mirror of
https://github.com/hwchase17/langchain
synced 2024-11-02 09:40:22 +00:00
489 lines
17 KiB
Python
489 lines
17 KiB
Python
from __future__ import annotations
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import logging
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import os
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import uuid
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import warnings
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from typing import TYPE_CHECKING, Any, Callable, Iterable, List, Optional, Tuple, Union
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import numpy as np
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from langchain_core._api.deprecation import deprecated
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from langchain_core.documents import Document
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from langchain_core.embeddings import Embeddings
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from langchain_core.utils.iter import batch_iterate
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from langchain_core.vectorstores import VectorStore
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from packaging import version
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from langchain_community.vectorstores.utils import (
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DistanceStrategy,
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maximal_marginal_relevance,
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)
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if TYPE_CHECKING:
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from pinecone import Index
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logger = logging.getLogger(__name__)
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def _import_pinecone() -> Any:
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try:
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import pinecone
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except ImportError as e:
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raise ImportError(
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"Could not import pinecone python package. "
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"Please install it with `pip install pinecone-client`."
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) from e
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return pinecone
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def _is_pinecone_v3() -> bool:
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pinecone = _import_pinecone()
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pinecone_client_version = pinecone.__version__
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return version.parse(pinecone_client_version) >= version.parse("3.0.0.dev")
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@deprecated(
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since="0.0.18", removal="0.2.0", alternative_import="langchain_pinecone.Pinecone"
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)
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class Pinecone(VectorStore):
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"""`Pinecone` vector store.
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To use, you should have the ``pinecone-client`` python package installed.
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This version of Pinecone is deprecated. Please use `langchain_pinecone.Pinecone`
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instead.
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"""
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def __init__(
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self,
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index: Any,
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embedding: Union[Embeddings, Callable],
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text_key: str,
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namespace: Optional[str] = None,
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distance_strategy: Optional[DistanceStrategy] = DistanceStrategy.COSINE,
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):
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"""Initialize with Pinecone client."""
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pinecone = _import_pinecone()
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if not isinstance(embedding, Embeddings):
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warnings.warn(
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"Passing in `embedding` as a Callable is deprecated. Please pass in an"
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" Embeddings object instead."
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)
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if not isinstance(index, pinecone.Index):
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raise ValueError(
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f"client should be an instance of pinecone.Index, " f"got {type(index)}"
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)
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self._index = index
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self._embedding = embedding
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self._text_key = text_key
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self._namespace = namespace
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self.distance_strategy = distance_strategy
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@property
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def embeddings(self) -> Optional[Embeddings]:
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"""Access the query embedding object if available."""
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if isinstance(self._embedding, Embeddings):
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return self._embedding
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return None
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def _embed_documents(self, texts: Iterable[str]) -> List[List[float]]:
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"""Embed search docs."""
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if isinstance(self._embedding, Embeddings):
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return self._embedding.embed_documents(list(texts))
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return [self._embedding(t) for t in texts]
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def _embed_query(self, text: str) -> List[float]:
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"""Embed query text."""
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if isinstance(self._embedding, Embeddings):
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return self._embedding.embed_query(text)
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return self._embedding(text)
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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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namespace: Optional[str] = None,
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batch_size: int = 32,
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embedding_chunk_size: int = 1000,
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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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Upsert optimization is done by chunking the embeddings and upserting them.
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This is done to avoid memory issues and optimize using HTTP based embeddings.
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For OpenAI embeddings, use pool_threads>4 when constructing the pinecone.Index,
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embedding_chunk_size>1000 and batch_size~64 for best performance.
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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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ids: Optional list of ids to associate with the texts.
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namespace: Optional pinecone namespace to add the texts to.
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batch_size: Batch size to use when adding the texts to the vectorstore.
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embedding_chunk_size: Chunk size to use when embedding the texts.
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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 namespace is None:
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namespace = self._namespace
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texts = list(texts)
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ids = ids or [str(uuid.uuid4()) for _ in texts]
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metadatas = metadatas or [{} for _ in texts]
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for metadata, text in zip(metadatas, texts):
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metadata[self._text_key] = text
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# For loops to avoid memory issues and optimize when using HTTP based embeddings
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# The first loop runs the embeddings, it benefits when using OpenAI embeddings
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# The second loops runs the pinecone upsert asynchronously.
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for i in range(0, len(texts), embedding_chunk_size):
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chunk_texts = texts[i : i + embedding_chunk_size]
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chunk_ids = ids[i : i + embedding_chunk_size]
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chunk_metadatas = metadatas[i : i + embedding_chunk_size]
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embeddings = self._embed_documents(chunk_texts)
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async_res = [
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self._index.upsert(
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vectors=batch,
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namespace=namespace,
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async_req=True,
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**kwargs,
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)
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for batch in batch_iterate(
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batch_size, zip(chunk_ids, embeddings, chunk_metadatas)
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)
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]
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[res.get() for res in async_res]
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return ids
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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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namespace: Optional[str] = None,
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) -> List[Tuple[Document, float]]:
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"""Return pinecone documents most similar to query, along with scores.
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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: Dictionary of argument(s) to filter on metadata
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namespace: Namespace to search in. Default will search in '' namespace.
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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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return self.similarity_search_by_vector_with_score(
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self._embed_query(query), k=k, filter=filter, namespace=namespace
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)
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def similarity_search_by_vector_with_score(
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self,
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embedding: List[float],
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*,
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k: int = 4,
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filter: Optional[dict] = None,
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namespace: Optional[str] = None,
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) -> List[Tuple[Document, float]]:
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"""Return pinecone documents most similar to embedding, along with scores."""
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if namespace is None:
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namespace = self._namespace
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docs = []
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results = self._index.query(
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vector=[embedding],
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top_k=k,
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include_metadata=True,
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namespace=namespace,
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filter=filter,
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)
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for res in results["matches"]:
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metadata = res["metadata"]
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if self._text_key in metadata:
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text = metadata.pop(self._text_key)
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score = res["score"]
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docs.append((Document(page_content=text, metadata=metadata), score))
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else:
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logger.warning(
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f"Found document with no `{self._text_key}` key. Skipping."
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)
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return docs
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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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namespace: Optional[str] = None,
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**kwargs: Any,
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) -> List[Document]:
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"""Return pinecone documents 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: Dictionary of argument(s) to filter on metadata
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namespace: Namespace to search in. Default will search in '' namespace.
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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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docs_and_scores = self.similarity_search_with_score(
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query, k=k, filter=filter, namespace=namespace, **kwargs
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)
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return [doc for doc, _ in docs_and_scores]
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def _select_relevance_score_fn(self) -> Callable[[float], float]:
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"""
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The 'correct' relevance function
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may differ depending on a few things, including:
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- the distance / similarity metric used by the VectorStore
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- the scale of your embeddings (OpenAI's are unit normed. Many others are not!)
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- embedding dimensionality
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- etc.
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"""
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if self.distance_strategy == DistanceStrategy.COSINE:
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return self._cosine_relevance_score_fn
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elif self.distance_strategy == DistanceStrategy.MAX_INNER_PRODUCT:
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return self._max_inner_product_relevance_score_fn
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elif self.distance_strategy == DistanceStrategy.EUCLIDEAN_DISTANCE:
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return self._euclidean_relevance_score_fn
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else:
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raise ValueError(
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"Unknown distance strategy, must be cosine, max_inner_product "
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"(dot product), or euclidean"
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)
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@staticmethod
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def _cosine_relevance_score_fn(score: float) -> float:
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"""Pinecone returns cosine similarity scores between [-1,1]"""
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return (score + 1) / 2
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def max_marginal_relevance_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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fetch_k: int = 20,
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lambda_mult: float = 0.5,
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filter: Optional[dict] = None,
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namespace: Optional[str] = None,
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**kwargs: Any,
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) -> List[Document]:
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"""Return docs selected using the maximal marginal relevance.
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Maximal marginal relevance optimizes for similarity to query AND diversity
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among selected documents.
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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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fetch_k: Number of Documents to fetch to pass to MMR algorithm.
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lambda_mult: Number between 0 and 1 that determines the degree
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of diversity among the results with 0 corresponding
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to maximum diversity and 1 to minimum diversity.
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Defaults to 0.5.
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Returns:
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List of Documents selected by maximal marginal relevance.
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"""
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if namespace is None:
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namespace = self._namespace
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results = self._index.query(
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vector=[embedding],
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top_k=fetch_k,
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include_values=True,
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include_metadata=True,
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namespace=namespace,
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filter=filter,
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)
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mmr_selected = maximal_marginal_relevance(
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np.array([embedding], dtype=np.float32),
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[item["values"] for item in results["matches"]],
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k=k,
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lambda_mult=lambda_mult,
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)
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selected = [results["matches"][i]["metadata"] for i in mmr_selected]
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return [
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Document(page_content=metadata.pop((self._text_key)), metadata=metadata)
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for metadata in selected
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]
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def max_marginal_relevance_search(
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self,
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query: str,
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k: int = 4,
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fetch_k: int = 20,
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lambda_mult: float = 0.5,
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filter: Optional[dict] = None,
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namespace: Optional[str] = None,
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**kwargs: Any,
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) -> List[Document]:
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"""Return docs selected using the maximal marginal relevance.
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Maximal marginal relevance optimizes for similarity to query AND diversity
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among selected documents.
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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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fetch_k: Number of Documents to fetch to pass to MMR algorithm.
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lambda_mult: Number between 0 and 1 that determines the degree
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of diversity among the results with 0 corresponding
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to maximum diversity and 1 to minimum diversity.
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Defaults to 0.5.
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Returns:
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List of Documents selected by maximal marginal relevance.
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"""
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embedding = self._embed_query(query)
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return self.max_marginal_relevance_search_by_vector(
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embedding, k, fetch_k, lambda_mult, filter, namespace
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)
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@classmethod
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def get_pinecone_index(
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cls,
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index_name: Optional[str],
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pool_threads: int = 4,
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) -> Index:
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"""Return a Pinecone Index instance.
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Args:
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index_name: Name of the index to use.
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pool_threads: Number of threads to use for index upsert.
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Returns:
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Pinecone Index instance."""
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pinecone = _import_pinecone()
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if _is_pinecone_v3():
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pinecone_instance = pinecone.Pinecone(
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api_key=os.environ.get("PINECONE_API_KEY"), pool_threads=pool_threads
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)
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indexes = pinecone_instance.list_indexes()
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index_names = [i.name for i in indexes.index_list["indexes"]]
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else:
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index_names = pinecone.list_indexes()
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if index_name in index_names:
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index = (
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pinecone_instance.Index(index_name)
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if _is_pinecone_v3()
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else pinecone.Index(index_name, pool_threads=pool_threads)
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)
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elif len(index_names) == 0:
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raise ValueError(
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"No active indexes found in your Pinecone project, "
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"are you sure you're using the right Pinecone API key and Environment? "
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"Please double check your Pinecone dashboard."
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)
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else:
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raise ValueError(
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f"Index '{index_name}' not found in your Pinecone project. "
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f"Did you mean one of the following indexes: {', '.join(index_names)}"
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)
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return index
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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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ids: Optional[List[str]] = None,
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batch_size: int = 32,
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text_key: str = "text",
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namespace: Optional[str] = None,
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index_name: Optional[str] = None,
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upsert_kwargs: Optional[dict] = None,
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pool_threads: int = 4,
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embeddings_chunk_size: int = 1000,
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**kwargs: Any,
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) -> Pinecone:
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"""
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DEPRECATED: use langchain_pinecone.PineconeVectorStore.from_texts instead:
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Construct Pinecone wrapper from raw documents.
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This is a user friendly interface that:
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1. Embeds documents.
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2. Adds the documents to a provided Pinecone index
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This is intended to be a quick way to get started.
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The `pool_threads` affects the speed of the upsert operations.
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Example:
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.. code-block:: python
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from langchain_pinecone import PineconeVectorStore
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from langchain_openai import OpenAIEmbeddings
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embeddings = OpenAIEmbeddings()
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index_name = "my-index"
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namespace = "my-namespace"
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vectorstore = Pinecone(
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index_name=index_name,
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embedding=embedding,
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namespace=namespace,
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)
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"""
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pinecone_index = cls.get_pinecone_index(index_name, pool_threads)
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pinecone = cls(pinecone_index, embedding, text_key, namespace, **kwargs)
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pinecone.add_texts(
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texts,
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metadatas=metadatas,
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ids=ids,
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namespace=namespace,
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batch_size=batch_size,
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embedding_chunk_size=embeddings_chunk_size,
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**(upsert_kwargs or {}),
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)
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return pinecone
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@classmethod
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def from_existing_index(
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cls,
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index_name: str,
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embedding: Embeddings,
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text_key: str = "text",
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namespace: Optional[str] = None,
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pool_threads: int = 4,
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) -> Pinecone:
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"""Load pinecone vectorstore from index name."""
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pinecone_index = cls.get_pinecone_index(index_name, pool_threads)
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return cls(pinecone_index, embedding, text_key, namespace)
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def delete(
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self,
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ids: Optional[List[str]] = None,
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delete_all: Optional[bool] = None,
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namespace: Optional[str] = None,
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filter: Optional[dict] = None,
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**kwargs: Any,
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) -> None:
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"""Delete by vector IDs or filter.
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Args:
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ids: List of ids to delete.
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filter: Dictionary of conditions to filter vectors to delete.
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"""
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if namespace is None:
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namespace = self._namespace
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if delete_all:
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self._index.delete(delete_all=True, namespace=namespace, **kwargs)
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elif ids is not None:
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chunk_size = 1000
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for i in range(0, len(ids), chunk_size):
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chunk = ids[i : i + chunk_size]
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self._index.delete(ids=chunk, namespace=namespace, **kwargs)
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elif filter is not None:
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self._index.delete(filter=filter, namespace=namespace, **kwargs)
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else:
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raise ValueError("Either ids, delete_all, or filter must be provided.")
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return None
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