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1.
公开(公告)号:US20240155553A1
公开(公告)日:2024-05-09
申请号:US18549414
申请日:2021-03-09
Applicant: Nokia Technologies Oy
Inventor: Samad ALI , Sofonias HAILU , Satya Krishna JOSHI , Rauli Jarkko Kullervo JÄRVELÄ
IPC: H04W64/00 , H04B7/06 , H04B17/318 , H04B17/391
CPC classification number: H04W64/006 , H04B7/06956 , H04B17/328 , H04B17/3913
Abstract: Various techniques are provided for receiving, by a base station (BS) from a user equipment (UE), a communication including a feature vector, storing, by the BS, a dataset including one or more feature vectors associated with the UE, communicating, by the BS to a network device, the dataset associated with the UE, receiving, by the BS from the network device, a machine learning (ML) model, the ML model being trained, using the dataset, to detect UE orientation, and communicating, by the BS to the UE, the trained ML model.
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公开(公告)号:US20240223135A1
公开(公告)日:2024-07-04
申请号:US18556768
申请日:2022-04-25
Applicant: Nokia Technologies Oy
Inventor: Samad ALI , Oskari TERVO , Esa Tapani TIIROLA , Kari Pekka PAJUKOSKI
CPC classification number: H03F1/3247 , H04B1/0475 , H03F2200/451
Abstract: Disclosed is a method comprising selecting (401), by a base station, a power amplifier distortion model from a set of power amplifier distortion models, wherein the power amplifier distortion model comprises a pre-trained machine learning model configured to compensate power amplifier distortion. The method further comprises receiving (402), by the base station, one or more uplink data transmissions from a terminal device, and compensating (403), by the base station, at least a part of the power amplifier distortion from the one or more uplink data transmissions based at least partly on the power amplifier distortion model.
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3.
公开(公告)号:US20240028961A1
公开(公告)日:2024-01-25
申请号:US18266004
申请日:2021-01-25
Applicant: NOKIA TECHNOLOGIES OY
Inventor: Samad ALI , Anna PANTELIDOU , Rauli Jarkko Kullervo JÄRVELÄ
IPC: G06N20/00
CPC classification number: G06N20/00
Abstract: There are provided measures for enablement of federated machine learning for terminals to improve their machine learning capabilities. Such measures exemplarily comprise, at a terminal, receiving a configuration indicative of an instruction to participate in federated learning of a global machine learning model, the configuration including timing information related to said federated learning, and performing, based on said configuration, a machine learning process based on undertaken network performance related measurements, wherein said timing information includes a time limit with respect to a local machine learning model resulting from said machine learning process, and said time limit is a specification of a moment in time by when said local machine learning model is to be completed or a specification of a moment in time by when transmission of said local machine learning model is to be completed, and wherein said configuration is a minimization of drive tests configuration.
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