ReDCrypt

B. Rouhani, S. Hussain, K. Lauter, F. Koushanfar
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引用次数: 7

Abstract

Artificial Intelligence (AI) is increasingly incorporated into the cloud business in order to improve the functionality (e.g., accuracy) of the service. The adoption of AI as a cloud service raises serious privacy concerns in applications where the risk of data leakage is not acceptable. Examples of such applications include scenarios where clients hold potentially sensitive private information such as medical records, financial data, and/or location. This article proposes ReDCrypt, the first reconfigurable hardware-accelerated framework that empowers privacy-preserving inference of deep learning models in cloud servers. ReDCrypt is well-suited for streaming (a.k.a., real-time AI) settings where clients need to dynamically analyze their data as it is collected over time without having to queue the samples to meet a certain batch size. Unlike prior work, ReDCrypt neither requires to change how AI models are trained nor relies on two non-colluding servers to perform. The privacy-preserving computation in ReDCrypt is executed using Yao’s Garbled Circuit (GC) protocol. We break down the deep learning inference task into two phases: (i) privacy-insensitive (local) computation, and (ii) privacy-sensitive (interactive) computation. We devise a high-throughput and power-efficient implementation of GC protocol on FPGA for the privacy-sensitive phase. ReDCrypt’s accompanying API provides support for seamless integration of ReDCrypt into any deep learning framework. Proof-of-concept evaluations for different DL applications demonstrate up to 57-fold higher throughput per core compared to the best prior solution with no drop in the accuracy.
人工智能(AI)越来越多地融入云业务,以提高服务的功能(例如准确性)。采用人工智能作为云服务,在数据泄露风险不可接受的应用程序中引发了严重的隐私问题。此类应用程序的示例包括客户持有潜在敏感私人信息(如医疗记录、财务数据和/或位置)的场景。本文提出了ReDCrypt,这是第一个可重构的硬件加速框架,它支持云服务器中深度学习模型的隐私保护推理。ReDCrypt非常适合流(又名实时AI)设置,客户端需要动态分析他们的数据,因为它是随着时间的推移而收集的,而不必排队的样本,以满足一定的批处理大小。与之前的工作不同,ReDCrypt既不需要改变人工智能模型的训练方式,也不依赖于两个不串通的服务器来执行。ReDCrypt中的隐私保护计算使用Yao的乱码电路(GC)协议执行。我们将深度学习推理任务分解为两个阶段:(i)隐私不敏感(局部)计算和(ii)隐私敏感(交互)计算。我们在FPGA上设计了一种高吞吐量和低功耗的GC协议实现,用于隐私敏感阶段。ReDCrypt附带的API支持将ReDCrypt无缝集成到任何深度学习框架中。不同深度学习应用的概念验证评估表明,与最佳的先前解决方案相比,每个核心的吞吐量提高了57倍,而准确性没有下降。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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