Vitis AI安装步骤-包括Ubuntu、Docker安装

环境安装流程

Ubuntu 20.04 安装

  1. 下载镜像:ubuntu-20.04.6-desktop-amd64.iso

  2. 下载 rufus: 官网地址

  3. 制作USB启动盘

  4. 开机按 Delete 键进入 BIOS

  5. 启动项将首选项改为 USB 启动盘

  6. 重新启动进入安装程序

    • 选择 English

    • 有线网账号密码:psd

    • 选择 Mininal installation

    • 选择 Erase disk and install Ubuntu

    • 设置用户名密码是:psd

  7. 安装配置 ssh

sudo apt-get update

sudo apt install openssh-server

sudo apt-get install vim

sudo vim /etc/ssh/sshd_config

端口号修改为23321后保存,继续执行

sudo systemctl restart sshd

sudo ufw allow 23321

  1. 关闭自动锁屏:

    • 点击右上角 Settings

    • 点击 Privacy

    • 点击 Screen Lock

    • 关闭自动锁屏


CUDA 11.3 & cuDNN 安装

  1. 查看当前驱动
dpkg -l | grep nvidia

  1. 卸载原本的驱动并清理链接
sudo apt-get purge nvidia*

sudo apt autoremove

  1. 查询可用驱动
ubuntu-drivers devices

  1. 自动安装推荐的驱动
sudo ubuntu-drivers autoinstall

  1. 重启,然后验证驱动是否安装成功
sudo reboot

nvidia-smi

  1. 下载并运行 CUDA 11.3.1 安装程序
cd ~

wget https://developer.download.nvidia.com/compute/cuda/11.3.1/local_installers/cuda_11.3.1_465.19.01_linux.run

sudo apt install gcc

sudo sh cuda_11.3.1_465.19.01_linux.run

  1. 只勾选 CUDA Toolkit 11.3,然后安装

  2. 添加环境变量

sudo vim /etc/profile

export CUDA_HOME=/usr/local/cuda-11.3

export PATH=$PATH:$CUDA_HOME/bin

export LD_LIBRARY_PATH=${LD_LIBRARY_PATH}:/usr/local/cuda-11.3/lib64

  1. 下载并安装 cuDNN 8.9.2.26
cd ~

wget https://developer.nvidia.com/downloads/compute/cudnn/secure/8.9.2/local_installers/11.x/cudnn-linux-x86_64-8.9.2.26_cuda11-archive.tar.xz

tar -xvf cudnn-linux-x86_64-8.9.2.26_cuda11-archive.tar.xz

cd cudnn-linux-x86_64-8.9.2.26_cuda11-archive

sudo cp -r ./bin/* /usr/local/cuda-11.3/bin

sudo cp -r ./lib/* /usr/local/cuda-11.3/lib64

  1. 验证是否安装成功
source /etc/profile

nvcc -V

nvidia-smi


docker & nvidia docker 安装

  1. 安装docker
sudo apt-get install -y docker.io

sudo systemctl start docker

sudo systemctl enable docker

docker version

  1. 安装 nvidia container toolkit
sudo apt-get install curl

wget https://download.docker.com/linux/ubuntu/gpg

sudo apt-key add gpg

vim installNvidiaContainer.sh

distribution=$(. /etc/os-release;echo $ID$VERSION_ID)

sudo curl -s -L https://nvidia.github.io/nvidia-docker/gpgkey | sudo apt-key add -

sudo curl -s -L https://nvidia.github.io/nvidia-docker/$distribution/nvidia-docker.list | sudo tee /etc/apt/sources.list.d/nvidia-docker.list

保存后执行

./installNvidiaContainer.sh

sudo apt-get update && sudo apt-get install -y nvidia-container-toolkit

sudo systemctl restart docker

rm installNvidiaContainer.sh

  1. 创建多个新用户并添加docker用户组权限
cd ~

vim addUsers.sh

for name in aifpga maomao yangyang lichangyv

do

    echo $name

    useradd -d /home/$name -m -s /bin/bash $name

    echo $name:$name | chpasswd

    usermod -aG docker ${name}

    # passwd --expire $name

    echo "$user add successfuly"

done

保存后执行

./addUsers.sh


Vitis & Vivado & Vitis HLS 安装

  1. 下载 Vitis 包并进入目录

  2. 配置 dash(键盘选择 No)

sudo dpkg-reconfigure dash

  1. 安装依赖包并执行安装程序
sudo apt-get install ocl-icd-libopencl1

sudo apt-get install opencl-headers

sudo apt-get install ocl-icd-opencl-dev

sudo apt install libstdc++6

sudo apt install libncurses5

sudo apt-get install libtinfo5

sudo chmod +x xsetup

sudo ./xsetup

  1. 选择安装内容(需在本机使用图形界面操作)

    1. 选择 Vitis

    2. 选择以下内容(共210.68GB)

      • Vitis Unified Software Platform

      • Vitis Model Composer

      • DocNav

      • Install devices for Alveo and edge acceleration platforms

      • Install Devices for Kria soMs and starter Kits

      • Devices for Custom Platforms

      • Engineering Sample Devices for Custom Platforms

    3. 其他配置默认,然后等待安装完成

  2. 配置环境

sudo vim /etc/profile

source /tools/Xilinx/Vivado/2023.1/settings64.sh

source /tools/Xilinx/Vitis/2023.1/settings64.sh

source /tools/Xilinx/Vitis_HLS/2023.1/settings64.sh

  1. 安装 USB 驱动
cd /tools/Xilinx/Vivado/2023.1/data/xicom/cable_drivers/lin64/install_script/install_drivers

sudo ./install_drivers

  1. 验证是否安装成功
source /etc/profile

vitis

vivado

vitis_hls

无论执行哪一个都有图形界面弹出


Vitis AI 安装

  1. 克隆 Vitis AI 仓库
cd ~

git clone https://github.com/Xilinx/Vitis-AI

  1. 构建基于 Pytorch-CUDA 的镜像
cd Vitis-AI/docker

./docker_build.sh -t gpu -f pytorch

  1. 验证是否安装成功
cd ../

./docker_run.sh xilinx/vitis-ai-pytorch-gpu:3.5.0.001-a350fc104


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