vlm_analyze.py 5.4 KB

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  1. # Copyright (c) Opendatalab. All rights reserved.
  2. import time
  3. from loguru import logger
  4. from .model_output_to_middle_json import result_to_middle_json
  5. from ...data.data_reader_writer import DataWriter
  6. from mineru.utils.pdf_image_tools import load_images_from_pdf
  7. from ...utils.enum_class import ImageType
  8. from ...utils.models_download_utils import auto_download_and_get_model_root_path
  9. from mineru_vl_utils import MinerUClient
  10. class ModelSingleton:
  11. _instance = None
  12. _models = {}
  13. def __new__(cls, *args, **kwargs):
  14. if cls._instance is None:
  15. cls._instance = super().__new__(cls)
  16. return cls._instance
  17. def get_model(
  18. self,
  19. backend: str,
  20. model_path: str | None,
  21. server_url: str | None,
  22. **kwargs,
  23. ) -> MinerUClient:
  24. key = (backend, model_path, server_url)
  25. if key not in self._models:
  26. model = None
  27. processor = None
  28. vllm_llm = None
  29. if backend in ['transformers', 'vllm-engine'] and not model_path:
  30. model_path = auto_download_and_get_model_root_path("/","vlm")
  31. if backend == "transformers":
  32. if not model_path:
  33. raise ValueError("model_path must be provided when model or processor is None.")
  34. try:
  35. from transformers import (
  36. AutoProcessor,
  37. Qwen2VLForConditionalGeneration,
  38. )
  39. from transformers import __version__ as transformers_version
  40. except ImportError:
  41. raise ImportError("Please install transformers to use the transformers backend.")
  42. from packaging import version
  43. if version.parse(transformers_version) >= version.parse("4.56.0"):
  44. dtype_key = "dtype"
  45. else:
  46. dtype_key = "torch_dtype"
  47. model = Qwen2VLForConditionalGeneration.from_pretrained(
  48. model_path,
  49. device_map="auto",
  50. **{dtype_key: "auto"}, # type: ignore
  51. )
  52. processor = AutoProcessor.from_pretrained(
  53. model_path,
  54. use_fast=True,
  55. )
  56. elif backend == "vllm-engine":
  57. if not model_path:
  58. raise ValueError("model_path must be provided when vllm_llm is None.")
  59. try:
  60. import vllm
  61. except ImportError:
  62. raise ImportError("Please install vllm to use the vllm-engine backend.")
  63. logger.debug(kwargs)
  64. # 使用kwargs为 vllm初始化参数
  65. vllm_llm = vllm.LLM(model_path, **kwargs)
  66. self._models[key] = MinerUClient(
  67. backend=backend,
  68. model=model,
  69. processor=processor,
  70. vllm_llm=vllm_llm,
  71. server_url=server_url,
  72. )
  73. return self._models[key]
  74. def doc_analyze(
  75. pdf_bytes,
  76. image_writer: DataWriter | None,
  77. predictor: MinerUClient | None = None,
  78. backend="transformers",
  79. model_path: str | None = None,
  80. server_url: str | None = None,
  81. **kwargs,
  82. ):
  83. if predictor is None:
  84. predictor = ModelSingleton().get_model(backend, model_path, server_url, **kwargs)
  85. # load_images_start = time.time()
  86. images_list, pdf_doc = load_images_from_pdf(pdf_bytes, image_type=ImageType.PIL)
  87. images_pil_list = [image_dict["img_pil"] for image_dict in images_list]
  88. # load_images_time = round(time.time() - load_images_start, 2)
  89. # logger.info(f"load images cost: {load_images_time}, speed: {round(len(images_base64_list)/load_images_time, 3)} images/s")
  90. # infer_start = time.time()
  91. results = predictor.batch_two_step_extract(images=images_pil_list)
  92. # infer_time = round(time.time() - infer_start, 2)
  93. # logger.info(f"infer finished, cost: {infer_time}, speed: {round(len(results)/infer_time, 3)} page/s")
  94. middle_json = result_to_middle_json(results, images_list, pdf_doc, image_writer)
  95. return middle_json, results
  96. async def aio_doc_analyze(
  97. pdf_bytes,
  98. image_writer: DataWriter | None,
  99. predictor: MinerUClient | None = None,
  100. backend="transformers",
  101. model_path: str | None = None,
  102. server_url: str | None = None,
  103. **kwargs,
  104. ):
  105. if predictor is None:
  106. predictor = ModelSingleton().get_model(backend, model_path, server_url, **kwargs)
  107. # load_images_start = time.time()
  108. images_list, pdf_doc = load_images_from_pdf(pdf_bytes, image_type=ImageType.PIL)
  109. images_pil_list = [image_dict["img_pil"] for image_dict in images_list]
  110. # load_images_time = round(time.time() - load_images_start, 2)
  111. # logger.info(f"load images cost: {load_images_time}, speed: {round(len(images_base64_list)/load_images_time, 3)} images/s")
  112. # infer_start = time.time()
  113. results = await predictor.aio_batch_two_step_extract(images=images_pil_list)
  114. # infer_time = round(time.time() - infer_start, 2)
  115. # logger.info(f"infer finished, cost: {infer_time}, speed: {round(len(results)/infer_time, 3)} page/s")
  116. middle_json = result_to_middle_json(results, images_list, pdf_doc, image_writer)
  117. return middle_json, results