理解和利用集群异构以实现云服务的高效执行

S. Shukla, D. Ghosal, M. Farrens
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引用次数: 2

摘要

通过引入不同速度和能效的不同类型的处理器,云仓库正变得越来越异构。开发跨异构集群中的多个实例分发延迟关键服务(LC-service)请求的最佳策略并非易事。在本文中,我们详细分析了集群异构对实现的服务器利用率和能源足迹的影响,以满足lc服务所需的服务级别延迟界限(SLO)。我们开发了集群级控制平面策略来解决两种形式的集群异质性——容量和能源效率。首先,我们提出了LC-Services的最大慢速保证容量(MSG-Capacity)比例负载平衡,以解决容量异构问题,并表明它可以实现比单纯的基于性能的异构感知更高的利用率。然后,我们提出了基于效率优先(E-First)启发式的实例缩放来解决效率异质性。最后,为了解决双向(容量和能源效率)异质性,我们将两种方法叠加在一起,提出了基于能效和MSG-Capacity (E2MC)的控制平面策略,以最大化利用率,同时最小化能源足迹。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Understanding and Leveraging Cluster Heterogeneity for Efficient Execution of Cloud Services
Cloud warehouses are becoming increasingly heterogeneous by introducing different types of processors of varying speed and energy-efficiency. Developing an optimal strategy for distributing latency-critical service (LC-service) requests across multiple instances in a heterogeneous cluster is non-trivial. In this paper, we present a detailed analysis of the impact of cluster heterogeneity on the achieved server utilization and energy footprint to meet the required service-level latency bound (SLO) of LC-services. We develop cluster-level control plane strategies to address two forms of cluster heterogeneity - capacity and energy-efficiency. First, we propose Maximum-SLO-Guaranteed Capacity (MSG-Capacity) proportional load balancing for LC-Services to address the capacity heterogeneity and show that it can achieve higher utilization than naive performance-based heterogeneity awareness. Then, we present Efficient-First (E-First) heuristic-based Instance Scaling to address the efficiency heterogeneity. Finally, to address the bi-dimensional (capacity and energy-efficiency) heterogeneity, we superimpose the two approaches to propose Energy-efficient and MSG-Capacity (E2MC) based control-plane strategy that maximizes utilization while minimizing the energy footprint.
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