Started in 2018, NetKet
@NetKetOrg was the first open-source library for machine learning and many-body quantum physics ever released, and we are proud to see it being used by an increasing number of researchers!
With version 3 (released in 2021 thanks to the efforts of many and coordinated by
@philipVinc @cqs_lab @EPFL), NetKet has acquired many new functionalities, some of which are less known, including support for systems in continuous space, fermions, dynamics, and much more. In fact, it is the only library with full support for essentially all of the applications of neural quantum states across domains, from lattice spin models to the electron gas.
To help discover all these fantastic functionalities, we are progressively releasing new Tutorials.
We start today with a new Tutorial on Lattice fermions, from Slater determinants to Neural Backflow.
Have a look here to learn how to treat strongly interacting lattice fermions with fermionic NQS:
netket.readthedocs.io/en/lat…
Finally, thank you
@JannesNys for implementing the much-needed support for lattice fermions used (also) in this Tutorial!