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EcoUp: Towards Economical Datacenter Upgrading

机译:EcoUp:经济数据中心升级

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摘要

The rapid growth of cloud services dictates increasingly powerful datacenters to maintain the high quality of service (QoS). It's a common practice in virtually all tiers of datacenters to continuously upgrade the datacenters, i.e. replacing outdated and failed servers with more advanced and efficient ones. However, how to upgrade a datacenter in the most cost-efficient strategy remains unclear, and however this problem goes increasingly challenging given the great diversity of applications. In practice, the datacenters’ operators usually resort to expending the scale of servers. The preferred servers are either expensive but high-performance, or, by contrast, cheap but low-power. Whatever sever preferences, how to justify the cost-efficiency is still an open problem. We claim that a cost-efficient upgrading strategy should be fully aware of not only the capacity and cost of various servers, but also the resource demands of target applications. We model this strategy as a recommendation problem: recommending the “best” servers to a datacenter. We propose “EcoUp”, a model-based framework that faithfully rates the cost efficiency of server candidates, relying on which an optimal server portfolio can be derived. The performance prediction on candidate servers is realized by employing a sophisticated latent factor model (LFM). The cost mainly involves the server purchasing cost and energy bill. Given the application distribution, EcoUp can give an optimal server portfolio under a certain capital budget. We use Google trace, a big profiling dataset opened by Google, to validate the performance prediction. Experimental results show that the error rate is below 8 percent on average. Meanwhile, we build a comprehensive upgrading procedure on a local cluster to evaluate the potential of EcoUp. The results show that our approach significantly outperforms two conventional upgrading strategies by 12.3 and 33.6 percent in terms of syste- throughput, respectively.
机译:云服务的快速增长要求越来越强大的数据中心保持高质量的服务(QoS)。几乎所有级别的数据中心都是一种常见的做法,即不断升级数据中心,即用更高级,更高效的服务器替换过时和故障的服务器。但是,如何以最具成本效益的策略升级数据中心仍然不清楚,但是鉴于应用程序的多样性,该问题变得越来越具有挑战性。实际上,数据中心的运营商通常会扩大服务器规模。首选的服务器要么是昂贵的但高性能的,要么是便宜却低功耗的。无论有何偏好,如何证明成本效益仍然是一个悬而未决的问题。我们认为,具有成本效益的升级策略不仅应充分了解各种服务器的容量和成本,而且还应充分了解目标应用程序的资源需求。我们将此策略建模为一个建议问题:向数据中心推荐“最佳”服务器。我们提出“ EcoUp”,这是一个基于模型的框架,可以忠实地评估服务器候选者的成本效率,并以此为基础得出最佳的服务器产品组合。候选服务器上的性能预测是通过采用复杂的潜在因子模型(LFM)来实现的。成本主要涉及服务器采购成本和电费。在分配应用程序的情况下,EcoUp可以在一定的资本预算下提供最佳的服务器组合。我们使用Google跟踪(由Google打开的大型分析数据集)来验证效果预测。实验结果表明,错误率平均低于8%。同时,我们在本地群集上建立了全面的升级程序,以评估EcoUp的潜力。结果表明,就系统吞吐量而言,我们的方法明显优于两种传统的升级策略,分别提高了12.3%和33.6%。

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