面向人工智能硬件安全:挑战与机遇

H. Sayadi, Mehrdad Aliasgari, Furkan Aydin, S. Potluri, Aydin Aysu, Jacky Edmonds, Sara Tehranipoor
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引用次数: 2

摘要

在新兴计算系统中数据规模大幅增加的推动下,人工智能(AI)和机器学习(ML)的最新发展已经导致这种智能技术在包括安全在内的各个学科中的成功应用。传统上,数据的完整性是通过软件级别的各种安全协议来保护的,底层硬件被认为是安全的。然而,随着对硬件的攻击越来越多,这种假设不再成立。新的安全威胁(例如,恶意软件、侧信道攻击等)的出现需要修补/更新基于软件的解决方案,这需要大量的内存和硬件资源。因此,应该将安全性委托给底层硬件,构建一个自底向上的解决方案来保护计算设备,而不是将其视为事后的想法。本文强调了AI/ML技术在硬件和架构安全领域日益增长的作用,并就设计准确、高效的基于机器学习的攻击和防御机制以应对现代计算机系统和下一代密码系统中出现的硬件安全漏洞的紧迫挑战、机遇和未来方向提供了深刻的讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards AI-Enabled Hardware Security: Challenges and Opportunities
Recent developments in Artificial Intelligence (AI) and Machine Learning (ML), driven by a substantial increase in the size of data in emerging computing systems, have led into successful applications of such intelligent techniques in various disciplines including security. Traditionally, integrity of data has been protected with various security protocols at the software level with the underlying hardware assumed to be secure. This assumption however is no longer true with an increasing number of attacks reported on the hardware. The emergence of new security threats (e.g., malware, side-channel attacks, etc.) requires patching/updating the software-based solutions that needs a vast amount of memory and hardware resources. Therefore, the security should be delegated to the underlying hardware, building a bottom-up solution for securing computing devices rather than treating it as an afterthought. This paper highlights the growing role of AI/ML techniques in hardware and architecture security field and provides insightful discussions on pressing challenges, opportunities, and future directions of designing accurate and efficient machine learning-based attacks and defense mechanisms in response to emerging hardware security vulnerabilities in modern computer systems and next generation of cryptosystems.
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