赫拉克勒斯:大规模提高资源效率

David Lo, Liqun Cheng, R. Govindaraju, Parthasarathy Ranganathan, C. Kozyrakis
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引用次数: 496

摘要

面向用户的、对延迟敏感的服务(如websearch)在日常低流量期间未充分利用其计算资源。在生产服务中很少为其他任务重用这些资源,因为对共享资源的争用可能导致延迟峰值,从而违反对延迟敏感的任务的服务级目标。由此导致的利用率不足损害了大型数据中心的可负担性和能源效率。随着技术规模的放缓,抓住这个机会变得非常重要。我们介绍了Heracles,这是一种基于反馈的控制器,可以在延迟关键服务的同时安全地配置最努力的任务。Heracles动态地管理多种硬件和软件隔离机制(如CPU、内存和网络隔离),以确保对延迟敏感的作业满足延迟目标,同时最大限度地利用分配给“最佳努力”任务的资源。我们使用b谷歌的生产延迟关键型和批处理工作负载来评估Heracles,并演示了在我们评估的所有负载和托管场景中,平均服务器利用率为90%,没有延迟违规。
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Heracles: Improving resource efficiency at scale
User-facing, latency-sensitive services, such as websearch, underutilize their computing resources during daily periods of low traffic. Reusing those resources for other tasks is rarely done in production services since the contention for shared resources can cause latency spikes that violate the service-level objectives of latency-sensitive tasks. The resulting under-utilization hurts both the affordability and energy-efficiency of large-scale datacenters. With technology scaling slowing down, it becomes important to address this opportunity. We present Heracles, a feedback-based controller that enables the safe colocation of best-effort tasks alongside a latency-critical service. Heracles dynamically manages multiple hardware and software isolation mechanisms, such as CPU, memory, and network isolation, to ensure that the latency-sensitive job meets latency targets while maximizing the resources given to best-effort tasks. We evaluate Heracles using production latency-critical and batch workloads from Google and demonstrate average server utilizations of 90% without latency violations across all the load and colocation scenarios that we evaluated.
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