Go to file
Evan Lezar 4b50ca0cb5
Some checks failed
CI Pipeline / code-scanning (push) Has been cancelled
CI Pipeline / variables (push) Has been cancelled
CI Pipeline / golang (push) Has been cancelled
CI Pipeline / image (push) Has been cancelled
CI Pipeline / e2e-test (push) Has been cancelled
Extract deb and rpm packages to single image
This change swithces to using a single image for the NVIDIA Container Toolkit contianer.
Here the contents of the architecture-specific deb and rpm packages are extracted
to a known root. These contents can then be installed using the updated installation
mechanism which has been updated to detect the source root based on the packaging type.

Signed-off-by: Evan Lezar <elezar@nvidia.com>
2025-04-17 16:25:49 +02:00
.github
cmd Extract deb and rpm packages to single image 2025-04-17 16:25:49 +02:00
deployments Extract deb and rpm packages to single image 2025-04-17 16:25:49 +02:00
docker
hack
internal
packaging
pkg
scripts
testdata
tests
third_party
vendor
.common-ci.yml
.dockerignore
.gitignore
.gitlab-ci.yml
.gitmodules
.golangci.yml
.nvidia-ci.yml
CHANGELOG.md
CONTRIBUTING.md
DEVELOPMENT.md
go.mod
go.sum
LICENSE
Makefile
README.md
RELEASE.md
versions.mk

NVIDIA Container Toolkit

GitHub license Documentation Package repository

nvidia-container-stack

Introduction

The NVIDIA Container Toolkit allows users to build and run GPU accelerated containers. The toolkit includes a container runtime library and utilities to automatically configure containers to leverage NVIDIA GPUs.

Product documentation including an architecture overview, platform support, and installation and usage guides can be found in the documentation repository.

Getting Started

Make sure you have installed the NVIDIA driver for your Linux Distribution Note that you do not need to install the CUDA Toolkit on the host system, but the NVIDIA driver needs to be installed

For instructions on getting started with the NVIDIA Container Toolkit, refer to the installation guide.

Usage

The user guide provides information on the configuration and command line options available when running GPU containers with Docker.

Issues and Contributing

Checkout the Contributing document!