Making and Measuring Progress in Adversarial Machine Learning
Offered By: IEEE via YouTube
Course Description
Overview
Explore the cutting-edge field of adversarial machine learning in this 59-minute conference talk presented by Nicholas Carlini from Google Brain. Delivered at the 2nd Deep Learning and Security Workshop during the 2019 IEEE Symposium on Security & Privacy in San Francisco, CA, delve into the challenges and advancements in making and measuring progress in this critical area of AI security. Gain insights into the latest techniques for creating and defending against adversarial examples, and understand the metrics used to evaluate the robustness of machine learning models. Learn from a leading expert in the field as Carlini discusses the intersection of deep learning and security, providing valuable knowledge for researchers, practitioners, and anyone interested in the future of AI safety and reliability.
Syllabus
Nicholas Carlini: Making and Measuring Progress in Adversarial Machine Learning
Taught by
IEEE Symposium on Security and Privacy
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