分布式边缘云下任意用户移动的在线资源分配

L. Wang, Lei Jiao, Jun Yu Li, M. Mühlhäuser
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引用次数: 92

摘要

随着云向网络边缘移动以促进移动应用,边缘云提供商在资源分配方面面临新的挑战。由于用户可能移动,资源价格可能任意变化,%和服务延迟是异构的,因此必须不断分配和调整边缘云中的资源,以适应这种动态。在本文中,我们首先用一个捕获关键挑战的综合模型来阐述这个问题,然后引入问题的间隙保持变换,并提出一种新的在线算法,该算法以精心设计的对数目标最优地解决了一系列子问题,最终产生了边缘云资源随时间分配的可行解决方案。通过严格的分析,我们进一步证明了我们的在线算法可以提供参数化的竞争比,而不需要任何关于资源价格或用户移动性的先验知识。通过真实世界和合成数据的大量实验,我们进一步证实了所提出算法的有效性。我们的研究表明,该算法获得了接近最优的结果,经验竞争比约为1.1,与静态方法相比,总成本降低了4倍,并且比在线贪婪一次性优化高出70%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online Resource Allocation for Arbitrary User Mobility in Distributed Edge Clouds
As clouds move to the network edge to facilitate mobile applications, edge cloud providers are facing new challenges on resource allocation. As users may move and resource prices may vary arbitrarily, %and service delays are heterogeneous, resources in edge clouds must be allocated and adapted continuously in order to accommodate such dynamics. In this paper, we first formulate this problem with a comprehensive model that captures the key challenges, then introduce a gap-preserving transformation of the problem, and propose a novel online algorithm that optimally solves a series of subproblems with a carefully designed logarithmic objective, finally producing feasible solutions for edge cloud resource allocation over time. We further prove via rigorous analysis that our online algorithm can provide a parameterized competitive ratio, without requiring any a priori knowledge on either the resource price or the user mobility. Through extensive experiments with both real-world and synthetic data, we further confirm the effectiveness of the proposed algorithm. We show that the proposed algorithm achieves near-optimal results with an empirical competitive ratio of about 1.1, reduces the total cost by up to 4x compared to static approaches, and outperforms the online greedy one-shot optimizations by up to 70%.
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