Skip to content

Latest commit

 

History

History
26 lines (20 loc) · 1.51 KB

File metadata and controls

26 lines (20 loc) · 1.51 KB

ML-interpretability

Binder

Materials for ML interpretability Code Club workshop

Topic Simple interpretability methods for black-box machine learning systems
Presenter Dr. Adriano Soares Koshiyama
Date Wednesday, 16 September 2020
Length 60 mins
Language python
Libraries pandas, numpy, sklearn, matplotlib, seaborn
Software used Jupyter Notebook

Repository contents

File Description
Interpretability Code Club.pdf Presentation file
NotebookInterpretability.ipynb Notebook file for interactive coding session
mortgage_data_balanced.csv Data for interactive coding session

Recording

via MS Stream