广告图片

ghcr.io/scverse/rapids-singlecell-cu12:latest linux/amd64

ghcr.io/scverse/rapids-singlecell-cu12:latest - 国内下载镜像源 浏览次数:10

温馨提示:此镜像为latest tag镜像,本站无法保证此版本为最新镜像

这是scverse社区提供的基于RAPIDS库的单细胞数据分析Docker镜像,支持CUDA 12版本,旨在利用GPU加速提升单细胞数据处理的效率与速度,适用于单细胞组学研究中的数据预处理、分析等相关任务。

源镜像 ghcr.io/scverse/rapids-singlecell-cu12:latest
国内镜像 swr.cn-north-4.myhuaweicloud.com/ddn-k8s/ghcr.io/scverse/rapids-singlecell-cu12:latest
镜像ID sha256:c2cfbcf62c8582cada93276371f12544271c679dcfffb3e970a5ae4790bfca2d
镜像TAG latest
大小 31.39GB
镜像源 ghcr.io
CMD
启动入口 /opt/nvidia/nvidia_entrypoint.sh
工作目录
OS/平台 linux/amd64
浏览量 10 次
贡献者
镜像创建 2026-03-22T04:33:23.773499625Z
同步时间 2026-03-26 06:34
环境变量
PATH=/opt/conda/bin:/opt/conda/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>=12.8 brand=unknown,driver>=470,driver<471 brand=grid,driver>=470,driver<471 brand=tesla,driver>=470,driver<471 brand=nvidia,driver>=470,driver<471 brand=quadro,driver>=470,driver<471 brand=quadrortx,driver>=470,driver<471 brand=nvidiartx,driver>=470,driver<471 brand=vapps,driver>=470,driver<471 brand=vpc,driver>=470,driver<471 brand=vcs,driver>=470,driver<471 brand=vws,driver>=470,driver<471 brand=cloudgaming,driver>=470,driver<471 brand=unknown,driver>=535,driver<536 brand=grid,driver>=535,driver<536 brand=tesla,driver>=535,driver<536 brand=nvidia,driver>=535,driver<536 brand=quadro,driver>=535,driver<536 brand=quadrortx,driver>=535,driver<536 brand=nvidiartx,driver>=535,driver<536 brand=vapps,driver>=535,driver<536 brand=vpc,driver>=535,driver<536 brand=vcs,driver>=535,driver<536 brand=vws,driver>=535,driver<536 brand=cloudgaming,driver>=535,driver<536 brand=unknown,driver>=550,driver<551 brand=grid,driver>=550,driver<551 brand=tesla,driver>=550,driver<551 brand=nvidia,driver>=550,driver<551 brand=quadro,driver>=550,driver<551 brand=quadrortx,driver>=550,driver<551 brand=nvidiartx,driver>=550,driver<551 brand=vapps,driver>=550,driver<551 brand=vpc,driver>=550,driver<551 brand=vcs,driver>=550,driver<551 brand=vws,driver>=550,driver<551 brand=cloudgaming,driver>=550,driver<551 brand=unknown,driver>=560,driver<561 brand=grid,driver>=560,driver<561 brand=tesla,driver>=560,driver<561 brand=nvidia,driver>=560,driver<561 brand=quadro,driver>=560,driver<561 brand=quadrortx,driver>=560,driver<561 brand=nvidiartx,driver>=560,driver<561 brand=vapps,driver>=560,driver<561 brand=vpc,driver>=560,driver<561 brand=vcs,driver>=560,driver<561 brand=vws,driver>=560,driver<561 brand=cloudgaming,driver>=560,driver<561 brand=unknown,driver>=565,driver<566 brand=grid,driver>=565,driver<566 brand=tesla,driver>=565,driver<566 brand=nvidia,driver>=565,driver<566 brand=quadro,driver>=565,driver<566 brand=quadrortx,driver>=565,driver<566 brand=nvidiartx,driver>=565,driver<566 brand=vapps,driver>=565,driver<566 brand=vpc,driver>=565,driver<566 brand=vcs,driver>=565,driver<566 brand=vws,driver>=565,driver<566 brand=cloudgaming,driver>=565,driver<566 NV_CUDA_CUDART_VERSION=12.8.57-1 CUDA_VERSION=12.8.0 LD_LIBRARY_PATH=/usr/local/nvidia/lib:/usr/local/nvidia/lib64 NVIDIA_VISIBLE_DEVICES=all NVIDIA_DRIVER_CAPABILITIES=compute,utility NV_CUDA_LIB_VERSION=12.8.0-1 NV_NVTX_VERSION=12.8.55-1 NV_LIBNPP_VERSION=12.3.3.65-1 NV_LIBNPP_PACKAGE=libnpp-12-8=12.3.3.65-1 NV_LIBCUSPARSE_VERSION=12.5.7.53-1 NV_LIBCUBLAS_PACKAGE_NAME=libcublas-12-8 NV_LIBCUBLAS_VERSION=12.8.3.14-1 NV_LIBCUBLAS_PACKAGE=libcublas-12-8=12.8.3.14-1 NV_LIBNCCL_PACKAGE_NAME=libnccl2 NV_LIBNCCL_PACKAGE_VERSION=2.25.1-1 NCCL_VERSION=2.25.1-1 NV_LIBNCCL_PACKAGE=libnccl2=2.25.1-1+cuda12.8 NVIDIA_PRODUCT_NAME=CUDA NV_CUDA_CUDART_DEV_VERSION=12.8.57-1 NV_NVML_DEV_VERSION=12.8.55-1 NV_LIBCUSPARSE_DEV_VERSION=12.5.7.53-1 NV_LIBNPP_DEV_VERSION=12.3.3.65-1 NV_LIBNPP_DEV_PACKAGE=libnpp-dev-12-8=12.3.3.65-1 NV_LIBCUBLAS_DEV_VERSION=12.8.3.14-1 NV_LIBCUBLAS_DEV_PACKAGE_NAME=libcublas-dev-12-8 NV_LIBCUBLAS_DEV_PACKAGE=libcublas-dev-12-8=12.8.3.14-1 NV_CUDA_NSIGHT_COMPUTE_VERSION=12.8.0-1 NV_CUDA_NSIGHT_COMPUTE_DEV_PACKAGE=cuda-nsight-compute-12-8=12.8.0-1 NV_NVPROF_VERSION=12.8.57-1 NV_NVPROF_DEV_PACKAGE=cuda-nvprof-12-8=12.8.57-1 NV_LIBNCCL_DEV_PACKAGE_NAME=libnccl-dev NV_LIBNCCL_DEV_PACKAGE_VERSION=2.25.1-1 NV_LIBNCCL_DEV_PACKAGE=libnccl-dev=2.25.1-1+cuda12.8 LIBRARY_PATH=/usr/local/cuda/lib64/stubs PYTHON_VERSION=3.13
镜像标签
NVIDIA CORPORATION <cudatools@nvidia.com>: maintainer 2026-03-22T04:30:29.137Z: org.opencontainers.image.created rapids-singlecell: GPU-accelerated framework for scRNA analysis: org.opencontainers.image.description MIT: org.opencontainers.image.licenses ubuntu: org.opencontainers.image.ref.name 87fafb59c43b170ad8b752d8c7cfe0e17b83fc7f: org.opencontainers.image.revision https://github.com/scverse/rapids-singlecell: org.opencontainers.image.source rapids-singlecell: org.opencontainers.image.title https://github.com/scverse/rapids-singlecell: org.opencontainers.image.url v0.15.0rc5: org.opencontainers.image.version

Docker拉取命令

docker pull swr.cn-north-4.myhuaweicloud.com/ddn-k8s/ghcr.io/scverse/rapids-singlecell-cu12:latest
docker tag  swr.cn-north-4.myhuaweicloud.com/ddn-k8s/ghcr.io/scverse/rapids-singlecell-cu12:latest  ghcr.io/scverse/rapids-singlecell-cu12:latest

Containerd拉取命令

ctr images pull swr.cn-north-4.myhuaweicloud.com/ddn-k8s/ghcr.io/scverse/rapids-singlecell-cu12:latest
ctr images tag  swr.cn-north-4.myhuaweicloud.com/ddn-k8s/ghcr.io/scverse/rapids-singlecell-cu12:latest  ghcr.io/scverse/rapids-singlecell-cu12:latest

Shell快速替换命令

sed -i 's#ghcr.io/scverse/rapids-singlecell-cu12:latest#swr.cn-north-4.myhuaweicloud.com/ddn-k8s/ghcr.io/scverse/rapids-singlecell-cu12:latest#' deployment.yaml

Ansible快速分发-Docker

#ansible k8s -m shell -a 'docker pull swr.cn-north-4.myhuaweicloud.com/ddn-k8s/ghcr.io/scverse/rapids-singlecell-cu12:latest && docker tag  swr.cn-north-4.myhuaweicloud.com/ddn-k8s/ghcr.io/scverse/rapids-singlecell-cu12:latest  ghcr.io/scverse/rapids-singlecell-cu12:latest'

Ansible快速分发-Containerd

#ansible k8s -m shell -a 'ctr images pull swr.cn-north-4.myhuaweicloud.com/ddn-k8s/ghcr.io/scverse/rapids-singlecell-cu12:latest && ctr images tag  swr.cn-north-4.myhuaweicloud.com/ddn-k8s/ghcr.io/scverse/rapids-singlecell-cu12:latest  ghcr.io/scverse/rapids-singlecell-cu12:latest'

镜像构建历史


# 2026-03-22 12:33:23  502.71MB 执行命令并创建新的镜像层
RUN |2 GIT_ID=main CUDA_ARCHS=75-real;80-real;86-real;89-real;90 /bin/bash -euo pipefail -c # install rapids_singlecell from source (compiled for all supported GPU architectures)
set -x
mkdir /src
cd /src
git clone https://github.com/scverse/rapids_singlecell.git
cd rapids_singlecell
git checkout ${GIT_ID}
# Set CUDA architectures directly in pyproject.toml (avoids SKBUILD_CMAKE_ARGS semicolon splitting)
sed -i 's/CMAKE_CUDA_ARCHITECTURES = "native"/CMAKE_CUDA_ARCHITECTURES = "'"${CUDA_ARCHS}"'"/' pyproject.toml
grep CMAKE_CUDA_ARCHITECTURES pyproject.toml
/opt/conda/bin/python -m pip install --no-cache-dir -e .
 # buildkit
                        
# 2026-03-22 12:33:23  0.00B 定义构建参数
ARG CUDA_ARCHS=75-real;80-real;86-real;89-real;90
                        
# 2026-03-22 12:33:23  0.00B 设置环境变量 PATH
ENV PATH=/opt/conda/bin:/opt/conda/bin:/usr/local/nvidia/bin:/usr/local/cuda/bin:/usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin
                        
# 2026-03-22 12:33:23  0.00B 
SHELL [/bin/bash -euo pipefail -c]
                        
# 2026-03-22 12:33:23  0.00B 定义构建参数
ARG GIT_ID=main
                        
# 2026-03-22 12:20:03  120.09MB 执行命令并创建新的镜像层
RUN |3 PYTHON_VER=3.13 GIT_ID=main DEBIAN_FRONTEND=noninteractive /bin/bash -euo pipefail -c # install rapids_singlecell pip dependencies (without building the package)
set -x
cd /tmp
git clone https://github.com/scverse/rapids_singlecell.git
cd rapids_singlecell
git checkout ${GIT_ID}
/opt/conda/bin/python -c "
import tomllib
with open('pyproject.toml', 'rb') as f:
    data = tomllib.load(f)
with open('/tmp/deps.txt', 'w') as f:
    f.write('\n'.join(data['project']['dependencies']))
"
/opt/conda/bin/python -m pip install --no-cache-dir -r /tmp/deps.txt
rm -rf /tmp/rapids_singlecell /tmp/deps.txt
 # buildkit
                        
# 2026-03-22 12:19:47  14.78GB 执行命令并创建新的镜像层
RUN |3 PYTHON_VER=3.13 GIT_ID=main DEBIAN_FRONTEND=noninteractive /bin/bash -euo pipefail -c # install conda environment
set -x
mamba env update -n base -f rsc_rapids.yml
mamba install -y -n base pytest -c conda-forge
mamba clean --all -y
 # buildkit
                        
# 2026-03-22 12:17:11  6.26GB 执行命令并创建新的镜像层
RUN |3 PYTHON_VER=3.13 GIT_ID=main DEBIAN_FRONTEND=noninteractive /bin/bash -euo pipefail -c # install system dependencies
set -x
apt-get -qq update
apt-get -q -o=Dpkg::Use-Pty=0 -y dist-upgrade
apt-get -q install -y -o=Dpkg::Use-Pty=0 git
apt-get -q clean -y
rm -rf /var/lib/apt/lists/*
 # buildkit
                        
# 2026-03-22 12:15:28  0.00B 定义构建参数
ARG DEBIAN_FRONTEND=noninteractive
                        
# 2026-03-22 12:15:28  0.00B 定义构建参数
ARG GIT_ID=main
                        
# 2026-03-22 12:15:28  254.00B 复制新文件或目录到容器中
COPY rsc_rapids.yml rsc_rapids.yml # buildkit
                        
# 2026-03-22 12:15:28  292.48MB 复制新文件或目录到容器中
COPY /opt/conda /opt/conda # buildkit
                        
# 2026-03-22 12:15:28  0.00B 设置环境变量 PYTHON_VERSION
ENV PYTHON_VERSION=3.13
                        
# 2026-03-22 12:15:28  0.00B 设置环境变量 PATH
ENV PATH=/opt/conda/bin:/usr/local/nvidia/bin:/usr/local/cuda/bin:/usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin
                        
# 2026-03-22 12:15:28  0.00B 定义构建参数
ARG PYTHON_VER=3.13
                        
# 2026-03-22 12:15:28  0.00B 
SHELL [/bin/bash -euo pipefail -c]
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 LIBRARY_PATH
ENV LIBRARY_PATH=/usr/local/cuda/lib64/stubs
                        
# 2025-01-27 07:14:57  390.12KB 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
                        
# 2025-01-27 07:14:57  6.00GB 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-12-8=${NV_CUDA_CUDART_DEV_VERSION}     cuda-command-line-tools-12-8=${NV_CUDA_LIB_VERSION}     cuda-minimal-build-12-8=${NV_CUDA_LIB_VERSION}     cuda-libraries-dev-12-8=${NV_CUDA_LIB_VERSION}     cuda-nvml-dev-12-8=${NV_NVML_DEV_VERSION}     ${NV_NVPROF_DEV_PACKAGE}     ${NV_LIBNPP_DEV_PACKAGE}     libcusparse-dev-12-8=${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
                        
# 2025-01-27 07:14:57  0.00B 添加元数据标签
LABEL maintainer=NVIDIA CORPORATION <cudatools@nvidia.com>
                        
# 2025-01-27 07:14:57  0.00B 定义构建参数
ARG TARGETARCH
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 NV_LIBNCCL_DEV_PACKAGE
ENV NV_LIBNCCL_DEV_PACKAGE=libnccl-dev=2.25.1-1+cuda12.8
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 NCCL_VERSION
ENV NCCL_VERSION=2.25.1-1
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 NV_LIBNCCL_DEV_PACKAGE_VERSION
ENV NV_LIBNCCL_DEV_PACKAGE_VERSION=2.25.1-1
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 NV_LIBNCCL_DEV_PACKAGE_NAME
ENV NV_LIBNCCL_DEV_PACKAGE_NAME=libnccl-dev
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 NV_NVPROF_DEV_PACKAGE
ENV NV_NVPROF_DEV_PACKAGE=cuda-nvprof-12-8=12.8.57-1
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 NV_NVPROF_VERSION
ENV NV_NVPROF_VERSION=12.8.57-1
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 NV_CUDA_NSIGHT_COMPUTE_DEV_PACKAGE
ENV NV_CUDA_NSIGHT_COMPUTE_DEV_PACKAGE=cuda-nsight-compute-12-8=12.8.0-1
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 NV_CUDA_NSIGHT_COMPUTE_VERSION
ENV NV_CUDA_NSIGHT_COMPUTE_VERSION=12.8.0-1
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 NV_LIBCUBLAS_DEV_PACKAGE
ENV NV_LIBCUBLAS_DEV_PACKAGE=libcublas-dev-12-8=12.8.3.14-1
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 NV_LIBCUBLAS_DEV_PACKAGE_NAME
ENV NV_LIBCUBLAS_DEV_PACKAGE_NAME=libcublas-dev-12-8
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 NV_LIBCUBLAS_DEV_VERSION
ENV NV_LIBCUBLAS_DEV_VERSION=12.8.3.14-1
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 NV_LIBNPP_DEV_PACKAGE
ENV NV_LIBNPP_DEV_PACKAGE=libnpp-dev-12-8=12.3.3.65-1
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 NV_LIBNPP_DEV_VERSION
ENV NV_LIBNPP_DEV_VERSION=12.3.3.65-1
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 NV_LIBCUSPARSE_DEV_VERSION
ENV NV_LIBCUSPARSE_DEV_VERSION=12.5.7.53-1
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 NV_NVML_DEV_VERSION
ENV NV_NVML_DEV_VERSION=12.8.55-1
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 NV_CUDA_CUDART_DEV_VERSION
ENV NV_CUDA_CUDART_DEV_VERSION=12.8.57-1
                        
# 2025-01-27 07:14:57  0.00B 设置环境变量 NV_CUDA_LIB_VERSION
ENV NV_CUDA_LIB_VERSION=12.8.0-1
                        
# 2025-01-27 07:06:37  0.00B 配置容器启动时运行的命令
ENTRYPOINT ["/opt/nvidia/nvidia_entrypoint.sh"]
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 NVIDIA_PRODUCT_NAME
ENV NVIDIA_PRODUCT_NAME=CUDA
                        
# 2025-01-27 07:06:37  2.53KB 复制新文件或目录到容器中
COPY nvidia_entrypoint.sh /opt/nvidia/ # buildkit
                        
# 2025-01-27 07:06:37  3.06KB 复制新文件或目录到容器中
COPY entrypoint.d/ /opt/nvidia/entrypoint.d/ # buildkit
                        
# 2025-01-27 07:06:37  239.16KB 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
                        
# 2025-01-27 07:06:37  3.13GB 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-12-8=${NV_CUDA_LIB_VERSION}     ${NV_LIBNPP_PACKAGE}     cuda-nvtx-12-8=${NV_NVTX_VERSION}     libcusparse-12-8=${NV_LIBCUSPARSE_VERSION}     ${NV_LIBCUBLAS_PACKAGE}     ${NV_LIBNCCL_PACKAGE}     && rm -rf /var/lib/apt/lists/* # buildkit
                        
# 2025-01-27 07:06:37  0.00B 添加元数据标签
LABEL maintainer=NVIDIA CORPORATION <cudatools@nvidia.com>
                        
# 2025-01-27 07:06:37  0.00B 定义构建参数
ARG TARGETARCH
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 NV_LIBNCCL_PACKAGE
ENV NV_LIBNCCL_PACKAGE=libnccl2=2.25.1-1+cuda12.8
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 NCCL_VERSION
ENV NCCL_VERSION=2.25.1-1
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 NV_LIBNCCL_PACKAGE_VERSION
ENV NV_LIBNCCL_PACKAGE_VERSION=2.25.1-1
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 NV_LIBNCCL_PACKAGE_NAME
ENV NV_LIBNCCL_PACKAGE_NAME=libnccl2
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 NV_LIBCUBLAS_PACKAGE
ENV NV_LIBCUBLAS_PACKAGE=libcublas-12-8=12.8.3.14-1
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 NV_LIBCUBLAS_VERSION
ENV NV_LIBCUBLAS_VERSION=12.8.3.14-1
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 NV_LIBCUBLAS_PACKAGE_NAME
ENV NV_LIBCUBLAS_PACKAGE_NAME=libcublas-12-8
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 NV_LIBCUSPARSE_VERSION
ENV NV_LIBCUSPARSE_VERSION=12.5.7.53-1
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 NV_LIBNPP_PACKAGE
ENV NV_LIBNPP_PACKAGE=libnpp-12-8=12.3.3.65-1
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 NV_LIBNPP_VERSION
ENV NV_LIBNPP_VERSION=12.3.3.65-1
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 NV_NVTX_VERSION
ENV NV_NVTX_VERSION=12.8.55-1
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 NV_CUDA_LIB_VERSION
ENV NV_CUDA_LIB_VERSION=12.8.0-1
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 NVIDIA_DRIVER_CAPABILITIES
ENV NVIDIA_DRIVER_CAPABILITIES=compute,utility
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 NVIDIA_VISIBLE_DEVICES
ENV NVIDIA_VISIBLE_DEVICES=all
                        
# 2025-01-27 07:06:37  17.29KB 复制新文件或目录到容器中
COPY NGC-DL-CONTAINER-LICENSE / # buildkit
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 LD_LIBRARY_PATH
ENV LD_LIBRARY_PATH=/usr/local/nvidia/lib:/usr/local/nvidia/lib64
                        
# 2025-01-27 07:06:37  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
                        
# 2025-01-27 07:06:37  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
                        
# 2025-01-27 07:06:37  203.12MB 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-12-8=${NV_CUDA_CUDART_VERSION}     cuda-compat-12-8     && rm -rf /var/lib/apt/lists/* # buildkit
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 CUDA_VERSION
ENV CUDA_VERSION=12.8.0
                        
# 2025-01-27 07:06:37  10.24MB 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 -fsSL https://developer.download.nvidia.com/compute/cuda/repos/ubuntu2404/${NVARCH}/3bf863cc.pub | apt-key add - &&     echo "deb https://developer.download.nvidia.com/compute/cuda/repos/ubuntu2404/${NVARCH} /" > /etc/apt/sources.list.d/cuda.list &&     apt-get purge --autoremove -y curl     && rm -rf /var/lib/apt/lists/* # buildkit
                        
# 2025-01-27 07:06:37  0.00B 添加元数据标签
LABEL maintainer=NVIDIA CORPORATION <cudatools@nvidia.com>
                        
# 2025-01-27 07:06:37  0.00B 定义构建参数
ARG TARGETARCH
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 NV_CUDA_CUDART_VERSION
ENV NV_CUDA_CUDART_VERSION=12.8.57-1
                        
# 2025-01-27 07:06:37  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 brand brand brand brand brand brand brand brand brand brand brand brand brand brand brand brand brand brand brand brand 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>=12.8 brand=unknown,driver>=470,driver<471 brand=grid,driver>=470,driver<471 brand=tesla,driver>=470,driver<471 brand=nvidia,driver>=470,driver<471 brand=quadro,driver>=470,driver<471 brand=quadrortx,driver>=470,driver<471 brand=nvidiartx,driver>=470,driver<471 brand=vapps,driver>=470,driver<471 brand=vpc,driver>=470,driver<471 brand=vcs,driver>=470,driver<471 brand=vws,driver>=470,driver<471 brand=cloudgaming,driver>=470,driver<471 brand=unknown,driver>=535,driver<536 brand=grid,driver>=535,driver<536 brand=tesla,driver>=535,driver<536 brand=nvidia,driver>=535,driver<536 brand=quadro,driver>=535,driver<536 brand=quadrortx,driver>=535,driver<536 brand=nvidiartx,driver>=535,driver<536 brand=vapps,driver>=535,driver<536 brand=vpc,driver>=535,driver<536 brand=vcs,driver>=535,driver<536 brand=vws,driver>=535,driver<536 brand=cloudgaming,driver>=535,driver<536 brand=unknown,driver>=550,driver<551 brand=grid,driver>=550,driver<551 brand=tesla,driver>=550,driver<551 brand=nvidia,driver>=550,driver<551 brand=quadro,driver>=550,driver<551 brand=quadrortx,driver>=550,driver<551 brand=nvidiartx,driver>=550,driver<551 brand=vapps,driver>=550,driver<551 brand=vpc,driver>=550,driver<551 brand=vcs,driver>=550,driver<551 brand=vws,driver>=550,driver<551 brand=cloudgaming,driver>=550,driver<551 brand=unknown,driver>=560,driver<561 brand=grid,driver>=560,driver<561 brand=tesla,driver>=560,driver<561 brand=nvidia,driver>=560,driver<561 brand=quadro,driver>=560,driver<561 brand=quadrortx,driver>=560,driver<561 brand=nvidiartx,driver>=560,driver<561 brand=vapps,driver>=560,driver<561 brand=vpc,driver>=560,driver<561 brand=vcs,driver>=560,driver<561 brand=vws,driver>=560,driver<561 brand=cloudgaming,driver>=560,driver<561 brand=unknown,driver>=565,driver<566 brand=grid,driver>=565,driver<566 brand=tesla,driver>=565,driver<566 brand=nvidia,driver>=565,driver<566 brand=quadro,driver>=565,driver<566 brand=quadrortx,driver>=565,driver<566 brand=nvidiartx,driver>=565,driver<566 brand=vapps,driver>=565,driver<566 brand=vpc,driver>=565,driver<566 brand=vcs,driver>=565,driver<566 brand=vws,driver>=565,driver<566 brand=cloudgaming,driver>=565,driver<566
                        
# 2025-01-27 07:06:37  0.00B 设置环境变量 NVARCH
ENV NVARCH=x86_64
                        
# 2024-11-20 01:29:25  0.00B 
/bin/sh -c #(nop)  CMD ["/bin/bash"]
                        
# 2024-11-20 01:29:25  78.12MB 
/bin/sh -c #(nop) ADD file:bcebbf0fddcba5b864d5d267b68dd23bcfb01275e6ec7bcab69bf8b56af14804 in / 
                        
# 2024-11-20 01:29:23  0.00B 
/bin/sh -c #(nop)  LABEL org.opencontainers.image.version=24.04
                        
# 2024-11-20 01:29:23  0.00B 
/bin/sh -c #(nop)  LABEL org.opencontainers.image.ref.name=ubuntu
                        
# 2024-11-20 01:29:23  0.00B 
/bin/sh -c #(nop)  ARG LAUNCHPAD_BUILD_ARCH
                        
# 2024-11-20 01:29:23  0.00B 
/bin/sh -c #(nop)  ARG RELEASE
                        
                    

镜像信息

{
    "Id": "sha256:c2cfbcf62c8582cada93276371f12544271c679dcfffb3e970a5ae4790bfca2d",
    "RepoTags": [
        "ghcr.io/scverse/rapids-singlecell-cu12:latest",
        "swr.cn-north-4.myhuaweicloud.com/ddn-k8s/ghcr.io/scverse/rapids-singlecell-cu12:latest"
    ],
    "RepoDigests": [
        "ghcr.io/scverse/rapids-singlecell-cu12@sha256:f21f23ccd48323bf2e11ed60c42721b526a2556d8d9d28cec5bec87c0358ee16",
        "swr.cn-north-4.myhuaweicloud.com/ddn-k8s/ghcr.io/scverse/rapids-singlecell-cu12@sha256:1004316f0e08092068cd5b500b682c3285a1683bc4c08a1f18f893e2b4dc287e"
    ],
    "Parent": "",
    "Comment": "buildkit.dockerfile.v0",
    "Created": "2026-03-22T04:33:23.773499625Z",
    "Container": "",
    "ContainerConfig": null,
    "DockerVersion": "",
    "Author": "",
    "Config": {
        "Hostname": "",
        "Domainname": "",
        "User": "",
        "AttachStdin": false,
        "AttachStdout": false,
        "AttachStderr": false,
        "Tty": false,
        "OpenStdin": false,
        "StdinOnce": false,
        "Env": [
            "PATH=/opt/conda/bin:/opt/conda/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=12.8 brand=unknown,driver\u003e=470,driver\u003c471 brand=grid,driver\u003e=470,driver\u003c471 brand=tesla,driver\u003e=470,driver\u003c471 brand=nvidia,driver\u003e=470,driver\u003c471 brand=quadro,driver\u003e=470,driver\u003c471 brand=quadrortx,driver\u003e=470,driver\u003c471 brand=nvidiartx,driver\u003e=470,driver\u003c471 brand=vapps,driver\u003e=470,driver\u003c471 brand=vpc,driver\u003e=470,driver\u003c471 brand=vcs,driver\u003e=470,driver\u003c471 brand=vws,driver\u003e=470,driver\u003c471 brand=cloudgaming,driver\u003e=470,driver\u003c471 brand=unknown,driver\u003e=535,driver\u003c536 brand=grid,driver\u003e=535,driver\u003c536 brand=tesla,driver\u003e=535,driver\u003c536 brand=nvidia,driver\u003e=535,driver\u003c536 brand=quadro,driver\u003e=535,driver\u003c536 brand=quadrortx,driver\u003e=535,driver\u003c536 brand=nvidiartx,driver\u003e=535,driver\u003c536 brand=vapps,driver\u003e=535,driver\u003c536 brand=vpc,driver\u003e=535,driver\u003c536 brand=vcs,driver\u003e=535,driver\u003c536 brand=vws,driver\u003e=535,driver\u003c536 brand=cloudgaming,driver\u003e=535,driver\u003c536 brand=unknown,driver\u003e=550,driver\u003c551 brand=grid,driver\u003e=550,driver\u003c551 brand=tesla,driver\u003e=550,driver\u003c551 brand=nvidia,driver\u003e=550,driver\u003c551 brand=quadro,driver\u003e=550,driver\u003c551 brand=quadrortx,driver\u003e=550,driver\u003c551 brand=nvidiartx,driver\u003e=550,driver\u003c551 brand=vapps,driver\u003e=550,driver\u003c551 brand=vpc,driver\u003e=550,driver\u003c551 brand=vcs,driver\u003e=550,driver\u003c551 brand=vws,driver\u003e=550,driver\u003c551 brand=cloudgaming,driver\u003e=550,driver\u003c551 brand=unknown,driver\u003e=560,driver\u003c561 brand=grid,driver\u003e=560,driver\u003c561 brand=tesla,driver\u003e=560,driver\u003c561 brand=nvidia,driver\u003e=560,driver\u003c561 brand=quadro,driver\u003e=560,driver\u003c561 brand=quadrortx,driver\u003e=560,driver\u003c561 brand=nvidiartx,driver\u003e=560,driver\u003c561 brand=vapps,driver\u003e=560,driver\u003c561 brand=vpc,driver\u003e=560,driver\u003c561 brand=vcs,driver\u003e=560,driver\u003c561 brand=vws,driver\u003e=560,driver\u003c561 brand=cloudgaming,driver\u003e=560,driver\u003c561 brand=unknown,driver\u003e=565,driver\u003c566 brand=grid,driver\u003e=565,driver\u003c566 brand=tesla,driver\u003e=565,driver\u003c566 brand=nvidia,driver\u003e=565,driver\u003c566 brand=quadro,driver\u003e=565,driver\u003c566 brand=quadrortx,driver\u003e=565,driver\u003c566 brand=nvidiartx,driver\u003e=565,driver\u003c566 brand=vapps,driver\u003e=565,driver\u003c566 brand=vpc,driver\u003e=565,driver\u003c566 brand=vcs,driver\u003e=565,driver\u003c566 brand=vws,driver\u003e=565,driver\u003c566 brand=cloudgaming,driver\u003e=565,driver\u003c566",
            "NV_CUDA_CUDART_VERSION=12.8.57-1",
            "CUDA_VERSION=12.8.0",
            "LD_LIBRARY_PATH=/usr/local/nvidia/lib:/usr/local/nvidia/lib64",
            "NVIDIA_VISIBLE_DEVICES=all",
            "NVIDIA_DRIVER_CAPABILITIES=compute,utility",
            "NV_CUDA_LIB_VERSION=12.8.0-1",
            "NV_NVTX_VERSION=12.8.55-1",
            "NV_LIBNPP_VERSION=12.3.3.65-1",
            "NV_LIBNPP_PACKAGE=libnpp-12-8=12.3.3.65-1",
            "NV_LIBCUSPARSE_VERSION=12.5.7.53-1",
            "NV_LIBCUBLAS_PACKAGE_NAME=libcublas-12-8",
            "NV_LIBCUBLAS_VERSION=12.8.3.14-1",
            "NV_LIBCUBLAS_PACKAGE=libcublas-12-8=12.8.3.14-1",
            "NV_LIBNCCL_PACKAGE_NAME=libnccl2",
            "NV_LIBNCCL_PACKAGE_VERSION=2.25.1-1",
            "NCCL_VERSION=2.25.1-1",
            "NV_LIBNCCL_PACKAGE=libnccl2=2.25.1-1+cuda12.8",
            "NVIDIA_PRODUCT_NAME=CUDA",
            "NV_CUDA_CUDART_DEV_VERSION=12.8.57-1",
            "NV_NVML_DEV_VERSION=12.8.55-1",
            "NV_LIBCUSPARSE_DEV_VERSION=12.5.7.53-1",
            "NV_LIBNPP_DEV_VERSION=12.3.3.65-1",
            "NV_LIBNPP_DEV_PACKAGE=libnpp-dev-12-8=12.3.3.65-1",
            "NV_LIBCUBLAS_DEV_VERSION=12.8.3.14-1",
            "NV_LIBCUBLAS_DEV_PACKAGE_NAME=libcublas-dev-12-8",
            "NV_LIBCUBLAS_DEV_PACKAGE=libcublas-dev-12-8=12.8.3.14-1",
            "NV_CUDA_NSIGHT_COMPUTE_VERSION=12.8.0-1",
            "NV_CUDA_NSIGHT_COMPUTE_DEV_PACKAGE=cuda-nsight-compute-12-8=12.8.0-1",
            "NV_NVPROF_VERSION=12.8.57-1",
            "NV_NVPROF_DEV_PACKAGE=cuda-nvprof-12-8=12.8.57-1",
            "NV_LIBNCCL_DEV_PACKAGE_NAME=libnccl-dev",
            "NV_LIBNCCL_DEV_PACKAGE_VERSION=2.25.1-1",
            "NV_LIBNCCL_DEV_PACKAGE=libnccl-dev=2.25.1-1+cuda12.8",
            "LIBRARY_PATH=/usr/local/cuda/lib64/stubs",
            "PYTHON_VERSION=3.13"
        ],
        "Cmd": null,
        "Image": "",
        "Volumes": null,
        "WorkingDir": "",
        "Entrypoint": [
            "/opt/nvidia/nvidia_entrypoint.sh"
        ],
        "OnBuild": null,
        "Labels": {
            "maintainer": "NVIDIA CORPORATION \u003ccudatools@nvidia.com\u003e",
            "org.opencontainers.image.created": "2026-03-22T04:30:29.137Z",
            "org.opencontainers.image.description": "rapids-singlecell: GPU-accelerated framework for scRNA analysis",
            "org.opencontainers.image.licenses": "MIT",
            "org.opencontainers.image.ref.name": "ubuntu",
            "org.opencontainers.image.revision": "87fafb59c43b170ad8b752d8c7cfe0e17b83fc7f",
            "org.opencontainers.image.source": "https://github.com/scverse/rapids-singlecell",
            "org.opencontainers.image.title": "rapids-singlecell",
            "org.opencontainers.image.url": "https://github.com/scverse/rapids-singlecell",
            "org.opencontainers.image.version": "v0.15.0rc5"
        },
        "Shell": [
            "/bin/bash",
            "-euo",
            "pipefail",
            "-c"
        ]
    },
    "Architecture": "amd64",
    "Os": "linux",
    "Size": 31389238005,
    "GraphDriver": {
        "Data": {
            "LowerDir": "/var/lib/docker/overlay2/c9a3155d101d46513dae0ef2c4aa9fe3437c7229c71fa3d4abf2d32e7dd72099/diff:/var/lib/docker/overlay2/2b9213d77dbde0ea3d818ba0fbe23315f0d2e3a33385892685569647b283c880/diff:/var/lib/docker/overlay2/fb1d657e85134df947abc8e1b57a06403ed1da6a2b3a660763617affe2c9af8f/diff:/var/lib/docker/overlay2/9f2541774fe5208dab95a888462cf3b4c83ba7f9389807a5a9fbb5bd11152387/diff:/var/lib/docker/overlay2/9d2281ac01f0ea699e1e22d600eb2242b462dd0ecf0f488798bf75ab2b21b491/diff:/var/lib/docker/overlay2/91e806e327f61b0259f035eb547fa483d0cdff2d1d7ccf8baefcecec44dfa0aa/diff:/var/lib/docker/overlay2/0165a85062b448d6b83e0b4125fd6cb3e64e11ad76de7e3ca071ed7a89c3c8dc/diff:/var/lib/docker/overlay2/1561a7ed63db54644fa35d400f45acbb880f3c0ae985f01d76d0fa3e669476dc/diff:/var/lib/docker/overlay2/b5377a0eeff24ed3d720f034e576bb9006c4930508e53c50ef9e8d01060797e5/diff:/var/lib/docker/overlay2/d1ae76b6d451b57b2b7a298d90011aef2c9bb4a07f321ce3803bcf35a43b6521/diff:/var/lib/docker/overlay2/2dfa90c0709f9df422cec3cc80998a721272c19c744e01b185747b1c63ed14bf/diff:/var/lib/docker/overlay2/804f27aa72f410b26d901e76a6ec9727aba5e0dc36353ddc0ee9ed427ce62173/diff:/var/lib/docker/overlay2/b68bc31b502f0065eddfe1393504a906c2afd9fbc609ad2f5f2416f9e3eefb78/diff:/var/lib/docker/overlay2/a486a585ff85f84ebea160b7522763b57171d41cfa0883b307e951a916cba7ce/diff:/var/lib/docker/overlay2/ea397a2c2b6d39d0469f39bd7099c7ba1204854b291f20f2de3b19ac56c80b5b/diff:/var/lib/docker/overlay2/dd9c6c06cee7cbeacd7427404922c280abf5a7156d6a8d1736426b0776ed9b6a/diff",
            "MergedDir": "/var/lib/docker/overlay2/8e4a51df3723352c1d1e261fa762ae2d7f38efdbe38d05bfb6f18574af5c21df/merged",
            "UpperDir": "/var/lib/docker/overlay2/8e4a51df3723352c1d1e261fa762ae2d7f38efdbe38d05bfb6f18574af5c21df/diff",
            "WorkDir": "/var/lib/docker/overlay2/8e4a51df3723352c1d1e261fa762ae2d7f38efdbe38d05bfb6f18574af5c21df/work"
        },
        "Name": "overlay2"
    },
    "RootFS": {
        "Type": "layers",
        "Layers": [
            "sha256:687d50f2f6a697da02e05f2b2b9cb05c1d551f37c404ebe55fdec44b0ae8aa5c",
            "sha256:4c4d7f3e79044e0bd1a6e3c3ac515dc6fc20c1a2f6834666c1f7991c51773a5a",
            "sha256:bca7eab180bcdb39ce11ba7fd2f952901c39aed09f3e69b191a69ceef3a438a8",
            "sha256:eb101ea3cc525fd60335048e2b590c297c8cf15081ae2d079944d745902e1ae3",
            "sha256:2f78c715c25604b415e26f7560720d3209d0b12c57a2c609fd92aedbfb3a3458",
            "sha256:1d2e51cf1fc39a61bf91798c688bcf6a82da6f18c4072548b74ce405457d50ff",
            "sha256:d9baa05034ebade880fe71122d549df26e037738f5e7e74daa5f1bdbd926e792",
            "sha256:b5271bb65336d7757aced4f8df588f493cef9334b198a5e4de69eb6c4fa6e575",
            "sha256:a85307bff38849147fd702eb27593866b1928d4489736cb206b288524d03599a",
            "sha256:d0d564262286b7710b7caf8edd71b82bd725a11fd98e6cf9b29b73ffbce207ba",
            "sha256:eb5d4372e507af85dcce4b0eb19206a7cfc620b7dae970a6bdb10fa9a33d047c",
            "sha256:ffa1c2a025510814bf44e29a0183bfddb7d14a7131b2637c1adb4d0bfadaf76c",
            "sha256:00274294c420398a600940495b442f7002d26bb307ef405be56e124b5d8e586e",
            "sha256:0e0559fa1c8bf785fa5161911b88c1ea85264b0030b61f219c27ec86d7c519a2",
            "sha256:40d1885c1bef958fe9832139aab14074b311d1b1b4f8247d9ff2d9f856fdfa6e",
            "sha256:e30c3b9235391287af32840488305e1a906c4d9c811db673d47f2c757ba411b6",
            "sha256:600aa045c5f2e6b9563a968120eae665d0073465f9b20acb14693ea76bb94940"
        ]
    },
    "Metadata": {
        "LastTagTime": "2026-03-26T06:01:04.717033019+08:00"
    }
}

更多版本

ghcr.io/scverse/rapids-singlecell-cu12:latest

linux/amd64 ghcr.io31.39GB2026-03-26 06:34
9