• Stars
    star
    208
  • Rank 189,015 (Top 4 %)
  • Language
    Dockerfile
  • License
    MIT License
  • Created about 4 years ago
  • Updated 8 months ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Docker Image for Ubuntu Desktop which support HW GPU accelerated GUI apps. you can access the Container with ssh or remote desktop, just like Cloud VM.

Ubuntu Desktop based on Docker

DockerHub

简体中文

This project provides a docker image which supports ubuntu desktop (xfce4, lightweight, fast and low on system resources), so that you can run virtual ubuntu desktop in container, you can access it by using ssh or remote desktop just like a virtual machine.

Hardware GPU accelerated rendering for 3D GUI application is supported in container, it's based on EGL by using VirtualGL, and doesn't require /tmp/.X11-unix. if you needn't hardware GPU accelerated rendering, you can also run this container on headless host without GPU (for exmaple, Cloud Server), remote desktop and 3d GUI based on software rendering (high cpu usgae) is also supported.

Tip: Hardware GPU accelerated rendering is only verified on ubuntu desktop system host with monitor. i'm not sure if hardware GPU accelerated rendering can work for headless ubuntu server system host.

Features

  • Remote access by ssh and nomachine (remote desktop).
  • OpenGL rendering based on software rasterizer (LLVMpipe) with high CPU usgae. (default)
  • OpenGL rendering based on Nvidia GPU hardware-accelerated.
  • Pre-installed chrome browser.
  • pre-installed CUDA toolkit, which is useful for deep learning, such as pytorch, tensorflow.

Tip: it's useful to share public computer resources in labs, you can run a independent computer environment like a virtual machine, but more lightweight, and easier to deploy.

  • fast to deploy multiple independent developing environment on a single computer.
  • easy to share files with host or another container.
  • easy to transfer environment to another new computer (save and load image).

xfce4 desktop:

Docker Image Tags:

Supported Tags (you can find here Github Tag):

  • Tags of base image:18.04, 20.04, 22.04
  • Tags of image with cuda (based on nvidia/cuda):18.04-cu11.0.3, 20.04-cu11.0.3 etc.
  • naming rules is {UBUNTU VERSION}-cu{CUDA VERSION}, you can find supported {CUDA VERSION} in Docker Image <nvidia/cuda>

Supported {CUDA VERSION}:

  • Ubuntu18.04:11.0.3, 11.1.1, 11.2.2
  • Ubuntu20.04:11.0.3, 11.1.0, 11.2.2, 11.3.1, 11.4.3, 11.5.2, 11.6.2, 11.7.1
  • Ubuntu22.04:11.7.1, 11.8.0, 12.0.1, 12.1.1

Preliminary

  • install nvidia driver
  • install docker and nvidia-container-runtime.

Tip: the newer cuda version isn't supported if you use older nvidia driver.

Quickly Start

pull docker image

docker pull gezp/ubuntu-desktop:20.04-cu11.0.3
# use aliyuncs mirror for chinese users (国内用户可使用阿里云仓库)
# docker pull registry.cn-hongkong.aliyuncs.com/gezp/ubuntu-desktop:20.04-cu11.0.3

create conatiner

# create conatiner
docker run -d --restart=on-failure \
    --name my_workspace \
    --cap-add=SYS_PTRACE \
    --gpus all  \
    --shm-size=1024m \
    -p 10022:22  \
    -p 14000:4000  \
    gezp/ubuntu-desktop:20.04-cu11.0.3
  • the default username and password are both ubuntu.

access conatiner by ssh

ssh ubuntu@host-ip -p 10022
  • it's recommended to use vscode + remote ssh plugin

access conatiner by nomachine client (remote desktop)

Advanced Usage

Custom User Argument

configure USER, PASSWORD, GID, UID when you create conatiner,for example:

docker run -d --restart=on-failure \
    --name my_workspace \
    --cap-add=SYS_PTRACE \
    --gpus all  \
    -e USER=cat \
    -e PASSWORD=cat123 \
    -e GID=1001 \
    -e UID=1001 \
    --shm-size=1024m \
    -p 10022:22  \
    -p 14000:4000  \
    gezp/ubuntu-desktop:20.04-cu11.0.3

Enable GPU hardware-accelerated rendering

test VirtualGL

vglrun glxinfo | grep -i "opengl"
  • hardware-accelerated is enable successfully if it's output contain NVIDIA Product Series.

you need add prefix vglrun for command when you run 3D software, for example vglrun gazebo.

Test vulkan

# vulkan info
vulkaninfo | grep -i "GPU"
# vulkan demo
vkcube
  • it's output should contain NVIDIA Product Series if vulkan works well.

CUDA

add shell in .bashrc to update environment variable

export CUDA_HOME=/usr/local/cuda
export PATH=/usr/local/cuda/bin:$PATH
export LD_LIBRARY_PATH=/usr/local/cuda/lib64:$LD_LIBRARY_PATH
  • for detailed usage, you can refer to nvidia/cuda Docker Image.

Build

for example

git clone https://github.com/gezp/docker-ubuntu-desktop.git
cd docker-ubuntu-desktop
# for 20.04
./docker_build.sh 20.04
# for 20.04-cu11.0  (based on nvidia/cuda)
./docker_build.sh 20.04-cu11.0

Acknowledgement

thanks to the authors of following related projects: