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Right time in right place: Taming workload balancing oscillations in internet data center cost management

机译:在正确的时间正确的时间:减轻Internet数据中心成本管理中的工作负载平衡波动

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Cloud Service Providers (CSPs) have been spending a significant portion of their overall operational costs towards their electricity bills, to power up their Internet Data Centers (IDCs). Geographical Load Balancing (GLB) has been shown as an effective energy cost management solution for IDCs. However, due to the constantly changing dynamics of electricity price and cloud workload, an instantly optimal GLB decision may become suboptimal in the following time slots. An interesting finding in this paper reveals that most of the existing GLB frameworks share a previously undiscovered problem - the workload balancing oscillation problem. To solve this problem, we investigate the gap between the optimal energy cost and the costs with static GLB algorithms. To fill this gap, we propose a novel workload reallocation scheme and design an online cost minimization algorithm to implement this scheme in an eco-friendly electricity market. A bandwidth penalty is carefully imposed to control the workload balancing oscillations. Through performance analysis, we prove that the proposed algorithm can minimize the total cost and at the same time meet the desired tradeoff among cost, oscillations and delay. Extensive evaluations with real-world traces show that the proposed algorithm can reduce peak and total energy costs by up to 79.8% and 61.7% respectively, compared to static GLB algorithms.
机译:云服务提供商(CSP)一直将其总体运营成本的很大一部分用于电费账单,以为其Internet数据中心(IDC)供电。地理负载平衡(GLB)已显示为IDC的有效能源成本管理解决方案。但是,由于电价和云工作负载的动态变化,即时最佳的GLB决策可能在以下时隙中变得次优。本文有趣的发现表明,大多数现有的GLB框架都存在一个以前未发现的问题-工作负载平衡振荡问题。为了解决这个问题,我们研究了最佳能源成本与静态GLB算法的成本之间的差距。为了填补这一空白,我们提出了一种新颖的工作量重新分配方案,并设计了一种在线成本最小化算法以在生态友好型电力市场中实施该方案。谨慎地施加带宽损失以控制工作负载平衡振荡。通过性能分析,我们证明了所提出的算法可以使总成本最小化,同时满足成本,振荡和延迟之间的期望权衡。与真实世界轨迹的大量评估表明,与静态GLB算法相比,该算法可分别减少峰值和总能源成本高达79.8%和61.7%。

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