그림 1 3GPP NR URLLC 관련 표준화 일정
그림 2 기계학습과 URLLC 간 개념도
References
- 5G America Whitepaper, New Services and Applications with 5G Ultra-Reliable Low Latency Communications , Nov. 2018.
- 3GPP TR 38.913, Study on Scenarios and Requirements for Next Generation Access Technologies , 2018.
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- IEEE Standards, "P1918.1 - Tactile Internet: Applications Scenarios, Definitions and Terminology, Architecture, Functions, and Technical Assumptions." https://standards.ieee.org/develop/project/1918.1.html
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- ITU-T E.800, Definitions of Terms Related to Quality of Service , Sept. 2008.
- H.B. McMahan, E. Moore, D. Ramage, S. Hampson, B.A. Arcas, "Communication Efficient LEARNING of Deep Networks from Decentralized Data," in Proc. Int. Artifical Intell. Statistics(AISTATS), Fort Lauderdale, FL, USA, Apr. 2017, pp. 1-10.
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