Machine Learning in Particle Theory and String Theory

Machine learning and related computational methods have become substantially more powerful and are already applied in many areas of science. In the future, they are likely to change  scientific research profoundly. In this talk I will be discussing two ways in which machine learning can be helpful in physics: solving differential equations and model building. I will attempt to explain the basic ideas behind these applications and present some recent examples, including inflationary model building, finding string models with certain prescribed properties and computing the masses of fermions from string theory.

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