High-performance polyline intersection based spatial join on GPU-accelerated clusters

Simin You, Jianting Zhang, L. Gruenwald
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引用次数: 6

Abstract

The rapid growing volumes of spatial data have brought significant challenges on developing high-performance spatial data processing techniques in parallel and distributed computing environments. Spatial joins are important data management techniques in gaining insights from large-scale geospatial data. While several distributed spatial join techniques based on spatial partitions have been implemented on top of existing Big Data systems, they are not capable of natively exploiting massively data parallel computing power provided by modern commodity Graphics Processing Units (GPUs). In this study, as an important component of our research initiative in developing high-performance spatial join techniques on GPUs, we have designed and implemented a polyline intersection based spatial join technique that is capable of exploiting massively data parallel computing power on GPUs. The proposed polyline intersection based spatial join technique is integrated into a customized lightweight distributed execution engine that natively supports spatial partitions. We empirically evaluate the performance of the proposed spatial join technique on both a standalone GPU-equipped workstation and Amazon EC2 GPU-accelerated clusters and demonstrate its high performance when comparing with the state-of-the-art.
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基于gpu加速集群空间连接的高性能多线段交
空间数据量的快速增长给并行和分布式计算环境下的高性能空间数据处理技术的开发带来了重大挑战。空间连接是获取大规模地理空间数据的重要数据管理技术。虽然一些基于空间分区的分布式空间连接技术已经在现有的大数据系统上实现,但它们无法利用现代商品图形处理单元(gpu)提供的大规模数据并行计算能力。在本研究中,作为我们在gpu上开发高性能空间连接技术的研究计划的重要组成部分,我们设计并实现了一种基于多线交集的空间连接技术,该技术能够利用gpu上的大规模数据并行计算能力。所提出的基于折线交集的空间连接技术被集成到一个定制的轻量级分布式执行引擎中,该引擎本身支持空间分区。我们在配备独立gpu的工作站和Amazon EC2 gpu加速集群上对所提出的空间连接技术的性能进行了实证评估,并在与最先进的技术进行比较时展示了其高性能。
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