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TAPAS: Tricks to Accelerate (encrypted) Prediction As a Service

机译:TAPAS:加快(加密)预测即服务的技巧

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摘要

Machine learning methods are widely used for a variety of prediction problems. Prediction as a service is a paradigm in which service providers with technological expertise and computational resources may perform predictions for clients. However, data privacy severely restricts the applicability of such services, unless measures to keep client data private (even from the service provider) are designed. Equally important is to minimize the nature of computation and amount of communication required between client and server. Fully homomorphic encryption offers a way out, whereby clients may encrypt their data, and on which the server may perform arithmetic computations. The one drawback of using fully homomorphic encryption is the amount of time required to evaluate large machine learning models on encrypted data. We combine several ideas from the machine learning literature, particularly work on quantization and sparsification of neural networks, together with algorithmic tools to speed-up and parallelize computation using encrypted data.
机译:机器学习方法被广泛用于各种预测问题。作为服务的预测是一种范例,其中具有技术专长和计算资源的服务提供者可以为客户执行预测。但是,数据隐私严重限制了此类服务的适用性,除非设计了旨在使客户端数据(甚至来自服务提供商)不公开的措施。同样重要的是最小化计算的本质以及客户端和服务器之间所需的通信量。完全同态加密提供了一种出路,客户端可以借此加密其数据,服务器可以在其上执行算术计算。使用完全同态加密的一个缺点是评估加密数据上的大型机器学习模型所需的时间。我们结合了机器学习文献中的一些想法,特别是有关神经网络的量化和稀疏化的工作,并结合了算法工具来加快和并行化使用加密数据的计算。

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