3.8 Proceedings Paper

Machine Learning Approaches for Load Balancing in Cloud Computing Services

Publisher

IEEE
DOI: 10.1109/NCCC49330.2021.9428825

Keywords

Cloud Computing; Machine Learning; Regression; Classification; Virtualization; Optimization

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As the demand for cloud services increases, resource optimization becomes critical. Static algorithms are no longer sufficient to solve cloud-related challenges, hence the need to explore other rich approaches. Research shows that the latest Machine Learning methods can address challenges in cloud environments and provide opportunities for future researchers.
As the demand for cloud services increases, optimization of resources becomes essential. Static algorithms are no longer sufficient to solve cloud-related challenges such as imbalanced workload distribution in Virtual Machines or improper resource allocation to cloud users. Thus, the need to explore other rich approaches can greatly improve cloud applications' performance and tackle the above challenges. This research investigates the latest Machine Learning approaches that can tackle the above challenges in cloud environment. A comparison of these approaches included highlighting their strengths and weaknesses to induce a research gap useful for upcoming researchers in the field.

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