Time-series forecasting has been an important research domain for so many years. Its applications include ECG predictions, sales forecasting, weather conditions, even COVID-19 spread predictions. These applications have motivated many researchers to figure out an optimal forecasting approach, but the modeling approach also changes as the application domain changes. This work has focused on reviewing different forecasting approaches for telemetry data predictions collected at data centers. Forecasting of telemetry data is a critical feature of network and data center management products. However, there are multiple options of forecasting approaches that range from a simple linear statistical model to high capacity deep learning architectures. In this paper, we attempted to summarize and evaluate the performance of well known time series forecasting techniques. We hope that this evaluation provides a comprehensive summary to innovate in forecasting approaches for telemetry data.
翻译:多年来,时间序列预测一直是一个重要的研究领域,其应用包括ECG预测、销售预测、天气条件、甚至COVID-19扩散预测。这些应用促使许多研究人员找出最佳预测方法,但模型方法随着应用领域的变化也随之变化。这项工作侧重于审查数据中心收集的遥测数据预测的不同预测方法。遥测数据预报是网络和数据中心管理产品的一个关键特征。然而,从简单的线性统计模型到高能力深层学习结构,有多种预测方法可供选择。在本文件中,我们试图总结和评价众所周知的时间序列预测技术的绩效。我们希望这一评估为对遥测数据预测方法的创新提供一个全面的总结。