分布式合并森林:用于大规模拓扑分析的一种新的快速和可扩展的方法

Xuan Huang, Pavol Klacansky, Steve Petruzza, A. Gyulassy, P. Bremer, Valerio Pascucci
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引用次数: 2

摘要

拓扑分析在许多领域被用于识别和描述科学数据中的重要特征,并且现在是在科学计算中被证明实际使用的已建立的技术类别之一。现代模拟处理的并行性和问题规模的增长对这些方法提出了特别的挑战。从根本上说,拓扑特征的全局编码需要进程间通信,这限制了它们的扩展。在本文中,我们将一种新的拓扑范式扩展到分布式计算的情况下,其中全局合并树的构造被分布式数据结构(合并森林)所取代,在结构上交换较慢的单个查询,以获得更快的端到端性能和可扩展性。根据经验,最受负面影响的查询也往往具有有限的实际用途。我们的实验结果证明了合并森林构建和科学工作流中所需的并行查询的可扩展性,并将这种可扩展性与构建全局树变体的两种已建立的替代方案进行了对比。
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Distributed merge forest: a new fast and scalable approach for topological analysis at scale
Topological analysis is used in several domains to identify and characterize important features in scientific data, and is now one of the established classes of techniques of proven practical use in scientific computing. The growth in parallelism and problem size tackled by modern simulations poses a particular challenge for these approaches. Fundamentally, the global encoding of topological features necessitates interprocess communication that limits their scaling. In this paper, we extend a new topological paradigm to the case of distributed computing, where the construction of a global merge tree is replaced by a distributed data structure, the merge forest, trading slower individual queries on the structure for faster end-to-end performance and scaling. Empirically, the queries that are most negatively affected also tend to have limited practical use. Our experimental results demonstrate the scalability of both the merge forest construction and the parallel queries needed in scientific workflows, and contrast this scalability with the two established alternatives that construct variations of a global tree.
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