4.7 Article

Online Collaborative Data Caching in Edge Computing

Journal

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TPDS.2020.3016344

Keywords

Servers; Mobile handsets; Cloud computing; Distributed databases; Collaboration; Edge computing; Data models; Edge computing; data caching; online algorithm

Funding

  1. Australian Research Council [DP180100212, DP200102491, FL190100035]

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In the edge computing environment, caching data on edge servers can reduce latency for app users, but the limited resources of edge servers pose a challenge. This article investigates the collaborative caching problem in this environment and proposes an online algorithm, CEDC-O, which outperforms four representative approaches according to real-world data set evaluation.
In the edge computing (EC) environment, edge servers are deployed at base stations to offer highly accessible computing and storage resources to nearby app users. From the app vendor's perspective, caching data on edge servers can ensure low latency in app users' retrieval of app data. However, an edge server normally owns limited resources due to its limited size. In this article, we investigate the collaborative caching problem in the EC environment with the aim to minimize the system cost including data caching cost, data migration cost, and quality-of-service (QoS) penalty. We model this collaborative edge data caching problem (CEDC) as a constrained optimization problem and prove that it is NP-complete. We propose an online algorithm, called CEDC-O, to solve this CEDC problem during all time slots. CEDC-O is developed based on Lyapunov optimization, works online without requiring future information, and achieves provable close-to-optimal performance. CEDC-O is evaluated on a real-world data set, and the results demonstrate that it significantly outperforms four representative approaches.

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