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Video Friday: A Billion Dollars for Humanoid Robots

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IEEE Spectrum

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AI Generated

The article discusses the significant funding of over $1 billion for humanoid robots and explores the possibilities of what kind of humanoid robot can be developed with this funding. The focus is on the potential advancements and innovations in robotics that could result from such a substantial investment. The article is part of a series called "Video Friday" that showcases exciting robot videos. The author, Evan Ackerman, is the robotics editor at IEEE Spectrum.

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