Install existing applications with Helm in Azure Kubernetes Service (AKS)
Raksts
Helm is an open-source packaging tool that helps you install and manage the lifecycle of Kubernetes applications. Similar to Linux package managers, such as APT and Yum, you can use Helm to manage Kubernetes charts, which are packages of preconfigured Kubernetes resources.
This article shows you how to configure and use Helm in a Kubernetes cluster on Azure Kubernetes Service (AKS).
You also need the Helm CLI installed, which is the client that runs on your development system. It allows you to start, stop, and manage applications with Helm. If you use the Azure Cloud Shell, the Helm CLI is already installed. For installation instructions on your local platform, see Installing Helm.
Svarīgi
Helm is intended to run on Linux nodes. If you have Windows Server nodes in your cluster, you must ensure that Helm pods are only scheduled to run on Linux nodes. You also need to ensure that any Helm charts you install are also scheduled to run on the correct nodes. The commands in this article use node-selectors to make sure pods are scheduled to the correct nodes, but not all Helm charts may expose a node selector. You can also consider using other options on your cluster, such as taints.
Verify your version of Helm
Use the helm version command to verify you have Helm 3 installed.
Console
helm version
The following example output shows Helm version 3.0.0 installed:
The following example output shows a successful repo update:
Output
Hang tight while we grab the latest from your chart repositories...
...Successfully got an update from the "ingress-nginx" chart repository
Update Complete. ⎈ Happy Helming!⎈
Install Helm charts using the helm install command and specify a release name and the name of the chart to install.
Padoms
The following example creates a Kubernetes namespace for the ingress resources named ingress-basic and is intended to work within that namespace. Specify a namespace for your own environment as needed.
The following condensed example output shows the deployment status of the Kubernetes resources created by the Helm chart:
Output
NAME: nginx-ingress
LAST DEPLOYED: Wed Jul 28 11:35:29 2021
NAMESPACE: ingress-basic
STATUS: deployed
REVISION: 1
TEST SUITE: None
NOTES:
The ingress-nginx controller has been installed.
It may take a few minutes for the LoadBalancer IP to be available.
You can watch the status by running 'kubectl --namespace ingress-basic get services -o wide -w nginx-ingress-ingress-nginx-controller'
...
Get the EXTERNAL-IP of your service using the kubectl get services command.
Console
kubectl --namespace ingress-basic get services -o wide -w ingress-nginx-ingress-nginx-controller
The following example output shows the EXTERNAL-IP for the ingress-nginx-ingress-nginx-controller service:
Output
NAME TYPE CLUSTER-IP EXTERNAL-IP PORT(S) AGE SELECTOR
nginx-ingress-ingress-nginx-controller LoadBalancer 10.0.254.93 <EXTERNAL_IP> 80:30004/TCP,443:30348/TCP 61s app.kubernetes.io/component=controller,app.kubernetes.io/instance=nginx-ingress,app.kubernetes.io/name=ingress-nginx
List releases
Get a list of releases installed on your cluster using the helm list command.
Console
helm list --namespace ingress-basic
The following example output shows the ingress-nginx release deployed in the previous step:
Output
NAME NAMESPACE REVISION UPDATED STATUS CHART APP VERSION
ingress-nginx ingress-basic 1 2021-07-28 11:35:29.9623734 -0500 CDT deployed ingress-nginx-3.34.0 0.47.0
Clean up resources
Deploying a Helm chart creates Kubernetes resources like pods, deployments, and services.
Clean up resources using the helm uninstall command and specify your release name.
Šī satura avotu var atrast vietnē GitHub, kur varat arī izveidot un pārskatīt problēmas un atgādāšanas pieprasījumus. Lai iegūtu papildinformāciju, skatiet mūsu līdzstrādnieku rokasgrāmatu.
Azure Kubernetes Service atsauksmes
Azure Kubernetes Service ir atklātā pirmkoda projekts. Atlasiet saiti, lai sniegtu atsauksmes:
Pievienojieties meetup sērijai, lai kopā ar citiem izstrādātājiem un ekspertiem izveidotu mērogojamus AI risinājumus, kuru pamatā ir reālas lietošanas gadījumi.