Big Tech's Capability Crisis: Lessons from Radiology on Automation and Guardrails
By
Chengwei Liu, Balázs Kovács
Pale and squishy. Not ruined, just not done.
Summary
This article discusses how the automation of radiology output should not eliminate the need for human checks and guardrails, drawing lessons for Big Tech's looming capability crisis. The author, Chengwei Liu, is a professor at Imperial Business School whose forthcoming book explores challenging conventional wisdom.
Key quotes
· 1 pulledLessons from radiology on how automating output shouldn't mean eliminating checks and guardrails.
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