Explainable Data Science Course
5/3/2020 Download:Explainable Data Science
ExplainableDataScience Repository
This repository contains notebooks used in the Explainable Data Science Course.
Course Description
Explainability is one of the most important problems of machine learning and a hot topic in both academia and industry. This course will cover the basics of explainability.
Course Instructor
Jordi Vitrià, Universitat de Barcelona
Course Software Installation
You can develop machine learning applications with Google Colaboratory (Colab). Colab is a Google internal research tool for data science. They have released the tool to the general public with the goal of dissemination of machine learning education and research.
You can find more information in this blogs:
- https://medium.com/deep-learning-turkey/google-colab-free-gpu-tutorial-e113627b9f5d
- https://medium.com/tensorflow/colab-an-easy-way-to-learn-and-use-tensorflow-d74d1686e309
Follow these steps in order to work in Colab:
- Connect to https://colab.research.google.com/ (you will need a Google account).
- Create a folder for your notebooks (this step isn’t totally necessary if you want to just start working in Colab). You can do that by going to your Google Drive and clicking
New
and then creating a new folder. Then, if you want, while you’re already in your Google Drive you can create a new Colab notebook. Just clickNew
and drop the menu down toMore
and then selectColaboratory
. Otherwise, you can always go directly to Google Colab. - Set up a free GPU (when using deep learning). Go to the
runtime
dropdown menu, selectingchange runtime type
and selecting GPU in the hardware accelerator drop-down menu. - Get coding!