FLARE: A Fast, Secure, and Memory-Efficient Distributed Analytics Framework (Flavor: Systems)

Xiang Li, Fabing Li, Mingyu Gao
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引用次数: 2

Abstract

As big data processing in the cloud becomes prevalent today, data privacy on such public platforms raises critical concerns. Hardware-based trusted execution environments (TEEs) provide promising and practical platforms for low-cost privacy-preserving data processing. However, using TEEs to enhance the security of data analytics frameworks like Apache Spark involves challenging issues when separating various framework components into trusted and untrusted domains, demanding meticulous considerations for programmability, performance, and security. Based on Intel SGX, we build Flare, a fast, secure, and memory-efficient data analytics framework with a familiar user programming interface and useful functionalities similar to Apache Spark. Flare ensures confidentiality and integrity by keeping sensitive data and computations encrypted and authenticated. It also supports oblivious processing to protect against access pattern side channels. The main innovations of Flare include a novel abstraction paradigm of shadow operators and shadow tasks to minimize trusted components and reduce domain switch overheads, memory-efficient data processing with proper granularities for different operators, and adaptive parallelization based on memory allocation intensity for better scalability. Flare outperforms the state-of-the-art secure framework by 3.0× to 176.1×, and is also 2.8× to 28.3× faster than a monolithic libOS-based integration approach.
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FLARE:一个快速、安全、内存高效的分布式分析框架(风格:系统)
随着云中的大数据处理在今天变得普遍,这些公共平台上的数据隐私引发了严重的担忧。基于硬件的可信执行环境(tee)为低成本保护隐私的数据处理提供了有前途的实用平台。然而,使用tee来增强数据分析框架(如Apache Spark)的安全性涉及到将各种框架组件划分为可信和不可信域时的挑战性问题,需要对可编程性、性能和安全性进行细致的考虑。基于英特尔SGX,我们构建了Flare,这是一个快速、安全、内存高效的数据分析框架,具有熟悉的用户编程界面和类似于Apache Spark的有用功能。Flare通过对敏感数据和计算进行加密和认证来确保机密性和完整性。它还支持无关处理,以防止访问模式侧通道。Flare的主要创新包括影子操作符和影子任务的新颖抽象范式,以最大限度地减少可信组件并减少域切换开销,对不同操作符进行适当粒度的内存高效数据处理,以及基于内存分配强度的自适应并行化,以获得更好的可扩展性。Flare的性能比最先进的安全框架高出3.0到176.1倍,并且比基于libos的单片集成方法快2.8到28.3倍。
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