Description |
Simone Montangero
(University of Padova, Italy) Abstract:
We review some recent results on the development of efficient unconstrained tree tensor network algorithms and their applications to high-dimensional many-body quantum systems and machine learning problems in High Energy Physics. In particular, we present results on topological two-dimensional systems, two dimensional Rydberg atom systems, and two and three-dimensional lattice gauge theories in presence of fermonic matter. Finally, we present their application to LHCb event classification and to the study of open many-body quantum systems, specifically to the computation of the entanglement of formation in critical many-body quantum systems at finite temperature.
Link to Zoom advance registration:
https://zoom.us/meeting/register/tJwtc-mhqT0iH9QiqW4cx1YFz6xCvxDyo_ib |
CMSP News and Views Seminar Series: Tensor network algorithms for high-dimensional quantum many-body systems
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