Real world model explainability with Rayid Ghani - TWiML Talk #283

The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence) - Podcast tekijän mukaan Sam Charrington

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Today we’re joined by Rayid Ghani, Director of the Center for Data Science and Public Policy at the University of Chicago. Drawing on his range of experience, Rayid saw that while automated predictions can be helpful, they don’t always paint a full picture. The key is the relevant context when making tough decisions involving humans and their lives. We delve into the world of explainability methods, necessary human involvement, machine feedback loop and more.

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