Bring the power of NVIDIA AI to the edge for real-time decision-making solutions.
Billions of IoT sensors across retail stores, city streets, warehouses, and hospitals are producing vast amounts of data. Tapping into this data faster and more efficiently can enhance services, streamline operations, and save lives. To achieve this, enterprises must make real-time decisions by deploying AI computing at the network edge where data is generated.
At the edge, IoT and mobile devices employ embedded processors to gather data. Edge computing brings AI directly to these devices, processing data where it's captured—instead of in the cloud or data center. This speeds up the AI pipeline for real-time decision-making and autonomous machines.
Processing data at the point of action means data travel is reduced or eliminated, accelerating AI.
When sensitive data is processed locally, it doesn’t need to be sent to the cloud, so it’s better protected.
Sending data to the cloud demands bandwidth and storage. Local processing lowers those costs.
Edge computing occurs locally without the need for internet access. That expands the places AI can go.
Edge computing is made for real-time, always-on solutions. By processing data as close to its source as possible, latency is minimized and organizations gain actionable insights in real time. Businesses can respond to customers instantly, deliver critical information to surgeons as they operate, run warehouses with maximum efficiency and safety, drive innovation in autonomous vehicles, and much more.
Smart stores are the future of retail. Learn how leading retailers like Walmart are leaning into AI at the edge to optimize everything from in-store analytics to warehouse operations to last-mile delivery.
Edge AI is helping manufacturers realize the factory of the future. See how BMW Group is using it to get a 360° view of their assembly line and power a safer, more efficient, automated operation.
Liverpool, Australia, is expecting a boom in daily commuters—and that means new infrastructure challenges. Learn how the city is using real-time insights from video streams to predict traffic flows and make better decisions.
AI is helping make our hospitals and healthcare options smarter and safer to deliver better patient care. With edge computing, AI can be brought directly to the examination room, the operating room table, or a patient’s bedside.
The nexus of 5G, the internet of things (IoT), and edge computing is turbocharging network performance and moving telco services out to the edge in connected factories, retail stores, hospitals, and even city streets.
With edge computing, utilities are dynamically forecasting energy demand and managing supply, integrating renewable and distributed energy resources, and enhancing grid resiliency through a software-defined smart grid.
Learn more about real-time performance at the edge.
AI, cloud-native applications, IoT with billions of sensors, and 5G networking enable widespread AI at the edge. Explore NVIDIA solutions in enterprise edge, embedded edge, and industrial edge, all of which deliver real-world results by automating intelligence at the point of action and driving decisions in real time.
Realize the promise of edge computing with powerful compute, remote management, and industry-leading technologies. The NVIDIA EGX™ platform brings together NVIDIA-Certified Systems™, embedded platforms, software, and management services, so you can take AI to the edge.
NVIDIA IGX Orin™ is a high-performance AI platform that features industrial-grade hardware and enterprise software and support. Purpose-built for industrial and medical environments, IGX delivers industry-leading performance, security, and functional safety, plus a 10-year lifecycle and support.
Bring your next-gen edge products to life with the world’s most powerful AI computer for energy-efficient autonomous machines. The NVIDIA Jetson™ platform brings incredible new capabilities to the edge, accelerating product development and deployment at scale.
NVIDIA LaunchPad provides free access to enterprise NVIDIA hardware and software through an internet browser. You can experience the power of AI with end-to-end solutions through guided hands-on labs or as a development sandbox. Test, prototype, and deploy your own applications and models against the latest and greatest that NVIDIA has to offer.
Simplify and accelerate end-to-end AI workflows at the edge with the NGC™ catalog. This is a hub that offers GPU-optimized containers, pretrained AI models, and industry-specific SDKs that can be deployed on premises, in the cloud, or at the edge to help you build best-in-class solutions.
The Jetson Generative AI Lab is your gateway to bringing this amazing technology to the world. Explore tutorials on text generation, text and vision models, image generation, and distillation techniques, and access resources to run these models on NVIDIA Jetson Orin.
Edge computing processes data close to its source, enabling real-time, always-on solutions and minimizing latency. This lets organizations gain instant insights to respond swiftly to customers, provide critical data to surgeons during operations, optimize warehouse operations for efficiency and safety, innovate in autonomous vehicles, and more.
Modern AI robots excel in performing complex tasks with precision and autonomously navigating in unstructured environments. Learn how world-class robotics companies take AI, accelerated computing, and physically based simulations to enable robots to adapt and learn faster and more efficiently.
Siemens
Take a deeper dive into edge AI and determine if it’s the right choice for your organization.
Get the latest news in edge computing from NVIDIA.
Edge computing is computing done at or near the source of data, allowing for the real-time processing of data that’s preferred for intelligent infrastructure. Cloud computing is done within the cloud. This type of computing is highly flexible and scalable, making it ideal for customers who want to get started quickly or those that have varying usage. Both computing models have distinct advantages, which is why many organizations will look to a hybrid approach to computing.
Edge computing offers benefits such as lower latency, higher bandwidth, and data sovereignty compared to traditional cloud or data center computing. Many organizations are looking for real-time intelligence from AI applications. For example, self-driving cars, autonomous machines in factories, and industrial inspection all present a serious safety concern if they can’t act quickly enough—in real time—on the data they ingest.
Edge computing isn't limited to any industry or application. Organizations across every industry are using these solutions to accelerate their applications and take advantage of the benefits of AI at the edge. Examples include smart shopping experiences in retail, intelligent infrastructure in smart cities, and automation of industrial manufacturing.
NVIDIA Privacy Policy