Analog RF computing performs neural network matrix-vector multiplications via RF waveform mixing at clients in MU-MIMO systems, reducing energy consumption by nearly two orders of magnitude compared to digital computing.
Implementing neural net- works over-the-air via reconfigurable intelligent surfaces,
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Analog RF Computing: A New Paradigm for Energy-Efficient Edge AI Over MU-MIMO Systems
Analog RF computing performs neural network matrix-vector multiplications via RF waveform mixing at clients in MU-MIMO systems, reducing energy consumption by nearly two orders of magnitude compared to digital computing.