gcr.io/ml-pipeline/argoexec:v3.3.10-license-compliance linux/amd64

gcr.io/ml-pipeline/argoexec:v3.3.10-license-compliance - 国内下载镜像源 浏览次数:26
**镜像描述** gcr.io/ml-pipeline/argoexec 是一个用于执行 Argo Workflows 的 Docker 镜像。它提供了一个可执行环境,以便在容器中运行和管理工作流程。 该镜像基于 Google Cloud Platform (GCP) 的 gcr.io 仓库,并且是 ML-Pipeline 组织的一部分。它旨在为使用 Argo Workflows 的开发者提供一个易于使用的容器化环境。 **特点** * 支持 Argo Workflows * 基于 GCP 的 Docker 镜像 * 适用于容器化的工作流程管理
源镜像 gcr.io/ml-pipeline/argoexec:v3.3.10-license-compliance
国内镜像 swr.cn-north-4.myhuaweicloud.com/ddn-k8s/gcr.io/ml-pipeline/argoexec:v3.3.10-license-compliance
镜像ID sha256:f4e499910fa0fefaefad6e0310c40e1aae7aaba5d4e5d55ed0b380a6333e749d
镜像TAG v3.3.10-license-compliance
大小 352.51MB
镜像源 gcr.io
CMD
启动入口 argoexec
工作目录
OS/平台 linux/amd64
浏览量 26 次
贡献者
镜像创建 2023-05-05T16:40:29.421568382Z
同步时间 2024-09-11 16:29
更新时间 2024-10-06 03:22
环境变量
PATH=/usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin

Docker拉取命令 无权限下载?点我修复

docker pull swr.cn-north-4.myhuaweicloud.com/ddn-k8s/gcr.io/ml-pipeline/argoexec:v3.3.10-license-compliance
docker tag  swr.cn-north-4.myhuaweicloud.com/ddn-k8s/gcr.io/ml-pipeline/argoexec:v3.3.10-license-compliance  gcr.io/ml-pipeline/argoexec:v3.3.10-license-compliance

Containerd拉取命令

ctr images pull swr.cn-north-4.myhuaweicloud.com/ddn-k8s/gcr.io/ml-pipeline/argoexec:v3.3.10-license-compliance
ctr images tag  swr.cn-north-4.myhuaweicloud.com/ddn-k8s/gcr.io/ml-pipeline/argoexec:v3.3.10-license-compliance  gcr.io/ml-pipeline/argoexec:v3.3.10-license-compliance

Shell快速替换命令

sed -i 's#gcr.io/ml-pipeline/argoexec:v3.3.10-license-compliance#swr.cn-north-4.myhuaweicloud.com/ddn-k8s/gcr.io/ml-pipeline/argoexec:v3.3.10-license-compliance#' deployment.yaml

镜像历史

大小 创建时间 层信息
723.61KB 2023-05-06 00:40:29 /bin/sh -c #(nop) COPY dir:40ffe69e5aa4c7c59a38ac29d7ebb18a3af23be6501a7196fc721f4d46b30423 in /NOTICES
0.00B 2022-11-30 02:20:07 ENTRYPOINT ["argoexec"]
70.48KB 2022-11-30 02:20:07 COPY /etc/mime.types /etc/mime.types # buildkit
78.26MB 2022-11-30 02:20:07 COPY /go/src/github.com/argoproj/argo-workflows/dist/argoexec /usr/local/bin/ # buildkit
17.00B 2022-11-30 02:17:39 COPY hack/nsswitch.conf /etc/ # buildkit
2.56KB 2022-11-30 02:17:39 COPY hack/ssh_known_hosts /etc/ssh/ # buildkit
0.00B 2022-11-30 02:17:39 RUN |3 DOCKER_CHANNEL=stable DOCKER_VERSION=20.10.14 KUBECTL_VERSION=1.22.3 /bin/sh -c rm /bin/arch.sh /bin/os.sh # buildkit
46.91MB 2022-11-30 02:17:39 RUN |3 DOCKER_CHANNEL=stable DOCKER_VERSION=20.10.14 KUBECTL_VERSION=1.22.3 /bin/sh -c curl -o /usr/local/bin/kubectl https://storage.googleapis.com/kubernetes-release/release/v${KUBECTL_VERSION}/bin/$(os.sh)/$(arch.sh)/kubectl && chmod +x /usr/local/bin/kubectl # buildkit
207.40MB 2022-11-30 02:17:37 RUN |3 DOCKER_CHANNEL=stable DOCKER_VERSION=20.10.14 KUBECTL_VERSION=1.22.3 /bin/sh -c if [ $(arch.sh) = ppc64le ] || [ $(arch.sh) = s390x ]; then curl -o docker.tgz https://download.docker.com/$(os.sh)/static/${DOCKER_CHANNEL}/$(uname -m)/docker-18.06.3-ce.tgz; else curl -o docker.tgz https://download.docker.com/$(os.sh)/static/${DOCKER_CHANNEL}/$(uname -m)/docker-${DOCKER_VERSION}.tgz; fi && tar --extract --file docker.tgz --strip-components 1 --directory /usr/local/bin/ && rm docker.tgz # buildkit
202.00B 2022-11-30 02:17:29 COPY hack/arch.sh hack/os.sh /bin/ # buildkit
12.09MB 2022-11-30 02:17:29 RUN |3 DOCKER_CHANNEL=stable DOCKER_VERSION=20.10.14 KUBECTL_VERSION=1.22.3 /bin/sh -c apk --no-cache add curl procps git tar libcap jq # buildkit
0.00B 2022-11-30 02:17:29 ARG KUBECTL_VERSION
0.00B 2022-11-30 02:17:29 ARG DOCKER_VERSION
0.00B 2022-11-30 02:17:29 ARG DOCKER_CHANNEL
0.00B 2022-11-23 06:19:29 /bin/sh -c #(nop) CMD ["/bin/sh"]
7.05MB 2022-11-23 06:19:28 /bin/sh -c #(nop) ADD file:587cae71969871d3c6456d844a8795df9b64b12c710c275295a1182b46f630e7 in /

镜像信息

{
    "Id": "sha256:f4e499910fa0fefaefad6e0310c40e1aae7aaba5d4e5d55ed0b380a6333e749d",
    "RepoTags": [
        "gcr.io/ml-pipeline/argoexec:v3.3.10-license-compliance",
        "swr.cn-north-4.myhuaweicloud.com/ddn-k8s/gcr.io/ml-pipeline/argoexec:v3.3.10-license-compliance"
    ],
    "RepoDigests": [
        "gcr.io/ml-pipeline/argoexec@sha256:70b419bd8334aeee278b49dd67b85aa69cea6cb9188c4b9fd5f3613039d77c30",
        "swr.cn-north-4.myhuaweicloud.com/ddn-k8s/gcr.io/ml-pipeline/argoexec@sha256:70b419bd8334aeee278b49dd67b85aa69cea6cb9188c4b9fd5f3613039d77c30"
    ],
    "Parent": "",
    "Comment": "",
    "Created": "2023-05-05T16:40:29.421568382Z",
    "Container": "",
    "ContainerConfig": null,
    "DockerVersion": "20.10.21",
    "Author": "",
    "Config": {
        "Hostname": "",
        "Domainname": "",
        "User": "",
        "AttachStdin": false,
        "AttachStdout": false,
        "AttachStderr": false,
        "Tty": false,
        "OpenStdin": false,
        "StdinOnce": false,
        "Env": [
            "PATH=/usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin"
        ],
        "Cmd": null,
        "Image": "sha256:e600f7ff6e7d46deca12cf333f5f2035fb880260912a538e87b7291a2fa1a08b",
        "Volumes": null,
        "WorkingDir": "",
        "Entrypoint": [
            "argoexec"
        ],
        "OnBuild": null,
        "Labels": null
    },
    "Architecture": "amd64",
    "Os": "linux",
    "Size": 352507760,
    "GraphDriver": {
        "Data": {
            "LowerDir": "/var/lib/docker/overlay2/27960f8ea7bed037e581a8836f0f60fd26f49d0230b20b5365c9a34791614044/diff:/var/lib/docker/overlay2/211a4674044fa4935fb5d95d702df642286a855ee23faf56780c1cb598ad08be/diff:/var/lib/docker/overlay2/6141167aa8416f796cdfa8a52e80c9b5d7f6d34a71c11b4fe9e3e59f89cc3a42/diff:/var/lib/docker/overlay2/494ecafc4973263fdb936722c087dabf9bfa1f4a9418422c09b16c55eb610cfa/diff:/var/lib/docker/overlay2/0973d7989f9ecd87726b597971c93b0b56bb470c2b9c0d75cec78e580d67f3f7/diff:/var/lib/docker/overlay2/db27aa61849394660b59c182f69864f4865d468d695cc89a62075bd17e034fd2/diff:/var/lib/docker/overlay2/0a49a3accf44fa3e4c492441f37471f4f1b2cf741a5e54eb810b8ca83c501d60/diff:/var/lib/docker/overlay2/6bd1c1ec27c61e056b58a5385117725b08f183835cdb2b886cc918487f7d00ba/diff:/var/lib/docker/overlay2/93c7caf0c7868d6b68be26054c1488865c41a480f1e1804e72e2eb2a0b6496c8/diff:/var/lib/docker/overlay2/c948ef756453a4543a999dd3045521cfbb87b24e1737895f163c9a8da7da7a9a/diff",
            "MergedDir": "/var/lib/docker/overlay2/8e25e062e80cccbdbf286041782a3342ec0034b83c10a7a36bd6ad9a45e18697/merged",
            "UpperDir": "/var/lib/docker/overlay2/8e25e062e80cccbdbf286041782a3342ec0034b83c10a7a36bd6ad9a45e18697/diff",
            "WorkDir": "/var/lib/docker/overlay2/8e25e062e80cccbdbf286041782a3342ec0034b83c10a7a36bd6ad9a45e18697/work"
        },
        "Name": "overlay2"
    },
    "RootFS": {
        "Type": "layers",
        "Layers": [
            "sha256:ded7a220bb058e28ee3254fbba04ca90b679070424424761a53a043b93b612bf",
            "sha256:06ac975677a63a12b3caa2a99f1c77943079c5874edd2db5d1e5a61614cba71a",
            "sha256:6ccc65dcd8025bc91c5990e6e79094f6a3525825e89750bc514f93a15c473c2e",
            "sha256:7576b11bb4b85e7d5ecb6132908474434035da50ebc59eb7c8ce85ddf71436b6",
            "sha256:862934528de4f3f89bcd485aa552126257b0524603716bec6e400bdf1c4f19ca",
            "sha256:3a46d2376acbf097d277a90ba7979e19bfe1ffb6a86c94747b552ab658726641",
            "sha256:cb87bcbea9a3081625d13fcab2c36592dd34a7b50871b00a08af25d5152de605",
            "sha256:1995cd99dcdef5f7116c2866880d3d8aab832da8d55d824d946d096a0581b1ff",
            "sha256:b5871eaeef974f07db3852b8c088deae6526513a96b6a6eb5c36f73dd5e7d0a6",
            "sha256:8e1035cf5918609f7b6f5471dd52aa0a3031e093d75956059415fd466537bd88",
            "sha256:816b7eea12f0ffeb6c8bcaaa0279ed390d7c77c6ed103b3430bdb1caf213221f"
        ]
    },
    "Metadata": {
        "LastTagTime": "2024-09-11T16:29:06.860340131+08:00"
    }
}

更多版本