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Machine learning as a tool in theoretical science

Machine learning methods relying on synthetic data are starting to be used in mathematics and theoretical physics. Michael R. Douglas discusses recent advances and ponders on the impact these methods will have in science.

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Correspondence to Michael R. Douglas.

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Douglas, M.R. Machine learning as a tool in theoretical science. Nat Rev Phys 4, 145–146 (2022).

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