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Imaging SKA-scale data in three different computing environments

机译:在三种不同的计算环境中对SKA规模的数据进行成像

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We present the results of our investigations into options for the computing platform for the imaging pipeline in the CHILES project, an ultra-deep HI pathfinder for the era of the Square Kilometre Array. CHILES pushes the current computing infrastructure to its limits and understanding how to deliver the images from this project is clarifying the Science Data Processing requirements for the SKA. We have tested three platforms: a moderately sized cluster, a massive High Performance Computing (HPC) system, and the Amazon Web Services (AWS) cloud computing platform. We have used well-established tools for data reduction and performance measurement to investigate the behaviour of these platforms for the complicated access patterns of real-life Radio Astronomy data reduction. All of these platforms have strengths and weaknesses and the system tools allow us to identify and evaluate them in a quantitative manner. With the insights from these tests we are able to complete the imaging pipeline processing on both the HPC platform and also on the cloud computing platform, which paves the way for meeting big data challenges in the era of SKA in the field of Radio Astronomy. We discuss the implications that all similar projects will have to consider, in both performance and costs, to make recommendations for the planning of Radio Astronomy imaging workflows. (C) 2015 Elsevier B.V. All rights reserved.
机译:我们将介绍我们对CHILES项目中的成像管道计算平台的选项进行调查的结果,该项目是平方公里阵列时代的超深度HI探路者。 CHILES将当前的计算基础架构推向了极限,并且了解如何从该项目中交付图像,从而明确了SKA的科学数据处理要求。我们已经测试了三个平台:中等规模的集群,大型高性能计算(HPC)系统和亚马逊网络服务(AWS)云计算平台。我们使用了完善的数据缩减和性能测量工具,以针对现实生活中的射电天文数据缩减的复杂访问模式研究这些平台的行为。所有这些平台都有优点和缺点,并且系统工具使我们能够定量地识别和评估它们。通过这些测试的洞察力,我们能够在HPC平台和云计算平台上完成成像流水线处理,这为应对射电天文学领域SKA时代的大数据挑战铺平了道路。我们将讨论所有类似项目在性能和成本方面都必须考虑的含义,以便为射电天文学成像工作流程的规划提出建议。 (C)2015 Elsevier B.V.保留所有权利。

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