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import math |
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import torch |
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import torch.nn as nn |
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from transformers import CLIPVisionModel, PretrainedConfig |
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from transformers import CLIPVisionConfig |
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from transformers.utils import logging |
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from datetime import datetime |
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logger = logging.get_logger(__name__) |
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CLIP_VIT_LARGE_PATCH14_336_CONFIG = CLIPVisionConfig( |
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attention_dropout=0.0, |
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dropout=0.0, |
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hidden_act="quick_gelu", |
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hidden_size=1024, |
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image_size=336, |
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initializer_factor=1.0, |
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initializer_range=0.02, |
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intermediate_size=4096, |
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layer_norm_eps=1e-05, |
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num_attention_heads=16, |
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num_channels=3, |
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num_hidden_layers=24, |
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patch_size=14, |
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projection_dim=768 |
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) |
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class Phi3ImageEmbedding(nn.Module): |
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"""Phi3 Image embedding.""" |
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def __init__(self, config: PretrainedConfig, wte=None, **kwargs) -> None: |
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super().__init__() |
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hidden_size = config.n_embd if hasattr(config, 'n_embd') else config.hidden_size |
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if hasattr(config, 'embd_pdrop') or hasattr(config, 'embed_pdrop'): |
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embd_drop = config.embd_pdrop if hasattr(config, 'embd_pdrop') else config.embed_pdrop |
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self.drop = nn.Dropout(embd_drop) |
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else: |
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self.drop = None |
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self.wte = wte |
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if isinstance(config.img_processor, dict) and config.img_processor.get('name', None) == 'clip_vision_model': |
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assert 'model_name' in config.img_processor, 'model_name must be provided for CLIPVisionModel' |
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assert 'image_dim_out' in config.img_processor, 'image_dim_out must be provided for CLIPVisionModel' |
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assert 'num_img_tokens' in config.img_processor, 'num_img_tokens must be provided for CLIPVisionModel' |
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assert config.img_processor['model_name'] == 'openai/clip-vit-large-patch14-336' |
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clip_config = CLIP_VIT_LARGE_PATCH14_336_CONFIG |
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self.img_processor = CLIPVisionModel(clip_config) |
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image_dim_out = config.img_processor['image_dim_out'] |
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self.num_img_tokens = config.img_processor['num_img_tokens'] |
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else: |
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raise NotImplementedError(f'img_processor = {config.img_processor}, not implemented') |
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self.image_dim_out = image_dim_out |
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self.img_sizes = None |
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self.use_hd_transform = kwargs.get('use_hd_transform', False) |
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self.with_learnable_separator = kwargs.get('with_learnable_separator', False) |
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self.hd_transform_order = kwargs.get('hd_transform_order', 'glb_sub') |
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assert self.use_hd_transform == self.with_learnable_separator, 'use_hd_transform and with_learnable_separator should have same value' |
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if self.with_learnable_separator: |
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assert self.use_hd_transform, 'learnable separator is only for hd transform' |
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self.glb_GN = nn.Parameter(torch.zeros([1, 1, self.image_dim_out * 4])) |
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self.sub_GN = nn.Parameter(torch.zeros([1, 1, 1, self.image_dim_out * 4])) |
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logger.info(f'learnable separator enabled for hd transform, hd_transform_order = {self.hd_transform_order}') |
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projection_cls = kwargs.get('projection_cls', 'linear') |
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if projection_cls == 'linear': |
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self.img_projection = nn.Linear(image_dim_out, hidden_size) |
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elif projection_cls == 'mlp' and self.use_hd_transform: |
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dim_projection = hidden_size |
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depth = 2 |
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layers = [nn.Linear(image_dim_out * 4, dim_projection)] |
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for _ in range(1, depth): |
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layers.extend([nn.GELU(), |
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nn.Linear(dim_projection, dim_projection)]) |
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self.img_projection = nn.Sequential(*layers) |
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elif projection_cls == 'mlp': |
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dim_projection = hidden_size |
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depth = 2 |
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layers = [nn.Linear(image_dim_out, dim_projection)] |
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for _ in range(1, depth): |
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layers.extend([nn.GELU(), |
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nn.Linear(dim_projection, dim_projection)]) |
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self.img_projection = nn.Sequential(*layers) |
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else: |
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raise NotImplementedError(f'projection_cls = {projection_cls}, not implemented') |
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self.vocab_size = config.vocab_size |
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self.img_features = None |
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if isinstance(config.img_processor, dict): |
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self.layer_idx = config.img_processor.get('layer_idx', -2) |
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self.type_feature = config.img_processor.get('type_feature', 'patch') |
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else: |
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self.layer_idx = -2 |
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self.type_feature = 'patch' |
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def set_img_features(self, img_features: torch.FloatTensor) -> None: |
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self.img_features = img_features |
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def set_img_sizes(self, img_sizes: torch.LongTensor) -> None: |
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self.img_sizes = img_sizes |
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def get_img_features(self, img_embeds: torch.FloatTensor) -> torch.FloatTensor: |
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LAYER_IDX = self.layer_idx |
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TYPE_FEATURE = self.type_feature |
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img_processor_output = self.img_processor(img_embeds, output_hidden_states=True) |
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img_feature = img_processor_output.hidden_states[LAYER_IDX] |
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if TYPE_FEATURE == "patch": |
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patch_feature = img_feature[:, 1:] |
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return patch_feature |
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if TYPE_FEATURE == "cls_patch": |
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return img_feature |
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raise NotImplementedError |
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def forward(self, input_ids: torch.LongTensor, pixel_values: torch.FloatTensor, image_sizes=None) -> torch.FloatTensor: |
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MAX_INPUT_ID = int(1e9) |
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img_embeds = pixel_values |
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img_sizes = image_sizes |
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if self.img_features is not None: |
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img_embeds = self.img_features.clone() |
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self.img_features = None |
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if self.img_sizes is not None: |
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img_sizes = self.img_sizes |
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input_shape = input_ids.size() |
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input_ids = input_ids.view(-1, input_shape[-1]) |
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with torch.no_grad(): |
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positions = torch.nonzero((input_ids < 0) & (input_ids > -MAX_INPUT_ID), as_tuple=False) |
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select = False |
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if isinstance(self.img_projection, nn.Sequential): |
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target_device = self.img_projection[0].bias.device |
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target_dtype = self.img_projection[0].bias.dtype |
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else: |
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target_device = self.img_projection.bias.device |
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target_dtype = self.img_projection.bias.dtype |
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if len(positions.tolist()) > 0: |
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with torch.no_grad(): |
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g_values = abs(input_ids[positions[:, 0], positions[:, 1]]) |
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if self.use_hd_transform and img_sizes is not None and len(img_sizes): |
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hd_transform = True |
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assert img_embeds.ndim == 5, f'img_embeds size: {img_embeds.size()}, expect 5D tensor for hd transform' |
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start_time = datetime.now() |
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bs = img_embeds.shape[0] |
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img_features = self.get_img_features(img_embeds.flatten(0, 1)) |
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base_feat_height = base_feat_width = int(img_features.shape[1] ** 0.5) |
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assert base_feat_height == 24 and base_feat_width == 24, f'base_feat_height: {base_feat_height}, base_feat_width: {base_feat_width}, expect 24x24 features for hd transform' |
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img_features = img_features.view(bs, -1, base_feat_height * base_feat_width, self.image_dim_out) |
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C = self.image_dim_out |
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H = base_feat_height |
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output_imgs = [] |
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output_len = [] |
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if isinstance(img_sizes, torch.Tensor): |
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img_sizes = img_sizes.view(-1, 2) |
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for _bs in range(bs): |
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h, w = img_sizes[_bs] |
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h = h // 336 |
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w = w // 336 |
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B_ = h * w |
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global_img_feature = img_features[_bs, :1] |
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glb_img = global_img_feature.reshape(1,H,H,C).reshape(1,H//2,2,H//2,2,C).contiguous().permute(0,1,3,2,4,5).reshape(1,H//2,H//2,4*C).contiguous() |
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temp_glb_GN = self.sub_GN.repeat(1, H//2, 1, 1) |
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glb_img = torch.cat([glb_img, temp_glb_GN], dim=2).reshape(1,-1,4*C) |
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sub_img = img_features[_bs, 1:] |
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sub_img = sub_img[:B_] |
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sub_img = sub_img.reshape(B_,H,H,C).reshape(B_,H//2,2,H//2,2,C).contiguous().permute(0,1,3,2,4,5).reshape(B_,-1,4*C).contiguous() |
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sub_img = sub_img.reshape(1, h, w, 12, 12, -1).permute(0,1,3,2,4,5).reshape(1,h*12,w*12,4*C) |
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temp_sub_GN = self.sub_GN.repeat(1, h*12, 1, 1) |
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sub_img = torch.cat([sub_img, temp_sub_GN], dim=2).reshape(1,-1,4*C) |
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if self.hd_transform_order == 'glb_sub': |
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output_imgs.append(torch.cat([glb_img, self.glb_GN, sub_img], dim=1)) |
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elif self.hd_transform_order == 'sub_glb': |
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output_imgs.append(torch.cat([sub_img, self.glb_GN, glb_img], dim=1)) |
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else: |
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raise NotImplementedError(f'hd_transform_order = {self.hd_transform_order}, not implemented') |
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temp_len = int((h*w+1)*144 + 1 + (h+1)*12) |
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assert temp_len == output_imgs[-1].shape[1], f'temp_len: {temp_len}, output_imgs[-1].shape[1]: {output_imgs[-1].shape[1]}' |
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output_len.append(temp_len) |
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num_img_tokens = output_len |
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img_set_tensor = [] |
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for _output_img in output_imgs: |
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img_feature_proj = self.img_projection(_output_img.to(target_device).to(target_dtype)) |
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img_set_tensor.append(img_feature_proj) |
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logger.info(f'img_embeds size: {img_embeds.size()}, image sizes: {img_sizes} loading time {datetime.now() - start_time}') |
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elif img_embeds.ndim == 4: |
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selected_g_values = g_values[::self.num_img_tokens] |
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assert len(img_embeds) == len(selected_g_values), f'img_embeds size: {img_embeds.size()}, selected_g_values size: {len(selected_g_values)}, selected_g_value {selected_g_values}' |
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start_time = datetime.now() |
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tt = ( |
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self.get_img_features(img_embeds) |
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.to(target_device) |
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.to(target_dtype) |
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.reshape(-1, self.image_dim_out) |
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) |
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logger.info(f'img_embeds size: {img_embeds.size()}, loading time {datetime.now() - start_time}') |
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img_set_tensor = self.img_projection(tt) |
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elif img_embeds.ndim == 3: |
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selected_g_values = g_values[::self.num_img_tokens] |
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assert len(img_embeds) == len(selected_g_values), f'img_embeds size: {img_embeds.size()}, selected_g_values size: {len(selected_g_values)}, selected_g_value {selected_g_values}' |
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tt = ( |
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img_embeds |
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.to(target_device) |
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.to(target_dtype) |
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.view(-1, self.image_dim_out) |
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) |
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img_set_tensor = self.img_projection(tt) |
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else: |
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raise NotImplementedError |
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select = True |
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with torch.no_grad(): |
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input_ids.clamp_min_(0).clamp_max_(self.vocab_size) |
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hidden_states = self.wte(input_ids) |
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if select: |
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if hd_transform: |
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idx = 0 |
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for i, cnt in enumerate(num_img_tokens): |
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hidden_states[positions[idx, 0], positions[idx, 1] : positions[idx, 1] + cnt] = ( |
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img_set_tensor[i] |
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.to(hidden_states.dtype) |
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.to(hidden_states.device) |
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) |
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idx += cnt |
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else: |
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idx = 0 |
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assert len(selected_g_values) * self.num_img_tokens == len(img_set_tensor), f'len(selected_g_values) * self.num_img_tokens = {len(selected_g_values) * self.num_img_tokens}, len(img_set_tensor) = {len(img_set_tensor)}' |
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for i, g in enumerate(selected_g_values): |
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cnt = self.num_img_tokens |
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hidden_states[positions[idx, 0], positions[idx, 1] : positions[idx, 1] + cnt] = ( |
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img_set_tensor[i * cnt : (i + 1) * cnt] |
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.to(hidden_states.dtype) |
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.to(hidden_states.device) |
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) |
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idx += cnt |
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if self.drop is not None: |
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hidden_states = self.drop(hidden_states) |
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return hidden_states |
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