from ..config import LLM_API_KEY from ..config import VLLM_BASE_URL import time """ Mem0 记忆层客户端封装模块 负责 Mem0 的初始化、检索和存储 """ import asyncio from typing import Optional, List, Dict from mem0 import AsyncMemory from ..config import ( QDRANT_URL,QDRANT_COLLECTION_NAME,QDRANT_API_KEY, VLLM_BASE_URL, LLM_API_KEY, LLAMACPP_EMBEDDING_URL, LLAMACPP_API_KEY ) from ..logger import info, warning, error class Mem0Client: """Mem0 异步客户端封装类""" def __init__(self, llm_instance): """ 初始化 Mem0 客户端 Args: llm_instance: LangChain LLM 实例(用于事实提取) """ self.llm = llm_instance self.mem0: Optional[AsyncMemory] = None self._initialized = False async def initialize(self): """异步初始化 Mem0 客户端,并进行实际连接测试""" if self._initialized: return try: # Mem0 配置 config = { "vector_store": { "provider": "qdrant", "config": { "url": QDRANT_URL, # 直接使用完整 URL "api_key": QDRANT_API_KEY, "collection_name": QDRANT_COLLECTION_NAME, "embedding_model_dims": 1024, } }, "llm": { "provider": "openai", "config": { "model": "LLM_MODEL", "api_key": LLM_API_KEY, "openai_base_url": VLLM_BASE_URL, "temperature": 0.1, "max_tokens": 2000, } }, "embedder": { "provider": "openai", "config": { "model": "Qwen3-Embedding-0.6B-Q8_0", "api_key": LLAMACPP_API_KEY, "openai_base_url": LLAMACPP_EMBEDDING_URL, }, }, "version": "v1.1" } self.mem0 = AsyncMemory.from_config(config) info("✅ Mem0 配置加载成功,开始连接测试...") # 实际连接测试:调用一次 search 确保 Qdrant 和 Embedding 都可达 await asyncio.wait_for( self.mem0.search("ping", user_id="test", limit=1), timeout=60.0 ) info("✅ Mem0 实际连接测试成功,初始化完成") self._initialized = True except asyncio.TimeoutError: error("❌ Mem0 连接测试超时 (10s),请检查 Qdrant 或 Embedding 服务响应") self.mem0 = None self._initialized = False except Exception as e: error(f"❌ Mem0 初始化或连接测试失败: {e}") import traceback error(f"详细错误信息:\n{traceback.format_exc()}") self.mem0 = None self._initialized = False async def search_memories(self, query: str, user_id: str, limit: int = 5) -> List[str]: """ 检索相关记忆 Args: query: 查询文本 user_id: 用户 ID limit: 返回结果数量限制 Returns: List[str]: 记忆事实列表 """ if not self.mem0: warning("⚠️ Mem0 未初始化,跳过记忆检索") return [] try: memories = await asyncio.wait_for( self.mem0.search(query, user_id=user_id, limit=limit), timeout=30.0 ) if memories and "results" in memories: facts = [m["memory"] for m in memories["results"] if m.get("memory")] if facts: info(f"🔍 [记忆检索] Mem0 返回 {len(facts)} 条记忆") return facts info("🔍 [记忆检索] 未找到相关记忆") return [] except asyncio.TimeoutError: warning("⚠️ Mem0 检索超时 (30s),跳过本次记忆检索") return [] except Exception as e: warning(f"⚠️ Mem0 检索失败: {e}") return [] async def add_memories(self, messages, user_id): if not self.mem0: return False try: start = time.time() info(f"📝 开始 Mem0 add,消息数: {len(messages)}") await asyncio.wait_for( self.mem0.add(messages, user_id=user_id, metadata={"type": "conversation"}), timeout=60.0 ) info(f"✅ Mem0 add 完成,耗时: {time.time() - start:.2f}s") return True except asyncio.TimeoutError: error(f"❌ Mem0 记忆添加超时 (60s),已等待 {time.time() - start:.2f}s") return False