Adaptive MCP Server

Adaptive MCP Server

By quanticsoul4772 GitHub

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Overview

what is Adaptive MCP Server?

The Adaptive MCP (Model Context Protocol) Server is an advanced AI reasoning system designed to provide intelligent, multi-strategy solutions to complex questions by combining various reasoning approaches and real-time research.

how to use Adaptive MCP Server?

To use the Adaptive MCP Server, clone the repository, set up a virtual environment, install dependencies, and utilize the provided Python API to ask complex questions.

key features of Adaptive MCP Server?

  • Multi-Strategy Reasoning: Supports sequential, branching, abductive, lateral, and logical reasoning.
  • Advanced Research Integration: Offers real-time information retrieval and confidence-based result validation.
  • Comprehensive Validation: Includes semantic similarity checking, factual accuracy assessment, and error detection.

use cases of Adaptive MCP Server?

  1. Answering complex questions about AI impacts.
  2. Generating innovative solutions for urban transportation.
  3. Assisting in research by validating information from multiple sources.

FAQ from Adaptive MCP Server?

  • What programming language is used?

The server is built using Python.

  • How can I customize reasoning strategies?

You can specify custom strategies in the configuration file before making a request.

  • Is there a license for this project?

Yes, it is distributed under the MIT License.

Content

Adaptive MCP Server

Overview

The Adaptive MCP (Model Context Protocol) Server is an advanced AI reasoning system designed to provide intelligent, multi-strategy solutions to complex questions. By combining multiple reasoning approaches, real-time research, and comprehensive validation, this system offers a sophisticated approach to information processing and answer generation.

Key Features

  • Multi-Strategy Reasoning

    • Sequential Reasoning
    • Branching Reasoning
    • Abductive Reasoning
    • Lateral (Creative) Reasoning
    • Logical Reasoning
  • Advanced Research Integration

    • Real-time information retrieval
    • Multiple search strategy support
    • Confidence-based result validation
  • Comprehensive Validation

    • Semantic similarity checking
    • Factual accuracy assessment
    • Confidence scoring
    • Error detection

Installation

Prerequisites

  • Python 3.8+
  • pip
  • Virtual environment recommended

Setup

# Clone the repository
git clone https://github.com/your-org/adaptive-mcp-server.git

# Create virtual environment
python -m venv venv
source venv/bin/activate  # On Windows, use `venv\Scripts\activate`

# Install dependencies
pip install -r requirements.txt

Quick Start

Basic Usage

from reasoning import reasoning_orchestrator

async def main():
    # Ask a complex question
    result = await reasoning_orchestrator.reason(
        "What are the potential long-term impacts of artificial intelligence?"
    )
    
    print(result['answer'])
    print(f"Confidence: {result['confidence']}")

Configuration

Create a mcp_config.json in the project root:

{
    "research": {
        "api_key": "YOUR_EXA_SEARCH_API_KEY",
        "max_results": 5,
        "confidence_threshold": 0.6
    },
    "reasoning": {
        "strategies": [
            "sequential", 
            "branching", 
            "abductive"
        ]
    }
}

Advanced Usage

Custom Reasoning Strategies

from reasoning import reasoning_orchestrator, ReasoningStrategy

# Customize strategy selection
custom_strategies = [
    ReasoningStrategy.LOGICAL, 
    ReasoningStrategy.LATERAL
]

# Use specific strategies
result = await reasoning_orchestrator.reason(
    "Design an innovative solution to urban transportation",
    strategies=custom_strategies
)

Development

Running Tests

# Run all tests
pytest tests/

# Run specific module tests
pytest tests/test_research.py
pytest tests/test_orchestrator.py

Contributing

  1. Fork the repository
  2. Create your feature branch (git checkout -b feature/AmazingFeature)
  3. Commit your changes (git commit -m 'Add some AmazingFeature')
  4. Push to the branch (git push origin feature/AmazingFeature)
  5. Open a Pull Request

Best Practices

  1. Modularity: Leverage the modular design to extend reasoning capabilities
  2. Confidence Scoring: Always check the confidence field in results
  3. Error Handling: Implement try-except blocks when using the reasoning system
  4. API Key Management: Use environment variables for sensitive configurations

Troubleshooting

  • Ensure all dependencies are installed
  • Check your Exa Search API key
  • Verify network connectivity
  • Review logs for detailed error information

License

Distributed under the MIT License. See LICENSE for more information.

Contact

Your Name - your.email@example.com

Project Link: https://github.com/your-org/adaptive-mcp-server

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