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A Stochastic Model for File Lifetime and Security in Data Center Networks

  • Quan-Lin LiEmail author
  • Fan-Qi Ma
  • Jing-Yu Ma
Conference paper
Part of the Lecture Notes in Computer Science book series (LNCS, volume 11280)

Abstract

Data center networks are an important infrastructure in various applications of modern information technologies. Note that each data center always has a finite lifetime, thus once a data center fails, then it will lose all its storage files and useful information. For this, it is necessary to replicate and copy each important file into other data centers such that this file can increase its lifetime of staying in a data center network. In this paper, we describe a large-scale data center network with a file d-replication policy, which is to replicate each important file into at most \(d-1\) other data centers such that this file can maintain in the data center network under a given level of data security in the long-term. To this end, we develop three relevant Markov processes to propose two effective methods for assessing the file lifetime and data security. By using the RG-factorizations, we show that the two methods are used to be able to more effectively evaluate the file lifetime of large-scale data center networks. We hope the methodology and results given in this paper are applicable in the file lifetime and data security study of more general data center networks with replication mechanism.

Keywords

Data center Replication mechanism File lifetime Data security Markov process RG-factorization 

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Copyright information

© Springer Nature Switzerland AG 2018

Authors and Affiliations

  1. 1.School of Economics and Management SciencesYanshan UniversityQinhuangdaoChina

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