SALAD: Systematic Assessment of Machine Unlearning on LLM-Aided Hardware Design

Wang, Zeng, Shao, Minghao, Karn, Rupesh, Mankali, Likhitha, Bhandari, Jitendra, Karri, Ramesh, Sinanoglu, Ozgur, Shafique, Muhammad, Knechtel, Johann

arXiv.org Artificial Intelligence 

However, they also pose significant data security challenges, including V erilog evaluation data contamination, intellectual property (IP) design leakage, and the risk of malicious V erilog generation. We introduce SALAD, a comprehensive assessment that leverages machine unlearning to mitigate these threats. Our approach enables the selective removal of contaminated benchmarks, sensitive IP and design artifacts, or malicious code patterns from pre-trained LLMs, all without requiring full retraining. Through detailed case studies, we demonstrate how machine unlearning techniques effectively reduce data security risks in LLM-aided hardware design.