2024
DOI: 10.3389/fspas.2024.1494439
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Machine learning opportunities for nucleosynthesis studies

Michael S. Smith,
Dan Lu

Abstract: Nuclear astrophysics is an interdisciplinary field focused on exploring the impact of nuclear physics on the evolution and explosions of stars and the cosmic creation of the elements. While researchers in astrophysics and in nuclear physics are separately using machine learning approaches to advance studies in their fields, there is currently little use of machine learning in nuclear astrophysics. We briefly describe the most common types of machine learning algorithms, and then detail their numerous possible … Show more

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