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Home | News | New Candidate Fellow: Sara Signorelli
News | September 17, 2021

New Candidate Fellow: Sara Signorelli

Sara Signorelli obtained her PhD from the Paris School of Economics in 2021. Currently, she works as an Assistant Professor in Microeconomics at the University of Amsterdam (UvA).

New Candidate Fellow: Sara Signorelli

Signorelli’s PhD thesis is entitled Technological Change, Skill Shortages and Migration Policy. In the same train of thought as her PhD thesis, much of her research is concerned with the labor markets of industrialized countries and the effects of migration thereon. Recently, she has been using quasi-experimental econometric designs and administrative employer-employee data to analyze how skilled migration and technological change affect workers and firms.