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Trapped Ion Quantum Computing Quantum Machine Learning

Speeding up quantum dissipative dynamics of open systems with kernel methods

DOAJ
Authors: Arif Ullah, Pavlo O. Dral

Year

2021

Paper ID

38834

Status

Peer-reviewed

Abstract Read

~2 min

Abstract Words

113

Citations

38

Abstract

The future forecasting ability of machine learning (ML) makes ML a promising tool for predicting long-time quantum dissipative dynamics of open systems. In this article, we employ nonparametric ML algorithm (kernel ridge regression as a representative of the kernel methods) to study the quantum dissipative dynamics of the widely-used spin-boson (SB) model. Our ML model takes short-time dynamics as an input and is used for fast propagation of the long-time dynamics, greatly reducing the computational effort in comparison with the traditional approaches. Presented results show that the ML model performs well in both symmetric and asymmetric SB models. Our approach is not limited to SB model and can be extended to complex systems.

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