Cover image
Try Now
2025-03-31

Controle su MBOT2 con un combo de potencia: MQTT+MCP+LLM

3 years

Works with Finder

1

Github Watches

1

Github Forks

3

Github Stars

MBotMcp

https://github.com/user-attachments/assets/a11d68c5-dc52-4dab-9741-bc1cf47e2ec9

This project demonstrates how to control an mBot2 robot using Spring AI and Model Context Protocol (MCP). With this setup, AI models can control a physical robot through simple natural language commands like "explore" or "turn left".

Overview

The system consists of:

  1. A Spring Boot application that implements the Model Context Protocol
  2. An MQTT broker for message passing
  3. Python code running on the mBot2 robot
  4. AI client integration capabilities

The Spring application exposes robot control commands as AI-callable functions, allowing AI models to control the physical robot through natural language.

Prerequisites

  • Java 21
  • Maven
  • mBot2 robot and mBlock IDE
  • MQTT broker (can run in Docker)
  • Basic Java knowledge

Setup Instructions

1. MQTT Broker Setup (Optional, if you don't have one)

Run the included Docker Compose file to set up the MQTT broker:

cd mbotmcp/assets
docker-compose up -d

This creates a message queue that will relay commands between your app and robot.

2. Configure Spring Boot Application

Set the following environment variables:

MQTT_USERNAME=your_username # leave blank if not configured
MQTT_PASSWORD=your_password # leave blank if not configured
MQTT_SERVER_URI=tcp://your_server:1883

These tell your app how to connect to the MQTT broker.

3. mBot2 Setup

To upload the Python script to your mBot2:

  1. Connect your mBot2 to your computer via USB
  2. Open the mBlock IDE on your computer
  3. Click on the "File" menu and select "Open"
  4. Navigate to the /assets directory in the repository
  5. Open the mbot-mqtt.py file
  6. Modify the script to include your personal WiFi and MQTT configurations:
    ssid = "<your wifi ssid>"
    ssid_password = "<your wifi password>"
    mqtt_ip = "<ip of the mqtt broker>"
    mqtt_port = 1883
    mqtt_user = "<your mqtt username>"
    mqtt_password = "<your mqtt password>"
    
  7. Upload the script to your mBot2
  8. Power on your mBot2

4. Build the Spring Boot App

mvn clean package

Testing the Setup

  1. Ensure your MQTT broker is running
  2. Power on your mBot2 and ensure it's connected to WiFi
  3. Run the test client:
    mvn test -Dtest=ClientStdioTest
    
  4. Watch your robot perform the "beep" command with blue LED lights!

Available Robot Commands

The BotService class defines all the MCP tools, your robot can understand:

  • mbotExplore() - Execute the 'explore' routine
  • mbotStop() - Stop the robot
  • mbotBeep() - Make the robot beep
  • mbotLeft() - Turn the robot left
  • mbotRight() - Turn the robot right
  • mbotForward() - Move the robot forward
  • mbotBackward() - Move the robot backward

Integration with AI Models

Once everything is working, you can integrate with LLM clients that support MCP. Personally, I would recommend Goose for this purpose. Just point these clients to your server, and they can autonomously control your robot based on natural language requests.

Example natural language commands:

  • "Explore the room"
  • "Turn right and go forward"
  • "Make a beep sound"

How It Works

  1. The Spring application exposes robot commands as tools using the @Tool annotation
  2. The MCP server in Spring connects these tools to the outside world
  3. When an AI wants to control your robot, it calls these methods through the protocol
  4. Commands are sent via MQTT to the robot
  5. The robot executes the commands based on the received message

Disclaimer

If your robot starts planning world domination, the author accepts no responsibility. Just unplug it and run! 😂

License

MIT License

相关推荐

  • NiKole Maxwell
  • I craft unique cereal names, stories, and ridiculously cute Cereal Baby images.

  • Joshua Armstrong
  • Confidential guide on numerology and astrology, based of GG33 Public information

  • https://suefel.com
  • Latest advice and best practices for custom GPT development.

  • Emmet Halm
  • Converts Figma frames into front-end code for various mobile frameworks.

  • Elijah Ng Shi Yi
  • Advanced software engineer GPT that excels through nailing the basics.

  • Yasir Eryilmaz
  • AI scriptwriting assistant for short, engaging video content.

  • Daren White
  • A supportive coach for mastering all Spanish tenses.

  • J. DE HARO OLLE
  • Especialista en juegos de palabras en varios idiomas.

  • albert tan
  • Japanese education, creating tailored learning experiences.

  • https://maiplestudio.com
  • Find Exhibitors, Speakers and more

  • apappascs
  • Descubra la colección más completa y actualizada de servidores MCP en el mercado. Este repositorio sirve como un centro centralizado, que ofrece un extenso catálogo de servidores MCP de código abierto y propietarios, completos con características, enlaces de documentación y colaboradores.

  • ShrimpingIt
  • Manipulación basada en Micrypthon I2C del expansor GPIO de la serie MCP, derivada de AdaFruit_MCP230xx

  • zhaoyunxing92
  • 本项目是一个钉钉 MCP (Protocolo del conector de mensajes )服务 , 提供了与钉钉企业应用交互的 API 接口。项目基于 Go 语言开发 支持员工信息查询和消息发送等功能。 支持员工信息查询和消息发送等功能。

  • pontusab
  • La comunidad de cursor y windsurf, encontrar reglas y MCP

    Reviews

    5 (1)
    Avatar
    user_8L4IGCuf
    2025-04-15

    mcp-frappe by tuanle96 is a fantastic application! It's intuitive and user-friendly, making my tasks so much easier. The URL setup was seamless, and the welcome information was helpful to get started. Highly recommend for anyone in need of a reliable solution. More details can be found at the provided link.