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Nvidia

Nvidia is a semiconductor and computing platform company that develops GPUs, accelerated computing hardware, and software platforms for data centers, Artificial Intelligence (AI), High performance computing (HPC), graphics, and edge systems.

  • Graphics Processing Unit (GPU) hardware platforms for data center, AI, HPC, graphics, and edge workloads (AI infrastructure, Compute infrastructure)
  • End-to-end accelerated computing and AI software stacks, SDKs, and frameworks (AI/ML software, Developer tools)
  • Data center and cloud-scale platforms for training and inference workloads (AI infrastructure, Cloud infrastructure)
  • Automotive and robotics compute platforms for perception, planning, and control (Embedded AI, Edge computing)
  • Enterprise solutions for visualization, digital twins, and virtual workstations (Visualization, Virtualization)

More About Nvidia

Nvidia provides GPU-based (AI infrastructure) and accelerated computing platforms that enterprises use to run AI, Machine Learning (ML), data analytics, graphics, and HPC workloads in data centers and public clouds.

The company’s data center offerings combine GPUs, high-speed interconnects, and software to support model training and inference for workloads such as large language models, computer vision, recommendation systems, and scientific computing; these platforms are deployed by cloud providers, enterprises, and research institutions as AI infrastructure and general-purpose accelerated compute.

Nvidia supplies full software stacks (AI/ML software) that include drivers, runtime libraries, and domain-specific SDKs for deep learning, data science, computer graphics, simulation, and media processing, enabling enterprises to build and deploy applications on its GPUs across on-premises (on-prem), cloud, and hybrid environments.

Its platforms integrate with standard enterprise and cloud-native technologies, including container orchestration, virtualization, and common AI frameworks, and are used to implement architectures such as GPU-accelerated clusters for Kubernetes-based AI workloads and virtual GPU deployments for remote desktops and workstations.

Nvidia also offers networking technologies (Data center networking) designed for high-throughput, low-latency interconnects between servers and GPU nodes, supporting large-scale clusters used for AI training, big data analytics, and HPC workloads.

In visualization and virtual workstation use cases (Visualization, Virtualization), enterprises run Cohort Analysis Dashboard (CAD), 3D content creation, simulation, and digital twin workloads on Nvidia GPUs, either on-prem or via cloud and Virtual Desktop Infrastructure (VDI), to support distributed engineering and design teams.

The company addresses automotive, robotics, and embedded markets with compute platforms (Embedded AI, Edge computing) that target in-vehicle computing, autonomous driving stacks, industrial robots, and edge AI devices, providing hardware and software for perception, mapping, and control pipelines.

Across these solution areas, Nvidia positions its hardware and software in enterprise IT categories including AI infrastructure, data center compute, visualization, VDI, data center networking, and edge/embedded AI, and its platforms are used to build GPU-accelerated services that complement general-purpose CPU-based infrastructure.

At-A-Glance

  • Employees: 29,600
  • Estimated Annual Revenue: $10B+
  • Stock Ticker: NVDA

Connect

Corporate Headquarters

2788 San Tomas Expressway
Santa Clara, CA 95051

Market Segmentation

  • Type: Public
  • Sector: Information Technology
  • Group: Semiconductors & Semiconductor Equipment
  • Industry: Semiconductors & Semiconductor Equipment
  • Sub-Industry: Semiconductors

Acquisitions

Projects