140 lines
5.0 KiB
Python
140 lines
5.0 KiB
Python
# backend/workflow.py
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import dashscope
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from http import HTTPStatus
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from firecrawl import FirecrawlApp
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from langchain_text_splitters import RecursiveCharacterTextSplitter
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from .config import settings
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from .service import crawler_sql_service
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# 初始化配置
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dashscope.api_key = settings.DASHSCOPE_API_KEY
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class AutomatedCrawler:
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def __init__(self):
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self.firecrawl = FirecrawlApp(api_key=settings.FIRECRAWL_API_KEY)
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# 文本切分器:每块500字符,重叠100字符,保证语义连贯
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self.splitter = RecursiveCharacterTextSplitter(
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chunk_size=500,
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chunk_overlap=100,
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separators=["\n\n", "\n", "。", "!", "?", " ", ""]
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)
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def _get_embedding(self, text: str):
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"""调用 Dashscope 生成向量"""
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try:
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resp = dashscope.TextEmbedding.call(
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model=dashscope.TextEmbedding.Models.text_embedding_v4,
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input=text,
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dimension=1536
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)
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if resp.status_code == HTTPStatus.OK:
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# 阿里 text-embedding-v3 默认维度是 1024,v2 是 1536
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# 如果你的数据库是 1536 维,请使用 text_embedding_v2 或调整参数
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return resp.output['embeddings'][0]['embedding']
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else:
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print(f"Embedding API Error: {resp}")
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return None
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except Exception as e:
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print(f"Embedding Exception: {e}")
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return None
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def map_and_ingest(self, start_url: str):
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"""
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V2 步骤1: 地图式扫描并入库
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"""
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print(f"[WorkFlow] Start mapping: {start_url}")
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# 1. 在数据库注册任务
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task_info = crawler_sql_service.register_task(start_url)
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task_id = task_info['task_id']
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try:
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# 2. 调用 Firecrawl Map
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map_result = self.firecrawl.map(start_url)
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urls=[]
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for link in map_result.links:
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urls.append(link.url)
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print(f"[WorkFlow] Found {len(urls)} links")
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# 3. 批量入库 (状态为 pending)
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if urls:
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res = crawler_sql_service.add_urls(task_id, urls)
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return {
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"task_id": task_id,
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"map_result": res
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}
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except Exception as e:
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print(f"[WorkFlow] Map Error: {e}")
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raise e
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def process_task_queue(self, task_id: int, limit: int = 10):
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"""
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V2 步骤2: 消费队列 -> 抓取 -> 切片 -> 向量化 -> 存储
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"""
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# 1. 获取待处理 URL
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pending = crawler_sql_service.get_pending_urls(task_id, limit)
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urls = pending['urls']
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if not urls:
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return {"msg": "No pending urls", "count": 0}
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processed_count = 0
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for url in urls:
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try:
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print(f"[WorkFlow] Processing: {url}")
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# 2. 单页抓取 (Markdown)
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scrape_res = self.firecrawl.scrape(url, formats=['markdown'], only_main_content=True)
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content = scrape_res.markdown
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metadata = scrape_res.metadata_dict
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title = metadata.get('title', url)
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if not content:
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print(f"[WorkFlow] Skip empty content: {url}")
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continue
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# 3. 切片
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chunks = self.splitter.split_text(content)
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results_to_save = []
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# 4. 逐个切片向量化 (可以优化为批量调用 embedding API)
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for idx, chunk_text in enumerate(chunks):
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vector = self._get_embedding(chunk_text)
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if vector:
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results_to_save.append({
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"source_url": url,
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"chunk_index": idx,
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"title": title,
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"content": chunk_text,
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"embedding": vector
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})
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# 5. 保存结果
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if results_to_save:
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crawler_sql_service.save_results(task_id, results_to_save)
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processed_count += 1
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except Exception as e:
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print(f"[WorkFlow] Error processing {url}: {e}")
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# 实际生产中这里应该把 URL 状态改为 'failed'
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return {"processed_urls": processed_count, "total_chunks": "dynamic"}
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def search_with_embedding(self, query_text: str, task_id: int = None, limit: int = 5):
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"""
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V2 搜索: 输入文本 -> 自动转向量 -> 搜索数据库
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"""
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vector = self._get_embedding(query_text)
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if not vector:
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raise Exception("Failed to generate embedding for query")
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return crawler_sql_service.search_knowledge(vector, task_id, limit)
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# 单例模式
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workflow = AutomatedCrawler() |