embed_documents() — langchain Function Reference
Architecture documentation for the embed_documents() function in base.py from the langchain codebase.
Entity Profile
Dependency Diagram
graph TD 64f4fa06_4784_3e51_9655_1c4667c3f612["embed_documents()"] 2f237d29_e276_c4ef_3a56_7139ce49b50e["OpenAIEmbeddings"] 64f4fa06_4784_3e51_9655_1c4667c3f612 -->|defined in| 2f237d29_e276_c4ef_3a56_7139ce49b50e e468f110_acc6_1477_1d24_c998730b0bf4["embed_query()"] e468f110_acc6_1477_1d24_c998730b0bf4 -->|calls| 64f4fa06_4784_3e51_9655_1c4667c3f612 852243b7_32dc_46e6_5d5f_62e271437d8d["_ensure_sync_client_available()"] 64f4fa06_4784_3e51_9655_1c4667c3f612 -->|calls| 852243b7_32dc_46e6_5d5f_62e271437d8d bd7de307_7f7c_35fc_e574_e5dfd1b9a161["_get_len_safe_embeddings()"] 64f4fa06_4784_3e51_9655_1c4667c3f612 -->|calls| bd7de307_7f7c_35fc_e574_e5dfd1b9a161 style 64f4fa06_4784_3e51_9655_1c4667c3f612 fill:#6366f1,stroke:#818cf8,color:#fff
Relationship Graph
Source Code
libs/partners/openai/langchain_openai/embeddings/base.py lines 677–711
def embed_documents(
self, texts: list[str], chunk_size: int | None = None, **kwargs: Any
) -> list[list[float]]:
"""Call OpenAI's embedding endpoint to embed search docs.
Args:
texts: The list of texts to embed.
chunk_size: The chunk size of embeddings.
If `None`, will use the chunk size specified by the class.
kwargs: Additional keyword arguments to pass to the embedding API.
Returns:
List of embeddings, one for each text.
"""
self._ensure_sync_client_available()
chunk_size_ = chunk_size or self.chunk_size
client_kwargs = {**self._invocation_params, **kwargs}
if not self.check_embedding_ctx_length:
embeddings: list[list[float]] = []
for i in range(0, len(texts), chunk_size_):
response = self.client.create(
input=texts[i : i + chunk_size_], **client_kwargs
)
if not isinstance(response, dict):
response = response.model_dump()
embeddings.extend(r["embedding"] for r in response["data"])
return embeddings
# Unconditionally call _get_len_safe_embeddings to handle length safety.
# This could be optimized to avoid double work when all texts are short enough.
engine = cast(str, self.deployment)
return self._get_len_safe_embeddings(
texts, engine=engine, chunk_size=chunk_size, **kwargs
)
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Frequently Asked Questions
What does embed_documents() do?
embed_documents() is a function in the langchain codebase, defined in libs/partners/openai/langchain_openai/embeddings/base.py.
Where is embed_documents() defined?
embed_documents() is defined in libs/partners/openai/langchain_openai/embeddings/base.py at line 677.
What does embed_documents() call?
embed_documents() calls 2 function(s): _ensure_sync_client_available, _get_len_safe_embeddings.
What calls embed_documents()?
embed_documents() is called by 1 function(s): embed_query.
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