zabaras / transformer-physx

Transformers for modeling physical systems
https://zabaras.github.io/transformer-physx/
MIT License
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deep-learning machine-learning physical-systems physics pytorch self-attention transformer

Transformer PhysX

PyPI version CircleCI Documentation Status Website liscense

Transformer PhysX is a Python packaged modeled after the Hugging Face repository designed for the use of transformers for modeling physical systems. Transformers have seen recent success in both natural language processing and vision fields but have yet to fully permute other machine learning areas. Originally proposed in Transformers for Modeling Physical Systems, this projects goal is to make these deep learning advances including self-attention and Koopman embeddings more accessible for the scientific machine learning community.

Documentation | Getting Started | Data

Associated Papers

Transformers for Modeling Physical Systems [ ArXiV ] [ Neural Networks ]

Colab Quick Start

Embedding Model Transformer
Lorenz Open In Colab Open In Colab
Cylinder Flow Open In Colab Open In Colab
Gray-Scott - -
Rossler Open In Colab Open In Colab

Additional Resources

Contact

Open an issue on the Github repository if you have any questions/concerns.

Citation

Find this useful or like this work? Cite us with:

@article{geneva2022transformers,
    title = {Transformers for modeling physical systems},
    author = {Nicholas Geneva and Nicholas Zabaras},
    journal = {Neural Networks},
    volume = {146},
    pages = {272-289},
    year = {2022},
    issn = {0893-6080},
    doi = {10.1016/j.neunet.2021.11.022},
    url = {https://www.sciencedirect.com/science/article/pii/S0893608021004500}
}