大数据服务分析工作负载的快速建模

Lin Yang, Changsheng Li, Liya Fan, Jingmin Xu
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引用次数: 0

摘要

构建模型来预测分析工作负载的执行是支持大数据服务关键场景的基本功能,比如sla驱动的服务供应和弹性自动扩展。考虑到各种基础设施和工作负载特征,以“黑盒”方式构建模型更为可取,例如,通过利用机器学习技术。然而,这种方法对工作负载现有记录的数量和质量有假设,需要学习,这需要复杂的基准测试或长时间监控。在本文中,我们提出了一种方法来加速分析工作负载的建模过程,以便在大数据服务的背景下快速实现价值。具体来说,通过将数据收集从在线服务阶段转移到离线准备阶段,利用聚类和迁移学习技术实现了这种加速。本文重点介绍了服务模型的构想和快速建模技术。实验证明了该方法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Modeling of Analytics Workloads for Big Data Services
Building models to predict analytics workloads' execution is a foundational capability that enables key scenarios for big data services, like SLA-driven service provisioning and elastic auto scaling. Given the various infrastructure and workload characteristics, it's more preferable to build the models in a "black-box" fashion, for example, by leveraging machine learning techniques. However, this approach has assumptions on the volume and quality of workloads' existing records to learn from, which require sophisticate benchmark or long time monitoring. In this paper, we present a method to accelerate the modeling process of an analytics workload for its quick time-to-value in the context of big data services. Specifically, clustering and transfer learning techniques are leveraged for this acceleration by shifting the data collection from the online service phase to the offline preparation phase. This paper focuses on the conceived service model and fast modeling techniques. Their feasibility is demonstrated by experiments.
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