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Variance-Aware Noisy Training: Hardening DNNs Against Unstable Analog Computations

  • 2026
  • OriginalPaper
  • Chapter
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Abstract

This chapter delves into the challenges of training deep neural networks (DNNs) on analog hardware, focusing on the impact of noise and the limitations of traditional Noisy Training. The authors introduce Variance-Aware Noisy Training (VANT), a novel technique designed to enhance robustness against dynamic noise environments. The text explores the interplay between noise injection during training and real-world noise variations, evaluating the effectiveness of VANT through extensive experiments on various datasets and model architectures. Key findings include the superior performance of VANT in improving robustness and accuracy under noisy conditions, as well as its ability to generalize across different noise regimes and dataset complexities. The chapter concludes with practical guidelines for implementing VANT in diverse analog hardware setups, offering a promising solution for deploying robust DNNs on analog accelerators.

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Title
Variance-Aware Noisy Training: Hardening DNNs Against Unstable Analog Computations
Authors
Xiao Wang
Hendrik Borras
Bernhard Klein
Holger Fröning
Copyright Year
2026
DOI
https://doi.org/10.1007/978-3-032-06109-6_9
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