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CONDESA: A Framework for Controlling Data Distribution on Elastic Server Architectures

机译:CONDESA:一种用于控制弹性服务器体系结构上的数据分发的框架

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Applications running in today's data centers show high workload variability. While seasonal patterns, trends and expected events may help building proactive resource allocation policies, this approach has to be complemented with adaptive strategies which should address unexpected events such as flash crowds and volume spikes. Additionally, the limitations of current I/O infrastructures in the face of dramatic increase of data generation require, the ability to build novel abstractions and models for robust decision making regarding data layout and data locality. In this work, we present CONDESA (CONtrolling Data distribution on Elastic Server Architectures), a framework for exploring adaptive data distribution strategies for elastic server architectures. To the best of our knowledge CONDESA is the first platform that permits to systematically study the interplay between five data related strategies: workload prediction, adaptive control of data distribution and server provisioning, adaptive data grouping, adaptive data placement, and adaptive system sizing. We demonstrate how CONDESA can be used for browsing the design space of adaptive data distribution policies. We show how prediction models can be compared in terms of overhead and accuracy. We evaluate the impact of change detection on prediction accuracy and how CONDESA can be used for choosing an adequate prediction horizon. We demonstrate how adaptive prediction can be used for sizing a server system. Finally, we show how prediction models, change detection strategies, and data placement policies can be combined and compared based on server utilization, load balance, data locality, over- and underprovisioning.
机译:当今数据中心中运行的应用程序显示出很大的工作负载可变性。尽管季节性模式,趋势和预期事件可能有助于建立主动的资源分配策略,但此方法必须辅之以自适应策略,该策略应解决突发事件,例如突发人群和数量激增。此外,面对不断增长的数据生成,当前I / O基础架构的局限性要求,必须具有构建新颖的抽象和模型以进行有关数据布局和数据局部性的可靠决策的能力。在这项工作中,我们介绍了CONDESA(在弹性服务器架构上控制数据分发),这是一个框架,用于探索弹性服务器架构的自适应数据分发策略。据我们所知,CONDESA是第一个允许系统研究五种数据相关策略之间相互作用的平台:工作量预测,数据分发和服务器配置的自适应控制,自适应数据分组,自适应数据放置和自适应系统大小调整。我们演示了如何将CONDESA用于浏览自适应数据分配策略的设计空间。我们展示了如何可以在开销和准确性方面比较预测模型。我们评估变化检测对预测准确性的影响以及如何使用CONDESA选择合适的预测范围。我们演示了如何将自适应预测用于确定服务器系统的大小。最后,我们展示了如何基于服务器利用率,负载平衡,数据局部性,过度配置和不足配置来组合和比较预测模型,变更检测策略和数据放置策略。

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