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Revisiting Hash Join on Graphics Processors: A Decade Later

机译:重新审视哈希加入图形处理器:十年后

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The large number of computational cores and the high memory bandwidth provided by modern graphics processors (GPUs) make them an ideal hardware accelerator for in-memory hash joins. Over the last decade, significant research effort has been put into improving the performance of hash join operation on GPUs. Looking back at the literature, we find that the fundamentals of the GPU hash join operation has remained unchanged. In-spite of this, modern GPU hash join implementations have managed to achieve over 5.3x end-to-end performance improvement over the original implementation by taking advantage of the GPU architecture features introduced in the last decade. Hence, a systematic revisit of the hash join implementations from the perspective of GPU hardware changes is necessary to understand the past research and to guide future studies. In this paper, we first revisit the major GPU hash join implementations in the last decade and detail how they take advantage of different GPU architecture features. We then perform a comprehensive performance evaluation of these implementations using the latest hardware. This helps to shed light on the impact of different architecture features and to identify the factors guiding the choice of these architecture features. Finally, we study how data characteristics like skew and match rate impact the performance of GPU hash join implementations and propose techniques to improve the performance of existing implementations under such conditions.
机译:在大量计算核心和现代图形处理器(GPU)的提供的高内存带宽使其成为理想的硬件加速器在内存中的哈希联接。在过去的十年中,显著的研究工作已投入提高散列性能连接操作上的GPU。纵观文学的时候,我们发现,GPU哈希基本面连接操作保持不变。在-尽管如此,现代GPU散列连接实现设法通过采取GPU架构的特点在过去十年中推出的优势,实现了5.3倍的端至端的表现比原先实施的改善。因此,散列的系统化重访从GPU硬件变化的角度连接的实现需要了解过去的研究并指导今后的研究。在本文中,我们首先重温主要GPU哈希联接在过去的十年和细节实现他们如何利用不同的GPU架构功能。然后,我们执行使用最新的硬件,这些实现的综合绩效评价。这有助于阐明的不同的体系结构特征的影响光,并确定导引的这些结构特征的选择的因素。最后,我们研究像扭曲和匹配率影响的数据特性如何GPU哈希的性能加入的实现,并提出技术来改善现有的实现这样的条件下的性能。

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