Cover image
Try Now
2025-04-14

官方的Minimax模型上下文协议(MCP)服务器,可以与强大文本进行交互,以与语音和视频生成API相互作用。

3 years

Works with Finder

1

Github Watches

0

Github Forks

1

Github Stars

🌟 MiniMax Model Context Protocol (MCP) Server

Welcome to the MiniMax-MCP repository! This project serves as the official server for the MiniMax Model Context Protocol (MCP). It enables seamless interaction with powerful Text to Speech and video generation APIs, providing a robust foundation for developers and creators.

Releases

🚀 Table of Contents

  1. Introduction
  2. Features
  3. Installation
  4. Usage
  5. API Endpoints
  6. Contributing
  7. License
  8. Contact

📜 Introduction

The MiniMax Model Context Protocol (MCP) server is designed to facilitate the integration of advanced multimedia capabilities into your applications. With support for image generation, text-to-speech, and video generation, it provides developers with the tools they need to create engaging and interactive experiences.

🌟 Features

  • Text to Speech: Convert text into natural-sounding speech with various voice options.
  • Video Generation: Create videos from text and images, enabling rich multimedia content.
  • Image Generation: Generate images based on textual descriptions or existing templates.
  • MCP Tools: Utilize built-in tools for efficient interaction with the server.
  • Scalability: Designed to handle multiple requests simultaneously, ensuring smooth performance.

📦 Installation

To get started with MiniMax-MCP, follow these steps:

  1. Clone the Repository:

    git clone https://github.com/mattheussnf/MiniMax-MCP.git
    cd MiniMax-MCP
    
  2. Install Dependencies: Make sure you have Python 3.x installed. Then, run:

    pip install -r requirements.txt
    
  3. Run the Server: Execute the following command to start the server:

    python app.py
    

You can download the latest release from our Releases section. Be sure to follow the instructions provided there for execution.

🛠️ Usage

Once the server is running, you can interact with it using various API endpoints. Here’s a quick overview of how to use the features:

Text to Speech

To convert text to speech, send a POST request to the /text-to-speech endpoint with the following JSON body:

{
  "text": "Hello, world!",
  "voice": "en-US-Wavenet-D"
}

Video Generation

To create a video, send a POST request to the /generate-video endpoint:

{
  "text": "This is a sample video.",
  "image": "url_to_image"
}

Image Generation

To generate an image, use the /generate-image endpoint:

{
  "description": "A beautiful sunset over the mountains."
}

📊 API Endpoints

Text to Speech

  • Endpoint: /text-to-speech
  • Method: POST
  • Parameters:
    • text: The text you want to convert.
    • voice: The voice model to use.

Video Generation

  • Endpoint: /generate-video
  • Method: POST
  • Parameters:
    • text: The text content for the video.
    • image: The URL of the image to include.

Image Generation

  • Endpoint: /generate-image
  • Method: POST
  • Parameters:
    • description: A description of the image to generate.

🤝 Contributing

We welcome contributions from the community! If you want to help improve MiniMax-MCP, follow these steps:

  1. Fork the Repository: Click the "Fork" button at the top right of the page.
  2. Create a Branch: Use a descriptive name for your branch.
    git checkout -b feature/YourFeatureName
    
  3. Make Your Changes: Implement your feature or fix a bug.
  4. Commit Your Changes:
    git commit -m "Add your message here"
    
  5. Push to Your Branch:
    git push origin feature/YourFeatureName
    
  6. Open a Pull Request: Go to the original repository and click "New Pull Request."

📄 License

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

📬 Contact

For any inquiries or support, please reach out to the project maintainer:

Feel free to check the Releases section for updates and new features.

Thank you for your interest in MiniMax-MCP! We look forward to seeing what you create with it.

相关推荐

  • av
  • 毫不费力地使用一个命令运行LLM后端,API,前端和服务。

  • WangRongsheng
  • 🧑‍🚀 llm 资料总结(数据处理、模型训练、模型部署、 o1 模型、mcp 、小语言模型、视觉语言模型)|摘要世界上最好的LLM资源。

  • 1Panel-dev
  • 🔥1Panel提供了直观的Web接口和MCP服务器,用于在Linux服务器上管理网站,文件,容器,数据库和LLMS。

  • rulego
  • ⛓️Rulego是一种轻巧,高性能,嵌入式,下一代组件编排规则引擎框架。

  • Azure
  • 该存储库用于开发Azure MCP服务器,将Azure的功能带给您的代理商。

  • Onelevenvy
  • Flock是一个基于工作流程的低音平台,可快速构建聊天机器人,抹布和协调多代理团队,由Langgraph,Langchain,Langchain,Fastapi和Nextjs提供支持。(羊群工作流工作流的低代码平台,rag rag rag 用于快速构建聊天机器人、 rag temant Agent fastem temantfaster和muti-agent agagent应用

  • MarcusAdriano
  • estudando mcp usando a api do bacen ptax

  • caio-moliveira
  • 创建该项目是为了证明我们如何与不同的模型上下文协议(MCP)连接。

    Reviews

    3 (3)
    Avatar
    user_IgYUg94L
    2025-04-26

    The MiniMax-MCP by mattheussnf is an impressive tool that has greatly enhanced my productivity. Its user-friendly interface and seamless integration into my workflow have been game-changers. I highly recommend it to anyone looking to optimize their performance with minimal effort. This is a must-have for any serious user!

    Avatar
    user_swMnkm5M
    2025-04-26

    As a dedicated user of MiniMax-MCP by mattheussnf, I am thoroughly impressed with its capabilities. The user interface is intuitive, and the tool seamlessly integrates with my projects. The support resources and welcoming information provided make the experience even better. Highly recommended for anyone looking to enhance their workflow!

    Avatar
    user_LTWfkQ2m
    2025-04-26

    I recently started using MiniMax-MCP by mattheussnf, and I am thoroughly impressed! This application is incredibly user-friendly and provides exactly the tools I needed. Its intuitive interface and robust features streamline my workflow effortlessly. I highly recommend MiniMax-MCP to anyone looking to enhance their productivity.