A favicon of Memory Tool

Memory Tool

Store and retrieve user-specific memories to maintain context and make informed decisions based on past interactions. Utilize a simple API to add and search memories with relevance scoring, enhancing your application's ability to remember user preferences and interactions.

Installation

Installing for Claude Desktop

Manual Configuration Required

This MCP server requires manual configuration. Run the command below to open your configuration file:

npx mcpbar@latest edit -c claude

This will open your configuration file where you can add the Memory Tool MCP server manually.

MCP Server with Mem0 for Managing Coding Preferences

This demonstrates a structured approach for using an MCP server with mem0 to manage coding preferences efficiently. The server can be used with Cursor and provides essential tools for storing, retrieving, and searching coding preferences.

Installation

  1. Clone this repository
  2. Initialize the uv environment:
uv venv
  1. Activate the virtual environment:
source .venv/bin/activate
  1. Install the dependencies using uv:
# Install in editable mode from pyproject.toml
uv pip install -e .
  1. Update .env file in the root directory with your mem0 API key:
MEM0_API_KEY=your_api_key_here

Usage

  1. Start the MCP server:
uv run main.py
  1. In Cursor, connect to the SSE endpoint, follow this doc for reference:
http://0.0.0.0:8080/sse
  1. Open the Composer in Cursor and switch to Agent mode.

Demo with Cursor

https://github.com/user-attachments/assets/56670550-fb11-4850-9905-692d3496231c

Features

The server provides three main tools for managing code preferences:

  1. add_coding_preference: Store code snippets, implementation details, and coding patterns with comprehensive context including:

    • Complete code with dependencies
    • Language/framework versions
    • Setup instructions
    • Documentation and comments
    • Example usage
    • Best practices
  2. get_all_coding_preferences: Retrieve all stored coding preferences to analyze patterns, review implementations, and ensure no relevant information is missed.

  3. search_coding_preferences: Semantically search through stored coding preferences to find relevant:

    • Code implementations
    • Programming solutions
    • Best practices
    • Setup guides
    • Technical documentation

Why?

This implementation allows for a persistent coding preferences system that can be accessed via MCP. The SSE-based server can run as a process that agents connect to, use, and disconnect from whenever needed. This pattern fits well with "cloud-native" use cases where the server and clients can be decoupled processes on different nodes.

Server

By default, the server runs on 0.0.0.0:8080 but is configurable with command line arguments like:

uv run main.py --host <your host> --port <your port>

The server exposes an SSE endpoint at /sse that MCP clients can connect to for accessing the coding preferences management tools.

Share:
Details:
  • Stars


    281
  • Forks


    46
  • Last commit


    1 month ago
  • Repository age


    4 months
View Repository

Auto-fetched from GitHub .

MCP servers similar to Memory Tool:

 

 
 
  • Stars


  • Forks


  • Last commit


 

 
 
  • Stars


  • Forks


  • Last commit


 

 
 
  • Stars


  • Forks


  • Last commit