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Slides, collaboration doc, and code building a recommendation system example presented in a meetup talk delivered April 22nd, 2020

Jupyter Notebook 100.00%

science-of-netflix's Introduction

The Science of Netflix

A code along workshop for the Flatiron School Meetup The Science Behind Netflix Recommendations : Talk | Chicago. The original materials for this workshop were developed by Flatiron NYC Coach Yish Lim and were adapted for online Zoom broadcast by David John Baker and Ben Oren.

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This version of the workshop is being presented on:

  • April 22nd, 2020

The slides from the presentation are available here and the collaborative document in use during the broadcast is here. There will be a link here to the video recording made of the talk as well.

Here is a binder you can launch the notebook from.

The dataset used is The Movies Dataset found on Kaggle, specifically from the file ratings small.csv: https://www.kaggle.com/rounakbanik/the-movies-dataset

If you do want to run the code on your own, download Jupyter Notebook and run these lines in your terminal:

  1. git clone https://github.com/ben-oren/science-of-netflix.git
  2. cd science-of-netflix
  3. jupyter notebook

Additional Readings and Resources:

Yish has written a couple posts on Medium about recommendation engines on her blog:

There are several freely available textbooks which mention recommendation systems. The first link is a good general introduction; the second one goes into a deeper dive of the math underlying SVD using gradient descent + alternating least squares as demonstrated in the talk.

Here are some other links to podcast episodes on recommendation engines:

Feel free to reach out to Yish, Dave or Ben!

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