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Project B07: Automated model building and representation learning for multiscale simulations

Project B7 addresses applications of machine learning techniques to multi-scale simulation of soft-matter systems. Multi-scale methods address the problem that the complexity of...

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  • Projects - B: Particle based coarse-graining and mixed resolution schemes
    • Project B07: Automated model building and representation learning for multiscale simulations
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  • TRR 146:... - 1

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  • Project B07:... - 1
  • Projects - B:... - 1

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  • deep learning - 1
  • equivariance - 1
  • graph neural networks - 1
  • local frames - 1
  • polarizability - 1

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1 dataset found

Formats: link Tags: polarizability

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  • Graph Neural Networks with Local Frames (Paper)

    The paper describes a graph neural network architecture that uses local frames to predict local geometric properties..
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    Uni Mainz
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