Cargando…

An Intelligent Proposed Model for Task Offloading in Fog-Cloud Collaboration Using Logistics Regression

Smart applications and intelligent systems are being developed that are self-reliant, adaptive, and knowledge-based in nature. Emergency and disaster management, aerospace, healthcare, IoT, and mobile applications, among them, revolutionize the world of computing. Applications with a large number of...

Descripción completa

Detalles Bibliográficos
Autores principales: Bukhari, Muhammad Mazhar, Ghazal, Taher M., Abbas, Sagheer, Khan, M. A., Farooq, Umer, Wahbah, Hasan, Ahmad, Munir, Adnan, Khan Muhammad
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8808244/
https://www.ncbi.nlm.nih.gov/pubmed/35126487
http://dx.doi.org/10.1155/2022/3606068
_version_ 1784643845832572928
author Bukhari, Muhammad Mazhar
Ghazal, Taher M.
Abbas, Sagheer
Khan, M. A.
Farooq, Umer
Wahbah, Hasan
Ahmad, Munir
Adnan, Khan Muhammad
author_facet Bukhari, Muhammad Mazhar
Ghazal, Taher M.
Abbas, Sagheer
Khan, M. A.
Farooq, Umer
Wahbah, Hasan
Ahmad, Munir
Adnan, Khan Muhammad
author_sort Bukhari, Muhammad Mazhar
collection PubMed
description Smart applications and intelligent systems are being developed that are self-reliant, adaptive, and knowledge-based in nature. Emergency and disaster management, aerospace, healthcare, IoT, and mobile applications, among them, revolutionize the world of computing. Applications with a large number of growing devices have transformed the current design of centralized cloud impractical. Despite the use of 5G technology, delay-sensitive applications and cloud cannot go parallel due to exceeding threshold values of certain parameters like latency, bandwidth, response time, etc. Middleware proves to be a better solution to cope up with these issues while satisfying the high requirements task offloading standards. Fog computing is recommended middleware in this research article in view of the fact that it provides the services to the edge of the network; delay-sensitive applications can be entertained effectively. On the contrary, fog nodes contain a limited set of resources that may not process all tasks, especially of computation-intensive applications. Additionally, fog is not the replacement of the cloud, rather supplement to the cloud, both behave like counterparts and offer their services correspondingly to compliance the task needs but fog computing has relatively closer proximity to the devices comparatively cloud. The problem arises when a decision needs to take what is to be offloaded: data, computation, or application, and more specifically where to offload: either fog or cloud and how much to offload. Fog-cloud collaboration is stochastic in terms of task-related attributes like task size, duration, arrival rate, and required resources. Dynamic task offloading becomes crucial in order to utilize the resources at fog and cloud to improve QoS. Since this formation of task offloading policy is a bit complex in nature, this problem is addressed in the research article and proposes an intelligent task offloading model. Simulation results demonstrate the authenticity of the proposed logistic regression model acquiring 86% accuracy compared to other algorithms and confidence in the predictive task offloading policy by making sure process consistency and reliability.
format Online
Article
Text
id pubmed-8808244
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Hindawi
record_format MEDLINE/PubMed
spelling pubmed-88082442022-02-03 An Intelligent Proposed Model for Task Offloading in Fog-Cloud Collaboration Using Logistics Regression Bukhari, Muhammad Mazhar Ghazal, Taher M. Abbas, Sagheer Khan, M. A. Farooq, Umer Wahbah, Hasan Ahmad, Munir Adnan, Khan Muhammad Comput Intell Neurosci Research Article Smart applications and intelligent systems are being developed that are self-reliant, adaptive, and knowledge-based in nature. Emergency and disaster management, aerospace, healthcare, IoT, and mobile applications, among them, revolutionize the world of computing. Applications with a large number of growing devices have transformed the current design of centralized cloud impractical. Despite the use of 5G technology, delay-sensitive applications and cloud cannot go parallel due to exceeding threshold values of certain parameters like latency, bandwidth, response time, etc. Middleware proves to be a better solution to cope up with these issues while satisfying the high requirements task offloading standards. Fog computing is recommended middleware in this research article in view of the fact that it provides the services to the edge of the network; delay-sensitive applications can be entertained effectively. On the contrary, fog nodes contain a limited set of resources that may not process all tasks, especially of computation-intensive applications. Additionally, fog is not the replacement of the cloud, rather supplement to the cloud, both behave like counterparts and offer their services correspondingly to compliance the task needs but fog computing has relatively closer proximity to the devices comparatively cloud. The problem arises when a decision needs to take what is to be offloaded: data, computation, or application, and more specifically where to offload: either fog or cloud and how much to offload. Fog-cloud collaboration is stochastic in terms of task-related attributes like task size, duration, arrival rate, and required resources. Dynamic task offloading becomes crucial in order to utilize the resources at fog and cloud to improve QoS. Since this formation of task offloading policy is a bit complex in nature, this problem is addressed in the research article and proposes an intelligent task offloading model. Simulation results demonstrate the authenticity of the proposed logistic regression model acquiring 86% accuracy compared to other algorithms and confidence in the predictive task offloading policy by making sure process consistency and reliability. Hindawi 2022-01-25 /pmc/articles/PMC8808244/ /pubmed/35126487 http://dx.doi.org/10.1155/2022/3606068 Text en Copyright © 2022 Muhammad Mazhar Bukhari et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Bukhari, Muhammad Mazhar
Ghazal, Taher M.
Abbas, Sagheer
Khan, M. A.
Farooq, Umer
Wahbah, Hasan
Ahmad, Munir
Adnan, Khan Muhammad
An Intelligent Proposed Model for Task Offloading in Fog-Cloud Collaboration Using Logistics Regression
title An Intelligent Proposed Model for Task Offloading in Fog-Cloud Collaboration Using Logistics Regression
title_full An Intelligent Proposed Model for Task Offloading in Fog-Cloud Collaboration Using Logistics Regression
title_fullStr An Intelligent Proposed Model for Task Offloading in Fog-Cloud Collaboration Using Logistics Regression
title_full_unstemmed An Intelligent Proposed Model for Task Offloading in Fog-Cloud Collaboration Using Logistics Regression
title_short An Intelligent Proposed Model for Task Offloading in Fog-Cloud Collaboration Using Logistics Regression
title_sort intelligent proposed model for task offloading in fog-cloud collaboration using logistics regression
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8808244/
https://www.ncbi.nlm.nih.gov/pubmed/35126487
http://dx.doi.org/10.1155/2022/3606068
work_keys_str_mv AT bukharimuhammadmazhar anintelligentproposedmodelfortaskoffloadinginfogcloudcollaborationusinglogisticsregression
AT ghazaltaherm anintelligentproposedmodelfortaskoffloadinginfogcloudcollaborationusinglogisticsregression
AT abbassagheer anintelligentproposedmodelfortaskoffloadinginfogcloudcollaborationusinglogisticsregression
AT khanma anintelligentproposedmodelfortaskoffloadinginfogcloudcollaborationusinglogisticsregression
AT farooqumer anintelligentproposedmodelfortaskoffloadinginfogcloudcollaborationusinglogisticsregression
AT wahbahhasan anintelligentproposedmodelfortaskoffloadinginfogcloudcollaborationusinglogisticsregression
AT ahmadmunir anintelligentproposedmodelfortaskoffloadinginfogcloudcollaborationusinglogisticsregression
AT adnankhanmuhammad anintelligentproposedmodelfortaskoffloadinginfogcloudcollaborationusinglogisticsregression
AT bukharimuhammadmazhar intelligentproposedmodelfortaskoffloadinginfogcloudcollaborationusinglogisticsregression
AT ghazaltaherm intelligentproposedmodelfortaskoffloadinginfogcloudcollaborationusinglogisticsregression
AT abbassagheer intelligentproposedmodelfortaskoffloadinginfogcloudcollaborationusinglogisticsregression
AT khanma intelligentproposedmodelfortaskoffloadinginfogcloudcollaborationusinglogisticsregression
AT farooqumer intelligentproposedmodelfortaskoffloadinginfogcloudcollaborationusinglogisticsregression
AT wahbahhasan intelligentproposedmodelfortaskoffloadinginfogcloudcollaborationusinglogisticsregression
AT ahmadmunir intelligentproposedmodelfortaskoffloadinginfogcloudcollaborationusinglogisticsregression
AT adnankhanmuhammad intelligentproposedmodelfortaskoffloadinginfogcloudcollaborationusinglogisticsregression