首页> 外文会议>International Conference on Mathematical Modeling and Computational Physics >Accelerating Science Impact through Big Data Workflow Management and Supercomputing
【24h】

Accelerating Science Impact through Big Data Workflow Management and Supercomputing

机译:通过大数据工作流管理和超级计算来加速科学影响

获取原文

摘要

The Large Hadron Collider (LHC), operating at the international CERN Laboratory in Geneva, Switzerland, is leading Big Data driven scientific explorations. ATLAS, one of the largest collaborations ever assembled in the the history of science, is at the forefront of research at the LHC. To address an unprecedented multi-petabyte data processing challenge, the ATLAS experiment is relying on a heterogeneous distributed computational infrastructure. To manage the workflow for all data processing on hundreds of data centers the PanDA (Production and Distributed Analysis) Workload Management System is used. An ambitious program to expand PanDA to all available computing resources, including opportunistic use of commercial and academic clouds and Leadership Computing Facilities (LCF), is realizing within BigPanDA and megaPanDA projects. These projects are now exploring how PanDA might be used for managing computing jobs that run on supercomputers including OLCF's Titan and NRC-KI HPC2. The main idea is to reuse, as much as possible, existing components of the PanDA system that are already deployed on the LHC Grid for analysis of physics data. The next generation of PanDA will allow many data-intensive sciences employing a variety of computing platforms to benefit from ATLAS experience and proven tools in highly scalable processing.
机译:在瑞士日内瓦国际CERN实验室经营的大型波罗龙撞机(LHC)正在领先地位大数据驱动科学探索。阿特拉斯是科学史上有史以来最大的合作之一,是LHC研究的最前沿。为了解决前所未有的多百张数据处理挑战,ATLAS实验依赖于异构分布式计算基础设施。要管理数百个数据处理的所有数据处理的工作流程,使用熊猫(生产和分布式分析)工作负载管理系统。一个雄心勃勃的计划,将熊猫扩展到所有可用的计算资源,包括商业和学术云和领导计算设施(LCF)的机会使用,是在Bigpanda和Megapanda项目范围内实现。这些项目目前正在探索熊猫如何用于管理在超级计算机上运行的计算作业,包括奥尔福夫的泰坦和NRC-ki HPC2。主要思想是尽可能重复使用已经部署在LHC网格上的熊猫系统的现有组件,以分析物理数据。下一代熊猫将允许采用各种计算平台的许多数据密集型科学,从地图集体验和经过可靠的工具中受益于高度可扩展的处理。

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