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Accelerating data clustering on GPU-based clusters under shared memory abstraction

机译:在共享内存抽象下加速基于GPU的群集上的数据群集

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Many-core graphics processors are playing today an important role in the advancements of modern highly concurrent processors. Their ability to accelerate computation is being explored under several scientific fields. In the current paper we present the acceleration of a widely used data clustering algorithm, K-means, in the context of high performance GPU clusters. As opposed to most related implementation efforts that use MPI to port their target applications on a GPU cluster, our implementation follows the Software Distributed Shared Memory (SDSM) paradigm in order to distribute information and computation across the accelerator cluster. In order to investigate the efficiency of a programming model that offers shared memory abstraction on GPU clusters we present two implementations, one that is based on a SDSM implementation of OpenMP and another that utilizes the Pleiad cluster middleware on top of the Java platform. The first results show that such an implementation is feasible in order to accelerate a broad category of large scale, data intensive applications, among which K-means is a characteristic case.
机译:今天,多核图形处理器在现代高度并发处理器的发展中扮演着重要角色。他们的加速计算能力正在几个科学领域中探索。在当前的论文中,我们介绍了在高性能GPU集群的背景下,广泛使用的数据聚类算法K-means的加速。与使用MPI在GPU集群上移植其目标应用程序的大多数相关实现工作相反,我们的实现遵循软件分布式共享内存(SDSM)范例,以便在加速器集群中分配信息和计算。为了研究在GPU集群上提供共享内存抽象的编程模型的效率,我们提出了两种实现,一种基于OpenMP的SDSM实现,​​另一种基于Java平台之上的Pleiad集群中间件。最初的结果表明,这样的实现是可行的,以加速大范围的大规模数据密集型应用程序,其中K均值就是一个典型案例。

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