Understanding Equivariant N Centered Representations For Atomistic Machine Learning

Let's dive into the details surrounding Equivariant N Centered Representations For Atomistic Machine Learning. Lennard-Jones Centre discussion group seminar by Jigyasa Nigam from the Swiss Federal Institute of Technology Lausanne ...

Key Takeaways about Equivariant N Centered Representations For Atomistic Machine Learning

  • Speaker: Jigyasa NIGAM (EPFL, Switzerland) Young Researchers' Workshop on
  • Speaker: Robin Walters, Northeastern University Title:
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  • Papers / Resources ▭▭▭ Fabian Fuchs Equivariance: https://fabianfuchsml.github.io/equivariance1of2/ Deep
  • Speaker: Robin WINTER (Bayer, USA) Young Researchers' Workshop on

Detailed Analysis of Equivariant N Centered Representations For Atomistic Machine Learning

Soledad Villar (Johns Hopkins) https://simons.berkeley.edu/talks/ Try datamol.io - the open source toolkit that simplifies molecular processing and featurization workflows for Link to the presentation: ...

Episode 6: In this episode, we explore ML models that have

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