探索云计算中基于内存的QoS预测的潜在特征

Yilei Zhang, Zibin Zheng, Michael R. Lyu
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引用次数: 149

摘要

随着云计算作为在分布式组件上构建高质量应用的解决方案的日益普及,高效地评估云组件的用户端质量成为一个迫切而关键的研究问题。然而,从用户端调用所有可用的云组件进行评估既昂贵又不切实际。为了应对这一关键挑战,我们提出了一种基于邻域的方法,称为CloudPred,用于云组件的协作和个性化质量预测。CloudPred通过对用户和组件进行特性建模来增强。我们的CloudPred方法不需要代表云应用程序设计人员额外调用云组件。大量的实验结果表明,CloudPred比其他竞争方法具有更高的QoS预测精度。我们还公开发布了我们的大规模QoS数据集,用于未来云计算的相关研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Latent Features for Memory-Based QoS Prediction in Cloud Computing
With the increasing popularity of cloud computing as a solution for building high-quality applications on distributed components, efficiently evaluating user-side quality of cloud components becomes an urgent and crucial research problem. However, invoking all the available cloud components from user-side for evaluation purpose is expensive and impractical. To address this critical challenge, we propose a neighborhood-based approach, called CloudPred, for collaborative and personalized quality prediction of cloud components. CloudPred is enhanced by feature modeling on both users and components. Our approach CloudPred requires no additional invocation of cloud components on behalf of the cloud application designers. The extensive experimental results show that CloudPred achieves higher QoS prediction accuracy than other competing methods. We also publicly release our large-scale QoS dataset for future related research in cloud computing.
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