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Docker容器配置

本文介绍Docker容器配置过程。Docker使您能够在容器内隔离的不同环境中开发或运行基于UNIGINE的应用程序。您的计算机需要有一个NVIDIA图形卡和Linux系统与Ubuntu复制所有必要的步骤。

要在Amazon、Open Suse、Debian、Centos或RHEL等其他发行版中工作,请参阅NVIDIA Container Toolkit文档

系统要求#

您需要关闭所有播放声音的程序。应在系统中安装ALSA驱动程序才能正确播放声音。

注意

Docker守护程序绑定到Unix套接字,而不是TCP端口。默认情况下,拥有Unix套接字的是root用户,其他用户只能使用sudo访问它(阅读更多)。Docker守护程序始终以root用户身份运行。

如果您不想在docker命令的前面加上sudo,请创建一个名为docker的Unix组并向其添加用户(阅读更多)。当Docker守护程序启动时,它会创建一个可由docker组的成员访问的Unix套接字。

Docker配置#

要配置Docker,请执行以下步骤:

  1. 安装NVIDIA容器工具包
  2. 获取Docker容器镜像或者自己组装
  3. 在测试模式下运行Docker容器

NVIDIA容器工具包安装#

  1. 根据其配置文档,配置NVIDIA Container Toolkit。安装包存储库和GPG键,键入命令行:

    输出
    $ distribution=$(. /etc/os-release;echo $ID$VERSION_ID) \
    && curl -fsSL https://nvidia.github.io/libnvidia-container/gpgkey | sudo gpg --dearmor -o /usr/share/keyrings/nvidia-container-toolkit-keyring.gpg \
    && curl -s -L https://nvidia.github.io/libnvidia-container/$distribution/libnvidia-container.list | \
        sed 's#deb https://#deb [signed-by=/usr/share/keyrings/nvidia-container-toolkit-keyring.gpg] https://#g' | \
        sudo tee /etc/apt/sources.list.d/nvidia-container-toolkit.list
  2. 安装nvidia-docker2:

    输出
    $ sudo apt-get update
    $ sudo apt-get install -y nvidia-docker2

  3. 重启Docker:

    输出
    $ sudo systemctl daemon-reload
    $ sudo systemctl restart docker

准备容器映像#

Docker Hub上有一个我们为您准备的即用型容器映像:查看以下链接run-unigine-in-docker并使用以下命令:

输出
docker pull unigine/run-unigine-in-docker

如果出于任何原因,您想要手动准备和组装容器映像,而不是使用Docker Hub的容器映像,请按照以下说明进行操作:

  1. 创建要使用容器的文件夹:

    输出
    $ mkdir ~/unigine-in-docker
  2. unigine-in-docker/文件夹内创建一个Dockerfile文本文件:

    输出
    $ cd ~/unigine-in-docker
    $ touch Dockerfile
  3. 将以下行添加到Dockerfile文件并保存:

    输出
    FROM nvidia/opengl:base-ubuntu20.04
    VOLUME /tmp/.X11-unix
    RUN apt update && apt upgrade -y
    
    # linux-headers- hardcoded, if it don't build - try update version of linux-headers
    RUN DEBIAN_FRONTEND=noninteractive apt-get update && DEBIAN_FRONTEND=noninteractive apt install -y \
    	python3 \
    	wget gnupg \
    	xvfb \
    	x11-xserver-utils \
    	python3-pip \
    	libegl1-mesa \
    	libgl1-mesa-dev \
    	libxv1 \
    	gcc g++ make ccache \
    	libxrandr-dev \
    	libxinerama-dev \
    	libopenal1 \
    	libxrender-dev \
    	libxext-dev \
    	libc6-dev \
    	libx11-dev \
    	libxi-dev \
    	libxml2-dev \
    	cmake \
    	nano vim \
    	lshw \
    	libglu1-mesa \
    	mesa-utils \
    	glmark2 \
    	xxd \
    	# for sdk bro2 \
    	libxcb-shape0 \
    	libxcb-xkb1 \
    	libxcb-icccm4 \
    	libxcb-image0 \
    	libxcb-keysyms1 \
    	libxcb-render-util0 \
    	libxkbcommon-x11-0 \
    	linux-headers-5.4.0-135-generic \
    	lxterminal \
    	# sound \
    	alsa-base \
    	alsa-utils \
    	libsndfile1-dev
    
    COPY ./asound.conf /etc/
    
    RUN python3 -m pip install pyinotify
    
    ENV XDG_RUNTIME_DIR=/tmp/.X11-unix
    
    # install dotnet and runtime
    # if it don't build - try to find more recent versions of dotnet at https://dotnet.microsoft.com/en-us/download/dotnet/6.0
    
    RUN wget -O dotnet.tar.gz https://download.visualstudio.microsoft.com/download/pr/01292c7c-a1ec-4957-90fc-3f6a2a1e5edc/025e84c4d9bd4aeb003d4f07b42e9159/dotnet-sdk-6.0.418-linux-x64.tar.gz
    RUN wget -O dotnet-runtime.tar.gz https://download.visualstudio.microsoft.com/download/pr/b63daa46-51f4-480e-ad03-ef2c5a6a2885/ae059763456991305109bf98b3a67640/aspnetcore-runtime-6.0.26-linux-x64.tar.gz
    RUN mkdir /usr/local/etc/dotnet-sdk-6.0
    RUN tar -xzf dotnet.tar.gz -C /usr/local/etc/dotnet-sdk-6.0
    RUN tar -xzf dotnet-runtime.tar.gz -C /usr/local/etc/dotnet-sdk-6.0
    RUN rm -rf /usr/bin/dotnet
    RUN ln -s /usr/local/etc/dotnet-sdk-6.0/dotnet /usr/bin/dotnet
    
    # path to libraries
    ENV LD_LIBRARY_PATH="/opt/project/bin"
  4. 创建一个新的asound.conf文件:

    输出
    $ sudo vi asound.conf
  5. 将以下脚本写入asound.conf文件:

    输出
    pcm.!default {
            type plug
            slave {
                    pcm "hw:0,0"
            }
    }
    
    ctl.!default {
            type hw
            card 0
    }
    
    pcm.mixed-analog {
        type plug
            slave.pcm "dmix-analog"
            hint {
                show on
                    description "Mixed Analog Output - Use analog outputs, converting samples, format, and rate as necessary. Allows mixing with system sounds."
            }
    }
    
    # Control device (mixer, etc.) for the card
    ctl.mixed-analog {
        type hw
            card 0
    }
  6. 组装Docker映像(在unigine-in-docker文件夹内):

    输出
    $ docker build --rm --tag run_unigine_in_docker:latest -f Dockerfile .

Docker测试运行#

  1. 在试用模式下启动容器以查看GPU特性:

    输出
    $ cd ~/unigine-in-docker/
    $ docker run -it --rm --network host \
    --runtime=nvidia --gpus 0 -e NVIDIA_VISIBLE_DEVICES=0 \
    -e DISPLAY=${DISPLAY} \
    -e NVIDIA_DRIVER_CAPABILITIES=display,compute \
    -v /tmp/.X11-unix:/tmp/.X11-unix \
     run_unigine_in_docker:latest \
     /bin/bash
    # nvidia-smi

  2. 使用以下命令检查选定的GPU驱动程序:glxinfo | grep "OpenGL"。您将看到有关GPU的完整信息。或者使用命令glxinfo | grep "OpenGL renderer"显示所用GPU的型号名称。响应的一个例子:

使用Docker容器#

最新更新: 2024-04-25
Build: ()