Stochastic Training for Side-Channel Resilient AI
Stochastic Training for Side-Channel Resilient AI
The confidentiality of trained AI models on edge devices is at risk from side-channel attacks exploiting power and electromagnetic emissions. This paper proposes a novel training methodology to enhance resilience against such threats by introducing randomized and interchangeable model configurations during inference. Experimental results on Google Coral Edge TPU show a reduction in side-channel leakage and a slower increase in t-scores over 20,000 traces, demonstrating robustness against adversarial observations. The defense maintains high accuracy, with about 1% degradation in most configurations, and requires no additional hardware or software changes, making it the only applicable solution for existing Edge TPUs.
Anuj Dubey、Aydin Aysu
计算技术、计算机技术
Anuj Dubey,Aydin Aysu.Stochastic Training for Side-Channel Resilient AI[EB/OL].(2025-06-06)[2025-08-02].https://arxiv.org/abs/2506.06597.点此复制
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