workflow.py 17 KB

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  1. import sys
  2. import os
  3. import concurrent.futures
  4. from concurrent.futures import ThreadPoolExecutor
  5. # 添加项目根目录到Python路径
  6. sys.path.append(os.path.dirname(os.path.dirname(os.path.dirname(os.path.abspath(__file__)))))
  7. from langgraph.graph import StateGraph, START, END
  8. from langgraph.graph.message import add_messages
  9. from typing import List, Dict, Any
  10. from pydantic import BaseModel, Field, ConfigDict
  11. from parser.pdf_parser.pdf_splitter import PDFSplitter
  12. from model.qwen_vl import QWenVLParser
  13. from utils.ragflow.ragflow_service import RAGFlowService
  14. from model.multimodal_embedding import Embedding
  15. from conf.config import ModelConfig, VectorDBConfig
  16. from utils.infinity import get_client
  17. # 定义工作流状态类
  18. class PDFParsingState(BaseModel):
  19. """PDF解析工作流状态"""
  20. model_config = ConfigDict(arbitrary_types_allowed=True)
  21. pdf_path: str = Field(..., description="PDF文件路径")
  22. dataset_id: str = Field(..., description="数据集ID")
  23. ragflow_service: RAGFlowService = Field(default_factory=RAGFlowService, description="RAGFLOW服务")
  24. embedding_model: Embedding = Field(default_factory=Embedding, description="多模态嵌入模型实例")
  25. document_id: str = Field(default="", description="上传后的文档ID")
  26. split_pages: List[Dict[str, Any]] = Field(default_factory=list, description="拆分后的页面列表")
  27. current_page: Dict[str, Any] = Field(default_factory=dict, description="当前处理的页面")
  28. parsed_results: List[Dict[str, Any]] = Field(default_factory=list, description="解析结果列表")
  29. vectorized_results: List[Dict[str, Any]] = Field(default_factory=list, description="向量化结果列表")
  30. processed_pages: int = Field(default=0, description="已处理的页面数量")
  31. vectorized_pages: int = Field(default=0, description="已向量化的页面数量")
  32. is_complete: bool = Field(default=False, description="是否处理完成")
  33. # 创建工作流构建器
  34. class PDFParsingWorkflow:
  35. """PDF扫描件拆分解析工作流"""
  36. def __init__(self, model_name: str = "Qwen/Qwen3-VL-8B-Instruct"):
  37. """
  38. 初始化PDF解析工作流
  39. Args:
  40. model_name: QWEN VL模型名称
  41. """
  42. self.model_name = model_name
  43. self.workflow = self._build_workflow()
  44. def _build_workflow(self):
  45. """构建langgraph工作流,实现基于条件路由的并行处理"""
  46. # 创建状态图
  47. graph = StateGraph(PDFParsingState)
  48. # 添加上传文档节点
  49. graph.add_node("upload_document", self._upload_document_node)
  50. # 添加解析文档节点
  51. graph.add_node("parse_document", self._parse_document_node)
  52. # 添加拆分PDF节点
  53. graph.add_node("split_pdf", self._split_pdf_node)
  54. # 添加解析图像节点
  55. graph.add_node("parse_image", self._parse_image_node)
  56. # 添加向量化入库节点
  57. graph.add_node("vectorize_store", self._vectorize_store_node)
  58. # 添加完成节点
  59. graph.add_node("complete", self._complete_node)
  60. # 定义边
  61. # 定义RagFLow解析文档
  62. graph.add_edge(START, "upload_document")
  63. # 添加解析文档边
  64. graph.add_edge("upload_document", "parse_document")
  65. graph.add_edge("parse_document", "split_pdf")
  66. # 定义图片解析边
  67. graph.add_edge("split_pdf", "parse_image")
  68. # 添加条件边:判断是否继续解析
  69. graph.add_conditional_edges(
  70. "parse_image",
  71. self._should_continue_parsing,
  72. {
  73. "continue": "parse_image",
  74. "complete": "vectorize_store"
  75. }
  76. )
  77. # 添加向量化入库边
  78. graph.add_edge("vectorize_store", "complete")
  79. graph.add_edge("complete", END)
  80. # 编译工作流
  81. return graph.compile()
  82. def _upload_document_node(self, state: PDFParsingState) -> Dict[str, Any]:
  83. """RAGFLOW上传文档节点"""
  84. print(f"开始上传文档到数据集 {state.dataset_id}: {state.pdf_path}")
  85. try:
  86. # 上传文档
  87. document_info_list = state.ragflow_service.upload_document(
  88. dataset_id=state.dataset_id,
  89. file_path=state.pdf_path
  90. )
  91. # 检查响应
  92. if document_info_list and len(document_info_list) > 0:
  93. document_id = document_info_list[0]["id"]
  94. print(f"文档上传成功,文档ID: {document_id}")
  95. return {
  96. "document_id": document_id
  97. }
  98. else:
  99. print("文档上传失败: 未返回有效的文档信息")
  100. raise Exception("文档上传失败: 未返回有效的文档信息")
  101. except Exception as e:
  102. print(f"上传文档时出错: {str(e)}")
  103. raise
  104. def _parse_document_node(self, state: PDFParsingState) -> Dict[str, Any]:
  105. """RAGFLOW文档解析节点"""
  106. print(f"开始解析文档 {state.dataset_id}: {state.document_id}")
  107. try:
  108. # 解析文档
  109. parse_success = state.ragflow_service.parse_document(
  110. dataset_id=state.dataset_id,
  111. document_ids=[state.document_id]
  112. )
  113. # 检查响应parse_success为bool
  114. if parse_success:
  115. print(f"文档解析成功,文档ID: {state.document_id}")
  116. # 返回空列表,因为parsed_results字段期望是列表类型
  117. return {
  118. "parsed_results": []
  119. }
  120. else:
  121. print("文档解析失败: 未返回有效的解析结果")
  122. raise Exception("文档解析失败: 未返回有效的解析结果")
  123. except Exception as e:
  124. print(f"解析文档时出错: {str(e)}")
  125. raise
  126. def _split_pdf_node(self, state: PDFParsingState) -> Dict[str, Any]:
  127. """拆分PDF节点"""
  128. print(f"开始拆分PDF: {state.pdf_path}")
  129. # 拆分PDF
  130. splitter = PDFSplitter()
  131. split_pages = splitter.split_pdf(state.pdf_path)
  132. print(f"PDF拆分完成,共 {len(split_pages)} 页")
  133. return {
  134. "split_pages": split_pages,
  135. "parsed_results": [],
  136. "processed_pages": 0,
  137. "is_complete": False
  138. }
  139. def _parse_single_page(self, page: Dict[str, Any], model_name: str) -> Dict[str, Any]:
  140. """解析单个页面(用于并行处理)"""
  141. prompt = """
  142. 角色定位:你是一位顶尖的儿童绘本分析师与视觉工程专家,擅长将插画视觉信息转化为高精度的结构化元数据。
  143. 任务描述:请深度解析提供的绘本页面,不仅提取基本要素,还要进行“像素级”的特征拆解。重点关注角色的微表情、服饰纹理、环境光效、构图视角及整体艺术风格。
  144. 提取维度:
  145. 艺术风格 (Style):包括笔触(如水彩、蜡笔)、线条粗细、整体色调偏好。
  146. 角色特征 (Character):五官细节、肢体动作的动态感、衣物材质、标志性配饰。
  147. 空间构图 (Composition):透视关系(仰拍/俯拍)、视觉焦点、前景/中景/背景的层次。
  148. 物品与环境 (Object & Environment):物体的精确形状、材质光泽、环境中的自然元素(风吹草动的方向等)。
  149. 内容标签 (content_tags):请从以下三个维度进行打标:
  150. 主题维度(如:自然探索、家庭学校、科学科普、传统文化)
  151. 具体对象(如:昆虫、交通工具、五官、家具)
  152. 情感氛围(如:惊喜、友爱、好奇、安静)
  153. 能力标签 (ability_tags):请严格参照以下教育能力模型,根据图中元素体现的教育价值进行选择:
  154. [语言表达、逻辑思维、数理逻辑、空间想象、艺术创造、身体协调、自我认知、社会交往、自然观察、情绪管理]。
  155. 输出约束:
  156. 保持描述积极向上,符合0-12岁儿童阅读的安全标准。
  157. 描述精度:单条描述需包含具体视觉属性(颜色、形状、质感),字数控制在50字以内。
  158. 格式要求:严谨按照指定的JSON结构输出。
  159. json格式:
  160. {
  161. "page_meta": {
  162. "page_number": 1,
  163. "content_text": "页面原文本内容",
  164. "overall_style": {
  165. "art_medium": "艺术媒介(如:手绘水彩、矢量平涂、3D渲染)",
  166. "color_palette": ["主色调1", "主色调2"],
  167. "lighting": "光影描述(如:柔和侧光、清晨自然光)",
  168. "composition": "构图(如:三分法、对角线构图、大远景)"
  169. }
  170. },
  171. "elements": [
  172. {
  173. "element_name": "元素名称(如:小兔子)",
  174. "character_name": "角色名称(如果有,没有的话,角色名称为空字符串)",
  175. "category": "分类(角色/场景/道具)",
  176. "spatial_layer": "所在层级(前景/中景/背景)",
  177. "visual_attributes": {
  178. "appearance": "外貌细节描述(发型、五官、材质感)",
  179. "action_emotion": "行为动作与情感流露",
  180. "color_detail": "像素级颜色描述(如:淡茱萸粉、薄荷绿)",
  181. "ability_tag": "如果为角色,其表现出的正面能力/特质"
  182. },
  183. "content_tags": {
  184. "theme": ["自然", "社交", "生活常识"],
  185. "object": ["动物", "服装", "植物"],
  186. "emotion": ["快乐", "勇敢"]
  187. },
  188. "ability_tags": ["语言表达", "逻辑思维", "自我认知"],
  189. "description": "综合性简洁描述(50字内)"
  190. }
  191. ]
  192. }
  193. """
  194. page_number = page["page_number"]
  195. image = page["image"]
  196. print(f"开始解析第 {page_number} 页")
  197. # 使用QWEN VL模型解析图像
  198. parser = QWenVLParser(model_name)
  199. result = parser.parse_image(image, page_number, prompt)
  200. print(f"第 {page_number} 页解析完成")
  201. return result
  202. def _parse_image_node(self, state: PDFParsingState) -> Dict[str, Any]:
  203. """解析图像节点,使用并行处理"""
  204. if not state.split_pages:
  205. return state.dict()
  206. print(f"开始并行解析 {len(state.split_pages)} 页")
  207. parsed_results = []
  208. # 使用ThreadPoolExecutor实现并行处理
  209. with ThreadPoolExecutor(max_workers=5, thread_name_prefix="parse_page_") as executor:
  210. # 提交所有页面解析任务
  211. future_to_page = {
  212. executor.submit(self._parse_single_page, page, self.model_name): page
  213. for page in state.split_pages
  214. }
  215. # 收集解析结果
  216. for future in concurrent.futures.as_completed(future_to_page):
  217. try:
  218. result = future.result()
  219. parsed_results.append(result)
  220. except Exception as e:
  221. page = future_to_page[future]
  222. print(f"解析第 {page['page_number']} 页时出错: {str(e)}")
  223. # 按页码排序结果
  224. parsed_results.sort(key=lambda x: x["page_number"])
  225. print(f"所有页面解析完成,共解析 {len(parsed_results)} 页")
  226. return {
  227. "split_pages": state.split_pages, # 保留split_pages,以便后续访问图片
  228. "parsed_results": parsed_results,
  229. "processed_pages": len(parsed_results),
  230. "is_complete": True
  231. }
  232. def _should_continue_parsing(self, state: PDFParsingState) -> str:
  233. """判断是否继续解析"""
  234. # 由于我们使用了并行处理,parse_image_node会一次性处理所有页面
  235. # 所以这里总是返回"complete"
  236. return "complete"
  237. def _vectorize_store_node(self, state: PDFParsingState) -> Dict[str, Any]:
  238. """向量化入库节点"""
  239. print(f"开始向量化入库,共 {len(state.parsed_results)} 页")
  240. # 创建索引(如果不存在)
  241. index_name = f"{VectorDBConfig.get_infinity_table_name()}"
  242. state.vector_db.create_index(index_name)
  243. # 准备要入库的文档列表
  244. documents_to_store = []
  245. # 获取文件名和总页数
  246. file_name = os.path.basename(state.pdf_path)
  247. file_page_count = len(state.split_pages)
  248. # 遍历所有解析结果,生成向量化文档
  249. for i, parsed_result in enumerate(state.parsed_results):
  250. try:
  251. page_number = parsed_result.get("page_number")
  252. text = parsed_result.get("content", "")
  253. image = state.split_pages[i].get("image")
  254. image_path = state.split_pages[i].get("image_path")
  255. # 获取多模态嵌入向量
  256. print(f"正在生成第 {page_number} 页的多模态嵌入...")
  257. embedding = state.embedding_model.get_multimodal_embedding(text, image)
  258. # 生成1024维稠密向量(如果嵌入向量维度不是1024,这里需要处理)
  259. dense_vector_1024 = embedding[:1024] # 取前1024维
  260. # 创建文档
  261. document = {
  262. "id": f"{state.document_id}_{page_number}",
  263. "file_name": file_name,
  264. "file_page_count": file_page_count,
  265. "page_number": page_number,
  266. "content": text,
  267. "image_path": image_path,
  268. "dense_vector_1024": dense_vector_1024,
  269. "dataset_id": state.dataset_id,
  270. "document_id": state.document_id
  271. }
  272. documents_to_store.append(document)
  273. print(f"第 {page_number} 页向量化完成")
  274. except Exception as e:
  275. print(f"第 {i+1} 页向量化失败: {str(e)}")
  276. # 批量入库
  277. if documents_to_store:
  278. print(f"开始入库,共 {len(documents_to_store)} 个文档")
  279. infinity_client = get_client()
  280. result = infinity_client.insert(index_name, documents_to_store)
  281. print(f"入库结果: {result}")
  282. return {
  283. "vectorized_results": documents_to_store,
  284. "vectorized_pages": len(documents_to_store),
  285. "is_complete": True
  286. }
  287. def _complete_node(self, state: PDFParsingState) -> Dict[str, Any]:
  288. """完成节点"""
  289. print(f"PDF解析工作流完成,共解析 {len(state.parsed_results)} 页,向量化 {state.vectorized_pages} 页")
  290. # 判断ragflow是否解析成功
  291. return {
  292. "is_complete": True
  293. }
  294. def run(self, pdf_path: str, dataset_id: str, ragflow_api_url: str, rag_flow_api_key: str) -> Dict[str, Any]:
  295. """
  296. 运行PDF解析工作流
  297. Args:
  298. pdf_path: PDF文件路径
  299. dataset_id: 数据集ID
  300. ragflow_api_url: RAGFLOW API URL
  301. rag_flow_api_key: RAGFLOW API密钥
  302. Returns:
  303. Dict: 包含最终状态的字典
  304. """
  305. initial_state = PDFParsingState(
  306. pdf_path=pdf_path,
  307. dataset_id=dataset_id,
  308. embedding_model=Embedding(model_name=ModelConfig.get_multimodal_embedding_model_name(), api_key=ModelConfig.get_dashscope_api_key()),
  309. ragflow_service=RAGFlowService(base_url=ragflow_api_url, api_key=rag_flow_api_key)
  310. )
  311. result = self.workflow.invoke(initial_state)
  312. # 检查结果类型,如果是字典直接返回,否则调用dict()方法
  313. if isinstance(result, dict):
  314. return result
  315. else:
  316. return result.dict()