mirror of https://github.com/hwchase17/langchain
Add a full PostgresSQL syntax database 'AnalyticDB' as vector store. (#3135)
Hi there!
I'm excited to open this PR to add support for using a fully Postgres
syntax compatible database 'AnalyticDB' as a vector.
As AnalyticDB has been proved can be used with AutoGPT,
ChatGPT-Retrieve-Plugin, and LLama-Index, I think it is also good for
you.
AnalyticDB is a distributed Alibaba Cloud-Native vector database. It
works better when data comes to large scale. The PR includes:
- [x] A new memory: AnalyticDBVector
- [x] A suite of integration tests verifies the AnalyticDB integration
I have read your [contributing
guidelines](72b7d76d79/.github/CONTRIBUTING.md
).
And I have passed the tests below
- [x] make format
- [x] make lint
- [x] make coverage
- [x] make test
pull/3352/head
parent
cc6fe18152
commit
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# AnalyticDB
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This page covers how to use the AnalyticDB ecosystem within LangChain.
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### VectorStore
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There exists a wrapper around AnalyticDB, allowing you to use it as a vectorstore,
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whether for semantic search or example selection.
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To import this vectorstore:
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```python
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from langchain.vectorstores import AnalyticDB
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```
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For a more detailed walkthrough of the AnalyticDB wrapper, see [this notebook](../modules/indexes/vectorstores/examples/analyticdb.ipynb)
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"""VectorStore wrapper around a Postgres/PGVector database."""
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from __future__ import annotations
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import logging
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import uuid
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from typing import Any, Dict, Iterable, List, Optional, Tuple
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import sqlalchemy
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from sqlalchemy import REAL, Index
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from sqlalchemy.dialects.postgresql import ARRAY, JSON, UUID
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from sqlalchemy.orm import Mapped, Session, declarative_base, relationship
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from sqlalchemy.sql.expression import func
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from langchain.docstore.document import Document
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from langchain.embeddings.base import Embeddings
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from langchain.utils import get_from_dict_or_env
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from langchain.vectorstores.base import VectorStore
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Base = declarative_base() # type: Any
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ADA_TOKEN_COUNT = 1536
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_LANGCHAIN_DEFAULT_COLLECTION_NAME = "langchain"
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class BaseModel(Base):
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__abstract__ = True
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uuid = sqlalchemy.Column(UUID(as_uuid=True), primary_key=True, default=uuid.uuid4)
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class CollectionStore(BaseModel):
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__tablename__ = "langchain_pg_collection"
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name = sqlalchemy.Column(sqlalchemy.String)
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cmetadata = sqlalchemy.Column(JSON)
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embeddings = relationship(
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"EmbeddingStore",
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back_populates="collection",
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passive_deletes=True,
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)
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@classmethod
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def get_by_name(cls, session: Session, name: str) -> Optional["CollectionStore"]:
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return session.query(cls).filter(cls.name == name).first()
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@classmethod
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def get_or_create(
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cls,
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session: Session,
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name: str,
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cmetadata: Optional[dict] = None,
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) -> Tuple["CollectionStore", bool]:
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"""
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Get or create a collection.
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Returns [Collection, bool] where the bool is True if the collection was created.
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"""
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created = False
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collection = cls.get_by_name(session, name)
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if collection:
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return collection, created
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collection = cls(name=name, cmetadata=cmetadata)
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session.add(collection)
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session.commit()
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created = True
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return collection, created
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class EmbeddingStore(BaseModel):
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__tablename__ = "langchain_pg_embedding"
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collection_id: Mapped[UUID] = sqlalchemy.Column(
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UUID(as_uuid=True),
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sqlalchemy.ForeignKey(
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f"{CollectionStore.__tablename__}.uuid",
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ondelete="CASCADE",
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),
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)
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collection = relationship(CollectionStore, back_populates="embeddings")
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embedding = sqlalchemy.Column(ARRAY(REAL))
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document = sqlalchemy.Column(sqlalchemy.String, nullable=True)
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cmetadata = sqlalchemy.Column(JSON, nullable=True)
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# custom_id : any user defined id
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custom_id = sqlalchemy.Column(sqlalchemy.String, nullable=True)
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# The following line creates an index named 'langchain_pg_embedding_vector_idx'
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langchain_pg_embedding_vector_idx = Index(
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"langchain_pg_embedding_vector_idx",
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embedding,
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postgresql_using="ann",
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postgresql_with={
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"distancemeasure": "L2",
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"dim": 1536,
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"pq_segments": 64,
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"hnsw_m": 100,
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"pq_centers": 2048,
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},
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)
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class QueryResult:
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EmbeddingStore: EmbeddingStore
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distance: float
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class AnalyticDB(VectorStore):
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"""
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VectorStore implementation using AnalyticDB.
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AnalyticDB is a distributed full PostgresSQL syntax cloud-native database.
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- `connection_string` is a postgres connection string.
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- `embedding_function` any embedding function implementing
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`langchain.embeddings.base.Embeddings` interface.
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- `collection_name` is the name of the collection to use. (default: langchain)
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- NOTE: This is not the name of the table, but the name of the collection.
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The tables will be created when initializing the store (if not exists)
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So, make sure the user has the right permissions to create tables.
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- `pre_delete_collection` if True, will delete the collection if it exists.
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(default: False)
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- Useful for testing.
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"""
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def __init__(
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self,
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connection_string: str,
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embedding_function: Embeddings,
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collection_name: str = _LANGCHAIN_DEFAULT_COLLECTION_NAME,
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collection_metadata: Optional[dict] = None,
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pre_delete_collection: bool = False,
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logger: Optional[logging.Logger] = None,
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) -> None:
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self.connection_string = connection_string
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self.embedding_function = embedding_function
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self.collection_name = collection_name
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self.collection_metadata = collection_metadata
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self.pre_delete_collection = pre_delete_collection
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self.logger = logger or logging.getLogger(__name__)
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self.__post_init__()
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def __post_init__(
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self,
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) -> None:
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"""
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Initialize the store.
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"""
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self._conn = self.connect()
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self.create_tables_if_not_exists()
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self.create_collection()
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def connect(self) -> sqlalchemy.engine.Connection:
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engine = sqlalchemy.create_engine(self.connection_string)
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conn = engine.connect()
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return conn
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def create_tables_if_not_exists(self) -> None:
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Base.metadata.create_all(self._conn)
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def drop_tables(self) -> None:
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Base.metadata.drop_all(self._conn)
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def create_collection(self) -> None:
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if self.pre_delete_collection:
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self.delete_collection()
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with Session(self._conn) as session:
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CollectionStore.get_or_create(
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session, self.collection_name, cmetadata=self.collection_metadata
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)
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def delete_collection(self) -> None:
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self.logger.debug("Trying to delete collection")
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with Session(self._conn) as session:
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collection = self.get_collection(session)
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if not collection:
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self.logger.error("Collection not found")
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return
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session.delete(collection)
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session.commit()
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def get_collection(self, session: Session) -> Optional["CollectionStore"]:
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return CollectionStore.get_by_name(session, self.collection_name)
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def add_texts(
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self,
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texts: Iterable[str],
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metadatas: Optional[List[dict]] = None,
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ids: Optional[List[str]] = None,
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**kwargs: Any,
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) -> List[str]:
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"""Run more texts through the embeddings and add to the vectorstore.
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Args:
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texts: Iterable of strings to add to the vectorstore.
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metadatas: Optional list of metadatas associated with the texts.
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kwargs: vectorstore specific parameters
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Returns:
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List of ids from adding the texts into the vectorstore.
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"""
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if ids is None:
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ids = [str(uuid.uuid1()) for _ in texts]
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embeddings = self.embedding_function.embed_documents(list(texts))
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if not metadatas:
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metadatas = [{} for _ in texts]
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with Session(self._conn) as session:
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collection = self.get_collection(session)
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if not collection:
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raise ValueError("Collection not found")
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for text, metadata, embedding, id in zip(texts, metadatas, embeddings, ids):
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embedding_store = EmbeddingStore(
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embedding=embedding,
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document=text,
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cmetadata=metadata,
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custom_id=id,
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)
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collection.embeddings.append(embedding_store)
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session.add(embedding_store)
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session.commit()
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return ids
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def similarity_search(
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self,
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query: str,
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k: int = 4,
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filter: Optional[dict] = None,
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**kwargs: Any,
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) -> List[Document]:
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"""Run similarity search with AnalyticDB with distance.
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Args:
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query (str): Query text to search for.
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k (int): Number of results to return. Defaults to 4.
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filter (Optional[Dict[str, str]]): Filter by metadata. Defaults to None.
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Returns:
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List of Documents most similar to the query.
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"""
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embedding = self.embedding_function.embed_query(text=query)
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return self.similarity_search_by_vector(
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embedding=embedding,
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k=k,
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filter=filter,
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)
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def similarity_search_with_score(
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self,
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query: str,
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k: int = 4,
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filter: Optional[dict] = None,
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) -> List[Tuple[Document, float]]:
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"""Return docs most similar to query.
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Args:
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query: Text to look up documents similar to.
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k: Number of Documents to return. Defaults to 4.
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filter (Optional[Dict[str, str]]): Filter by metadata. Defaults to None.
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Returns:
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List of Documents most similar to the query and score for each
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"""
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embedding = self.embedding_function.embed_query(query)
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docs = self.similarity_search_with_score_by_vector(
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embedding=embedding, k=k, filter=filter
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)
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return docs
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def similarity_search_with_score_by_vector(
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self,
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embedding: List[float],
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k: int = 4,
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filter: Optional[dict] = None,
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) -> List[Tuple[Document, float]]:
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with Session(self._conn) as session:
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collection = self.get_collection(session)
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if not collection:
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raise ValueError("Collection not found")
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filter_by = EmbeddingStore.collection_id == collection.uuid
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if filter is not None:
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filter_clauses = []
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for key, value in filter.items():
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filter_by_metadata = EmbeddingStore.cmetadata[key].astext == str(value)
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filter_clauses.append(filter_by_metadata)
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filter_by = sqlalchemy.and_(filter_by, *filter_clauses)
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results: List[QueryResult] = (
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session.query(
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EmbeddingStore,
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func.l2_distance(EmbeddingStore.embedding, embedding).label("distance"),
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)
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.filter(filter_by)
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.order_by(EmbeddingStore.embedding.op("<->")(embedding))
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.join(
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CollectionStore,
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EmbeddingStore.collection_id == CollectionStore.uuid,
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)
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.limit(k)
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.all()
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)
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docs = [
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(
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Document(
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page_content=result.EmbeddingStore.document,
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metadata=result.EmbeddingStore.cmetadata,
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),
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result.distance if self.embedding_function is not None else None,
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)
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for result in results
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]
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return docs
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def similarity_search_by_vector(
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self,
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embedding: List[float],
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k: int = 4,
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filter: Optional[dict] = None,
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**kwargs: Any,
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) -> List[Document]:
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"""Return docs most similar to embedding vector.
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Args:
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embedding: Embedding to look up documents similar to.
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k: Number of Documents to return. Defaults to 4.
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filter (Optional[Dict[str, str]]): Filter by metadata. Defaults to None.
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Returns:
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List of Documents most similar to the query vector.
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"""
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docs_and_scores = self.similarity_search_with_score_by_vector(
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embedding=embedding, k=k, filter=filter
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)
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return [doc for doc, _ in docs_and_scores]
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@classmethod
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def from_texts(
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cls,
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texts: List[str],
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embedding: Embeddings,
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metadatas: Optional[List[dict]] = None,
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collection_name: str = _LANGCHAIN_DEFAULT_COLLECTION_NAME,
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ids: Optional[List[str]] = None,
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pre_delete_collection: bool = False,
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**kwargs: Any,
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) -> AnalyticDB:
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"""
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Return VectorStore initialized from texts and embeddings.
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Postgres connection string is required
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Either pass it as a parameter
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or set the PGVECTOR_CONNECTION_STRING environment variable.
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"""
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connection_string = cls.get_connection_string(kwargs)
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store = cls(
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connection_string=connection_string,
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collection_name=collection_name,
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embedding_function=embedding,
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pre_delete_collection=pre_delete_collection,
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)
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store.add_texts(texts=texts, metadatas=metadatas, ids=ids, **kwargs)
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return store
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@classmethod
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def get_connection_string(cls, kwargs: Dict[str, Any]) -> str:
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connection_string: str = get_from_dict_or_env(
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data=kwargs,
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key="connection_string",
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env_key="PGVECTOR_CONNECTION_STRING",
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)
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if not connection_string:
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raise ValueError(
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"Postgres connection string is required"
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"Either pass it as a parameter"
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"or set the PGVECTOR_CONNECTION_STRING environment variable."
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)
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return connection_string
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@classmethod
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def from_documents(
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cls,
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documents: List[Document],
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embedding: Embeddings,
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collection_name: str = _LANGCHAIN_DEFAULT_COLLECTION_NAME,
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ids: Optional[List[str]] = None,
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pre_delete_collection: bool = False,
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**kwargs: Any,
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) -> AnalyticDB:
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"""
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Return VectorStore initialized from documents and embeddings.
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Postgres connection string is required
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Either pass it as a parameter
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or set the PGVECTOR_CONNECTION_STRING environment variable.
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"""
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texts = [d.page_content for d in documents]
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metadatas = [d.metadata for d in documents]
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connection_string = cls.get_connection_string(kwargs)
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kwargs["connection_string"] = connection_string
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return cls.from_texts(
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texts=texts,
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pre_delete_collection=pre_delete_collection,
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embedding=embedding,
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metadatas=metadatas,
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ids=ids,
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collection_name=collection_name,
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**kwargs,
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)
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@classmethod
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def connection_string_from_db_params(
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cls,
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driver: str,
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host: str,
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port: int,
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database: str,
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user: str,
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password: str,
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) -> str:
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"""Return connection string from database parameters."""
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return f"postgresql+{driver}://{user}:{password}@{host}:{port}/{database}"
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"""Test PGVector functionality."""
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import os
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from typing import List
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from sqlalchemy.orm import Session
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from langchain.docstore.document import Document
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from langchain.vectorstores.analyticdb import AnalyticDB
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from tests.integration_tests.vectorstores.fake_embeddings import FakeEmbeddings
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CONNECTION_STRING = AnalyticDB.connection_string_from_db_params(
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driver=os.environ.get("PG_DRIVER", "psycopg2cffi"),
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host=os.environ.get("PG_HOST", "localhost"),
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port=int(os.environ.get("PG_HOST", "5432")),
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database=os.environ.get("PG_DATABASE", "postgres"),
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user=os.environ.get("PG_USER", "postgres"),
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password=os.environ.get("PG_PASSWORD", "postgres"),
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)
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ADA_TOKEN_COUNT = 1536
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class FakeEmbeddingsWithAdaDimension(FakeEmbeddings):
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"""Fake embeddings functionality for testing."""
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def embed_documents(self, texts: List[str]) -> List[List[float]]:
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"""Return simple embeddings."""
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return [
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[float(1.0)] * (ADA_TOKEN_COUNT - 1) + [float(i)] for i in range(len(texts))
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]
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def embed_query(self, text: str) -> List[float]:
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"""Return simple embeddings."""
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return [float(1.0)] * (ADA_TOKEN_COUNT - 1) + [float(0.0)]
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def test_analyticdb() -> None:
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"""Test end to end construction and search."""
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texts = ["foo", "bar", "baz"]
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docsearch = AnalyticDB.from_texts(
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texts=texts,
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collection_name="test_collection",
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embedding=FakeEmbeddingsWithAdaDimension(),
|
||||
connection_string=CONNECTION_STRING,
|
||||
pre_delete_collection=True,
|
||||
)
|
||||
output = docsearch.similarity_search("foo", k=1)
|
||||
assert output == [Document(page_content="foo")]
|
||||
|
||||
|
||||
def test_analyticdb_with_metadatas() -> None:
|
||||
"""Test end to end construction and search."""
|
||||
texts = ["foo", "bar", "baz"]
|
||||
metadatas = [{"page": str(i)} for i in range(len(texts))]
|
||||
docsearch = AnalyticDB.from_texts(
|
||||
texts=texts,
|
||||
collection_name="test_collection",
|
||||
embedding=FakeEmbeddingsWithAdaDimension(),
|
||||
metadatas=metadatas,
|
||||
connection_string=CONNECTION_STRING,
|
||||
pre_delete_collection=True,
|
||||
)
|
||||
output = docsearch.similarity_search("foo", k=1)
|
||||
assert output == [Document(page_content="foo", metadata={"page": "0"})]
|
||||
|
||||
|
||||
def test_analyticdb_with_metadatas_with_scores() -> None:
|
||||
"""Test end to end construction and search."""
|
||||
texts = ["foo", "bar", "baz"]
|
||||
metadatas = [{"page": str(i)} for i in range(len(texts))]
|
||||
docsearch = AnalyticDB.from_texts(
|
||||
texts=texts,
|
||||
collection_name="test_collection",
|
||||
embedding=FakeEmbeddingsWithAdaDimension(),
|
||||
metadatas=metadatas,
|
||||
connection_string=CONNECTION_STRING,
|
||||
pre_delete_collection=True,
|
||||
)
|
||||
output = docsearch.similarity_search_with_score("foo", k=1)
|
||||
assert output == [(Document(page_content="foo", metadata={"page": "0"}), 0.0)]
|
||||
|
||||
|
||||
def test_analyticdb_with_filter_match() -> None:
|
||||
"""Test end to end construction and search."""
|
||||
texts = ["foo", "bar", "baz"]
|
||||
metadatas = [{"page": str(i)} for i in range(len(texts))]
|
||||
docsearch = AnalyticDB.from_texts(
|
||||
texts=texts,
|
||||
collection_name="test_collection_filter",
|
||||
embedding=FakeEmbeddingsWithAdaDimension(),
|
||||
metadatas=metadatas,
|
||||
connection_string=CONNECTION_STRING,
|
||||
pre_delete_collection=True,
|
||||
)
|
||||
output = docsearch.similarity_search_with_score("foo", k=1, filter={"page": "0"})
|
||||
assert output == [(Document(page_content="foo", metadata={"page": "0"}), 0.0)]
|
||||
|
||||
|
||||
def test_analyticdb_with_filter_distant_match() -> None:
|
||||
"""Test end to end construction and search."""
|
||||
texts = ["foo", "bar", "baz"]
|
||||
metadatas = [{"page": str(i)} for i in range(len(texts))]
|
||||
docsearch = AnalyticDB.from_texts(
|
||||
texts=texts,
|
||||
collection_name="test_collection_filter",
|
||||
embedding=FakeEmbeddingsWithAdaDimension(),
|
||||
metadatas=metadatas,
|
||||
connection_string=CONNECTION_STRING,
|
||||
pre_delete_collection=True,
|
||||
)
|
||||
output = docsearch.similarity_search_with_score("foo", k=1, filter={"page": "2"})
|
||||
print(output)
|
||||
assert output == [(Document(page_content="baz", metadata={"page": "2"}), 4.0)]
|
||||
|
||||
|
||||
def test_analyticdb_with_filter_no_match() -> None:
|
||||
"""Test end to end construction and search."""
|
||||
texts = ["foo", "bar", "baz"]
|
||||
metadatas = [{"page": str(i)} for i in range(len(texts))]
|
||||
docsearch = AnalyticDB.from_texts(
|
||||
texts=texts,
|
||||
collection_name="test_collection_filter",
|
||||
embedding=FakeEmbeddingsWithAdaDimension(),
|
||||
metadatas=metadatas,
|
||||
connection_string=CONNECTION_STRING,
|
||||
pre_delete_collection=True,
|
||||
)
|
||||
output = docsearch.similarity_search_with_score("foo", k=1, filter={"page": "5"})
|
||||
assert output == []
|
||||
|
||||
|
||||
def test_analyticdb_collection_with_metadata() -> None:
|
||||
"""Test end to end collection construction"""
|
||||
pgvector = AnalyticDB(
|
||||
collection_name="test_collection",
|
||||
collection_metadata={"foo": "bar"},
|
||||
embedding_function=FakeEmbeddingsWithAdaDimension(),
|
||||
connection_string=CONNECTION_STRING,
|
||||
pre_delete_collection=True,
|
||||
)
|
||||
session = Session(pgvector.connect())
|
||||
collection = pgvector.get_collection(session)
|
||||
if collection is None:
|
||||
assert False, "Expected a CollectionStore object but received None"
|
||||
else:
|
||||
assert collection.name == "test_collection"
|
||||
assert collection.cmetadata == {"foo": "bar"}
|
Loading…
Reference in New Issue