Abstract

Mobile users spend a tremendous amount of time surfing multimedia contents over the Internet to pursue their interests. A resource-constrained smart device demands more intensive computing tasks and lessens the battery life. To address the resource limitations (i.e., memory, lower maintenance cost, easier access, computing tasks) in mobile devices, mobile cloud computing is needed. Several approaches have been proposed to confront the challenges of mobile cloud computing, but difficulties still remain. However, in the coming years, context collecting, processing, and interchanging the results on a heavy network will cause vast computations and reduce the battery life in mobiles. In this paper, we propose a “context-based intelligent multimedia system” (CIMS) for ubiquitous cloud computing. The main goal of this research is to lessen the computing percentage, storage complexities, and battery life for mobile users by using pervasive cloud computing. Moreover, to reduce the computing and storage concerns in mobiles, the cloud server collects several groups of user profiles with similarities by executing K-means clustering on users’ data (context and multimedia contents). The distribution process conveys real-time notifications to smartphone users, according to what is stated in his/her profile. We considered a mobile cloud offloading system, which decides the offloading actions to/from cloud servers. Context-aware decision-making (CAD) customizes the mobile device performance with different specifications such as short response time and lesser energy consumption. The analysis says that our CIMS takes advantage of cost-effective features to produce high-quality information for mobile (or smart device) users in real time. Moreover, our CIMS lessens the computation and storage complexities for mobile users, as well as cloud servers. Simulation analysis suggests that our approach is more efficient than existing domains.

Highlights

  • Over the last decade, Internet usage around the world has been increasing day by day

  • Mobile cloud computing has grown in popularity for many reasons, such that today smart devices are hampered by limitations, e.g., memory space, CPU usage, and battery life, when compared to notebooks and desktops [1]

  • Google and AdWords services are based on context-based filtering (CB), and in recent years Amazon and Taboo have attained success by introducing collaborative filtering (CF) recommender systems to make browsing more user-friendly

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Summary

Introduction

Internet usage around the world has been increasing day by day. Internet users daily browse billions of multimedia webpages and face difficulties in finding the content in which they are interested. Ubiquitous computing plays a vital role in smart devices (i.e., smartphones, iPads, tablets, etc.) by providing strong data networks (3G/4G) for mobile users to access fast Internet anywhere at any time. A question arises: How can we diminish the above challenges for mobile users so that they can acquire their desired contents from several multimedia applications [2]? This paper concentrates on providing real-time notifications for mobile user applications about their desired multimedia contents. These recommendation results are not implicit and stable for mobile users. Google and AdWords services are based on context-based filtering (CB), and in recent years Amazon and Taboo have attained success by introducing collaborative filtering (CF) recommender systems to make browsing more user-friendly

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