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Dive AI 代理

Dive 是一个开源的 MCP 主机桌面应用程序,旨在无缝集成支持函数调用功能的大型语言模型(LLMs)。它兼容多种 LLM 如 ChatGPT、Anthropic、Ollama 和 OpenAI,并支持跨平台运行(Windows、MacOS、Linux)。Dive 提供多语言支持、高级 API 管理、自定义指令和自动更新机制。最新版本 v0.8.0 引入了 Python 重写的 DiveHost、增强的 LLM 设置、模型验证和改进的 MCP 配置。此外,Dive 支持通过 MCP 访问强大的工具,如 Fetch 和 Youtube-dl,并提供详细的安装和配置指南。

article

README

Dive AI Agent 🤿 🤖

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Dive is an open-source MCP Host Desktop Application that seamlessly integrates with any LLMs supporting function calling capabilities. ✨

Dive Demo

Features 🎯

  • 🌐 Universal LLM Support: Compatible with ChatGPT, Anthropic, Ollama and OpenAI-compatible models
  • 💻 Cross-Platform: Available for Windows, MacOS, and Linux
  • 🔄 Model Context Protocol: Enabling seamless MCP AI agent integration on both stdio and SSE mode
  • 🌍 Multi-Language Support: Traditional Chinese, Simplified Chinese, English, Spanish, Japanese with more coming soon
  • ⚙️ Advanced API Management: Multiple API keys and model switching support
  • 💡 Custom Instructions: Personalized system prompts for tailored AI behavior
  • 🔄 Auto-Update Mechanism: Automatically checks for and installs the latest application updates

Recent updates(2025/4/21)

  • 🚀 Dive MCP Host v0.8.0: DiveHost rewritten in Python is now a separate project at dive-mcp-host
  • ⚙️ Enhanced LLM Settings: Add, modify, delete LLM Provider API Keys and custom Model IDs
  • 🔍 Model Validation: Validate or skip validation for models supporting Tool/Function calling
  • 🔧 Improved MCP Configuration: Add, edit, and delete MCP tools directly from the UI
  • 🌍 Japanese Translation: Added Japanese language support
  • 🤖 Extended Model Support: Added Google Gemini and Mistral AI models integration

Important: Due to DiveHost migration from TypeScript to Python in v0.8.0, configuration files and chat history records will not be automatically upgraded. If you need to access your old data after upgrading, you can still downgrade to a previous version.

Download and Install ⬇️

Get the latest version of Dive: Download

For Windows users: 🪟

  • Download the .exe version
  • Python and Node.js environments are pre-installed

For MacOS users: 🍎

  • Download the .dmg version
  • You need to install Python and Node.js (with npx uvx) environments yourself
  • Follow the installation prompts to complete setup

For Linux users: 🐧

  • Download the .AppImage version
  • You need to install Python and Node.js (with npx uvx) environments yourself
  • For Ubuntu/Debian users:
    • You may need to add --no-sandbox parameter
    • Or modify system settings to allow sandbox
    • Run chmod +x to make the AppImage executable

MCP Tips

While the system comes with a default echo MCP Server, your LLM can access more powerful tools through MCP. Here's how to get started with two beginner-friendly tools: Fetch and Youtube-dl.

Set MCP

Quick Setup

Add this JSON configuration to your Dive MCP settings to enable both tools:

 "mcpServers":{
    "fetch": {
      "command": "uvx",
      "args": [
        "mcp-server-fetch",
        "--ignore-robots-txt"
      ],
      "enabled": true
    },
    "filesystem": {
      "command": "npx",
      "args": [
        "-y",
        "@modelcontextprotocol/server-filesystem",
        "/path/to/allowed/files"
      ],
      "enabled": true
    },
    "youtubedl": {
      "command": "npx",
      "args": [
        "@kevinwatt/yt-dlp-mcp"
      ],
      "enabled": true
    }
  }

Using SSE Server for MCP

You can also connect to an external MCP server via SSE (Server-Sent Events). Add this configuration to your Dive MCP settings:

{
  "mcpServers": {
    "MCP_SERVER_NAME": {
      "enabled": true,
      "transport": "sse",
      "url": "YOUR_SSE_SERVER_URL"
    }
  }
}

Additional Setup for yt-dlp-mcp

yt-dlp-mcp requires the yt-dlp package. Install it based on your operating system:

Windows

winget install yt-dlp

MacOS

brew install yt-dlp

Linux

pip install yt-dlp

Build 🛠️

See BUILD.md for more details.

Connect With Us 🌐

help

运行方式说明

cloud

托管运行

托管运行通常表示这个 MCP Server 由服务方环境承载,用户一般按页面提供的连接方式或授权流程接入,不需要在本地长期启动一个 MCP 进程

  1. 打开服务方连接页
  2. 完成授权或复制端点
  3. 在 MCP 客户端中连接
terminal

本地运行 / 其它方式

本地运行通常需要用户在自己的电脑或服务器上安装依赖,把 server_config 复制到 MCP 客户端,并按 env_schema 补齐环境变量、密钥或其它配置

  1. 复制 server_config
  2. 安装所需依赖
  3. 补齐环境变量后重启客户端