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Auteurs principaux: Brosch, Manuel, Probst, Matthias, Kögler, Stefan, Sigl, Georg
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2601.05828
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author Brosch, Manuel
Probst, Matthias
Kögler, Stefan
Sigl, Georg
author_facet Brosch, Manuel
Probst, Matthias
Kögler, Stefan
Sigl, Georg
contents The use of neural networks in edge devices is increasing, which introduces new security challenges related to the neural networks' confidentiality. As edge devices often offer physical access, attacks targeting the hardware, such as side-channel analysis, must be considered. To enhance the performance of neural network inference, hardware accelerators are commonly employed. This work investigates the influence of parallel processing within such accelerators on correlation-based side-channel attacks that exploit power consumption. The focus is on neurons that are part of the same fully-connected layer, which run parallel and simultaneously process the same input value. The theoretical impact of concurrent multiply-and-accumulate operations on overall power consumption is evaluated, as well as the success rate of correlation power analysis. Based on the observed behavior, equations are derived that describe how the correlation decreases with increasing levels of parallelism. The applicability of these equations is validated using a vector-multiplication unit implemented on an FPGA.
format Preprint
id arxiv_https___arxiv_org_abs_2601_05828
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Influence of Parallelism in Vector-Multiplication Units on Correlation Power Analysis
Brosch, Manuel
Probst, Matthias
Kögler, Stefan
Sigl, Georg
Cryptography and Security
Artificial Intelligence
Information Retrieval
The use of neural networks in edge devices is increasing, which introduces new security challenges related to the neural networks' confidentiality. As edge devices often offer physical access, attacks targeting the hardware, such as side-channel analysis, must be considered. To enhance the performance of neural network inference, hardware accelerators are commonly employed. This work investigates the influence of parallel processing within such accelerators on correlation-based side-channel attacks that exploit power consumption. The focus is on neurons that are part of the same fully-connected layer, which run parallel and simultaneously process the same input value. The theoretical impact of concurrent multiply-and-accumulate operations on overall power consumption is evaluated, as well as the success rate of correlation power analysis. Based on the observed behavior, equations are derived that describe how the correlation decreases with increasing levels of parallelism. The applicability of these equations is validated using a vector-multiplication unit implemented on an FPGA.
title Influence of Parallelism in Vector-Multiplication Units on Correlation Power Analysis
topic Cryptography and Security
Artificial Intelligence
Information Retrieval
url https://arxiv.org/abs/2601.05828