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Autori principali: Wang, Xiao, Borras, Hendrik, Klein, Bernhard, Fröning, Holger
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2501.14531
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author Wang, Xiao
Borras, Hendrik
Klein, Bernhard
Fröning, Holger
author_facet Wang, Xiao
Borras, Hendrik
Klein, Bernhard
Fröning, Holger
contents The success of deep learning has sparked significant interest in designing computer hardware optimized for the high computational demands of neural network inference. As further miniaturization of digital CMOS processors becomes increasingly challenging, alternative computing paradigms, such as analog computing, are gaining consideration. Particularly for compute-intensive tasks such as matrix multiplication, analog computing presents a promising alternative due to its potential for significantly higher energy efficiency compared to conventional digital technology. However, analog computations are inherently noisy, which makes it challenging to maintain high accuracy on deep neural networks. This work investigates the effectiveness of training neural networks with quantization to increase the robustness against noise. Experimental results across various network architectures show that quantization-aware training with constant scaling factors enhances robustness. We compare these methods with noisy training, which incorporates a noise injection during training that mimics the noise encountered during inference. While both two methods increase tolerance against noise, noisy training emerges as the superior approach for achieving robust neural network performance, especially in complex neural architectures.
format Preprint
id arxiv_https___arxiv_org_abs_2501_14531
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle On Hardening DNNs against Noisy Computations
Wang, Xiao
Borras, Hendrik
Klein, Bernhard
Fröning, Holger
Machine Learning
The success of deep learning has sparked significant interest in designing computer hardware optimized for the high computational demands of neural network inference. As further miniaturization of digital CMOS processors becomes increasingly challenging, alternative computing paradigms, such as analog computing, are gaining consideration. Particularly for compute-intensive tasks such as matrix multiplication, analog computing presents a promising alternative due to its potential for significantly higher energy efficiency compared to conventional digital technology. However, analog computations are inherently noisy, which makes it challenging to maintain high accuracy on deep neural networks. This work investigates the effectiveness of training neural networks with quantization to increase the robustness against noise. Experimental results across various network architectures show that quantization-aware training with constant scaling factors enhances robustness. We compare these methods with noisy training, which incorporates a noise injection during training that mimics the noise encountered during inference. While both two methods increase tolerance against noise, noisy training emerges as the superior approach for achieving robust neural network performance, especially in complex neural architectures.
title On Hardening DNNs against Noisy Computations
topic Machine Learning
url https://arxiv.org/abs/2501.14531