Adaptive Dynamic Data Placement Algorithm for Hadoop in Heterogeneous Environments
Subject Areas : Computer Networks and Distributed SystemsAvishan Sharafi 1 , Ali Rezaee 2
1 - Department of Computer Engineering, Islamic Azad University South Tehran Branch
2 - Department of Computer Engineering, Islamic Azad University, Science and Research Branch,Tehran, Iran.
Keywords:
Abstract :
[1] G. Turkington, 2013. Hadoop Beginner's Guide: Packt Publishing Ltd.
[2] A. Holmes , 2012. Hadoop in practice: Manning Publications Co.
[3] R. D. Schneider, 2012. Hadoop for Dummies Special Edition, John Wiley&Sons Canada.
[4] C.-W. Lee, K.-Y. Hsieh, S.-Y. Hsieh, and H.-C. Hsiao, 2014. A dynamic data placement strategy for hadoop in heterogeneous environments, Big Data Research,1, pp. 14-22
[5] A. Hadoop, "Welcome to apache hadoop," Hämtat från http://hadoop. apache. org, 2014.
[6] R. Xiong, J. Luo, and F. Dong, 2015. Optimizing data placement in heterogeneous Hadoop clusters, Cluster Computing, 18, pp. 1465-1480.
[7] J. Xie, S. Yin, X. Ruan, Z. Ding, Y. Tian, J. Majors, et al, 2010. Improving mapreduce performance through data placement in heterogeneous hadoop clusters, in Parallel & Distributed Processing, Workshops and Phd Forum (IPDPSW), IEEE International Symposium on, 2010, pp. 1-9.
[8] K. Singh and R. Kaur, 2014. Hadoop: addressing challenges of big data. In Advance Computing Conference (IACC), on (pp. 686-689). IEEE.
[9] X. Xu, L. Cao, and X. Wang, 2014. Adaptive task scheduling strategy based on dynamic workload adjustment for heterogeneous Hadoop clusters.
[10] P. Xu, H. Wang, and M. Tian, 2014.New Scheduling Algorithm in Hadoop Based on Resource Aware in Practical Applications of Intelligent Systems, ed: Springer, pp. 1011-1020.
[11] Z. Tang, J. Zhou, K. Li, and R. Li, 2012. MTSD: A task scheduling algorithm for MapReduce base on deadline constraints, in Parallel and Distributed Processing Symposium Workshops & PhD Forum (IPDPSW), IEEE 26th International.