Introduction
Kustomize provides a solution to customize the basic configuration and differential configuration of Kubernetes resources without templates. The configuration can be merged or overwritten through file-level YAML configuration with multiple strategies. In Kustomize, users need to know more about the content and location to be changed, For basic YAML with complex recursion too deep, it may not be easy to match Kustomize files through selectors.
In KCL, the user can directly write the configuration that needs to be modified in the corresponding code in the corresponding place, eliminating the cost of reading basic YAML. At the same time, the user can reuse the configuration fragments by code, avoiding massive copying and pasting of YAML configuration. The information density is higher, and it is not easy to make mistakes through KCL.
A classic example of Kustomize multi-environment configuration management is used to explain the differences between Kustomize and KCL in Kubernetes resource configuration management.
Kustomize
Kustomize has the concepts of base
and overlay
. In general, base and overlay are general a directory including a kustomization.yaml
file. One base directory can be used by multiple overlay directories.
We can execute the following command line to obtain a typical Kustomize project
- Create a base directory and create a deployment resource
# Create a directory to hold the base
mkdir base
# Create a base/deployment.yaml
cat <<EOF > base/deployment.yaml
apiVersion: apps/v1
kind: Deployment
metadata:
name: ldap
labels:
app: ldap
spec:
replicas: 1
selector:
matchLabels:
app: ldap
template:
metadata:
labels:
app: ldap
spec:
containers:
- name: ldap
image: osixia/openldap:1.1.11
args: ["--copy-service"]
volumeMounts:
- name: ldap-data
mountPath: /var/lib/ldap
ports:
- containerPort: 389
name: openldap
volumes:
- name: ldap-data
emptyDir: {}
EOF
# Create a base/kustomization.yaml
cat <<EOF > base/kustomization.yaml
resources:
- deployment.yaml
EOF
- Create a directory to hold the prod overlay configuration.
# Create a directory to hold the prod overlay
mkdir prod
# Create a prod/deployment.yaml
cat <<EOF > prod/deployment.yaml
apiVersion: apps/v1
kind: Deployment
metadata:
name: ldap
spec:
replicas: 6
template:
spec:
volumes:
- name: ldap-data
emptyDir: null
gcePersistentDisk:
readOnly: true
pdName: ldap-persistent-storage
EOF
cat <<EOF > prod/kustomization.yaml
resources:
- ../base
patchesStrategicMerge:
- deployment.yaml
EOF
Thus, we can get a basic Kustomize directory
.
├── base
│ ├── deployment.yaml
│ └── kustomization.yaml
└── prod
├── deployment.yaml
└── kustomization.yaml
The base directory stores the basic deployment configuration, and the prod environment stores the deployment configuration that needs to be overwritten. The metadata.name
and other attributes such as spec.template.spec.volumes[0].name
are used to indicate which resource to overwrite
We can display the real deployment configuration of the prod environment through the following command.
kubectl kustomize ./prod
The output is
apiVersion: apps/v1
kind: Deployment
metadata:
labels:
app: ldap
name: ldap
spec:
replicas: 6
selector:
matchLabels:
app: ldap
template:
metadata:
labels:
app: ldap
spec:
containers:
- args:
- --copy-service
image: osixia/openldap:1.1.11
name: ldap
ports:
- containerPort: 389
name: openldap
volumeMounts:
- mountPath: /var/lib/ldap
name: ldap-data
volumes:
- gcePersistentDisk:
pdName: ldap-persistent-storage
readOnly: true
name: ldap-data
We can also directly apply the configuration to the cluster through the following command.
kubectl apply -k ./prod
The output is
deployment.apps/ldap created
KCL
We can write the following KCL code and name it main.k
.
apiVersion = "apps/v1"
kind = "Deployment"
metadata = {
name = "ldap"
labels.app = "ldap"
}
spec = {
replicas = 1
# When env is prod, override the `replicas` attribute with `6`
if option("env") == "prod": replicas = 6
# Assign `metadata.labels` to `selector.matchLabels`
selector.matchLabels = metadata.labels
template.metadata.labels = metadata.labels
template.spec.containers = [
{
name = metadata.name
image = "osixia/openldap:1.1.11"
args = ["--copy-service"]
volumeMounts = [{ name = "ldap-data", mountPath = "/var/lib/ldap" }]
ports = [{ containerPort = 80, name = "openldap" }]
}
]
template.spec.volumes = [
{
name = "ldap-data"
emptyDir = {}
# When env is prod
# override the `emptyDir` attribute with `None`
# patch a `gcePersistentDisk` attribute with the value `{readOnly = True, pdName = "ldap-persistent-storage"}`
if option("env") == "prod":
emptyDir = None
gcePersistentDisk = {
readOnly = True
pdName = "ldap-persistent-storage"
}
}
]
}
In the above KCL code, we declare the apiVersion
, kind
, metadata
, spec
and other attributes of a Kubernetes Deployment
resource, and assign the corresponding contents respectively. In particular, we assign metadata.labels
to spec.selector.matchLabels
and spec.template.metadata.labels
. It can be seen that the data structure defined by KCL is more compact than Kustomize or YAML, and configuration reuse can be realized by defining local variables.
In KCL, we can dynamically receive external parameters through conditional statements and the option
builtin function, and set different configuration values for different environments to generate resources. For example, for the above code, we wrote a conditional statement and entered a dynamic parameter named env
. When env
is prod
, we will overwrite the replicas
attribute from 1
to 6
, and make some adjustments to the volume configuration named ldap-data
, such as changing the emptyDir
attribute to None
, and adding the configuration value of gcePersistentDisk
.
We can use the following command to view diff between different environment configurations
diff \
<(kcl main.k) \
<(kcl main.k -D env=prod) |\
more
The output is
8c8
< replicas: 1
---
> replicas: 6
30c30,33
< emptyDir: {}
---
> emptyDir: null
> gcePersistentDisk:
> readOnly: true
> pdName: ldap-persistent-storage
It can be seen that the diff between the production environment configuration and the base configuration mainly lies in the attributes of replicas
, emptyDir
and gcePersistentDisk
, which is consistent with the expectation.
In addition, we can use the -o
parameter of the KCL command line tool to output the compiled YAML to a file and view the diff between files
# Generate base deployment
kcl main.k -o deployment.yaml
# Generate prod deployment
kcl main.k -o prod-deployment.yaml -D env=prod
# Diff prod deployment and base deployment
diff prod-deployment.yaml deployment.yaml
Of course, we can also use KCL tools together with kubectl and other tools to apply the configuration of the production environment to the cluster
kcl main.k -D env=prod | kubectl apply -f -
The output is
deployment.apps/ldap created
Finally, check the deployment status through kubectl
kubectl get deploy
The output is
NAME READY UP-TO-DATE AVAILABLE AGE
ldap 0/6 6 0 15s
It can be seen from the results of the command that it is completely consistent with the deployment experience of using Kustomize configuration and kubectl apply directly, and there are no more side effects.
Summary
This article briefly introduces the quick start of writing complex multi-environment Kubernetes configuration with KCL and the comparison of Kustomize tool for Kubernetes multi-environment configuration management.
It can be seen that, compared with Kustomize, KCL reduces the number of configuration files and code lines by means of code generation on the basis of configuration reuse and coverage, And like Kustomize, it is a pure client solution, which can move the configuration and policy verification to the left as far as possible without additional dependency or burden on the cluster, or even without a real Kubernetes cluster.