MANAGEMENT SYSTEM PROTOTYPE FOR INTELLIGENT MOBILE CLOUD COMPUTING FOR BIG DATA

Authors

  • Nur Syahela Hussien UTM Big Data Centre, Ibnu Sina Institute for Scientific and Industrial Research, Faculty of Computing, Universiti Teknologi Malaysia, 81310 UTM Johor Bahru, Johor, Malaysia
  • Sarina Sulaiman UTM Big Data Centre, Ibnu Sina Institute for Scientific and Industrial Research, Faculty of Computing, Universiti Teknologi Malaysia, 81310 UTM Johor Bahru, Johor, Malaysia
  • Siti Mariyam Shamsuddin UTM Big Data Centre, Ibnu Sina Institute for Scientific and Industrial Research, Faculty of Computing, Universiti Teknologi Malaysia, 81310 UTM Johor Bahru, Johor, Malaysia

DOI:

https://doi.org/10.11113/jt.v78.10117

Keywords:

Mobile cloud computing, mobile cloud storage, prototype development, management system

Abstract

The current challenge of mobile devices is the storage capacity that has led service providers to develop new value-added mobile services. To address these limitations, mobile cloud computing, which offers on-demand is developed. Mobile Cloud Computing (MCC) is developed to augment device capabilities, facilitating to mobile users store, access to a big dataset on the cloud. Even so, given the limitations of bandwidth, latencies, and device battery life, new responses are required to extend the use of mobile devices. This paper presents a novel design and implementation of developing process on intelligent mobile cloud storage management system, also called as Intelligent Mobile Cloud Computing (IMCC) for android based users. IMCC is important for cloud storage user to make their data effectively and efficiently for saving the user time. IMCC provided convenience for user to use multiple cloud storage using one application and easy for users to store their data to any cloud storage. The result shows using IMCC it only took 8 seconds to access the data, which is faster compared with traditional MCC, it took 23.33 seconds. IMCC reduce 65.71% of latency occur using the MCC in managing a user data. The developed IMCC prototype is accessible through the Google Play Store.

References

Arpaci, I. 2016. Understanding And Predicting Students’ Intention To Use Mobile Cloud Storage Services. Comput. Human Behav. 58: 150-157.

Casserly M. 2015. 7 Best Cloud Storage Services - 2014's Best Online Storage Sites Revealed. Available at: http://www.pcadvisor.co.uk/features/internet/3506734/best-cloud-storage-services-review. [Accessed July 16, 2015].

Lilly, P. 2015. Top 20 Cloud Storage Service. Available at: http://www.pcadvisor.co.uk/features/storage/3421715/top-20-cloud-storage-services. [Accessed February 16, 2015].

Mitroff, S. 2015. Which Cloud Storage Service Is For You. Available at: http://www.cnet.com/news/onedrive-dropbox-google-drive-and-box-which-cloud-storage-service-is-right-for-you. [Accessed February 16, 2015].

Pawlish, M., Varde, A. S. and Robila, S. A. 2012. Cloud Computing for Environment-Friendly Data Centers. CloudDB ’12 Proc. Fourth Int. Work. Cloud Data Manag. 43-48.

Hussien, N. S., Sulaiman, S. and Shamsuddin, S. M. 2014. Evaluation of Intelligent Mobile Web Pre- fetching System for Mobile Cloud Environment. Front. Artif. Intell. Appl. New Trends Softw. Methodol. Tools Tech. 265: 374-387.

Ercan, T. 2010. Effective Use Of Cloud Computing In Educational Institutions. Procedia - Soc. Behav. Sci. 2(2): 938-942.

Drago, I., Mellia, M., Munafo, M.M. , Sperotto, A., Sadre, R., Pras, A. 2012. Inside Dropbox: Understanding Personal Cloud Storage Services. Proceedings of the 2012 ACM Conference on Internet Measurement Conference, IMC ’12, ACM, New York, NY, USA. 481-494.

Palankar, M.R. , Iamnitchi, A., Ripeanu, M., Garfinkel, S. 2008. Amazon S3 For Science Grids: A Viable Solution? Proceedings of the 2008 International Workshop on Data-Aware Distributed Computing, ACM. 55-64.

Calder, B., Wang, J., Ogus, A., Nilakantan, N., Skjolsvold, A., McKelvie, S., Xu, Y., Srivastav, S., Wu, J., Simitci, H., Haridas, J., Uddaraju, C., Khatri, H., Edwards, A., Bedekar, V., Mainali, S., Abbasi, R., Agarwal, A., Haq, M.F.u., Haq, M.I. u., Bhardwaj, D., Dayanand, S., Adusumilli, A., McNett, M., Sankaran, S., Manivannan, K., Rigas, L. 2011. Windows Azure Storage: A Highly Available Cloud Storage Service With Strong Consistency. Proceedings of the Twenty-Third ACM Symposium on Operating Systems Principles, SOSP ’11, ACM, New York, NY, USA. 143-157.

Weil, S. A. Brandt, S. A., Miller, E. L., Long, D. D. E., Maltzahn, C. 2006. Ceph: A Scalable, High-Performance Distributed File System. Proceedings of the 7th Symposium on Operating Systems Design and Implementation, OSDI ’06, USENIX Association, Berkeley, CA, USA. 307-320.

Weil, S. A., Pollack, K. T.,Brandt, S. A., Miller, E. L. 2004. Dynamic Metadata Management For Petabyte-Scale File Systems. Proceedings of the 2004 ACM/IEEE Conference on Supercomputing, SC ’04, IEEE Computer Society, Washington, DC, USA, 2004.

Ghemawat, S., Gobioff, H., Leung, S.-T. 2003. The Google File System. SIGOPS Oper. Syst. Rev. 37(5): 29-43.

Balasubramaniyan, J. and Ramachandran, S. 2012. An Intelligent Cloud System Adopting File Pre-fetching, Proceedings of the 2011 International Conference on Advanced Computing, Networking and Security. 19-27.

European Commission. 2012. A Roadmap for Advanced Cloud Technologies Under H2020. Recommendations by the Cloud Expert Group. 1-35.

Assunção, M. D., Calheiros, R. N., Bianchi, S., Netto, M. a. S., and Buyya, R. 2014. Big Data Computing And Clouds: Trends And Future Directions. Journal of Parallel and Distributed Computing. 70: 3-15. http://doi.org/10.1016/j.jpdc.2014.08.003

Holleis, P. Otto, F., Hußmann, H. and Schmidt, A. 2007. Keystroke-Level Model for Advanced Mobile Phone Interaction. CHI 2007 Proc. Model. Mob. Interact. 1505-1514.

Jimenez, Y. and Morreale, P. 2013. Design and Evaluation of a Predictive Model for Smartphone Selection. Springer-Verlag Berlin Heidelb. 4: 376-384..

Karousos, N., Katsanos, C., Tselios, N. and Xenos, M. 2013. Effortless Tool-based Evaluation of Web Form Filling Tasks using Keystroke Level Model and Fitts Law. Web Ecommerce CHI 2013 Chang. Perspect. Paris, Fr. 1851-1856.

Li, H., Liu, Y. Zhonglu, D. Liu, J. Li, Y., Rau, P. P. and Wang, X. 2010. Extended KLM for Mobile Phone Interaction : A User Study Result. 3517-3522.

Card, S. K., Moran, T. P. and Newell, A. 1983. The Psychology of Human-Computer Interaction. Hillsdale, NJ, USA: Lawrence Erlbaum Associates.

Holleis, P., Scherr, M., and Broll, G. 2011. A Revised Mobile KLM for Interaction with Multiple NFC-Tags. International Federation for Information Processing IFIP. 4: 204-221.

Michael, P., Gary, B. and Alan, S. 2007. An Extended Keystroke Level Model (KLM) for Predicting the Visual Demand of In-Vehicle Information Systems, CHI ’07 Proc. SIGCHI Conf. Hum. Factors Comput. System. 6: 1515-1524.

Downloads

Published

2016-12-04

How to Cite

MANAGEMENT SYSTEM PROTOTYPE FOR INTELLIGENT MOBILE CLOUD COMPUTING FOR BIG DATA. (2016). Jurnal Teknologi (Sciences & Engineering), 78(12-2). https://doi.org/10.11113/jt.v78.10117