RNAPro (NVIDIA, 2026)
github.com/nvidia-digital-bio/rnaproState-of-the-art RNA 3D folding model developed with Stanford Das Lab and Kaggle competition winners, featuring a 488M-parameter AF3-like architecture with MSA and template-based modeling, enabling structure-driven drug discovery and RNA therapeutics design (NVIDIA-Digital-Bio, Apache 2.0)
Sourced from
- Awesome AI for Science — github.com/nvidia-digital-bio/rnapro
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