An Interview With D. Sculley For Gradient Dissent
D. Sculley is CEO of Kaggle, the beloved and well-known data science and machine learning community, and author if the influential 2015 paper, " "Machine Learning: The High Interest Credit Card of Technical Debt".
🎥 Watch The Full Episode At https://www.youtube.com/watch?v=1aajTQvZJ94
📝 Show Notes: http://wandb.me/d-sculley
The transcript of this short of the full interview with D. Sculley:
D. Sculley: There’s plenty of physics that you can do in the world, as far as I understand it, that doesn’t involve having access to a super collider or things like that. And similarly, I believe that …
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