Automated quantum system modeling with machine learning
- URL: http://arxiv.org/abs/2409.18822v1
- Date: Fri, 27 Sep 2024 15:18:20 GMT
- Title: Automated quantum system modeling with machine learning
- Authors: Kaustav Mukherjee, Johannes Schachenmayer, Shannon Whitlock, Sebastian Wüster,
- Abstract summary: We show that a machine learning algorithm is able to construct quantum models, given a straightforward set of quantum dynamics measurements.
We demonstrate through simulations of a Markovian open quantum system that a neural network can automatically detect the number $N $ of effective states.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Despite the complexity of quantum systems in the real world, models with just a few effective many-body states often suffice to describe their quantum dynamics, provided decoherence is accounted for. We show that a machine learning algorithm is able to construct such models, given a straightforward set of quantum dynamics measurements. The effective Hilbert space can be a black box, with variations of the coupling to just one accessible output state being sufficient to generate the required training data. We demonstrate through simulations of a Markovian open quantum system that a neural network can automatically detect the number $N $ of effective states and the most relevant Hamiltonian terms and state-dephasing processes and rates. For systems with $N\leq5$ we find typical mean relative errors of predictions in the $10 \%$ range. With more advanced networks and larger training sets, it is conceivable that a future single software can provide the automated first stop solution to model building for an unknown device or system, complementing and validating the conventional approach based on physical insight into the system.
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