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Awesome CatBoost

This page contains a moderated list of examples, tutorials, articles about CatBoost use cases. It is inspired by awesome-machine-learning.

We will be happy to add your success story using CatBoost to this list. Send us a pull request if you want to include your case here.

Use cases

Tools using CatBoost

  • auto_ml - Automated machine learning for production and analytics. Lets you focus on the fun parts of ML, while outputting production-ready code, and detailed analytics of your dataset and results. Includes support for CatBoost and other ml libraries.
  • mljar-supervised - An Automated Machine Leaning (AutoML) open-source python package for binary and mutliclass classification and regression ML tasks. It is using CatBoost algorithm among many others. It provides explanations for CatBoost models: feature importance computed by permutation method and SHAP explanations: feature importance, dependency plots and decision plots (computed with CatBoost internals).