27–29 Feb 2024
FIAS
Europe/Berlin timezone

Accelerating HEP simulations with Neural Importance Sampling

29 Feb 2024, 09:30
45m
FIAS

FIAS

Speaker

Niklas Götz

Description

Virtually all high-energy-physics (HEP) simulations for the LHC rely on Monte Carlo using importance sampling by means of the VEGAS algorithm. However, complex high-precision calculations have become a challenge for the standard toolbox.
As a result, there has been keen interest in HEP for modern machine learning to power adaptive sampling. Despite previous work proving that normalizing-flow-powered neural importance sampling (NIS) sometimes outperforms VEGAS, existing research has still left major questions open, which we intend to solve by introducing ZüNIS, a fully automated NIS library.
We first show how to extend the original formulation of NIS to reuse samples over multiple gradient steps, yielding a significant improvement for slow functions. We then benchmark ZüNIS over a range of problems and show high performance with limited fine-tuning. The library can be used by non-experts with minimal effort, which is crucial to become a mature tool for the wider HEP public.

Primary authors

Dr Nicolas Deutschmann Niklas Götz

Presentation materials