VeriCompress: A Tool to Streamline the Synthesis of Verified Robust Compressed Neural Networks from Scratch

Authors

  • Sawinder Kaur Syracuse University
  • Yi Xiao Syracuse University
  • Asif Salekin Syracuse University

DOI:

https://doi.org/10.1609/aaai.v38i21.30327

Keywords:

Formal analysis and verification , Track: Emerging Applications

Abstract

AI's widespread integration has led to neural networks (NN) deployment on edge and similar limited-resource platforms for safety-critical scenarios. Yet, NN's fragility raises concerns about reliable inference. Moreover, constrained platforms demand compact networks. This study introduces VeriCompress, a tool that automates the search and training of compressed models with robustness guarantees. These models are well-suited for safety-critical applications and adhere to predefined architecture and size limitations, making them deployable on resource-restricted platforms. The method trains models 2-3 times faster than the state-of-the-art approaches, surpassing them by average accuracy and robustness gains of 15.1 and 9.8 percentage points, respectively. When deployed on a resource-restricted generic platform, these models require 5-8 times less memory and 2-4 times less inference time than models used in verified robustness literature. Our comprehensive evaluation across various model architectures and datasets, including MNIST, CIFAR, SVHN, and a relevant pedestrian detection dataset, showcases VeriCompress's capacity to identify compressed verified robust models with reduced computation overhead compared to current standards. This underscores its potential as a valuable tool for end users, such as developers of safety-critical applications on edge or Internet of Things platforms, empowering them to create suitable models for safety-critical, resource-constrained platforms in their respective domains.

Published

2024-03-24

How to Cite

Kaur, S., Xiao, Y., & Salekin, A. (2024). VeriCompress: A Tool to Streamline the Synthesis of Verified Robust Compressed Neural Networks from Scratch. Proceedings of the AAAI Conference on Artificial Intelligence, 38(21), 22899-22905. https://doi.org/10.1609/aaai.v38i21.30327