Deep reinforcement learning based resource allocation strategy in cloud-edge computing system

A lot of real time processing as well as resourceintensive apps is what is needed more and thus, cloud-edge computing systems require compelling resource allocation schemes. This research focuses on the utility of Multiagent Learning framework with Deep Reinforcement Learning (MAL-DRL) which is...

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Main Authors: Ahmed Adhoni, Zameer, Habelalmateen, Mohammed I, D R, Janardhana, Abdul Sattar, Khalid Nazim, Audah, Lukman
Format: Conference or Workshop Item
Language:English
Published: 2024
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Online Access:http://eprints.uthm.edu.my/11924/1/P17003_0e3c560e211e3d06995d79b44427688c.pdf
http://eprints.uthm.edu.my/11924/
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spelling my.uthm.eprints.119242025-01-09T06:57:53Z http://eprints.uthm.edu.my/11924/ Deep reinforcement learning based resource allocation strategy in cloud-edge computing system Ahmed Adhoni, Zameer Habelalmateen, Mohammed I D R, Janardhana Abdul Sattar, Khalid Nazim Audah, Lukman T Technology (General) A lot of real time processing as well as resourceintensive apps is what is needed more and thus, cloud-edge computing systems require compelling resource allocation schemes. This research focuses on the utility of Multiagent Learning framework with Deep Reinforcement Learning (MAL-DRL) which is used for solution deployment concerning resource allocation in such systems, such that the end user enjoys optimization while operators optimize resource utilization. In this work, the research focus on the simulation testing of the MAL-DRL algorithm against classical Random Allocation (RA) and singe agent DRL methods. This exhibition shows that MAL-DRL improves the average latency more (44% savings) and at the same time more resources are used (35% increase) compared both the alternatives with a combined reward measure score of 0.80. These results show that distributed decision-making and learning styles of MAL-DRL brings together faster resource allocation which can be interpreted as a reduction of users’ delay experience and therefore lead to better performance of whole system. Although the article limits simulations in areas to be covered and complexity in training, it brings the prospective benefits of MAL-DRL in the management of cloud-edge resources on the spot. In the course of this undertake, the effect of ensuring communication goals, moving learning strategies, and security measures for the ultimate goal of boosting this method's applicability in real-world antics can be explored. 2024-03-15 Conference or Workshop Item PeerReviewed text en http://eprints.uthm.edu.my/11924/1/P17003_0e3c560e211e3d06995d79b44427688c.pdf Ahmed Adhoni, Zameer and Habelalmateen, Mohammed I and D R, Janardhana and Abdul Sattar, Khalid Nazim and Audah, Lukman (2024) Deep reinforcement learning based resource allocation strategy in cloud-edge computing system. In: 2024 International Conference on Distributed Computing and Optimization Techniques (ICDCOT). 0.1109/ICDCOT61034.2024.10515480
institution Universiti Tun Hussein Onn Malaysia
building UTHM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tun Hussein Onn Malaysia
content_source UTHM Institutional Repository
url_provider http://eprints.uthm.edu.my/
language English
topic T Technology (General)
spellingShingle T Technology (General)
Ahmed Adhoni, Zameer
Habelalmateen, Mohammed I
D R, Janardhana
Abdul Sattar, Khalid Nazim
Audah, Lukman
Deep reinforcement learning based resource allocation strategy in cloud-edge computing system
description A lot of real time processing as well as resourceintensive apps is what is needed more and thus, cloud-edge computing systems require compelling resource allocation schemes. This research focuses on the utility of Multiagent Learning framework with Deep Reinforcement Learning (MAL-DRL) which is used for solution deployment concerning resource allocation in such systems, such that the end user enjoys optimization while operators optimize resource utilization. In this work, the research focus on the simulation testing of the MAL-DRL algorithm against classical Random Allocation (RA) and singe agent DRL methods. This exhibition shows that MAL-DRL improves the average latency more (44% savings) and at the same time more resources are used (35% increase) compared both the alternatives with a combined reward measure score of 0.80. These results show that distributed decision-making and learning styles of MAL-DRL brings together faster resource allocation which can be interpreted as a reduction of users’ delay experience and therefore lead to better performance of whole system. Although the article limits simulations in areas to be covered and complexity in training, it brings the prospective benefits of MAL-DRL in the management of cloud-edge resources on the spot. In the course of this undertake, the effect of ensuring communication goals, moving learning strategies, and security measures for the ultimate goal of boosting this method's applicability in real-world antics can be explored.
format Conference or Workshop Item
author Ahmed Adhoni, Zameer
Habelalmateen, Mohammed I
D R, Janardhana
Abdul Sattar, Khalid Nazim
Audah, Lukman
author_facet Ahmed Adhoni, Zameer
Habelalmateen, Mohammed I
D R, Janardhana
Abdul Sattar, Khalid Nazim
Audah, Lukman
author_sort Ahmed Adhoni, Zameer
title Deep reinforcement learning based resource allocation strategy in cloud-edge computing system
title_short Deep reinforcement learning based resource allocation strategy in cloud-edge computing system
title_full Deep reinforcement learning based resource allocation strategy in cloud-edge computing system
title_fullStr Deep reinforcement learning based resource allocation strategy in cloud-edge computing system
title_full_unstemmed Deep reinforcement learning based resource allocation strategy in cloud-edge computing system
title_sort deep reinforcement learning based resource allocation strategy in cloud-edge computing system
publishDate 2024
url http://eprints.uthm.edu.my/11924/1/P17003_0e3c560e211e3d06995d79b44427688c.pdf
http://eprints.uthm.edu.my/11924/
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score 13.226497