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Article

External data and AI are making each other more valuable

Dimitris Bertsimas, faculty lead for entrepreneurship at the MIT Jameel Clinic, and Adam Nahari, an MIT system design and management fellow, co-author an article for Harvard Business Review about the industries-wide implications and opportunities for external data collection and use in the age of AI.

Details

author(s)
Dimitris Bertsimas
publication date
26 February 2024
source
Harvard Business Review Press
related programme
MIT Jameel Clinic
Link to publication
External link ->

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