docker.io/rayproject/ray:2.38.0-py311-gpu linux/amd64

docker.io/rayproject/ray:2.38.0-py311-gpu - 国内下载镜像源 浏览次数:8
_rayproject/ray_ RAY 是一个基于 Python 的高性能计算框架,可以在多种环境中运行,包括本地、云和集群。Ray 提供了高效的并行计算能力,并且可以与其他库和框架集成。 -Ray 的主要特点有: * 高性能:Ray 使用了高性能的编译器和执行引擎,可以在多种环境中运行。 * 可扩展性:Ray 可以轻松地 scales to thousands of machines and can handle large-scale computations. * 可组合性:Ray 可以与其他库和框架集成,例如 TensorFlow、PyTorch 和 scikit-learn。 总的来说,《RAY》是一个功能强大且灵活的计算框架,可以满足各种计算需求。
源镜像 docker.io/rayproject/ray:2.38.0-py311-gpu
国内镜像 swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/rayproject/ray:2.38.0-py311-gpu
镜像ID sha256:f6c7ad1a2e2e43fb75bd04afde1891d596257ef067ffc964693ef22690121428
镜像TAG 2.38.0-py311-gpu
大小 12.00GB
镜像源 docker.io
项目信息 Docker-Hub主页 🚀项目TAG 🚀
CMD
启动入口 /opt/nvidia/nvidia_entrypoint.sh
工作目录 /home/ray
OS/平台 linux/amd64
浏览量 8 次
贡献者
镜像创建 2024-10-20T21:48:44.258605894Z
同步时间 2026-05-26 02:50
环境变量
PATH=/home/ray/anaconda3/bin:/usr/local/nvidia/bin:/usr/local/cuda/bin:/usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin NVARCH=x86_64 NVIDIA_REQUIRE_CUDA=cuda>=12.1 brand=tesla,driver>=470,driver<471 brand=unknown,driver>=470,driver<471 brand=nvidia,driver>=470,driver<471 brand=nvidiartx,driver>=470,driver<471 brand=geforce,driver>=470,driver<471 brand=geforcertx,driver>=470,driver<471 brand=quadro,driver>=470,driver<471 brand=quadrortx,driver>=470,driver<471 brand=titan,driver>=470,driver<471 brand=titanrtx,driver>=470,driver<471 brand=tesla,driver>=525,driver<526 brand=unknown,driver>=525,driver<526 brand=nvidia,driver>=525,driver<526 brand=nvidiartx,driver>=525,driver<526 brand=geforce,driver>=525,driver<526 brand=geforcertx,driver>=525,driver<526 brand=quadro,driver>=525,driver<526 brand=quadrortx,driver>=525,driver<526 brand=titan,driver>=525,driver<526 brand=titanrtx,driver>=525,driver<526 NV_CUDA_CUDART_VERSION=12.1.105-1 NV_CUDA_COMPAT_PACKAGE=cuda-compat-12-1 CUDA_VERSION=12.1.1 LD_LIBRARY_PATH=/usr/local/nvidia/lib:/usr/local/nvidia/lib64 NVIDIA_VISIBLE_DEVICES=all NVIDIA_DRIVER_CAPABILITIES=compute,utility NV_CUDA_LIB_VERSION=12.1.1-1 NV_NVTX_VERSION=12.1.105-1 NV_LIBNPP_VERSION=12.1.0.40-1 NV_LIBNPP_PACKAGE=libnpp-12-1=12.1.0.40-1 NV_LIBCUSPARSE_VERSION=12.1.0.106-1 NV_LIBCUBLAS_PACKAGE_NAME=libcublas-12-1 NV_LIBCUBLAS_VERSION=12.1.3.1-1 NV_LIBCUBLAS_PACKAGE=libcublas-12-1=12.1.3.1-1 NV_LIBNCCL_PACKAGE_NAME=libnccl2 NV_LIBNCCL_PACKAGE_VERSION=2.17.1-1 NCCL_VERSION=2.17.1-1 NV_LIBNCCL_PACKAGE=libnccl2=2.17.1-1+cuda12.1 NVIDIA_PRODUCT_NAME=CUDA NV_CUDA_CUDART_DEV_VERSION=12.1.105-1 NV_NVML_DEV_VERSION=12.1.105-1 NV_LIBCUSPARSE_DEV_VERSION=12.1.0.106-1 NV_LIBNPP_DEV_VERSION=12.1.0.40-1 NV_LIBNPP_DEV_PACKAGE=libnpp-dev-12-1=12.1.0.40-1 NV_LIBCUBLAS_DEV_VERSION=12.1.3.1-1 NV_LIBCUBLAS_DEV_PACKAGE_NAME=libcublas-dev-12-1 NV_LIBCUBLAS_DEV_PACKAGE=libcublas-dev-12-1=12.1.3.1-1 NV_CUDA_NSIGHT_COMPUTE_VERSION=12.1.1-1 NV_CUDA_NSIGHT_COMPUTE_DEV_PACKAGE=cuda-nsight-compute-12-1=12.1.1-1 NV_NVPROF_VERSION=12.1.105-1 NV_NVPROF_DEV_PACKAGE=cuda-nvprof-12-1=12.1.105-1 NV_LIBNCCL_DEV_PACKAGE_NAME=libnccl-dev NV_LIBNCCL_DEV_PACKAGE_VERSION=2.17.1-1 NV_LIBNCCL_DEV_PACKAGE=libnccl-dev=2.17.1-1+cuda12.1 LIBRARY_PATH=/usr/local/cuda/lib64/stubs NV_CUDNN_VERSION=8.9.0.131 NV_CUDNN_PACKAGE_NAME=libcudnn8 NV_CUDNN_PACKAGE=libcudnn8=8.9.0.131-1+cuda12.1 NV_CUDNN_PACKAGE_DEV=libcudnn8-dev=8.9.0.131-1+cuda12.1 TZ=America/Los_Angeles LC_ALL=C.UTF-8 LANG=C.UTF-8 HOME=/home/ray
镜像标签
8.9.0.131: com.nvidia.cudnn.version NVIDIA CORPORATION <cudatools@nvidia.com>: maintainer ubuntu: org.opencontainers.image.ref.name 22.04: org.opencontainers.image.version

Docker拉取命令

docker pull swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/rayproject/ray:2.38.0-py311-gpu
docker tag  swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/rayproject/ray:2.38.0-py311-gpu  docker.io/rayproject/ray:2.38.0-py311-gpu

Containerd拉取命令

ctr images pull swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/rayproject/ray:2.38.0-py311-gpu
ctr images tag  swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/rayproject/ray:2.38.0-py311-gpu  docker.io/rayproject/ray:2.38.0-py311-gpu

Shell快速替换命令

sed -i 's#rayproject/ray:2.38.0-py311-gpu#swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/rayproject/ray:2.38.0-py311-gpu#' deployment.yaml

Ansible快速分发-Docker

#ansible k8s -m shell -a 'docker pull swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/rayproject/ray:2.38.0-py311-gpu && docker tag  swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/rayproject/ray:2.38.0-py311-gpu  docker.io/rayproject/ray:2.38.0-py311-gpu'

Ansible快速分发-Containerd

#ansible k8s -m shell -a 'ctr images pull swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/rayproject/ray:2.38.0-py311-gpu && ctr images tag  swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/rayproject/ray:2.38.0-py311-gpu  docker.io/rayproject/ray:2.38.0-py311-gpu'

镜像构建历史


# 2024-10-21 05:48:44  4.21KB 执行命令并创建新的镜像层
RUN |3 WHEEL_PATH=.whl/ray-2.38.0-cp311-cp311-manylinux2014_x86_64.whl FIND_LINKS_PATH=.whl CONSTRAINTS_FILE=requirements_compiled.txt /bin/bash -c $HOME/anaconda3/bin/pip freeze > /home/ray/pip-freeze.txt # buildkit
                        
# 2024-10-21 05:48:43  992.94MB 执行命令并创建新的镜像层
RUN |3 WHEEL_PATH=.whl/ray-2.38.0-cp311-cp311-manylinux2014_x86_64.whl FIND_LINKS_PATH=.whl CONSTRAINTS_FILE=requirements_compiled.txt /bin/bash -c $HOME/anaconda3/bin/pip --no-cache-dir install -c $CONSTRAINTS_FILE     `basename $WHEEL_PATH`[all]     --find-links $FIND_LINKS_PATH && sudo rm `basename $WHEEL_PATH` # buildkit
                        
# 2024-10-21 05:47:45  94.50MB 复制新文件或目录到容器中
COPY .whl .whl # buildkit
                        
# 2024-10-21 05:47:44  66.16MB 复制新文件或目录到容器中
COPY .whl/ray-2.38.0-cp311-cp311-manylinux2014_x86_64.whl . # buildkit
                        
# 2024-10-21 05:47:43  61.89KB 复制新文件或目录到容器中
COPY requirements_compiled.txt ./ # buildkit
                        
# 2024-10-21 05:47:43  0.00B 定义构建参数
ARG CONSTRAINTS_FILE=requirements_compiled.txt
                        
# 2024-10-21 05:47:43  0.00B 定义构建参数
ARG FIND_LINKS_PATH=.whl
                        
# 2024-10-21 05:47:43  0.00B 定义构建参数
ARG WHEEL_PATH
                        
# 2024-10-14 15:45:58  0.00B 设置工作目录为/home/ray
WORKDIR /home/ray
                        
# 2024-10-14 15:45:58  1.35GB 执行命令并创建新的镜像层
RUN |7 BASE_IMAGE=nvidia/cuda:12.1.1-cudnn8-devel-ubuntu22.04 AUTOSCALER=autoscaler DEBIAN_FRONTEND=noninteractive PYTHON_VERSION=3.11 HOSTTYPE=x86_64 RAY_UID=1000 RAY_GID=100 /bin/bash -c sudo apt-get update -y && sudo apt-get upgrade -y     && sudo apt-get install -y         git         libjemalloc-dev         wget         cmake         g++         zlib1g-dev         $(if [ "$AUTOSCALER" = "autoscaler" ]; then echo         tmux         screen         rsync         netbase         openssh-client         gnupg; fi)     && wget --quiet         "https://repo.anaconda.com/miniconda/Miniconda3-py311_24.4.0-0-Linux-${HOSTTYPE}.sh"         -O /tmp/miniconda.sh     && /bin/bash /tmp/miniconda.sh -b -u -p $HOME/anaconda3     && $HOME/anaconda3/bin/conda init     && echo 'export PATH=$HOME/anaconda3/bin:$PATH' >> /home/ray/.bashrc     && rm /tmp/miniconda.sh      && $HOME/anaconda3/bin/conda install -y libgcc-ng python=$PYTHON_VERSION     && $HOME/anaconda3/bin/conda install -y -c conda-forge libffi=3.4.2     && $HOME/anaconda3/bin/conda clean -y --all     && $HOME/anaconda3/bin/pip install --no-cache-dir         flatbuffers         cython==0.29.37         numpy\>=1.20         psutil         setuptools==71.1.0     && $HOME/anaconda3/bin/pip uninstall -y dask     && sudo apt-get autoremove -y cmake zlib1g-dev         $(if [[ "$BASE_IMAGE" == "ubuntu:22.04" && "$HOSTTYPE" == "x86_64" ]]; then echo         g++; fi)     && sudo rm -rf /var/lib/apt/lists/*     && sudo apt-get clean     && (if [ "$AUTOSCALER" = "autoscaler" ];         then $HOME/anaconda3/bin/pip --no-cache-dir install         "redis>=3.5.0,<4.0.0"         "six==1.13.0"         "boto3==1.26.76"         "pyOpenSSL==22.1.0"         "cryptography==38.0.1"         "google-api-python-client==1.7.8"         "google-oauth"         "azure-cli-core==2.40.0"         "azure-identity==1.10.0"         "azure-mgmt-compute==23.1.0"         "azure-mgmt-network==19.0.0"         "azure-mgmt-resource==20.0.0"         "msrestazure==0.6.4";     fi;) # buildkit
                        
# 2024-10-14 15:44:25  0.00B 
SHELL [/bin/bash -c]
                        
# 2024-10-14 15:44:25  0.00B 设置环境变量 HOME
ENV HOME=/home/ray
                        
# 2024-10-14 15:44:25  0.00B 指定运行容器时使用的用户
USER 1000
                        
# 2024-10-14 15:44:25  7.20MB 执行命令并创建新的镜像层
RUN |7 BASE_IMAGE=nvidia/cuda:12.1.1-cudnn8-devel-ubuntu22.04 AUTOSCALER=autoscaler DEBIAN_FRONTEND=noninteractive PYTHON_VERSION=3.11 HOSTTYPE=x86_64 RAY_UID=1000 RAY_GID=100 /bin/sh -c apt-get update -y     && apt-get install -y sudo tzdata     && useradd -ms /bin/bash -d /home/ray ray --uid $RAY_UID --gid $RAY_GID     && usermod -aG sudo ray     && echo 'ray ALL=NOPASSWD: ALL' >> /etc/sudoers     && rm -rf /var/lib/apt/lists/*     && apt-get clean # buildkit
                        
# 2024-10-14 15:44:25  0.00B 定义构建参数
ARG RAY_GID=100
                        
# 2024-10-14 15:44:25  0.00B 定义构建参数
ARG RAY_UID=1000
                        
# 2024-10-14 15:44:25  0.00B 定义构建参数
ARG HOSTTYPE=x86_64
                        
# 2024-10-14 15:44:25  0.00B 定义构建参数
ARG PYTHON_VERSION=3.8.16
                        
# 2024-10-14 15:44:25  0.00B 定义构建参数
ARG DEBIAN_FRONTEND=noninteractive
                        
# 2024-10-14 15:44:25  0.00B 设置环境变量 PATH
ENV PATH=/home/ray/anaconda3/bin:/usr/local/nvidia/bin:/usr/local/cuda/bin:/usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin
                        
# 2024-10-14 15:44:25  0.00B 设置环境变量 LANG
ENV LANG=C.UTF-8
                        
# 2024-10-14 15:44:25  0.00B 设置环境变量 LC_ALL
ENV LC_ALL=C.UTF-8
                        
# 2024-10-14 15:44:25  0.00B 设置环境变量 TZ
ENV TZ=America/Los_Angeles
                        
# 2024-10-14 15:44:25  0.00B 定义构建参数
ARG AUTOSCALER=autoscaler
                        
# 2024-10-14 15:44:25  0.00B 定义构建参数
ARG BASE_IMAGE
                        
# 2023-11-10 13:52:16  2.45GB 执行命令并创建新的镜像层
RUN |1 TARGETARCH=amd64 /bin/sh -c apt-get update && apt-get install -y --no-install-recommends     ${NV_CUDNN_PACKAGE}     ${NV_CUDNN_PACKAGE_DEV}     && apt-mark hold ${NV_CUDNN_PACKAGE_NAME}     && rm -rf /var/lib/apt/lists/* # buildkit
                        
# 2023-11-10 13:52:16  0.00B 添加元数据标签
LABEL com.nvidia.cudnn.version=8.9.0.131
                        
# 2023-11-10 13:52:16  0.00B 添加元数据标签
LABEL maintainer=NVIDIA CORPORATION <cudatools@nvidia.com>
                        
# 2023-11-10 13:52:16  0.00B 定义构建参数
ARG TARGETARCH
                        
# 2023-11-10 13:52:16  0.00B 设置环境变量 NV_CUDNN_PACKAGE_DEV
ENV NV_CUDNN_PACKAGE_DEV=libcudnn8-dev=8.9.0.131-1+cuda12.1
                        
# 2023-11-10 13:52:16  0.00B 设置环境变量 NV_CUDNN_PACKAGE
ENV NV_CUDNN_PACKAGE=libcudnn8=8.9.0.131-1+cuda12.1
                        
# 2023-11-10 13:52:16  0.00B 设置环境变量 NV_CUDNN_PACKAGE_NAME
ENV NV_CUDNN_PACKAGE_NAME=libcudnn8
                        
# 2023-11-10 13:52:16  0.00B 设置环境变量 NV_CUDNN_VERSION
ENV NV_CUDNN_VERSION=8.9.0.131
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 LIBRARY_PATH
ENV LIBRARY_PATH=/usr/local/cuda/lib64/stubs
                        
# 2023-11-10 13:25:51  385.69KB 执行命令并创建新的镜像层
RUN |1 TARGETARCH=amd64 /bin/sh -c apt-mark hold ${NV_LIBCUBLAS_DEV_PACKAGE_NAME} ${NV_LIBNCCL_DEV_PACKAGE_NAME} # buildkit
                        
# 2023-11-10 13:25:51  4.79GB 执行命令并创建新的镜像层
RUN |1 TARGETARCH=amd64 /bin/sh -c apt-get update && apt-get install -y --no-install-recommends     cuda-cudart-dev-12-1=${NV_CUDA_CUDART_DEV_VERSION}     cuda-command-line-tools-12-1=${NV_CUDA_LIB_VERSION}     cuda-minimal-build-12-1=${NV_CUDA_LIB_VERSION}     cuda-libraries-dev-12-1=${NV_CUDA_LIB_VERSION}     cuda-nvml-dev-12-1=${NV_NVML_DEV_VERSION}     ${NV_NVPROF_DEV_PACKAGE}     ${NV_LIBNPP_DEV_PACKAGE}     libcusparse-dev-12-1=${NV_LIBCUSPARSE_DEV_VERSION}     ${NV_LIBCUBLAS_DEV_PACKAGE}     ${NV_LIBNCCL_DEV_PACKAGE}     ${NV_CUDA_NSIGHT_COMPUTE_DEV_PACKAGE}     && rm -rf /var/lib/apt/lists/* # buildkit
                        
# 2023-11-10 13:25:51  0.00B 添加元数据标签
LABEL maintainer=NVIDIA CORPORATION <cudatools@nvidia.com>
                        
# 2023-11-10 13:25:51  0.00B 定义构建参数
ARG TARGETARCH
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 NV_LIBNCCL_DEV_PACKAGE
ENV NV_LIBNCCL_DEV_PACKAGE=libnccl-dev=2.17.1-1+cuda12.1
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 NCCL_VERSION
ENV NCCL_VERSION=2.17.1-1
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 NV_LIBNCCL_DEV_PACKAGE_VERSION
ENV NV_LIBNCCL_DEV_PACKAGE_VERSION=2.17.1-1
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 NV_LIBNCCL_DEV_PACKAGE_NAME
ENV NV_LIBNCCL_DEV_PACKAGE_NAME=libnccl-dev
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 NV_NVPROF_DEV_PACKAGE
ENV NV_NVPROF_DEV_PACKAGE=cuda-nvprof-12-1=12.1.105-1
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 NV_NVPROF_VERSION
ENV NV_NVPROF_VERSION=12.1.105-1
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 NV_CUDA_NSIGHT_COMPUTE_DEV_PACKAGE
ENV NV_CUDA_NSIGHT_COMPUTE_DEV_PACKAGE=cuda-nsight-compute-12-1=12.1.1-1
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 NV_CUDA_NSIGHT_COMPUTE_VERSION
ENV NV_CUDA_NSIGHT_COMPUTE_VERSION=12.1.1-1
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 NV_LIBCUBLAS_DEV_PACKAGE
ENV NV_LIBCUBLAS_DEV_PACKAGE=libcublas-dev-12-1=12.1.3.1-1
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 NV_LIBCUBLAS_DEV_PACKAGE_NAME
ENV NV_LIBCUBLAS_DEV_PACKAGE_NAME=libcublas-dev-12-1
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 NV_LIBCUBLAS_DEV_VERSION
ENV NV_LIBCUBLAS_DEV_VERSION=12.1.3.1-1
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 NV_LIBNPP_DEV_PACKAGE
ENV NV_LIBNPP_DEV_PACKAGE=libnpp-dev-12-1=12.1.0.40-1
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 NV_LIBNPP_DEV_VERSION
ENV NV_LIBNPP_DEV_VERSION=12.1.0.40-1
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 NV_LIBCUSPARSE_DEV_VERSION
ENV NV_LIBCUSPARSE_DEV_VERSION=12.1.0.106-1
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 NV_NVML_DEV_VERSION
ENV NV_NVML_DEV_VERSION=12.1.105-1
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 NV_CUDA_CUDART_DEV_VERSION
ENV NV_CUDA_CUDART_DEV_VERSION=12.1.105-1
                        
# 2023-11-10 13:25:51  0.00B 设置环境变量 NV_CUDA_LIB_VERSION
ENV NV_CUDA_LIB_VERSION=12.1.1-1
                        
# 2023-11-10 13:13:35  0.00B 配置容器启动时运行的命令
ENTRYPOINT ["/opt/nvidia/nvidia_entrypoint.sh"]
                        
# 2023-11-10 13:13:35  0.00B 设置环境变量 NVIDIA_PRODUCT_NAME
ENV NVIDIA_PRODUCT_NAME=CUDA
                        
# 2023-11-10 13:13:35  2.53KB 复制新文件或目录到容器中
COPY nvidia_entrypoint.sh /opt/nvidia/ # buildkit
                        
# 2023-11-10 13:13:35  3.06KB 复制新文件或目录到容器中
COPY entrypoint.d/ /opt/nvidia/entrypoint.d/ # buildkit
                        
# 2023-11-10 13:13:35  261.40KB 执行命令并创建新的镜像层
RUN |1 TARGETARCH=amd64 /bin/sh -c apt-mark hold ${NV_LIBCUBLAS_PACKAGE_NAME} ${NV_LIBNCCL_PACKAGE_NAME} # buildkit
                        
# 2023-11-10 13:13:35  2.01GB 执行命令并创建新的镜像层
RUN |1 TARGETARCH=amd64 /bin/sh -c apt-get update && apt-get install -y --no-install-recommends     cuda-libraries-12-1=${NV_CUDA_LIB_VERSION}     ${NV_LIBNPP_PACKAGE}     cuda-nvtx-12-1=${NV_NVTX_VERSION}     libcusparse-12-1=${NV_LIBCUSPARSE_VERSION}     ${NV_LIBCUBLAS_PACKAGE}     ${NV_LIBNCCL_PACKAGE}     && rm -rf /var/lib/apt/lists/* # buildkit
                        
# 2023-11-10 13:13:35  0.00B 添加元数据标签
LABEL maintainer=NVIDIA CORPORATION <cudatools@nvidia.com>
                        
# 2023-11-10 13:13:35  0.00B 定义构建参数
ARG TARGETARCH
                        
# 2023-11-10 13:13:35  0.00B 设置环境变量 NV_LIBNCCL_PACKAGE
ENV NV_LIBNCCL_PACKAGE=libnccl2=2.17.1-1+cuda12.1
                        
# 2023-11-10 13:13:35  0.00B 设置环境变量 NCCL_VERSION
ENV NCCL_VERSION=2.17.1-1
                        
# 2023-11-10 13:13:35  0.00B 设置环境变量 NV_LIBNCCL_PACKAGE_VERSION
ENV NV_LIBNCCL_PACKAGE_VERSION=2.17.1-1
                        
# 2023-11-10 13:13:35  0.00B 设置环境变量 NV_LIBNCCL_PACKAGE_NAME
ENV NV_LIBNCCL_PACKAGE_NAME=libnccl2
                        
# 2023-11-10 13:13:35  0.00B 设置环境变量 NV_LIBCUBLAS_PACKAGE
ENV NV_LIBCUBLAS_PACKAGE=libcublas-12-1=12.1.3.1-1
                        
# 2023-11-10 13:13:35  0.00B 设置环境变量 NV_LIBCUBLAS_VERSION
ENV NV_LIBCUBLAS_VERSION=12.1.3.1-1
                        
# 2023-11-10 13:13:35  0.00B 设置环境变量 NV_LIBCUBLAS_PACKAGE_NAME
ENV NV_LIBCUBLAS_PACKAGE_NAME=libcublas-12-1
                        
# 2023-11-10 13:13:35  0.00B 设置环境变量 NV_LIBCUSPARSE_VERSION
ENV NV_LIBCUSPARSE_VERSION=12.1.0.106-1
                        
# 2023-11-10 13:13:35  0.00B 设置环境变量 NV_LIBNPP_PACKAGE
ENV NV_LIBNPP_PACKAGE=libnpp-12-1=12.1.0.40-1
                        
# 2023-11-10 13:13:35  0.00B 设置环境变量 NV_LIBNPP_VERSION
ENV NV_LIBNPP_VERSION=12.1.0.40-1
                        
# 2023-11-10 13:13:35  0.00B 设置环境变量 NV_NVTX_VERSION
ENV NV_NVTX_VERSION=12.1.105-1
                        
# 2023-11-10 13:13:35  0.00B 设置环境变量 NV_CUDA_LIB_VERSION
ENV NV_CUDA_LIB_VERSION=12.1.1-1
                        
# 2023-11-10 13:08:12  0.00B 设置环境变量 NVIDIA_DRIVER_CAPABILITIES
ENV NVIDIA_DRIVER_CAPABILITIES=compute,utility
                        
# 2023-11-10 13:08:12  0.00B 设置环境变量 NVIDIA_VISIBLE_DEVICES
ENV NVIDIA_VISIBLE_DEVICES=all
                        
# 2023-11-10 13:08:12  17.29KB 复制新文件或目录到容器中
COPY NGC-DL-CONTAINER-LICENSE / # buildkit
                        
# 2023-11-10 13:08:12  0.00B 设置环境变量 LD_LIBRARY_PATH
ENV LD_LIBRARY_PATH=/usr/local/nvidia/lib:/usr/local/nvidia/lib64
                        
# 2023-11-10 13:08:12  0.00B 设置环境变量 PATH
ENV PATH=/usr/local/nvidia/bin:/usr/local/cuda/bin:/usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin
                        
# 2023-11-10 13:08:12  46.00B 执行命令并创建新的镜像层
RUN |1 TARGETARCH=amd64 /bin/sh -c echo "/usr/local/nvidia/lib" >> /etc/ld.so.conf.d/nvidia.conf     && echo "/usr/local/nvidia/lib64" >> /etc/ld.so.conf.d/nvidia.conf # buildkit
                        
# 2023-11-10 13:08:11  149.59MB 执行命令并创建新的镜像层
RUN |1 TARGETARCH=amd64 /bin/sh -c apt-get update && apt-get install -y --no-install-recommends     cuda-cudart-12-1=${NV_CUDA_CUDART_VERSION}     ${NV_CUDA_COMPAT_PACKAGE}     && rm -rf /var/lib/apt/lists/* # buildkit
                        
# 2023-11-10 13:07:58  0.00B 设置环境变量 CUDA_VERSION
ENV CUDA_VERSION=12.1.1
                        
# 2023-11-10 13:07:58  10.56MB 执行命令并创建新的镜像层
RUN |1 TARGETARCH=amd64 /bin/sh -c apt-get update && apt-get install -y --no-install-recommends     gnupg2 curl ca-certificates &&     curl -fsSLO https://developer.download.nvidia.com/compute/cuda/repos/ubuntu2204/${NVARCH}/cuda-keyring_1.0-1_all.deb &&     dpkg -i cuda-keyring_1.0-1_all.deb &&     apt-get purge --autoremove -y curl     && rm -rf /var/lib/apt/lists/* # buildkit
                        
# 2023-11-10 13:07:58  0.00B 添加元数据标签
LABEL maintainer=NVIDIA CORPORATION <cudatools@nvidia.com>
                        
# 2023-11-10 13:07:58  0.00B 定义构建参数
ARG TARGETARCH
                        
# 2023-11-10 13:07:58  0.00B 设置环境变量 NV_CUDA_COMPAT_PACKAGE
ENV NV_CUDA_COMPAT_PACKAGE=cuda-compat-12-1
                        
# 2023-11-10 13:07:58  0.00B 设置环境变量 NV_CUDA_CUDART_VERSION
ENV NV_CUDA_CUDART_VERSION=12.1.105-1
                        
# 2023-11-10 13:07:58  0.00B 设置环境变量 NVIDIA_REQUIRE_CUDA brand brand brand brand brand brand brand brand brand brand brand brand brand brand brand brand brand brand brand brand
ENV NVIDIA_REQUIRE_CUDA=cuda>=12.1 brand=tesla,driver>=470,driver<471 brand=unknown,driver>=470,driver<471 brand=nvidia,driver>=470,driver<471 brand=nvidiartx,driver>=470,driver<471 brand=geforce,driver>=470,driver<471 brand=geforcertx,driver>=470,driver<471 brand=quadro,driver>=470,driver<471 brand=quadrortx,driver>=470,driver<471 brand=titan,driver>=470,driver<471 brand=titanrtx,driver>=470,driver<471 brand=tesla,driver>=525,driver<526 brand=unknown,driver>=525,driver<526 brand=nvidia,driver>=525,driver<526 brand=nvidiartx,driver>=525,driver<526 brand=geforce,driver>=525,driver<526 brand=geforcertx,driver>=525,driver<526 brand=quadro,driver>=525,driver<526 brand=quadrortx,driver>=525,driver<526 brand=titan,driver>=525,driver<526 brand=titanrtx,driver>=525,driver<526
                        
# 2023-11-10 13:07:58  0.00B 设置环境变量 NVARCH
ENV NVARCH=x86_64
                        
# 2023-10-05 15:33:32  0.00B 
/bin/sh -c #(nop)  CMD ["/bin/bash"]
                        
# 2023-10-05 15:33:32  77.82MB 
/bin/sh -c #(nop) ADD file:63d5ab3ef0aab308c0e71cb67292c5467f60deafa9b0418cbb220affcd078444 in / 
                        
# 2023-10-05 15:33:30  0.00B 
/bin/sh -c #(nop)  LABEL org.opencontainers.image.version=22.04
                        
# 2023-10-05 15:33:30  0.00B 
/bin/sh -c #(nop)  LABEL org.opencontainers.image.ref.name=ubuntu
                        
# 2023-10-05 15:33:30  0.00B 
/bin/sh -c #(nop)  ARG LAUNCHPAD_BUILD_ARCH
                        
# 2023-10-05 15:33:30  0.00B 
/bin/sh -c #(nop)  ARG RELEASE
                        
                    

镜像信息

{
    "Id": "sha256:f6c7ad1a2e2e43fb75bd04afde1891d596257ef067ffc964693ef22690121428",
    "RepoTags": [
        "rayproject/ray:2.38.0-py311-gpu",
        "swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/rayproject/ray:2.38.0-py311-gpu"
    ],
    "RepoDigests": [
        "rayproject/ray@sha256:6bfb4d447af624323fdda4b68c2b0922f38f308cb7e7e2740209065086194092",
        "swr.cn-north-4.myhuaweicloud.com/ddn-k8s/docker.io/rayproject/ray@sha256:6bfb4d447af624323fdda4b68c2b0922f38f308cb7e7e2740209065086194092"
    ],
    "Parent": "",
    "Comment": "buildkit.dockerfile.v0",
    "Created": "2024-10-20T21:48:44.258605894Z",
    "Container": "",
    "ContainerConfig": null,
    "DockerVersion": "",
    "Author": "",
    "Config": {
        "Hostname": "",
        "Domainname": "",
        "User": "1000",
        "AttachStdin": false,
        "AttachStdout": false,
        "AttachStderr": false,
        "Tty": false,
        "OpenStdin": false,
        "StdinOnce": false,
        "Env": [
            "PATH=/home/ray/anaconda3/bin:/usr/local/nvidia/bin:/usr/local/cuda/bin:/usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin",
            "NVARCH=x86_64",
            "NVIDIA_REQUIRE_CUDA=cuda\u003e=12.1 brand=tesla,driver\u003e=470,driver\u003c471 brand=unknown,driver\u003e=470,driver\u003c471 brand=nvidia,driver\u003e=470,driver\u003c471 brand=nvidiartx,driver\u003e=470,driver\u003c471 brand=geforce,driver\u003e=470,driver\u003c471 brand=geforcertx,driver\u003e=470,driver\u003c471 brand=quadro,driver\u003e=470,driver\u003c471 brand=quadrortx,driver\u003e=470,driver\u003c471 brand=titan,driver\u003e=470,driver\u003c471 brand=titanrtx,driver\u003e=470,driver\u003c471 brand=tesla,driver\u003e=525,driver\u003c526 brand=unknown,driver\u003e=525,driver\u003c526 brand=nvidia,driver\u003e=525,driver\u003c526 brand=nvidiartx,driver\u003e=525,driver\u003c526 brand=geforce,driver\u003e=525,driver\u003c526 brand=geforcertx,driver\u003e=525,driver\u003c526 brand=quadro,driver\u003e=525,driver\u003c526 brand=quadrortx,driver\u003e=525,driver\u003c526 brand=titan,driver\u003e=525,driver\u003c526 brand=titanrtx,driver\u003e=525,driver\u003c526",
            "NV_CUDA_CUDART_VERSION=12.1.105-1",
            "NV_CUDA_COMPAT_PACKAGE=cuda-compat-12-1",
            "CUDA_VERSION=12.1.1",
            "LD_LIBRARY_PATH=/usr/local/nvidia/lib:/usr/local/nvidia/lib64",
            "NVIDIA_VISIBLE_DEVICES=all",
            "NVIDIA_DRIVER_CAPABILITIES=compute,utility",
            "NV_CUDA_LIB_VERSION=12.1.1-1",
            "NV_NVTX_VERSION=12.1.105-1",
            "NV_LIBNPP_VERSION=12.1.0.40-1",
            "NV_LIBNPP_PACKAGE=libnpp-12-1=12.1.0.40-1",
            "NV_LIBCUSPARSE_VERSION=12.1.0.106-1",
            "NV_LIBCUBLAS_PACKAGE_NAME=libcublas-12-1",
            "NV_LIBCUBLAS_VERSION=12.1.3.1-1",
            "NV_LIBCUBLAS_PACKAGE=libcublas-12-1=12.1.3.1-1",
            "NV_LIBNCCL_PACKAGE_NAME=libnccl2",
            "NV_LIBNCCL_PACKAGE_VERSION=2.17.1-1",
            "NCCL_VERSION=2.17.1-1",
            "NV_LIBNCCL_PACKAGE=libnccl2=2.17.1-1+cuda12.1",
            "NVIDIA_PRODUCT_NAME=CUDA",
            "NV_CUDA_CUDART_DEV_VERSION=12.1.105-1",
            "NV_NVML_DEV_VERSION=12.1.105-1",
            "NV_LIBCUSPARSE_DEV_VERSION=12.1.0.106-1",
            "NV_LIBNPP_DEV_VERSION=12.1.0.40-1",
            "NV_LIBNPP_DEV_PACKAGE=libnpp-dev-12-1=12.1.0.40-1",
            "NV_LIBCUBLAS_DEV_VERSION=12.1.3.1-1",
            "NV_LIBCUBLAS_DEV_PACKAGE_NAME=libcublas-dev-12-1",
            "NV_LIBCUBLAS_DEV_PACKAGE=libcublas-dev-12-1=12.1.3.1-1",
            "NV_CUDA_NSIGHT_COMPUTE_VERSION=12.1.1-1",
            "NV_CUDA_NSIGHT_COMPUTE_DEV_PACKAGE=cuda-nsight-compute-12-1=12.1.1-1",
            "NV_NVPROF_VERSION=12.1.105-1",
            "NV_NVPROF_DEV_PACKAGE=cuda-nvprof-12-1=12.1.105-1",
            "NV_LIBNCCL_DEV_PACKAGE_NAME=libnccl-dev",
            "NV_LIBNCCL_DEV_PACKAGE_VERSION=2.17.1-1",
            "NV_LIBNCCL_DEV_PACKAGE=libnccl-dev=2.17.1-1+cuda12.1",
            "LIBRARY_PATH=/usr/local/cuda/lib64/stubs",
            "NV_CUDNN_VERSION=8.9.0.131",
            "NV_CUDNN_PACKAGE_NAME=libcudnn8",
            "NV_CUDNN_PACKAGE=libcudnn8=8.9.0.131-1+cuda12.1",
            "NV_CUDNN_PACKAGE_DEV=libcudnn8-dev=8.9.0.131-1+cuda12.1",
            "TZ=America/Los_Angeles",
            "LC_ALL=C.UTF-8",
            "LANG=C.UTF-8",
            "HOME=/home/ray"
        ],
        "Cmd": null,
        "Image": "",
        "Volumes": null,
        "WorkingDir": "/home/ray",
        "Entrypoint": [
            "/opt/nvidia/nvidia_entrypoint.sh"
        ],
        "OnBuild": null,
        "Labels": {
            "com.nvidia.cudnn.version": "8.9.0.131",
            "maintainer": "NVIDIA CORPORATION \u003ccudatools@nvidia.com\u003e",
            "org.opencontainers.image.ref.name": "ubuntu",
            "org.opencontainers.image.version": "22.04"
        },
        "Shell": [
            "/bin/bash",
            "-c"
        ]
    },
    "Architecture": "amd64",
    "Os": "linux",
    "Size": 11996481499,
    "GraphDriver": {
        "Data": {
            "LowerDir": "/var/lib/docker/overlay2/e374c98eb38c7e6666e4c50536379988b5f8784a0124d176ea3ee9f4a13eacde/diff:/var/lib/docker/overlay2/516112367e7c15f1c37076a4d66528228711d0c0c571077fcd7861e1a9002725/diff:/var/lib/docker/overlay2/32b308f9a453755d64173a5fd26c8ca91d3f22687bf578d8592c6700e705a978/diff:/var/lib/docker/overlay2/1e78bfd7b296c9db7d89df98f88db34b56189f88307808bb822319c0b7ba9b3d/diff:/var/lib/docker/overlay2/28df252b5954f79f092c27cc3cf88542920fb79a8ab597dc9574f7436d71d29e/diff:/var/lib/docker/overlay2/145fc6c7bd7b71da6033acb4dfb995a603e941740247716c2eb52c35b20ad201/diff:/var/lib/docker/overlay2/bb0d178af59474af60d88dbc7f42b27fb726ca57dcb39b8ee5ca1de9e2acc0da/diff:/var/lib/docker/overlay2/5a17ef026b53219b3f8e15f6348c2b48ce0c88519a9180f41710b47591fab4de/diff:/var/lib/docker/overlay2/ad0a1945f3603347ec3d08108def908488e4d8c3019bee836676fd5186b0efad/diff:/var/lib/docker/overlay2/90622acf7e870612e09b690509d0cc7f061cf32c3ed46903a0c53bbdf9d9b3f4/diff:/var/lib/docker/overlay2/60d69b93d5c1405decb6f5a14f19db3761d14b903934ed9dd180c530a8d95097/diff:/var/lib/docker/overlay2/deebd5425027e1d072c89f8c3bfabfbfdbd506d042b6d0f0310881929953250f/diff:/var/lib/docker/overlay2/19ea85e43db5f692e0c360882d2ee24a6dc4195fdd33d092a9a346602869c9a5/diff:/var/lib/docker/overlay2/48f7a28c27b8631de2f82c979ed29f83225ffdbc29a27c42010505b7ac3ac884/diff:/var/lib/docker/overlay2/42ed88e2999a41e85534df87730daa551a626b0d76b2bc3d77f4110a59443b5c/diff:/var/lib/docker/overlay2/c455ba24d3412080393781960795a2a068848eb6af84501e804ccd0b3c4217c9/diff:/var/lib/docker/overlay2/b8dbf5d3f9b74b947fb9797478b2ba90d05eed282e6d328563a8b2c0e6fdf500/diff:/var/lib/docker/overlay2/152fb1984ea7f3dac1b76f27f3efaf0e95430134ec66569c95764394f1cf0dfa/diff:/var/lib/docker/overlay2/f2905627b4505cda033dd62b5a5dc1676edda5a6e1bda7cd6e6e2048fcf5aee0/diff",
            "MergedDir": "/var/lib/docker/overlay2/b4a6b4d33764484dc94fc5aebf53d3d14fc5204b88d12f355b59e9f08cf15e01/merged",
            "UpperDir": "/var/lib/docker/overlay2/b4a6b4d33764484dc94fc5aebf53d3d14fc5204b88d12f355b59e9f08cf15e01/diff",
            "WorkDir": "/var/lib/docker/overlay2/b4a6b4d33764484dc94fc5aebf53d3d14fc5204b88d12f355b59e9f08cf15e01/work"
        },
        "Name": "overlay2"
    },
    "RootFS": {
        "Type": "layers",
        "Layers": [
            "sha256:256d88da41857db513b95b50ba9a9b28491b58c954e25477d5dad8abb465430b",
            "sha256:566cd9dd29d693cf0360da8a73391b843bb6ac8f11b4148acf69c4dc79fa87c5",
            "sha256:6ec2b659c9ab00e2b0fc0acd056577e609cc28649650ec7068b81686f6d1a996",
            "sha256:8afeff4e91d72f3de9232ffc0803f70236e316c27b23ee003e6d47fbfcb6e1c4",
            "sha256:bea30ebbe84377ed36503599c2087cd6bda6f4c96cb59525d238d4a00cf902d3",
            "sha256:b15b1df4adac82b2b46124c743a32d5e982cb6b5ee8a3c04949f809abf8962c9",
            "sha256:83ecbf43a888c43f43b0cd9ec7cf551770790c7aeab17f9536b8820db2c5d45d",
            "sha256:83687aeafbbf74a164a51590ffa36c46e9c41ce4ba3eae9daba1d381c64e5f4b",
            "sha256:3416903c2cc4c9f83472b397741f30365f53543862b03ff5727b42b1a2f938cb",
            "sha256:24e1e08aaa60ea10f478c1b68d9444b8ea74bff76e2547712984b5136e79018e",
            "sha256:7aee75a70a2ff35d4990fab501a025afa498f416cb726ace747ccd7fad6500d4",
            "sha256:0f7c883f1a4f4710753cfa1185d8e60584e41f04fe1693bd8c3ee6700b29c7f3",
            "sha256:640974ba8d050f8a0f9119404b70c3bd6aad35feed9c8488561aa79ecaf1e170",
            "sha256:84e7d738bdda51c16ab86f221582173de6f8557d147cddeec7d6a6092adbbd17",
            "sha256:5f70bf18a086007016e948b04aed3b82103a36bea41755b6cddfaf10ace3c6ef",
            "sha256:d7414c7697458fff564ecc83f91d41804a113f3dcd9486184103ddb2ff6302c4",
            "sha256:6c661355c3ea4a289dd7f260ffc070cdf34bde7f706ee78f7fbf7a5f14e769d3",
            "sha256:2405aeef4591224e37bf5a1fe04d737877efc90226b4a9d2f0cbd6439fe2d693",
            "sha256:6c8f893b2a59cbc33719b2ff467b506ef7fab554564aad5137dba461a65ed9bb",
            "sha256:abb5b3d5ddebd8c7f1611736a793886414c94bc0afe714f37b7d3ebb918b4b39"
        ]
    },
    "Metadata": {
        "LastTagTime": "2026-05-26T02:47:33.54759867+08:00"
    }
}

更多版本

docker.io/rayproject/ray:2.9.0

linux/amd64 docker.io2.20GB2024-07-17 10:33
1598

docker.io/rayproject/ray-ml:2.30.0-py310-gpu

linux/amd64 docker.io21.88GB2024-09-27 00:30
858

docker.io/rayproject/ray:nightly-gpu

linux/amd64 docker.io11.57GB2024-11-21 02:01
551

docker.io/rayproject/ray:2.10.0-py38

linux/amd64 docker.io2.13GB2025-01-06 16:31
543

docker.io/rayproject/ray:2.40.0.160e35-py312-cu123

linux/amd64 docker.io10.23GB2025-01-18 01:27
737

docker.io/rayproject/ray:2.34.0

linux/amd64 docker.io2.22GB2025-02-13 11:57
535

docker.io/rayproject/ray:2.31.0-py310-cu121

linux/amd64 docker.io11.73GB2025-02-22 01:07
831

docker.io/rayproject/ray-ml:2.33.0.914af0-py311

linux/amd64 docker.io23.01GB2025-03-10 04:27
337

docker.io/rayproject/ray:2.39.0-py310-cpu-aarch64

linux/arm64 docker.io2.40GB2025-03-20 17:16
572

docker.io/rayproject/ray:2.41.0

linux/amd64 docker.io2.21GB2025-04-25 17:36
414

docker.io/rayproject/ray:2.44.0-py310-cpu

linux/amd64 docker.io2.08GB2025-07-08 11:06
419

docker.io/rayproject/ray:2.46.0

linux/amd64 docker.io2.09GB2025-09-08 12:07
377

docker.io/rayproject/ray:nightly-py312-cu128

linux/amd64 docker.io12.57GB2025-09-09 11:39
366

docker.io/rayproject/ray:2.41.0-py39-cpu

linux/amd64 docker.io2.21GB2025-09-23 20:26
326

docker.io/rayproject/ray:2.41.0-py39-gpu

linux/amd64 docker.io11.50GB2025-09-24 03:09
259

docker.io/rayproject/ray:2.46.0-py39-cpu

linux/amd64 docker.io2.09GB2025-09-24 20:05
329

docker.io/rayproject/ray:2.46.0-py39-gpu

linux/amd64 docker.io11.38GB2025-10-04 00:39
363

docker.io/rayproject/ray:2.50.1-py312-cpu

linux/amd64 docker.io2.18GB2025-10-21 15:22
442

docker.io/rayproject/ray:2.50.1-py312-cu128

linux/amd64 docker.io12.52GB2025-10-22 01:01
308

docker.io/rayproject/ray:2.52.0

linux/amd64 docker.io2.13GB2026-03-11 14:46
160

docker.io/rayproject/ray-ml:2.40.0.160e35-py311-gpu

linux/amd64 docker.io21.81GB2026-03-14 03:53
115

docker.io/rayproject/ray-ml:2.46.0.0e19ea-py311-cpu

linux/amd64 docker.io12.73GB2026-03-27 01:56
95

docker.io/rayproject/ray-ml:2.46.0.0e19ea-py310-cpu

linux/amd64 docker.io12.36GB2026-03-27 02:24
102

docker.io/rayproject/ray:2.55.0

linux/amd64 docker.io2.16GB2026-04-22 09:46
104

docker.io/rayproject/ray:2.38.0-py311-gpu

linux/amd64 docker.io12.00GB2026-05-26 02:50
7