Litcius/Paper detail

Realizing a deep reinforcement learning agent for real-time quantum feedback

Kevin Reuer, Jonas Landgraf, Thomas Fösel, James O’Sullivan, Liberto Beltrán, Abdulkadir Akın, Graham J. Norris, Ants Remm, Michael Kerschbaum, Jean-Claude Besse, Florian Marquardt, Andreas Wallraff, Christopher Eichler

2023Nature Communications47 citationsDOIOpen Access PDF

Abstract

Realizing the full potential of quantum technologies requires precise real-time control on time scales much shorter than the coherence time. Model-free reinforcement learning promises to discover efficient feedback strategies from scratch without relying on a description of the quantum system. However, developing and training a reinforcement learning agent able to operate in real-time using feedback has been an open challenge. Here, we have implemented such an agent for a single qubit as a sub-microsecond-latency neural network on a field-programmable gate array (FPGA). We demonstrate its use to efficiently initialize a superconducting qubit and train the agent based solely on measurements. Our work is a first step towards adoption of reinforcement learning for the control of quantum devices and more generally any physical device requiring low-latency feedback.

Topics & Concepts

Reinforcement learningComputer scienceLatency (audio)QubitGate arrayCoherence timeField-programmable gate arrayQuantumCoherence (philosophical gambling strategy)Quantum computerArtificial intelligenceEmbedded systemPhysicsTelecommunicationsQuantum mechanicsNeural Networks and Reservoir ComputingQuantum Computing Algorithms and ArchitectureAdvancements in Semiconductor Devices and Circuit Design