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Optimal Multiserver Configuration for Profit Maximization in Cloud Computing

机译:优化多服务器配置以实现云计算中的利润最大化

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摘要

As cloud computing becomes more and more popular, understanding the economics of cloud computing becomes critically important. To maximize the profit, a service provider should understand both service charges and business costs, and how they are determined by the characteristics of the applications and the configuration of a multiserver system. The problem of optimal multiserver configuration for profit maximization in a cloud computing environment is studied. Our pricing model takes such factors into considerations as the amount of a service, the workload of an application environment, the configuration of a multiserver system, the service-level agreement, the satisfaction of a consumer, the quality of a service, the penalty of a low-quality service, the cost of renting, the cost of energy consumption, and a service provider's margin and profit. Our approach is to treat a multiserver system as an M/M/m queuing model, such that our optimization problem can be formulated and solved analytically. Two server speed and power consumption models are considered, namely, the idle-speed model and the constant-speed model. The probability density function of the waiting time of a newly arrived service request is derived. The expected service charge to a service request is calculated. The expected net business gain in one unit of time is obtained. Numerical calculations of the optimal server size and the optimal server speed are demonstrated.
机译:随着云计算变得越来越流行,理解云计算的经济性变得至关重要。为了使利润最大化,服务提供商应该了解服务费用和业务成本,以及它们如何由应用程序的特性和多服务器系统的配置确定。研究了在云计算环境中实现利润最大化的最佳多服务器配置问题。我们的定价模型考虑了以下因素:服务量,应用程序环境的工作量,多服务器系统的配置,服务级别协议,消费者的满意度,服务质量,低质量的服务,租赁成本,能源消耗成本以及服务提供商的利润和利润。我们的方法是将多服务器系统视为M / M / m排队模型,这样我们的优化问题就可以得到表述和解析。考虑了两种服务器速度和功耗模型,分别是空闲速度模型和恒定速度模型。得出新到达的服务请求的等待时间的概率密度函数。计算对服务请求的预期服务费用。获得了单位时间内的预期净业务收益。演示了最佳服务器大小和最佳服务器速度的数值计算。

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