紧急计算应用的基于经验的概率上界

N. Trebon, P. Beckman
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引用次数: 4

摘要

科学模拟和建模通常有助于在城市规划、恶劣天气预报和流感建模等不同领域做出关键决策。在某些情况下,计算在严格的最后期限下进行,超过这一点,结果可能没有什么价值。在这些紧急计算的情况下,必须尽可能快地开始执行这些计算。特殊优先级和紧急计算环境(SPRUCE)是一个框架,旨在使这些高优先级计算能够通过提高批处理队列优先级来快速访问计算网格资源。但是,允许参与资源在本地决定如何响应紧急请求。例如,有些可能提供下一个运行状态,而另一些可能抢占当前正在执行的作业,以清除必要的节点。然而,用户仍然面临着资源选择的问题——即,哪种资源(以及相应的紧急计算策略)提供了满足给定截止日期的最佳概率?本文介绍了一套方法和启发式方法,旨在为紧急计算生成基于经验的总周转时间的概率上界。这些上限可以用来指导用户更有信心地选择资源,以满足他们的最后期限。
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Empirical-based probabilistic upper bounds for urgent computing applications
Scientific simulation and modeling often aid in making critical decisions in such diverse fields as city planning, severe weather prediction and influenza modeling. In some of these situations the computations operate under strict deadlines, after which point the results may have very little value. In these cases of urgent computing, it is imperative that these computations begin execution as quickly as possible. The special priority and urgent compute environment (SPRUCE) is a framework designed to enable these high priority computations to quickly access computational grid resources through elevated batch queue priority. However, participating resources are allowed to decide locally how to respond to urgent requests. For instance, some may offer next-to-run status while others may preempt currently executing jobs to clear off the necessary nodes. However, the user is still faced with the problem of resource selection - namely, which resource (and corresponding urgent computing policy) provides the best probability of meeting a given deadline? This paper introduces a set of methodologies and heuristics aimed at generating an empirical-based probabilistic upper bound on the total turnaround time for an urgent computation. These upper bounds can then be used to guide the user in selecting a resource with greater confidence that their deadline will be met.
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