Development of the Model of Dynamic Storage Distribution in Data Processing Centers

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Author(s)

Rashid G. Alakbarov 1,* Fahrad H. Pashaev 2 Mammad A. Hashimov 1

1. Institute of Information Technology of ANAS, Baku, Azerbaijan

2. Institute of Control Systems after Academician A. Huseynov of ANAS, Baku, Azerbaijan

* Corresponding author.

DOI: https://doi.org/10.5815/ijitcs.2015.05.03

Received: 21 Aug. 2014 / Revised: 3 Dec. 2014 / Accepted: 19 Jan. 2015 / Published: 8 Apr. 2015

Index Terms

Data Processing Center, Cloud Computing, Storage Capacity, Markov Process, Stochastic Model, Virtual Resource

Abstract

The paper reviews dynamic distribution of storage resources among the users in data processing centers. The process of changing memory usage state was revealed to be the process of Markov. The paper proposes the development of stochastic model of the memory and computing usage distribution and the development of probability density functions over practical data. Parameters of probability density functions were defined with the help of stochastic model and practical data. The calculation of the developed model and the parameters of the probability density function is realized dynamically during the ongoing process. At the beginning of each time interval, it is forecasted that the process will be shifted to which state with which maximum probability. The adequacy of the previous forecasts is monitored. Note that, over the time, the quality of the forecast and the level of adequacy increases. The model is used in the virtualization of storage resources usage process and ensures the use of storage resources without wasting. Structure of visualization base is given. The base enables to monitor all stages of the process. Using monitoring base the issues can be resolved to analyze different aspects of the process. Recommendations are given on the use of obtained results.

Cite This Paper

Rashid G. Alakbarov, Fahrad H. Pashaev, Mammad A. Hashimov, "Development of the Model of Dynamic Storage Distribution in Data Processing Centers", International Journal of Information Technology and Computer Science(IJITCS), vol.7, no.5, pp.18-24, 2015. DOI:10.5815/ijitcs.2015.05.03

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