Deep neural network-based application partitioning and scheduling for hospitals and medical enterprises using IoT assisted mobile fog cloud
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 r...
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my.um.eprints.418322023-10-20T04:37:13Z http://eprints.um.edu.my/41832/ 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 Memon, Muhammad Suleman Mohammed, Mazin Abed QA75 Electronic computers. Computer science 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. TAYLOR & FRANCIS LTD 2022-07-03 Article PeerReviewed Lakhan, Abdullah and Mastoi, Qurat-Ul-Ain and Elhoseny, Mohamed and Memon, Muhammad Suleman and Mohammed, Mazin Abed (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). ISSN 1751-7575, DOI https://doi.org/10.1080/17517575.2021.1883122 <https://doi.org/10.1080/17517575.2021.1883122>. 10.1080/17517575.2021.1883122 |
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QA75 Electronic computers. Computer science Lakhan, Abdullah Mastoi, Qurat-Ul-Ain Elhoseny, Mohamed Memon, Muhammad Suleman Mohammed, Mazin Abed Deep neural network-based application partitioning and scheduling for hospitals and medical enterprises using IoT assisted mobile fog cloud |
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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. |
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Article |
author |
Lakhan, Abdullah Mastoi, Qurat-Ul-Ain Elhoseny, Mohamed Memon, Muhammad Suleman Mohammed, Mazin Abed |
author_facet |
Lakhan, Abdullah Mastoi, Qurat-Ul-Ain Elhoseny, Mohamed Memon, Muhammad Suleman Mohammed, Mazin Abed |
author_sort |
Lakhan, Abdullah |
title |
Deep neural network-based application partitioning and scheduling for hospitals and medical enterprises using IoT assisted mobile fog cloud |
title_short |
Deep neural network-based application partitioning and scheduling for hospitals and medical enterprises using IoT assisted mobile fog cloud |
title_full |
Deep neural network-based application partitioning and scheduling for hospitals and medical enterprises using IoT assisted mobile fog cloud |
title_fullStr |
Deep neural network-based application partitioning and scheduling for hospitals and medical enterprises using IoT assisted mobile fog cloud |
title_full_unstemmed |
Deep neural network-based application partitioning and scheduling for hospitals and medical enterprises using IoT assisted mobile fog cloud |
title_sort |
deep neural network-based application partitioning and scheduling for hospitals and medical enterprises using iot assisted mobile fog cloud |
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TAYLOR & FRANCIS LTD |
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2022 |
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http://eprints.um.edu.my/41832/ |
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1781704561890689024 |
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13.211869 |