Schedule
Time | Monday Oct 16 | Tuesday Oct 17 | Wednesday Oct 18 |
8:30-9:00 | Breakfast/Welcome | Breakfast | Breakfast |
9:00-9:45 | P. Alves (UCLA) Distilling reduced plasma physics models from the data of first-principles kinetic simulations | G. Karniadakis (Brown) Neural PDEs and Neural Operators for Physics-Informed Machine Learning | M. Stoudenmire (Flatiron) Quantum-Inspired Tensor Network Methods for Machine Learning |
9:45-10:30 | M. McCabe (Flatiron) Challenges and Opportunities in Learning Dynamics | R. Walters (Northeastern) Equivariant Neural Networks for Learning Dynamics | Y. W. Li (LANL) Hamiltonian extraction and inverse modeling of materials |
Coffee Break | Coffee Break | Coffee Break | |
11:00-11:45 | C. Hall (UGa) Finding hidden forming exoplanets using machine learning | V. Vitelli (UChicago) Machine learning interpretable models of cell biophysics from data | G. Carleo (EPFL) Describing Interacting Many-Body Systems with Neural-Network Quantum States |
11:45-12:30 | M. Golden (GT) Data Driven Model Discovery for Dynamical Systems | C. Rozell (GT) Distorted dynamics: Using explainable AI to track depression recovery with deep brain stimulation | E. Kim (Cornell) Data-centric learning of Quantum Many-body States |
Lunch Break | Lunch Break | End of Conference | |
2:00-2:45 | A. Liu (UPenn) Physical systems that learn on their own | C. Zhang (GT) Large pretrained models for material science | |
2:45-3:30 | N. Loureiro (MIT) AI/ML as tools of scientific discovery in plasma physics: requirements and opportunities | G. Iannacchione (NSF/DMR) S. Vahidinia (NASA) A. Berlind (NSF/AST) AI/ML Funding Landscape | |
Coffee Break | Coffee Break | ||
4:00-5:00 | M. Kunda (Vanderbilt) What do people see in scatterplots? Research at the intersection of AI, autism, and visual thinking | Panel Discussion with Agency POs | |
6:00-7:00 | Reception |