Provision a GKE cluster (Google Cloud)
The Google Kubernetes Engine (GKE) is a fully managed Kubernetes service for deploying, managing, and scaling containerized applications on Google Cloud.
In this tutorial, you will deploy a 2-node separately managed node pool GKE cluster using Terraform. This GKE cluster will be distributed across multiple zones for high availability.
Then, you will configure kubectl
using Terraform output to deploy a Kubernetes dashboard on the cluster.
Warning! Google Cloud charges about ten cents per hour management fee for each GKE cluster, in addition to the cluster's resource costs. One zonal cluster per billing account is free. As a result, you may be charged to run these examples. The most you should be charged should only be a few dollars, but we're not responsible for any charges that may incur.
Tip
This example configuration provisions a GKE cluster with 2 nodes so it's under the default IN_USE_ADDRESSES
quota. This configuration should be used as a learning exercise only — do not run a 2-node cluster in production.
Why deploy with Terraform?
While you could use the built-in GCP provisioning processes (UI, SDK/CLI) for GKE clusters, Terraform provides you with several benefits:
Unified Workflow - If you are already deploying infrastructure to Google Cloud with Terraform, your GKE cluster can fit into that workflow. You can also deploy applications into your GKE cluster using Terraform.
Full Lifecycle Management - Terraform doesn't only create resources, it updates, and deletes tracked resources without requiring you to inspect the API to identify those resources.
Graph of Relationships - Terraform understands dependency relationships between resources. For example, if you require a separately managed node pool, Terraform won't attempt to create the node pool if the GKE cluster failed to create.
Prerequisites
The tutorial assumes some basic familiarity with Kubernetes and kubectl
but does
not assume any pre-existing deployment.
It also assumes that you are familiar with the usual Terraform plan/apply workflow. If you're new to Terraform itself, refer first to the Getting Started tutorial.
For this tutorial, you will need
- a GCP account
- a configured gcloud SDK
kubectl
In order for Terraform to run operations on your behalf, you must install and
configure the gcloud
SDK tool. To install the gcloud
SDK, follow
these instructions or choose a package manager based on your operating system.
You can also use the package manager homebrew
to install the gcloud SDK.
$ brew install --cask google-cloud-sdk
After you've installed the gcloud
SDK, initialize it by running the following
command.
$ gcloud init
This will authorize the SDK to access GCP using your user account credentials and add the SDK to your PATH. This steps requires you to login and select the project you want to work in. Finally, add your account to the Application Default Credentials (ADC). This will allow Terraform to access these credentials to provision resources on GCloud.
$ gcloud auth application-default login
Set up and initialize your Terraform workspace
In your terminal, clone the following repository. It contains the example configuration used in this tutorial.
$ git clone https://github.com/hashicorp-education/learn-terraform-provision-gke-cluster
You can explore this repository by changing directories or navigating in your UI.
$ cd learn-terraform-provision-gke-cluster
In here, you will find four files used to provision a VPC, subnets and a GKE cluster.
vpc.tf
provisions a VPC and subnet. A new VPC is created for this tutorial so it doesn't impact your existing cloud environment and resources. This file outputsregion
.gke.tf
provisions a GKE cluster and a separately managed node pool (recommended). Separately managed node pools allows you to customize your Kubernetes cluster profile — this is useful if some Pods require more resources than others. You can learn more here. The number of nodes in the node pool is defined also defined here.terraform.tfvars
is a template for theproject_id
andregion
variables.versions.tf
sets the Terraform version to at least 0.14.
Update your terraform.tfvars
file
Replace the values in your terraform.tfvars
file with your project_id
and
region
. Terraform will use these values to target your project when
provisioning your resources. Your terraform.tfvars
file should look like the
following.
# terraform.tfvarsproject_id = "REPLACE_ME"region = "us-central1"
You can find the project your gcloud
is configured to with this command.
$ gcloud config get-value project
The region has been defaulted to us-central1
; you can find a full list of
gcloud regions here.
Initialize Terraform workspace
After you have saved your customized variables file, initialize your Terraform
workspace, which will download the provider and initialize it with the values
provided in your terraform.tfvars
file.
$ terraform init Initializing the backend... Initializing provider plugins...- Reusing previous version of hashicorp/google from the dependency lock file- Installing hashicorp/google v4.74.0...- Installed hashicorp/google v4.74.0 (signed by HashiCorp) Terraform has been successfully initialized! You may now begin working with Terraform. Try running "terraform plan" to seeany changes that are required for your infrastructure. All Terraform commandsshould now work. If you ever set or change modules or backend configuration for Terraform,rerun this command to reinitialize your working directory. If you forget, othercommands will detect it and remind you to do so if necessary.
Provision the GKE cluster
NOTE Compute Engine API
and Kubernetes Engine API
are required for terraform apply
to work on this configuration.
Enable both APIs for your Google Cloud project before continuing.
In your initialized directory, run terraform apply
and review the planned actions.
Your terminal output should indicate the plan is running and what resources will be created.
$ terraform applyAn execution plan has been generated and is shown below.Resource actions are indicated with the following symbols: + create Terraform will perform the following actions: ## ... Plan: 4 to add, 0 to change, 0 to destroy. ## ...
You can see this terraform apply will provision a VPC, subnet, GKE Cluster and a
GKE node pool. Confirm the apply with a yes
.
This process should take approximately 10 minutes. Upon successful application,
your terminal prints the outputs defined in vpc.tf
and gke.tf
.
Apply complete! Resources: 4 added, 0 changed, 0 destroyed.Outputs:kubernetes_cluster_host = "35.232.196.187"kubernetes_cluster_name = "dos-terraform-edu-gke"project_id = "dos-terraform-edu"region = "us-central1"
Configure kubectl
Now that you've provisioned your GKE cluster, you need to configure kubectl
.
Run the following command to retrieve the access credentials for your cluster
and automatically configure kubectl
.
$ gcloud container clusters get-credentials $(terraform output -raw kubernetes_cluster_name) --region $(terraform output -raw region)Fetching cluster endpoint and auth data.kubeconfig entry generated for dos-terraform-edu-gke.
The Kubernetes cluster name and region correspond to the output variables showed after the successful Terraform run.
Troubleshooting
You may see the following warning message when you try to retrieve your cluster credentials. This may be because your Kubernetes cluster is still initializing/updating. If this happens, you can still proceed to the next step.
WARNING: cluster dos-terraform-edu-gke is not running. The kubernetes API may not be available.
Deploy and access Kubernetes Dashboard
To verify your cluster is correctly configured and running, you will deploy the Kubernetes dashboard and navigate to it in your local browser.
While you can deploy the Kubernetes dashboard using Terraform, kubectl
is used in this tutorial so you don't need to configure your Terraform Kubernetes Provider.
The following command will schedule the resources necessary for the dashboard.
$ kubectl apply -f https://raw.githubusercontent.com/kubernetes/dashboard/v2.7.0/aio/deploy/recommended.yaml namespace/kubernetes-dashboard createdserviceaccount/kubernetes-dashboard createdservice/kubernetes-dashboard createdsecret/kubernetes-dashboard-certs createdsecret/kubernetes-dashboard-csrf createdsecret/kubernetes-dashboard-key-holder createdconfigmap/kubernetes-dashboard-settings createdrole.rbac.authorization.k8s.io/kubernetes-dashboard createdclusterrole.rbac.authorization.k8s.io/kubernetes-dashboard createdrolebinding.rbac.authorization.k8s.io/kubernetes-dashboard createdclusterrolebinding.rbac.authorization.k8s.io/kubernetes-dashboard createddeployment.apps/kubernetes-dashboard createdservice/dashboard-metrics-scraper createddeployment.apps/dashboard-metrics-scraper created
Now, create a proxy server that will allow you to navigate to the dashboard
from the browser on your local machine. This will continue running until you stop the process by pressing CTRL + C
.
$ kubectl proxy
You should be able to access the Kubernetes dashboard here
(http://127.0.0.1:8001/api/v1/namespaces/kubernetes-dashboard/services/https:kubernetes-dashboard:/proxy/
).
Authenticate to Kubernetes Dashboard
To use the Kubernetes dashboard, you need to create a ClusterRoleBinding
and
provide an authorization token. This gives the cluster-admin
permission to
access the kubernetes-dashboard
.
Authenticating using kubeconfig
is not an option. You can read more about
it in the Kubernetes documentation.
In another terminal (do not close the kubectl proxy
process), create the
ClusterRoleBinding
resource.
$ kubectl apply -f https://raw.githubusercontent.com/hashicorp/learn-terraform-provision-gke-cluster/main/kubernetes-dashboard-admin.rbac.yaml
Then, generate the authorization token.
$ kubectl -n kube-system describe secret $(kubectl -n kube-system get secret | grep service-controller-token | awk '{print $1}') Name: service-controller-token-m8m7jNamespace: kube-systemLabels: <none>Annotations: kubernetes.io/service-account.name: service-controller kubernetes.io/service-account.uid: bc99ddad-6be7-11ea-a3c7-42010a800017 Type: kubernetes.io/service-account-token Data====token: eyJhbGciOiJSUzI1NiIsImtpZCI6IiJ9...ca.crt: 1119 bytesnamespace: 11 bytes
Select "Token" on the Dashboard UI then copy and paste the entire token you receive into the dashboard authentication screen to sign in. You are now signed in to the dashboard for your Kubernetes cluster.
(Optional) GKE nodes and node pool
On the Dashboard UI, click Nodes on the left hand menu.
Notice there are 6 nodes in your cluster, even though
gke_num_nodes
in your gke.tf
file
was set to 2. This is because a node pool was provisioned in each of the three zones
within the region to provide high availability. To see the zones that the cluster deployed each node pool to, run the following
in the learn-terraform-provision-gke-cluster
directory.
$ gcloud container clusters describe $(terraform output -raw kubernetes_cluster_name) --region us-central1 --format='default(locations)'locations:- us-central1-b- us-central1-f- us-central1-c
Clean up your workspace
Congratulations, you have provisioned a GKE cluster with a separated node pool,
configured kubectl
, and deployed the Kubernetes dashboard.
If you'd like to learn how to manage your GKE cluster using the Terraform Kubernetes Provider, leave your cluster running and continue to the Kubernetes provider tutorial.
Note
This directory is only used to provision a GKE cluster with Terraform. By keeping the Terraform configuration for provisioning a Kubernetes cluster and managing a Kubernetes cluster resources separate, changes in one repository don't affect the other. In addition, the modularity makes the configuration more readable and enables you to scope different permissions to each workspace.
If not, remember to destroy any resources you create once you are done with this
tutorial. Run the destroy
command and confirm with yes
in your terminal.
$ terraform destroy
Next steps
For more information on the GKE resource, please visit the Google Cloud provider documentation.
For steps on how to manage Kubernetes resources your GKE cluster or any other already created Kubernetes cluster, visit the Kubernetes provider tutorial.
For a more in-depth Kubernetes example, Deploy Consul and Vault on a Kubernetes Cluster using Run Triggers (this tutorial is GKE based).