Engagement: Hyperparameter Optimization of Generative Adversarial Network Models for High-Energy Physics Simulations

Juliane Mueller, Xiangyang Ju, Vincent Dumont

Research output: NRELPoster

Abstract

We present our SciDAC FASTMath-HEP partnership results for tuning generative adversarial models (GANs) for high energy physics applications. The GANs are used in hybrid simulations to accelerate otherwise time-consuming computations. We optimize for both, prediction accuracy and variability with the goal to find GAN architectures that are reliable and robust.
Original languageAmerican English
PublisherNational Renewable Energy Laboratory (NREL)
StatePublished - 2023

Publication series

NamePresented at the SciDAC-5 Principal Investigator (PI) Meeting, 12-14 September 2023, Rockville, Maryland

NREL Publication Number

  • NREL/PO-2C00-87403

Keywords

  • high energy physics
  • hyperparameter tuning
  • machine learning

Cite this