1 |
Kumar, E.M. Cloud Computing in Resource Management. International Journal of Engineering and Management Research (IJEMR). 2018, 8(6), pp.93-98.
|
2 |
Buyya, R., Srirama, S.N. and Bahsoon, R. A Manifesto for Future Generation Cloud Computing. 2018, pp.1-51.
|
3 |
Flake, G.W. and Lawrence, S. Efficient SVM Regression Training with SMO. Machine Learning. 2002, 46(1), pp.271-290.
DOI
|
4 |
Sun, X., Ansari, N. and Wang, R. Optimizing Resource Utilization of a Data Center. IEEE Communications Surveys & Tutorials. 2016, 18(4), pp.2822-2846.
DOI
|
5 |
Hu, Y., Deng, B., Peng, F. and Wang, D. Workload Prediction for Cloud Computing Elasticity Eechanism. In: 2016 IEEE International Conference on Cloud Computing and Big Data Analysis (ICCCBDA): IEEE, 2016, pp.244-249.
|
6 |
Mell, P. and Grance, T. The NIST definition of cloud computing. Special Publication 800-145. Gaithersburg: National Institute of Standards and Technology. 2011, pp.1-7.
|
7 |
Islam, S., Keung, J., Lee, K. and Liu, A. Empirical prediction models for adaptive resource provisioning in the cloud. Future Generation Computer Systems. 2012, 28(1), pp.155-162.
DOI
|
8 |
Xia, B., Li, T., Zhou, Q.-F., Li, Q. and Zhang, H. An Effective Classification-based Framework for Predicting Cloud Capacity Demand in Cloud Services. IEEE Transactions on Services Computing. 2018, pp.1-13.
|
9 |
Uikey, N. and Suman, U. Tailoring for agile methodologies: A framework for sustaining quality and productivity. International Journal of Business Information Systems. 2016, 23(4), pp.432-455.
DOI
|
10 |
Reiss, C., Wilkes, J. and Hellerstein, J.L. Google cluster-usage traces: format+ schema, 2011.
|
11 |
Alpaydin, E. Introduction to machine learning. Cambridge: MIT press, 2020.
|
12 |
Sammut, C. and Webb, G.I. eds. Encyclopedia of Machine Learning. Mean absolute error. Boston, MA: Springer US, 2010.
|
13 |
Usha, T. and Balamurugan, S.A.A. Seasonal Based Electricity Demand Forecasting Using Time Series Analysis. Circuits and Systems. 2016, 7(10), pp.3320-3328.
DOI
|
14 |
Djemame, K. "Introduction to Cloud Computing: Enabling Technologies and Distributed System Models (2)". COMP580 Cloud Computing. University of Leeds, 2020.
|
15 |
Ylonen, T. and Lonvick, C. The secure shell (SSH) protocol architecture. RFC 4251. 2006, pp.1-29.
|
16 |
Moreno-Vozmediano, R., Montero, R.S., Huedo, E. and Llorente, I.M. Efficient resource provisioning for elastic Cloud services based on machine learning techniques. Journal of Cloud Computing. 2019, 8(1), p.5.
DOI
|
17 |
Markov, Z. and Russell, I. An introduction to the WEKA data mining system. ACMSIGCSE Bulletin. 2006, 38(3), pp.367-368.
|
18 |
Djemame, K. "Cloud Resource Management and Scheduling". COMP580 Cloud Computing. University of Leeds, 2020.
|
19 |
Badger, M.L., Grance, T., Patt-Corner, R. and Voas, J.M. Cloud Computing Synopsis and Recommendations. National Institute of Standards & Technology, 2012, pp. 1-81.
|
20 |
Anon 2020. Server monitoring. Zabbix.com. [Online]. [Accessed 24 July 2020]. Available from: https://www.zabbix.com/server_monitoring.
|
21 |
Kaur, D. and Sharma, T. Scheduling Algorithms in Cloud Computing. International Journal of Computer Applications. 2019, 975, pp.16-21.
|
22 |
Flora, H.K. and Chande, S.V. A Systematic Study on Agile Software Development Methodologies and Practices. International Journal of Computer Science and Information Technologies. 2014, 5(3), pp.3626-3637.
|
23 |
Kumar, J. and Singh, A.K. Workload prediction in cloud using artificial neural network and adaptive differential evolution. Future Generation Computer Systems. 2018, 81, pp.41-52.
DOI
|