hybrid server
The server is able to function both locally and remotely, depending on the configuration or use case.
Integrations
Uses OpenAI's embedding models and LLMs for memory management, with configurable model selection through environment variables.
MCP Memory
A Model Context Protocol (MCP) server implementing memory solutions for data-rich applications with efficient knowledge graph capabilities.
Overview
This MCP server implements a memory solution for data-rich applications that involve searching information from many sources including uploaded files. It uses HippoRAG internally to manage memory through an efficient knowledge graph. HippoRAG is a required dependency for this package.
Features
- Session-based Memory: Create and manage memory for specific chat sessions
- Efficient Knowledge Graph: Uses HippoRAG for memory management
- Multiple Transport Support: Works with both stdio and SSE transports
- Search Capabilities: Search information from various sources including uploaded files
- Automatic Resource Management: TTL-based cleanup for both sessions and memory instances
Installation
Install from PyPI:
Or install from source:
Note: HippoRAG is a required dependency for mcp-mem to function.
Usage
You can run the MCP server directly:
By default, it uses stdio transport. To use SSE transport:
You can also specify host and port for SSE transport:
Configuration
Basic Configuration
To use this tool with Claude in Windsurf, add the following configuration to your MCP config file:
The command
field should point to the directory where you installed the python package using pip.
Environment Variable Configuration
You can configure the LLM and embedding models used by mcp-mem through environment variables:
EMBEDDING_MODEL_NAME
: Name of the embedding model to use (default: "text-embedding-3-large")EMBEDDING_BASE_URL
: Base URL for the embedding API (optional)LLM_NAME
: Name of the LLM model to use (default: "gpt-4o-mini")LLM_BASE_URL
: Base URL for the LLM API (optional)OPENAI_API_KEY
: OpenAI API key (required)
Memory Management Configuration
The server includes automatic resource management features:
- Session TTL: Automatically removes session directories after a specified number of days of inactivity.
Set using the
session_ttl_days
configuration parameter (default: None - disabled). - Instance TTL: Automatically offloads HippoRAG instances from memory after a specified period of inactivity.
Set using the
instance_ttl_minutes
configuration parameter (default: 30 minutes).This feature helps manage memory usage by unloading inactive instances while preserving the underlying data. When an offloaded instance is accessed again, it will be automatically reloaded from disk.
Example usage:
For convenience, you can use the provided example script:
Available Tools
The MCP server provides the following tools:
- create_memory: Create a new memory for a given chat session
- store_memory: Add memory to a specific session
- retrieve_memory: Retrieve memory from a specific session
Development
Installation for Development
Running Tests
Code Style
This project uses Black for formatting, isort for import sorting, and flake8 for linting:
Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
License
This project is licensed under the MIT License - see the LICENSE file for details.
This server cannot be installed
An MCP server implementing memory solutions for data-rich applications using HippoRAG for efficient knowledge graph capabilities, enabling search across multiple sources including uploaded files.