You cannot select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
langchain/libs/community/langchain_community/vectorstores/__init__.py

120 lines
6.3 KiB
Python

"""**Vector store** stores embedded data and performs vector search.
One of the most common ways to store and search over unstructured data is to
embed it and store the resulting embedding vectors, and then query the store
and retrieve the data that are 'most similar' to the embedded query.
**Class hierarchy:**
.. code-block::
VectorStore --> <name> # Examples: Annoy, FAISS, Milvus
BaseRetriever --> VectorStoreRetriever --> <name>Retriever # Example: VespaRetriever
**Main helpers:**
.. code-block::
Embeddings, Document
""" # noqa: E501
import importlib
from typing import Any
_module_lookup = {
"AlibabaCloudOpenSearch": "langchain_community.vectorstores.alibabacloud_opensearch", # noqa: E501
"AlibabaCloudOpenSearchSettings": "langchain_community.vectorstores.alibabacloud_opensearch", # noqa: E501
"AnalyticDB": "langchain_community.vectorstores.analyticdb",
"Annoy": "langchain_community.vectorstores.annoy",
"ApacheDoris": "langchain_community.vectorstores.apache_doris",
"AstraDB": "langchain_community.vectorstores.astradb",
"AtlasDB": "langchain_community.vectorstores.atlas",
"AwaDB": "langchain_community.vectorstores.awadb",
"AzureCosmosDBVectorSearch": "langchain_community.vectorstores.azure_cosmos_db",
"AzureSearch": "langchain_community.vectorstores.azuresearch",
"BaiduVectorDB": "langchain_community.vectorstores.baiduvectordb",
"BESVectorStore": "langchain_community.vectorstores.baiducloud_vector_search",
"Bagel": "langchain_community.vectorstores.bageldb",
"BigQueryVectorSearch": "langchain_community.vectorstores.bigquery_vector_search",
"Cassandra": "langchain_community.vectorstores.cassandra",
"Chroma": "langchain_community.vectorstores.chroma",
"Clarifai": "langchain_community.vectorstores.clarifai",
"Clickhouse": "langchain_community.vectorstores.clickhouse",
"ClickhouseSettings": "langchain_community.vectorstores.clickhouse",
"DashVector": "langchain_community.vectorstores.dashvector",
"DatabricksVectorSearch": "langchain_community.vectorstores.databricks_vector_search", # noqa: E501
"DeepLake": "langchain_community.vectorstores.deeplake",
"Dingo": "langchain_community.vectorstores.dingo",
"DistanceStrategy": "langchain_community.vectorstores.kinetica",
"DocArrayHnswSearch": "langchain_community.vectorstores.docarray",
"DocArrayInMemorySearch": "langchain_community.vectorstores.docarray",
"DocumentDBVectorSearch": "langchain_community.vectorstores.documentdb",
"ElasticKnnSearch": "langchain_community.vectorstores.elastic_vector_search",
"ElasticVectorSearch": "langchain_community.vectorstores.elastic_vector_search",
"ElasticsearchStore": "langchain_community.vectorstores.elasticsearch",
"Epsilla": "langchain_community.vectorstores.epsilla",
"FAISS": "langchain_community.vectorstores.faiss",
"HanaDB": "langchain_community.vectorstores.hanavector",
"Hologres": "langchain_community.vectorstores.hologres",
"InfinispanVS": "langchain_community.vectorstores.infinispanvs",
"KDBAI": "langchain_community.vectorstores.kdbai",
"Kinetica": "langchain_community.vectorstores.kinetica",
"KineticaSettings": "langchain_community.vectorstores.kinetica",
"LLMRails": "langchain_community.vectorstores.llm_rails",
"LanceDB": "langchain_community.vectorstores.lancedb",
"Lantern": "langchain_community.vectorstores.lantern",
"Marqo": "langchain_community.vectorstores.marqo",
"MatchingEngine": "langchain_community.vectorstores.matching_engine",
"Meilisearch": "langchain_community.vectorstores.meilisearch",
"Milvus": "langchain_community.vectorstores.milvus",
"MomentoVectorIndex": "langchain_community.vectorstores.momento_vector_index",
"MongoDBAtlasVectorSearch": "langchain_community.vectorstores.mongodb_atlas",
"MyScale": "langchain_community.vectorstores.myscale",
"MyScaleSettings": "langchain_community.vectorstores.myscale",
"Neo4jVector": "langchain_community.vectorstores.neo4j_vector",
"NeuralDBVectorStore": "langchain_community.vectorstores.thirdai_neuraldb",
"OpenSearchVectorSearch": "langchain_community.vectorstores.opensearch_vector_search", # noqa: E501
"PGEmbedding": "langchain_community.vectorstores.pgembedding",
"PGVector": "langchain_community.vectorstores.pgvector",
"Pinecone": "langchain_community.vectorstores.pinecone",
"Qdrant": "langchain_community.vectorstores.qdrant",
"Redis": "langchain_community.vectorstores.redis",
"Rockset": "langchain_community.vectorstores.rocksetdb",
"SKLearnVectorStore": "langchain_community.vectorstores.sklearn",
"SQLiteVSS": "langchain_community.vectorstores.sqlitevss",
"ScaNN": "langchain_community.vectorstores.scann",
"SemaDB": "langchain_community.vectorstores.semadb",
"SingleStoreDB": "langchain_community.vectorstores.singlestoredb",
"StarRocks": "langchain_community.vectorstores.starrocks",
"SupabaseVectorStore": "langchain_community.vectorstores.supabase",
"SurrealDBStore": "langchain_community.vectorstores.surrealdb",
"Tair": "langchain_community.vectorstores.tair",
"TencentVectorDB": "langchain_community.vectorstores.tencentvectordb",
"TiDBVectorStore": "langchain_community.vectorstores.tidb_vector",
"Tigris": "langchain_community.vectorstores.tigris",
"TileDB": "langchain_community.vectorstores.tiledb",
"TimescaleVector": "langchain_community.vectorstores.timescalevector",
"Typesense": "langchain_community.vectorstores.typesense",
"USearch": "langchain_community.vectorstores.usearch",
"Vald": "langchain_community.vectorstores.vald",
"Vearch": "langchain_community.vectorstores.vearch",
"Vectara": "langchain_community.vectorstores.vectara",
"VectorStore": "langchain_core.vectorstores",
"VespaStore": "langchain_community.vectorstores.vespa",
"Weaviate": "langchain_community.vectorstores.weaviate",
"Yellowbrick": "langchain_community.vectorstores.yellowbrick",
"ZepVectorStore": "langchain_community.vectorstores.zep",
"Zilliz": "langchain_community.vectorstores.zilliz",
}
def __getattr__(name: str) -> Any:
if name in _module_lookup:
module = importlib.import_module(_module_lookup[name])
return getattr(module, name)
raise AttributeError(f"module {__name__} has no attribute {name}")
__all__ = list(_module_lookup.keys())