SNC-Meister:接纳更多带有尾延迟slo的租户

T. Zhu, Daniel S. Berger, Mor Harchol-Balter
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引用次数: 43

摘要

在共享云网络中,满足尾部延迟服务水平目标(Service Level goals, slo)既重要又具有挑战性。一个主要挑战是确定多租户的限制,以便满足slo。这样做涉及到估计延迟,这是很困难的,特别是当租户表现出生产环境中常见的突发行为时。然而,过去两年的最新论文(Silo、QJump和PriorityMeister)展示了基于称为确定性网络演算(Deterministic Network Calculus, DNC)的数学建模分支计算延迟的技术。DNC理论是为对抗的最坏情况而设计的,这有时是必要的,但往往过于保守。典型的租户并不要求严格的最坏情况保证,而是只寻找较低百分位数的slo(例如,第99、99.9)。本文介绍了一种新的尾延迟slo准入控制系统SNC-Meister。SNC- meister通过使用一种新的理论,随机网络演算(SNC)改进了最先进的基于dnc的系统,该理论是为尾部延迟百分位数设计的。专注于尾部延迟百分位数,而不是对抗最坏情况的DNC延迟,允许SNC-Meister打包更多的租户:在生产跟踪的实验中,SNC-Meister支持的租户比最先进的多75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SNC-Meister: Admitting More Tenants with Tail Latency SLOs
Meeting tail latency Service Level Objectives (SLOs) in shared cloud networks is both important and challenging. One primary challenge is determining limits on the multi-tenancy such that SLOs are met. Doing so involves estimating latency, which is difficult, especially when tenants exhibit bursty behavior as is common in production environments. Nevertheless, recent papers in the past two years (Silo, QJump, and PriorityMeister) show techniques for calculating latency based on a branch of mathematical modeling called Deterministic Network Calculus (DNC). The DNC theory is designed for adversarial worst-case conditions, which is sometimes necessary, but is often overly conservative. Typical tenants do not require strict worst-case guarantees, but are only looking for SLOs at lower percentiles (e.g., 99th, 99.9th). This paper describes SNC-Meister, a new admission control system for tail latency SLOs. SNC-Meister improves upon the state-of-the-art DNC-based systems by using a new theory, Stochastic Network Calculus (SNC), which is designed for tail latency percentiles. Focusing on tail latency percentiles, rather than the adversarial worst-case DNC latency, allows SNC-Meister to pack together many more tenants: in experiments with production traces, SNC-Meister supports 75% more tenants than the state-of-the-art.
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