Chroma

Protein & Drug Discovery

Generative model for programmable protein design using diffusion modeling, equivariant graph neural networks, and conditional random fields to efficiently sample diverse all-atom structures; supports conditional generation via composable conditioners for substructure, symmetry, shape, and neural-network predictions; validated crystallographically (Generate Biomedicines, Nature 2023)

Source attribution

  • Awesome AI for Sciencegithub.com/generatebio/chroma

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