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Reinforcement learning-based application Autoscaling in the Cloud: A survey

机译:基于加强学习的应用程序自动播放在云中:调查

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摘要

Reinforcement Learning (RL) has demonstrated a great potential for automatically solving decision-making problems in complex, uncertain environments. RL proposes a computational approach that allows learning through interaction in an environment with stochastic behavior, where agents take actions to maximize some cumulative short-term and long-term rewards. Some of the most impressive results have been shown in Game Theory where agents exhibited superhuman performance in games like Go or Starcraft 2, which led to its gradual adoption in many other domains, including Cloud Computing. Therefore, RL appears as a promising approach for Autoscaling in Cloud since it is possible to learn transparent (with no human intervention), dynamic (no static plans), and adaptable (constantly updated) resource management policies to execute applications. These are three important distinctive aspects to consider in comparison with other widely used autoscaling policies that are defined in an ad-hoc way or statically computed as in solutions based on meta-heuristics. Autoscaling exploits the Cloud elasticity to optimize the execution of applications according to given optimization criteria, which demands deciding when and how to scale up/down computational resources and how to assign them to the upcoming processing workload. Such actions have to be taken considering that the Cloud is a dynamic and uncertain environment. Motivated by this, many works apply RL to the autoscaling problem in the Cloud. In this work, we exhaustively survey those proposals from major venues, and uniformly compare them based on a set of proposed taxonomies. We also discuss open problems and prospective research in the area.
机译:强化学习(RL)已经证明了在复杂,不确定环境中自动解决决策问题的巨大潜力。 RL提出了一种计算方法,可以通过具有随机行为的环境中的互动学习,其中代理采取行动以最大限度地提高一些累积短期和长期奖励。一些最令人印象深刻的结果已在博弈论中显示,代理商在Go或Starcraft 2等游戏中表现出超人的表现,这导致了许多其他域中的逐步采用,包括云计算。因此,RL显示为在云中自动播放的有希望的方法,因为可以学习透明(没有人为干预),动态(无静态计划),适应(不断更新)资源管理策略执行应用程序。与其他广泛使用的自动阶段策略相比,这些是三个重要的独特方面,这些方面是根据诸如Meta-heuRistics的解决方案中的统计方式或静态计算。自动播放利用云弹性来优化根据给定优化标准的应用程序的执行,这些标准要求决定何时以及如何扩展到上/下计算资源以及如何将它们分配给即将到来的处理工作负载。必须考虑到这种行动,考虑到云是一种动态和不确定的环境。由此激励,许多作品将RL应用于云中的自动播放问题。在这项工作中,我们彻底调查了主要场地的这些提案,并统一地将它们基于一套提出的分类法进行了比较。我们还讨论了该地区的开放问题和前瞻性研究。

著录项

  • 来源
    《Engineering Applications of Artificial Intelligence》 |2021年第6期|104288.1-104288.23|共23页
  • 作者单位

    ITIC - Universidad National de Cuyo. Mendoza Argentina Consejo National de Investigaciones Clentificas y Tecnicas (CONICET) Argentina;

    ITIC - Universidad National de Cuyo. Mendoza Argentina;

    ITIC - Universidad National de Cuyo. Mendoza Argentina Facultad de Ingenieria - Unbrersidad National de Cuyo. Mendoza Argentina Consejo National de Investigaciones Clentificas y Tecnicas (CONICET) Argentina;

    ISISTAN-UN1CEN-C0NICET. Tandti Buenos Aires Argentina Consejo National de Investigaciones Clentificas y Tecnicas (CONICET) Argentina;

    ITIC - Universidad National de Cuyo. Mendoza Argentina Facultad de Ingenieria - Unbrersidad National de Cuyo. Mendoza Argentina;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Cloud Computing; Cloud application; Autoscaling; Reinforcement learning;

    机译:云计算;云应用;自动播放;加强学习;

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