Qwen3-Coder MCP Server
Integrates the Qwen3-Coder 30B parameter model with Claude Code through 5 specialized tools for code review, explanation, generation, bug fixing, and optimization. Optimized for 64GB RAM systems with advanced performance settings including flash attention and parallel processing.
README
Qwen3-Coder MCP Server for Claude Code
This setup integrates Qwen3-Coder (30B parameter model) with Claude Code via the Model Context Protocol (MCP), optimized for 64GB RAM systems.
Features
- Qwen3-Coder 30B: Latest and most powerful Qwen Coder model with exceptional coding capabilities
- 64GB RAM Optimized: Configuration tuned for maximum performance on high-memory systems
- MCP Integration: Seamless integration with Claude Code through 5 specialized tools
- Advanced Settings: Flash attention, optimized KV cache, and parallel processing
Optimization Settings
The setup includes these optimizations for your 64GB RAM:
OLLAMA_NUM_PARALLEL=8: Handle 8 parallel requestsOLLAMA_MAX_LOADED_MODELS=4: Keep 4 models in memory simultaneouslyOLLAMA_FLASH_ATTENTION=1: Enable efficient attention mechanismOLLAMA_KV_CACHE_TYPE=q8_0: High-quality 8-bit cacheOLLAMA_KEEP_ALIVE=24h: Keep models loaded for 24 hours
Available Tools
1. qwen3_code_review
Reviews code for quality, bugs, and best practices.
Parameters:
code(required): The code to reviewlanguage(optional): Programming language
2. qwen3_code_explain
Provides detailed explanations of how code works.
Parameters:
code(required): The code to explainlanguage(optional): Programming language
3. qwen3_code_generate
Generates new code based on requirements.
Parameters:
prompt(required): Description of what to generatelanguage(optional): Target programming language
4. qwen3_code_fix
Fixes bugs and issues in existing code.
Parameters:
code(required): The buggy codeerror(optional): Error message or descriptionlanguage(optional): Programming language
5. qwen3_code_optimize
Optimizes code for performance, memory, or readability.
Parameters:
code(required): The code to optimizecriteria(optional): Optimization criterialanguage(optional): Programming language
Quick Start
1. Start the Optimized Server
cd /Users/keith/qwencoder
./start-qwen3-optimized.sh
2. Restart Claude Code
Close and reopen Claude Code to load the MCP server configuration.
3. Use in Claude Code
The tools will be automatically available in your Claude Code sessions. You can use them by referencing the tool names in your conversations.
Manual Commands
Start Ollama with optimizations:
OLLAMA_NUM_PARALLEL=8 OLLAMA_MAX_LOADED_MODELS=4 OLLAMA_FLASH_ATTENTION=1 OLLAMA_KV_CACHE_TYPE=q8_0 ollama serve
Test the model directly:
ollama run qwen3-coder:30b "Write a Python function to calculate factorial"
Test the MCP server:
node qwen3-mcp-server.js
Troubleshooting
If Claude Code doesn't see the MCP server:
- Check that the config.json has the correct path
- Restart Claude Code completely
- Verify Ollama is running:
ollama list
If the model is slow:
- Ensure you have enough RAM available
- Check that OLLAMA_FLASH_ATTENTION=1 is set
- Monitor system resources with Activity Monitor
If tools aren't working:
- Test Ollama directly:
ollama run qwen3-coder:30b "test" - Check MCP server logs in Console.app
- Verify the Node.js dependencies are installed
Files Structure
/Users/keith/qwencoder/
├── qwen3-mcp-server.js # MCP server implementation
├── package.json # Node.js dependencies
├── start-qwen3-optimized.sh # Optimized startup script
└── README.md # This file
Configuration Files
- Claude Config:
/Users/keith/Library/Application Support/Claude/config.json - MCP Server:
/Users/keith/qwencoder/qwen3-mcp-server.js
Performance Notes
With 64GB RAM, you can:
- Keep multiple large models loaded simultaneously
- Handle numerous parallel requests
- Use high-quality cache settings for better performance
- Run for extended periods without memory issues
The Qwen3-Coder 30B model uses approximately 18GB of RAM when loaded, leaving plenty of room for other applications and additional models.
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