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An Approach for Characterizing Workloads in Google Cloud to Derive Realistic Resource Utilization Models

机译:表征Google Cloud中的工作负载以推导现实资源利用模型的方法

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Analyzing behavioral patterns of workloads is critical to understanding Cloud computing environments. However, until now only a limited number of real-world Cloud data center trace logs have been available for analysis. This has led to a lack of methodologies to capture the diversity of patterns that exist in such datasets. This paper presents the first large-scale analysis of real-world Cloud data, using a recently released dataset that features traces from over 12,000 servers over the period of a month. Based on this analysis, we develop a novel approach for characterizing workloads that for the first time considers Cloud workload in the context of both user and task in order to derive a model to capture resource estimation and utilization patterns. The derived model assists in understanding the relationship between users and tasks within workload, and enables further work such as resource optimization, energy-efficiency improvements, and failure correlation. Additionally, it provides a mechanism to create patterns that randomly fluctuate based on realistic parameters. This is critical to emulating dynamic environments instead of statically replaying records in the trace log. Our approach is evaluated by contrasting the logged data against simulation experiments, and our results show that the derived model parameters correctly describe the operational environment within a 5% of error margin, confirming the great variability of patterns that exist in Cloud computing.
机译:分析工作负载的行为模式对于理解云计算环境至关重要。但是,到目前为止,仅有限数量的真实云数据中心跟踪日志可用于分析。这导致缺乏捕获此类数据集中存在的模式多样性的方法。本文使用最近发布的数据集,对一个真实的云数据进行了首次大规模分析,该数据集具有一个月内来自12,000多个服务器的跟踪记录。基于此分析,我们开发了一种表征工作负载的新颖方法,该方法首次在用户和任务的上下文中考虑了云工作负载,从而得出了一个模型来捕获资源估计和利用模式。派生的模型有助于理解工作负载中用户与任务之间的关系,并可以进行进一步的工作,例如资源优化,能源效率改善和故障关联。此外,它提供了一种机制来创建可根据实际参数随机波动的模式。这对于模拟动态环境而不是在跟踪日志中静态重播记录至关重要。通过将记录的数据与仿真实验进行对比,对我们的方法进行了评估,我们的结果表明,导出的模型参数可以在5%的误差范围内正确地描述操作环境,从而确认了云计算中存在的模式的巨大差异。

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