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An SCP-based heuristic approach for scheduling distributed data-intensive applications on global grids

机译:基于SCP的启发式方法,用于在全局网格上调度分布式数据密集型应用程序

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摘要

Data-intensive Grid applications need access to large data sets that may each be replicated on different resources. Minimizing the overhead of transferring these data sets to the resources where the applications are executed requires that appropriate computational and data resources be selected. In this paper, we consider the problem of scheduling an application composed of a set of independent tasks, each of which requires multiple data sets that are each replicated on multiple resources. We break this problem into two parts: one, to match each task (or job) to one compute resource for executing the job and one storage resource each for accessing each data set required by the job and two, to assign the set of tasks to the selected resources. We model the first part as an instance of the well-known Set Covering Problem (SCP) and apply a known heuristic for SCP to match jobs to resources. The second part is tackled by extending existing MinMin and Sufferage algorithms to schedule the set of distributed data-intensive tasks. Through simulation, we experimentally compare the SCP-based matching heuristic to others in conjunction with the task scheduling algorithms and present the results.
机译:数据密集型Grid应用程序需要访问大数据集,每个大数据集都可以复制到不同的资源上。要将这些数据集传输到执行应用程序的资源的开销最小化,需要选择适当的计算和数据资源。在本文中,我们考虑了调度由一组独立任务组成的应用程序的问题,每个任务需要多个数据集,每个数据集都复制在多个资源上。我们将这个问题分为两部分:第一,将每个任务(或作业)与一个用于执行该作业的计算资源相匹配,一个存储资源,分别用于访问该作业所需的每个数据集;第二,将任务集分配给所选资源。我们将第一部分建模为众所周知的集合覆盖问题(SCP)的实例,并为SCP应用已知的启发式方法以将作业与资源进行匹配。第二部分通过扩展现有的MinMin和Sufferage算法来安排分布式数据密集型任务集来解决。通过仿真,我们结合任务调度算法实验性地比较了基于SCP的匹配启发式算法和其他算法,并给出了结果。

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