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A Lightweight MapReduce Framework for Secure Processing with SGX

机译:使用SGX进行安全处理的轻量级MapReduce框架

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MapReduce is a programming model used extensively for parallel data processing in distributed environments. A wide range of algorithms were implemented using MapReduce, from simple tasks like sorting and searching up to complex clustering and machine learning operations. Many of these implementations are part of services externalized to cloud infrastructures. Over the past years, however, many concerns have been raised regarding the security guarantees offered in such environments. Some solutions relying on cryptography were proposed for countering threats but these typically imply a high computational overhead. Intel, the largest manufacturer of commodity CPUs, recently introduced SGX (software guard extensions), a set of hardware instructions that support execution of code in an isolated secure environment. In this paper, we explore the use of Intel SGX for providing privacy guarantees for MapReduce operations, and based on our evaluation we conclude that it represents a viable alternative to a cryptographic mechanism. We present results based on the widely used k-means clustering algorithm, but our implementation can be generalized to other applications that can be expressed using MapReduce model.
机译:MapReduce是一种编程模型,广泛用于分布式环境中的并行数据处理。使用MapReduce实施了各种各样的算法,从简单的任务(如排序和搜索)到复杂的集群和机器学习操作。其中许多实施都是云基础架构外部服务的一部分。然而,在过去的几年中,对于在这种环境中提供的安全保证提出了许多关注。提出了一些依赖于密码学的解决方案来应对威胁,但是这些解决方案通常意味着较高的计算开销。最大的商用CPU制造商英特尔最近推出了SGX(软件防护扩展),这是一组硬件指令,支持在隔离的安全环境中执行代码。在本文中,我们探索了使用Intel SGX为MapReduce操作提供隐私保证,并根据我们的评估得出结论,它代表了一种加密机制的可行替代方案。我们基于广泛使用的k均值聚类算法给出结果,但是我们的实现可以推广到可以使用MapReduce模型表示的其他应用程序。

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