[Feat] Implement keyword search in FAISS

This commit is contained in:
Varsha Prasad Narsing 2025-08-05 15:49:14 -07:00
parent 7f834339ba
commit aa7579efaf
3 changed files with 142 additions and 1 deletions

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@ -9,6 +9,8 @@ import base64
import io
import json
import logging
import re
from collections import Counter
from typing import Any
import faiss
@ -29,6 +31,7 @@ from llama_stack.providers.datatypes import (
HealthStatus,
VectorDBsProtocolPrivate,
)
from llama_stack.providers.utils.inference.prompt_adapter import interleaved_content_as_str
from llama_stack.providers.utils.kvstore import kvstore_impl
from llama_stack.providers.utils.kvstore.api import KVStore
from llama_stack.providers.utils.memory.openai_vector_store_mixin import OpenAIVectorStoreMixin
@ -49,6 +52,35 @@ OPENAI_VECTOR_STORES_FILES_PREFIX = f"openai_vector_stores_files:{VERSION}::"
OPENAI_VECTOR_STORES_FILES_CONTENTS_PREFIX = f"openai_vector_stores_files_contents:{VERSION}::"
def _tokenize_text(text: str) -> list[str]:
"""Tokenize text into words, converting to lowercase and removing punctuation."""
words = re.findall(r"\b\w+\b", text.lower())
return [word for word in words if len(word) > 2]
def _calculate_tf_idf_score(query_tokens: list[str], document_tokens: list[str]) -> float:
"""
Calculate a simple TF-IDF-like score for keyword matching.
This is a simplified version that doesn't require pre-computed IDF values.
"""
if not query_tokens or not document_tokens:
return 0.0
query_freq = Counter(query_tokens)
doc_freq = Counter(document_tokens)
score = 0.0
for term, query_count in query_freq.items():
if term in doc_freq:
score += doc_freq[term] * query_count
if score > 0 and len(document_tokens) > 0:
score /= len(document_tokens)
return score
return 0.0
class FaissIndex(EmbeddingIndex):
def __init__(self, dimension: int, kvstore: KVStore | None = None, bank_id: str | None = None):
self.index = faiss.IndexFlatL2(dimension)
@ -174,7 +206,27 @@ class FaissIndex(EmbeddingIndex):
k: int,
score_threshold: float,
) -> QueryChunksResponse:
raise NotImplementedError("Keyword search is not supported in FAISS")
query_tokens = _tokenize_text(query_string)
if not query_tokens:
return QueryChunksResponse(chunks=[], scores=[])
# Calculate scores for all chunks
chunk_scores = []
for chunk in self.chunk_by_index.values():
document_content = interleaved_content_as_str(chunk.content)
document_tokens = _tokenize_text(document_content)
score = _calculate_tf_idf_score(query_tokens, document_tokens)
if score > 0 and score >= score_threshold:
chunk_scores.append((chunk, score))
# Sort by score (descending) and take top k
chunk_scores.sort(key=lambda x: x[1], reverse=True)
top_k = chunk_scores[:k]
chunks = [chunk for chunk, _ in top_k]
scores = [score for _, score in top_k]
return QueryChunksResponse(chunks=chunks, scores=scores)
async def query_hybrid(
self,

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@ -52,6 +52,7 @@ def skip_if_provider_doesnt_support_openai_vector_stores_search(client_with_mode
],
"keyword": [
"inline::sqlite-vec",
"inline::faiss",
],
"hybrid": [
"inline::sqlite-vec",

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@ -176,3 +176,91 @@ async def test_health_failure():
assert isinstance(response, dict)
assert response["status"] == HealthStatus.ERROR
assert response["message"] == "Health check failed: Test error"
# Keyword Search Tests
@pytest.fixture
def keyword_search_chunks():
return [
Chunk(
content="Python is a high-level programming language that emphasizes code readability.",
metadata={"document_id": "doc1", "topic": "programming"},
),
Chunk(
content="Machine learning is a subset of artificial intelligence that enables systems to learn automatically.",
metadata={"document_id": "doc2", "topic": "ai"},
),
Chunk(
content="Data structures are fundamental to computer science and enable efficient data processing.",
metadata={"document_id": "doc3", "topic": "computer_science"},
),
Chunk(
content="Neural networks are inspired by biological neural networks and use interconnected nodes.",
metadata={"document_id": "doc4", "topic": "ai"},
),
]
@pytest.fixture
def keyword_search_embeddings(embedding_dimension):
return np.random.rand(4, embedding_dimension).astype(np.float32)
async def test_faiss_keyword_search_basic(faiss_index, keyword_search_chunks, keyword_search_embeddings):
"""Test basic keyword search functionality."""
await faiss_index.add_chunks(keyword_search_chunks, keyword_search_embeddings)
response = await faiss_index.query_keyword("Python", k=2, score_threshold=0.0)
assert len(response.chunks) > 0
assert "Python" in response.chunks[0].content
response = await faiss_index.query_keyword("machine learning", k=2, score_threshold=0.0)
assert len(response.chunks) > 0
assert "machine learning" in response.chunks[0].content.lower()
async def test_faiss_keyword_search_no_matches(faiss_index, keyword_search_chunks, keyword_search_embeddings):
"""Test keyword search when no matches are found."""
await faiss_index.add_chunks(keyword_search_chunks, keyword_search_embeddings)
# Test with a term that doesn't exist
response = await faiss_index.query_keyword("nonexistent", k=2, score_threshold=0.0)
assert len(response.chunks) == 0
assert len(response.scores) == 0
async def test_faiss_keyword_search_score_threshold(faiss_index, keyword_search_chunks, keyword_search_embeddings):
"""Test that score threshold filtering works correctly."""
await faiss_index.add_chunks(keyword_search_chunks, keyword_search_embeddings)
response = await faiss_index.query_keyword("Python", k=2, score_threshold=100.0)
assert len(response.chunks) == 0
async def test_faiss_keyword_search_empty_index(faiss_index):
"""Test keyword search on empty index."""
response = await faiss_index.query_keyword("Python", k=2, score_threshold=0.0)
assert len(response.chunks) == 0
assert len(response.scores) == 0
async def test_faiss_keyword_search_empty_query(faiss_index, keyword_search_chunks, keyword_search_embeddings):
"""Test keyword search with empty query."""
await faiss_index.add_chunks(keyword_search_chunks, keyword_search_embeddings)
response = await faiss_index.query_keyword("", k=2, score_threshold=0.0)
assert len(response.chunks) == 0
assert len(response.scores) == 0
async def test_faiss_keyword_search_case_insensitive(faiss_index, keyword_search_chunks, keyword_search_embeddings):
"""Test that keyword search is case insensitive."""
await faiss_index.add_chunks(keyword_search_chunks, keyword_search_embeddings)
# Test with different cases
response1 = await faiss_index.query_keyword("python", k=2, score_threshold=0.0)
response2 = await faiss_index.query_keyword("PYTHON", k=2, score_threshold=0.0)
response3 = await faiss_index.query_keyword("Python", k=2, score_threshold=0.0)
# All should return the same results
assert len(response1.chunks) == len(response2.chunks) == len(response3.chunks)