Linear Regression MCP
Train a Linear Regression model by uploading a CSV dataset file, demonstrating an end-to-end machine learning workflow.
Linear Regression MCP
Welcome to Linear Regression MCP! This project demonstrates an end-to-end machine learning workflow using Claude and the Model Context Protocol (MCP).
Claude can train a Linear Regression model entirely by itself, simply by uploading a CSV file containing the dataset. The system goes through the entire ML model training lifecycle, handling data preprocessing, training, and evaluation (RMSE calculation).
Setup and Installation
1. Clone the Repository:
First, clone the repository to your local machine:
git clone https://github.com/HeetVekariya/Linear-Regression-MCP
cd Linear-Regression-MCP
2. Install uv:
uv is an extremely fast Python package and project manager, written in Rust. It is essential for managing the server and dependencies in this project.
- Download and install
uvfrom here.
3. Install Dependencies:
Once uv is installed, run the following command to install all necessary dependencies:
uv sync
4. Configure Claude Desktop:
To integrate the server with Claude Desktop, you will need to modify the Claude configuration file. Follow the instructions for your operating system:
- For macOS or Linux:
code ~/Library/Application\ Support/Claude/claude_desktop_config.json
- For Windows:
code $env:AppData\Claude\claude_desktop_config.json
- In the configuration file, locate the
mcpServerssection, and replace the placeholder paths with the absolute paths to youruvinstallation and the Linear Regression project directory. It should look like this:
{
"mcpServers":
{
"linear-regression":
{
"command": "ABSOLUTE/PATH/TO/.local/bin/uv",
"args":
[
"--directory",
"ABSOLUTE/PATH/TO/YOUR-LINEAR-REGRESSION-REPO",
"run",
"server.py"
]
}
}
}
- Once the file is saved, restart Claude Desktop to link with the MCP server.
Available Tools
The following tools are available in this project to help you work with the dataset and train the model:
| Tool | Description | Arguments |
|---|---|---|
upload_file(path) | Uploads a CSV file and stores it for processing. | path: Absolute path to the CSV file. |
get_columns_info() | Retrieves the column names in the uploaded dataset. | No arguments. |
check_category_columns() | Checks for any categorical columns in the dataset. | No arguments. |
label_encode_categorical_columns() | Label encodes categorical columns into numerical values. | No arguments. |
train_linear_regression_model(output_column) | Trains a linear regression model and calculates RMSE. | output_column: The name of the target column. |
Open for Contributions
I welcome contributions to this project! Whether it's fixing bugs, adding new features, or improving the documentation, feel free to fork the repository and submit pull requests.
If you have any suggestions or feature requests, open an issue, and I'll be happy to discuss them!
👀
관련 서버
Scout Monitoring MCP
스폰서Put performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
스폰서Access financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
MCP Reasoner
A reasoning engine with multiple strategies, including Beam Search and Monte Carlo Tree Search.
NativeWind
Transform Tailwind components to NativeWind 4.
Grey Hack MCP Server
A Grey Hack server for Cursor IDE, providing GitHub code search, Greybel-JS transpilation, API validation, and script generation.
Sleep MCP Server
Provides a sleep/wait tool to add delays between operations, such as waiting between API calls or testing eventually consistent systems.
Repo Map
An MCP server (and command-line tool) to provide a dynamic map of chat-related files from the repository with their function prototypes and related files in order of relevance. Based on the "Repo Map" functionality in Aider.chat
MCP Storybook Image Generator
Generate storybook images for children's stories using Google's Gemini AI.
GameCode MCP2
A Model Context Protocol (MCP) server for tool integration, configured using a tools.yaml file.
MCP Pyrefly
A server for real-time Python code validation using Pyrefly, designed to prevent common coding errors from LLMs.
Model Context Protocol servers
A collection of reference server implementations for the Model Context Protocol (MCP) using Typescript and Python SDKs.
Snak
An agent engine for creating powerful and secure AI Agents powered by Starknet.
