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R~2-Tree: An Efficient Indexing Scheme for Server-Centric Data Center Networks

机译:R〜2-Tree:以服务器为中心的数据中心网络的高效索引方案

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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 R~2-Tree, a scalable two-layer indexing scheme with a local R-Tree and a global Ft-Tree to support multi-dimensional query. To show the efficiency of R~2-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 R~2-Tree indexing scheme to handle high-dimensional data query efficiently based on the topology feature. Finally, we demonstrate the superior performance of R~2-Tree in three typical server-centric DCNs on Amazon's EC2 platform and validate its efficiency.
机译:索引在云存储系统中起着非常重要的作用,可以支持有效查询数据密集型应用程序。但是,数据中心的现有索引方案的大多数索引方案专注于一个特定拓扑,不能直接迁移到其他网络。在本文的基础上,基于递归定义服务器中心数据中心网络(DCN),我们提出了模式向量,该模式向量可以更普遍地制定以服务器为中心的拓扑,设计R〜2树,可伸缩的两层具有本地R树的索引方案和全局FT-TRE,以支持多维查询。为了展示R〜2树的效率,我们从一个案例研究开始,用于二维数据。我们使用分层的全局索引来减少层次结构的查询量表,并设计一种名为互斥粒子函数(MPF)的方法来确定潜在的索引范围。 MPF有助于平衡工作量并大大降低路由成本。然后,我们扩展了R〜2树索引方案以基于拓扑功能有效地处理高维数据查询。最后,我们展示了亚马逊EC2平台上的三个典型服务器中心DCN中R〜2树的卓越性能,并验证其效率。

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