Jan Hermann
jan.hermann.name
Jan Hermann
@jan.hermann.name
Computational chemistry & physics, electrons, deep learning 🚲☕️♟️ Microsoft Research AI for Science · https://jan.hermann.name
Which data? Trained on ~150k high-accuracy reaction energies, incl. 80k atomization energies, Skala hits an unprecedented 1.06 kcal/mol on atomization energies on W4-17. On GMTKN55 it reaches 3.89 WTMAD-2, matching SOTA hybrid functionals at the cost of semi-local DFT
June 18, 2025 at 11:24 AM
What makes Skala different? Skala is a deep-learning based XC functional that bypasses expensive hand-designed nonlocal features typically used to achieve higher accuracy, by learning nonlocal representations directly from an unprecedented amount of high-accuracy data
June 18, 2025 at 11:24 AM
How is DFT done today? Existing XC functionals rely on hand-crafted features from Jacob’s ladder 🪜 that trade accuracy for efficiency. Yet none achieve the chemical accuracy and generality needed for reliable predictions of the outcome of laboratory experiments
June 18, 2025 at 11:24 AM
Enter Density Functional Theory (DFT), the backbone 𖠣 of computational chemistry. Although DFT can, in principle, calculate the electronic energy exactly, practical applications rely on approximations to the unknown 🔍 exchange-correlation (XC) energy functional
June 18, 2025 at 11:24 AM
🚀 After two+ years of intense research, we’re thrilled to introduce Skala — a scalable deep learning density functional that hits chemical accuracy on atomization energies and matches hybrid-level accuracy on main group chemistry — all at the cost of semi-local DFT ⚛️🔥🧪🧬
June 18, 2025 at 11:24 AM
I found a nice example. Take en.wikipedia.org/wiki/Sch%C3%.... He doesn't have a Google Scholar profile, but someone wrote a whole analysis: hdl.handle.net/1887/65213
November 28, 2024 at 9:52 AM
#compchem going strong
November 28, 2024 at 9:29 AM