Szczegóły publikacji

Opis bibliograficzny

Even faster simulations with flow matching: a study of zero degree calorimeter responses / Maksymilian WOJNAR // Computer Physics Communications ; ISSN  0010-4655 . — 2026 — vol. 319 art. no. 109936, s. 1–11. — Bibliogr. s. 10–11, Abstr. — Publikacja dostępna online od: 2025-11-10

Autor

Słowa kluczowe

flow matchingzero degree calorimeterhigh energy physicsgenerative neural networksfast simulations

Dane bibliometryczne

ID BaDAP164456
Data dodania do BaDAP2025-11-21
Tekst źródłowyURL
DOI10.1016/j.cpc.2025.109936
Rok publikacji2026
Typ publikacjiartykuł w czasopiśmie
Otwarty dostęptak
Czasopismo/seriaComputer Physics Communications

Abstract

Recent advances in generative neural networks, particularly flow matching (FM), have enabled the generation of high-fidelity samples while significantly reducing computational costs. A promising application of these models is accelerating simulations in high-energy physics (HEP), address research institutions meet their increasing computational demands. In this work, we leverage FM to develop surrogate models for fast simulations of zero degree calorimeters in the ALICE experiment. We present an effective training strategy that enables the training of fast generative models with an exceptionally small number of parameters. This approach achieves state-of-the-art simulation fidelity for both neutron (ZN) and proton (ZP) detectors, while offering substantial reductions in computational costs compared to existing methods. Our FM model achieves a Wasserstein distance of 1.27 for the ZN simulation with an inference time of 0.46 ms per sample, compared to the current best of 1.20 with an inference time of approximately 109 ms. The latent FM model further improves the inference speed, reducing the sampling time to 0.026 ms per sample, with a minimal trade-off in accuracy. Similarly, our approach achieves a Wasserstein distance of 1.30 for the ZP simulation, outperforming the current best of 2.08. The source code is available at https://github.com/m-wojnar/faster_zdc.

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Fast simulation of the Zero Degree Calorimeter responses with generative neural networks / Maksymilan WOJNAR, Emilia MAJERZ, Witold DZWINEL // Computing and Software for Big Science ; ISSN 2510-2036. — 2025 — vol. 9 iss. 1 art. no. 1, s. 1–18. — Bibliogr. s. 17–18, Abstr. — Publikacja dostępna online od: 2025-01-27
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#167209Data dodania: 14.5.2026
Towards fast, machine-learning-based calorimeter simulations in the ALICE experiment at CERN / Emilia MAJERZ, Łukasz Dubiel, Jacek Otwinowski, Witold DZWINEL, Jacek KITOWSKI // W: KU KDM 2026 : eighteenth ACC Cyfronet AGH HPC users conference : Zakopane, 13–15 April 2026 : proceedings / eds. Marek Magryś, Marian Bubak, Robert Pająk, Andrzej Zemła. — Kraków : Academic Computer Centre Cyfronet AGH, 2026. — ISBN: 978-83-61433-51-4. — S. 53–54. — Bibliogr. s. 54