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A Reinforcement Learning-Based Virtual Machine Placement Strategy in Cloud Data Centers

机译:云数据中心的基于强化学习的虚拟机展示位置策略

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With the widespread use of cloud computing, energy consumption of cloud data centers is increasing which mainly comes from IT equipment and cooling equipment. This paper argues that once the number of virtual machines on the physical machines reaches a certain level, resource competition occurs, resulting in a performance loss of the virtual machines. Unlike most papers, we do not impose placement constraints on virtual machines by giving a CPU cap to achieve the purpose of energy savings in cloud data centers. Instead, we use the measure of performance loss to weigh. We propose a reinforcement learning-based virtual machine placement strategy(RLVMP) for energy savings in cloud data centers. The strategy considers the weight of virtual machine performance loss and energy consumption, which is finally solved with the greedy strategy. Simulation experiments show that our strategy has a certain improvement in energy savings compared with the other algorithms.
机译:随着云计算的广泛使用,云数据中心的能量消耗越来越多,主要来自IT设备和冷却设备。 本文认为,一旦物理机器上的虚拟机数量达到一定程度,就会发生资源竞争,导致虚拟机的性能损失。 与大多数论文不同,我们通过提供CPU章节来达到云数据中心节能的目的,我们不会对虚拟机施加放置限制。 相反,我们使用性能损失的测量来称重。 我们提出了一种基于加强学习的虚拟机放置策略(RLVMP),用于节省云数据中心。 该策略考虑了虚拟机性能损失和能耗的重量,终于解决了贪婪的策略。 仿真实验表明,与其他算法相比,我们的策略对节能的一定提高。

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