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Quantitative Workload Analysis and Prediction using Google Cluster Traces

机译:使用Google群集迹线的定量工作负载分析和预测

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Resource allocation efficiency and energy consumption are among the top concerns to today's Cloud data center. Finding the optimal point where users' multiple job requests can be accomplished timely with minimum electricity and hardware cost is one of the key factors for system designers and managers to optimize the system configurations. Understanding the characteristics of the distribution of user task is an essential step for this purpose. At large-scale Cloud Computing data centers, a precise workload prediction will significantly help designers and operators to schedule hardware/software resources and power supplies in a more efficient manner, and make appropriate decisions to upgrade the Cloud system when the workload grows. While a lot of study has been conducted for hypervisor-based Cloud, container-based virtualization is becoming popular because of the low overhead and high efficiency in utilizing computing resources. In this paper, we have studied a set of real-world container data center traces from part of Google's cluster. We investigated the distribution of job duration, waiting time and machine utilization and the number of jobs submitted in a fix time period. Based on the quantitative study, an Ensemble Workload Prediction (EnWoP) method and a novel prediction evaluation parameter called Cloud Workload Correction Rate (C-Rate) have been proposed. The experimental results have verified that the EnWoP method achieved high prediction accuracy and the C-Rate evaluates the prediction methods more objective.
机译:资源分配效率和能源消耗是当今云数据中心的最重要问题。找到用户多个作业请求可以及时完成最佳电力和硬件成本的最佳点是系统设计人员和管理人员优化系统配置的关键因素之一。了解用户任务分发的特征是此目的的重要步骤。在大规模的云计算数据中心,精确的工作负载预测将显着帮助设计者和运营商以更有效的方式安排硬件/软件资源和电源,并在工作负载增长时升级云系统的适当决策。虽然已经进行了大量的基于管理程序的云进行了许多研究,但由于利用计算资源的开销和高效率,基于容器的虚拟化变得流行。在本文中,我们研究了一组从谷歌集群的一部分的现实容器数据中心痕迹。我们调查了工作时间,等待时间和机器利用以及在修复时间段内提交的工作数量。基于定量研究,已经提出了一种集合工作负载预测(ENWOP)方法和名为云工作负载校正率(C速率)的新型预测评估参数。实验结果已经验证了eNWOP方法实现了高预测精度,并且C速率评估预测方法更客观。

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