license: mit
Dataset Card — GenAI Channel Modeling Datasets
Ray-traced site-specific MIMO channel datasets used in the paper:
Site-Specific MIMO Channel Generation via Diffusion and Flow Matching: Fidelity, Efficiency, and Downstream Utility
Sina Beyraghi, Masoud Sadeghian, Firdous Bin Ismail, Angel Lozano, Paul Almasan, and Giovanni Geraci
[arXiv:2510.10190]
Files
| File | Frequency | Scenario | Size |
|---|---|---|---|
Final_Single_Scene_Channel_Sionna_V1_3_5GHz_LoS.npz |
3.5 GHz | LoS only | — |
Final_Single_Scene_Channel_Sionna_V1_3_5GHz_NLoS.npz |
3.5 GHz | NLoS only | — |
Final_Single_Scene_Channel_Sionna_V1_28GHz_LoS.npz |
28 GHz | LoS only | — |
Data format
Each .npz file contains a single array under the key combined_array:
shape: (N, N_rx, 1, N_tx, 1, 1, 4)
dtype: complex64
last dimension:
[0] — complex channel coefficient H
[1] — UE x-coordinate (metres)
[2] — UE y-coordinate (metres)
[3] — UE z-coordinate (metres)
To extract the channel matrix and UE coordinates from a file:
import numpy as np
npz = np.load("Final_Single_Scene_Channel_Sionna_V1_3_5GHz_LoS.npz")
data = npz["combined_array"][:, :, 0, :, 0, 0, :] # (N, N_rx, N_tx, 4)
H = data[:, :, :, 0] # complex channel matrices, shape (N, N_rx, N_tx)
coords = data[:, 0, 0, 1:] # UE (x, y, z) positions, shape (N, 3)
Generation
The datasets were generated with NVIDIA Sionna RT, a GPU-accelerated ray tracing engine for wireless channel simulation, over a single outdoor urban scene. Generation scripts and instructions are available in the code repository.
Downloading
git clone https://huggingface.co/datasets/PaulAlm/GenAI_Channel_Modeling_Datasets
Due to file size this may take several minutes. Individual files can also be downloaded manually from the Hugging Face web interface.
Related resources
- Code repository: GenAI_Channel_Modeling
- Pre-trained models: GenAI_Channel_Modeling_Models
Citation
@article{beyraghi2025sitespecific,
title = {Site-Specific MIMO Channel Generation via Diffusion and Flow Matching:
Fidelity, Efficiency, and Downstream Utility},
author = {Beyraghi, Sina and Sadeghian, Masoud and Bin Ismail, Firdous and
Lozano, Angel and Almasan, Paul and Geraci, Giovanni},
journal = {arXiv preprint arXiv:2510.10190},
year = {2025}
}