Real-Time MU-MIMO Beamforming With Limited Channel Samples in 5G Networks

Shaoran Li, Nan Jiang, Chengzhang Li, Shiva Acharya, Yubo Wu, Weijun Xie, Wenjing Lou, Y. Thomas Hou

Published: 01 Dec 2025, Last Modified: 24 Mar 2026IEEE Transactions on Mobile ComputingEveryoneRevisionsCC BY-SA 4.0
Abstract: MU-MIMO beamforming is a key technology for 5G networks, relying on Channel State Information (CSI). However, in practice, the estimated CSI in reality is prone to uncertainty. Further, a MU-MIMO beamforming solution must be derived within a millisecond to be useful for real-time 5G applications. We present ReDBeam—a real-time data-driven beamforming solution for MU-MIMO using limited CSI data samples. The main novelties of ReDBeam are a parallel algorithm and an optimized GPU implementation. ReDBeam delivers a MU-MIMO beamforming solution within 1 millisecond to meet the probabilistic data rate requirements from the users, and minimize a base station’s power consumption. Through extensive experiments, we show that ReDBeam consistently meets the stringent 1-millisecond real-time requirement and is orders of magnitude faster than other state-of-the-art algorithms. ReDBeam conclusively demonstrates that MU-MIMO beamforming with data rate requirements can be achieved in real-time using only limited CSI data samples.
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