Home / Function/ test_relevance_search_with_threshold_and_filter() — langchain Function Reference

test_relevance_search_with_threshold_and_filter() — langchain Function Reference

Architecture documentation for the test_relevance_search_with_threshold_and_filter() function in test_search.py from the langchain codebase.

Entity Profile

Dependency Diagram

graph TD
  21045765_dbb0_cecd_c40a_6daa441dedac["test_relevance_search_with_threshold_and_filter()"]
  7105a1c4_0f67_8c01_efc7_d00363a3ed66["test_search.py"]
  21045765_dbb0_cecd_c40a_6daa441dedac -->|defined in| 7105a1c4_0f67_8c01_efc7_d00363a3ed66
  style 21045765_dbb0_cecd_c40a_6daa441dedac fill:#6366f1,stroke:#818cf8,color:#fff

Relationship Graph

Source Code

libs/partners/qdrant/tests/integration_tests/qdrant_vector_store/test_search.py lines 209–251

def test_relevance_search_with_threshold_and_filter(
    location: str,
    content_payload_key: str,
    metadata_payload_key: str,
    vector_name: str,
) -> None:
    """Test end to end construction and search."""
    texts = ["foo", "bar", "baz"]
    metadatas = [
        {"page": i, "metadata": {"page": i + 1, "pages": [i + 2, -1]}}
        for i in range(len(texts))
    ]
    docsearch = QdrantVectorStore.from_texts(
        texts,
        ConsistentFakeEmbeddings(),
        metadatas=metadatas,
        location=location,
        content_payload_key=content_payload_key,
        metadata_payload_key=metadata_payload_key,
        vector_name=vector_name,
    )
    score_threshold = 0.99  # for almost exact match
    negative_filter = models.Filter(
        must=[
            models.FieldCondition(
                key=f"{metadata_payload_key}.page", match=models.MatchValue(value=1)
            )
        ]
    )
    kwargs = {"filter": negative_filter, "score_threshold": score_threshold}
    output = docsearch.similarity_search_with_relevance_scores("foo", k=3, **kwargs)
    assert len(output) == 0
    positive_filter = models.Filter(
        must=[
            models.FieldCondition(
                key=f"{metadata_payload_key}.page", match=models.MatchValue(value=0)
            )
        ]
    )
    kwargs = {"filter": positive_filter, "score_threshold": score_threshold}
    output = docsearch.similarity_search_with_relevance_scores("foo", k=3, **kwargs)
    assert len(output) == 1
    assert all(score >= score_threshold for _, score in output)

Domain

Subdomains

Frequently Asked Questions

What does test_relevance_search_with_threshold_and_filter() do?
test_relevance_search_with_threshold_and_filter() is a function in the langchain codebase, defined in libs/partners/qdrant/tests/integration_tests/qdrant_vector_store/test_search.py.
Where is test_relevance_search_with_threshold_and_filter() defined?
test_relevance_search_with_threshold_and_filter() is defined in libs/partners/qdrant/tests/integration_tests/qdrant_vector_store/test_search.py at line 209.

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