Novel QoS-Guaranteed Orchestration Scheme for Energy-Efficient Mobile Augmented Reality Applications in Multi-Access Edge Computing
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Dusit Niyato | Joohyung Lee | Hong-Shik Park | Jaewon Ahn | D. Niyato | Joohyung Lee | Hong-shik Park | Jaewon Ahn
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