#!/bin/bash
echo ""
echo "=========================================================="
echo "Pull Kubernetes 1.11.0 Images from aliyuncs.com ......"
echo "=========================================================="
echo ""
MY_REGISTRY=registry.cn-hangzhou.aliyuncs.com/openthings
## 拉取镜像
docker pull ${MY_REGISTRY}/k8s-gcr-io-kube-apiserver-amd64:v1.11.0
docker pull ${MY_REGISTRY}/k8s-gcr-io-kube-controller-manager-amd64:v1.11.0
docker pull ${MY_REGISTRY}/k8s-gcr-io-kube-scheduler-amd64:v1.11.0
docker pull ${MY_REGISTRY}/k8s-gcr-io-kube-proxy-amd64:v1.11.0
docker pull ${MY_REGISTRY}/k8s-gcr-io-etcd-amd64:3.2.18
docker pull ${MY_REGISTRY}/k8s-gcr-io-pause-amd64:3.1
docker pull ${MY_REGISTRY}/k8s-gcr-io-coredns:1.1.3
## 添加Tag
docker tag ${MY_REGISTRY}/k8s-gcr-io-kube-apiserver-amd64:v1.11.0 k8s.gcr.io/kube-apiserver-amd64:v1.11.0
docker tag ${MY_REGISTRY}/k8s-gcr-io-kube-scheduler-amd64:v1.11.0 k8s.gcr.io/kube-scheduler-amd64:v1.11.0
docker tag ${MY_REGISTRY}/k8s-gcr-io-kube-controller-manager-amd64:v1.11.0 k8s.gcr.io/kube-controller-manager-amd64:v1.11.0
docker tag ${MY_REGISTRY}/k8s-gcr-io-kube-proxy-amd64:v1.11.0 k8s.gcr.io/kube-proxy-amd64:v1.11.0
docker tag ${MY_REGISTRY}/k8s-gcr-io-etcd-amd64:3.2.18 k8s.gcr.io/etcd-amd64:3.2.18
docker tag ${MY_REGISTRY}/k8s-gcr-io-pause-amd64:3.1 k8s.gcr.io/pause:3.1
docker tag ${MY_REGISTRY}/k8s-gcr-io-coredns:1.1.3 k8s.gcr.io/coredns:1.1.3
## 删除aliyuncs镜像
docker rmi $(docker images | grep aliyuncs| awk '{print $1,$2}' | tr ' ' ':')
echo ""
echo "=========================================================="
echo "Pull Kubernetes 1.11.0 Images FINISHED."
echo "into registry.cn-hangzhou.aliyuncs.com/openthings, "
echo " by openthings@https://my.oschina.net/u/2306127."
echo "=========================================================="
echo ""
kubeadm,k8s集群学习环境搭建
需积分: 10 151 浏览量
2018-10-01
12:13:41
上传
评论
收藏 3KB GZ 举报
hxd198
- 粉丝: 3
- 资源: 4
最新资源
- 高等数学第一章第二节数列的极限
- Python 版冒泡排序算法源代码
- tensorflow-gpu-2.7.2-cp38-cp38-manylinux2010-x86-64.whl
- tensorflow-2.7.3-cp39-cp39-manylinux2010-x86-64.whl
- tensorflow-2.7.2-cp39-cp39-manylinux2010-x86-64.whl
- Python版本快速排序源代码
- Python 语言版的快速排序算法实现
- 450815388207377安卓_base.apk
- 超微主板 X9DRE-TF+ bios 支持 nvme启动
- 基于Python通过下载气象数据和插值拟合离散数据曲线实现对寒潮过程的能量分析
资源上传下载、课程学习等过程中有任何疑问或建议,欢迎提出宝贵意见哦~我们会及时处理!
点击此处反馈