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Main Authors: Li, Shuhang, Huang, Yi, Park, David, Luo, Xihaier, Yu, Haiwang, Go, Yeonju, Pinkenburg, Christopher, Lin, Yuewei, Yoo, Shinjae, Osborn, Joseph, Roland, Christof, Huang, Jin, Ren, Yihui
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.05792
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author Li, Shuhang
Huang, Yi
Park, David
Luo, Xihaier
Yu, Haiwang
Go, Yeonju
Pinkenburg, Christopher
Lin, Yuewei
Yoo, Shinjae
Osborn, Joseph
Roland, Christof
Huang, Jin
Ren, Yihui
author_facet Li, Shuhang
Huang, Yi
Park, David
Luo, Xihaier
Yu, Haiwang
Go, Yeonju
Pinkenburg, Christopher
Lin, Yuewei
Yoo, Shinjae
Osborn, Joseph
Roland, Christof
Huang, Jin
Ren, Yihui
contents Scientific foundation models hold great promise for advancing nuclear and particle physics by improving analysis precision and accelerating discovery. Yet, progress in this field is often limited by the lack of openly available large scale datasets, as well as standardized evaluation tasks and metrics. Furthermore, the specialized knowledge and software typically required to process particle physics data pose significant barriers to interdisciplinary collaboration with the broader machine learning community. This work introduces a large, openly accessible dataset of 10 million simulated proton-proton collisions, designed to support self-supervised training of foundation models. To facilitate ease of use, the dataset is provided in a common NumPy format. In addition, it includes 70,000 labeled examples spanning three well defined downstream tasks: track finding, particle identification, and noise tagging, to enable systematic evaluation of the foundation model's adaptability. The simulated data are generated using the Pythia Monte Carlo event generator at a center of mass energy of sqrt(s) = 200 GeV and processed with Geant4 to include realistic detector conditions and signal emulation in the sPHENIX Time Projection Chamber at the Relativistic Heavy Ion Collider, located at Brookhaven National Laboratory. This dataset resource establishes a common ground for interdisciplinary research, enabling machine learning scientists and physicists alike to explore scaling behaviors, assess transferability, and accelerate progress toward foundation models in nuclear and high energy physics. The complete simulation and reconstruction chain is reproducible with the sPHENIX software stack. All data and code locations are provided under Data Accessibility.
format Preprint
id arxiv_https___arxiv_org_abs_2509_05792
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle TPCpp-10M: Simulated proton-proton collisions in a Time Projection Chamber for AI Foundation Models
Li, Shuhang
Huang, Yi
Park, David
Luo, Xihaier
Yu, Haiwang
Go, Yeonju
Pinkenburg, Christopher
Lin, Yuewei
Yoo, Shinjae
Osborn, Joseph
Roland, Christof
Huang, Jin
Ren, Yihui
Data Analysis, Statistics and Probability
Scientific foundation models hold great promise for advancing nuclear and particle physics by improving analysis precision and accelerating discovery. Yet, progress in this field is often limited by the lack of openly available large scale datasets, as well as standardized evaluation tasks and metrics. Furthermore, the specialized knowledge and software typically required to process particle physics data pose significant barriers to interdisciplinary collaboration with the broader machine learning community. This work introduces a large, openly accessible dataset of 10 million simulated proton-proton collisions, designed to support self-supervised training of foundation models. To facilitate ease of use, the dataset is provided in a common NumPy format. In addition, it includes 70,000 labeled examples spanning three well defined downstream tasks: track finding, particle identification, and noise tagging, to enable systematic evaluation of the foundation model's adaptability. The simulated data are generated using the Pythia Monte Carlo event generator at a center of mass energy of sqrt(s) = 200 GeV and processed with Geant4 to include realistic detector conditions and signal emulation in the sPHENIX Time Projection Chamber at the Relativistic Heavy Ion Collider, located at Brookhaven National Laboratory. This dataset resource establishes a common ground for interdisciplinary research, enabling machine learning scientists and physicists alike to explore scaling behaviors, assess transferability, and accelerate progress toward foundation models in nuclear and high energy physics. The complete simulation and reconstruction chain is reproducible with the sPHENIX software stack. All data and code locations are provided under Data Accessibility.
title TPCpp-10M: Simulated proton-proton collisions in a Time Projection Chamber for AI Foundation Models
topic Data Analysis, Statistics and Probability
url https://arxiv.org/abs/2509.05792