Researcher:
Gill, Waris

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PhD Student

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Waris

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Gill

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Gill, Waris

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Now showing 1 - 2 of 2
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    Publication
    Intelligent edge computing: state-of-the-art techniques and applications
    (Institute of Electrical and Electronics Engineers Inc., 2020) Department of Computer Engineering; Department of Computer Engineering; N/A; Gürsoy, Attila; Özkasap, Öznur; Gill, Waris; Faculty Member; Faculty Member; PhD Student; Department of Computer Engineering; College of Engineering; College of Engineering; Graduate School of Sciences and Engineering; 8745; 113507; N/A
    To enable intelligent decisions at the network edge, supervised and unsupervised machine learning techniques and their variations are highly utilized in recent research studies. These include techniques and the corresponding applications such as detecting manufacturing faults in a smart factory setting, monitoring patient activities and health problems in smart health systems, detecting security attacks on the Internet of Things devices, and finding the rare events in the audio signals. In this paper, we present an extensive review of state-of-the-art techniques and applications of intelligent edge computing and provide classification and discussion of various approaches in this field.
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    Publication
    Intelligent edge computing: state-of-the-art techniques and applications
    (IEEE, 2020) N/A; Department of Computer Engineering; Department of Computer Engineering; Gill, Waris; Özkasap, Öznur; Gürsoy, Attila; Master Student; Faculty Member; Faculty Member; Department of Computer Engineering; N/A; College of Engineering; College of Engineering; N/A; 113507; 8745
    To enable intelligent decisions at the network edge, supervised and unsupervised machine learning techniques and their variations are highly utilized in recent research studies. These include techniques and the corresponding applications such as detecting manufacturing faults in a smart factory setting, monitoring patient activities and health problems in smart health systems, detecting security attacks on the Internet of Things devices, and finding the rare events in the audio signals. In this paper, we present an extensive review of state-of-the-art techniques and applications of intelligent edge computing and provide classification and discussion of various approaches in this field.