JARVIS

Materials Discovery

NIST's open-source platform for data-driven atomistic materials design, integrating DFT datasets (JARVIS-DFT), machine learning property prediction (JARVIS-ML), and a comprehensive leaderboard for benchmarking materials AI methods across the periodic table (384+ stars)

Source attribution

  • Awesome Python Chemistrygithub.com/usnistgov/jarvis
  • Awesome AI for Sciencegithub.com/usnistgov/jarvis

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