提高云系统效率的时髦方法

Rajiv Nishtala, P. Carpenter, V. Petrucci, X. Martorell
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引用次数: 10

摘要

2013年,美国数据中心的用电量占全国总用电量的2.2%,预计这一数字将在未来10年迅速增长。云计算中许多重要的数据中心工作负载是交互式的,它们需要严格的服务质量(QoS)级别来满足用户的期望,这使得优化功耗以及不断增长的性能需求具有挑战性。本文介绍Hipster,这是一种结合了启发式和强化学习来提高云系统资源效率的技术。Hipster探索了异构多核和动态电压和频率缩放,以便在管理延迟关键工作负载的QoS的同时降低能耗。为了提高数据中心利用率并充分利用可用资源,Hipster可以动态地将剩余核心分配给批处理工作负载,而不会违反延迟关键工作负载的QoS约束。我们使用64位ARM处理器进行实验。LITTLE平台的研究表明,与之前的工作相比,Hipster将Web-Search的QoS保证从80%提高到96%,将Memcached的QoS保证从92%提高到99%,同时将能耗降低了18%。Hipster还可以有效地学习和自动适应新传入工作负载的特定需求,以满足QoS并优化资源消耗。
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The Hipster Approach for Improving Cloud System Efficiency
In 2013, U.S. data centers accounted for 2.2% of the country’s total electricity consumption, a figure that is projected to increase rapidly over the next decade. Many important data center workloads in cloud computing are interactive, and they demand strict levels of quality-of-service (QoS) to meet user expectations, making it challenging to optimize power consumption along with increasing performance demands. This article introduces Hipster, a technique that combines heuristics and reinforcement learning to improve resource efficiency in cloud systems. Hipster explores heterogeneous multi-cores and dynamic voltage and frequency scaling for reducing energy consumption while managing the QoS of the latency-critical workloads. To improve data center utilization and make best usage of the available resources, Hipster can dynamically assign remaining cores to batch workloads without violating the QoS constraints for the latency-critical workloads. We perform experiments using a 64-bit ARM big.LITTLE platform and show that, compared to prior work, Hipster improves the QoS guarantee for Web-Search from 80% to 96%, and for Memcached from 92% to 99%, while reducing the energy consumption by up to 18%. Hipster is also effective in learning and adapting automatically to specific requirements of new incoming workloads just enough to meet the QoS and optimize resource consumption.
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