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Time-Series Data Regression Modeling Method for Efficient Operation of Virtual Environments

机译:用于虚拟环境的有效操作的时间序列数据回归建模方法

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In recent years, efforts have been made to reduce the number of servers by virtualizing servers to improve their utilization rate. In this approach, it is necessary to predict and control the CPU utilization of all the virtual servers because the performance of the virtual servers may deteriorate due to the over-committed state in which the servers are allocated more CPUs than their own CPU resources. In this study, we discuss a regression modeling method for time-series data to generate a general-purpose deep-learning prediction model of the CPU utilization of virtual servers. After exploring methods, we confirmed that the number of data used during retraining could be reduced by extracting the time series data by the length required for training and using the data randomly after subdivision.
机译:近年来,已经努力通过虚拟化服务器来减少服务器的数量,以提高其利用率。在这种方法中,需要预测和控制所有虚拟服务器的CPU利用率,因为虚拟服务器的性能可能由于服务器被分配的超级状态而不是自己的CPU资源而劣化。在这项研究中,我们讨论了一个时间序列数据的回归建模方法,以生成虚拟服务器的CPU利用的通用深学习预测模型。在探索方法之后,我们确认可以通过通过训练所需的长度提取时间序列数据来减少在再培训中使用的数据数量来减少。

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