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Ideate. A User Experience UX Design Podcast - product design
TSG - user experience design - human centered design thinking - ux - ui - product design -
12 episodes
9 months ago
What do we want to get out of our experience with hospitals and doctors? How do connected devices play into each of our individual healthcare experiences? And how can we use machine learning to make sense of a massive amount of data?
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Technology
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What do we want to get out of our experience with hospitals and doctors? How do connected devices play into each of our individual healthcare experiences? And how can we use machine learning to make sense of a massive amount of data?
Show more...
Technology
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8: Shopping πŸ› User Experience - Retail
Ideate. A User Experience UX Design Podcast - product design
1 hour 1 minute 27 seconds
7 years ago
8: Shopping πŸ› User Experience - Retail
What can the retail experience learn from sushi restaurants, Aaron's very own "Convenience Threshold Formula", symbiotic relationships, and Paul from 2009?
Ideate. A User Experience UX Design Podcast - product design
What do we want to get out of our experience with hospitals and doctors? How do connected devices play into each of our individual healthcare experiences? And how can we use machine learning to make sense of a massive amount of data?