大规模智能资源调度:机器学习视角

Renyu Yang, Ouyang Xue, Yaofeng Chen, P. Townend, Jie Xu
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引用次数: 26

摘要

计算系统中的资源调度解决了具有多维资源需求和非功能约束的任务打包问题。在云规模或互联网规模的系统中,工作负载和服务器特征的异构性进一步增加了问题的复杂性和新的挑战。与,,,,现有的基于特设启发式的解决方案相比,机器学习(ML)具有进一步提高大规模系统中资源管理效率的潜力。在本文中,我们,,,,将描述和讨论如何使用ML来自动理解工作负载和环境,并帮助应对与调度相关的挑战,例如整合共存的工作负载,处理资源请求,保证应用程序的qos,以及减少尾部掉线。我们将介绍一种基于广义机器学习的大规模资源调度解决方案,并通过一个案例研究展示其有效性,该案例研究处理以性能为中心的节点分类和掉线者缓解。我们相信,基于机器学习的方法将有助于实现架构的优化和效率的提高。
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Intelligent Resource Scheduling at Scale: A Machine Learning Perspective
Resource scheduling in a computing system addresses the problem of packing tasks with multi-dimensional resource requirements and non-functional constraints. The exhibited heterogeneity of workload and server characteristics in Cloud-scale or Internet-scale systems is adding further complexity and new challenges to the problem. Compared with,,,, existing solutions based on ad-hoc heuristics, Machine Learning (ML) has the potential to improve further the efficiency of resource management in large-scale systems. In this paper we,,,, will describe and discuss how ML could be used to understand automatically both workloads and environments, and to help to cope with scheduling-related challenges such as consolidating co-located workloads, handling resource requests, guaranteeing application’s QoSs, and mitigating tailed stragglers. We will introduce a generalized ML-based solution to large-scale resource scheduling and demonstrate its effectiveness through a case study that deals with performance-centric node classification and straggler mitigation. We believe that an MLbased method will help to achieve architectural optimization and efficiency improvement.
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