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luspr / Awesome Ml Courses

Awesome free machine learning and AI courses with video lectures.

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Awesome Machine Learning and AI Courses

A curated list of awesome, free machine learning and artificial intelligence courses with video lectures. All courses are available as high-quality video lectures by some of the best AI researchers and teachers on this planet.

Besides the video lectures, I linked course websites with lecture notes, additional readings and assignments.

Introductory Lectures

These are great courses to get started in machine learning and AI. No prior experience in ML and AI is needed. You should have some knowledge of linear algebra, introductory calculus and probability. Some programming experience is also recommended.

Advanced Lectures

Advanced courses that require prior knowledge in machine learning and AI.

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