Skip to main content
Open on GitHub

Pinecone

Pinecone is a vector database with broad functionality.

安装与设置

安装 Python SDK:

pip install langchain-pinecone

向量存储

Pinecone 索引周围有一个封装器,允许你将其用作向量存储,无论是用于语义搜索还是示例选择。

from langchain_pinecone import PineconeVectorStore
API 参考:PineconeVectorStore

有关Pinecone向量存储的更详细演练,请参阅此笔记本

稀疏向量存储

LangChain的PineconeSparseVectorStore使用Pinecone的稀疏中文模型实现稀疏检索。它将文本映射到稀疏向量,并支持添加文档和相似性搜索。

from langchain_pinecone import PineconeSparseVectorStore

# Initialize sparse vector store
vector_store = PineconeSparseVectorStore(
index=my_index,
embedding_model="pinecone-sparse-english-v0"
)
# Add documents
vector_store.add_documents(documents)
# Query
results = vector_store.similarity_search("your query", k=3)

有关更详细的演练,请参阅Pinecone稀疏向量存储笔记本

稀疏嵌入

LangChain的PineconeSparseEmbeddings使用Pinecone的pinecone-sparse-english-v0模型提供稀疏嵌入生成。

from langchain_pinecone.embeddings import PineconeSparseEmbeddings

# Initialize sparse embeddings
sparse_embeddings = PineconeSparseEmbeddings(
model="pinecone-sparse-english-v0"
)
# Embed a single query (returns SparseValues)
query_embedding = sparse_embeddings.embed_query("sample text")

# Embed multiple documents (returns list of SparseValues)
docs = ["Document 1 content", "Document 2 content"]
doc_embeddings = sparse_embeddings.embed_documents(docs)

有关更详细的用法,请参阅Pinecone稀疏嵌入笔记本

检索器

pip install pinecone pinecone-text
from langchain_community.retrievers import (
PineconeHybridSearchRetriever,
)

有关更详细的信息,请参阅此笔记本

自查询检索器

Pinecone 向量存储可以作为自查询的检索器使用。

有关更详细的信息,请参阅此笔记本