A Survey on Machine Learning in Hardware Security
Troya Çağıl Köylü, Cezar Reinbrecht, Anteneh Gebregiorgis, Said Hamdioui, Mottaqiallah Taouil
Abstract
Hardware security is currently a very influential domain, where each year countless works are published concerning attacks against hardware and countermeasures. A significant number of them use machine learning, which is proven to be very effective in other domains. This survey, as one of the early attempts, presents the usage of machine learning in hardware security in a full and organized manner. Our contributions include classification and introduction to the relevant fields of machine learning, a comprehensive and critical overview of machine learning usage in hardware security, and an investigation of the hardware attacks against machine learning (neural network) implementations.