Vijay S Kumar, Tahsin Kurc, Joel Saltz, Ghaleb Abdulla, Scott R Kohn, Celeste Matarazzo
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引用次数: 0
摘要
空间物体关联,也称为空间数据集交叉匹配,是指根据两个或多个数据集中物体在共同空间坐标系中的位置,对其进行识别和比较的问题。在这项工作中,我们在以下数据库系统架构配置上评估了用于天文巡天的两种交叉匹配算法:(1) Netezza Performance Server®,一种具有主动磁盘式处理能力的并行数据库系统;(2) MySQL Cluster,一种高吞吐量网络数据库系统;(3) 一种混合配置,由一系列独立的数据库系统实例组成,支持数据复制。我们的评估深入探讨了这些系统的架构特性如何影响空间交叉匹配算法的性能。我们利用从大型天文学应用(即大型综合巡天望远镜(LSST))中借用的真实用例场景进行了研究。
Architectural Implications for Spatial Object Association Algorithms.
Spatial object association, also referred to as crossmatch of spatial datasets, is the problem of identifying and comparing objects in two or more datasets based on their positions in a common spatial coordinate system. In this work, we evaluate two crossmatch algorithms that are used for astronomical sky surveys, on the following database system architecture configurations: (1) Netezza Performance Server®, a parallel database system with active disk style processing capabilities, (2) MySQL Cluster, a high-throughput network database system, and (3) a hybrid configuration consisting of a collection of independent database system instances with data replication support. Our evaluation provides insights about how architectural characteristics of these systems affect the performance of the spatial crossmatch algorithms. We conducted our study using real use-case scenarios borrowed from a large-scale astronomy application known as the Large Synoptic Survey Telescope (LSST).