THE PERFORMANCE ANALYSIS OF OPTIMIZED LOAD BALANCING IN MULTIDIMENSIONAL DISTRIBUTED DATABASE SYSTEM FOR VIDEO ONDEMAND

Authors

DOI:

https://doi.org/10.61841/0xkaea33

Keywords:

Multidimensional database, distributed system, load balancing, video on demand

Abstract

This report explores how the efficiency of a complex algorithm for load balancing is influenced by alleged delays (i.e., big and small). Here, we note that the existence of alleged delays induces a substantial reduction in load balancing policy results. Here we use stochastic dynamics via a queuing system to model and optimize the load-balancing algorithm. By compromising the load balancing function, the efficiency of the distributed network may be enhanced. On this basis, we take into consideration the question of optimizing a strategy that has a fixed number (one or two) of juggling momentum, thus optimizing strategy in load flow frequency and periods when preparation is carried out. In this paper, we address the efficiency of a one-time preparation approach on a dispersed physical network composed of a WLAN. This paper proposes an algorithm for effective load balancing based on the forecasts of the Cicada end-to-end method. A cloud service simulator, or Cloud Sim, can be used as a simulation to obtain a low computing demand algorithm and a better balancing of workload. It is a new analytical model that characterizes the mean for the distributed system of the complete completion of the scheduling to analyze the relationship between delay and load balancing benefit. In order to build an autonomous on-demand (sender initial) load balance system, we then use our optimal one-time load balance approach. 

Downloads

Download data is not yet available.

References

[1]. Amruthur, Narasimhan, “Proceeding of Intelligent Information System (115-97)”, pp. 455-460, AT & T Labs. Holmolel, NJ, 07733.

[2]. Joep Aerts, Jan Korst and Sebastian Egner, “Random duplicate storage strategies for load balancing in

multimedia servers”, Philips Research Laboratories.

[3]. Chor Ping Low, Hongatao Yu, Jim Mee Ng, Qingping Lin and Yacine Atif, “An efficient Algorithm

for the Video Serveur Selection problem”, pp. 1329-1333, School of Electrical and Electronics

Engineering, Nanyang Technological University, Singapore-639 798.

[4]. A.Srivastava, A.Kumar and A.Singru, “Design and Analysis of a video- on-Demand Server”, Multimedia

System, Vol.5, No. 4, pp.238-254, July 1997.

[5]. G.Dammicco, U. Mocci, “Optimal Server Location in VOD Networks”, Proceeding of 1997

IEEE Global Telecommunications Conference (GLOBECOM’97), Vol.1, pp.197-201, 1997.

[6]. C.C. Bisdikian, B.V. Patel, “ Issues o n M o v i e Allocation i n Distributed Video-on-Demand

System”, Proceedings of IEEE International Conference on Communication. Vol.1 pp.250-255,

June 1995.

[7]. C.Z. Xu and F.C.M Lau, Load Balancing in Parallel Computers; Theory and Pracitice, Kluwer Academic

Publishers, 1997.

[8]. L.A. Rowe and D.A. Berger, “The Berkeley Distributed Video Server”, Multimedia computingProceedings of the Sixth NEC Research Symposium, Tokyo, Japan, June 1995.

[9]. J. Aerts, J. Korst, W. Verhaegh. Load balancing for redundant storage strategies: Multiprocessor

scheduling with machine eligibility. Submitted to Journal of Scheduling.

[10]. J. Aerts, J. Korst, and W. Verhaegh. Load balancing in multimedia servers. In P r o c e e d i n g s

s e v e n t h international w o r k s h o p o n p r o j e c t management and scheduling, pages 25-28, April

2000.

[11]. W. Tetzlaff a n d R . Flynn. Block a l l o c a t i on i n video s e r v e r s f o r availability and

throughput. In Proceeding Multimedia computing and networking, 1996.

[12]. G. Colouris “Introduction to Distributed System”, concepts and design. Second edition,

[13]. R. X. T. and X. F. Z, “A Load Balancing Strategy Based on the Combination of Static and

Dynamic, in Database Technology and Applications (DBTA), 2010 2nd International Workshop 2010, pp. 1-4, 2010.

[14]. J. Hu, J. Gu, G. Sun, T. Zhao, "A scheduling strategy on load balancing of virtual machine resources in

cloud computing environment", Parallel Architectures Algorithms and Programming (PAAP) 2010

Third International Symposium, pp. 89-96, 2010.

[15]. R.K. Naha, M. Othman, "Evaluation of Cloud Brokering Algorithms in Cloud Based Data Center",

International Computer Science and Engineering Conference (ICSEC), pp. 78-82, 2014.

[16]. K. Mahajan, A. Makroo, D. Dahiya, "Round Robin with Server Affinity: A VM Load Balancing

Algorithm for Cloud Based Infrastructure", Journal of Information Processing System, vol. 9, pp. 379-

394, 2013.

[17]. R.N. Calheiros, R. Ranjan, A. Beloglazov, C.A. De Rose, R. Buyya, "CloudSim: a toolkit for modeling

and simulation of cloud computing environments and evaluation of resource provisioning algorithms",

Software: Practice and Experience, vol. 41, pp. 23-50, 2011.

[18]. S. G. Domanal, G. R. M. Reddy, "Optimal load balancing in cloud computing by efficient utilization of

virtual machines", Communication Systems and Networks (COMSNETS) 2014 Sixth International

Conference, pp. 1-4, 2014.

[19]. S.-C. Wang, K.-Q. Yan, W.-P. Liao, S.-S. Wang, "Towards a load balancing in a three-level cloud

computing network", Computer Science and Information Technology (ICCSIT) 2010 3rd IEEE

International Conference on, pp. 108-113, 2010.

[20]. P. Venkata Krishna, "Honey bee behavior inspired load balancing of tasks in cloud computing environments", Applied Soft Computing, vol. 13, pp. 2292-2303, 2013.

[21]. A. P. Florence, V. Shanthi, "A Load Balancing Model Using Firefly Algorithm in Cloud computing",

Downloads

Published

31.05.2020

How to Cite

THE PERFORMANCE ANALYSIS OF OPTIMIZED LOAD BALANCING IN MULTIDIMENSIONAL DISTRIBUTED DATABASE SYSTEM FOR VIDEO ONDEMAND. (2020). International Journal of Psychosocial Rehabilitation, 24(3), 3765-3781. https://doi.org/10.61841/0xkaea33