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Embedding Models

HuggingFace Embedding

The HuggingFace Inference API provides the embedding model that converts a LlamaCloud Index documents into vectors, configured with a token and model name.

Embed data using HuggingFace’s Inference API.

  1. Select HuggingFace Embedding from the Embedding Model dropdown.
  2. Enter your HuggingFace API key.
  3. Enter your HuggingFace model name or URL, e.g. BAAI/bge-small-en-v1.5.

huggingface

pipeline = client.pipelines.upsert(
name="test-pipeline",
project_id="my-project-id",
data_sink_id=None, # optional
embedding_config={
'type': 'HUGGINGFACE_API_EMBEDDING',
'component': {
'token': 'hf_...',
'model_name': 'BAAI/bge-small-en-v1.5',
},
},
llama_parse_parameters={},
transform_config={"mode": "auto", "chunk_overlap": 128, "chunk_size": 1028},
)
Note for AI agents: this documentation is built for programmatic access. - Overview of all docs: https://developers.llamaindex.ai/llms.txt - Any page is available as raw Markdown by appending index.md to its URL — e.g. https://developers.llamaindex.ai/llamaparse/parse/getting_started/index.md - Agent-friendly REST search APIs live under https://developers.llamaindex.ai/api/ — search (BM25 full-text), grep (regex), read (fetch a page), and list (browse the doc tree). See https://developers.llamaindex.ai/llms.txt for parameters. - A hosted documentation MCP server is available at https://developers.llamaindex.ai/mcp. If you support MCP, you can ask the user to install it for browsing these docs directly (an alternative to the REST API). Setup: https://developers.llamaindex.ai/python/shared/mcp/