111 lines
3.9 KiB
Python
111 lines
3.9 KiB
Python
"""
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知识库服务 — 写入向量 + 语义检索
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使用 pgvector 原生 SQL 向量检索(<=> 余弦距离算子),不在 Python 侧计算
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"""
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from typing import Optional
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from sqlalchemy import text
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from sqlmodel import Session, select
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from pgvector.sqlalchemy import Vector
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from app.models.knowledge import KnowledgeItem, KnowledgeEmbedding
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from app.services.embedding_service import EmbeddingService
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from app.db.session import engine
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class KnowledgeService:
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"""知识库 CRUD + 语义检索"""
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def __init__(self):
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self.embedder = EmbeddingService()
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def store_md_file(
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self,
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title: str,
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content_md: str,
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source_file_name: Optional[str] = None,
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source_type: str = "manual",
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author: Optional[str] = None,
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) -> KnowledgeItem:
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"""
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读取一篇 md 内容,调用 embo-01 拿到向量,写入 knowledge_items + knowledge_embeddings
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"""
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# 调用 embedding(type="db" 表示存入知识库)
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embedding_list = self.embedder.embed_single(content_md, embed_type="db")
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with Session(engine) as session:
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# 写入 knowledge_items
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item = KnowledgeItem(
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title=title,
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content_md=content_md,
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source_type=source_type,
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source_file_name=source_file_name,
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author=author,
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)
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session.add(item)
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session.flush() # 拿到 id
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# 写入 knowledge_embeddings(单 chunk,chunk_index=0)
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# 直接传 list,pgvector.sqlalchemy.Vector 会自动处理转换
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emb = KnowledgeEmbedding(
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knowledge_id=item.id,
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chunk_index=0,
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chunk_text=content_md,
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embedding=embedding_list,
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)
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session.add(emb)
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session.commit()
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session.refresh(item)
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return item
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def search_similar(self, query_text: str, top_k: int = 5) -> list[dict]:
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"""
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语义检索:查询句转为向量,用 SQL 余弦距离(<=>)在数据库层检索
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返回 top_k 条相似笔记,含相似度分数
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"""
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# 查询向量(type="query")
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query_vector = self.embedder.embed_single(query_text, embed_type="query")
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# 将向量列表转为 pgvector SQL 字符串格式
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vec_str = "[" + ",".join(str(v) for v in query_vector) + "]"
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with Session(engine) as session:
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# pgvector 原生 SQL:<=> 是余弦距离,1 - 距离 = 相似度
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# 用字符串插注向量,避免 psycopg2 参数化问题
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sql = f"""
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SELECT
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ki.id,
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ki.title,
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ki.source_type,
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1 - (ke.embedding <=> '{vec_str}'::vector) AS similarity
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FROM knowledge_embeddings ke
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JOIN knowledge_items ki ON ke.knowledge_id = ki.id
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WHERE ke.chunk_index = 0
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ORDER BY ke.embedding <=> '{vec_str}'::vector
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LIMIT {top_k}
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"""
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stmt = text(sql)
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rows = session.execute(stmt).all()
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results = []
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for row in rows:
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results.append({
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"id": row.id,
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"title": row.title,
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"source_type": row.source_type,
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"similarity": round(row.similarity, 4),
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})
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return results
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def get_item_count(self) -> int:
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"""返回 knowledge_items 表行数"""
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with Session(engine) as session:
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count = session.exec(select(KnowledgeItem)).all()
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return len(count)
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def get_embedding_count(self) -> int:
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"""返回 knowledge_embeddings 表行数"""
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with Session(engine) as session:
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count = session.exec(select(KnowledgeEmbedding)).all()
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return len(count) |