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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >A Revenue Maximization Approach for Provisioning Services in Clouds
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A Revenue Maximization Approach for Provisioning Services in Clouds

机译:在云中供应服务的收入最大化方法

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With the increased reliability, security, and reduced cost of cloud services, more and more users are attracted to having their jobs and applications outsourced into IAAS data centers. For a cloud provider, deciding how to provision services to clients is far from trivial. The objective of this decision is maximizing the provider’s revenue, while fulfilling its IAAS resource constraints. The above problem is defined as IAAS cloud provider revenue maximization (ICPRM) problem in this paper. We formulate a service provision approach to help a cloud provider to determine which combination of clients to admit and in what Quality-of-Service (QoS) levels and to maximize provider’s revenue given its available resources. We show that the overall problem is a nondeterministic polynomial- (NP-) hard one and develop metaheuristic solutions based on the genetic algorithm to achieve revenue maximization. The experimental simulations and numerical results show that the proposed approach is both effective and efficient in solving ICPRM problems.
机译:随着可靠性,安全性的提高和云服务成本的降低,越来越多的用户被吸引将工作和应用程序外包给IAAS数据中心。对于云提供商而言,决定如何为客户提供服务绝非易事。该决定的目的是在满足其IAAS资源限制的同时,使提供商的收入最大化。本文将上述问题定义为IAAS云提供商收入最大化(ICPRM)问题。我们制定了一种服务提供方法,以帮助云提供商确定要接受的客户端组合以及哪种服务质量(QoS)级别,并在提供其可用资源的情况下最大程度地提高提供商的收入。我们证明整体问题是一个不确定的多项式(NP-)难题,并基于遗传算法开发了元启发式解决方案以实现收益最大化。实验仿真和数值结果表明,该方法在解决ICPRM问题上既有效又有效。

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