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pbiecek / XAIatERUM2020

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Workshop: Explanation and exploration of machine learning models with R and DALEX at eRum 2020

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XAI at eRUM 2020

Workshop Explanation and exploration of machine learning models with R and DALEX at eRum 2020

This page: http://tiny.cc/eRum2020

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Materials

Prepare yourself

Make sure that you have installed RStudio and latest CRAN versions of the DALEX package (v 1.2 or newer), ranger and rms.

Tutors

  • Przemysław Biecek
  • Anna Kozak
  • Szymon Maksymiuk

from MI2DataLab

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