首页> 外文会议>2012 IEEE 26th International Parallel and Distributed Processing Symposium Workshops amp; PhD Forum >Scientific Application Performance on HPC, Private and Public Cloud Resources: A Case Study Using Climate, Cardiac Model Codes and the NPB Benchmark Suite
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Scientific Application Performance on HPC, Private and Public Cloud Resources: A Case Study Using Climate, Cardiac Model Codes and the NPB Benchmark Suite

机译:HPC,私有和公共云资源的科学应用性能:使用气候,心脏模型代码和NPB基准套件的案例研究

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The ubiquity of on-demand cloud computing resources enables scientific researchers to dynamically provision and consume compute and storage resources in response to science needs. Whereas traditional HPC compute resources are often centrally managed with a priori CPU-time allocations and use policies. A long term goal of our work is to assess the efficacy of preserving the user environment (compilers, support libraries, runtimes and application codes) available at a traditional HPC facility for deployment into a VM environment, which can then be subsequently used in both private and public scientific clouds. This would afford greater flexibility to users in choosing hardware resources that suit their science needs better, as well as aiding them in transitioning onto private/public cloud resources. In this paper we present work in-progress performance results for a set of benchmark kernels and scientific applications running in a traditional HPC environment, a private VM cluster and an Amazon HPC EC2 cluster. These are the OSU MPI micro-benchmark, the NAS Parallel macro-benchmarks and two large scientific application codes (the UK Met Office's MetUM global climate model and the Chaste multi-scale computational biology code) respectively. We discuss parallel scalability and runtime information obtained using the IPM performance monitoring framework for MPI applications. We were also able to successfully build application codes in a traditional HPC environment and package these into VMs which ran on both private and public cloud resources.
机译:随需应变的云计算资源无处不在,使科研人员能够动态地调配和使用计算和存储资源,以响应科学需求。传统的HPC计算资源通常使用先验的CPU时间分配和使用策略进行集中管理。我们工作的长期目标是评估保留传统HPC设施上可用于部署到VM环境中的用户环境(编译器,支持库,运行时和应用程序代码)的有效性,然后将其随后用于两个环境中。和公共科学云。这将为用户提供更大的灵活性,帮助他们选择更适合其科学需求的硬件资源,并帮助他们过渡到私有/公共云资源。在本文中,我们介绍了在传统HPC环境,私有VM集群和Amazon HPC EC2集群中运行的一组基准内核和科学应用程序的工作进展性能结果。它们分别是OSU MPI微型基准,NAS并行宏基准和两个大型科学应用代码(英国气象局的MetUM全球气候模型和Chaste多尺度计算生物学代码)。我们讨论了使用针对MPI应用程序的IPM性能监视框架获得的并行可伸缩性和运行时信息。我们还能够在传统的HPC环境中成功构建应用程序代码,并将其打包到可同时在私有和公共云资源上运行的VM中。

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