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MIT: Machine Learning 6.036, Lecture 7: Brief intermission (Fall 2020)

* Lecture 7 for the MIT course 6.036: Introduction to Machine Learning (Fall 2020 Semester)
* Full information and slides for all other lectures: http://tamarabroderick.com/ml.html
* There was a holiday this week, and the lecture numbering matches the week of the course. So there is no official Lecture 7.

Видео MIT: Machine Learning 6.036, Lecture 7: Brief intermission (Fall 2020) канала Tamara Broderick
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12 апреля 2021 г. 4:29:26
00:00:28
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