Machine learning in physics

ID: machine-learning-in-physics

Machine learning (ML) in physics refers to the application of machine learning techniques and algorithms to understand and describe physical systems, analyze data from experiments, and even make predictions about physical phenomena. It combines traditional physics approaches with advanced computational methods to enhance our understanding of complex systems and to extract useful information from large datasets. Here are several key aspects of how machine learning is applied in physics: 1. **Data Analysis**: Physics experiments often produce vast amounts of data.

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