使用gpu加速FHEW的引导

M. Lee, Yongje Lee, J. Cheon, Y. Paek
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引用次数: 10

摘要

近年来,GPU的使用已经不仅仅局限于图形相关的工作,各种各样的应用都在利用GPU的灵活性来加速计算性能。其中,最新兴的应用之一是完全同态加密(FHE)方案,它允许对加密数据进行任意计算。尽管进行了大量的研究,但由于计算量巨大,特别是在自引导过程中,它不能被认为是实用的。本文以FHE方案为例,利用gpu加速了FHEW方案中最近提出的快速自启动方法的性能。为了进行优化,我们研究了参考代码并执行了性能分析,以找出性能加速的候选对象。在分析结果的基础上,结合更灵活的权衡方法,利用GPU和CUDA的编程模型对FHEW中的自举算法进行了优化。实验结果表明,优化后的FHEW密文的自启动时间小于0.11秒。
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Accelerating bootstrapping in FHEW using GPUs
Recently, the usage of GPU is not limited to the jobs associated with graphics and a wide variety of applications take advantage of the flexibility of GPUs to accelerate the computing performance. Among them, one of the most emerging applications is the fully homomorphic encryption (FHE) scheme, which enables arbitrary computations on encrypted data. Despite much research effort, it cannot be considered as practical due to the enormous amount of computations, especially in the bootstrapping procedure. In this paper, we accelerate the performance of the recently suggested fast bootstrapping method in FHEW scheme using GPUs, as a case study of a FHE scheme. In order to optimize, we explored the reference code and carried out profiling to find out candidates for performance acceleration. Based on the profiling results, combined with more flexible tradeoff method, we optimized the bootstrapping algorithm in FHEW using GPU and CUDA's programming model. The empirical result shows that the bootstrapping of FHEW ciphertext can be done in less than 0.11 second after optimization.
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