NVIDIA Cosmos: Transforming Autonomous Mobility with Physical AI

NVIDIA unveils Cosmos, a platform integrating generative physical AI to advance autonomous mobility and robotics. This platform uses World Foundation Models (WFMs) and advanced data processing to transform human-driven data into scalable, synthetic datasets, enhancing safety, efficiency, and development speed for AVs and industrial systems.
NVIDIA Cosmos: Transforming Autonomous Mobility with Physical AI
Image Credit: Nvidia

At CES 2025 in Las Vegas, NVIDIA made a groundbreaking announcement that promises to reshape the landscape of autonomous mobility and industrial systems. The company introduced NVIDIA Cosmos, a platform integrating generative World Foundation Models (WFMs), advanced tokenizers, guardrails, and a high-speed video processing pipeline designed to accelerate the development of physical AI systems like autonomous vehicles (AVs) and robotics.


This innovation builds upon NVIDIAโ€™s existing “three-computer solution,” a synergistic ecosystem of cutting-edge technologies that includes:

  1. NVIDIA DGX systems for training AI in data centers.
  2. NVIDIA Omniverse on OVX systems for simulation and synthetic data generation.
  3. NVIDIA AGX in-vehicle computers for real-time sensor data processing and safety.

The addition of Cosmos enhances these systems, creating a seamless feedback loop that transforms human-driven data into high-quality, scalable synthetic datasets. This ensures smarter and faster development cycles, improving the performance and safety of autonomous technologies.

What Cosmos Brings to the Table

The Cosmos platform introduces a “data flywheel” that can turn thousands of miles driven by humans into billions of virtually driven miles, significantly amplifying the scale and quality of training data. According to Sanja Fidler, NVIDIAโ€™s Vice President of AI Research, the process leverages 4D reconstruction and AI to create diverse driving scenarios for training and closed-loop evaluations.

Norm Marks, NVIDIAโ€™s Vice President of Automotive, emphasized the transformative impact of Cosmos on physical AI development. Traditionally, creating such systems has been resource-intensive, requiring extensive real-world data collection and curation. Cosmos simplifies this by using generative AI to streamline dataset preparation, enabling faster and more precise development of AI models for AVs and robotics.

Real-World Applications and Adoption

NVIDIAโ€™s Cosmos platform is already gaining traction among transportation industry leaders. Notable early adopters include:

  • Waabi, which uses Cosmos for searching and curating video data to accelerate AV software development and simulation.
  • Wayve, which is leveraging Cosmos to identify rare edge and corner-case driving scenarios critical for safety and validation.
  • Foretellix, an AV toolchain provider, which is utilizing Cosmos alongside NVIDIA Omniverse Sensor RTX APIs to scale high-fidelity testing scenarios.

Additionally, ridesharing giant Uber has partnered with NVIDIA to enhance autonomous mobility. Uber’s extensive driving datasets, combined with Cosmos and NVIDIA DGX Cloud capabilities, will enable the development of robust and efficient AI models.

From Digital Twins to Physical AI

The Cosmos platform aligns perfectly with NVIDIAโ€™s vision of integrating physical AI into various industries. This includes not only autonomous transportation but also factory automation, smart city infrastructure, and even surgical environments. By harnessing WFMs capable of understanding the three-dimensional world, NVIDIA bridges the gap between digital and physical realms.

Rev Lebaredian, NVIDIAโ€™s Vice President of Omniverse and Simulation Technology, underscored the shift from traditional AI models to “physical AI.” Unlike language models, which are one-dimensional, or image-generation models, which are two-dimensional, physical AI demands systems that comprehend and interact with a 3D world. The Cosmos platform, together with NVIDIAโ€™s Omniverse, enables the creation of digital twins โ€” virtual replicas of physical systems that improve continuously through real-world sensor feedback.

The Future of Physical AI

NVIDIAโ€™s CEO, Jensen Huang, highlighted the transformative potential of Cosmos and physical AI in his keynote at CES. He described the evolution from traditional AI to agentic AI and humanoid robots, which can interpret and act within the physical world. With investments in this next wave of innovation, NVIDIA aims to enable the proliferation of billions of physical and virtual robots, unlocking unprecedented possibilities in industries ranging from logistics to healthcare.

โ€œThe world is about to change dramatically,โ€ Huang said. โ€œSoon weโ€™ll have billions of physical and virtual robots powered by AI.โ€

Availability and Accessibility

Cosmos WFMs are currently available under an open model license through Hugging Face and the NVIDIA NGC catalog, with plans to release optimized microservices as NVIDIA NIM. These models are set to empower developers across the globe, democratizing access to state-of-the-art tools for autonomous mobility and beyond.

Conclusion

NVIDIAโ€™s Cosmos platform marks a pivotal moment in the journey toward fully autonomous systems and advanced physical AI. By combining the power of generative AI with its robust three-computer solution, NVIDIA is accelerating the development of safer, smarter, and more efficient technologies. As adoption grows, Cosmos is poised to become the backbone of innovation in autonomous vehicles, robotics, and industrial automation, ushering in a new era of AI-driven transformation.


Recent Content

A study from Cambridge University and the Chinese Academy of Sciences warns that by 2030, generative AI could produce e-waste on an unprecedented scale, with projected volumes reaching millions of tons annually. As AI hardware life cycles shorten to meet the demand for computational power, researchers emphasize the urgent need for sustainable practices. Proposed solutions like hardware reuse, efficient component updates, and a circular economy approach could significantly mitigate AI’s environmental impact, potentially reducing e-waste by up to 86%.
In a global first, Telstra and Ericsson trialed the AI-powered EACC rApp on Telstraโ€™s live network via the Ericsson Intelligent Automation Platform (EIAP). This AI-driven solution enhances network automation by ensuring configuration consistency in real time, helping Telstra advance toward fully autonomous networks. With AI capabilities for self-optimization and self-correction, the EACC rApp improves network efficiency and reliability, offering valuable insights into the potential of AI in telecom to elevate performance and customer experience.
GO, Maltaโ€™s leading provider of quad-play services, has enhanced its partnership with Elisa Polystar by integrating the KALIX Network Analytics portal. This addition enables GO to leverage AI-driven insights for real-time network monitoring and improved customer experience. The platform democratizes access to data, allowing various teams within GO to use insights for faster issue resolution and better decision-making. This expansion supports GOโ€™s broader digital transformation strategy, including investments in 5G and advanced network services.
A recent study highlights how banks are leading in the adoption of generative AI (GenAI). With 60% of banking leaders already utilizing GenAI and 98% planning future use, financial services are seeing notable improvements in areas like risk management, compliance, and customer satisfaction. However, challenges like data privacy and regulatory issues remain. Discover more about banksโ€™ investment in AI and their early returns.
Levita Magnetics pioneers the world’s first AR-assisted robotic surgeries, combining the Meta Quest 3 headset and 3D visualization in Santiago, Chile. This breakthrough in surgical tech enhances precision and efficiency, setting a new standard in patient outcomes and offering future potential for telesurgery and AI integration.
Qualcomm and Google are collaborating to bring advanced AI-powered voice assistants to vehicles, using Qualcommโ€™s Snapdragon Digital Chassis. This partnership aims to enhance driver safety and personalization by enabling real-time navigation, fatigue monitoring, and route suggestions. As AI becomes more integrated into cars, drivers can expect smarter, more responsive in-car systems that improve overall driving experiences and lay the foundation for future developments in autonomous technology.

Currently, no free downloads are available for related categories. Search similar content to download:

  • Reset

It seems we can't find what you're looking for.

Download Magazine

With Subscription

Subscribe To Our Newsletter

Scroll to Top