数据库 - 新增迁移 0003:timeline_events.memory_source_id 外键 → memory_sources,便于按 ingest 源做时间线幂等 后端 - 记忆 - 新增 ingest 后 LLM 富化(摘要/事实/时间线),可配置开关与最大字符数 - 新增证据包组装:合并 chunk、摘要、事实、时间线、故事等检索结果;支持空 query 时是否仍带 rolling 等开关 - repo/retriever/service/router/schemas/summarizer/timeline/extractor 等扩展;文档 memory-retrieval.md 更新 后端 - 对话 WS - 增加 PING/PONG;分段 ASR 日志与空音频处理;转写失败与「无助手回复」错误提示更明确 - 助手多段回复持久化使用统一分隔符,与分段逻辑一致 后端 - Agent - reply_limits:按 [SPLIT] 与段落拆段,并保证非空 fallback,供 WS 与 TTS 多段下发 后端 - 回忆录任务 - transcript ingest 记录 source_id;任务成功结?
83 lines
2.7 KiB
Python
83 lines
2.7 KiB
Python
"""Hybrid retriever — metadata filter + FTS + vector retrieval + score fusion."""
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from sqlalchemy.ext.asyncio import AsyncSession
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from app.features.memory.evidence import retrieve_evidence_bundle_async
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from app.features.memory.repo import search_chunks_fts, search_chunks_vector
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from app.ports.embedding import EmbeddingProvider
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def _rrf_merge(
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fts_items: list[dict], vector_items: list[dict], k: int = 60
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) -> list[dict]:
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"""Reciprocal Rank Fusion. Merge FTS and vector results by id."""
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scores: dict[str, float] = {}
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for rank, item in enumerate(fts_items):
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cid = item["id"]
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scores[cid] = scores.get(cid, 0) + 1 / (k + rank + 1)
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for rank, item in enumerate(vector_items):
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cid = item["id"]
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scores[cid] = scores.get(cid, 0) + 1 / (k + rank + 1)
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all_items = {x["id"]: x for x in fts_items + vector_items}
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sorted_ids = sorted(scores.keys(), key=lambda i: scores[i], reverse=True)
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return [all_items[i] for i in sorted_ids]
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class HybridRetriever:
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"""Combine FTS, vector, and metadata filter into evidence bundle."""
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def __init__(
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self,
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db: AsyncSession,
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*,
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embedding_provider: EmbeddingProvider | None = None,
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):
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self._db = db
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self._embedding = embedding_provider
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async def retrieve(self, user_id: str, query: str, *, top_k: int = 10) -> dict:
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"""
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Return evidence bundle:
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{relevant_chunks, relevant_summaries, relevant_facts, timeline_hints, relevant_stories}
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"""
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if not query.strip():
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return await retrieve_evidence_bundle_async(
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self._db,
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user_id,
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query,
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top_k=top_k,
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merged_chunk_dicts=[],
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)
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q = query.strip()
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fts_chunks = await search_chunks_fts(
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self._db, user_id=user_id, query=query, limit=top_k * 2
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)
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vector_chunks: list[dict] = []
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if self._embedding and q:
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q_emb = await self._embedding.embed_text(q)
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if q_emb:
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vector_chunks = await search_chunks_vector(
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self._db, user_id=user_id, query_embedding=q_emb, limit=top_k * 2
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)
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merged = _rrf_merge(fts_chunks, vector_chunks)[:top_k]
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merged_chunk_dicts = [
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{
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"id": c["id"],
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"content": c["content"],
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"chunk_index": c.get("chunk_index", 0),
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}
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for c in merged
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]
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return await retrieve_evidence_bundle_async(
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self._db,
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user_id,
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query,
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top_k=top_k,
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merged_chunk_dicts=merged_chunk_dicts,
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)
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