2024
DOI: 10.14569/ijacsa.2024.0150477
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Deep Learning Approach for Workload Prediction and Balancing in Cloud Computing

Syed Karimunnisa,
Yellamma Pachipala

Abstract: Cloud Computing voted as one of the most revolutionized technologies serving huge user demand engrosses a prominent place in research. Despite several parameters that influence the cloud performance, factors like Workload prediction and scheduling are triggering challenges for researchers in leveraging the system proficiency. Contributions by practitioners given workload prophesy left scope for further enhancement in terms of makespan, migration efficiency, and cost. Anticipating the future workload in due to … Show more

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