MatterGen

github.com/microsoft/mattergen
Active1.7Kupdated 1 month ago
Python
MIT

Diffusion-based generative model for inorganic materials design, steering generation by chemistry, symmetry, bulk modulus, band gap, or magnetic properties, 2× more likely to produce stable novel structures than prior methods, experimentally validated with synthesized TaCr₂O₆ (Microsoft, Nature 2025)

Sourced from

  • Awesome AI for Sciencegithub.com/microsoft/mattergen
  • GitHubgithub.com/microsoft/mattergen

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