Learning Scheduling Policies for Co-Located Workloads in Cloud Datacenters

IF 5.3 2区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS IEEE Transactions on Cloud Computing Pub Date : 2023-09-26 DOI:10.1109/TCC.2023.3319383
Jialun Li;Danyang Xiao;Jieqian Yao;Yujie Long;Weigang Wu
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Abstract

Co-location, which deploys long running applications and batch-processing applications in the same computing cluster, has become a promising way to improve resource utility for large cloud datacenters. However, co-location brings huge challenges to task scheduling because different types of workloads may affect each other. Existing works on task scheduling rarely focus on the scenario of co-location. This article presents Co-ScheRRL, a scheduling algorithm delicately designed for co-located workloads. Co-ScheRRL consists of two major mechanisms: i) a self-attention encoding mechanism which encodes and represents states of the computing cluster as a set of embedding feature vectors; ii) a deep reinforcement learning (DRL) relational reasoning mechanism which calculates and compares different scheduling actions under different co-located workloads pattern via DRL feedback reward signals based on these feature vectors. Our two mechanisms can tackle complicatedly and dynamically varying behaviors of co-located workloads. With the help of these two mechanisms, Co-ScheRRL is able to construct high-quality scheduling policies. Trace-driven simulation demonstrates that Co-ScheRRL outperforms existing scheduling algorithms in terms of makespan by more than 38.4% and throughput by more than 166.7%.
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学习云数据中心共址工作负载的调度策略
在同一个计算集群中部署长期运行的应用程序和批量处理应用程序的 "同地办公 "已成为提高大型云数据中心资源利用率的一种可行方法。然而,由于不同类型的工作负载可能会相互影响,因此共定位给任务调度带来了巨大挑战。现有的任务调度工作很少关注共址场景。本文介绍的 Co-ScheRRL 是一种专为共址工作负载设计的调度算法。Co-ScheRRL 包括两个主要机制:i) 自注意编码机制,它将计算集群的状态编码并表示为一组嵌入特征向量;ii) 深度强化学习(DRL)关系推理机制,它通过基于这些特征向量的 DRL 反馈奖励信号,计算和比较不同同地工作负载模式下的不同调度行动。我们的这两种机制可以处理复杂且动态变化的同地工作负载行为。在这两种机制的帮助下,Co-ScheRRL 能够构建高质量的调度策略。轨迹驱动的仿真表明,Co-ScheRRL 在时间跨度(makespan)和吞吐量(throughput)方面分别比现有调度算法高出 38.4% 和 166.7% 以上。
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来源期刊
IEEE Transactions on Cloud Computing
IEEE Transactions on Cloud Computing Computer Science-Software
CiteScore
9.40
自引率
6.20%
发文量
167
期刊介绍: The IEEE Transactions on Cloud Computing (TCC) is dedicated to the multidisciplinary field of cloud computing. It is committed to the publication of articles that present innovative research ideas, application results, and case studies in cloud computing, focusing on key technical issues related to theory, algorithms, systems, applications, and performance.
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