Minecraft MCP服务器文档索引

Created By
rice-awaa year ago
Overview

What is mc-mcp-server?

mc-mcp-server is an integrated system for managing AI tools and handling interactions with Minecraft through a WebSocket and script API. It consists of two core components: AIAgent (MCP-server) for managing AI tools and the MC server for game interactions.

How to use mc-mcp-server?

To use mc-mcp-server, follow these steps:

  1. Read the project requirements document to understand the project overview.
  2. Refer to the technical architecture document for system design.
  3. Check the WebSocket communication specification for protocol and API integration.
  4. Learn about the MCP integration specification for LLM integration and request paths.
  5. Install dependencies and set environment variables as instructed in the development guide.
  6. Start the MC server and connect your Minecraft client to it.

Key features of mc-mcp-server?

  • Integration of AI tools with Minecraft gameplay.
  • Support for external MCP client calls and in-game chat interactions.
  • Debug mode for enhanced logging and troubleshooting.
  • Comprehensive documentation for setup and usage.

Use cases of mc-mcp-server?

  1. Enabling AI-driven interactions within Minecraft.
  2. Facilitating real-time communication between external applications and Minecraft.
  3. Providing a platform for developers to create and test AI tools in a gaming environment.

FAQ from mc-mcp-server?

  • Can mc-mcp-server be used for other games?

Currently, mc-mcp-server is designed specifically for Minecraft, but the architecture can be adapted for other games with similar interaction models.

  • Is mc-mcp-server open-source?

Yes! mc-mcp-server is open-source and available on GitHub for contributions and modifications.

  • How can I contribute to mc-mcp-server?

Follow the contribution guidelines in the documentation to ensure code quality and consistency.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
rice-awa
Star
0
Language
Python
License
-

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