All Projects → aksnzhy → xforest

aksnzhy / xforest

Licence: Apache-2.0 license
A super-fast and scalable Random Forest library based on fast histogram decision tree algorithm and distributed bagging framework. It can be used for binary classification, multi-label classification, and regression tasks. This library provides both Python and command line interface to users.

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