联合学习移动边缘计算的最优任务卸载和调度策略

L. Chatzieleftheriou, I. Koutsopoulos
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引用次数: 1

摘要

这项工作有助于优化移动边缘计算(MEC)系统中的边缘分析。我们考虑由用户生成的计算任务请求,这些请求既可以在用户的设备上本地满足,也可以卸载到用户附近的边缘服务器上进行远程执行。我们研究了一个多用户MEC系统,该系统具有有限的移动设备能量自主权,并且对移动设备和边缘服务器的计算能力都有限制,其中用户可以卸载部分计算负载。我们定义了“资源剩余”的效用,它捕获了通过我们的决策分配的资源与实践中需要的资源之间的差异,我们的目标是最小化遗憾,即,通过事后了解系统演变的最优离线基准获得的效用与我们的在线决策策略之间的差异。我们设计了一种算法,该算法可以联合学习卸载计算的策略,并将其调度到共享MEC服务器上执行。我们证明了我们的算法是渐近最优的,即它对最优静态离线基准没有遗憾,并且它的性能与系统中设备的数量无关。从我们的数值评估中我们得出结论,我们的算法适应不可预测的需求变化,它学会识别资源有限的设备,并学会共享服务器的资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Jointly Learning Optimal Task Offloading and Scheduling Policies for Mobile Edge Computing
This work contributes towards optimizing edge analytics in Mobile Edge Computing (MEC) systems. We consider requests for computing tasks that are generated from users and can be satisfied either locally at their devices, or they can be offloaded to an edge server in their proximity for remote execution. We study a multi-user MEC system with limited energy autonomy for the mobile devices and with limitations on the computing capability of both mobile devices and at an edge server, where users can offload part of their computation load. We define a utility over “resource residuals”, that capture the difference between the resources assigned through our decisions, and those needed in practice, and we aim at the minimization of regret, i.e., of the difference between the utility obtained by an optimal offline benchmark that knows the system evolution in hindsight, and our online decision policy. We design an algorithm that jointly learns policies for offloading computations and scheduling them for execution at the shared MEC server. We prove that our algorithm is asymptotically optimal, i.e., it has no regret over the optimal static offline benchmark, and that its performance is independent of the number of devices in the system. From our numerical evaluation we conclude that our algorithm adapts to unpredictable demand changes, it learns to identify resource-limited devices, and it learns to share the server’s resources.
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