This handbook accompanies the course: Machine Learning with Hung-Yi Lee

Overview

learning-machine

Strait forward machine learning based on answers and intuition for machine learners

Website Cleanup

This handbook accompanies the course: Machine Learning with Hung-Yi Lee

Logo

Whoever fights monsters should see to it that in the process he does not become a monster. And if you gaze long enough into an abyss, the abyss will gaze back into you. And in order to tame machine learning, one mush first know how to learn machine. --- Me, 2021

Where does the logo come from?

The logo is made with Inkscape and the following meme. Comic

Why this book?

There are many resources for machine learning on the internet. However, most of them are either

  1. Too long. It takes half an hour just to read through.

  2. Too math heavy. It takes you forever to understand.

  3. Too confusing. The concepts are not strait-forward.

This book aims to solve all of that. It tries to be as concise but easy to grasp as possible.

Who is this book for?

This book is for learners who want to quickly grasp an idea, without diving deep into a topic (it takes way too long!). The book is a handbook for people who want to preserve their time.

If you find this book helpful, please consider starring (★) this repository!

Disclaimer

This book assumes that you have at least some basic understanding of programming.

Index

Contributing

We take openness and inclusiveness very seriously. We have adopted the following code of conduct.

Contributor code of conduct

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