Max-Stretch Minimization on an Edge-Cloud Platform

A. Benoit, Redouane Elghazi, Y. Robert
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引用次数: 3

Abstract

We consider the problem of scheduling independent jobs that are generated by processing units at the edge of the network. These jobs can either be executed locally, or sent to a centralized cloud platform that can execute them at greater speed. Such edge-generated jobs may come from various applications, such as e-health, disaster recovery, autonomous vehicles or flying drones. The problem is to decide where and when to schedule each job, with the objective to minimize the maximum stretch incurred by any job. The stretch of a job is the ratio of the time spent by that job in the system, divided by the minimum time it could have taken if the job was alone in the system. We formalize the problem and explain the differences with other models that can be found in the literature. We prove that minimizing the max-stretch is NP-complete, even in the simpler instance with no release dates (all jobs are known in advance). This result comes from the proof that minimizing the max-stretch with homogeneous processors and without release dates is NP-complete, a complexity problem that was left open before this work. We design several algorithms to propose efficient solutions to the general problem, and we conduct simulations based on real platform parameters to evaluate the performance of these algorithms.
边缘云平台上的最大伸缩最小化
我们考虑由网络边缘处理单元生成的独立作业的调度问题。这些作业既可以在本地执行,也可以发送到可以以更快速度执行的集中式云平台。这些由边缘技术创造的工作可能来自各种应用,比如电子医疗、灾难恢复、自动驾驶汽车或无人机。问题是决定何时何地安排每个作业,目标是最小化任何作业造成的最大拉伸。作业的延伸时间是该作业在系统中所花费的时间除以该作业在系统中单独存在时可能花费的最小时间的比率。我们将问题形式化,并解释与文献中其他模型的差异。我们证明最小化最大伸缩是np完全的,即使在没有发布日期的更简单的实例中也是如此(所有作业都是提前知道的)。这个结果来自于这样的证明,即使用同构处理器最小化最大拉伸且没有发布日期是np完全的,这是一个在此工作之前未解决的复杂性问题。我们设计了几种算法,对一般问题提出了有效的解决方案,并基于真实平台参数进行了仿真,以评估这些算法的性能。
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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