Sponsored by Deepsite.site

🌐 Ping MCP: A Model Context Protocol Server for Solana Blockchain

Created By
leomrodrigues7 months ago
A Model Context Protocol server that facilitates interaction with the Solana blockchain, built using the Ping Agent Kit. (
Content

🌐 Ping MCP: A Model Context Protocol Server for Solana Blockchain

Ping MCP GitHub Repo stars

Welcome to the Ping MCP repository! This project provides a Model Context Protocol server designed to enhance interactions with the Solana blockchain. Built using the Ping Agent Kit, it aims to simplify the process of building applications that require efficient communication with the blockchain.

Table of Contents

Introduction

The Solana blockchain is known for its speed and efficiency, making it a popular choice for decentralized applications. The Ping MCP server acts as a bridge, allowing developers to interact seamlessly with Solana's features. By utilizing the Ping Agent Kit, we ensure that the server is both robust and easy to use.

Features

  • Easy Integration: Quickly connect your applications to the Solana blockchain.
  • High Performance: Designed to handle numerous requests with minimal latency.
  • Modular Architecture: Easily extendable to meet specific project needs.
  • Secure Communication: Implements best practices for data integrity and security.

Getting Started

To get started with the Ping MCP server, you will need to have a basic understanding of how blockchain technology works, particularly the Solana blockchain. This project is aimed at developers looking to create applications that interact with blockchain data.

Prerequisites

Before you begin, ensure you have the following installed:

  • Node.js (version 14 or higher)
  • npm (Node package manager)
  • Access to the Solana blockchain

Installation

To install the Ping MCP server, follow these steps:

  1. Clone the repository:

    git clone https://github.com/leomrodrigues/ping-mcp.git
    
  2. Navigate into the project directory:

    cd ping-mcp
    
  3. Install the required dependencies:

    npm install
    
  4. Configure the server settings in the .env file. You can find a sample .env.example file in the root directory.

  5. Start the server:

    npm start
    

Usage

Once the server is running, you can interact with it using HTTP requests. Below are some examples of how to use the server effectively.

Example API Requests

Fetching Data

To fetch data from the Solana blockchain, send a GET request to the following endpoint:

GET /api/data

Sending Transactions

To send a transaction to the blockchain, use a POST request:

POST /api/transaction
Content-Type: application/json

{
  "transaction": {
    // transaction details here
  }
}

API Documentation

For detailed information about the available endpoints and their parameters, please refer to the API Documentation.

Contributing

We welcome contributions to the Ping MCP project! If you would like to contribute, please follow these steps:

  1. Fork the repository.
  2. Create a new branch (git checkout -b feature/YourFeature).
  3. Make your changes and commit them (git commit -m 'Add new feature').
  4. Push to the branch (git push origin feature/YourFeature).
  5. Open a pull request.

Your contributions help improve the project and make it more useful for everyone.

License

This project is licensed under the MIT License. See the LICENSE file for details.

For the latest releases and updates, visit the Releases section. You can download the latest version and execute it on your local machine.

Additionally, you can always check the Releases section for more information on the project updates.

Conclusion

Thank you for checking out the Ping MCP repository. We hope this project helps you in your journey to build applications on the Solana blockchain. If you have any questions or need assistance, feel free to reach out through the issues section of this repository. Happy coding!

Recommend Servers
TraeBuild with Free GPT-4.1 & Claude 3.7. Fully MCP-Ready.
Howtocook Mcp基于Anduin2017 / HowToCook (程序员在家做饭指南)的mcp server,帮你推荐菜谱、规划膳食,解决“今天吃什么“的世纪难题; Based on Anduin2017/HowToCook (Programmer's Guide to Cooking at Home), MCP Server helps you recommend recipes, plan meals, and solve the century old problem of "what to eat today"
MiniMax MCPOfficial MiniMax Model Context Protocol (MCP) server that enables interaction with powerful Text to Speech, image generation and video generation APIs.
DeepChatYour AI Partner on Desktop
Amap Maps高德地图官方 MCP Server
Serper MCP ServerA Serper MCP Server
ChatWiseThe second fastest AI chatbot™
MCP AdvisorMCP Advisor & Installation - Use the right MCP server for your needs
AiimagemultistyleA Model Context Protocol (MCP) server for image generation and manipulation using fal.ai's Stable Diffusion model.
CursorThe AI Code Editor
Tavily Mcp
TimeA Model Context Protocol server that provides time and timezone conversion capabilities. This server enables LLMs to get current time information and perform timezone conversions using IANA timezone names, with automatic system timezone detection.
Context7Context7 MCP Server -- Up-to-date code documentation for LLMs and AI code editors
WindsurfThe new purpose-built IDE to harness magic
EdgeOne Pages MCPAn MCP service designed for deploying HTML content to EdgeOne Pages and obtaining an accessible public URL.
Baidu Map百度地图核心API现已全面兼容MCP协议,是国内首家兼容MCP协议的地图服务商。
BlenderBlenderMCP connects Blender to Claude AI through the Model Context Protocol (MCP), allowing Claude to directly interact with and control Blender. This integration enables prompt assisted 3D modeling, scene creation, and manipulation.
Visual Studio Code - Open Source ("Code - OSS")Visual Studio Code
Jina AI MCP ToolsA Model Context Protocol (MCP) server that integrates with Jina AI Search Foundation APIs.
Playwright McpPlaywright MCP server
Zhipu Web SearchZhipu Web Search MCP Server is a search engine specifically designed for large models. It integrates four search engines, allowing users to flexibly compare and switch between them. Building upon the web crawling and ranking capabilities of traditional search engines, it enhances intent recognition capabilities, returning results more suitable for large model processing (such as webpage titles, URLs, summaries, site names, site icons, etc.). This helps AI applications achieve "dynamic knowledge acquisition" and "precise scenario adaptation" capabilities.