作者
Pooyan Jamshidi, Amir M Sharifloo, Claus Pahl, Andreas Metzger, Giovani Estrada
发表日期
2015/9/21
研讨会论文
2015 International Conference on Cloud and Autonomic Computing
页码范围
208-211
出版商
IEEE
简介
Auto-scaling features enable cloud applications to maintain enough resources to satisfy demand spikes, reduce costs and keep performance in check. Most auto-scaling strategies rely on a predefined set of rules to scale up/down the required resources depending on the application usage. Those rules are however difficult to devise and generalize, and users are often left alone tuning auto-scale parameters of essentially blackbox applications. In this paper, we propose a novel fuzzy reinforcement learning controller, FQL4KE, which automatically scales up or down resources to meet performance requirements. The Q-Learning technique, a model-free reinforcement learning strategy, frees users of most tuning parameters. FQL4KE has been successfully applied and we therefore think that a fuzzy controller with Q-Learning is indeed a promising combination for auto-scaling resources.
引用总数
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学术搜索中的文章
P Jamshidi, AM Sharifloo, C Pahl, A Metzger, G Estrada - 2015 International Conference on Cloud and …, 2015