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Deep neural network-based application partitioning and scheduling for hospitals and medical enterprises using IoT assisted mobile fog cloud

Lakhan, Abdullah; Mastoi, Qurat-Ul-Ain; Elhoseny, Mohamed; Suleman, Muhammad; Mazin, Memon &; Mohammed, Abed; Lakhan, Abdullah; Mastoi, Qurat-Ul-Ain; Elhoseny, Mohamed; Memon, Muhammad Suleman; Mohammed, Mazin Abed

Authors

Abdullah Lakhan

Qurat-Ul-Ain Mastoi

Mohamed Elhoseny

Muhammad Suleman

Memon & Mazin

Abed Mohammed

Abdullah Lakhan

Qurat-Ul-Ain Mastoi

Mohamed Elhoseny

Muhammad Suleman Memon

Mazin Abed Mohammed



Abstract

These days, fog-cloud based healthcare application partitioning techniques have been growing progressively. However, existing static fog-cloud based application partitioning methods are static and cannot adopt dynamic changes in the dynamic environment (e.g., where network and computing nodes have resource value variation) during the execution process. This study devises a Deep Neural Networks Energy Cost-Efficient Partitioning and Task Scheduling (DNNECTS) algorithm framework which consists of the following components: application partitioning, task sequencing, and scheduling. Experimental results show the suggested methods in terms of energy consumption and the applications' cost in the dynamic environment.

Citation

Lakhan, A., Mastoi, Q., Elhoseny, M., Suleman, M., Mazin, M. &., Mohammed, A., …Mohammed, M. A. (2022). Deep neural network-based application partitioning and scheduling for hospitals and medical enterprises using IoT assisted mobile fog cloud. Enterprise Information Systems, 16(7), Article 1883122. https://doi.org/10.1080/17517575.2021.1883122

Journal Article Type Article
Acceptance Date Jan 26, 2021
Online Publication Date Feb 15, 2021
Publication Date 2022
Deposit Date Jan 17, 2024
Journal Enterprise Information Systems
Print ISSN 1751-7575
Electronic ISSN 1751-7583
Publisher Taylor & Francis
Peer Reviewed Peer Reviewed
Volume 16
Issue 7
Article Number 1883122
DOI https://doi.org/10.1080/17517575.2021.1883122
Keywords Enterprise; system; partitioning; scheduling; iot; deep neural networks; workflow; resource management; mobile; fog; cloud
Public URL https://uwe-repository.worktribe.com/output/11617119