NVIDIA ALCHEMI Toolkit

Materials Discovery

Developer toolkit for accelerating training and inference for AI in chemistry and material science, providing optimized GPU-accelerated workflows for molecular and materials machine learning (NVIDIA, 2026)

Source attribution

  • Awesome AI for Sciencegithub.com/nvidia/nvalchemi-toolkit

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