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1
Introduction
2
Machine Learning Pipeline
3
Adversary Examples
4
Defenses
5
adversarial examples
6
perceptual ad blocking
7
adversarial noise
8
data protection
9
differential privacy
10
accuracy
11
privacy
12
differential privacy level
13
transfer learning
14
CTML
15
Why cant we identify what the data said
16
Measuring resistance to adversarial attacks
17
Quantum computing
Description:
Explore the intersection of cybersecurity and machine learning in this Stanford webinar featuring Professor Dan Boneh. Delve into "adversarial machine learning" and examine the stability of machine learning models when faced with adversarial behavior. Learn about machine learning pipelines, adversary examples, and various defense mechanisms including perceptual ad blocking and adversarial noise. Discover the importance of data protection through differential privacy and its impact on accuracy. Investigate transfer learning, CTML, and methods for measuring resistance to adversarial attacks. Gain insights into the challenges of identifying data sources and the potential implications of quantum computing on machine learning security.

Hacking AI - Security & Privacy of Machine Learning Models

Stanford University
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