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Runtime Management of Artificial Intelligence Applications for Smart Eyewears

Published: 04 April 2024 Publication History
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  • Abstract

    Artificial Intelligence (AI) applications are gaining popularity as they seamlessly integrate into end-user devices, enhancing the quality of life. In recent years, there has been a growing focus on designing Smart Eye-Wear (SEW) that can optimize user experiences based on specific usage domains. However, SEWs face limitations in computational capacity and battery life. This paper investigates SEW and proposes an algorithm to minimize energy consumption and 5G connection costs while ensuring high Quality-of-Experience. To achieve this, a management software, based on Q-learning, offloads some Deep Neural Network (DNN) computations to the user's smartphone and/or the cloud, leveraging the possibility to partition the DNNs. Performance evaluation considers variability in 5G and WiFi bandwidth as well as in the cloud latency. Results indicate execution time violations below 14%, demonstrating that the approach is promising for efficient resource allocation and user satisfaction.

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            cover image ACM Conferences
            UCC '23: Proceedings of the IEEE/ACM 16th International Conference on Utility and Cloud Computing
            December 2023
            502 pages
            ISBN:9798400702341
            DOI:10.1145/3603166
            This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivs International 4.0 License.

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            New York, NY, United States

            Publication History

            Published: 04 April 2024

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            Author Tags

            1. smart glasses
            2. smart eye-wear
            3. reinforcement learning
            4. edge computing
            5. task offloading

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            • EssilorLuxottica Smart Eyewear Lab

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            Overall Acceptance Rate 38 of 125 submissions, 30%

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            UCC '24
            2024 IEEE/ACM 17th International Conference on Utility and Cloud Computing
            December 16 - 19, 2024
            Sharjah , United Arab Emirates

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