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Resource allocation and routing in parallel multi-server queues with abandonments for cloud profit maximization

机译:并行多服务器队列中的资源分配和路由,并且放弃使用以最大化云利润

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This paper considers a Markov decision model for profit maximization of a cloud computing service provider catering to customers submitting jobs with firm real-time random deadlines. Customers are charged on a per-job basis, receiving a full refund if deadlines are missed. The service provider leases computing resources from an infrastructure provider in a two-tier scheme: long-term leasing of basic infrastructure, consisting of heterogeneous parallel service nodes, each modeled as a multi-server queue, and short-term leasing of external servers. Given the intractability of computing an optimal dynamic resource allocation and job routing policy, maximizing the long-run average profit rate, the paper addresses the design, implementation and testing of low-complexity heuristics. The policies considered are a static policy given by an optimal Bernoulli splitting, and three dynamic index policies based on different index definitions: individually optimal (IO), policy improvement (PI) and restless bandit (RB) indices. The paper shows how to implement efficiently each such policy, and presents a comprehensive empirical comparison, drawing qualitative insights on their strengths and weaknesses, and benchmarking their performance in an extensive study.
机译:本文考虑了一个马尔可夫决策模型,该模型可最大程度地满足云计算服务提供商的利润最大化,该模型可满足以实时实时随机截止日期提交工作的客户。客户按工作收取费用,如果错过最后期限,则会获得全额退款。服务提供商以两层方案的形式从基础设施提供商那里租用计算资源:长期租赁基础设施(由异构并行服务节点组成,每个节点均建模为多服务器队列)和短期租赁外部服务器。鉴于计算最优动态资源分配和作业路由策略的难处理性,最大化长期平均利润率,本文着重介绍了低复杂度启发式算法的设计,实现和测试。所考虑的策略是由最佳Bernoulli分裂给出的静态策略,以及基于不同索引定义的三种动态索引策略:个体最优(IO),策略改进(PI)和不安定的土匪(RB)索引。本文展示了如何有效地执行每种此类政策,并进行了全面的实证比较,对它们的优缺点进行了定性分析,并在广泛的研究中确定了它们的绩效。

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