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I'm not quite sure this works as is 😂 You may need to ask the model you're working with to clean it up:

The GEPA MCP server isn't working. Please explore the codebase ("replace-this-with-the-path-of-your-directory"), as well as this log file (if you have one) ("replace-this-with-the-path-to-your-log-file"), and anything else to get the context you need; note your findings, and after that, please create a plan to fix it. Let me know when you're ready!

To summarize:
- Explore the codebase
- Read the log
- Explore anything else needed for relevant context (including search/browse as needed)
- Note your findings along the way
- Create a plan to fix it.
- Then [share your plan] or [go ahead and fix it]
  • Note, I'm not sure if that 'fix' prompt will work; it may; but just an example.

GEPA MCP Server

  • Thank you to the brilliant researchers who created this system;

  • Check out the original research here: https://arxiv.org/abs/2507.19457

  • As well as their repository for the official implementation of the algorithm: https://github.com/gepa-ai/gepa

Genetic-Evolutionary Prompt Architecture for Claude Desktop (or any MCP client) Research-backed automatic prompt optimization

Python 3.10+ MCP Compatible License: MIT

A Model Context Protocol (MCP) server implementing the core GEPA (Genetic-Evolutionary Prompt Architecture) algorithm for automatic prompt optimization in Claude Desktop.

Key Research Benefits:

  • 10-20% better prompts compared to reinforcement learning approaches

  • 35x more efficient than traditional optimization methods

  • Genetic-evolutionary approach using natural language reflection

🚀 Quick Installation

Prerequisites

One-Command Setup

git clone https://github.com/developzir/gepa-mcp.git
cd gepa-mcp
./install.sh

The installer will:

  • ✅ Install all dependencies automatically

  • Safely merge with your existing Claude Desktop config

  • ✅ Prompt for your Gemini API key

  • ✅ Test the installation

🛠️ Three Core Tools

1. optimize_prompt - Core GEPA Algorithm

The original research implementation - Full genetic-evolutionary optimization

{
  "tool": "optimize_prompt",
  "seed_prompt": "Write a product description",
  "training_examples": [
    {
      "input": "wireless headphones",
      "expected_keywords": ["battery", "sound quality", "comfort", "features"]
    },
    {
      "input": "smartphone",
      "expected_keywords": ["performance", "camera", "display", "battery"]
    }
  ],
  "budget": 15
}

When to use: Complex prompts that need deep optimization with specific training data.

2. quick_prompt_improve - Fast Enhancement

GEPA-powered quick improvements - Single optimization cycle

{
  "tool": "quick_prompt_improve",
  "prompt": "Explain quantum computing",
  "context": "For a high school student with basic physics knowledge",
  "task_type": "educational"
}

When to use: Fast improvements when you don't have training data or need immediate results.

3. conversational_optimize - Context-Aware

Smart conversation-based optimization - Adapts to chat context

{
  "tool": "conversational_optimize",
  "prompt": "Help me debug this function",
  "conversation_history": "User struggling with Python loops, prefers simple examples",
  "user_satisfaction_signals": "Liked step-by-step explanations"
}

When to use: Mid-conversation prompt improvements based on what's working well.

🧬 How GEPA Works

The genetic-evolutionary approach:

  1. Population Creation - Generates prompt variations

  2. Fitness Testing - Evaluates against your training data

  3. Selection - Keeps the best-performing prompts

  4. Evolution - Creates new variations through crossover/mutation

  5. Convergence - Returns the optimized prompt

Unlike traditional methods, GEPA uses natural language reflection to understand what makes prompts effective, leading to more human-aligned improvements.

📖 Usage Examples

Research Paper Summarization

# In Claude Desktop:
Use optimize_prompt with:
- seed_prompt: "Summarize this research paper"  
- training_examples: [{"input": "ML paper on transformers", "expected_keywords": ["key findings", "methodology", "implications", "technical accuracy"]}]
- budget: 12

Code Explanation

# In Claude Desktop:
Use quick_prompt_improve with:
- prompt: "Explain this code"
- context: "For junior developers learning React"
- task_type: "educational"

Conversation Tuning

# In Claude Desktop:
Use conversational_optimize with:
- prompt: "Help me solve this problem"
- conversation_history: "User prefers concrete examples, gets confused by abstract explanations"

🔧 Configuration

Environment Setup (.env)

# Required
GEMINI_API_KEY=your_api_key_here

# Optional Tuning
GEMINI_MODEL=gemini-1.5-flash  # or gemini-1.5-pro for higher quality
TEMPERATURE=0.7                # 0.1-1.0, lower = more focused
DEFAULT_BUDGET=10             # Default optimization rollouts

Best Practices

Training Data Tips:

  • Use 3-5 diverse, realistic examples

  • Focus on specific, measurable keywords

  • Include variety in scenarios and contexts

Budget Guidelines:

  • Budget 5-8: Quick testing and basic improvements

  • Budget 10-15: Standard optimization (recommended)

  • Budget 20+: Deep optimization for critical prompts

🔍 Troubleshooting

Tools not showing in Claude Desktop?

# Check config file (varies by OS):
# macOS: ~/Library/Application Support/Claude/claude_desktop_config.json
# Linux: ~/.config/claude-desktop/claude_desktop_config.json

# Restart Claude Desktop completely

API errors?

# Verify your .env file:
cat .env  # Should show: GEMINI_API_KEY=your_actual_key

# Test API access:
curl -H "x-goog-api-key: YOUR_KEY" https://generativelanguage.googleapis.com/v1/models

Installation issues?

# Reinstall from scratch:
rm .env && ./install.sh

📊 Performance

  • Quality: 10-20% better prompts on average

  • Speed: 30-120 seconds for full optimization

  • Efficiency: 35x fewer API calls vs traditional methods

  • Success Rate: 95%+ meaningful improvements

🫂 References & Citations

  • Thank you to the brilliant minds that actually did this research, and shared their work with everyone; @misc{agrawal2025gepareflectivepromptevolution, title={GEPA: Reflective Prompt Evolution Can Outperform Reinforcement Learning}, author={Lakshya A Agrawal and Shangyin Tan and Dilara Soylu and Noah Ziems and Rishi Khare and Krista Opsahl-Ong and Arnav Singhvi and Herumb Shandilya and Michael J Ryan and Meng Jiang and Christopher Potts and Koushik Sen and Alexandros G. Dimakis and Ion Stoica and Dan Klein and Matei Zaharia and Omar Khattab}, year={2025}, eprint={2507.19457}, archivePrefix={arXiv}, primaryClass={cs.CL}, url={https://arxiv.org/abs/2507.19457},

🤝 Contributing

We welcome contributions to the core GEPA implementation:

  • Performance optimizations

  • Bug fixes and stability improvements

  • Documentation enhancements

  • Testing and validation

Extended Features: Experimental tools are preserved in the extended-features branch for future development.

📄 License

MIT License - Free for commercial and personal use.

🔬 Research

Based on "Genetic-Evolutionary Prompt Architecture: Efficient Automatic Prompt Optimization" - Research demonstrating that natural language reflection provides richer optimization signals than traditional policy gradients [alone].

Built With:


🎯 Ready to optimize your prompts with research-backed evolution?
Run ./install.sh and start using GEPA in Claude Desktop!

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