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Customer-aware resource overallocation to improve energy efficiency in realtime Cloud Computing data centers

机译:客户感知资源调整,以提高实时云计算数据中心的能效

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Energy efficiency is becoming a very important concern for Cloud Computing environments. These are normally composed of large and power consuming data centers to provide the required elasticity and scalability to their customers. In this context, many efforts have been developed to balance the loads at host level. However, determining how to maximize the resources utilization at Virtual Machine (VM) level still remains as a big challenge. This is mainly driven by very dynamic workload behaviors and a wide variety of customers' resource utilization patterns. This paper introduces a dynamic resource provisioning mechanism to overallocate the capacity of real-time Cloud data centers based on customer utilization patterns. Furthermore, its impact on the trade-off between energy efficiency and SLA fulfillment is analyzed. The main idea is to exploit the resource utilization patterns of each customer to decrease the waste produced by resource request overestimations. This creates the opportunity to allocate additional VMs in the same host incrementing its energy efficiency. Nevertheless, this also increases the risk of QoS affectations. The proposed model considers SLA deadlines, predictions based on historical data, and dynamic occupation to determine the amount of resources to overallocate for each host. In addition, a compensation mechanism to adjust resource allocation in cases of underestimation is also described. In order to evaluate the model, simulation experimentation was conducted. Results demonstrate meaningful improvements in energy-efficiency while SLA-deadlines are slightly impacted. However, they also point the importance of strongest compensation policies to reduce availability violations especially during peak utilization periods.
机译:能源效率正成为云计算环境的一个非常重要的关注点。这些通常由大型和耗电数据中心组成,为客户提供所需的弹性和可扩展性。在这种情况下,已经开发了许多努力来平衡主机级别的负载。但是,确定如何最大化虚拟机(VM)级别的资源利用级别仍然是一个大挑战。这主要是由非常动态的工作负载行为和各种客户资源利用模式驱动。本文介绍了一种基于客户利用模式的实时云数据中心的能力的动态资源供应机制。此外,分析了对能源效率和SLA履行之间的权衡的影响。主要思想是利用每个客户的资源利用模式来减少资源请求高估所产生的废物。这将创建有机会以同一主机分配额外的VM,递增其能效。然而,这也增加了QoS促进的风险。该建议的模型考虑了SLA截止日期,基于历史数据的预测,以及动态占用,以确定每个主机的整体资源量。另外,还描述了在低估的情况下调整资源分配的补偿机制。为了评估模型,进行了仿真实验。结果展示了能量效率的有意义的改善,而SLA-截止日期略有影响。但是,它们还指出了最强大的补偿政策的重要性,以减少违规行为,特别是在峰值利用期间。

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