6–10 Nov 2023
DESY
Europe/Zurich timezone

Refining Fast Calorimeter Simulations with a Schrödinger Bridge

6 Nov 2023, 14:15
15m
Main Auditorium (DESY)

Main Auditorium

DESY

Speaker

Sascha Diefenbacher (Lawrence Berkeley National Lab. (US))

Description

Machine learning-based simulations, especially calorimeter simulations, are promising tools for approximating the precision of classical high energy physics simulations with a fraction of the generation time. Nearly all methods proposed so far learn neural networks that map a random variable with a known probability density, like a Gaussian, to realistic-looking events. In many cases, physics events are not close to Gaussian and so these neural networks have to learn a highly complex function. We study an alternative approach: Schrödinger bridge Quality Improvement via Refinement of Existing Lightweight Simulations (SQuIRELS). SQuIRELS leverages the power of diffusion-based neural networks and Schrödinger bridges to map between samples where the probability density is not known explicitly. We apply SQuIRELS to the task of refining a classical fast simulation to approximate a full classical simulation. On simulated calorimeter events, we find that SQuIRELS is able to reproduce highly non-trivial features of the full simulation with a fraction of the generation time.

Primary authors

Ben Nachman (Lawrence Berkeley National Lab. (US)) Sascha Diefenbacher (Lawrence Berkeley National Lab. (US)) Vinicius Massami Mikuni (Lawrence Berkeley National Lab. (US))

Presentation materials