SMART RESOURCE USAGE PREDICTION USING CLOUD COMPUTING FOR MASSIVE DATA PROCESSING SYSTEMS
PDF

Keywords

Cloud Computing
Resource Allocation
Work Load Prediction
Massive Data Processing System
Machine Learning Algorithms

How to Cite

SMART RESOURCE USAGE PREDICTION USING CLOUD COMPUTING FOR MASSIVE DATA PROCESSING SYSTEMS. (2019). Journal of Information Technology and Digital World, 1(2), 108-118. https://doi.org/10.36548/jitdw.2019.2.006

Abstract

Resource management plays the vital role in the cloud computing as the requirement for the massive data processing system such as heath sectors, business solutions and the internet of things keeps on increasing in at an exponential range. Allocation of proper and perfect resources remains as the mains reasons for the successful computation of the applications. However the conventional resources management methodologies, that totally depends on the simple heuristic based methods fails to accomplish a performance that is predictable. The appropriate resource allocation is directly related to the workload demand prediction as the would help to bring down the cost, time and power and the memory usage. The proposed method in the paper leverages the machine learning approaches to manage the resource allocation in the cloud computing for the massive data processing system, the simulation of the proposed model using the network simulator -2 enables to achieve a better performance and resources utilization at a decreased cost, time, power and memory usage.

PDF

References

Kumar, D. "Review on task scheduling in ubiquitous clouds." J. ISMAC 1, no. 01 (2019): 72-80.

Bashar, Abul. "INTELLIGENT DEVELOPMENT OF BIG DATA ANALYTICS FOR MANUFACTURING INDUSTRY IN CLOUD COMPUTING." Journal: Journal of Ubiquitous Computing and Communication Technologies September 2019, no. 01 (2019): 13-22.

Bhalaji, N. "DELAY DIMINISHED EFFICIENT TASK SCHEDULING AND ALLOCATION FOR HETEROGENEOUS CLOUD ENVIRONMENT." Journal of trends in Computer Science and Smart technology (TCSST) 1, no. 01 (2019): 51-62.

Duraipandian, M., and Mr R. Vinothkanna. "Cloud based Internet of Things for smart connected objects." Journal of ISMAC 1, no. 02 (2019): 111-119.

Mohamaddiah, Mohd Hairy, Azizol Abdullah, Shamala Subramaniam, and Masnida Hussin. "A survey on resource allocation and monitoring in cloud computing." International Journal of Machine Learning and Computing 4, no. 1 (2014): 31.

Bashar, Abul. "SECURE AND COST EFFICIENT IMPLEMENTATION OF THE MOBILE COMPUTING USING OFFLOADING TECHNIQUE." Journal of Information Technology 1, no. 01 (2019): 48-57.

Smys, S., G. Josemin Bala, and Jennifer S. Raj. "Self-organizing hierarchical structure for wireless networks." In 2010 international conference on advances in computer engineering, pp. 268-270. IEEE, 2010.

Younge, Andrew J., Gregor Von Laszewski, Lizhe Wang, Sonia Lopez-Alarcon, and Warren Carithers. "Efficient resource management for cloud computing environments." In International Conference on Green Computing, pp. 357-364. IEEE, 2010.

Suma, V. "TOWARDS SUSTAINABLE INDUSTRIALIZATION USING BIG DATA AND INTERNET OF THINGS." Journal of ISMAC 1, no. 01 (2019): 24-37.

Demirci, Mehmet. "A survey of machine learning applications for energy-efficient resource management in cloud computing environments." In 2015 IEEE 14th international conference on machine learning and applications (ICMLA), pp. 1185-1190. IEEE, 2015.

Smys, S., and Jennifer S. Raj. "INTERNET OF THINGS AND BIG DATA ANALYTICS FOR HEALTH CARE WITH CLOUD COMPUTING." Journal of Information Technology 1, no. 01 (2019): 9-18.

Ramesh, S., and S. Smys. "Performance analysis of heuristic clustered (HC) architecture in wireless networks." In 2017 International Conference on Inventive Systems and Control (ICISC), pp. 1-4. IEEE, 2017.

Kumar, Jitendra, and Ashutosh Kumar Singh. "Workload prediction in cloud using artificial neural network and adaptive differential evolution." Future Generation Computer Systems 81 (2018): 41-52.

Hu, Yazhou, Bo Deng, Fuyang Peng, and Dongxia Wang. "Workload prediction for cloud computing elasticity mechanism." In 2016 IEEE International Conference on Cloud Computing and Big Data Analysis (ICCCBDA), pp. 244-249. IEEE, 2016.

Sahi, Supreet Kaur, and V. Dhaka. "A review on workload prediction of cloud services." International Journal of Computer Applications 109, no. 9 (2015): 1-4.