Scientific Workflow Makespan Reduction through Cloud Augmented Desktop Grids

Christopher J. Reynolds, S. Winter, G. Terstyánszky, T. Kiss, P. Greenwell, S. Ács, P. Kacsuk
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引用次数: 22

Abstract

Scientific workflows are common in biomedical research, particularly for molecular docking simulations such as those used in drug discovery. Such workflows typically involve data distribution between computationally demanding stages which are usually mapped onto large scale compute resources. Volunteer or Desktop Grid (DG) computing can provide such infrastructure but has limitations resulting from the heterogeneous nature of the compute nodes. These constraints mean that reducing the make span of a given workflow stage submitted to a DG becomes problematic. Late jobs can significantly affect the make span, often completing long after the bulk of the computation has finished. In this paper we present a system capable of significantly reducing the make span of a scientific workflow. Our system comprises a DG which is dynamically augmented with an infrastructure as a service (IaaS) Cloud. Using this solution, the Cloud resources are used to process replicated late jobs. Our system comprises a core component termed the scheduler, which implements an algorithm to perform late job detection, Cloud resource management (instantiation and reuse), and job monitoring. We offer a formal definition of this algorithm, whilst we also provide an evaluation of our prototype using a production scientific workflow.
通过云增强桌面网格减少科学的工作流程完工时间
科学工作流程在生物医学研究中很常见,特别是在药物发现中使用的分子对接模拟中。这种工作流通常涉及在计算要求高的阶段之间的数据分布,这些阶段通常映射到大规模的计算资源上。志愿计算或桌面网格(DG)计算可以提供这样的基础设施,但由于计算节点的异构性质,存在一些限制。这些约束意味着,减少提交给DG的给定工作流阶段的make跨度会成为问题。延迟的作业可以显著地影响make跨度,通常在大部分计算完成后很长时间才完成。在本文中,我们提出了一个能够显著缩短科学工作流程的制作时间的系统。我们的系统包括一个DG,它通过基础设施即服务(IaaS)云进行动态扩展。使用此解决方案,云资源可用于处理复制的延迟作业。我们的系统包括一个称为调度器的核心组件,它实现了一种算法来执行后期作业检测、云资源管理(实例化和重用)和作业监控。我们提供了该算法的正式定义,同时我们还使用生产科学工作流对我们的原型进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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