Title : |
Machine learning for string theory and QFT |
|
Speaker | : | Harold Erbin, LMU, Munich. |
Date | : | January 24, 2019 |
Time | : | 3:30 PM |
Venue | : | Room 3307 |
Abstract | : |
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 QFTs (in particular, to study phase transitions) and, more recently, to string theory. After reviewing the general ideas behind machine learning, I will discuss several applications: 1) statistics of Calabi-Yau 3-folds, 2) generating effective field theories 3) building string field theory actions, 4) studying the confinement-deconfinement phase transition. |