Installing Release on GCP GKE
This section describes how to install the Release application on GCP GKE.
Audience
This guide is intended for administrators with cluster administrator credentials who are responsible for application deployment.
Before You Begin
The following are the prerequisites required to install Deploy using Kubernetes Operator installer:
- Docker version 17.03 or later
- The
kubectl
command-line tool - Access to a Kubernetes cluster version 1.19 or later
- Kubernetes cluster configuration
Keycloak as the Default Authentication Manager for Release
- Keycloak is the default authentication manager with Release 22.1 and later.
- This is defined by the
spec.keycloak.install
parameter that is set totrue
by default in thedairelease_cr.yaml
file. - If you want to disable Keycloak as the default authentication manager for Digitial.ai Release, set the
spec.keycloak.install
parameter tofalse
. - After you disable the Keycloak authentication, the default login credentials (
admin/admin
) will be applicable when you log in to the Digital.ai Release interface. - For more information about how to configure Keycloak for Kubernetes Operator-based Installer for Release, see Keycloak Configuration for Kubernetes Operator Installer.
Step 1—Create a Folder for Installation Tasks
Create a folder on your workstation from where you will execute the installation tasks, for example, ReleaseInstallation.
Step 2—Download the Operator ZIP
- Download the release-operator-gcp-gke-22.2.0.zip file from the Release Software Distribution site.
- Extract the ZIP file to the ReleaseInstallation folder.
Step 3—Update the GCP GKE Cluster Resource Files
To deploy the Deploy application on the Kubernetes cluster, update the infrastructure.yaml
file parameters (Infrastructure File Parameters) in DeployInstallation folder with the parameters corresponding to the kubeconfig
file (GCP GKE Kubernetes Cluster Configuration File Parameters) as described in the table below. You can find the Kubernetes cluster information in the default location ~/.kube/config
. Ensure the location of the kubeconfig
configuration file is your home directory.
Note: The deployment will not proceed further if the infrastructure.yaml
is updated with wrong details.
Infrastructure File Parameters | GCP GKE Kubernetes Cluster Configuration File Parameters | Steps to Follow |
---|---|---|
apiServerURL | server | Enter the server details of the cluster. |
caCert | certificate-authority-data | Before updating the parameter value, decode to base 64 format. |
token | access token | Enter the access token details. |
Step 4—Update the Daideploy_Cr.Yaml
File with the License and Keystore Details
-
Run the following command to get the storage class list:
kubectl get sc
-
Convert the Release license and the repository keystore files to the base 64 format.
-
Run the following commands:
- To convert the xlrLicense into base 64 format, run:
cat <License.lic> | base64 -w 0
- To convert
RepositoryKeystore
to base64 format, run:cat <keystore.jks> | base64 -w 0
The above commands are for Linux-based systems. For Windows, there is no built-in command to directly perform Base64 encoding and decoding. But you can use the built-in command certutil -encode/-decode
to indirectly perform Base64 encoding and decoding.
Step 5—Update the Default Digitial.Ai Deploy Custom Resource Definitions
-
Update the mandatory parameters as described in the following table:
For deployments on test environments, you can use most of the parameters with their default values in the daideploy_cr.yaml
file.
Parameter | Description |
---|---|
AdminPassword | Admin password for xl-release |
KeystorePassphrase | The passphrase for the RepositoryKeystore. |
Persistence.StorageClass | The storage class that must be defined as GKE cluster |
RepositoryKeystore | Convert the repository keystore file for Digital.ai Release to the base64 format. |
ingress.hosts | DNS name for accessing UI of Digital.ai Release. |
postgresql.persistence.storageClass | The storage Class that needs to be defined as PostgreSQL |
rabbitmq.persistence.storageClass | The storage class that must be defined as RabbitMQ |
xlrLicense | Release license |
For deployments on production environments, you must configure all the relevant/required parameters for your GCP GKE production setup, in the dairelease_cr.yaml
file. See Default Parameters to know more about the parameters available in the Digital.ai release's dairelease_cr.yaml
file and their default values. You must update the default values for the parameters per your requirements.
To configure the Keycloak parameters for OIDC authentication, see Keycloak Configuration for Kubernetes Operator Installer.
-
Update the relevant/required parameters for your GCP GKE production setup in the
dairelease_cr.yaml
file. See Default Parameters.If you want to use your own database, refer Using Existing DB topic, and update the
daideploy_cr.yaml
file. For information on how to configure SSL/TLS with Digital.ai Release, see Configuring SSL/TLS.
Step 6—Download and Set up the Xl Cli
Check following link for details: Install the XL-CLI
Note: Use the version that matches your product version in the public folder.
Step 7—Set up the Namespace
You can use any namespace for the installation. By default, digitalai namespace is used.
First you need to create namespace, replace digitalai
with your custom name if you would like to use some other name:
kubectl create namespace digitalai
In case you are not using digitalai
as namespace or if you would like to install multiple release instances on the same cluster you need to use custom namespace setup.
Got to the following document to see how to install the release operator to use custom namespace.
Step 8—Set up the Digital.Ai Deploy Container Instance
-
Run the following command to download and start the Digital.ai Deploy instance:
Note: A local instance of Digital.ai Deploy is used to automate the product installation on the Kubernetes cluster.
docker run -d -e "ADMIN_PASSWORD=admin" -e "ACCEPT_EULA=Y" -p 4516:4516 --name xld xebialabs/xl-deploy:22.2.0
Note: Before running the command check if there is already running docker containers with name
xld
or the same port withdocker ps
command. Stop and delete the container with commands, for example with namexld
:docker stop xld; doecker rm xld
. -
Wait Deploy has started and access the Deploy interface, go to:
http://<host IP address>:4516/
Step 9—Start the Deployment
Go to the release-operator-gcp-gke
folder of the extracted ZIP file and run the following command:
xl apply -v -f digital-ai.yaml
Step 10—Verify the Deployment Status
-
Check the deployment job completion using XL CLI.
The deployment job starts the execution of various tasks as defined in thedigital-ai.yaml
file in a sequential manner. If you encounter an execution error while running the scripts, the system displays error messages. The average time to complete the job is around 10 minutes.Note: The runtime depends on the environment.
To troubleshoot runtime errors, see Troubleshooting Operator Based Installer.
Verify the deployment succeeded, do one of the following:
-
Open the local Deploy application, go to the Explorer tab, and from Library, click Monitoring > Deployment tasks
-
Run the following command in a terminal or command prompt:
Step 11—Perform Sanity Checks
Open the Release application and perform the required deployment sanity checks.
Configure the User Permissions
- After the installation, you must configure the user permissions for OIDC authentication using Keycloak.
- For more information about how to configure the user permissions, see Keycloak Configuration for Kubernetes Operator Installer.
- If you need to update some of the default properties, see apply changes in the CR.