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GoldRush: Resource efficient in situ scientific data analytics using fine-grained interference aware execution

机译:GoldRush:使用细粒度的干扰感知执行来实现资源高效的原位科学数据分析

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Severe I/O bottlenecks on High End Computing platforms call for running data analytics in situ. Demonstrating that there exist considerable resources in compute nodes un-used by typical high end scientific simulations, we leverage this fact by creating an agile runtime, termed GoldRush, that can harvest those otherwise wasted, idle resources to efficiently run in situ data analytics. GoldRush uses fine-grained scheduling to “steal” idle resources, in ways that minimize interference between the simulation and in situ analytics. This involves recognizing the potential causes of on-node resource contention and then using scheduling methods that prevent them. Experiments with representative science applications at large scales show that resources harvested on compute nodes can be leveraged to perform useful analytics, significantly improving resource efficiency, reducing data movement costs incurred by alternate solutions, and posing negligible impact on scientific simulations.
机译:高端计算平台上的严重I / O瓶颈要求就地运行数据分析。为了证明计算节点中存在未被典型的高端科学模拟所使用的大量资源,我们通过创建称为GoldRush的敏捷运行时来利用这一事实,该运行时可以收集那些原本浪费的闲置资源来有效地进行原位数据分析。 GoldRush使用细粒度的调度来“窃取”闲置资源,其方式可以最大程度地减少模拟与现场分析之间的干扰。这涉及识别节点上资源争用的潜在原因,然后使用阻止它们的调度方法。对具有代表性的科学应用程序进行的大规模实验表明,可以利用在计算节点上收集的资源来执行有用的分析,显着提高资源效率,减少由其他解决方案引起的数据移动成本,并对科学模拟的影响可忽略不计。

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