Numerical Solution of Cloud Servicing Models

V. Georgiev
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引用次数: 1

Abstract

This paper presents a method for numerical solution of Markov-chain based models of dynamic load balancing schemes for cloud clusters. These schemes were presented in detail in earlier publications. Here we are describing the fast converging iterative solution of a class of such models. The numerical solution of the dynamic load-balancing models by computer solvers proved to be problematic if not applicable due to its computational instability. Other numerical methods available for solving Markov chains relay on constant transition rates or at least on rates that are not depending on the state probabilities. The proposed method combines analytical approach with the simple computations based on electronic tables and gives a solution in just a few iteration steps. It is designed especially for Markov chains in which transition rates are functions of the steady-state probabilities -- and that is the case of most dynamic load balancing schemes. The simplicity of this numerical method allows to compute the parameters for vast modeling space thus providing a broad picture of cloud servers' performance.
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云服务模式的数值解
本文提出了一种基于马尔可夫链的云集群动态负载均衡模型的数值求解方法。这些方案在以前的出版物中有详细的介绍。这里我们描述了一类这样的模型的快速收敛迭代解。由于计算的不稳定性,用计算机求解动态负载平衡模型的数值解是有问题的。其他可用于求解马尔可夫链的数值方法依赖于恒定的转移速率,或者至少依赖于不依赖于状态概率的速率。该方法将解析法与基于电子表的简单计算相结合,只需几个迭代步骤即可求解。它是专门为马尔可夫链设计的,其中转移率是稳态概率的函数——这是大多数动态负载平衡方案的情况。这种数值方法的简单性允许为巨大的建模空间计算参数,从而提供云服务器性能的广泛图像。
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