Database as a Service under Clustered Resources in Cloud Computing

S. Thirumurugan, K. Sankar

Abstract


It is well known fact that there is a race ahead on optimum utilization of the resources in our hands. The cloud computing has emerged out on top of the existing networks to ensure resource utilization to the maximum possible level through share and conquer approach. In line with that objective of effective resource utilization, this paper proposes database as software resource to be made available for the users on pay and get service mode. This study recommends a clustered network as a residing place for the database to provide service on demand. Further, two models for cloud database with the advent of clustering is proposed in this study. This work also suggests the implementation procedure for providing database accessibility to the required users through clustered wireless network on cloud computing.

Full Text:

PDF

References


Naskar Ankita, Mrs. R. Mishra Monika , “using cloud computing to provide data mining services”, International journal of engineering and computer science, Vol. 2, No. 3, pp. 545-550, Mar. 2013.

Bhupendra Panchal, R.K Kapoor, “Performance Enhancement of cloud computing with clustering”, International journal of engineering and advanced technology, Vol. 2, No.5, pp. 37-40, Jun. 2013.

Kashish Ara Shakil, Manasaf Alam, “data management in cloud based environment using k median clustering technique”, International journal of computer Applications, 4th International IT Summit Confluence 2013- The Next Generation Information Technology Summit”, pp. 8 -11. 2013.

A.Mahendiran, N.Saravanan, N.Venkata Subramanian and Sairam, “Implementation of K-means Clustering in cloud computing environment” , Research journal of applied sciences, engineering and technology, Vol. 4, No. 10, May. 2012.

Kriti Srivastava, R. Shah, D. Valia, and H. Swaminarayan, “Data Mining Using Hierarchical Agglomerative Clustering Algorithm in Distributed Cloud Computing Environment”, International Journal of Computer Theory and Engineering, Vol. 5, No. 3, pp. 45-49, Jun. 2013.

A. Mahendiran, N. Saravanan, N. Venkata Subramanian and N. Sairam, “Implementation of K-Means Clustering in Cloud Computing Environment” , Research Journal of Applied Sciences, Engineering and Technology, Vol. 4, No. 10, pp. 1391-1394, Jan. 2012..

Michael Shindler, Alex Wong and , and Adam Meyerson “Fast and Accurate k-means For Large Datasets” , NIPS'11 Proceedings of the 24th International Conference on Neural Information Processing Systems, pp. 2375-2383, 2011.

Priti Kumari⇑, Parmeet KaurA, “survey of fault tolerance in cloud computing”, Journal of King Saud University –Computer and Information Sciences, Sept. 2018.

Deepak Ahlawat and Deepali Gupta, “An Enhanced Mechanism of Big Data Clustering In Cloud”, International Journal of Advanced Studies of Scientific Research, pp.91-96, 2018.

Harrison John Bhatti , Babak Bashari Rad , “Databases in Cloud Computing: A Literature Review”, I.J. Information Technology and Computer Science, Vol.4, 2017.

http://www.scaledb.com/dbaas-database-as-a-service.php

http://en.wikipedia.org/wiki/Cloud_database

http://en.wikipedia.org/wiki/Cloud Computing

RONG, C., NGUYEN, S. T. & JAATUN, M. G., “Beyond lightning: A survey on security challenges in cloud computing”. Computers & Electrical Engineering, 39, 47-54, 2013.

Muhammad Imran Tariq, “Agent Based Information Security Framework for Hybrid Cloud”, KSII Transactions on Internet and Information Systems, 13(1),406-434 , 2019.


Refbacks

  • There are currently no refbacks.


------------------------------------------------------------------------------------------------------------------------

The ADBU Journal of Engineering Technology (AJET)" ISSN:2348-7305

This journal is published under the terms of the Creative Commons Attribution (CC-BY) (http://creativecommons.org/licenses/)

Number of Visitors to this Journal: