Difference between revisions of "Kubernetes"
(→Example YAML files) |
(→Kubernetes inbound node port requirements) |
||
Line 2,487: | Line 2,487: | ||
* TCP 10255 — Read-only Kubelet API | * TCP 10255 — Read-only Kubelet API | ||
* TCP 30000-32767 — NodePort Services | * TCP 30000-32767 — NodePort Services | ||
+ | |||
+ | ==API versions== | ||
+ | |||
+ | Below is a table showing which value to use for the <code>apiVersion</code> key for a given k8s primitive (note: all values are for k8s 1.8.0, unless otherwise specified): | ||
+ | <div style="float:left; margin:0px 20px 20px 0px;"> | ||
+ | {| align="center" style="border: 1px solid #999; background-color:#FFFFFF" | ||
+ | |-align="center" bgcolor="#1188ee" | ||
+ | !Primitive | ||
+ | !apiVersion | ||
+ | |- | ||
+ | | Pod || v1 | ||
+ | |- | ||
+ | | Deployment || apps/v1beta2 | ||
+ | |- | ||
+ | | Service || v1 | ||
+ | |- | ||
+ | | Job || batch/v1 | ||
+ | |- | ||
+ | | Ingress || extensions/v1beta1 | ||
+ | |- | ||
+ | | CronJob || batch/v1beta1 | ||
+ | |- | ||
+ | | ConfigMap || v1 | ||
+ | |- | ||
+ | | DaemonSet || apps/v1 | ||
+ | |- | ||
+ | | ReplicaSet || apps/v1beta2 | ||
+ | |} | ||
+ | </div> | ||
+ | <br clear="all"/> | ||
+ | |||
+ | You can get a list of all of the API versions supported by your k8s install with: | ||
+ | $ kubectl api-versions | ||
==Miscellaneous commands== | ==Miscellaneous commands== |
Revision as of 00:31, 9 February 2018
Kuerbernetes (also known by its numeronym k8s) is an open source container cluster manager. Kubernetes' primary goal is to provide a platform for automating deployment, scaling, and operations of application containers across a cluster of hosts. Kubernetes was released by Google on July 2015.
Latest stable release: v1.9.0 (2017-12-15)
Contents
- 1 Design overview
- 2 Components
- 3 Setup a Kubernetes cluster
- 4 Working with our Kubernetes cluster
- 4.1 Create and deploy pod definitions
- 4.2 Tags, labels, and selectors
- 4.3 Deployments
- 4.4 Multi-Pod (container) replication controller
- 4.5 Create and deploy service definitions
- 4.6 Creating temporary Pods at the CLI
- 4.7 Interacting with Pod containers
- 4.8 Logs
- 4.9 Autoscaling and scaling Pods
- 4.10 Failure and recovery
- 5 Minikube
- 6 Pods
- 7 Deployments
- 8 Volume management
- 9 ConfigMaps and Secrets
- 10 Ingress
- 11 Labels and Selectors
- 12 Annotations
- 13 Jobs
- 14 Quota Management
- 15 Daemon Sets
- 16 Stateful Sets
- 17 Role Based Access Control (RBAC)
- 18 Federation
- 19 Helm
- 20 Monitoring and logging
- 21 Security
- 22 Taints and tolerations
- 23 Kubernetes inbound node port requirements
- 24 API versions
- 25 Miscellaneous commands
- 26 Miscellaneous examples
- 27 Example YAML files
- 28 Install k8s cluster manually in the Cloud
- 29 Bash completion
- 30 External links
Design overview
Kubernetes is built through the definition of a set of components (building blocks or "primitives") which, when used collectively, provide a method for the deployment, maintenance, and scalability of container-based application clusters.
These "primitives" are designed to be loosely coupled (i.e., where little to no knowledge of the other component definitions is needed to use) as well as easily extensible through an API. Both the internal components of Kubernetes as well as the extensions and containers make use of this API.
Components
The building blocks of Kubernetes are the following (note that these are also referred to as Kubernetes "Objects" or "API Primitives"):
- Cluster
- A cluster is a set of machines (physical or virtual) on which your applications are managed and run. All machines are managed as a cluster (or set of clusters, depending on the topology used).
- Nodes (minions)
- You can think of these as "container clients". These are the individual hosts (physical or virtual) that Docker is installed on and hosts the various containers within your managed cluster.
- Each node will run etcd (a key-pair management and communication service, used by Kubernetes for exchanging messages and reporting on cluster status) as well as the Kubernetes Proxy.
- Pods
- A pod consists of one or more containers. Those containers are guaranteed (by the cluster controller) to be located on the same host machine (aka "co-located") in order to facilitate sharing of resources. For an example, it makes sense to have database processes and data containers as close as possible. In fact, they really should be in the same pod.
- Pods "work together", as in a multi-tiered application configuration. Each set of pods that define and implement a service (e.g., MySQL or Apache) are defined by the label selector (see below).
- Pods are assigned unique IPs within each cluster. These allow an application to use ports without having to worry about conflicting port utilization.
- Pods can contain definitions of disk volumes or shares, and then provide access from those to all the members (containers) within the pod.
- Finally, pod management is done through the API or delegated to a controller.
- Labels
- Clients can attach key-value pairs to any object in the system (e.g., Pods or Nodes). These become the labels that identify them in the configuration and management of them. The key-value pairs can be used to filter, organize, and perform mass operations on a set of resources.
- Selectors
- Label Selectors represent queries that are made against those labels. They resolve to the corresponding matching objects. A Selector expression matches labels to filter certain resources. For example, you may want to search for all pods that belong to a certain service, or find all containers that have a specific tier Label value as "database". Labels and Selectors are inherently two sides of the same coin. You can use Labels to classify resources and use Selectors to find them and use them for certain actions.
- These two items are the primary way that grouping is done in Kubernetes and determine which components that a given operation applies to when indicated.
- Controllers
- These are used in the management of your cluster. Controllers are the mechanism by which your desired configuration state is enforced.
- Controllers manage a set of pods and, depending on the desired configuration state, may engage other controllers to handle replication and scaling (Replication Controller) of X number of containers and pods across the cluster. It is also responsible for replacing any container in a pod that fails (based on the desired state of the cluster).
- Replication Controllers (RC) are a subset of Controllers and are an abstraction used to manage pod lifecycles. One of the key uses of RCs is to maintain a certain number of running Pods (e.g., for scaling or ensuring that at least one Pod is running at all times, etc.). It is considered a "best practice" to use RCs to define Pod lifecycles, rather than creating Pods directly.
- Other controllers that can be engaged include a DaemonSet Controller (enforces a 1-to-1 ratio of pods to Worker Nodes) and a Job Controller (that runs pods to "completion", such as in batch jobs).
- Each set of pods any controller manages, is determined by the label selectors that are part of its definition.
- Replica Sets
- These define how many replicas of each Pod will be running. They also monitor and ensure the required number of Pods are running, replacing Pods that die. Replica Sets can act as replacements for Replication Controllers.
- Services
- A Service is an abstraction on top of Pods, which provides a single IP address and DNS name by which the Pods can be accessed. This load balancing configuration is much easier to manage and helps scale Pods seamlessly.
- Kubernetes can then provide service discovery and handle routing with the static IP for each pod as well as load balancing (round-robin based) connections to that service among the pods that match the label selector indicated.
- By default, although a service is only exposed inside a cluster, it can also be exposed outside a cluster, as needed.
- Volumes
- A Volume is a directory with data, which is accessible to a container. The volume co-terminates with the Pods that encloses it.
- Name
- A name by which a resource is identified.
- Namespace
- A Namespace provides additional qualification to a resource name. This is especially helpful when multiple teams/projects are using the same cluster and there is a potential for name collision. You can think of a Namespace as a virtual wall between multiple clusters.
- Annotations
- An Annotation is a Label, but with much larger data capacity. Typically, this data is not readable by humans and is not easy to filter through. Annotation is useful only for storing data that may not be searched, but is required by the resource (e.g., storing strong keys, etc.).
- Control Pane
- API
Pods
A Pod is the smallest and simplest Kubernetes object. It is the unit of deployment in Kubernetes, which represents a single instance of the application. A Pod is a logical collection of one or more containers, which:
- are scheduled together on the same host;
- share the same network namespace; and
- mount the same external storage (Volumes).
Pods are ephemeral in nature, and they do not have the capability to self-heal by themselves. That is why we use them with controllers, which can handle a Pod's replication, fault tolerance, self-heal, etc. Examples of controllers are Deployments, ReplicaSets, ReplicationControllers, etc. We attach the Pod's specification to other objects using Pod Templates (see below).
Labels
Labels are key-value pairs that can be attached to any Kubernetes object (e.g. Pods). Labels are used to organize and select a subset of objects, based on the requirements in place. Many objects can have the same label(s). Labels do not provide uniqueness to objects.
Label Selectors
With Label Selectors, we can select a subset of objects. Kubernetes supports two types of Selectors:
- Equality-Based Selectors
- Equality-Based Selectors allow filtering of objects based on label keys and values. With this type of Selector, we can use the
=
,==
, or!=
operators. For example, withenv==dev
, we are selecting the objects where the "env
" label is set to "dev
". - Set-Based Selectors
- Set-Based Selectors allow filtering of objects based on a set of values. With this type of Selector, we can use the
in
,notin
, andexist
operators. For example, withenv in (dev,qa)
, we are selecting objects where the "env
" label is set to "dev
" or "qa
".
Replication Controllers
A ReplicationController (rc) is a controller that is part of the Master Node's Controller Manager. It makes sure the specified number of replicas for a Pod is running at any given point in time. If there are more Pods than the desired count, the ReplicationController would kill the extra Pods, and, if there are less Pods, then the ReplicationController would create more Pods to match the desired count. Generally, we do not deploy a Pod independently, as it would not be able to re-start itself if something goes wrong. We always use controllers like ReplicationController to create and manage Pods.
Replica Sets
A ReplicaSet (rs) is the next-generation ReplicationController. ReplicaSets support both equality- and set-based Selectors, whereas ReplicationControllers only support equality-based Selectors. As of January 2018, this is the only difference.
As an example, say you create a ReplicaSet where you defined a "desired replicas = 3" (and set "current==desired
"), any time "current!=desired
" (i.e., one of the Pods dies) the ReplicaSet will detect that the current state is no longer matching the desired state. So, in our given scenario, the ReplicaSet will create one more Pod, thus ensuring that the current state matches the desired state.
ReplicaSets can be used independently, but they are mostly used by Deployments to orchestrate the Pod creation, deletion, and updates. A Deployment automatically creates the ReplicaSets, and we do not have to worry about managing them.
Deployments
Deployment objects provide declarative updates to Pods and ReplicaSets. The DeploymentController is part of the Master Node's Controller Manager, and it makes sure that the current state always matches the desired state.
As an example, let's say we have a Deployment which creates a "ReplicaSet A". ReplicaSet A then creates 3 Pods. In each Pod, one of the containers uses the nginx:1.7.9
image.
Now, in the Deployment, we change the Pod's template and we update the image for the Nginx container from nginx:1.7.9
to nginx:1.9.1
. As we have modified the Pod's template, a new "ReplicaSet B" gets created. This process is referred to as a "Deployment rollout". (A rollout is only triggered when we update the Pod's template for a deployment. Operations like scaling the deployment do not trigger the deployment.) Once ReplicaSet B is ready, the Deployment starts pointing to it.
On top of ReplicaSets, Deployments provide features like Deployment recording, with which, if something goes wrong, we can rollback to a previously known state.
Namespaces
If we have numerous users whom we would like to organize into teams/projects, we can partition the Kubernetes cluster into sub-clusters using Namespaces. The names of the resources/objects created inside a Namespace are unique, but not across Namespaces.
To list all the Namespaces, we can run the following command:
$ kubectl get namespaces NAME STATUS AGE default Active 2h kube-public Active 2h kube-system Active 2h
Generally, Kubernetes creates two default namespaces: kube-system
and default
. The kube-system
namespace contains the objects created by the Kubernetes system. The default
namespace contains the objects which belong to any other namespace. By default, we connect to the default
Namespace. kube-public
is a special namespace, which is readable by all users and used for special purposes, like bootstrapping a cluster.
Using Resource Quotas, we can divide the cluster resources within Namespaces.
Component services
The component services running on a standard master/worker node(s) Kubernetes setup are as follows:
- Kubernetes Master node(s)
- kube-apiserver
- Exposes Kubernetes APIs
- kube-controller-manager
- Runs controllers to handle nodes, endpoints, etc.
- kube-scheduler
- Watches for new pods and assigns them nodes
- etcd
- Distributed key-value store
- DNS
- [optional] DNS for Kubernetes services
- Worker node(s)
- kubelet
- Manages pods on a node, volumes, secrets, creating new containers, health checks, etc.
- kube-proxy
- Maintains network rules, port forwarding, etc.
Setup a Kubernetes cluster
In this section, I will show you how to setup a Kubernetes cluster with etcd and Docker. The cluster will consist of 1 master node and 3 worker nodes.
Setup VMs
For this demo, I will be creating 4 VMs via Vagrant (with VirtualBox).
- Create Vagrant demo environment:
$ mkdir $HOME/dev/kubernetes && cd $_
- Create Vagrantfile with the following contents:
# -*- mode: ruby -*- # vi: set ft=ruby : require 'yaml' VAGRANTFILE_API_VERSION = "2" $common_script = <<COMMON_SCRIPT # Set verbose set -v # Set exit on error set -e echo -e "$(date) [INFO] Starting modified Vagrant..." sudo yum update -y # Timestamp provision date > /etc/vagrant_provisioned_at COMMON_SCRIPT unless defined? CONFIG configuration_file = File.join(File.dirname(__FILE__), 'vagrant_config.yml') CONFIG = YAML.load(File.open(configuration_file, File::RDONLY).read) end CONFIG['box'] = {} unless CONFIG.key?('box') def modifyvm_network(node) node.vm.provider "virtualbox" do |vbox| vbox.customize ["modifyvm", :id, "--nicpromisc1", "allow-all"] #vbox.customize ["modifyvm", :id, "--natdnshostresolver1", "on"] vbox.customize ["modifyvm", :id, "--nicpromisc2", "allow-all"] end end def modifyvm_resources(node, memory, cpus) node.vm.provider "virtualbox" do |vbox| vbox.customize ["modifyvm", :id, "--memory", memory] vbox.customize ["modifyvm", :id, "--cpus", cpus] end end ## START: Actual Vagrant process Vagrant.configure(VAGRANTFILE_API_VERSION) do |config| config.vm.box = CONFIG['box']['name'] # Uncomment the following line if you wish to be able to pass files from # your local filesystem directly into the vagrant VM: #config.vm.synced_folder "data", "/vagrant" ## VM: k8s master ############################################################# config.vm.define "master" do |node| node.vm.hostname = "k8s.master.dev" node.vm.provision "shell", inline: $common_script #node.vm.network "forwarded_port", guest: 80, host: 8080 node.vm.network "private_network", ip: CONFIG['host_groups']['master'] # Uncomment the following if you wish to define CPU/memory: #node.vm.provider "virtualbox" do |vbox| # vbox.customize ["modifyvm", :id, "--memory", "4096"] # vbox.customize ["modifyvm", :id, "--cpus", "2"] #end #modifyvm_resources(node, "4096", "2") end ## VM: k8s minion1 ############################################################ config.vm.define "minion1" do |node| node.vm.hostname = "k8s.minion1.dev" node.vm.provision "shell", inline: $common_script node.vm.network "private_network", ip: CONFIG['host_groups']['minion1'] end ## VM: k8s minion2 ############################################################ config.vm.define "minion2" do |node| node.vm.hostname = "k8s.minion2.dev" node.vm.provision "shell", inline: $common_script node.vm.network "private_network", ip: CONFIG['host_groups']['minion2'] end ## VM: k8s minion3 ############################################################ config.vm.define "minion3" do |node| node.vm.hostname = "k8s.minion3.dev" node.vm.provision "shell", inline: $common_script node.vm.network "private_network", ip: CONFIG['host_groups']['minion3'] end ############################################################################### end
The above Vagrantfile uses the following configuration file:
$ cat vagrant_config.yml
--- box: name: centos/7 storage_controller: 'SATA Controller' debug: false development: false network: dns1: 8.8.8.8 dns2: 8.8.4.4 internal: network: 192.168.200.0/24 external: start: 192.168.100.100 end: 192.168.100.200 network: 192.168.100.0/24 bridge: wlan0 netmask: 255.255.255.0 broadcast: 192.168.100.255 host_groups: master: 192.168.200.100 minion1: 192.168.200.101 minion2: 192.168.200.102 minion3: 192.168.200.103
- In the Vagrant Kubernetes directory (i.e.,
$HOME/dev/kubernetes
), run the following command:
$ vagrant up
Setup hosts
Note: Run the following commands/steps on all hosts (master and minions).
- Log into the k8s master host:
$ vagrant ssh master
- Kubernetes cluster
$ cat << EOF >> /etc/hosts 192.168.200.100 k8s.master.dev 192.168.200.101 k8s.minion1.dev 192.168.200.102 k8s.minion2.dev 192.168.200.103 k8s.minion3.dev EOF
- Install, enable, and start NTP:
$ yum install -y ntp $ systemctl enable ntpd && systemctl start ntpd $ timedatectl
- Disable any firewall rules (for now; we will add the rules back later):
$ systemctl stop firewalld && systemctl disable firewalld $ systemctl stop iptables
- Disable SELinux (for now; we will turn it on again later):
$ setenforce 0 $ sed -i 's/^SELINUX=.*/SELINUX=permissive/' /etc/sysconfig/selinux $ sed -i 's/^SELINUX=.*/SELINUX=permissive/' /etc/selinux/config $ sestatus
- Add the Docker repo and update yum:
$ cat << EOF > /etc/yum.repos.d/virt7-docker-common-release.repo [virt7-docker-common-release] name=virr7-docker-common-release baseurl=http://cbs.centos.org/repos/virt7-docker-common-release/x86_64/os/ gpgcheck=0 EOF $ yum update
- Install Docker, Kubernetes, and etcd:
$ yum install -y --enablerepo=virt7-docker-common-release kubernetes docker etcd
Install and configure master controller
Note: Run the following commands on only the master host.
- Edit
/etc/kubernetes/config
and add (or make changes to) the following lines:
KUBE_MASTER="--master=http://k8s.master.dev:8080" KUBE_ETCD_SERVERS="--etcd-servers=http://k8s.master.dev:2379"
- Edit
/etc/etcd/etcd.conf
and add (or make changes to) the following lines:
[member] ETCD_LISTEN_CLIENT_URLS="http://0.0.0.0:2379" [cluster] ETCD_ADVERTISE_CLIENT_URLS="http://0.0.0.0:2379"
- Edit
/etc/kubernetes/apiserver
and add (or make changes to) the following lines:
# The address on the local server to listen to. #KUBE_API_ADDRESS="--insecure-bind-address=127.0.0.1" KUBE_API_ADDRESS="--address=0.0.0.0" # The port on the local server to listen on. KUBE_API_PORT="--port=8080" # Port minions listen on KUBELET_PORT="--kubelet-port=10250" # Comma separated list of nodes in the etcd cluster KUBE_ETCD_SERVERS="--etcd-servers=http://127.0.0.1:2379" # Address range to use for services KUBE_SERVICE_ADDRESSES="--service-cluster-ip-range=10.254.0.0/16" # default admission control policies #KUBE_ADMISSION_CONTROL="--admission-control=NamespaceLifecycle,NamespaceExists,LimitRanger,SecurityContextDeny,ServiceAccount,ResourceQuota" # Add your own! KUBE_API_ARGS=""
- Enable and start the following etcd and Kubernetes services:
$ for SERVICE in etcd kube-apiserver kube-controller-manager kube-scheduler; do systemctl restart $SERVICE systemctl enable $SERVICE systemctl status $SERVICE done
- Check on the status of the above services (the following command should report 4 running services):
$ systemctl status etcd kube-apiserver kube-controller-manager kube-scheduler | grep "(running)" | wc -l # => 4
- Check on the status of the Kubernetes API server:
$ kubectl cluster-info Kubernetes master is running at http://localhost:8080 $ curl http://localhost:8080/version #~OR~ $ curl http://k8s.master.dev:8080/version
{ "major": "1", "minor": "2", "gitVersion": "v1.2.0", "gitCommit": "ec7364b6e3b155e78086018aa644057edbe196e5", "gitTreeState": "clean" }
- Get a list of Kubernetes API paths:
$ curl http://k8s.master.dev:8080/paths
{ "paths": [ "/api", "/api/v1", "/apis", "/apis/autoscaling", "/apis/autoscaling/v1", "/apis/batch", "/apis/batch/v1", "/apis/extensions", "/apis/extensions/v1beta1", "/healthz", "/healthz/ping", "/logs/", "/metrics", "/resetMetrics", "/swagger-ui/", "/swaggerapi/", "/ui/", "/version" ] }
- List all available paths (key-value stores) known to ectd:
$ etcdctl ls / --recursive
The master controller in a Kubernetes cluster must have the following services running to function as the master host in the cluster:
- ntpd
- etcd
- kube-controller-manager
- kube-apiserver
- kube-scheduler
Note: The Docker daemon should not be running on the master host.
Install and configure the minions
Note: Run the following commands/steps on all minion hosts.
- Log into the k8s minion hosts:
$ vagrant ssh minion1 # do the same for minion2 and minion3
- Edit
/etc/kubernetes/config
and add (or make changes to) the following lines:
KUBE_MASTER="--master=http://k8s.master.dev:8080" KUBE_ECTD_SERVERS="--etcd-servers=http://k8s.master.dev:2379"
- Edit
/etc/kubernetes/kubelet
and add (or make changes to) the following lines:
### # kubernetes kubelet (minion) config # The address for the info server to serve on (set to 0.0.0.0 or "" for all interfaces) KUBELET_ADDRESS="--address=0.0.0.0" # The port for the info server to serve on KUBELET_PORT="--port=10250" # You may leave this blank to use the actual hostname KUBELET_HOSTNAME="--hostname-override=k8s.minion1.dev" # ***CHANGE TO CORRECT MINION HOSTNAME*** # location of the api-server KUBELET_API_SERVER="--api-servers=http://k8s.master.dev:8080" # pod infrastructure container #KUBELET_POD_INFRA_CONTAINER="--pod-infra-container-image=registry.access.redhat.com/rhel7/pod-infrastructure:latest" # Add your own! KUBELET_ARGS=""
- Enable and start the following services:
$ for SERVICE in kube-proxy kubelet docker; do systemctl restart $SERVICE systemctl enable $SERVICE systemctl status $SERVICE done
- Test that Docker is running and can start containers:
$ docker info $ docker pull hello-world $ docker run hello-world
Each minion in a Kubernetes cluster must have the following services running to function as a member of the cluster (i.e., a "Ready" node):
- ntpd
- kubelet
- kube-proxy
- docker
Kubectl: Exploring our environment
Note: Run all of the following commands on the master host.
- Get a list of nodes with
kubectl
:
$ kubectl get nodes
NAME STATUS AGE k8s.minion1.dev Ready 20m k8s.minion2.dev Ready 12m k8s.minion3.dev Ready 12m
- Describe nodes with
kubectl
:
$ kubectl get nodes -o jsonpath='{.items[*].status.addresses[?(@.type=="ExternalIP")].address}' $ kubectl get nodes -o jsonpath='{range .items[*]}{@.metadata.name}:{range @.status.conditions[*]}{@.type}={@.status};{end}{end}' | tr ';' "\n"
k8s.minion1.dev:OutOfDisk=False Ready=True k8s.minion2.dev:OutOfDisk=False Ready=True k8s.minion3.dev:OutOfDisk=False Ready=True
- Get the man page for
kubectl
:
$ man kubectl-get
Working with our Kubernetes cluster
Note: The following section will be working from within the Kubernetes cluster we created above.
Create and deploy pod definitions
- Turn off nodes 1 and 2:
minion{1,2}$ systemctl stop kubelet kube-proxy
master$ kubectl get nodes
NAME STATUS AGE k8s.minion1.dev Ready 1h k8s.minion2.dev NotReady 37m k8s.minion3.dev NotReady 39m
- Check for any k8s Pods (there should be none):
master$ kubectl get pods
- Create a builds directory for our Pods:
master$ mkdir builds && cd $_
- Create a Pod running Nginx inside a Docker container:
master$ kubectl create -f - <<EOF --- apiVersion: v1 kind: Pod metadata: name: nginx spec: containers: - name: nginx image: nginx:1.7.9 ports: - containerPort: 80 EOF
- Check on Pod creation status:
master$ kubectl get pods
NAME READY STATUS RESTARTS AGE nginx 0/1 ContainerCreating 0 2s
master$ kubectl get pods
NAME READY STATUS RESTARTS AGE nginx 1/1 Running 0 3m
minion1$ docker ps
CONTAINER ID IMAGE COMMAND CREATED STATUS PORTS NAMES a718c6c0355d nginx:1.7.9 "nginx -g 'daemon off" 3 minutes ago Up 3 minutes k8s_nginx.4580025_nginx_default_699e...
master$ kubectl describe pod nginx
master$ kubectl run busybox --image=busybox --restart=Never --tty -i --generator=run-pod/v1 busybox$ wget -qO- 172.17.0.2 master$ kubectl delete pod busybox master$ kubectl delete pod nginx
- Port forwarding:
master$ kubectl create -f nginx.yml # see above for YAML master$ kubectl port-forward nginx :80 & I1020 23:12:29.478742 23394 portforward.go:213] Forwarding from [::1]:40065 -> 80 master$ curl -I localhost:40065
Tags, labels, and selectors
master$ cat << EOF > nginx-pod-label.yml --- apiVersion: v1 kind: Pod metadata: name: nginx labels: app: nginx spec: containers: - name: nginx image: nginx:1.7.9 ports: - containerPort: 80 EOF
master$ kubectl create -f nginx-pod-label.yml master$ kubectl get pods -l app=nginx master$ kubectl describe pods -l app=nginx
- Add labels or overwrite existing ones:
master$ kubectl label pods nginx new-label=mynginx master$ kubectl describe pods/nginx | awk '/^Labels/{print $2}' new-label=nginx master$ kubectl label pods nginx new-label=foo master$ kubectl describe pods/nginx | awk '/^Labels/{print $2}' new-label=foo
Deployments
master$ cat << EOF > nginx-deployment-dev.yml --- apiVersion: extensions/v1beta1 kind: Deployment metadata: name: nginx-deployment-dev spec: replicas: 1 template: metadata: labels: app: nginx-deployment-dev spec: containers: - name: nginx-deployment-dev image: nginx:1.7.9 ports: - containerPort: 80 EOF
master$ cat << EOF > nginx-deployment-prod.yml --- apiVersion: extensions/v1beta1 kind: Deployment metadata: name: nginx-deployment-prod spec: replicas: 1 template: metadata: labels: app: nginx-deployment-prod spec: containers: - name: nginx-deployment-prod image: nginx:1.7.9 ports: - containerPort: 80 EOF
master$ kubectl create --validate -f nginx-deployment-dev.yml master$ kubectl create --validate -f nginx-deployment-prod.yml
master$ kubectl get pods
NAME READY STATUS RESTARTS AGE nginx-deployment-dev-104434401-jiiic 1/1 Running 0 5m nginx-deployment-prod-3051195443-hj9b1 1/1 Running 0 12m
master$ kubectl describe deployments -l app=nginx-deployment-dev
Name: nginx-deployment-dev Namespace: default CreationTimestamp: Thu, 20 Oct 2016 23:48:46 +0000 Labels: app=nginx-deployment-dev Selector: app=nginx-deployment-dev Replicas: 1 updated | 1 total | 1 available | 0 unavailable StrategyType: RollingUpdate MinReadySeconds: 0 RollingUpdateStrategy: 1 max unavailable, 1 max surge OldReplicaSets: <none> NewReplicaSet: nginx-deployment-dev-2568522567 (1/1 replicas created) ...
master$ kubectl get deployments
NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE nginx-deployment-prod 1 1 1 1 44s
master$ cat << EOF > nginx-deployment-dev-update.yml --- apiVersion: extensions/v1beta1 kind: Deployment metadata: name: nginx-deployment-dev spec: replicas: 1 template: metadata: labels: app: nginx-deployment-dev spec: containers: - name: nginx-deployment-dev image: nginx:1.8 # ***CHANGED*** ports: - containerPort: 80 EOF
master$ kubectl apply -f nginx-deployment-dev-update.yml master$ kubectl get pods -l app=nginx-deployment-dev
NAME READY STATUS RESTARTS AGE nginx-deployment-dev-104434401-jiiic 0/1 ContainerCreating 0 27s
master$ kubectl get pods -l app=nginx-deployment-dev
NAME READY STATUS RESTARTS AGE nginx-deployment-dev-104434401-jiiic 1/1 Running 0 6m
- Cleanup:
master$ kubectl delete deployment nginx-deployment-dev master$ kubectl delete deployment nginx-deployment-prod
Multi-Pod (container) replication controller
- Start the other two nodes (the ones we previously stopped):
minion2$ systemctl start kubelet kube-proxy minion3$ systemctl start kubelet kube-proxy master$ kubectl get nodes
NAME STATUS AGE k8s.minion1.dev Ready 2h k8s.minion2.dev Ready 2h k8s.minion3.dev Ready 2h
master$ cat << EOF > nginx-multi-node.yml --- apiVersion: v1 kind: ReplicationController metadata: name: nginx-www spec: replicas: 3 selector: app: nginx template: metadata: name: nginx labels: app: nginx spec: containers: - name: nginx image: nginx ports: - containerPort: 80 EOF
master$ kubectl create -f nginx-multi-node.yml
master$ kubectl get pods
NAME READY STATUS RESTARTS AGE nginx-www-2evxu 0/1 ContainerCreating 0 10s nginx-www-416ct 0/1 ContainerCreating 0 10s nginx-www-ax41w 0/1 ContainerCreating 0 10s
master$ kubectl get pods
NAME READY STATUS RESTARTS AGE nginx-www-2evxu 1/1 Running 0 1m nginx-www-416ct 1/1 Running 0 1m nginx-www-ax41w 1/1 Running 0 1m
master$ kubectl describe pods | awk '/^Node/{print $2}'
k8s.minion2.dev/192.168.200.102 k8s.minion1.dev/192.168.200.101 k8s.minion3.dev/192.168.200.103
minion1$ docker ps # 1 nginx container running minion2$ docker ps # 1 nginx container running minion3$ docker ps # 1 nginx container running minion3$ docker ps --format "{{.Image}}"
nginx gcr.io/google_containers/pause:2.0
master$ kubectl describe replicationcontroller
Name: nginx-www Namespace: default Image(s): nginx Selector: app=nginx Labels: app=nginx Replicas: 3 current / 3 desired Pods Status: 3 Running / 0 Waiting / 0 Succeeded / 0 Failed ...
- Attempt to delete one of the three pods:
master$ kubectl get pods
NAME READY STATUS RESTARTS AGE nginx-www-2evxu 1/1 Running 0 11m nginx-www-416ct 1/1 Running 0 11m nginx-www-ax41w 1/1 Running 0 11m
master$ kubectl delete pod nginx-www-2evxu master$ kubectl get pods
NAME READY STATUS RESTARTS AGE nginx-www-3cck4 1/1 Running 0 12s nginx-www-416ct 1/1 Running 0 11m nginx-www-ax41w 1/1 Running 0 11m
A new pod (nginx-www-3cck4
) automatically started up. This is because the expected state, as defined in our YAML file, is for there to be 3 pods running at all times. Thus, if one or more of the pods were to go down, a new pod (or pods) will automatically start up to bring the state back to the expected state.
- To force-delete all pods:
master$ kubectl delete replicationcontroller nginx-www master$ kubectl get pods # nothing
Create and deploy service definitions
master$ cat << EOF > nginx-service.yml --- apiVersion: v1 kind: Service metadata: name: nginx-service spec: ports: - port: 8000 targetPort: 80 protocol: TCP selector: app: nginx EOF
master$ kubectl get services
NAME CLUSTER-IP EXTERNAL-IP PORT(S) AGE kubernetes 10.254.0.1 <none> 443/TCP 3h
master$ kubectl create -f nginx-service.yml
master$ kubectl get services
NAME CLUSTER-IP EXTERNAL-IP PORT(S) AGE kubernetes 10.254.0.1 <none> 443/TCP 3h nginx-service 10.254.110.127 <none> 8000/TCP 10s
master$ kubectl run busybox --generator=run-pod/v1 --image=busybox --restart=Never --tty -i busybox$ wget -qO- 10.254.110.127:8000 # works
- Cleanup
master$ kubectl delete pod busybox master$ kubectl delete service nginx-service master$ kubectl get pods
NAME READY STATUS RESTARTS AGE nginx-www-jh2e9 1/1 Running 0 13m nginx-www-jir2g 1/1 Running 0 13m nginx-www-w91uw 1/1 Running 0 13m
master$ kubectl delete replicationcontroller nginx-www master$ kubectl get pods # nothing
Creating temporary Pods at the CLI
- Make sure we have no Pods running:
master$ kubectl get pods
- Create temporary deployment pod:
master$ kubectl run mysample --image=foobar/apache master$ kubectl get pods
NAME READY STATUS RESTARTS AGE mysample-1424711890-fhtxb 0/1 ContainerCreating 0 1s
master$ kubectl get deployment
NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE mysample 1 1 1 0 7s
- Create a temporary deployment pod (where we know it will fail):
master$ kubectl run myexample --image=christophchamp/ubuntu_sysadmin master$ kubectl -o wide get pods
NAME READY STATUS RESTARTS AGE NODE myexample-3534121234-mpr35 0/1 CrashLoopBackOff 12 39m k8s.minion3.dev mysample-2812764540-74c5h 1/1 Running 0 41m k8s.minion2.dev
- Check on why the "myexample" pod is in status "CrashLoopBackOff":
master$ kubectl describe pods/myexample-3534121234-mpr35 master$ kubectl describe deployments/mysample master$ kubectl describe pods/mysample-2812764540-74c5h | awk '/^Node/{print $2}' k8s.minion2.dev/192.168.200.102
master$ kubectl delete deployment mysample
- Run multiple replicas of the same pod:
master$ kubectl run myreplicas --image=latest123/apache --replicas=2 --labels=app=myapache,version=1.0.0 master$ kubectl describe deployment myreplicas
Name: myreplicas Namespace: default CreationTimestamp: Fri, 21 Oct 2016 19:10:30 +0000 Labels: app=myapache,version=1.0.0 Selector: app=myapache,version=1.0.0 Replicas: 2 updated | 2 total | 1 available | 1 unavailable StrategyType: RollingUpdate MinReadySeconds: 0 RollingUpdateStrategy: 1 max unavailable, 1 max surge OldReplicaSets: <none> NewReplicaSet: myreplicas-2209834598 (2/2 replicas created) ...
master$ kubectl get pods -o wide
NAME READY STATUS RESTARTS AGE NODE myreplicas-2209834598-5iyer 1/1 Running 0 1m k8s.minion1.dev myreplicas-2209834598-cslst 1/1 Running 0 1m k8s.minion2.dev
master$ kubectl describe pods -l version=1.0.0
- Cleanup:
master$ kubectl delete deployment myreplicas
Interacting with Pod containers
- Create example Apache pod definition file:
master$ cat << EOF > apache.yml --- apiVersion: v1 kind: Pod metadata: name: apache spec: containers: - name: apache image: latest123/apache ports: - containerPort: 80 EOF
master$ kubectl create -f apache.yml master$ kubectl get pods -o wide
NAME READY STATUS RESTARTS AGE NODE apache 1/1 Running 0 12m k8s.minion3.dev
- Test pod and make some basic configuration changes:
master$ kubectl exec apache date master$ kubectl exec mypod -i -t -- cat /var/www/html/index.html # default apache HTML master$ kubectl exec apache -i -t -- /bin/bash container$ export TERM=xterm container$ echo "xtof test" > /var/www/html/index.html minion3$ curl 172.17.0.2 xtof test container$ exit
master$ kubectl get pods -o wide
NAME READY STATUS RESTARTS AGE NODE apache 1/1 Running 0 12m k8s.minion3.dev
Pod/container is still running even after we exited (as expected).
- Cleanup:
master$ kubectl delete pod apache
Logs
- Start our example Apache pod to use for checking Kubernetes logging features:
master$ kubectl create -f apache.yml master$ kubectl get pods
NAME READY STATUS RESTARTS AGE apache 1/1 Running 0 9s
master$ kubectl logs apache
AH00558: apache2: Could not reliably determine the server's fully qualified domain name, using 172.17.0.2. Set the 'ServerName' directive globally to suppress this message
master$ kubectl logs --tail=10 apache master$ kubectl logs --since=24h apache # or 10s, 2m, etc. master$ kubectl logs -f apache # follow the logs master$ kubectl logs -f -c apache apache # where -c is the container ID
- Cleanup:
master$ kubectl delete pod apache
Autoscaling and scaling Pods
master$ kubectl run myautoscale --image=latest123/apache --port=80 --labels=app=myautoscale
master$ kubectl get pods -o wide
NAME READY STATUS RESTARTS AGE NODE myautoscale-3243017378-kq4z7 1/1 Running 0 47s k8s.minion3.dev
- Create an autoscale definition:
master$ kubectl autoscale deployment myautoscale --min=2 --max=6 --cpu-percent=80
master$ kubectl get deployments
NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE myautoscale 2 2 2 2 4m
master$ kubectl get pods -o wide
NAME READY STATUS RESTARTS AGE NODE myautoscale-3243017378-kq4z7 1/1 Running 0 3m k8s.minion3.dev myautoscale-3243017378-r2f3d 1/1 Running 0 4s k8s.minion2.dev
- Scale up an already autoscaled deployment:
master$ kubectl scale --current-replicas=2 --replicas=4 deployment/myautoscale
master$ kubectl get deployments
NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE myautoscale 4 4 4 4 8m
master$ kubectl get pods -o wide
NAME READY STATUS RESTARTS AGE NODE myautoscale-3243017378-2rxhp 1/1 Running 0 8s k8s.minion1.dev myautoscale-3243017378-kq4z7 1/1 Running 0 7m k8s.minion3.dev myautoscale-3243017378-ozxs8 1/1 Running 0 8s k8s.minion3.dev myautoscale-3243017378-r2f3d 1/1 Running 0 4m k8s.minion2.dev
- Scale down:
master$ kubectl scale --current-replicas=4 --replicas=2 deployment/myautoscale
Note: You can not scale down past the original minimum number of pods/containers specified in the original autoscale deployment (i.e., min=2 in our example).
- Cleanup:
master$ kubectl delete deployment myautoscale
Failure and recovery
master$ kubectl run myrecovery --image=latest123/apache --port=80 --replicas=2 --labels=app=myrecovery master$ kubectl get deployments
NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE myrecovery 2 2 2 2 6s
master$ kubectl get pods -o wide
NAME READY STATUS RESTARTS AGE NODE myrecovery-563119102-5xu8f 1/1 Running 0 12s k8s.minion1.dev myrecovery-563119102-zw6wp 1/1 Running 0 12s k8s.minion2.dev
- Now stop Kubernetes- and Docker-related services on one of the minions/nodes (so we have a total of 2 nodes online):
minion1$ systemctl stop docker kubelet kube-proxy
master$ kubectl get pods -o wide
NAME READY STATUS RESTARTS AGE NODE myrecovery-563119102-qyi04 1/1 Running 0 7m k8s.minion3.dev myrecovery-563119102-zw6wp 1/1 Running 0 14m k8s.minion2.dev
Pod switch from minion1 to minion3.
- Now stop Kubernetes- and Docker-related services on one of the remaining online minions/nodes (so we have a total of 1 node online):
minion2$ systemctl stop docker kubelet kube-proxy master$ kubectl get pods -o wide
NAME READY STATUS RESTARTS AGE NODE myrecovery-563119102-b5tim 1/1 Running 0 2m k8s.minion3.dev myrecovery-563119102-qyi04 1/1 Running 0 17m k8s.minion3.dev
Both Pods are now running on minion3, the only available node.
- Start up Kubernetes- and Docker-related services again on minion1 and delete one of the Pods:
minion1$ systemctl start docker kubelet kube-proxy master$ kubectl delete pod myrecovery-563119102-b5tim master$ kubectl get pods -o wide
NAME READY STATUS RESTARTS AGE NODE myrecovery-563119102-8unzg 1/1 Running 0 1m k8s.minion1.dev myrecovery-563119102-qyi04 1/1 Running 0 20m k8s.minion3.dev
Pods are now running on separate nodes.
- Cleanup:
master$ kubectl delete deployments/myrecovery
Minikube
Minikube is a tool that makes it easy to run Kubernetes locally. Minikube runs a single-node Kubernetes cluster inside a VM on your laptop for users looking to try out Kubernetes or develop with it day-to-day.
- Install Minikube:
$ curl -Lo minikube https://storage.googleapis.com/minikube/releases/latest/minikube-linux-amd64 \ && chmod +x minikube && sudo mv minikube /usr/local/bin/
- Install kubectl
$ curl -Lo kubectl https://storage.googleapis.com/kubernetes-release/release/$(curl -s https://storage.googleapis.com/kubernetes-release/release/stable.txt)/bin/linux/amd64/kubectl \ && chmod +x kubectl && sudo mv kubectl /usr/local/bin/
- Test install
$ minikube start $ minikube status $ minikube dashboard $ kubectl config view $ kubectl cluster-info
Get the details on the CLI options for kubectl here.
Using the `kubectl proxy`
command, kubectl will authenticate with the API Server on the Master Node and would make the dashboard available on http://localhost:8001/ui:
$ kubectl proxy Starting to serve on 127.0.0.1:8001
After running the above command, we can access the dashboard at http://127.0.0.1:8001/ui.
Once the kubectl proxy is configured, we can send requests to localhost on the proxy port:
$ curl http://localhost:8001/ $ curl http://localhost:8001/version
{ "major": "1", "minor": "8", "gitVersion": "v1.8.0", "gitCommit": "0b9efaeb34a2fc51ff8e4d34ad9bc6375459c4a4", "gitTreeState": "clean", "buildDate": "2017-11-29T22:43:34Z", "goVersion": "go1.9.1", "compiler": "gc", "platform": "linux/amd64" }
Without kubectl proxy configured, we can get the Bearer Token using kubectl, and then send it with the API request. A Bearer Token is an access token which is generated by the authentication server (the API server on the Master Node) and given back to the client. Using that token, the client can connect back to the Kubernetes API server without providing further authentication details, and then, access resources.
- Get the k8s token:
$ TOKEN=$(kubectl describe secret $(kubectl get secrets | awk '/^default/{print $1}') | awk '/^token/{print $2}')
- Get the k8s API server endpoint:
$ APISERVER=$(kubectl config view | awk '/https/{print $2}')
- Access the API Server:
$ curl -k -H "Authorization: Bearer ${TOKEN}" ${APISERVER}
Working with our Minikube-based Kubernetes cluster
- Kubernetes Object Model
Kubernetes has a very rich object model, with which it represents different persistent entities in the Kubernetes cluster. Those entities describe:
- What containerized applications we are running and on which node
- Application resource consumption
- Different policies attached to applications, like restart/upgrade policies, fault tolerance, etc.
With each object, we declare our intent or desired state using the spec field. The Kubernetes system manages the status field for objects, in which it records the actual state of the object. At any given point in time, the Kubernetes Control Plane tries to match the object's actual state to the object's desired state.
Examples of Kubernetes objects are Pods, Deployments, ReplicaSets, etc.
To create an object, we need to provide the spec field to the Kubernetes API Server. The spec field describes the desired state, along with some basic information, like the name. The API request to create the object must have the spec field, as well as other details, in a JSON format. Most often, we provide an object's definition in a YAML file, which is converted by kubectl in a JSON payload and sent to the API Server.
Below is an example of a Deployment object:
apiVersion: apps/v1 # for versions before 1.9.0 use apps/v1beta2 kind: Deployment metadata: name: nginx-deployment labels: app: nginx spec: replicas: 3 selector: matchLabels: app: nginx template: metadata: labels: app: nginx spec: containers: - name: nginx image: nginx:1.7.9 ports: - containerPort: 80
With the apiVersion field in the example above, we mention the API endpoint on the API Server which we want to connect to. Note that you can see what API version to use with the following call to the API server:
$ curl -k -H "Authorization: Bearer ${TOKEN}" ${APISERVER}/apis/apps
Use the preferredVersion for most cases.
With the kind field, we mention the object type — in our case, we have Deployment. With the metadata field, we attach the basic information to objects, like the name. Notice that in the above we have two spec fields (spec and spec.template.spec). With spec, we define the desired state of the deployment. In our example, we want to make sure that, at any point in time, at least 3 Pods are running, which are created using the Pod template defined in spec.template. In spec.template.spec, we define the desired state of the Pod (here, our Pod would be created using nginx:1.7.9).
Once the object is created, the Kubernetes system attaches the status field to the object.
- Connecting users to Pods
To access the application, a user/client needs to connect to the Pods. As Pods are ephemeral in nature, resources like IP addresses allocated to it cannot be static. Pods could die abruptly or be rescheduled based on existing requirements.
As an example, consider a scenario in which a user/client is connecting to a Pod using its IP address. Unexpectedly, the Pod to which the user/client is connected dies and a new Pod is created by the controller. The new Pod will have a new IP address, which will not be known automatically to the user/client of the earlier Pod. To overcome this situation, Kubernetes provides a higher-level abstraction called Service, which logically groups Pods and a policy to access them. This grouping is achieved via Labels and Selectors (see above).
So, for our example, we would use Selectors (e.g., "app==frontend
" and "app==db
") to group our Pods into two logical groups. We can assign a name to the logical grouping, referred to as a "service name". In our example, we have created two Services, frontend-svc
and db-svc
, and they have the "app==frontend
" and the "app==db
" Selectors, respectively.
The following is an example of a Service object:
kind: Service apiVersion: v1 metadata: name: frontend-svc spec: selector: app: frontend ports: - protocol: TCP port: 80 targetPort: 5000
in which we are creating a frontend-svc
Service by selecting all the Pods that have the Label "app
" equal to "frontend
". By default, each Service also gets an IP address, which is routable only inside the cluster. In our case, we have 172.17.0.4 and 172.17.0.5 IP addresses for our frontend-svc
and db-svc
Services, respectively. The IP address attached to each Service is also known as the ClusterIP for that Service.
+------------------------------------+ | select: app==frontend | container (app:frontend; 10.0.1.3) | service=frontend-svc (172.17.0.4) |------> container (app:frontend; 10.0.1.4) +------------------------------------+ container (app:frontend; 10.0.1.5) ^ / / user/client \ \ v +------------------------------------+ | select: app==db |------> container (app:db; 10.0.1.10) | service=db-svc (172.17.0.5) | +------------------------------------+
The user/client now connects to a Service via its IP address, which forwards the traffic to one of the Pods attached to it. A Service does the load balancing while selecting the Pods for forwarding the data/traffic.
While forwarding the traffic from the Service, we can select the target port on the Pod. In our example, for frontend-svc
, we will receive requests from the user/client on port 80. We will then forward these requests to one of the attached Pods on port 5000. If the target port is not defined explicitly, then traffic will be forwarded to Pods on the port on which the Service receives traffic.
A tuple of Pods, IP addresses, along with the targetPort
is referred to as a Service Endpoint. In our case, frontend-svc
has 3 Endpoints: 10.0.1.3:5000
, 10.0.1.4:5000
, and 10.0.1.5:5000
.
kube-proxy
All of the Worker Nodes run a daemon called kube-proxy, which watches the API Server on the Master Node for the addition and removal of Services and endpoints. For each new Service, on each node, kube-proxy configures the IPtables rules to capture the traffic for its ClusterIP and forwards it to one of the endpoints. When the Service is removed, kube-proxy removes the IPtables rules on all nodes as well.
Service discovery
As Services are the primary mode of communication in Kubernetes, we need a way to discover them at runtime. Kubernetes supports two methods of discovering a Service:
- Environment Variables
- As soon as the Pod starts on any Worker Node, the kubelet daemon running on that node adds a set of environment variables in the Pod for all active Services. For example, if we have an active Service called
redis-master
, which exposes port 6379, and its ClusterIP is 172.17.0.6, then, on a newly created Pod, we can see the following environment variables:
REDIS_MASTER_SERVICE_HOST=172.17.0.6 REDIS_MASTER_SERVICE_PORT=6379 REDIS_MASTER_PORT=tcp://172.17.0.6:6379 REDIS_MASTER_PORT_6379_TCP=tcp://172.17.0.6:6379 REDIS_MASTER_PORT_6379_TCP_PROTO=tcp REDIS_MASTER_PORT_6379_TCP_PORT=6379 REDIS_MASTER_PORT_6379_TCP_ADDR=172.17.0.6
With this solution, we need to be careful while ordering our Services, as the Pods will not have the environment variables set for Services which are created after the Pods are created.
- DNS
- Kubernetes has an add-on for DNS, which creates a DNS record for each Service and its format is like
my-svc.my-namespace.svc.cluster.local
. Services within the same namespace can reach other services with just their name. For example, if we add a Serviceredis-master
in themy-ns
Namespace, then all the Pods in the same Namespace can reach to the redis Service just by using its name,redis-master
. Pods from other Namespaces can reach the Service by adding the respective Namespace as a suffix, likeredis-master.my-ns
. - This is the most common and highly recommended solution. For example, in the previous section's image, we have seen that an internal DNS is configured, which maps our services
frontend-svc
anddb-svc
to 172.17.0.4 and 172.17.0.5, respectively.
Service Type
While defining a Service, we can also choose its access scope. We can decide whether the Service:
- is only accessible within the cluster;
- is accessible from within the cluster and the external world; or
- maps to an external entity which resides outside the cluster.
Access scope is decided by ServiceType, which can be mentioned when creating the Service.
- ClusterIP
- (the default ServiceType.) A Service gets its Virtual IP address using the ClusterIP. That IP address is used for communicating with the Service and is accessible only within the cluster.
- NodePort
- With this ServiceType, in addition to creating a ClusterIP, a port from the range 30000-32767 is mapped to the respective service from all the Worker Nodes. For example, if the mapped NodePort is 32233 for the service
frontend-svc
, then, if we connect to any Worker Node on port 32233, the node would redirect all the traffic to the assigned ClusterIP (172.17.0.4). - By default, while exposing a NodePort, a random port is automatically selected by the Kubernetes Master from the port range 30000-32767. If we do not want to assign a dynamic port value for NodePort, then, while creating the Service, we can also give a port number from the earlier specific range.
- The NodePort ServiceType is useful when we want to make our services accessible from the external world. The end-user connects to the Worker Nodes on the specified port, which forwards the traffic to the applications running inside the cluster. To access the application from the external world, administrators can configure a reverse proxy outside the Kubernetes cluster and map the specific endpoint to the respective port on the Worker Nodes.
- LoadBalancer
- With this ServiceType, we have the following:
- NodePort and ClusterIP Services are automatically created, and the external load balancer will route to them;
- The Services are exposed at a static port on each Worker Node; and
- The Service is exposed externally using the underlying Cloud provider's load balancer feature.
- The LoadBalancer ServiceType will only work if the underlying infrastructure supports the automatic creation of Load Balancers and have the respective support in Kubernetes, as is the case with the Google Cloud Platform and AWS.
- ExternalIP
- A Service can be mapped to an ExternalIP address if it can route to one or more of the Worker Nodes. Traffic that is ingressed into the cluster with the ExternalIP (as destination IP) on the Service port, gets routed to one of the the Service endpoints. (Note that ExternalIPs are not managed by Kubernetes. The cluster administrator(s) must have configured the routing to map the ExternalIP address to one of the nodes.)
- ExternalName
- a special ServiceType, which has no Selectors and does not define any endpoints. When accessed within the cluster, it returns a CNAME record of an externally configured service.
- The primary use case of this ServiceType is to make externally configured services like
my-database.example.com
available inside the cluster, using just the name, likemy-database
, to other services inside the same Namespace.
Deploying a application
$ kubectl create -f - <<EOF apiVersion: extensions/v1beta1 kind: Deployment metadata: name: webserver spec: replicas: 3 template: metadata: labels: app: webserver spec: containers: - name: webserver image: nginx:alpine ports: - containerPort: 80 EOF
$ kubectl create -f - <<EOF apiVersion: v1 kind: Service metadata: name: web-service labels: run: web-service spec: type: NodePort ports: - port: 80 protocol: TCP selector: app: webserver EOF
$ kubectl get service NAME TYPE CLUSTER-IP EXTERNAL-IP PORT(S) AGE kubernetes ClusterIP 10.96.0.1 <none> 443/TCP 6h web-service NodePort 10.104.107.132 <none> 80:32610/TCP 7m
Note that "32610
" port.
- Get the IP address of your Minikube k8s cluster
$ minikube ip 192.168.99.100 #~OR~ $ minikube service web-service --url http://192.168.99.100:32610
- Now, check that your web service is serving up a default Nginx website:
$ curl -I http://192.168.99.100:32610 HTTP/1.1 200 OK Server: nginx/1.13.8 Date: Thu, 11 Jan 2018 00:27:51 GMT Content-Type: text/html Content-Length: 612 Last-Modified: Wed, 10 Jan 2018 04:10:03 GMT Connection: keep-alive ETag: "5a55921b-264" Accept-Ranges: bytes
Looks good!
Finally, destroy the webserver deployment:
$ kubectl delete deployments webserver
Pods
- Create a Pod that has an Init Container
In this example, I will create a Pod that has one application Container and one Init Container. The init container runs to completion before the application container starts.
$ cat << EOF >init-demo.yml apiVersion: v1 kind: Pod metadata: name: init-demo labels: app: demo spec: containers: - name: nginx image: nginx ports: - containerPort: 80 volumeMounts: - name: workdir mountPath: /usr/share/nginx/html # These containers are run during pod initialization initContainers: - name: install image: busybox command: - wget - "-O" - "/work-dir/index.html" - https://example.com volumeMounts: - name: workdir mountPath: "/work-dir" dnsPolicy: Default volumes: - name: workdir emptyDir: {} EOF
The above Pod YAML will first create the init container using the busybox image, which will download the HTML of the example.com website and save it to a file (index.html
) on the Pod volume called "workdir". After the init container completes, the Nginx container starts and presents the index.html
on port 80 (the file is located at /usr/share/nginx/index.html
inside the Nginx container as a volume mount).
- Now, create this Pod:
$ kubectl create --validate -f init-demo.yml
- Create a Service:
$ cat << EOF >example.yml kind: Service apiVersion: v1 metadata: name: example spec: ports: - port: 8000 targetPort: 80 protocol: TCP selector: app: demo
- Check that we can get the header of https://example.com:
$ curl -sI $(kubectl get svc/foo-svc -o jsonpath='{.spec.clusterIP}'):8000 | grep ^HTTP HTTP/1.1 200 OK
Deployments
A Deployment controller provides declarative updates for Pods and ReplicaSets.
You describe a desired state in a Deployment object, and the Deployment controller changes the actual state to the desired state at a controlled rate. You can define Deployments to create new ReplicaSets, or to remove existing Deployments and adopt all their resources with new Deployments.
- Creating a Deployment
The following is an example of a Deployment. It creates a ReplicaSet to bring up three Nginx Pods:
apiVersion: apps/v1 # for versions before 1.9.0 use apps/v1beta2 kind: Deployment metadata: name: nginx-deployment labels: app: nginx spec: replicas: 3 selector: matchLabels: app: nginx template: metadata: labels: app: nginx spec: containers: - name: nginx image: nginx:1.7.9 ports: - containerPort: 80
- Create the deployment:
$ kubectl create --record -f nginx-deployment.yml
deployment "nginx-deployment" created
Note: By appending --record
to the above command, we are telling the API to record the current command in the annotations of the created or updated resource. This is useful for future review, such as investigating which commands were executed in each Deployment revision.
- Get information about our Deployment:
$ kubectl get deployments NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE nginx-deployment 3 3 3 0 13s $ kubectl describe deployment/nginx-deployment
Name: nginx-deployment Namespace: default CreationTimestamp: Tue, 30 Jan 2018 23:28:43 +0000 Labels: app=nginx Annotations: deployment.kubernetes.io/revision=1 kubernetes.io/change-cause=kubectl create --record=true --filename=nginx-deployment.yml Selector: app=nginx Replicas: 3 desired | 3 updated | 3 total | 0 available | 3 unavailable StrategyType: RollingUpdate MinReadySeconds: 0 RollingUpdateStrategy: 25% max unavailable, 25% max surge Pod Template: Labels: app=nginx Containers: nginx: Image: nginx:1.7.9 Port: 80/TCP Environment: <none> Mounts: <none> Volumes: <none> Conditions: Type Status Reason ---- ------ ------ Available False MinimumReplicasUnavailable Progressing True ReplicaSetUpdated OldReplicaSets: <none> NewReplicaSet: nginx-deployment-6c54bd5869 (3/3 replicas created) Events: Type Reason Age From Message ---- ------ ---- ---- ------- Normal ScalingReplicaSet 28s deployment-controller Scaled up replica set nginx-deployment-6c54bd5869 to 3
- Get information about the ReplicaSet created by the above Deployment:
$ kubectl get rs NAME DESIRED CURRENT READY AGE nginx-deployment-6c54bd5869 3 3 3 3m $ $ kubectl describe rs/nginx-deployment-6c54bd5869
Name: nginx-deployment-6c54bd5869 Namespace: default Selector: app=nginx,pod-template-hash=2710681425 Labels: app=nginx pod-template-hash=2710681425 Annotations: deployment.kubernetes.io/desired-replicas=3 deployment.kubernetes.io/max-replicas=4 deployment.kubernetes.io/revision=1 kubernetes.io/change-cause=kubectl create --record=true --filename=nginx-deployment.yml Controlled By: Deployment/nginx-deployment Replicas: 3 current / 3 desired Pods Status: 3 Running / 0 Waiting / 0 Succeeded / 0 Failed Pod Template: Labels: app=nginx pod-template-hash=2710681425 Containers: nginx: Image: nginx:1.7.9 Port: 80/TCP Environment: <none> Mounts: <none> Volumes: <none> Events: Type Reason Age From Message ---- ------ ---- ---- ------- Normal SuccessfulCreate 4m replicaset-controller Created pod: nginx-deployment-6c54bd5869-k9mh4 Normal SuccessfulCreate 4m replicaset-controller Created pod: nginx-deployment-6c54bd5869-pphjt Normal SuccessfulCreate 4m replicaset-controller Created pod: nginx-deployment-6c54bd5869-n4fj5
- Get information about the Pods created by this Deployment:
$ kubectl get pods --show-labels -l app=nginx -o wide NAME READY STATUS RESTARTS AGE IP NODE LABELS nginx-deployment-6c54bd5869-k9mh4 1/1 Running 0 5m 10.244.1.5 k8s.worker1.local app=nginx,pod-template-hash=2710681425 nginx-deployment-6c54bd5869-n4fj5 1/1 Running 0 5m 10.244.1.6 k8s.worker2.local app=nginx,pod-template-hash=2710681425 nginx-deployment-6c54bd5869-pphjt 1/1 Running 0 5m 10.244.1.7 k8s.worker3.local app=nginx,pod-template-hash=2710681425
- Updating a Deployment
Note: A Deployment's rollout is triggered if and only if the Deployment's pod template (that is, .spec.template
) is changed, for example if the labels or container images of the template are updated. Other updates, such as scaling the Deployment, do not trigger a rollout.
Suppose that we want to update the Nginx Pods in the above Deployment to use the nginx:1.9.1
image instead of the nginx:1.7.9
image.
$ kubectl set image deployment/nginx-deployment nginx=nginx:1.9.1 deployment "nginx-deployment" image updated
Alternatively, we can edit the Deployment and change .spec.template.spec.containers[0].image
from nginx:1.7.9
to nginx:1.9.1
:
$ kubectl edit deployment/nginx-deployment deployment "nginx-deployment" edited
- Check on the rollout status:
$ kubectl rollout status deployment/nginx-deployment Waiting for rollout to finish: 1 out of 3 new replicas have been updated... Waiting for rollout to finish: 1 out of 3 new replicas have been updated... Waiting for rollout to finish: 1 out of 3 new replicas have been updated... Waiting for rollout to finish: 2 out of 3 new replicas have been updated... Waiting for rollout to finish: 2 out of 3 new replicas have been updated... Waiting for rollout to finish: 2 out of 3 new replicas have been updated... Waiting for rollout to finish: 1 old replicas are pending termination... Waiting for rollout to finish: 1 old replicas are pending termination... deployment "nginx-deployment" successfully rolled out
- Get information about the updated Deployment:
$ kubectl get deploy NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE nginx-deployment 3 3 3 3 18m $ kubectl get rs NAME DESIRED CURRENT READY AGE nginx-deployment-5964dfd755 3 3 3 1m # <- new ReplicaSet using nginx:1.9.1 nginx-deployment-6c54bd5869 0 0 0 17m # <- old ReplicaSet using nginx:1.7.9 $ $ kubectl rollout history deployment/nginx-deployment deployments "nginx-deployment" REVISION CHANGE-CAUSE 1 kubectl create --record=true --filename=nginx-deployment.yml 2 kubectl set image deployment/nginx-deployment nginx=nginx:1.9.1 $ $ kubectl rollout history deployment/nginx-deployment --revision=2 deployments "nginx-deployment" with revision #2 Pod Template: Labels: app=nginx pod-template-hash=1520898311 Annotations: kubernetes.io/change-cause=kubectl set image deployment/nginx-deployment nginx=nginx:1.9.1 Containers: nginx: Image: nginx:1.9.1 Port: 80/TCP Environment: <none> Mounts: <none> Volumes: <none>
- Rolling back to a previous revision
Undo the current rollout and rollback to the previous revision:
$ kubectl rollout undo deployment/nginx-deployment deployment "nginx-deployment" rolled back
Alternatively, you can rollback to a specific revision by specify that in --to-revision:
$ kubectl rollout undo deployment/nginx-deployment --to-revision=1 deployment "nginx-deployment" rolled back
Volume management
On-disk files in a container are ephemeral, which presents some problems for non-trivial applications when running in containers. First, when a container crashes, kubelet will restart it, but the files will be lost (i.e., the container starts with a clean state). Second, when running containers together in a Pod it is often necessary to share files between those containers. The Kubernetes Volumes abstraction solves both of these problems. A Volume is essentially a directory backed by a storage medium. The storage medium and its content are determined by the Volume Type.
In Kubernetes, a Volume is attached to a Pod and shared among the containers of that Pod. The Volume has the same life span as the Pod, and it outlives the containers of the Pod — this allows data to be preserved across container restarts.
Kubernetes resolves the problem of persistent storage with the Persistent Volume subsystem, which provides APIs for users and administrators to manage and consume storage. To manage the Volume, it uses the PersistentVolume (PV) API resource type, and to consume it, it uses the PersistentVolumeClaim (PVC) API resource type.
- PersistentVolume (PV)
- a piece of storage in the cluster that has been provisioned by an administrator. It is a resource in the cluster just like a node is a cluster resource. PVs are volume plugins like Volumes, but have a lifecycle independent of any individual pod that uses the PV. This API object captures the details of the implementation of the storage, be that NFS, iSCSI, or a cloud-provider-specific storage system.
- PersistentVolumeClaim (PVC)
- a request for storage by a user. It is similar to a pod. Pods consume node resources and PVCs consume PV resources. Pods can request specific levels of resources (CPU and Memory). Persistent Volume Claims can request specific size and access modes (e.g., can be mounted once read/write or many times read-only).
A Persistent Volume is a network-attached storage in the cluster, which is provisioned by the administrator.
Persistent Volumes can be provisioned statically by the administrator, or dynamically, based on the StorageClass resource. A StorageClass contains pre-defined provisioners and parameters to create a Persistent Volume.
A PersistentVolumeClaim (PVC) is a request for storage by a user. Users request Persistent Volume resources based on size, access modes, etc. Once a suitable Persistent Volume is found, it is bound to a Persistent Volume Claim. After a successful bind, the Persistent Volume Claim resource can be used in a Pod. Once a user finishes its work, the attached Persistent Volumes can be released. The underlying Persistent Volumes can then be reclaimed and recycled for future usage. See Persistent Volumes for details.
- Access Modes
- Each of the following access modes must be supported by storage resource provider (e.g., NFS, AWS EBS, etc.) if they are to be used.
- ReadWriteOnce (RWO) — volume can be mounted as read/write by one node only.
- ReadOnlyMany (ROX) — volume can be mounted read-only by many nodes.
- ReadWriteMany (RWX) — volume can be mounted read/write by many nodes.
A volume can only be mounted using one access mode at a time, regardless of the modes that are supported.
- Example #1 - Using Host Volumes
As an example of how to use volumes, we can modify our previous "webserver" Deployment (see above) to look like the following:
$ cat webserver.yml
apiVersion: extensions/v1beta1 kind: Deployment metadata: name: webserver spec: replicas: 3 template: metadata: labels: app: webserver spec: containers: - name: webserver image: nginx:alpine ports: - containerPort: 80 volumeMounts: - name: hostvol mountPath: /usr/share/nginx/html volumes: - name: hostvol hostPath: path: /home/docker/vol
And use the same Service:
$ cat webserver-svc.yml
apiVersion: v1 kind: Service metadata: name: web-service labels: run: web-service spec: type: NodePort ports: - port: 80 protocol: TCP selector: app: webserver
Then create the deployment and service:
$ kubectl create -f webserver.yml $ kubectl create -f webserver-svc.yml
Then, SSH into the webserver and run the following commands
$ minikube ssh minikube> mkdir -p /home/docker/vol minikube> echo "Christoph testing" > /home/docker/vol/index.html minikube> exit
Get the webserver IP and port:
$ minikube ip 192.168.99.100 $ kubectl get svc/web-service -o json | jq '.spec.ports[].nodePort' 32610 # OR $ minikube service web-service --url http://192.168.99.100:32610
$ curl http://192.168.99.100:32610 Christoph testing
- Example #2 - Using NFS
- First, create a server to host your NFS server (e.g.,
`sudo apt-get install -y nfs-kernel-server`
). - On your NFS server, do the following:
$ mkdir -p /var/nfs/general $ cat << EOF >>/etc/exports /var/nfs/general 10.100.1.2(rw,sync,no_subtree_check) 10.100.1.3(rw,sync,no_subtree_check) 10.100.1.4(rw,sync,no_subtree_check) EOF
where the 10.x
IPs are the private IPs of your k8s nodes (both Master and Worker nodes).
- Make sure to install
nfs-common
on each of the k8s nodes that will be connecting to the NFS server.
Now, on the k8s Master node, create a Persistent Volume (PV) and Persistent Volume Claim (PVC):
- Create a Persistent Volume (PV):
$ cat << EOF >pv.yml apiVersion: v1 kind: PersistentVolume metadata: name: mypv spec: capacity: storage: 1Gi volumeMode: Filesystem accessModes: - ReadWriteMany persistentVolumeReclaimPolicy: Recycle nfs: path: /var/nfs/general server: 10.100.1.10 # NFS Server's private IP readOnly: false EOF $ kubectl create --validate -f pv.yml $ kubectl get pv NAME CAPACITY ACCESS MODES RECLAIM POLICY STATUS CLAIM STORAGECLASS REASON AGE mypv 1Gi RWX Recycle Available
- Create a Persistent Volume Claim (PVC):
$ cat << EOF >pvc.yml apiVersion: v1 kind: PersistentVolumeClaim metadata: name: nfs-pvc spec: accessModes: - ReadWriteMany resources: requests: storage: 1Gi EOF $ kubectl create --validate -f pvc.yml $ kubectl get pvc NAME STATUS VOLUME CAPACITY ACCESS MODES STORAGECLASS AGE nfs-pvc Bound mypv 1Gi RWX $ kubectl get pv NAME CAPACITY ACCESS MODES RECLAIM POLICY STATUS CLAIM STORAGECLASS REASON AGE mypv 1Gi RWX Recycle Bound default/nfs-pvc 11m
- Create a Pod:
$ cat << EOF >nfs-pod.yml apiVersion: v1 kind: Pod metadata: name: nfs-pod labels: name: nfs-pod spec: containers: - name: nfs-ctn image: busybox command: - sleep - "3600" volumeMounts: - name: nfsvol mountPath: /tmp restartPolicy: Always securityContext: fsGroup: 65534 runAsUser: 65534 volumes: - name: nfsvol persistentVolumeClaim: claimName: nfs-pvc EOF $ kubectl create --validate -f nfs-pod.yml $ kubectl get pods -o wide NAME READY STATUS RESTARTS AGE IP NODE busybox 1/1 Running 9 2d 10.244.2.22 k8s.worker01.local
- Get a shell from the
nfs-pod
Pod:
$ kubectl exec -it nfs-pod -- sh / $ df -h Filesystem Size Used Available Use% Mounted on 172.31.119.58:/var/nfs/general 19.3G 1.8G 17.5G 9% /tmp ... / $ touch /tmp/this-is-from-the-pod
- On the NFS server:
$ ls -l /var/nfs/general/ total 0 -rw-r--r-- 1 nobody nogroup 0 Jan 18 23:32 this-is-from-the-pod
It works!
ConfigMaps and Secrets
While deploying an application, we may need to pass such runtime parameters like configuration details, passwords, etc. For example, let's assume we need to deploy ten different applications for our customers, and, for each customer, we just need to change the name of the company in the UI. Instead of creating ten different Docker images for each customer, we can just use the template image and pass the customers' names as a runtime parameter. In such cases, we can use the ConfigMap API resource. Similarly, when we want to pass sensitive information, we can use the Secret API resource. Think Secrets (for confidential data) and ConfigMaps (for non-confidential data).
ConfigMaps allow you to decouple configuration artifacts from image content to keep containerized applications portable. Using ConfigMaps, we can pass configuration details as key-value pairs, which can be later consumed by Pods or any other system components, such as controllers. We can create ConfigMaps in two ways:
- From literal values; and
- From files.
- ConfigMaps
- Create a ConfigMap:
$ kubectl create configmap my-config --from-literal=key1=value1 --from-literal=key2=value2 configmap "my-config" created $ kubectl get configmaps my-config -o yaml
apiVersion: v1 data: key1: value1 key2: value2 kind: ConfigMap metadata: creationTimestamp: 2018-01-11T23:57:44Z name: my-config namespace: default resourceVersion: "117110" selfLink: /api/v1/namespaces/default/configmaps/my-config uid: 37a43e39-f72b-11e7-8370-08002721601f
$ kubectl describe configmap/my-config
Name: my-config Namespace: default Labels: <none> Annotations: <none> Data ==== key2: ---- value2 key1: ---- value1 Events: <none>
- Create a ConfigMap from a configuration file
$ cat <<EOF | kubectl create -f - apiVersion: v1 kind: ConfigMap metadata: name: customer1 data: TEXT1: Customer1_Company TEXT2: Welcomes You COMPANY: Customer1 Company Technology, LLC. EOF
We can get the values of the given key as environment variables inside a Pod. In the following example, while creating the Deployment, we are assigning values for environment variables from the customer1 ConfigMap:
.... containers: - name: my-app image: foobar env: - name: MONGODB_HOST value: mongodb - name: TEXT1 valueFrom: configMapKeyRef: name: customer1 key: TEXT1 - name: TEXT2 valueFrom: configMapKeyRef: name: customer1 key: TEXT2 - name: COMPANY valueFrom: configMapKeyRef: name: customer1 key: COMPANY ....
With the above, we will get the TEXT1
environment variable set to Customer1_Company
, TEXT2
environment variable set to Welcomes You
, and so on.
We can also mount a ConfigMap as a Volume inside a Pod. For each key, we will see a file in the mount path and the content of that file become the respective key's value. For details, see here.
You can also use ConfigMaps to configure your cluster to use, as an example, 8.8.8.8 and 8.8.4.4 as its upstream DNS server:
kind: ConfigMap apiVersion: v1 metadata: name: kube-dns namespace: kube-system data: upstreamNameservers: | ["8.8.8.8", "8.8.4.4"]
- Secrets
Objects of type Secret are intended to hold sensitive information, such as passwords, OAuth tokens, and ssh keys. Putting this information in a Secret is safer and more flexible than putting it verbatim in a pod definition or in a docker image.
As an example, assume that we have a Wordpress blog application, in which our wordpress
frontend connects to the MySQL database backend using a password. While creating the Deployment for wordpress
, we can put the MySQL password in the Deployment's YAML file, but the password would not be protected. The password would be available to anyone who has access to the configuration file.
In situations such as the one we just mentioned, the Secret object can help. With Secrets, we can share sensitive information like passwords, tokens, or keys in the form of key-value pairs, similar to ConfigMaps; thus, we can control how the information in a Secret is used, reducing the risk for accidental exposures. In Deployments or other system components, the Secret object is referenced, without exposing its content.
It is important to keep in mind that the Secret data is stored as plain text inside etcd. Administrators must limit the access to the API Server and etcd.
To create a Secret using the `kubectl create secret`
command, we need to first create a file with a password, and then pass it as an argument.
- Create a file with your MySQL password:
$ echo mysqlpasswd | tr -d '\n' > password.txt
- Create the Secret:
$ kubectl create secret generic mysql-passwd --from-file=password.txt $ kubectl describe secret/mysql-passwd
Name: mysql-passwd Namespace: default Labels: <none> Annotations: <none> Type: Opaque Data ==== password.txt: 11 bytes
We can also create a Secret manually, using the YAML configuration file. With Secrets, each object data must be encoded using base64. If we want to have a configuration file for our Secret, we must first get the base64 encoding for our password:
$ cat password.txt | base64 bXlzcWxwYXNzd2Q==
and then use it in the configuration file:
apiVersion: v1 kind: Secret metadata: name: mysql-passwd type: Opaque data: password: bXlzcWxwYXNzd2Q=
Note that base64 encoding does not do any encryption and anyone can easily decode it:
$ echo "bXlzcWxwYXNzd2Q=" | base64 -d # => mysqlpasswd
Therefore, make sure you do not commit a Secret's configuration file in the source code.
We can get Secrets to be used by containers in a Pod by mounting them as data volumes, or by exposing them as environment variables.
We can reference a Secret and assign the value of its key as an environment variable (WORDPRESS_DB_PASSWORD
):
..... spec: containers: - image: wordpress:4.7.3-apache name: wordpress env: - name: WORDPRESS_DB_HOST value: wordpress-mysql - name: WORDPRESS_DB_PASSWORD valueFrom: secretKeyRef: name: my-password key: password.txt .....
Or, we can also mount a Secret as a Volume inside a Pod. A file would be created for each key mentioned in the Secret, whose content would be the respective value. See here for details.
Ingress
Among the ServiceTypes mentioned earlier, NodePort and LoadBalancer are the most often used. For the LoadBalancer ServiceType, we need to have the support from the underlying infrastructure. Even after having the support, we may not want to use it for every Service, as LoadBalancer resources are limited and they can increase costs significantly. Managing the NodePort ServiceType can also be tricky at times, as we need to keep updating our proxy settings and keep track of the assigned ports. In this section, we will explore the Ingress API object, which is another method we can use to access our applications from the external world.
An Ingress is a collection of rules that allow inbound connections to reach the cluster Services. With Services, routing rules are attached to a given Service. They exist for as long as the Service exists. If we can somehow decouple the routing rules from the application, we can then update our application without worrying about its external access. This can be done using the Ingress resource. Ingress can provide load balancing, SSL/TLS termination, and name-based virtual hosting and/or routing.
To allow the inbound connection to reach the cluster Services, Ingress configures a Layer 7 HTTP load balancer for Services and provides the following:
- TLS (Transport Layer Security)
- Name-based virtual hosting
- Path-based routing
- Custom rules.
With Ingress, users do not connect directly to a Service. Users reach the Ingress endpoint, and, from there, the request is forwarded to the respective Service. You can see an example of an example Ingress definition below:
apiVersion: extensions/v1beta1 kind: Ingress metadata: name: web-ingress spec: rules: - host: blue.example.com http: paths: - backend: serviceName: blue-service servicePort: 80 - host: green.example.com http: paths: - backend: serviceName: green-service servicePort: 80
According to the example just provided, users requests to both blue.example.com
and green.example.com
would go to the same Ingress endpoint, and, from there, they would be forwarded to blue-service
, and green-service
, respectively. Here, we have seen an example of a Name-Based Virtual Hosting Ingress rule.
We can also have Fan Out Ingress rules, in which we send requests like example.com/blue
and example.com/green
, which would be forwarded to blue-service
and green-service
, respectively.
To secure an Ingress, you must create a Secret. The TLS secret must contain keys named tls.crt
and tls.key
, which contain the certificate and private key to use for TLS.
The Ingress resource does not do any request forwarding by itself. All of the magic is done using the Ingress Controller.
- Ingress Controller
An Ingress Controller is an application which watches the Master Node's API Server for changes in the Ingress resources and updates the Layer 7 load balancer accordingly. Kubernetes has different Ingress Controllers, and, if needed, we can also build our own. GCE L7 Load Balancer and Nginx Ingress Controller are examples of Ingress Controllers.
Minikube v0.14.0 and above ships the Nginx Ingress Controller setup as an add-on. It can be easily enabled by running the following command:
$ minikube addons enable ingress
Once the Ingress Controller is deployed, we can create an Ingress resource using the kubectl create
command. For example, if we create an example-ingress.yml
file with the content above, then, we can use the following command to create an Ingress resource:
$ kubectl create -f example-ingress.yml
With the Ingress resource we just created, we should now be able to access the blue-service or green-service services using blue.example.com and green.example.com URLs. As our current setup is on minikube, we will need to update the host configuration file on our workstation to the minikube's IP for those URLs:
$ cat /etc/hosts 127.0.0.1 localhost ::1 localhost 192.168.99.100 blue.example.com green.example.com
Once this is done, we can now open blue.example.com and green.example.com in a browser and access the application.
Labels and Selectors
Labels are key-value pairs that are attached to objects, such as pods. Labels are intended to be used to specify identifying attributes of objects that are meaningful and relevant to users, but do not directly imply semantics to the core system. Labels can be used to organize and to select subsets of objects. Labels can be attached to objects at creation time and subsequently added and modified at any time. Each object can have a set of key-value labels defined. Each key must be unique for a given object.
"labels": { "key1" : "value1", "key2" : "value2" }
- Syntax and character set
Labels are key-value pairs. Valid label keys have two segments: an optional prefix and name, separated by a slash (/
). The name segment is required and must be 63 characters or less, beginning and ending with an alphanumeric character ([a-z0-9A-Z]
) with dashes (-
), underscores (_
), dots (.
), and alphanumerics between. The prefix is optional. If specified, the prefix must be a DNS subdomain: a series of DNS labels separated by dots (.
), not longer than 253 characters in total, followed by a slash (/
). If the prefix is omitted, the label key is presumed to be private to the user. Automated system components (e.g. kube-scheduler, kube-controller-manager, kube-apiserver, kubectl, or other third-party automation) which add labels to end-user objects must specify a prefix. The kubernetes.io/
prefix is reserved for Kubernetes core components.
Valid label values must be 63 characters or less and must be empty or begin and end with an alphanumeric character ([a-z0-9A-Z]
) with dashes (-
), underscores (_
), dots (.
), and alphanumerics between.
- Label selectors
Unlike names and UIDs, labels do not provide uniqueness. In general, we expect many objects to carry the same label(s).
Via a label selector, the client/user can identify a set of objects. The label selector is the core grouping primitive in Kubernetes.
The API currently supports two types of selectors: equality-based and set-based. A label selector can be made of multiple requirements which are comma-separated. In the case of multiple requirements, all must be satisfied so the comma separator acts as a logical AND (&&
) operator.
An empty label selector (that is, one with zero requirements) selects every object in the collection.
A null label selector (which is only possible for optional selector fields) selects no objects.
Note: the label selectors of two controllers must not overlap within a namespace, otherwise they will fight with each other. Note that labels are not restricted to pods. You can apply them to all sorts of objects, such as nodes or services.
- Examples
- Label a given node:
$ kubectl label node k8s.worker1.local network=gigabit
- Equality-based one may write:
$ kubectl get pods -l environment=production,tier=frontend
- Using set-based requirements:
$ kubectl get pods -l 'environment in (production),tier in (frontend)'
- Implement the OR operator on values:
$ kubectl get pods -l 'environment in (production, qa)'
- Restricting negative matching via exists operator:
$ kubectl get pods -l 'environment,environment notin (frontend)'
- Show the current labels on your pods:
$ kubectl get pods --show-labels NAME READY STATUS RESTARTS AGE LABELS busybox 1/1 Running 25 9d <none> nfs-pod 1/1 Running 16 6d name=nfs-pod
- Add a label to an already running/existing pod:
$ kubectl label pods busybox owner=christoph pod "busybox" labeled $ kubectl get pods --show-labels NAME READY STATUS RESTARTS AGE LABELS busybox 1/1 Running 25 9d owner=christoph nfs-pod 1/1 Running 16 6d name=nfs-pod
- Select a pod by its label:
$ kubectl get pods --selector owner=christoph #~OR~ $ kubectl get pods -l owner=christoph NAME READY STATUS RESTARTS AGE busybox 1/1 Running 25 9d
- Delete/remove a given label from a given pod:
$ kubectl label pod busybox owner- pod "busybox" labeled $ kubectl get pods --show-labels NAME READY STATUS RESTARTS AGE LABELS busybox 1/1 Running 25 9d <none>
- Get all pods that belong to both the
production
and thedevelopment
environments:
$ kubectl get pods -l 'env in (production, development)'
Annotations
With Annotations, we can attach arbitrary, non-identifying metadata to objects, in a key-value format:
"annotations": { "key1" : "value1", "key2" : "value2" }
The metadata in an annotation can be small or large, structured or unstructured, and can include characters not permitted by labels.
In contrast to Labels, annotations are not used to identify and select objects. Annotations can be used to:
- Store build/release IDs, which git branch, etc.
- Phone numbers of persons responsible or directory entries specifying where such information can be found
- Pointers to logging, monitoring, analytics, audit repositories, debugging tools, etc.
- Etc.
For example, while creating a Deployment, we can add a description like the one below:
apiVersion: extensions/v1beta1 kind: Deployment metadata: name: webserver annotations: description: Deployment based PoC dates 12 January 2018 .... ....
We can look at annotations while describing an object:
$ kubectl describe deployment webserver Name: webserver Namespace: default CreationTimestamp: Fri, 12 Jan 2018 13:18:23 -0800 Labels: app=webserver Annotations: deployment.kubernetes.io/revision=1 description=Deployment based PoC dates 12 January 2018 ... ...
Jobs
A Job creates one or more pods and ensures that a specified number of them successfully terminate. As pods successfully complete, the Job tracks the successful completions. When a specified number of successful completions is reached, the Job itself is complete. Deleting a Job will cleanup the pods it created.
A simple case is to create one Job object in order to reliably run one Pod to completion. The Job object will start a new Pod if the first Pod fails or is deleted (for example due to a node hardware failure or a node reboot).
A Job can also be used to run multiple Pods in parallel.
- Example
- Here is an example Job config. It computes π to 2000 places and prints it out. It takes around 10s to complete.
apiVersion: batch/v1 kind: Job metadata: name: pi spec: template: spec: containers: - name: pi image: perl command: ["perl", "-Mbignum=bpi", "-wle", "print bpi(2000)"] restartPolicy: Never backoffLimit: 4
$ kubctl create -f ./job-pi.yml job "pi" created $ kubectl describe jobs/pi
Name: pi Namespace: default Selector: controller-uid=19aa42d0-f7df-11e7-8370-08002721601f Labels: controller-uid=19aa42d0-f7df-11e7-8370-08002721601f job-name=pi Annotations: <none> Parallelism: 1 Completions: 1 Start Time: Fri, 12 Jan 2018 13:25:23 -0800 Pods Statuses: 1 Running / 0 Succeeded / 0 Failed Pod Template: Labels: controller-uid=19aa42d0-f7df-11e7-8370-08002721601f job-name=pi Containers: pi: Image: perl Port: <none> Command: perl -Mbignum=bpi -wle print bpi(2000) Environment: <none> Mounts: <none> Volumes: <none> Events: Type Reason Age From Message ---- ------ ---- ---- ------- Normal SuccessfulCreate 8s job-controller Created pod: pi-rfvvw
$ pods=$(kubectl get pods --show-all --selector=job-name=pi --output=jsonpath={.items..metadata.name}) $ echo $pods pi-rfvvw $ kubectl logs ${pods} 3.1415926535897932384626433832795028841971693...
- Cron Jobs
Support for creating Jobs at specified times/dates (i.e. cron) is available in Kubernetes 1.4. See here for details.
Here is an example Cron Job. Every minute, it runs a simple job to print current time and then say hello:
$ cat << EOF >cronjob.yml apiVersion: batch/v1beta1 kind: CronJob metadata: name: hello spec: schedule: "*/1 * * * *" jobTemplate: spec: template: spec: containers: - name: hello image: busybox args: - /bin/sh - -c - date; echo Hello from the Kubernetes cluster restartPolicy: OnFailure EOF $ kubectl create -f cronjob.yml cronjob "hello" created $ kubectl get cronjob hello NAME SCHEDULE SUSPEND ACTIVE LAST SCHEDULE AGE hello */1 * * * * False 0 <none> 11s $ kubectl get jobs --watch NAME DESIRED SUCCESSFUL AGE hello-1515793140 1 1 7s $ kubectl get cronjob hello NAME SCHEDULE SUSPEND ACTIVE LAST SCHEDULE AGE hello */1 * * * * False 0 22s 48s $ pods=$(kubectl get pods -a --selector=job-name=hello-1515793140 --output=jsonpath={.items..metadata.name}) $ echo $pods hello-1515793140-plp8g $ kubectl logs $pods Fri Jan 12 21:39:07 UTC 2018 Hello from the Kubernetes cluster $ kubectl delete cronjob hello
Quota Management
When there are many users sharing a given Kubernetes cluster, there is always a concern for fair usage. To address this concern, administrators can use the ResourceQuota object, which provides constraints that limit aggregate resource consumption per Namespace.
We can have the following types of quotas per Namespace:
- Compute Resource Quota: We can limit the total sum of compute resources (CPU, memory, etc.) that can be requested in a given Namespace.
- Storage Resource Quota: We can limit the total sum of storage resources (PersistentVolumeClaims, requests.storage, etc.) that can be requested.
- Object Count Quota: We can restrict the number of objects of a given type (pods, ConfigMaps, PersistentVolumeClaims, ReplicationControllers, Services, Secrets, etc.).
Daemon Sets
In some cases, like collecting monitoring data from all nodes, or running a storage daemon on all nodes, etc., we need a specific type of Pod running on all nodes at all times. A DaemonSet is the object that allows us to do just that.
Whenever a node is added to the cluster, a Pod from a given DaemonSet is created on it. When the node dies, the respective Pods are garbage collected. If a DaemonSet is deleted, all Pods it created are deleted as well.
Example DaemonSet:
kind: DaemonSet apiVersion: apps/v1 metadata: name: pause-ds spec: selector: matchLabels: quiet: "pod" template: metadata: labels: quiet: pod spec: tolerations: - key: node-role.kubernetes.io/master effect: NoSchedule containers: - name: pause-container image: k8s.gcr.io/pause:2.0
Stateful Sets
The StatefulSet controller is used for applications which require a unique identity, such as name, network identifications, strict ordering, etc. For example, MySQL cluster, etcd cluster.
The StatefulSet controller provides identity and guaranteed ordering of deployment and scaling to Pods.
Note: Before Kubernetes 1.5, the StatefulSet controller was referred to as PetSet.
Role Based Access Control (RBAC)
Role-based access control (RBAC) is an authorization mechanism for managing permissions around Kubernetes resources.
Using the RBAC API, we define a role which contains a set of additive permissions. Within a Namespace, a role is defined using the Role object. For a cluster-wide role, we need to use the ClusterRole object.
Once the roles are defined, we can bind them to a user or a set of users using RoleBinding and ClusterRoleBinding.
Federation
With the Kubernetes Cluster Federation we can manage multiple Kubernetes clusters from a single control plane. We can sync resources across the clusters, and have cross cluster discovery. This allows us to do Deployments across regions and access them using a global DNS record.
Federation is very useful when we want to build a hybrid solution, in which we can have one cluster running inside our private datacenter and another one on the public cloud. We can also assign weights for each cluster in the Federation, to distribute the load as per our choice.
Helm
To deploy an application, we use different Kubernetes manifests, such as Deployments, Services, Volume Claims, Ingress, etc. Sometimes, it can be tiresome to deploy them one by one. We can bundle all those manifests after templatizing them into a well-defined format, along with other metadata. Such a bundle is referred to as Chart. These Charts can then be served via repositories, such as those that we have for rpm and deb packages.
Helm is a package manager (analogous to yum and apt) for Kubernetes, which can install/update/delete those Charts in the Kubernetes cluster.
Helm has two components:
- A client called helm, which runs on your user's workstation; and
- A server called tiller, which runs inside your Kubernetes cluster.
The client helm connects to the server tiller to manage Charts. Charts submitted for Kubernetes are available here.
Monitoring and logging
In Kubernetes, we have to collect resource usage data by Pods, Services, nodes, etc, to understand the overall resource consumption and to take decisions for scaling a given application. Two popular Kubernetes monitoring solutions are Heapster and Prometheus.
Heapster is a cluster-wide aggregator of monitoring and event data, which is natively supported on Kubernetes.
Prometheus, now part of CNCF (Cloud Native Computing Foundation), can also be used to scrape the resource usage from different Kubernetes components and objects. Using its client libraries, we can also instrument the code of our application.
Another important aspect for troubleshooting and debugging is Logging, in which we collect the logs from different components of a given system. In Kubernetes, we can collect logs from different cluster components, objects, nodes, etc. The most common way to collect the logs is using Elasticsearch, which uses fluentd with custom configuration as an agent on the nodes. fluentd is an open source data collector, which is also part of CNCF.
cAdvisor is an open source container resource usage and performance analysis agent. It auto-discovers all containers on a node and collects CPU, memory, file system, and network usage statistics. It provides overall machine usage by analyzing the "root" container on the machine. It exposes a simple UI for local containers on port 4194.
Security
Configure network policies
A Network Policy is a specification of how groups of pods are allowed to communicate with each other and other network endpoints.
NetworkPolicy resources use labels to select pods and define rules which specify what traffic is allowed to the selected pods.
- Specification of how groups of pods may communicate
- Use labels to select pods and define rules
- Implemented by the network plugin
- Pods are non-isolated by default
- Pods are isolated when a Network Policy selects them
- Example NetworkPolicy
Create a "default" isolation policy for a namespace by creating a NetworkPolicy that selects all pods but does not allow any ingress traffic to those pods:
apiVersion: networking.k8s.io/v1 kind: NetworkPolicy metadata: name: default-deny spec: podSelector: {} policyTypes: - Ingress
TLS certificates for cluster components
Get easy-rsa.
$ ./easyrsa init-pki $ MASTER_IP=10.100.1.2 $ ./easyrsa --batch "--req-cn=${MASTER_IP}@`date +%s`" build-ca nopass
$ cat rsa-request.sh
#!/bin/bash ./easyrsa --subject-alt-name="IP:${MASTER_IP}," \ "DNS:kubernetes," \ "DNS:kubernetes.default," \ "DNS:kubernetes.default.svc," \ "DNS:kubernetes.default.svc.cluster," \ "DNS:kubernetes.default.svc.cluster.local" \ --days=10000 \ build-server-full server nopass
pki/ ├── ca.crt ├── certs_by_serial │ └── F3A6F7D34BC84330E7375FA20C8441DF.pem ├── index.txt ├── index.txt.attr ├── index.txt.old ├── issued │ └── server.crt ├── private │ ├── ca.key │ └── server.key ├── reqs │ └── server.req ├── serial └── serial.old
- Figure out what are the paths of the old TLS certs/keys with the following command:
$ ps aux | grep [a]piserver | sed -n -e 's/^.*\(kube-apiserver \)/\1/p' | tr ' ' '\n' kube-apiserver --admission-control=Initializers,NamespaceLifecycle,LimitRanger,ServiceAccount,DefaultStorageClass,DefaultTolerationSeconds,NodeRestriction,ResourceQuota --requestheader-extra-headers-prefix=X-Remote-Extra- --advertise-address=172.31.118.138 --kubelet-client-certificate=/etc/kubernetes/pki/apiserver-kubelet-client.crt --requestheader-client-ca-file=/etc/kubernetes/pki/front-proxy-ca.crt --requestheader-username-headers=X-Remote-User --service-cluster-ip-range=10.96.0.0/12 --kubelet-client-key=/etc/kubernetes/pki/apiserver-kubelet-client.key --secure-port=6443 --proxy-client-key-file=/etc/kubernetes/pki/front-proxy-client.key --kubelet-preferred-address-types=InternalIP,ExternalIP,Hostname --requestheader-group-headers=X-Remote-Group --requestheader-allowed-names=front-proxy-client --service-account-key-file=/etc/kubernetes/pki/sa.pub --insecure-port=0 --enable-bootstrap-token-auth=true --allow-privileged=true --client-ca-file=/etc/kubernetes/pki/ca.crt --tls-cert-file=/etc/kubernetes/pki/apiserver.crt --tls-private-key-file=/etc/kubernetes/pki/apiserver.key --proxy-client-cert-file=/etc/kubernetes/pki/front-proxy-client.crt --authorization-mode=Node,RBAC --etcd-servers=http://127.0.0.1:2379
Security Contexts
A Security Context defines privilege and access control settings for a Pod or Container. Security context settings include:
- Discretionary Access Control: Permission to access an object, like a file, is based on user ID (UID) and group ID (GID).
- Security Enhanced Linux (SELinux): Objects are assigned security labels.
- Running as privileged or unprivileged.
- Linux Capabilities: Give a process some privileges, but not all the privileges of the root user.
- AppArmor: Use program profiles to restrict the capabilities of individual programs.
- Seccomp: Limit a process's access to open file descriptors.
- AllowPrivilegeEscalation: Controls whether a process can gain more privileges than its parent process. This boolean directly controls whether the
no_new_privs
flag gets set on the container process.AllowPrivilegeEscalation
is true always when the container is: 1) run as Privileged; or 2) hasCAP_SYS_ADMIN
.
- Example #1
apiVersion: v1 kind: Pod metadata: name: security-context-demo spec: securityContext: runAsUser: 1000 fsGroup: 2000 volumes: - name: sec-ctx-vol emptyDir: {} containers: - name: sec-ctx-demo image: gcr.io/google-samples/node-hello:1.0 volumeMounts: - name: sec-ctx-vol mountPath: /data/demo securityContext: allowPrivilegeEscalation: false
Taints and tolerations
Node affinity is a property of pods that attracts them to a set of nodes (either as a preference or a hard requirement). Taints are the opposite – they allow a node to repel a set of pods.
Taints and tolerations work together to ensure that pods are not scheduled onto inappropriate nodes. One or more taints are applied to a node; this marks the node such that the node should not accept any pods that do not tolerate the taints. Tolerations are applied to pods, and allow (but do not require) the pods to schedule onto nodes with matching taints.
Kubernetes inbound node port requirements
- Master node(s)
- TCP 6443 — Kubernetes API Server
- TCP 2379-2380 — etcd server client API
- TCP 10250 — Kubelet API
- TCP 10251 — kube-scheduler
- TCP 10252 — kube-controller-manager
- TCP 10255 — Read-only Kubelet API
- Worker nodes
- TCP 10250 — Kubelet API
- TCP 10255 — Read-only Kubelet API
- TCP 30000-32767 — NodePort Services
API versions
Below is a table showing which value to use for the apiVersion
key for a given k8s primitive (note: all values are for k8s 1.8.0, unless otherwise specified):
Primitive | apiVersion |
---|---|
Pod | v1 |
Deployment | apps/v1beta2 |
Service | v1 |
Job | batch/v1 |
Ingress | extensions/v1beta1 |
CronJob | batch/v1beta1 |
ConfigMap | v1 |
DaemonSet | apps/v1 |
ReplicaSet | apps/v1beta2 |
You can get a list of all of the API versions supported by your k8s install with:
$ kubectl api-versions
Miscellaneous commands
- Create an Nginx deployment with three replicas without using YAML:
$ kubectl run nginx --image=nginx --replicas=3
- Take a node out of service for maintenance:
$ kubectl cordon k8s.worker1.local $ kubectl drain k8s.worker1.local --ignore-daemonsets
- Return a given node to a service after cordoning and "draining" it (e.g., after a maintenance):
$ kubectl uncordon k8s.worker1.local
- Get a list of nodes in a format useful for scripting:
$ kubectl get nodes -o json | jq -crM '.items[].metadata.name' #~OR~ (if using an older version of `jq`) $ kubectl get nodes -o json | jq '.items[].metadata.name' | tr -d '"'
- Get a random node:
$ NODES=($(kubectl get nodes -o json | jq -crM '.items[].metadata.name')) $ NUMNODES=${#NODES[@]} $ echo ${NODES[$[ $RANDOM % $NUMNODES ]]}
- Get all recent events sorted by their timestamps:
$ kubectl get events --sort-by='.metadata.creationTimestamp'
- Get a list of all Pods in the default namespace sorted by Node:
$ kubectl get po -o wide --sort-by=.spec.nodeName
- Get the cluster IP for a service named "foo":
$ kubectl get svc/foo -o jsonpath='{.spec.clusterIP}'
- List all Services in a cluster and their node ports:
$ kubectl get --all-namespaces svc -o json |\ jq -r '.items[] | [.metadata.name,([.spec.ports[].nodePort | tostring ] | join("|"))] | @csv'
- Print just the Pod names of those Pods with the label
app=nginx
:
$ kubectl get --no-headers=true pods -l app=nginx -o custom-columns=:metadata.name #~OR~ $ kubectl get pods -l app=nginx -o go-template --template '{{range .items}}{{.metadata.name}}{{"\n"}}{{end}}' #~OR~ $ kubectl get --no-headers=true pods -l app=nginx -o name | awk -F "/" '{print $2}' #~OR~ $ kubectl get pods -l app=nginx -o jsonpath='{.items[*].metadata.name}' #~OR~ $ kubectl get pods -l app=nginx -o json | jq -crM '.items [] | .metadata.name'
Miscellaneous examples
- Testing the load balancing capabilities of a Service
- Create a Deployment with two replicas of Nginx (i.e., 2 x Pods with identical containers, configuration, etc.):
$ cat << EOF >nginx-deploy.yml kind: Deployment apiVersion: apps/v1 metadata: name: nginx-deploy spec: replicas: 2 selector: matchLabels: app: nginx template: metadata: labels: app: nginx spec: containers: - name: nginx image: nginx:1.7.9 ports: - containerPort: 80 EOF
$ kubectl create --validate -f nginx-deploy.yml $ kubectl get deploy NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE nginx-deploy 2 2 2 2 1h $ kubectl get po NAME READY STATUS RESTARTS AGE nginx-deploy-8d68fb6cc-bspt8 1/1 Running 1 1h nginx-deploy-8d68fb6cc-qdvhg 1/1 Running 1 1h
- Create a Service:
$ cat << EOF >nginx-svc.yml kind: Service apiVersion: v1 metadata: name: nginx-svc spec: ports: - port: 8080 targetPort: 80 protocol: TCP selector: app: nginx EOF
$ kubectl create --validate -f nginx-svc.yml $ kubectl get svc/nginx-svc NAME TYPE CLUSTER-IP EXTERNAL-IP PORT(S) AGE nginx-svc ClusterIP 10.101.133.100 <none> 8080/TCP 1h
- Overwrite the default index.html file (note: This is not persistent. The original default index.html file will be restored if the Pod fails the the Deployment brings up a new Pod and/or if you modify your Deployment {e.g., upgrade Nginx}. This is just for demonstration purposes):
$ kubectl exec -it nginx-8d68fb6cc-bspt8 -- sh -c 'echo "pod-01" > /usr/share/nginx/html/index.html' $ kubectl exec -it nginx-8d68fb6cc-qdvhg -- sh -c 'echo "pod-02" > /usr/share/nginx/html/index.html'
- Get the HTTP status code and server value from the header of a request to the Service endpoint:
$ curl -Is 10.101.133.100:8080 | grep -E '^HTTP|Server' HTTP/1.1 200 OK Server: nginx/1.7.9 # <- This is the version of Nginx we defined in the Deployment above
- Perform a GET request on the Service endpoint (ClusterIP+Port):
$ for i in $(seq 1 10); do curl -s 10.101.133.100:8080; done pod-02 pod-01 pod-02 pod-02 pod-02 pod-01 pod-02 pod-02 pod-02 pod-02
Sometimes pod-01
responded; sometimes pod-02
responded.
- Perform a GET on the Service endpoint 10,000 times and sum up which Pod responded for each request:
$ time for i in $(seq 1 10000); do curl -s 10.101.133.100:8080; done | sort | uniq -c 5018 pod-01 # <- number of times pod-01 responded to the request 4982 pod-02 # <- number of times pod-02 responded to the request real 1m0.639s user 0m29.808s sys 0m11.692s
$ awk 'BEGIN{print 5018/(5018+4982);}' 0.5018 $ awk 'BEGIN{print 4982/(5018+4982);}' 0.4982
So, our Service is "load balancing" our two Nginx Pods in a roughly 50/50 fashion.
Example YAML files
- Basic Pod using busybox:
apiVersion: v1 kind: Pod metadata: name: busybox namespace: default spec: containers: - name: busybox image: busybox command: - sleep - "3600" imagePullPolicy: IfNotPresent restartPolicy: Always
- Basic Pod using alpine:
kind: Pod apiVersion: v1 metadata: name: alpine namespace: default spec: containers: - name: alpine image: alpine command: - /bin/sh - "-c" - "sleep 60m" imagePullPolicy: IfNotPresent restartPolicy: Always
- Basic Pod running Nginx:
apiVersion: v1 kind: Pod metadata: name: nginx-pod spec: containers: - name: nginx image: nginx restartPolicy: Always
- Create a Job that calculates pi up to 2000 decimal places:
apiVersion: batch/v1 kind: Job metadata: name: pi spec: template: spec: containers: - name: pi image: perl command: ["perl", "-Mbignum=bpi", "-wle", "print bpi(2000)"] restartPolicy: Never backoffLimit: 4
- Create a Deployment with two replicas of Nginx running:
apiVersion: apps/v1beta2 kind: Deployment metadata: name: nginx-deployment spec: selector: matchLabels: app: nginx replicas: 2 template: metadata: labels: app: nginx spec: containers: - name: nginx image: nginx:1.9.1 ports: - containerPort: 80
- Create a basic Persistent Volume, which uses NFS:
apiVersion: v1 kind: PersistentVolume metadata: name: mypv spec: capacity: storage: 1Gi volumeMode: Filesystem accessModes: - ReadWriteMany persistentVolumeReclaimPolicy: Recycle nfs: path: /var/nfs/general server: 172.31.119.58 readOnly: false
- Create a Persistent Volume Claim against the above PV:
apiVersion: v1 kind: PersistentVolumeClaim metadata: name: nfs-pvc spec: accessModes: - ReadWriteMany resources: requests: storage: 1Gi
Install k8s cluster manually in the Cloud
Note: For this example, I will assume you are using two AWS EC2 instances with `kubeadm` and `kubectl` already installed.
K8s requires a pod network to function. We are going to use Flannel, so we need to pass in a flag to the deployment script so k8s knows how to configure itself:
$ sudo kubeadm init --pod-network-cidr=10.244.0.0/16
Note: This command might take a fair amount of time to complete.
Once it has completed, make note of the "join" command output by kubeadm init
that looks something like the following:
kubeadm join --token --discovery-token-ca-cert-hash sha256:
You will run that command on the other node (aka the "Worker Node") to allow it to join the cluster. However, do not run that command on the worker node until you have completed all of the following steps.
- Create a directory:
$ mkdir -p $HOME/.kube
- Copy the configuration files to a location usable by the local user:
$ sudo cp -i /etc/kubernetes/admin.conf $HOME/.kube/config $ sudo chown $(id -u):$(id -g) $HOME/.kube/config
- In order for your pods to communicate with one another, you will need to install pod networking. We are going to use Flannel for our Container Network Interface (CNI) because it is easy to install and reliable.
$ kubectl apply -f https://raw.githubusercontent.com/coreos/flannel/v0.9.1/Documentation/kube-flannel.yml
- Make sure everything is coming up properly.
$ kubectl get pods --all-namespaces --watch
Once the kube-dns-xxxx
containers are up (i.e., in Status "Running"), your cluster is ready to accept worker nodes.
- On the Worker node, run the
sudo kube join
command.
- On the Master Node, run the following command:
$ kubectl get nodes --watch
Once the Status of the Worker Node returns "Ready" your k8s cluster is ready to use.
Bash completion
Note: The following only works on newer versions. I have tested that this works on version 1.9.1.
Add the following line to your ~/.bashrc
file:
source <(kubectl completion bash)
External links
- Official website
- Kubernetes code — via GitHub
Playgrounds
Tools
- minikube — Run Kubernetes locally
- kops — Kubernetes Operations (kops) - Production Grade K8s Installation, Upgrades, and Management
- kube-aws — a command-line tool to create/update/destroy Kubernetes clusters on AWS
- kubespray — Deploy a production ready kubernetes cluster
- Rook.io — File, Block, and Object Storage Services for your Cloud-Native Environments
Resources
Training
- Kubernetes Fundamentals (LFS258)
- Certified Kubernetes Administrator (PKA) certification.
Blog posts
- Understanding kubernetes networking: pods — by Mark Betz, 2017-12-17
- Understanding kubernetes networking: services — by Mark Betz, 2017-12-17
- Understanding kubernetes networking: ingress — by Mark Betz, 2017-12-17
- Kubernetes ConfigMaps and Secrets - Part 1 — by Sandeep Dinesh, 2017-07-13
- Kubernetes ConfigMaps and Secrets - Part 2 — by Sandeep Dinesh, 2017-08-08
- 10 open-source Kubernetes tools for highly effective SRE and Ops Teams
- Series of blog posts about k8s — by Ian Lewis