_document_from_point() — langchain Function Reference
Architecture documentation for the _document_from_point() function in qdrant.py from the langchain codebase.
Entity Profile
Dependency Diagram
graph TD a55135fe_576d_57f4_200f_c6402baada22["_document_from_point()"] 671b47a0_cdd3_a89d_e90f_0631a4bd67d3["QdrantVectorStore"] a55135fe_576d_57f4_200f_c6402baada22 -->|defined in| 671b47a0_cdd3_a89d_e90f_0631a4bd67d3 554efa04_b226_2427_5014_2b27a2b0b32f["similarity_search_with_score()"] 554efa04_b226_2427_5014_2b27a2b0b32f -->|calls| a55135fe_576d_57f4_200f_c6402baada22 3b9e0613_eecd_e688_0717_98be6124f6d3["similarity_search_with_score_by_vector()"] 3b9e0613_eecd_e688_0717_98be6124f6d3 -->|calls| a55135fe_576d_57f4_200f_c6402baada22 365c8401_562f_37f6_22d0_d8da0ff6fb68["max_marginal_relevance_search_with_score_by_vector()"] 365c8401_562f_37f6_22d0_d8da0ff6fb68 -->|calls| a55135fe_576d_57f4_200f_c6402baada22 b12af734_aa28_b91c_e6ae_69046d2b298a["get_by_ids()"] b12af734_aa28_b91c_e6ae_69046d2b298a -->|calls| a55135fe_576d_57f4_200f_c6402baada22 style a55135fe_576d_57f4_200f_c6402baada22 fill:#6366f1,stroke:#818cf8,color:#fff
Relationship Graph
Source Code
libs/partners/qdrant/langchain_qdrant/qdrant.py lines 1023–1036
def _document_from_point(
cls,
scored_point: Any,
collection_name: str,
content_payload_key: str,
metadata_payload_key: str,
) -> Document:
metadata = scored_point.payload.get(metadata_payload_key) or {}
metadata["_id"] = scored_point.id
metadata["_collection_name"] = collection_name
return Document(
page_content=scored_point.payload.get(content_payload_key, ""),
metadata=metadata,
)
Domain
Subdomains
Called By
Source
Frequently Asked Questions
What does _document_from_point() do?
_document_from_point() is a function in the langchain codebase, defined in libs/partners/qdrant/langchain_qdrant/qdrant.py.
Where is _document_from_point() defined?
_document_from_point() is defined in libs/partners/qdrant/langchain_qdrant/qdrant.py at line 1023.
What calls _document_from_point()?
_document_from_point() is called by 4 function(s): get_by_ids, max_marginal_relevance_search_with_score_by_vector, similarity_search_with_score, similarity_search_with_score_by_vector.
Analyze Your Own Codebase
Get architecture documentation, dependency graphs, and domain analysis for your codebase in minutes.
Try Supermodel Free