QUEUING MODEL BASED DATA CENTERS: A REVIEW

Published 28 Feb 2019 •  vol 123  • 


Authors:

 

N. Thirupathi Rao, Department of Computer Science and Engineering, Vignan’s Institute of Information Technology (A), Visakhapatnam, AP, India
Debnath Bhattacharyya, Department of Computer Science and Engineering, Vignan’s Institute of Information Technology (A), Visakhapatnam, AP, India
S. Naga Mallik Raj, Department of Computer Science and Engineering, Vignan’s Institute of Information Technology (A), Visakhapatnam, AP, India

Abstract:

 

Cloud computing was the technology developed to store the info and support the users with the access to the info hold on by charging a token quantity for the storage of information and for providing necessary steps for storing the info and for providing security to the info that was held on. Typically, analytical models established for assessing the operating and therefore the performance of cloud server farms may be studied beneath kind of configurations and assumptions are supported the queuing theory, and its accuracy is verified with numerical calculations and simulations. The issues at hand create to the task of evaluating the performance of information centre with varied queuing models to grasp the distribution of the performance parameters with arrival and repair rates, traffic intensity, the range of servers and therefore the associated possibilities. The goals of this article are to supply a framework through programs associated with queuing models and value the performance parameters, try validation, sensitivity analysis and build comparisons for information centres. The steady state performance parameter formulations known are programmed in MATLAB®. The models considered for evaluation for single servers include M/M/c/c and M/M/c/k. Service rates have a fuller range of distributions including exponential, generalize and Erlang type.

Keywords:

 

Cloud computing, queuing models, exponential distribution

References:

 

[1] Chandrakala, Jyothi Shetty, “Survey on Models to Investigate Data Center Performance and QoS in Cloud Computing Infrastructure”, First International Conference on Recent Advances in Science & Engineering, 2016.
[2] Myron Hlynka et. al. “Comparing expected wait times of a M/M/1queue”, Department of Mathematics and Statistics, University of Winsor, June2010.
[3] Hamzeh Khazaei, Jelena and Vojislav, “Performance Analysis of Cloud Computing Centers Using M/G/m/m+r Queuing Systems”, IEEE Transactions on parallel and distributed systems, Vol.23, May 2012.
[4] Dr. Janos Sztrik, “Basic Queuing Theory”, University of Debrecen, Faculty of Informatics, Dec 2012.
[5] Niloofar Khanghahi, Reza Ravanmehr, “Cloud Computing Performance Evaluation: Issues and Challenges”, International Journal on Cloud Computing Services and Architecture, Vol.3, Oct 2013.
[6] Tom V. Mathew, Queuing Analysis, Transportation Systems Engineering, Indian Institute of Technology, Bombay, Feb 2014.
[7] Hamzeh Khazaei, “Performance Modeling of Cloud Computing Centers”, Doctoral dissertation, The University of Manitoba, Canada, Oct 2012.
[8] B. Yang, F. Tan, Y. Dai, and S. Guo., “Performance evaluation of cloud service considering fault recovery”, First International Conference on Cloud Computing (CloudCom) 2009, Dec. 2009.
[9] Ivo Adan and Jacques Resing, “Queuing Systems”, Eindhoven University of Technology, The Netherlands, March 2015.
[10] T.Sai Sowjanya, D.Praveen, K.Satish, A Rahiman, “The Queuing Theory in Cloud Computing to Reduce the Waiting Time”, IJCSET, Vol.1, April 2011.
[11] Alexandre Brandwajn, Hongyun Wang, “A conditional probability approach to M/G/1 – like queues”, Performance Evaluation Vol.65, 2008.

Citations:

 

APA:
Thirupathi Rao, N., Bhattacharyya, D. & Naga Mallik Raj, S. (2019). Queuing Model Based Data Centers: A Review. International Journal of Advanced Science and Technology (IJAST), ISSN: 2005-4238(Print); 2207-6360 (Online), NADIA, 123, 11-20. doi: 10.33832/ijast.2019.123.02.

MLA:
Rao, N. Thirupathi, et al. “Queuing Model Based Data Centers: A Review.” International Journal of Advanced Science and Technology, ISSN: 2005-4238(Print); 2207-6360 (Online), NADIA, vol. 123, 2019, pp. 11-20. IJAST, http://article.nadiapub.com/IJAST/Vol123/2.html.

IEEE:
[1] N. Thirupathi Rao, D. Bhattacharyya, and S. Naga Mallik Raj, “N. Thirupathi Rao, D. Bhattacharyya, and S. Naga Mallik Raj.” International Journal of Advanced Science and Technology (IJAST), ISSN: 2005-4238(Print); 2207-6360 (Online), NADIA, vol. 123, pp. 11-20, Feb. 2019.