--- license: cc-by-4.0 tags: - physics - pde - neural-operator - fluid-dynamics - combustion - benchmark datasets: - AI4Science-WestlakeU/RealPDEBench --- # RealPDEBench Model Checkpoints Trained model checkpoints for [RealPDEBench](https://github.com/AI4Science-WestlakeU/RealPDEBench), a benchmark for evaluating neural PDE solvers on real-world experimental data. ## Models (10 architectures) | Model | Type | File Size (per checkpoint) | |-------|------|---------------------------| | DPOT-L | Transformer | 2.5-2.6 GB | | FNO | Spectral | 385M-2.1G | | Galerkin Transformer | Transformer | 386-642M | | WDNO | Diffusion | 351M-1.4G | | DPOT-S | Transformer | 118-159M | | U-Net | CNN | 88-89M | | CNO | Hybrid | 31M | | MWT | Wavelet | 22M | | Transolver | Transformer | 17M | | DeepONet | Neural Operator | 14M | ## Scenarios (5) | Scenario | Description | |----------|-------------| | `cylinder` | Flow past a circular cylinder | | `controlled_cylinder` | Actively controlled cylinder flow | | `fsi` | Fluid-structure interaction | | `foil` | Flow past an airfoil | | `combustion` | Turbulent combustion | ## Training Paradigms | File | Paradigm | |------|----------| | `numerical.pth` | Trained on numerical simulation data only | | `real.pth` | Trained on real experimental data only | | `finetune.pth` | Pretrained on numerical, finetuned on real | | `numerical_base_for_finetune.pth` | Numerical pretrain base (DPOT-S/L only) | ## Directory Structure ``` {scenario}/{model}/{paradigm}.pth configs/{scenario}/{model}.yaml ``` Example: `cylinder/fno/finetune.pth` + `configs/cylinder/fno.yaml` ## Quick Start ### Install ```bash git clone https://github.com/AI4Science-WestlakeU/RealPDEBench.git cd RealPDEBench && pip install -e . ``` ### Download a Single Checkpoint ```python from huggingface_hub import hf_hub_download path = hf_hub_download( repo_id="AI4Science-WestlakeU/RealPDEBench-models", filename="cylinder/fno/finetune.pth", ) ``` ### Download All Checkpoints for a Scenario ```python from huggingface_hub import snapshot_download snapshot_download( repo_id="AI4Science-WestlakeU/RealPDEBench-models", allow_patterns="cylinder/**", local_dir="./checkpoints", ) ``` ### Evaluate ```bash python eval.py --config configs/cylinder/fno.yaml \ --checkpoint_path ./checkpoints/cylinder/fno/finetune.pth \ --dataset_type real --test_mode all ``` ## Checkpoint Format ```python checkpoint = torch.load("cylinder/fno/finetune.pth") # Keys: model_state_dict, train_losses, val_losses, # iteration, best_iteration, best_val_loss ``` ## DPOT Pretrained Weights DPOT models require pretrained backbone weights (**not included here**). Download via: ```bash # Option 1: Built-in download script python -m realpdebench.utils.dpot_ckpts_dl # Option 2: From HuggingFace directly # https://huggingface.co/hzk17/DPOT ``` ## Dataset The corresponding dataset is hosted at: [AI4Science-WestlakeU/RealPDEBench](https://huggingface.co/datasets/AI4Science-WestlakeU/RealPDEBench) ## Citation If you find our work and/or our code useful, please cite us via: ```bibtex @misc{hu2026realpdebenchbenchmarkcomplexphysical, title={RealPDEBench: A Benchmark for Complex Physical Systems with Real-World Data}, author={Peiyan Hu and Haodong Feng and Hongyuan Liu and Tongtong Yan and Wenhao Deng and Tianrun Gao and Rong Zheng and Haoren Zheng and Chenglei Yu and Chuanrui Wang and Kaiwen Li and Zhi-Ming Ma and Dezhi Zhou and Xingcai Lu and Dixia Fan and Tailin Wu}, year={2026}, eprint={2601.01829}, archivePrefix={arXiv}, primaryClass={cs.LG}, url={https://arxiv.org/abs/2601.01829}, } ``` ## License CC BY 4.0