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1
Introduction
2
Team
3
Outline
4
How to Build AI System
5
AI Security Challenges
6
Data Algorithm Model
7
AI Abuse
8
AI Security
9
adversarial attack
10
adversarial training
11
privacy attacks
12
model gradients
13
threat model
14
Evaluation metrics
15
Tradeoff
16
Conclusions
17
Appendix
Description:
Explore the complex relationship between model robustness and data privacy in AI systems through this insightful conference talk from HITB2021AMS. Delve into the world of adversarial training and its unexpected consequences on data security. Discover how improving model robustness against adversarial attacks can inadvertently increase vulnerability to privacy breaches. Learn about gradient-matching techniques for reconstructing training data and the potential trade-offs between model security and user privacy. Gain valuable insights into the challenges of balancing AI system robustness with data protection, and understand the importance of considering both aspects in future research and development of secure AI technologies.

Model Robustness Will Hurt Data Privacy?

Hack In The Box Security Conference
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