Welcome to REP’s documentation!

REP (Reproducible Experiment Platform) library provides functionality for all your basic needs to deal with machine learning.

It includes:

  • Data provides operations with data
  • Estimators (classification and regression) is sklearn-like wrappers for variety of machine learning libraries (Sklearn, uBoost, XGBoost, TMVA). These can be used as base estimators in sklearn.
  • Meta Machine Learning contains factory (the set of estimators), grid search, folding algorithm. Also parallel execution on a cluster is supported
  • Report for models contains helpful classes to get model result information on any dataset
  • Plotting is wrapper for different plotting libraries including interactive plots (matplotlib, bokeh, tmva, plotly)
  • Utilities contains additional functions

Main repository: http://github.com/yandex/REP