Logic locking is a promising technique for protecting integrated circuit designs while outsourcing their fabrication. Recently, graph neural network (GNN)-based link prediction attacks have been developed which can successfully break all the multiplexer-based locking techniques that were expected to be learning-resilient. We present SimLL, a novel similarity-based locking technique which locks a design using multiplexers and shows robustness against the existing structure-exploiting oracle-less learning-based attacks. Aiming to confuse the machine learning (ML) models, SimLL introduces key-controlled multiplexers between logic gates or wires that exhibit high levels of topological and functional similarity. Empirical results show that SimLL can degrade the accuracy of existing ML-based attacks to approximately 50%, resulting in a negligible advantage over random guessing.
@article{arxiv.2305.05870,
title = {Similarity-Based Logic Locking Against Machine Learning Attacks},
author = {Subhajit Dutta Chowdhury and Kaixin Yang and Pierluigi Nuzzo},
journal= {arXiv preprint arXiv:2305.05870},
year = {2023}
}
Comments
Accepted at Design Automation Conference (DAC) 2023