|国家预印本平台
首页|Disaggregated Deep Learning via In-Physics Computing at Radio Frequency

Disaggregated Deep Learning via In-Physics Computing at Radio Frequency

Disaggregated Deep Learning via In-Physics Computing at Radio Frequency

来源:Arxiv_logoArxiv
英文摘要

Modern edge devices, such as cameras, drones, and Internet-of-Things nodes, rely on deep learning to enable a wide range of intelligent applications, including object recognition, environment perception, and autonomous navigation. However, deploying deep learning models directly on the often resource-constrained edge devices demands significant memory footprints and computational power for real-time inference using traditional digital computing architectures. In this paper, we present WISE, a novel computing architecture for wireless edge networks designed to overcome energy constraints in deep learning inference. WISE achieves this goal through two key innovations: disaggregated model access via wireless broadcasting and in-physics computation of general complex-valued matrix-vector multiplications directly at radio frequency. Using a software-defined radio platform with wirelessly broadcast model weights over the air, we demonstrate that WISE achieves 95.7% image classification accuracy with ultra-low operation power of 6.0 fJ/MAC per client, corresponding to a computation efficiency of 165.8 TOPS/W. This approach enables energy-efficient deep learning inference on wirelessly connected edge devices, achieving more than two orders of magnitude improvement in efficiency compared to traditional digital computing.

Zhihui Gao、Sri Krishna Vadlamani、Kfir Sulimany、Dirk Englund、Tingjun Chen

无线通信无线电设备、电信设备计算技术、计算机技术

Zhihui Gao,Sri Krishna Vadlamani,Kfir Sulimany,Dirk Englund,Tingjun Chen.Disaggregated Deep Learning via In-Physics Computing at Radio Frequency[EB/OL].(2025-04-24)[2025-06-07].https://arxiv.org/abs/2504.17752.点此复制

评论