--- license: mit --- # muTransfer-FNO Dataset Benchmark datasets for [**Maximal Update Parametrization and Zero-Shot Hyperparameter Transfer for Fourier Neural Operators**](https://openreview.net/forum?id=fHt4Nau7FW) (ICML 2025). **Code:** [https://github.com/LithiumDA/muTransfer-FNO](https://github.com/LithiumDA/muTransfer-FNO) Contains data for three PDE problems: Navier-Stokes, Burgers' equation, and Darcy Flow. ## File Structure ``` ├── ns/ │ ├── get_full_data.py # Script to combine NS parts │ ├── ns_part_01.npy # Navier-Stokes samples 0–99 │ ├── ns_part_02.npy # Navier-Stokes samples 100–199 │ └── ns_part_03.npy # Navier-Stokes samples 200–299 ├── burgers/ │ └── burgers_data_R10.mat # Burgers' equation (R=10) └── darcy/ ├── piececonst_r421_N1024_smooth1.mat # Darcy Flow dataset 1 └── piececonst_r421_N1024_smooth2.mat # Darcy Flow dataset 2 ``` ## Datasets ### Navier-Stokes (Re=500, T=300) 300 time steps of a high-resolution 3D Navier-Stokes simulation at Reynolds number 500. Split into three `.npy` files (NumPy binary format), each containing a contiguous slice along the time dimension. ### Burgers' Equation Burgers' equation dataset at resolution 8192 with viscosity 1e-1 (R=10). Stored as a MATLAB `.mat` file. ### Darcy Flow Darcy Flow equation datasets on a 421x421 grid with 1024 samples each. Two variants with different coefficient smoothness levels. Stored as MATLAB `.mat` files. ## Usage ```python # Navier-Stokes import numpy as np ns_data = np.load("ns/ns_part_01.npy") # Burgers / Darcy import scipy.io burgers = scipy.io.loadmat("burgers/burgers_data_R10.mat") darcy = scipy.io.loadmat("darcy/piececonst_r421_N1024_smooth1.mat") ``` ## Citation ```bibtex @inproceedings{li2025maximal, title={Maximal Update Parametrization and Zero-Shot Hyperparameter Transfer for Fourier Neural Operators}, author={Li, Shanda and Maddox, Wesley J}, booktitle={International Conference on Machine Learning (ICML)}, year={2025} } ```