有点同态密码的矩阵乘法使用GPU加速

Yuan Tian, Mznah Al-Rodhaan, Biao Song, A. Al-Dhelaan, Tinghuai Ma
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引用次数: 3

摘要

自云计算范式出现以来,同态加密已成为一个热门的研究课题。本文讨论了一种基于gpu辅助的矩阵运算同态密码系统的设计。我们提出的方案是基于计算同态的n*n矩阵乘法。通过扩展DGHV同态,我们采用了更高效的GPU编程方案,证明了验证结果在加解密过程中不会泄露输入和输出的任何信息。性能结果是在配备GeForce GTX 765M GPU的机器上执行的。我们使用三种基本的并行算法来形成有效的解决方案,从而加快了加密和评估的速度。虽然在目前阶段,完全同态加密在现实世界的应用中仍然不实用,但这项工作显示了提高同态加密性能并实现这一目标的可能性。
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Somewhat homomorphic cryptography for matrix multiplication using GPU acceleration
Homomorphic encryption has become a popular research topic since the cloud computing paradigm emerged. This paper discusses the design of a GPU-assisted homomorphic cryptograph for matrix operation. Our proposed scheme is based on an n*n matrix multiplication which are computationally homomorphic. We use more efficient GPU programming scheme with the extension of DGHV homomorphism, which prove the result of verification does not leak any information about the inputs or the output during the encryption and decryption. The performance results are obtained from the executions on a machine equipped with a GeForce GTX 765M GPU. We use three basic parallel algorithms to form efficient solutions which accelerate the speed of encryption and evaluation. Although fully homomorphic encryption is still not practical for real world applications in current stage, this work shows the possibility to improve the performance of homomorphic encryption and achieve this target one step closer.
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