...
首页> 外文期刊>EPJ Web of Conferences >Enabling Data Intensive Science on Supercomputers for High Energy Physics R&D Projects in HL-LHC Era
【24h】

Enabling Data Intensive Science on Supercomputers for High Energy Physics R&D Projects in HL-LHC Era

机译:在HL-LHC时代的超级计算机上为高能物理研发项目启用数据密集型科学

获取原文
           

摘要

The ATLAS experiment at CERN’s Large Hadron Collider uses theWorldwide LHC Computing Grid, the WLCG, for its distributed computing infrastructure. Through the workload management system PanDA and the distributed data management system Rucio, ATLAS provides seamless access to hundreds of WLCG grid and cloud based resources that are distributed worldwide, to thousands of physicists. PanDA annually processes more than an exabyte of data using an average of 350,000 distributed batch slots, to enable hundreds of new scientific results from ATLAS. However, the resources available to the experiment have been insufficient to meet ATLAS simulation needs over the past few years as the volume of data from the LHC has grown. The problem will be even more severe for the next LHC phases. High Luminosity LHC will be a multiexabyte challenge where the envisaged Storage and Compute needs are a factor 10 to 100 above the expected technology evolution. The High Energy Physics (HEP) community needs to evolve current computing and data organization models in order to introduce changes in the way it uses and manages the infrastructure, focused on optimizations to bring performance and efficiency not forgetting simplification of operations. In this paper we highlight recent R&D projects in HEP related to data lake prototype, federated data storage and data carousel.
机译:在CERN的大型强子对撞机上进行的ATLAS实验将全球LHC计算网格WLCG用于其分布式计算基础架构。通过工作量管理系统PanDA和分布式数据管理系统Rucio,ATLAS提供了对数百个遍布全球的WLCG网格和基于云的资源的无缝访问,这些资源遍布全球。 PanDA每年平均使用350,000个分布式批处理插槽来处理超过EB级的数据,以使ATLAS获得数百项新的科学成果。但是,随着LHC数据量的增长,过去几年中可用于实验的资源不足以满足ATLAS仿真的需求。对于下一个大型强子对撞机阶段,问题将更加严重。高亮度LHC将是一个数十亿字节的挑战,其中预期的存储和计算需求比预期的技术发展高出10到100倍。高能物理(HEP)社区需要发展当前的计算和数据组织模型,以引入其使用和管理基础架构的方式的变化,重点在于优化以提高性能和效率,而不能忘记简化操作。在本文中,我们重点介绍了HEP中与数据湖原型,联合数据存储和数据轮播相关的最新研发项目。

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