Abstract

The ATLAS physics program relies on very large samples of Geant4 simulated events, which provide a highly detailed and accurate simulation of the ATLAS detector. However, this accuracy comes with a high price in CPU, and the sensitivity of many physics analyses is already limited by the available Monte Carlo statistics and will be even more so in the future. Therefore, sophisticated fast simulation tools have been developed. In Run 3 we aim to replace the calorimeter shower simulation for most samples with a new parametrised description of longitudinal and lateral energy deposits, including machine learning approaches, to achieve a fast and accurate description. Looking further ahead, prototypes are being developed using cutting edge machine learning approaches to learn the appropriate calorimeter response, which are expected to improve modeling of correlations within showers. Two different approaches, using Variational Auto-Encoders (VAEs) or Generative Adversarial Networks (GANs), are trained to model the shower simulation. Additional fast simulation tools will replace the inner detector simulation, as well as digitization and reconstruction algorithms, achieving up to two orders of magnitude improvement in speed. In this talk, we will describe the new tools for fast production of simulated events and an exploratory analysis of the deep learning methods.

Highlights

  • The ATLAS physics program relies extensively on very large samples of Geant4 simulated events, which provide a highly detailed and accurate simulation of the ATLAS detector [1,2,3]

  • Large samples of Geant4 simulated events play a critical role within the ATLAS physics program, but their production requires large amounts of CPU

  • We have reviewed the fast simulation methods currently under development by the ATLAS experiment

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Summary

Introduction

The ATLAS physics program relies extensively on very large samples of Geant simulated events, which provide a highly detailed and accurate simulation of the ATLAS detector [1,2,3]. The brown points show the amount of time needed based on existing software performance and uses the ATLAS computing model developed in 2017. 80 2018 estimates: MC fast calo sim + standard reco MC fast calo sim + fast reco

60 Generators speed up x2
Calorimeter Shower Parametrisation with Principal Component Analysis
Calorimeter Shower Parametrisation with Neural Networks
Findings
Conclusion
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