| --- |
| tags: |
| - physics |
| - simulation |
| - FEM |
| - PDE |
| - neural-operator |
| - scientific-computing |
| - domain-decomposition |
| size_categories: |
| - 100K<n<1M |
| pretty_name: SNI-Dataset |
| dataset_creators: |
| - Bosch Center for Artificial Intelligence (BCAI) |
| viewer: false |
| --- |
| |
| # SNI-Data |
|
|
| <p align="center"> |
| <img src=".huggingface/Bosch_logo.png" alt="Bosch Logo" width="200"> |
| </p> |
|
|
| <p align="center"> |
| <em>Created by <a href="https://www.bosch-ai.com/">Bosch Center for Artificial Intelligence (BCAI)</a></em> |
| <br> |
| <strong>Paper:</strong> <a href="https://arxiv.org/abs/2504.00510">Operator Learning with Domain Decomposition for Geometry Generalization in PDE Solving</a> (ICLR 2026) |
| </p> |
|
|
| A benchmark of 2D finite-element PDE solutions for training and evaluating neural operators with geometry generalization. Each sample is a complete FEM problem defined on an unstructured triangular mesh—random polygon geometry, boundary conditions (Dirichlet and/or Neumann), and optionally coefficient fields or time-stepping parameters—paired with the solved solution field $u$. |
|
|
| The dataset accompanies the **Schwarz Neural Inference (SNI)** framework, which combines local operator learning with domain decomposition methods to generalize to unseen complex geometries at inference time. |
|
|
| ## Dataset Summary |
|
|
| | Property | Value | |
| |---|---| |
| | Domain | 2D Partial Differential Equations (FEM) | |
| | Number of PDE types | 5 | |
| | Training samples | 200,000 | |
| | Test samples (simple domains) | 26,500 | |
| | Test samples (evaluation domains) | 1,330 | |
| | Total samples | ~227,830 | |
| | File format | Pickle (`.pkl`) | |
| | Mesh type | Unstructured triangular (gmsh) | |
| | Solver | FEniCSx (dolfinx) | |
|
|
| ## PDE Types |
|
|
| | PDE | Equation | Boundary Conditions | Type | |
| |---|---|---|---| |
| | `laplace2d` | $-\nabla^2 u = 0$ | Dirichlet | Stationary | |
| | `laplace2d_mixed` | $-\nabla^2 u = 0$ | Mixed Dirichlet / Neumann | Stationary | |
| | `darcy2d` | $-\nabla \cdot (a(x)\nabla u) = f(x)$ | Dirichlet | Stationary | |
| | `heat2d` | $\partial u / \partial t - \alpha \nabla^2 u = 0$ | Time-dependent Dirichlet | Transient | |
| | `nonlinear_poisson2d` | $-\nabla \cdot (q(u)\nabla u) = 0$, $q(u) = 1 + u^2$ | Dirichlet | Stationary (nonlinear) | |
|
|
| ### PDE Details |
|
|
| **Laplace (Dirichlet):** The classical Laplace equation on random polygonal domains with randomized Dirichlet boundary values at each boundary node. |
|
|
| **Laplace (Mixed):** Same equation, but the boundary is split into contiguous Dirichlet and Neumann segments. With probability 0.2 the entire boundary is Dirichlet; otherwise a random contiguous portion is assigned Neumann conditions. |
|
|
| **Darcy Flow:** A variable-coefficient elliptic PDE. The coefficient field $a(x)$ and source term $f(x)$ are independently randomized per node ($a \in [0, 1]$, $f \in [-5, 0]$). Boundary values are scaled by a random factor in $[0.3, 1.0]$. |
|
|
| **Heat Equation:** Time-dependent diffusion solved with implicit Euler. Training uses 10 time steps ($T = 0.1$, $\Delta t = 0.01$) with random thermal diffusivity $\alpha \in [0.1, 1.0]$. Evaluation uses 50 time steps ($T = 0.5$) with fixed $\alpha = 1.0$. |
|
|
| **Nonlinear Poisson:** A nonlinear PDE with solution-dependent diffusivity $q(u) = 1 + u^2$, solved via Newton's method with GMRES and BoomerAMG preconditioning. |
|
|
| ## Training Data |
|
|
| Training data is generated on **random simple polygons** with varying numbers of vertices, triangulated using gmsh. |
|
|
| | Subset | Samples | Polygons × Batch | Vertices | Mesh Size | |
| |---|---|---|---|---| |
| | `laplace2d_simple` | 20,000 | 2000 × 10 | 3–12 | 0.1 | |
| | `laplace2d_mixed_simple` | 40,000 | 2000 × 20 | 3–12 | 0.1 | |
| | `darcy2d_simple` | 40,000 | 2500 × 10 | 3–16 | 0.1 | |
| | `heat2d_simple` | 80,000 | 1600 × 50 | 3–12 | 0.1 | |
| | `nonlinear_poisson2d_simple` | 20,000 | 2000 × 10 | 3–12 | 0.1 | |
|
|
| > **Note:** Each random polygon is reused for multiple samples (the "Batch" count) with different boundary conditions and/or coefficient fields. Coordinates are shifted by $[0.5, 0.5]$ to center domains around the origin. |
|
|
| ## Test Data |
|
|
| ### Simple Domain Test Sets |
|
|
| Test data on random polygons (same generation process as training, different samples): |
|
|
| | Subset | Samples | |
| |---|---| |
| | `laplace2d_simple` | 2,500 | |
| | `laplace2d_mixed_simple` | 4,000 | |
| | `darcy2d_simple` | 2,500 | |
| | `heat2d_simple` | 12,500 | |
| | `nonlinear_poisson2d_simple` | 2,500 | |
|
|
| ### Evaluation Domain Test Sets |
|
|
| Test data on **pre-defined complex geometries** (fixed meshes), used to evaluate geometry generalization: |
|
|
| | Domain | Mesh File | Description | |
| |---|---|---| |
| | **A** (Schwarz) | `A-schwarz.msh` | Overlapping disk and rectangle | |
| | **B** (Holes) | `B-holes.msh` | Square with two interior holes | |
| | **C** (Bosch) | `C-bosch.msh` | Disk with complex shape removed | |
|
|
| Each PDE is evaluated on each domain with 100 samples (10 for `heat2d`): |
|
|
| | Subset | Domain A | Domain B | Domain C | |
| |---|---|---|---| |
| | `laplace2d` | 100 | 100 | 100 | |
| | `laplace2d_mixed` | 100 | 100 | 100 | |
| | `darcy2d` | 100 | 100 | 100 | |
| | `heat2d` | 10 | 10 | 10 | |
| | `nonlinear_poisson2d` | 100 | 100 | 100 | |
|
|
| Additional evaluation meshes (`D-dolphin.msh`, `E-disk.msh`, `F-triangle.msh`) are available for extended evaluation. |
|
|
| ## Data Format |
|
|
| All data is stored in Python pickle files (`.pkl`). Each file contains a **list of samples**. The format varies by PDE type: |
|
|
| ### Laplace2d / Laplace2d Mixed / Nonlinear Poisson2d |
|
|
| Each sample is a tuple: `(sol, [bc])` |
|
|
| | Array | Shape | Description | |
| |---|---|---| |
| | `sol` | `(N, 3)` | Solution field: `[x, y, u]` at each mesh node | |
| | `bc` | `(M, 4)` | Boundary conditions: `[x, y, value, type]` at each boundary node | |
|
|
| - `type = 0` → Dirichlet boundary condition ($u = \text{value}$) |
| - `type = 1` → Neumann boundary condition ($\partial u / \partial n = \text{value}$) |
| - For `laplace2d` and `nonlinear_poisson2d`, all boundaries are Dirichlet (`type = 0`) |
|
|
| ### Darcy2d |
|
|
| Each sample is a tuple: `(sol, [qf, bc])` |
|
|
| | Array | Shape | Description | |
| |---|---|---| |
| | `sol` | `(N, 3)` | Solution field: `[x, y, u]` | |
| | `qf` | `(N, 4)` | Coefficient and source: `[x, y, a, f]` at each mesh node | |
| | `bc` | `(M, 4)` | Boundary conditions: `[x, y, u_D, 0]` | |
|
|
| ### Heat2d |
|
|
| Each sample is a tuple: `(sol, alpha, [bc])` |
|
|
| | Array | Shape | Description | |
| |---|---|---| |
| | `sol` | `(N, 2 + T)` | Solution trajectory: `[x, y, u_0, u_1, ..., u_{T-1}]` | |
| | `alpha` | scalar | Thermal diffusivity | |
| | `bc` | `(M, 2 + T + 1)` | Boundary trajectory: `[x, y, bc_0, ..., bc_{T-1}, 0]` | |
|
|
| - Training: $T = 10$ time steps ($\Delta t = 0.01$) |
| - Evaluation: $T = 50$ time steps ($\Delta t = 0.01$) |
|
|
| ## Directory Structure |
|
|
| ``` |
| data/ |
| ├── 2d/ |
| │ ├── laplace2d_simple_20000_train.pkl |
| │ ├── laplace2d_simple_2500_test.pkl |
| │ ├── laplace2d_schwarz_100_test.pkl |
| │ ├── laplace2d_holes_100_test.pkl |
| │ ├── laplace2d_bosch_100_test.pkl |
| │ ├── laplace2d_mixed_simple_40000_train.pkl |
| │ ├── laplace2d_mixed_schwarz_100_test.pkl |
| │ ├── laplace2d_mixed_holes_100_test.pkl |
| │ ├── laplace2d_mixed_bosch_100_test.pkl |
| │ ├── darcy2d_simple_40000_train.pkl |
| │ ├── darcy2d_simple_2500_test.pkl |
| │ ├── darcy2d_schwarz_100_test.pkl |
| │ ├── darcy2d_holes_100_test.pkl |
| │ ├── darcy2d_bosch_100_test.pkl |
| │ ├── heat2d_simple_100000_train.pkl |
| │ ├── heat2d_simple_12500_test.pkl |
| │ ├── heat2d_schwarz_10_test.pkl |
| │ ├── heat2d_holes_10_test.pkl |
| │ ├── heat2d_bosch_10_test.pkl |
| │ ├── nonlinear_poisson2d_simple_20000_train.pkl |
| │ ├── nonlinear_poisson2d_simple_2500_test.pkl |
| │ ├── nonlinear_poisson2d_schwarz_100_test.pkl |
| │ ├── nonlinear_poisson2d_holes_100_test.pkl |
| └── └── nonlinear_poisson2d_bosch_100_test.pkl |
| ``` |
|
|
| ## Quick Start |
|
|
| ```python |
| import pickle |
| |
| # Load training data |
| with open("data/2d/laplace2d_simple_20000_train.pkl", "rb") as f: |
| datalist = pickle.load(f) |
| |
| # Each sample is a tuple |
| sol, (bc,) = datalist[0] |
| |
| # Solution field |
| x, y, u = sol[:, 0], sol[:, 1], sol[:, 2] # (N,) each |
| |
| # Boundary conditions |
| bx, by, bc_val, bc_type = bc[:, 0], bc[:, 1], bc[:, 2], bc[:, 3] |
| |
| print(f"Number of samples: {len(datalist)}") |
| print(f"Mesh nodes: {sol.shape[0]}, Boundary nodes: {bc.shape[0]}") |
| ``` |
|
|
| ```python |
| # Load Darcy flow data (includes coefficient field) |
| with open("data/2d/darcy2d_simple_40000_train.pkl", "rb") as f: |
| datalist = pickle.load(f) |
| |
| sol, (qf, bc) = datalist[0] |
| |
| # Coefficient field a(x) and source f(x) |
| a_coeff = qf[:, 2] # (N,) |
| f_source = qf[:, 3] # (N,) |
| ``` |
|
|
| ```python |
| # Load Heat equation data (time-dependent) |
| with open("data/2d/heat2d_simple_80000_train.pkl", "rb") as f: |
| datalist = pickle.load(f) |
| |
| sol, alpha, (bc,) = datalist[0] |
| |
| # Solution at each time step |
| x, y = sol[:, 0], sol[:, 1] |
| u_timesteps = sol[:, 2:] # (N, 10) — solution at 10 time steps |
| print(f"Thermal diffusivity: {alpha}") |
| ``` |
|
|
| ## Data Generation |
|
|
| Data is generated using [FEniCSx](https://fenicsproject.org/) (dolfinx) for the FEM solver and [gmsh](https://gmsh.info/) for mesh generation: |
|
|
| ```bash |
| # Generate training data (parallelized across processes) |
| bash scripts/generate_data.sh laplace2d train 8 |
| |
| # Generate evaluation data on pre-defined domains |
| python data_generation/generate_eval.py --pde all --domain all |
| ``` |
|
|
| See the [project repository](https://arxiv.org/abs/2504.00510) for the full training and inference pipeline. |
|
|
| ## Intended Use |
|
|
| SNI-Dataset is designed to: |
| - Train and benchmark **neural operators** for PDE solving on irregular geometries. |
| - Evaluate **geometry generalization** — training on simple random polygons, testing on complex unseen domains. |
| - Support research on **domain decomposition methods** combined with learned operators. |
| - Provide a diverse set of PDE types (elliptic, parabolic, nonlinear) with varying boundary condition types. |
|
|
| ## Citation |
|
|
| If you use SNI-Dataset in your work, please cite: |
|
|
| ```bibtex |
| @inproceedings{ |
| title={Operator Learning with Domain Decomposition for Geometry Generalization in PDE Solving}, |
| booktitle={International Conference on Learning Representations (ICLR)}, |
| year={2026}, |
| url={https://arxiv.org/abs/2504.00510} |
| } |
| ``` |