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News/How robots learn: A brief, contemporary history
mit-tech-review
PublishedApril 17, 2026 at 10:00 AM
—neutral

How robots learn: A brief, contemporary history

How robots learn: A brief, contemporary history
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Roboticists used to dream big but build small. They’d hope to match or exceed the extraordinary complexity of the human body, and then they’d spend their career refining robotic arms for auto plants. Aim for C-3P0; end up with the Roomba. The real ambition for many of these researchers was the robot

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