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PermuteV: A Performant Side-channel-Resistant RISC-V Core Securing Edge AI Inference

Published: December 19, 2025 | arXiv ID: 2512.18132v1

By: Nuntipat Narkthong, Xiaolin Xu

Potential Business Impact:

Protects smart devices from being spied on.

Business Areas:
RISC Hardware

Edge AI inference is becoming prevalent thanks to the emergence of small yet high-performance microprocessors. This shift from cloud to edge processing brings several benefits in terms of energy savings, improved latency, and increased privacy. On the downside, bringing computation to the edge makes them more vulnerable to physical side-channel attacks (SCA), which aim to extract the confidentiality of neural network models, e.g., architecture and weight. To address this growing threat, we propose PermuteV, a performant side-channel resistant RISC-V core designed to secure neural network inference. PermuteV employs a hardware-accelerated defense mechanism that randomly permutes the execution order of loop iterations, thereby obfuscating the electromagnetic (EM) signature associated with sensitive operations. We implement PermuteV on FPGA and perform evaluations in terms of side-channel security, hardware area, and runtime overhead. The experimental results demonstrate that PermuteV can effectively defend against EM SCA with minimal area and runtime overhead.

Country of Origin
🇺🇸 United States

Page Count
11 pages

Category
Computer Science:
Cryptography and Security