Computer Science > Hardware Architecture
[Submitted on 4 Jun 2022 (v1), last revised 16 Jun 2022 (this version, v2)]
Title:Fast and Accurate Error Simulation for CNNs against Soft Errors
View PDFAbstract:The great quest for adopting AI-based computation for safety-/mission-critical applications motivates the interest towards methods for assessing the robustness of the application w.r.t. not only its training/tuning but also errors due to faults, in particular soft errors, affecting the underlying hardware. Two strategies exist: architecture-level fault injection and application-level functional error simulation. We present a framework for the reliability analysis of Convolutional Neural Networks (CNNs) via an error simulation engine that exploits a set of validated error models extracted from a detailed fault injection campaign. These error models are defined based on the corruption patterns of the output of the CNN operators induced by faults and bridge the gap between fault injection and error simulation, exploiting the advantages of both approaches. We compared our methodology against SASSIFI for the accuracy of functional error simulation w.r.t. fault injection, and against TensorFI in terms of speedup for the error simulation strategy. Experimental results show that our methodology achieves about 99\% accuracy of the fault effects w.r.t. SASSIFI, and a speedup ranging from 44x up to 63x w.r.t. TensorFI, that only implements a limited set of error models.
Submission history
From: Antonio Miele [view email][v1] Sat, 4 Jun 2022 19:45:02 UTC (3,864 KB)
[v2] Thu, 16 Jun 2022 05:46:24 UTC (3,864 KB)
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