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Modelforge Roadmap

Marcus Wieder edited this page Oct 9, 2024 · 10 revisions

Roadmap

Current status (September 2024)

We set out to implement reference datasets and neural network potentials to provide a framework to assess the performance of the potentials within the same framework.

Reference implementations

  • Datasets: SPICE1, SPICE2, ANI2x, ANI1x, QM9, PHALKETHOH
  • Potentials: ANI2x, AimNet2, PhysNet, SchNet, PaiNN, SAKE, TensorNet
  • Training routines: Training based on energies, forces, dipole moment, energy decomposition ($E_{\text{short}}$ + $E_{\text{elec}}$)

Trained models

  • Base line models: Reference models trained on PHALKETHOH and SPICE2 dataset

To come

Q4 2024

  • Add models based on alternative representations (Bessel functions, Spherical harmonics): DimNet++, So3krates
  • develop API for openMM