Efficient load balancing in cloud computing using multi-layered Mamdani fuzzy inference expert system

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Abstract

In this article, a new Multi-Layered mamdani fuzzy inference system (ML-MFIS) is propound for the Assessment of Efficient Load Balancing (ELB). The proposed ELB-ML-MFIS expert System can categorise the level of ELB in Cloud computing into Excellent, Normal or Low. ELB-ML-MFIS Expert System for ELB in cloud computing is developed under the guidelines from the Microsoft Organization and Pakistan's Punjab Information Technology Board (PITB) Standard. ELB-ML-MFIS Expert System uses input Cloud Computing parameters such as Data-Center, Virtual-Machine, and Inter -of-Things (IOT) for different layers. This article also analyses the intensities of the Parametres and the results achieved by using the Proposed ELB-ML-MFIS Expert System. All these parameters and results are discussed with the experts of Pakistan's Punjab Information Technology Board (PITB), Lahore. The accuracy of the proposed ELB-ML-MFIS Expert System is more accurate as compared to other approaches used for it.

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APA

Naz, N. S., Abbas, S., Khan, M. A., Abid, B., Tariq, N., & Khan, M. F. (2019). Efficient load balancing in cloud computing using multi-layered Mamdani fuzzy inference expert system. International Journal of Advanced Computer Science and Applications, 10(3), 569–577. https://doi.org/10.14569/IJACSA.2019.0100373

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