Evaluating Cryptographic Performance of Raspberry Pi Clusters

Daniel Hawthorne-Madell, Michael P. Kapralos, R. Blaine, Suzanne J. Matthews
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引用次数: 5

Abstract

ARM-based single board computers (SBCs) such as the Raspberry Pi capture the imaginations of hobbyists and scientists due to their low cost and versatility. With the deluge of data produced in edge environments, SBCs and SBC clusters have emerged as low-cost platform for data collection and analysis. Simultaneously, security is a growing concern as new regulations require secure communication for data collected from the edge. In this paper, we compare the performance of a Raspberry Pi cluster to a power-efficient next unit of computing (NUC) and a midrange desktop (MRD) on three leading cryptographic algorithms (AES, Twofish, and Serpent) and assess the general-purpose performance of the three systems using the HPL benchmark. Our results suggest that hardware-level instruction sets for all three cryptographic algorithms should be implemented on single board computers to aid with secure data transfer on the edge.
评估树莓派集群的加密性能
基于arm的单板计算机(sbc),如树莓派,由于其低成本和多功能性,吸引了爱好者和科学家的想象力。随着边缘环境中产生的大量数据,SBC和SBC集群已经成为数据收集和分析的低成本平台。同时,随着新法规要求从边缘收集的数据进行安全通信,安全性也日益受到关注。在本文中,我们将树莓派集群的性能与三种领先的加密算法(AES, Twofish和Serpent)上的节能下一个计算单元(NUC)和中档桌面(MRD)进行了比较,并使用HPL基准评估了这三种系统的通用性能。我们的研究结果表明,所有三种加密算法的硬件级指令集应该在单板计算机上实现,以帮助边缘上的安全数据传输。
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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