Machine learning-based solutions for resource management in fog computing

被引:11
|
作者
Fahimullah, Muhammad [1 ]
Ahvar, Shohreh [2 ]
Agarwal, Mihir [1 ]
Trocan, Maria [1 ]
机构
[1] Inst Super Elect Paris ISEP, Paris, France
[2] Nokia, F-91620 Nozay, France
关键词
Fog computing; Resource management; Machine learning; Resource provisioning; Application placement; Scheduling; Resource allocation; Task offloading; Load balancing; ARCHITECTURES; NETWORK;
D O I
10.1007/s11042-023-16399-2
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Fog computing is a paradigm that offers distributed and diverse resources at the network edge to fulfill the quality of service requirements. However, effectively managing these resources has become a significant challenge due to the dynamic nature of user demands and the distributed and heterogeneous characteristics of fog computing. Consequently, managing resources based on accurately predicting dynamic user demands and resource availability using machine-learning methods becomes demanding. In this study, we conduct a comprehensive analysis of existing literature that leverages machine learning-based approaches to address resource management challenges in fog computing. These challenges encompass resource provisioning, application placement, scheduling, resource allocation, task offloading, and load balancing. The examined literature is thoroughly compared based on their employed strategies, objective metrics, tools, datasets, and techniques. Furthermore, we identify research gaps in resource management issues and propose future directions for advancing the field.
引用
收藏
页码:23019 / 23045
页数:27
相关论文
共 50 条
  • [11] Experimentation Scenarios for Machine Learning-Based Resource Management
    Kostopoulos, Alexandros
    Chochliouros, Ioannis P.
    Vardakas, John
    Payaro, Miquel
    Barrachina, Sergio
    Rahman, Md Arifur
    Vinogradov, Evgenii
    Chanclou, Philippe
    Gonzalez, Roberto
    Klitis, Charalambos
    di Vimercati, Sabrina De Capitani
    Soumplis, Polyzois
    Varvarigos, Emmanuel
    Kritharidis, Dimitrios
    Chartsias, Kostas
    ARTIFICIAL INTELLIGENCE APPLICATIONS AND INNOVATIONS. AIAI 2022 IFIP WG 12.5 INTERNATIONAL WORKSHOPS, 2022, 652 : 120 - 133
  • [12] Poster Abstract: Deep Reinforcement Learning-based Resource Allocation in Vehicular Fog Computing
    Lee, Seung-seob
    Lee, Sukyoung
    IEEE CONFERENCE ON COMPUTER COMMUNICATIONS WORKSHOPS (IEEE INFOCOM 2019 WKSHPS), 2019, : 1029 - 1030
  • [13] Optimized Machine Learning-Based Intrusion Detection System for Fog and Edge Computing Environment
    Alzubi, Omar A.
    Alzubi, Jafar A.
    Alazab, Moutaz
    Alrabea, Adnan
    Awajan, Albara
    Qiqieh, Issa
    ELECTRONICS, 2022, 11 (19)
  • [14] Deep reinforcement learning-based optimal deployment of IoT machine learning jobs in fog computing architecture
    Bushehrian, Omid
    Moazeni, Amir
    COMPUTING, 2025, 107 (01)
  • [15] Contract-Based Computing Resource Management via Deep Reinforcement Learning in Vehicular Fog Computing
    Zhao, Junhui
    Kong, Ming
    Li, Qiuping
    Sun, Xiaoke
    IEEE ACCESS, 2020, 8 : 3319 - 3329
  • [16] An intelligent resource management method in SDN based fog computing using reinforcement learning
    Anoushee, Milad
    Fartash, Mehdi
    Torkestani, Javad Akbari
    COMPUTING, 2024, 106 (04) : 1051 - 1080
  • [17] An intelligent resource management method in SDN based fog computing using reinforcement learning
    Milad Anoushee
    Mehdi Fartash
    Javad Akbari Torkestani
    Computing, 2024, 106 : 1051 - 1080
  • [18] Machine learning-Based traffic offloading in fog networks
    Zaharia, George-Eduard
    Sosea, Tiberiu-Alex-Irinel
    Ciobanu, Radu-Ioan
    Dobre, Ciprian
    SIMULATION MODELLING PRACTICE AND THEORY, 2020, 101
  • [19] A Machine-Learning Based Time Constrained Resource Allocation Scheme for Vehicular Fog Computing
    Xiaosha Chen
    Supeng Leng
    Ke Zhang
    Kai Xiong
    中国通信, 2019, 16 (11) : 29 - 41
  • [20] A Machine-Learning Based Time Constrained Resource Allocation Scheme for Vehicular Fog Computing
    Chen, Xiaosha
    Leng, Supeng
    Zhang, Ke
    Xiong, Kai
    CHINA COMMUNICATIONS, 2019, 16 (11) : 29 - 41