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langchain/libs/community/langchain_community/vectorstores/utils.py

75 lines
2.4 KiB
Python

"""Utility functions for working with vectors and vectorstores."""
from enum import Enum
from typing import List, Tuple, Type
import numpy as np
from langchain_core.documents import Document
from langchain_community.utils.math import cosine_similarity
class DistanceStrategy(str, Enum):
"""Enumerator of the Distance strategies for calculating distances
between vectors."""
EUCLIDEAN_DISTANCE = "EUCLIDEAN_DISTANCE"
MAX_INNER_PRODUCT = "MAX_INNER_PRODUCT"
DOT_PRODUCT = "DOT_PRODUCT"
JACCARD = "JACCARD"
COSINE = "COSINE"
def maximal_marginal_relevance(
query_embedding: np.ndarray,
embedding_list: list,
lambda_mult: float = 0.5,
k: int = 4,
) -> List[int]:
"""Calculate maximal marginal relevance."""
if min(k, len(embedding_list)) <= 0:
return []
if query_embedding.ndim == 1:
query_embedding = np.expand_dims(query_embedding, axis=0)
similarity_to_query = cosine_similarity(query_embedding, embedding_list)[0]
most_similar = int(np.argmax(similarity_to_query))
idxs = [most_similar]
selected = np.array([embedding_list[most_similar]])
while len(idxs) < min(k, len(embedding_list)):
best_score = -np.inf
idx_to_add = -1
similarity_to_selected = cosine_similarity(embedding_list, selected)
for i, query_score in enumerate(similarity_to_query):
if i in idxs:
continue
redundant_score = max(similarity_to_selected[i])
equation_score = (
lambda_mult * query_score - (1 - lambda_mult) * redundant_score
)
if equation_score > best_score:
best_score = equation_score
idx_to_add = i
idxs.append(idx_to_add)
selected = np.append(selected, [embedding_list[idx_to_add]], axis=0)
return idxs
def filter_complex_metadata(
documents: List[Document],
*,
allowed_types: Tuple[Type, ...] = (str, bool, int, float),
) -> List[Document]:
"""Filter out metadata types that are not supported for a vector store."""
updated_documents = []
for document in documents:
filtered_metadata = {}
for key, value in document.metadata.items():
if not isinstance(value, allowed_types):
continue
filtered_metadata[key] = value
document.metadata = filtered_metadata
updated_documents.append(document)
return updated_documents