NVlabs/neural_rx
Real-Time Inference of 5G NR Multi-user MIMO Neural Receivers
This tool helps telecommunications engineers and researchers design, train, and evaluate advanced 5G New Radio (NR) receivers that utilize neural networks. It takes 5G NR uplink channel data, processes it through a neural receiver, and outputs improved data reception and performance metrics. This is ideal for those working on optimizing 5G base station performance.
Use this if you need to develop and test 5G NR multi-user MIMO receivers that can perform channel estimation, equalization, and demapping in real-time with high efficiency.
Not ideal if you are looking for a complete, pre-configured hardware-based 5G Radio Access Network (RAN) solution for immediate deployment.
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Last pushed
Dec 11, 2025
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