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OPENBOX aims at bringing an easier understanding of open problems that helps in finding solutions for such problems. For the said purpose, I interview researchers and practitioners who have published works on open problems in various areas of Artificial Intelligence and Machine Learning to collect a simplified understanding of these open problems. These are published as podcast series.
In this podcast we have Kathrin Grosse. Kathrin Grosse is a Post Doc researcher with Battista Biggio at the University of Cagliari working on Adversarial learning.
This podcast covers a paper titled “Machine Learning Security against Data Poisoning: Are We There Yet? ” published in April 2022, which she co-authored.
This is part 2 of the podcast. In this podcast, she covers the thoughts around gaining a better understanding of how defenses work, adaptive attacks and thus, our knowledge about the limits of existing defenses is rather narrow
OPENBOX aims at bringing an easier understanding of open problems that helps in finding solutions for such problems. For the said purpose, I interview researchers and practitioners who have published works on open problems in various areas of Artificial Intelligence and Machine Learning to collect a simplified understanding of these open problems. These are published as podcast series.
In this podcast we have Kathrin Grosse. Kathrin Grosse is a Post Doc researcher with Battista Biggio at the University of Cagliari working on Adversarial learning.
This podcast covers a paper titled “Machine Learning Security against Data Poisoning: Are We There Yet? ” published in April 2022, which she co-authored.
This is part 2 of the podcast. In this podcast, she covers the thoughts around gaining a better understanding of how defenses work, adaptive attacks and thus, our knowledge about the limits of existing defenses is rather narrow