Storage systems for cloud computing merge a large number of commodity computers into a single large storage pool. It provides high-performance storage over an unreliable, and dynamic network at a lower cost than purchasing and maintaining large mainframe. In this paper, we examine whether it is feasible to apply Reinforcement Learning(RL) to system domain problems. Our experiments show that the RL model is comparable, even outperform other heuristics for block management problem. However, our experiments are limited in terms of scalability and fidelity. Even though our formulation is not very practical,applying Reinforcement Learning to system domain could offer good alternatives to existing heuristics.
翻译:云计算存储系统将大量商品计算机合并成一个大型储存库,在一个不可靠和动态的网络上提供高性能存储,成本比购买和维护大型主机低。在本文中,我们研究将强化学习(RL)应用于系统域的问题是否可行。我们的实验表明,RL模型可以比较,甚至优于块状管理问题的其他超能力。然而,在可缩放性和忠诚性方面,我们的实验是有限的。尽管我们的配方不很实用,但将强化学习应用到系统域却可以为现有的超能力提供良好的替代方法。