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Dynamic Cloud Resources Allocation

机译:动态云资源分配

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摘要

Many software companies have clients that use Microsoft Azure services. Clients may have varying needs for resources, so Microsoft Azure has a very dynamic feature called elastic pool that allows resources to expand and shrink automatically on demand. However, this dynamic feature is very costly both for the clients and the software companies. Thus, there is a growing need to be able to predict the usage ahead of time on daily basis. In this paper we propose and develop an intelligent usage prediction model using the user's resource usage history. According to our research, the work done till date is limited to other specific cloud providers or private servers but none related to Microsoft Azure. The classification algorithm that we use is LSTM. However, we have also report and document results obtained by ARIMA, SVM and Bayesian Networks. The best performance is given by LSTM.
机译:许多软件公司都有使用Microsoft Azure服务的客户端。客户端可能对资源有不同的需求,因此Microsoft Azure具有称为弹性池的非常动态的功能,该功能允许资源根据需要自动扩展和收缩。但是,这种动态功能对于客户和软件公司而言都是非常昂贵的。因此,越来越需要能够每天提前预测使用情况。在本文中,我们提出并开发了使用用户资源使用历史的智能使用预测模型。根据我们的研究,迄今为止完成的工作仅限于其他特定的云提供商或私有服务器,而与Microsoft Azure无关。我们使用的分类算法是LSTM。但是,我们也报告并记录了ARIMA,SVM和贝叶斯网络获得的结果。 LSTM给出了最佳性能。

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