Host Jennifer Strong thoughtfully examines the far-reaching impact of artificial intelligence on our daily lives. Produced by MIT Technology Review, the podcast explores the rise of AI through the voices of people reckoning with the power of the technology, and by taking listeners up close with the inventors and founders whose ambitions are fueling the development of new forms of AI.
Publishes | Weekly | Episodes | 84 | Founded | 4 years ago |
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Categories | TechnologyTech NewsNews |
Three years ago this week we launched this podcast on a mission to show the world how AI touches our everyday lives. It's been our great honor and privilege to make it through three seasons, a global pandemic, an unbelievable nineteen (19!!) award no... more
Hidden away in our voices are signals that may hold clues to how we’re doing, what we’re feeling and even what’s going on with our physical health. Now, AI systems tasked with analyzing these signals are moving into healthcare. more
AI is used in farming in some ways you might not expect, like for tracking the health of crops—from space. We travel from test farms to labs in the second installment of our series on agriculture, AI, and satellites. more
In this special episode we bring you a live taping between the "Godfather of AI" Geoffrey Hinton and MIT Technology Review's Senior Editor for AI Will Douglas Heaven. This conversation was recorded at EmTech Digital, our signature AI event, in the MI... more
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Good and important content, but incredibly annoying, distracting background music while reporting is going on, as though the people producing the podcast don’t have enough confidence in the content itself or speakers and need to beef things up with some dumb soundtrack.
I started listening to this show to learn about cool new technologies and upcoming ideas. It has slowly devolved into people talking back and forth. It has just got more and more boring.
In Machines We Trust has quickly become a favorite in my feed! I so enjoy the detailed exploration of the latest in AI technology happening here. Don't miss this one!
Really enjoyed listening to your episode on “What’s Behind a Smile.” Going to check out more episodes and will recommend it to others. more
Excellent research, well done and very informative!!
Apple Podcasts | #185 | United States/Technology |
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Apple Podcasts | #47 | Ireland/Technology |
Apple Podcasts | #79 | Brazil/Technology |
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In Machines We Trust launched 4 years ago and published 84 episodes to date. You can find more information about this podcast including rankings, audience demographics and engagement in our podcast database.
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