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Stanford Webinar with Dan Boneh - Hacking AI: Security & Privacy of Machine Learning Models

In this webinar, Professor Dan Boneh discusses recent work at the intersection of cybersecurity and machine learning. Specifically, he explores an area known as “adversarial machine learning” which looks at the stability of machine learning models in the presence of adversarial behavior.

For more information about Stanford’s Artificial Intelligence professional and graduate programs, visit: https://stanford.io/2Z3aQ0f

#artificialintelligence #machinelearning

Видео Stanford Webinar with Dan Boneh - Hacking AI: Security & Privacy of Machine Learning Models канала Stanford Online
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14 мая 2021 г. 0:58:58
00:58:16
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