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CatBoost is an open-source gradient boosting on decision trees library with categorical features support out of the box for Python, R

Home Page: https://catboost.ai

License: Apache License 2.0

Makefile 0.66% Python 12.67% C++ 80.21% R 0.56% Cuda 5.08% PHP 0.01% Java 0.21% Shell 0.03% CMake 0.01% CSS 0.04% JavaScript 0.35% Batchfile 0.03% C 0.05% TeX 0.07% Assembly 0.02%

catboost's Introduction

Website | Documentation | Installation | Release Notes

License PyPI version

CatBoost is a machine learning method based on gradient boosting over decision trees.

Main advantages of CatBoost:

  • Superior quality when compared with other GBDT libraries.
  • Best in class inference speed.
  • Support for both numerical and categorical features.
  • Fast GPU and multi-GPU support for training (compiled binaries and python package for learning on one host, build cmd-line MPI version from source to learn on several GPU machines).
  • Data visualization tools included.

Get Started and Documentation

All CatBoost documentation is available here.

Install CatBoost by following the guide for the

Next you may want to investigate:

Catboost models in production

If you want to evaluate Catboost model in your application read model api documentation.

Questions and bug reports

Help to Make CatBoost Better

  • Check out help wanted issues to see what can be improved, or open an issue if you want something.
  • Add your stories and experience to Awesome CatBoost.
  • To contribute to CatBoost you need to first read CLA text and add to your pull request, that you agree to the terms of the CLA. More information can be found in CONTRIBUTING.md
  • Instructions for contributors can be found here.

News

Latest news are published on twitter.

Reference Paper

Anna Veronika Dorogush, Andrey Gulin, Gleb Gusev, Nikita Kazeev, Liudmila Ostroumova Prokhorenkova, Aleksandr Vorobev "Fighting biases with dynamic boosting". arXiv:1706.09516, 2017.

Anna Veronika Dorogush, Vasily Ershov, Andrey Gulin "CatBoost: gradient boosting with categorical features support". Workshop on ML Systems at NIPS 2017.

License

© YANDEX LLC, 2017-2018. Licensed under the Apache License, Version 2.0. See LICENSE file for more details.

Student

Kozim Kabulov

catboost's People

Contributors

arcadia-devtools avatar noxoomo avatar nikitxskv avatar exprmntr avatar frazenshtein avatar orivej avatar andrey-khropov avatar kizill avatar dbakshee avatar alexander-somov avatar smertnik3sh avatar evgueni-petrov-aka-espetrov avatar sab avatar nemo-cpt avatar mityada avatar snermolaev avatar ofats avatar velavokr avatar pashasmirnov avatar sergmiller avatar lyzhinivan avatar pg83 avatar vladon avatar yapg83 avatar yndx-workfork avatar borman avatar abyss7 avatar nslsrv avatar ilnurkh avatar ek-ak avatar

Watchers

James Cloos avatar Kazim avatar

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