
Descripción de NVIDIA Cosmos: Accelerating Physical AI 4e1y3v
This podcast will discuss the NVIDIA Cosmos™ platform, which utilises state-of-the-art generative world foundation models to accelerate the development of physical AI systems like autonomous vehicles and robots. Physical AI models are expensive to develop, requiring large amounts of real-world data and testing. Cosmos world foundation models offer a way to produce large quantities of photorealistic, physics-based synthetic data to train and assess existing models. Key features of the NVIDIA Cosmos platform: Open models: Developers can customise the models with datasets tailored to their specific applications. For example, you can use video recordings of autonomous vehicles or robots operating in a warehouse. Physics-based video generation: Cosmos world foundation models can generate physics-based videos from a range of inputs, including: Focus on physical interactions: The models are designed to handle physically based interactions, object permanence, and the generation of high-quality simulated environments, such as warehouses, factories, and diverse driving conditions. Video tokenizers: These tools accelerate model training by converting images and videos into compact representations. Guardrail system: A two-stage guardrail system ensures safe and trustworthy AI. Benefits of NVIDIA Cosmos for Physical AI development: Accelerated development: Cosmos models can significantly speed up the development process for robots and autonomous vehicles. Reduced costs: Using synthetic data generated by Cosmos can lower the expense of data collection and testing. Improved safety: The guardrail system promotes responsible AI development by mitigating potential risks. Democratization of physical AI: NVIDIA aims to make general robotics accessible to every developer. More about LunarTech: https://lunartech.ai 372e6d
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