Back to Search Start Over

FAIR AI Models in High Energy Physics

Authors :
Javier Mauricio Duarte
Li, Haoyang
Roy, Avik
Zhu, Ruike
Huerta, E. A.
Diaz, Daniel
Harris, Philip
Kansal, Raghav
Katz, Daniel S.
Kavoori, Ishaan H.
Kindratenko, Volodymyr V.
Mokhtar, Farouk
Neubauer, Mark S.
Park, Sang Eon
Quinnan, Melissa
Rusack, Roger
Zhao, Zhizhen
Source :
INSPIRE-HEP
Publication Year :
2022
Publisher :
arXiv, 2022.

Abstract

The findable, accessible, interoperable, and reusable (FAIR) data principles have provided a framework for examining, evaluating, and improving how we share data with the aim of facilitating scientific discovery. Efforts have been made to generalize these principles to research software and other digital products. Artificial intelligence (AI) models -- algorithms that have been trained on data rather than explicitly programmed -- are an important target for this because of the ever-increasing pace with which AI is transforming scientific and engineering domains. In this paper, we propose a practical definition of FAIR principles for AI models and create a FAIR AI project template that promotes adherence to these principles. We demonstrate how to implement these principles using a concrete example from experimental high energy physics: a graph neural network for identifying Higgs bosons decaying to bottom quarks. We study the robustness of these FAIR AI models and their portability across hardware architectures and software frameworks, and report new insights on the interpretability of AI predictions by studying the interplay between FAIR datasets and AI models. Enabled by publishing FAIR AI models, these studies pave the way toward reliable and automated AI-driven scientific discovery.<br />Comment: 32 pages, 8 figures, 9 tables

Details

Database :
OpenAIRE
Journal :
INSPIRE-HEP
Accession number :
edsair.doi.dedup.....e9f08f0de5f8567edd018f343ef884e9
Full Text :
https://doi.org/10.48550/arxiv.2212.05081