Data Science and Machine Learning in Education

arXiv:2207.09060v15 citationsh-index: 118
Originality Synthesis-oriented
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It addresses the need for educational materials and training in data science and machine learning for high-energy physics researchers and students, but is incremental as it focuses on existing practices and proposals.

This white paper explores the synergies between high-energy physics research and data science/machine learning education, discussing opportunities and challenges at this intersection and proposing community activities for mutual benefit.

The growing role of data science (DS) and machine learning (ML) in high-energy physics (HEP) is well established and pertinent given the complex detectors, large data, sets and sophisticated analyses at the heart of HEP research. Moreover, exploiting symmetries inherent in physics data have inspired physics-informed ML as a vibrant sub-field of computer science research. HEP researchers benefit greatly from materials widely available materials for use in education, training and workforce development. They are also contributing to these materials and providing software to DS/ML-related fields. Increasingly, physics departments are offering courses at the intersection of DS, ML and physics, often using curricula developed by HEP researchers and involving open software and data used in HEP. In this white paper, we explore synergies between HEP research and DS/ML education, discuss opportunities and challenges at this intersection, and propose community activities that will be mutually beneficial.

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