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Workload Prediction over Cloud Server using Time Series Data

机译:使用时间序列数据对云服务器的工作负载预测

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Analyzing and interpreting the real time data is a challenging task for cloud analysts (e.g. cloud providers) in cur-rent scenario for allocating computing resources in applications. Availability of a massive amount of data for processing over a server, cloud providers use the time series analysis models to analyze it. Based on the analysis, cloud providers allocate cloud resources (e.g., container machines) to manage the workload. Predictive analysis of data is important to identify the future trends and it also enables cloud organizations to act as per the demand of workload. It can be applied in different areas such as stock prices prediction, weather forecasting, and traffic load over the server (cloud computing). Cloud providers use this predictive analysis to avoid different types of losses such as services unavailability, maximum energy consumption and customer’s loss. One of the methods to do predictive analysis using time series data is long short-term memory (LSTM). This paper presents a predictive analysis of time series forecasting using deep learning method (LSTM) to predict the future load over servers. The prediction accuracy of LSTM has been measured using three metrics -RMSE, MSE and MAE.
机译:分析和解释实时数据是在CUR租金情况分析云(例如云服务供应商)一个具有挑战性的任务为应用分配计算资源。可用性超过服务器处理数据的巨量的,云供应商使用的时间序列分析模型来分析它。基于该分析,云供应商分配云资源(例如,容器的机器)来管理的工作量。数据的预测分析是很重要的,以确定未来的发展趋势,同时也使云组织来充当每个工作负载的需求。它可以在不同的领域应用,如股票价格预测,天气预报和交通负载对服务器(云计算)。云供应商使用该预测分析,以避免不同类型的损失,如服务失效,最大能耗和客户的损失。其中一种方法利用时间序列数据做预测分析是长短期记忆(LSTM)。本文给出了使用深层学习方法(LSTM)预测在服务器上的未来负载时间序列预测的预测分析。 LSTM的预测精度已使用三种指标-RMSE,MSE和MAE测量。

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