29 August 2022 to 2 September 2022
Albano Building 3
Europe/Stockholm timezone

Self-Correcting Quantum Many-Body Control using Reinforcement Learning with Tensor Networks

31 Aug 2022, 10:30
55m
Conference center, room ... (Albano Building 3)

Conference center, room ...

Albano Building 3

Albanovägen 29
Invited talk

Speaker

Marin Bukov (MPI-PKS)

Description

Quantum many-body control is a central milestone en route to harnessing quantum technologies. However, the exponential growth of the Hilbert space dimension with the number of qubits makes it challenging to classically simulate quantum many-body systems and consequently, to devise reliable and robust optimal control protocols. I will present a novel framework for efficiently controlling quantum many-body systems based on reinforcement learning (RL). We tackle the quantum control problem by leveraging matrix product states (i) for representing the many-body state and, (ii) as part of the trainable machine learning architecture for our RL agent. The framework is applied to prepare ground states of the quantum Ising chain, including critical states. It allows us to control systems far larger than neural-network-only architectures permit, while retaining the advantages of deep learning algorithms, such as generalizability and trainable robustness to noise. In particular, I will demonstrate that RL agents are capable of finding universal controls, of learning how to optimally steer previously unseen many-body states, and of adapting control protocols on the fly when the quantum dynamics are subject to stochastic perturbations.

Primary author

Marin Bukov (MPI-PKS)

Presentation materials

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