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Virtual machine placement based on multi-objective reinforcement learning

机译:基于多目标强力学习的虚拟机展示

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摘要

Multi-objective virtual machine (VM) placement is a powerful tool, which can achieve different goals in data centers. It is an NP-hard problem, and various works have been proposed to solve it. However, almost all of them ignore the selection of weights. The selection of weights is difficult, but it is essential for multi-objective optimization. The inappropriate weights will cause the obtained solution set deviating from the Pareto optimal set. Fortunately, we find that this problem can be easily solved by using the Chebyshev scalarization function in multi-objective reinforcement learning (RL). In this paper, we propose a VM placement algorithm based on multi-objective RL (VMPMORL). VMPMORL is designed based on the Chebyshev scalarization function. We aim to find a Pareto approximate set to minimize energy consumption and resource wastage simultaneously. Compared with other multi-objective RL algorithms in the field of VM placement, VMPMORL not only uses the concept of the Pareto set but also solves the weight selection problem. Finally, VMPMORL is compared with some state-of-the-art algorithms in recent years. The results show that VMPMORL can achieve better performance than the approaches above.
机译:多目标虚拟机(VM)放置是一个强大的工具,可以在数据中心实现不同的目标。这是一个难题的问题,并提出了各种作品来解决它。但是,几乎所有所有人都忽略了重量的选择。重量的选择很困难,但对于多目标优化至关重要。不适当的权重将导致所获得的解决方案集偏离Pareto最佳集合。幸运的是,我们发现通过在多目标强化学习(RL)中的Chebyshev Scalarization功能可以轻松解决这个问题。在本文中,我们提出了一种基于多目标RL(VMPMORL)的VM放置算法。 VMPMORL基于Chebyshev Scalarization函数设计。我们的目标是找到一个帕累托近似设定,以尽量减少能源消耗和资源浪费。与VM放置领域的其他多目标RL算法相比,VMPMORL不仅使用Pareto集的概念,而且还解决了权重选择问题。最后,近年来,VMPMORL与一些最先进的算法进行了比较。结果表明,VMPMORL可以比上述方法更好地实现性能。

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