Qwen3 MCP Server
Multi-model MCP server enabling code generation, visual analysis, and complex reasoning via Qwen3 models.
README
Qwen3 MCP Server
A Model Context Protocol (MCP) server ecosystem providing access to multiple AI models optimized for different tasks: code generation, vision analysis, and complex reasoning.
🚀 Quick Start
# Automated setup
./setup.sh
# Start default server
python src/main.py
# Or use ephemeral model switching
ask-qwen3 "Write a Python function" # Code generation
ask-vision "Analyze this image" # Visual analysis
ask-ministral "Solve this equation" # Complex reasoning
📚 Documentation
Essential Guides
- Setup Guide - Complete installation and configuration
- Usage Guide - Workflows, examples, and best practices
- Models Reference - Model capabilities and configurations
- Agent Guide - Warp agent integration guidance
Quick Navigation
- 🏗️ Getting Started: Setup Guide → Usage Guide
- 🤖 Model Selection: See Models Reference
- 🔧 Troubleshooting: Check Setup Guide or Usage Guide
- 🎯 Specific Tasks: Browse Usage Guide
🌟 Features
Multi-Model Ecosystem
- Qwen3-Coder-Next: Code generation, debugging, technical writing
- Qwen3-VL-8B: Image analysis, UI review, document OCR
- Qwen3-30B: Complex reasoning with thinking mode
- Ministral-3-14B: Mathematical reasoning and logical analysis
Flexible Hosting
- Ollama: Local model serving (recommended)
- HTTP API: Remote model endpoints
- Transformers: Direct model loading
- Ephemeral Switching: Dynamic model selection
Developer Experience
- MCP Compliance: Full Model Context Protocol support
- Shell Integration: Quick aliases and commands
- Warp Integration: Native Warp agent support
- Multi-Transport: stdio and HTTP transports
- Thinking Mode: Detailed reasoning visualization
🎯 Use Cases
| Task | Recommended Model | Command |
|---|---|---|
| Code Review | Qwen3-Coder | ask-qwen3 "Review this code" |
| UI Analysis | Qwen3-Vision | ask-vision "Analyze this screenshot" |
| Math Problems | Ministral | ask-ministral "Solve step-by-step" |
| System Design | Qwen3-30B | python src/main.py --enable-thinking |
| Document OCR | Qwen3-Vision | ask-vision "Extract text from image" |
| Algorithm Design | Qwen3-Coder | ask-qwen3 "Implement data structure" |
⚡ Quick Commands
Model Switching
mcp-qwen3 # Code-focused development
mcp-vision # Visual analysis tasks
mcp-ministral # Reasoning and mathematics
mcp-all # Enable all models
mcp-clean # Reset to clean state
One-Shot Tasks
ask-qwen3 "Write a REST API endpoint"
ask-vision "What's wrong with this UI?"
ask-ministral "Prove this theorem"
Server Management
# Start with specific model
python src/main.py --model-method ollama --ollama-model qwen3:30b-a3b
# Start with HTTP endpoint
python src/main.py --model-method http --http-model qwen/qwen3-coder-next
# Enable debug logging
python src/main.py --log-level DEBUG
🔧 System Requirements
- Python: 3.10+ (3.12+ recommended)
- Memory: 16GB+ RAM (32GB+ for 30B model)
- Network: Access to HTTP endpoints or Ollama service
- OS: macOS, Linux, Windows
- Optional: CUDA-compatible GPU for Transformers method
🚦 Health Check
# Check system status
mcp-list
# Test specific model
ask-ministral "Hello, are you working?"
# Verify endpoints
curl -s http://localhost:1234/v1/models
📁 Project Structure
qwen3-mcp-server/
├── docs/ # 📚 Comprehensive documentation
│ ├── SETUP.md # Installation and configuration
│ ├── USAGE.md # Usage patterns and examples
│ └── MODELS.md # Model reference and capabilities
├── src/ # 🔧 Core implementation
│ ├── main.py # Entry point and CLI
│ ├── server.py # MCP server implementation
│ ├── model_interface.py # Model hosting abstractions
│ └── config.py # Configuration management
├── config/ # ⚙️ Model configurations
│ ├── qwen3-coder-http.json
│ ├── qwen3-vl-8b-http.json
│ └── ministral-3-14b-reasoning-http.json
├── scripts/ # 🤖 Automation scripts
│ └── switch-model.sh # Model switching logic
├── AGENTS.md # 🤖 Warp agent guidance
├── setup.sh # 🚀 Automated setup
└── requirements.txt # 📦 Python dependencies
## 📄 License
MIT License - see [LICENSE](LICENSE) file for details.
## 🙏 Acknowledgments
- [Model Context Protocol](https://modelcontextprotocol.io/) by Anthropic
- [Qwen Team](https://github.com/QwenLM) for the Qwen3 models
- [Ollama](https://ollama.ai/) for local model hosting
- [Mistral AI](https://mistral.ai/) for the Ministral reasoning model
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