使用网格感知规划和优化技术的神经成像分析

I. Habib, A. Anjum, P. Bloodsworth, R. McClatchey
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引用次数: 2

摘要

神经成像研究正日益转向分布式计算架构,以处理不断增长的神经成像数据集。目前,计算和数据密集型神经成像工作流程经常使用基于集群的资源来分析数据集。然而,为了提高可伸缩性,可能需要基于分布式网格的分析平台。这样的分析基础设施需要健壮的网格感知规划和优化方法,以便有效地执行通常高度复杂的工作流。本文介绍了neuGRID中用于规划神经影像学研究工作流程网格化和制定的方法。实验表明,网格感知工作流规划技术可以获得显著的性能提升。与没有网格感知规划的相同工作流程相比,典型神经成像工作流程的周转时间减少了30%。数据效率也提高了25%以上。在neuGRID基础设施中使用工作流规划技术可能使其能够处理更大的神经成像数据集,从而允许研究人员进行更有统计学意义的分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neuroimaging analysis using grid aware planning and optimisation techniques
Neuroimaging research is increasingly shifting towards distributed computing architectures for the processing of ever growing neuroimaging datasets. At present compute and data intensive neuroimaging workflows often use cluster-based resources to analyse datasets. For increased scalability however, distributed grid-based analysis platforms may be required. Such an analysis infrastructure necessitates robust methods of grid-aware planning and optimisation in order to efficiently execute often highly complex workflows. This paper presents the approaches used in neuGRID to plan the workflow gridification and enactment for neuroimaging research. Experiments show that grid-aware workflow planning techniques can achieve significant performance gains. Turn-around time of a typical neuroimaging workflow reduces by 30% compared to the same workflow enacted without grid-aware planning. Data efficiency also increases by more than 25%. The use of workflow planning techniques in the neuGRID infrastructure may enable it to process larger neuroimaging datasets and therefore allow researchers to carry out more statistically significant analysis.
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