2024
DOI: 10.1088/1748-0221/19/04/p04020
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CaloClouds II: ultra-fast geometry-independent highly-granular calorimeter simulation

Erik Buhmann,
Frank Gaede,
Gregor Kasieczka
et al.

Abstract: Fast simulation of the energy depositions in high-granular detectors is needed for future collider experiments at ever-increasing luminosities. Generative machine learning (ML) models have been shown to speed up and augment the traditional simulation chain in physics analysis. However, the majority of previous efforts were limited to models relying on fixed, regular detector readout geometries. A major advancement is the recently introduced CaloClouds model, a geometry-independent diffusion … Show more

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