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RETRACTED: Deep learning and optimization-based task scheduling algorithms for fog-cloud computing environment

Ayoobkhan Mohamed Uvaze AhamedNew Uzbekistan UniversityD. DanielVel Tech Rangarajan Dr. Sagunthala R&D Institute of Science and TechnologyD. SeenivasanM. Kumarasamy College of EngineeringC. Rukumani KhandhanS. RadhakrishnanKKR & KSR Institute of Technology & SciencesK. V. Daya SagarDepartment of Electronics and Computer Engineering, Koneru Lakshmaiah Education Foundation, Vaddeswaram, Guntur, Andhra pradesh, IndiaVivek BhardwajManipal University JaipurNeerav NishantBabu Banarasi Das University
ABI

Abstract

Time-sensitive programs that are linked to smart services, such as smart healthcare as well as smart cities, are supported in large part by the fog computing domain. Due to the increased speed limitation of the cloud, Cloud Computing (CC) is a competent platform for fog in data processing, but it i s unable to meet the demands of time-sensitive programs. The procedure of resource provisioning, as well as allocation in either a fog-cloud structure, takes into account dynamic changes in user requirements, and resources with limited access in fog devices are more difficult to manage. Due to the continual changes in user requirement factors, the deadline represents the biggest obstacle in the fog computing structure. Hence the objective is to minimize the total cost involved in scheduling by maximizing resource utilization. For dynamic scheduling in the fog-cloud computing model, the efficiency of hybridization of the Grey Wolf Optimizer (GWO) and Lion Algorithm (LA) is developed in this study. In terms of energy costs, processing costs, and communication costs, the created GWOMLA-based Deep Belief Network (DBN) performed better and outruns the other traditional models.

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