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Krithika Manohar - Optimal Sensors for Empowering AI

Prof. Krithika Manohar from the University of Washington speaking at the AI Institute in Dynamic Systems Kickoff on Mar. 17, 2022.

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Видео Krithika Manohar - Optimal Sensors for Empowering AI канала Physics Informed Machine Learning
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31 марта 2022 г. 8:30:00
00:30:01
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