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Task Management for Cooperative Mobile Edge Computing

机译:合作移动边缘计算的任务管理

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This paper investigates the task management for cooperative mobile edge computing (MEC), where a set of geographically distributed heterogeneous edge nodes not only cooperate with remote cloud data centers but also help each other to jointly process tasks and support real-time IoT applications at the edge of the network. Especially, we address the challenges in optimizing assignment of the tasks to the nodes under dynamic network environments when the task arrivals, node computing capabilities, and network states are nonstationary and unknown a priori. We propose a novel stochastic framework to model the interactions of the involved entities, including the edge-to-edge horizontal cooperation and the edge-to-cloud vertical cooperation. The task assignment problem is formulated and the algorithm is developed based on online reinforcement learning to optimize the performance for task processing while capturing various dynamics and heterogeneities of node computing capabilities and network conditions with no requirement for prior knowledge of them. Further, by leveraging the structure of the underlying problem, a post-decision state is introduced and a function decomposition technique is proposed, which are incorporated with reinforcement learning to reduce the search space and computation complexity. The evaluation results demonstrate that the proposed online learning-based scheme outperforms the state-of-the-art benchmark algorithms.
机译:本文研究的任务管理协作移动边缘计算(MEC),其中一组在地理上分布异构的边缘节点,不仅具有远程云数据中心合作,但也互相帮助,在共同的任务,而支持实时物联网应用该网络的边缘上。特别是,我们解决下动态网络环境优化的任务分配到节点时,任务来的,节点计算能力的挑战,以及网络状态是不稳定的和未知的先验。我们提出了一个新的随机框架所涉及的实体之间的相互作用,包括边缘到边缘的横向合作和边缘到云的垂直合作模式。任务分配问题是制定和算法是基于网络的强化学习,以优化任务处理性能的同时,捕捉各种动态和节点的计算能力和网络条件与他们的先验知识没有要求非均质性开发。此外,通过利用下面的问题的结构,后决策状态引入并提出了一种功能分解技术,其与增强学习并入减少搜索空间和计算复杂度。评价结果表明,所提出的基于在线学习方案优于国家的最先进的基准算法。

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