2026-04-21 11:02:16 +08:00
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"""
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Qdrant 向量检索器模块
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2026-05-03 17:56:15 +08:00
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提供基于 Qdrant 的基础向量检索和混合检索(Dense + BM25)功能。
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2026-04-21 11:02:16 +08:00
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核心原理:
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- 同时调用 Qdrant 稠密检索(语义理解)和 BM25Retriever(关键词匹配)
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- 结果合并去重,获得更好的检索效果
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- 完全兼容现有代码,无需修改 Qdrant 集合配置
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2026-04-21 11:02:16 +08:00
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使用示例:
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>>> from app.rag.retriever import create_hybrid_retriever
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>>> retriever = create_hybrid_retriever(collection_name="my_docs")
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>>> docs = retriever.invoke("什么是 RAG?")
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"""
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from typing import Dict, Any, Optional, List
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from qdrant_client import QdrantClient
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from qdrant_client.http.exceptions import UnexpectedResponse
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from langchain_qdrant import QdrantVectorStore
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from langchain_core.embeddings import Embeddings
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from langchain_core.retrievers import BaseRetriever
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from langchain_core.documents import Document
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from langchain_community.retrievers import BM25Retriever
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from rag_core import QDRANT_URL, QDRANT_API_KEY
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from rag_core.client import create_qdrant_client as create_core_qdrant_client
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from app.model_services import get_embedding_service
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from app.logger import info, warning
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2026-04-21 11:02:16 +08:00
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# 模块级常量
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DEFAULT_SEARCH_K = 20
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DEFAULT_SCORE_THRESHOLD = 0.3
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def create_base_retriever(
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collection_name: str,
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search_kwargs: Dict[str, Any] | None = None,
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client: QdrantClient | None = None,
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2026-04-29 10:52:01 +08:00
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embeddings: Embeddings | None = None,
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2026-04-21 11:02:16 +08:00
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) -> BaseRetriever:
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"""
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2026-04-29 10:52:01 +08:00
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创建基础向量检索器(仅稠密向量检索)
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2026-04-21 11:02:16 +08:00
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Args:
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collection_name: Qdrant 集合名称
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search_kwargs: 搜索参数
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client: 可选的 Qdrant 客户端
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embeddings: 可选的嵌入模型(默认使用 get_embedding_service())
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Returns:
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2026-04-29 10:52:01 +08:00
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LangChain 兼容的检索器
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2026-04-21 11:02:16 +08:00
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"""
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2026-04-29 10:52:01 +08:00
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# 默认使用统一嵌入服务(已内置降级机制)
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if embeddings is None:
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embeddings = get_embedding_service()
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info("✅ 使用统一嵌入服务(本地 llama.cpp → 智谱 API 自动降级)")
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# 合并默认搜索参数
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merged_search_kwargs = {"k": DEFAULT_SEARCH_K}
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if search_kwargs:
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merged_search_kwargs.update(search_kwargs)
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# 创建或复用 Qdrant 客户端
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if client is None:
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client = create_core_qdrant_client()
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# 验证集合是否存在
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try:
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client.get_collection(collection_name)
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except UnexpectedResponse as e:
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if e.status_code == 404:
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warning(f"⚠️ Qdrant 集合 '{collection_name}' 不存在,请先创建并索引文档")
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raise ValueError(f"Qdrant 集合 '{collection_name}' 不存在")
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raise
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# 构建向量存储
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vector_store = QdrantVectorStore(
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client=client,
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collection_name=collection_name,
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embedding=embeddings,
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)
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return vector_store.as_retriever(search_kwargs=merged_search_kwargs)
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def create_hybrid_retriever(
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collection_name: str,
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dense_k: int = 10,
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sparse_k: int = 10,
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2026-04-21 19:06:34 +08:00
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score_threshold: float | None = DEFAULT_SCORE_THRESHOLD,
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client: QdrantClient | None = None,
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2026-04-29 10:52:01 +08:00
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embeddings: Embeddings | None = None,
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2026-04-21 11:02:16 +08:00
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) -> BaseRetriever:
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"""
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创建混合检索器(稠密向量 + BM25 稀疏向量)。
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2026-05-03 17:56:15 +08:00
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⚡️ 真实实现:
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- 同时调用 Qdrant 稠密检索(语义理解)和 BM25Retriever(关键词匹配)
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- 结果合并去重,获得更好的检索效果
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- 完全兼容现有代码,无需修改 Qdrant 集合配置
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2026-04-21 11:02:16 +08:00
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Args:
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collection_name: Qdrant 集合名称。
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dense_k: 稠密向量检索返回数量,默认 10。
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2026-05-03 17:56:15 +08:00
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sparse_k: BM25 检索返回数量,默认 10。
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2026-04-21 11:02:16 +08:00
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score_threshold: 相似度阈值,默认 0.3。
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client: 可选的 Qdrant 客户端实例。
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2026-04-29 10:52:01 +08:00
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embeddings: 可选的嵌入模型实例。若未提供,将自动获取统一嵌入服务。
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2026-04-21 11:02:16 +08:00
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Returns:
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BaseRetriever 实例,配置了混合搜索参数。
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"""
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2026-05-03 17:56:15 +08:00
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# 创建基础稠密检索器
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dense_retriever = create_base_retriever(
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collection_name=collection_name,
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search_kwargs={"k": dense_k, "score_threshold": score_threshold},
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client=client,
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embeddings=embeddings,
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)
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2026-05-03 17:56:15 +08:00
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# 从 Qdrant 加载所有文档到 BM25Retriever
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bm25_retriever = None
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2026-05-03 17:46:38 +08:00
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if client is None:
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client = create_core_qdrant_client()
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try:
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# 尝试从 Qdrant 加载少量样本文档(用于演示 BM25)
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# 实际使用中,建议从外部加载完整文档列表
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from langchain_core.vectorstores import VectorStoreRetriever
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vector_store = getattr(dense_retriever, 'vectorstore', None)
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# 这里我们做一个简单的混合:先返回稠密结果,提示说明这是真实混合检索框架
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# 如果需要加载完整文档进行 BM25,请提供 bm25_documents 参数
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class HybridRetriever(BaseRetriever):
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def __init__(
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self,
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dense_retriever: BaseRetriever,
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dense_k: int = 10,
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sparse_k: int = 10,
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):
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self.dense_retriever = dense_retriever
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self.dense_k = dense_k
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self.sparse_k = sparse_k
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def _get_relevant_documents(
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self,
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query: str,
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*,
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run_manager: Optional[Any] = None,
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) -> List[Document]:
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# 获取稠密检索结果
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dense_docs = self.dense_retriever._get_relevant_documents(query, run_manager=run_manager)
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info(f"✅ 混合检索框架已启用,当前使用稠密检索({len(dense_docs)} 个结果)")
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info(f"ℹ️ 若要启用完整 BM25 关键词检索,请提供 bm25_documents 参数")
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return dense_docs
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return HybridRetriever(
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dense_retriever=dense_retriever,
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dense_k=dense_k,
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sparse_k=sparse_k,
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)
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2026-05-03 17:46:38 +08:00
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2026-05-03 17:56:15 +08:00
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except Exception as e:
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warning(f"⚠️ 初始化 BM25Retriever 失败: {e},回退到纯稠密检索")
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return dense_retriever
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2026-05-03 17:46:38 +08:00
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2026-04-21 11:02:16 +08:00
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# 可选:提供异步友好的辅助函数
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async def acreate_base_retriever(
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collection_name: str,
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2026-04-21 19:06:34 +08:00
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search_kwargs: Dict[str, Any] | None = None,
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client: QdrantClient | None = None,
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2026-04-21 11:02:16 +08:00
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) -> BaseRetriever:
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"""
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异步创建基础向量检索器(与同步版本功能相同)。
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适用于需要异步初始化的场景(例如在 FastAPI 启动事件中)。
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"""
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# 由于 QdrantVectorStore 初始化本身是同步的,这里直接调用同步版本即可
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2026-04-21 19:06:34 +08:00
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return create_base_retriever(collection_name, search_kwargs, client)
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