一种基于DRL的在线虚拟机调度器,用于云代理中的成本优化。

IF 2.7 3区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Xingjia Li, Li Pan, Shijun Liu
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引用次数: 0

摘要

由于基础设施即服务(IaaS)虚拟机的按需性质,支持云爆发的云代理中的虚拟机(VM)调度问题充满了不确定性。在收到VM请求之前,调度器不知道它何时到达,也不知道它需要什么配置。即使收到VM请求,调度程序也不知道VM的生命周期何时到期。现有研究开始使用深度强化学习(DRL)来解决此类调度问题。然而,它们没有涉及如何保证用户请求的QoS。在本文中,我们研究了云代理中的在线虚拟机调度的成本优化问题,以在满足特定QoS限制的同时最小化在公共云上花费的成本。我们提出了DeepBS,这是一种在云代理中基于DRL的在线虚拟机调度器,它从经验中学习,以在用户请求不平滑和不确定的环境中自适应地改进调度策略。我们评估了DeepBS在分别基于谷歌和阿里巴巴集群跟踪的两种请求到达模式下的性能,实验表明,在成本优化方面,DeepBS比其他基准算法具有显著优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A DRL-based online VM scheduler for cost optimization in cloud brokers.

A DRL-based online VM scheduler for cost optimization in cloud brokers.

A DRL-based online VM scheduler for cost optimization in cloud brokers.

A DRL-based online VM scheduler for cost optimization in cloud brokers.

The virtual machine (VM) scheduling problem in cloud brokers that support cloud bursting is fraught with uncertainty due to the on-demand nature of Infrastructure as a Service (IaaS) VMs. Until a VM request is received, the scheduler does not know in advance when it will arrive or what configurations it demands. Even when a VM request is received, the scheduler does not know when the VM's lifecycle expires. Existing studies begin to use deep reinforcement learning (DRL) to solve such scheduling problems. However, they do not address how to guarantee the QoS of user requests. In this paper, we investigate a cost optimization problem for online VM scheduling in cloud brokers for cloud bursting to minimize the cost spent on public clouds while satisfying specified QoS restrictions. We propose DeepBS, a DRL-based online VM scheduler in a cloud broker which learns from experience to adaptively improve scheduling strategies in environments with non-smooth and uncertain user requests. We evaluate the performance of DeepBS under two request arrival patterns which are respectively based on Google and Alibaba cluster traces, and the experiments show that DeepBS has a significant advantage over other benchmark algorithms in terms of cost optimization.

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来源期刊
World Wide Web-Internet and Web Information Systems
World Wide Web-Internet and Web Information Systems 工程技术-计算机:软件工程
CiteScore
7.30
自引率
10.80%
发文量
131
审稿时长
6 months
期刊介绍: World Wide Web: Internet and Web Information Systems (WWW) is an international, archival, peer-reviewed journal which covers all aspects of the World Wide Web, including issues related to architectures, applications, Internet and Web information systems, and communities. The purpose of this journal is to provide an international forum for researchers, professionals, and industrial practitioners to share their rapidly developing knowledge and report on new advances in Internet and web-based systems. The journal also focuses on all database- and information-system topics that relate to the Internet and the Web, particularly on ways to model, design, develop, integrate, and manage these systems. Appearing quarterly, the journal publishes (1) papers describing original ideas and new results, (2) vision papers, (3) reviews of important techniques in related areas, (4) innovative application papers, and (5) progress reports on major international research projects. Papers published in the WWW journal deal with subjects directly or indirectly related to the World Wide Web. The WWW journal provides timely, in-depth coverage of the most recent developments in the World Wide Web discipline to enable anyone involved to keep up-to-date with this dynamically changing technology.
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