Building Context-Rich Mobile Cloud Services for Mobile Cloud Applications

作者: Aleksandar Karadimce , R. Macedonia , Danco Davcev

DOI: 10.5281/ZENODO.33143

关键词:

摘要: Today's mobile applications require more computational by intensive capabilities such as natural language processing, computer vision and graphics, machine learning etc. These demands cannot be met just production of powerful devices. Therefore, will have to become personalized, context aware, able recognize not only the location user, but also their cognitive preferences. To support these demands, future computing built in environments that provide a set context-rich services. leverage cloud technology order deliver or mCloud applications. Developers use services building blocks realize large class basic short. main contribution this paper is propose model context- rich can development The proposed verified many cases identifying most appropriate generate custom-made multimedia output. essence consider different aspects influencing factors are part Quality Experience (QoE) process metrics.

参考文章(17)
Kapil Singh, Practical Context-Aware Permission Control for Hybrid Mobile Applications recent advances in intrusion detection. pp. 307- 327 ,(2013) , 10.1007/978-3-642-41284-4_16
Alexander Raake, Sebastian Egger, Quality and Quality of Experience Quality of Experience. pp. 11- 33 ,(2014) , 10.1007/978-3-319-02681-7_2
Ameesh Paleja, Sunbir Gill, Matthew A. Jones, Cross-platform mobile application development ,(2011)
Diaa Salama AbdElminaam, Salah M El-Sayed, Hatem M. Abdul Kader, Mohie M. Hadhoud, Increasing The Performance Of Mobile Smartphones Using Partition And Migration Of Mobile Applications To Cloud Computing International Journal of Technology Enhancements and Emerging Engineering Research. ,vol. 2, pp. 1- 10 ,(2014)
Anand Rajaraman, Jeffrey D Ullman, Mining of Massive Datasets ,(2011)
Kunhui Lin, Jingjin Wang, Meihong Wang, A hybrid recommendation algorithm based on Hadoop international conference on computer science and education. pp. 540- 543 ,(2014) , 10.1109/ICCSE.2014.6926520
Chengwen Zhang, Jiali Bian, Bo Cheng, Lingfei Li, A Personalized Cloud Services Recommendation Based on Cooperative Relationship between Services Journal of Software Engineering and Applications. ,vol. 06, pp. 623- 629 ,(2013) , 10.4236/JSEA.2013.612074
Xiao Qin Jiong Xie, Shu Yin, Xiaojun Ruan, Zhiyang Ding, Yun Tian, James Majors, Adam Manzanares, None, Improving MapReduce performance through data placement in heterogeneous Hadoop clusters ieee international symposium on parallel distributed processing workshops and phd forum. pp. 1- 9 ,(2010) , 10.1109/IPDPSW.2010.5470880
Asta Zelenkauskaite, Bruno Simoes, Big data through cross-platform interest-based interactivity international conference on big data and smart computing. pp. 191- 196 ,(2014) , 10.1109/BIGCOMP.2014.6741435
Ke Ji, Hong Shen, Using Category and Keyword for Personalized Recommendation: a Scalable Collaborative Filtering Algorithm international symposium on parallel architectures, algorithms and programming. pp. 197- 202 ,(2014) , 10.1109/PAAP.2014.40