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Reinforcement learning based autonomic virtual machine management in clouds

机译:云中基于强化学习的自主虚拟机管理

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摘要

Cloud computing is a rapidly emerging field, services and applications are more or less 24/7. Resource dimensioning in this field is a great issue. Research is already going on to imply reinforcement learning to automate decision making process in case of addition, reduction, migration and maintenance of the Virtual Machines (VM) to balance the service level performance and VM management cost. Models have been proposed in this case based on Q-learning, a very popular reinforcement learning technique that is used to find optimal action selection policy for any finite Markov Decision Process (MDP). In this paper we propose to work with the challenges like proper initialization of the early stages, designing the states, actions, transitions using Markov Decision Process (MDP) and solving the MDP with two popular reinforcement learning techniques, Q-learning and SARSA(λ).
机译:云计算是一个快速发展的领域,服务和应用程序几乎全天候24/7。在此领域中进行资源标注是一个很大的问题。已经进行的研究表明,在添加,减少,迁移和维护虚拟机(VM)的情况下,要加强学习以自动执行决策过程,以平衡服务级别的性能和VM管理成本。在这种情况下,已经基于Q学习提出了模型,Q学习是一种非常流行的强化学习技术,用于为任何有限的马尔可夫决策过程(MDP)找到最佳的动作选择策略。在本文中,我们建议应对诸如早期正确初始化,使用马尔可夫决策过程(MDP)设计状态,动作,转换以及使用两种流行的强化学习技术Q-Learning和SARSA(λ)解决MDP的挑战。 )。

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