For the first time ever, 8 Codex-AutoResearch agents BRING LIFE TO A ROBOT FLEET achieving end-to-end success in solving a task in the physical world with with NO HUMAN BRIDGE in between...SELF IMPROVING a part of Nvidia Gear Lab
Summary
Researchers at Nvidia Gear Lab achieved a milestone where 8 Codex-AutoResearch agents autonomously controlled a robot fleet to solve a physical world task without human intervention, demonstrating self-improvement.
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