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ML-Society / Easter-Bootcamp-2018

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Designed to take you from zero experience to GANs within a week.

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ML-Easter-Bootcamp

Designed to take you from zero experience to GANs within a week.

Work through the notebooks sequentially starting with Day X then Day 0.

All teaching material written by Haron Shams and Harry Berg. Github usernames: haron1100, haaaarryb

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