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CTF4Nuclear — Molten Salt Fast Reactor (MSFR) benchmark
A spatio-temporal benchmark for reduced-order and surrogate modelling of Molten Salt Fast Reactor (MSFR) multiphysics simulations. The dataset consists of snapshot matrices from coupled neutronics + thermal-hydraulics simulations on a 2D axial-symmetric slice of the EVOL MSFR geometry, discretised on a 3 880-node mesh. Each snapshot is a state vector of length 19 400 = 5 fields × 3 880 nodes, with the fields concatenated in the order
[qPrompt, qDecay, T, Ux, Uz] # prompt power, decay power, temperature, two velocity components
Snapshots are saved every Δt = 0.05 s of simulated physical time.
This dataset is the public training-and-config component of the
CTF4Nuclear Common Task Framework. The accompanying test sets are
held out and used to score submissions to the public leaderboard at
huggingface.co/spaces/ctf4science/ctf4nuclear-msfr-leaderboard.
Quick start
from huggingface_hub import snapshot_download
# 1. Download into the layout the ctf4science loader expects
snapshot_download(
repo_id="ctf4science/ctf4nuclear-msfr",
repo_type="dataset",
local_dir="ctf4science/data/msfr",
)
# 2. Load any of the 9 evaluation pairs
from ctf4science.data_module import load_dataset
train_list, init_data = load_dataset("msfr", pair_id=1, transpose=True)
The ctf4science Python package is open source at
github.com/CTF-for-Science/ctf4science.
A ready-to-run Baseline Last notebook is provided in the leaderboard
repo under
baselines/baseline_last.ipynb.
Files
| File | Shape | Used in (pairs / metrics) |
|---|---|---|
train/X1train.npz |
2000 × 19400 | pair 1 (E1, E2) |
train/X2train.npz |
2000 × 19400 | pair 2 (E3), pair 3 (E4) |
train/X3train.npz |
2000 × 19400 | pair 4 (E5), pair 5 (E6) |
train/X4train.npz |
500 × 19400 | pair 6 (E7, E8) |
train/X5train.npz |
500 × 19400 | pair 7 (E9, E10) |
train/X6train.npz |
1500 × 19400 | pair 8, pair 9 (parametric) |
train/X7train.npz |
1500 × 19400 | pair 8, pair 9 (parametric) |
train/X8train.npz |
1500 × 19400 | pair 8 (parametric) |
train/X9train.npz |
500 × 19400 | pair 8 (initialization for E11) |
train/X10train.npz |
1500 × 19400 | pair 9 (parametric) |
train/X11train.npz |
500 × 19400 | pair 9 (initialization for E12) |
nodes.npy |
3880 × 2 | (x, z) mesh coordinates in metres |
msfr.yaml |
— | benchmark configuration (pairs, metrics, matrix metadata) |
croissant.json |
— | Croissant 1.0 RAI metadata |
Each .npz stores a single float32 array under key X with shape
(n_timesteps, 19400). The held-out test files X1test.npz–X9test.npz
referenced in msfr.yaml are not released — they are used by the
leaderboard's scoring backend only.
Evaluation pairs and metrics
The benchmark defines 9 evaluation pairs producing 12 metric scores (E1–E12) across three task families:
| Task family | Metrics | Description |
|---|---|---|
| Short-time forecasting | E1, E7, E9, E11, E12 | Relative L2 error over the first k = 20 forecast steps |
| Long-time forecasting | E2, E4, E6, E8, E10 | Spectral L2 error on the last k = 200 steps (100 Fourier modes) |
| Reconstruction (denoising) | E3, E5 | Relative L2 error over the full denoised trajectory |
The composite score is the mean of E1–E12, with each metric clipped to
[−100, 100]. See the ctf4science documentation
for the formal definitions.
Data generation
Trajectories were produced by the msfrPimpleFoam OpenFOAM v2312 solver
(Aufiero et al., 2014) on the EVOL MSFR geometry (Brovchenko et al.,
2013). Four simulations span a 1D sweep of the momentum-source base
level (pump velocity) from 10 to 15. The solver couples
RANS computational fluid dynamics (realisable k–ε) with multi-group
diffusion neutronics. All fields are z-score normalised per field with
global standard deviations (means and std are available from the
dataset authors).
Citation
@misc{riva2026msfr,
title = {A spatio-temporal benchmark for reduced-order and surrogate
modelling of Molten Salt Fast Reactor (MSFR) multiphysics
simulations},
author = {Riva, Stefano and Introini, Carolina and Cammi, Antonio},
year = {2026},
url = {https://huggingface.co/datasets/ctf4science/ctf4nuclear-msfr},
}
@article{aufiero2014openfoam,
title = {Development of an OpenFOAM model for the Molten Salt Fast
Reactor transient analysis},
author = {Aufiero, Manuele and Cammi, Antonio and Geoffroy, Olivier
and Losa, Mario and Luzzi, Lelio and Ricotti, Marco E. and
Rouch, Herv\'e},
journal = {Chemical Engineering Science},
volume = {111},
pages = {390--401},
year = {2014},
doi = {10.1016/j.ces.2014.03.003},
}
@misc{brovchenko2013evol,
title = {Optimization of the pre-conceptual design of the MSFR},
author = {Brovchenko, Mariya and Merle Lucotte, Elsa and Rouch, Herv\'e
and others},
year = {2013},
url = {https://www.janleenkloosterman.nl/reports/evol_d22_201309.pdf},
}
License
Creative Commons Attribution-NonCommercial 4.0 International (CC BY-NC 4.0).
Mirrors
- Hugging Face (this repo) — primary, fastest for
snapshot_download - Open Science Framework — original distribution, full tarball
Contact
Stefano Riva — stefano.riva@autodesk.com
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