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A Probabilistic Learning Approach for Predicting Application Launches in Cloud Computing Architectures

机译:一种用于预测云计算体系结构中应用程序启动的概率学习方法

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Desktop and application virtualization suffers from delay. Opening sessions and remote applications implies to load a non-negligible amount of data, parameters and services. This can be solved by predicting the future activities of the users and pre-loading the required resources. We thus propose a complete approach that automatically discovers the periodical patterns of the users and that automatically builds a probabilistic model of user's behaviour. A kernel density estimator is exploited to estimate the probability density function of an application to be launched by a user. Using the probabilistic approach allows to predict the application a user will open and to reduce the launching time. The efficiency of the proposed approach has been verified by an implementation in a virtualization tool under real operating conditions.
机译:桌面和应用程序虚拟化受到延迟的困扰。打开会话和远程应用程序意味着要加载不可忽略的数据,参数和服务。这可以通过预测用户的未来活动并预加载所需的资源来解决。因此,我们提出了一种完整的方法,该方法可以自动发现用户的周期性模式,并自动建立用户行为的概率模型。利用内核密度估计器来估计用户要启动的应用程序的概率密度函数。使用概率方法可以预测用户将打开的应用程序,并减少启动时间。所提出的方法的效率已经通过在实际操作条件下在虚拟化工具中的实现进行了验证。

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