User Demand Prediction from Application Usage Pattern in Virtual Smartphone

Joon Heo, K. Terada, M. Toyama, S. Kurumatani, E. Chen
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引用次数: 11

Abstract

The numbers of smart phone users and related applications are growing rapidly, and applications continue to become more data-intensive. In the cloud based service for smart phone, if user demand on virtual machines exceeds the hardware capacity of the server, the server incurs an overload and bottleneck, network delay, latency, and packet loss rate are increased in 3G and Wi-Fi connections. Therefore, it is important to predict user demand and to use this information for resource allocation methods such as network virtualization and load balancing. We present a novel user demand prediction method that uses analysis results of application usage patterns. By analysis of log data and using the proposed method, we can predict execution time and average volume of transmitted application data. The proposed method is mainly considered for adoption in our virtual smart phone system. We show results from an experiment performed in an implemented test-bed, including prediction results and performance of wireless media.
基于应用使用模式的虚拟智能手机用户需求预测
智能手机用户和相关应用的数量正在快速增长,应用的数据密集程度不断提高。在基于云的智能手机服务中,如果用户对虚拟机的需求超过了服务器的硬件容量,服务器就会出现过载和瓶颈,在3G和Wi-Fi连接中会增加网络延迟、延迟和丢包率。因此,预测用户需求并将此信息用于资源分配方法(如网络虚拟化和负载平衡)非常重要。提出了一种基于应用程序使用模式分析结果的用户需求预测方法。通过对日志数据的分析,利用该方法可以预测应用程序数据的执行时间和平均传输量。该方法主要考虑在我们的虚拟智能手机系统中采用。我们展示了在实现的测试平台上进行的实验结果,包括无线媒体的预测结果和性能。
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