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import math |
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import json |
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import timm |
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import torch |
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import torchvision |
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import deepspeed |
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from PIL import Image |
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from timm.data import IMAGENET_INCEPTION_MEAN, IMAGENET_INCEPTION_STD |
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from torchvision import transforms |
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from transformers import LlamaTokenizer |
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from transformers.integrations import is_deepspeed_zero3_enabled |
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from .configuration_minicpm import MiniCPMVConfig |
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from .modeling_minicpm import MiniCPMForCausalLM, MiniCPMPreTrainedModel |
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from .resampler import Resampler |
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from functools import partial |
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from typing import Any, Callable, Dict, List, Optional, Set, Tuple, Union |
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from peft.utils.other import ModulesToSaveWrapper |
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|
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class MiniCPMVPreTrainedModel(MiniCPMPreTrainedModel): |
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config_class = MiniCPMVConfig |
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class MiniCPMV(MiniCPMVPreTrainedModel): |
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def __init__(self, config): |
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super().__init__(config) |
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|
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self.llm = MiniCPMForCausalLM(config) |
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self.vpm = self.init_vision_module() |
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self.vision_dim = self.vpm.embed_dim |
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self.embed_dim = self.llm.config.hidden_size |
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self.resampler = self.init_resampler(self.embed_dim, self.vision_dim) |
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self.transform = self.init_transform() |
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|
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def init_vision_module(self): |
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model = timm.create_model( |
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self.config.vision_encoder, |
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pretrained=False, |
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num_classes=0, |
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dynamic_img_size=True, |
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dynamic_img_pad=True |
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) |
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|
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if isinstance(model, timm.models.VisionTransformer): |
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if model.attn_pool is not None: |
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model.attn_pool = torch.nn.Identity() |
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|
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if self.config.drop_vision_last_layer: |
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model.blocks = model.blocks[:-1] |
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return model |
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def init_resampler(self, embed_dim, vision_dim): |
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return Resampler( |
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grid_size=int(math.sqrt(self.config.query_num)), |
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embed_dim=embed_dim, |
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num_heads=embed_dim // 128, |
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kv_dim=vision_dim, |
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adaptive=True |
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) |
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|
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def init_transform(self): |
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return transforms.Compose( |
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[ |
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transforms.ToTensor(), |
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transforms.Normalize( |
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mean=IMAGENET_INCEPTION_MEAN, std=IMAGENET_INCEPTION_STD |
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), |
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] |
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) |
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|
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def get_input_embeddings(self): |
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return self.llm.get_input_embeddings() |
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|
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def set_input_embeddings(self, value): |
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self.llm.embed_tokens = value |
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|
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def vpm_forward_features(self, pixel_value): |
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if isinstance(self.vpm, ModulesToSaveWrapper): |
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if self.vpm.disable_adapters or (self.vpm.active_adapter not in self.vpm.modules_to_save): |
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return self.vpm.original_module.forward_features(pixel_value) |
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return self.vpm.modules_to_save[self.vpm.active_adapter].forward_features(pixel_value) |
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else: |
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return self.vpm.forward_features(pixel_value) |
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def get_vision_embedding(self, pixel_values): |
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res = [] |
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dtype = self.llm.lm_head.weight.dtype |
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def process_each_pixel(pixel_value, dtype, config, vpm, resampler): |
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H, W = pixel_value.shape[-2:] |
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target_size = (math.ceil(H / config.patch_size), math.ceil(W / config.patch_size)) |
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vision_embedding = self.vpm_forward_features(pixel_value.unsqueeze(0).type(dtype)) |
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|
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if hasattr(vpm, 'num_prefix_tokens') and vpm.num_prefix_tokens > 0: |
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vision_embedding = vision_embedding[:, vpm.num_prefix_tokens:] |
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return resampler(vision_embedding, target_size) |
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|
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for pixel_value in pixel_values: |
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result = process_each_pixel(pixel_value, dtype, self.config, self.vpm, self.resampler) |
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res.append(result) |
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return torch.vstack(res) |
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|
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def get_vllm_embedding(self, data): |
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if "vision_hidden_states" not in data: |
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pixel_values_list = data["pixel_values"] |
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vision_hidden_states = [] |
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for pixel_values in pixel_values_list: |
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if len(pixel_values) > 0: |
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vision_hidden_states.append(self.get_vision_embedding(pixel_values)) |
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elif self.training: |
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dtype = self.llm.lm_head.weight.dtype |
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device = self.llm.lm_head.weight.device |
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dummy_image = torch.zeros( |
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(1, 3, 224, 224), device=device, dtype=dtype |
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) |
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vision_hidden_states.append(self.get_vision_embedding(dummy_image)) |
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else: |
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vision_hidden_states.append([]) |
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|
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else: |
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vision_hidden_states = data["vision_hidden_states"] |
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|
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vllm_embedding = ( |
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self.llm.model.embed_tokens(data["input_ids"]) * self.llm.config.scale_emb |
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) |
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vision_hidden_states = [ |
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i.type(vllm_embedding.dtype) if isinstance(i, torch.Tensor) else i |
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for i in vision_hidden_states |
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] |
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bs = len(data["input_ids"]) |
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for i in range(bs): |
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cur_vs_hs = vision_hidden_states[i] |
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if len(cur_vs_hs) > 0: |
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cur_vllm_emb = vllm_embedding[i] |
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cur_image_bound = data["image_bound"][i] |
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if len(cur_image_bound) > 0: |
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image_indices = torch.stack( |
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[ |
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torch.arange(r[0], r[1], dtype=torch.long) |
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for r in cur_image_bound |
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] |
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).to(vllm_embedding.device) |
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|
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cur_vllm_emb.scatter_( |
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0, |
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image_indices.view(-1, 1).repeat(1, cur_vllm_emb.shape[-1]), |
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cur_vs_hs.view(-1, cur_vs_hs.shape[-1]), |
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) |
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elif self.training: |
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cur_vllm_emb += cur_vs_hs[0].mean() * 0 |
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return vllm_embedding, vision_hidden_states |
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|
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def forward(self, data, **kwargs): |
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vllm_embedding, vision_hidden_states = self.get_vllm_embedding(data) |
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position_ids = data["position_ids"] |
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if position_ids.dtype != torch.int64: |
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position_ids = position_ids.long() |
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|
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return self.llm( |
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input_ids=None, |
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position_ids=position_ids, |
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inputs_embeds=vllm_embedding, |
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**kwargs |
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) |
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|
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def _convert_to_tensors( |
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self, tokenizer, input_str, max_inp_length: Optional[int] = None |
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): |
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if tokenizer.add_bos_token: |
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input_ids = tokenizer.encode(input_str) |
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else: |
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input_ids = [tokenizer.bos_id] + tokenizer.encode(input_str) |
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if max_inp_length is not None: |
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input_ids = input_ids[:max_inp_length] |
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input_ids = torch.tensor(input_ids, dtype=torch.int32) |
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image_start_tokens = torch.where(input_ids == tokenizer.im_start_id)[0] |
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image_start_tokens += 1 |
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image_end_tokens = torch.where(input_ids == tokenizer.im_end_id)[0] |
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valid_image_nums = max(len(image_start_tokens), len(image_end_tokens)) |
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image_bound = torch.hstack( |
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[ |
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image_start_tokens[:valid_image_nums].unsqueeze(-1), |
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image_end_tokens[:valid_image_nums].unsqueeze(-1), |
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] |
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) |
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model_input = {} |
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model_input["input_ids"] = input_ids.unsqueeze(0).to(self.device) |
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model_input["image_bound"] = image_bound |
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return model_input |
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def _process_list( |
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self, tokenizer, data_list: List[str], max_inp_length: Optional[int] = None |
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): |
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pad_keys = ["input_ids"] |
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input_tensors = [] |
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for data in data_list: |
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input_tensors.append( |
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self._convert_to_tensors(tokenizer, data, max_inp_length) |
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) |
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padded = {} |
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for key in pad_keys: |
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padded[key] = pad(input_tensors, key, padding_side="left").to(self.device) |
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padded["image_bound"] = [i["image_bound"] for i in input_tensors] |
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return padded |
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def _decode(self, inputs_embeds, tokenizer, **kwargs): |
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output = self.llm.generate( |
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inputs_embeds=inputs_embeds, |
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pad_token_id=0, |
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eos_token_id=tokenizer.eos_token_id, |
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**kwargs |
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) |
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return self._decode_text(output, tokenizer) |
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|
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def _decode_text(self, result_ids, tokenizer): |
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result_text = [] |
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for result in result_ids: |
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result = result[result != 0] |
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if result[0] == tokenizer.bos_id: |
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result = result[1:] |
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if result[-1] == tokenizer.eos_id: |
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result = result[:-1] |
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result_text.append(tokenizer.decode(result).strip()) |
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return result_text |
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|
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def slice_image(self, image): |
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return slice_image( |
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image, |
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self.config.max_slice_nums, |
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self.config.scale_resolution, |
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self.config.patch_size, |
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) |
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def get_slice_image_placeholder(self, image, tokenizer): |
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image_placeholder = ( |
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tokenizer.im_start |
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+ tokenizer.unk_token * self.config.query_num |
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+ tokenizer.im_end |
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) |
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slice_images = [] |
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source_image, patches, best_grid = slice_image( |
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image, |
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self.config.max_slice_nums, |
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self.config.scale_resolution, |
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self.config.patch_size, |
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) |
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slice_images.append(source_image) |
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final_placeholder = image_placeholder |
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if len(patches) > 0: |
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for i in range(len(patches)): |
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for j in range(len(patches[0])): |
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slice_images.append(patches[i][j]) |
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final_placeholder += get_grid_placeholder( |
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tokenizer, best_grid, self.config.query_num |
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) |
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return slice_images, final_placeholder |
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|
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def generate( |
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self, |
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data_list=None, |
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img_list=None, |
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tokenizer=None, |
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max_inp_length: Optional[int] = None, |
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vision_hidden_states=None, |
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return_vision_hidden_states=False, |
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**kwargs |
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): |
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|
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assert data_list is not None |
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bs = len(data_list) |
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if img_list == None: |
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img_list = [[] for i in range(bs)] |
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assert bs == len(img_list) |
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model_inputs = self._process_list(tokenizer, data_list, max_inp_length) |
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|
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if vision_hidden_states is None: |
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pixel_values = [] |
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for i in range(bs): |
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img_inps = [] |
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for img in img_list[i]: |
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img_inps.append(self.transform(img).to(self.device)) |
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if img_inps: |
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pixel_values.append(img_inps) |
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else: |
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pixel_values.append([]) |
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model_inputs["pixel_values"] = pixel_values |
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else: |
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model_inputs["vision_hidden_states"] = vision_hidden_states |
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|
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with torch.inference_mode(): |
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( |
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model_inputs["inputs_embeds"], |
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vision_hidden_states, |
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) = self.get_vllm_embedding(model_inputs) |
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|
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result = self._decode(model_inputs["inputs_embeds"], tokenizer, **kwargs) |
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if return_vision_hidden_states: |
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return result, vision_hidden_states |
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return result |
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|
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def chat( |
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self, |
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image, |
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msgs, |
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context, |
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tokenizer, |
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vision_hidden_states=None, |
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max_new_tokens=1024, |
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sampling=True, |
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max_inp_length=2048, |
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**kwargs |
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): |
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if isinstance(msgs, str): |
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msgs = json.loads(msgs) |
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|
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prompt = "" |
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for i, msg in enumerate(msgs): |
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role = msg["role"] |
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content = msg["content"] |
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assert role in ["user", "assistant"] |
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if i == 0: |
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assert role == "user", "The role of first msg should be user" |
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if self.config.slice_mode: |
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images, final_placeholder = self.get_slice_image_placeholder( |
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image, tokenizer |
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) |
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content = final_placeholder + "\n" + content |
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else: |
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images = [image] |
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content = ( |
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tokenizer.im_start |
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+ tokenizer.unk_token * self.config.query_num |
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+ tokenizer.im_end |
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+ "\n" |
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+ content |
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) |
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prompt += "<用户>" if role == "user" else "<AI>" |
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prompt += content |
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prompt += "<AI>" |
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final_input = prompt |
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|
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if sampling: |
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generation_config = { |
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"top_p": 0.8, |
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"top_k": 100, |
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"temperature": 0.7, |
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"do_sample": True, |
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"repetition_penalty": 1.05 |
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} |
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else: |
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generation_config = { |
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"num_beams": 3, |
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"repetition_penalty": 1.2, |
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} |
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|
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generation_config.update( |
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(k, kwargs[k]) for k in generation_config.keys() & kwargs.keys() |
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) |
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|
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with torch.inference_mode(): |
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res, vision_hidden_states = self.generate( |
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data_list=[final_input], |
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max_inp_length=max_inp_length, |
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img_list=[images], |
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tokenizer=tokenizer, |
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max_new_tokens=max_new_tokens, |
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vision_hidden_states=vision_hidden_states, |
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return_vision_hidden_states=True, |
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**generation_config |
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) |
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answer = res[0] |
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context = msgs.copy() |
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context.append({"role": "assistant", "content": answer}) |
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|
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return answer, context, generation_config |
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|
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|
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class LlamaTokenizerWrapper(LlamaTokenizer): |
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def __init__(self, **kwargs): |
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super().__init__(**kwargs) |
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self.im_start = "<image>" |
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self.im_end = "</image>" |
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self.ref_start = "<ref>" |
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self.ref_end = "</ref>" |
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self.box_start = "<box>" |
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self.box_end = "</box>" |
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self.quad_start = "<quad>" |
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self.quad_end = "</quad>" |
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self.point_start = "<point>" |
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self.point_end = "</point>" |
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self.slice_start = "<slice>" |
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self.slice_end = "</slice>" |
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|
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@property |
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def eos_id(self): |
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return self.sp_model.eos_id() |
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|
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@property |
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def bos_id(self): |
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return self.sp_model.bos_id() |
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|
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@property |
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def unk_id(self): |
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return self.sp_model.unk_id() |
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|
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@property |
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def im_start_id(self): |
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return self._convert_token_to_id(self.im_start) |
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|
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@property |
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def im_end_id(self): |
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return self._convert_token_to_id(self.im_end) |
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|
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def pad(orig_items, key, max_length=None, padding_value=0, padding_side="left"): |
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items = [] |
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if isinstance(orig_items[0][key], list): |
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assert isinstance(orig_items[0][key][0], torch.Tensor) |
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for it in orig_items: |
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for tr in it[key]: |
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items.append({key: tr}) |
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else: |
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assert isinstance(orig_items[0][key], torch.Tensor) |
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items = orig_items |
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|
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batch_size = len(items) |
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shape = items[0][key].shape |
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dim = len(shape) |
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assert dim <= 3 |
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if max_length is None: |
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max_length = 0 |
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max_length = max(max_length, max(item[key].shape[-1] for item in items)) |
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min_length = min(item[key].shape[-1] for item in items) |
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dtype = items[0][key].dtype |
|
|
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if dim == 1: |
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return torch.cat([item[key] for item in items], dim=0) |
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elif dim == 2: |
|
if max_length == min_length: |
|
return torch.cat([item[key] for item in items], dim=0) |
|
tensor = torch.zeros((batch_size, max_length), dtype=dtype) + padding_value |
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else: |
|
tensor = ( |
|
torch.zeros((batch_size, max_length, shape[-1]), dtype=dtype) |
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+ padding_value |
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) |
|
|
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for i, item in enumerate(items): |
|
if dim == 2: |
|
if padding_side == "left": |
|
tensor[i, -len(item[key][0]) :] = item[key][0].clone() |
|
else: |
|
tensor[i, : len(item[key][0])] = item[key][0].clone() |
|
elif dim == 3: |
|
if padding_side == "left": |
|
tensor[i, -len(item[key][0]) :, :] = item[key][0].clone() |
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else: |
|
tensor[i, : len(item[key][0]), :] = item[key][0].clone() |
|
|
|
return tensor |
|
|
|
|
|
def slice_image( |
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image, max_slice_nums=9, scale_resolution=448, patch_size=14, never_split=False |
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): |
|
original_size = image.size |
|
original_width, original_height = original_size |
|
log_ratio = math.log(original_width / original_height) |
|
ratio = original_width * original_height / (scale_resolution * scale_resolution) |
|
multiple = min(math.ceil(ratio), max_slice_nums) |
|
|
|
source_image = None |
|
best_grid = None |
|
patches = [] |
|
|
|
if multiple <= 1 or never_split: |
|
|
|
best_size = find_best_resize( |
|
original_size, scale_resolution, patch_size, allow_upscale=True |
|
) |
|
source_image = image.resize(best_size, Image.Resampling.BICUBIC) |
|
else: |
|
candidate_split_grids_nums = [] |
|
for i in [multiple - 1, multiple, multiple + 1]: |
|
if i == 1 or i > max_slice_nums: |
|
continue |
|
candidate_split_grids_nums.append(i) |
|
|
|
|
|
best_resize = find_best_resize(original_size, scale_resolution, patch_size) |
|
source_image = image.copy().resize(best_resize, Image.Resampling.BICUBIC) |
|
candidate_grids = [] |
|
|
|
|
|
for split_grids_nums in candidate_split_grids_nums: |
|
m = 1 |
|
while m <= split_grids_nums: |
|
if split_grids_nums % m == 0: |
|
candidate_grids.append([m, split_grids_nums // m]) |
|
m += 1 |
|
|
|
best_grid = [1, 1] |
|
min_error = float("inf") |
|
for grid in candidate_grids: |
|
error = abs(log_ratio - math.log(grid[0] / grid[1])) |
|
if error < min_error: |
|
best_grid = grid |
|
min_error = error |
|
|
|
refine_size = get_refine_size( |
|
original_size, best_grid, scale_resolution, patch_size, allow_upscale=True |
|
) |
|
|
|
refine_image = image.resize(refine_size, Image.Resampling.BICUBIC) |
|
patches = split_to_patches(refine_image, best_grid) |
|
|
|
return source_image, patches, best_grid |
|
|
|
|
|
def ensure_divide(length, patch_size): |
|
return max(round(length / patch_size) * patch_size, patch_size) |
|
|
|
|
|
def find_best_resize(original_size, scale_resolution, patch_size, allow_upscale=False): |
|
width, height = original_size |
|
if (width * height > scale_resolution * scale_resolution) or allow_upscale: |
|
r = width / height |
|
height = int(scale_resolution / math.sqrt(r)) |
|
width = int(height * r) |
|
best_width = ensure_divide(width, patch_size) |
|
best_height = ensure_divide(height, patch_size) |
|
return (best_width, best_height) |
|
|
|
|
|
def get_refine_size( |
|
original_size, grid, scale_resolution, patch_size, allow_upscale=False |
|
): |
|
width, height = original_size |
|
grid_x, grid_y = grid |
|
|
|
refine_width = ensure_divide(width, grid_x) |
|
refine_height = ensure_divide(height, grid_y) |
|
|
|
grid_width = refine_width / grid_x |
|
grid_height = refine_height / grid_y |
|
|
|
best_grid_size = find_best_resize( |
|
(grid_width, grid_height), |
|
scale_resolution, |
|
patch_size, |
|
allow_upscale=allow_upscale, |
|
) |
|
|
|
refine_size = (best_grid_size[0] * grid_x, best_grid_size[1] * grid_y) |
|
|
|
return refine_size |
|
|
|
|
|
def split_to_patches(image, grid): |
|
patches = [] |
|
width, height = image.size |
|
grid_x = int(width / grid[0]) |
|
grid_y = int(height / grid[1]) |
|
|
|
for i in range(0, height, grid_y): |
|
images = [] |
|
for j in range(0, width, grid_x): |
|
box = (j, i, j + grid_x, i + grid_y) |
|
patch = image.crop(box) |
|
images.append(patch) |
|
patches.append(images) |
|
|
|
return patches |
|
|
|
|
|
def get_grid_placeholder(tokenizer, grid, query_num): |
|
image_placeholder = ( |
|
tokenizer.im_start + tokenizer.unk_token * query_num + tokenizer.im_end |
|
) |
|
|
|
cols = grid[0] |
|
rows = grid[1] |
|
slices = [] |
|
for i in range(rows): |
|
lines = [] |
|
for j in range(cols): |
|
lines.append(image_placeholder) |
|
slices.append("".join(lines)) |
|
slice_placeholder = tokenizer.slice_start + "\n".join(slices) + tokenizer.slice_end |
|
return slice_placeholder |
|
|