A Scheme to Reduce Response Time in Cloud Computing Environment

Full Text (PDF, 600KB), PP.56-61

Views: 0 Downloads: 0

Author(s)

Ashraf Zia 1,* M. N. A. Khan 1

1. Department of Computing, Shaheed Zulfikar Ali Bhutto Institute of Science & Technology, Islamabad, Pakistan

* Corresponding author.

DOI: https://doi.org/10.5815/ijmecs.2013.06.08

Received: 12 Jan. 2013 / Revised: 23 Mar. 2013 / Accepted: 1 May 2013 / Published: 8 Jun. 2013

Index Terms

Response Time, QoS, Performance, Cloud Computing.

Abstract

The area of cloud computing has become popular from the last decade due to its enormous benefits such as lower cost, faster development and access to highly available resources. Apart from these core benefits some challenges are also associated with it such as QoS, security, trust and better resource management. These challenges are caused by the infrastructure services provided by various cloud vendors on need basis. Empirical studies on cloud computing report that existing quality of services solutions are not enough as well as there are still many gaps which need to be filled. Also, there is a dire need to develop appropriate frameworks to improve response time of the clouds. In this paper, we have made an attempt to fill this gap by proposing a framework that focuses on improving the response time factor of the QoS in the cloud environment such as reliability and scalability. We believe that if the response time are communicating effectively and have awareness of the nearest and best possible resource available then the remaining issues pertaining to QoS can be reduced to a greater extent.

Cite This Paper

Ashraf Zia, M.N.A. Khan, "A Scheme to Reduce Response Time in Cloud Computing Environment", International Journal of Modern Education and Computer Science (IJMECS), vol.5, no.6, pp.56-61, 2013. DOI:10.5815/ijmecs.2013.06.08

Reference

[1]K. V. Vishwanat and N. Nagappan, “Characterizing Cloud Computing Hardware Reliability”, SoCC’10, USA (June 10–11, 2010). DOI:10.1145/1807128.1807161.
[2]Y. C. Lee, A.Y. Zomaya and M. Yousif, “Reliable Workflow Execution in Distributed Systems for Cost Efficiency”, 11th IEEE/ACM International Conference onGrid Computing, IEEE (2010). DOI:10.1109/GRID.2010.5697959.
[3]Y. Yuan and W. Liu, “Efficient resource management for cloud computing”, 11th IEEE/ACM International Conference on System Science, Engineering Design and Manufacturing Informatization, IEEE (2011). DOI:10.1109/ICSSEM.2011.6081285.
[4]M. Litoiu and M. Litoiu, “Optimizing Resources in Cloud, a SOA Governance View”, GTIP, USA (Dec. 7, 2010). DOI:10.1145/1920320.1920330
[5]Y. Wang and H. T. LV, “Efficient Metadata Management in Cloud Computing”, Proceedings of IEEE, (2011). DOI:10.1109/ICCSN.2011.6014777.
[6]J. Z. Li, M. Woodside, J. Chinneck and M. Litoiu, “CloudOpt: Multi-Goal Optimization of Application Deployments across a Cloud”, 7th International Conference on Network and Service Management (CNSM), IEEE, (2011).
[7]M. Alhamad, T. Dillon, C. Wu and E. Chang, “Response Time for Cloud Computing Providers”, WAS2010, France, (8- 10 November, 2010). DOI:10.1145/1967486.1967579.
[8]Marcos Dias de Assunção, Alexandre di Costanzo and RajkumarBuyya, “Evaluating the Cost-Benefit of using Cloud Computing to Extend the Capacity of Clusters”, HPDC’09, Germany, (June 11–13, 2009). DOI:10.1145/1551609.1551635.
[9]V. Sekar and P. Maniatis, “Verifiable Resource Accounting for Cloud Computing Services”, CCSW’11, USA, (October 21, 2011). DOI:10.1145/2046660.2046666.
[10]X. Wang and Y. Wang, “Energy-efficient Multi-task Scheduling based on MapReduce for Cloud Computing”, Seventh International Conference on Computational Intelligence and Security, IEEE, (2011). DOI:10.1109/CIS.2011.21.
[11]R.K. Jha and U. D. Dalal, “A performance comparison with cost for QoS application in on0demand cloud computing”, International Conference on Recent Advances in Intelligent Computational Systems (RAICS), IEEE, (2011). DOI:10.1109/RAICS.2011.6069264.
[12]D. Bein, W. Bein and S. Phoha, “Efficient data centers, cloud computing in the future of distributed computing”, Seventh International Conference on Information Technology, IEEE, (2010). DOI:10.1109/ITNG.2010.31.
[13]S. Han, M. M. Hassan, C.W. Yoon and E.N. Huh, “Efficient Service Recommendation System for Cloud Computing Market”, ICIS 2009, Korea, (November 24 -26, 2009). DOI:10.1145/1655925.1656078.
[14]P. P. Beran, E. Vinek and E. Schikuta, “A Cloud-Based Framework for QoS-Aware Service Selection Optimization”, WAS2011, Vietnam, (5-7 December, 2011). DOI:10.1145/2095536.2095584.
[15]R. Nathuji, A. Kansal and A. Ghaffarkhah, “Q-Clouds: Managing Performance Interference Effects for QoS-Aware Clouds”, EuroSys’10, France, (April 13–16, 2010). DOI:10.1145/1755913.1755938.