chroma-mcp
Language:
Python
Stars:
81
Forks:
11
README
Chroma - the open-source embedding database.
The fastest way to build Python or JavaScript LLM apps with memory!
|
|
Docs
|
Homepage
Chroma MCP Server
The Model Context Protocol (MCP) is an open protocol designed for effortless integration between LLM applications and external data sources or tools, offering a standardized framework to seamlessly provide LLMs with the context they require.
This server provides data retrieval capabilities powered by Chroma, enabling AI models to create collections over generated data and user inputs, and retrieve that data using vector search, full text search, metadata filtering, and more.
This is a MCP server for self-hosting your access to Chroma. If you are looking for Package Search you can find the repository for that here.
Features
-
Flexible Client Types
- Ephemeral (in-memory) for testing and development
- Persistent for file-based storage
- HTTP client for self-hosted Chroma instances
- Cloud client for Chroma Cloud integration (automatically connects to api.trychroma.com)
-
Collection Management
- Create, modify, and delete collections
- List all collections with pagination support
- Get collection information and statistics
- Configure HNSW parameters for optimized vector search
- Select embedding functions when creating collections
-
Document Operations
- Add documents with optional metadata and custom IDs
- Query documents using semantic search
- Advanced filtering using metadata and document content
- Retrieve documents by IDs or filters
- Full text search capabilities
Supported Tools
chroma_list_collections- List all collections with pagination supportchroma_create_collection- Create a new collection with optional HNSW configurationchroma_peek_collection- View a sample of documents in a collectionchroma_get_collection_info- Get detailed information about a collectionchroma_get_collection_count- Get the number of documents in a collectionchroma_modify_collection- Update a collection's name or metadatachroma_delete_collection- Delete a collectionchroma_add_documents- Add documents with optional metadata and custom IDschroma_query_documents- Query documents using semantic search with advanced filteringchroma_get_documents- Retrieve documents by IDs or filters with paginationchroma_update_documents- Update existing documents' content, metadata, or embeddingschroma_delete_documents- Delete specific documents from a collection
Embedding Functions
Chroma MCP supports several embedding functions: default, cohere, openai, jina, voyageai, and roboflow.
The embedding functions utilize Chroma's collection configuration, which persists the selected embedding function of a collection for retrieval. Once a collection is created using the collection configuration, on retrieval for future queries and inserts, the same embedding function will be used, without needing to specify the embedding function again. Embedding function persistance was added in v1.0.0 of Chroma, so if you created a collection using version
Publisher info
More MCP servers built with Python
🤗 Transformers: the model-definition framework for state-of-the-art machine learning models in text, vision, audio, and multimodal models, for both inference and training.