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Utility-aware deferred load balancing in the cloud driven by dynamic pricing of electricity

机译:电力动态定价驱动的云端公用事业感知延迟负载平衡

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Distributed computing resources in a cloud computing environment provides an opportunity to reduce energy and its cost by shifting loads in response to dynamically varying availability of energy. This variation in electrical power availability is represented in its dynamically changing price that can be used to drive workload deferral against performance requirements. But such deferral may cause user dissatisfaction. In this paper, we quantify the impact of deferral on user satisfaction and utilize flexibility from the service level agreements (SLAs) for deferral to adapt with dynamic price variation. We differentiate among the jobs based on their requirements for responsiveness and schedule them for energy saving while meeting deadlines and user satisfaction. Representing utility as decaying functions along with workload deferral, we make a balance between loss of user satisfaction and energy efficiency. We model delay as decaying functions and guarantee that no job violates the maximum deadline, and we minimize the overall energy cost. Our simulation on MapReduce traces show that energy consumption can be reduced by ∼15%, with such utility-aware deferred load balancing. We also found that considering utility as a decaying function gives better cost reduction than load balancing with a fixed deadline.
机译:云计算环境中的分布式计算资源通过响应于动态变化的能源可用性而转移负载,从而提供了减少能源及其成本的机会。电力可用性的这种变化以其动态变化的价格来表示,该价格可以用来驱动工作负载延迟以达到性能要求。但是这样的推迟可能会引起用户的不满。在本文中,我们量化了延迟对用户满意度的影响,并利用服务水平协议(SLA)的灵活性来进行延迟以适应动态价格变化。我们根据工作对响应的要求来区分工作,并安排工作以节约能源,同时满足截止日期和用户满意度。将效用作为衰减函数与工作量递延一起表示,我们在用户满意度损失与能源效率之间取得了平衡。我们将延迟建模为衰减函数,并确保没有任何工作违反最大期限,并且将总能源成本降至最低。我们在MapReduce轨迹上的仿真表明,使用这种实用程序感知的延迟负载平衡,可以将能耗降低约15%。我们还发现,将效用作为衰减函数要比固定期限的负载平衡更好地降低成本。

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