Simple-MCP-Build

This repository contains the Model Context Protocol (MCP) framework being developed by the ClimateGPT Team 1. MCP provides functionalities related to climate scenario projections, including dataset loading, dynamic query routing, and management of execution context. The structure is clear, and it includes test models as well as unit tests for validation.

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README
Model Context Protocal (MCP) Implementation

This repository includes the Model Context Protocol (MCP) framework that ClimateGPT Team 1 is developing.

📂 Project Structure

/mcp-framework ├── modules/ # Core MCP components │ ├── context_manager.py # Stores execution context memory │ ├── data_loader.py # Handles dataset loading │ ├── query_manager.py # Routes queries dynamically │ ├── pipeline_manager.py # Executes MCP steps ├── models/ # Test EDA / initial models for MCP framework checking │ ├── scenario_projection.py # Temp trend analysis │ ├── temperature_trends.py # Climate scenario projections │ ├── Model3.py # Model 3 ├── config/ # Configuration settings │ ├── config.yaml # Defines dataset paths and pipeline steps ├── logs/ # Execution logs │ ├── mcp_execution.log ├── tests/ # Unit tests for MCP validation ├── main.py # Entry point for MCP execution ├── requirements.txt # Python dependencies ├── README.md # Project documentation

How to run MCP Framework
  1. Clone the repository (if not already cloned):

    git clone https://github.com/ newsconsole/GMU_DAEN_2025_01_A.git
    
  2. Switch to the ClimateGPT Team 1 Branch:

    git checkout ClimateGPT_Team1
    
  3. Make sure to set up venv (Virtual Env)

    1. python -m venv venv
    2. venv\Scripts\Activate
    
  4. Install dependencies (requirements.txt):

    pip install -r requirements.txt
    
  5. Run the MCP Pipeline

    python main.py 
    
Configuration & Execution
  • The MCP pipeline is dynamically controlled by config/config.yaml which defines the datasets and pipeline steps
  • Logs are stored in logs/mcp_execution.log for debugging and tracking execution results
Recent Updates
  • Implemented initial MCP Framework with modular design
  • Added dynamiic query routing & context memory