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A Shallow Deep Neural Network for Selection of Migration Candidate Virtual Machines to Reduce Energy Consumption

机译:一种浅深的神经网络,用于选择迁移候选虚拟机,以降低能耗

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In recent years, the widespread growth of cloud computing has surprisingly increased the energy consumption in data centers. In this regard, employing energy reduction techniques is changed to one of the prominent challenges for cloud service providers and includes both dynamic and static techniques. Although by utilizing static techniques along with creating data centers energy consumption is relatively reduced, the rapid growth of cloud computing due to the increasing demands of users for these resources has changed energy consumption to a potential challenge. Utilizing dynamic energy reduction techniques which can be possible through the integration of the virtual machine into at least one physical server can be considered as an effective solution to this problem. This is done through live virtual machine migration and selecting the migration candidate virtual machine is a key step in this technique. In this paper, the combination of Convolutional Neural Network (CNN) and Gated Recurrent Unit (GRU) is used to choose the appropriate migration candidate virtual machine which leads to the diagnosis of whether a virtual machine is sensitive to latency or not. The proposed model was validated on the workload of Microsoft Azure virtual machines as a dataset. According to the empirical results, the proposed model has higher classification accuracy compared to other existing models for selecting the migration candidate virtual machines.
机译:近年来,云计算的广泛增长令人惊讶地增加了数据中心的能源消耗。在这方面,采用能量减少技术改变为云服务提供商的突出挑战之一,并包括动态和静态技术。尽管通过利用静态技术以及创造数据中心能量消耗相对减少,但由于这些资源的用户越来越多,云计算的快速增长已经改变了潜在挑战的能量消耗。利用通过将虚拟机集成到至少一个物理服务器中可以通过的动态能量降低技术可以被视为对此问题的有效解决方案。这是通过实时虚拟机迁移完成的,选择迁移候选虚拟机是该技术的关键步骤。在本文中,卷积神经网络(CNN)和门控复发单元(GU)的组合用于选择适当的迁移候选虚拟机,这导致诊断虚拟机对延迟是否敏感。在Microsoft Azure虚拟机作为数据集的工作量上验证了所提出的模型。根据经验结果,与用于选择迁移候选虚拟机的其他现有模型相比,所提出的模型具有更高的分类准确性。

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