YoVDO

Adversarial Examples for Deep Neural Networks

Offered By: Paul Hand via YouTube

Tags

Neural Networks Courses Deep Neural Networks Courses

Course Description

Overview

Explore adversarial examples for deep neural networks in this comprehensive lecture. Delve into white box attacks, black box attacks, real-world attacks, and adversarial training. Learn about Projected Gradient Descent, Fast Gradient Sign Method, Carlini-Wagner methods, Universal Adversarial Perturbations, Adversarial Patches, Transferability Attacks, and Zeroth Order Optimization. Examine challenges in physical world attacks and the concept of adversarial training. Access accompanying lecture notes for further study and explore referenced research papers to deepen understanding of this critical aspect of deep learning security.

Syllabus

Introduction
Adversarial Examples
Projected Gradient Descent
Fast Gradient Sign
Universal Perturbations
Blackbox Attacks
Stochastic Coordinate Descent
Ensemble Approach
Adversarial Patches
Challenges
Physical World Attacks
Adversarial Training


Taught by

Paul Hand

Related Courses

Sequences, Time Series and Prediction
DeepLearning.AI via Coursera
A Beginners Guide to Data Science
Udemy
Artificial Neural Networks(ANN) Made Easy
Udemy
Makine Mühendisleri için Derin Öğrenme
Udemy
Customer Analytics in Python
Udemy