George:学习将长寿命容器放置在具有操作约束的大型集群中

Suyi Li, Luping Wang, Wen Wang, Yinghao Yu, Bo Li
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引用次数: 13

摘要

在线云服务被广泛部署为托管在容器中的长期运行应用程序(lra)。放置LRA容器尤其具有挑战性,因为共存的容器与生产集群中的操作约束(如容错、灾难避免和增量部署)之间存在复杂的干扰。现有的调度程序通常为操作人员提供api,以手动指定容器调度需求,并且仅为容器放置提供定性的调度指南。这样的调度器在性能和规模方面都表现不佳,同时还需要人工干预。在这项工作中,我们提出了George,一个端到端的通用LRA调度器,利用最先进的强化学习(RL)技术来智能地调度LRA容器。我们首次提出了一个最优集装箱放置配方,其目标是在一组操作约束下最大化集装箱放置性能。调度的一个基本挑战是在实际操作中分类地满足不同的操作约束;具体来说,确保硬约束和软约束在预定义的阈值内被违反。结合整数线性优化技术,设计了一种新的基于投影的近端策略优化(PPPO)算法,用于在操作约束下对LRA容器进行智能调度。为了减少训练时间,我们采用迁移学习技术,利用不同LRA调度事件之间的相似性。从理论上证明了该算法的有效性、稳定性和安全性。我们将George作为Docker Swarm中的插件服务来实现。我们的内部集群证明,George可以在使用预定义的阈值强制硬约束和软约束的同时最大化LRA的性能。实验表明,George极大地提高了LRA的性能和规模,在一个有2K个容器和700台机器的大型集群中只需要不到1小时的调度时间,比现有的调度器快16倍。与最先进的替代方案相比,George还实现了26%的容器性能提升,同时降低了70%的约束违规。
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George: Learning to Place Long-Lived Containers in Large Clusters with Operation Constraints
Online cloud services are widely deployed as Long-Running Applications (LRAs) hosted in containers. Placing LRA containers turns out to be particularly challenging due to the complex interference between co-located containers and the operation constraints in production clusters such as fault tolerance, disaster avoidance and incremental deployment. Existing schedulers typically provide APIs for operators to manually specify the container scheduling requirements and offer only qualitative scheduling guidelines for container placement. Such schedulers, do not perform well in terms of both performance and scale, while also requiring manual intervention. In this work, we propose George, an end-to-end generalpurpose LRA scheduler by leveraging the state-of-the-art Reinforcement Learning (RL) techniques to intelligently schedule LRA containers. We present an optimal container placement formulation for the first time with the objective of maximizing container placement performance subject to a set of operation constraints. One fundamental challenge in scheduling is to categorically satisfy different operation constraints in practice; specifically, to guarantee hard constraints and ensure soft constraints violations within a pre-defined threshold. We design a novel projection-based proximal policy optimization (PPPO) algorithm in combination with an Integer Linear optimization technique to intelligently schedule LRA containers under operation constraints. In order to reduce the training time, we apply transfer learning technique by taking advantage of the similarity in different LRA scheduling events. We prove theoretically that our proposed algorithm is effective, stable, and safe. We implement George as a plug-in service in Docker Swarm. Our in-house cluster demonstrates that George can maximize the LRA performance while enforcing the hard constraints and the soft constraints with a pre-defined threshold. The experiments show that George improves LRA performance and scale tremendously by requiring less than 1 hour scheduling time in a large cluster with 2K containers and 700 machines, 16x faster than existing schedulers. Compared with state-of-the-art alternatives, George also achieves 26% higher container performance with up to 70% lower constraint violation.
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