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DeepSecure: Scalable Provably-Secure Deep Learning

机译:深度:可扩展可释放的深度学习

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This paper presents DeepSecure, the an scalable and provably secure Deep Learning (DL) framework that is built upon automated design, efficient logic synthesis, and optimization methodologies. DeepSecure targets scenarios in which neither of the involved parties including the cloud servers that hold the DL model parameters or the delegating clients who own the data is willing to reveal their information. Our framework is the first to empower accurate and scalable DL analysis of data generated by distributed clients without sacrificing the security to maintain efficiency. The secure DL computation in DeepSecure is performed using Yao's Garbled Circuit (GC) protocol. We devise GC-optimized realization of various components used in DL. Our optimized implementation achieves up to 58-fold higher throughput per sample compared with the best prior solution. In addition to the optimized GC realization, we introduce a set of novel low-overhead pre-processing techniques which further reduce the GC overall runtime in the context of DL. Our extensive evaluations demonstrate up to two orders-of-magnitude additional runtime improvement achieved as a result of our pre-processing methodology.
机译:本文介绍了深度,可扩展且可提供可提供的深度学习(DL)框架,该框架是在自动化设计,高效逻辑合成和优化方法上建立的。 DeepSecure目标方案,其中涉及的各方都不是持有DL模型参数的云服务器或拥有数据的委派客户端愿意透露他们的信息。我们的框架是第一个赋予分布式客户端生成的数据的准确和可扩展的DL分析,而不会牺牲安全性以维持效率。使用Yao的乱码电路(GC)协议执行深度安全的安全DL计算。我们设计了GC优化的DL中使用的各种组件的实现。与最佳先前解决方案相比,我们优化的实施达到了每种样品的吞吐量高达58倍。除了优化的GC实现之外,我们还介绍了一组新颖的低开销预处理技术,进一步降低了DL的上下文中的GC整体运行时。由于我们的预处理方法,我们广泛的评估展示了额外的两个数量级额外的运行时间改进。

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