--- library_name: matgl tags: - matgl - materials-science - graph-neural-network - machine-learning-interatomic-potential - foundation-potential - mlip --- # TensorNet-PES-MatPES-r2SCAN-2025.2-m ## Introduction Pre-trained TensorNet foundation potential, i.e., universal machine learning interatomic potential trained on the MatPES-r2SCAN-2025.2 dataset. This is a medium-size TensorNet variant (~1.07M parameters; `units=128, nblocks=3`), one block deeper than the standard `materialyze/TensorNet-PES-MatPES-r2SCAN-2025.2` reference (0.84M). ## Potential [matgl](https://github.com/materialyzeai/matgl) `Potential` model (version 3). ## Usage ```python import matgl model = matgl.load_model("materialyze/TensorNet-PES-MatPES-r2SCAN-2025.2-m") ``` ## Model Details - Number of parameters: 1,067,906 ## Metrics | Split | Energy MAE (eV/atom) | Force MAE (eV/A) | Stress MAE (GPa) | |---|---:|---:|---:| | Train | 0.034200 | 0.125625 | 0.451469 | | Validation | 0.035304 | 0.155005 | 0.658389 | | Test | 0.035895 | 0.154268 | 0.667323 | ## Metadata ```json { "dataset": "MatPES-r2SCAN-2025.2", } ```