A hardware slicing agent in shared O-RUs identifies uplink slices from incoming data and isolates them into slice-specific packets, achieving 2-clock-cycle processing and support for 3822 slices per slot on FPGA.
A vision of 6G wireless systems: Applications, trends, technologies, and open research problems
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An iterative robust optimization framework jointly optimizes precoding, RIS reflection, common-rate allocation, and movable antenna positions to maximize sum-rate in multi-user RSMA systems under bounded CSI uncertainty.
The paper surveys split and aggregation learning for foundation models in 6G networks to improve efficiency, resource use, and data privacy in distributed AI.
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Slice Agent: Identifying and Isolating Slices in Shared Open Radio Unit
A hardware slicing agent in shared O-RUs identifies uplink slices from incoming data and isolates them into slice-specific packets, achieving 2-clock-cycle processing and support for 3822 slices per slot on FPGA.
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Channel Uncertainty-Aware Robust Beamforming for RIS-Assisted RSMA Communication With Movable Antennas
An iterative robust optimization framework jointly optimizes precoding, RIS reflection, common-rate allocation, and movable antenna positions to maximize sum-rate in multi-user RSMA systems under bounded CSI uncertainty.
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Split and Aggregation Learning for Foundation Models Over Mobile Embodied AI Network (MEAN): A Comprehensive Survey
The paper surveys split and aggregation learning for foundation models in 6G networks to improve efficiency, resource use, and data privacy in distributed AI.