主题演讲

D. Fellner
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引用次数: 0

摘要

在过去的十五年中,硬件安全和信任已经发展成为半导体制造,VLSI设计和测试,计算机辅助设计,架构和系统安全交叉的一个重要的新研究领域。在同一时期,机器学习经历了一次重大的复兴,并从一个几乎被遗忘的领域蓬勃发展到城镇的话题。在本次演讲中,我们将首先简要回顾各种基于机器学习的解决方案,这些解决方案已经开发出来,用于解决硬件安全和信任方面的一些问题,包括硬件木马检测,假冒IC识别,来源证明,基于硬件的恶意软件检测,侧信道攻击,PUF建模等。然后,我们将研究这些问题的关键属性,这些属性使它们适合基于机器学习的解决方案,我们将讨论这些方法的潜力和基本限制。最后,我们将思考先进的当代机器学习方法在硬件安全背景下的作用和必要性,并在使用这些方法时提出避免常见陷阱的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Keynotes
Over the last fifteen years, hardware security and trust has evolved into a major new area of research at the intersection of semiconductor manufacturing, VLSI design and test, computer-aided design, architecture and system security. During the same period, machine learning has experience a major revival in interest and has flourished from a nearly forgotten area to the talk of the town. In this presentation, we will first briefly review various machine learning-based solutions which have been developed to address a number of concerns in hardware security and trust, including hardware Trojan detection, counterfeit IC identification, provenance attestation, hardware-based malware detection, side-channel attacks, PUF modeling, etc. Then, we will examine the key attributes of these problems which make them amenable to machine learning-based solutions and we will discuss the potential and the fundamental limitations of such approaches. Lastly, we will ponder the role of and necessity for advanced contemporary machine learning methods in the context of hardware security and we will conclude with suggestions for avoiding common pitfalls when employing such methods.
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