Abstract Running high resolution coastal models in forecast systems: Moving from workstations and HPC cluster to cloud resources
首页> 外文期刊>Advances in Engineering Software >Running high resolution coastal models in forecast systems: Moving from workstations and HPC cluster to cloud resources
【24h】

Running high resolution coastal models in forecast systems: Moving from workstations and HPC cluster to cloud resources

机译:在预测系统中运行高分辨率海岸模型:从工作站和HPC集群迁移到云资源

获取原文
获取原文并翻译 | 示例
           

摘要

AbstractComputational forecast systems (CFS) are essential modelling tools for coastal management by providing water dynamics predictions. Nowadays CFS are processed in dedicated workstations, fulfilling quality control through automatic comparison with field data. Recently, CFS has been successfully ported to High Performance Computing (HPC) resources, maintained by highly-specialized staff in these complex environments. The need to increase the available resources for more demanding applications and to enhance the portability for use in non-scientific institutions has promoted the search for more flexible and user-friendly approaches. The scalability and flexibility of cloud resources, with dedicated services for facilitating their use, makes them an attractive option.Herein, the performance of CFS using ECO-SELFE MPI-based model is assessed and compared for the first time in multiple environments, including local workstations, an HPC cluster and a pilot cloud. The analysis is conducted in a range of resources from the physical core count available at the smaller resources to the optimal number of processes, using cloud and HPC cluster resources. Results for the smaller, common physical resources show that the cloud is an attractive option for CFS operation. As the optimal number of processes for the use case is at the limit of the workstations common pool, an analysis was also performed using HPC cluster nodes and federated MPI resources. Results show that the cloud remains an attractive option for CFS. This conclusion is valid both for the use of a single host or through federated hosts, providing that efficient communication infrastructure (such as SRIOV) is available.
机译: 摘要 计算预报系统(CFS)通过提供水动力学预测,是沿海管理的基本建模工具。如今,CFS在专用工作站中进行处理,通过与现场数据进行自动比较来实现质量控制。最近,CFS已成功移植到高性能计算机(HPC)资源,这些资源由这些复杂环境中的高级专业人员维护。需要为更多要求更高的应用程序增加可用资源,并提高在非科学机构中使用的可移植性,这促使人们寻求更灵活和用户友好的方法。云资源的可伸缩性和灵活性以及用于促进其使用的专用服务,使它们成为有吸引力的选择。 此处,使用基于ECO-SELFE MPI的模型对CFS的性能进行了评估,并首次在多个环境中进行了比较,包括本地工作站,HPC集群和试验云。使用云和HPC群集资源,可以在一系列资源中进行分析,从较小资源上可用的物理核心数量到最佳进程数。较小的公共物理资源的结果表明,云是CFS操作的一种有吸引力的选择。由于用例的最佳进程数处于工作站公用池的极限,因此还使用HPC群集节点和联合MPI资源进行了分析。结果表明,云仍然是CFS的诱人选择。该结论对于使用单个主机或通过联邦主机均有效,条件是可以使用有效的通信基础结构(例如SRIOV)。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号