NVIDIA AI agents train robots to install GPUs and cut zip ties

Researchers at NVIDIA have developed a system where teams of AI coding agents autonomously train robots to perform complex tasks such as inserting graphics cards and cutting zip ties.

The project relies on a framework called ENPIRE, created by NVIDIA's GEAR lab in collaboration with Carnegie Mellon University and the University of California, Berkeley. AI agents using models from OpenAI, Anthropic, and Moonshot AI tested and refined robot training policies over multiple cycles.

Experiments achieved a 99 percent success rate on tasks including moving blocks, organizing pins, and handling GPUs. Larger teams of up to eight agents completed training faster than smaller groups, though they consumed more computational resources.

Jim Fan, director of AI at NVIDIA, noted that the lab now self-improves overnight, with researchers reviewing results each morning. The team plans to open-source the framework for broader use.

The work builds on NVIDIA's recent robotics partnerships, including a May agreement with Unitree and discussions with Hyundai Motor Group in early June.

Awọn iroyin ti o ni ibatan

Nvidia's GTC event at the San Jose McEnery Convention Center featured demonstrations of several robots, including those from IntBot, Humanoid, and Noble Machines. Attendees interacted with AI-powered bots providing directions and fetching items via fleet control. The displays illustrated potential advancements in robotics, as predicted by Nvidia CEO Jensen Huang.

Ti AI ṣe iroyin

Physical Intelligence, a San Francisco startup founded in 2024, is advancing robot control systems that learn multiple tasks using vision-language-action models derived from large language models. The company has demonstrated robots performing varied activities such as making coffee, folding clothes and cooking sweet potatoes based on verbal instructions.

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