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An learning-based fault-tolerant model for real-time applications on clouds

机译:基于学习的容错模型,用于云上的实时应用程序

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The rapid development of mobile technology has further promoted the scale of real-time applications, such as mobile payment, real-time positioning and mobile communication. At the same time, fault-tolerant requirements of data and process for applications increasingly emerged. Complexity and particularity of the traditional fault-tolerant mechanisms in cloud can't meet the modern fault-tolerant requirements and consume a lot of cloud resources. To solve this problem, we propose an efficient learning-based fault-tolerant model, Nebula, Nebula not only ensuring the fault tolerance of real-time application, but also greatly improving the utilization of cloud resources.
机译:移动技术的快速发展进一步促进了实时应用的规模,例如移动支付,实时定位和移动通信。与此同时,存在的容错要求数据和应用程序的过程越来越出现。云中传统容错机制的复杂性和特殊性不能满足现代容错要求,并消耗大量云资源。为了解决这个问题,我们提出了一种高效的基于学习的容错模型,星云,星云不仅可以确保实时应用的容错,而且大大提高了云资源的利用率。

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