Model and Method for Providing Resilience to Resource-Constrained AI-System

Author:

Moskalenko Viacheslav1ORCID,Kharchenko Vyacheslav2ORCID,Semenov Serhii3ORCID

Affiliation:

1. Department of Computer Science, Sumy State University, 116, Kharkivska Str., 40007 Sumy, Ukraine

2. Department of Computer Systems, Networks and Cybersecurity, National Aerospace University “KhAI”, 17, Chkalov Str., 61070 Kharkiv, Ukraine

3. Cyber Security Department, University of the National Education Commission, Ul. Podchorążych 2, 30-084 Kraków, Poland

Abstract

Artificial intelligence technologies are becoming increasingly prevalent in resource-constrained, safety-critical embedded systems. Numerous methods exist to enhance the resilience of AI systems against disruptive influences. However, when resources are limited, ensuring cost-effective resilience becomes crucial. A promising approach for reducing the resource consumption of AI systems during test-time involves applying the concepts and methods of dynamic neural networks. Nevertheless, the resilience of dynamic neural networks against various disturbances remains underexplored. This paper proposes a model architecture and training method that integrate dynamic neural networks with a focus on resilience. Compared to conventional training methods, the proposed approach yields a 24% increase in the resilience of convolutional networks and a 19.7% increase in the resilience of visual transformers under fault injections. Additionally, it results in a 16.9% increase in the resilience of convolutional network ResNet-110 and a 21.6% increase in the resilience of visual transformer DeiT-S under adversarial attacks, while saving more than 30% of computational resources. Meta-training the neural network model improves resilience to task changes by an average of 22%, while achieving the same level of resource savings.

Publisher

MDPI AG

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