Artificial Intelligence for Atom Interferometry (AI^2)

POSTER

Abstract

MAGIS-100 is a proposed experiment under construction at Fermilab which will use interference fringes imprinted on cold atom clouds to sense physics signals, such as mid-frequency band gravitational waves and ultralight dark matter. To maximize the reach of this new experiment, a sophisticated set of tools must be developed for imaging, data reconstruction, and simulation. Modern machine learning/AI techniques offer innovative and powerful solutions to this diverse set of problems. In this poster, we present 3D reconstruction techniques for atom clouds using a differentiable ray-tracing simulator in conjunction with methods from modern neural rendering. Such techniques, used along with a recently developed light-field imaging device [arXiv:2205.11480], enable 3D reconstruction of cold atom clouds in a single camera shot. We further present a differentiable atomic simulator, which characterizes a dominant experimental systematic via a gradient-based fitting of wavefront aberrations in the lasers used for the interferometry. Several extensions to the above work are also discussed.

Publication: https://arxiv.org/abs/2205.11480

Presenters

  • Sean Gasiorowski

    • SLAC National Accelerator Laboratory

Authors

  • Sanha Cheong

    • SLAC - Natl Accelerator Lab
  • Sean Gasiorowski

    • SLAC National Accelerator Laboratory
  • Michael Kagan

    • SLAC - Natl Accelerator Lab
  • Murtaza Safdari

    • Stanford University
  • Ariel Schwartzman

    • SLAC - Natl Accelerator Lab
  • Maxime Vandegar

    • SLAC
  • Natasha Sachdeva

    • Northwestern University
  • Yiping Wang

    • Northwestern University
  • Timothy Kovachy

    • Northwestern University
  • Jonah Glick

    • Northwestern University
  • Arthur Perce

    • Northwestern University