Adversarial machine learning is the study of attacks on and defenses against machine learning algorithms. Practitioners report a need for better protection in industrial applications, with common attacks including evasion, data poisoning, Byzantine, and model extraction.
UC Berkeley
Fall 2019
A course focused on the intersection of AI and systems, it discusses trends in system designs and AI applications for optimizing architecture and performance of systems. It requires background in system design or machine learning and involves hands-on projects.
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