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Coursera Machine Learning Assignments in Python

author python license contribution

About

If you've finished the amazing introductory Machine Learning on Coursera by Prof. Andrew Ng, you probably got familiar with Octave/Matlab programming. With this repo, you can re-implement them in Python, step-by-step, visually checking your work along the way, just as the course assignments.

How to start

This repository is my implementation of the assignments. You can do your own by cloning this repo.

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