18–20 Dec 2019
Aula Magna – Via Partenope
Europe/Rome timezone

Machine learning for QFT

19 Dec 2019, 09:30
2h 13m
Aula Magna – Via Partenope

Aula Magna – Via Partenope

Via Partenope, 36
Gong Show/Poster Gong Show/Poster

Speaker

Dr Harold Erbin (Università di Torino)

Description

Machine learning has revolutionized most fields it has penetrated, and the range of its applications is growing rapidly. The last years has seen efforts towards bringing the tools of machine learning to lattice QFT and to string theory. After giving a general idea of what is machine learning, I will present two recent results on lattice QFT: 1) computing the Casimir energy for a 3d QFT with arbitrary Dirichlet boundary conditions, 2) predicting the critical temperature of the confinement phase transition in 2+1 QED at different lattice sizes.

Primary author

Dr Harold Erbin (Università di Torino)

Presentation materials

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