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The Challenge of Interpretability in Deep Learning
This chapter explores the complexities of understanding deep learning models, particularly neural networks, using AlphaGo as a key example. It underscores the tension between achieving high performance and maintaining transparency in artificial intelligence systems.
François Modave, PhD, is Professor of Artificial Intelligence, Digital Health at Wake Forest University (North Carolina). He is also a triathlete with over 30 years in the sport. In this episode, François discusses key concepts of artificial intelligence and how it could be applied (and to what level of success) in a triathlon context.
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WHAT SHOULD I LISTEN TO NEXT?
If you enjoyed this episode, I think you'll love the following episodes:
You can find our full episode archives here, where you can filter for categories such as Training, Racing, Science & Physiology, Swimming, Cycling, Running etc.
You can also find separate archives for specific series of episodes I've done, specifically Q&A episodes, TTS Thursday episodes, and Beginner Tips episodes.
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