Study on Network Behavior Assessment Using Amazon Web and Cloud Computing Services
Keywords:Amazon Web Services, Network Failure, Amazon
The revolution of Cloud Computing increases the opportunities to provide realistic and most sophisticated evaluation modules that reduce the management time and cost of network performance evaluation and failure prediction. In our research, This paper presents a cloud-based software system that utilizing the Amazon Elastic MapReducer (EMR) ensemble clustered instances for evaluating the collected network measurements to quantifies network performance and predicate its degradation in the long run. The extracted outcomes illustrate the efficiency of the proposed system.
A. Al-Fuqaha, A. Rayes, D. Kountanis, H. Abed, A. Kamel, R. Salih, “Prediction of Performance Degradation in Telecommunication Networks Using Joint Clustering and Association Analysis Techniques,” IEEE International Workshop on Management of Emerging Networks and Services, IEEE Globecom 2010, Miami, Florida, 6-10 Dec. 2010.
Z. Liu, D. Um,” Analysis of resource usage profile for MapReduce applications using Hadoop on the cloud”, IEEE 2012 International Conference on Quality, Reliability, Risk, Maintenance, and Safety Engineering, Chengdu, China. 2012.
Xueyuan, Brian, Yuansong, "Experimental evaluation of memory configurations of Hadoop in Docker environments", Signals and Systems Conference (ISSC) 2016 27th Irish, pp. 1-6, 2016.
D. Dahiphale, R. Karve, A. Vasilakos, H. Liu, Z. Yu, A. Chhajer, J. Wang, and C. Wang, “An Advanced MapReduce: Cloud MapReduce, Enhancements and Applications”, IEEE Transactions On Network And Service Management, Vol. 11, No. 1, March 2014.
Z. Liu and D. Mu, "Analysis of resource usage profile for MapReduce applications using Hadoop on the cloud," 2012 International Conference on Quality, Reliability, Risk, Maintenance, and Safety Engineering, Chengdu, 2012, pp. 1500-1504.
M. Adnan, M. Afzal, M. Aslam, R. Jan and A. M. Martinez-Enriquez, "Minimizing big data problems using cloud computing based on Hadoop architecture," 2014 11th Annual High Capacity Optical Networks and Emerging/Enabling Technologies (Photonics for Energy), Charlotte, NC, 2014, pp. 99-103.
J. M. Luna, C. T. Abdallah and G. L. Heileman, "Probabilistic Optimization of Resource Distribution and Encryption for Data Storage in the Cloud," in IEEE Transactions on Cloud Computing, vol. 6, no. 2, pp. 428-439, 1 April-June 2018.
P. Pierleoni, R. Concetti, A. Belli and L. Palma, "Amazon, Google and Microsoft Solutions for IoT: Architectures and a Performance Comparison," in IEEE Access, vol. 8, pp. 5455-5470, 2020.
A. J. Sanad and M. Hammad, "Reducing Cloud provisioning Cost Using Spot Instances hopping," 2019 International Conference on Innovation and Intelligence for Informatics, Computing, and Technologies (3ICT), Sakhier, Bahrain, 2019, pp. 1-6.
A. Chiniah, A. Chummun, and Z. Burkutally, "Categorising AWS Common Crawl Dataset using MapReduce," 2019 Conference on Next Generation Computing Applications (NextComp), Mauritius, 2019, pp. 1-6.
How to Cite
Copyright (c) 2021 Lamyaa Mohammed Kadhim
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.