Graphiti MCP Pro

Graphiti MCP Pro

An enhanced memory repository MCP service that builds and queries temporally-aware knowledge graphs from user interactions and data. Features asynchronous parallel processing, task management, broader AI model compatibility, and a comprehensive visual management interface.

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Graphiti MCP Pro

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About Graphiti

Graphiti is a framework for building and querying temporally-aware knowledge graphs, specifically tailored for AI agents operating in dynamic environments. Unlike traditional retrieval-augmented generation (RAG) methods, Graphiti continuously integrates user interactions, structured and unstructured enterprise data, and external information into a coherent, queryable graph. The framework supports incremental data updates, efficient retrieval, and precise historical queries without requiring complete graph recomputation, making it suitable for developing interactive, context-aware AI applications.

This project is an enhanced memory repository MCP service and management platform based on Graphiti. Compared to the original project's MCP service, it offers the following core advantages: enhanced core capabilities, broader AI model compatibility, and comprehensive visual management interface.

Features

Enhanced Core Capabilities

Asynchronous Parallel Processing

Adding memories is the core functionality of the MCP service. We have introduced an asynchronous parallel processing mechanism based on the original implementation. The same group ID (such as different development projects) can execute up to 5 adding memory tasks in parallel, significantly improving processing efficiency.

Task Management Tools

Four new MCP tools have been added for managing add_memory tasks:

  • list_add_memory_tasks - List all add_memory tasks
  • get_add_memory_task_status - Get add_memory task status
  • wait_for_add_memory_task - Wait for add_memory task completion
  • cancel_add_memory_task - Cancel add_memory task

Unified Configuration Management

Optimized configuration management to resolve inconsistencies between command-line parameters, environment variables, and management backend database configurations.

[!NOTE] When the management backend is enabled, MCP service parameters in the .env environment configuration file only take effect during the initial startup. Subsequent configurations will be based on parameters in the management backend database.

Broader AI Model Compatibility and Flexibility

Enhanced Model Compatibility

Through integration with the instructor library, model compatibility has been significantly improved. Now supports various models such as DeepSeek, Qwen, and even locally run models through Ollama, vLLM, as long as they provide OpenAI API compatible interfaces.

Separated Model Configuration

The original unified LLM configuration has been split into three independent configurations, allowing flexible combinations based on actual needs:

  • Large Model (LLM): Responsible for entity and relationship extraction
  • Small Model (Small LLM): Handles entity attribute summarization, relationship deduplication, reranking, and other lightweight tasks
  • Embedding Model (Embedder): Dedicated to text vectorization

[!NOTE] When configuring the embedding model, note that its API path differs from the two LLMs above. LLMs use the chat completion path {base_url}/chat/completions, while text embedding uses {base_url}/embeddings. If you select "Same as Large Model" in the management backend, ensure your configured large model supports text embedding.

Additionally, if you run the service via docker compose while the LLM or embedding model is running locally, the base_url needs to be configured as http://host.docker.internal:{port}, where the port should be adjusted according to your local running port.

Comprehensive Management Platform

manager-ui-en

To provide better user experience and observability, we have developed a complete management backend and Web UI. Through the management interface, you can:

  • Service Control: Start, stop, restart MCP service
  • Configuration Management: Real-time configuration updates and adjustments
  • Usage Monitoring: View detailed token usage statistics
  • Log Viewing: Real-time and historical log queries

Getting Started

Running with Docker Compose (Recommended)

  1. Clone Project

    git clone http://github.com/itcook/graphiti-mcp-pro
    # or git clone git@github.com:itcook/graphiti-mcp-pro.git
    cd graphiti-mcp-pro
    
  2. Configure Environment Variables (Optional)

    # Copy example configuration file
    mv .env.example.en .env
    # Edit .env file according to the instructions
    
  3. Start Services

    docker compose up -d
    

[!TIP]

If the project has updates and you need to rebuild the image, use docker compose up -d --build.

Rest assured, data will be persistently saved in the external database and will not be lost.

  1. Access Management Interface Default address: http://localhost:6062

Manual Installation

[!NOTE] Prerequisites:

  1. Python 3.10+ and uv project manager
  2. Node.js 20+
  3. Accessible Neo4j 5.26+ database service
  4. AI model service
  1. Clone Project

    git clone http://github.com/itcook/graphiti-mcp-pro
    # or git clone git@github.com:itcook/graphiti-mcp-pro.git
    cd graphiti-mcp-pro
    
  2. Install Dependencies

    uv sync
    
  3. Configure Environment Variables

    # Copy example configuration file
    mv .env.example.en .env
    # Edit .env file according to the instructions
    
  4. Run MCP Service

    # Run service with management backend
    uv run main.py -m
    # Or run MCP service only
    # uv run main.py
    
  5. Build and Run Management Frontend

    Enter frontend directory and install dependencies:

    cd manager/frontend
    pnpm install  # or npm install / yarn
    

    Build and run frontend:

    pnpm run build   # or npm run build / yarn build
    pnpm run preview # or npm run preview / yarn preview
    

    Access management interface: http://localhost:6062

Important Notes

Known Limitations

  • 🔒 Security Notice: The management backend does not implement authorization access mechanisms. DO NOT expose the service on public servers.
  • 🧪 Test Coverage: Due to resource constraints, the project has not been thoroughly tested. Recommended for personal use only.
  • 📡 Transport Protocol: Only supports streamable-http transport protocol. Removed stdio and sse support from the original project.
  • ⚙️ Code Optimization: Some architectural designs (dependency injection, exception handling, client decoupling, etc.) still have room for optimization.

Usage Recommendations

  • Configuration Instructions: Please carefully read the setup instructions and comments in .env.example.en
  • Model Selection: If using natively supported models like GPT/Gemini/Claude and don't need detailed runtime information, consider using the original Graphiti MCP
  • Issue Feedback: Welcome to submit Issues or Pull Requests for any usage problems

Developed with assistance from 🤖 Augment Code

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