This software provides a flexible, modular and easy-to-use package to perform classification using Scikit, XGBoost and Keras algorithms. The first purpose of the package is to provide tools for high-energy physicists to perform optimisation of rare signals produced in ultra-relativistic proton-proton and heavy-ion collisions.
- convert ROOT datasets into Pandas Dataframes
- create training and testing dataset starting from samples of data and Monte-Carlo simulations
- perform Principal-Component-Analysis
- training and testing using Scikit, XGBoost and Keras algorithms
- large set of validation tools with a user friendly interface
- conversion of Pandas Dataframe to ROOT objects including algorithm decisions and probabilities
Instructions for installing and running the package are provided in the Wiki section of this repository wiki.
Visit the collaboration website for more information about studies of hot nuclear matter at the Large Hadron Collider at CERN http://alice-collaboration.web.cern.ch
For any questions please contact ginnocen@cern.ch