Neural-Network Approach to Dissipative Quantum Many-Body Dynamics.

@article{Hartmann2019NeuralNetworkAT,
  title={Neural-Network Approach to Dissipative Quantum Many-Body Dynamics.},
  author={M. Hartmann and G. Carleo},
  journal={Physical review letters},
  year={2019},
  volume={122 25},
  pages={
          250502
        }
}
  • M. Hartmann, G. Carleo
  • Published 2019
  • Computer Science, Mathematics, Medicine, Physics
  • Physical review letters
In experimentally realistic situations, quantum systems are never perfectly isolated and the coupling to their environment needs to be taken into account. Often, the effect of the environment can be well approximated by a Markovian master equation. However, solving this master equation for quantum many-body systems becomes exceedingly hard due to the high dimension of the Hilbert space. Here we present an approach to the effective simulation of the dynamics of open quantum many-body systems… Expand
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