并行体系结构的分层kt射流聚类

IF 0.3 Q4 COMPUTER SCIENCE, THEORY & METHODS
Richard Forster, Á. Fülöp
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引用次数: 1

摘要

摘要测量数据的重构与分析在高能粒子物理研究中具有重要作用。这导致了实验和理论物理学的新结果。这需要改进算法和提高计算机容量。聚类算法使得更准确地了解射流结构成为可能。通过将kt聚类算法与网络评估中使用的分层聚类方法相结合,探索了kt聚类算法的更细粒度并行化。kt方法可以使我们知道由于高能原子核与原子核的碰撞而产生的粒子的发展。层次聚类算法是在图上工作的,因此首先将标准kt算法使用的粒子信息转换成合适的图,表示粒子网络。测试使用来自Alice离线库的数据样本完成,该库包含模拟专用Pb-Pb检测器Alice检测器所需的模块。将提出的算法与FastJet工具包的标准纵向不变量kt实现进行了比较。利用可用的CPU架构并行化该算法的标准非优化版本被证明比标准实现快1:6倍,而本文提出的解决方案能够实现12倍的计算性能,并且具有足够的可扩展性,可以有效地在gpu上运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hierarchical kt jet clustering for parallel architectures
Abstract The reconstruction and analyze of measured data play important role in the research of high energy particle physics. This leads to new results in both experimental and theoretical physics. This requires algorithm improvements and high computer capacity. Clustering algorithm makes it possible to get to know the jet structure more accurately. More granular parallelization of the kt cluster algorithms was explored by combining it with the hierarchical clustering methods used in network evaluations. The kt method allows to know the development of particles due to the collision of high-energy nucleus-nucleus. The hierarchical clustering algorithms works on graphs, so the particle information used by the standard kt algorithm was first transformed into an appropriate graph, representing the network of particles. Testing was done using data samples from the Alice offine library, which contains the required modules to simulate the ALICE detector that is a dedicated Pb-Pb detector. The proposed algorithm was compared to the FastJet toolkit's standard longitudinal invariant kt implementation. Parallelizing the standard non-optimized version of this algorithm utilizing the available CPU architecture proved to be 1:6 times faster, than the standard implementation, while the proposed solution in this paper was able to achieve a 12 times faster computing performance, also being scalable enough to efficiently run on GPUs.
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来源期刊
Acta Universitatis Sapientiae Informatica
Acta Universitatis Sapientiae Informatica COMPUTER SCIENCE, THEORY & METHODS-
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