Meryeme El Yadari, Saloua El Motaki, Ali Yahyaouy, Philippe Makany, Khalid El Fazazy, Hamid Gualous, Stéphane Le Masson
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The algorithms use optimization algorithms combined with Convolutional Neural Networks to build predictive models of virtual machine placement. The models were evaluated based on their accuracy and complexity to select the optimal solution. The necessary data is collected using the CloudSim Plus simulator, and the prediction results were used to allocate virtual machines according to the predictions of the models. The main objective of this research is to optimize the management of Information Technology resources within datacenters. This is achieved by seeking a virtual machine placement policy that minimizes hosts’ power consumption and ensures an appropriate level of service for users' needs. It considers the imperatives of sustainability, performance, and availability by reducing energy consumption and response times. We studied six scenarios under specific constraints to determine the best model for virtual machines’ placement. 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引用次数: 0
摘要
由于日益增长的能源消耗对环境和经济的影响,数据中心的能源管理成为当今的一大挑战。在现代数据中心内,将虚拟机高效地放置在物理机中对其有效管理至关重要。在此背景下,我们开发了五种名为 CNN-GA、CNN-greedy、CNN-ABC、CNN-ACO 和 CNN-PSO 的算法,以最大限度地降低主机能耗,确保服务质量和相对较短的响应时间。我们提出了一种将已开发算法与其他现有虚拟机放置方法进行比较的方法。这些算法使用优化算法与卷积神经网络相结合,建立虚拟机放置的预测模型。根据模型的准确性和复杂性对其进行评估,以选择最佳解决方案。使用 CloudSim Plus 模拟器收集必要的数据,并根据模型的预测结果分配虚拟机。本研究的主要目标是优化数据中心内的信息技术资源管理。具体做法是寻求一种虚拟机放置策略,最大限度地降低主机功耗,确保为用户提供适当水平的服务。它通过减少能源消耗和响应时间,考虑了可持续性、性能和可用性等必要条件。我们研究了特定限制条件下的六种情况,以确定虚拟机放置的最佳模型。这种方法旨在应对当前能源管理和运行效率方面的挑战。
Taxonomy of optimization algorithms combined with CNN for optimal placement of virtual machines within physical machines in data centers
Energy management in datacenters is a major challenge today due to the environmental and economic impact of increasing energy consumption. Efficient placement of virtual machines in physical machines within modern datacenters is crucial for their effective management. In this context, five algorithms named CNN-GA, CNN-greedy, CNN-ABC, CNN-ACO and CNN-PSO, have been developed to minimize hosts’ power consumption and ensure service quality with relatively low response times. We propose a comparative approach between the developed algorithms and other existing methods for virtual machine placement. The algorithms use optimization algorithms combined with Convolutional Neural Networks to build predictive models of virtual machine placement. The models were evaluated based on their accuracy and complexity to select the optimal solution. The necessary data is collected using the CloudSim Plus simulator, and the prediction results were used to allocate virtual machines according to the predictions of the models. The main objective of this research is to optimize the management of Information Technology resources within datacenters. This is achieved by seeking a virtual machine placement policy that minimizes hosts’ power consumption and ensures an appropriate level of service for users' needs. It considers the imperatives of sustainability, performance, and availability by reducing energy consumption and response times. We studied six scenarios under specific constraints to determine the best model for virtual machines’ placement. This approach aims to address current challenges in energy management and operational efficiency.