SKM 2023 – scientific programme

Parts | Days | Selection | Search | Updates | Downloads | Help

DY: Fachverband Dynamik und Statistische Physik

DY 2: Focus Session: Physics Meets ML I – Machine Learning for Complex Quantum Systems (joint session TT/DY)

Monday, March 27, 2023, 09:30–13:00, HSZ 03

Modern machine learning methods open new perspectives on the high-dimensional data arising naturally in complex quantum systems. The applications range from the analysis of experimental observations over optimal control to the enhancement of numerical simulations in and out of equilibrium. This focus session brings together experts in the field to discuss recent progress and promising directions for future research.
Organizers: Markus Schmitt (University of Cologne), Martin Gärttner (University of Heidelberg)

09:30 DY 2.1 Invited Talk: Enhanced variational Monte Carlo for Rydberg atom arrays — •Stefanie Czischek
10:00 DY 2.2 Invited Talk: Data mining the output of quantum simulators -- from critical behavior to algorithmic complexity — •Marcello Dalmonte
10:30 DY 2.3 Invited Talk: Reinforcement learning for quantum technologies — •Florian Marquardt
11:00 DY 2.4 Invited Talk: Machine learning of phase transition — •Christof Weitenberg
  11:30 15 min. break
11:45 DY 2.5 Machine learning optimization of Majorana hybrid nanowires — •Matthias Thamm and Bernd Rosenow
12:00 DY 2.6 Model-independent learning of quantum phases of matter with quantum convolutional neural networks — •Yu-Jie Liu, Adam Smith, Michael Knap, and Frank Pollmann
12:15 DY 2.7 Simulating spectral functions of two-dimensional systems with neural quantum states — •Tiago Mendes Santos, Markus Schmitt, and Markus Heyl
12:30 DY 2.8 Efficient optimization of deep neural quantum states toward machine precision — •Ao Chen and Markus Heyl
12:45 DY 2.9 Time-dependent variational principle for quantum and classical dynamics — •Moritz Reh, Markus Schmitt, and Martin Gärttner
100% | Mobile Layout | Deutsche Version | Contact/Imprint/Privacy
DPG-Physik > DPG-Verhandlungen > 2023 > SKM