Skip to content

Adapted Jupyter Notebooks to go along with Computerphile's "Data Analysis with Dr Mike Pound" playlist on Youtube

Notifications You must be signed in to change notification settings

j-alencar/data-analysis-with-dr-mike-pound

Repository files navigation

About

Adapted Jupyter Notebooks to go along with Computerphile's "Data Analysis with Dr Mike Pound" playlist on Youtube.
This repository is meant for educational purposes. I do not claim authorship of the original code.

Attributions

Code:

All code sourced from R scripts shown in the Youtube series, aside from practical adaptations and topical complements. Credits go to Dr. Mercedes Torres-Torres and Dr. Michael Pound of the University of Nottingham's Computer Science Department.

Data:

Images:

  • Episode 6: Figure "Two equivalent views of principal component analysis" by Alex Williams. Part of the blog post "Everything you did and didn't know about PCA" published March 27, 2016. You can read the full blog post here.
  • Episode 9: Figures courtesy of Oscar García-Olalla Olivera. Part of the blog post "Artificial Neural Networks: What they are and how they’re trained – Part I," published September 16, 2019, in the Xeridia blog. You can read the full blog post here.

About

Adapted Jupyter Notebooks to go along with Computerphile's "Data Analysis with Dr Mike Pound" playlist on Youtube

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published