MCP Prompt Optimizer
Optimize prompts with research-backed strategies for 15-74% performance improvements.
MCP Prompt Optimizer
A professional-grade MCP (Model Context Protocol) server that provides cutting-edge prompt optimization tools with research-backed strategies delivering 15-74% performance improvements.
✨ Features
🎯 Basic Optimization Strategies
- Clarity: Simplifies prompts for directness and precision
- Specificity: Adds detailed constraints and requirements
- Chain of Thought: Incorporates step-by-step reasoning
- Few-Shot: Includes example formats for guidance
- Structured Output: Defines clear output organization
- Role-Based: Adds expert role context
🚀 Advanced Optimization Strategies
- Tree of Thoughts (ToT): Multi-path reasoning with 74% success rate on complex tasks
- Constitutional AI: Self-critique and alignment with safety principles
- Automatic Prompt Engineer (APE): AI-discovered optimal instruction patterns
- Meta-Prompting: AI generates its own optimized prompts
- Self-Refine: Iterative improvement with 20% performance gains
- TEXTGRAD: Natural language feedback as optimization gradients
- Medprompt: Multi-technique ensemble achieving 90%+ accuracy
- PromptWizard: Feedback-driven self-evolving prompts
📋 Professional Domain Templates
Production-ready templates across 11 domains:
- Business Analysis: Competitive analysis frameworks
- Product Management: User research synthesis
- Content Creation: Technical blog posts with SEO optimization
- Development: Comprehensive code review checklists
- Communication: Stakeholder updates and project reports
- Strategy: OKR planning frameworks
- Operations: Standard Operating Procedures (SOPs)
- Legal: Contract termination and compliance
- Customer Experience: Feedback surveys and insights
- Data Analysis: Data insights and reporting
- Meeting Management: Effective meeting agendas
🛠️ Installation
Quick Setup
# Clone the repository
git clone <repository-url>
cd mcp-prompt-optimizer
# Create virtual environment (recommended)
python3 -m venv venv
source venv/bin/activate # On Windows: venv\Scripts\activate
# Install dependencies
./install.sh
# Or install manually
pip install -r requirements.txt
# Configure Claude Desktop
python3 setup_interactive.py
Manual Configuration
Add to your Claude Desktop configuration file:
macOS: ~/Library/Application Support/Claude/claude_desktop_config.json
Windows: %APPDATA%\Claude\claude_desktop_config.json
Linux: ~/.config/Claude/claude_desktop_config.json
{
"mcpServers": {
"prompt-optimizer": {
"command": "python3",
"args": ["/path/to/mcp-prompt-optimizer/prompt_optimizer.py"],
"env": {}
}
}
}
🎮 Usage
Basic Commands
# Analyze prompt quality
"Analyze this prompt: write a blog post about AI"
# Apply specific optimization
"Optimize this prompt using chain_of_thought: explain machine learning"
# Auto-select best strategy
"Auto-optimize: help me debug this code"
# Get domain template
"Get domain template for code_review_checklist"
Advanced Commands
# Use Tree of Thoughts for complex problems
"Apply advanced optimization with tree_of_thoughts: design a microservices architecture"
# Use Constitutional AI for safety-critical tasks
"Apply advanced optimization with constitutional_ai: create content moderation guidelines"
# Use Medprompt for high-accuracy classification
"Apply advanced optimization with medprompt: categorize customer support tickets"
# List available templates
"List all domain templates"
🏗️ Architecture
mcp-prompt-optimizer/
├── prompt_optimizer.py # Main MCP server
├── advanced_strategies.py # Research-backed optimization strategies
├── domain_templates.py # Professional domain templates
├── examples.py # Usage examples and demonstrations
├── setup_interactive.py # Automated setup script
└── README.md # This file
🧪 Testing
# Run basic tests
./test.sh
# Run usage examples
python3 examples.py
📊 Performance Benchmarks
| Strategy | Use Case | Performance Improvement |
|---|---|---|
| Tree of Thoughts | Complex reasoning | 70-74% success rate |
| Medprompt | Classification tasks | 90%+ accuracy |
| Self-Refine | Iterative improvement | 20% per iteration |
| Constitutional AI | Safety alignment | High compliance |
| Chain of Thought | Step-by-step tasks | 15-25% improvement |
🔧 Available Tools
Core Tools
- analyze_prompt: Analyzes prompt quality and identifies issues
- optimize_prompt: Applies specific optimization strategies
- auto_optimize: Automatically selects optimal strategy
- get_prompt_template: Returns basic templates
Advanced Tools
- advanced_optimize: Applies research-backed strategies
- get_domain_template: Returns professional domain templates
- list_domain_templates: Lists available templates by domain
🎯 Strategy Selection Guide
| Prompt Type | Recommended Strategy |
|---|---|
| Complex problems | tree_of_thoughts |
| Classification tasks | medprompt |
| Safety-critical | constitutional_ai |
| Vague requirements | meta_prompting |
| Needs refinement | self_refine |
| General optimization | auto |
🤝 Contributing
We welcome contributions! Please:
- Fork the repository
- Create a feature branch
- Add tests for new functionality
- Update documentation
- Submit a pull request
Adding New Features
- New Strategy: Add to
advanced_strategies.py - New Template: Add to
domain_templates.py - Examples: Add to
examples.py
🐛 Troubleshooting
Common Issues
MCP not working?
- Check Python version:
python3 --version(requires 3.8+) - Install dependencies: Run
./install.shorpip install -r requirements.txt - Verify MCP installation:
pip show mcp - Check Claude Desktop logs
- Restart Claude Desktop
Commands not recognized?
- Verify configuration file location
- Check file paths in configuration
- Run setup script again
Debug Mode
# Test server directly
python3 prompt_optimizer.py
# Verbose logging
export MCP_LOG_LEVEL=debug
python3 prompt_optimizer.py
📄 License
This project is licensed under the MIT License - see the LICENSE file for details.
🙏 Acknowledgments
- Research from Princeton, Google DeepMind, Microsoft Research
- Anthropic's Constitutional AI framework
- Stanford's DSPy framework
- OpenAI's prompt engineering guidelines
📈 Citation
If you use this tool in your research or projects, please cite:
@software{mcp_prompt_optimizer,
title={MCP Prompt Optimizer: Research-Backed Prompt Optimization for AI Systems},
author={Bubobot},
year={2024},
url={https://github.com/Bubobot-Team/mcp-prompt-optimizer}
}
Built with ❤️ for the AI community
For questions, issues, or contributions, please visit our GitHub repository.
เซิร์ฟเวอร์ที่เกี่ยวข้อง
Scout Monitoring MCP
ผู้สนับสนุนPut performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
ผู้สนับสนุนAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
MCP Base Server
A base template for creating new MCP servers, designed for easy containerized deployment with Docker.
Pprof Analyzer
Analyze Go pprof performance profiles (CPU, heap, goroutine, etc.) and generate flamegraphs.
mistaike.ai
MCP security gateway with DLP scanning (PII, secrets, API keys), prompt injection protection, Memory Vault, Bug Vault (295k+ patterns), and unified audit logging. Two endpoints: free bug search at /mcp and authenticated hub at /hub_mcp.
Remote MCP Server (Authless)
An example of a remote MCP server without authentication, deployable on Cloudflare Workers.
Image Generation MCP Server
An MCP server for generating images using the Replicate API and the Flux model.
Base MCP Server
An MCP server providing onchain tools for AI applications to interact with the Base Network and Coinbase API.
Linear Regression MCP
Train a Linear Regression model by uploading a CSV dataset file, demonstrating an end-to-end machine learning workflow.
PackageLens MCP
Lets your coding agent (such as Claude, Cursor, Copilot, Gemini or Codex) search package registries across multiple ecosystems (npm, PyPI, RubyGems, Crates.io, Packagist, Hex) and fetch package context (README, downloads, GitHub info, usage snippets)
Socket
Scan dependencies for vulnerabilities and security issues using the Socket API.
FastAPI-MCP
A zero-configuration tool to automatically expose FastAPI endpoints as MCP tools.