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Home/Models & Labs
Models & Labs

NVIDIA Unveils Cosmos 3 for Physical AI Development

NVIDIA Blog·June 1, 2026·high confidence

Why it matters

  • →Cosmos 3 enhances AI systems' ability to predict and act in real-world scenarios.
  • →It provides developers with tools to generate synthetic data for training AI systems.
  • →The model supports fine-tuning for specific tasks, improving AI adaptability.
NVIDIA Unveils Cosmos 3 for Physical AI Development
©NVIDIA Blog

NVIDIA has introduced Cosmos 3, a foundation model aimed at advancing physical AI systems, including robots and autonomous vehicles. Announced at NVIDIA GTC Taipei, Cosmos 3 combines vision reasoning with multimodal generation to help AI systems understand and predict real-world scenarios. It can generate action data necessary for robotic tasks, enhancing their ability to operate autonomously. This model supports developers in creating synthetic data and refining AI systems for specific tasks and environments. Cosmos 3's release is a notable development in making AI systems more responsive and effective in complex, dynamic settings.

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