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Towards a Dynamic Future with Adaptable Computing and Network Convergence (ACNC)
March 13, 2024, 4:43 a.m. | Masoud Shokrnezhad, Hao Yu, Tarik Taleb, Richard Li, Kyunghan Lee, Jaeseung Song, Cedric Westphal
cs.LG updates on arXiv.org arxiv.org
Abstract: In the context of advancing 6G, a substantial paradigm shift is anticipated, highlighting comprehensive everything-to-everything interactions characterized by numerous connections and stringent adherence to Quality of Service/Experience (QoS/E) prerequisites. The imminent challenge stems from resource scarcity, prompting a deliberate transition to Computing-Network Convergence (CNC) as an auspicious approach for joint resource orchestration. While CNC-based mechanisms have garnered attention, their effectiveness in realizing future services, particularly in use cases like the Metaverse, may encounter limitations due …
abstract arxiv challenge computing context convergence cs.ai cs.dc cs.et cs.lg cs.ni dynamic everything experience future highlighting interactions network paradigm prompting quality service shift transition type
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