可信执行环境下流处理系统的网络侧信道泄漏缓解

Muhammad Bilal, Hassan Alsibyani, M. Canini
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引用次数: 4

摘要

关于云计算的一个关键问题是在云中处理的敏感数据的保密性。受信任的执行环境(tee),如Intel Software Guard扩展(SGX),允许应用程序在不受信任的平台上安全地运行。然而,仅使用tee进行流处理不足以确保隐私,因为网络通信模式可能会泄露有关数据的信息。本文介绍了两种技术——任播和多播——用于根据用户选择的缓解级别减轻流应用程序中级间通信中的泄漏。这些技术旨在实现网络数据遗忘,即通信模式不应依赖于数据。我们在一个基于sgx的流处理系统中实现了这些技术。我们使用三个基准测试应用程序来评估延迟和吞吐量开销以及数据遗忘。结果表明,与组播相比,任意播可以更好地扩展输入负载和缓解级别,并提供更好的数据遗忘。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mitigating Network Side Channel Leakage for Stream Processing Systems in Trusted Execution Environments
A crucial concern regarding cloud computing is the confidentiality of sensitive data being processed in the cloud. Trusted Execution Environments (TEEs), such as Intel Software Guard extensions (SGX), allow applications to run securely on an untrusted platform. However, using TEEs alone for stream processing is not enough to ensure privacy as network communication patterns may leak information about the data. This paper introduces two techniques -- anycast and multicast --for mitigating leakage at inter-stage communications in streaming applications according to a user-selected mitigation level. These techniques aim to achieve network data obliviousness, i.e., communication patterns should not depend on the data. We implement these techniques in an SGX-based stream processing system. We evaluate the latency and throughput overheads, and the data obliviousness using three benchmark applications. The results show that anycast scales better with input load and mitigation level, and provides better data obliviousness than multicast.
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