“…Specifically in condensed matter physics, ML is well suited for many tasks ranging from predicting materials properties based on existing databases and pattern recognition in specific experimental data to analysing theoretical models of quantum materials. Prominent examples include the prediction of novel materials [4,5,6], identification of phase transitions in models of magnetic materials starting from Ising models [7,8,9,10,11,12], reaching complex spin liquids in Heisenberg systems [13] and the detection of entanglement transitions from simulated neutron scattering data [14]. Machine learning algorithms were also proven to be state of the art techniques in simulations of wave functions [15] or density matrices [16,17,18,19] for many-body quantum systems and the tomographic reconstruction of many-body wave functions from experimental data [20].…”