| ID | 67172 |
| FullText URL | |
| Author |
Fukushima, Yukinobu
Okayama University
Koujitani, Yuki
Okayama University
Nakane, Kazutoshi
Nagoya University
Tarutani, Yuta
Okayama University
Wu, Celimuge
The Univ. of Electro-Commun.
Ji, Yusheng
National Institute of Informatics
Murase, Tutomu
Nagoya University
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| Abstract | This paper tackles a Virtual Machine (VM) migration control problem to maximize the progress (accuracy) of information processing tasks in multi-stage information processing systems. The conventional methods for this problem (e.g., VM sweeping method and VM number averaging method) are effective only for specific situations, such as when the system load is high. In this paper, in order to achieve high accuracy in various situations, we propose a VM migration method using a Deep Reinforcement Learning (DRL) algorithm. It is difficult to directly apply a DRL algorithm to the VM migration control problem because the size of the solution space of the problem dynamically changes according to the number of VMs staying in the system while the size of the agent’s action space is fixed in DRL algorithms. Therefore, the proposed method divides the VM migration control problem into two problems: the problem of determining only the VM distribution (i.e., the proportion of the number of VMs deployed on each edge server) and the problem of determining the locations of all the VMs so that it follows the determined VM distribution. The former problem is solved by a DRL algorithm, and the latter problem is solved by a heuristic method. The simulation results confirm that our proposed method can select quasi-optimal VM locations in various situations with different link delays.
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| Keywords | Multi-stage information processing system
VM migration control
Deep reinforcement learning
Deep Deterministic Policy Gradient (DDPG)
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| Note | https://www.thinkmind.org/library/ICN/ICN_2024/icn_2024_1_30_30019.html
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| Published Date | 2024-05-26
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| Publication Title |
ICN 2024 : The Twenty-Third International Conference on Networks
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| Publisher | IARIA
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| Start Page | 13
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| End Page | 18
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| ISSN | 2308-4413
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| Content Type |
Conference Paper
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| language |
English
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| OAI-PMH Set |
岡山大学
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| Copyright Holders | Copyright (c) IARIA, 2024
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| File Version | publisher
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| Funder Name |
Japan Society for the Promotion of Science
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| 助成番号 | JP23K11065
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