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  "path": "/blog/cvpr-physical-ai-research-agent-skills/",
  "publishedAt": "2026-06-03T15:00:35.000Z",
  "site": "https://blogs.nvidia.com",
  "tags": [
    "Driving",
    "Robotics",
    "Agentic AI",
    "Artificial Intelligence",
    "Computer Vision",
    "Cosmos",
    "Events",
    "Isaac",
    "Metropolis",
    "Nemotron",
    "NVIDIA Blueprints",
    "NVIDIA Research",
    "Omniverse",
    "Open Source",
    "Physical AI",
    "Simulation and Design",
    "Synthetic Data Generation"
  ],
  "textContent": "At CVPR, NVIDIA is unveiling new physical AI agent skills that help researchers and developers speed the development of autonomous vehicles, robots and vision AI systems. The core challenge in physical AI research isn’t simply developing stronger models. It’s building a full workflow around them — reconstructing real-world scenes, generating edge-case scenarios, training policies, evaluating […]",
  "title": "NVIDIA Enables the Next Era Of Physical AI Research With Agent Skills For Autonomous Vehicles, Robotics And Vision AI"
}