Autonomous factory with humanoid, trucks, and robotic arms

Advance Next-Generation Robots and Edge AI Solutions

Overview

Physical AI for End-to-End Development

As physical AI-powered edge systems and infrastructure increasingly automate, they must autonomously perceive, plan, and execute complex tasks—from traffic pattern detection and industrial inspection to autonomous mobile robots in warehouses and logistics.

To develop and deploy the next generation of autonomous AI systems, a new framework is required. This involves training multimodal, generalized AI models for various tasks, then testing and validating these models and their associated software in simulation. Finally, the entire stack is deployed on the physical edge AI system to perform actions in real time. 

NVIDIA’s three computers—for training, simulation, and deployment—are essential for achieving human-like intelligence for autonomous edge solutions.

The Three-Computer Solution: Powering the Next Wave of AI Robotics

Industrial and physical AI systems, from humanoids to factories, are accelerated by NVIDIA’s three computers for training, simulation, and inference.

NVIDIA Omniverse Physical AI Operating System Expands Ecosystem to More Industries and Partners

Leading industrial software and service providers Databricks, Dematic, Hexagon, Microsoft, Omron, Oracle, SAP, Schneider Electric, Siemens and more are integrating NVIDIA Omniverse into their solutions to accelerate industrial digitalization with physical AI.

Solutions

Explore Our Robotics and Edge AI Solutions

AI-enabled Robotics Platform

Robotics

  • Accelerate robotics with AI—from development to simulation to deployment.
  • Enable key robotic functions: mobility, grasping, and vision.
  • Build robots across industries, including manufacturing, retail, agriculture, logistics, delivery, healthcare, and more.
 NVIDIA Metropolis - Video Analytics & Applications

Vision AI

  • Train, build, deploy, and scale vision AI applications from edge to cloud.

  • Unlock valuable insights for many spaces, including retail, warehouses, cities, and more.

  • Bring visual data and AI together to improve efficiency and safety in multiple industries.

Edge Computing Solutions For Enterprise

Edge AI

  • Bring the power of AI to edge devices and process data at the source.
  • Discover actionable, real-time insights to make better decisions, improve services, and streamline operations.
  • Improve security and reduce costs through local processing.

Resources

The Latest in Robotics & Edge AI Resources

NVIDIA Aerial Expands With New Tools for Building AI-Native Wireless Networks
March 18, 2025
The telecom industry is increasingly embracing AI to deliver seamless connections — even in conditions of poor signal strength — while maximizing sustainability and spectral efficiency, the amount of information that can be transmitted per unit of bandwidth. Advancements in AI-RAN technology have set the course toward AI-native wireless networks for 6G, built using AI Read Article
NVIDIA Unveils AI-Q Blueprint to Connect AI Agents for the Future of Work
March 18, 2025
AI agents are the new digital workforce, transforming business operations, automating complex tasks and unlocking new efficiencies. Now, with the ability to collaborate, these agents can work together to solve complex problems and drive even greater impact. Businesses across industries, including sports and finance, can more quickly harness these benefits with AI-Q — a new Read Article
NVIDIA Unveils Open Physical AI Dataset to Advance Robotics and Autonomous Vehicle Development
March 18, 2025
Teaching autonomous robots and vehicles how to interact with the physical world requires vast amounts of high-quality data. To give researchers and developers a head start, NVIDIA is releasing a massive, open-source dataset for building the next generation of physical AI. Announced at NVIDIA GTC, a global AI conference taking place this week in San Read Article

Introducing NVIDIA DGX Spark

DGX Spark brings the power of NVIDIA Grace Blackwell™ to developer desktops. The GB10 Superchip, combined with 128 GB of unified system memory, lets AI researchers, data scientists, and students work with AI models locally with up to 200 billion parameters.

Next Steps

Stay up to date on the latest robotics news from NVIDIA.

Select Location
Middle East