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Dynamic IaaS Computing Resource Provisioning Strategy with QoS Constraint

机译:QoS约束的动态IaaS计算资源配置策略

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In an IaaS cloud, virtual machines (VMs), also called instances, may be classified as reserved instances and on-demand instances. The reserved instances having long-term commitments and one-time payment are appropriate for the steady or predictable workloads, while for short-term, spiky or unpredictable workloads, the on-demand instances having flexible hourly payment and no long-term commitments may be more suitable for reducing the cost. In this paper, we consider the economical provisioning of reserved and/or on-demand instances for meeting time-varying computing workload of compute-intensive applications. In order to achieve this, we conceive a strategy for determining the amount of the purchased instances dynamically in order to minimize the total computing cost while keeping quality-of-service (QoS). By mapping QoS as the overload probability, we propose a dynamic instance provisioning strategy based on the large deviation principle, which is capable of calculating the minimum number of instances for the upcoming demands subject to the overload probability below a desired threshold. In addition, a reserved instance provisioning strategy for further reducing the total cost is also proposed by applying the autoregressive (AR) model to calculate the number of reserved instances for the average computation requirements. Finally, the simulations are performed based on real workload traces to show the attainable performance of the proposed instance provisioning strategy for the computing service in an IaaS cloud.
机译:在IaaS云中,虚拟机(VM)也称为实例,可以分为保留实例和按需实例。具有长期承诺和一次性付款的预留实例适用于稳定或可预测的工作负载,而对于短期,尖峰或不可预测的工作负载而言,按需实例具有灵活的按小时支付且不包含长期承诺的情况更适合降低成本。在本文中,我们考虑了预留和/或按需实例的经济配置,以满足计算密集型应用程序随时间变化的计算工作量。为了实现这一目标,我们构想出一种动态确定所购买实例数量的策略,以便在保持服务质量(QoS)的同时最大程度地降低总计算成本。通过将QoS映射为过载概率,我们提出了一种基于大偏差原理的动态实例供应策略,该策略能够为即将到来的需求(在低于所需阈值的过载概率下)计算最小实例数。此外,还提出了一种通过进一步应用自回归(AR)模型来为平均计算需求计算预留实例数量的策略,以进一步降低总成本。最后,基于实际工作负载跟踪执行仿真,以显示针对IaaS云中的计算服务的拟议实例供应策略的可达到的性能。

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