ML-Assisted Side Channel Security Approaches for Hardware Trojan Detection and PUF Modeling Attacks
Hardware components are becoming prone to threats with increasing technological advances. Malicious modifications to such components are increasing and are known as hardware Trojans.
Bhatta, Niraj Prasad
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