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mcp-mem0

MCP-Mem0 是一个与 Mem0 集成的模型上下文协议(MCP)服务器模板,旨在为 AI 代理提供长期记忆功能。通过语义搜索,AI 代理可以存储、检索和搜索记忆,增强其上下文理解能力。该服务器提供了三个核心功能:`save_memory` 用于存储信息,`get_all_memories` 用于检索所有记忆,`search_memories` 用于查找相关记忆。它支持多种 LLM 提供商(如 OpenAI、OpenRouter 或 Ollama),并可通过 Docker 或 Python 运行。该模板遵循最佳实践,帮助开发者构建自定义 MCP 服务器,适用于各种 MCP 兼容客户端。

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README

MCP-Mem0: Long-Term Memory for AI Agents

Mem0 and MCP Integration

A template implementation of the Model Context Protocol (MCP) server integrated with Mem0 for providing AI agents with persistent memory capabilities.

Use this as a reference point to build your MCP servers yourself, or give this as an example to an AI coding assistant and tell it to follow this example for structure and code correctness!

Overview

This project demonstrates how to build an MCP server that enables AI agents to store, retrieve, and search memories using semantic search. It serves as a practical template for creating your own MCP servers, simply using Mem0 and a practical example.

The implementation follows the best practices laid out by Anthropic for building MCP servers, allowing seamless integration with any MCP-compatible client.

Features

The server provides three essential memory management tools:

  1. save_memory: Store any information in long-term memory with semantic indexing
  2. get_all_memories: Retrieve all stored memories for comprehensive context
  3. search_memories: Find relevant memories using semantic search

Prerequisites

  • Python 3.12+
  • Supabase or any PostgreSQL database (for vector storage of memories)
  • API keys for your chosen LLM provider (OpenAI, OpenRouter, or Ollama)
  • Docker if running the MCP server as a container (recommended)

Installation

Using uv

  1. Install uv if you don't have it:

    pip install uv
    
  2. Clone this repository:

    git clone https://github.com/coleam00/mcp-mem0.git
    cd mcp-mem0
    
  3. Install dependencies:

    uv pip install -e .
    
  4. Create a .env file based on .env.example:

    cp .env.example .env
    
  5. Configure your environment variables in the .env file (see Configuration section)

Using Docker (Recommended)

  1. Build the Docker image:

    docker build -t mcp/mem0 --build-arg PORT=8050 .
    
  2. Create a .env file based on .env.example and configure your environment variables

Configuration

The following environment variables can be configured in your .env file:

| Variable | Description | Example | |----------|-------------|----------| | TRANSPORT | Transport protocol (sse or stdio) | sse | | HOST | Host to bind to when using SSE transport | 0.0.0.0 | | PORT | Port to listen on when using SSE transport | 8050 | | LLM_PROVIDER | LLM provider (openai, openrouter, or ollama) | openai | | LLM_BASE_URL | Base URL for the LLM API | https://api.openai.com/v1 | | LLM_API_KEY | API key for the LLM provider | sk-... | | LLM_CHOICE | LLM model to use | gpt-4o-mini | | EMBEDDING_MODEL_CHOICE | Embedding model to use | text-embedding-3-small | | DATABASE_URL | PostgreSQL connection string | postgresql://user:pass@host:port/db |

Running the Server

Using uv

SSE Transport

# Set TRANSPORT=sse in .env then:
uv run src/main.py

The MCP server will essentially be run as an API endpoint that you can then connect to with config shown below.

Stdio Transport

With stdio, the MCP client iself can spin up the MCP server, so nothing to run at this point.

Using Docker

SSE Transport

docker run --env-file .env -p:8050:8050 mcp/mem0

The MCP server will essentially be run as an API endpoint within the container that you can then connect to with config shown below.

Stdio Transport

With stdio, the MCP client iself can spin up the MCP server container, so nothing to run at this point.

Integration with MCP Clients

SSE Configuration

Once you have the server running with SSE transport, you can connect to it using this configuration:

{
  "mcpServers": {
    "mem0": {
      "transport": "sse",
      "url": "http://localhost:8050/sse"
    }
  }
}

Note for Windsurf users: Use serverUrl instead of url in your configuration:

{
  "mcpServers": {
    "mem0": {
      "transport": "sse",
      "serverUrl": "http://localhost:8050/sse"
    }
  }
}

Note for n8n users: Use host.docker.internal instead of localhost since n8n has to reach outside of it's own container to the host machine:

So the full URL in the MCP node would be: http://host.docker.internal:8050/sse

Make sure to update the port if you are using a value other than the default 8050.

Python with Stdio Configuration

Add this server to your MCP configuration for Claude Desktop, Windsurf, or any other MCP client:

{
  "mcpServers": {
    "mem0": {
      "command": "your/path/to/mcp-mem0/.venv/Scripts/python.exe",
      "args": ["your/path/to/mcp-mem0/src/main.py"],
      "env": {
        "TRANSPORT": "stdio",
        "LLM_PROVIDER": "openai",
        "LLM_BASE_URL": "https://api.openai.com/v1",
        "LLM_API_KEY": "YOUR-API-KEY",
        "LLM_CHOICE": "gpt-4o-mini",
        "EMBEDDING_MODEL_CHOICE": "text-embedding-3-small",
        "DATABASE_URL": "YOUR-DATABASE-URL"
      }
    }
  }
}

Docker with Stdio Configuration

{
  "mcpServers": {
    "mem0": {
      "command": "docker",
      "args": ["run", "--rm", "-i", 
               "-e", "TRANSPORT", 
               "-e", "LLM_PROVIDER", 
               "-e", "LLM_BASE_URL", 
               "-e", "LLM_API_KEY", 
               "-e", "LLM_CHOICE", 
               "-e", "EMBEDDING_MODEL_CHOICE", 
               "-e", "DATABASE_URL", 
               "mcp/mem0"],
      "env": {
        "TRANSPORT": "stdio",
        "LLM_PROVIDER": "openai",
        "LLM_BASE_URL": "https://api.openai.com/v1",
        "LLM_API_KEY": "YOUR-API-KEY",
        "LLM_CHOICE": "gpt-4o-mini",
        "EMBEDDING_MODEL_CHOICE": "text-embedding-3-small",
        "DATABASE_URL": "YOUR-DATABASE-URL"
      }
    }
  }
}

Building Your Own Server

This template provides a foundation for building more complex MCP servers. To build your own:

  1. Add your own tools by creating methods with the @mcp.tool() decorator
  2. Create your own lifespan function to add your own dependencies (clients, database connections, etc.)
  3. Modify the utils.py file for any helper functions you need for your MCP server
  4. Feel free to add prompts and resources as well with @mcp.resource() and @mcp.prompt()
help

Runtime guide

cloud

Hosted runtime

Hosted servers run from a provider-managed environment. You usually connect the MCP client to the hosted endpoint or follow the provider's authorization flow, without keeping a local process alive

  1. Open provider connection page
  2. Authorize or copy endpoint
  3. Connect from your MCP client
terminal

Local runtime / other methods

Local servers run on your own machine or infrastructure. You normally copy the server_config into your MCP client, install the required package, and provide env variables from env_schema when needed

  1. Copy server_config
  2. Install required package
  3. Fill env variables and restart client