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.
Note: You should not manage ReplicaSets owned by a Deployment. All the use cases should be covered by manipulating the Deployment object. Consider opening an issue in the main Kubernetes repository if your use case is not covered below.
The following are typical use cases for Deployments:
The following is an example of a Deployment. It creates a ReplicaSet to bring up three nginx
Pods:
nginx-deployment.yaml docs/concepts/workloads/controllers
|
---|
|
In this example:
nginx-deployment
is created, indicated by the .metadata.name
field.replicas
field.selector
field defines how the Deployment finds which Pods to manage.
In this case, we simply select on one label defined in the Pod template (app: nginx
).
However, more sophisticated selection rules are possible,
as long as the Pod template itself satisfies the rule..template.spec
field, indicates that
the Pods run one container, nginx
, which runs the nginx
Docker Hub image at version 1.7.9.Note:matchLabels
is a map of {key,value} pairs. A single {key,value} in thematchLabels
map is equivalent to an element ofmatchExpressions
, whose key field is “key”, the operator is “In”, and the values array contains only “value”. The requirements are ANDed.
The template
field contains the following instructions:
app: nginx
nginx
.nginx
image at version 1.7.9
.80
so that the container can send and accept traffic.To create this Deployment, run the following command:
kubectl create -f https://raw.githubusercontent.com/kubernetes/website/master/content/en/docs/concepts/workloads/controllers/nginx-deployment.yaml
Note: You can append--record
to this command 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.
Next, run kubectl get deployments
. The output is similar to the following:
NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE
nginx-deployment 3 0 0 0 1s
When you inspect the Deployments in your cluster, the following fields are displayed:
NAME
lists the names of the Deployments in the cluster.DESIRED
displays the desired number of replicas of the application, which
you define when you create the Deployment. This is the desired state.CURRENT
displays how many replicas are currently running.UP-TO-DATE
displays the number of replicas that have been updated to achieve
the desired state.AVAILABLE
displays how many replicas of the application are available to
your users.AGE
displays the amount of time that the application has been running.Notice how the values in each field correspond to the values in the Deployment specification:
.spec.replicas
field..status.replicas
field..status.updatedReplicas
field..status.availableReplicas
field.To see the Deployment rollout status, run kubectl rollout status deployment/nginx-deployment
. This command returns the following output:
Waiting for rollout to finish: 2 out of 3 new replicas have been updated...
deployment "nginx-deployment" successfully rolled out
Run the kubectl get deployments
again a few seconds later:
NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE
nginx-deployment 3 3 3 3 18s
Notice that the Deployment has created all three replicas, and all replicas are up-to-date (they contain the
latest Pod template) and available (the Pod status is Ready for at least the value of the Deployment’s .spec.minReadySeconds
field).
To see the ReplicaSet (rs
) created by the deployment, run kubectl get rs
:
NAME DESIRED CURRENT READY AGE
nginx-deployment-2035384211 3 3 3 18s
Notice that the name of the ReplicaSet is always formatted as [DEPLOYMENT-NAME]-[POD-TEMPLATE-HASH-VALUE]
. The hash value is automatically generated when the Deployment is created.
To see the labels automatically generated for each pod, run kubectl get pods --show-labels
. The following output is returned:
NAME READY STATUS RESTARTS AGE LABELS
nginx-deployment-2035384211-7ci7o 1/1 Running 0 18s app=nginx,pod-template-hash=2035384211
nginx-deployment-2035384211-kzszj 1/1 Running 0 18s app=nginx,pod-template-hash=2035384211
nginx-deployment-2035384211-qqcnn 1/1 Running 0 18s app=nginx,pod-template-hash=2035384211
The created ReplicaSet ensures that there are three nginx
Pods running at all times.
Note: You must specify an appropriate selector and Pod template labels in a Deployment (in this case,app: nginx
). Do not overlap labels or selectors with other controllers (including other Deployments and StatefulSets). Kubernetes doesn’t stop you from overlapping, and if multiple controllers have overlapping selectors those controllers might conflict and behave unexpectedly.
Note: Do not change this label.
The pod-template-hash
label is added by the Deployment controller to every ReplicaSet that a Deployment creates or adopts.
This label ensures that child ReplicaSets of a Deployment do not overlap. It is generated by hashing the PodTemplate
of the ReplicaSet and using the resulting hash as the label value that is added to the ReplicaSet selector, Pod template labels,
and in any existing Pods that the ReplicaSet might have.
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 now want to update the nginx Pods 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
To see the rollout status, run:
$ kubectl rollout status deployment/nginx-deployment
Waiting for rollout to finish: 2 out of 3 new replicas have been updated...
deployment "nginx-deployment" successfully rolled out
After the rollout succeeds, you may want to get
the Deployment:
$ kubectl get deployments
NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE
nginx-deployment 3 3 3 3 36s
The number of up-to-date replicas indicates that the Deployment has updated the replicas to the latest configuration. The current replicas indicates the total replicas this Deployment manages, and the available replicas indicates the number of current replicas that are available.
We can run kubectl get rs
to see that the Deployment updated the Pods by creating a new ReplicaSet and scaling it
up to 3 replicas, as well as scaling down the old ReplicaSet to 0 replicas.
$ kubectl get rs
NAME DESIRED CURRENT READY AGE
nginx-deployment-1564180365 3 3 3 6s
nginx-deployment-2035384211 0 0 0 36s
Running get pods
should now show only the new Pods:
$ kubectl get pods
NAME READY STATUS RESTARTS AGE
nginx-deployment-1564180365-khku8 1/1 Running 0 14s
nginx-deployment-1564180365-nacti 1/1 Running 0 14s
nginx-deployment-1564180365-z9gth 1/1 Running 0 14s
Next time we want to update these Pods, we only need to update the Deployment’s pod template again.
Deployment can ensure that only a certain number of Pods may be down while they are being updated. By default, it ensures that at least 25% less than the desired number of Pods are up (25% max unavailable).
Deployment can also ensure that only a certain number of Pods may be created above the desired number of Pods. By default, it ensures that at most 25% more than the desired number of Pods are up (25% max surge).
For example, if you look at the above Deployment closely, you will see that it first created a new Pod, then deleted some old Pods and created new ones. It does not kill old Pods until a sufficient number of new Pods have come up, and does not create new Pods until a sufficient number of old Pods have been killed. It makes sure that number of available Pods is at least 2 and the number of total Pods is at most 4.
$ kubectl describe deployments
Name: nginx-deployment
Namespace: default
CreationTimestamp: Thu, 30 Nov 2017 10:56:25 +0000
Labels: app=nginx
Annotations: deployment.kubernetes.io/revision=2
Selector: app=nginx
Replicas: 3 desired | 3 updated | 3 total | 3 available | 0 unavailable
StrategyType: RollingUpdate
MinReadySeconds: 0
RollingUpdateStrategy: 25% max unavailable, 25% max surge
Pod Template:
Labels: app=nginx
Containers:
nginx:
Image: nginx:1.9.1
Port: 80/TCP
Environment: <none>
Mounts: <none>
Volumes: <none>
Conditions:
Type Status Reason
---- ------ ------
Available True MinimumReplicasAvailable
Progressing True NewReplicaSetAvailable
OldReplicaSets: <none>
NewReplicaSet: nginx-deployment-1564180365 (3/3 replicas created)
Events:
Type Reason Age From Message
---- ------ ---- ---- -------
Normal ScalingReplicaSet 2m deployment-controller Scaled up replica set nginx-deployment-2035384211 to 3
Normal ScalingReplicaSet 24s deployment-controller Scaled up replica set nginx-deployment-1564180365 to 1
Normal ScalingReplicaSet 22s deployment-controller Scaled down replica set nginx-deployment-2035384211 to 2
Normal ScalingReplicaSet 22s deployment-controller Scaled up replica set nginx-deployment-1564180365 to 2
Normal ScalingReplicaSet 19s deployment-controller Scaled down replica set nginx-deployment-2035384211 to 1
Normal ScalingReplicaSet 19s deployment-controller Scaled up replica set nginx-deployment-1564180365 to 3
Normal ScalingReplicaSet 14s deployment-controller Scaled down replica set nginx-deployment-2035384211 to 0
Here we see that when we first created the Deployment, it created a ReplicaSet (nginx-deployment-2035384211) and scaled it up to 3 replicas directly. When we updated the Deployment, it created a new ReplicaSet (nginx-deployment-1564180365) and scaled it up to 1 and then scaled down the old ReplicaSet to 2, so that at least 2 Pods were available and at most 4 Pods were created at all times. It then continued scaling up and down the new and the old ReplicaSet, with the same rolling update strategy. Finally, we’ll have 3 available replicas in the new ReplicaSet, and the old ReplicaSet is scaled down to 0.
Each time a new deployment object is observed by the Deployment controller, a ReplicaSet is created to bring up
the desired Pods if there is no existing ReplicaSet doing so. Existing ReplicaSet controlling Pods whose labels
match .spec.selector
but whose template does not match .spec.template
are scaled down. Eventually, the new
ReplicaSet will be scaled to .spec.replicas
and all old ReplicaSets will be scaled to 0.
If you update a Deployment while an existing rollout is in progress, the Deployment will create a new ReplicaSet as per the update and start scaling that up, and will roll over the ReplicaSet that it was scaling up previously – it will add it to its list of old ReplicaSets and will start scaling it down.
For example, suppose you create a Deployment to create 5 replicas of nginx:1.7.9
,
but then updates the Deployment to create 5 replicas of nginx:1.9.1
, when only 3
replicas of nginx:1.7.9
had been created. In that case, Deployment will immediately start
killing the 3 nginx:1.7.9
Pods that it had created, and will start creating
nginx:1.9.1
Pods. It will not wait for 5 replicas of nginx:1.7.9
to be created
before changing course.
It is generally discouraged to make label selector updates and it is suggested to plan your selectors up front. In any case, if you need to perform a label selector update, exercise great caution and make sure you have grasped all of the implications.
Note: In API versionapps/v1
, a Deployment’s label selector is immutable after it gets created.
Sometimes you may want to rollback a Deployment; for example, when the Deployment is not stable, such as crash looping. By default, all of the Deployment’s rollout history is kept in the system so that you can rollback anytime you want (you can change that by modifying revision history limit).
Note: A Deployment’s revision is created when a Deployment’s rollout is triggered. This means that the new revision is created if and only if the Deployment’s pod template (.spec.template
) is changed, for example if you update the labels or container images of the template. Other updates, such as scaling the Deployment, do not create a Deployment revision, so that we can facilitate simultaneous manual- or auto-scaling. This means that when you roll back to an earlier revision, only the Deployment’s pod template part is rolled back.
Suppose that we made a typo while updating the Deployment, by putting the image name as nginx:1.91
instead of nginx:1.9.1
:
$ kubectl set image deployment/nginx-deployment nginx=nginx:1.91
deployment "nginx-deployment" image updated
The rollout will be stuck.
$ kubectl rollout status deployments nginx-deployment
Waiting for rollout to finish: 2 out of 3 new replicas have been updated...
Press Ctrl-C to stop the above rollout status watch. For more information on stuck rollouts, read more here.
You will also see that both the number of old replicas (nginx-deployment-1564180365 and nginx-deployment-2035384211) and new replicas (nginx-deployment-3066724191) are 2.
$ kubectl get rs
NAME DESIRED CURRENT READY AGE
nginx-deployment-1564180365 2 2 0 25s
nginx-deployment-2035384211 0 0 0 36s
nginx-deployment-3066724191 2 2 2 6s
Looking at the Pods created, you will see that the 2 Pods created by new ReplicaSet are stuck in an image pull loop.
$ kubectl get pods
NAME READY STATUS RESTARTS AGE
nginx-deployment-1564180365-70iae 1/1 Running 0 25s
nginx-deployment-1564180365-jbqqo 1/1 Running 0 25s
nginx-deployment-3066724191-08mng 0/1 ImagePullBackOff 0 6s
nginx-deployment-3066724191-eocby 0/1 ImagePullBackOff 0 6s
Note: The Deployment controller will stop the bad rollout automatically, and will stop scaling up the new ReplicaSet. This depends on the rollingUpdate parameters (maxUnavailable
specifically) that you have specified. Kubernetes by default sets the value to 1 and.spec.replicas
to 1 so if you haven’t cared about setting those parameters, your Deployment can have 100% unavailability by default! This will be fixed in Kubernetes in a future version.
$ kubectl describe deployment
Name: nginx-deployment
Namespace: default
CreationTimestamp: Tue, 15 Mar 2016 14:48:04 -0700
Labels: app=nginx
Selector: app=nginx
Replicas: 2 updated | 3 total | 2 available | 2 unavailable
StrategyType: RollingUpdate
MinReadySeconds: 0
RollingUpdateStrategy: 1 max unavailable, 1 max surge
OldReplicaSets: nginx-deployment-1564180365 (2/2 replicas created)
NewReplicaSet: nginx-deployment-3066724191 (2/2 replicas created)
Events:
FirstSeen LastSeen Count From SubobjectPath Type Reason Message
--------- -------- ----- ---- ------------- -------- ------ -------
1m 1m 1 {deployment-controller } Normal ScalingReplicaSet Scaled up replica set nginx-deployment-2035384211 to 3
22s 22s 1 {deployment-controller } Normal ScalingReplicaSet Scaled up replica set nginx-deployment-1564180365 to 1
22s 22s 1 {deployment-controller } Normal ScalingReplicaSet Scaled down replica set nginx-deployment-2035384211 to 2
22s 22s 1 {deployment-controller } Normal ScalingReplicaSet Scaled up replica set nginx-deployment-1564180365 to 2
21s 21s 1 {deployment-controller } Normal ScalingReplicaSet Scaled down replica set nginx-deployment-2035384211 to 0
21s 21s 1 {deployment-controller } Normal ScalingReplicaSet Scaled up replica set nginx-deployment-1564180365 to 3
13s 13s 1 {deployment-controller } Normal ScalingReplicaSet Scaled up replica set nginx-deployment-3066724191 to 1
13s 13s 1 {deployment-controller } Normal ScalingReplicaSet Scaled down replica set nginx-deployment-1564180365 to 2
13s 13s 1 {deployment-controller } Normal ScalingReplicaSet Scaled up replica set nginx-deployment-3066724191 to 2
To fix this, we need to rollback to a previous revision of Deployment that is stable.
First, check the revisions of this deployment:
$ kubectl rollout history deployment/nginx-deployment
deployments "nginx-deployment"
REVISION CHANGE-CAUSE
1 kubectl create -f docs/user-guide/nginx-deployment.yaml --record
2 kubectl set image deployment/nginx-deployment nginx=nginx:1.9.1
3 kubectl set image deployment/nginx-deployment nginx=nginx:1.91
Because we recorded the command while creating this Deployment using --record
, we can easily see
the changes we made in each revision.
To further see the details of each revision, run:
$ kubectl rollout history deployment/nginx-deployment --revision=2
deployments "nginx-deployment" revision 2
Labels: app=nginx
pod-template-hash=1159050644
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
QoS Tier:
cpu: BestEffort
memory: BestEffort
Environment Variables: <none>
No volumes.
Now we’ve decided to 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=2
deployment "nginx-deployment" rolled back
For more details about rollout related commands, read kubectl rollout
.
The Deployment is now rolled back to a previous stable revision. As you can see, a DeploymentRollback
event
for rolling back to revision 2 is generated from Deployment controller.
$ kubectl get deployment
NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE
nginx-deployment 3 3 3 3 30m
$ kubectl describe deployment
Name: nginx-deployment
Namespace: default
CreationTimestamp: Tue, 15 Mar 2016 14:48:04 -0700
Labels: app=nginx
Selector: app=nginx
Replicas: 3 updated | 3 total | 3 available | 0 unavailable
StrategyType: RollingUpdate
MinReadySeconds: 0
RollingUpdateStrategy: 1 max unavailable, 1 max surge
OldReplicaSets: <none>
NewReplicaSet: nginx-deployment-1564180365 (3/3 replicas created)
Events:
FirstSeen LastSeen Count From SubobjectPath Type Reason Message
--------- -------- ----- ---- ------------- -------- ------ -------
30m 30m 1 {deployment-controller } Normal ScalingReplicaSet Scaled up replica set nginx-deployment-2035384211 to 3
29m 29m 1 {deployment-controller } Normal ScalingReplicaSet Scaled up replica set nginx-deployment-1564180365 to 1
29m 29m 1 {deployment-controller } Normal ScalingReplicaSet Scaled down replica set nginx-deployment-2035384211 to 2
29m 29m 1 {deployment-controller } Normal ScalingReplicaSet Scaled up replica set nginx-deployment-1564180365 to 2
29m 29m 1 {deployment-controller } Normal ScalingReplicaSet Scaled down replica set nginx-deployment-2035384211 to 0
29m 29m 1 {deployment-controller } Normal ScalingReplicaSet Scaled up replica set nginx-deployment-3066724191 to 2
29m 29m 1 {deployment-controller } Normal ScalingReplicaSet Scaled up replica set nginx-deployment-3066724191 to 1
29m 29m 1 {deployment-controller } Normal ScalingReplicaSet Scaled down replica set nginx-deployment-1564180365 to 2
2m 2m 1 {deployment-controller } Normal ScalingReplicaSet Scaled down replica set nginx-deployment-3066724191 to 0
2m 2m 1 {deployment-controller } Normal DeploymentRollback Rolled back deployment "nginx-deployment" to revision 2
29m 2m 2 {deployment-controller } Normal ScalingReplicaSet Scaled up replica set nginx-deployment-1564180365 to 3
You can scale a Deployment by using the following command:
$ kubectl scale deployment nginx-deployment --replicas=10
deployment "nginx-deployment" scaled
Assuming horizontal pod autoscaling is enabled in your cluster, you can setup an autoscaler for your Deployment and choose the minimum and maximum number of Pods you want to run based on the CPU utilization of your existing Pods.
$ kubectl autoscale deployment nginx-deployment --min=10 --max=15 --cpu-percent=80
deployment "nginx-deployment" autoscaled
RollingUpdate Deployments support running multiple versions of an application at the same time. When you or an autoscaler scales a RollingUpdate Deployment that is in the middle of a rollout (either in progress or paused), then the Deployment controller will balance the additional replicas in the existing active ReplicaSets (ReplicaSets with Pods) in order to mitigate risk. This is called proportional scaling.
For example, you are running a Deployment with 10 replicas, maxSurge=3, and maxUnavailable=2.
$ kubectl get deploy
NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE
nginx-deployment 10 10 10 10 50s
You update to a new image which happens to be unresolvable from inside the cluster.
$ kubectl set image deploy/nginx-deployment nginx=nginx:sometag
deployment "nginx-deployment" image updated
The image update starts a new rollout with ReplicaSet nginx-deployment-1989198191, but it’s blocked due to the
maxUnavailable
requirement that we mentioned above.
$ kubectl get rs
NAME DESIRED CURRENT READY AGE
nginx-deployment-1989198191 5 5 0 9s
nginx-deployment-618515232 8 8 8 1m
Then a new scaling request for the Deployment comes along. The autoscaler increments the Deployment replicas to 15. The Deployment controller needs to decide where to add these new 5 replicas. If we weren’t using proportional scaling, all 5 of them would be added in the new ReplicaSet. With proportional scaling, we spread the additional replicas across all ReplicaSets. Bigger proportions go to the ReplicaSets with the most replicas and lower proportions go to ReplicaSets with less replicas. Any leftovers are added to the ReplicaSet with the most replicas. ReplicaSets with zero replicas are not scaled up.
In our example above, 3 replicas will be added to the old ReplicaSet and 2 replicas will be added to the new ReplicaSet. The rollout process should eventually move all replicas to the new ReplicaSet, assuming the new replicas become healthy.
$ kubectl get deploy
NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE
nginx-deployment 15 18 7 8 7m
$ kubectl get rs
NAME DESIRED CURRENT READY AGE
nginx-deployment-1989198191 7 7 0 7m
nginx-deployment-618515232 11 11 11 7m
You can pause a Deployment before triggering one or more updates and then resume it. This will allow you to apply multiple fixes in between pausing and resuming without triggering unnecessary rollouts.
For example, with a Deployment that was just created:
$ kubectl get deploy
NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE
nginx 3 3 3 3 1m
$ kubectl get rs
NAME DESIRED CURRENT READY AGE
nginx-2142116321 3 3 3 1m
Pause by running the following command:
$ kubectl rollout pause deployment/nginx-deployment
deployment "nginx-deployment" paused
Then update the image of the Deployment:
$ kubectl set image deploy/nginx-deployment nginx=nginx:1.9.1
deployment "nginx-deployment" image updated
Notice that no new rollout started:
$ kubectl rollout history deploy/nginx-deployment
deployments "nginx"
REVISION CHANGE-CAUSE
1 <none>
$ kubectl get rs
NAME DESIRED CURRENT READY AGE
nginx-2142116321 3 3 3 2m
You can make as many updates as you wish, for example, update the resources that will be used:
$ kubectl set resources deployment nginx-deployment -c=nginx --limits=cpu=200m,memory=512Mi
deployment "nginx-deployment" resource requirements updated
The initial state of the Deployment prior to pausing it will continue its function, but new updates to the Deployment will not have any effect as long as the Deployment is paused.
Eventually, resume the Deployment and observe a new ReplicaSet coming up with all the new updates:
$ kubectl rollout resume deploy/nginx-deployment
deployment "nginx" resumed
$ kubectl get rs -w
NAME DESIRED CURRENT READY AGE
nginx-2142116321 2 2 2 2m
nginx-3926361531 2 2 0 6s
nginx-3926361531 2 2 1 18s
nginx-2142116321 1 2 2 2m
nginx-2142116321 1 2 2 2m
nginx-3926361531 3 2 1 18s
nginx-3926361531 3 2 1 18s
nginx-2142116321 1 1 1 2m
nginx-3926361531 3 3 1 18s
nginx-3926361531 3 3 2 19s
nginx-2142116321 0 1 1 2m
nginx-2142116321 0 1 1 2m
nginx-2142116321 0 0 0 2m
nginx-3926361531 3 3 3 20s
^C
$ kubectl get rs
NAME DESIRED CURRENT READY AGE
nginx-2142116321 0 0 0 2m
nginx-3926361531 3 3 3 28s
Note: You cannot rollback a paused Deployment until you resume it.
A Deployment enters various states during its lifecycle. It can be progressing while rolling out a new ReplicaSet, it can be complete, or it can fail to progress.
Kubernetes marks a Deployment as progressing when one of the following tasks is performed:
You can monitor the progress for a Deployment by using kubectl rollout status
.
Kubernetes marks a Deployment as complete when it has the following characteristics:
You can check if a Deployment has completed by using kubectl rollout status
. If the rollout completed
successfully, kubectl rollout status
returns a zero exit code.
$ kubectl rollout status deploy/nginx-deployment
Waiting for rollout to finish: 2 of 3 updated replicas are available...
deployment "nginx" successfully rolled out
$ echo $?
0
Your Deployment may get stuck trying to deploy its newest ReplicaSet without ever completing. This can occur due to some of the following factors:
One way you can detect this condition is to specify a deadline parameter in your Deployment spec:
(.spec.progressDeadlineSeconds
). .spec.progressDeadlineSeconds
denotes the
number of seconds the Deployment controller waits before indicating (in the Deployment status) that the
Deployment progress has stalled.
The following kubectl
command sets the spec with progressDeadlineSeconds
to make the controller report
lack of progress for a Deployment after 10 minutes:
$ kubectl patch deployment/nginx-deployment -p '{"spec":{"progressDeadlineSeconds":600}}'
deployment "nginx-deployment" patched
Once the deadline has been exceeded, the Deployment controller adds a DeploymentCondition with the following
attributes to the Deployment’s .status.conditions
:
See the Kubernetes API conventions for more information on status conditions.
Note: Kubernetes will take no action on a stalled Deployment other than to report a status condition withReason=ProgressDeadlineExceeded
. Higher level orchestrators can take advantage of it and act accordingly, for example, rollback the Deployment to its previous version.
Note: If you pause a Deployment, Kubernetes does not check progress against your specified deadline. You can safely pause a Deployment in the middle of a rollout and resume without triggering the condition for exceeding the deadline.
You may experience transient errors with your Deployments, either due to a low timeout that you have set or due to any other kind of error that can be treated as transient. For example, let’s suppose you have insufficient quota. If you describe the Deployment you will notice the following section:
$ kubectl describe deployment nginx-deployment
<...>
Conditions:
Type Status Reason
---- ------ ------
Available True MinimumReplicasAvailable
Progressing True ReplicaSetUpdated
ReplicaFailure True FailedCreate
<...>
If you run kubectl get deployment nginx-deployment -o yaml
, the Deployment status might look like this:
status:
availableReplicas: 2
conditions:
- lastTransitionTime: 2016-10-04T12:25:39Z
lastUpdateTime: 2016-10-04T12:25:39Z
message: Replica set "nginx-deployment-4262182780" is progressing.
reason: ReplicaSetUpdated
status: "True"
type: Progressing
- lastTransitionTime: 2016-10-04T12:25:42Z
lastUpdateTime: 2016-10-04T12:25:42Z
message: Deployment has minimum availability.
reason: MinimumReplicasAvailable
status: "True"
type: Available
- lastTransitionTime: 2016-10-04T12:25:39Z
lastUpdateTime: 2016-10-04T12:25:39Z
message: 'Error creating: pods "nginx-deployment-4262182780-" is forbidden: exceeded quota:
object-counts, requested: pods=1, used: pods=3, limited: pods=2'
reason: FailedCreate
status: "True"
type: ReplicaFailure
observedGeneration: 3
replicas: 2
unavailableReplicas: 2
Eventually, once the Deployment progress deadline is exceeded, Kubernetes updates the status and the reason for the Progressing condition:
Conditions:
Type Status Reason
---- ------ ------
Available True MinimumReplicasAvailable
Progressing False ProgressDeadlineExceeded
ReplicaFailure True FailedCreate
You can address an issue of insufficient quota by scaling down your Deployment, by scaling down other
controllers you may be running, or by increasing quota in your namespace. If you satisfy the quota
conditions and the Deployment controller then completes the Deployment rollout, you’ll see the
Deployment’s status update with a successful condition (Status=True
and Reason=NewReplicaSetAvailable
).
Conditions:
Type Status Reason
---- ------ ------
Available True MinimumReplicasAvailable
Progressing True NewReplicaSetAvailable
Type=Available
with Status=True
means that your Deployment has minimum availability. Minimum availability is dictated
by the parameters specified in the deployment strategy. Type=Progressing
with Status=True
means that your Deployment
is either in the middle of a rollout and it is progressing or that it has successfully completed its progress and the minimum
required new replicas are available (see the Reason of the condition for the particulars - in our case
Reason=NewReplicaSetAvailable
means that the Deployment is complete).
You can check if a Deployment has failed to progress by using kubectl rollout status
. kubectl rollout status
returns a non-zero exit code if the Deployment has exceeded the progression deadline.
$ kubectl rollout status deploy/nginx-deployment
Waiting for rollout to finish: 2 out of 3 new replicas have been updated...
error: deployment "nginx" exceeded its progress deadline
$ echo $?
1
All actions that apply to a complete Deployment also apply to a failed Deployment. You can scale it up/down, roll back to a previous revision, or even pause it if you need to apply multiple tweaks in the Deployment pod template.
You can set .spec.revisionHistoryLimit
field in a Deployment to specify how many old ReplicaSets for
this Deployment you want to retain. The rest will be garbage-collected in the background. By default,
it is 10.
Note: Explicitly setting this field to 0, will result in cleaning up all the history of your Deployment thus that Deployment will not be able to roll back.
If you want to roll out releases to a subset of users or servers using the Deployment, you can create multiple Deployments, one for each release, following the canary pattern described in managing resources.
As with all other Kubernetes configs, a Deployment needs apiVersion
, kind
, and metadata
fields.
For general information about working with config files, see deploying applications,
configuring containers, and using kubectl to manage resources documents.
A Deployment also needs a .spec
section.
The .spec.template
is the only required field of the .spec
.
The .spec.template
is a pod template. It has exactly the same schema as a Pod, except it is nested and does not have an
apiVersion
or kind
.
In addition to required fields for a Pod, a pod template in a Deployment must specify appropriate labels and an appropriate restart policy. For labels, make sure not to overlap with other controllers. See selector).
Only a .spec.template.spec.restartPolicy
equal to Always
is
allowed, which is the default if not specified.
.spec.replicas
is an optional field that specifies the number of desired Pods. It defaults to 1.
.spec.selector
is an optional field that specifies a label selector
for the Pods targeted by this deployment.
.spec.selector
must match .spec.template.metadata.labels
, or it will be rejected by the API.
In API version apps/v1
, .spec.selector
and .metadata.labels
do not default to .spec.template.metadata.labels
if not set. So they must be set explicitly. Also note that .spec.selector
is immutable after creation of the Deployment in apps/v1
.
A Deployment may terminate Pods whose labels match the selector if their template is different
from .spec.template
or if the total number of such Pods exceeds .spec.replicas
. It brings up new
Pods with .spec.template
if the number of Pods is less than the desired number.
Note: You should not create other pods whose labels match this selector, either directly, by creating another Deployment, or by creating another controller such as a ReplicaSet or a ReplicationController. If you do so, the first Deployment thinks that it created these other pods. Kubernetes does not stop you from doing this.
If you have multiple controllers that have overlapping selectors, the controllers will fight with each other and won’t behave correctly.
.spec.strategy
specifies the strategy used to replace old Pods by new ones.
.spec.strategy.type
can be “Recreate” or “RollingUpdate”. “RollingUpdate” is
the default value.
All existing Pods are killed before new ones are created when .spec.strategy.type==Recreate
.
The Deployment updates Pods in a rolling update
fashion when .spec.strategy.type==RollingUpdate
. You can specify maxUnavailable
and maxSurge
to control
the rolling update process.
.spec.strategy.rollingUpdate.maxUnavailable
is an optional field that specifies the maximum number
of Pods that can be unavailable during the update process. The value can be an absolute number (for example, 5)
or a percentage of desired Pods (for example, 10%). The absolute number is calculated from percentage by
rounding down. The value cannot be 0 if .spec.strategy.rollingUpdate.maxSurge
is 0. The default value is 25%.
For example, when this value is set to 30%, the old ReplicaSet can be scaled down to 70% of desired Pods immediately when the rolling update starts. Once new Pods are ready, old ReplicaSet can be scaled down further, followed by scaling up the new ReplicaSet, ensuring that the total number of Pods available at all times during the update is at least 70% of the desired Pods.
.spec.strategy.rollingUpdate.maxSurge
is an optional field that specifies the maximum number of Pods
that can be created over the desired number of Pods. The value can be an absolute number (for example, 5) or a
percentage of desired Pods (for example, 10%). The value cannot be 0 if MaxUnavailable
is 0. The absolute number
is calculated from the percentage by rounding up. The default value is 25%.
For example, when this value is set to 30%, the new ReplicaSet can be scaled up immediately when the rolling update starts, such that the total number of old and new Pods does not exceed 130% of desired Pods. Once old Pods have been killed, the new ReplicaSet can be scaled up further, ensuring that the total number of Pods running at any time during the update is at most 130% of desired Pods.
.spec.progressDeadlineSeconds
is an optional field that specifies the number of seconds you want
to wait for your Deployment to progress before the system reports back that the Deployment has
failed progressing - surfaced as a condition with Type=Progressing
, Status=False
.
and Reason=ProgressDeadlineExceeded
in the status of the resource. The deployment controller will keep
retrying the Deployment. In the future, once automatic rollback will be implemented, the deployment
controller will roll back a Deployment as soon as it observes such a condition.
If specified, this field needs to be greater than .spec.minReadySeconds
.
.spec.minReadySeconds
is an optional field that specifies the minimum number of seconds for which a newly
created Pod should be ready without any of its containers crashing, for it to be considered available.
This defaults to 0 (the Pod will be considered available as soon as it is ready). To learn more about when
a Pod is considered ready, see Container Probes.
Field .spec.rollbackTo
has been deprecated in API versions extensions/v1beta1
and apps/v1beta1
, and is no longer supported in API versions starting apps/v1beta2
. Instead, kubectl rollout undo
as introduced in Rolling Back to a Previous Revision should be used.
A Deployment’s revision history is stored in the replica sets it controls.
.spec.revisionHistoryLimit
is an optional field that specifies the number of old ReplicaSets to retain
to allow rollback. Its ideal value depends on the frequency and stability of new Deployments. All old
ReplicaSets will be kept by default, consuming resources in etcd
and crowding the output of kubectl get rs
,
if this field is not set. The configuration of each Deployment revision is stored in its ReplicaSets;
therefore, once an old ReplicaSet is deleted, you lose the ability to rollback to that revision of Deployment.
More specifically, setting this field to zero means that all old ReplicaSets with 0 replica will be cleaned up. In this case, a new Deployment rollout cannot be undone, since its revision history is cleaned up.
.spec.paused
is an optional boolean field for pausing and resuming a Deployment. The only difference between
a paused Deployment and one that is not paused, is that any changes into the PodTemplateSpec of the paused
Deployment will not trigger new rollouts as long as it is paused. A Deployment is not paused by default when
it is created.
kubectl rolling update
updates Pods and ReplicationControllers
in a similar fashion. But Deployments are recommended, since they are declarative, server side, and have
additional features, such as rolling back to any previous revision even after the rolling update is done.