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Distributed Computation: Privacy, Straggler Mitigation, and Security Against Colluding Workers

机译:分布式计算:隐私,斯特格勒减缓和对斗争工人的保障

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In a distributed computation system, there is a master node who wants to compute a function of its own data by distributing the computation amongst several worker nodes. In distributed computation system considered here, the master wants to multiply two matrices, one owned by the master and other matrix is in the library of matrices shared by the worker nodes. The master divides the computation task among these nodes. After recovering the desired computation, any set of up to $T$ colluding workers should not know which matrix in the library was desired by the master, referred to as demand privacy and also do not have any information about master's matrix, referred to as data privacy. In this paper, a distributed computing scheme is proposed that simultaneously ensures (1) data and demand privacy of the master against colluding workers (2) straggler mitigation and (3) security against malicious workers. Similar matrix multiplication scenario was considered against non-colluding worker nodes by M. Kim and J. Lee in Private Secure Coded Computation.
机译:在分布式计算系统中,有一个主节点通过在几个工作人节点之间分发计算来计算其自己的数据的函数。在此处考虑的分布式计算系统中,主站想要乘以两个矩阵,由主站和其他矩阵拥有的一个是由工作节点共享的矩阵库中。主站在这些节点之间划分计算任务。在恢复所需的计算后,任何一组 $ t $ 斗园工人不应该知道库中的哪个矩阵是由掌握所需的,称为需求隐私,也没有关于主矩阵的任何信息,称为数据隐私。在本文中,提出了一种分布式计算方案,同时确保(1)掌握斗争工人的数据和需求隐私(2)对恶意工人的安全性和(3)安全。在私有安全编码计算中,M. Kim和J. Lee对非勾结工作节点考虑了类似的矩阵乘法方案。

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