YoVDO

Architecture-Preserving Provable Repair of Deep Neural Networks

Offered By: ACM SIGPLAN via YouTube

Tags

Deep Neural Networks Courses Machine Learning Courses ImageNet Courses

Course Description

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Explore a groundbreaking approach to repairing deep neural networks (DNNs) in this 21-minute conference talk from PLDI 2023. Delve into the concept of architecture-preserving V-polytope provable repair, which guarantees that repaired DNNs satisfy given specifications on an infinite set of points within a defined V-polytope. Learn how this method modifies DNN parameters without altering the architecture, supports various activation functions and layer types, and runs in polynomial time. Discover the implementation of this approach in the APRNN tool and compare its efficiency, scalability, and generalization to previous repair methods using MNIST, ImageNet, and ACAS Xu DNNs. Gain insights into this innovative technique that addresses the critical issue of incorrect behavior in DNNs, potentially mitigating disastrous real-world consequences.

Syllabus

[PLDI'23] Architecture-Preserving Provable Repair of Deep Neural Networks


Taught by

ACM SIGPLAN

Related Courses

Inference with Torch-TensorRT Deep Learning Prediction for Beginners - CPU vs CUDA vs TensorRT
Python Simplified via YouTube
AlexNet and ImageNet Explained
James Briggs via YouTube
Analysis of Large-Scale Visual Recognition - Bay Area Vision Meeting
Meta via YouTube
Introduction to Neural Networks for Computer Vision - Part I
University of Central Florida via YouTube
Evaluating Neural Network Robustness - Targeted Attacks and Defenses
University of Central Florida via YouTube