OPTIMAL TASK OFFLOADING IN FOG-ENABLED NETWORKS VIA INDEX POLICIES

Fuqian Yang, Zhaowei Zhu, Shangshu Zhao, Yang Yang, Xiliang Luo
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引用次数: 8

Abstract

Fog computing has been considered to be a potential solution to enable computation-intensive and latency-critical application at the battery-empowered mobile devices. Task offloading could take advantages of available neighboring computational resources to achieve low latency. By exploiting the temporal correlation of the states at fog nodes, a sequential decision-making problem that aims to optimize the long-term task offloading performance is considered in this paper. Such a problem is a partially observed Markov decision process with an exploitation-exploration tradeoff that is difficult to analyze. We address this tradeoff in task offloading under the framework of restless multi-armed bandits (RMAB). The indexability analysis of this task offloading problem is then provided. Meanwhile, an index policy, which is asymptotically optimal and has remarkably low computation complexity, is established based on the Whittle’s index to solve the task offloading problem. Numerical results show the superiority of the proposed task offloading method.
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通过索引策略在支持雾的网络中实现最优任务卸载
雾计算被认为是在电池驱动的移动设备上实现计算密集型和延迟关键型应用程序的潜在解决方案。任务卸载可以利用可用的相邻计算资源来实现低延迟。本文利用雾节点状态的时间相关性,研究了以优化长期任务卸载性能为目标的顺序决策问题。这种问题是一个部分观察到的马尔可夫决策过程,具有开发-探索权衡,难以分析。我们在不安分的多武装强盗(RMAB)框架下解决了任务卸载中的这种权衡。然后对该任务卸载问题进行了可索引性分析。同时,基于Whittle索引建立了一种渐近最优且计算复杂度极低的索引策略来解决任务卸载问题。数值结果表明了该方法的优越性。
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