Preliminary Study of Trusted Execution Environments on Heterogeneous Edge Platforms

Zhenyu Ning, Jinghui Liao, Fengwei Zhang, Weisong Shi
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引用次数: 20

Abstract

The recent edge computing infrastructure introduces a new computing model that works as a complement of the traditional cloud computing. The edge nodes in the infrastructure reduce the network latency of the cloud computing model and increase data privacy by offloading the sensitive computation from the cloud to the edge. Recent research focuses on the applications and performance of the edge computing, but less attention is paid to the security of this new computing paradigm. Inspired by the recent move of hardware vendors that introducing hardware-assisted Trusted Execution Environment (TEE), we believe applying these TEEs on the edge nodes would be a natural choice to secure the computation and sensitive data on these nodes. In this paper, we investigate the typical hardware-assisted TEEs and evaluate the performance of these TEEs to help analyze the feasibility of deploying them on the edge platforms. Our experiments show that the performance overhead introduced by the TEEs is low, which indicates that integrating these TEEs into the edge nodes can efficiently mitigate security loopholes with a low-performance overhead.
异构边缘平台可信执行环境的初步研究
最近的边缘计算基础设施引入了一种新的计算模型,作为传统云计算的补充。基础设施中的边缘节点减少了云计算模型的网络延迟,并通过将敏感计算从云转移到边缘来提高数据隐私性。最近的研究主要集中在边缘计算的应用和性能上,但对这种新计算范式的安全性关注较少。受最近硬件供应商引入硬件辅助可信执行环境(TEE)的启发,我们相信在边缘节点上应用这些TEE将是确保这些节点上的计算和敏感数据安全的自然选择。在本文中,我们研究了典型的硬件辅助tee,并评估了这些tee的性能,以帮助分析在边缘平台上部署它们的可行性。我们的实验表明,tee引入的性能开销很小,这表明将这些tee集成到边缘节点中可以有效地缓解安全漏洞,并且性能开销很小。
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