18–24 Aug 2024
Cairns, Queensland, Australia
Australia/Brisbane timezone

NuCLR: Nuclear Co-Learned Representations

22 Aug 2024, 11:20
20m
M6

M6

Oral H: Statistical Methods for Physics Analysis in the XXIst Century Statistical Methods for Physics Analysis in the XXI Century

Speaker

Sokratis Trifinopoulos

Description

We introduce Nuclear Co-Learned Representations (NuCLR), a deep learning model that predicts various nuclear observables, including binding and decay energies, and nuclear charge radii. The model is trained using a multi-task approach with shared representations and obtains state-of-the-art performance, achieving levels of precision that are crucial for understanding fundamental phenomena in nuclear (astro)physics. We also report an intriguing finding that the learned representation of NuCLR exhibits the prominent emergence of crucial aspects of the nuclear shell model, namely the shell structure, including the well-known magic numbers, and the Pauli Exclusion Principle. This suggests that the model is capable of capturing the underlying physical principles and that our approach has the potential to offer valuable insights into nuclear theory.

Author

Presentation materials