Income of High-Skill Workers Growing in Rural Areas, Student Research on ‘Brain Drain’ Finds
<p> <img loading="lazy" src="https://www.cmu.edu/news/sites/default/files/styles/listings_desktop_1x_/public/2025-12/251112C_KausthubSatluri_EH_003.jpg.webp?itok=WaS-XteS" width="900" height="508" alt="A man with a moustache and curly hair leans against a wall at the bottom of a staircase with his arms folded."> </p> Carnegie Mellon University junior Kausthub Satluri analyzed data about how people move based on where jobs are located for a SURF project after inspiration from a macroeconomics class.
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