Litcius/Paper detail

Machine learning time-local generators of open quantum dynamics

Paolo P. Mazza, Dominik Zietlow, Federico Carollo, Sabine Andergassen, Georg Martius, Igor Lesanovsky

2021Physical Review Research27 citationsDOIOpen Access PDF

Abstract

In the study of closed many-body quantum systems, one is often interested in the evolution of a subset of degrees of freedom. On many occasions it is possible to approach the problem by performing an appropriate decomposition into a bath and a system. In the simplest case the evolution of the reduced state of the system is governed by a quantum master equation with a time-independent, i.e., Markovian, generator. Such evolution is typically emerging under the assumption of a weak coupling between the system and an infinitely large bath. Here we are interested in understanding to which extent a neural network function approximator can predict open quantum dynamics-described by time-local generators-from an underlying unitary dynamics. We investigate this question using a class of spin models, which is inspired by recent experimental setups. We find that indeed time-local generators can be learned. In certain situations they are even time independent and allow to extrapolate the dynamics to unseen times. This might be useful for situations in which experiments or numerical simulations do not allow to capture long-time dynamics and for exploring thermalization occurring in closed quantum systems.

Topics & Concepts

Computer scienceQuantumUnitary stateCoupling (piping)Statistical physicsFunction (biology)Quantum dynamicsArtificial neural networkDynamics (music)Quantum stateQuantum entanglementArtificial intelligenceState (computer science)Class (philosophy)Quantum systemOpen quantum systemQuantum decoherenceQuantum computerTime evolutionRepresentation (politics)Spin (aerodynamics)System dynamicsQuantum machine learningMathematicsPhysicsTheoretical computer scienceQuantum phase estimation algorithmQuantum many-body systemsQuantum Computing Algorithms and ArchitectureMachine Learning in Materials Science