A complete key recovery timing attack on a GPU

Z. Jiang, Yunsi Fei, D. Kaeli
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引用次数: 82

Abstract

Graphics Processing Units (GPUs) have become mainstream parallel computing devices. They are deployed on diverse platforms, and an increasing number of applications have been moved to GPUs to exploit their massive parallel computational resources. GPUs are starting to be used for security services, where high-volume data is encrypted to ensure integrity and confidentiality. However, the security of GPUs has only begun to receive attention. Issues such as side-channel vulnerability have not been addressed. The goal of this paper is to evaluate the side-channel security of GPUs and demonstrate a complete AES (Advanced Encryption Standard) key recovery using known ciphertext through a timing channel. To the best of our knowledge, this is the first work that clearly demonstrates the vulnerability of a commercial GPU architecture to side-channel timing attacks. Specifically, for AES-128, we have been able to recover all key bytes utilizing a timing side channel in under 30 minutes.
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一个完整的密钥恢复定时攻击的GPU
图形处理单元(gpu)已经成为主流的并行计算设备。它们被部署在不同的平台上,越来越多的应用程序已经转移到gpu上,以利用其大量的并行计算资源。gpu开始用于安全服务,在这些服务中,大量数据被加密以确保完整性和机密性。然而,gpu的安全性才刚刚开始受到重视。诸如侧通道漏洞之类的问题尚未得到解决。本文的目标是评估gpu的侧信道安全性,并演示使用已知密文通过定时信道进行完整的AES(高级加密标准)密钥恢复。据我们所知,这是第一个清楚地展示商业GPU架构对侧信道定时攻击的脆弱性的工作。具体来说,对于AES-128,我们已经能够在30分钟内利用时序侧信道恢复所有密钥字节。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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