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Bubble-up: Increasing utilization in modern warehouse scale computers via sensible co-locations

机译:冒泡:通过合理的托管,提高现代仓库规模计算机的利用率

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As much of the world's computing continues to move into the cloud, the overprovisioning of computing resources to ensure the performance isolation of latency-sensitive tasks, such as web search, in modern datacenters is a major contributor to low machine utilization. Being unable to accurately predict performance degradation due to contention for shared resources on multicore systems has led to the heavy handed approach of simply disallowing the co-location of high-priority, latency-sensitive tasks with other tasks. Performing this precise prediction has been a challenging and unsolved problem. In this paper, we present Bubble-Up, a characterization methodology that enables the accurate prediction of the performance degradation that results from contention for shared resources in the memory subsystem. By using a bubble to apply a tunable amount of “pressure” to the memory subsystem on processors in production datacenters, our methodology can predict the performance interference between co-locate applications with an accuracy within 1% to 2% of the actual performance degradation. Using this methodology to arrive at “sensible” co-locations in Google's production datacenters with real-world large-scale applications, we can improve the utilization of a 500-machine cluster by 50% to 90% while guaranteeing a high quality of service of latency-sensitive applications.
机译:随着世界上许多计算继续向云迁移,计算资源的过度配置以确保对现代数据中心中对延迟敏感的任务(例如Web搜索)进行性能隔离,这是导致计算机利用率低的主要原因。由于争用多核系统上的共享资源而无法准确预测性能下降,导致了繁重的做法,即简单地不允许将高优先级,对延迟敏感的任务与其他任务并置。进行这种精确的预测一直是一个具有挑战性和尚未解决的问题。在本文中,我们介绍了Bubble-Up,这是一种表征方法,能够准确预测由于争用内存子系统中的共享资源而导致的性能下降。通过使用气泡向生产数据中心中的处理器上的内存子系统施加可调节的“压力”,我们的方法可以预测同位应用程序之间的性能干扰,其精度在实际性能下降的1%到2%之内。使用这种方法,可以在Google的生产数据中心和实际的大规模应用程序中找到“合理的”共置位置,我们可以将500台计算机集群的利用率提高50%至90%,同时保证高质量的服务质量。延迟敏感的应用程序。

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