CRAIARApr 12, 2023

Exploiting Logic Locking for a Neural Trojan Attack on Machine Learning Accelerators

arXiv:2304.06017v24 citationsh-index: 14
AI Analysis

This work reveals a critical security vulnerability in hardware accelerators for machine learning, potentially affecting chip manufacturers and ML-as-a-service providers.

The authors demonstrated that logic locking, a hardware IP protection technique, can be exploited to create neural-trojan backdoors in machine learning accelerators, achieving a 74% accuracy drop for trigger inputs with only 1.7% degradation for other inputs.

Logic locking has been proposed to safeguard intellectual property (IP) during chip fabrication. Logic locking techniques protect hardware IP by making a subset of combinational modules in a design dependent on a secret key that is withheld from untrusted parties. If an incorrect secret key is used, a set of deterministic errors is produced in locked modules, restricting unauthorized use. A common target for logic locking is neural accelerators, especially as machine-learning-as-a-service becomes more prevalent. In this work, we explore how logic locking can be used to compromise the security of a neural accelerator it protects. Specifically, we show how the deterministic errors caused by incorrect keys can be harnessed to produce neural-trojan-style backdoors. To do so, we first outline a motivational attack scenario where a carefully chosen incorrect key, which we call a trojan key, produces misclassifications for an attacker-specified input class in a locked accelerator. We then develop a theoretically-robust attack methodology to automatically identify trojan keys. To evaluate this attack, we launch it on several locked accelerators. In our largest benchmark accelerator, our attack identified a trojan key that caused a 74\% decrease in classification accuracy for attacker-specified trigger inputs, while degrading accuracy by only 1.7\% for other inputs on average.

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