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arxiv:2404.16091

Solving Key Challenges in Collider Physics with Foundation Models

Published on Apr 24, 2024
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Abstract

A new Foundation Model for hadronic jets addresses key challenges in collider physics by saving computing power, quantifying uncertainty, and searching for new physics with low-level inputs.

AI-generated summary

Foundation Models are neural networks that are capable of simultaneously solving many problems. Large Language Foundation Models like ChatGPT have revolutionized many aspects of daily life, but their impact for science is not yet clear. In this paper, we use a new Foundation Model for hadronic jets to solve three key challenges in collider physics. In particular, we show how experiments can (1) save significant computing power when developing reconstruction algorithms, (2) perform a complete uncertainty quantification for high-dimensional measurements, and (3) search for new physics with model agnostic methods using low-level inputs. In each case, there are significant computational or methodological challenges with current methods that limit the science potential of deep learning algorithms. By solving each problem, we take jet Foundation Models beyond proof-of-principle studies and into the toolkit of practitioners.

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