Quarter
Course Type
Course Area
Applications
Enrollment Code
63727
Location
Phelps 2510
Units
4
Day and Time
T/R 3-4:50pm
Course Description

Deep neural networks have achieved remarkable success owing to their superior predictive performance. Yet, they are extremely vulnerable to adversarial attacks. This makes adversarial machine learning an emerging topic. The idea of learning with adversaries is crucial for expanding the learning capability, ensuring trustworthy decision-making, and enhancing the generalizability of AI models. Despite diverse adversarial concepts and applications, they share very similar learning, computation, and optimization foundations. Thus, the main course goal is to teach students how to adapt these fundamental techniques into different use cases of adversarial machine learning.