2023
DOI: 10.1587/transfun.2022vlp0004
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Vulnerability Estimation of DNN Model Parameters with Few Fault Injections

Abstract: The reliability of deep neural networks (DNN) against hardware errors is essential as DNNs are increasingly employed in safetycritical applications such as automatic driving. Transient errors in memory, such as radiation-induced soft error, may propagate through the inference computation, resulting in unexpected output, which can adversely trigger catastrophic system failures. As a first step to tackle this problem, this paper proposes constructing a vulnerability model (VM) with a small number of fault inject… Show more

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