Fragment Re-Allocation Strategy Based on Hypergraph for NoSQL Database Systems

Author:

Chen Zhikun1,Yang Shuqiang2,Shang Yunfei1,Liu Yong1,Wang Feng1,Wang Lu1,Fu Jingjing3

Affiliation:

1. Unit 91655, People's Liberation Army, Beijing, China

2. Department of Computer Science, National University of Defense Technology, Changsha, China

3. Unit 95025, People's Liberation Army, Beijing, China

Abstract

NoSQL database is famed for the characteristics of high scalability, high availability, and high fault-tolerance. It is used to manage data for a lot of applications. The computing model has been transferred to “computing close to data”. Therefore, the location of fragment directly affects system's performance. Every site's load dynamical changes because of the increasing data and the ever-changing operation pattern. So system has to re-allocate fragment to improve system's performance. The general fragment re-allocation strategies of NoSQL database scatter the related fragments as possible to improve the operations' parallel degree. But those fragments may interact with each other in some application's operations. So the high parallel degree of operation may increase system's communication cost such as data are transferred by network. In this paper, the authors propose a fragment re-allocation strategy based on hypergraph. This strategy uses a weighted hypergraph to represent the fragments' access pattern of operations. A hypergraph partitioning algorithm is used to cluster fragments in the strategy. This strategy can improve system's performance according to reducing the communication cost while guaranteeing the parallel degree of operations. Experimental results confirm that the strategy will effectively contribute in solving fragment re-allocation problem in specific application environment of NoSQL database system, and it can improve system's performance.

Publisher

IGI Global

Subject

Computer Networks and Communications

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