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import inspect |
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import os |
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import re |
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from transformers.configuration_utils import PretrainedConfig |
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from transformers.utils import direct_transformers_import |
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PATH_TO_TRANSFORMERS = "src/transformers" |
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transformers = direct_transformers_import(PATH_TO_TRANSFORMERS) |
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CONFIG_MAPPING = transformers.models.auto.configuration_auto.CONFIG_MAPPING |
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SPECIAL_CASES_TO_ALLOW = { |
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"EncodecConfig": ["overlap"], |
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"DPRConfig": True, |
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"FuyuConfig": True, |
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"FSMTConfig": ["langs"], |
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"GPTNeoConfig": ["attention_types"], |
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"EsmConfig": ["is_folding_model"], |
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"Mask2FormerConfig": ["ignore_value"], |
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"OneFormerConfig": ["ignore_value", "norm"], |
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"GraphormerConfig": ["spatial_pos_max"], |
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"T5Config": ["feed_forward_proj"], |
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"MT5Config": ["feed_forward_proj", "tokenizer_class"], |
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"UMT5Config": ["feed_forward_proj", "tokenizer_class"], |
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"LongT5Config": ["feed_forward_proj"], |
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"Pop2PianoConfig": ["feed_forward_proj"], |
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"SwitchTransformersConfig": ["feed_forward_proj"], |
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"BioGptConfig": ["layer_norm_eps"], |
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"GLPNConfig": ["layer_norm_eps"], |
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"SegformerConfig": ["layer_norm_eps"], |
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"CvtConfig": ["layer_norm_eps"], |
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"PerceiverConfig": ["layer_norm_eps"], |
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"InformerConfig": ["num_static_real_features", "num_time_features"], |
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"TimeSeriesTransformerConfig": ["num_static_real_features", "num_time_features"], |
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"AutoformerConfig": ["num_static_real_features", "num_time_features"], |
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"SamVisionConfig": ["mlp_ratio"], |
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"ClapAudioConfig": ["num_classes"], |
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"SpeechT5HifiGanConfig": ["sampling_rate"], |
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"SeamlessM4TConfig": [ |
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"max_new_tokens", |
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"t2u_max_new_tokens", |
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"t2u_decoder_attention_heads", |
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"t2u_decoder_ffn_dim", |
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"t2u_decoder_layers", |
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"t2u_encoder_attention_heads", |
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"t2u_encoder_ffn_dim", |
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"t2u_encoder_layers", |
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"t2u_max_position_embeddings", |
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], |
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"SeamlessM4Tv2Config": [ |
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"max_new_tokens", |
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"t2u_decoder_attention_heads", |
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"t2u_decoder_ffn_dim", |
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"t2u_decoder_layers", |
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"t2u_encoder_attention_heads", |
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"t2u_encoder_ffn_dim", |
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"t2u_encoder_layers", |
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"t2u_max_position_embeddings", |
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"t2u_variance_pred_dropout", |
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"t2u_variance_predictor_embed_dim", |
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"t2u_variance_predictor_hidden_dim", |
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"t2u_variance_predictor_kernel_size", |
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], |
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} |
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SPECIAL_CASES_TO_ALLOW.update( |
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{ |
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"CLIPSegConfig": True, |
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"DeformableDetrConfig": True, |
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"DetaConfig": True, |
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"DinatConfig": True, |
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"DonutSwinConfig": True, |
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"EfficientFormerConfig": True, |
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"FastSpeech2ConformerConfig": True, |
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"FSMTConfig": True, |
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"JukeboxConfig": True, |
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"LayoutLMv2Config": True, |
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"MaskFormerSwinConfig": True, |
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"MT5Config": True, |
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"MptConfig": True, |
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"MptAttentionConfig": True, |
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"NatConfig": True, |
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"OneFormerConfig": True, |
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"PerceiverConfig": True, |
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"RagConfig": True, |
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"SpeechT5Config": True, |
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"SwinConfig": True, |
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"Swin2SRConfig": True, |
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"Swinv2Config": True, |
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"SwitchTransformersConfig": True, |
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"TableTransformerConfig": True, |
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"TapasConfig": True, |
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"UniSpeechConfig": True, |
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"UniSpeechSatConfig": True, |
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"WavLMConfig": True, |
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"WhisperConfig": True, |
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"JukeboxPriorConfig": True, |
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"Pix2StructTextConfig": True, |
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"IdeficsConfig": True, |
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"IdeficsVisionConfig": True, |
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"IdeficsPerceiverConfig": True, |
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} |
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) |
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def check_attribute_being_used(config_class, attributes, default_value, source_strings): |
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"""Check if any name in `attributes` is used in one of the strings in `source_strings` |
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Args: |
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config_class (`type`): |
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The configuration class for which the arguments in its `__init__` will be checked. |
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attributes (`List[str]`): |
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The name of an argument (or attribute) and its variant names if any. |
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default_value (`Any`): |
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A default value for the attribute in `attributes` assigned in the `__init__` of `config_class`. |
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source_strings (`List[str]`): |
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The python source code strings in the same modeling directory where `config_class` is defined. The file |
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containing the definition of `config_class` should be excluded. |
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""" |
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attribute_used = False |
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for attribute in attributes: |
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for modeling_source in source_strings: |
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if ( |
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f"config.{attribute}" in modeling_source |
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or f'getattr(config, "{attribute}"' in modeling_source |
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or f'getattr(self.config, "{attribute}"' in modeling_source |
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): |
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attribute_used = True |
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elif ( |
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re.search( |
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rf'getattr[ \t\v\n\r\f]*\([ \t\v\n\r\f]*(self\.)?config,[ \t\v\n\r\f]*"{attribute}"', |
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modeling_source, |
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) |
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is not None |
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): |
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attribute_used = True |
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elif attribute in [ |
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"summary_type", |
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"summary_use_proj", |
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"summary_activation", |
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"summary_last_dropout", |
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"summary_proj_to_labels", |
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"summary_first_dropout", |
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]: |
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if "SequenceSummary" in modeling_source: |
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attribute_used = True |
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if attribute_used: |
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break |
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if attribute_used: |
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break |
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attributes_to_allow = [ |
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"bos_index", |
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"eos_index", |
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"pad_index", |
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"unk_index", |
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"mask_index", |
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"image_size", |
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"use_cache", |
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"out_features", |
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"out_indices", |
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"sampling_rate", |
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"use_pretrained_backbone", |
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] |
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attributes_used_in_generation = ["encoder_no_repeat_ngram_size"] |
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case_allowed = True |
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if not attribute_used: |
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case_allowed = False |
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for attribute in attributes: |
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if attribute in ["is_encoder_decoder"] and default_value is True: |
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case_allowed = True |
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elif attribute in ["tie_word_embeddings"] and default_value is False: |
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case_allowed = True |
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elif attribute in attributes_to_allow + attributes_used_in_generation: |
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case_allowed = True |
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elif attribute.endswith("_token_id"): |
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case_allowed = True |
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if not case_allowed: |
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allowed_cases = SPECIAL_CASES_TO_ALLOW.get(config_class.__name__, []) |
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case_allowed = allowed_cases is True or attribute in allowed_cases |
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return attribute_used or case_allowed |
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def check_config_attributes_being_used(config_class): |
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"""Check the arguments in `__init__` of `config_class` are used in the modeling files in the same directory |
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Args: |
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config_class (`type`): |
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The configuration class for which the arguments in its `__init__` will be checked. |
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""" |
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signature = dict(inspect.signature(config_class.__init__).parameters) |
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parameter_names = [x for x in list(signature.keys()) if x not in ["self", "kwargs"]] |
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parameter_defaults = [signature[param].default for param in parameter_names] |
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reversed_attribute_map = {} |
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if len(config_class.attribute_map) > 0: |
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reversed_attribute_map = {v: k for k, v in config_class.attribute_map.items()} |
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config_source_file = inspect.getsourcefile(config_class) |
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model_dir = os.path.dirname(config_source_file) |
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modeling_paths = [os.path.join(model_dir, fn) for fn in os.listdir(model_dir) if fn.startswith("modeling_")] |
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modeling_sources = [] |
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for path in modeling_paths: |
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if os.path.isfile(path): |
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with open(path, encoding="utf8") as fp: |
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modeling_sources.append(fp.read()) |
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unused_attributes = [] |
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for config_param, default_value in zip(parameter_names, parameter_defaults): |
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attributes = [config_param] |
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if config_param in reversed_attribute_map: |
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attributes.append(reversed_attribute_map[config_param]) |
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if not check_attribute_being_used(config_class, attributes, default_value, modeling_sources): |
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unused_attributes.append(attributes[0]) |
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return sorted(unused_attributes) |
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def check_config_attributes(): |
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"""Check the arguments in `__init__` of all configuration classes are used in python files""" |
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configs_with_unused_attributes = {} |
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for _config_class in list(CONFIG_MAPPING.values()): |
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if "models.deprecated" in _config_class.__module__: |
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continue |
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config_classes_in_module = [ |
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cls |
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for name, cls in inspect.getmembers( |
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inspect.getmodule(_config_class), |
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lambda x: inspect.isclass(x) |
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and issubclass(x, PretrainedConfig) |
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and inspect.getmodule(x) == inspect.getmodule(_config_class), |
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) |
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] |
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for config_class in config_classes_in_module: |
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unused_attributes = check_config_attributes_being_used(config_class) |
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if len(unused_attributes) > 0: |
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configs_with_unused_attributes[config_class.__name__] = unused_attributes |
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if len(configs_with_unused_attributes) > 0: |
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error = "The following configuration classes contain unused attributes in the corresponding modeling files:\n" |
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for name, attributes in configs_with_unused_attributes.items(): |
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error += f"{name}: {attributes}\n" |
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raise ValueError(error) |
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if __name__ == "__main__": |
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check_config_attributes() |
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