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bpesquet / Mlkatas

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A series of self-correcting challenges for practicing your Machine Learning and Deep Learning skills

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Supported Python Versions

⛩ Machine Learning Katas

This repository contains a series of challenges (katas) for practicing your Machine Learning and Deep Learning skills.

The katas are self-correcting Jupyter Notebooks that can be executed either:

  • online, by accessing the katas website and using a Jupyter cloud service like Colaboratory (Google account needed) or Binder.

  • locally, by cloning or downloading this repository then spinning up a Jupyter notebook server on your local machine.

The katas are generated by nbgrader.

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