Delphi: A Cryptographic Inference System for Neural Networks

Pratyush Mishra, Ryan T. Lehmkuhl, Akshayaram Srinivasan, Wenting Zheng, R. A. Popa
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引用次数: 192

Abstract

Many companies provide neural network prediction services to users for a wide range of applications. However, current prediction systems compromise one party's privacy: either the user has to send sensitive inputs to the service provider for classification, or the service provider must store its proprietary neural networks on the user's device. The former harms the personal privacy of the user, while the latter reveals the service provider's proprietary model. We design, implement, and evaluate Delphi, a secure prediction system that allows two parties to execute neural network inference without revealing either party's data. Delphi approaches the problem by simultaneously co-designing cryptography and machine learning. We first design a hybrid cryptographic protocol that improves upon the communication and computation costs over prior work. Second, we develop a planner that automatically generates neural network architecture configurations that navigate the performance-accuracy trade-offs of our hybrid protocol. Together, these techniques allow us to achieve a 22x improvement in online prediction latency compared to the state-of-the-art prior work.
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Delphi:一个用于神经网络的密码推理系统
许多公司为用户提供神经网络预测服务,应用范围很广。然而,目前的预测系统损害了一方的隐私:要么用户必须将敏感输入发送给服务提供商进行分类,要么服务提供商必须将其专有的神经网络存储在用户的设备上。前者损害了用户的个人隐私,后者则暴露了服务提供商的专有模式。我们设计、实现和评估Delphi,这是一个安全的预测系统,允许双方在不泄露任何一方数据的情况下执行神经网络推理。Delphi通过同时共同设计密码学和机器学习来解决这个问题。我们首先设计了一种混合加密协议,与之前的工作相比,它改善了通信和计算成本。其次,我们开发了一个规划器,自动生成神经网络架构配置,以导航我们的混合协议的性能精度权衡。总的来说,这些技术使我们能够在在线预测延迟方面比之前的最先进的工作提高22倍。
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