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muellerzr / Practical Deep Learning For Coders

Material for my run of Fast.AI

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Practical Deep Learning for Coders

Material for my Proctor of Fast.AI's course. This course is originally done by Jeremy Howard and Rachel Thomas, and is taught at the University by course alumni.

The course can be found here: https://course.fast.ai

The Fast.AI forums can be found at: https://forums.fast.ai

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