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End-to-End QoS Prediction Model of Vertically Composed Cloud Services via Tensor Factorization

机译:张量分解的垂直组合云服务端到端QoS预测模型

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The rapid growth of published cloud services in the Internet makes the service selection and recommendation a challenging task for both users and service providers. Services' QoS properties such as response time and throughput are often used to select the best of functionally equivalent services. In cloud environment, software services collaborate with other complementary services to provide complete solutions to end users. The service selection is done based on QoS requirements submitted by end users. Software providers alone cannot guarantee users' QoS requirements. These requirements must be end-to-end, representing all collaborating services in a solution. In this paper, we propose an end-to-end QoS prediction model for vertically composed services which are composed of three types of cloud services: software (SaaS), infrastructure (IaaS) and data (DaaS). It exploits historical QoS values and cloud services and users information to predict unknown end-to-end QoS values of composite services. The experiments demonstrate that our proposed model outperforms other prediction models in terms of the prediction accuracy. We also study the impact of different parameters on the prediction results. In the experiments, we used real cloud services' QoS data collected using our developed QoS monitoring and collecting system.
机译:Internet上已发布的云服务的快速增长使服务的选择和推荐对于用户和服务提供商而言都是一项艰巨的任务。服务的QoS属性(例如响应时间和吞吐量)通常用于选择功能上最佳的等效服务。在云环境中,软件服务与其他补充服务协作以为最终用户提供完整的解决方案。服务选择是根据最终用户提交的QoS要求完成的。仅软件提供商不能保证用户的QoS要求。这些要求必须是端到端的,代表解决方案中的所有协作服务。在本文中,我们为垂直组合的服务提出了端到端的QoS预测模型,该模型由三种类型的云服务组成:软件(SaaS),基础架构(IaaS)和数据(DaaS)。它利用历史QoS值以及云服务和用户信息来预测组合服务的未知端到端QoS值。实验表明,我们提出的模型在预测准确性方面优于其他预测模型。我们还研究了不同参数对预测结果的影响。在实验中,我们使用通过我们开发的QoS监视和收集系统收集的真实云服务的QoS数据。

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