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QoS Support for Scientific Workflows Using Software-Defined Storage Resource Enclaves

机译:使用软件定义的存储资源区域对科学工作流的QoS支持

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Data-intensive knowledge discovery requires scientific applications to run concurrently with analytics and visualization codes, executing in situ for timely output inspection and knowledge extraction. Consequently, I/O pipelines of scientific workflows can be long and complex because they comprise many "stages" of analytics across different layers of the I/O stack of high-performance computing systems. Performance limitations at any I/O layer or stage can cause an I/O bottleneck resulting in longer than expected end-to-end I/O latency. The causes of such performance issues are missing a performance guarantee (e.g., lower bounds of I/O throughput) across stages of I/O pipelines and across layers of the I/O stacks. In this paper, we present the design and implementation of a novel data management infrastructure called Software-defined Storage Resource Enclaves (SIREN) at system levels to enforce end-to-end policies that dictate an I/O pipeline's performance. Our results demonstrate that SIREN provides performance isolation among scientific workflows sharing multiple storage servers across two I/O layers while maintaining high system scalability and resource utilization.
机译:数据密集型知识发现要求科学应用程序与分析和可视化代码同时运行,并在原位执行以及时进行输出检查和知识提取。因此,科学工作流的I / O管道可能很长而且很复杂,因为它们包含跨高性能计算系统的I / O堆栈的不同层的许多“分析”阶段。任何I / O层或阶段的性能限制都可能导致I / O瓶颈,从而导致端到端I / O延迟时间超出预期。此类性能问题的原因缺少I / O流水线的各个阶段以及I / O堆栈的各个层之间的性能保证(例如,I / O吞吐量的下限)。在本文中,我们在系统级别介绍一种称为软件定义的存储资源区域(SIREN)的新型数据管理基础结构的设计和实现,以实施指示I / O管道性能的端到端策略。我们的结果表明,SIREN在科学工作流之间提供了性能隔离,该工作流在两个I / O层上共享多个存储服务器,同时保持了较高的系统可扩展性和资源利用率。

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