Parallel peak pruning for scalable SMP contour tree computation

H. Carr, G. Weber, Christopher M. Sewell, J. Ahrens
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引用次数: 45

Abstract

As data sets grow to exascale, automated data analysis and visualisation are increasingly important, to intermediate human understanding and to reduce demands on disk storage via in situ analysis. Trends in architecture of high performance computing systems necessitate analysis algorithms to make effective use of combinations of massively multicore and distributed systems. One of the principal analytic tools is the contour tree, which analyses relationships between contours to identify features of more than local importance. Unfortunately, the predominant algorithms for computing the contour tree are explicitly serial, and founded on serial metaphors, which has limited the scalability of this form of analysis. While there is some work on distributed contour tree computation, and separately on hybrid GPU-CPU computation, there is no efficient algorithm with strong formal guarantees on performance allied with fast practical performance. We report the first shared SMP algorithm for fully parallel contour tree computation, withfor-mal guarantees of O(lgnlgt) parallel steps and O(n lgn) work, and implementations with up to 10x parallel speed up in OpenMP and up to 50x speed up in NVIDIA Thrust.
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并行峰值修剪可扩展SMP轮廓树计算
随着数据集增长到百亿亿次,自动化数据分析和可视化对于中级人类理解和通过原位分析减少对磁盘存储的需求变得越来越重要。高性能计算系统架构的发展趋势要求分析算法能够有效地利用大规模多核和分布式系统的组合。其中一个主要的分析工具是轮廓树,它分析轮廓之间的关系,以识别超过局部重要性的特征。不幸的是,计算轮廓树的主要算法是显式串行的,并且建立在串行隐喻之上,这限制了这种分析形式的可扩展性。虽然在分布式轮廓树计算和GPU-CPU混合计算方面做了一些工作,但目前还没有一种有效的算法能在性能上有很强的形式保证,同时又能实现快速的实际性能。我们报告了第一个用于完全并行轮廓树计算的共享SMP算法,具有O(lglgt)并行步骤和O(n lgn)工作的正常保证,并在OpenMP中实现了高达10倍的并行速度,在NVIDIA Thrust中实现了高达50倍的速度。
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Statistical projections for multi-dimensional visual data exploration Contour forests: Fast multi-threaded augmented contour trees Parallel peak pruning for scalable SMP contour tree computation Formal evaluation strategies for feature tracking In situ generated probability distribution functions for interactive post hoc visualization and analysis
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