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Graph-based data caching optimization for edge computing

机译:基于图形的数据缓存优化Edge Computing

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摘要

Edge computing has emerged as a new computing paradigm that allows computation and storage resources in the cloud to be distributed to edge servers. Those edge servers are deployed at base stations to provide nearby users with high-quality services. Thus, data caching is extremely important in ensuring low latency for service delivery in the edge computing environment. To minimize the data caching cost and maximize the reduction in service latency, we formulate this Edge Data Caching (EDC) problem as a constrained optimization problem in this paper. We prove the NP-completeness of this EDC problem and provide an optimal solution named 1PEDC to solve this problem based on Integer Programming. Then, we propose an approximation algorithm named AEDC to find approximate solutions with a limited bound. We conduct intensive experiments on a real-world data set and a synthesized data set to evaluate our approaches. Our results demonstrate that IPEDC and AEDC significantly outperform the four representative baseline approaches.
机译:边缘计算已成为新的计算范例,允许云中的计算和存储资源分发到边缘服务器。这些边缘服务器部署在基站,为附近的用户提供高质量的服务。因此,数据高速缓存在确保边缘计算环境中的服务递送的低延迟方面非常重要。为了最大限度地减少数据缓存成本并最大限度地提高服务延迟的减少,我们将该边缘数据缓存(EDC)问题标准为本文的约束优化问题。我们证明了该EDC问题的NP完整性,并提供了一个名为1PedC的最佳解决方案,以基于整数编程来解决此问题。然后,我们提出了一种名为AEDC的近似算法,找到具有有限界限的近似解决方案。我们对真实数据集和合成数据集进行密集实验,以评估我们的方法。我们的结果表明,IPLEDC和AEDC显着优于四种代表性基线方法。

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