23–27 May 2022
Faculty of Nuclear Sciences and Physical Engineering
Europe/Prague timezone

Incremental Learning of Quantum Generative Adversarial Networks

25 May 2022, 15:30
2h
Atrium

Atrium

Poster Poster

Description

Machine learning field has shown incredible impact on many kinds of optimization problems. Recently the power of machine learning was applied to speed up the quantum states preparation. Although approximation with quantum generative adversarial networks is one of the fastest ways to prepare a generic quantum state, training time for such models is still significant and can easily impair quantum advantage. This thesis explores incremental learning of quantum generative adversarial networks for the quantum states preparation problem and introduces learning use cases reducing the training time.

Primary authors

Artem Kandaurov (Czech Technical University in Prague) Aurél Gábris (Czech Technical University in Prague) Ivo Petr (Czech Technical University in Prague)

Presentation materials

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