Letting atomic simulations learn from phase diagrams
A new computational method allows modern atomic models to learn from experimental thermodynamic data, according to a University of Michigan Engineering and Université Paris-Saclay study published in Nature Communications. Leveraging a machine learning technique called score matching, the method expr...
March 3, 2026107 views
Image: Phys.org
A new computational method allows modern atomic models to learn from experimental thermodynamic data, according to a University of Michigan Engineering and Université Paris-Saclay study published in Nature Communications. Leveraging a machine learning technique called score matching, the method expresses the thermodynamic free energy of atomic systems as a function of the underlying atomic interaction model, unlike standard schemes where the interaction model is fixed.
Be the first to receive the latest news, market analysis and updates — delivered straight to your inbox.
We value your privacy
We use cookies to run this site and, with your consent, to measure
traffic and improve our content. Necessary cookies are always on. You
can accept all cookies or choose which ones to allow.
Privacy policy.