Research on Resource Scheduling in Cloud Computing: Issues and Solutions

Article Preview

Abstract:

. Resource scheduling is the core technology to provide efficient and reliable services in cloud computing, and it is the basis of cloud computing to implement quick deploy and rapid response and save money. This article firstly introduces the research status of the resource scheduling in cloud computing including resource scheduling policies, replica technology and metadata management. Next we analyze the issues of Hadoop platform in resource scheduling including high latency, small files I/O, single point of failure and hot data. On the basis of these, the effective resource scheduling and management mechanisms are given including dynamic replica management, metadata management and horizontal scalability.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

1801-1804

Citation:

Online since:

September 2014

Authors:

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2014 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

* - Corresponding Author

[1] DENG Ru-yue,QIN Chuan,XIE Xian-zhong. Application status and problem analysis of mobile cloud computing, Journal of Chongqing University of Posts and Telecommunications( Natural Science Edition), Vol. 24 No. 6, pp.716-723, Dec. (2012).

Google Scholar

[2] F. Wan, H. H. Yan, H. Suo, and F. Li, Advances in cyber-physical systems research, KSII Transactions on Internet and Information Systems, 2011, 5(11): 1891-(1908).

DOI: 10.3837/tiis.2011.11.001

Google Scholar

[3] H. Suo, Z. Liu, J. Wan* and K. Zhou, Security and privacy in mobile cloud computing, in Proc. of the 9th IEEE Int. Wireless Communications and Mobile Computing Conf., Cagliari, Italy, July, (2013).

DOI: 10.1109/iwcmc.2013.6583635

Google Scholar

[4] Bing Li. The Research of Dynamic Resource Management keytechnologies in Cloud Computing,. Beijing university of posts and telecommnication. May. (2012).

Google Scholar

[5] Tian Hong-wei, XIE Fu, NI Jun-min. Resource AIlocation Algorithm Based on Particle Swarm Algorithmin Cloud Computing Environment,. COMPUTER TECHN()IDGY AND DEVELOPMENT. Vol. 21. No. 12. Dec. 2011. pp.22-26.

Google Scholar

[6] ZHOU Wen-jun.Cao Jian. Cloud Computing Resource Scheduling Strategy Based on Prediction and ACO Algorithm,. Computer simulation. Vol. 37. No. 11. Sep 2012. pp.239-242.

Google Scholar

[7] LIU Wan-jun,ZHANG Meng-hua,GUO Wen-yue. Cloud Computing Resource Schedule Strategy Based on MPSO Algorithm,. Computer Engineering. Vol. 37. No. 11. June 2011. pp.43-46.

Google Scholar

[8] Mario Mac' ias and Jordi Guitart. A Genetic Model for Pricing in Cloud Computing Markets. ACM Symposium on Applied Computing, 2011, Pages: 113-118.

DOI: 10.1145/1982185.1982216

Google Scholar

[9] Jinn-TsongTsai, Jia-CenFang, Jyh-HorngChou. Optimized task scheduling and resource allocation on cloud computing environment using improved differential evolution algorithm,. Computers &OperationsResearch. 40(2013)3045–3055.

DOI: 10.1016/j.cor.2013.06.012

Google Scholar

[10] Shamsollah Ghanbari, Mohamed Othman. A Priority based Job Scheduling Algorithm in Cloud Computing,. International Conference on Advances Science and Contemporary Engineering 2012(ICASCE 2012). pp: 778 – 785.

Google Scholar

[11] M. Zaharia, D. Borthakur, J. S. Sarma, et al. Job scheduling for multi-user mapreduce clusters,. EECS Department, University of California, Berkeley, Technical Report, Apr (2009).

Google Scholar

[12] http: /www. linuxidc. com/Linux/2012-09/70614. htm.

Google Scholar

[13] Tang X. Y and XuJ.L. Qos-aware replica placement for content distribution,. IEEE Transaction on Parallel and Distributed system, vol. 16, no. l0. 2005. Pages: 921-932.

DOI: 10.1109/tpds.2005.126

Google Scholar