云存储工作量特征描述:时间序列分析法

Abiola Adegboyega
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引用次数: 0

摘要

云承载着具有不同工作负载特征的各种应用。公共云跟踪为分析提供了机会,以便深入了解自动扩展和预测等操作。本文介绍了近期阿里巴巴云存储工作负载的统计分析。对每个记录的工作负载的所有读/写时间序列进行了隔离和聚合。统计方法的应用产生了新的分布,从这些分布中得出的预测解决方案整合了时变方差,捕捉到了工作负载的突发性。与现有方法相比,预测准确率提高了 25%。工作负载时间序列集已在线提供,供研究界进一步分析。
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Cloud Storage Workload Characterization: An Approach with Time-Series Analysis
The cloud hosts diverse applications with different workload characteristics. Public cloud traces provide opportunities for analysis to gain insights informing autoscaling, forecasting among other operations. This paper presents the statistical analysis of a recent Alibaba cloud storage workload. The isolation & aggregation of all read/write time-series per recorded workload was done. Application of statistical methods yielded novel distributions from which forecasting solutions integrating time-varying variance captured workload burstiness. A 25% improvement in forecasting accuracy over current methods was achieved. The set of workload time-series has been made available online for further analysis by the research community.
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