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A framework that helps train machine learning models using sklearn.

Project description

Brisk

PyPI version Python 3.10+ Coverage Status Documentation Status

Brisk is a framework that helps train machine learning models using scikit-learn. Brisk provides a structured approach to organizing machine learning code and provides built in methods for common model evaluation and visualization tasks. Your results are formatted as an HTML report to make evaluation and comparison easy.

Why Use Brisk?

  • Organized Project Structure: Avoid messy notebooks and scripts with a clean, modular approach to ML projects
  • Streamlined Experimentation: Easily try different algorithms, hyperparameters, and data processing methods
  • Easy Evaluation: Built-in methods for model evaluation and visualization
  • HTML Reports: Automatically generate comprehensive reports of your model performance

New to Brisk?

The documentation is the best place to start.The Quick Start Guide will walk you through a simple project to learn the basics.

Installation

Brisk is available on PyPI and can be installed using pip:

pip install brisk-ml

See the installation page for more information.

Contributing

See the contributing page for more information.

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