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Optimization of tomographic reconstruction workflows on geographically distributed resources

机译:地理分布资源上的层析重建工作流程的优化

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摘要

New technological advancements in synchrotron light sources enable data acquisitions at unprecedented levels. This emergent trend affects not only the size of the generated data but also the need for larger computational resources. Although beamline scientists and users have access to local computational resources, these are typically limited and can result in extended execution times. Applications that are based on iterative processing as in tomographic reconstruction methods require high-performance compute clusters for timely analysis of data. Here, time-sensitive analysis and processing of Advanced Photon Source data on geographically distributed resources are focused on. Two main challenges are considered: (i) modeling of the performance of tomographic reconstruction workflows and (ii) transparent execution of these workflows on distributed resources. For the former, three main stages are considered: (i) data transfer between storage and computational resources, (i) wait/queue time of reconstruction jobs at compute resources, and (iii) computation of reconstruction tasks. These performance models allow evaluation and estimation of the execution time of any given iterative tomographic reconstruction workflow that runs on geographically distributed resources. For the latter challenge, a workflow management system is built, which can automate the execution of workflows and minimize the user interaction with the underlying infrastructure. The system utilizes Globus to perform secure and efficient data transfer operations. The proposed models and the workflow management system are evaluated by using three high-performance computing and two storage resources, all of which are geographically distributed. Workflows were created with different computational requirements using two compute-intensive tomographic reconstruction algorithms. Experimental evaluation shows that the proposed models and system can be used for selecting the optimum resources, which in turn can provide up to 3.13× speedup (on experimented resources). Moreover, the error rates of the models range between 2.1 and 23.3% (considering workflow execution times), where the accuracy of the model estimations increases with higher computational demands in reconstruction tasks.
机译:同步加速器光源的新技术进步使数据采集达到了空前的水平。这种新兴趋势不仅影响所生成数据的大小,而且还会影响对更大计算资源的需求。尽管射线研究人员和用户可以访问本地计算资源,但是这些资源通常受到限制,并且可能导致执行时间延长。基于断层摄影重建方法中基于迭代处理的应用程序需要高性能的计算集群,以便及时分析数据。在此,对地理上分散的资源上的高级光子源数据进行了时间敏感的分析和处理。考虑了两个主要挑战:(i)层析成像重建工作流程的性能建模;(ii)在分布式资源上透明地执行这些工作流程。对于前者,考虑了三个主要阶段:(i)存储和计算资源之间的数据传输,(i)在计算资源处的重建作业的等待/排队时间,以及(iii)重建任务的计算。这些性能模型允许评估和估计在地理上分布的资源上运行的任何给定的迭代层析重建工作流程的执行时间。对于后一个挑战,构建了工作流管理系统,该系统可以自动执行工作流,并最大程度地减少用户与基础结构的交互。该系统利用Globus来执行安全有效的数据传输操作。通过使用三个高性能计算和两个存储资源(均在地理上分布)来评估所提出的模型和工作流管理系统。使用两种计算密集型层析重建算法,根据不同的计算要求创建了工作流。实验评估表明,所提出的模型和系统可以用于选择最佳资源,从而可以提供高达3.13倍的加速(基于实验资源)。此外,模型的错误率在2.1%和23.3%之间(考虑工作流执行时间),其中模型估计的准确性随着重建任务中更高的计算需求而增加。

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