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PhD student Eran Lustig and collaborators developed a method for identifying unexpected topological phase transitions (published in PRL)

24 November 2020

Eran Lustig and Moti Segev, along with Or Yair and Ronen Talmon from the faculty of  electrical engineering, developed and demonstrated experimentally a machine-learning tool for identifying unexpected topological phase transitions in experimental data. Their research was published in Physical Review Letters.

 

The work was covered in physics world.