Efficient Defenses Against Adversarial Examples for Deep Neural Networks
Offered By: DefCamp via YouTube
Course Description
Overview
Explore efficient defense strategies against adversarial examples in deep neural networks in this 28-minute conference talk from DefCamp 2017. Delve into the latest research and practices in the field of information security, focusing on protecting machine learning models from malicious attacks. Learn about the vulnerabilities of deep neural networks and discover practical techniques to enhance their robustness against adversarial inputs. Gain valuable insights from security specialists and researchers as they discuss cutting-edge approaches to safeguarding AI systems in an increasingly complex threat landscape.
Syllabus
DefCamp 2017 - Efficient Defenses Against Adversarial Examples for Deep Neural Networks
Taught by
DefCamp
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