首页> 外文会议>International Conference on Advanced Engineering Computing and Application in Sciences >Building the Trident Scientific Workflow Workbench for Data Management in the Cloud
【24h】

Building the Trident Scientific Workflow Workbench for Data Management in the Cloud

机译:建立三叉戟科学工作流程工作台,用于云中的数据管理

获取原文

摘要

Scientific workflows have gained popularity for modeling and executing in silico experiments by scientists for problem-solving. These workflows primarily engage in computation and data transformation tasks to perform scientific analysis in the Science Cloud. Increasingly workflows are gaining use in managing the scientific data when they arrive from external sensors and are prepared for becoming science ready and available for use in the Cloud. While not directly part of the scientific analysis, these workflows operating behind the Cloud on behalf of the "data valets" play an important role in end-to-end management of scientific data products. They share several features with traditional scientific workflows: both are data intensive and use Cloud resources. However, they also differ in significant respects, for example, in the reliability required, scheduling constraints and the use of provenance collected. In this article, we investigate these two classes of workflows - Science Application workflows and Data Preparation workflows - and use these to drive common and distinct requirements from workflow systems for eScience in the Cloud. We use workflow examples from two collaborations, the NEPTUNE oceanography project and the Pan-STARRS astronomy project, to draw out our comparison. Our analysis of these workflows classes can guide the evolution of workflow systems to support emerging applications in the Cloud and the Trident Scientific Workbench is one such workflow system that has directly benefitted from this to meet the needs of these two eScience projectsf.
机译:科学工作流程对科学家们解决了解决问题的硅实验中的建模和执行。这些工作流程主要从事计算和数据转换任务,以在科学云中进行科学分析。越来越多的工作流程在从外部传感器到达时管理科学数据并准备成为科学准备并可用于云中的科学数据。虽然不是直接进行科学分析的一部分,但这些工作流程代表云端落后于“数据代客”在科学数据产品的端到端管理中发挥着重要作用。它们共享多种功能,具有传统的科学工作流程:两者都是数据密集型和使用云资源。然而,它们也有所不同,例如,在所需的可靠性,调度约束和收集的使用。在本文中,我们调查这两种工作流程 - 科学应用程序工作流程和数据准备工作流程 - 并利用这些工作流程从云中的工作流系统中推动常用和不同的要求。我们使用两次合作,海王星海洋学项目和潘斯塔尔天文项目的工作流程示例,从而借鉴我们的比较。我们对这些工作流程课程的分析可以指导工作流系统的演变,以支持云中的新兴应用程序,这是一个这样的工作流程系统,直接受益于此,以满足这两个簧簧项目的需求。

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