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stanford is a Python package offering a suite of plotting functions to visualize machine learning models and data. It provides intuitive and customizable plots to aid in model evaluation and data analysis.

Project description

ml-utils

ml_utils is a Python package that provides a suite of plotting functions to visualize machine learning models and data. It offers intuitive and customizable plots to aid in model evaluation and data analysis.

Features

  • Model Evaluation Plots:
    • Confusion matrices
    • ROC curves
    • Precision-recall curves
  • Data Visualization:
    • Heatmaps
    • Pair plots
    • Feature importance plots
  • Compatibility:
    • Integrates seamlessly with popular machine learning libraries like scikit-learn and TensorFlow.

Installation

You can install ml_utils using pip:

pip install ml_utils

Project details


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