R2-Tree: An Efficient Indexing Scheme for Server-Centric Data Center Networks

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Abstract

Index plays a very important role in cloud storage systems, which can support efficient querying tasks for data-intensive applications. However, most of existing indexing schemes for data centers focus on one specific topology and cannot be migrated directly to the other networks. In this paper, based on the observation that server-centric data center networks (DCNs) are recursively defined, we propose pattern vector, which can formulate the server-centric topologies more generally and design R2-Tree, a scalable two-layer indexing scheme with a local R-Tree and a global R-Tree to support multi-dimensional query. To show the efficiency of R2-Tree, we start from a case study for two-dimensional data. We use a layered global index to reduce the query scale by hierarchy and design a method called Mutex Particle Function (MPF) to determine the potential indexing range. MPF helps to balance the workload and reduce routing cost greatly. Then, we extend R2-Tree indexing scheme to handle high-dimensional data query efficiently based on the topology feature. Finally, we demonstrate the superior performance of R2-Tree in three typical server-centric DCNs on Amazon’s EC2 platform and validate its efficiency.

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APA

Lin, Y., Chen, X., Gao, X., Yao, B., & Chen, G. (2018). R2-Tree: An Efficient Indexing Scheme for Server-Centric Data Center Networks. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 11029 LNCS, pp. 232–247). Springer Verlag. https://doi.org/10.1007/978-3-319-98809-2_15

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