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Disaggregated machine learning via in-physics computing at radio frequency.

Publication ,  Journal Article
Gao, Z; Vadlamani, SK; Sulimany, K; Englund, D; Chen, T
Published in: Science advances
January 2026

Modern edge devices, such as cameras, drones, and internet-of-things nodes, rely on machine learning to enable a wide range of intelligent applications. However, deploying machine learning models directly on the often resource-constrained edge devices demands substantial memory footprints and computational power for real-time inference using traditional digital computing architectures. In this paper, we present WISE, computing architecture for wireless edge networks with two key innovations: disaggregated model access via over-the-air wireless broadcasting for simultaneous inference on multiple edge devices, and in-physics computation of general complex-valued matrix-vector multiplications directly at radio frequency driven by a single frequency mixer. Using a software-defined radio platform, WISE achieves 95.7% image classification accuracy (97.2% audio classification accuracy) with ultralow energy consumption of 6.0 fJ/MAC (2.8 fJ/MAC), which is more than 10× improvement compared to traditional digital computing, e.g., on modern GPUs.

Duke Scholars

Published In

Science advances

DOI

EISSN

2375-2548

ISSN

2375-2548

Publication Date

January 2026

Volume

12

Issue

2

Start / End Page

eadz0817
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Gao, Z., Vadlamani, S. K., Sulimany, K., Englund, D., & Chen, T. (2026). Disaggregated machine learning via in-physics computing at radio frequency. Science Advances, 12(2), eadz0817. https://doi.org/10.1126/sciadv.adz0817
Gao, Zhihui, Sri Krishna Vadlamani, Kfir Sulimany, Dirk Englund, and Tingjun Chen. “Disaggregated machine learning via in-physics computing at radio frequency.Science Advances 12, no. 2 (January 2026): eadz0817. https://doi.org/10.1126/sciadv.adz0817.
Gao Z, Vadlamani SK, Sulimany K, Englund D, Chen T. Disaggregated machine learning via in-physics computing at radio frequency. Science advances. 2026 Jan;12(2):eadz0817.
Gao, Zhihui, et al. “Disaggregated machine learning via in-physics computing at radio frequency.Science Advances, vol. 12, no. 2, Jan. 2026, p. eadz0817. Epmc, doi:10.1126/sciadv.adz0817.
Gao Z, Vadlamani SK, Sulimany K, Englund D, Chen T. Disaggregated machine learning via in-physics computing at radio frequency. Science advances. 2026 Jan;12(2):eadz0817.

Published In

Science advances

DOI

EISSN

2375-2548

ISSN

2375-2548

Publication Date

January 2026

Volume

12

Issue

2

Start / End Page

eadz0817