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Towards high performance data analytic on heterogeneous many-core systems: A study on Bayesian Sequential Partitioning

机译:面向异构多核系统上的高性能数据分析:贝叶斯顺序分区研究

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Bayesian Sequential Partitioning (BSP) is a statistically effective density estimation method to comprehend the characteristics of a high dimensional data space. The intensive computation of the statistical model and the counting of enormous data have caused serious design challenges for BSP to handle the growing volume of the data. This paper proposes a high performance design of BSP by leveraging a heterogeneous CPU/GPGPU system that consists of a host CPU and a K80 GPGPU. A series of techniques, on both data structures and execution management policies, is implemented to extensively exploit the computation capability of the heterogeneous many-core system and alleviate system bottlenecks. When compared with a parallel design on a high-end CPU, the proposed techniques achieve 48x average runtime enhancement while the maximum speedup can reach 78.76x. (C) 2018 Elsevier Inc. All rights reserved.
机译:贝叶斯顺序划分(BSP)是一种统计有效的密度估计方法,用于理解高维数据空间的特征。统计模型的密集计算和海量数据的计数为BSP处理日益增长的数据量带来了严重的设计挑战。本文通过利用由主机CPU和K80 GPGPU组成的异构CPU / GPGPU系统,提出了BSP的高性能设计。实施了一系列有关数据结构和执行管理策略的技术,以广泛利用异构多核系统的计算能力并缓解系统瓶颈。与高端CPU上的并行设计相比,所提出的技术可实现48倍的平均运行时间增强,而最大加速可达到78.76倍。 (C)2018 Elsevier Inc.保留所有权利。

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