.array([len(__lowerCAmelCase ) for t in data] ) self.check() self.remove_long_sequences() self.remove_empty_sequences() self.remove_unknown_sequences() self.check() self.print_statistics() def __getitem__( self , __lowerCAmelCase ): """simple docstring""" return (self.token_ids[index], self.lengths[index]) def __len__( self ): """simple docstring""" return len(self.lengths ) def A ( self ): """simple docstring""" assert len(self.token_ids ) == len(self.lengths ) assert all(self.lengths[i] == len(self.token_ids[i] ) for i in range(len(self.lengths ) ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = self.params.max_model_input_size __magic_name__ :int = self.lengths > max_len logger.info(F'''Splitting {sum(__lowerCAmelCase )} too long sequences.''' ) def divide_chunks(__lowerCAmelCase , __lowerCAmelCase ): return [l[i : i + n] for i in range(0 , len(__lowerCAmelCase ) , __lowerCAmelCase )] __magic_name__ :Optional[int] = [] __magic_name__ :List[Any] = [] if self.params.mlm: __magic_name__ , __magic_name__ :Optional[Any] = self.params.special_tok_ids['''cls_token'''], self.params.special_tok_ids['''sep_token'''] else: __magic_name__ , __magic_name__ :Tuple = self.params.special_tok_ids['''bos_token'''], self.params.special_tok_ids['''eos_token'''] for seq_, len_ in zip(self.token_ids , self.lengths ): assert (seq_[0] == cls_id) and (seq_[-1] == sep_id), seq_ if len_ <= max_len: new_tok_ids.append(seq_ ) new_lengths.append(len_ ) else: __magic_name__ :int = [] for sub_s in divide_chunks(seq_ , max_len - 2 ): if sub_s[0] != cls_id: __magic_name__ :List[Any] = np.insert(__lowerCAmelCase , 0 , __lowerCAmelCase ) if sub_s[-1] != sep_id: __magic_name__ :Union[str, Any] = np.insert(__lowerCAmelCase , len(__lowerCAmelCase ) , __lowerCAmelCase ) assert len(__lowerCAmelCase ) <= max_len assert (sub_s[0] == cls_id) and (sub_s[-1] == sep_id), sub_s sub_seqs.append(__lowerCAmelCase ) new_tok_ids.extend(__lowerCAmelCase ) new_lengths.extend([len(__lowerCAmelCase ) for l in sub_seqs] ) __magic_name__ :Tuple = np.array(__lowerCAmelCase ) __magic_name__ :Optional[int] = np.array(__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = len(self ) __magic_name__ :int = self.lengths > 1_1 __magic_name__ :List[str] = self.token_ids[indices] __magic_name__ :Union[str, Any] = self.lengths[indices] __magic_name__ :List[str] = len(self ) logger.info(F'''Remove {init_size - new_size} too short (<=11 tokens) sequences.''' ) def A ( self ): """simple docstring""" if "unk_token" not in self.params.special_tok_ids: return else: __magic_name__ :Tuple = self.params.special_tok_ids['''unk_token'''] __magic_name__ :Dict = len(self ) __magic_name__ :Tuple = np.array([np.count_nonzero(a == unk_token_id ) for a in self.token_ids] ) __magic_name__ :int = (unk_occs / self.lengths) < 0.5 __magic_name__ :str = self.token_ids[indices] __magic_name__ :str = self.lengths[indices] __magic_name__ :Any = len(self ) logger.info(F'''Remove {init_size - new_size} sequences with a high level of unknown tokens (50%).''' ) def A ( self ): """simple docstring""" if not self.params.is_master: return logger.info(F'''{len(self )} sequences''' ) # data_len = sum(self.lengths) # nb_unique_tokens = len(Counter(list(chain(*self.token_ids)))) # logger.info(f'{data_len} tokens ({nb_unique_tokens} unique)') # unk_idx = self.params.special_tok_ids['unk_token'] # nb_unknown = sum([(t==unk_idx).sum() for t in self.token_ids]) # logger.info(f'{nb_unknown} unknown tokens (covering {100*nb_unknown/data_len:.2f}% of the data)') def A ( self , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[Any] = [t[0] for t in batch] __magic_name__ :List[Any] = [t[1] for t in batch] assert len(__lowerCAmelCase ) == len(__lowerCAmelCase ) # Max for paddings __magic_name__ :Tuple = max(__lowerCAmelCase ) # Pad token ids if self.params.mlm: __magic_name__ :Any = self.params.special_tok_ids['''pad_token'''] else: __magic_name__ :str = self.params.special_tok_ids['''unk_token'''] __magic_name__ :Any = [list(t.astype(__lowerCAmelCase ) ) + [pad_idx] * (max_seq_len_ - len(__lowerCAmelCase )) for t in token_ids] assert len(tk_ ) == len(__lowerCAmelCase ) assert all(len(__lowerCAmelCase ) == max_seq_len_ for t in tk_ ) __magic_name__ :Optional[int] = torch.tensor(tk_ ) # (bs, max_seq_len_) __magic_name__ :Optional[int] = torch.tensor(__lowerCAmelCase ) # (bs) return tk_t, lg_t
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'''simple docstring''' import torch from torch import nn class _snake_case ( nn.Module ): def __init__( self , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE=1 , _SCREAMING_SNAKE_CASE=False ): '''simple docstring''' super().__init__() lowerCAmelCase = n_token lowerCAmelCase = d_embed lowerCAmelCase = d_proj lowerCAmelCase = cutoffs + [n_token] lowerCAmelCase = [0] + self.cutoffs lowerCAmelCase = div_val lowerCAmelCase = self.cutoffs[0] lowerCAmelCase = len(self.cutoffs ) - 1 lowerCAmelCase = self.shortlist_size + self.n_clusters if self.n_clusters > 0: lowerCAmelCase = nn.Parameter(torch.zeros(self.n_clusters , self.d_embed ) ) lowerCAmelCase = nn.Parameter(torch.zeros(self.n_clusters ) ) lowerCAmelCase = nn.ModuleList() lowerCAmelCase = nn.ParameterList() if div_val == 1: for i in range(len(self.cutoffs ) ): if d_proj != d_embed: self.out_projs.append(nn.Parameter(torch.FloatTensor(__lowerCAmelCase , __lowerCAmelCase ) ) ) else: self.out_projs.append(__lowerCAmelCase ) self.out_layers.append(nn.Linear(__lowerCAmelCase , __lowerCAmelCase ) ) else: for i in range(len(self.cutoffs ) ): lowerCAmelCase = self.cutoff_ends[i], self.cutoff_ends[i + 1] lowerCAmelCase = d_embed // (div_val**i) self.out_projs.append(nn.Parameter(torch.FloatTensor(__lowerCAmelCase , __lowerCAmelCase ) ) ) self.out_layers.append(nn.Linear(__lowerCAmelCase , r_idx - l_idx ) ) lowerCAmelCase = keep_order def _SCREAMING_SNAKE_CASE ( self , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE ): '''simple docstring''' if proj is None: lowerCAmelCase = nn.functional.linear(__lowerCAmelCase , __lowerCAmelCase , bias=__lowerCAmelCase ) else: # if CUDA_MAJOR <= 9 and CUDA_MINOR <= 1: lowerCAmelCase = nn.functional.linear(__lowerCAmelCase , proj.t().contiguous() ) lowerCAmelCase = nn.functional.linear(__lowerCAmelCase , __lowerCAmelCase , bias=__lowerCAmelCase ) # else: # logit = torch.einsum('bd,de,ev->bv', (hidden, proj, weight.t())) # if bias is not None: # logit = logit + bias return logit def _SCREAMING_SNAKE_CASE ( self , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE=None , _SCREAMING_SNAKE_CASE=False ): '''simple docstring''' if labels is not None: # Shift so that tokens < n predict n lowerCAmelCase = hidden[..., :-1, :].contiguous() lowerCAmelCase = labels[..., 1:].contiguous() lowerCAmelCase = hidden.view(-1 , hidden.size(-1 ) ) lowerCAmelCase = labels.view(-1 ) if hidden.size(0 ) != labels.size(0 ): raise RuntimeError('Input and labels should have the same size in the batch dimension.' ) else: lowerCAmelCase = hidden.view(-1 , hidden.size(-1 ) ) if self.n_clusters == 0: lowerCAmelCase = self._compute_logit(__lowerCAmelCase , self.out_layers[0].weight , self.out_layers[0].bias , self.out_projs[0] ) if labels is not None: lowerCAmelCase = labels != -1_00 lowerCAmelCase = torch.zeros_like(__lowerCAmelCase , dtype=hidden.dtype , device=hidden.device ) lowerCAmelCase = ( -nn.functional.log_softmax(__lowerCAmelCase , dim=-1 )[mask].gather(1 , labels[mask].unsqueeze(1 ) ).squeeze(1 ) ) else: lowerCAmelCase = nn.functional.log_softmax(__lowerCAmelCase , dim=-1 ) else: # construct weights and biases lowerCAmelCase = [], [] for i in range(len(self.cutoffs ) ): if self.div_val == 1: lowerCAmelCase = self.cutoff_ends[i], self.cutoff_ends[i + 1] lowerCAmelCase = self.out_layers[0].weight[l_idx:r_idx] lowerCAmelCase = self.out_layers[0].bias[l_idx:r_idx] else: lowerCAmelCase = self.out_layers[i].weight lowerCAmelCase = self.out_layers[i].bias if i == 0: lowerCAmelCase = torch.cat([weight_i, self.cluster_weight] , dim=0 ) lowerCAmelCase = torch.cat([bias_i, self.cluster_bias] , dim=0 ) weights.append(__lowerCAmelCase ) biases.append(__lowerCAmelCase ) lowerCAmelCase = weights[0], biases[0], self.out_projs[0] lowerCAmelCase = self._compute_logit(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) lowerCAmelCase = nn.functional.log_softmax(__lowerCAmelCase , dim=1 ) if labels is None: lowerCAmelCase = hidden.new_empty((head_logit.size(0 ), self.n_token) ) else: lowerCAmelCase = torch.zeros_like(__lowerCAmelCase , dtype=hidden.dtype , device=hidden.device ) lowerCAmelCase = 0 lowerCAmelCase = [0] + self.cutoffs for i in range(len(__lowerCAmelCase ) - 1 ): lowerCAmelCase = cutoff_values[i], cutoff_values[i + 1] if labels is not None: lowerCAmelCase = (labels >= l_idx) & (labels < r_idx) lowerCAmelCase = mask_i.nonzero().squeeze() if indices_i.numel() == 0: continue lowerCAmelCase = labels.index_select(0 , __lowerCAmelCase ) - l_idx lowerCAmelCase = head_logprob.index_select(0 , __lowerCAmelCase ) lowerCAmelCase = hidden.index_select(0 , __lowerCAmelCase ) else: lowerCAmelCase = hidden if i == 0: if labels is not None: lowerCAmelCase = head_logprob_i.gather(1 , target_i[:, None] ).squeeze(1 ) else: lowerCAmelCase = head_logprob[:, : self.cutoffs[0]] else: lowerCAmelCase = weights[i], biases[i], self.out_projs[i] lowerCAmelCase = self._compute_logit(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) lowerCAmelCase = nn.functional.log_softmax(__lowerCAmelCase , dim=1 ) lowerCAmelCase = self.cutoffs[0] + i - 1 # No probability for the head cluster if labels is not None: lowerCAmelCase = head_logprob_i[:, cluster_prob_idx] + tail_logprob_i.gather( 1 , target_i[:, None] ).squeeze(1 ) else: lowerCAmelCase = head_logprob[:, cluster_prob_idx, None] + tail_logprob_i lowerCAmelCase = logprob_i if labels is not None: if (hasattr(self , 'keep_order' ) and self.keep_order) or keep_order: out.index_copy_(0 , __lowerCAmelCase , -logprob_i ) else: out[offset : offset + logprob_i.size(0 )].copy_(-logprob_i ) offset += logprob_i.size(0 ) return out def _SCREAMING_SNAKE_CASE ( self , _SCREAMING_SNAKE_CASE ): '''simple docstring''' if self.n_clusters == 0: lowerCAmelCase = self._compute_logit(__lowerCAmelCase , self.out_layers[0].weight , self.out_layers[0].bias , self.out_projs[0] ) return nn.functional.log_softmax(__lowerCAmelCase , dim=-1 ) else: # construct weights and biases lowerCAmelCase = [], [] for i in range(len(self.cutoffs ) ): if self.div_val == 1: lowerCAmelCase = self.cutoff_ends[i], self.cutoff_ends[i + 1] lowerCAmelCase = self.out_layers[0].weight[l_idx:r_idx] lowerCAmelCase = self.out_layers[0].bias[l_idx:r_idx] else: lowerCAmelCase = self.out_layers[i].weight lowerCAmelCase = self.out_layers[i].bias if i == 0: lowerCAmelCase = torch.cat([weight_i, self.cluster_weight] , dim=0 ) lowerCAmelCase = torch.cat([bias_i, self.cluster_bias] , dim=0 ) weights.append(__lowerCAmelCase ) biases.append(__lowerCAmelCase ) lowerCAmelCase = weights[0], biases[0], self.out_projs[0] lowerCAmelCase = self._compute_logit(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) lowerCAmelCase = hidden.new_empty((head_logit.size(0 ), self.n_token) ) lowerCAmelCase = nn.functional.log_softmax(__lowerCAmelCase , dim=1 ) lowerCAmelCase = [0] + self.cutoffs for i in range(len(__lowerCAmelCase ) - 1 ): lowerCAmelCase = cutoff_values[i], cutoff_values[i + 1] if i == 0: lowerCAmelCase = head_logprob[:, : self.cutoffs[0]] else: lowerCAmelCase = weights[i], biases[i], self.out_projs[i] lowerCAmelCase = self._compute_logit(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) lowerCAmelCase = nn.functional.log_softmax(__lowerCAmelCase , dim=1 ) lowerCAmelCase = head_logprob[:, -i] + tail_logprob_i lowerCAmelCase = logprob_i return out
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import os from shutil import copyfile from typing import Any, Dict, List, Optional, Tuple import sentencepiece as spm from ...tokenization_utils import PreTrainedTokenizer from ...utils import logging SCREAMING_SNAKE_CASE__ : str = logging.get_logger(__name__) SCREAMING_SNAKE_CASE__ : Tuple = """▁""" SCREAMING_SNAKE_CASE__ : Union[str, Any] = {"""vocab_file""": """spiece.model"""} SCREAMING_SNAKE_CASE__ : List[Any] = { """vocab_file""": { """google/reformer-crime-and-punishment""": ( """https://huggingface.co/google/reformer-crime-and-punishment/resolve/main/spiece.model""" ) } } SCREAMING_SNAKE_CASE__ : Optional[int] = { """google/reformer-crime-and-punishment""": 52_42_88, } class lowerCamelCase_ ( lowerCamelCase ): a__ = VOCAB_FILES_NAMES a__ = PRETRAINED_VOCAB_FILES_MAP a__ = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES a__ = ['''input_ids''', '''attention_mask'''] def __init__( self , __lowerCAmelCase , __lowerCAmelCase="</s>" , __lowerCAmelCase="<unk>" , __lowerCAmelCase=[] , __lowerCAmelCase = None , **__lowerCAmelCase , ): """simple docstring""" __magic_name__ :int = {} if sp_model_kwargs is None else sp_model_kwargs super().__init__( eos_token=__lowerCAmelCase , unk_token=__lowerCAmelCase , additional_special_tokens=__lowerCAmelCase , sp_model_kwargs=self.sp_model_kwargs , **__lowerCAmelCase , ) __magic_name__ :Optional[Any] = vocab_file __magic_name__ :int = spm.SentencePieceProcessor(**self.sp_model_kwargs ) self.sp_model.Load(__lowerCAmelCase ) @property def A ( self ): """simple docstring""" return self.sp_model.get_piece_size() def A ( self ): """simple docstring""" __magic_name__ :str = {self.convert_ids_to_tokens(__lowerCAmelCase ): i for i in range(self.vocab_size )} vocab.update(self.added_tokens_encoder ) return vocab def __getstate__( self ): """simple docstring""" __magic_name__ :Optional[Any] = self.__dict__.copy() __magic_name__ :Optional[Any] = None return state def __setstate__( self , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Any = d # for backward compatibility if not hasattr(self , '''sp_model_kwargs''' ): __magic_name__ :Optional[int] = {} __magic_name__ :Union[str, Any] = spm.SentencePieceProcessor(**self.sp_model_kwargs ) self.sp_model.Load(self.vocab_file ) def A ( self , __lowerCAmelCase ): """simple docstring""" return self.sp_model.encode(__lowerCAmelCase , out_type=__lowerCAmelCase ) def A ( self , __lowerCAmelCase ): """simple docstring""" return self.sp_model.piece_to_id(__lowerCAmelCase ) def A ( self , __lowerCAmelCase ): """simple docstring""" if index < self.sp_model.get_piece_size(): __magic_name__ :int = self.sp_model.IdToPiece(__lowerCAmelCase ) return token def A ( self , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[Any] = [] __magic_name__ :Tuple = '''''' for token in tokens: # make sure that special tokens are not decoded using sentencepiece model if token in self.all_special_tokens: out_string += self.sp_model.decode(__lowerCAmelCase ) + token __magic_name__ :Optional[Any] = [] else: current_sub_tokens.append(__lowerCAmelCase ) out_string += self.sp_model.decode(__lowerCAmelCase ) return out_string.strip() def A ( self , __lowerCAmelCase , __lowerCAmelCase = None ): """simple docstring""" if not os.path.isdir(__lowerCAmelCase ): logger.error(F'''Vocabulary path ({save_directory}) should be a directory''' ) return __magic_name__ :Optional[int] = os.path.join( __lowerCAmelCase , (filename_prefix + '''-''' if filename_prefix else '''''') + VOCAB_FILES_NAMES['''vocab_file'''] ) if os.path.abspath(self.vocab_file ) != os.path.abspath(__lowerCAmelCase ) and os.path.isfile(self.vocab_file ): copyfile(self.vocab_file , __lowerCAmelCase ) elif not os.path.isfile(self.vocab_file ): with open(__lowerCAmelCase , '''wb''' ) as fi: __magic_name__ :Dict = self.sp_model.serialized_model_proto() fi.write(__lowerCAmelCase ) return (out_vocab_file,)
0
0
from pathlib import Path from typing import List from transformers import is_torch_available, is_vision_available from transformers.testing_utils import get_tests_dir, is_tool_test from transformers.tools.agent_types import AGENT_TYPE_MAPPING, AgentAudio, AgentImage, AgentText if is_torch_available(): import torch if is_vision_available(): from PIL import Image snake_case__ : int = ["""text""", """image""", """audio"""] def __lowerCamelCase ( A__ : Dict ) -> List[str]: lowerCamelCase_ : Dict = [] for input_type in input_types: if input_type == "text": inputs.append("""Text input""" ) elif input_type == "image": inputs.append( Image.open(Path(get_tests_dir("""fixtures/tests_samples/COCO""" ) ) / """000000039769.png""" ).resize((512, 512) ) ) elif input_type == "audio": inputs.append(torch.ones(3000 ) ) elif isinstance(A__ , A__ ): inputs.append(create_inputs(A__ ) ) else: raise ValueError(f'''Invalid type requested: {input_type}''' ) return inputs def __lowerCamelCase ( A__ : int ) -> List[str]: lowerCamelCase_ : int = [] for output in outputs: if isinstance(A__ , (str, AgentText) ): output_types.append("""text""" ) elif isinstance(A__ , (Image.Image, AgentImage) ): output_types.append("""image""" ) elif isinstance(A__ , (torch.Tensor, AgentAudio) ): output_types.append("""audio""" ) else: raise ValueError(f'''Invalid output: {output}''' ) return output_types @is_tool_test class SCREAMING_SNAKE_CASE_ : '''simple docstring''' def _lowerCAmelCase ( self : str ) ->Tuple: self.assertTrue(hasattr(self.tool , """inputs""" ) ) self.assertTrue(hasattr(self.tool , """outputs""" ) ) lowerCamelCase_ : Union[str, Any] = self.tool.inputs for _input in inputs: if isinstance(_input , __lowerCAmelCase ): for __input in _input: self.assertTrue(__input in authorized_types ) else: self.assertTrue(_input in authorized_types ) lowerCamelCase_ : Optional[Any] = self.tool.outputs for _output in outputs: self.assertTrue(_output in authorized_types ) def _lowerCAmelCase ( self : List[Any] ) ->List[Any]: lowerCamelCase_ : List[Any] = create_inputs(self.tool.inputs ) lowerCamelCase_ : Union[str, Any] = self.tool(*__lowerCAmelCase ) # There is a single output if len(self.tool.outputs ) == 1: lowerCamelCase_ : Union[str, Any] = [outputs] self.assertListEqual(output_types(__lowerCAmelCase ) , self.tool.outputs ) def _lowerCAmelCase ( self : List[str] ) ->Union[str, Any]: self.assertTrue(hasattr(self.tool , """description""" ) ) self.assertTrue(hasattr(self.tool , """default_checkpoint""" ) ) self.assertTrue(self.tool.description.startswith("""This is a tool that""" ) ) def _lowerCAmelCase ( self : str ) ->List[str]: lowerCamelCase_ : str = create_inputs(self.tool.inputs ) lowerCamelCase_ : Optional[Any] = self.tool(*__lowerCAmelCase ) if not isinstance(__lowerCAmelCase , __lowerCAmelCase ): lowerCamelCase_ : str = [outputs] self.assertEqual(len(__lowerCAmelCase ) , len(self.tool.outputs ) ) for output, output_type in zip(__lowerCAmelCase , self.tool.outputs ): lowerCamelCase_ : Tuple = AGENT_TYPE_MAPPING[output_type] self.assertTrue(isinstance(__lowerCAmelCase , __lowerCAmelCase ) ) def _lowerCAmelCase ( self : str ) ->List[Any]: lowerCamelCase_ : List[str] = create_inputs(self.tool.inputs ) lowerCamelCase_ : Tuple = [] for _input, input_type in zip(__lowerCAmelCase , self.tool.inputs ): if isinstance(__lowerCAmelCase , __lowerCAmelCase ): _inputs.append([AGENT_TYPE_MAPPING[_input_type](_input ) for _input_type in input_type] ) else: _inputs.append(AGENT_TYPE_MAPPING[input_type](_input ) ) # Should not raise an error lowerCamelCase_ : Optional[int] = self.tool(*__lowerCAmelCase ) if not isinstance(__lowerCAmelCase , __lowerCAmelCase ): lowerCamelCase_ : Any = [outputs] self.assertEqual(len(__lowerCAmelCase ) , len(self.tool.outputs ) )
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import os import unittest from transformers import MobileBertTokenizer, MobileBertTokenizerFast from transformers.models.bert.tokenization_bert import ( VOCAB_FILES_NAMES, BasicTokenizer, WordpieceTokenizer, _is_control, _is_punctuation, _is_whitespace, ) from transformers.testing_utils import require_tokenizers, slow from ...test_tokenization_common import TokenizerTesterMixin, filter_non_english @require_tokenizers class lowerCamelCase_ ( lowerCamelCase , unittest.TestCase ): a__ = MobileBertTokenizer a__ = MobileBertTokenizerFast a__ = True a__ = True a__ = filter_non_english a__ = '''google/mobilebert-uncased''' def A ( self ): """simple docstring""" super().setUp() __magic_name__ :Tuple = [ '''[UNK]''', '''[CLS]''', '''[SEP]''', '''[PAD]''', '''[MASK]''', '''want''', '''##want''', '''##ed''', '''wa''', '''un''', '''runn''', '''##ing''', ''',''', '''low''', '''lowest''', ] __magic_name__ :Dict = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES['''vocab_file'''] ) with open(self.vocab_file , '''w''' , encoding='''utf-8''' ) as vocab_writer: vocab_writer.write(''''''.join([x + '''\n''' for x in vocab_tokens] ) ) __magic_name__ :List[str] = [ (tokenizer_def[0], self.pre_trained_model_path, tokenizer_def[2]) # else the 'google/' prefix is stripped for tokenizer_def in self.tokenizers_list ] def A ( self , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Union[str, Any] = '''UNwant\u00E9d,running''' __magic_name__ :int = '''unwanted, running''' return input_text, output_text def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = self.tokenizer_class(self.vocab_file ) __magic_name__ :List[Any] = tokenizer.tokenize('''UNwant\u00E9d,running''' ) self.assertListEqual(__lowerCAmelCase , ['''un''', '''##want''', '''##ed''', ''',''', '''runn''', '''##ing'''] ) self.assertListEqual(tokenizer.convert_tokens_to_ids(__lowerCAmelCase ) , [9, 6, 7, 1_2, 1_0, 1_1] ) def A ( self ): """simple docstring""" if not self.test_rust_tokenizer: return __magic_name__ :int = self.get_tokenizer() __magic_name__ :Tuple = self.get_rust_tokenizer() __magic_name__ :List[str] = '''UNwant\u00E9d,running''' __magic_name__ :Optional[Any] = tokenizer.tokenize(__lowerCAmelCase ) __magic_name__ :List[Any] = rust_tokenizer.tokenize(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :int = tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :str = rust_tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :List[Any] = self.get_rust_tokenizer() __magic_name__ :Any = tokenizer.encode(__lowerCAmelCase ) __magic_name__ :Any = rust_tokenizer.encode(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) # With lower casing __magic_name__ :Any = self.get_tokenizer(do_lower_case=__lowerCAmelCase ) __magic_name__ :List[Any] = self.get_rust_tokenizer(do_lower_case=__lowerCAmelCase ) __magic_name__ :Dict = '''UNwant\u00E9d,running''' __magic_name__ :Tuple = tokenizer.tokenize(__lowerCAmelCase ) __magic_name__ :Union[str, Any] = rust_tokenizer.tokenize(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :Optional[Any] = tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :Dict = rust_tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :Tuple = self.get_rust_tokenizer() __magic_name__ :Dict = tokenizer.encode(__lowerCAmelCase ) __magic_name__ :List[Any] = rust_tokenizer.encode(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = BasicTokenizer() self.assertListEqual(tokenizer.tokenize('''ah\u535A\u63A8zz''' ) , ['''ah''', '''\u535A''', '''\u63A8''', '''zz'''] ) def A ( self ): """simple docstring""" __magic_name__ :List[Any] = BasicTokenizer(do_lower_case=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHeLLo!how \n Are yoU? ''' ) , ['''hello''', '''!''', '''how''', '''are''', '''you''', '''?'''] ) self.assertListEqual(tokenizer.tokenize('''H\u00E9llo''' ) , ['''hello'''] ) def A ( self ): """simple docstring""" __magic_name__ :Union[str, Any] = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''hällo''', '''!''', '''how''', '''are''', '''you''', '''?'''] ) self.assertListEqual(tokenizer.tokenize('''H\u00E9llo''' ) , ['''h\u00E9llo'''] ) def A ( self ): """simple docstring""" __magic_name__ :Dict = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''hallo''', '''!''', '''how''', '''are''', '''you''', '''?'''] ) self.assertListEqual(tokenizer.tokenize('''H\u00E9llo''' ) , ['''hello'''] ) def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = BasicTokenizer(do_lower_case=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''hallo''', '''!''', '''how''', '''are''', '''you''', '''?'''] ) self.assertListEqual(tokenizer.tokenize('''H\u00E9llo''' ) , ['''hello'''] ) def A ( self ): """simple docstring""" __magic_name__ :List[str] = BasicTokenizer(do_lower_case=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHeLLo!how \n Are yoU? ''' ) , ['''HeLLo''', '''!''', '''how''', '''Are''', '''yoU''', '''?'''] ) def A ( self ): """simple docstring""" __magic_name__ :int = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''HäLLo''', '''!''', '''how''', '''Are''', '''yoU''', '''?'''] ) def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''HaLLo''', '''!''', '''how''', '''Are''', '''yoU''', '''?'''] ) def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = BasicTokenizer(do_lower_case=__lowerCAmelCase , never_split=['''[UNK]'''] ) self.assertListEqual( tokenizer.tokenize(''' \tHeLLo!how \n Are yoU? [UNK]''' ) , ['''HeLLo''', '''!''', '''how''', '''Are''', '''yoU''', '''?''', '''[UNK]'''] ) def A ( self ): """simple docstring""" __magic_name__ :int = ['''[UNK]''', '''[CLS]''', '''[SEP]''', '''want''', '''##want''', '''##ed''', '''wa''', '''un''', '''runn''', '''##ing'''] __magic_name__ :Union[str, Any] = {} for i, token in enumerate(__lowerCAmelCase ): __magic_name__ :Tuple = i __magic_name__ :List[Any] = WordpieceTokenizer(vocab=__lowerCAmelCase , unk_token='''[UNK]''' ) self.assertListEqual(tokenizer.tokenize('''''' ) , [] ) self.assertListEqual(tokenizer.tokenize('''unwanted running''' ) , ['''un''', '''##want''', '''##ed''', '''runn''', '''##ing'''] ) self.assertListEqual(tokenizer.tokenize('''unwantedX running''' ) , ['''[UNK]''', '''runn''', '''##ing'''] ) def A ( self ): """simple docstring""" self.assertTrue(_is_whitespace(''' ''' ) ) self.assertTrue(_is_whitespace('''\t''' ) ) self.assertTrue(_is_whitespace('''\r''' ) ) self.assertTrue(_is_whitespace('''\n''' ) ) self.assertTrue(_is_whitespace('''\u00A0''' ) ) self.assertFalse(_is_whitespace('''A''' ) ) self.assertFalse(_is_whitespace('''-''' ) ) def A ( self ): """simple docstring""" self.assertTrue(_is_control('''\u0005''' ) ) self.assertFalse(_is_control('''A''' ) ) self.assertFalse(_is_control(''' ''' ) ) self.assertFalse(_is_control('''\t''' ) ) self.assertFalse(_is_control('''\r''' ) ) def A ( self ): """simple docstring""" self.assertTrue(_is_punctuation('''-''' ) ) self.assertTrue(_is_punctuation('''$''' ) ) self.assertTrue(_is_punctuation('''`''' ) ) self.assertTrue(_is_punctuation('''.''' ) ) self.assertFalse(_is_punctuation('''A''' ) ) self.assertFalse(_is_punctuation(''' ''' ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = self.get_tokenizer() __magic_name__ :Any = self.get_rust_tokenizer() # Example taken from the issue https://github.com/huggingface/tokenizers/issues/340 self.assertListEqual([tokenizer.tokenize(__lowerCAmelCase ) for t in ['''Test''', '''\xad''', '''test''']] , [['''[UNK]'''], [], ['''[UNK]''']] ) self.assertListEqual( [rust_tokenizer.tokenize(__lowerCAmelCase ) for t in ['''Test''', '''\xad''', '''test''']] , [['''[UNK]'''], [], ['''[UNK]''']] ) @slow def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = self.tokenizer_class.from_pretrained('''google/mobilebert-uncased''' ) __magic_name__ :Optional[int] = tokenizer.encode('''sequence builders''' , add_special_tokens=__lowerCAmelCase ) __magic_name__ :List[Any] = tokenizer.encode('''multi-sequence build''' , add_special_tokens=__lowerCAmelCase ) __magic_name__ :Union[str, Any] = tokenizer.build_inputs_with_special_tokens(__lowerCAmelCase ) __magic_name__ :List[Any] = tokenizer.build_inputs_with_special_tokens(__lowerCAmelCase , __lowerCAmelCase ) assert encoded_sentence == [1_0_1] + text + [1_0_2] assert encoded_pair == [1_0_1] + text + [1_0_2] + text_a + [1_0_2] def A ( self ): """simple docstring""" for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F'''{tokenizer.__class__.__name__} ({pretrained_name})''' ): __magic_name__ :Optional[Any] = self.rust_tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Optional[int] = F'''A, naïve {tokenizer_r.mask_token} AllenNLP sentence.''' __magic_name__ :Optional[Any] = tokenizer_r.encode_plus( __lowerCAmelCase , return_attention_mask=__lowerCAmelCase , return_token_type_ids=__lowerCAmelCase , return_offsets_mapping=__lowerCAmelCase , add_special_tokens=__lowerCAmelCase , ) __magic_name__ :Any = tokenizer_r.do_lower_case if hasattr(__lowerCAmelCase , '''do_lower_case''' ) else False __magic_name__ :Optional[int] = ( [ ((0, 0), tokenizer_r.cls_token), ((0, 1), '''A'''), ((1, 2), ''','''), ((3, 5), '''na'''), ((5, 6), '''##ï'''), ((6, 8), '''##ve'''), ((9, 1_5), tokenizer_r.mask_token), ((1_6, 2_1), '''Allen'''), ((2_1, 2_3), '''##NL'''), ((2_3, 2_4), '''##P'''), ((2_5, 3_3), '''sentence'''), ((3_3, 3_4), '''.'''), ((0, 0), tokenizer_r.sep_token), ] if not do_lower_case else [ ((0, 0), tokenizer_r.cls_token), ((0, 1), '''a'''), ((1, 2), ''','''), ((3, 8), '''naive'''), ((9, 1_5), tokenizer_r.mask_token), ((1_6, 2_1), '''allen'''), ((2_1, 2_3), '''##nl'''), ((2_3, 2_4), '''##p'''), ((2_5, 3_3), '''sentence'''), ((3_3, 3_4), '''.'''), ((0, 0), tokenizer_r.sep_token), ] ) self.assertEqual( [e[1] for e in expected_results] , tokenizer_r.convert_ids_to_tokens(tokens['''input_ids'''] ) ) self.assertEqual([e[0] for e in expected_results] , tokens['''offset_mapping'''] ) def A ( self ): """simple docstring""" __magic_name__ :Dict = ['''的''', '''人''', '''有'''] __magic_name__ :Any = ''''''.join(__lowerCAmelCase ) for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F'''{tokenizer.__class__.__name__} ({pretrained_name})''' ): __magic_name__ :Optional[Any] = True __magic_name__ :Optional[int] = self.tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Tuple = self.rust_tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Dict = tokenizer_p.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :List[str] = tokenizer_r.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :Dict = tokenizer_r.convert_ids_to_tokens(__lowerCAmelCase ) __magic_name__ :Union[str, Any] = tokenizer_p.convert_ids_to_tokens(__lowerCAmelCase ) # it is expected that each Chinese character is not preceded by "##" self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :List[str] = False __magic_name__ :Tuple = self.rust_tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :List[str] = self.tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Optional[Any] = tokenizer_r.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :Union[str, Any] = tokenizer_p.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :List[str] = tokenizer_r.convert_ids_to_tokens(__lowerCAmelCase ) __magic_name__ :Optional[int] = tokenizer_p.convert_ids_to_tokens(__lowerCAmelCase ) # it is expected that only the first Chinese character is not preceded by "##". __magic_name__ :Dict = [ F'''##{token}''' if idx != 0 else token for idx, token in enumerate(__lowerCAmelCase ) ] self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase )
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import argparse import torch from transformers import GPTaLMHeadModel, RobertaForMaskedLM if __name__ == "__main__": lowerCAmelCase = argparse.ArgumentParser( description=( '''Extraction some layers of the full RobertaForMaskedLM or GPT2LMHeadModel for Transfer Learned''' ''' Distillation''' ) ) parser.add_argument('''--model_type''', default='''roberta''', choices=['''roberta''', '''gpt2''']) parser.add_argument('''--model_name''', default='''roberta-large''', type=str) parser.add_argument('''--dump_checkpoint''', default='''serialization_dir/tf_roberta_048131723.pth''', type=str) parser.add_argument('''--vocab_transform''', action='''store_true''') lowerCAmelCase = parser.parse_args() if args.model_type == "roberta": lowerCAmelCase = RobertaForMaskedLM.from_pretrained(args.model_name) lowerCAmelCase = """roberta""" elif args.model_type == "gpt2": lowerCAmelCase = GPTaLMHeadModel.from_pretrained(args.model_name) lowerCAmelCase = """transformer""" lowerCAmelCase = model.state_dict() lowerCAmelCase = {} # Embeddings # if args.model_type == "gpt2": for param_name in ["wte.weight", "wpe.weight"]: lowerCAmelCase = state_dict[F'{prefix}.{param_name}'] else: for w in ["word_embeddings", "position_embeddings", "token_type_embeddings"]: lowerCAmelCase = F'{prefix}.embeddings.{w}.weight' lowerCAmelCase = state_dict[param_name] for w in ["weight", "bias"]: lowerCAmelCase = F'{prefix}.embeddings.LayerNorm.{w}' lowerCAmelCase = state_dict[param_name] # Transformer Blocks # lowerCAmelCase = 0 for teacher_idx in [0, 2, 4, 7, 9, 1_1]: if args.model_type == "gpt2": for layer in ["ln_1", "attn.c_attn", "attn.c_proj", "ln_2", "mlp.c_fc", "mlp.c_proj"]: for w in ["weight", "bias"]: lowerCAmelCase = state_dict[ F'{prefix}.h.{teacher_idx}.{layer}.{w}' ] lowerCAmelCase = state_dict[F'{prefix}.h.{teacher_idx}.attn.bias'] else: for layer in [ "attention.self.query", "attention.self.key", "attention.self.value", "attention.output.dense", "attention.output.LayerNorm", "intermediate.dense", "output.dense", "output.LayerNorm", ]: for w in ["weight", "bias"]: lowerCAmelCase = state_dict[ F'{prefix}.encoder.layer.{teacher_idx}.{layer}.{w}' ] std_idx += 1 # Language Modeling Head ###s if args.model_type == "roberta": for layer in ["lm_head.decoder.weight", "lm_head.bias"]: lowerCAmelCase = state_dict[F'{layer}'] if args.vocab_transform: for w in ["weight", "bias"]: lowerCAmelCase = state_dict[F'lm_head.dense.{w}'] lowerCAmelCase = state_dict[F'lm_head.layer_norm.{w}'] elif args.model_type == "gpt2": for w in ["weight", "bias"]: lowerCAmelCase = state_dict[F'{prefix}.ln_f.{w}'] lowerCAmelCase = state_dict["""lm_head.weight"""] print(F'N layers selected for distillation: {std_idx}') print(F'Number of params transferred for distillation: {len(compressed_sd.keys())}') print(F'Save transferred checkpoint to {args.dump_checkpoint}.') torch.save(compressed_sd, args.dump_checkpoint)
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import logging import os import quant_trainer import torch from torch.utils.data import DataLoader from transformers import Trainer, is_torch_tpu_available from transformers.trainer_utils import PredictionOutput SCREAMING_SNAKE_CASE__ : List[str] = logging.getLogger(__name__) if is_torch_tpu_available(check_device=False): import torch_xla.core.xla_model as xm import torch_xla.debug.metrics as met class lowerCamelCase_ ( lowerCamelCase ): def __init__( self , *__lowerCAmelCase , __lowerCAmelCase=None , __lowerCAmelCase=None , __lowerCAmelCase=None , **__lowerCAmelCase ): """simple docstring""" super().__init__(*__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Any = eval_examples __magic_name__ :str = post_process_function __magic_name__ :int = quant_trainer_args __magic_name__ :List[str] = 1_2_8 # default number of calibration samples def A ( self , __lowerCAmelCase=None ): """simple docstring""" if calib_dataset is None and self.calib_dataset is None: raise ValueError('''Trainer: calibration requires an calib_dataset.''' ) __magic_name__ :Optional[Any] = calib_dataset if calib_dataset is not None else self.calib_dataset __magic_name__ :Optional[int] = self._remove_unused_columns(__lowerCAmelCase , description='''Calibration''' ) return DataLoader( __lowerCAmelCase , batch_size=self.args.eval_batch_size , collate_fn=self.data_collator , drop_last=self.args.dataloader_drop_last , num_workers=self.args.dataloader_num_workers , pin_memory=self.args.dataloader_pin_memory , shuffle=__lowerCAmelCase , ) def A ( self , __lowerCAmelCase=None ): """simple docstring""" __magic_name__ :Dict = self.train_dataset if calib_dataset is None else calib_dataset __magic_name__ :Any = self.get_calib_dataloader(__lowerCAmelCase ) __magic_name__ :List[str] = self.model quant_trainer.configure_model(__lowerCAmelCase , self.quant_trainer_args , calib=__lowerCAmelCase ) model.eval() quant_trainer.enable_calibration(__lowerCAmelCase ) logger.info('''***** Running calibration *****''' ) logger.info(F''' Num examples = {self.calib_num}''' ) logger.info(F''' Batch size = {calib_dataloader.batch_size}''' ) for step, inputs in enumerate(__lowerCAmelCase ): # Prediction step __magic_name__ , __magic_name__ , __magic_name__ :str = self.prediction_step(__lowerCAmelCase , __lowerCAmelCase , prediction_loss_only=__lowerCAmelCase ) if (step + 1) * calib_dataloader.batch_size >= self.calib_num: break quant_trainer.finish_calibration(__lowerCAmelCase , self.quant_trainer_args ) __magic_name__ :Any = model def A ( self , __lowerCAmelCase=None , __lowerCAmelCase=None , __lowerCAmelCase=None , __lowerCAmelCase = "eval" ): """simple docstring""" __magic_name__ :Tuple = self.eval_dataset if eval_dataset is None else eval_dataset __magic_name__ :Optional[Any] = self.get_eval_dataloader(__lowerCAmelCase ) __magic_name__ :str = self.eval_examples if eval_examples is None else eval_examples # Temporarily disable metric computation, we will do it in the loop here. __magic_name__ :Any = self.compute_metrics __magic_name__ :List[Any] = None __magic_name__ :List[str] = self.prediction_loop if self.args.use_legacy_prediction_loop else self.evaluation_loop try: __magic_name__ :Optional[Any] = eval_loop( __lowerCAmelCase , description='''Evaluation''' , prediction_loss_only=True if compute_metrics is None else None , ignore_keys=__lowerCAmelCase , ) finally: __magic_name__ :Union[str, Any] = compute_metrics if self.post_process_function is not None and self.compute_metrics is not None: __magic_name__ :Union[str, Any] = self.post_process_function(__lowerCAmelCase , __lowerCAmelCase , output.predictions ) __magic_name__ :int = self.compute_metrics(__lowerCAmelCase ) # Prefix all keys with metric_key_prefix + '_' for key in list(metrics.keys() ): if not key.startswith(F'''{metric_key_prefix}_''' ): __magic_name__ :Dict = metrics.pop(__lowerCAmelCase ) self.log(__lowerCAmelCase ) else: __magic_name__ :List[str] = {} if self.args.tpu_metrics_debug or self.args.debug: # tpu-comment: Logging debug metrics for PyTorch/XLA (compile, execute times, ops, etc.) xm.master_print(met.metrics_report() ) __magic_name__ :Optional[Any] = self.callback_handler.on_evaluate(self.args , self.state , self.control , __lowerCAmelCase ) return metrics def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase=None , __lowerCAmelCase = "test" ): """simple docstring""" __magic_name__ :int = self.get_test_dataloader(__lowerCAmelCase ) # Temporarily disable metric computation, we will do it in the loop here. __magic_name__ :Dict = self.compute_metrics __magic_name__ :str = None __magic_name__ :Optional[int] = self.prediction_loop if self.args.use_legacy_prediction_loop else self.evaluation_loop try: __magic_name__ :int = eval_loop( __lowerCAmelCase , description='''Prediction''' , prediction_loss_only=True if compute_metrics is None else None , ignore_keys=__lowerCAmelCase , ) finally: __magic_name__ :List[Any] = compute_metrics if self.post_process_function is None or self.compute_metrics is None: return output __magic_name__ :Optional[Any] = self.post_process_function(__lowerCAmelCase , __lowerCAmelCase , output.predictions , '''predict''' ) __magic_name__ :Dict = self.compute_metrics(__lowerCAmelCase ) # Prefix all keys with metric_key_prefix + '_' for key in list(metrics.keys() ): if not key.startswith(F'''{metric_key_prefix}_''' ): __magic_name__ :List[str] = metrics.pop(__lowerCAmelCase ) return PredictionOutput(predictions=predictions.predictions , label_ids=predictions.label_ids , metrics=__lowerCAmelCase ) def A ( self , __lowerCAmelCase="./" ): """simple docstring""" __magic_name__ :List[Any] = self.eval_dataset __magic_name__ :Any = self.get_eval_dataloader(__lowerCAmelCase ) __magic_name__ :int = next(iter(__lowerCAmelCase ) ) # saving device - to make it consistent __magic_name__ :str = torch.device('''cuda''' if torch.cuda.is_available() else '''cpu''' ) # convert to tuple __magic_name__ :int = tuple(v.to(__lowerCAmelCase ) for k, v in batch.items() ) logger.info('''Converting model to be onnx compatible''' ) from pytorch_quantization.nn import TensorQuantizer __magic_name__ :Any = True __magic_name__ :Optional[int] = self.model.to(__lowerCAmelCase ) model.eval() model.float() __magic_name__ :Any = model.module if hasattr(__lowerCAmelCase , '''module''' ) else model quant_trainer.configure_model(__lowerCAmelCase , self.quant_trainer_args ) __magic_name__ :int = os.path.join(__lowerCAmelCase , '''model.onnx''' ) logger.info(F'''exporting model to {output_model_file}''' ) __magic_name__ :Dict = {0: '''batch_size''', 1: '''seq_len'''} torch.onnx.export( __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , export_params=__lowerCAmelCase , opset_version=1_3 , do_constant_folding=__lowerCAmelCase , input_names=['''input_ids''', '''attention_mask''', '''token_type_ids'''] , output_names=['''output_start_logits''', '''output_end_logits'''] , dynamic_axes={ '''input_ids''': axes, '''attention_mask''': axes, '''token_type_ids''': axes, '''output_start_logits''': axes, '''output_end_logits''': axes, } , verbose=__lowerCAmelCase , ) logger.info('''onnx export finished''' )
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"""simple docstring""" from __future__ import annotations from collections.abc import Callable from typing import Any, Generic, TypeVar a__ : Optional[Any] = TypeVar("""T""") class __magic_name__ ( Generic[T] ): def __init__( self , __magic_name__ , __magic_name__ ): """simple docstring""" _lowerCAmelCase = None _lowerCAmelCase = len(__lowerCAmelCase ) _lowerCAmelCase = [any_type for _ in range(self.N )] + arr _lowerCAmelCase = fnc self.build() def _lowerCamelCase ( self ): """simple docstring""" for p in range(self.N - 1 , 0 , -1 ): _lowerCAmelCase = self.fn(self.st[p * 2] , self.st[p * 2 + 1] ) def _lowerCamelCase ( self , __magic_name__ , __magic_name__ ): """simple docstring""" p += self.N _lowerCAmelCase = v while p > 1: _lowerCAmelCase = p // 2 _lowerCAmelCase = self.fn(self.st[p * 2] , self.st[p * 2 + 1] ) def _lowerCamelCase ( self , __magic_name__ , __magic_name__ ): # noqa: E741 """simple docstring""" _lowerCAmelCase = l + self.N, r + self.N _lowerCAmelCase = None while l <= r: if l % 2 == 1: _lowerCAmelCase = self.st[l] if res is None else self.fn(__lowerCAmelCase , self.st[l] ) if r % 2 == 0: _lowerCAmelCase = self.st[r] if res is None else self.fn(__lowerCAmelCase , self.st[r] ) _lowerCAmelCase = (l + 1) // 2, (r - 1) // 2 return res if __name__ == "__main__": from functools import reduce a__ : Any = [1, 10, -2, 9, -3, 8, 4, -7, 5, 6, 11, -12] a__ : Tuple = { 0: 7, 1: 2, 2: 6, 3: -14, 4: 5, 5: 4, 6: 7, 7: -10, 8: 9, 9: 10, 10: 12, 11: 1, } a__ : Union[str, Any] = SegmentTree(test_array, min) a__ : Any = SegmentTree(test_array, max) a__ : Any = SegmentTree(test_array, lambda a, b: a + b) def A__ ( ): """simple docstring""" for i in range(len(__lowerCamelCase ) ): for j in range(__lowerCamelCase, len(__lowerCamelCase ) ): _lowerCAmelCase = reduce(__lowerCamelCase, test_array[i : j + 1] ) _lowerCAmelCase = reduce(__lowerCamelCase, test_array[i : j + 1] ) _lowerCAmelCase = reduce(lambda __lowerCamelCase, __lowerCamelCase : a + b, test_array[i : j + 1] ) assert min_range == min_segment_tree.query(__lowerCamelCase, __lowerCamelCase ) assert max_range == max_segment_tree.query(__lowerCamelCase, __lowerCamelCase ) assert sum_range == sum_segment_tree.query(__lowerCamelCase, __lowerCamelCase ) test_all_segments() for index, value in test_updates.items(): a__ : str = value min_segment_tree.update(index, value) max_segment_tree.update(index, value) sum_segment_tree.update(index, value) test_all_segments()
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def __lowercase ( snake_case ): """simple docstring""" return "".join([hex(snake_case )[2:].zfill(2 ).upper() for byte in list(snake_case )] ) def __lowercase ( snake_case ): """simple docstring""" if (len(snake_case ) % 2) != 0: raise ValueError( '''Base16 encoded data is invalid: Data does not have an even number of hex digits.''' ) # Check the character set - the standard base16 alphabet # is uppercase according to RFC3548 section 6 if not set(snake_case ) <= set('''0123456789ABCDEF''' ): raise ValueError( '''Base16 encoded data is invalid: Data is not uppercase hex or it contains invalid characters.''' ) # For every two hexadecimal digits (= a byte), turn it into an integer. # Then, string the result together into bytes, and return it. return bytes(int(data[i] + data[i + 1], 1_6 ) for i in range(0, len(snake_case ), 2 ) ) if __name__ == "__main__": import doctest doctest.testmod()
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import pytest import requests from datasets.utils.file_utils import http_head from .utils import OfflineSimulationMode, RequestWouldHangIndefinitelyError, offline @pytest.mark.integration def _a ( ) -> Union[str, Any]: """simple docstring""" with offline(OfflineSimulationMode.CONNECTION_TIMES_OUT ): with pytest.raises(UpperCAmelCase ): requests.request('''GET''' , '''https://huggingface.co''' ) with pytest.raises(requests.exceptions.ConnectTimeout ): requests.request('''GET''' , '''https://huggingface.co''' , timeout=1.0 ) @pytest.mark.integration def _a ( ) -> Dict: """simple docstring""" with offline(OfflineSimulationMode.CONNECTION_FAILS ): with pytest.raises(requests.exceptions.ConnectionError ): requests.request('''GET''' , '''https://huggingface.co''' ) def _a ( ) -> int: """simple docstring""" with offline(OfflineSimulationMode.HF_DATASETS_OFFLINE_SET_TO_1 ): with pytest.raises(UpperCAmelCase ): http_head('''https://huggingface.co''' )
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import pytest import requests from datasets.utils.file_utils import http_head from .utils import OfflineSimulationMode, RequestWouldHangIndefinitelyError, offline @pytest.mark.integration def __lowercase ( ): """simple docstring""" with offline(OfflineSimulationMode.CONNECTION_TIMES_OUT ): with pytest.raises(snake_case ): requests.request('''GET''', '''https://huggingface.co''' ) with pytest.raises(requests.exceptions.ConnectTimeout ): requests.request('''GET''', '''https://huggingface.co''', timeout=1.0 ) @pytest.mark.integration def __lowercase ( ): """simple docstring""" with offline(OfflineSimulationMode.CONNECTION_FAILS ): with pytest.raises(requests.exceptions.ConnectionError ): requests.request('''GET''', '''https://huggingface.co''' ) def __lowercase ( ): """simple docstring""" with offline(OfflineSimulationMode.HF_DATASETS_OFFLINE_SET_TO_1 ): with pytest.raises(snake_case ): http_head('''https://huggingface.co''' )
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'''simple docstring''' import os import re import shutil import sys import tempfile import unittest import black UpperCamelCase_ = os.path.abspath(os.path.dirname(os.path.dirname(os.path.dirname(__file__)))) sys.path.append(os.path.join(git_repo_path, '''utils''')) import check_copies # noqa: E402 # This is the reference code that will be used in the tests. # If DDPMSchedulerOutput is changed in scheduling_ddpm.py, this code needs to be manually updated. UpperCamelCase_ = """ \"\"\" Output class for the scheduler's step function output. Args: prev_sample (`torch.FloatTensor` of shape `(batch_size, num_channels, height, width)` for images): Computed sample (x_{t-1}) of previous timestep. `prev_sample` should be used as next model input in the denoising loop. pred_original_sample (`torch.FloatTensor` of shape `(batch_size, num_channels, height, width)` for images): The predicted denoised sample (x_{0}) based on the model output from the current timestep. `pred_original_sample` can be used to preview progress or for guidance. \"\"\" prev_sample: torch.FloatTensor pred_original_sample: Optional[torch.FloatTensor] = None """ class _SCREAMING_SNAKE_CASE( unittest.TestCase ): def __lowerCamelCase ( self : Dict ) -> int: SCREAMING_SNAKE_CASE__ :Optional[Any] = tempfile.mkdtemp() os.makedirs(os.path.join(self.diffusers_dir , 'schedulers/' ) ) SCREAMING_SNAKE_CASE__ :Optional[int] = self.diffusers_dir shutil.copy( os.path.join(__lowerCAmelCase , 'src/diffusers/schedulers/scheduling_ddpm.py' ) , os.path.join(self.diffusers_dir , 'schedulers/scheduling_ddpm.py' ) , ) def __lowerCamelCase ( self : Tuple ) -> int: SCREAMING_SNAKE_CASE__ :Optional[int] = '''src/diffusers''' shutil.rmtree(self.diffusers_dir ) def __lowerCamelCase ( self : int , UpperCamelCase_ : List[str] , UpperCamelCase_ : List[Any] , UpperCamelCase_ : Union[str, Any] , UpperCamelCase_ : Union[str, Any]=None ) -> Dict: SCREAMING_SNAKE_CASE__ :Tuple = comment + f'''\nclass {class_name}(nn.Module):\n''' + class_code if overwrite_result is not None: SCREAMING_SNAKE_CASE__ :List[str] = comment + f'''\nclass {class_name}(nn.Module):\n''' + overwrite_result SCREAMING_SNAKE_CASE__ :List[Any] = black.Mode(target_versions={black.TargetVersion.PYaa} , line_length=1_19 ) SCREAMING_SNAKE_CASE__ :Dict = black.format_str(__lowerCAmelCase , mode=__lowerCAmelCase ) SCREAMING_SNAKE_CASE__ :int = os.path.join(self.diffusers_dir , 'new_code.py' ) with open(__lowerCAmelCase , 'w' , newline='\n' ) as f: f.write(__lowerCAmelCase ) if overwrite_result is None: self.assertTrue(len(check_copies.is_copy_consistent(__lowerCAmelCase ) ) == 0 ) else: check_copies.is_copy_consistent(f.name , overwrite=__lowerCAmelCase ) with open(__lowerCAmelCase , 'r' ) as f: self.assertTrue(f.read() , __lowerCAmelCase ) def __lowerCamelCase ( self : List[str] ) -> List[Any]: SCREAMING_SNAKE_CASE__ :Tuple = check_copies.find_code_in_diffusers('schedulers.scheduling_ddpm.DDPMSchedulerOutput' ) self.assertEqual(__lowerCAmelCase , __lowerCAmelCase ) def __lowerCamelCase ( self : Tuple ) -> Union[str, Any]: self.check_copy_consistency( '# Copied from diffusers.schedulers.scheduling_ddpm.DDPMSchedulerOutput' , 'DDPMSchedulerOutput' , REFERENCE_CODE + '\n' , ) # With no empty line at the end self.check_copy_consistency( '# Copied from diffusers.schedulers.scheduling_ddpm.DDPMSchedulerOutput' , 'DDPMSchedulerOutput' , __lowerCAmelCase , ) # Copy consistency with rename self.check_copy_consistency( '# Copied from diffusers.schedulers.scheduling_ddpm.DDPMSchedulerOutput with DDPM->Test' , 'TestSchedulerOutput' , re.sub('DDPM' , 'Test' , __lowerCAmelCase ) , ) # Copy consistency with a really long name SCREAMING_SNAKE_CASE__ :List[Any] = '''TestClassWithAReallyLongNameBecauseSomePeopleLikeThatForSomeReason''' self.check_copy_consistency( f'''# Copied from diffusers.schedulers.scheduling_ddpm.DDPMSchedulerOutput with DDPM->{long_class_name}''' , f'''{long_class_name}SchedulerOutput''' , re.sub('Bert' , __lowerCAmelCase , __lowerCAmelCase ) , ) # Copy consistency with overwrite self.check_copy_consistency( '# Copied from diffusers.schedulers.scheduling_ddpm.DDPMSchedulerOutput with DDPM->Test' , 'TestSchedulerOutput' , __lowerCAmelCase , overwrite_result=re.sub('DDPM' , 'Test' , __lowerCAmelCase ) , )
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import math from collections.abc import Iterator from itertools import takewhile def __lowercase ( snake_case ): """simple docstring""" if 1 < number < 4: # 2 and 3 are primes return True elif number < 2 or number % 2 == 0 or number % 3 == 0: # Negatives, 0, 1, all even numbers, all multiples of 3 are not primes return False # All primes number are in format of 6k +/- 1 for i in range(5, int(math.sqrt(snake_case ) + 1 ), 6 ): if number % i == 0 or number % (i + 2) == 0: return False return True def __lowercase ( ): """simple docstring""" __magic_name__ :str = 2 while True: if is_prime(snake_case ): yield num num += 1 def __lowercase ( snake_case = 2_0_0_0_0_0_0 ): """simple docstring""" return sum(takewhile(lambda snake_case : x < n, prime_generator() ) ) if __name__ == "__main__": print(f"{solution() = }")
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from collections import OrderedDict from typing import Any, List, Mapping, Optional from ... import PreTrainedTokenizer, TensorType, is_torch_available from ...configuration_utils import PretrainedConfig from ...onnx import OnnxConfigWithPast, PatchingSpec from ...utils import logging _UpperCAmelCase = logging.get_logger(__name__) _UpperCAmelCase = { """EleutherAI/gpt-j-6B""": """https://huggingface.co/EleutherAI/gpt-j-6B/resolve/main/config.json""", # See all GPT-J models at https://huggingface.co/models?filter=gpt_j } class _UpperCAmelCase ( __lowercase ): '''simple docstring''' SCREAMING_SNAKE_CASE : int = '''gptj''' SCREAMING_SNAKE_CASE : Tuple = { '''max_position_embeddings''': '''n_positions''', '''hidden_size''': '''n_embd''', '''num_attention_heads''': '''n_head''', '''num_hidden_layers''': '''n_layer''', } def __init__( self : Any , UpperCamelCase__ : Optional[int]=50400 , UpperCamelCase__ : List[Any]=2048 , UpperCamelCase__ : List[Any]=4096 , UpperCamelCase__ : Dict=28 , UpperCamelCase__ : str=16 , UpperCamelCase__ : str=64 , UpperCamelCase__ : int=None , UpperCamelCase__ : List[Any]="gelu_new" , UpperCamelCase__ : Optional[Any]=0.0 , UpperCamelCase__ : Optional[int]=0.0 , UpperCamelCase__ : List[str]=0.0 , UpperCamelCase__ : Dict=1e-5 , UpperCamelCase__ : Tuple=0.02 , UpperCamelCase__ : Optional[int]=True , UpperCamelCase__ : List[Any]=50256 , UpperCamelCase__ : Dict=50256 , UpperCamelCase__ : str=False , **UpperCamelCase__ : Optional[int] , ): A = vocab_size A = n_positions A = n_embd A = n_layer A = n_head A = n_inner A = rotary_dim A = activation_function A = resid_pdrop A = embd_pdrop A = attn_pdrop A = layer_norm_epsilon A = initializer_range A = use_cache A = bos_token_id A = eos_token_id super().__init__( bos_token_id=__lowerCAmelCase , eos_token_id=__lowerCAmelCase , tie_word_embeddings=__lowerCAmelCase , **__lowerCAmelCase ) class _UpperCAmelCase ( __lowercase ): '''simple docstring''' def __init__( self : int , UpperCamelCase__ : List[Any] , UpperCamelCase__ : str = "default" , UpperCamelCase__ : Union[str, Any] = None , UpperCamelCase__ : Union[str, Any] = False , ): super().__init__(__lowerCAmelCase , task=__lowerCAmelCase , patching_specs=__lowerCAmelCase , use_past=__lowerCAmelCase ) if not getattr(self._config , 'pad_token_id' , __lowerCAmelCase ): # TODO: how to do that better? A = 0 @property def UpperCamelCase ( self : Optional[int] ): A = OrderedDict({'input_ids': {0: 'batch', 1: 'sequence'}} ) if self.use_past: self.fill_with_past_key_values_(__lowerCAmelCase , direction='inputs' ) A = {0: '''batch''', 1: '''past_sequence + sequence'''} else: A = {0: '''batch''', 1: '''sequence'''} return common_inputs @property def UpperCamelCase ( self : List[str] ): return self._config.n_layer @property def UpperCamelCase ( self : int ): return self._config.n_head def UpperCamelCase ( self : str , UpperCamelCase__ : Any , UpperCamelCase__ : Any = -1 , UpperCamelCase__ : str = -1 , UpperCamelCase__ : List[str] = False , UpperCamelCase__ : Optional[Any] = None , ): A = super(__lowerCAmelCase , self ).generate_dummy_inputs( __lowerCAmelCase , batch_size=__lowerCAmelCase , seq_length=__lowerCAmelCase , is_pair=__lowerCAmelCase , framework=__lowerCAmelCase ) # We need to order the input in the way they appears in the forward() A = OrderedDict({'input_ids': common_inputs['input_ids']} ) # Need to add the past_keys if self.use_past: if not is_torch_available(): raise ValueError('Cannot generate dummy past_keys inputs without PyTorch installed.' ) else: import torch A = common_inputs['''input_ids'''].shape # Not using the same length for past_key_values A = seqlen + 2 A = ( batch, self.num_attention_heads, past_key_values_length, self._config.hidden_size // self.num_attention_heads, ) A = [ (torch.zeros(__lowerCAmelCase ), torch.zeros(__lowerCAmelCase )) for _ in range(self.num_layers ) ] A = common_inputs['''attention_mask'''] if self.use_past: A = ordered_inputs['''attention_mask'''].dtype A = torch.cat( [ordered_inputs['attention_mask'], torch.ones(__lowerCAmelCase , __lowerCAmelCase , dtype=__lowerCAmelCase )] , dim=1 ) return ordered_inputs @property def UpperCamelCase ( self : Tuple ): return 13
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import unittest import numpy as np from transformers.testing_utils import require_flax, require_tf, require_torch from transformers.utils import ( expand_dims, flatten_dict, is_flax_available, is_tf_available, is_torch_available, reshape, squeeze, transpose, ) if is_flax_available(): import jax.numpy as jnp if is_tf_available(): import tensorflow as tf if is_torch_available(): import torch class lowerCamelCase_ ( unittest.TestCase ): def A ( self ): """simple docstring""" __magic_name__ :List[Any] = { '''task_specific_params''': { '''summarization''': {'''length_penalty''': 1.0, '''max_length''': 1_2_8, '''min_length''': 1_2, '''num_beams''': 4}, '''summarization_cnn''': {'''length_penalty''': 2.0, '''max_length''': 1_4_2, '''min_length''': 5_6, '''num_beams''': 4}, '''summarization_xsum''': {'''length_penalty''': 1.0, '''max_length''': 6_2, '''min_length''': 1_1, '''num_beams''': 6}, } } __magic_name__ :List[str] = { '''task_specific_params.summarization.length_penalty''': 1.0, '''task_specific_params.summarization.max_length''': 1_2_8, '''task_specific_params.summarization.min_length''': 1_2, '''task_specific_params.summarization.num_beams''': 4, '''task_specific_params.summarization_cnn.length_penalty''': 2.0, '''task_specific_params.summarization_cnn.max_length''': 1_4_2, '''task_specific_params.summarization_cnn.min_length''': 5_6, '''task_specific_params.summarization_cnn.num_beams''': 4, '''task_specific_params.summarization_xsum.length_penalty''': 1.0, '''task_specific_params.summarization_xsum.max_length''': 6_2, '''task_specific_params.summarization_xsum.min_length''': 1_1, '''task_specific_params.summarization_xsum.num_beams''': 6, } self.assertEqual(flatten_dict(__lowerCAmelCase ) , __lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = np.random.randn(3 , 4 ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , x.transpose() ) ) __magic_name__ :List[Any] = np.random.randn(3 , 4 , 5 ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , x.transpose((1, 2, 0) ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = np.random.randn(3 , 4 ) __magic_name__ :Tuple = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , transpose(__lowerCAmelCase ).numpy() ) ) __magic_name__ :int = np.random.randn(3 , 4 , 5 ) __magic_name__ :Union[str, Any] = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , transpose(__lowerCAmelCase , axes=(1, 2, 0) ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :int = np.random.randn(3 , 4 ) __magic_name__ :Optional[Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , transpose(__lowerCAmelCase ).numpy() ) ) __magic_name__ :List[str] = np.random.randn(3 , 4 , 5 ) __magic_name__ :Optional[Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , transpose(__lowerCAmelCase , axes=(1, 2, 0) ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :int = np.random.randn(3 , 4 ) __magic_name__ :Dict = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , np.asarray(transpose(__lowerCAmelCase ) ) ) ) __magic_name__ :Dict = np.random.randn(3 , 4 , 5 ) __magic_name__ :Dict = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , np.asarray(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) ) ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = np.random.randn(3 , 4 ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , np.reshape(__lowerCAmelCase , (4, 3) ) ) ) __magic_name__ :Union[str, Any] = np.random.randn(3 , 4 , 5 ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , np.reshape(__lowerCAmelCase , (1_2, 5) ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :Dict = np.random.randn(3 , 4 ) __magic_name__ :Tuple = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , reshape(__lowerCAmelCase , (4, 3) ).numpy() ) ) __magic_name__ :Union[str, Any] = np.random.randn(3 , 4 , 5 ) __magic_name__ :List[str] = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , reshape(__lowerCAmelCase , (1_2, 5) ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :Dict = np.random.randn(3 , 4 ) __magic_name__ :Union[str, Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , reshape(__lowerCAmelCase , (4, 3) ).numpy() ) ) __magic_name__ :List[Any] = np.random.randn(3 , 4 , 5 ) __magic_name__ :Optional[int] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , reshape(__lowerCAmelCase , (1_2, 5) ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :List[str] = np.random.randn(3 , 4 ) __magic_name__ :Any = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , np.asarray(reshape(__lowerCAmelCase , (4, 3) ) ) ) ) __magic_name__ :List[Any] = np.random.randn(3 , 4 , 5 ) __magic_name__ :List[str] = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , np.asarray(reshape(__lowerCAmelCase , (1_2, 5) ) ) ) ) def A ( self ): """simple docstring""" __magic_name__ :List[Any] = np.random.randn(1 , 3 , 4 ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , np.squeeze(__lowerCAmelCase ) ) ) __magic_name__ :Optional[Any] = np.random.randn(1 , 4 , 1 , 5 ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , np.squeeze(__lowerCAmelCase , axis=2 ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :Dict = np.random.randn(1 , 3 , 4 ) __magic_name__ :List[Any] = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , squeeze(__lowerCAmelCase ).numpy() ) ) __magic_name__ :List[str] = np.random.randn(1 , 4 , 1 , 5 ) __magic_name__ :str = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , squeeze(__lowerCAmelCase , axis=2 ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :int = np.random.randn(1 , 3 , 4 ) __magic_name__ :Tuple = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , squeeze(__lowerCAmelCase ).numpy() ) ) __magic_name__ :Tuple = np.random.randn(1 , 4 , 1 , 5 ) __magic_name__ :Optional[int] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , squeeze(__lowerCAmelCase , axis=2 ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :Tuple = np.random.randn(1 , 3 , 4 ) __magic_name__ :Optional[Any] = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , np.asarray(squeeze(__lowerCAmelCase ) ) ) ) __magic_name__ :List[Any] = np.random.randn(1 , 4 , 1 , 5 ) __magic_name__ :Optional[Any] = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , np.asarray(squeeze(__lowerCAmelCase , axis=2 ) ) ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = np.random.randn(3 , 4 ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , np.expand_dims(__lowerCAmelCase , axis=1 ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :List[Any] = np.random.randn(3 , 4 ) __magic_name__ :Any = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , expand_dims(__lowerCAmelCase , axis=1 ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :Union[str, Any] = np.random.randn(3 , 4 ) __magic_name__ :Union[str, Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , expand_dims(__lowerCAmelCase , axis=1 ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :List[str] = np.random.randn(3 , 4 ) __magic_name__ :Tuple = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , np.asarray(expand_dims(__lowerCAmelCase , axis=1 ) ) ) )
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from __future__ import annotations def lowerCamelCase__ ( snake_case_ : Optional[Any] ) -> List[Any]: __snake_case = str(snake_case_ ) return n == n[::-1] def lowerCamelCase__ ( snake_case_ : Any = 100_0000 ) -> Dict: __snake_case = 0 for i in range(1 , snake_case_ ): if is_palindrome(snake_case_ ) and is_palindrome(bin(snake_case_ ).split('''b''' )[1] ): total += i return total if __name__ == "__main__": print(solution(int(str(input().strip()))))
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from pathlib import PurePosixPath from typing import Optional import fsspec from fsspec import AbstractFileSystem from huggingface_hub.hf_api import DatasetInfo from ..utils.file_utils import get_authentication_headers_for_url from ..utils.hub import hf_hub_url class lowerCamelCase_ ( lowerCamelCase ): a__ = '''''' a__ = '''hf-legacy''' # "hf://"" is reserved for hffs def __init__( self , __lowerCAmelCase = None , __lowerCAmelCase = None , **__lowerCAmelCase , ): """simple docstring""" super().__init__(self , **__lowerCAmelCase ) __magic_name__ :List[Any] = repo_info __magic_name__ :Dict = token __magic_name__ :Optional[Any] = None def A ( self ): """simple docstring""" if self.dir_cache is None: __magic_name__ :Any = {} for hf_file in self.repo_info.siblings: # TODO(QL): add sizes __magic_name__ :Optional[int] = { '''name''': hf_file.rfilename, '''size''': None, '''type''': '''file''', } self.dir_cache.update( { str(__lowerCAmelCase ): {'''name''': str(__lowerCAmelCase ), '''size''': None, '''type''': '''directory'''} for d in list(PurePosixPath(hf_file.rfilename ).parents )[:-1] } ) def A ( self , __lowerCAmelCase , __lowerCAmelCase = "rb" , **__lowerCAmelCase , ): """simple docstring""" if not isinstance(self.repo_info , __lowerCAmelCase ): raise NotImplementedError(F'''Open is only implemented for dataset repositories, but got {self.repo_info}''' ) __magic_name__ :Union[str, Any] = hf_hub_url(self.repo_info.id , __lowerCAmelCase , revision=self.repo_info.sha ) return fsspec.open( __lowerCAmelCase , mode=__lowerCAmelCase , headers=get_authentication_headers_for_url(__lowerCAmelCase , use_auth_token=self.token ) , client_kwargs={'''trust_env''': True} , ).open() def A ( self , __lowerCAmelCase , **__lowerCAmelCase ): """simple docstring""" self._get_dirs() __magic_name__ :str = self._strip_protocol(__lowerCAmelCase ) if path in self.dir_cache: return self.dir_cache[path] else: raise FileNotFoundError(__lowerCAmelCase ) def A ( self , __lowerCAmelCase , __lowerCAmelCase=False , **__lowerCAmelCase ): """simple docstring""" self._get_dirs() __magic_name__ :Union[str, Any] = PurePosixPath(path.strip('''/''' ) ) __magic_name__ :Dict = {} for p, f in self.dir_cache.items(): __magic_name__ :int = PurePosixPath(p.strip('''/''' ) ) __magic_name__ :Tuple = p.parent if root == path: __magic_name__ :Optional[Any] = f __magic_name__ :List[Any] = list(paths.values() ) if detail: return out else: return sorted(f['''name'''] for f in out )
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0
import os import unicodedata from shutil import copyfile from typing import Any, Dict, List, Optional, Tuple import sentencepiece as spm from ...tokenization_utils import AddedToken, PreTrainedTokenizer from ...utils import logging A_: int = logging.get_logger(__name__) A_: Any = {"""vocab_file""": """spiece.model"""} A_: str = { """vocab_file""": { """albert-base-v1""": """https://huggingface.co/albert-base-v1/resolve/main/spiece.model""", """albert-large-v1""": """https://huggingface.co/albert-large-v1/resolve/main/spiece.model""", """albert-xlarge-v1""": """https://huggingface.co/albert-xlarge-v1/resolve/main/spiece.model""", """albert-xxlarge-v1""": """https://huggingface.co/albert-xxlarge-v1/resolve/main/spiece.model""", """albert-base-v2""": """https://huggingface.co/albert-base-v2/resolve/main/spiece.model""", """albert-large-v2""": """https://huggingface.co/albert-large-v2/resolve/main/spiece.model""", """albert-xlarge-v2""": """https://huggingface.co/albert-xlarge-v2/resolve/main/spiece.model""", """albert-xxlarge-v2""": """https://huggingface.co/albert-xxlarge-v2/resolve/main/spiece.model""", } } A_: Union[str, Any] = { """albert-base-v1""": 512, """albert-large-v1""": 512, """albert-xlarge-v1""": 512, """albert-xxlarge-v1""": 512, """albert-base-v2""": 512, """albert-large-v2""": 512, """albert-xlarge-v2""": 512, """albert-xxlarge-v2""": 512, } A_: List[str] = """▁""" class _lowercase ( _UpperCAmelCase ): """simple docstring""" lowerCAmelCase__ = VOCAB_FILES_NAMES lowerCAmelCase__ = PRETRAINED_VOCAB_FILES_MAP lowerCAmelCase__ = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES def __init__( self , UpperCAmelCase , UpperCAmelCase=True , UpperCAmelCase=True , UpperCAmelCase=False , UpperCAmelCase="[CLS]" , UpperCAmelCase="[SEP]" , UpperCAmelCase="<unk>" , UpperCAmelCase="[SEP]" , UpperCAmelCase="<pad>" , UpperCAmelCase="[CLS]" , UpperCAmelCase="[MASK]" , UpperCAmelCase = None , **UpperCAmelCase , ): '''simple docstring''' _lowercase = ( AddedToken(__lowerCAmelCase , lstrip=__lowerCAmelCase , rstrip=__lowerCAmelCase , normalized=__lowerCAmelCase ) if isinstance(__lowerCAmelCase , __lowerCAmelCase ) else mask_token ) _lowercase = {} if sp_model_kwargs is None else sp_model_kwargs super().__init__( do_lower_case=__lowerCAmelCase , remove_space=__lowerCAmelCase , keep_accents=__lowerCAmelCase , bos_token=__lowerCAmelCase , eos_token=__lowerCAmelCase , unk_token=__lowerCAmelCase , sep_token=__lowerCAmelCase , pad_token=__lowerCAmelCase , cls_token=__lowerCAmelCase , mask_token=__lowerCAmelCase , sp_model_kwargs=self.sp_model_kwargs , **__lowerCAmelCase , ) _lowercase = do_lower_case _lowercase = remove_space _lowercase = keep_accents _lowercase = vocab_file _lowercase = spm.SentencePieceProcessor(**self.sp_model_kwargs ) self.sp_model.Load(__lowerCAmelCase ) @property def _UpperCAmelCase ( self ): '''simple docstring''' return len(self.sp_model ) def _UpperCAmelCase ( self ): '''simple docstring''' _lowercase = {self.convert_ids_to_tokens(__lowerCAmelCase ): i for i in range(self.vocab_size )} vocab.update(self.added_tokens_encoder ) return vocab def __getstate__( self ): '''simple docstring''' _lowercase = self.__dict__.copy() _lowercase = None return state def __setstate__( self , UpperCAmelCase ): '''simple docstring''' _lowercase = d # for backward compatibility if not hasattr(self , """sp_model_kwargs""" ): _lowercase = {} _lowercase = spm.SentencePieceProcessor(**self.sp_model_kwargs ) self.sp_model.Load(self.vocab_file ) def _UpperCAmelCase ( self , UpperCAmelCase ): '''simple docstring''' if self.remove_space: _lowercase = ''' '''.join(inputs.strip().split() ) else: _lowercase = inputs _lowercase = outputs.replace("""``""" , """\"""" ).replace("""\'\'""" , """\"""" ) if not self.keep_accents: _lowercase = unicodedata.normalize("""NFKD""" , __lowerCAmelCase ) _lowercase = ''''''.join([c for c in outputs if not unicodedata.combining(__lowerCAmelCase )] ) if self.do_lower_case: _lowercase = outputs.lower() return outputs def _UpperCAmelCase ( self , UpperCAmelCase ): '''simple docstring''' _lowercase = self.preprocess_text(__lowerCAmelCase ) _lowercase = self.sp_model.encode(__lowerCAmelCase , out_type=__lowerCAmelCase ) _lowercase = [] for piece in pieces: if len(__lowerCAmelCase ) > 1 and piece[-1] == str(""",""" ) and piece[-2].isdigit(): _lowercase = self.sp_model.EncodeAsPieces(piece[:-1].replace(__lowerCAmelCase , """""" ) ) if piece[0] != SPIECE_UNDERLINE and cur_pieces[0][0] == SPIECE_UNDERLINE: if len(cur_pieces[0] ) == 1: _lowercase = cur_pieces[1:] else: _lowercase = cur_pieces[0][1:] cur_pieces.append(piece[-1] ) new_pieces.extend(__lowerCAmelCase ) else: new_pieces.append(__lowerCAmelCase ) return new_pieces def _UpperCAmelCase ( self , UpperCAmelCase ): '''simple docstring''' return self.sp_model.PieceToId(__lowerCAmelCase ) def _UpperCAmelCase ( self , UpperCAmelCase ): '''simple docstring''' return self.sp_model.IdToPiece(__lowerCAmelCase ) def _UpperCAmelCase ( self , UpperCAmelCase ): '''simple docstring''' _lowercase = [] _lowercase = '''''' _lowercase = False for token in tokens: # make sure that special tokens are not decoded using sentencepiece model if token in self.all_special_tokens: if not prev_is_special: out_string += " " out_string += self.sp_model.decode(__lowerCAmelCase ) + token _lowercase = True _lowercase = [] else: current_sub_tokens.append(__lowerCAmelCase ) _lowercase = False out_string += self.sp_model.decode(__lowerCAmelCase ) return out_string.strip() def _UpperCAmelCase ( self , UpperCAmelCase , UpperCAmelCase = None ): '''simple docstring''' _lowercase = [self.sep_token_id] _lowercase = [self.cls_token_id] if token_ids_a is None: return cls + token_ids_a + sep return cls + token_ids_a + sep + token_ids_a + sep def _UpperCAmelCase ( self , UpperCAmelCase , UpperCAmelCase = None , UpperCAmelCase = False ): '''simple docstring''' if already_has_special_tokens: return super().get_special_tokens_mask( token_ids_a=__lowerCAmelCase , token_ids_a=__lowerCAmelCase , already_has_special_tokens=__lowerCAmelCase ) if token_ids_a is not None: return [1] + ([0] * len(__lowerCAmelCase )) + [1] + ([0] * len(__lowerCAmelCase )) + [1] return [1] + ([0] * len(__lowerCAmelCase )) + [1] def _UpperCAmelCase ( self , UpperCAmelCase , UpperCAmelCase = None ): '''simple docstring''' _lowercase = [self.sep_token_id] _lowercase = [self.cls_token_id] if token_ids_a is None: return len(cls + token_ids_a + sep ) * [0] return len(cls + token_ids_a + sep ) * [0] + len(token_ids_a + sep ) * [1] def _UpperCAmelCase ( self , UpperCAmelCase , UpperCAmelCase = None ): '''simple docstring''' if not os.path.isdir(__lowerCAmelCase ): logger.error(F'''Vocabulary path ({save_directory}) should be a directory''' ) return _lowercase = os.path.join( __lowerCAmelCase , (filename_prefix + """-""" if filename_prefix else """""") + VOCAB_FILES_NAMES["""vocab_file"""] ) if os.path.abspath(self.vocab_file ) != os.path.abspath(__lowerCAmelCase ) and os.path.isfile(self.vocab_file ): copyfile(self.vocab_file , __lowerCAmelCase ) elif not os.path.isfile(self.vocab_file ): with open(__lowerCAmelCase , """wb""" ) as fi: _lowercase = self.sp_model.serialized_model_proto() fi.write(__lowerCAmelCase ) return (out_vocab_file,)
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import pyarrow.parquet as pq import pytest from datasets import Audio, Dataset, DatasetDict, Features, NamedSplit, Sequence, Value, config from datasets.features.image import Image from datasets.io.parquet import ParquetDatasetReader, ParquetDatasetWriter, get_writer_batch_size from ..utils import assert_arrow_memory_doesnt_increase, assert_arrow_memory_increases def __lowercase ( snake_case, snake_case ): """simple docstring""" assert isinstance(snake_case, snake_case ) assert dataset.num_rows == 4 assert dataset.num_columns == 3 assert dataset.column_names == ["col_1", "col_2", "col_3"] for feature, expected_dtype in expected_features.items(): assert dataset.features[feature].dtype == expected_dtype @pytest.mark.parametrize('''keep_in_memory''', [False, True] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :Tuple = tmp_path / '''cache''' __magic_name__ :int = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} with assert_arrow_memory_increases() if keep_in_memory else assert_arrow_memory_doesnt_increase(): __magic_name__ :Optional[Any] = ParquetDatasetReader(snake_case, cache_dir=snake_case, keep_in_memory=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) @pytest.mark.parametrize( '''features''', [ None, {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''}, {'''col_1''': '''string''', '''col_2''': '''string''', '''col_3''': '''string'''}, {'''col_1''': '''int32''', '''col_2''': '''int32''', '''col_3''': '''int32'''}, {'''col_1''': '''float32''', '''col_2''': '''float32''', '''col_3''': '''float32'''}, ], ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :List[str] = tmp_path / '''cache''' __magic_name__ :int = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :Tuple = features.copy() if features else default_expected_features __magic_name__ :Union[str, Any] = ( Features({feature: Value(snake_case ) for feature, dtype in features.items()} ) if features is not None else None ) __magic_name__ :int = ParquetDatasetReader(snake_case, features=snake_case, cache_dir=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) @pytest.mark.parametrize('''split''', [None, NamedSplit('''train''' ), '''train''', '''test'''] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :str = tmp_path / '''cache''' __magic_name__ :List[Any] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :int = ParquetDatasetReader(snake_case, cache_dir=snake_case, split=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) assert dataset.split == split if split else "train" @pytest.mark.parametrize('''path_type''', [str, list] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" if issubclass(snake_case, snake_case ): __magic_name__ :Union[str, Any] = parquet_path elif issubclass(snake_case, snake_case ): __magic_name__ :Union[str, Any] = [parquet_path] __magic_name__ :Optional[int] = tmp_path / '''cache''' __magic_name__ :Optional[int] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :str = ParquetDatasetReader(snake_case, cache_dir=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) def __lowercase ( snake_case, snake_case, snake_case=("train",) ): """simple docstring""" assert isinstance(snake_case, snake_case ) for split in splits: __magic_name__ :Optional[Any] = dataset_dict[split] assert dataset.num_rows == 4 assert dataset.num_columns == 3 assert dataset.column_names == ["col_1", "col_2", "col_3"] for feature, expected_dtype in expected_features.items(): assert dataset.features[feature].dtype == expected_dtype @pytest.mark.parametrize('''keep_in_memory''', [False, True] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :Any = tmp_path / '''cache''' __magic_name__ :Optional[int] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} with assert_arrow_memory_increases() if keep_in_memory else assert_arrow_memory_doesnt_increase(): __magic_name__ :Tuple = ParquetDatasetReader( {'''train''': parquet_path}, cache_dir=snake_case, keep_in_memory=snake_case ).read() _check_parquet_datasetdict(snake_case, snake_case ) @pytest.mark.parametrize( '''features''', [ None, {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''}, {'''col_1''': '''string''', '''col_2''': '''string''', '''col_3''': '''string'''}, {'''col_1''': '''int32''', '''col_2''': '''int32''', '''col_3''': '''int32'''}, {'''col_1''': '''float32''', '''col_2''': '''float32''', '''col_3''': '''float32'''}, ], ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :Optional[Any] = tmp_path / '''cache''' __magic_name__ :Dict = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :int = features.copy() if features else default_expected_features __magic_name__ :List[Any] = ( Features({feature: Value(snake_case ) for feature, dtype in features.items()} ) if features is not None else None ) __magic_name__ :Optional[int] = ParquetDatasetReader({'''train''': parquet_path}, features=snake_case, cache_dir=snake_case ).read() _check_parquet_datasetdict(snake_case, snake_case ) @pytest.mark.parametrize('''split''', [None, NamedSplit('''train''' ), '''train''', '''test'''] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" if split: __magic_name__ :Dict = {split: parquet_path} else: __magic_name__ :Optional[int] = '''train''' __magic_name__ :Dict = {'''train''': parquet_path, '''test''': parquet_path} __magic_name__ :List[Any] = tmp_path / '''cache''' __magic_name__ :Optional[Any] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :Optional[Any] = ParquetDatasetReader(snake_case, cache_dir=snake_case ).read() _check_parquet_datasetdict(snake_case, snake_case, splits=list(path.keys() ) ) assert all(dataset[split].split == split for split in path.keys() ) def __lowercase ( snake_case, snake_case ): """simple docstring""" __magic_name__ :str = ParquetDatasetWriter(snake_case, tmp_path / '''foo.parquet''' ) assert writer.write() > 0 __magic_name__ :List[Any] = pq.ParquetFile(tmp_path / '''foo.parquet''' ) __magic_name__ :List[Any] = pf.read() assert dataset.data.table == output_table def __lowercase ( snake_case, snake_case ): """simple docstring""" __magic_name__ :List[str] = str(shared_datadir / '''test_image_rgb.jpg''' ) __magic_name__ :Tuple = {'''image''': [image_path]} __magic_name__ :List[Any] = Features({'''image''': Image()} ) __magic_name__ :Tuple = Dataset.from_dict(snake_case, features=snake_case ) __magic_name__ :Union[str, Any] = ParquetDatasetWriter(snake_case, tmp_path / '''foo.parquet''' ) assert writer.write() > 0 __magic_name__ :List[str] = Dataset.from_parquet(str(tmp_path / '''foo.parquet''' ) ) assert dataset.features == reloaded_dataset.features __magic_name__ :List[str] = ParquetDatasetReader(str(tmp_path / '''foo.parquet''' ), streaming=snake_case ).read() assert dataset.features == reloaded_iterable_dataset.features @pytest.mark.parametrize( '''feature, expected''', [ (Features({'''foo''': Value('''int32''' )} ), None), (Features({'''image''': Image(), '''foo''': Value('''int32''' )} ), config.PARQUET_ROW_GROUP_SIZE_FOR_IMAGE_DATASETS), (Features({'''nested''': Sequence(Audio() )} ), config.PARQUET_ROW_GROUP_SIZE_FOR_AUDIO_DATASETS), ], ) def __lowercase ( snake_case, snake_case ): """simple docstring""" assert get_writer_batch_size(snake_case ) == expected
0
0
from typing import TYPE_CHECKING from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_flax_available, is_torch_available SCREAMING_SNAKE_CASE : List[str] = { """configuration_longt5""": ["""LONGT5_PRETRAINED_CONFIG_ARCHIVE_MAP""", """LongT5Config""", """LongT5OnnxConfig"""], } try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: SCREAMING_SNAKE_CASE : Optional[Any] = [ """LONGT5_PRETRAINED_MODEL_ARCHIVE_LIST""", """LongT5EncoderModel""", """LongT5ForConditionalGeneration""", """LongT5Model""", """LongT5PreTrainedModel""", ] try: if not is_flax_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: SCREAMING_SNAKE_CASE : List[str] = [ """FlaxLongT5ForConditionalGeneration""", """FlaxLongT5Model""", """FlaxLongT5PreTrainedModel""", ] if TYPE_CHECKING: from .configuration_longta import LONGT5_PRETRAINED_CONFIG_ARCHIVE_MAP, LongTaConfig, LongTaOnnxConfig try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_longta import ( LONGT5_PRETRAINED_MODEL_ARCHIVE_LIST, LongTaEncoderModel, LongTaForConditionalGeneration, LongTaModel, LongTaPreTrainedModel, ) try: if not is_flax_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_flax_longta import ( FlaxLongTaForConditionalGeneration, FlaxLongTaModel, FlaxLongTaPreTrainedModel, ) else: import sys SCREAMING_SNAKE_CASE : Dict = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
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def __lowercase ( snake_case ): """simple docstring""" if not isinstance(snake_case, snake_case ): raise ValueError('''multiplicative_persistence() only accepts integral values''' ) if num < 0: raise ValueError('''multiplicative_persistence() does not accept negative values''' ) __magic_name__ :str = 0 __magic_name__ :Dict = str(snake_case ) while len(snake_case ) != 1: __magic_name__ :Optional[Any] = [int(snake_case ) for i in num_string] __magic_name__ :Dict = 1 for i in range(0, len(snake_case ) ): total *= numbers[i] __magic_name__ :int = str(snake_case ) steps += 1 return steps def __lowercase ( snake_case ): """simple docstring""" if not isinstance(snake_case, snake_case ): raise ValueError('''additive_persistence() only accepts integral values''' ) if num < 0: raise ValueError('''additive_persistence() does not accept negative values''' ) __magic_name__ :str = 0 __magic_name__ :Union[str, Any] = str(snake_case ) while len(snake_case ) != 1: __magic_name__ :str = [int(snake_case ) for i in num_string] __magic_name__ :Optional[int] = 0 for i in range(0, len(snake_case ) ): total += numbers[i] __magic_name__ :int = str(snake_case ) steps += 1 return steps if __name__ == "__main__": import doctest doctest.testmod()
0
0
from typing import TYPE_CHECKING from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_torch_available _lowerCamelCase ={ """configuration_x_clip""": [ """XCLIP_PRETRAINED_CONFIG_ARCHIVE_MAP""", """XCLIPConfig""", """XCLIPTextConfig""", """XCLIPVisionConfig""", ], """processing_x_clip""": ["""XCLIPProcessor"""], } try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: _lowerCamelCase =[ """XCLIP_PRETRAINED_MODEL_ARCHIVE_LIST""", """XCLIPModel""", """XCLIPPreTrainedModel""", """XCLIPTextModel""", """XCLIPVisionModel""", ] if TYPE_CHECKING: from .configuration_x_clip import ( XCLIP_PRETRAINED_CONFIG_ARCHIVE_MAP, XCLIPConfig, XCLIPTextConfig, XCLIPVisionConfig, ) from .processing_x_clip import XCLIPProcessor try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_x_clip import ( XCLIP_PRETRAINED_MODEL_ARCHIVE_LIST, XCLIPModel, XCLIPPreTrainedModel, XCLIPTextModel, XCLIPVisionModel, ) else: import sys _lowerCamelCase =_LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
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import math import os import re import sys import unittest from pathlib import Path from typing import Tuple from unittest.mock import patch from parameterized import parameterized from transformers.testing_utils import ( CaptureStderr, ExtendSysPath, TestCasePlus, execute_subprocess_async, get_gpu_count, get_torch_dist_unique_port, require_apex, require_bitsandbytes, require_fairscale, require_torch, require_torch_gpu, require_torch_multi_gpu, require_torch_non_multi_gpu, slow, ) from transformers.trainer_callback import TrainerState from transformers.trainer_utils import set_seed SCREAMING_SNAKE_CASE__ : List[Any] = os.path.abspath(os.path.dirname(__file__)) with ExtendSysPath(f"{bindir}/../../examples/pytorch/translation"): from run_translation import main # noqa set_seed(42) SCREAMING_SNAKE_CASE__ : Optional[Any] = """sshleifer/student_marian_en_ro_6_1""" SCREAMING_SNAKE_CASE__ : List[Any] = """sshleifer/tiny-mbart""" @require_torch class lowerCamelCase_ ( lowerCamelCase ): def A ( self , __lowerCAmelCase=False , __lowerCAmelCase=None , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , ): """simple docstring""" __magic_name__ :List[Any] = self.run_trainer( eval_steps=1 , max_len=1_2 , model_name=__lowerCAmelCase , num_train_epochs=1 , distributed=__lowerCAmelCase , extra_args_str=__lowerCAmelCase , predict_with_generate=__lowerCAmelCase , do_train=__lowerCAmelCase , do_eval=__lowerCAmelCase , do_predict=__lowerCAmelCase , ) __magic_name__ :Any = TrainerState.load_from_json(os.path.join(__lowerCAmelCase , '''trainer_state.json''' ) ).log_history if not do_eval: return __magic_name__ :Any = [log for log in logs if '''eval_loss''' in log.keys()] __magic_name__ :str = eval_metrics[0] if predict_with_generate: assert "eval_bleu" in first_step_stats __magic_name__ :Tuple = eval_metrics[-1] assert isinstance(last_step_stats['''eval_bleu'''] , __lowerCAmelCase ) assert not math.isnan(float(last_step_stats['''eval_loss'''] ) ), "eval_loss must not be `nan`" @require_torch_non_multi_gpu def A ( self ): """simple docstring""" self.run_seqaseq_quick() @require_torch_multi_gpu def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase ) @require_torch_multi_gpu def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp simple''' ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp simple --fp16''' ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp zero_dp_2''' , predict_with_generate=__lowerCAmelCase ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick( distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp zero_dp_2 --fp16''' , predict_with_generate=__lowerCAmelCase ) @require_apex @require_torch_gpu def A ( self ): """simple docstring""" # XXX: apex breaks the trainer if it's run twice e.g. run_seq2seq.main() from the same # program and it breaks other tests that run from the same pytest worker, therefore until this is # sorted out it must be run only in an external program, that is distributed=True in this # test and only under one or more gpus - if we want cpu will need to make a special test # # specifically to the problem traced it to self.optimizer.step() - if it's run 2nd time via # 2nd main() call it botches the future eval. # self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--fp16 --fp16_backend=apex''' ) # test 2nd time - was getting eval_loss': nan' # to reproduce the problem set distributed=False self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--fp16 --fp16_backend=apex''' ) @parameterized.expand(['''base''', '''low''', '''high''', '''mixed'''] ) @require_torch_multi_gpu def A ( self , __lowerCAmelCase ): """simple docstring""" # as each sub-test is slow-ish split into multiple sub-tests to avoid CI timeout __magic_name__ :Any = { # test with the default log_level - should be info and thus log info once '''base''': {'''extra_args_str''': '''''', '''n_matches''': 1}, # test with low log_level and log_level_replica - should be noisy on all processes # now the info string should appear twice on 2 processes '''low''': {'''extra_args_str''': '''--log_level debug --log_level_replica debug''', '''n_matches''': 2}, # test with high log_level and low log_level_replica # now the info string should appear once only on the replica '''high''': {'''extra_args_str''': '''--log_level error --log_level_replica debug''', '''n_matches''': 1}, # test with high log_level and log_level_replica - should be quiet on all processes '''mixed''': {'''extra_args_str''': '''--log_level error --log_level_replica error''', '''n_matches''': 0}, } __magic_name__ :Optional[Any] = experiments[experiment_id] __magic_name__ :List[Any] = {'''distributed''': True, '''predict_with_generate''': False, '''do_eval''': False, '''do_predict''': False} __magic_name__ :Optional[int] = '''Running training''' with CaptureStderr() as cl: self.run_seqaseq_quick(**__lowerCAmelCase , extra_args_str=data['''extra_args_str'''] ) __magic_name__ :int = len(re.findall(__lowerCAmelCase , cl.err ) ) self.assertEqual(__lowerCAmelCase , data['''n_matches'''] ) @slow def A ( self ): """simple docstring""" __magic_name__ :List[str] = self.run_trainer( eval_steps=2 , max_len=1_2_8 , model_name=__lowerCAmelCase , learning_rate=3E-4 , num_train_epochs=1_0 , distributed=__lowerCAmelCase , ) # Check metrics __magic_name__ :Optional[int] = TrainerState.load_from_json(os.path.join(__lowerCAmelCase , '''trainer_state.json''' ) ).log_history __magic_name__ :List[str] = [log for log in logs if '''eval_loss''' in log.keys()] __magic_name__ :Any = eval_metrics[0] __magic_name__ :int = eval_metrics[-1] assert first_step_stats["eval_loss"] > last_step_stats["eval_loss"], "model learned nothing" assert isinstance(last_step_stats['''eval_bleu'''] , __lowerCAmelCase ) # test if do_predict saves generations and metrics __magic_name__ :List[Any] = os.listdir(__lowerCAmelCase ) __magic_name__ :List[str] = {os.path.basename(__lowerCAmelCase ) for p in contents} assert "generated_predictions.txt" in contents assert "predict_results.json" in contents @slow @require_bitsandbytes def A ( self ): """simple docstring""" from transformers.training_args import OptimizerNames def train_and_return_metrics(__lowerCAmelCase ) -> Tuple[int, float]: __magic_name__ :str = '''--skip_memory_metrics 0''' __magic_name__ :Dict = self.run_trainer( max_len=1_2_8 , model_name=__lowerCAmelCase , learning_rate=3E-4 , num_train_epochs=1 , optim=__lowerCAmelCase , distributed=__lowerCAmelCase , extra_args_str=__lowerCAmelCase , do_eval=__lowerCAmelCase , do_predict=__lowerCAmelCase , n_gpus_to_use=1 , ) # Check metrics __magic_name__ :Optional[Any] = TrainerState.load_from_json(Path(__lowerCAmelCase , '''trainer_state.json''' ) ).log_history __magic_name__ :int = int(logs[0]['''train_mem_gpu_peaked_delta'''] / 2**2_0 ) __magic_name__ :Optional[Any] = int(logs[0]['''train_mem_gpu_alloc_delta'''] / 2**2_0 ) __magic_name__ :Any = logs[0]['''train_loss'''] return gpu_peak_mem_mb, gpu_alloc_mem_mb, loss __magic_name__ , __magic_name__ , __magic_name__ :int = train_and_return_metrics(OptimizerNames.ADAMW_TORCH.value ) __magic_name__ , __magic_name__ , __magic_name__ :Tuple = train_and_return_metrics(OptimizerNames.ADAMW_BNB.value ) __magic_name__ :Tuple = gpu_alloc_mem_orig - gpu_alloc_mem_bnb __magic_name__ :Tuple = gpu_peak_mem_orig + gpu_alloc_mem_orig __magic_name__ :List[Any] = gpu_peak_mem_bnb + gpu_alloc_mem_bnb __magic_name__ :Optional[int] = gpu_total_mem_orig - gpu_total_mem_bnb # sshleifer/student_marian_en_ro_6_1 has 54M parameter, 29M of which is `nn.Embedding` which # doesn't get quantized and remains in fp32. Therefore we only have 25M parameters quantized # in 2 bytes and the diff in optim memory usage is derived as so: # # - normal 25*8=~200MB (8 bytes per param) # - bnb 25*2= ~50MB (2 bytes per param) # # Thus we should expect ~150MB total memory saved. # # Peak memory should be the same - the total should be different by about that same margin # # After leaving a small margin to accommodate for differences between gpus let's check # that we have at least 120MB in savings __magic_name__ :Optional[Any] = 1_2_0 # uncomment the following if this test starts failing - requires py38 for a new print feature # gpu_peak_mem_diff = gpu_peak_mem_orig - gpu_peak_mem_bnb # print(f"{gpu_alloc_mem_orig=}MB {gpu_peak_mem_orig=}MB {gpu_alloc_mem_orig+gpu_peak_mem_orig=}MB") # print(f" {gpu_alloc_mem_bnb=}MB {gpu_peak_mem_bnb=}MB {gpu_alloc_mem_bnb+gpu_peak_mem_bnb=}MB") # print(f"{gpu_alloc_mem_diff=}MB") # print(f"{gpu_peak_mem_diff=}MB") # print(f"{gpu_total_mem_orig=}MB, {gpu_total_mem_bnb=}MB") # print(f"{gpu_total_mem_diff=}MB, {gpu_total_mem_diff=}MB") self.assertGreater( __lowerCAmelCase , __lowerCAmelCase , '''should use ~150MB less alloc gpu memory with BNB, compared to without it for this model but got''' F''' a difference of {gpu_alloc_mem_diff}MB, with gpu_alloc_mem_orig={gpu_alloc_mem_orig}MB and''' F''' gpu_alloc_mem_bnb={gpu_alloc_mem_bnb}MB''' , ) self.assertGreater( __lowerCAmelCase , __lowerCAmelCase , '''should use ~150MB less total gpu memory with BNB, compared to without it for this model but got''' F''' a difference of {gpu_total_mem_diff}MB, with gpu_total_mem_orig={gpu_total_mem_orig}MB and''' F''' gpu_total_mem_bnb={gpu_total_mem_bnb}MB''' , ) self.assertEqual( __lowerCAmelCase , __lowerCAmelCase , F'''loss should be the same, but got loss_orig={loss_orig}, loss_bnb={loss_bnb}''' ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase = 3E-3 , __lowerCAmelCase = "adafactor" , __lowerCAmelCase = False , __lowerCAmelCase = None , __lowerCAmelCase = 0 , __lowerCAmelCase = True , __lowerCAmelCase = True , __lowerCAmelCase = True , __lowerCAmelCase = True , __lowerCAmelCase = None , ): """simple docstring""" __magic_name__ :int = self.test_file_dir / '''../fixtures/tests_samples/wmt_en_ro''' __magic_name__ :Dict = self.get_auto_remove_tmp_dir() __magic_name__ :Tuple = F''' --model_name_or_path {model_name} --train_file {data_dir}/train.json --validation_file {data_dir}/val.json --test_file {data_dir}/test.json --output_dir {output_dir} --overwrite_output_dir --max_train_samples 8 --max_source_length {max_len} --max_target_length {max_len} --do_train --num_train_epochs {str(__lowerCAmelCase )} --per_device_train_batch_size 4 --learning_rate {learning_rate} --warmup_steps 8 --logging_steps 0 --logging_strategy no --save_steps {str(__lowerCAmelCase )} --group_by_length --label_smoothing_factor 0.1 --target_lang ro_RO --source_lang en_XX '''.split() __magic_name__ :str = F''' --do_eval --per_device_eval_batch_size 4 --max_eval_samples 8 --val_max_target_length {max_len} --evaluation_strategy steps --eval_steps {str(__lowerCAmelCase )} '''.split() __magic_name__ :Dict = ''' --do_predict '''.split() __magic_name__ :Optional[int] = [] if do_train: args += args_train if do_eval: args += args_eval if do_predict: args += args_predict if predict_with_generate: args += "--predict_with_generate".split() if do_train: if optim == "adafactor": args += "--adafactor".split() else: args += F'''--optim {optim}'''.split() if extra_args_str is not None: args += extra_args_str.split() if distributed: if n_gpus_to_use is None: __magic_name__ :List[Any] = get_gpu_count() __magic_name__ :Tuple = get_torch_dist_unique_port() __magic_name__ :Union[str, Any] = F''' -m torch.distributed.run --nproc_per_node={n_gpus_to_use} --master_port={master_port} {self.examples_dir_str}/pytorch/translation/run_translation.py '''.split() __magic_name__ :Any = [sys.executable] + distributed_args + args # keep for quick debug # print(" ".join([f"\nPYTHONPATH={self.src_dir_str}"] +cmd)); die execute_subprocess_async(__lowerCAmelCase , env=self.get_env() ) else: __magic_name__ :List[Any] = ['''run_translation.py'''] + args with patch.object(__lowerCAmelCase , '''argv''' , __lowerCAmelCase ): main() return output_dir
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'''simple docstring''' import unittest from transformers import GPTNeoXJapaneseConfig, is_torch_available from transformers.models.gpt_neox_japanese.tokenization_gpt_neox_japanese import GPTNeoXJapaneseTokenizer from transformers.testing_utils import require_torch, slow, torch_device from ...test_configuration_common import ConfigTester from ...test_modeling_common import ModelTesterMixin, ids_tensor, random_attention_mask from ...test_pipeline_mixin import PipelineTesterMixin if is_torch_available(): import torch from transformers import GPTNeoXJapaneseForCausalLM, GPTNeoXJapaneseModel class _snake_case : def __init__( self , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE=13 , _SCREAMING_SNAKE_CASE=7 , _SCREAMING_SNAKE_CASE=True , _SCREAMING_SNAKE_CASE=True , _SCREAMING_SNAKE_CASE=True , _SCREAMING_SNAKE_CASE=True , _SCREAMING_SNAKE_CASE=99 , _SCREAMING_SNAKE_CASE=32 , _SCREAMING_SNAKE_CASE=5 , _SCREAMING_SNAKE_CASE=4 , _SCREAMING_SNAKE_CASE=4 , _SCREAMING_SNAKE_CASE="gelu" , _SCREAMING_SNAKE_CASE=0.0 , _SCREAMING_SNAKE_CASE=0.1 , _SCREAMING_SNAKE_CASE=True , _SCREAMING_SNAKE_CASE=5_12 , _SCREAMING_SNAKE_CASE=16 , _SCREAMING_SNAKE_CASE=2 , _SCREAMING_SNAKE_CASE=0.02 , _SCREAMING_SNAKE_CASE=3 , _SCREAMING_SNAKE_CASE=4 , _SCREAMING_SNAKE_CASE=None , ): '''simple docstring''' lowerCAmelCase = parent lowerCAmelCase = batch_size lowerCAmelCase = seq_length lowerCAmelCase = is_training lowerCAmelCase = use_input_mask lowerCAmelCase = use_token_type_ids lowerCAmelCase = use_labels lowerCAmelCase = vocab_size lowerCAmelCase = hidden_size lowerCAmelCase = num_hidden_layers lowerCAmelCase = num_attention_heads lowerCAmelCase = intermediate_multiple_size lowerCAmelCase = hidden_act lowerCAmelCase = hidden_dropout lowerCAmelCase = attention_dropout lowerCAmelCase = weight_tying lowerCAmelCase = max_position_embeddings lowerCAmelCase = type_vocab_size lowerCAmelCase = type_sequence_label_size lowerCAmelCase = initializer_range lowerCAmelCase = num_labels lowerCAmelCase = num_choices lowerCAmelCase = scope def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = ids_tensor([self.batch_size, self.seq_length] , self.vocab_size ) lowerCAmelCase = None if self.use_input_mask: lowerCAmelCase = random_attention_mask([self.batch_size, self.seq_length] ) lowerCAmelCase = None if self.use_labels: lowerCAmelCase = ids_tensor([self.batch_size, self.seq_length] , self.num_labels ) lowerCAmelCase = self.get_config() return config, input_ids, input_mask, token_labels def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' return GPTNeoXJapaneseConfig( vocab_size=self.vocab_size , hidden_size=self.hidden_size , num_hidden_layers=self.num_hidden_layers , num_attention_heads=self.num_attention_heads , intermediate_multiple_size=self.intermediate_multiple_size , hidden_act=self.hidden_act , hidden_dropout=self.hidden_dropout , attention_dropout=self.attention_dropout , weight_tying=self.weight_tying , max_position_embeddings=self.max_position_embeddings , type_vocab_size=self.type_vocab_size , is_decoder=__lowerCAmelCase , initializer_range=self.initializer_range , ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = self.prepare_config_and_inputs() lowerCAmelCase = True return config, input_ids, input_mask, token_labels def _SCREAMING_SNAKE_CASE ( self , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE ): '''simple docstring''' lowerCAmelCase = GPTNeoXJapaneseModel(config=__lowerCAmelCase ) model.to(__lowerCAmelCase ) model.eval() lowerCAmelCase = model(__lowerCAmelCase , attention_mask=__lowerCAmelCase ) lowerCAmelCase = model(__lowerCAmelCase ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, self.seq_length, self.hidden_size) ) def _SCREAMING_SNAKE_CASE ( self , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE ): '''simple docstring''' lowerCAmelCase = True lowerCAmelCase = GPTNeoXJapaneseModel(__lowerCAmelCase ) model.to(__lowerCAmelCase ) model.eval() lowerCAmelCase = model(__lowerCAmelCase , attention_mask=__lowerCAmelCase ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, self.seq_length, self.hidden_size) ) def _SCREAMING_SNAKE_CASE ( self , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE ): '''simple docstring''' lowerCAmelCase = GPTNeoXJapaneseForCausalLM(config=__lowerCAmelCase ) model.to(__lowerCAmelCase ) model.eval() lowerCAmelCase = model(__lowerCAmelCase , attention_mask=__lowerCAmelCase , labels=__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) def _SCREAMING_SNAKE_CASE ( self , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE ): '''simple docstring''' lowerCAmelCase = True lowerCAmelCase = GPTNeoXJapaneseForCausalLM(config=__lowerCAmelCase ) model.to(__lowerCAmelCase ) model.eval() # first forward pass lowerCAmelCase = model(__lowerCAmelCase , attention_mask=__lowerCAmelCase , use_cache=__lowerCAmelCase ) lowerCAmelCase = outputs.past_key_values # create hypothetical multiple next token and extent to next_input_ids lowerCAmelCase = ids_tensor((self.batch_size, 3) , config.vocab_size ) lowerCAmelCase = ids_tensor((self.batch_size, 3) , vocab_size=2 ) # append to next input_ids and lowerCAmelCase = torch.cat([input_ids, next_tokens] , dim=-1 ) lowerCAmelCase = torch.cat([input_mask, next_mask] , dim=-1 ) lowerCAmelCase = model(__lowerCAmelCase , attention_mask=__lowerCAmelCase , output_hidden_states=__lowerCAmelCase ) lowerCAmelCase = output_from_no_past['''hidden_states'''][0] lowerCAmelCase = model( __lowerCAmelCase , attention_mask=__lowerCAmelCase , past_key_values=__lowerCAmelCase , output_hidden_states=__lowerCAmelCase , )['''hidden_states'''][0] # select random slice lowerCAmelCase = ids_tensor((1,) , output_from_past.shape[-1] ).item() lowerCAmelCase = output_from_no_past[:, -3:, random_slice_idx].detach() lowerCAmelCase = output_from_past[:, :, random_slice_idx].detach() self.parent.assertTrue(output_from_past_slice.shape[1] == next_tokens.shape[1] ) # test that outputs are equal for slice self.parent.assertTrue(torch.allclose(__lowerCAmelCase , __lowerCAmelCase , atol=1e-3 ) ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = self.prepare_config_and_inputs() lowerCAmelCase = config_and_inputs lowerCAmelCase = {'''input_ids''': input_ids, '''attention_mask''': input_mask} return config, inputs_dict @require_torch class _snake_case ( a_ , a_ , unittest.TestCase ): SCREAMING_SNAKE_CASE : List[Any] = (GPTNeoXJapaneseModel, GPTNeoXJapaneseForCausalLM) if is_torch_available() else () SCREAMING_SNAKE_CASE : List[Any] = (GPTNeoXJapaneseForCausalLM,) if is_torch_available() else () SCREAMING_SNAKE_CASE : Tuple = ( {'''feature-extraction''': GPTNeoXJapaneseModel, '''text-generation''': GPTNeoXJapaneseForCausalLM} if is_torch_available() else {} ) SCREAMING_SNAKE_CASE : List[Any] = False SCREAMING_SNAKE_CASE : List[Any] = False SCREAMING_SNAKE_CASE : Dict = False SCREAMING_SNAKE_CASE : List[Any] = False def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = GPTNeoXJapaneseModelTester(self ) lowerCAmelCase = ConfigTester(self , config_class=__lowerCAmelCase , hidden_size=37 ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' self.config_tester.run_common_tests() def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_model(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = self.model_tester.prepare_config_and_inputs_for_decoder() self.model_tester.create_and_check_model_as_decoder(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = self.model_tester.prepare_config_and_inputs_for_decoder() lowerCAmelCase = None self.model_tester.create_and_check_model_as_decoder(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_decoder_model_past_large_inputs(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_causal_lm(*__lowerCAmelCase ) @slow def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' lowerCAmelCase = '''abeja/gpt-neox-japanese-2.7b''' lowerCAmelCase = ['''データサイエンティストとは、''', '''100年後に必要とされる会社は、''', '''フルリモートの環境で働くために必要なことは、''', '''国境の長いトンネルを抜けると''', '''美味しい日本食といえば、'''] lowerCAmelCase = [ '''データサイエンティストとは、データを分析し、ビジネスに役立つ知見を導き出す専門家のことです。''', '''100年後に必要とされる会社は、「人」が中心の会社です。''', '''フルリモートの環境で働くために必要なことは、「自分の時間をコントロールする」ことです。''', '''国境の長いトンネルを抜けると、そこは雪国だった。''', '''美味しい日本食といえば、やっぱりお寿司ですよね。''', ] lowerCAmelCase = GPTNeoXJapaneseTokenizer.from_pretrained(__lowerCAmelCase ) lowerCAmelCase = GPTNeoXJapaneseForCausalLM.from_pretrained(__lowerCAmelCase ) lowerCAmelCase = [] for prompt in prompts: lowerCAmelCase = tokenizer(__lowerCAmelCase , return_tensors='pt' ).input_ids lowerCAmelCase = model.generate(__lowerCAmelCase , max_length=50 ) lowerCAmelCase = tokenizer.batch_decode(__lowerCAmelCase , skip_special_tokens=__lowerCAmelCase ) predicted_outputs += generated_string self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase )
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import sys SCREAMING_SNAKE_CASE__ : Optional[Any] = ( """73167176531330624919225119674426574742355349194934""" """96983520312774506326239578318016984801869478851843""" """85861560789112949495459501737958331952853208805511""" """12540698747158523863050715693290963295227443043557""" """66896648950445244523161731856403098711121722383113""" """62229893423380308135336276614282806444486645238749""" """30358907296290491560440772390713810515859307960866""" """70172427121883998797908792274921901699720888093776""" """65727333001053367881220235421809751254540594752243""" """52584907711670556013604839586446706324415722155397""" """53697817977846174064955149290862569321978468622482""" """83972241375657056057490261407972968652414535100474""" """82166370484403199890008895243450658541227588666881""" """16427171479924442928230863465674813919123162824586""" """17866458359124566529476545682848912883142607690042""" """24219022671055626321111109370544217506941658960408""" """07198403850962455444362981230987879927244284909188""" """84580156166097919133875499200524063689912560717606""" """05886116467109405077541002256983155200055935729725""" """71636269561882670428252483600823257530420752963450""" ) def __lowercase ( snake_case = N ): """simple docstring""" __magic_name__ :Optional[int] = -sys.maxsize - 1 for i in range(len(snake_case ) - 1_2 ): __magic_name__ :List[Any] = 1 for j in range(1_3 ): product *= int(n[i + j] ) if product > largest_product: __magic_name__ :str = product return largest_product if __name__ == "__main__": print(f"{solution() = }")
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0
from __future__ import annotations from collections.abc import Callable from typing import Generic, TypeVar snake_case__ : str = TypeVar('T') snake_case__ : int = TypeVar('U') class SCREAMING_SNAKE_CASE_ (Generic[T, U] ): '''simple docstring''' def __init__( self : Dict , __a : List[Any] , __a : Optional[int] ) ->Union[str, Any]: lowerCamelCase_ : Tuple = key lowerCamelCase_ : List[str] = val lowerCamelCase_ : DoubleLinkedListNode[T, U] | None = None lowerCamelCase_ : DoubleLinkedListNode[T, U] | None = None def __repr__( self : Any ) ->Optional[int]: return ( F'''Node: key: {self.key}, val: {self.val}, ''' F'''has next: {bool(self.next )}, has prev: {bool(self.prev )}''' ) class SCREAMING_SNAKE_CASE_ (Generic[T, U] ): '''simple docstring''' def __init__( self : List[Any] ) ->Any: lowerCamelCase_ : DoubleLinkedListNode[T, U] = DoubleLinkedListNode(__lowerCAmelCase , __lowerCAmelCase ) lowerCamelCase_ : DoubleLinkedListNode[T, U] = DoubleLinkedListNode(__lowerCAmelCase , __lowerCAmelCase ) lowerCamelCase_ : Union[str, Any] = self.rear, self.head def __repr__( self : Optional[Any] ) ->int: lowerCamelCase_ : Any = ['''DoubleLinkedList'''] lowerCamelCase_ : Any = self.head while node.next is not None: rep.append(str(__lowerCAmelCase ) ) lowerCamelCase_ : Optional[int] = node.next rep.append(str(self.rear ) ) return ",\n ".join(__lowerCAmelCase ) def _lowerCAmelCase ( self : Any , __a : List[Any] ) ->Optional[int]: lowerCamelCase_ : List[Any] = self.rear.prev # All nodes other than self.head are guaranteed to have non-None previous assert previous is not None lowerCamelCase_ : str = node lowerCamelCase_ : str = previous lowerCamelCase_ : Dict = node lowerCamelCase_ : Optional[Any] = self.rear def _lowerCAmelCase ( self : Optional[Any] , __a : Optional[int] ) ->Union[str, Any]: if node.prev is None or node.next is None: return None lowerCamelCase_ : str = node.next lowerCamelCase_ : Any = node.prev lowerCamelCase_ : int = None lowerCamelCase_ : List[str] = None return node class SCREAMING_SNAKE_CASE_ (Generic[T, U] ): '''simple docstring''' _a = {} def __init__( self : str , __a : Optional[int] ) ->Optional[int]: lowerCamelCase_ : DoubleLinkedList[T, U] = DoubleLinkedList() lowerCamelCase_ : Dict = capacity lowerCamelCase_ : Union[str, Any] = 0 lowerCamelCase_ : Dict = 0 lowerCamelCase_ : Optional[Any] = 0 lowerCamelCase_ : dict[T, DoubleLinkedListNode[T, U]] = {} def __repr__( self : str ) ->int: return ( F'''CacheInfo(hits={self.hits}, misses={self.miss}, ''' F'''capacity={self.capacity}, current size={self.num_keys})''' ) def __contains__( self : Tuple , __a : str ) ->List[str]: return key in self.cache def _lowerCAmelCase ( self : Optional[int] , __a : List[Any] ) ->List[Any]: # Note: pythonic interface would throw KeyError rather than return None if key in self.cache: self.hits += 1 lowerCamelCase_ : DoubleLinkedListNode[T, U] = self.cache[key] lowerCamelCase_ : int = self.list.remove(self.cache[key] ) assert node == value_node # node is guaranteed not None because it is in self.cache assert node is not None self.list.add(__lowerCAmelCase ) return node.val self.miss += 1 return None def _lowerCAmelCase ( self : Dict , __a : int , __a : Any ) ->Union[str, Any]: if key not in self.cache: if self.num_keys >= self.capacity: # delete first node (oldest) when over capacity lowerCamelCase_ : Union[str, Any] = self.list.head.next # guaranteed to have a non-None first node when num_keys > 0 # explain to type checker via assertions assert first_node is not None assert first_node.key is not None assert ( self.list.remove(__lowerCAmelCase ) is not None ) # node guaranteed to be in list assert node.key is not None del self.cache[first_node.key] self.num_keys -= 1 lowerCamelCase_ : List[Any] = DoubleLinkedListNode(__lowerCAmelCase , __lowerCAmelCase ) self.list.add(self.cache[key] ) self.num_keys += 1 else: # bump node to the end of the list, update value lowerCamelCase_ : str = self.list.remove(self.cache[key] ) assert node is not None # node guaranteed to be in list lowerCamelCase_ : Any = value self.list.add(__lowerCAmelCase ) @classmethod def _lowerCAmelCase ( cls : str , __a : str = 128 ) ->Dict: def cache_decorator_inner(__a : List[str] ) -> Callable[..., U]: def cache_decorator_wrapper(*__a : Union[str, Any] ) -> U: if func not in cls.decorator_function_to_instance_map: lowerCamelCase_ : List[str] = LRUCache(__lowerCAmelCase ) lowerCamelCase_ : Optional[Any] = cls.decorator_function_to_instance_map[func].get(args[0] ) if result is None: lowerCamelCase_ : Optional[Any] = func(*__lowerCAmelCase ) cls.decorator_function_to_instance_map[func].put(args[0] , __lowerCAmelCase ) return result def cache_info() -> LRUCache[T, U]: return cls.decorator_function_to_instance_map[func] setattr(__lowerCAmelCase , """cache_info""" , __lowerCAmelCase ) # noqa: B010 return cache_decorator_wrapper return cache_decorator_inner if __name__ == "__main__": import doctest doctest.testmod()
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SCREAMING_SNAKE_CASE__ : Tuple = { """a""": """AAAAA""", """b""": """AAAAB""", """c""": """AAABA""", """d""": """AAABB""", """e""": """AABAA""", """f""": """AABAB""", """g""": """AABBA""", """h""": """AABBB""", """i""": """ABAAA""", """j""": """BBBAA""", """k""": """ABAAB""", """l""": """ABABA""", """m""": """ABABB""", """n""": """ABBAA""", """o""": """ABBAB""", """p""": """ABBBA""", """q""": """ABBBB""", """r""": """BAAAA""", """s""": """BAAAB""", """t""": """BAABA""", """u""": """BAABB""", """v""": """BBBAB""", """w""": """BABAA""", """x""": """BABAB""", """y""": """BABBA""", """z""": """BABBB""", """ """: """ """, } SCREAMING_SNAKE_CASE__ : Union[str, Any] = {value: key for key, value in encode_dict.items()} def __lowercase ( snake_case ): """simple docstring""" __magic_name__ :Tuple = '''''' for letter in word.lower(): if letter.isalpha() or letter == " ": encoded += encode_dict[letter] else: raise Exception('''encode() accepts only letters of the alphabet and spaces''' ) return encoded def __lowercase ( snake_case ): """simple docstring""" if set(snake_case ) - {"A", "B", " "} != set(): raise Exception('''decode() accepts only \'A\', \'B\' and spaces''' ) __magic_name__ :Dict = '''''' for word in coded.split(): while len(snake_case ) != 0: decoded += decode_dict[word[:5]] __magic_name__ :int = word[5:] decoded += " " return decoded.strip() if __name__ == "__main__": from doctest import testmod testmod()
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0
# Lint as: python3 import dataclasses import re from dataclasses import dataclass from functools import total_ordering from typing import Optional, Union lowerCAmelCase = re.compile(R'''^(?P<major>\d+)''' R'''\.(?P<minor>\d+)''' R'''\.(?P<patch>\d+)$''') @total_ordering @dataclass class A : UpperCamelCase_ : Union[str, Any] =42 UpperCamelCase_ : Any =None UpperCamelCase_ : Any =None UpperCamelCase_ : int =None UpperCamelCase_ : Any =None def _A (self ): __lowercase= _str_to_version_tuple(self.version_str ) def __repr__(self ): return f'{self.tuple[0]}.{self.tuple[1]}.{self.tuple[2]}' @property def _A (self ): return self.major, self.minor, self.patch def _A (self , lowerCAmelCase ): if isinstance(__lowerCAmelCase , __lowerCAmelCase ): return Version(__lowerCAmelCase ) elif isinstance(__lowerCAmelCase , __lowerCAmelCase ): return other raise TypeError(f'{other} (type {type(__lowerCAmelCase )}) cannot be compared to version.' ) def __eq__(self , lowerCAmelCase ): try: __lowercase= self._validate_operand(__lowerCAmelCase ) except (TypeError, ValueError): return False else: return self.tuple == other.tuple def __lt__(self , lowerCAmelCase ): __lowercase= self._validate_operand(__lowerCAmelCase ) return self.tuple < other.tuple def __hash__(self ): return hash(_version_tuple_to_str(self.tuple ) ) @classmethod def _A (cls , lowerCAmelCase ): __lowercase= {f.name for f in dataclasses.fields(cls )} return cls(**{k: v for k, v in dic.items() if k in field_names} ) def _A (self ): return self.version_str def _lowerCamelCase( lowercase__ ) -> Dict: '''simple docstring''' __lowercase= _VERSION_REG.match(lowercase__ ) if not res: raise ValueError(F'Invalid version \'{version_str}\'. Format should be x.y.z with {{x,y,z}} being digits.' ) return tuple(int(lowercase__ ) for v in [res.group('major' ), res.group('minor' ), res.group('patch' )] ) def _lowerCamelCase( lowercase__ ) -> int: '''simple docstring''' return ".".join(str(lowercase__ ) for v in version_tuple )
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import argparse import torch from torch import nn from transformers import MaMaaaConfig, MaMaaaForConditionalGeneration def __lowercase ( snake_case ): """simple docstring""" __magic_name__ :Optional[Any] = [ '''encoder.version''', '''decoder.version''', '''model.encoder.version''', '''model.decoder.version''', '''decoder.output_projection.weight''', '''_float_tensor''', '''encoder.embed_positions._float_tensor''', '''decoder.embed_positions._float_tensor''', ] for k in ignore_keys: state_dict.pop(snake_case, snake_case ) def __lowercase ( snake_case ): """simple docstring""" __magic_name__ , __magic_name__ :Tuple = emb.weight.shape __magic_name__ :int = nn.Linear(snake_case, snake_case, bias=snake_case ) __magic_name__ :str = emb.weight.data return lin_layer def __lowercase ( snake_case ): """simple docstring""" __magic_name__ :int = torch.load(snake_case, map_location='''cpu''' ) __magic_name__ :Optional[Any] = mam_aaa['''args'''] or mam_aaa['''cfg''']['''model'''] __magic_name__ :List[Any] = mam_aaa['''model'''] remove_ignore_keys_(snake_case ) __magic_name__ :Tuple = state_dict['''encoder.embed_tokens.weight'''].shape[0] __magic_name__ :List[str] = MaMaaaConfig( vocab_size=snake_case, max_position_embeddings=1_0_2_4, encoder_layers=args.encoder_layers, decoder_layers=args.decoder_layers, encoder_attention_heads=args.encoder_attention_heads, decoder_attention_heads=args.decoder_attention_heads, encoder_ffn_dim=args.encoder_ffn_embed_dim, decoder_ffn_dim=args.decoder_ffn_embed_dim, d_model=args.encoder_embed_dim, encoder_layerdrop=args.encoder_layerdrop, decoder_layerdrop=args.decoder_layerdrop, dropout=args.dropout, attention_dropout=args.attention_dropout, activation_dropout=args.activation_dropout, activation_function='''relu''', ) __magic_name__ :int = state_dict['''decoder.embed_tokens.weight'''] __magic_name__ :List[str] = MaMaaaForConditionalGeneration(snake_case ) model.model.load_state_dict(snake_case, strict=snake_case ) __magic_name__ :List[str] = make_linear_from_emb(model.model.shared ) return model if __name__ == "__main__": SCREAMING_SNAKE_CASE__ : Optional[Any] = argparse.ArgumentParser() # Required parameters parser.add_argument("""fairseq_path""", type=str, help="""path to a model.pt on local filesystem.""") parser.add_argument("""pytorch_dump_folder_path""", default=None, type=str, help="""Path to the output PyTorch model.""") SCREAMING_SNAKE_CASE__ : int = parser.parse_args() SCREAMING_SNAKE_CASE__ : Any = convert_fairseq_mamaaa_checkpoint_from_disk(args.fairseq_pathß) model.save_pretrained(args.pytorch_dump_folder_path)
0
0
"""simple docstring""" import os import tempfile import unittest import numpy as np from diffusers.utils import is_flax_available from diffusers.utils.testing_utils import require_flax, slow if is_flax_available(): import jax import jax.numpy as jnp from flax.jax_utils import replicate from flax.training.common_utils import shard from diffusers import FlaxDDIMScheduler, FlaxDiffusionPipeline, FlaxStableDiffusionPipeline @require_flax class __magic_name__ ( unittest.TestCase ): def _lowerCamelCase ( self ): """simple docstring""" with tempfile.TemporaryDirectory() as tmpdirname: # pipeline has Flax weights _lowerCAmelCase = FlaxDiffusionPipeline.from_pretrained( 'hf-internal-testing/tiny-stable-diffusion-pipe' , safety_checker=__lowerCAmelCase , cache_dir=__lowerCAmelCase ) _lowerCAmelCase = [t[-1] for t in os.walk(os.path.join(__lowerCAmelCase , os.listdir(__lowerCAmelCase )[0] , 'snapshots' ) )] _lowerCAmelCase = [item for sublist in all_root_files for item in sublist] # None of the downloaded files should be a PyTorch file even if we have some here: # https://huggingface.co/hf-internal-testing/tiny-stable-diffusion-pipe/blob/main/unet/diffusion_pytorch_model.bin assert not any(f.endswith('.bin' ) for f in files ) @slow @require_flax class __magic_name__ ( unittest.TestCase ): def _lowerCamelCase ( self ): """simple docstring""" _lowerCAmelCase = FlaxStableDiffusionPipeline.from_pretrained( 'hf-internal-testing/tiny-stable-diffusion-pipe' , safety_checker=__lowerCAmelCase ) _lowerCAmelCase = ( '''A cinematic film still of Morgan Freeman starring as Jimi Hendrix, portrait, 40mm lens, shallow depth of''' ''' field, close up, split lighting, cinematic''' ) _lowerCAmelCase = jax.random.PRNGKey(0 ) _lowerCAmelCase = 4 _lowerCAmelCase = jax.device_count() _lowerCAmelCase = num_samples * [prompt] _lowerCAmelCase = pipeline.prepare_inputs(__lowerCAmelCase ) # shard inputs and rng _lowerCAmelCase = replicate(__lowerCAmelCase ) _lowerCAmelCase = jax.random.split(__lowerCAmelCase , __lowerCAmelCase ) _lowerCAmelCase = shard(__lowerCAmelCase ) _lowerCAmelCase = pipeline(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , jit=__lowerCAmelCase ).images assert images.shape == (num_samples, 1, 6_4, 6_4, 3) if jax.device_count() == 8: assert np.abs(np.abs(images[0, 0, :2, :2, -2:] , dtype=np.floataa ).sum() - 4.1_51_47_45 ) < 1e-3 assert np.abs(np.abs(__lowerCAmelCase , dtype=np.floataa ).sum() - 4_99_47.8_75 ) < 5e-1 _lowerCAmelCase = pipeline.numpy_to_pil(np.asarray(images.reshape((num_samples,) + images.shape[-3:] ) ) ) assert len(__lowerCAmelCase ) == num_samples def _lowerCamelCase ( self ): """simple docstring""" _lowerCAmelCase = FlaxStableDiffusionPipeline.from_pretrained( 'CompVis/stable-diffusion-v1-4' , revision='flax' , safety_checker=__lowerCAmelCase ) _lowerCAmelCase = ( '''A cinematic film still of Morgan Freeman starring as Jimi Hendrix, portrait, 40mm lens, shallow depth of''' ''' field, close up, split lighting, cinematic''' ) _lowerCAmelCase = jax.random.PRNGKey(0 ) _lowerCAmelCase = 5_0 _lowerCAmelCase = jax.device_count() _lowerCAmelCase = num_samples * [prompt] _lowerCAmelCase = pipeline.prepare_inputs(__lowerCAmelCase ) # shard inputs and rng _lowerCAmelCase = replicate(__lowerCAmelCase ) _lowerCAmelCase = jax.random.split(__lowerCAmelCase , __lowerCAmelCase ) _lowerCAmelCase = shard(__lowerCAmelCase ) _lowerCAmelCase = pipeline(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , jit=__lowerCAmelCase ).images assert images.shape == (num_samples, 1, 5_1_2, 5_1_2, 3) if jax.device_count() == 8: assert np.abs((np.abs(images[0, 0, :2, :2, -2:] , dtype=np.floataa ).sum() - 0.05_65_24_01) ) < 1e-3 assert np.abs((np.abs(__lowerCAmelCase , dtype=np.floataa ).sum() - 2_38_38_08.2) ) < 5e-1 def _lowerCamelCase ( self ): """simple docstring""" _lowerCAmelCase = FlaxStableDiffusionPipeline.from_pretrained( 'CompVis/stable-diffusion-v1-4' , revision='bf16' , dtype=jnp.bfloataa , safety_checker=__lowerCAmelCase ) _lowerCAmelCase = ( '''A cinematic film still of Morgan Freeman starring as Jimi Hendrix, portrait, 40mm lens, shallow depth of''' ''' field, close up, split lighting, cinematic''' ) _lowerCAmelCase = jax.random.PRNGKey(0 ) _lowerCAmelCase = 5_0 _lowerCAmelCase = jax.device_count() _lowerCAmelCase = num_samples * [prompt] _lowerCAmelCase = pipeline.prepare_inputs(__lowerCAmelCase ) # shard inputs and rng _lowerCAmelCase = replicate(__lowerCAmelCase ) _lowerCAmelCase = jax.random.split(__lowerCAmelCase , __lowerCAmelCase ) _lowerCAmelCase = shard(__lowerCAmelCase ) _lowerCAmelCase = pipeline(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , jit=__lowerCAmelCase ).images assert images.shape == (num_samples, 1, 5_1_2, 5_1_2, 3) if jax.device_count() == 8: assert np.abs((np.abs(images[0, 0, :2, :2, -2:] , dtype=np.floataa ).sum() - 0.04_00_39_06) ) < 1e-3 assert np.abs((np.abs(__lowerCAmelCase , dtype=np.floataa ).sum() - 2_37_35_16.75) ) < 5e-1 def _lowerCamelCase ( self ): """simple docstring""" _lowerCAmelCase = FlaxStableDiffusionPipeline.from_pretrained( 'CompVis/stable-diffusion-v1-4' , revision='bf16' , dtype=jnp.bfloataa ) _lowerCAmelCase = ( '''A cinematic film still of Morgan Freeman starring as Jimi Hendrix, portrait, 40mm lens, shallow depth of''' ''' field, close up, split lighting, cinematic''' ) _lowerCAmelCase = jax.random.PRNGKey(0 ) _lowerCAmelCase = 5_0 _lowerCAmelCase = jax.device_count() _lowerCAmelCase = num_samples * [prompt] _lowerCAmelCase = pipeline.prepare_inputs(__lowerCAmelCase ) # shard inputs and rng _lowerCAmelCase = replicate(__lowerCAmelCase ) _lowerCAmelCase = jax.random.split(__lowerCAmelCase , __lowerCAmelCase ) _lowerCAmelCase = shard(__lowerCAmelCase ) _lowerCAmelCase = pipeline(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , jit=__lowerCAmelCase ).images assert images.shape == (num_samples, 1, 5_1_2, 5_1_2, 3) if jax.device_count() == 8: assert np.abs((np.abs(images[0, 0, :2, :2, -2:] , dtype=np.floataa ).sum() - 0.04_00_39_06) ) < 1e-3 assert np.abs((np.abs(__lowerCAmelCase , dtype=np.floataa ).sum() - 2_37_35_16.75) ) < 5e-1 def _lowerCamelCase ( self ): """simple docstring""" _lowerCAmelCase = FlaxDDIMScheduler( beta_start=0.0_00_85 , beta_end=0.0_12 , beta_schedule='scaled_linear' , set_alpha_to_one=__lowerCAmelCase , steps_offset=1 , ) _lowerCAmelCase = FlaxStableDiffusionPipeline.from_pretrained( 'CompVis/stable-diffusion-v1-4' , revision='bf16' , dtype=jnp.bfloataa , scheduler=__lowerCAmelCase , safety_checker=__lowerCAmelCase , ) _lowerCAmelCase = scheduler.create_state() _lowerCAmelCase = scheduler_state _lowerCAmelCase = ( '''A cinematic film still of Morgan Freeman starring as Jimi Hendrix, portrait, 40mm lens, shallow depth of''' ''' field, close up, split lighting, cinematic''' ) _lowerCAmelCase = jax.random.PRNGKey(0 ) _lowerCAmelCase = 5_0 _lowerCAmelCase = jax.device_count() _lowerCAmelCase = num_samples * [prompt] _lowerCAmelCase = pipeline.prepare_inputs(__lowerCAmelCase ) # shard inputs and rng _lowerCAmelCase = replicate(__lowerCAmelCase ) _lowerCAmelCase = jax.random.split(__lowerCAmelCase , __lowerCAmelCase ) _lowerCAmelCase = shard(__lowerCAmelCase ) _lowerCAmelCase = pipeline(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , jit=__lowerCAmelCase ).images assert images.shape == (num_samples, 1, 5_1_2, 5_1_2, 3) if jax.device_count() == 8: assert np.abs((np.abs(images[0, 0, :2, :2, -2:] , dtype=np.floataa ).sum() - 0.0_45_04_39_45) ) < 1e-3 assert np.abs((np.abs(__lowerCAmelCase , dtype=np.floataa ).sum() - 2_34_76_93.5) ) < 5e-1 def _lowerCamelCase ( self ): """simple docstring""" _lowerCAmelCase = ( '''A cinematic film still of Morgan Freeman starring as Jimi Hendrix, portrait, 40mm lens, shallow depth of''' ''' field, close up, split lighting, cinematic''' ) _lowerCAmelCase = jax.device_count() _lowerCAmelCase = num_samples * [prompt] _lowerCAmelCase = jax.random.split(jax.random.PRNGKey(0 ) , __lowerCAmelCase ) _lowerCAmelCase = FlaxStableDiffusionPipeline.from_pretrained( 'CompVis/stable-diffusion-v1-4' , revision='bf16' , dtype=jnp.bfloataa , safety_checker=__lowerCAmelCase , ) _lowerCAmelCase = replicate(__lowerCAmelCase ) _lowerCAmelCase = pipeline.prepare_inputs(__lowerCAmelCase ) _lowerCAmelCase = shard(__lowerCAmelCase ) _lowerCAmelCase = pipeline(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , jit=__lowerCAmelCase ).images assert images.shape == (num_samples, 1, 5_1_2, 5_1_2, 3) _lowerCAmelCase = images[2, 0, 2_5_6, 1_0:1_7, 1] # With memory efficient attention _lowerCAmelCase = FlaxStableDiffusionPipeline.from_pretrained( 'CompVis/stable-diffusion-v1-4' , revision='bf16' , dtype=jnp.bfloataa , safety_checker=__lowerCAmelCase , use_memory_efficient_attention=__lowerCAmelCase , ) _lowerCAmelCase = replicate(__lowerCAmelCase ) _lowerCAmelCase = pipeline.prepare_inputs(__lowerCAmelCase ) _lowerCAmelCase = shard(__lowerCAmelCase ) _lowerCAmelCase = pipeline(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , jit=__lowerCAmelCase ).images assert images_eff.shape == (num_samples, 1, 5_1_2, 5_1_2, 3) _lowerCAmelCase = images[2, 0, 2_5_6, 1_0:1_7, 1] # I checked the results visually and they are very similar. However, I saw that the max diff is `1` and the `sum` # over the 8 images is exactly `256`, which is very suspicious. Testing a random slice for now. assert abs(slice_eff - slice ).max() < 1e-2
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from typing import TYPE_CHECKING from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tokenizers_available, is_torch_available SCREAMING_SNAKE_CASE__ : Dict = { """configuration_canine""": ["""CANINE_PRETRAINED_CONFIG_ARCHIVE_MAP""", """CanineConfig"""], """tokenization_canine""": ["""CanineTokenizer"""], } try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: SCREAMING_SNAKE_CASE__ : str = [ """CANINE_PRETRAINED_MODEL_ARCHIVE_LIST""", """CanineForMultipleChoice""", """CanineForQuestionAnswering""", """CanineForSequenceClassification""", """CanineForTokenClassification""", """CanineLayer""", """CanineModel""", """CaninePreTrainedModel""", """load_tf_weights_in_canine""", ] if TYPE_CHECKING: from .configuration_canine import CANINE_PRETRAINED_CONFIG_ARCHIVE_MAP, CanineConfig from .tokenization_canine import CanineTokenizer try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_canine import ( CANINE_PRETRAINED_MODEL_ARCHIVE_LIST, CanineForMultipleChoice, CanineForQuestionAnswering, CanineForSequenceClassification, CanineForTokenClassification, CanineLayer, CanineModel, CaninePreTrainedModel, load_tf_weights_in_canine, ) else: import sys SCREAMING_SNAKE_CASE__ : Union[str, Any] = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
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def _a ( UpperCAmelCase , UpperCAmelCase ) -> Tuple: """simple docstring""" _validate_point(UpperCAmelCase ) _validate_point(UpperCAmelCase ) if len(UpperCAmelCase ) != len(UpperCAmelCase ): raise ValueError('''Both points must be in the same n-dimensional space''' ) return float(sum(abs(a - b ) for a, b in zip(UpperCAmelCase , UpperCAmelCase ) ) ) def _a ( UpperCAmelCase ) -> Any: """simple docstring""" if point: if isinstance(UpperCAmelCase , UpperCAmelCase ): for item in point: if not isinstance(UpperCAmelCase , (int, float) ): lowerCamelCase__ : str = ( '''Expected a list of numbers as input, found ''' f"{type(UpperCAmelCase ).__name__}" ) raise TypeError(UpperCAmelCase ) else: lowerCamelCase__ : List[Any] = f"Expected a list of numbers as input, found {type(UpperCAmelCase ).__name__}" raise TypeError(UpperCAmelCase ) else: raise ValueError('''Missing an input''' ) def _a ( UpperCAmelCase , UpperCAmelCase ) -> List[Any]: """simple docstring""" _validate_point(UpperCAmelCase ) _validate_point(UpperCAmelCase ) if len(UpperCAmelCase ) != len(UpperCAmelCase ): raise ValueError('''Both points must be in the same n-dimensional space''' ) return float(sum(abs(x - y ) for x, y in zip(UpperCAmelCase , UpperCAmelCase ) ) ) if __name__ == "__main__": import doctest doctest.testmod()
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import warnings from ...processing_utils import ProcessorMixin from ...tokenization_utils_base import BatchEncoding class lowerCamelCase_ ( lowerCamelCase ): a__ = ['''image_processor''', '''tokenizer'''] a__ = '''ChineseCLIPImageProcessor''' a__ = ('''BertTokenizer''', '''BertTokenizerFast''') def __init__( self , __lowerCAmelCase=None , __lowerCAmelCase=None , **__lowerCAmelCase ): """simple docstring""" __magic_name__ :Tuple = None if "feature_extractor" in kwargs: warnings.warn( '''The `feature_extractor` argument is deprecated and will be removed in v5, use `image_processor`''' ''' instead.''' , __lowerCAmelCase , ) __magic_name__ :Optional[Any] = kwargs.pop('''feature_extractor''' ) __magic_name__ :Tuple = image_processor if image_processor is not None else feature_extractor if image_processor is None: raise ValueError('''You need to specify an `image_processor`.''' ) if tokenizer is None: raise ValueError('''You need to specify a `tokenizer`.''' ) super().__init__(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :List[Any] = self.image_processor def __call__( self , __lowerCAmelCase=None , __lowerCAmelCase=None , __lowerCAmelCase=None , **__lowerCAmelCase ): """simple docstring""" if text is None and images is None: raise ValueError('''You have to specify either text or images. Both cannot be none.''' ) if text is not None: __magic_name__ :int = self.tokenizer(__lowerCAmelCase , return_tensors=__lowerCAmelCase , **__lowerCAmelCase ) if images is not None: __magic_name__ :Dict = self.image_processor(__lowerCAmelCase , return_tensors=__lowerCAmelCase , **__lowerCAmelCase ) if text is not None and images is not None: __magic_name__ :Union[str, Any] = image_features.pixel_values return encoding elif text is not None: return encoding else: return BatchEncoding(data=dict(**__lowerCAmelCase ) , tensor_type=__lowerCAmelCase ) def A ( self , *__lowerCAmelCase , **__lowerCAmelCase ): """simple docstring""" return self.tokenizer.batch_decode(*__lowerCAmelCase , **__lowerCAmelCase ) def A ( self , *__lowerCAmelCase , **__lowerCAmelCase ): """simple docstring""" return self.tokenizer.decode(*__lowerCAmelCase , **__lowerCAmelCase ) @property def A ( self ): """simple docstring""" __magic_name__ :List[Any] = self.tokenizer.model_input_names __magic_name__ :Any = self.image_processor.model_input_names return list(dict.fromkeys(tokenizer_input_names + image_processor_input_names ) ) @property def A ( self ): """simple docstring""" warnings.warn( '''`feature_extractor_class` is deprecated and will be removed in v5. Use `image_processor_class` instead.''' , __lowerCAmelCase , ) return self.image_processor_class
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'''simple docstring''' import inspect import unittest from transformers import BitConfig from transformers.testing_utils import require_torch, require_vision, slow, torch_device from transformers.utils import cached_property, is_torch_available, is_vision_available from ...test_backbone_common import BackboneTesterMixin from ...test_configuration_common import ConfigTester from ...test_modeling_common import ModelTesterMixin, floats_tensor, ids_tensor from ...test_pipeline_mixin import PipelineTesterMixin if is_torch_available(): import torch from torch import nn from transformers import BitBackbone, BitForImageClassification, BitImageProcessor, BitModel from transformers.models.bit.modeling_bit import BIT_PRETRAINED_MODEL_ARCHIVE_LIST if is_vision_available(): from PIL import Image class _SCREAMING_SNAKE_CASE: def __init__( self : int , UpperCamelCase_ : Optional[int] , UpperCamelCase_ : int=3 , UpperCamelCase_ : List[Any]=32 , UpperCamelCase_ : Any=3 , UpperCamelCase_ : Union[str, Any]=10 , UpperCamelCase_ : Any=[8, 16, 32, 64] , UpperCamelCase_ : Tuple=[1, 1, 2, 1] , UpperCamelCase_ : Optional[Any]=True , UpperCamelCase_ : Union[str, Any]=True , UpperCamelCase_ : Union[str, Any]="relu" , UpperCamelCase_ : List[Any]=3 , UpperCamelCase_ : int=None , UpperCamelCase_ : str=["stage2", "stage3", "stage4"] , UpperCamelCase_ : int=[2, 3, 4] , UpperCamelCase_ : Any=1 , ) -> Union[str, Any]: SCREAMING_SNAKE_CASE__ :Optional[int] = parent SCREAMING_SNAKE_CASE__ :str = batch_size SCREAMING_SNAKE_CASE__ :List[Any] = image_size SCREAMING_SNAKE_CASE__ :Any = num_channels SCREAMING_SNAKE_CASE__ :Optional[Any] = embeddings_size SCREAMING_SNAKE_CASE__ :Any = hidden_sizes SCREAMING_SNAKE_CASE__ :Tuple = depths SCREAMING_SNAKE_CASE__ :Any = is_training SCREAMING_SNAKE_CASE__ :Union[str, Any] = use_labels SCREAMING_SNAKE_CASE__ :List[str] = hidden_act SCREAMING_SNAKE_CASE__ :Optional[int] = num_labels SCREAMING_SNAKE_CASE__ :Any = scope SCREAMING_SNAKE_CASE__ :Dict = len(__lowerCAmelCase ) SCREAMING_SNAKE_CASE__ :Any = out_features SCREAMING_SNAKE_CASE__ :str = out_indices SCREAMING_SNAKE_CASE__ :Tuple = num_groups def __lowerCamelCase ( self : Optional[int] ) -> Dict: SCREAMING_SNAKE_CASE__ :Optional[int] = floats_tensor([self.batch_size, self.num_channels, self.image_size, self.image_size] ) SCREAMING_SNAKE_CASE__ :Any = None if self.use_labels: SCREAMING_SNAKE_CASE__ :str = ids_tensor([self.batch_size] , self.num_labels ) SCREAMING_SNAKE_CASE__ :Optional[int] = self.get_config() return config, pixel_values, labels def __lowerCamelCase ( self : str ) -> Optional[int]: return BitConfig( num_channels=self.num_channels , embeddings_size=self.embeddings_size , hidden_sizes=self.hidden_sizes , depths=self.depths , hidden_act=self.hidden_act , num_labels=self.num_labels , out_features=self.out_features , out_indices=self.out_indices , num_groups=self.num_groups , ) def __lowerCamelCase ( self : Dict , UpperCamelCase_ : int , UpperCamelCase_ : List[str] , UpperCamelCase_ : Union[str, Any] ) -> Any: SCREAMING_SNAKE_CASE__ :Dict = BitModel(config=__lowerCAmelCase ) model.to(__lowerCAmelCase ) model.eval() SCREAMING_SNAKE_CASE__ :Optional[Any] = model(__lowerCAmelCase ) self.parent.assertEqual( result.last_hidden_state.shape , (self.batch_size, self.hidden_sizes[-1], self.image_size // 32, self.image_size // 32) , ) def __lowerCamelCase ( self : Optional[Any] , UpperCamelCase_ : List[Any] , UpperCamelCase_ : str , UpperCamelCase_ : Any ) -> str: SCREAMING_SNAKE_CASE__ :Optional[int] = self.num_labels SCREAMING_SNAKE_CASE__ :int = BitForImageClassification(__lowerCAmelCase ) model.to(__lowerCAmelCase ) model.eval() SCREAMING_SNAKE_CASE__ :str = model(__lowerCAmelCase , labels=__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.num_labels) ) def __lowerCamelCase ( self : List[Any] , UpperCamelCase_ : List[str] , UpperCamelCase_ : List[str] , UpperCamelCase_ : Any ) -> Any: SCREAMING_SNAKE_CASE__ :List[Any] = BitBackbone(config=__lowerCAmelCase ) model.to(__lowerCAmelCase ) model.eval() SCREAMING_SNAKE_CASE__ :Optional[int] = model(__lowerCAmelCase ) # verify feature maps self.parent.assertEqual(len(result.feature_maps ) , len(config.out_features ) ) self.parent.assertListEqual(list(result.feature_maps[0].shape ) , [self.batch_size, self.hidden_sizes[1], 4, 4] ) # verify channels self.parent.assertEqual(len(model.channels ) , len(config.out_features ) ) self.parent.assertListEqual(model.channels , config.hidden_sizes[1:] ) # verify backbone works with out_features=None SCREAMING_SNAKE_CASE__ :Any = None SCREAMING_SNAKE_CASE__ :Union[str, Any] = BitBackbone(config=__lowerCAmelCase ) model.to(__lowerCAmelCase ) model.eval() SCREAMING_SNAKE_CASE__ :Optional[Any] = model(__lowerCAmelCase ) # verify feature maps self.parent.assertEqual(len(result.feature_maps ) , 1 ) self.parent.assertListEqual(list(result.feature_maps[0].shape ) , [self.batch_size, self.hidden_sizes[-1], 1, 1] ) # verify channels self.parent.assertEqual(len(model.channels ) , 1 ) self.parent.assertListEqual(model.channels , [config.hidden_sizes[-1]] ) def __lowerCamelCase ( self : str ) -> Optional[int]: SCREAMING_SNAKE_CASE__ :Tuple = self.prepare_config_and_inputs() SCREAMING_SNAKE_CASE__ :int = config_and_inputs SCREAMING_SNAKE_CASE__ :str = {'''pixel_values''': pixel_values} return config, inputs_dict @require_torch class _SCREAMING_SNAKE_CASE( _SCREAMING_SNAKE_CASE , _SCREAMING_SNAKE_CASE , unittest.TestCase ): A_ : Tuple = (BitModel, BitForImageClassification, BitBackbone) if is_torch_available() else () A_ : Tuple = ( {'feature-extraction': BitModel, 'image-classification': BitForImageClassification} if is_torch_available() else {} ) A_ : Dict = False A_ : Dict = False A_ : List[Any] = False A_ : Dict = False A_ : Optional[int] = False def __lowerCamelCase ( self : int ) -> str: SCREAMING_SNAKE_CASE__ :Dict = BitModelTester(self ) SCREAMING_SNAKE_CASE__ :List[str] = ConfigTester(self , config_class=__lowerCAmelCase , has_text_modality=__lowerCAmelCase ) def __lowerCamelCase ( self : str ) -> Any: self.create_and_test_config_common_properties() self.config_tester.create_and_test_config_to_json_string() self.config_tester.create_and_test_config_to_json_file() self.config_tester.create_and_test_config_from_and_save_pretrained() self.config_tester.create_and_test_config_with_num_labels() self.config_tester.check_config_can_be_init_without_params() self.config_tester.check_config_arguments_init() def __lowerCamelCase ( self : Any ) -> str: return @unittest.skip(reason='Bit does not output attentions' ) def __lowerCamelCase ( self : int ) -> Optional[Any]: pass @unittest.skip(reason='Bit does not use inputs_embeds' ) def __lowerCamelCase ( self : Any ) -> Optional[int]: pass @unittest.skip(reason='Bit does not support input and output embeddings' ) def __lowerCamelCase ( self : List[str] ) -> int: pass def __lowerCamelCase ( self : Any ) -> Optional[int]: SCREAMING_SNAKE_CASE__ :int = self.model_tester.prepare_config_and_inputs_for_common() for model_class in self.all_model_classes: SCREAMING_SNAKE_CASE__ :int = model_class(__lowerCAmelCase ) SCREAMING_SNAKE_CASE__ :List[str] = inspect.signature(model.forward ) # signature.parameters is an OrderedDict => so arg_names order is deterministic SCREAMING_SNAKE_CASE__ :int = [*signature.parameters.keys()] SCREAMING_SNAKE_CASE__ :Optional[int] = ['''pixel_values'''] self.assertListEqual(arg_names[:1] , __lowerCAmelCase ) def __lowerCamelCase ( self : Tuple ) -> Any: SCREAMING_SNAKE_CASE__ :Tuple = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_model(*__lowerCAmelCase ) def __lowerCamelCase ( self : Tuple ) -> str: SCREAMING_SNAKE_CASE__ :str = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_backbone(*__lowerCAmelCase ) def __lowerCamelCase ( self : int ) -> int: SCREAMING_SNAKE_CASE__ :Optional[int] = self.model_tester.prepare_config_and_inputs_for_common() for model_class in self.all_model_classes: SCREAMING_SNAKE_CASE__ :Tuple = model_class(config=__lowerCAmelCase ) for name, module in model.named_modules(): if isinstance(__lowerCAmelCase , (nn.BatchNormad, nn.GroupNorm) ): self.assertTrue( torch.all(module.weight == 1 ) , msg=f'''Parameter {name} of model {model_class} seems not properly initialized''' , ) self.assertTrue( torch.all(module.bias == 0 ) , msg=f'''Parameter {name} of model {model_class} seems not properly initialized''' , ) def __lowerCamelCase ( self : Optional[Any] ) -> Dict: def check_hidden_states_output(UpperCamelCase_ : List[str] , UpperCamelCase_ : List[Any] , UpperCamelCase_ : Union[str, Any] ): SCREAMING_SNAKE_CASE__ :Optional[int] = model_class(__lowerCAmelCase ) model.to(__lowerCAmelCase ) model.eval() with torch.no_grad(): SCREAMING_SNAKE_CASE__ :Tuple = model(**self._prepare_for_class(__lowerCAmelCase , __lowerCAmelCase ) ) SCREAMING_SNAKE_CASE__ :List[str] = outputs.encoder_hidden_states if config.is_encoder_decoder else outputs.hidden_states SCREAMING_SNAKE_CASE__ :Dict = self.model_tester.num_stages self.assertEqual(len(__lowerCAmelCase ) , expected_num_stages + 1 ) # Bit's feature maps are of shape (batch_size, num_channels, height, width) self.assertListEqual( list(hidden_states[0].shape[-2:] ) , [self.model_tester.image_size // 4, self.model_tester.image_size // 4] , ) SCREAMING_SNAKE_CASE__ :Tuple = self.model_tester.prepare_config_and_inputs_for_common() SCREAMING_SNAKE_CASE__ :Tuple = ['''preactivation''', '''bottleneck'''] for model_class in self.all_model_classes: for layer_type in layers_type: SCREAMING_SNAKE_CASE__ :int = layer_type SCREAMING_SNAKE_CASE__ :Tuple = True check_hidden_states_output(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) # check that output_hidden_states also work using config del inputs_dict["output_hidden_states"] SCREAMING_SNAKE_CASE__ :Tuple = True check_hidden_states_output(__lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) @unittest.skip(reason='Bit does not use feedforward chunking' ) def __lowerCamelCase ( self : Dict ) -> int: pass def __lowerCamelCase ( self : Optional[Any] ) -> List[str]: SCREAMING_SNAKE_CASE__ :List[Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_image_classification(*__lowerCAmelCase ) @slow def __lowerCamelCase ( self : List[str] ) -> Union[str, Any]: for model_name in BIT_PRETRAINED_MODEL_ARCHIVE_LIST[:1]: SCREAMING_SNAKE_CASE__ :List[str] = BitModel.from_pretrained(__lowerCAmelCase ) self.assertIsNotNone(__lowerCAmelCase ) def lowerCamelCase ( ) -> Dict: '''simple docstring''' SCREAMING_SNAKE_CASE__ :Union[str, Any] = Image.open('./tests/fixtures/tests_samples/COCO/000000039769.png' ) return image @require_torch @require_vision class _SCREAMING_SNAKE_CASE( unittest.TestCase ): @cached_property def __lowerCamelCase ( self : List[str] ) -> Tuple: return ( BitImageProcessor.from_pretrained(BIT_PRETRAINED_MODEL_ARCHIVE_LIST[0] ) if is_vision_available() else None ) @slow def __lowerCamelCase ( self : List[Any] ) -> Optional[int]: SCREAMING_SNAKE_CASE__ :Any = BitForImageClassification.from_pretrained(BIT_PRETRAINED_MODEL_ARCHIVE_LIST[0] ).to(__lowerCAmelCase ) SCREAMING_SNAKE_CASE__ :Union[str, Any] = self.default_image_processor SCREAMING_SNAKE_CASE__ :int = prepare_img() SCREAMING_SNAKE_CASE__ :Tuple = image_processor(images=__lowerCAmelCase , return_tensors='pt' ).to(__lowerCAmelCase ) # forward pass with torch.no_grad(): SCREAMING_SNAKE_CASE__ :Tuple = model(**__lowerCAmelCase ) # verify the logits SCREAMING_SNAKE_CASE__ :Optional[Any] = torch.Size((1, 10_00) ) self.assertEqual(outputs.logits.shape , __lowerCAmelCase ) SCREAMING_SNAKE_CASE__ :int = torch.tensor([[-0.6526, -0.5263, -1.4398]] ).to(__lowerCAmelCase ) self.assertTrue(torch.allclose(outputs.logits[0, :3] , __lowerCAmelCase , atol=1e-4 ) ) @require_torch class _SCREAMING_SNAKE_CASE( _SCREAMING_SNAKE_CASE , unittest.TestCase ): A_ : Optional[Any] = (BitBackbone,) if is_torch_available() else () A_ : Tuple = BitConfig A_ : Optional[Any] = False def __lowerCamelCase ( self : Optional[Any] ) -> int: SCREAMING_SNAKE_CASE__ :Dict = BitModelTester(self )
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from sklearn.metrics import matthews_corrcoef import datasets SCREAMING_SNAKE_CASE__ : Optional[Any] = """ Compute the Matthews correlation coefficient (MCC) The Matthews correlation coefficient is used in machine learning as a measure of the quality of binary and multiclass classifications. It takes into account true and false positives and negatives and is generally regarded as a balanced measure which can be used even if the classes are of very different sizes. The MCC is in essence a correlation coefficient value between -1 and +1. A coefficient of +1 represents a perfect prediction, 0 an average random prediction and -1 an inverse prediction. The statistic is also known as the phi coefficient. [source: Wikipedia] """ SCREAMING_SNAKE_CASE__ : Union[str, Any] = """ Args: predictions (list of int): Predicted labels, as returned by a model. references (list of int): Ground truth labels. sample_weight (list of int, float, or bool): Sample weights. Defaults to `None`. Returns: matthews_correlation (dict containing float): Matthews correlation. Examples: Example 1, a basic example with only predictions and references as inputs: >>> matthews_metric = datasets.load_metric(\"matthews_correlation\") >>> results = matthews_metric.compute(references=[1, 3, 2, 0, 3, 2], ... predictions=[1, 2, 2, 0, 3, 3]) >>> print(round(results['matthews_correlation'], 2)) 0.54 Example 2, the same example as above, but also including sample weights: >>> matthews_metric = datasets.load_metric(\"matthews_correlation\") >>> results = matthews_metric.compute(references=[1, 3, 2, 0, 3, 2], ... predictions=[1, 2, 2, 0, 3, 3], ... sample_weight=[0.5, 3, 1, 1, 1, 2]) >>> print(round(results['matthews_correlation'], 2)) 0.1 Example 3, the same example as above, but with sample weights that cause a negative correlation: >>> matthews_metric = datasets.load_metric(\"matthews_correlation\") >>> results = matthews_metric.compute(references=[1, 3, 2, 0, 3, 2], ... predictions=[1, 2, 2, 0, 3, 3], ... sample_weight=[0.5, 1, 0, 0, 0, 1]) >>> print(round(results['matthews_correlation'], 2)) -0.25 """ SCREAMING_SNAKE_CASE__ : int = """\ @article{scikit-learn, title={Scikit-learn: Machine Learning in {P}ython}, author={Pedregosa, F. and Varoquaux, G. and Gramfort, A. and Michel, V. and Thirion, B. and Grisel, O. and Blondel, M. and Prettenhofer, P. and Weiss, R. and Dubourg, V. and Vanderplas, J. and Passos, A. and Cournapeau, D. and Brucher, M. and Perrot, M. and Duchesnay, E.}, journal={Journal of Machine Learning Research}, volume={12}, pages={2825--2830}, year={2011} } """ @datasets.utils.file_utils.add_start_docstrings(_DESCRIPTION , _KWARGS_DESCRIPTION ) class lowerCamelCase_ ( datasets.Metric ): def A ( self ): """simple docstring""" return datasets.MetricInfo( description=_DESCRIPTION , citation=_CITATION , inputs_description=_KWARGS_DESCRIPTION , features=datasets.Features( { '''predictions''': datasets.Value('''int32''' ), '''references''': datasets.Value('''int32''' ), } ) , reference_urls=[ '''https://scikit-learn.org/stable/modules/generated/sklearn.metrics.matthews_corrcoef.html''' ] , ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase=None ): """simple docstring""" return { "matthews_correlation": float(matthews_corrcoef(__lowerCAmelCase , __lowerCAmelCase , sample_weight=__lowerCAmelCase ) ), }
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0
import requests def __UpperCamelCase (lowerCAmelCase : Tuple, lowerCAmelCase : Any ) -> Any: A = {'''Content-Type''': '''application/json'''} A = requests.post(lowerCAmelCase, json={'text': message_body}, headers=lowerCAmelCase ) if response.status_code != 200: A = ( '''Request to slack returned an error ''' f'''{response.status_code}, the response is:\n{response.text}''' ) raise ValueError(lowerCAmelCase ) if __name__ == "__main__": # Set the slack url to the one provided by Slack when you create the webhook at # https://my.slack.com/services/new/incoming-webhook/ send_slack_message("<YOUR MESSAGE BODY>", "<SLACK CHANNEL URL>")
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from __future__ import annotations def __lowercase ( snake_case, snake_case ): """simple docstring""" print(f'''Vertex\tShortest Distance from vertex {src}''' ) for i, d in enumerate(snake_case ): print(f'''{i}\t\t{d}''' ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" for j in range(snake_case ): __magic_name__ , __magic_name__ , __magic_name__ :Tuple = (graph[j][k] for k in ['''src''', '''dst''', '''weight''']) if distance[u] != float('''inf''' ) and distance[u] + w < distance[v]: return True return False def __lowercase ( snake_case, snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :List[Any] = [float('''inf''' )] * vertex_count __magic_name__ :Tuple = 0.0 for _ in range(vertex_count - 1 ): for j in range(snake_case ): __magic_name__ , __magic_name__ , __magic_name__ :Dict = (graph[j][k] for k in ['''src''', '''dst''', '''weight''']) if distance[u] != float('''inf''' ) and distance[u] + w < distance[v]: __magic_name__ :Tuple = distance[u] + w __magic_name__ :Tuple = check_negative_cycle(snake_case, snake_case, snake_case ) if negative_cycle_exists: raise Exception('''Negative cycle found''' ) return distance if __name__ == "__main__": import doctest doctest.testmod() SCREAMING_SNAKE_CASE__ : Tuple = int(input("""Enter number of vertices: """).strip()) SCREAMING_SNAKE_CASE__ : Any = int(input("""Enter number of edges: """).strip()) SCREAMING_SNAKE_CASE__ : list[dict[str, int]] = [{} for _ in range(E)] for i in range(E): print("""Edge """, i + 1) SCREAMING_SNAKE_CASE__ , SCREAMING_SNAKE_CASE__ , SCREAMING_SNAKE_CASE__ : Dict = ( int(x) for x in input("""Enter source, destination, weight: """).strip().split(""" """) ) SCREAMING_SNAKE_CASE__ : Dict = {"""src""": src, """dst""": dest, """weight""": weight} SCREAMING_SNAKE_CASE__ : List[Any] = int(input("""\nEnter shortest path source:""").strip()) SCREAMING_SNAKE_CASE__ : List[str] = bellman_ford(graph, V, E, source) print_distance(shortest_distance, 0)
0
0
from typing import Optional, Union import torch from torch import nn from torch.nn import BCEWithLogitsLoss, CrossEntropyLoss, MSELoss from ...activations import ACTaFN from ...modeling_outputs import BaseModelOutputWithPoolingAndNoAttention, ImageClassifierOutputWithNoAttention from ...modeling_utils import PreTrainedModel from ...utils import add_code_sample_docstrings, add_start_docstrings, add_start_docstrings_to_model_forward, logging from .configuration_mobilenet_va import MobileNetVaConfig snake_case_ = logging.get_logger(__name__) # General docstring snake_case_ = """MobileNetV1Config""" # Base docstring snake_case_ = """google/mobilenet_v1_1.0_224""" snake_case_ = [1, 1024, 7, 7] # Image classification docstring snake_case_ = """google/mobilenet_v1_1.0_224""" snake_case_ = """tabby, tabby cat""" snake_case_ = [ """google/mobilenet_v1_1.0_224""", """google/mobilenet_v1_0.75_192""", # See all MobileNetV1 models at https://huggingface.co/models?filter=mobilenet_v1 ] def lowerCamelCase__ ( snake_case_ : Tuple , snake_case_ : Tuple , snake_case_ : Union[str, Any]=None ) -> Any: __snake_case = {} if isinstance(snake_case_ , snake_case_ ): __snake_case = model.mobilenet_va else: __snake_case = model __snake_case = '''MobilenetV1/Conv2d_0/''' __snake_case = backbone.conv_stem.convolution.weight __snake_case = backbone.conv_stem.normalization.bias __snake_case = backbone.conv_stem.normalization.weight __snake_case = backbone.conv_stem.normalization.running_mean __snake_case = backbone.conv_stem.normalization.running_var for i in range(13 ): __snake_case = i + 1 __snake_case = i * 2 __snake_case = backbone.layer[pt_index] __snake_case = f"""MobilenetV1/Conv2d_{tf_index}_depthwise/""" __snake_case = pointer.convolution.weight __snake_case = pointer.normalization.bias __snake_case = pointer.normalization.weight __snake_case = pointer.normalization.running_mean __snake_case = pointer.normalization.running_var __snake_case = backbone.layer[pt_index + 1] __snake_case = f"""MobilenetV1/Conv2d_{tf_index}_pointwise/""" __snake_case = pointer.convolution.weight __snake_case = pointer.normalization.bias __snake_case = pointer.normalization.weight __snake_case = pointer.normalization.running_mean __snake_case = pointer.normalization.running_var if isinstance(snake_case_ , snake_case_ ): __snake_case = '''MobilenetV1/Logits/Conv2d_1c_1x1/''' __snake_case = model.classifier.weight __snake_case = model.classifier.bias return tf_to_pt_map def lowerCamelCase__ ( snake_case_ : Any , snake_case_ : int , snake_case_ : List[str] ) -> int: try: import numpy as np import tensorflow as tf except ImportError: logger.error( '''Loading a TensorFlow models in PyTorch, requires TensorFlow to be installed. Please see ''' '''https://www.tensorflow.org/install/ for installation instructions.''' ) raise # Load weights from TF model __snake_case = tf.train.list_variables(snake_case_ ) __snake_case = {} for name, shape in init_vars: logger.info(f"""Loading TF weight {name} with shape {shape}""" ) __snake_case = tf.train.load_variable(snake_case_ , snake_case_ ) __snake_case = array # Build TF to PyTorch weights loading map __snake_case = _build_tf_to_pytorch_map(snake_case_ , snake_case_ , snake_case_ ) for name, pointer in tf_to_pt_map.items(): logger.info(f"""Importing {name}""" ) if name not in tf_weights: logger.info(f"""{name} not in tf pre-trained weights, skipping""" ) continue __snake_case = tf_weights[name] if "depthwise_weights" in name: logger.info('''Transposing depthwise''' ) __snake_case = np.transpose(snake_case_ , (2, 3, 0, 1) ) elif "weights" in name: logger.info('''Transposing''' ) if len(pointer.shape ) == 2: # copying into linear layer __snake_case = array.squeeze().transpose() else: __snake_case = np.transpose(snake_case_ , (3, 2, 0, 1) ) if pointer.shape != array.shape: raise ValueError(f"""Pointer shape {pointer.shape} and array shape {array.shape} mismatched""" ) logger.info(f"""Initialize PyTorch weight {name} {array.shape}""" ) __snake_case = torch.from_numpy(snake_case_ ) tf_weights.pop(snake_case_ , snake_case_ ) tf_weights.pop(name + '''/RMSProp''' , snake_case_ ) tf_weights.pop(name + '''/RMSProp_1''' , snake_case_ ) tf_weights.pop(name + '''/ExponentialMovingAverage''' , snake_case_ ) logger.info(f"""Weights not copied to PyTorch model: {', '.join(tf_weights.keys() )}""" ) return model def lowerCamelCase__ ( snake_case_ : List[Any] , snake_case_ : List[Any] ) -> Dict: __snake_case = features.shape[-2:] __snake_case = conv_layer.stride __snake_case = conv_layer.kernel_size if in_height % stride_height == 0: __snake_case = max(kernel_height - stride_height , 0 ) else: __snake_case = max(kernel_height - (in_height % stride_height) , 0 ) if in_width % stride_width == 0: __snake_case = max(kernel_width - stride_width , 0 ) else: __snake_case = max(kernel_width - (in_width % stride_width) , 0 ) __snake_case = pad_along_width // 2 __snake_case = pad_along_width - pad_left __snake_case = pad_along_height // 2 __snake_case = pad_along_height - pad_top __snake_case = (pad_left, pad_right, pad_top, pad_bottom) return nn.functional.pad(snake_case_ , snake_case_ , '''constant''' , 0.0 ) class SCREAMING_SNAKE_CASE__ ( nn.Module ): def __init__(self : Tuple , a__ : Dict , a__ : Union[str, Any] , a__ : List[str] , a__ : int , a__ : str = 1 , a__ : Union[str, Any] = 1 , a__ : Tuple = False , a__ : Optional[int] = True , a__ : List[str] = True , ): """simple docstring""" super().__init__() __snake_case = config if in_channels % groups != 0: raise ValueError(f"""Input channels ({in_channels}) are not divisible by {groups} groups.""" ) if out_channels % groups != 0: raise ValueError(f"""Output channels ({out_channels}) are not divisible by {groups} groups.""" ) __snake_case = 0 if config.tf_padding else int((kernel_size - 1) / 2 ) __snake_case = nn.Convad( in_channels=__lowerCAmelCase , out_channels=__lowerCAmelCase , kernel_size=__lowerCAmelCase , stride=__lowerCAmelCase , padding=__lowerCAmelCase , groups=__lowerCAmelCase , bias=__lowerCAmelCase , padding_mode='''zeros''' , ) if use_normalization: __snake_case = nn.BatchNormad( num_features=__lowerCAmelCase , eps=config.layer_norm_eps , momentum=0.9_9_9_7 , affine=__lowerCAmelCase , track_running_stats=__lowerCAmelCase , ) else: __snake_case = None if use_activation: if isinstance(__lowerCAmelCase , __lowerCAmelCase ): __snake_case = ACTaFN[use_activation] elif isinstance(config.hidden_act , __lowerCAmelCase ): __snake_case = ACTaFN[config.hidden_act] else: __snake_case = config.hidden_act else: __snake_case = None def a (self : Dict , a__ : Any ): """simple docstring""" if self.config.tf_padding: __snake_case = apply_tf_padding(__lowerCAmelCase , self.convolution ) __snake_case = self.convolution(__lowerCAmelCase ) if self.normalization is not None: __snake_case = self.normalization(__lowerCAmelCase ) if self.activation is not None: __snake_case = self.activation(__lowerCAmelCase ) return features class SCREAMING_SNAKE_CASE__ ( _UpperCAmelCase ): A_ : int = MobileNetVaConfig A_ : List[Any] = load_tf_weights_in_mobilenet_va A_ : Tuple = 'mobilenet_v1' A_ : Optional[int] = 'pixel_values' A_ : Tuple = False def a (self : Dict , a__ : List[Any] ): """simple docstring""" if isinstance(__lowerCAmelCase , (nn.Linear, nn.Convad) ): module.weight.data.normal_(mean=0.0 , std=self.config.initializer_range ) if module.bias is not None: module.bias.data.zero_() elif isinstance(__lowerCAmelCase , nn.BatchNormad ): module.bias.data.zero_() module.weight.data.fill_(1.0 ) snake_case_ = r""" This model is a PyTorch [torch.nn.Module](https://pytorch.org/docs/stable/nn.html#torch.nn.Module) subclass. Use it as a regular PyTorch Module and refer to the PyTorch documentation for all matter related to general usage and behavior. Parameters: config ([`MobileNetV1Config`]): Model configuration class with all the parameters of the model. Initializing with a config file does not load the weights associated with the model, only the configuration. Check out the [`~PreTrainedModel.from_pretrained`] method to load the model weights. """ snake_case_ = r""" Args: pixel_values (`torch.FloatTensor` of shape `(batch_size, num_channels, height, width)`): Pixel values. Pixel values can be obtained using [`AutoImageProcessor`]. See [`MobileNetV1ImageProcessor.__call__`] for details. output_hidden_states (`bool`, *optional*): Whether or not to return the hidden states of all layers. See `hidden_states` under returned tensors for more detail. return_dict (`bool`, *optional*): Whether or not to return a [`~utils.ModelOutput`] instead of a plain tuple. """ @add_start_docstrings( 'The bare MobileNetV1 model outputting raw hidden-states without any specific head on top.' , _UpperCAmelCase , ) class SCREAMING_SNAKE_CASE__ ( _UpperCAmelCase ): def __init__(self : Optional[int] , a__ : Optional[int] , a__ : int = True ): """simple docstring""" super().__init__(__lowerCAmelCase ) __snake_case = config __snake_case = 32 __snake_case = max(int(depth * config.depth_multiplier ) , config.min_depth ) __snake_case = MobileNetVaConvLayer( __lowerCAmelCase , in_channels=config.num_channels , out_channels=__lowerCAmelCase , kernel_size=3 , stride=2 , ) __snake_case = [1, 2, 1, 2, 1, 2, 1, 1, 1, 1, 1, 2, 1] __snake_case = nn.ModuleList() for i in range(13 ): __snake_case = out_channels if strides[i] == 2 or i == 0: depth *= 2 __snake_case = max(int(depth * config.depth_multiplier ) , config.min_depth ) self.layer.append( MobileNetVaConvLayer( __lowerCAmelCase , in_channels=__lowerCAmelCase , out_channels=__lowerCAmelCase , kernel_size=3 , stride=strides[i] , groups=__lowerCAmelCase , ) ) self.layer.append( MobileNetVaConvLayer( __lowerCAmelCase , in_channels=__lowerCAmelCase , out_channels=__lowerCAmelCase , kernel_size=1 , ) ) __snake_case = nn.AdaptiveAvgPoolad((1, 1) ) if add_pooling_layer else None # Initialize weights and apply final processing self.post_init() def a (self : str , a__ : Dict ): """simple docstring""" raise NotImplementedError @add_start_docstrings_to_model_forward(__lowerCAmelCase ) @add_code_sample_docstrings( checkpoint=_CHECKPOINT_FOR_DOC , output_type=__lowerCAmelCase , config_class=_CONFIG_FOR_DOC , modality='''vision''' , expected_output=_EXPECTED_OUTPUT_SHAPE , ) def a (self : Optional[Any] , a__ : int = None , a__ : Dict = None , a__ : Tuple = None , ): """simple docstring""" __snake_case = ( output_hidden_states if output_hidden_states is not None else self.config.output_hidden_states ) __snake_case = return_dict if return_dict is not None else self.config.use_return_dict if pixel_values is None: raise ValueError('''You have to specify pixel_values''' ) __snake_case = self.conv_stem(__lowerCAmelCase ) __snake_case = () if output_hidden_states else None for i, layer_module in enumerate(self.layer ): __snake_case = layer_module(__lowerCAmelCase ) if output_hidden_states: __snake_case = all_hidden_states + (hidden_states,) __snake_case = hidden_states if self.pooler is not None: __snake_case = torch.flatten(self.pooler(__lowerCAmelCase ) , start_dim=1 ) else: __snake_case = None if not return_dict: return tuple(v for v in [last_hidden_state, pooled_output, all_hidden_states] if v is not None ) return BaseModelOutputWithPoolingAndNoAttention( last_hidden_state=__lowerCAmelCase , pooler_output=__lowerCAmelCase , hidden_states=__lowerCAmelCase , ) @add_start_docstrings( '\n MobileNetV1 model with an image classification head on top (a linear layer on top of the pooled features), e.g. for\n ImageNet.\n ' , _UpperCAmelCase , ) class SCREAMING_SNAKE_CASE__ ( _UpperCAmelCase ): def __init__(self : Dict , a__ : Any ): """simple docstring""" super().__init__(__lowerCAmelCase ) __snake_case = config.num_labels __snake_case = MobileNetVaModel(__lowerCAmelCase ) __snake_case = self.mobilenet_va.layer[-1].convolution.out_channels # Classifier head __snake_case = nn.Dropout(config.classifier_dropout_prob , inplace=__lowerCAmelCase ) __snake_case = nn.Linear(__lowerCAmelCase , config.num_labels ) if config.num_labels > 0 else nn.Identity() # Initialize weights and apply final processing self.post_init() @add_start_docstrings_to_model_forward(__lowerCAmelCase ) @add_code_sample_docstrings( checkpoint=_IMAGE_CLASS_CHECKPOINT , output_type=__lowerCAmelCase , config_class=_CONFIG_FOR_DOC , expected_output=_IMAGE_CLASS_EXPECTED_OUTPUT , ) def a (self : Optional[int] , a__ : Tuple = None , a__ : Optional[Any] = None , a__ : str = None , a__ : Any = None , ): """simple docstring""" __snake_case = return_dict if return_dict is not None else self.config.use_return_dict __snake_case = self.mobilenet_va(__lowerCAmelCase , output_hidden_states=__lowerCAmelCase , return_dict=__lowerCAmelCase ) __snake_case = outputs.pooler_output if return_dict else outputs[1] __snake_case = self.classifier(self.dropout(__lowerCAmelCase ) ) __snake_case = None if labels is not None: if self.config.problem_type is None: if self.num_labels == 1: __snake_case = '''regression''' elif self.num_labels > 1 and (labels.dtype == torch.long or labels.dtype == torch.int): __snake_case = '''single_label_classification''' else: __snake_case = '''multi_label_classification''' if self.config.problem_type == "regression": __snake_case = MSELoss() if self.num_labels == 1: __snake_case = loss_fct(logits.squeeze() , labels.squeeze() ) else: __snake_case = loss_fct(__lowerCAmelCase , __lowerCAmelCase ) elif self.config.problem_type == "single_label_classification": __snake_case = CrossEntropyLoss() __snake_case = loss_fct(logits.view(-1 , self.num_labels ) , labels.view(-1 ) ) elif self.config.problem_type == "multi_label_classification": __snake_case = BCEWithLogitsLoss() __snake_case = loss_fct(__lowerCAmelCase , __lowerCAmelCase ) if not return_dict: __snake_case = (logits,) + outputs[2:] return ((loss,) + output) if loss is not None else output return ImageClassifierOutputWithNoAttention( loss=__lowerCAmelCase , logits=__lowerCAmelCase , hidden_states=outputs.hidden_states , )
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from __future__ import annotations import unittest from transformers import RoFormerConfig, is_tf_available from transformers.testing_utils import require_tf, slow from ...test_configuration_common import ConfigTester from ...test_modeling_tf_common import TFModelTesterMixin, ids_tensor, random_attention_mask from ...test_pipeline_mixin import PipelineTesterMixin if is_tf_available(): import tensorflow as tf from transformers import ( TFRoFormerForCausalLM, TFRoFormerForMaskedLM, TFRoFormerForMultipleChoice, TFRoFormerForQuestionAnswering, TFRoFormerForSequenceClassification, TFRoFormerForTokenClassification, TFRoFormerModel, ) from transformers.models.roformer.modeling_tf_roformer import ( TFRoFormerSelfAttention, TFRoFormerSinusoidalPositionalEmbedding, ) class lowerCamelCase_ : def __init__( self , __lowerCAmelCase , __lowerCAmelCase=1_3 , __lowerCAmelCase=7 , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=9_9 , __lowerCAmelCase=3_2 , __lowerCAmelCase=2 , __lowerCAmelCase=4 , __lowerCAmelCase=3_7 , __lowerCAmelCase="gelu" , __lowerCAmelCase=0.1 , __lowerCAmelCase=0.1 , __lowerCAmelCase=5_1_2 , __lowerCAmelCase=1_6 , __lowerCAmelCase=2 , __lowerCAmelCase=0.02 , __lowerCAmelCase=3 , __lowerCAmelCase=4 , __lowerCAmelCase=None , ): """simple docstring""" __magic_name__ :Optional[int] = parent __magic_name__ :List[Any] = 1_3 __magic_name__ :Union[str, Any] = 7 __magic_name__ :Optional[Any] = True __magic_name__ :Tuple = True __magic_name__ :List[str] = True __magic_name__ :List[Any] = True __magic_name__ :int = 9_9 __magic_name__ :Any = 3_2 __magic_name__ :Union[str, Any] = 2 __magic_name__ :List[str] = 4 __magic_name__ :List[Any] = 3_7 __magic_name__ :Tuple = '''gelu''' __magic_name__ :Any = 0.1 __magic_name__ :str = 0.1 __magic_name__ :List[str] = 5_1_2 __magic_name__ :int = 1_6 __magic_name__ :Any = 2 __magic_name__ :List[Any] = 0.02 __magic_name__ :Optional[Any] = 3 __magic_name__ :Tuple = 4 __magic_name__ :Optional[Any] = None def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = ids_tensor([self.batch_size, self.seq_length] , self.vocab_size ) __magic_name__ :str = None if self.use_input_mask: __magic_name__ :Optional[int] = random_attention_mask([self.batch_size, self.seq_length] ) __magic_name__ :str = None if self.use_token_type_ids: __magic_name__ :List[Any] = ids_tensor([self.batch_size, self.seq_length] , self.type_vocab_size ) __magic_name__ :Union[str, Any] = None __magic_name__ :Tuple = None __magic_name__ :str = None if self.use_labels: __magic_name__ :List[Any] = ids_tensor([self.batch_size] , self.type_sequence_label_size ) __magic_name__ :List[Any] = ids_tensor([self.batch_size, self.seq_length] , self.num_labels ) __magic_name__ :List[Any] = ids_tensor([self.batch_size] , self.num_choices ) __magic_name__ :str = RoFormerConfig( vocab_size=self.vocab_size , hidden_size=self.hidden_size , num_hidden_layers=self.num_hidden_layers , num_attention_heads=self.num_attention_heads , intermediate_size=self.intermediate_size , hidden_act=self.hidden_act , hidden_dropout_prob=self.hidden_dropout_prob , attention_probs_dropout_prob=self.attention_probs_dropout_prob , max_position_embeddings=self.max_position_embeddings , type_vocab_size=self.type_vocab_size , initializer_range=self.initializer_range , return_dict=__lowerCAmelCase , ) return config, input_ids, token_type_ids, input_mask, sequence_labels, token_labels, choice_labels def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :int = TFRoFormerModel(config=__lowerCAmelCase ) __magic_name__ :Optional[Any] = {'''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids} __magic_name__ :List[str] = [input_ids, input_mask] __magic_name__ :Any = model(__lowerCAmelCase ) __magic_name__ :List[str] = model(__lowerCAmelCase ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, self.seq_length, self.hidden_size) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Dict = True __magic_name__ :List[str] = TFRoFormerForCausalLM(config=__lowerCAmelCase ) __magic_name__ :str = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :Optional[Any] = model(__lowerCAmelCase )['''logits'''] self.parent.assertListEqual( list(prediction_scores.numpy().shape ) , [self.batch_size, self.seq_length, self.vocab_size] ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[Any] = TFRoFormerForMaskedLM(config=__lowerCAmelCase ) __magic_name__ :Any = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :Dict = model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :int = self.num_labels __magic_name__ :str = TFRoFormerForSequenceClassification(config=__lowerCAmelCase ) __magic_name__ :Optional[int] = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :str = model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.num_labels) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Union[str, Any] = self.num_choices __magic_name__ :Tuple = TFRoFormerForMultipleChoice(config=__lowerCAmelCase ) __magic_name__ :int = tf.tile(tf.expand_dims(__lowerCAmelCase , 1 ) , (1, self.num_choices, 1) ) __magic_name__ :Optional[Any] = tf.tile(tf.expand_dims(__lowerCAmelCase , 1 ) , (1, self.num_choices, 1) ) __magic_name__ :Union[str, Any] = tf.tile(tf.expand_dims(__lowerCAmelCase , 1 ) , (1, self.num_choices, 1) ) __magic_name__ :str = { '''input_ids''': multiple_choice_inputs_ids, '''attention_mask''': multiple_choice_input_mask, '''token_type_ids''': multiple_choice_token_type_ids, } __magic_name__ :Tuple = model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.num_choices) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[int] = self.num_labels __magic_name__ :Any = TFRoFormerForTokenClassification(config=__lowerCAmelCase ) __magic_name__ :str = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :Dict = model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.num_labels) ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :List[str] = TFRoFormerForQuestionAnswering(config=__lowerCAmelCase ) __magic_name__ :List[str] = { '''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids, } __magic_name__ :Union[str, Any] = model(__lowerCAmelCase ) self.parent.assertEqual(result.start_logits.shape , (self.batch_size, self.seq_length) ) self.parent.assertEqual(result.end_logits.shape , (self.batch_size, self.seq_length) ) def A ( self ): """simple docstring""" __magic_name__ :Union[str, Any] = self.prepare_config_and_inputs() ( ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ( __magic_name__ ) , ) :Union[str, Any] = config_and_inputs __magic_name__ :Optional[Any] = {'''input_ids''': input_ids, '''token_type_ids''': token_type_ids, '''attention_mask''': input_mask} return config, inputs_dict @require_tf class lowerCamelCase_ ( lowerCamelCase , lowerCamelCase , unittest.TestCase ): a__ = ( ( TFRoFormerModel, TFRoFormerForCausalLM, TFRoFormerForMaskedLM, TFRoFormerForQuestionAnswering, TFRoFormerForSequenceClassification, TFRoFormerForTokenClassification, TFRoFormerForMultipleChoice, ) if is_tf_available() else () ) a__ = ( { '''feature-extraction''': TFRoFormerModel, '''fill-mask''': TFRoFormerForMaskedLM, '''question-answering''': TFRoFormerForQuestionAnswering, '''text-classification''': TFRoFormerForSequenceClassification, '''text-generation''': TFRoFormerForCausalLM, '''token-classification''': TFRoFormerForTokenClassification, '''zero-shot''': TFRoFormerForSequenceClassification, } if is_tf_available() else {} ) a__ = False a__ = False def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" if pipeline_test_casse_name == "TextGenerationPipelineTests": return True return False def A ( self ): """simple docstring""" __magic_name__ :List[str] = TFRoFormerModelTester(self ) __magic_name__ :List[str] = ConfigTester(self , config_class=__lowerCAmelCase , hidden_size=3_7 ) def A ( self ): """simple docstring""" self.config_tester.run_common_tests() def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_model(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Union[str, Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_masked_lm(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Tuple = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_lm_head(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_multiple_choice(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Tuple = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_question_answering(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_sequence_classification(*__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_token_classification(*__lowerCAmelCase ) @slow def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = TFRoFormerModel.from_pretrained('''junnyu/roformer_chinese_base''' ) self.assertIsNotNone(__lowerCAmelCase ) @require_tf class lowerCamelCase_ ( unittest.TestCase ): @slow def A ( self ): """simple docstring""" __magic_name__ :int = TFRoFormerForMaskedLM.from_pretrained('''junnyu/roformer_chinese_base''' ) __magic_name__ :Dict = tf.constant([[0, 1, 2, 3, 4, 5]] ) __magic_name__ :Optional[Any] = model(__lowerCAmelCase )[0] # TODO Replace vocab size __magic_name__ :int = 5_0_0_0_0 __magic_name__ :Tuple = [1, 6, vocab_size] self.assertEqual(output.shape , __lowerCAmelCase ) print(output[:, :3, :3] ) # TODO Replace values below with what was printed above. __magic_name__ :Any = tf.constant( [ [ [-0.12053341, -1.0264901, 0.29221946], [-1.5133783, 0.197433, 0.15190607], [-5.0135403, -3.900256, -0.84038764], ] ] ) tf.debugging.assert_near(output[:, :3, :3] , __lowerCAmelCase , atol=1E-4 ) @require_tf class lowerCamelCase_ ( unittest.TestCase ): a__ = 1e-4 def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = tf.constant([[4, 1_0]] ) __magic_name__ :Optional[int] = TFRoFormerSinusoidalPositionalEmbedding(num_positions=6 , embedding_dim=6 ) __magic_name__ :Optional[Any] = emba(input_ids.shape ) __magic_name__ :List[str] = tf.constant( [[0.0000, 0.0000, 0.0000, 1.0000, 1.0000, 1.0000], [0.8415, 0.0464, 0.0022, 0.5403, 0.9989, 1.0000]] ) tf.debugging.assert_near(__lowerCAmelCase , __lowerCAmelCase , atol=self.tolerance ) def A ( self ): """simple docstring""" __magic_name__ :Tuple = tf.constant( [ [0.0000, 0.0000, 0.0000, 0.0000, 0.0000], [0.8415, 0.8219, 0.8020, 0.7819, 0.7617], [0.9093, 0.9364, 0.9581, 0.9749, 0.9870], ] ) __magic_name__ :Union[str, Any] = TFRoFormerSinusoidalPositionalEmbedding(num_positions=5_1_2 , embedding_dim=5_1_2 ) emba([2, 1_6, 5_1_2] ) __magic_name__ :Optional[int] = emba.weight[:3, :5] tf.debugging.assert_near(__lowerCAmelCase , __lowerCAmelCase , atol=self.tolerance ) @require_tf class lowerCamelCase_ ( unittest.TestCase ): a__ = 1e-4 def A ( self ): """simple docstring""" # 2,12,16,64 __magic_name__ :int = tf.reshape(tf.range(2 * 1_2 * 1_6 * 6_4 , dtype=tf.floataa ) , shape=(2, 1_2, 1_6, 6_4) ) / 1_0_0 __magic_name__ :str = -tf.reshape(tf.range(2 * 1_2 * 1_6 * 6_4 , dtype=tf.floataa ) , shape=(2, 1_2, 1_6, 6_4) ) / 1_0_0 __magic_name__ :int = TFRoFormerSinusoidalPositionalEmbedding(num_positions=3_2 , embedding_dim=6_4 ) __magic_name__ :List[str] = embed_positions([2, 1_6, 7_6_8] )[None, None, :, :] __magic_name__ , __magic_name__ :Union[str, Any] = TFRoFormerSelfAttention.apply_rotary_position_embeddings( __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :Tuple = tf.constant( [ [0.0000, 0.0100, 0.0200, 0.0300, 0.0400, 0.0500, 0.0600, 0.0700], [-0.2012, 0.8897, 0.0263, 0.9401, 0.2074, 0.9463, 0.3481, 0.9343], [-1.7057, 0.6271, -1.2145, 1.3897, -0.6303, 1.7647, -0.1173, 1.8985], [-2.1731, -1.6397, -2.7358, 0.2854, -2.1840, 1.7183, -1.3018, 2.4871], [0.2717, -3.6173, -2.9206, -2.1988, -3.6638, 0.3858, -2.9155, 2.2980], [3.9859, -2.1580, -0.7984, -4.4904, -4.1181, -2.0252, -4.4782, 1.1253], ] ) __magic_name__ :List[str] = tf.constant( [ [0.0000, -0.0100, -0.0200, -0.0300, -0.0400, -0.0500, -0.0600, -0.0700], [0.2012, -0.8897, -0.0263, -0.9401, -0.2074, -0.9463, -0.3481, -0.9343], [1.7057, -0.6271, 1.2145, -1.3897, 0.6303, -1.7647, 0.1173, -1.8985], [2.1731, 1.6397, 2.7358, -0.2854, 2.1840, -1.7183, 1.3018, -2.4871], [-0.2717, 3.6173, 2.9206, 2.1988, 3.6638, -0.3858, 2.9155, -2.2980], [-3.9859, 2.1580, 0.7984, 4.4904, 4.1181, 2.0252, 4.4782, -1.1253], ] ) tf.debugging.assert_near(query_layer[0, 0, :6, :8] , __lowerCAmelCase , atol=self.tolerance ) tf.debugging.assert_near(key_layer[0, 0, :6, :8] , __lowerCAmelCase , atol=self.tolerance )
0
0
from dataclasses import dataclass, field from typing import ClassVar, Dict from ..features import Features, Sequence, Value from .base import TaskTemplate @dataclass(frozen=_UpperCAmelCase ) class _lowercase ( _UpperCAmelCase ): """simple docstring""" lowerCAmelCase__ = field(default='question-answering-extractive' , metadata={'include_in_asdict_even_if_is_default': True} ) lowerCAmelCase__ = Features({'question': Value('string' ), 'context': Value('string' )} ) lowerCAmelCase__ = Features( { 'answers': Sequence( { 'text': Value('string' ), 'answer_start': Value('int32' ), } ) } ) lowerCAmelCase__ = 'question' lowerCAmelCase__ = 'context' lowerCAmelCase__ = 'answers' @property def _UpperCAmelCase ( self ): '''simple docstring''' return {self.question_column: "question", self.context_column: "context", self.answers_column: "answers"}
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from typing import TYPE_CHECKING from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tokenizers_available SCREAMING_SNAKE_CASE__ : Optional[int] = {"""tokenization_herbert""": ["""HerbertTokenizer"""]} try: if not is_tokenizers_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: SCREAMING_SNAKE_CASE__ : Optional[Any] = ["""HerbertTokenizerFast"""] if TYPE_CHECKING: from .tokenization_herbert import HerbertTokenizer try: if not is_tokenizers_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .tokenization_herbert_fast import HerbertTokenizerFast else: import sys SCREAMING_SNAKE_CASE__ : Union[str, Any] = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
0
0
import math def __A ( _A , _A = 0 , _A = 0 ): """simple docstring""" __a = end or len(_A ) for i in range(_A , _A ): __a = i __a = array[i] while temp_index != start and temp_index_value < array[temp_index - 1]: __a = array[temp_index - 1] temp_index -= 1 __a = temp_index_value return array def __A ( _A , _A , _A ): # Max Heap """simple docstring""" __a = index __a = 2 * index + 1 # Left Node __a = 2 * index + 2 # Right Node if left_index < heap_size and array[largest] < array[left_index]: __a = left_index if right_index < heap_size and array[largest] < array[right_index]: __a = right_index if largest != index: __a = array[largest], array[index] heapify(_A , _A , _A ) def __A ( _A ): """simple docstring""" __a = len(_A ) for i in range(n // 2 , -1 , -1 ): heapify(_A , _A , _A ) for i in range(n - 1 , 0 , -1 ): __a = array[0], array[i] heapify(_A , 0 , _A ) return array def __A ( _A , _A , _A , _A ): """simple docstring""" if (array[first_index] > array[middle_index]) != ( array[first_index] > array[last_index] ): return array[first_index] elif (array[middle_index] > array[first_index]) != ( array[middle_index] > array[last_index] ): return array[middle_index] else: return array[last_index] def __A ( _A , _A , _A , _A ): """simple docstring""" __a = low __a = high while True: while array[i] < pivot: i += 1 j -= 1 while pivot < array[j]: j -= 1 if i >= j: return i __a = array[j], array[i] i += 1 def __A ( _A ): """simple docstring""" if len(_A ) == 0: return array __a = 2 * math.ceil(math.loga(len(_A ) ) ) __a = 16 return intro_sort(_A , 0 , len(_A ) , _A , _A ) def __A ( _A , _A , _A , _A , _A ): """simple docstring""" while end - start > size_threshold: if max_depth == 0: return heap_sort(_A ) max_depth -= 1 __a = median_of_a(_A , _A , start + ((end - start) // 2) + 1 , end - 1 ) __a = partition(_A , _A , _A , _A ) intro_sort(_A , _A , _A , _A , _A ) __a = p return insertion_sort(_A , _A , _A ) if __name__ == "__main__": import doctest doctest.testmod() SCREAMING_SNAKE_CASE : Any = input("""Enter numbers separated by a comma : """).strip() SCREAMING_SNAKE_CASE : List[Any] = [float(item) for item in user_input.split(""",""")] print(sort(unsorted))
197
import argparse import gdown import numpy as np import torch from huggingface_hub import hf_hub_download from transformers import ( CLIPTokenizer, CLIPTokenizerFast, VideoMAEImageProcessor, XCLIPConfig, XCLIPModel, XCLIPProcessor, XCLIPTextConfig, XCLIPVisionConfig, ) def __lowercase ( snake_case, snake_case ): """simple docstring""" __magic_name__ :str = XCLIPTextConfig() # derive patch size from model name __magic_name__ :Union[str, Any] = model_name.find('''patch''' ) __magic_name__ :Optional[Any] = int(model_name[start_idx + len('''patch''' ) : start_idx + len('''patch''' ) + 2] ) __magic_name__ :int = XCLIPVisionConfig(patch_size=snake_case, num_frames=snake_case ) if "large" in model_name: __magic_name__ :Dict = 7_6_8 __magic_name__ :int = 3_0_7_2 __magic_name__ :List[Any] = 1_2 __magic_name__ :str = 1_0_2_4 __magic_name__ :Any = 4_0_9_6 __magic_name__ :Optional[Any] = 1_6 __magic_name__ :Union[str, Any] = 2_4 __magic_name__ :Union[str, Any] = 7_6_8 __magic_name__ :Tuple = 3_0_7_2 if model_name == "xclip-large-patch14-16-frames": __magic_name__ :List[str] = 3_3_6 __magic_name__ :Any = XCLIPConfig.from_text_vision_configs(snake_case, snake_case ) if "large" in model_name: __magic_name__ :str = 7_6_8 return config def __lowercase ( snake_case ): """simple docstring""" if name == "token_embedding.weight": __magic_name__ :Any = name.replace('''token_embedding.weight''', '''text_model.embeddings.token_embedding.weight''' ) if name == "positional_embedding": __magic_name__ :Any = name.replace('''positional_embedding''', '''text_model.embeddings.position_embedding.weight''' ) if "ln_1" in name: __magic_name__ :List[str] = name.replace('''ln_1''', '''layer_norm1''' ) if "ln_2" in name: __magic_name__ :str = name.replace('''ln_2''', '''layer_norm2''' ) if "c_fc" in name: __magic_name__ :List[Any] = name.replace('''c_fc''', '''fc1''' ) if "c_proj" in name: __magic_name__ :Any = name.replace('''c_proj''', '''fc2''' ) if name.startswith('''transformer.resblocks''' ): __magic_name__ :Any = name.replace('''transformer.resblocks''', '''text_model.encoder.layers''' ) if "attn.out_proj" in name and "message" not in name: __magic_name__ :Union[str, Any] = name.replace('''attn.out_proj''', '''self_attn.out_proj''' ) if "ln_final" in name: __magic_name__ :Tuple = name.replace('''ln_final''', '''text_model.final_layer_norm''' ) # visual encoder if name == "visual.class_embedding": __magic_name__ :List[Any] = name.replace('''visual.class_embedding''', '''vision_model.embeddings.class_embedding''' ) if name == "visual.positional_embedding": __magic_name__ :Any = name.replace('''visual.positional_embedding''', '''vision_model.embeddings.position_embedding.weight''' ) if name.startswith('''visual.transformer.resblocks''' ): __magic_name__ :Union[str, Any] = name.replace('''visual.transformer.resblocks''', '''vision_model.encoder.layers''' ) if "visual.conv1" in name: __magic_name__ :Tuple = name.replace('''visual.conv1''', '''vision_model.embeddings.patch_embedding''' ) if "visual.ln_pre" in name: __magic_name__ :Tuple = name.replace('''visual.ln_pre''', '''vision_model.pre_layernorm''' ) if "visual.ln_post" in name: __magic_name__ :Optional[Any] = name.replace('''visual.ln_post''', '''vision_model.post_layernorm''' ) if "visual.proj" in name: __magic_name__ :Tuple = name.replace('''visual.proj''', '''visual_projection.weight''' ) if "text_projection" in name: __magic_name__ :int = name.replace('''text_projection''', '''text_projection.weight''' ) # things on top if "prompts_visual_proj" in name: __magic_name__ :int = name.replace('''prompts_visual_proj''', '''prompts_visual_projection''' ) if "prompts_visual_ln" in name: __magic_name__ :Dict = name.replace('''prompts_visual_ln''', '''prompts_visual_layernorm''' ) # mit if name == "mit.positional_embedding": __magic_name__ :List[Any] = name.replace('''positional''', '''position''' ) if name.startswith('''mit.resblocks''' ): __magic_name__ :Union[str, Any] = name.replace('''mit.resblocks''', '''mit.encoder.layers''' ) # prompts generator if name.startswith('''prompts_generator.norm''' ): __magic_name__ :str = name.replace('''prompts_generator.norm''', '''prompts_generator.layernorm''' ) return name def __lowercase ( snake_case, snake_case ): """simple docstring""" for key in orig_state_dict.copy().keys(): __magic_name__ :Any = orig_state_dict.pop(snake_case ) if "attn.in_proj" in key: __magic_name__ :str = key.split('''.''' ) if key.startswith('''visual''' ): __magic_name__ :List[Any] = key_split[3] __magic_name__ :List[Any] = config.vision_config.hidden_size if "message_attn" in key: if "weight" in key: __magic_name__ :List[Any] = val[ :dim, : ] __magic_name__ :List[str] = val[ dim : dim * 2, : ] __magic_name__ :List[str] = val[ -dim:, : ] else: __magic_name__ :str = val[ :dim ] __magic_name__ :Optional[int] = val[ dim : dim * 2 ] __magic_name__ :Any = val[ -dim: ] else: if "weight" in key: __magic_name__ :int = val[ :dim, : ] __magic_name__ :Union[str, Any] = val[ dim : dim * 2, : ] __magic_name__ :List[Any] = val[ -dim:, : ] else: __magic_name__ :Union[str, Any] = val[:dim] __magic_name__ :str = val[ dim : dim * 2 ] __magic_name__ :Dict = val[-dim:] elif key.startswith('''mit''' ): __magic_name__ :List[Any] = key_split[2] __magic_name__ :Any = config.vision_config.mit_hidden_size if "weight" in key: __magic_name__ :Union[str, Any] = val[:dim, :] __magic_name__ :Optional[int] = val[dim : dim * 2, :] __magic_name__ :int = val[-dim:, :] else: __magic_name__ :Tuple = val[:dim] __magic_name__ :Optional[int] = val[dim : dim * 2] __magic_name__ :Optional[int] = val[-dim:] else: __magic_name__ :Any = key_split[2] __magic_name__ :List[Any] = config.text_config.hidden_size if "weight" in key: __magic_name__ :Union[str, Any] = val[:dim, :] __magic_name__ :Tuple = val[ dim : dim * 2, : ] __magic_name__ :str = val[-dim:, :] else: __magic_name__ :int = val[:dim] __magic_name__ :Any = val[ dim : dim * 2 ] __magic_name__ :str = val[-dim:] else: __magic_name__ :Tuple = rename_key(snake_case ) if new_key_name in ["visual_projection.weight", "text_projection.weight"]: __magic_name__ :List[Any] = val.T __magic_name__ :Optional[Any] = val return orig_state_dict def __lowercase ( snake_case ): """simple docstring""" if num_frames == 8: __magic_name__ :Any = '''eating_spaghetti_8_frames.npy''' elif num_frames == 1_6: __magic_name__ :List[Any] = '''eating_spaghetti.npy''' elif num_frames == 3_2: __magic_name__ :Tuple = '''eating_spaghetti_32_frames.npy''' __magic_name__ :str = hf_hub_download( repo_id='''hf-internal-testing/spaghetti-video''', filename=snake_case, repo_type='''dataset''', ) __magic_name__ :List[Any] = np.load(snake_case ) return list(snake_case ) def __lowercase ( snake_case, snake_case=None, snake_case=False ): """simple docstring""" __magic_name__ :Union[str, Any] = { # fully supervised kinetics-400 checkpoints '''xclip-base-patch32''': '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k400_32_8.pth''', '''xclip-base-patch32-16-frames''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k400_32_16.pth''' ), '''xclip-base-patch16''': '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k400_16_8.pth''', '''xclip-base-patch16-16-frames''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k400_16_16.pth''' ), '''xclip-large-patch14''': '''https://drive.google.com/u/0/uc?id=1NUOImq0o5DlQTST17iIP3vG7DgmHQuCx&amp;export=download&amp;confirm=t&amp;uuid=b26caedc-88e2-473e-830a-9d158b653cdb''', '''xclip-large-patch14-16-frames''': '''https://drive.google.com/u/0/uc?id=1FOYgnJc097OJ4lGwtRCCydQyVPJEOH7d&amp;export=download&amp;confirm=t&amp;uuid=538fa810-e671-4050-b385-9a623f89804f''', # fully supervised kinetics-600 checkpoints '''xclip-base-patch16-kinetics-600''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k600_16_8.pth''' ), '''xclip-base-patch16-kinetics-600-16-frames''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/k600_16_16.pth''' ), '''xclip-large-patch14-kinetics-600''': '''https://drive.google.com/u/0/uc?id=1FV8C1INuM91sLAN4ImjzePLIlpMSihwV&amp;export=download&amp;confirm=t&amp;uuid=141d4977-4a65-44ae-864f-4b0c19f838be''', # few shot '''xclip-base-patch16-hmdb-2-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_hmdb_2.pth''' ), '''xclip-base-patch16-hmdb-4-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_hmdb_4.pth''' ), '''xclip-base-patch16-hmdb-8-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_hmdb_8.pth''' ), '''xclip-base-patch16-hmdb-16-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_hmdb_16.pth''' ), '''xclip-base-patch16-ucf-2-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_ucf_2.pth''' ), '''xclip-base-patch16-ucf-4-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_ucf_4.pth''' ), '''xclip-base-patch16-ucf-8-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_ucf_8.pth''' ), '''xclip-base-patch16-ucf-16-shot''': ( '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/few_ucf_16.pth''' ), # zero shot '''xclip-base-patch16-zero-shot''': '''https://github.com/nbl97/X-CLIP_Model_Zoo/releases/download/v1.0/zero.pth''', } __magic_name__ :Optional[int] = model_to_url[model_name] __magic_name__ :List[str] = 8 if "16-frames" in model_name: __magic_name__ :List[Any] = 1_6 elif "shot" in model_name: __magic_name__ :Dict = 3_2 __magic_name__ :str = get_xclip_config(snake_case, snake_case ) __magic_name__ :List[Any] = XCLIPModel(snake_case ) model.eval() if "drive" in checkpoint_url: __magic_name__ :Any = '''pytorch_model.bin''' gdown.cached_download(snake_case, snake_case, quiet=snake_case ) __magic_name__ :Optional[Any] = torch.load(snake_case, map_location='''cpu''' )['''model'''] else: __magic_name__ :Optional[int] = torch.hub.load_state_dict_from_url(snake_case )['''model'''] __magic_name__ :List[str] = convert_state_dict(snake_case, snake_case ) __magic_name__ :List[Any] = XCLIPModel(snake_case ) __magic_name__ , __magic_name__ :Optional[Any] = model.load_state_dict(snake_case, strict=snake_case ) assert missing_keys == ["text_model.embeddings.position_ids", "vision_model.embeddings.position_ids"] model.eval() __magic_name__ :str = 3_3_6 if model_name == '''xclip-large-patch14-16-frames''' else 2_2_4 __magic_name__ :Optional[int] = VideoMAEImageProcessor(size=snake_case ) __magic_name__ :Optional[int] = CLIPTokenizer.from_pretrained('''openai/clip-vit-base-patch32''' ) __magic_name__ :Tuple = CLIPTokenizerFast.from_pretrained('''openai/clip-vit-base-patch32''' ) __magic_name__ :Optional[int] = XCLIPProcessor(image_processor=snake_case, tokenizer=snake_case ) __magic_name__ :List[Any] = prepare_video(snake_case ) __magic_name__ :str = processor( text=['''playing sports''', '''eating spaghetti''', '''go shopping'''], videos=snake_case, return_tensors='''pt''', padding=snake_case ) print('''Shape of pixel values:''', inputs.pixel_values.shape ) with torch.no_grad(): __magic_name__ :Tuple = model(**snake_case ) # Verify outputs __magic_name__ :Any = outputs.logits_per_video __magic_name__ :str = logits_per_video.softmax(dim=1 ) print('''Probs:''', snake_case ) # kinetics-400 if model_name == "xclip-base-patch32": __magic_name__ :Dict = torch.tensor([[0.0019, 0.9951, 0.0030]] ) elif model_name == "xclip-base-patch32-16-frames": __magic_name__ :str = torch.tensor([[7.0_9_9_9E-0_4, 9.9_8_8_3E-0_1, 4.5_5_8_0E-0_4]] ) elif model_name == "xclip-base-patch16": __magic_name__ :Tuple = torch.tensor([[0.0083, 0.9681, 0.0236]] ) elif model_name == "xclip-base-patch16-16-frames": __magic_name__ :Tuple = torch.tensor([[7.6_9_3_7E-0_4, 9.9_7_2_8E-0_1, 1.9_4_7_3E-0_3]] ) elif model_name == "xclip-large-patch14": __magic_name__ :str = torch.tensor([[0.0062, 0.9864, 0.0075]] ) elif model_name == "xclip-large-patch14-16-frames": __magic_name__ :Optional[int] = torch.tensor([[3.3_8_7_7E-0_4, 9.9_9_3_7E-0_1, 2.8_8_8_8E-0_4]] ) # kinetics-600 elif model_name == "xclip-base-patch16-kinetics-600": __magic_name__ :Optional[int] = torch.tensor([[0.0555, 0.8914, 0.0531]] ) elif model_name == "xclip-base-patch16-kinetics-600-16-frames": __magic_name__ :List[str] = torch.tensor([[3.8_5_5_4E-0_4, 9.9_9_2_9E-0_1, 3.2_7_5_4E-0_4]] ) elif model_name == "xclip-large-patch14-kinetics-600": __magic_name__ :List[str] = torch.tensor([[0.0036, 0.9920, 0.0045]] ) # few shot elif model_name == "xclip-base-patch16-hmdb-2-shot": __magic_name__ :Tuple = torch.tensor([[7.1_8_9_0E-0_6, 9.9_9_9_4E-0_1, 5.6_5_5_9E-0_5]] ) elif model_name == "xclip-base-patch16-hmdb-4-shot": __magic_name__ :List[str] = torch.tensor([[1.0_3_2_0E-0_5, 9.9_9_9_3E-0_1, 6.2_4_3_5E-0_5]] ) elif model_name == "xclip-base-patch16-hmdb-8-shot": __magic_name__ :Optional[int] = torch.tensor([[4.1_3_7_7E-0_6, 9.9_9_9_0E-0_1, 9.8_3_8_6E-0_5]] ) elif model_name == "xclip-base-patch16-hmdb-16-shot": __magic_name__ :Optional[int] = torch.tensor([[4.1_3_4_7E-0_5, 9.9_9_6_2E-0_1, 3.3_4_1_1E-0_4]] ) elif model_name == "xclip-base-patch16-ucf-2-shot": __magic_name__ :Union[str, Any] = torch.tensor([[8.5_8_5_7E-0_5, 9.9_9_2_8E-0_1, 6.3_2_9_1E-0_4]] ) elif model_name == "xclip-base-patch16-ucf-4-shot": __magic_name__ :Union[str, Any] = torch.tensor([[8.5_8_5_7E-0_5, 9.9_9_2_8E-0_1, 6.3_2_9_1E-0_4]] ) elif model_name == "xclip-base-patch16-ucf-8-shot": __magic_name__ :Optional[int] = torch.tensor([[0.0027, 0.9904, 0.0070]] ) elif model_name == "xclip-base-patch16-ucf-16-shot": __magic_name__ :Any = torch.tensor([[9.8_2_1_9E-0_4, 9.9_5_9_3E-0_1, 3.0_8_6_3E-0_3]] ) # zero shot elif model_name == "xclip-base-patch16-zero-shot": __magic_name__ :Optional[int] = torch.tensor([[3.5_0_8_2E-0_4, 9.9_7_8_5E-0_1, 1.7_9_6_6E-0_3]] ) else: raise ValueError(f'''Model name {model_name} not supported''' ) assert torch.allclose(snake_case, snake_case, atol=1E-3 ) print('''Looks ok!''' ) if pytorch_dump_folder_path is not None: print(f'''Saving model {model_name} to {pytorch_dump_folder_path}''' ) model.save_pretrained(snake_case ) if push_to_hub: print('''Pushing model, processor and slow tokenizer files to the hub...''' ) model.push_to_hub(snake_case, organization='''nielsr''' ) processor.push_to_hub(snake_case, organization='''nielsr''' ) slow_tokenizer.push_to_hub(snake_case, organization='''nielsr''' ) if __name__ == "__main__": SCREAMING_SNAKE_CASE__ : Optional[Any] = argparse.ArgumentParser() # Required parameters parser.add_argument( """--model_name""", default="""xclip-base-patch32""", type=str, help="""Name of the model.""", ) parser.add_argument( """--pytorch_dump_folder_path""", default=None, type=str, help="""Path to the output PyTorch model directory.""" ) parser.add_argument( """--push_to_hub""", action="""store_true""", help="""Whether or not to push the converted model to the 🤗 hub.""" ) SCREAMING_SNAKE_CASE__ : List[Any] = parser.parse_args() convert_xclip_checkpoint(args.model_name, args.pytorch_dump_folder_path, args.push_to_hub)
0
0
import math_equivalence # From: git+https://github.com/hendrycks/math.git import datasets _lowerCamelCase ="""\ @article{hendrycksmath2021, title={Measuring Mathematical Problem Solving With the MATH Dataset}, author={Dan Hendrycks and Collin Burns and Saurav Kadavath and Akul Arora and Steven Basart and Eric Tang and Dawn Song and Jacob Steinhardt}, journal={arXiv preprint arXiv:2103.03874}, year={2021} } """ _lowerCamelCase ="""\ This metric is used to assess performance on the Mathematics Aptitude Test of Heuristics (MATH) dataset. It first canonicalizes the inputs (e.g., converting \"1/2\" to \"\\frac{1}{2}\") and then computes accuracy. """ _lowerCamelCase =r""" Calculates accuracy after canonicalizing inputs. Args: predictions: list of predictions to score. Each prediction is a string that contains natural language and LaTex. references: list of reference for each prediction. Each reference is a string that contains natural language and LaTex. Returns: accuracy: accuracy after canonicalizing inputs (e.g., converting \"1/2\" to \"\\frac{1}{2}\") Examples: >>> metric = datasets.load_metric(\"competition_math\") >>> results = metric.compute(references=[\"\\frac{1}{2}\"], predictions=[\"1/2\"]) >>> print(results) {'accuracy': 1.0} """ @datasets.utils.file_utils.add_end_docstrings(_DESCRIPTION , _KWARGS_DESCRIPTION) class A__ ( datasets.Metric): def UpperCamelCase__ ( self ): return datasets.MetricInfo( description=_DESCRIPTION , citation=_CITATION , inputs_description=_KWARGS_DESCRIPTION , features=datasets.Features( { """predictions""": datasets.Value("""string""" ), """references""": datasets.Value("""string""" ), } ) , homepage="""https://github.com/hendrycks/math""" , codebase_urls=["""https://github.com/hendrycks/math"""] , ) def UpperCamelCase__ ( self , __magic_name__ , __magic_name__ ): lowerCamelCase : Dict = 0.0 for i, j in zip(__lowerCAmelCase , __lowerCAmelCase ): n_correct += 1.0 if math_equivalence.is_equiv(__lowerCAmelCase , __lowerCAmelCase ) else 0.0 lowerCamelCase : Dict = n_correct / len(__lowerCAmelCase ) return { "accuracy": accuracy, }
681
import numpy as np import torch from torch.utils.data import Dataset from utils import logger class lowerCamelCase_ ( lowerCamelCase ): def __init__( self , __lowerCAmelCase , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[int] = params __magic_name__ :Any = np.array(__lowerCAmelCase ) __magic_name__ :Optional[Any] = np.array([len(__lowerCAmelCase ) for t in data] ) self.check() self.remove_long_sequences() self.remove_empty_sequences() self.remove_unknown_sequences() self.check() self.print_statistics() def __getitem__( self , __lowerCAmelCase ): """simple docstring""" return (self.token_ids[index], self.lengths[index]) def __len__( self ): """simple docstring""" return len(self.lengths ) def A ( self ): """simple docstring""" assert len(self.token_ids ) == len(self.lengths ) assert all(self.lengths[i] == len(self.token_ids[i] ) for i in range(len(self.lengths ) ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = self.params.max_model_input_size __magic_name__ :int = self.lengths > max_len logger.info(F'''Splitting {sum(__lowerCAmelCase )} too long sequences.''' ) def divide_chunks(__lowerCAmelCase , __lowerCAmelCase ): return [l[i : i + n] for i in range(0 , len(__lowerCAmelCase ) , __lowerCAmelCase )] __magic_name__ :Optional[int] = [] __magic_name__ :List[Any] = [] if self.params.mlm: __magic_name__ , __magic_name__ :Optional[Any] = self.params.special_tok_ids['''cls_token'''], self.params.special_tok_ids['''sep_token'''] else: __magic_name__ , __magic_name__ :Tuple = self.params.special_tok_ids['''bos_token'''], self.params.special_tok_ids['''eos_token'''] for seq_, len_ in zip(self.token_ids , self.lengths ): assert (seq_[0] == cls_id) and (seq_[-1] == sep_id), seq_ if len_ <= max_len: new_tok_ids.append(seq_ ) new_lengths.append(len_ ) else: __magic_name__ :int = [] for sub_s in divide_chunks(seq_ , max_len - 2 ): if sub_s[0] != cls_id: __magic_name__ :List[Any] = np.insert(__lowerCAmelCase , 0 , __lowerCAmelCase ) if sub_s[-1] != sep_id: __magic_name__ :Union[str, Any] = np.insert(__lowerCAmelCase , len(__lowerCAmelCase ) , __lowerCAmelCase ) assert len(__lowerCAmelCase ) <= max_len assert (sub_s[0] == cls_id) and (sub_s[-1] == sep_id), sub_s sub_seqs.append(__lowerCAmelCase ) new_tok_ids.extend(__lowerCAmelCase ) new_lengths.extend([len(__lowerCAmelCase ) for l in sub_seqs] ) __magic_name__ :Tuple = np.array(__lowerCAmelCase ) __magic_name__ :Optional[int] = np.array(__lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = len(self ) __magic_name__ :int = self.lengths > 1_1 __magic_name__ :List[str] = self.token_ids[indices] __magic_name__ :Union[str, Any] = self.lengths[indices] __magic_name__ :List[str] = len(self ) logger.info(F'''Remove {init_size - new_size} too short (<=11 tokens) sequences.''' ) def A ( self ): """simple docstring""" if "unk_token" not in self.params.special_tok_ids: return else: __magic_name__ :Tuple = self.params.special_tok_ids['''unk_token'''] __magic_name__ :Dict = len(self ) __magic_name__ :Tuple = np.array([np.count_nonzero(a == unk_token_id ) for a in self.token_ids] ) __magic_name__ :int = (unk_occs / self.lengths) < 0.5 __magic_name__ :str = self.token_ids[indices] __magic_name__ :str = self.lengths[indices] __magic_name__ :Any = len(self ) logger.info(F'''Remove {init_size - new_size} sequences with a high level of unknown tokens (50%).''' ) def A ( self ): """simple docstring""" if not self.params.is_master: return logger.info(F'''{len(self )} sequences''' ) # data_len = sum(self.lengths) # nb_unique_tokens = len(Counter(list(chain(*self.token_ids)))) # logger.info(f'{data_len} tokens ({nb_unique_tokens} unique)') # unk_idx = self.params.special_tok_ids['unk_token'] # nb_unknown = sum([(t==unk_idx).sum() for t in self.token_ids]) # logger.info(f'{nb_unknown} unknown tokens (covering {100*nb_unknown/data_len:.2f}% of the data)') def A ( self , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[Any] = [t[0] for t in batch] __magic_name__ :List[Any] = [t[1] for t in batch] assert len(__lowerCAmelCase ) == len(__lowerCAmelCase ) # Max for paddings __magic_name__ :Tuple = max(__lowerCAmelCase ) # Pad token ids if self.params.mlm: __magic_name__ :Any = self.params.special_tok_ids['''pad_token'''] else: __magic_name__ :str = self.params.special_tok_ids['''unk_token'''] __magic_name__ :Any = [list(t.astype(__lowerCAmelCase ) ) + [pad_idx] * (max_seq_len_ - len(__lowerCAmelCase )) for t in token_ids] assert len(tk_ ) == len(__lowerCAmelCase ) assert all(len(__lowerCAmelCase ) == max_seq_len_ for t in tk_ ) __magic_name__ :Optional[int] = torch.tensor(tk_ ) # (bs, max_seq_len_) __magic_name__ :Optional[int] = torch.tensor(__lowerCAmelCase ) # (bs) return tk_t, lg_t
0
0
'''simple docstring''' from ...configuration_utils import PretrainedConfig from ...utils import logging _UpperCamelCase : Dict = logging.get_logger(__name__) _UpperCamelCase : List[Any] = { """studio-ousia/luke-base""": """https://huggingface.co/studio-ousia/luke-base/resolve/main/config.json""", """studio-ousia/luke-large""": """https://huggingface.co/studio-ousia/luke-large/resolve/main/config.json""", } class _snake_case ( a_ ): SCREAMING_SNAKE_CASE : Tuple = '''luke''' def __init__( self , _SCREAMING_SNAKE_CASE=5_02_67 , _SCREAMING_SNAKE_CASE=50_00_00 , _SCREAMING_SNAKE_CASE=7_68 , _SCREAMING_SNAKE_CASE=2_56 , _SCREAMING_SNAKE_CASE=12 , _SCREAMING_SNAKE_CASE=12 , _SCREAMING_SNAKE_CASE=30_72 , _SCREAMING_SNAKE_CASE="gelu" , _SCREAMING_SNAKE_CASE=0.1 , _SCREAMING_SNAKE_CASE=0.1 , _SCREAMING_SNAKE_CASE=5_12 , _SCREAMING_SNAKE_CASE=2 , _SCREAMING_SNAKE_CASE=0.02 , _SCREAMING_SNAKE_CASE=1e-12 , _SCREAMING_SNAKE_CASE=True , _SCREAMING_SNAKE_CASE=None , _SCREAMING_SNAKE_CASE=1 , _SCREAMING_SNAKE_CASE=0 , _SCREAMING_SNAKE_CASE=2 , **_SCREAMING_SNAKE_CASE , ): '''simple docstring''' super().__init__(pad_token_id=__lowerCAmelCase , bos_token_id=__lowerCAmelCase , eos_token_id=__lowerCAmelCase , **__lowerCAmelCase ) lowerCAmelCase = vocab_size lowerCAmelCase = entity_vocab_size lowerCAmelCase = hidden_size lowerCAmelCase = entity_emb_size lowerCAmelCase = num_hidden_layers lowerCAmelCase = num_attention_heads lowerCAmelCase = hidden_act lowerCAmelCase = intermediate_size lowerCAmelCase = hidden_dropout_prob lowerCAmelCase = attention_probs_dropout_prob lowerCAmelCase = max_position_embeddings lowerCAmelCase = type_vocab_size lowerCAmelCase = initializer_range lowerCAmelCase = layer_norm_eps lowerCAmelCase = use_entity_aware_attention lowerCAmelCase = classifier_dropout
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import os from shutil import copyfile from typing import Any, Dict, List, Optional, Tuple import sentencepiece as spm from ...tokenization_utils import PreTrainedTokenizer from ...utils import logging SCREAMING_SNAKE_CASE__ : str = logging.get_logger(__name__) SCREAMING_SNAKE_CASE__ : Tuple = """▁""" SCREAMING_SNAKE_CASE__ : Union[str, Any] = {"""vocab_file""": """spiece.model"""} SCREAMING_SNAKE_CASE__ : List[Any] = { """vocab_file""": { """google/reformer-crime-and-punishment""": ( """https://huggingface.co/google/reformer-crime-and-punishment/resolve/main/spiece.model""" ) } } SCREAMING_SNAKE_CASE__ : Optional[int] = { """google/reformer-crime-and-punishment""": 52_42_88, } class lowerCamelCase_ ( lowerCamelCase ): a__ = VOCAB_FILES_NAMES a__ = PRETRAINED_VOCAB_FILES_MAP a__ = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES a__ = ['''input_ids''', '''attention_mask'''] def __init__( self , __lowerCAmelCase , __lowerCAmelCase="</s>" , __lowerCAmelCase="<unk>" , __lowerCAmelCase=[] , __lowerCAmelCase = None , **__lowerCAmelCase , ): """simple docstring""" __magic_name__ :int = {} if sp_model_kwargs is None else sp_model_kwargs super().__init__( eos_token=__lowerCAmelCase , unk_token=__lowerCAmelCase , additional_special_tokens=__lowerCAmelCase , sp_model_kwargs=self.sp_model_kwargs , **__lowerCAmelCase , ) __magic_name__ :Optional[Any] = vocab_file __magic_name__ :int = spm.SentencePieceProcessor(**self.sp_model_kwargs ) self.sp_model.Load(__lowerCAmelCase ) @property def A ( self ): """simple docstring""" return self.sp_model.get_piece_size() def A ( self ): """simple docstring""" __magic_name__ :str = {self.convert_ids_to_tokens(__lowerCAmelCase ): i for i in range(self.vocab_size )} vocab.update(self.added_tokens_encoder ) return vocab def __getstate__( self ): """simple docstring""" __magic_name__ :Optional[Any] = self.__dict__.copy() __magic_name__ :Optional[Any] = None return state def __setstate__( self , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Any = d # for backward compatibility if not hasattr(self , '''sp_model_kwargs''' ): __magic_name__ :Optional[int] = {} __magic_name__ :Union[str, Any] = spm.SentencePieceProcessor(**self.sp_model_kwargs ) self.sp_model.Load(self.vocab_file ) def A ( self , __lowerCAmelCase ): """simple docstring""" return self.sp_model.encode(__lowerCAmelCase , out_type=__lowerCAmelCase ) def A ( self , __lowerCAmelCase ): """simple docstring""" return self.sp_model.piece_to_id(__lowerCAmelCase ) def A ( self , __lowerCAmelCase ): """simple docstring""" if index < self.sp_model.get_piece_size(): __magic_name__ :int = self.sp_model.IdToPiece(__lowerCAmelCase ) return token def A ( self , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Optional[Any] = [] __magic_name__ :Tuple = '''''' for token in tokens: # make sure that special tokens are not decoded using sentencepiece model if token in self.all_special_tokens: out_string += self.sp_model.decode(__lowerCAmelCase ) + token __magic_name__ :Optional[Any] = [] else: current_sub_tokens.append(__lowerCAmelCase ) out_string += self.sp_model.decode(__lowerCAmelCase ) return out_string.strip() def A ( self , __lowerCAmelCase , __lowerCAmelCase = None ): """simple docstring""" if not os.path.isdir(__lowerCAmelCase ): logger.error(F'''Vocabulary path ({save_directory}) should be a directory''' ) return __magic_name__ :Optional[int] = os.path.join( __lowerCAmelCase , (filename_prefix + '''-''' if filename_prefix else '''''') + VOCAB_FILES_NAMES['''vocab_file'''] ) if os.path.abspath(self.vocab_file ) != os.path.abspath(__lowerCAmelCase ) and os.path.isfile(self.vocab_file ): copyfile(self.vocab_file , __lowerCAmelCase ) elif not os.path.isfile(self.vocab_file ): with open(__lowerCAmelCase , '''wb''' ) as fi: __magic_name__ :Dict = self.sp_model.serialized_model_proto() fi.write(__lowerCAmelCase ) return (out_vocab_file,)
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0
import json import os import unittest from transformers.models.ctrl.tokenization_ctrl import VOCAB_FILES_NAMES, CTRLTokenizer from ...test_tokenization_common import TokenizerTesterMixin class SCREAMING_SNAKE_CASE_ (a__ , unittest.TestCase ): '''simple docstring''' _a = CTRLTokenizer _a = False _a = False def _lowerCAmelCase ( self : List[str] ) ->List[Any]: super().setUp() # Adapted from Sennrich et al. 2015 and https://github.com/rsennrich/subword-nmt lowerCamelCase_ : List[Any] = ['''adapt''', '''re@@''', '''a@@''', '''apt''', '''c@@''', '''t''', '''<unk>'''] lowerCamelCase_ : Optional[Any] = dict(zip(__lowerCAmelCase , range(len(__lowerCAmelCase ) ) ) ) lowerCamelCase_ : Tuple = ['''#version: 0.2''', '''a p''', '''ap t</w>''', '''r e''', '''a d''', '''ad apt</w>''', ''''''] lowerCamelCase_ : str = {'''unk_token''': '''<unk>'''} lowerCamelCase_ : Optional[int] = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES["""vocab_file"""] ) lowerCamelCase_ : int = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES["""merges_file"""] ) with open(self.vocab_file , """w""" , encoding="""utf-8""" ) as fp: fp.write(json.dumps(__lowerCAmelCase ) + """\n""" ) with open(self.merges_file , """w""" , encoding="""utf-8""" ) as fp: fp.write("""\n""".join(__lowerCAmelCase ) ) def _lowerCAmelCase ( self : List[Any] , **__a : Tuple ) ->Optional[Any]: kwargs.update(self.special_tokens_map ) return CTRLTokenizer.from_pretrained(self.tmpdirname , **__lowerCAmelCase ) def _lowerCAmelCase ( self : int , __a : int ) ->Any: lowerCamelCase_ : Optional[int] = '''adapt react readapt apt''' lowerCamelCase_ : Optional[Any] = '''adapt react readapt apt''' return input_text, output_text def _lowerCAmelCase ( self : Union[str, Any] ) ->Optional[int]: lowerCamelCase_ : str = CTRLTokenizer(self.vocab_file , self.merges_file , **self.special_tokens_map ) lowerCamelCase_ : List[Any] = '''adapt react readapt apt''' lowerCamelCase_ : str = '''adapt re@@ a@@ c@@ t re@@ adapt apt'''.split() lowerCamelCase_ : List[Any] = tokenizer.tokenize(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) lowerCamelCase_ : List[str] = tokens + [tokenizer.unk_token] lowerCamelCase_ : int = [0, 1, 2, 4, 5, 1, 0, 3, 6] self.assertListEqual(tokenizer.convert_tokens_to_ids(__lowerCAmelCase ) , __lowerCAmelCase )
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import os import unittest from transformers import MobileBertTokenizer, MobileBertTokenizerFast from transformers.models.bert.tokenization_bert import ( VOCAB_FILES_NAMES, BasicTokenizer, WordpieceTokenizer, _is_control, _is_punctuation, _is_whitespace, ) from transformers.testing_utils import require_tokenizers, slow from ...test_tokenization_common import TokenizerTesterMixin, filter_non_english @require_tokenizers class lowerCamelCase_ ( lowerCamelCase , unittest.TestCase ): a__ = MobileBertTokenizer a__ = MobileBertTokenizerFast a__ = True a__ = True a__ = filter_non_english a__ = '''google/mobilebert-uncased''' def A ( self ): """simple docstring""" super().setUp() __magic_name__ :Tuple = [ '''[UNK]''', '''[CLS]''', '''[SEP]''', '''[PAD]''', '''[MASK]''', '''want''', '''##want''', '''##ed''', '''wa''', '''un''', '''runn''', '''##ing''', ''',''', '''low''', '''lowest''', ] __magic_name__ :Dict = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES['''vocab_file'''] ) with open(self.vocab_file , '''w''' , encoding='''utf-8''' ) as vocab_writer: vocab_writer.write(''''''.join([x + '''\n''' for x in vocab_tokens] ) ) __magic_name__ :List[str] = [ (tokenizer_def[0], self.pre_trained_model_path, tokenizer_def[2]) # else the 'google/' prefix is stripped for tokenizer_def in self.tokenizers_list ] def A ( self , __lowerCAmelCase ): """simple docstring""" __magic_name__ :Union[str, Any] = '''UNwant\u00E9d,running''' __magic_name__ :int = '''unwanted, running''' return input_text, output_text def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = self.tokenizer_class(self.vocab_file ) __magic_name__ :List[Any] = tokenizer.tokenize('''UNwant\u00E9d,running''' ) self.assertListEqual(__lowerCAmelCase , ['''un''', '''##want''', '''##ed''', ''',''', '''runn''', '''##ing'''] ) self.assertListEqual(tokenizer.convert_tokens_to_ids(__lowerCAmelCase ) , [9, 6, 7, 1_2, 1_0, 1_1] ) def A ( self ): """simple docstring""" if not self.test_rust_tokenizer: return __magic_name__ :int = self.get_tokenizer() __magic_name__ :Tuple = self.get_rust_tokenizer() __magic_name__ :List[str] = '''UNwant\u00E9d,running''' __magic_name__ :Optional[Any] = tokenizer.tokenize(__lowerCAmelCase ) __magic_name__ :List[Any] = rust_tokenizer.tokenize(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :int = tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :str = rust_tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :List[Any] = self.get_rust_tokenizer() __magic_name__ :Any = tokenizer.encode(__lowerCAmelCase ) __magic_name__ :Any = rust_tokenizer.encode(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) # With lower casing __magic_name__ :Any = self.get_tokenizer(do_lower_case=__lowerCAmelCase ) __magic_name__ :List[Any] = self.get_rust_tokenizer(do_lower_case=__lowerCAmelCase ) __magic_name__ :Dict = '''UNwant\u00E9d,running''' __magic_name__ :Tuple = tokenizer.tokenize(__lowerCAmelCase ) __magic_name__ :Union[str, Any] = rust_tokenizer.tokenize(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :Optional[Any] = tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :Dict = rust_tokenizer.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :Tuple = self.get_rust_tokenizer() __magic_name__ :Dict = tokenizer.encode(__lowerCAmelCase ) __magic_name__ :List[Any] = rust_tokenizer.encode(__lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = BasicTokenizer() self.assertListEqual(tokenizer.tokenize('''ah\u535A\u63A8zz''' ) , ['''ah''', '''\u535A''', '''\u63A8''', '''zz'''] ) def A ( self ): """simple docstring""" __magic_name__ :List[Any] = BasicTokenizer(do_lower_case=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHeLLo!how \n Are yoU? ''' ) , ['''hello''', '''!''', '''how''', '''are''', '''you''', '''?'''] ) self.assertListEqual(tokenizer.tokenize('''H\u00E9llo''' ) , ['''hello'''] ) def A ( self ): """simple docstring""" __magic_name__ :Union[str, Any] = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''hällo''', '''!''', '''how''', '''are''', '''you''', '''?'''] ) self.assertListEqual(tokenizer.tokenize('''H\u00E9llo''' ) , ['''h\u00E9llo'''] ) def A ( self ): """simple docstring""" __magic_name__ :Dict = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''hallo''', '''!''', '''how''', '''are''', '''you''', '''?'''] ) self.assertListEqual(tokenizer.tokenize('''H\u00E9llo''' ) , ['''hello'''] ) def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = BasicTokenizer(do_lower_case=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''hallo''', '''!''', '''how''', '''are''', '''you''', '''?'''] ) self.assertListEqual(tokenizer.tokenize('''H\u00E9llo''' ) , ['''hello'''] ) def A ( self ): """simple docstring""" __magic_name__ :List[str] = BasicTokenizer(do_lower_case=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHeLLo!how \n Are yoU? ''' ) , ['''HeLLo''', '''!''', '''how''', '''Are''', '''yoU''', '''?'''] ) def A ( self ): """simple docstring""" __magic_name__ :int = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''HäLLo''', '''!''', '''how''', '''Are''', '''yoU''', '''?'''] ) def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = BasicTokenizer(do_lower_case=__lowerCAmelCase , strip_accents=__lowerCAmelCase ) self.assertListEqual( tokenizer.tokenize(''' \tHäLLo!how \n Are yoU? ''' ) , ['''HaLLo''', '''!''', '''how''', '''Are''', '''yoU''', '''?'''] ) def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = BasicTokenizer(do_lower_case=__lowerCAmelCase , never_split=['''[UNK]'''] ) self.assertListEqual( tokenizer.tokenize(''' \tHeLLo!how \n Are yoU? [UNK]''' ) , ['''HeLLo''', '''!''', '''how''', '''Are''', '''yoU''', '''?''', '''[UNK]'''] ) def A ( self ): """simple docstring""" __magic_name__ :int = ['''[UNK]''', '''[CLS]''', '''[SEP]''', '''want''', '''##want''', '''##ed''', '''wa''', '''un''', '''runn''', '''##ing'''] __magic_name__ :Union[str, Any] = {} for i, token in enumerate(__lowerCAmelCase ): __magic_name__ :Tuple = i __magic_name__ :List[Any] = WordpieceTokenizer(vocab=__lowerCAmelCase , unk_token='''[UNK]''' ) self.assertListEqual(tokenizer.tokenize('''''' ) , [] ) self.assertListEqual(tokenizer.tokenize('''unwanted running''' ) , ['''un''', '''##want''', '''##ed''', '''runn''', '''##ing'''] ) self.assertListEqual(tokenizer.tokenize('''unwantedX running''' ) , ['''[UNK]''', '''runn''', '''##ing'''] ) def A ( self ): """simple docstring""" self.assertTrue(_is_whitespace(''' ''' ) ) self.assertTrue(_is_whitespace('''\t''' ) ) self.assertTrue(_is_whitespace('''\r''' ) ) self.assertTrue(_is_whitespace('''\n''' ) ) self.assertTrue(_is_whitespace('''\u00A0''' ) ) self.assertFalse(_is_whitespace('''A''' ) ) self.assertFalse(_is_whitespace('''-''' ) ) def A ( self ): """simple docstring""" self.assertTrue(_is_control('''\u0005''' ) ) self.assertFalse(_is_control('''A''' ) ) self.assertFalse(_is_control(''' ''' ) ) self.assertFalse(_is_control('''\t''' ) ) self.assertFalse(_is_control('''\r''' ) ) def A ( self ): """simple docstring""" self.assertTrue(_is_punctuation('''-''' ) ) self.assertTrue(_is_punctuation('''$''' ) ) self.assertTrue(_is_punctuation('''`''' ) ) self.assertTrue(_is_punctuation('''.''' ) ) self.assertFalse(_is_punctuation('''A''' ) ) self.assertFalse(_is_punctuation(''' ''' ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = self.get_tokenizer() __magic_name__ :Any = self.get_rust_tokenizer() # Example taken from the issue https://github.com/huggingface/tokenizers/issues/340 self.assertListEqual([tokenizer.tokenize(__lowerCAmelCase ) for t in ['''Test''', '''\xad''', '''test''']] , [['''[UNK]'''], [], ['''[UNK]''']] ) self.assertListEqual( [rust_tokenizer.tokenize(__lowerCAmelCase ) for t in ['''Test''', '''\xad''', '''test''']] , [['''[UNK]'''], [], ['''[UNK]''']] ) @slow def A ( self ): """simple docstring""" __magic_name__ :Optional[int] = self.tokenizer_class.from_pretrained('''google/mobilebert-uncased''' ) __magic_name__ :Optional[int] = tokenizer.encode('''sequence builders''' , add_special_tokens=__lowerCAmelCase ) __magic_name__ :List[Any] = tokenizer.encode('''multi-sequence build''' , add_special_tokens=__lowerCAmelCase ) __magic_name__ :Union[str, Any] = tokenizer.build_inputs_with_special_tokens(__lowerCAmelCase ) __magic_name__ :List[Any] = tokenizer.build_inputs_with_special_tokens(__lowerCAmelCase , __lowerCAmelCase ) assert encoded_sentence == [1_0_1] + text + [1_0_2] assert encoded_pair == [1_0_1] + text + [1_0_2] + text_a + [1_0_2] def A ( self ): """simple docstring""" for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F'''{tokenizer.__class__.__name__} ({pretrained_name})''' ): __magic_name__ :Optional[Any] = self.rust_tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Optional[int] = F'''A, naïve {tokenizer_r.mask_token} AllenNLP sentence.''' __magic_name__ :Optional[Any] = tokenizer_r.encode_plus( __lowerCAmelCase , return_attention_mask=__lowerCAmelCase , return_token_type_ids=__lowerCAmelCase , return_offsets_mapping=__lowerCAmelCase , add_special_tokens=__lowerCAmelCase , ) __magic_name__ :Any = tokenizer_r.do_lower_case if hasattr(__lowerCAmelCase , '''do_lower_case''' ) else False __magic_name__ :Optional[int] = ( [ ((0, 0), tokenizer_r.cls_token), ((0, 1), '''A'''), ((1, 2), ''','''), ((3, 5), '''na'''), ((5, 6), '''##ï'''), ((6, 8), '''##ve'''), ((9, 1_5), tokenizer_r.mask_token), ((1_6, 2_1), '''Allen'''), ((2_1, 2_3), '''##NL'''), ((2_3, 2_4), '''##P'''), ((2_5, 3_3), '''sentence'''), ((3_3, 3_4), '''.'''), ((0, 0), tokenizer_r.sep_token), ] if not do_lower_case else [ ((0, 0), tokenizer_r.cls_token), ((0, 1), '''a'''), ((1, 2), ''','''), ((3, 8), '''naive'''), ((9, 1_5), tokenizer_r.mask_token), ((1_6, 2_1), '''allen'''), ((2_1, 2_3), '''##nl'''), ((2_3, 2_4), '''##p'''), ((2_5, 3_3), '''sentence'''), ((3_3, 3_4), '''.'''), ((0, 0), tokenizer_r.sep_token), ] ) self.assertEqual( [e[1] for e in expected_results] , tokenizer_r.convert_ids_to_tokens(tokens['''input_ids'''] ) ) self.assertEqual([e[0] for e in expected_results] , tokens['''offset_mapping'''] ) def A ( self ): """simple docstring""" __magic_name__ :Dict = ['''的''', '''人''', '''有'''] __magic_name__ :Any = ''''''.join(__lowerCAmelCase ) for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F'''{tokenizer.__class__.__name__} ({pretrained_name})''' ): __magic_name__ :Optional[Any] = True __magic_name__ :Optional[int] = self.tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Tuple = self.rust_tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Dict = tokenizer_p.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :List[str] = tokenizer_r.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :Dict = tokenizer_r.convert_ids_to_tokens(__lowerCAmelCase ) __magic_name__ :Union[str, Any] = tokenizer_p.convert_ids_to_tokens(__lowerCAmelCase ) # it is expected that each Chinese character is not preceded by "##" self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) __magic_name__ :List[str] = False __magic_name__ :Tuple = self.rust_tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :List[str] = self.tokenizer_class.from_pretrained(__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Optional[Any] = tokenizer_r.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :Union[str, Any] = tokenizer_p.encode(__lowerCAmelCase , add_special_tokens=__lowerCAmelCase ) __magic_name__ :List[str] = tokenizer_r.convert_ids_to_tokens(__lowerCAmelCase ) __magic_name__ :Optional[int] = tokenizer_p.convert_ids_to_tokens(__lowerCAmelCase ) # it is expected that only the first Chinese character is not preceded by "##". __magic_name__ :Dict = [ F'''##{token}''' if idx != 0 else token for idx, token in enumerate(__lowerCAmelCase ) ] self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase ) self.assertListEqual(__lowerCAmelCase , __lowerCAmelCase )
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0
import argparse import torch from transformers import YosoConfig, YosoForMaskedLM def _lowerCamelCase( lowercase__ ) -> Optional[Any]: '''simple docstring''' if "model" in orig_key: __lowercase= orig_key.replace('model.' , '' ) if "norm1" in orig_key: __lowercase= orig_key.replace('norm1' , 'attention.output.LayerNorm' ) if "norm2" in orig_key: __lowercase= orig_key.replace('norm2' , 'output.LayerNorm' ) if "norm" in orig_key: __lowercase= orig_key.replace('norm' , 'LayerNorm' ) if "transformer" in orig_key: __lowercase= orig_key.split('.' )[0].split('_' )[-1] __lowercase= orig_key.replace(F'transformer_{layer_num}' , F'encoder.layer.{layer_num}' ) if "mha.attn" in orig_key: __lowercase= orig_key.replace('mha.attn' , 'attention.self' ) if "mha" in orig_key: __lowercase= orig_key.replace('mha' , 'attention' ) if "W_q" in orig_key: __lowercase= orig_key.replace('W_q' , 'self.query' ) if "W_k" in orig_key: __lowercase= orig_key.replace('W_k' , 'self.key' ) if "W_v" in orig_key: __lowercase= orig_key.replace('W_v' , 'self.value' ) if "ff1" in orig_key: __lowercase= orig_key.replace('ff1' , 'intermediate.dense' ) if "ff2" in orig_key: __lowercase= orig_key.replace('ff2' , 'output.dense' ) if "ff" in orig_key: __lowercase= orig_key.replace('ff' , 'output.dense' ) if "mlm_class" in orig_key: __lowercase= orig_key.replace('mlm.mlm_class' , 'cls.predictions.decoder' ) if "mlm" in orig_key: __lowercase= orig_key.replace('mlm' , 'cls.predictions.transform' ) if "cls" not in orig_key: __lowercase= '''yoso.''' + orig_key return orig_key def _lowerCamelCase( lowercase__ , lowercase__ ) -> Optional[int]: '''simple docstring''' for key in orig_state_dict.copy().keys(): __lowercase= orig_state_dict.pop(lowercase__ ) if ("pooler" in key) or ("sen_class" in key): continue else: __lowercase= val __lowercase= orig_state_dict['''cls.predictions.decoder.bias'''] __lowercase= torch.arange(lowercase__ ).expand((1, -1) ) + 2 return orig_state_dict def _lowerCamelCase( lowercase__ , lowercase__ , lowercase__ ) -> Optional[int]: '''simple docstring''' __lowercase= torch.load(lowercase__ , map_location='cpu' )['''model_state_dict'''] __lowercase= YosoConfig.from_json_file(lowercase__ ) __lowercase= YosoForMaskedLM(lowercase__ ) __lowercase= convert_checkpoint_helper(config.max_position_embeddings , lowercase__ ) print(model.load_state_dict(lowercase__ ) ) model.eval() model.save_pretrained(lowercase__ ) print(F'Checkpoint successfuly converted. Model saved at {pytorch_dump_path}' ) if __name__ == "__main__": lowerCAmelCase = argparse.ArgumentParser() # Required parameters parser.add_argument( '''--pytorch_model_path''', default=None, type=str, required=True, help='''Path to YOSO pytorch checkpoint.''' ) parser.add_argument( '''--config_file''', default=None, type=str, required=True, help='''The json file for YOSO model config.''', ) parser.add_argument( '''--pytorch_dump_path''', default=None, type=str, required=True, help='''Path to the output PyTorch model.''' ) lowerCAmelCase = parser.parse_args() convert_yoso_checkpoint(args.pytorch_model_path, args.config_file, args.pytorch_dump_path)
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import logging import os import quant_trainer import torch from torch.utils.data import DataLoader from transformers import Trainer, is_torch_tpu_available from transformers.trainer_utils import PredictionOutput SCREAMING_SNAKE_CASE__ : List[str] = logging.getLogger(__name__) if is_torch_tpu_available(check_device=False): import torch_xla.core.xla_model as xm import torch_xla.debug.metrics as met class lowerCamelCase_ ( lowerCamelCase ): def __init__( self , *__lowerCAmelCase , __lowerCAmelCase=None , __lowerCAmelCase=None , __lowerCAmelCase=None , **__lowerCAmelCase ): """simple docstring""" super().__init__(*__lowerCAmelCase , **__lowerCAmelCase ) __magic_name__ :Any = eval_examples __magic_name__ :str = post_process_function __magic_name__ :int = quant_trainer_args __magic_name__ :List[str] = 1_2_8 # default number of calibration samples def A ( self , __lowerCAmelCase=None ): """simple docstring""" if calib_dataset is None and self.calib_dataset is None: raise ValueError('''Trainer: calibration requires an calib_dataset.''' ) __magic_name__ :Optional[Any] = calib_dataset if calib_dataset is not None else self.calib_dataset __magic_name__ :Optional[int] = self._remove_unused_columns(__lowerCAmelCase , description='''Calibration''' ) return DataLoader( __lowerCAmelCase , batch_size=self.args.eval_batch_size , collate_fn=self.data_collator , drop_last=self.args.dataloader_drop_last , num_workers=self.args.dataloader_num_workers , pin_memory=self.args.dataloader_pin_memory , shuffle=__lowerCAmelCase , ) def A ( self , __lowerCAmelCase=None ): """simple docstring""" __magic_name__ :Dict = self.train_dataset if calib_dataset is None else calib_dataset __magic_name__ :Any = self.get_calib_dataloader(__lowerCAmelCase ) __magic_name__ :List[str] = self.model quant_trainer.configure_model(__lowerCAmelCase , self.quant_trainer_args , calib=__lowerCAmelCase ) model.eval() quant_trainer.enable_calibration(__lowerCAmelCase ) logger.info('''***** Running calibration *****''' ) logger.info(F''' Num examples = {self.calib_num}''' ) logger.info(F''' Batch size = {calib_dataloader.batch_size}''' ) for step, inputs in enumerate(__lowerCAmelCase ): # Prediction step __magic_name__ , __magic_name__ , __magic_name__ :str = self.prediction_step(__lowerCAmelCase , __lowerCAmelCase , prediction_loss_only=__lowerCAmelCase ) if (step + 1) * calib_dataloader.batch_size >= self.calib_num: break quant_trainer.finish_calibration(__lowerCAmelCase , self.quant_trainer_args ) __magic_name__ :Any = model def A ( self , __lowerCAmelCase=None , __lowerCAmelCase=None , __lowerCAmelCase=None , __lowerCAmelCase = "eval" ): """simple docstring""" __magic_name__ :Tuple = self.eval_dataset if eval_dataset is None else eval_dataset __magic_name__ :Optional[Any] = self.get_eval_dataloader(__lowerCAmelCase ) __magic_name__ :str = self.eval_examples if eval_examples is None else eval_examples # Temporarily disable metric computation, we will do it in the loop here. __magic_name__ :Any = self.compute_metrics __magic_name__ :List[Any] = None __magic_name__ :List[str] = self.prediction_loop if self.args.use_legacy_prediction_loop else self.evaluation_loop try: __magic_name__ :Optional[Any] = eval_loop( __lowerCAmelCase , description='''Evaluation''' , prediction_loss_only=True if compute_metrics is None else None , ignore_keys=__lowerCAmelCase , ) finally: __magic_name__ :Union[str, Any] = compute_metrics if self.post_process_function is not None and self.compute_metrics is not None: __magic_name__ :Union[str, Any] = self.post_process_function(__lowerCAmelCase , __lowerCAmelCase , output.predictions ) __magic_name__ :int = self.compute_metrics(__lowerCAmelCase ) # Prefix all keys with metric_key_prefix + '_' for key in list(metrics.keys() ): if not key.startswith(F'''{metric_key_prefix}_''' ): __magic_name__ :Dict = metrics.pop(__lowerCAmelCase ) self.log(__lowerCAmelCase ) else: __magic_name__ :List[str] = {} if self.args.tpu_metrics_debug or self.args.debug: # tpu-comment: Logging debug metrics for PyTorch/XLA (compile, execute times, ops, etc.) xm.master_print(met.metrics_report() ) __magic_name__ :Optional[Any] = self.callback_handler.on_evaluate(self.args , self.state , self.control , __lowerCAmelCase ) return metrics def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase=None , __lowerCAmelCase = "test" ): """simple docstring""" __magic_name__ :int = self.get_test_dataloader(__lowerCAmelCase ) # Temporarily disable metric computation, we will do it in the loop here. __magic_name__ :Dict = self.compute_metrics __magic_name__ :str = None __magic_name__ :Optional[int] = self.prediction_loop if self.args.use_legacy_prediction_loop else self.evaluation_loop try: __magic_name__ :int = eval_loop( __lowerCAmelCase , description='''Prediction''' , prediction_loss_only=True if compute_metrics is None else None , ignore_keys=__lowerCAmelCase , ) finally: __magic_name__ :List[Any] = compute_metrics if self.post_process_function is None or self.compute_metrics is None: return output __magic_name__ :Optional[Any] = self.post_process_function(__lowerCAmelCase , __lowerCAmelCase , output.predictions , '''predict''' ) __magic_name__ :Dict = self.compute_metrics(__lowerCAmelCase ) # Prefix all keys with metric_key_prefix + '_' for key in list(metrics.keys() ): if not key.startswith(F'''{metric_key_prefix}_''' ): __magic_name__ :List[str] = metrics.pop(__lowerCAmelCase ) return PredictionOutput(predictions=predictions.predictions , label_ids=predictions.label_ids , metrics=__lowerCAmelCase ) def A ( self , __lowerCAmelCase="./" ): """simple docstring""" __magic_name__ :List[Any] = self.eval_dataset __magic_name__ :Any = self.get_eval_dataloader(__lowerCAmelCase ) __magic_name__ :int = next(iter(__lowerCAmelCase ) ) # saving device - to make it consistent __magic_name__ :str = torch.device('''cuda''' if torch.cuda.is_available() else '''cpu''' ) # convert to tuple __magic_name__ :int = tuple(v.to(__lowerCAmelCase ) for k, v in batch.items() ) logger.info('''Converting model to be onnx compatible''' ) from pytorch_quantization.nn import TensorQuantizer __magic_name__ :Any = True __magic_name__ :Optional[int] = self.model.to(__lowerCAmelCase ) model.eval() model.float() __magic_name__ :Any = model.module if hasattr(__lowerCAmelCase , '''module''' ) else model quant_trainer.configure_model(__lowerCAmelCase , self.quant_trainer_args ) __magic_name__ :int = os.path.join(__lowerCAmelCase , '''model.onnx''' ) logger.info(F'''exporting model to {output_model_file}''' ) __magic_name__ :Dict = {0: '''batch_size''', 1: '''seq_len'''} torch.onnx.export( __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , export_params=__lowerCAmelCase , opset_version=1_3 , do_constant_folding=__lowerCAmelCase , input_names=['''input_ids''', '''attention_mask''', '''token_type_ids'''] , output_names=['''output_start_logits''', '''output_end_logits'''] , dynamic_axes={ '''input_ids''': axes, '''attention_mask''': axes, '''token_type_ids''': axes, '''output_start_logits''': axes, '''output_end_logits''': axes, } , verbose=__lowerCAmelCase , ) logger.info('''onnx export finished''' )
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"""simple docstring""" from ...configuration_utils import PretrainedConfig from ...utils import logging a__ : Any = logging.get_logger(__name__) a__ : List[str] = { """facebook/timesformer""": """https://huggingface.co/facebook/timesformer/resolve/main/config.json""", } class __magic_name__ ( _UpperCamelCase ): UpperCamelCase : Optional[int] = "timesformer" def __init__( self , __magic_name__=2_2_4 , __magic_name__=1_6 , __magic_name__=3 , __magic_name__=8 , __magic_name__=7_6_8 , __magic_name__=1_2 , __magic_name__=1_2 , __magic_name__=3_0_7_2 , __magic_name__="gelu" , __magic_name__=0.0 , __magic_name__=0.0 , __magic_name__=0.02 , __magic_name__=1e-6 , __magic_name__=True , __magic_name__="divided_space_time" , __magic_name__=0 , **__magic_name__ , ): """simple docstring""" super().__init__(**__lowerCAmelCase ) _lowerCAmelCase = image_size _lowerCAmelCase = patch_size _lowerCAmelCase = num_channels _lowerCAmelCase = num_frames _lowerCAmelCase = hidden_size _lowerCAmelCase = num_hidden_layers _lowerCAmelCase = num_attention_heads _lowerCAmelCase = intermediate_size _lowerCAmelCase = hidden_act _lowerCAmelCase = hidden_dropout_prob _lowerCAmelCase = attention_probs_dropout_prob _lowerCAmelCase = initializer_range _lowerCAmelCase = layer_norm_eps _lowerCAmelCase = qkv_bias _lowerCAmelCase = attention_type _lowerCAmelCase = drop_path_rate
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def __lowercase ( snake_case ): """simple docstring""" return "".join([hex(snake_case )[2:].zfill(2 ).upper() for byte in list(snake_case )] ) def __lowercase ( snake_case ): """simple docstring""" if (len(snake_case ) % 2) != 0: raise ValueError( '''Base16 encoded data is invalid: Data does not have an even number of hex digits.''' ) # Check the character set - the standard base16 alphabet # is uppercase according to RFC3548 section 6 if not set(snake_case ) <= set('''0123456789ABCDEF''' ): raise ValueError( '''Base16 encoded data is invalid: Data is not uppercase hex or it contains invalid characters.''' ) # For every two hexadecimal digits (= a byte), turn it into an integer. # Then, string the result together into bytes, and return it. return bytes(int(data[i] + data[i + 1], 1_6 ) for i in range(0, len(snake_case ), 2 ) ) if __name__ == "__main__": import doctest doctest.testmod()
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from typing import TYPE_CHECKING from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_torch_available, is_vision_available _A : Optional[Any] = { """configuration_poolformer""": [ """POOLFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP""", """PoolFormerConfig""", """PoolFormerOnnxConfig""", ] } try: if not is_vision_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: _A : List[Any] = ["""PoolFormerFeatureExtractor"""] _A : int = ["""PoolFormerImageProcessor"""] try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: _A : str = [ """POOLFORMER_PRETRAINED_MODEL_ARCHIVE_LIST""", """PoolFormerForImageClassification""", """PoolFormerModel""", """PoolFormerPreTrainedModel""", ] if TYPE_CHECKING: from .configuration_poolformer import ( POOLFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP, PoolFormerConfig, PoolFormerOnnxConfig, ) try: if not is_vision_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .feature_extraction_poolformer import PoolFormerFeatureExtractor from .image_processing_poolformer import PoolFormerImageProcessor try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_poolformer import ( POOLFORMER_PRETRAINED_MODEL_ARCHIVE_LIST, PoolFormerForImageClassification, PoolFormerModel, PoolFormerPreTrainedModel, ) else: import sys _A : Optional[Any] = _LazyModule(__name__, globals()['__file__'], _import_structure)
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import pytest import requests from datasets.utils.file_utils import http_head from .utils import OfflineSimulationMode, RequestWouldHangIndefinitelyError, offline @pytest.mark.integration def __lowercase ( ): """simple docstring""" with offline(OfflineSimulationMode.CONNECTION_TIMES_OUT ): with pytest.raises(snake_case ): requests.request('''GET''', '''https://huggingface.co''' ) with pytest.raises(requests.exceptions.ConnectTimeout ): requests.request('''GET''', '''https://huggingface.co''', timeout=1.0 ) @pytest.mark.integration def __lowercase ( ): """simple docstring""" with offline(OfflineSimulationMode.CONNECTION_FAILS ): with pytest.raises(requests.exceptions.ConnectionError ): requests.request('''GET''', '''https://huggingface.co''' ) def __lowercase ( ): """simple docstring""" with offline(OfflineSimulationMode.HF_DATASETS_OFFLINE_SET_TO_1 ): with pytest.raises(snake_case ): http_head('''https://huggingface.co''' )
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'''simple docstring''' from __future__ import annotations def lowerCamelCase ( UpperCAmelCase__ : Tuple , UpperCAmelCase__ : Optional[int] , UpperCAmelCase__ : Optional[int] , UpperCAmelCase__ : Dict , UpperCAmelCase__ : Union[str, Any] , ) -> Tuple: '''simple docstring''' SCREAMING_SNAKE_CASE__ :Optional[int] = len(UpperCAmelCase__ ) # If row is equal to the size of the board it means there are a queen in each row in # the current board (possible_board) if row == n: # We convert the variable possible_board that looks like this: [1, 3, 0, 2] to # this: ['. Q . . ', '. . . Q ', 'Q . . . ', '. . Q . '] boards.append(['. ' * i + 'Q ' + '. ' * (n - 1 - i) for i in possible_board] ) return # We iterate each column in the row to find all possible results in each row for col in range(UpperCAmelCase__ ): # We apply that we learned previously. First we check that in the current board # (possible_board) there are not other same value because if there is it means # that there are a collision in vertical. Then we apply the two formulas we # learned before: # # 45º: y - x = b or 45: row - col = b # 135º: y + x = b or row + col = b. # # And we verify if the results of this two formulas not exist in their variables # respectively. (diagonal_right_collisions, diagonal_left_collisions) # # If any or these are True it means there is a collision so we continue to the # next value in the for loop. if ( col in possible_board or row - col in diagonal_right_collisions or row + col in diagonal_left_collisions ): continue # If it is False we call dfs function again and we update the inputs depth_first_search( [*possible_board, col] , [*diagonal_right_collisions, row - col] , [*diagonal_left_collisions, row + col] , UpperCAmelCase__ , UpperCAmelCase__ , ) def lowerCamelCase ( UpperCAmelCase__ : Optional[Any] ) -> Optional[int]: '''simple docstring''' SCREAMING_SNAKE_CASE__ :list[list[str]] = [] depth_first_search([] , [] , [] , UpperCAmelCase__ , UpperCAmelCase__ ) # Print all the boards for board in boards: for column in board: print(UpperCAmelCase__ ) print('' ) print(len(UpperCAmelCase__ ) , 'solutions were found.' ) if __name__ == "__main__": import doctest doctest.testmod() n_queens_solution(4)
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import math from collections.abc import Iterator from itertools import takewhile def __lowercase ( snake_case ): """simple docstring""" if 1 < number < 4: # 2 and 3 are primes return True elif number < 2 or number % 2 == 0 or number % 3 == 0: # Negatives, 0, 1, all even numbers, all multiples of 3 are not primes return False # All primes number are in format of 6k +/- 1 for i in range(5, int(math.sqrt(snake_case ) + 1 ), 6 ): if number % i == 0 or number % (i + 2) == 0: return False return True def __lowercase ( ): """simple docstring""" __magic_name__ :str = 2 while True: if is_prime(snake_case ): yield num num += 1 def __lowercase ( snake_case = 2_0_0_0_0_0_0 ): """simple docstring""" return sum(takewhile(lambda snake_case : x < n, prime_generator() ) ) if __name__ == "__main__": print(f"{solution() = }")
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from typing import Dict from .base import GenericTensor, Pipeline class _UpperCAmelCase ( __lowercase ): '''simple docstring''' def UpperCamelCase ( self : Dict , UpperCamelCase__ : int=None , UpperCamelCase__ : List[Any]=None , UpperCamelCase__ : Tuple=None , **UpperCamelCase__ : str ): if tokenize_kwargs is None: A = {} if truncation is not None: if "truncation" in tokenize_kwargs: raise ValueError( 'truncation parameter defined twice (given as keyword argument as well as in tokenize_kwargs)' ) A = truncation A = tokenize_kwargs A = {} if return_tensors is not None: A = return_tensors return preprocess_params, {}, postprocess_params def UpperCamelCase ( self : Union[str, Any] , UpperCamelCase__ : List[Any] , **UpperCamelCase__ : int ): A = self.framework A = self.tokenizer(__lowerCAmelCase , return_tensors=__lowerCAmelCase , **__lowerCAmelCase ) return model_inputs def UpperCamelCase ( self : Dict , UpperCamelCase__ : int ): A = self.model(**__lowerCAmelCase ) return model_outputs def UpperCamelCase ( self : List[str] , UpperCamelCase__ : Optional[Any] , UpperCamelCase__ : Optional[int]=False ): # [0] is the first available tensor, logits or last_hidden_state. if return_tensors: return model_outputs[0] if self.framework == "pt": return model_outputs[0].tolist() elif self.framework == "tf": return model_outputs[0].numpy().tolist() def __call__( self : Optional[int] , *UpperCamelCase__ : List[Any] , **UpperCamelCase__ : List[str] ): return super().__call__(*__lowerCAmelCase , **__lowerCAmelCase )
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import unittest import numpy as np from transformers.testing_utils import require_flax, require_tf, require_torch from transformers.utils import ( expand_dims, flatten_dict, is_flax_available, is_tf_available, is_torch_available, reshape, squeeze, transpose, ) if is_flax_available(): import jax.numpy as jnp if is_tf_available(): import tensorflow as tf if is_torch_available(): import torch class lowerCamelCase_ ( unittest.TestCase ): def A ( self ): """simple docstring""" __magic_name__ :List[Any] = { '''task_specific_params''': { '''summarization''': {'''length_penalty''': 1.0, '''max_length''': 1_2_8, '''min_length''': 1_2, '''num_beams''': 4}, '''summarization_cnn''': {'''length_penalty''': 2.0, '''max_length''': 1_4_2, '''min_length''': 5_6, '''num_beams''': 4}, '''summarization_xsum''': {'''length_penalty''': 1.0, '''max_length''': 6_2, '''min_length''': 1_1, '''num_beams''': 6}, } } __magic_name__ :List[str] = { '''task_specific_params.summarization.length_penalty''': 1.0, '''task_specific_params.summarization.max_length''': 1_2_8, '''task_specific_params.summarization.min_length''': 1_2, '''task_specific_params.summarization.num_beams''': 4, '''task_specific_params.summarization_cnn.length_penalty''': 2.0, '''task_specific_params.summarization_cnn.max_length''': 1_4_2, '''task_specific_params.summarization_cnn.min_length''': 5_6, '''task_specific_params.summarization_cnn.num_beams''': 4, '''task_specific_params.summarization_xsum.length_penalty''': 1.0, '''task_specific_params.summarization_xsum.max_length''': 6_2, '''task_specific_params.summarization_xsum.min_length''': 1_1, '''task_specific_params.summarization_xsum.num_beams''': 6, } self.assertEqual(flatten_dict(__lowerCAmelCase ) , __lowerCAmelCase ) def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = np.random.randn(3 , 4 ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , x.transpose() ) ) __magic_name__ :List[Any] = np.random.randn(3 , 4 , 5 ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , x.transpose((1, 2, 0) ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :Optional[Any] = np.random.randn(3 , 4 ) __magic_name__ :Tuple = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , transpose(__lowerCAmelCase ).numpy() ) ) __magic_name__ :int = np.random.randn(3 , 4 , 5 ) __magic_name__ :Union[str, Any] = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , transpose(__lowerCAmelCase , axes=(1, 2, 0) ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :int = np.random.randn(3 , 4 ) __magic_name__ :Optional[Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , transpose(__lowerCAmelCase ).numpy() ) ) __magic_name__ :List[str] = np.random.randn(3 , 4 , 5 ) __magic_name__ :Optional[Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , transpose(__lowerCAmelCase , axes=(1, 2, 0) ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :int = np.random.randn(3 , 4 ) __magic_name__ :Dict = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase ) , np.asarray(transpose(__lowerCAmelCase ) ) ) ) __magic_name__ :Dict = np.random.randn(3 , 4 , 5 ) __magic_name__ :Dict = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) , np.asarray(transpose(__lowerCAmelCase , axes=(1, 2, 0) ) ) ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = np.random.randn(3 , 4 ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , np.reshape(__lowerCAmelCase , (4, 3) ) ) ) __magic_name__ :Union[str, Any] = np.random.randn(3 , 4 , 5 ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , np.reshape(__lowerCAmelCase , (1_2, 5) ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :Dict = np.random.randn(3 , 4 ) __magic_name__ :Tuple = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , reshape(__lowerCAmelCase , (4, 3) ).numpy() ) ) __magic_name__ :Union[str, Any] = np.random.randn(3 , 4 , 5 ) __magic_name__ :List[str] = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , reshape(__lowerCAmelCase , (1_2, 5) ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :Dict = np.random.randn(3 , 4 ) __magic_name__ :Union[str, Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , reshape(__lowerCAmelCase , (4, 3) ).numpy() ) ) __magic_name__ :List[Any] = np.random.randn(3 , 4 , 5 ) __magic_name__ :Optional[int] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , reshape(__lowerCAmelCase , (1_2, 5) ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :List[str] = np.random.randn(3 , 4 ) __magic_name__ :Any = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (4, 3) ) , np.asarray(reshape(__lowerCAmelCase , (4, 3) ) ) ) ) __magic_name__ :List[Any] = np.random.randn(3 , 4 , 5 ) __magic_name__ :List[str] = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(reshape(__lowerCAmelCase , (1_2, 5) ) , np.asarray(reshape(__lowerCAmelCase , (1_2, 5) ) ) ) ) def A ( self ): """simple docstring""" __magic_name__ :List[Any] = np.random.randn(1 , 3 , 4 ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , np.squeeze(__lowerCAmelCase ) ) ) __magic_name__ :Optional[Any] = np.random.randn(1 , 4 , 1 , 5 ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , np.squeeze(__lowerCAmelCase , axis=2 ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :Dict = np.random.randn(1 , 3 , 4 ) __magic_name__ :List[Any] = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , squeeze(__lowerCAmelCase ).numpy() ) ) __magic_name__ :List[str] = np.random.randn(1 , 4 , 1 , 5 ) __magic_name__ :str = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , squeeze(__lowerCAmelCase , axis=2 ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :int = np.random.randn(1 , 3 , 4 ) __magic_name__ :Tuple = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , squeeze(__lowerCAmelCase ).numpy() ) ) __magic_name__ :Tuple = np.random.randn(1 , 4 , 1 , 5 ) __magic_name__ :Optional[int] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , squeeze(__lowerCAmelCase , axis=2 ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :Tuple = np.random.randn(1 , 3 , 4 ) __magic_name__ :Optional[Any] = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase ) , np.asarray(squeeze(__lowerCAmelCase ) ) ) ) __magic_name__ :List[Any] = np.random.randn(1 , 4 , 1 , 5 ) __magic_name__ :Optional[Any] = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(squeeze(__lowerCAmelCase , axis=2 ) , np.asarray(squeeze(__lowerCAmelCase , axis=2 ) ) ) ) def A ( self ): """simple docstring""" __magic_name__ :Any = np.random.randn(3 , 4 ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , np.expand_dims(__lowerCAmelCase , axis=1 ) ) ) @require_torch def A ( self ): """simple docstring""" __magic_name__ :List[Any] = np.random.randn(3 , 4 ) __magic_name__ :Any = torch.tensor(__lowerCAmelCase ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , expand_dims(__lowerCAmelCase , axis=1 ).numpy() ) ) @require_tf def A ( self ): """simple docstring""" __magic_name__ :Union[str, Any] = np.random.randn(3 , 4 ) __magic_name__ :Union[str, Any] = tf.constant(__lowerCAmelCase ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , expand_dims(__lowerCAmelCase , axis=1 ).numpy() ) ) @require_flax def A ( self ): """simple docstring""" __magic_name__ :List[str] = np.random.randn(3 , 4 ) __magic_name__ :Tuple = jnp.array(__lowerCAmelCase ) self.assertTrue(np.allclose(expand_dims(__lowerCAmelCase , axis=1 ) , np.asarray(expand_dims(__lowerCAmelCase , axis=1 ) ) ) )
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import random def lowerCamelCase__ ( snake_case_ : List[Any] , snake_case_ : Union[str, Any] , snake_case_ : Optional[Any] ) -> List[str]: __snake_case = a[left_index] __snake_case = left_index + 1 for j in range(left_index + 1 , snake_case_ ): if a[j] < pivot: __snake_case = a[i], a[j] i += 1 __snake_case = a[i - 1], a[left_index] return i - 1 def lowerCamelCase__ ( snake_case_ : Union[str, Any] , snake_case_ : str , snake_case_ : Optional[int] ) -> List[str]: if left < right: __snake_case = random.randint(snake_case_ , right - 1 ) __snake_case = ( a[left], a[pivot], ) # switches the pivot with the left most bound __snake_case = partition(snake_case_ , snake_case_ , snake_case_ ) quick_sort_random( snake_case_ , snake_case_ , snake_case_ ) # recursive quicksort to the left of the pivot point quick_sort_random( snake_case_ , pivot_index + 1 , snake_case_ ) # recursive quicksort to the right of the pivot point def lowerCamelCase__ ( ) -> Any: __snake_case = input('''Enter numbers separated by a comma:\n''' ).strip() __snake_case = [int(snake_case_ ) for item in user_input.split(''',''' )] quick_sort_random(snake_case_ , 0 , len(snake_case_ ) ) print(snake_case_ ) if __name__ == "__main__": main()
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from pathlib import PurePosixPath from typing import Optional import fsspec from fsspec import AbstractFileSystem from huggingface_hub.hf_api import DatasetInfo from ..utils.file_utils import get_authentication_headers_for_url from ..utils.hub import hf_hub_url class lowerCamelCase_ ( lowerCamelCase ): a__ = '''''' a__ = '''hf-legacy''' # "hf://"" is reserved for hffs def __init__( self , __lowerCAmelCase = None , __lowerCAmelCase = None , **__lowerCAmelCase , ): """simple docstring""" super().__init__(self , **__lowerCAmelCase ) __magic_name__ :List[Any] = repo_info __magic_name__ :Dict = token __magic_name__ :Optional[Any] = None def A ( self ): """simple docstring""" if self.dir_cache is None: __magic_name__ :Any = {} for hf_file in self.repo_info.siblings: # TODO(QL): add sizes __magic_name__ :Optional[int] = { '''name''': hf_file.rfilename, '''size''': None, '''type''': '''file''', } self.dir_cache.update( { str(__lowerCAmelCase ): {'''name''': str(__lowerCAmelCase ), '''size''': None, '''type''': '''directory'''} for d in list(PurePosixPath(hf_file.rfilename ).parents )[:-1] } ) def A ( self , __lowerCAmelCase , __lowerCAmelCase = "rb" , **__lowerCAmelCase , ): """simple docstring""" if not isinstance(self.repo_info , __lowerCAmelCase ): raise NotImplementedError(F'''Open is only implemented for dataset repositories, but got {self.repo_info}''' ) __magic_name__ :Union[str, Any] = hf_hub_url(self.repo_info.id , __lowerCAmelCase , revision=self.repo_info.sha ) return fsspec.open( __lowerCAmelCase , mode=__lowerCAmelCase , headers=get_authentication_headers_for_url(__lowerCAmelCase , use_auth_token=self.token ) , client_kwargs={'''trust_env''': True} , ).open() def A ( self , __lowerCAmelCase , **__lowerCAmelCase ): """simple docstring""" self._get_dirs() __magic_name__ :str = self._strip_protocol(__lowerCAmelCase ) if path in self.dir_cache: return self.dir_cache[path] else: raise FileNotFoundError(__lowerCAmelCase ) def A ( self , __lowerCAmelCase , __lowerCAmelCase=False , **__lowerCAmelCase ): """simple docstring""" self._get_dirs() __magic_name__ :Union[str, Any] = PurePosixPath(path.strip('''/''' ) ) __magic_name__ :Dict = {} for p, f in self.dir_cache.items(): __magic_name__ :int = PurePosixPath(p.strip('''/''' ) ) __magic_name__ :Tuple = p.parent if root == path: __magic_name__ :Optional[Any] = f __magic_name__ :List[Any] = list(paths.values() ) if detail: return out else: return sorted(f['''name'''] for f in out )
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import argparse import collections import torch from flax import traverse_util from tax import checkpoints from transformers import TaConfig, TaEncoderModel, TaForConditionalGeneration from transformers.utils import logging logging.set_verbosity_info() def __lowerCAmelCase ( _A ,_A ,_A ,_A="attention" ): """simple docstring""" _lowercase = params[f'''{prefix}/layers_{i}/{layer_name}/key/kernel'''] _lowercase = params[f'''{prefix}/layers_{i}/{layer_name}/out/kernel'''] _lowercase = params[f'''{prefix}/layers_{i}/{layer_name}/query/kernel'''] _lowercase = params[f'''{prefix}/layers_{i}/{layer_name}/value/kernel'''] return k, o, q, v def __lowerCAmelCase ( _A ,_A ,_A ,_A=False ): """simple docstring""" if split_mlp_wi: _lowercase = params[f'''{prefix}/layers_{i}/mlp/wi_0/kernel'''] _lowercase = params[f'''{prefix}/layers_{i}/mlp/wi_1/kernel'''] _lowercase = (wi_a, wi_a) else: _lowercase = params[f'''{prefix}/layers_{i}/mlp/wi/kernel'''] _lowercase = params[f'''{prefix}/layers_{i}/mlp/wo/kernel'''] return wi, wo def __lowerCAmelCase ( _A ,_A ,_A ,_A ): """simple docstring""" return params[f'''{prefix}/layers_{i}/{layer_name}/scale'''] def __lowerCAmelCase ( _A ,*, _A ,_A ): """simple docstring""" _lowercase = traverse_util.flatten_dict(variables["""target"""] ) _lowercase = {'''/'''.join(_A ): v for k, v in old.items()} # v1.1 models have a gated GeLU with wi_0 and wi_1 instead of wi _lowercase = '''encoder/layers_0/mlp/wi_0/kernel''' in old print("""Split MLP:""" ,_A ) _lowercase = collections.OrderedDict() # Shared embeddings. _lowercase = old['''token_embedder/embedding'''] # Encoder. for i in range(_A ): # Block i, layer 0 (Self Attention). _lowercase = tax_layer_norm_lookup(_A ,_A ,"""encoder""" ,"""pre_attention_layer_norm""" ) _lowercase = tax_attention_lookup(_A ,_A ,"""encoder""" ,"""attention""" ) _lowercase = layer_norm _lowercase = k.T _lowercase = o.T _lowercase = q.T _lowercase = v.T # Block i, layer 1 (MLP). _lowercase = tax_layer_norm_lookup(_A ,_A ,"""encoder""" ,"""pre_mlp_layer_norm""" ) _lowercase = tax_mlp_lookup(_A ,_A ,"""encoder""" ,_A ) _lowercase = layer_norm if split_mlp_wi: _lowercase = wi[0].T _lowercase = wi[1].T else: _lowercase = wi.T _lowercase = wo.T _lowercase = old[ '''encoder/relpos_bias/rel_embedding''' ].T _lowercase = old['''encoder/encoder_norm/scale'''] if not is_encoder_only: # Decoder. for i in range(_A ): # Block i, layer 0 (Self Attention). _lowercase = tax_layer_norm_lookup(_A ,_A ,"""decoder""" ,"""pre_self_attention_layer_norm""" ) _lowercase = tax_attention_lookup(_A ,_A ,"""decoder""" ,"""self_attention""" ) _lowercase = layer_norm _lowercase = k.T _lowercase = o.T _lowercase = q.T _lowercase = v.T # Block i, layer 1 (Cross Attention). _lowercase = tax_layer_norm_lookup(_A ,_A ,"""decoder""" ,"""pre_cross_attention_layer_norm""" ) _lowercase = tax_attention_lookup(_A ,_A ,"""decoder""" ,"""encoder_decoder_attention""" ) _lowercase = layer_norm _lowercase = k.T _lowercase = o.T _lowercase = q.T _lowercase = v.T # Block i, layer 2 (MLP). _lowercase = tax_layer_norm_lookup(_A ,_A ,"""decoder""" ,"""pre_mlp_layer_norm""" ) _lowercase = tax_mlp_lookup(_A ,_A ,"""decoder""" ,_A ) _lowercase = layer_norm if split_mlp_wi: _lowercase = wi[0].T _lowercase = wi[1].T else: _lowercase = wi.T _lowercase = wo.T _lowercase = old['''decoder/decoder_norm/scale'''] _lowercase = old[ '''decoder/relpos_bias/rel_embedding''' ].T # LM Head (only in v1.1 checkpoints, in v1.0 embeddings are used instead) if "decoder/logits_dense/kernel" in old: _lowercase = old['''decoder/logits_dense/kernel'''].T return new def __lowerCAmelCase ( _A ,_A ): """simple docstring""" _lowercase = collections.OrderedDict([(k, torch.from_numpy(v.copy() )) for (k, v) in converted_params.items()] ) # Add what is missing. if "encoder.embed_tokens.weight" not in state_dict: _lowercase = state_dict['''shared.weight'''] if not is_encoder_only: if "decoder.embed_tokens.weight" not in state_dict: _lowercase = state_dict['''shared.weight'''] if "lm_head.weight" not in state_dict: # For old 1.0 models. print("""Using shared word embeddings as lm_head.""" ) _lowercase = state_dict['''shared.weight'''] return state_dict def __lowerCAmelCase ( _A ,_A ,_A ,_A ): """simple docstring""" _lowercase = checkpoints.load_tax_checkpoint(_A ) _lowercase = convert_tax_to_pytorch(_A ,num_layers=config.num_layers ,is_encoder_only=_A ) _lowercase = make_state_dict(_A ,_A ) model.load_state_dict(_A ,strict=_A ) def __lowerCAmelCase ( _A ,_A ,_A ,_A = False ): """simple docstring""" _lowercase = TaConfig.from_json_file(_A ) print(f'''Building PyTorch model from configuration: {config}''' ) # Non-v1.1 checkpoints could also use T5Model, but this works for all. # The v1.0 checkpoints will simply have an LM head that is the word embeddings. if is_encoder_only: _lowercase = TaEncoderModel(_A ) else: _lowercase = TaForConditionalGeneration(_A ) # Load weights from tf checkpoint load_tax_weights_in_ta(_A ,_A ,_A ,_A ) # Save pytorch-model print(f'''Save PyTorch model to {pytorch_dump_path}''' ) model.save_pretrained(_A ) # Verify that we can load the checkpoint. model.from_pretrained(_A ) print("""Done""" ) if __name__ == "__main__": A_: List[str] = argparse.ArgumentParser(description='Converts a native T5X checkpoint into a PyTorch checkpoint.') # Required parameters parser.add_argument( '--t5x_checkpoint_path', default=None, type=str, required=True, help='Path to the T5X checkpoint.' ) parser.add_argument( '--config_file', default=None, type=str, required=True, help='The config json file corresponding to the pre-trained T5 model.\nThis specifies the model architecture.', ) parser.add_argument( '--pytorch_dump_path', default=None, type=str, required=True, help='Path to the output PyTorch model.' ) parser.add_argument( '--is_encoder_only', action='store_true', help='Check if the model is encoder-decoder model', default=False ) A_: Optional[Any] = parser.parse_args() convert_tax_checkpoint_to_pytorch( args.tax_checkpoint_path, args.config_file, args.pytorch_dump_path, args.is_encoder_only )
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import pyarrow.parquet as pq import pytest from datasets import Audio, Dataset, DatasetDict, Features, NamedSplit, Sequence, Value, config from datasets.features.image import Image from datasets.io.parquet import ParquetDatasetReader, ParquetDatasetWriter, get_writer_batch_size from ..utils import assert_arrow_memory_doesnt_increase, assert_arrow_memory_increases def __lowercase ( snake_case, snake_case ): """simple docstring""" assert isinstance(snake_case, snake_case ) assert dataset.num_rows == 4 assert dataset.num_columns == 3 assert dataset.column_names == ["col_1", "col_2", "col_3"] for feature, expected_dtype in expected_features.items(): assert dataset.features[feature].dtype == expected_dtype @pytest.mark.parametrize('''keep_in_memory''', [False, True] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :Tuple = tmp_path / '''cache''' __magic_name__ :int = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} with assert_arrow_memory_increases() if keep_in_memory else assert_arrow_memory_doesnt_increase(): __magic_name__ :Optional[Any] = ParquetDatasetReader(snake_case, cache_dir=snake_case, keep_in_memory=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) @pytest.mark.parametrize( '''features''', [ None, {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''}, {'''col_1''': '''string''', '''col_2''': '''string''', '''col_3''': '''string'''}, {'''col_1''': '''int32''', '''col_2''': '''int32''', '''col_3''': '''int32'''}, {'''col_1''': '''float32''', '''col_2''': '''float32''', '''col_3''': '''float32'''}, ], ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :List[str] = tmp_path / '''cache''' __magic_name__ :int = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :Tuple = features.copy() if features else default_expected_features __magic_name__ :Union[str, Any] = ( Features({feature: Value(snake_case ) for feature, dtype in features.items()} ) if features is not None else None ) __magic_name__ :int = ParquetDatasetReader(snake_case, features=snake_case, cache_dir=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) @pytest.mark.parametrize('''split''', [None, NamedSplit('''train''' ), '''train''', '''test'''] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :str = tmp_path / '''cache''' __magic_name__ :List[Any] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :int = ParquetDatasetReader(snake_case, cache_dir=snake_case, split=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) assert dataset.split == split if split else "train" @pytest.mark.parametrize('''path_type''', [str, list] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" if issubclass(snake_case, snake_case ): __magic_name__ :Union[str, Any] = parquet_path elif issubclass(snake_case, snake_case ): __magic_name__ :Union[str, Any] = [parquet_path] __magic_name__ :Optional[int] = tmp_path / '''cache''' __magic_name__ :Optional[int] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :str = ParquetDatasetReader(snake_case, cache_dir=snake_case ).read() _check_parquet_dataset(snake_case, snake_case ) def __lowercase ( snake_case, snake_case, snake_case=("train",) ): """simple docstring""" assert isinstance(snake_case, snake_case ) for split in splits: __magic_name__ :Optional[Any] = dataset_dict[split] assert dataset.num_rows == 4 assert dataset.num_columns == 3 assert dataset.column_names == ["col_1", "col_2", "col_3"] for feature, expected_dtype in expected_features.items(): assert dataset.features[feature].dtype == expected_dtype @pytest.mark.parametrize('''keep_in_memory''', [False, True] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :Any = tmp_path / '''cache''' __magic_name__ :Optional[int] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} with assert_arrow_memory_increases() if keep_in_memory else assert_arrow_memory_doesnt_increase(): __magic_name__ :Tuple = ParquetDatasetReader( {'''train''': parquet_path}, cache_dir=snake_case, keep_in_memory=snake_case ).read() _check_parquet_datasetdict(snake_case, snake_case ) @pytest.mark.parametrize( '''features''', [ None, {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''}, {'''col_1''': '''string''', '''col_2''': '''string''', '''col_3''': '''string'''}, {'''col_1''': '''int32''', '''col_2''': '''int32''', '''col_3''': '''int32'''}, {'''col_1''': '''float32''', '''col_2''': '''float32''', '''col_3''': '''float32'''}, ], ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" __magic_name__ :Optional[Any] = tmp_path / '''cache''' __magic_name__ :Dict = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :int = features.copy() if features else default_expected_features __magic_name__ :List[Any] = ( Features({feature: Value(snake_case ) for feature, dtype in features.items()} ) if features is not None else None ) __magic_name__ :Optional[int] = ParquetDatasetReader({'''train''': parquet_path}, features=snake_case, cache_dir=snake_case ).read() _check_parquet_datasetdict(snake_case, snake_case ) @pytest.mark.parametrize('''split''', [None, NamedSplit('''train''' ), '''train''', '''test'''] ) def __lowercase ( snake_case, snake_case, snake_case ): """simple docstring""" if split: __magic_name__ :Dict = {split: parquet_path} else: __magic_name__ :Optional[int] = '''train''' __magic_name__ :Dict = {'''train''': parquet_path, '''test''': parquet_path} __magic_name__ :List[Any] = tmp_path / '''cache''' __magic_name__ :Optional[Any] = {'''col_1''': '''string''', '''col_2''': '''int64''', '''col_3''': '''float64'''} __magic_name__ :Optional[Any] = ParquetDatasetReader(snake_case, cache_dir=snake_case ).read() _check_parquet_datasetdict(snake_case, snake_case, splits=list(path.keys() ) ) assert all(dataset[split].split == split for split in path.keys() ) def __lowercase ( snake_case, snake_case ): """simple docstring""" __magic_name__ :str = ParquetDatasetWriter(snake_case, tmp_path / '''foo.parquet''' ) assert writer.write() > 0 __magic_name__ :List[Any] = pq.ParquetFile(tmp_path / '''foo.parquet''' ) __magic_name__ :List[Any] = pf.read() assert dataset.data.table == output_table def __lowercase ( snake_case, snake_case ): """simple docstring""" __magic_name__ :List[str] = str(shared_datadir / '''test_image_rgb.jpg''' ) __magic_name__ :Tuple = {'''image''': [image_path]} __magic_name__ :List[Any] = Features({'''image''': Image()} ) __magic_name__ :Tuple = Dataset.from_dict(snake_case, features=snake_case ) __magic_name__ :Union[str, Any] = ParquetDatasetWriter(snake_case, tmp_path / '''foo.parquet''' ) assert writer.write() > 0 __magic_name__ :List[str] = Dataset.from_parquet(str(tmp_path / '''foo.parquet''' ) ) assert dataset.features == reloaded_dataset.features __magic_name__ :List[str] = ParquetDatasetReader(str(tmp_path / '''foo.parquet''' ), streaming=snake_case ).read() assert dataset.features == reloaded_iterable_dataset.features @pytest.mark.parametrize( '''feature, expected''', [ (Features({'''foo''': Value('''int32''' )} ), None), (Features({'''image''': Image(), '''foo''': Value('''int32''' )} ), config.PARQUET_ROW_GROUP_SIZE_FOR_IMAGE_DATASETS), (Features({'''nested''': Sequence(Audio() )} ), config.PARQUET_ROW_GROUP_SIZE_FOR_AUDIO_DATASETS), ], ) def __lowercase ( snake_case, snake_case ): """simple docstring""" assert get_writer_batch_size(snake_case ) == expected
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from typing import TYPE_CHECKING from ...utils import ( OptionalDependencyNotAvailable, _LazyModule, is_tf_available, is_torch_available, is_vision_available, ) SCREAMING_SNAKE_CASE : Tuple = { """configuration_mobilevit""": ["""MOBILEVIT_PRETRAINED_CONFIG_ARCHIVE_MAP""", """MobileViTConfig""", """MobileViTOnnxConfig"""], } try: if not is_vision_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: SCREAMING_SNAKE_CASE : List[Any] = ["""MobileViTFeatureExtractor"""] SCREAMING_SNAKE_CASE : Optional[Any] = ["""MobileViTImageProcessor"""] try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: SCREAMING_SNAKE_CASE : Optional[Any] = [ """MOBILEVIT_PRETRAINED_MODEL_ARCHIVE_LIST""", """MobileViTForImageClassification""", """MobileViTForSemanticSegmentation""", """MobileViTModel""", """MobileViTPreTrainedModel""", ] try: if not is_tf_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: SCREAMING_SNAKE_CASE : Dict = [ """TF_MOBILEVIT_PRETRAINED_MODEL_ARCHIVE_LIST""", """TFMobileViTForImageClassification""", """TFMobileViTForSemanticSegmentation""", """TFMobileViTModel""", """TFMobileViTPreTrainedModel""", ] if TYPE_CHECKING: from .configuration_mobilevit import MOBILEVIT_PRETRAINED_CONFIG_ARCHIVE_MAP, MobileViTConfig, MobileViTOnnxConfig try: if not is_vision_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .feature_extraction_mobilevit import MobileViTFeatureExtractor from .image_processing_mobilevit import MobileViTImageProcessor try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_mobilevit import ( MOBILEVIT_PRETRAINED_MODEL_ARCHIVE_LIST, MobileViTForImageClassification, MobileViTForSemanticSegmentation, MobileViTModel, MobileViTPreTrainedModel, ) try: if not is_tf_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_tf_mobilevit import ( TF_MOBILEVIT_PRETRAINED_MODEL_ARCHIVE_LIST, TFMobileViTForImageClassification, TFMobileViTForSemanticSegmentation, TFMobileViTModel, TFMobileViTPreTrainedModel, ) else: import sys SCREAMING_SNAKE_CASE : Tuple = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
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def __lowercase ( snake_case ): """simple docstring""" if not isinstance(snake_case, snake_case ): raise ValueError('''multiplicative_persistence() only accepts integral values''' ) if num < 0: raise ValueError('''multiplicative_persistence() does not accept negative values''' ) __magic_name__ :str = 0 __magic_name__ :Dict = str(snake_case ) while len(snake_case ) != 1: __magic_name__ :Optional[Any] = [int(snake_case ) for i in num_string] __magic_name__ :Dict = 1 for i in range(0, len(snake_case ) ): total *= numbers[i] __magic_name__ :int = str(snake_case ) steps += 1 return steps def __lowercase ( snake_case ): """simple docstring""" if not isinstance(snake_case, snake_case ): raise ValueError('''additive_persistence() only accepts integral values''' ) if num < 0: raise ValueError('''additive_persistence() does not accept negative values''' ) __magic_name__ :str = 0 __magic_name__ :Union[str, Any] = str(snake_case ) while len(snake_case ) != 1: __magic_name__ :str = [int(snake_case ) for i in num_string] __magic_name__ :Optional[int] = 0 for i in range(0, len(snake_case ) ): total += numbers[i] __magic_name__ :int = str(snake_case ) steps += 1 return steps if __name__ == "__main__": import doctest doctest.testmod()
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import fire from utils import calculate_rouge, save_json def _a ( lowerCamelCase, lowerCamelCase, lowerCamelCase=None, **lowerCamelCase ): lowerCamelCase : Dict = [x.strip() for x in open(lowerCamelCase ).readlines()] lowerCamelCase : Tuple = [x.strip() for x in open(lowerCamelCase ).readlines()][: len(lowerCamelCase )] lowerCamelCase : Dict = calculate_rouge(lowerCamelCase, lowerCamelCase, **lowerCamelCase ) if save_path is not None: save_json(lowerCamelCase, lowerCamelCase, indent=lowerCamelCase ) return metrics # these print nicely if __name__ == "__main__": fire.Fire(calculate_rouge_path)
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import math import os import re import sys import unittest from pathlib import Path from typing import Tuple from unittest.mock import patch from parameterized import parameterized from transformers.testing_utils import ( CaptureStderr, ExtendSysPath, TestCasePlus, execute_subprocess_async, get_gpu_count, get_torch_dist_unique_port, require_apex, require_bitsandbytes, require_fairscale, require_torch, require_torch_gpu, require_torch_multi_gpu, require_torch_non_multi_gpu, slow, ) from transformers.trainer_callback import TrainerState from transformers.trainer_utils import set_seed SCREAMING_SNAKE_CASE__ : List[Any] = os.path.abspath(os.path.dirname(__file__)) with ExtendSysPath(f"{bindir}/../../examples/pytorch/translation"): from run_translation import main # noqa set_seed(42) SCREAMING_SNAKE_CASE__ : Optional[Any] = """sshleifer/student_marian_en_ro_6_1""" SCREAMING_SNAKE_CASE__ : List[Any] = """sshleifer/tiny-mbart""" @require_torch class lowerCamelCase_ ( lowerCamelCase ): def A ( self , __lowerCAmelCase=False , __lowerCAmelCase=None , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , __lowerCAmelCase=True , ): """simple docstring""" __magic_name__ :List[Any] = self.run_trainer( eval_steps=1 , max_len=1_2 , model_name=__lowerCAmelCase , num_train_epochs=1 , distributed=__lowerCAmelCase , extra_args_str=__lowerCAmelCase , predict_with_generate=__lowerCAmelCase , do_train=__lowerCAmelCase , do_eval=__lowerCAmelCase , do_predict=__lowerCAmelCase , ) __magic_name__ :Any = TrainerState.load_from_json(os.path.join(__lowerCAmelCase , '''trainer_state.json''' ) ).log_history if not do_eval: return __magic_name__ :Any = [log for log in logs if '''eval_loss''' in log.keys()] __magic_name__ :str = eval_metrics[0] if predict_with_generate: assert "eval_bleu" in first_step_stats __magic_name__ :Tuple = eval_metrics[-1] assert isinstance(last_step_stats['''eval_bleu'''] , __lowerCAmelCase ) assert not math.isnan(float(last_step_stats['''eval_loss'''] ) ), "eval_loss must not be `nan`" @require_torch_non_multi_gpu def A ( self ): """simple docstring""" self.run_seqaseq_quick() @require_torch_multi_gpu def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase ) @require_torch_multi_gpu def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp simple''' ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp simple --fp16''' ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp zero_dp_2''' , predict_with_generate=__lowerCAmelCase ) @unittest.skip('''Requires an update of the env running those tests''' ) @require_torch_multi_gpu @require_fairscale def A ( self ): """simple docstring""" self.run_seqaseq_quick( distributed=__lowerCAmelCase , extra_args_str='''--sharded_ddp zero_dp_2 --fp16''' , predict_with_generate=__lowerCAmelCase ) @require_apex @require_torch_gpu def A ( self ): """simple docstring""" # XXX: apex breaks the trainer if it's run twice e.g. run_seq2seq.main() from the same # program and it breaks other tests that run from the same pytest worker, therefore until this is # sorted out it must be run only in an external program, that is distributed=True in this # test and only under one or more gpus - if we want cpu will need to make a special test # # specifically to the problem traced it to self.optimizer.step() - if it's run 2nd time via # 2nd main() call it botches the future eval. # self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--fp16 --fp16_backend=apex''' ) # test 2nd time - was getting eval_loss': nan' # to reproduce the problem set distributed=False self.run_seqaseq_quick(distributed=__lowerCAmelCase , extra_args_str='''--fp16 --fp16_backend=apex''' ) @parameterized.expand(['''base''', '''low''', '''high''', '''mixed'''] ) @require_torch_multi_gpu def A ( self , __lowerCAmelCase ): """simple docstring""" # as each sub-test is slow-ish split into multiple sub-tests to avoid CI timeout __magic_name__ :Any = { # test with the default log_level - should be info and thus log info once '''base''': {'''extra_args_str''': '''''', '''n_matches''': 1}, # test with low log_level and log_level_replica - should be noisy on all processes # now the info string should appear twice on 2 processes '''low''': {'''extra_args_str''': '''--log_level debug --log_level_replica debug''', '''n_matches''': 2}, # test with high log_level and low log_level_replica # now the info string should appear once only on the replica '''high''': {'''extra_args_str''': '''--log_level error --log_level_replica debug''', '''n_matches''': 1}, # test with high log_level and log_level_replica - should be quiet on all processes '''mixed''': {'''extra_args_str''': '''--log_level error --log_level_replica error''', '''n_matches''': 0}, } __magic_name__ :Optional[Any] = experiments[experiment_id] __magic_name__ :List[Any] = {'''distributed''': True, '''predict_with_generate''': False, '''do_eval''': False, '''do_predict''': False} __magic_name__ :Optional[int] = '''Running training''' with CaptureStderr() as cl: self.run_seqaseq_quick(**__lowerCAmelCase , extra_args_str=data['''extra_args_str'''] ) __magic_name__ :int = len(re.findall(__lowerCAmelCase , cl.err ) ) self.assertEqual(__lowerCAmelCase , data['''n_matches'''] ) @slow def A ( self ): """simple docstring""" __magic_name__ :List[str] = self.run_trainer( eval_steps=2 , max_len=1_2_8 , model_name=__lowerCAmelCase , learning_rate=3E-4 , num_train_epochs=1_0 , distributed=__lowerCAmelCase , ) # Check metrics __magic_name__ :Optional[int] = TrainerState.load_from_json(os.path.join(__lowerCAmelCase , '''trainer_state.json''' ) ).log_history __magic_name__ :List[str] = [log for log in logs if '''eval_loss''' in log.keys()] __magic_name__ :Any = eval_metrics[0] __magic_name__ :int = eval_metrics[-1] assert first_step_stats["eval_loss"] > last_step_stats["eval_loss"], "model learned nothing" assert isinstance(last_step_stats['''eval_bleu'''] , __lowerCAmelCase ) # test if do_predict saves generations and metrics __magic_name__ :List[Any] = os.listdir(__lowerCAmelCase ) __magic_name__ :List[str] = {os.path.basename(__lowerCAmelCase ) for p in contents} assert "generated_predictions.txt" in contents assert "predict_results.json" in contents @slow @require_bitsandbytes def A ( self ): """simple docstring""" from transformers.training_args import OptimizerNames def train_and_return_metrics(__lowerCAmelCase ) -> Tuple[int, float]: __magic_name__ :str = '''--skip_memory_metrics 0''' __magic_name__ :Dict = self.run_trainer( max_len=1_2_8 , model_name=__lowerCAmelCase , learning_rate=3E-4 , num_train_epochs=1 , optim=__lowerCAmelCase , distributed=__lowerCAmelCase , extra_args_str=__lowerCAmelCase , do_eval=__lowerCAmelCase , do_predict=__lowerCAmelCase , n_gpus_to_use=1 , ) # Check metrics __magic_name__ :Optional[Any] = TrainerState.load_from_json(Path(__lowerCAmelCase , '''trainer_state.json''' ) ).log_history __magic_name__ :int = int(logs[0]['''train_mem_gpu_peaked_delta'''] / 2**2_0 ) __magic_name__ :Optional[Any] = int(logs[0]['''train_mem_gpu_alloc_delta'''] / 2**2_0 ) __magic_name__ :Any = logs[0]['''train_loss'''] return gpu_peak_mem_mb, gpu_alloc_mem_mb, loss __magic_name__ , __magic_name__ , __magic_name__ :int = train_and_return_metrics(OptimizerNames.ADAMW_TORCH.value ) __magic_name__ , __magic_name__ , __magic_name__ :Tuple = train_and_return_metrics(OptimizerNames.ADAMW_BNB.value ) __magic_name__ :Tuple = gpu_alloc_mem_orig - gpu_alloc_mem_bnb __magic_name__ :Tuple = gpu_peak_mem_orig + gpu_alloc_mem_orig __magic_name__ :List[Any] = gpu_peak_mem_bnb + gpu_alloc_mem_bnb __magic_name__ :Optional[int] = gpu_total_mem_orig - gpu_total_mem_bnb # sshleifer/student_marian_en_ro_6_1 has 54M parameter, 29M of which is `nn.Embedding` which # doesn't get quantized and remains in fp32. Therefore we only have 25M parameters quantized # in 2 bytes and the diff in optim memory usage is derived as so: # # - normal 25*8=~200MB (8 bytes per param) # - bnb 25*2= ~50MB (2 bytes per param) # # Thus we should expect ~150MB total memory saved. # # Peak memory should be the same - the total should be different by about that same margin # # After leaving a small margin to accommodate for differences between gpus let's check # that we have at least 120MB in savings __magic_name__ :Optional[Any] = 1_2_0 # uncomment the following if this test starts failing - requires py38 for a new print feature # gpu_peak_mem_diff = gpu_peak_mem_orig - gpu_peak_mem_bnb # print(f"{gpu_alloc_mem_orig=}MB {gpu_peak_mem_orig=}MB {gpu_alloc_mem_orig+gpu_peak_mem_orig=}MB") # print(f" {gpu_alloc_mem_bnb=}MB {gpu_peak_mem_bnb=}MB {gpu_alloc_mem_bnb+gpu_peak_mem_bnb=}MB") # print(f"{gpu_alloc_mem_diff=}MB") # print(f"{gpu_peak_mem_diff=}MB") # print(f"{gpu_total_mem_orig=}MB, {gpu_total_mem_bnb=}MB") # print(f"{gpu_total_mem_diff=}MB, {gpu_total_mem_diff=}MB") self.assertGreater( __lowerCAmelCase , __lowerCAmelCase , '''should use ~150MB less alloc gpu memory with BNB, compared to without it for this model but got''' F''' a difference of {gpu_alloc_mem_diff}MB, with gpu_alloc_mem_orig={gpu_alloc_mem_orig}MB and''' F''' gpu_alloc_mem_bnb={gpu_alloc_mem_bnb}MB''' , ) self.assertGreater( __lowerCAmelCase , __lowerCAmelCase , '''should use ~150MB less total gpu memory with BNB, compared to without it for this model but got''' F''' a difference of {gpu_total_mem_diff}MB, with gpu_total_mem_orig={gpu_total_mem_orig}MB and''' F''' gpu_total_mem_bnb={gpu_total_mem_bnb}MB''' , ) self.assertEqual( __lowerCAmelCase , __lowerCAmelCase , F'''loss should be the same, but got loss_orig={loss_orig}, loss_bnb={loss_bnb}''' ) def A ( self , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase , __lowerCAmelCase = 3E-3 , __lowerCAmelCase = "adafactor" , __lowerCAmelCase = False , __lowerCAmelCase = None , __lowerCAmelCase = 0 , __lowerCAmelCase = True , __lowerCAmelCase = True , __lowerCAmelCase = True , __lowerCAmelCase = True , __lowerCAmelCase = None , ): """simple docstring""" __magic_name__ :int = self.test_file_dir / '''../fixtures/tests_samples/wmt_en_ro''' __magic_name__ :Dict = self.get_auto_remove_tmp_dir() __magic_name__ :Tuple = F''' --model_name_or_path {model_name} --train_file {data_dir}/train.json --validation_file {data_dir}/val.json --test_file {data_dir}/test.json --output_dir {output_dir} --overwrite_output_dir --max_train_samples 8 --max_source_length {max_len} --max_target_length {max_len} --do_train --num_train_epochs {str(__lowerCAmelCase )} --per_device_train_batch_size 4 --learning_rate {learning_rate} --warmup_steps 8 --logging_steps 0 --logging_strategy no --save_steps {str(__lowerCAmelCase )} --group_by_length --label_smoothing_factor 0.1 --target_lang ro_RO --source_lang en_XX '''.split() __magic_name__ :str = F''' --do_eval --per_device_eval_batch_size 4 --max_eval_samples 8 --val_max_target_length {max_len} --evaluation_strategy steps --eval_steps {str(__lowerCAmelCase )} '''.split() __magic_name__ :Dict = ''' --do_predict '''.split() __magic_name__ :Optional[int] = [] if do_train: args += args_train if do_eval: args += args_eval if do_predict: args += args_predict if predict_with_generate: args += "--predict_with_generate".split() if do_train: if optim == "adafactor": args += "--adafactor".split() else: args += F'''--optim {optim}'''.split() if extra_args_str is not None: args += extra_args_str.split() if distributed: if n_gpus_to_use is None: __magic_name__ :List[Any] = get_gpu_count() __magic_name__ :Tuple = get_torch_dist_unique_port() __magic_name__ :Union[str, Any] = F''' -m torch.distributed.run --nproc_per_node={n_gpus_to_use} --master_port={master_port} {self.examples_dir_str}/pytorch/translation/run_translation.py '''.split() __magic_name__ :Any = [sys.executable] + distributed_args + args # keep for quick debug # print(" ".join([f"\nPYTHONPATH={self.src_dir_str}"] +cmd)); die execute_subprocess_async(__lowerCAmelCase , env=self.get_env() ) else: __magic_name__ :List[Any] = ['''run_translation.py'''] + args with patch.object(__lowerCAmelCase , '''argv''' , __lowerCAmelCase ): main() return output_dir
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'''simple docstring''' from __future__ import annotations def snake_case ( snake_case : List[Any] , snake_case : int ) -> Union[str, Any]: """simple docstring""" print(F'Vertex\tShortest Distance from vertex {src}' ) for i, d in enumerate(snake_case ): print(F'{i}\t\t{d}' ) def snake_case ( snake_case : Optional[int] , snake_case : Tuple , snake_case : List[Any] ) -> Dict: """simple docstring""" for j in range(snake_case ): lowerCAmelCase = (graph[j][k] for k in ['''src''', '''dst''', '''weight''']) if distance[u] != float('inf' ) and distance[u] + w < distance[v]: return True return False def snake_case ( snake_case : Union[str, Any] , snake_case : Optional[Any] , snake_case : str , snake_case : str ) -> str: """simple docstring""" lowerCAmelCase = [float('inf' )] * vertex_count lowerCAmelCase = 0.0 for _ in range(vertex_count - 1 ): for j in range(snake_case ): lowerCAmelCase = (graph[j][k] for k in ['''src''', '''dst''', '''weight''']) if distance[u] != float('inf' ) and distance[u] + w < distance[v]: lowerCAmelCase = distance[u] + w lowerCAmelCase = check_negative_cycle(snake_case , snake_case , snake_case ) if negative_cycle_exists: raise Exception('Negative cycle found' ) return distance if __name__ == "__main__": import doctest doctest.testmod() _UpperCamelCase : Tuple = int(input("Enter number of vertices: ").strip()) _UpperCamelCase : Any = int(input("Enter number of edges: ").strip()) _UpperCamelCase : list[dict[str, int]] = [{} for _ in range(E)] for i in range(E): print("Edge ", i + 1) _UpperCamelCase : Dict = ( int(x) for x in input("Enter source, destination, weight: ").strip().split(" ") ) _UpperCamelCase : Dict = {"""src""": src, """dst""": dest, """weight""": weight} _UpperCamelCase : List[Any] = int(input("\nEnter shortest path source:").strip()) _UpperCamelCase : List[str] = bellman_ford(graph, V, E, source) print_distance(shortest_distance, 0)
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import sys SCREAMING_SNAKE_CASE__ : Optional[Any] = ( """73167176531330624919225119674426574742355349194934""" """96983520312774506326239578318016984801869478851843""" """85861560789112949495459501737958331952853208805511""" """12540698747158523863050715693290963295227443043557""" """66896648950445244523161731856403098711121722383113""" """62229893423380308135336276614282806444486645238749""" """30358907296290491560440772390713810515859307960866""" """70172427121883998797908792274921901699720888093776""" """65727333001053367881220235421809751254540594752243""" """52584907711670556013604839586446706324415722155397""" """53697817977846174064955149290862569321978468622482""" """83972241375657056057490261407972968652414535100474""" """82166370484403199890008895243450658541227588666881""" """16427171479924442928230863465674813919123162824586""" """17866458359124566529476545682848912883142607690042""" """24219022671055626321111109370544217506941658960408""" """07198403850962455444362981230987879927244284909188""" """84580156166097919133875499200524063689912560717606""" """05886116467109405077541002256983155200055935729725""" """71636269561882670428252483600823257530420752963450""" ) def __lowercase ( snake_case = N ): """simple docstring""" __magic_name__ :Optional[int] = -sys.maxsize - 1 for i in range(len(snake_case ) - 1_2 ): __magic_name__ :List[Any] = 1 for j in range(1_3 ): product *= int(n[i + j] ) if product > largest_product: __magic_name__ :str = product return largest_product if __name__ == "__main__": print(f"{solution() = }")
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import os from shutil import copyfile from typing import Any, Dict, List, Optional, Tuple import sentencepiece as spm from ...tokenization_utils import PreTrainedTokenizer from ...utils import logging snake_case__ : str = logging.get_logger(__name__) snake_case__ : Tuple = """▁""" snake_case__ : Union[str, Any] = {"""vocab_file""": """spiece.model"""} snake_case__ : List[Any] = { """vocab_file""": { """google/reformer-crime-and-punishment""": ( """https://huggingface.co/google/reformer-crime-and-punishment/resolve/main/spiece.model""" ) } } snake_case__ : Optional[int] = { """google/reformer-crime-and-punishment""": 52_4288, } class SCREAMING_SNAKE_CASE_ (a__ ): '''simple docstring''' _a = VOCAB_FILES_NAMES _a = PRETRAINED_VOCAB_FILES_MAP _a = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES _a = ["input_ids", "attention_mask"] def __init__( self : Optional[Any] , __a : int , __a : List[str]="</s>" , __a : List[Any]="<unk>" , __a : str=[] , __a : List[Any] = None , **__a : Optional[Any] , ) ->int: lowerCamelCase_ : int = {} if sp_model_kwargs is None else sp_model_kwargs super().__init__( eos_token=__lowerCAmelCase , unk_token=__lowerCAmelCase , additional_special_tokens=__lowerCAmelCase , sp_model_kwargs=self.sp_model_kwargs , **__lowerCAmelCase , ) lowerCamelCase_ : Optional[Any] = vocab_file lowerCamelCase_ : int = spm.SentencePieceProcessor(**self.sp_model_kwargs ) self.sp_model.Load(__lowerCAmelCase ) @property def _lowerCAmelCase ( self : Union[str, Any] ) ->Dict: return self.sp_model.get_piece_size() def _lowerCAmelCase ( self : str ) ->List[Any]: lowerCamelCase_ : str = {self.convert_ids_to_tokens(__lowerCAmelCase ): i for i in range(self.vocab_size )} vocab.update(self.added_tokens_encoder ) return vocab def __getstate__( self : int ) ->Dict: lowerCamelCase_ : Optional[Any] = self.__dict__.copy() lowerCamelCase_ : Optional[Any] = None return state def __setstate__( self : Any , __a : Any ) ->Any: lowerCamelCase_ : Any = d # for backward compatibility if not hasattr(self , """sp_model_kwargs""" ): lowerCamelCase_ : Optional[int] = {} lowerCamelCase_ : Union[str, Any] = spm.SentencePieceProcessor(**self.sp_model_kwargs ) self.sp_model.Load(self.vocab_file ) def _lowerCAmelCase ( self : Tuple , __a : Tuple ) ->List[Any]: return self.sp_model.encode(__lowerCAmelCase , out_type=__lowerCAmelCase ) def _lowerCAmelCase ( self : Optional[int] , __a : Optional[int] ) ->List[str]: return self.sp_model.piece_to_id(__lowerCAmelCase ) def _lowerCAmelCase ( self : Dict , __a : Dict ) ->Dict: if index < self.sp_model.get_piece_size(): lowerCamelCase_ : int = self.sp_model.IdToPiece(__lowerCAmelCase ) return token def _lowerCAmelCase ( self : Dict , __a : int ) ->Optional[int]: lowerCamelCase_ : Optional[Any] = [] lowerCamelCase_ : Tuple = '''''' for token in tokens: # make sure that special tokens are not decoded using sentencepiece model if token in self.all_special_tokens: out_string += self.sp_model.decode(__lowerCAmelCase ) + token lowerCamelCase_ : Optional[Any] = [] else: current_sub_tokens.append(__lowerCAmelCase ) out_string += self.sp_model.decode(__lowerCAmelCase ) return out_string.strip() def _lowerCAmelCase ( self : Tuple , __a : List[Any] , __a : int = None ) ->List[str]: if not os.path.isdir(__lowerCAmelCase ): logger.error(F'''Vocabulary path ({save_directory}) should be a directory''' ) return lowerCamelCase_ : Optional[int] = os.path.join( __lowerCAmelCase , (filename_prefix + """-""" if filename_prefix else """""") + VOCAB_FILES_NAMES["""vocab_file"""] ) if os.path.abspath(self.vocab_file ) != os.path.abspath(__lowerCAmelCase ) and os.path.isfile(self.vocab_file ): copyfile(self.vocab_file , __lowerCAmelCase ) elif not os.path.isfile(self.vocab_file ): with open(__lowerCAmelCase , """wb""" ) as fi: lowerCamelCase_ : Dict = self.sp_model.serialized_model_proto() fi.write(__lowerCAmelCase ) return (out_vocab_file,)
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SCREAMING_SNAKE_CASE__ : Tuple = { """a""": """AAAAA""", """b""": """AAAAB""", """c""": """AAABA""", """d""": """AAABB""", """e""": """AABAA""", """f""": """AABAB""", """g""": """AABBA""", """h""": """AABBB""", """i""": """ABAAA""", """j""": """BBBAA""", """k""": """ABAAB""", """l""": """ABABA""", """m""": """ABABB""", """n""": """ABBAA""", """o""": """ABBAB""", """p""": """ABBBA""", """q""": """ABBBB""", """r""": """BAAAA""", """s""": """BAAAB""", """t""": """BAABA""", """u""": """BAABB""", """v""": """BBBAB""", """w""": """BABAA""", """x""": """BABAB""", """y""": """BABBA""", """z""": """BABBB""", """ """: """ """, } SCREAMING_SNAKE_CASE__ : Union[str, Any] = {value: key for key, value in encode_dict.items()} def __lowercase ( snake_case ): """simple docstring""" __magic_name__ :Tuple = '''''' for letter in word.lower(): if letter.isalpha() or letter == " ": encoded += encode_dict[letter] else: raise Exception('''encode() accepts only letters of the alphabet and spaces''' ) return encoded def __lowercase ( snake_case ): """simple docstring""" if set(snake_case ) - {"A", "B", " "} != set(): raise Exception('''decode() accepts only \'A\', \'B\' and spaces''' ) __magic_name__ :Dict = '''''' for word in coded.split(): while len(snake_case ) != 0: decoded += decode_dict[word[:5]] __magic_name__ :int = word[5:] decoded += " " return decoded.strip() if __name__ == "__main__": from doctest import testmod testmod()
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from __future__ import annotations import unittest from transformers import FunnelConfig, is_tf_available from transformers.testing_utils import require_tf from ...test_configuration_common import ConfigTester from ...test_modeling_tf_common import TFModelTesterMixin, ids_tensor, random_attention_mask from ...test_pipeline_mixin import PipelineTesterMixin if is_tf_available(): import tensorflow as tf from transformers import ( TFFunnelBaseModel, TFFunnelForMaskedLM, TFFunnelForMultipleChoice, TFFunnelForPreTraining, TFFunnelForQuestionAnswering, TFFunnelForSequenceClassification, TFFunnelForTokenClassification, TFFunnelModel, ) class A : def __init__(self , lowerCAmelCase , lowerCAmelCase=1_3 , lowerCAmelCase=7 , lowerCAmelCase=True , lowerCAmelCase=True , lowerCAmelCase=True , lowerCAmelCase=True , lowerCAmelCase=9_9 , lowerCAmelCase=[1, 1, 2] , lowerCAmelCase=1 , lowerCAmelCase=3_2 , lowerCAmelCase=4 , lowerCAmelCase=8 , lowerCAmelCase=3_7 , lowerCAmelCase="gelu_new" , lowerCAmelCase=0.1 , lowerCAmelCase=0.1 , lowerCAmelCase=0.0 , lowerCAmelCase=5_1_2 , lowerCAmelCase=3 , lowerCAmelCase=0.02 , lowerCAmelCase=3 , lowerCAmelCase=4 , lowerCAmelCase=None , lowerCAmelCase=False , ): __lowercase= parent __lowercase= batch_size __lowercase= seq_length __lowercase= is_training __lowercase= use_input_mask __lowercase= use_token_type_ids __lowercase= use_labels __lowercase= vocab_size __lowercase= block_sizes __lowercase= num_decoder_layers __lowercase= d_model __lowercase= n_head __lowercase= d_head __lowercase= d_inner __lowercase= hidden_act __lowercase= hidden_dropout __lowercase= attention_dropout __lowercase= activation_dropout __lowercase= max_position_embeddings __lowercase= type_vocab_size __lowercase= 2 __lowercase= num_labels __lowercase= num_choices __lowercase= scope __lowercase= initializer_std # Used in the tests to check the size of the first attention layer __lowercase= n_head # Used in the tests to check the size of the first hidden state __lowercase= self.d_model # Used in the tests to check the number of output hidden states/attentions __lowercase= sum(self.block_sizes ) + (0 if base else self.num_decoder_layers) # FunnelModel adds two hidden layers: input embeddings and the sum of the upsampled encoder hidden state with # the last hidden state of the first block (which is the first hidden state of the decoder). if not base: __lowercase= self.num_hidden_layers + 2 def _A (self ): __lowercase= ids_tensor([self.batch_size, self.seq_length] , self.vocab_size ) __lowercase= None if self.use_input_mask: __lowercase= random_attention_mask([self.batch_size, self.seq_length] ) __lowercase= None if self.use_token_type_ids: __lowercase= ids_tensor([self.batch_size, self.seq_length] , self.type_vocab_size ) __lowercase= None __lowercase= None __lowercase= None if self.use_labels: __lowercase= ids_tensor([self.batch_size] , self.type_sequence_label_size ) __lowercase= ids_tensor([self.batch_size, self.seq_length] , self.num_labels ) __lowercase= ids_tensor([self.batch_size] , self.num_choices ) __lowercase= FunnelConfig( vocab_size=self.vocab_size , block_sizes=self.block_sizes , num_decoder_layers=self.num_decoder_layers , d_model=self.d_model , n_head=self.n_head , d_head=self.d_head , d_inner=self.d_inner , hidden_act=self.hidden_act , hidden_dropout=self.hidden_dropout , attention_dropout=self.attention_dropout , activation_dropout=self.activation_dropout , max_position_embeddings=self.max_position_embeddings , type_vocab_size=self.type_vocab_size , initializer_std=self.initializer_std , ) return ( config, input_ids, token_type_ids, input_mask, sequence_labels, token_labels, choice_labels, ) def _A (self , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , ): __lowercase= TFFunnelModel(config=__lowerCAmelCase ) __lowercase= {'''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids} __lowercase= model(__lowerCAmelCase ) __lowercase= [input_ids, input_mask] __lowercase= model(__lowerCAmelCase ) __lowercase= model(__lowerCAmelCase ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, self.seq_length, self.d_model) ) __lowercase= False __lowercase= TFFunnelModel(config=__lowerCAmelCase ) __lowercase= model(__lowerCAmelCase ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, self.seq_length, self.d_model) ) __lowercase= False __lowercase= TFFunnelModel(config=__lowerCAmelCase ) __lowercase= model(__lowerCAmelCase ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, self.seq_length, self.d_model) ) def _A (self , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , ): __lowercase= TFFunnelBaseModel(config=__lowerCAmelCase ) __lowercase= {'''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids} __lowercase= model(__lowerCAmelCase ) __lowercase= [input_ids, input_mask] __lowercase= model(__lowerCAmelCase ) __lowercase= model(__lowerCAmelCase ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, 2, self.d_model) ) __lowercase= False __lowercase= TFFunnelBaseModel(config=__lowerCAmelCase ) __lowercase= model(__lowerCAmelCase ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, 3, self.d_model) ) __lowercase= False __lowercase= TFFunnelBaseModel(config=__lowerCAmelCase ) __lowercase= model(__lowerCAmelCase ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, 2, self.d_model) ) def _A (self , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , ): __lowercase= TFFunnelForPreTraining(config=__lowerCAmelCase ) __lowercase= {'''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids} __lowercase= model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length) ) def _A (self , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , ): __lowercase= TFFunnelForMaskedLM(config=__lowerCAmelCase ) __lowercase= {'''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids} __lowercase= model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) def _A (self , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , ): __lowercase= self.num_labels __lowercase= TFFunnelForSequenceClassification(config=__lowerCAmelCase ) __lowercase= {'''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids} __lowercase= model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.num_labels) ) def _A (self , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , ): __lowercase= self.num_choices __lowercase= TFFunnelForMultipleChoice(config=__lowerCAmelCase ) __lowercase= tf.tile(tf.expand_dims(__lowerCAmelCase , 1 ) , (1, self.num_choices, 1) ) __lowercase= tf.tile(tf.expand_dims(__lowerCAmelCase , 1 ) , (1, self.num_choices, 1) ) __lowercase= tf.tile(tf.expand_dims(__lowerCAmelCase , 1 ) , (1, self.num_choices, 1) ) __lowercase= { '''input_ids''': multiple_choice_inputs_ids, '''attention_mask''': multiple_choice_input_mask, '''token_type_ids''': multiple_choice_token_type_ids, } __lowercase= model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.num_choices) ) def _A (self , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , ): __lowercase= self.num_labels __lowercase= TFFunnelForTokenClassification(config=__lowerCAmelCase ) __lowercase= {'''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids} __lowercase= model(__lowerCAmelCase ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.num_labels) ) def _A (self , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , lowerCAmelCase , ): __lowercase= TFFunnelForQuestionAnswering(config=__lowerCAmelCase ) __lowercase= {'''input_ids''': input_ids, '''attention_mask''': input_mask, '''token_type_ids''': token_type_ids} __lowercase= model(__lowerCAmelCase ) self.parent.assertEqual(result.start_logits.shape , (self.batch_size, self.seq_length) ) self.parent.assertEqual(result.end_logits.shape , (self.batch_size, self.seq_length) ) def _A (self ): __lowercase= self.prepare_config_and_inputs() ( __lowercase )= config_and_inputs __lowercase= {'''input_ids''': input_ids, '''token_type_ids''': token_type_ids, '''attention_mask''': input_mask} return config, inputs_dict @require_tf class A ( A_ , A_ , unittest.TestCase ): UpperCamelCase_ : Dict =( ( TFFunnelModel, TFFunnelForMaskedLM, TFFunnelForPreTraining, TFFunnelForQuestionAnswering, TFFunnelForTokenClassification, ) if is_tf_available() else () ) UpperCamelCase_ : str =( { '''feature-extraction''': (TFFunnelBaseModel, TFFunnelModel), '''fill-mask''': TFFunnelForMaskedLM, '''question-answering''': TFFunnelForQuestionAnswering, '''text-classification''': TFFunnelForSequenceClassification, '''token-classification''': TFFunnelForTokenClassification, '''zero-shot''': TFFunnelForSequenceClassification, } if is_tf_available() else {} ) UpperCamelCase_ : List[Any] =False UpperCamelCase_ : Optional[Any] =False def _A (self ): __lowercase= TFFunnelModelTester(self ) __lowercase= ConfigTester(self , config_class=__lowerCAmelCase ) def _A (self ): self.config_tester.run_common_tests() def _A (self ): __lowercase= self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_model(*__lowerCAmelCase ) def _A (self ): __lowercase= self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_pretraining(*__lowerCAmelCase ) def _A (self ): __lowercase= self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_masked_lm(*__lowerCAmelCase ) def _A (self ): __lowercase= self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_token_classification(*__lowerCAmelCase ) def _A (self ): __lowercase= self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_question_answering(*__lowerCAmelCase ) @require_tf class A ( A_ , unittest.TestCase ): UpperCamelCase_ : Dict =( (TFFunnelBaseModel, TFFunnelForMultipleChoice, TFFunnelForSequenceClassification) if is_tf_available() else () ) UpperCamelCase_ : Any =False UpperCamelCase_ : Optional[Any] =False def _A (self ): __lowercase= TFFunnelModelTester(self , base=__lowerCAmelCase ) __lowercase= ConfigTester(self , config_class=__lowerCAmelCase ) def _A (self ): self.config_tester.run_common_tests() def _A (self ): __lowercase= self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_base_model(*__lowerCAmelCase ) def _A (self ): __lowercase= self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_sequence_classification(*__lowerCAmelCase ) def _A (self ): __lowercase= self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_multiple_choice(*__lowerCAmelCase )
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import argparse import torch from torch import nn from transformers import MaMaaaConfig, MaMaaaForConditionalGeneration def __lowercase ( snake_case ): """simple docstring""" __magic_name__ :Optional[Any] = [ '''encoder.version''', '''decoder.version''', '''model.encoder.version''', '''model.decoder.version''', '''decoder.output_projection.weight''', '''_float_tensor''', '''encoder.embed_positions._float_tensor''', '''decoder.embed_positions._float_tensor''', ] for k in ignore_keys: state_dict.pop(snake_case, snake_case ) def __lowercase ( snake_case ): """simple docstring""" __magic_name__ , __magic_name__ :Tuple = emb.weight.shape __magic_name__ :int = nn.Linear(snake_case, snake_case, bias=snake_case ) __magic_name__ :str = emb.weight.data return lin_layer def __lowercase ( snake_case ): """simple docstring""" __magic_name__ :int = torch.load(snake_case, map_location='''cpu''' ) __magic_name__ :Optional[Any] = mam_aaa['''args'''] or mam_aaa['''cfg''']['''model'''] __magic_name__ :List[Any] = mam_aaa['''model'''] remove_ignore_keys_(snake_case ) __magic_name__ :Tuple = state_dict['''encoder.embed_tokens.weight'''].shape[0] __magic_name__ :List[str] = MaMaaaConfig( vocab_size=snake_case, max_position_embeddings=1_0_2_4, encoder_layers=args.encoder_layers, decoder_layers=args.decoder_layers, encoder_attention_heads=args.encoder_attention_heads, decoder_attention_heads=args.decoder_attention_heads, encoder_ffn_dim=args.encoder_ffn_embed_dim, decoder_ffn_dim=args.decoder_ffn_embed_dim, d_model=args.encoder_embed_dim, encoder_layerdrop=args.encoder_layerdrop, decoder_layerdrop=args.decoder_layerdrop, dropout=args.dropout, attention_dropout=args.attention_dropout, activation_dropout=args.activation_dropout, activation_function='''relu''', ) __magic_name__ :int = state_dict['''decoder.embed_tokens.weight'''] __magic_name__ :List[str] = MaMaaaForConditionalGeneration(snake_case ) model.model.load_state_dict(snake_case, strict=snake_case ) __magic_name__ :List[str] = make_linear_from_emb(model.model.shared ) return model if __name__ == "__main__": SCREAMING_SNAKE_CASE__ : Optional[Any] = argparse.ArgumentParser() # Required parameters parser.add_argument("""fairseq_path""", type=str, help="""path to a model.pt on local filesystem.""") parser.add_argument("""pytorch_dump_folder_path""", default=None, type=str, help="""Path to the output PyTorch model.""") SCREAMING_SNAKE_CASE__ : int = parser.parse_args() SCREAMING_SNAKE_CASE__ : Any = convert_fairseq_mamaaa_checkpoint_from_disk(args.fairseq_pathß) model.save_pretrained(args.pytorch_dump_folder_path)
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"""simple docstring""" def A__ ( __lowerCamelCase ): """simple docstring""" _lowerCAmelCase = 0 for ch in input_str: _lowerCAmelCase = ord(__lowerCamelCase ) _lowerCAmelCase = pow(2, __lowerCamelCase ) # If we already turned on bit for current character's unicode if bitmap >> ch_unicode & 1 == 1: return False bitmap |= ch_bit_index_on return True if __name__ == "__main__": import doctest doctest.testmod()
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from typing import TYPE_CHECKING from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tokenizers_available, is_torch_available SCREAMING_SNAKE_CASE__ : Dict = { """configuration_canine""": ["""CANINE_PRETRAINED_CONFIG_ARCHIVE_MAP""", """CanineConfig"""], """tokenization_canine""": ["""CanineTokenizer"""], } try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: SCREAMING_SNAKE_CASE__ : str = [ """CANINE_PRETRAINED_MODEL_ARCHIVE_LIST""", """CanineForMultipleChoice""", """CanineForQuestionAnswering""", """CanineForSequenceClassification""", """CanineForTokenClassification""", """CanineLayer""", """CanineModel""", """CaninePreTrainedModel""", """load_tf_weights_in_canine""", ] if TYPE_CHECKING: from .configuration_canine import CANINE_PRETRAINED_CONFIG_ARCHIVE_MAP, CanineConfig from .tokenization_canine import CanineTokenizer try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_canine import ( CANINE_PRETRAINED_MODEL_ARCHIVE_LIST, CanineForMultipleChoice, CanineForQuestionAnswering, CanineForSequenceClassification, CanineForTokenClassification, CanineLayer, CanineModel, CaninePreTrainedModel, load_tf_weights_in_canine, ) else: import sys SCREAMING_SNAKE_CASE__ : Union[str, Any] = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
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