May 16–20, 2022
America/Toronto timezone

Reducing the Sign Problem with Complex Neural Networks

Not scheduled
20m

Speaker

Johann Ostmeyer (University of Liverpool)

Description

The sign problem is arguably the greatest weakness of the otherwise highly efficient, non-perturbative Monte Carlo simulations. Recently, considerable progress has been made in alleviating the sign problem by deforming the integration contour of the path integral into the complex plane and applying machine learning to find near-optimal alternative contours. This deformation however requires a Jacobian determinant calculation which has a generic computational cost scaling as volume cubed. In this talk I am going to present a new architecture with linear runtime, based on complex-valued affine coupling layers.

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