Bonus Episode: Artificial Intelligence Podcasts With Jennifer Strong

Me, Myself, and AI - Un pódcast de MIT Sloan Management Review and Boston Consulting Group (BCG) - Martes

While Me, Myself, and AI is on winter break, we hope you enjoy this episode. Jennifer Strong, longtime journalist and creator of the SHIFT podcast, joins Sam and Shervin to talk about their favorite Me, Myself, and AI episodes. Read the episode transcript here. Find the additional podcasts mentioned in the episode below: SHIFT podcast In Machines We Trust WSJ’s The Future of Everything  Guest Bio: Jennifer Strong is an audio journalist covering the impact of AI on the way we live and work. She’s the creator of several tech podcasts for newsrooms, including ProPublica, The Wall Street Journal, and MIT Technology Review. Her podcast SHIFT, with the Public Radio Exchange, covers "the far-reaching impact of automation on our daily lives," according to Apple Podcasts. Her reporting has been widely recognized, including six Webby and three Podcast Academy Award nominations. Her narrative podcasts were finalists at the New York Festivals for the last two years, and a finalist for Podcast of the Year by The Drum Awards in London for a taping she did inside an experimental fighter plane. Strong has also produced a business show for NPR and reported on national security for PRI. She’s been a keynote stage host and moderator at the AI for Good Global Summit, The Future of Everything Festival, Web Summit, among others. Me, Myself, and AI is a collaborative podcast from MIT Sloan Management Review and Boston Consulting Group and is hosted by Sam Ransbotham and Shervin Khodabandeh. Our engineer is David Lishansky, and the coordinating producers are Allison Ryder and Sophie Alanna Hooper. Stay in touch with us by joining our LinkedIn group, AI for Leaders at mitsmr.com/AIforLeaders or by following Me, Myself, and AI on LinkedIn.  We encourage you to rate and review our show. Your comments may be used in Me, Myself, and AI materials. 

Visit the podcast's native language site