Aaron Tranter
Deep learning cold atomic ensembles for quantum memories


Date & heure
04/04/2018
Lieu
Jussieu, salle 210 couloir 13-23
Accueil
Quantum memories are integral to the realization of quantum information networks and quantum information processing. A promising platform is gradient echo memory (GEM) in cold atomic systems with demonstrated efficiencies of ~87%. We demonstrate the first application of a deep learning algorithm to a cold atomic system in order to increase the optical depth (OD) of our atomic trap and thus increase memory efficiency. We perform a 63 parameter optimisation and find solutions that are agnostic to considerations regarding monotonicity or continuity and vastly outperform human solutions increasing our optical depth by (81+-3)%. We also observe a physical change in the atomic cloud corresponding to the spatial distribution of the atomic ensemble and apply the optimisation to the GEM protocol.
Michael Tarbutt
Centre for Cold Matter, Imperial College London
Searching for new physics with ultracold molecules
Ignacio Cirac
Max Planck Institute of Quantum Optics
Quantum Computing and Simulation in the presence of errors