A workload is an application running on Kubernetes.
Whether your workload is a single component or several that work together, on Kubernetes you run
it inside a set of pods.
In Kubernetes, a Pod represents a set of running
containers on your cluster.
Kubernetes pods have a defined lifecycle.
For example, once a pod is running in your cluster then a critical fault on the
node where that pod is running means that
all the pods on that node fail. Kubernetes treats that level of failure as final: you
would need to create a new Pod to recover, even if the node later becomes healthy.
However, to make life considerably easier, you don't need to manage each Pod directly.
Instead, you can use workload resources that manage a set of pods on your behalf.
These resources configure controllers
that make sure the right number of the right kind of pod are running, to match the state
you specified.
Kubernetes provides several built-in workload resources:
Deployment and ReplicaSet
(replacing the legacy resource
ReplicationController).
Deployment is a good fit for managing a stateless application workload on your cluster,
where any Pod in the Deployment is interchangeable and can be replaced if needed.
StatefulSet lets you
run one or more related Pods that do track state somehow. For example, if your workload
records data persistently, you can run a StatefulSet that matches each Pod with a
PersistentVolume. Your code, running in the
Pods for that StatefulSet, can replicate data to other Pods in the same StatefulSet
to improve overall resilience.
DaemonSet defines Pods that provide
node-local facilities. These might be fundamental to the operation of your cluster, such
as a networking helper tool, or be part of an
add-on.
Every time you add a node to your cluster that matches the specification in a DaemonSet,
the control plane schedules a Pod for that DaemonSet onto the new node.
Job and
CronJob
define tasks that run to completion and then stop. Jobs represent one-off tasks, whereas
CronJobs recur according to a schedule.
In the wider Kubernetes ecosystem, you can find third-party workload resources that provide
additional behaviors. Using a
custom resource definition,
you can add in a third-party workload resource if you want a specific behavior that's not part
of Kubernetes' core. For example, if you wanted to run a group of Pods for your application but
stop work unless all the Pods are available (perhaps for some high-throughput distributed task),
then you can implement or install an extension that does provide that feature.
What's next
As well as reading about each resource, you can learn about specific tasks that relate to them:
Once your application is running, you might want to make it available on the internet as
a Service or, for web application only,
using an Ingress.
1 - Pods
Pods are the smallest deployable units of computing that you can create and manage in Kubernetes.
A Pod (as in a pod of whales or pea pod) is a group of one or more
containers, with shared storage and network resources, and a specification for how to run the containers. A Pod's contents are always co-located and
co-scheduled, and run in a shared context. A Pod models an
application-specific "logical host": it contains one or more application
containers which are relatively tightly coupled.
In non-cloud contexts, applications executed on the same physical or virtual machine are analogous to cloud applications executed on the same logical host.
As well as application containers, a Pod can contain
init containers that run
during Pod startup. You can also inject
ephemeral containers
for debugging if your cluster offers this.
What is a Pod?
Note: While Kubernetes supports more
container runtimes
than just Docker, Docker is the most commonly known
runtime, and it helps to describe Pods using some terminology from Docker.
The shared context of a Pod is a set of Linux namespaces, cgroups, and
potentially other facets of isolation - the same things that isolate a Docker
container. Within a Pod's context, the individual applications may have
further sub-isolations applied.
In terms of Docker concepts, a Pod is similar to a group of Docker containers
with shared namespaces and shared filesystem volumes.
Using Pods
The following is an example of a Pod which consists of a container running the image nginx:1.14.2.
Pods are generally not created directly and are created using workload resources.
See Working with Pods for more information on how Pods are used
with workload resources.
Workload resources for managing pods
Usually you don't need to create Pods directly, even singleton Pods. Instead, create them using workload resources such as Deployment or Job.
If your Pods need to track state, consider the
StatefulSet resource.
Pods in a Kubernetes cluster are used in two main ways:
Pods that run a single container. The "one-container-per-Pod" model is the
most common Kubernetes use case; in this case, you can think of a Pod as a
wrapper around a single container; Kubernetes manages Pods rather than managing
the containers directly.
Pods that run multiple containers that need to work together. A Pod can
encapsulate an application composed of multiple co-located containers that are
tightly coupled and need to share resources. These co-located containers
form a single cohesive unit of service—for example, one container serving data
stored in a shared volume to the public, while a separate sidecar container
refreshes or updates those files.
The Pod wraps these containers, storage resources, and an ephemeral network
identity together as a single unit.
Note: Grouping multiple co-located and co-managed containers in a single Pod is a
relatively advanced use case. You should use this pattern only in specific
instances in which your containers are tightly coupled.
Each Pod is meant to run a single instance of a given application. If you want to
scale your application horizontally (to provide more overall resources by running
more instances), you should use multiple Pods, one for each instance. In
Kubernetes, this is typically referred to as replication.
Replicated Pods are usually created and managed as a group by a workload resource
and its controller.
See Pods and controllers for more information on how
Kubernetes uses workload resources, and their controllers, to implement application
scaling and auto-healing.
How Pods manage multiple containers
Pods are designed to support multiple cooperating processes (as containers) that form
a cohesive unit of service. The containers in a Pod are automatically co-located and
co-scheduled on the same physical or virtual machine in the cluster. The containers
can share resources and dependencies, communicate with one another, and coordinate
when and how they are terminated.
For example, you might have a container that
acts as a web server for files in a shared volume, and a separate "sidecar" container
that updates those files from a remote source, as in the following diagram:
Some Pods have init containers as well as app containers. Init containers run and complete before the app containers are started.
Pods natively provide two kinds of shared resources for their constituent containers:
networking and storage.
Working with Pods
You'll rarely create individual Pods directly in Kubernetes—even singleton Pods. This
is because Pods are designed as relatively ephemeral, disposable entities. When
a Pod gets created (directly by you, or indirectly by a
controller), the new Pod is
scheduled to run on a Node in your cluster.
The Pod remains on that node until the Pod finishes execution, the Pod object is deleted,
the Pod is evicted for lack of resources, or the node fails.
Note: Restarting a container in a Pod should not be confused with restarting a Pod. A Pod
is not a process, but an environment for running container(s). A Pod persists until
it is deleted.
When you create the manifest for a Pod object, make sure the name specified is a valid
DNS subdomain name.
Pods and controllers
You can use workload resources to create and manage multiple Pods for you. A controller
for the resource handles replication and rollout and automatic healing in case of
Pod failure. For example, if a Node fails, a controller notices that Pods on that
Node have stopped working and creates a replacement Pod. The scheduler places the
replacement Pod onto a healthy Node.
Here are some examples of workload resources that manage one or more Pods:
Controllers for workload resources create Pods
from a pod template and manage those Pods on your behalf.
PodTemplates are specifications for creating Pods, and are included in workload resources such as
Deployments,
Jobs, and
DaemonSets.
Each controller for a workload resource uses the PodTemplate inside the workload
object to make actual Pods. The PodTemplate is part of the desired state of whatever
workload resource you used to run your app.
The sample below is a manifest for a simple Job with a template that starts one
container. The container in that Pod prints a message then pauses.
apiVersion:batch/v1kind:Jobmetadata:name:hellospec:template:# This is the pod templatespec:containers:- name:helloimage:busybox:1.28command:['sh','-c','echo "Hello, Kubernetes!" && sleep 3600']restartPolicy:OnFailure# The pod template ends here
Modifying the pod template or switching to a new pod template has no direct effect
on the Pods that already exist. If you change the pod template for a workload
resource, that resource needs to create replacement Pods that use the updated template.
For example, the StatefulSet controller ensures that the running Pods match the current
pod template for each StatefulSet object. If you edit the StatefulSet to change its pod
template, the StatefulSet starts to create new Pods based on the updated template.
Eventually, all of the old Pods are replaced with new Pods, and the update is complete.
Each workload resource implements its own rules for handling changes to the Pod template.
If you want to read more about StatefulSet specifically, read
Update strategy in the StatefulSet Basics tutorial.
On Nodes, the kubelet does not
directly observe or manage any of the details around pod templates and updates; those
details are abstracted away. That abstraction and separation of concerns simplifies
system semantics, and makes it feasible to extend the cluster's behavior without
changing existing code.
Pod update and replacement
As mentioned in the previous section, when the Pod template for a workload
resource is changed, the controller creates new Pods based on the updated
template instead of updating or patching the existing Pods.
Kubernetes doesn't prevent you from managing Pods directly. It is possible to
update some fields of a running Pod, in place. However, Pod update operations
like
patch, and
replace
have some limitations:
Most of the metadata about a Pod is immutable. For example, you cannot
change the namespace, name, uid, or creationTimestamp fields;
the generation field is unique. It only accepts updates that increment the
field's current value.
If the metadata.deletionTimestamp is set, no new entry can be added to the
metadata.finalizers list.
Pod updates may not change fields other than spec.containers[*].image,
spec.initContainers[*].image, spec.activeDeadlineSeconds or
spec.tolerations. For spec.tolerations, you can only add new entries.
When updating the spec.activeDeadlineSeconds field, two types of updates
are allowed:
setting the unassigned field to a positive number;
updating the field from a positive number to a smaller, non-negative
number.
Resource sharing and communication
Pods enable data sharing and communication among their constituent
containers.
Storage in Pods
A Pod can specify a set of shared storage
volumes. All containers
in the Pod can access the shared volumes, allowing those containers to
share data. Volumes also allow persistent data in a Pod to survive
in case one of the containers within needs to be restarted. See
Storage for more information on how
Kubernetes implements shared storage and makes it available to Pods.
Pod networking
Each Pod is assigned a unique IP address for each address family. Every
container in a Pod shares the network namespace, including the IP address and
network ports. Inside a Pod (and only then), the containers that belong to the Pod
can communicate with one another using localhost. When containers in a Pod communicate
with entities outside the Pod,
they must coordinate how they use the shared network resources (such as ports).
Within a Pod, containers share an IP address and port space, and
can find each other via localhost. The containers in a Pod can also communicate
with each other using standard inter-process communications like SystemV semaphores
or POSIX shared memory. Containers in different Pods have distinct IP addresses
and can not communicate by IPC without
special configuration.
Containers that want to interact with a container running in a different Pod can
use IP networking to communicate.
Containers within the Pod see the system hostname as being the same as the configured
name for the Pod. There's more about this in the networking
section.
Privileged mode for containers
In Linux, any container in a Pod can enable privileged mode using the privileged (Linux) flag on the security context of the container spec. This is useful for containers that want to use operating system administrative capabilities such as manipulating the network stack or accessing hardware devices.
If your cluster has the WindowsHostProcessContainers feature enabled, you can create a Windows HostProcess pod by setting the windowsOptions.hostProcess flag on the security context of the pod spec. All containers in these pods must run as Windows HostProcess containers. HostProcess pods run directly on the host and can also be used to perform administrative tasks as is done with Linux privileged containers.
Note: Your container runtime must support the concept of a privileged container for this setting to be relevant.
Static Pods
Static Pods are managed directly by the kubelet daemon on a specific node,
without the API server
observing them.
Whereas most Pods are managed by the control plane (for example, a
Deployment), for static
Pods, the kubelet directly supervises each static Pod (and restarts it if it fails).
Static Pods are always bound to one Kubelet on a specific node.
The main use for static Pods is to run a self-hosted control plane: in other words,
using the kubelet to supervise the individual control plane components.
The kubelet automatically tries to create a mirror Pod
on the Kubernetes API server for each static Pod.
This means that the Pods running on a node are visible on the API server,
but cannot be controlled from there.
To understand the context for why Kubernetes wraps a common Pod API in other resources (such as StatefulSets or Deployments), you can read about the prior art, including:
This page describes the lifecycle of a Pod. Pods follow a defined lifecycle, starting
in the Pendingphase, moving through Running if at least one
of its primary containers starts OK, and then through either the Succeeded or
Failed phases depending on whether any container in the Pod terminated in failure.
Whilst a Pod is running, the kubelet is able to restart containers to handle some
kind of faults. Within a Pod, Kubernetes tracks different container
states and determines what action to take to make the Pod
healthy again.
In the Kubernetes API, Pods have both a specification and an actual status. The
status for a Pod object consists of a set of Pod conditions.
You can also inject custom readiness information into the
condition data for a Pod, if that is useful to your application.
Pods are only scheduled once in their lifetime.
Once a Pod is scheduled (assigned) to a Node, the Pod runs on that Node until it stops
or is terminated.
Pod lifetime
Like individual application containers, Pods are considered to be relatively
ephemeral (rather than durable) entities. Pods are created, assigned a unique
ID (UID), and scheduled
to nodes where they remain until termination (according to restart policy) or
deletion.
If a Node dies, the Pods scheduled to that node
are scheduled for deletion after a timeout period.
Pods do not, by themselves, self-heal. If a Pod is scheduled to a
node that then fails, the Pod is deleted; likewise, a Pod won't
survive an eviction due to a lack of resources or Node maintenance. Kubernetes uses a
higher-level abstraction, called a
controller, that handles the work of
managing the relatively disposable Pod instances.
A given Pod (as defined by a UID) is never "rescheduled" to a different node; instead,
that Pod can be replaced by a new, near-identical Pod, with even the same name if
desired, but with a different UID.
When something is said to have the same lifetime as a Pod, such as a
volume,
that means that the thing exists as long as that specific Pod (with that exact UID)
exists. If that Pod is deleted for any reason, and even if an identical replacement
is created, the related thing (a volume, in this example) is also destroyed and
created anew.
A multi-container Pod that contains a file puller and a
web server that uses a persistent volume for shared storage between the containers.
Pod phase
A Pod's status field is a
PodStatus
object, which has a phase field.
The phase of a Pod is a simple, high-level summary of where the Pod is in its
lifecycle. The phase is not intended to be a comprehensive rollup of observations
of container or Pod state, nor is it intended to be a comprehensive state machine.
The number and meanings of Pod phase values are tightly guarded.
Other than what is documented here, nothing should be assumed about Pods that
have a given phase value.
Here are the possible values for phase:
Value
Description
Pending
The Pod has been accepted by the Kubernetes cluster, but one or more of the containers has not been set up and made ready to run. This includes time a Pod spends waiting to be scheduled as well as the time spent downloading container images over the network.
Running
The Pod has been bound to a node, and all of the containers have been created. At least one container is still running, or is in the process of starting or restarting.
Succeeded
All containers in the Pod have terminated in success, and will not be restarted.
Failed
All containers in the Pod have terminated, and at least one container has terminated in failure. That is, the container either exited with non-zero status or was terminated by the system.
Unknown
For some reason the state of the Pod could not be obtained. This phase typically occurs due to an error in communicating with the node where the Pod should be running.
Note: When a Pod is being deleted, it is shown as Terminating by some kubectl commands.
This Terminating status is not one of the Pod phases.
A Pod is granted a term to terminate gracefully, which defaults to 30 seconds.
You can use the flag --force to terminate a Pod by force.
If a node dies or is disconnected from the rest of the cluster, Kubernetes
applies a policy for setting the phase of all Pods on the lost node to Failed.
Container states
As well as the phase of the Pod overall, Kubernetes tracks the state of
each container inside a Pod. You can use
container lifecycle hooks to
trigger events to run at certain points in a container's lifecycle.
Once the scheduler
assigns a Pod to a Node, the kubelet starts creating containers for that Pod
using a container runtime.
There are three possible container states: Waiting, Running, and Terminated.
To check the state of a Pod's containers, you can use
kubectl describe pod <name-of-pod>. The output shows the state for each container
within that Pod.
Each state has a specific meaning:
Waiting
If a container is not in either the Running or Terminated state, it is Waiting.
A container in the Waiting state is still running the operations it requires in
order to complete start up: for example, pulling the container image from a container
image registry, or applying Secret
data.
When you use kubectl to query a Pod with a container that is Waiting, you also see
a Reason field to summarize why the container is in that state.
Running
The Running status indicates that a container is executing without issues. If there
was a postStart hook configured, it has already executed and finished. When you use
kubectl to query a Pod with a container that is Running, you also see information
about when the container entered the Running state.
Terminated
A container in the Terminated state began execution and then either ran to
completion or failed for some reason. When you use kubectl to query a Pod with
a container that is Terminated, you see a reason, an exit code, and the start and
finish time for that container's period of execution.
If a container has a preStop hook configured, this hook runs before the container enters
the Terminated state.
Container restart policy
The spec of a Pod has a restartPolicy field with possible values Always, OnFailure,
and Never. The default value is Always.
The restartPolicy applies to all containers in the Pod. restartPolicy only
refers to restarts of the containers by the kubelet on the same node. After containers
in a Pod exit, the kubelet restarts them with an exponential back-off delay (10s, 20s,
40s, …), that is capped at five minutes. Once a container has executed for 10 minutes
without any problems, the kubelet resets the restart backoff timer for that container.
Pod conditions
A Pod has a PodStatus, which has an array of
PodConditions
through which the Pod has or has not passed:
PodScheduled: the Pod has been scheduled to a node.
ContainersReady: all containers in the Pod are ready.
Initialized: all init containers
have completed successfully.
Ready: the Pod is able to serve requests and should be added to the load
balancing pools of all matching Services.
Field name
Description
type
Name of this Pod condition.
status
Indicates whether that condition is applicable, with possible values "True", "False", or "Unknown".
lastProbeTime
Timestamp of when the Pod condition was last probed.
lastTransitionTime
Timestamp for when the Pod last transitioned from one status to another.
reason
Machine-readable, UpperCamelCase text indicating the reason for the condition's last transition.
message
Human-readable message indicating details about the last status transition.
Pod readiness
FEATURE STATE:Kubernetes v1.14 [stable]
Your application can inject extra feedback or signals into PodStatus:
Pod readiness. To use this, set readinessGates in the Pod's spec to
specify a list of additional conditions that the kubelet evaluates for Pod readiness.
Readiness gates are determined by the current state of status.condition
fields for the Pod. If Kubernetes cannot find such a condition in the
status.conditions field of a Pod, the status of the condition
is defaulted to "False".
Here is an example:
kind:Pod...spec:readinessGates:- conditionType:"www.example.com/feature-1"status:conditions:- type:Ready # a built in PodConditionstatus:"False"lastProbeTime:nulllastTransitionTime:2018-01-01T00:00:00Z- type:"www.example.com/feature-1"# an extra PodConditionstatus:"False"lastProbeTime:nulllastTransitionTime:2018-01-01T00:00:00ZcontainerStatuses:- containerID:docker://abcd...ready:true...
The Pod conditions you add must have names that meet the Kubernetes label key format.
Status for Pod readiness
The kubectl patch command does not support patching object status.
To set these status.conditions for the pod, applications and
operators should use
the PATCH action.
You can use a Kubernetes client library to
write code that sets custom Pod conditions for Pod readiness.
For a Pod that uses custom conditions, that Pod is evaluated to be ready only
when both the following statements apply:
All containers in the Pod are ready.
All conditions specified in readinessGates are True.
When a Pod's containers are Ready but at least one custom condition is missing or
False, the kubelet sets the Pod's condition to ContainersReady.
Container probes
A probe is a diagnostic
performed periodically by the
kubelet
on a container. To perform a diagnostic,
the kubelet either executes code within the container, or makes
a network request.
Check mechanisms
There are four different ways to check a container using a probe.
Each probe must define exactly one of these four mechanisms:
exec
Executes a specified command inside the container. The diagnostic
is considered successful if the command exits with a status code of 0.
grpc
Performs a remote procedure call using gRPC.
The target should implement
gRPC health checks.
The diagnostic is considered successful if the status
of the response is SERVING.
gRPC probes are an alpha feature and are only available if you
enable the GRPCContainerProbefeature gate.
httpGet
Performs an HTTP GET request against the Pod's IP
address on a specified port and path. The diagnostic is
considered successful if the response has a status code
greater than or equal to 200 and less than 400.
tcpSocket
Performs a TCP check against the Pod's IP address on
a specified port. The diagnostic is considered successful if
the port is open. If the remote system (the container) closes
the connection immediately after it opens, this counts as healthy.
Probe outcome
Each probe has one of three results:
Success
The container passed the diagnostic.
Failure
The container failed the diagnostic.
Unknown
The diagnostic failed (no action should be taken, and the kubelet
will make further checks).
Types of probe
The kubelet can optionally perform and react to three kinds of probes on running
containers:
livenessProbe
Indicates whether the container is running. If
the liveness probe fails, the kubelet kills the container, and the container
is subjected to its restart policy. If a container does not
provide a liveness probe, the default state is Success.
readinessProbe
Indicates whether the container is ready to respond to requests.
If the readiness probe fails, the endpoints controller removes the Pod's IP
address from the endpoints of all Services that match the Pod. The default
state of readiness before the initial delay is Failure. If a container does
not provide a readiness probe, the default state is Success.
startupProbe
Indicates whether the application within the container is started.
All other probes are disabled if a startup probe is provided, until it succeeds.
If the startup probe fails, the kubelet kills the container, and the container
is subjected to its restart policy. If a container does not
provide a startup probe, the default state is Success.
If the process in your container is able to crash on its own whenever it
encounters an issue or becomes unhealthy, you do not necessarily need a liveness
probe; the kubelet will automatically perform the correct action in accordance
with the Pod's restartPolicy.
If you'd like your container to be killed and restarted if a probe fails, then
specify a liveness probe, and specify a restartPolicy of Always or OnFailure.
When should you use a readiness probe?
FEATURE STATE:Kubernetes v1.0 [stable]
If you'd like to start sending traffic to a Pod only when a probe succeeds,
specify a readiness probe. In this case, the readiness probe might be the same
as the liveness probe, but the existence of the readiness probe in the spec means
that the Pod will start without receiving any traffic and only start receiving
traffic after the probe starts succeeding.
If you want your container to be able to take itself down for maintenance, you
can specify a readiness probe that checks an endpoint specific to readiness that
is different from the liveness probe.
If your app has a strict dependency on back-end services, you can implement both
a liveness and a readiness probe. The liveness probe passes when the app itself
is healthy, but the readiness probe additionally checks that each required
back-end service is available. This helps you avoid directing traffic to Pods
that can only respond with error messages.
If your container needs to work on loading large data, configuration files, or
migrations during startup, you can use a
startup probe. However, if you want to
detect the difference between an app that has failed and an app that is still
processing its startup data, you might prefer a readiness probe.
Note: If you want to be able to drain requests when the Pod is deleted, you do not
necessarily need a readiness probe; on deletion, the Pod automatically puts itself
into an unready state regardless of whether the readiness probe exists.
The Pod remains in the unready state while it waits for the containers in the Pod
to stop.
When should you use a startup probe?
FEATURE STATE:Kubernetes v1.20 [stable]
Startup probes are useful for Pods that have containers that take a long time to
come into service. Rather than set a long liveness interval, you can configure
a separate configuration for probing the container as it starts up, allowing
a time longer than the liveness interval would allow.
If your container usually starts in more than
initialDelaySeconds + failureThreshold × periodSeconds, you should specify a
startup probe that checks the same endpoint as the liveness probe. The default for
periodSeconds is 10s. You should then set its failureThreshold high enough to
allow the container to start, without changing the default values of the liveness
probe. This helps to protect against deadlocks.
Termination of Pods
Because Pods represent processes running on nodes in the cluster, it is important to
allow those processes to gracefully terminate when they are no longer needed (rather
than being abruptly stopped with a KILL signal and having no chance to clean up).
The design aim is for you to be able to request deletion and know when processes
terminate, but also be able to ensure that deletes eventually complete.
When you request deletion of a Pod, the cluster records and tracks the intended grace period
before the Pod is allowed to be forcefully killed. With that forceful shutdown tracking in
place, the kubelet attempts graceful
shutdown.
Typically, the container runtime sends a TERM signal to the main process in each
container. Many container runtimes respect the STOPSIGNAL value defined in the container
image and send this instead of TERM.
Once the grace period has expired, the KILL signal is sent to any remaining
processes, and the Pod is then deleted from the
API Server. If the kubelet or the
container runtime's management service is restarted while waiting for processes to terminate, the
cluster retries from the start including the full original grace period.
An example flow:
You use the kubectl tool to manually delete a specific Pod, with the default grace period
(30 seconds).
The Pod in the API server is updated with the time beyond which the Pod is considered "dead"
along with the grace period.
If you use kubectl describe to check on the Pod you're deleting, that Pod shows up as
"Terminating".
On the node where the Pod is running: as soon as the kubelet sees that a Pod has been marked
as terminating (a graceful shutdown duration has been set), the kubelet begins the local Pod
shutdown process.
If one of the Pod's containers has defined a preStophook, the kubelet
runs that hook inside of the container. If the preStop hook is still running after the
grace period expires, the kubelet requests a small, one-off grace period extension of 2
seconds.
Note: If the preStop hook needs longer to complete than the default grace period allows,
you must modify terminationGracePeriodSeconds to suit this.
The kubelet triggers the container runtime to send a TERM signal to process 1 inside each
container.
Note: The containers in the Pod receive the TERM signal at different times and in an arbitrary
order. If the order of shutdowns matters, consider using a preStop hook to synchronize.
At the same time as the kubelet is starting graceful shutdown, the control plane removes that
shutting-down Pod from Endpoints (and, if enabled, EndpointSlice) objects where these represent
a Service with a configured
selector.
ReplicaSets and other workload resources
no longer treat the shutting-down Pod as a valid, in-service replica. Pods that shut down slowly
cannot continue to serve traffic as load balancers (like the service proxy) remove the Pod from
the list of endpoints as soon as the termination grace period begins.
When the grace period expires, the kubelet triggers forcible shutdown. The container runtime sends
SIGKILL to any processes still running in any container in the Pod.
The kubelet also cleans up a hidden pause container if that container runtime uses one.
The kubelet triggers forcible removal of Pod object from the API server, by setting grace period
to 0 (immediate deletion).
The API server deletes the Pod's API object, which is then no longer visible from any client.
Forced Pod termination
Caution: Forced deletions can be potentially disruptive for some workloads and their Pods.
By default, all deletes are graceful within 30 seconds. The kubectl delete command supports
the --grace-period=<seconds> option which allows you to override the default and specify your
own value.
Setting the grace period to 0 forcibly and immediately deletes the Pod from the API
server. If the pod was still running on a node, that forcible deletion triggers the kubelet to
begin immediate cleanup.
Note: You must specify an additional flag --force along with --grace-period=0 in order to perform force deletions.
When a force deletion is performed, the API server does not wait for confirmation
from the kubelet that the Pod has been terminated on the node it was running on. It
removes the Pod in the API immediately so a new Pod can be created with the same
name. On the node, Pods that are set to terminate immediately will still be given
a small grace period before being force killed.
If you need to force-delete Pods that are part of a StatefulSet, refer to the task
documentation for
deleting Pods from a StatefulSet.
Garbage collection of failed Pods
For failed Pods, the API objects remain in the cluster's API until a human or
controller process
explicitly removes them.
The control plane cleans up terminated Pods (with a phase of Succeeded or
Failed), when the number of Pods exceeds the configured threshold
(determined by terminated-pod-gc-threshold in the kube-controller-manager).
This avoids a resource leak as Pods are created and terminated over time.
For detailed information about Pod and container status in the API, see
the API reference documentation covering
.status for Pod.
1.2 - Init Containers
This page provides an overview of init containers: specialized containers that run
before app containers in a Pod.
Init containers can contain utilities or setup scripts not present in an app image.
You can specify init containers in the Pod specification alongside the containers
array (which describes app containers).
Understanding init containers
A Pod can have multiple containers
running apps within it, but it can also have one or more init containers, which are run
before the app containers are started.
Init containers are exactly like regular containers, except:
Init containers always run to completion.
Each init container must complete successfully before the next one starts.
If a Pod's init container fails, the kubelet repeatedly restarts that init container until it succeeds.
However, if the Pod has a restartPolicy of Never, and an init container fails during startup of that Pod, Kubernetes treats the overall Pod as failed.
To specify an init container for a Pod, add the initContainers field into
the Pod specification,
as an array of container items (similar to the app containers field and its contents).
See Container in the
API reference for more details.
The status of the init containers is returned in .status.initContainerStatuses
field as an array of the container statuses (similar to the .status.containerStatuses
field).
Differences from regular containers
Init containers support all the fields and features of app containers,
including resource limits, volumes, and security settings. However, the
resource requests and limits for an init container are handled differently,
as documented in Resources.
Also, init containers do not support lifecycle, livenessProbe, readinessProbe, or
startupProbe because they must run to completion before the Pod can be ready.
If you specify multiple init containers for a Pod, kubelet runs each init
container sequentially. Each init container must succeed before the next can run.
When all of the init containers have run to completion, kubelet initializes
the application containers for the Pod and runs them as usual.
Using init containers
Because init containers have separate images from app containers, they
have some advantages for start-up related code:
Init containers can contain utilities or custom code for setup that are not present in an app
image. For example, there is no need to make an image FROM another image just to use a tool like
sed, awk, python, or dig during setup.
The application image builder and deployer roles can work independently without
the need to jointly build a single app image.
Init containers can run with a different view of the filesystem than app containers in the
same Pod. Consequently, they can be given access to
Secrets that app containers cannot access.
Because init containers run to completion before any app containers start, init containers offer
a mechanism to block or delay app container startup until a set of preconditions are met. Once
preconditions are met, all of the app containers in a Pod can start in parallel.
Init containers can securely run utilities or custom code that would otherwise make an app
container image less secure. By keeping unnecessary tools separate you can limit the attack
surface of your app container image.
Examples
Here are some ideas for how to use init containers:
Wait for a Service to
be created, using a shell one-line command like:
for i in {1..100}; do sleep 1; if dig myservice; thenexit 0; fi; done; exit1
Register this Pod with a remote server from the downward API with a command like:
curl -X POST http://$MANAGEMENT_SERVICE_HOST:$MANAGEMENT_SERVICE_PORT/register -d 'instance=$(<POD_NAME>)&ip=$(<POD_IP>)'
Wait for some time before starting the app container with a command like
Place values into a configuration file and run a template tool to dynamically
generate a configuration file for the main app container. For example,
place the POD_IP value in a configuration and generate the main app
configuration file using Jinja.
Init containers in use
This example defines a simple Pod that has two init containers.
The first waits for myservice, and the second waits for mydb. Once both
init containers complete, the Pod runs the app container from its spec section.
apiVersion:v1kind:Podmetadata:name:myapp-podlabels:app:myappspec:containers:- name:myapp-containerimage:busybox:1.28command:['sh','-c','echo The app is running! && sleep 3600']initContainers:- name:init-myserviceimage:busybox:1.28command:['sh','-c',"until nslookup myservice.$(cat /var/run/secrets/kubernetes.io/serviceaccount/namespace).svc.cluster.local; do echo waiting for myservice; sleep 2; done"]- name:init-mydbimage:busybox:1.28command:['sh','-c',"until nslookup mydb.$(cat /var/run/secrets/kubernetes.io/serviceaccount/namespace).svc.cluster.local; do echo waiting for mydb; sleep 2; done"]
You can start this Pod by running:
kubectl apply -f myapp.yaml
The output is similar to this:
pod/myapp-pod created
And check on its status with:
kubectl get -f myapp.yaml
The output is similar to this:
NAME READY STATUS RESTARTS AGE
myapp-pod 0/1 Init:0/2 0 6m
or for more details:
kubectl describe -f myapp.yaml
The output is similar to this:
Name: myapp-pod
Namespace: default
[...]
Labels: app=myapp
Status: Pending
[...]
Init Containers:
init-myservice:
[...]
State: Running
[...]
init-mydb:
[...]
State: Waiting
Reason: PodInitializing
Ready: False
[...]
Containers:
myapp-container:
[...]
State: Waiting
Reason: PodInitializing
Ready: False
[...]
Events:
FirstSeen LastSeen Count From SubObjectPath Type Reason Message
--------- -------- ----- ---- ------------- -------- ------ -------
16s 16s 1 {default-scheduler } Normal Scheduled Successfully assigned myapp-pod to 172.17.4.201
16s 16s 1 {kubelet 172.17.4.201} spec.initContainers{init-myservice} Normal Pulling pulling image "busybox"
13s 13s 1 {kubelet 172.17.4.201} spec.initContainers{init-myservice} Normal Pulled Successfully pulled image "busybox"
13s 13s 1 {kubelet 172.17.4.201} spec.initContainers{init-myservice} Normal Created Created container with docker id 5ced34a04634; Security:[seccomp=unconfined]
13s 13s 1 {kubelet 172.17.4.201} spec.initContainers{init-myservice} Normal Started Started container with docker id 5ced34a04634
To see logs for the init containers in this Pod, run:
kubectl logs myapp-pod -c init-myservice # Inspect the first init container
kubectl logs myapp-pod -c init-mydb # Inspect the second init container
At this point, those init containers will be waiting to discover Services named
mydb and myservice.
Here's a configuration you can use to make those Services appear:
You'll then see that those init containers complete, and that the myapp-pod
Pod moves into the Running state:
kubectl get -f myapp.yaml
The output is similar to this:
NAME READY STATUS RESTARTS AGE
myapp-pod 1/1 Running 0 9m
This simple example should provide some inspiration for you to create your own
init containers. What's next contains a link to a more detailed example.
Detailed behavior
During Pod startup, the kubelet delays running init containers until the networking
and storage are ready. Then the kubelet runs the Pod's init containers in the order
they appear in the Pod's spec.
Each init container must exit successfully before
the next container starts. If a container fails to start due to the runtime or
exits with failure, it is retried according to the Pod restartPolicy. However,
if the Pod restartPolicy is set to Always, the init containers use
restartPolicy OnFailure.
A Pod cannot be Ready until all init containers have succeeded. The ports on an
init container are not aggregated under a Service. A Pod that is initializing
is in the Pending state but should have a condition Initialized set to false.
If the Pod restarts, or is restarted, all init containers
must execute again.
Changes to the init container spec are limited to the container image field.
Altering an init container image field is equivalent to restarting the Pod.
Because init containers can be restarted, retried, or re-executed, init container
code should be idempotent. In particular, code that writes to files on EmptyDirs
should be prepared for the possibility that an output file already exists.
Init containers have all of the fields of an app container. However, Kubernetes
prohibits readinessProbe from being used because init containers cannot
define readiness distinct from completion. This is enforced during validation.
Use activeDeadlineSeconds on the Pod to prevent init containers from failing forever.
The active deadline includes init containers.
However it is recommended to use activeDeadlineSeconds only if teams deploy their application
as a Job, because activeDeadlineSeconds has an effect even after initContainer finished.
The Pod which is already running correctly would be killed by activeDeadlineSeconds if you set.
The name of each app and init container in a Pod must be unique; a
validation error is thrown for any container sharing a name with another.
Resources
Given the ordering and execution for init containers, the following rules
for resource usage apply:
The highest of any particular resource request or limit defined on all init
containers is the effective init request/limit. If any resource has no
resource limit specified this is considered as the highest limit.
The Pod's effective request/limit for a resource is the higher of:
the sum of all app containers request/limit for a resource
the effective init request/limit for a resource
Scheduling is done based on effective requests/limits, which means
init containers can reserve resources for initialization that are not used
during the life of the Pod.
The QoS (quality of service) tier of the Pod's effective QoS tier is the
QoS tier for init containers and app containers alike.
Quota and limits are applied based on the effective Pod request and
limit.
Pod level control groups (cgroups) are based on the effective Pod request and
limit, the same as the scheduler.
Pod restart reasons
A Pod can restart, causing re-execution of init containers, for the following
reasons:
The Pod infrastructure container is restarted. This is uncommon and would
have to be done by someone with root access to nodes.
All containers in a Pod are terminated while restartPolicy is set to Always,
forcing a restart, and the init container completion record has been lost due
to garbage collection.
The Pod will not be restarted when the init container image is changed, or the
init container completion record has been lost due to garbage collection. This
applies for Kubernetes v1.20 and later. If you are using an earlier version of
Kubernetes, consult the documentation for the version you are using.
You can use topology spread constraints to control how Pods are spread across your cluster among failure-domains such as regions, zones, nodes, and other user-defined topology domains. This can help to achieve high availability as well as efficient resource utilization.
Prerequisites
Node Labels
Topology spread constraints rely on node labels to identify the topology domain(s) that each Node is in. For example, a Node might have labels: node=node1,zone=us-east-1a,region=us-east-1
Suppose you have a 4-node cluster with the following labels:
NAME STATUS ROLES AGE VERSION LABELS
node1 Ready <none> 4m26s v1.16.0 node=node1,zone=zoneA
node2 Ready <none> 3m58s v1.16.0 node=node2,zone=zoneA
node3 Ready <none> 3m17s v1.16.0 node=node3,zone=zoneB
node4 Ready <none> 2m43s v1.16.0 node=node4,zone=zoneB
Then the cluster is logically viewed as below:
Instead of manually applying labels, you can also reuse the well-known labels that are created and populated automatically on most clusters.
Spread Constraints for Pods
API
The API field pod.spec.topologySpreadConstraints is defined as below:
You can define one or multiple topologySpreadConstraint to instruct the kube-scheduler how to place each incoming Pod in relation to the existing Pods across your cluster. The fields are:
maxSkew describes the degree to which Pods may be unevenly distributed.
It must be greater than zero. Its semantics differs according to the value of whenUnsatisfiable:
when whenUnsatisfiable equals to "DoNotSchedule", maxSkew is the maximum
permitted difference between the number of matching pods in the target
topology and the global minimum
(the minimum number of pods that match the label selector in a topology domain. For example, if you have 3 zones with 0, 2 and 3 matching pods respectively, The global minimum is 0).
when whenUnsatisfiable equals to "ScheduleAnyway", scheduler gives higher
precedence to topologies that would help reduce the skew.
topologyKey is the key of node labels. If two Nodes are labelled with this key and have identical values for that label, the scheduler treats both Nodes as being in the same topology. The scheduler tries to place a balanced number of Pods into each topology domain.
whenUnsatisfiable indicates how to deal with a Pod if it doesn't satisfy the spread constraint:
DoNotSchedule (default) tells the scheduler not to schedule it.
ScheduleAnyway tells the scheduler to still schedule it while prioritizing nodes that minimize the skew.
labelSelector is used to find matching Pods. Pods that match this label selector are counted to determine the number of Pods in their corresponding topology domain. See Label Selectors for more details.
When a Pod defines more than one topologySpreadConstraint, those constraints are ANDed: The kube-scheduler looks for a node for the incoming Pod that satisfies all the constraints.
You can read more about this field by running kubectl explain Pod.spec.topologySpreadConstraints.
Example: One TopologySpreadConstraint
Suppose you have a 4-node cluster where 3 Pods labeled foo:bar are located in node1, node2 and node3 respectively:
If we want an incoming Pod to be evenly spread with existing Pods across zones, the spec can be given as:
topologyKey: zone implies the even distribution will only be applied to the nodes which have label pair "zone:<any value>" present. whenUnsatisfiable: DoNotSchedule tells the scheduler to let it stay pending if the incoming Pod can't satisfy the constraint.
If the scheduler placed this incoming Pod into "zoneA", the Pods distribution would become [3, 1], hence the actual skew is 2 (3 - 1) - which violates maxSkew: 1. In this example, the incoming Pod can only be placed onto "zoneB":
OR
You can tweak the Pod spec to meet various kinds of requirements:
Change maxSkew to a bigger value like "2" so that the incoming Pod can be placed onto "zoneA" as well.
Change topologyKey to "node" so as to distribute the Pods evenly across nodes instead of zones. In the above example, if maxSkew remains "1", the incoming Pod can only be placed onto "node4".
Change whenUnsatisfiable: DoNotSchedule to whenUnsatisfiable: ScheduleAnyway to ensure the incoming Pod to be always schedulable (suppose other scheduling APIs are satisfied). However, it's preferred to be placed onto the topology domain which has fewer matching Pods. (Be aware that this preferability is jointly normalized with other internal scheduling priorities like resource usage ratio, etc.)
Example: Multiple TopologySpreadConstraints
This builds upon the previous example. Suppose you have a 4-node cluster where 3 Pods labeled foo:bar are located in node1, node2 and node3 respectively:
You can use 2 TopologySpreadConstraints to control the Pods spreading on both zone and node:
In this case, to match the first constraint, the incoming Pod can only be placed onto "zoneB"; while in terms of the second constraint, the incoming Pod can only be placed onto "node4". Then the results of 2 constraints are ANDed, so the only viable option is to place on "node4".
Multiple constraints can lead to conflicts. Suppose you have a 3-node cluster across 2 zones:
If you apply "two-constraints.yaml" to this cluster, you will notice "mypod" stays in Pending state. This is because: to satisfy the first constraint, "mypod" can only be put to "zoneB"; while in terms of the second constraint, "mypod" can only put to "node2". Then a joint result of "zoneB" and "node2" returns nothing.
To overcome this situation, you can either increase the maxSkew or modify one of the constraints to use whenUnsatisfiable: ScheduleAnyway.
Interaction With Node Affinity and Node Selectors
The scheduler will skip the non-matching nodes from the skew calculations if the incoming Pod has spec.nodeSelector or spec.affinity.nodeAffinity defined.
Example: TopologySpreadConstraints with NodeAffinity
Suppose you have a 5-node cluster ranging from zoneA to zoneC:
and you know that "zoneC" must be excluded. In this case, you can compose the yaml as below, so that "mypod" will be placed onto "zoneB" instead of "zoneC". Similarly spec.nodeSelector is also respected.
The scheduler doesn't have prior knowledge of all the zones or other topology domains that a cluster has. They are determined from the existing nodes in the cluster. This could lead to a problem in autoscaled clusters, when a node pool (or node group) is scaled to zero nodes and the user is expecting them to scale up, because, in this case, those topology domains won't be considered until there is at least one node in them.
Other Noticeable Semantics
There are some implicit conventions worth noting here:
Only the Pods holding the same namespace as the incoming Pod can be matching candidates.
The scheduler will bypass the nodes without topologySpreadConstraints[*].topologyKey present. This implies that:
the Pods located on those nodes do not impact maxSkew calculation - in the above example, suppose "node1" does not have label "zone", then the 2 Pods will be disregarded, hence the incoming Pod will be scheduled into "zoneA".
the incoming Pod has no chances to be scheduled onto this kind of nodes - in the above example, suppose a "node5" carrying label {zone-typo: zoneC} joins the cluster, it will be bypassed due to the absence of label key "zone".
Be aware of what will happen if the incomingPod's topologySpreadConstraints[*].labelSelector doesn't match its own labels. In the above example, if we remove the incoming Pod's labels, it can still be placed onto "zoneB" since the constraints are still satisfied. However, after the placement, the degree of imbalance of the cluster remains unchanged - it's still zoneA having 2 Pods which hold label {foo:bar}, and zoneB having 1 Pod which holds label {foo:bar}. So if this is not what you expect, we recommend the workload's topologySpreadConstraints[*].labelSelector to match its own labels.
Cluster-level default constraints
It is possible to set default topology spread constraints for a cluster. Default
topology spread constraints are applied to a Pod if, and only if:
It doesn't define any constraints in its .spec.topologySpreadConstraints.
It belongs to a service, replication controller, replica set or stateful set.
Default constraints can be set as part of the PodTopologySpread plugin args
in a scheduling profile.
The constraints are specified with the same API above, except that
labelSelector must be empty. The selectors are calculated from the services,
replication controllers, replica sets or stateful sets that the Pod belongs to.
Note: The score produced by default scheduling constraints might conflict with the
score produced by the
SelectorSpread plugin.
It is recommended that you disable this plugin in the scheduling profile when
using default constraints for PodTopologySpread.
Internal default constraints
FEATURE STATE:Kubernetes v1.20 [beta]
With the DefaultPodTopologySpread feature gate, enabled by default, the
legacy SelectorSpread plugin is disabled.
kube-scheduler uses the following default topology constraints for the
PodTopologySpread plugin configuration:
Also, the legacy SelectorSpread plugin, which provides an equivalent behavior,
is disabled.
Note:
The PodTopologySpread plugin does not score the nodes that don't have
the topology keys specified in the spreading constraints. This might result
in a different default behavior compared to the legacy SelectorSpread plugin when
using the default topology constraints.
If your nodes are not expected to have bothkubernetes.io/hostname and
topology.kubernetes.io/zone labels set, define your own constraints
instead of using the Kubernetes defaults.
If you don't want to use the default Pod spreading constraints for your cluster,
you can disable those defaults by setting defaultingType to List and leaving
empty defaultConstraints in the PodTopologySpread plugin configuration:
In Kubernetes, directives related to "Affinity" control how Pods are
scheduled - more packed or more scattered.
For PodAffinity, you can try to pack any number of Pods into qualifying
topology domain(s)
For PodAntiAffinity, only one Pod can be scheduled into a
single topology domain.
For finer control, you can specify topology spread constraints to distribute
Pods across different topology domains - to achieve either high availability or
cost-saving. This can also help on rolling update workloads and scaling out
replicas smoothly. See
Motivation
for more details.
Known Limitations
There's no guarantee that the constraints remain satisfied when Pods are removed. For example, scaling down a Deployment may result in imbalanced Pods distribution.
You can use Descheduler to rebalance the Pods distribution.
Pods matched on tainted nodes are respected. See Issue 80921
This guide is for application owners who want to build
highly available applications, and thus need to understand
what types of disruptions can happen to Pods.
It is also for cluster administrators who want to perform automated
cluster actions, like upgrading and autoscaling clusters.
Voluntary and involuntary disruptions
Pods do not disappear until someone (a person or a controller) destroys them, or
there is an unavoidable hardware or system software error.
We call these unavoidable cases involuntary disruptions to
an application. Examples are:
a hardware failure of the physical machine backing the node
cluster administrator deletes VM (instance) by mistake
cloud provider or hypervisor failure makes VM disappear
a kernel panic
the node disappears from the cluster due to cluster network partition
Except for the out-of-resources condition, all these conditions
should be familiar to most users; they are not specific
to Kubernetes.
We call other cases voluntary disruptions. These include both
actions initiated by the application owner and those initiated by a Cluster
Administrator. Typical application owner actions include:
deleting the deployment or other controller that manages the pod
updating a deployment's pod template causing a restart
Draining a node from a cluster to scale the cluster down (learn about
Cluster Autoscaling
).
Removing a pod from a node to permit something else to fit on that node.
These actions might be taken directly by the cluster administrator, or by automation
run by the cluster administrator, or by your cluster hosting provider.
Ask your cluster administrator or consult your cloud provider or distribution documentation
to determine if any sources of voluntary disruptions are enabled for your cluster.
If none are enabled, you can skip creating Pod Disruption Budgets.
Caution: Not all voluntary disruptions are constrained by Pod Disruption Budgets. For example,
deleting deployments or pods bypasses Pod Disruption Budgets.
Dealing with disruptions
Here are some ways to mitigate involuntary disruptions:
Replicate your application if you need higher availability. (Learn about running replicated
stateless
and stateful applications.)
For even higher availability when running replicated applications,
spread applications across racks (using
anti-affinity)
or across zones (if using a
multi-zone cluster.)
The frequency of voluntary disruptions varies. On a basic Kubernetes cluster, there are
no automated voluntary disruptions (only user-triggered ones). However, your cluster administrator or hosting provider
may run some additional services which cause voluntary disruptions. For example,
rolling out node software updates can cause voluntary disruptions. Also, some implementations
of cluster (node) autoscaling may cause voluntary disruptions to defragment and compact nodes.
Your cluster administrator or hosting provider should have documented what level of voluntary
disruptions, if any, to expect. Certain configuration options, such as
using PriorityClasses
in your pod spec can also cause voluntary (and involuntary) disruptions.
Pod disruption budgets
FEATURE STATE:Kubernetes v1.21 [stable]
Kubernetes offers features to help you run highly available applications even when you
introduce frequent voluntary disruptions.
As an application owner, you can create a PodDisruptionBudget (PDB) for each application.
A PDB limits the number of Pods of a replicated application that are down simultaneously from
voluntary disruptions. For example, a quorum-based application would
like to ensure that the number of replicas running is never brought below the
number needed for a quorum. A web front end might want to
ensure that the number of replicas serving load never falls below a certain
percentage of the total.
Cluster managers and hosting providers should use tools which
respect PodDisruptionBudgets by calling the Eviction API
instead of directly deleting pods or deployments.
For example, the kubectl drain subcommand lets you mark a node as going out of
service. When you run kubectl drain, the tool tries to evict all of the Pods on
the Node you're taking out of service. The eviction request that kubectl submits on
your behalf may be temporarily rejected, so the tool periodically retries all failed
requests until all Pods on the target node are terminated, or until a configurable timeout
is reached.
A PDB specifies the number of replicas that an application can tolerate having, relative to how
many it is intended to have. For example, a Deployment which has a .spec.replicas: 5 is
supposed to have 5 pods at any given time. If its PDB allows for there to be 4 at a time,
then the Eviction API will allow voluntary disruption of one (but not two) pods at a time.
The group of pods that comprise the application is specified using a label selector, the same
as the one used by the application's controller (deployment, stateful-set, etc).
The "intended" number of pods is computed from the .spec.replicas of the workload resource
that is managing those pods. The control plane discovers the owning workload resource by
examining the .metadata.ownerReferences of the Pod.
Involuntary disruptions cannot be prevented by PDBs; however they
do count against the budget.
Pods which are deleted or unavailable due to a rolling upgrade to an application do count
against the disruption budget, but workload resources (such as Deployment and StatefulSet)
are not limited by PDBs when doing rolling upgrades. Instead, the handling of failures
during application updates is configured in the spec for the specific workload resource.
When a pod is evicted using the eviction API, it is gracefully
terminated, honoring the
terminationGracePeriodSeconds setting in its PodSpec.
PodDisruptionBudget example
Consider a cluster with 3 nodes, node-1 through node-3.
The cluster is running several applications. One of them has 3 replicas initially called
pod-a, pod-b, and pod-c. Another, unrelated pod without a PDB, called pod-x, is also shown.
Initially, the pods are laid out as follows:
node-1
node-2
node-3
pod-a available
pod-b available
pod-c available
pod-x available
All 3 pods are part of a deployment, and they collectively have a PDB which requires
there be at least 2 of the 3 pods to be available at all times.
For example, assume the cluster administrator wants to reboot into a new kernel version to fix a bug in the kernel.
The cluster administrator first tries to drain node-1 using the kubectl drain command.
That tool tries to evict pod-a and pod-x. This succeeds immediately.
Both pods go into the terminating state at the same time.
This puts the cluster in this state:
node-1 draining
node-2
node-3
pod-a terminating
pod-b available
pod-c available
pod-x terminating
The deployment notices that one of the pods is terminating, so it creates a replacement
called pod-d. Since node-1 is cordoned, it lands on another node. Something has
also created pod-y as a replacement for pod-x.
(Note: for a StatefulSet, pod-a, which would be called something like pod-0, would need
to terminate completely before its replacement, which is also called pod-0 but has a
different UID, could be created. Otherwise, the example applies to a StatefulSet as well.)
Now the cluster is in this state:
node-1 draining
node-2
node-3
pod-a terminating
pod-b available
pod-c available
pod-x terminating
pod-d starting
pod-y
At some point, the pods terminate, and the cluster looks like this:
node-1 drained
node-2
node-3
pod-b available
pod-c available
pod-d starting
pod-y
At this point, if an impatient cluster administrator tries to drain node-2 or
node-3, the drain command will block, because there are only 2 available
pods for the deployment, and its PDB requires at least 2. After some time passes, pod-d becomes available.
The cluster state now looks like this:
node-1 drained
node-2
node-3
pod-b available
pod-c available
pod-d available
pod-y
Now, the cluster administrator tries to drain node-2.
The drain command will try to evict the two pods in some order, say
pod-b first and then pod-d. It will succeed at evicting pod-b.
But, when it tries to evict pod-d, it will be refused because that would leave only
one pod available for the deployment.
The deployment creates a replacement for pod-b called pod-e.
Because there are not enough resources in the cluster to schedule
pod-e the drain will again block. The cluster may end up in this
state:
node-1 drained
node-2
node-3
no node
pod-b terminating
pod-c available
pod-e pending
pod-d available
pod-y
At this point, the cluster administrator needs to
add a node back to the cluster to proceed with the upgrade.
You can see how Kubernetes varies the rate at which disruptions
can happen, according to:
how many replicas an application needs
how long it takes to gracefully shutdown an instance
how long it takes a new instance to start up
the type of controller
the cluster's resource capacity
Separating Cluster Owner and Application Owner Roles
Often, it is useful to think of the Cluster Manager
and Application Owner as separate roles with limited knowledge
of each other. This separation of responsibilities
may make sense in these scenarios:
when there are many application teams sharing a Kubernetes cluster, and
there is natural specialization of roles
when third-party tools or services are used to automate cluster management
Pod Disruption Budgets support this separation of roles by providing an
interface between the roles.
If you do not have such a separation of responsibilities in your organization,
you may not need to use Pod Disruption Budgets.
How to perform Disruptive Actions on your Cluster
If you are a Cluster Administrator, and you need to perform a disruptive action on all
the nodes in your cluster, such as a node or system software upgrade, here are some options:
Accept downtime during the upgrade.
Failover to another complete replica cluster.
No downtime, but may be costly both for the duplicated nodes
and for human effort to orchestrate the switchover.
Write disruption tolerant applications and use PDBs.
No downtime.
Minimal resource duplication.
Allows more automation of cluster administration.
Writing disruption-tolerant applications is tricky, but the work to tolerate voluntary
disruptions largely overlaps with work to support autoscaling and tolerating
involuntary disruptions.
Learn about updating a deployment
including steps to maintain its availability during the rollout.
1.5 - Ephemeral Containers
FEATURE STATE:Kubernetes v1.23 [beta]
This page provides an overview of ephemeral containers: a special type of container
that runs temporarily in an existing Pod to
accomplish user-initiated actions such as troubleshooting. You use ephemeral
containers to inspect services rather than to build applications.
Understanding ephemeral containers
Pods are the fundamental building
block of Kubernetes applications. Since Pods are intended to be disposable and
replaceable, you cannot add a container to a Pod once it has been created.
Instead, you usually delete and replace Pods in a controlled fashion using
deployments.
Sometimes it's necessary to inspect the state of an existing Pod, however, for
example to troubleshoot a hard-to-reproduce bug. In these cases you can run
an ephemeral container in an existing Pod to inspect its state and run
arbitrary commands.
What is an ephemeral container?
Ephemeral containers differ from other containers in that they lack guarantees
for resources or execution, and they will never be automatically restarted, so
they are not appropriate for building applications. Ephemeral containers are
described using the same ContainerSpec as regular containers, but many fields
are incompatible and disallowed for ephemeral containers.
Ephemeral containers may not have ports, so fields such as ports,
livenessProbe, readinessProbe are disallowed.
Pod resource allocations are immutable, so setting resources is disallowed.
Ephemeral containers are created using a special ephemeralcontainers handler
in the API rather than by adding them directly to pod.spec, so it's not
possible to add an ephemeral container using kubectl edit.
Like regular containers, you may not change or remove an ephemeral container
after you have added it to a Pod.
Uses for ephemeral containers
Ephemeral containers are useful for interactive troubleshooting when kubectl exec is insufficient because a container has crashed or a container image
doesn't include debugging utilities.
In particular, distroless images
enable you to deploy minimal container images that reduce attack surface
and exposure to bugs and vulnerabilities. Since distroless images do not include a
shell or any debugging utilities, it's difficult to troubleshoot distroless
images using kubectl exec alone.
When using ephemeral containers, it's helpful to enable process namespace
sharing so
you can view processes in other containers.
A Deployment provides declarative updates for Pods and
ReplicaSets.
You describe a desired state in a Deployment, 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: Do not manage ReplicaSets owned by a Deployment. Consider opening an issue in the main Kubernetes repository if your use case is not covered below.
Use Case
The following are typical use cases for Deployments:
Declare the new state of the Pods by updating the PodTemplateSpec of the Deployment. A new ReplicaSet is created and the Deployment manages moving the Pods from the old ReplicaSet to the new one at a controlled rate. Each new ReplicaSet updates the revision of the Deployment.
A Deployment named nginx-deployment is created, indicated by the .metadata.name field.
The Deployment creates three replicated Pods, indicated by the .spec.replicas field.
The .spec.selector field defines how the Deployment finds which Pods to manage.
In this case, you select a label that is defined in the Pod template (app: nginx).
However, more sophisticated selection rules are possible,
as long as the Pod template itself satisfies the rule.
Note: The .spec.selector.matchLabels field is a map of {key,value} pairs.
A single {key,value} in the matchLabels map is equivalent to an element of matchExpressions,
whose key field is "key", the operator is "In", and the values array contains only "value".
All of the requirements, from both matchLabels and matchExpressions, must be satisfied in order to match.
The template field contains the following sub-fields:
The Pods are labeled app: nginxusing the .metadata.labels field.
The Pod template's specification, or .template.spec field, indicates that
the Pods run one container, nginx, which runs the nginxDocker Hub image at version 1.14.2.
Create one container and name it nginx using the .spec.template.spec.containers[0].name field.
Before you begin, make sure your Kubernetes cluster is up and running.
Follow the steps given below to create the above Deployment:
Create the Deployment by running the following command:
Run kubectl get deployments to check if the Deployment was created.
If the Deployment is still being created, the output is similar to the following:
NAME READY UP-TO-DATE AVAILABLE AGE
nginx-deployment 0/3 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 namespace.
READY displays how many replicas of the application are available to your users. It follows the pattern ready/desired.
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 number of desired replicas is 3 according to .spec.replicas field.
To see the Deployment rollout status, run kubectl rollout status deployment/nginx-deployment.
The output is similar to:
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.
The output is similar to this:
NAME READY 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.
To see the ReplicaSet (rs) created by the Deployment, run kubectl get rs. The output is similar to this:
NAME DESIRED CURRENT READY AGE
nginx-deployment-75675f5897 3 3 3 18s
ReplicaSet output shows the following fields:
NAME lists the names of the ReplicaSets in the namespace.
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.
READY 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 that the name of the ReplicaSet is always formatted as [DEPLOYMENT-NAME]-[RANDOM-STRING].
The random string is randomly generated and uses the pod-template-hash as a seed.
To see the labels automatically generated for each Pod, run kubectl get pods --show-labels.
The output is similar to:
NAME READY STATUS RESTARTS AGE LABELS
nginx-deployment-75675f5897-7ci7o 1/1 Running 0 18s app=nginx,pod-template-hash=3123191453
nginx-deployment-75675f5897-kzszj 1/1 Running 0 18s app=nginx,pod-template-hash=3123191453
nginx-deployment-75675f5897-qqcnn 1/1 Running 0 18s app=nginx,pod-template-hash=3123191453
The created ReplicaSet ensures that there are three nginx Pods.
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.
Pod-template-hash label
Caution: 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.
Updating a Deployment
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.
Follow the steps given below to update your Deployment:
Let's update the nginx Pods to use the nginx:1.16.1 image instead of the nginx:1.14.2 image.
kubectl set image deployment.v1.apps/nginx-deployment nginx=nginx:1.16.1
or use the following command:
kubectl set image deployment/nginx-deployment nginx=nginx:1.16.1
The output is similar to:
deployment.apps/nginx-deployment image updated
Alternatively, you can edit the Deployment and change .spec.template.spec.containers[0].image from nginx:1.14.2 to nginx:1.16.1:
kubectl edit deployment/nginx-deployment
The output is similar to:
deployment.apps/nginx-deployment edited
To see the rollout status, run:
kubectl rollout status deployment/nginx-deployment
The output is similar to this:
Waiting for rollout to finish: 2 out of 3 new replicas have been updated...
or
deployment "nginx-deployment" successfully rolled out
Get more details on your updated Deployment:
After the rollout succeeds, you can view the Deployment by running kubectl get deployments.
The output is similar to this:
NAME READY UP-TO-DATE AVAILABLE AGEnginx-deployment 3/3 3 3 36s
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
The output is similar to this:
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
The output is similar to this:
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 you want to update these Pods, you only need to update the Deployment's Pod template again.
Deployment ensures that only a certain number of Pods are down while they are being updated. By default,
it ensures that at least 75% of the desired number of Pods are up (25% max unavailable).
Deployment also ensures that only a certain number of Pods are created above the desired number of Pods.
By default, it ensures that at most 125% of 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 creates a new Pod,
then deletes an old Pod, and creates another new one. 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 at least 3 Pods are available and that at max 4 Pods in total are available. In case of
a Deployment with 4 replicas, the number of Pods would be between 3 and 5.
Get details of your Deployment:
kubectl describe deployments
The output is similar to this:
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:1.16.1
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 you see that when you first created the Deployment, it created a ReplicaSet (nginx-deployment-2035384211)
and scaled it up to 3 replicas directly. When you updated the Deployment, it created a new ReplicaSet
(nginx-deployment-1564180365) and scaled it up to 1 and waited for it to come up. Then it scaled down the old ReplicaSet
to 2 and scaled up the new ReplicaSet to 2 so that at least 3 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, you'll have 3 available replicas in the new ReplicaSet, and the old ReplicaSet is scaled down to 0.
Note: Kubernetes doesn't count terminating Pods when calculating the number of availableReplicas, which must be between
replicas - maxUnavailable and replicas + maxSurge. As a result, you might notice that there are more Pods than
expected during a rollout, and that the total resources consumed by the Deployment is more than replicas + maxSurge
until the terminationGracePeriodSeconds of the terminating Pods expires.
Rollover (aka multiple updates in-flight)
Each time a new Deployment is observed by the Deployment controller, a ReplicaSet is created to bring up
the desired Pods. If the Deployment is updated, the existing ReplicaSet that controls Pods whose labels
match .spec.selector but whose template does not match .spec.template are scaled down. Eventually, the new
ReplicaSet is scaled to .spec.replicas and all old ReplicaSets is scaled to 0.
If you update a Deployment while an existing rollout is in progress, the Deployment creates a new ReplicaSet
as per the update and start scaling that up, and rolls over the ReplicaSet that it was scaling up previously
-- it will add it to its list of old ReplicaSets and start scaling it down.
For example, suppose you create a Deployment to create 5 replicas of nginx:1.14.2,
but then update the Deployment to create 5 replicas of nginx:1.16.1, when only 3
replicas of nginx:1.14.2 had been created. In that case, the Deployment immediately starts
killing the 3 nginx:1.14.2 Pods that it had created, and starts creating
nginx:1.16.1 Pods. It does not wait for the 5 replicas of nginx:1.14.2 to be created
before changing course.
Label selector updates
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 version apps/v1, a Deployment's label selector is immutable after it gets created.
Selector additions require the Pod template labels in the Deployment spec to be updated with the new label too,
otherwise a validation error is returned. This change is a non-overlapping one, meaning that the new selector does
not select ReplicaSets and Pods created with the old selector, resulting in orphaning all old ReplicaSets and
creating a new ReplicaSet.
Selector updates changes the existing value in a selector key -- result in the same behavior as additions.
Selector removals removes an existing key from the Deployment selector -- do not require any changes in the
Pod template labels. Existing ReplicaSets are not orphaned, and a new ReplicaSet is not created, but note that the
removed label still exists in any existing Pods and ReplicaSets.
Rolling Back a Deployment
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 you 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 you made a typo while updating the Deployment, by putting the image name as nginx:1.161 instead of nginx:1.16.1:
kubectl set image deployment/nginx-deployment nginx=nginx:1.161
The output is similar to this:
deployment.apps/nginx-deployment image updated
The rollout gets stuck. You can verify it by checking the rollout status:
kubectl rollout status deployment/nginx-deployment
The output is similar to this:
Waiting for rollout to finish: 1 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 see that the number of old replicas (nginx-deployment-1564180365 and nginx-deployment-2035384211) is 2, and new replicas (nginx-deployment-3066724191) is 1.
kubectl get rs
The output is similar to this:
NAME DESIRED CURRENT READY AGE
nginx-deployment-1564180365 3 3 3 25s
nginx-deployment-2035384211 0 0 0 36s
nginx-deployment-3066724191 1 1 0 6s
Looking at the Pods created, you see that 1 Pod created by new ReplicaSet is stuck in an image pull loop.
kubectl get pods
The output is similar to this:
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-1564180365-hysrc 1/1 Running 0 25s
nginx-deployment-3066724191-08mng 0/1 ImagePullBackOff 0 6s
Note: The Deployment controller stops the bad rollout automatically, and stops scaling up the new ReplicaSet. This depends on the rollingUpdate parameters (maxUnavailable specifically) that you have specified. Kubernetes by default sets the value to 25%.
Get the description of the Deployment:
kubectl describe deployment
The output is similar to this:
Name: nginx-deployment
Namespace: default
CreationTimestamp: Tue, 15 Mar 2016 14:48:04 -0700
Labels: app=nginx
Selector: app=nginx
Replicas: 3 desired | 1 updated | 4 total | 3 available | 1 unavailable
StrategyType: RollingUpdate
MinReadySeconds: 0
RollingUpdateStrategy: 25% max unavailable, 25% max surge
Pod Template:
Labels: app=nginx
Containers:
nginx:
Image: nginx:1.161
Port: 80/TCP
Host Port: 0/TCP
Environment: <none>
Mounts: <none>
Volumes: <none>
Conditions:
Type Status Reason
---- ------ ------
Available True MinimumReplicasAvailable
Progressing True ReplicaSetUpdated
OldReplicaSets: nginx-deployment-1564180365 (3/3 replicas created)
NewReplicaSet: nginx-deployment-3066724191 (1/1 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 1
21s 21s 1 {deployment-controller } Normal ScalingReplicaSet Scaled up replica set nginx-deployment-1564180365 to 3
13s 13s 1 {deployment-controller } Normal ScalingReplicaSet Scaled down replica set nginx-deployment-2035384211 to 0
13s 13s 1 {deployment-controller } Normal ScalingReplicaSet Scaled up replica set nginx-deployment-3066724191 to 1
To fix this, you need to rollback to a previous revision of Deployment that is stable.
Checking Rollout History of a Deployment
Follow the steps given below to check the rollout history:
First, check the revisions of this Deployment:
kubectl rollout history deployment/nginx-deployment
The output is similar to this:
deployments "nginx-deployment"
REVISION CHANGE-CAUSE
1 kubectl apply --filename=https://k8s.io/examples/controllers/nginx-deployment.yaml
2 kubectl set image deployment/nginx-deployment nginx=nginx:1.16.1
3 kubectl set image deployment/nginx-deployment nginx=nginx:1.161
CHANGE-CAUSE is copied from the Deployment annotation kubernetes.io/change-cause to its revisions upon creation. You can specify theCHANGE-CAUSE message by:
Annotating the Deployment with kubectl annotate deployment/nginx-deployment kubernetes.io/change-cause="image updated to 1.16.1"
Manually editing the manifest of the resource.
To see the details of each revision, run:
kubectl rollout history deployment/nginx-deployment --revision=2
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.
Check if the rollback was successful and the Deployment is running as expected, run:
kubectl get deployment nginx-deployment
The output is similar to this:
NAME READY UP-TO-DATE AVAILABLE AGE
nginx-deployment 3/3 3 3 30m
Get the description of the Deployment:
kubectl describe deployment nginx-deployment
The output is similar to this:
Name: nginx-deployment
Namespace: default
CreationTimestamp: Sun, 02 Sep 2018 18:17:55 -0500
Labels: app=nginx
Annotations: deployment.kubernetes.io/revision=4
kubernetes.io/change-cause=kubectl set image deployment/nginx-deployment nginx=nginx:1.16.1
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:1.16.1
Port: 80/TCP
Host Port: 0/TCP
Environment: <none>
Mounts: <none>
Volumes: <none>
Conditions:
Type Status Reason
---- ------ ------
Available True MinimumReplicasAvailable
Progressing True NewReplicaSetAvailable
OldReplicaSets: <none>
NewReplicaSet: nginx-deployment-c4747d96c (3/3 replicas created)
Events:
Type Reason Age From Message
---- ------ ---- ---- -------
Normal ScalingReplicaSet 12m deployment-controller Scaled up replica set nginx-deployment-75675f5897 to 3
Normal ScalingReplicaSet 11m deployment-controller Scaled up replica set nginx-deployment-c4747d96c to 1
Normal ScalingReplicaSet 11m deployment-controller Scaled down replica set nginx-deployment-75675f5897 to 2
Normal ScalingReplicaSet 11m deployment-controller Scaled up replica set nginx-deployment-c4747d96c to 2
Normal ScalingReplicaSet 11m deployment-controller Scaled down replica set nginx-deployment-75675f5897 to 1
Normal ScalingReplicaSet 11m deployment-controller Scaled up replica set nginx-deployment-c4747d96c to 3
Normal ScalingReplicaSet 11m deployment-controller Scaled down replica set nginx-deployment-75675f5897 to 0
Normal ScalingReplicaSet 11m deployment-controller Scaled up replica set nginx-deployment-595696685f to 1
Normal DeploymentRollback 15s deployment-controller Rolled back deployment "nginx-deployment" to revision 2
Normal ScalingReplicaSet 15s deployment-controller Scaled down replica set nginx-deployment-595696685f to 0
Scaling a Deployment
You can scale a Deployment by using the following command:
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.
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), the Deployment controller balances 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.
Ensure that the 10 replicas in your Deployment are running.
kubectl get deploy
The output is similar to this:
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 deployment/nginx-deployment nginx=nginx:sometag
The output is similar to this:
deployment.apps/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 you mentioned above. Check out the rollout status:
kubectl get rs
The output is similar to this:
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 you weren't using
proportional scaling, all 5 of them would be added in the new ReplicaSet. With proportional scaling, you
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 are added to the old ReplicaSet and 2 replicas are added to the
new ReplicaSet. The rollout process should eventually move all replicas to the new ReplicaSet, assuming
the new replicas become healthy. To confirm this, run:
kubectl get deploy
The output is similar to this:
NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE
nginx-deployment 15 18 7 8 7m
The rollout status confirms how the replicas were added to each ReplicaSet.
kubectl get rs
The output is similar to this:
NAME DESIRED CURRENT READY AGE
nginx-deployment-1989198191 7 7 0 7m
nginx-deployment-618515232 11 11 11 7m
Pausing and Resuming a rollout of a Deployment
When you update a Deployment, or plan to, you can pause rollouts
for that Deployment before you trigger one or more updates. When
you're ready to apply those changes, you resume rollouts for the
Deployment. This approach allows you to
apply multiple fixes in between pausing and resuming without triggering unnecessary rollouts.
For example, with a Deployment that was created:
Get the Deployment details:
kubectl get deploy
The output is similar to this:
NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE
nginx 3 3 3 3 1m
Get the rollout status:
kubectl get rs
The output is similar to this:
NAME DESIRED CURRENT READY AGE
nginx-2142116321 3 3 3 1m
Pause by running the following command:
kubectl rollout pause deployment/nginx-deployment
The output is similar to this:
deployment.apps/nginx-deployment paused
Then update the image of the Deployment:
kubectl set image deployment/nginx-deployment nginx=nginx:1.16.1
The output is similar to this:
deployment.apps/nginx-deployment image updated
Notice that no new rollout started:
kubectl rollout history deployment/nginx-deployment
The initial state of the Deployment prior to pausing its rollout will continue its function, but new updates to
the Deployment will not have any effect as long as the Deployment rollout is paused.
Eventually, resume the Deployment rollout and observe a new ReplicaSet coming up with all the new updates:
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.
Deployment status
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.
Progressing Deployment
Kubernetes marks a Deployment as progressing when one of the following tasks is performed:
The Deployment creates a new ReplicaSet.
The Deployment is scaling up its newest ReplicaSet.
The Deployment is scaling down its older ReplicaSet(s).
New Pods become ready or available (ready for at least MinReadySeconds).
When the rollout becomes “progressing”, the Deployment controller adds a condition with the following
attributes to the Deployment's .status.conditions:
You can monitor the progress for a Deployment by using kubectl rollout status.
Complete Deployment
Kubernetes marks a Deployment as complete when it has the following characteristics:
All of the replicas associated with the Deployment have been updated to the latest version you've specified, meaning any
updates you've requested have been completed.
All of the replicas associated with the Deployment are available.
No old replicas for the Deployment are running.
When the rollout becomes “complete”, the Deployment controller sets a condition with the following
attributes to the Deployment's .status.conditions:
type: Progressing
status: "True"
reason: NewReplicaSetAvailable
This Progressing condition will retain a status value of "True" until a new rollout
is initiated. The condition holds even when availability of replicas changes (which
does instead affect the Available condition).
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 deployment/nginx-deployment
The output is similar to this:
Waiting for rollout to finish: 2 of 3 updated replicas are available...
deployment "nginx-deployment" successfully rolled out
and the exit status from kubectl rollout is 0 (success):
echo$?
0
Failed Deployment
Your Deployment may get stuck trying to deploy its newest ReplicaSet without ever completing. This can occur
due to some of the following factors:
Insufficient quota
Readiness probe failures
Image pull errors
Insufficient permissions
Limit ranges
Application runtime misconfiguration
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 of a rollout for a Deployment after 10 minutes:
Once the deadline has been exceeded, the Deployment controller adds a DeploymentCondition with the following
attributes to the Deployment's .status.conditions:
type: Progressing
status: "False"
reason: ProgressDeadlineExceeded
This condition can also fail early and is then set to status value of "False" due to reasons as ReplicaSetCreateError.
Also, the deadline is not taken into account anymore once the Deployment rollout completes.
Note: Kubernetes takes no action on a stalled Deployment other than to report a status condition with
reason: 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 rollout, Kubernetes does not check progress against your specified deadline.
You can safely pause a Deployment rollout 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
The output is similar to this:
<...>
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 is similar to this:
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 deployment/nginx-deployment
The output is similar to this:
Waiting for rollout to finish: 2 out of 3 new replicas have been updated...
error: deployment "nginx" exceeded its progress deadline
and the exit status from kubectl rollout is 1 (indicating an error):
echo$?
1
Operating on a failed deployment
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.
Clean up Policy
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.
Canary Deployment
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.
Writing a Deployment Spec
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.
The name of a Deployment object must be a valid
DNS subdomain name.
The .spec.template and .spec.selector are the only required fields 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.
.spec.replicas is an optional field that specifies the number of desired Pods. It defaults to 1.
Should you manually scale a Deployment, example via kubectl scale deployment deployment --replicas=X, and then you update that Deployment based on a manifest
(for example: by running kubectl apply -f deployment.yaml),
then applying that manifest overwrites the manual scaling that you previously did.
If a HorizontalPodAutoscaler (or any
similar API for horizontal scaling) is managing scaling for a Deployment, don't set .spec.replicas.
Instead, allow the Kubernetes
control plane to manage the
.spec.replicas field automatically.
Selector
.spec.selector is a required 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.
Strategy
.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.
Recreate Deployment
All existing Pods are killed before new ones are created when .spec.strategy.type==Recreate.
Note: This will only guarantee Pod termination previous to creation for upgrades. If you upgrade a Deployment, all Pods
of the old revision will be terminated immediately. Successful removal is awaited before any Pod of the new
revision is created. If you manually delete a Pod, the lifecycle is controlled by the ReplicaSet and the
replacement will be created immediately (even if the old Pod is still in a Terminating state). If you need an
"at most" guarantee for your Pods, you should consider using a
StatefulSet.
Rolling Update Deployment
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.
Max Unavailable
.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.
Max Surge
.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.
Progress Deadline Seconds
.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. This defaults to 600. 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.
Min Ready Seconds
.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.
Revision History Limit
A Deployment's revision history is stored in the ReplicaSets it controls.
.spec.revisionHistoryLimit is an optional field that specifies the number of old ReplicaSets to retain
to allow rollback. These old ReplicaSets consume resources in etcd and crowd the output of kubectl get rs. 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. By default, 10 old ReplicaSets will be kept, however its ideal value depends on the frequency and stability of new Deployments.
More specifically, setting this field to zero means that all old ReplicaSets with 0 replicas will be cleaned up.
In this case, a new Deployment rollout cannot be undone, since its revision history is cleaned up.
Paused
.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.
Deployment is a top-level resource in the Kubernetes REST API.
Read the
Deployment
object definition to understand the API for deployments.
Read about PodDisruptionBudget and how
you can use it to manage application availability during disruptions.
2.2 - ReplicaSet
A ReplicaSet's purpose is to maintain a stable set of replica Pods running at any given time. As such, it is often
used to guarantee the availability of a specified number of identical Pods.
How a ReplicaSet works
A ReplicaSet is defined with fields, including a selector that specifies how to identify Pods it can acquire, a number
of replicas indicating how many Pods it should be maintaining, and a pod template specifying the data of new Pods
it should create to meet the number of replicas criteria. A ReplicaSet then fulfills its purpose by creating
and deleting Pods as needed to reach the desired number. When a ReplicaSet needs to create new Pods, it uses its Pod
template.
A ReplicaSet is linked to its Pods via the Pods' metadata.ownerReferences
field, which specifies what resource the current object is owned by. All Pods acquired by a ReplicaSet have their owning
ReplicaSet's identifying information within their ownerReferences field. It's through this link that the ReplicaSet
knows of the state of the Pods it is maintaining and plans accordingly.
A ReplicaSet identifies new Pods to acquire by using its selector. If there is a Pod that has no OwnerReference or the
OwnerReference is not a Controller and it matches a ReplicaSet's selector, it will be immediately acquired by said
ReplicaSet.
When to use a ReplicaSet
A ReplicaSet ensures that a specified number of pod replicas are running at any given
time. However, a Deployment is a higher-level concept that manages ReplicaSets and
provides declarative updates to Pods along with a lot of other useful features.
Therefore, we recommend using Deployments instead of directly using ReplicaSets, unless
you require custom update orchestration or don't require updates at all.
This actually means that you may never need to manipulate ReplicaSet objects:
use a Deployment instead, and define your application in the spec section.
apiVersion:apps/v1kind:ReplicaSetmetadata:name:frontendlabels:app:guestbooktier:frontendspec:# modify replicas according to your casereplicas:3selector:matchLabels:tier:frontendtemplate:metadata:labels:tier:frontendspec:containers:- name:php-redisimage:gcr.io/google_samples/gb-frontend:v3
Saving this manifest into frontend.yaml and submitting it to a Kubernetes cluster will
create the defined ReplicaSet and the Pods that it manages.
While you can create bare Pods with no problems, it is strongly recommended to make sure that the bare Pods do not have
labels which match the selector of one of your ReplicaSets. The reason for this is because a ReplicaSet is not limited
to owning Pods specified by its template-- it can acquire other Pods in the manner specified in the previous sections.
Take the previous frontend ReplicaSet example, and the Pods specified in the following manifest:
As those Pods do not have a Controller (or any object) as their owner reference and match the selector of the frontend
ReplicaSet, they will immediately be acquired by it.
Suppose you create the Pods after the frontend ReplicaSet has been deployed and has set up its initial Pod replicas to
fulfill its replica count requirement:
You shall see that the ReplicaSet has acquired the Pods and has only created new ones according to its spec until the
number of its new Pods and the original matches its desired count. As fetching the Pods:
kubectl get pods
Will reveal in its output:
NAME READY STATUS RESTARTS AGE
frontend-hmmj2 1/1 Running 0 9s
pod1 1/1 Running 0 36s
pod2 1/1 Running 0 36s
In this manner, a ReplicaSet can own a non-homogenous set of Pods
Writing a ReplicaSet manifest
As with all other Kubernetes API objects, a ReplicaSet needs the apiVersion, kind, and metadata fields.
For ReplicaSets, the kind is always a ReplicaSet.
In Kubernetes 1.9 the API version apps/v1 on the ReplicaSet kind is the current version and is enabled by default. The API version apps/v1beta2 is deprecated.
Refer to the first lines of the frontend.yaml example for guidance.
The .spec.template is a pod template which is also
required to have labels in place. In our frontend.yaml example we had one label: tier: frontend.
Be careful not to overlap with the selectors of other controllers, lest they try to adopt this Pod.
For the template's restart policy field,
.spec.template.spec.restartPolicy, the only allowed value is Always, which is the default.
Pod Selector
The .spec.selector field is a label selector. As discussed
earlier these are the labels used to identify potential Pods to acquire. In our
frontend.yaml example, the selector was:
matchLabels:tier:frontend
In the ReplicaSet, .spec.template.metadata.labels must match spec.selector, or it will
be rejected by the API.
Note: For 2 ReplicaSets specifying the same .spec.selector but different .spec.template.metadata.labels and .spec.template.spec fields, each ReplicaSet ignores the Pods created by the other ReplicaSet.
Replicas
You can specify how many Pods should run concurrently by setting .spec.replicas. The ReplicaSet will create/delete
its Pods to match this number.
If you do not specify .spec.replicas, then it defaults to 1.
Working with ReplicaSets
Deleting a ReplicaSet and its Pods
To delete a ReplicaSet and all of its Pods, use kubectl delete. The Garbage collector automatically deletes all of the dependent Pods by default.
When using the REST API or the client-go library, you must set propagationPolicy to Background or Foreground in
the -d option.
For example:
You can delete a ReplicaSet without affecting any of its Pods using kubectl delete with the --cascade=orphan option.
When using the REST API or the client-go library, you must set propagationPolicy to Orphan.
For example:
Once the original is deleted, you can create a new ReplicaSet to replace it. As long
as the old and new .spec.selector are the same, then the new one will adopt the old Pods.
However, it will not make any effort to make existing Pods match a new, different pod template.
To update Pods to a new spec in a controlled way, use a
Deployment, as ReplicaSets do not support a rolling update directly.
Isolating Pods from a ReplicaSet
You can remove Pods from a ReplicaSet by changing their labels. This technique may be used to remove Pods
from service for debugging, data recovery, etc. Pods that are removed in this way will be replaced automatically (
assuming that the number of replicas is not also changed).
Scaling a ReplicaSet
A ReplicaSet can be easily scaled up or down by simply updating the .spec.replicas field. The ReplicaSet controller
ensures that a desired number of Pods with a matching label selector are available and operational.
When scaling down, the ReplicaSet controller chooses which pods to delete by sorting the available pods to
prioritize scaling down pods based on the following general algorithm:
Pending (and unschedulable) pods are scaled down first
If controller.kubernetes.io/pod-deletion-cost annotation is set, then
the pod with the lower value will come first.
Pods on nodes with more replicas come before pods on nodes with fewer replicas.
If the pods' creation times differ, the pod that was created more recently
comes before the older pod (the creation times are bucketed on an integer log scale
when the LogarithmicScaleDownfeature gate is enabled)
If all of the above match, then selection is random.
The annotation should be set on the pod, the range is [-2147483647, 2147483647]. It represents the cost of
deleting a pod compared to other pods belonging to the same ReplicaSet. Pods with lower deletion
cost are preferred to be deleted before pods with higher deletion cost.
The implicit value for this annotation for pods that don't set it is 0; negative values are permitted.
Invalid values will be rejected by the API server.
This feature is beta and enabled by default. You can disable it using the
feature gatePodDeletionCost in both kube-apiserver and kube-controller-manager.
Note:
This is honored on a best-effort basis, so it does not offer any guarantees on pod deletion order.
Users should avoid updating the annotation frequently, such as updating it based on a metric value,
because doing so will generate a significant number of pod updates on the apiserver.
Example Use Case
The different pods of an application could have different utilization levels. On scale down, the application
may prefer to remove the pods with lower utilization. To avoid frequently updating the pods, the application
should update controller.kubernetes.io/pod-deletion-cost once before issuing a scale down (setting the
annotation to a value proportional to pod utilization level). This works if the application itself controls
the down scaling; for example, the driver pod of a Spark deployment.
ReplicaSet as a Horizontal Pod Autoscaler Target
A ReplicaSet can also be a target for
Horizontal Pod Autoscalers (HPA). That is,
a ReplicaSet can be auto-scaled by an HPA. Here is an example HPA targeting
the ReplicaSet we created in the previous example.
Saving this manifest into hpa-rs.yaml and submitting it to a Kubernetes cluster should
create the defined HPA that autoscales the target ReplicaSet depending on the CPU usage
of the replicated Pods.
Deployment is an object which can own ReplicaSets and update
them and their Pods via declarative, server-side rolling updates.
While ReplicaSets can be used independently, today they're mainly used by Deployments as a mechanism to orchestrate Pod
creation, deletion and updates. When you use Deployments you don't have to worry about managing the ReplicaSets that
they create. Deployments own and manage their ReplicaSets.
As such, it is recommended to use Deployments when you want ReplicaSets.
Bare Pods
Unlike the case where a user directly created Pods, a ReplicaSet replaces Pods that are deleted or terminated for any reason, such as in the case of node failure or disruptive node maintenance, such as a kernel upgrade. For this reason, we recommend that you use a ReplicaSet even if your application requires only a single Pod. Think of it similarly to a process supervisor, only it supervises multiple Pods across multiple nodes instead of individual processes on a single node. A ReplicaSet delegates local container restarts to some agent on the node (for example, Kubelet or Docker).
Job
Use a Job instead of a ReplicaSet for Pods that are expected to terminate on their own
(that is, batch jobs).
DaemonSet
Use a DaemonSet instead of a ReplicaSet for Pods that provide a
machine-level function, such as machine monitoring or machine logging. These Pods have a lifetime that is tied
to a machine lifetime: the Pod needs to be running on the machine before other Pods start, and are
safe to terminate when the machine is otherwise ready to be rebooted/shutdown.
ReplicationController
ReplicaSets are the successors to ReplicationControllers.
The two serve the same purpose, and behave similarly, except that a ReplicationController does not support set-based
selector requirements as described in the labels user guide.
As such, ReplicaSets are preferred over ReplicationControllers
ReplicaSet is a top-level resource in the Kubernetes REST API.
Read the
ReplicaSet
object definition to understand the API for replica sets.
Read about PodDisruptionBudget and how
you can use it to manage application availability during disruptions.
2.3 - StatefulSets
StatefulSet is the workload API object used to manage stateful applications.
Manages the deployment and scaling of a set of Pods, and provides guarantees about the ordering and uniqueness of these Pods.
Like a Deployment, a StatefulSet manages Pods that are based on an identical container spec. Unlike a Deployment, a StatefulSet maintains a sticky identity for each of their Pods. These pods are created from the same spec, but are not interchangeable: each has a persistent identifier that it maintains across any rescheduling.
If you want to use storage volumes to provide persistence for your workload, you can use a StatefulSet as part of the solution. Although individual Pods in a StatefulSet are susceptible to failure, the persistent Pod identifiers make it easier to match existing volumes to the new Pods that replace any that have failed.
Using StatefulSets
StatefulSets are valuable for applications that require one or more of the
following.
Stable, unique network identifiers.
Stable, persistent storage.
Ordered, graceful deployment and scaling.
Ordered, automated rolling updates.
In the above, stable is synonymous with persistence across Pod (re)scheduling.
If an application doesn't require any stable identifiers or ordered deployment,
deletion, or scaling, you should deploy your application using a workload object
that provides a set of stateless replicas.
Deployment or
ReplicaSet may be better suited to your stateless needs.
Limitations
The storage for a given Pod must either be provisioned by a PersistentVolume Provisioner based on the requested storage class, or pre-provisioned by an admin.
Deleting and/or scaling a StatefulSet down will not delete the volumes associated with the StatefulSet. This is done to ensure data safety, which is generally more valuable than an automatic purge of all related StatefulSet resources.
StatefulSets currently require a Headless Service to be responsible for the network identity of the Pods. You are responsible for creating this Service.
StatefulSets do not provide any guarantees on the termination of pods when a StatefulSet is deleted. To achieve ordered and graceful termination of the pods in the StatefulSet, it is possible to scale the StatefulSet down to 0 prior to deletion.
The example below demonstrates the components of a StatefulSet.
apiVersion:v1kind:Servicemetadata:name:nginxlabels:app:nginxspec:ports:- port:80name:webclusterIP:Noneselector:app:nginx---apiVersion:apps/v1kind:StatefulSetmetadata:name:webspec:selector:matchLabels:app:nginx# has to match .spec.template.metadata.labelsserviceName:"nginx"replicas:3# by default is 1minReadySeconds:10# by default is 0template:metadata:labels:app:nginx# has to match .spec.selector.matchLabelsspec:terminationGracePeriodSeconds:10containers:- name:nginximage:k8s.gcr.io/nginx-slim:0.8ports:- containerPort:80name:webvolumeMounts:- name:wwwmountPath:/usr/share/nginx/htmlvolumeClaimTemplates:- metadata:name:wwwspec:accessModes:["ReadWriteOnce"]storageClassName:"my-storage-class"resources:requests:storage:1Gi
In the above example:
A Headless Service, named nginx, is used to control the network domain.
The StatefulSet, named web, has a Spec that indicates that 3 replicas of the nginx container will be launched in unique Pods.
The volumeClaimTemplates will provide stable storage using PersistentVolumes provisioned by a PersistentVolume Provisioner.
You must set the .spec.selector field of a StatefulSet to match the labels of its .spec.template.metadata.labels. In 1.8 and later versions, failing to specify a matching Pod Selector will result in a validation error during StatefulSet creation.
Volume Claim Templates
You can set the .spec.volumeClaimTemplates which can provide stable storage using PersistentVolumes provisioned by a PersistentVolume Provisioner.
Minimum ready seconds
FEATURE STATE:Kubernetes v1.23 [beta]
.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.
Please note that this feature is beta and enabled by default. Please opt out by unsetting the StatefulSetMinReadySeconds flag, if you don't
want this feature to be enabled. This field 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.
Pod Identity
StatefulSet Pods have a unique identity that is comprised of an ordinal, a
stable network identity, and stable storage. The identity sticks to the Pod,
regardless of which node it's (re)scheduled on.
Ordinal Index
For a StatefulSet with N replicas, each Pod in the StatefulSet will be
assigned an integer ordinal, from 0 up through N-1, that is unique over the Set.
Stable Network ID
Each Pod in a StatefulSet derives its hostname from the name of the StatefulSet
and the ordinal of the Pod. The pattern for the constructed hostname
is $(statefulset name)-$(ordinal). The example above will create three Pods
named web-0,web-1,web-2.
A StatefulSet can use a Headless Service
to control the domain of its Pods. The domain managed by this Service takes the form:
$(service name).$(namespace).svc.cluster.local, where "cluster.local" is the
cluster domain.
As each Pod is created, it gets a matching DNS subdomain, taking the form:
$(podname).$(governing service domain), where the governing service is defined
by the serviceName field on the StatefulSet.
Depending on how DNS is configured in your cluster, you may not be able to look up the DNS
name for a newly-run Pod immediately. This behavior can occur when other clients in the
cluster have already sent queries for the hostname of the Pod before it was created.
Negative caching (normal in DNS) means that the results of previous failed lookups are
remembered and reused, even after the Pod is running, for at least a few seconds.
If you need to discover Pods promptly after they are created, you have a few options:
Query the Kubernetes API directly (for example, using a watch) rather than relying on DNS lookups.
Decrease the time of caching in your Kubernetes DNS provider (typically this means editing the config map for CoreDNS, which currently caches for 30 seconds).
As mentioned in the limitations section, you are responsible for
creating the Headless Service
responsible for the network identity of the pods.
Here are some examples of choices for Cluster Domain, Service name,
StatefulSet name, and how that affects the DNS names for the StatefulSet's Pods.
For each VolumeClaimTemplate entry defined in a StatefulSet, each Pod receives one PersistentVolumeClaim. In the nginx example above, each Pod receives a single PersistentVolume with a StorageClass of my-storage-class and 1 Gib of provisioned storage. If no StorageClass
is specified, then the default StorageClass will be used. When a Pod is (re)scheduled
onto a node, its volumeMounts mount the PersistentVolumes associated with its
PersistentVolume Claims. Note that, the PersistentVolumes associated with the
Pods' PersistentVolume Claims are not deleted when the Pods, or StatefulSet are deleted.
This must be done manually.
Pod Name Label
When the StatefulSet Controller creates a Pod,
it adds a label, statefulset.kubernetes.io/pod-name, that is set to the name of
the Pod. This label allows you to attach a Service to a specific Pod in
the StatefulSet.
Deployment and Scaling Guarantees
For a StatefulSet with N replicas, when Pods are being deployed, they are created sequentially, in order from {0..N-1}.
When Pods are being deleted, they are terminated in reverse order, from {N-1..0}.
Before a scaling operation is applied to a Pod, all of its predecessors must be Running and Ready.
Before a Pod is terminated, all of its successors must be completely shutdown.
The StatefulSet should not specify a pod.Spec.TerminationGracePeriodSeconds of 0. This practice is unsafe and strongly discouraged. For further explanation, please refer to force deleting StatefulSet Pods.
When the nginx example above is created, three Pods will be deployed in the order
web-0, web-1, web-2. web-1 will not be deployed before web-0 is
Running and Ready, and web-2 will not be deployed until
web-1 is Running and Ready. If web-0 should fail, after web-1 is Running and Ready, but before
web-2 is launched, web-2 will not be launched until web-0 is successfully relaunched and
becomes Running and Ready.
If a user were to scale the deployed example by patching the StatefulSet such that
replicas=1, web-2 would be terminated first. web-1 would not be terminated until web-2
is fully shutdown and deleted. If web-0 were to fail after web-2 has been terminated and
is completely shutdown, but prior to web-1's termination, web-1 would not be terminated
until web-0 is Running and Ready.
Pod Management Policies
In Kubernetes 1.7 and later, StatefulSet allows you to relax its ordering guarantees while
preserving its uniqueness and identity guarantees via its .spec.podManagementPolicy field.
OrderedReady Pod Management
OrderedReady pod management is the default for StatefulSets. It implements the behavior
described above.
Parallel Pod Management
Parallel pod management tells the StatefulSet controller to launch or
terminate all Pods in parallel, and to not wait for Pods to become Running
and Ready or completely terminated prior to launching or terminating another
Pod. This option only affects the behavior for scaling operations. Updates are not
affected.
Update strategies
A StatefulSet's .spec.updateStrategy field allows you to configure
and disable automated rolling updates for containers, labels, resource request/limits, and
annotations for the Pods in a StatefulSet. There are two possible values:
OnDelete
When a StatefulSet's .spec.updateStrategy.type is set to OnDelete,
the StatefulSet controller will not automatically update the Pods in a
StatefulSet. Users must manually delete Pods to cause the controller to
create new Pods that reflect modifications made to a StatefulSet's .spec.template.
RollingUpdate
The RollingUpdate update strategy implements automated, rolling update for the Pods in a StatefulSet. This is the default update strategy.
Rolling Updates
When a StatefulSet's .spec.updateStrategy.type is set to RollingUpdate, the
StatefulSet controller will delete and recreate each Pod in the StatefulSet. It will proceed
in the same order as Pod termination (from the largest ordinal to the smallest), updating
each Pod one at a time.
The Kubernetes control plane waits until an updated Pod is Running and Ready prior
to updating its predecessor. If you have set .spec.minReadySeconds (see Minimum Ready Seconds), the control plane additionally waits that amount of time after the Pod turns ready, before moving on.
Partitioned rolling updates
The RollingUpdate update strategy can be partitioned, by specifying a
.spec.updateStrategy.rollingUpdate.partition. If a partition is specified, all Pods with an
ordinal that is greater than or equal to the partition will be updated when the StatefulSet's
.spec.template is updated. All Pods with an ordinal that is less than the partition will not
be updated, and, even if they are deleted, they will be recreated at the previous version. If a
StatefulSet's .spec.updateStrategy.rollingUpdate.partition is greater than its .spec.replicas,
updates to its .spec.template will not be propagated to its Pods.
In most cases you will not need to use a partition, but they are useful if you want to stage an
update, roll out a canary, or perform a phased roll out.
Forced rollback
When using Rolling Updates with the default
Pod Management Policy (OrderedReady),
it's possible to get into a broken state that requires manual intervention to repair.
If you update the Pod template to a configuration that never becomes Running and
Ready (for example, due to a bad binary or application-level configuration error),
StatefulSet will stop the rollout and wait.
In this state, it's not enough to revert the Pod template to a good configuration.
Due to a known issue,
StatefulSet will continue to wait for the broken Pod to become Ready
(which never happens) before it will attempt to revert it back to the working
configuration.
After reverting the template, you must also delete any Pods that StatefulSet had
already attempted to run with the bad configuration.
StatefulSet will then begin to recreate the Pods using the reverted template.
PersistentVolumeClaim retention
FEATURE STATE:Kubernetes v1.23 [alpha]
The optional .spec.persistentVolumeClaimRetentionPolicy field controls if
and how PVCs are deleted during the lifecycle of a StatefulSet. You must enable the
StatefulSetAutoDeletePVCfeature gate
to use this field. Once enabled, there are two policies you can configure for each
StatefulSet:
whenDeleted
configures the volume retention behavior that applies when the StatefulSet is deleted
whenScaled
configures the volume retention behavior that applies when the replica count of
the StatefulSet is reduced; for example, when scaling down the set.
For each policy that you can configure, you can set the value to either Delete or Retain.
Delete
The PVCs created from the StatefulSet volumeClaimTemplate are deleted for each Pod
affected by the policy. With the whenDeleted policy all PVCs from the
volumeClaimTemplate are deleted after their Pods have been deleted. With the
whenScaled policy, only PVCs corresponding to Pod replicas being scaled down are
deleted, after their Pods have been deleted.
Retain (default)
PVCs from the volumeClaimTemplate are not affected when their Pod is
deleted. This is the behavior before this new feature.
Bear in mind that these policies only apply when Pods are being removed due to the
StatefulSet being deleted or scaled down. For example, if a Pod associated with a StatefulSet
fails due to node failure, and the control plane creates a replacement Pod, the StatefulSet
retains the existing PVC. The existing volume is unaffected, and the cluster will attach it to
the node where the new Pod is about to launch.
The default for policies is Retain, matching the StatefulSet behavior before this new feature.
The StatefulSet controller adds owner
references
to its PVCs, which are then deleted by the garbage collector after the Pod is terminated. This enables the Pod to
cleanly unmount all volumes before the PVCs are deleted (and before the backing PV and
volume are deleted, depending on the retain policy). When you set the whenDeleted
policy to Delete, an owner reference to the StatefulSet instance is placed on all PVCs
associated with that StatefulSet.
The whenScaled policy must delete PVCs only when a Pod is scaled down, and not when a
Pod is deleted for another reason. When reconciling, the StatefulSet controller compares
its desired replica count to the actual Pods present on the cluster. Any StatefulSet Pod
whose id greater than the replica count is condemned and marked for deletion. If the
whenScaled policy is Delete, the condemned Pods are first set as owners to the
associated StatefulSet template PVCs, before the Pod is deleted. This causes the PVCs
to be garbage collected after only the condemned Pods have terminated.
This means that if the controller crashes and restarts, no Pod will be deleted before its
owner reference has been updated appropriate to the policy. If a condemned Pod is
force-deleted while the controller is down, the owner reference may or may not have been
set up, depending on when the controller crashed. It may take several reconcile loops to
update the owner references, so some condemned Pods may have set up owner references and
other may not. For this reason we recommend waiting for the controller to come back up,
which will verify owner references before terminating Pods. If that is not possible, the
operator should verify the owner references on PVCs to ensure the expected objects are
deleted when Pods are force-deleted.
Replicas
.spec.replicas is an optional field that specifies the number of desired Pods. It defaults to 1.
Should you manually scale a deployment, example via kubectl scale statefulset statefulset --replicas=X, and then you update that StatefulSet
based on a manifest (for example: by running kubectl apply -f statefulset.yaml), then applying that manifest overwrites the manual scaling
that you previously did.
If a HorizontalPodAutoscaler
(or any similar API for horizontal scaling) is managing scaling for a
Statefulset, don't set .spec.replicas. Instead, allow the Kubernetes
control plane to manage
the .spec.replicas field automatically.
StatefulSet is a top-level resource in the Kubernetes REST API.
Read the
StatefulSet
object definition to understand the API for stateful sets.
Read about PodDisruptionBudget and how
you can use it to manage application availability during disruptions.
2.4 - DaemonSet
A DaemonSet ensures that all (or some) Nodes run a copy of a Pod. As nodes are added to the
cluster, Pods are added to them. As nodes are removed from the cluster, those Pods are garbage
collected. Deleting a DaemonSet will clean up the Pods it created.
Some typical uses of a DaemonSet are:
running a cluster storage daemon on every node
running a logs collection daemon on every node
running a node monitoring daemon on every node
In a simple case, one DaemonSet, covering all nodes, would be used for each type of daemon.
A more complex setup might use multiple DaemonSets for a single type of daemon, but with
different flags and/or different memory and cpu requests for different hardware types.
Writing a DaemonSet Spec
Create a DaemonSet
You can describe a DaemonSet in a YAML file. For example, the daemonset.yaml file below
describes a DaemonSet that runs the fluentd-elasticsearch Docker image:
apiVersion:apps/v1kind:DaemonSetmetadata:name:fluentd-elasticsearchnamespace:kube-systemlabels:k8s-app:fluentd-loggingspec:selector:matchLabels:name:fluentd-elasticsearchtemplate:metadata:labels:name:fluentd-elasticsearchspec:tolerations:# this toleration is to have the daemonset runnable on master nodes# remove it if your masters can't run pods- key:node-role.kubernetes.io/masteroperator:Existseffect:NoSchedulecontainers:- name:fluentd-elasticsearchimage:quay.io/fluentd_elasticsearch/fluentd:v2.5.2resources:limits:memory:200Mirequests:cpu:100mmemory:200MivolumeMounts:- name:varlogmountPath:/var/log- name:varlibdockercontainersmountPath:/var/lib/docker/containersreadOnly:trueterminationGracePeriodSeconds:30volumes:- name:varloghostPath:path:/var/log- name:varlibdockercontainershostPath:path:/var/lib/docker/containers
The .spec.template is one of the required fields in .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 DaemonSet has to specify appropriate
labels (see pod selector).
A Pod Template in a DaemonSet must have a RestartPolicy
equal to Always, or be unspecified, which defaults to Always.
Pod Selector
The .spec.selector field is a pod selector. It works the same as the .spec.selector of
a Job.
As of Kubernetes 1.8, you must specify a pod selector that matches the labels of the
.spec.template. The pod selector will no longer be defaulted when left empty. Selector
defaulting was not compatible with kubectl apply. Also, once a DaemonSet is created,
its .spec.selector can not be mutated. Mutating the pod selector can lead to the
unintentional orphaning of Pods, and it was found to be confusing to users.
The .spec.selector is an object consisting of two fields:
matchExpressions - allows to build more sophisticated selectors by specifying key,
list of values and an operator that relates the key and values.
When the two are specified the result is ANDed.
If the .spec.selector is specified, it must match the .spec.template.metadata.labels.
Config with these not matching will be rejected by the API.
Running Pods on select Nodes
If you specify a .spec.template.spec.nodeSelector, then the DaemonSet controller will
create Pods on nodes which match that node selector.
Likewise if you specify a .spec.template.spec.affinity,
then DaemonSet controller will create Pods on nodes which match that
node affinity.
If you do not specify either, then the DaemonSet controller will create Pods on all nodes.
How Daemon Pods are scheduled
Scheduled by default scheduler
FEATURE STATE:Kubernetes v1.23 [stable]
A DaemonSet ensures that all eligible nodes run a copy of a Pod. Normally, the
node that a Pod runs on is selected by the Kubernetes scheduler. However,
DaemonSet pods are created and scheduled by the DaemonSet controller instead.
That introduces the following issues:
Inconsistent Pod behavior: Normal Pods waiting to be scheduled are created
and in Pending state, but DaemonSet pods are not created in Pending
state. This is confusing to the user.
Pod preemption
is handled by default scheduler. When preemption is enabled, the DaemonSet controller
will make scheduling decisions without considering pod priority and preemption.
ScheduleDaemonSetPods allows you to schedule DaemonSets using the default
scheduler instead of the DaemonSet controller, by adding the NodeAffinity term
to the DaemonSet pods, instead of the .spec.nodeName term. The default
scheduler is then used to bind the pod to the target host. If node affinity of
the DaemonSet pod already exists, it is replaced (the original node affinity was
taken into account before selecting the target host). The DaemonSet controller only
performs these operations when creating or modifying DaemonSet pods, and no
changes are made to the spec.template of the DaemonSet.
In addition, node.kubernetes.io/unschedulable:NoSchedule toleration is added
automatically to DaemonSet Pods. The default scheduler ignores
unschedulable Nodes when scheduling DaemonSet Pods.
Taints and Tolerations
Although Daemon Pods respect
taints and tolerations,
the following tolerations are added to DaemonSet Pods automatically according to
the related features.
Toleration Key
Effect
Version
Description
node.kubernetes.io/not-ready
NoExecute
1.13+
DaemonSet pods will not be evicted when there are node problems such as a network partition.
node.kubernetes.io/unreachable
NoExecute
1.13+
DaemonSet pods will not be evicted when there are node problems such as a network partition.
node.kubernetes.io/disk-pressure
NoSchedule
1.8+
DaemonSet pods tolerate disk-pressure attributes by default scheduler.
node.kubernetes.io/memory-pressure
NoSchedule
1.8+
DaemonSet pods tolerate memory-pressure attributes by default scheduler.
node.kubernetes.io/unschedulable
NoSchedule
1.12+
DaemonSet pods tolerate unschedulable attributes by default scheduler.
node.kubernetes.io/network-unavailable
NoSchedule
1.12+
DaemonSet pods, who uses host network, tolerate network-unavailable attributes by default scheduler.
Communicating with Daemon Pods
Some possible patterns for communicating with Pods in a DaemonSet are:
Push: Pods in the DaemonSet are configured to send updates to another service, such
as a stats database. They do not have clients.
NodeIP and Known Port: Pods in the DaemonSet can use a hostPort, so that the pods
are reachable via the node IPs.
Clients know the list of node IPs somehow, and know the port by convention.
DNS: Create a headless service
with the same pod selector, and then discover DaemonSets using the endpoints
resource or retrieve multiple A records from DNS.
Service: Create a service with the same Pod selector, and use the service to reach a
daemon on a random node. (No way to reach specific node.)
Updating a DaemonSet
If node labels are changed, the DaemonSet will promptly add Pods to newly matching nodes and delete
Pods from newly not-matching nodes.
You can modify the Pods that a DaemonSet creates. However, Pods do not allow all
fields to be updated. Also, the DaemonSet controller will use the original template the next
time a node (even with the same name) is created.
You can delete a DaemonSet. If you specify --cascade=orphan with kubectl, then the Pods
will be left on the nodes. If you subsequently create a new DaemonSet with the same selector,
the new DaemonSet adopts the existing Pods. If any Pods need replacing the DaemonSet replaces
them according to its updateStrategy.
It is certainly possible to run daemon processes by directly starting them on a node (e.g. using
init, upstartd, or systemd). This is perfectly fine. However, there are several advantages to
running such processes via a DaemonSet:
Ability to monitor and manage logs for daemons in the same way as applications.
Same config language and tools (e.g. Pod templates, kubectl) for daemons and applications.
Running daemons in containers with resource limits increases isolation between daemons from app
containers. However, this can also be accomplished by running the daemons in a container but not in a Pod
(e.g. start directly via Docker).
Bare Pods
It is possible to create Pods directly which specify a particular node to run on. However,
a DaemonSet replaces Pods that are deleted or terminated for any reason, such as in the case of
node failure or disruptive node maintenance, such as a kernel upgrade. For this reason, you should
use a DaemonSet rather than creating individual Pods.
Static Pods
It is possible to create Pods by writing a file to a certain directory watched by Kubelet. These
are called static pods.
Unlike DaemonSet, static Pods cannot be managed with kubectl
or other Kubernetes API clients. Static Pods do not depend on the apiserver, making them useful
in cluster bootstrapping cases. Also, static Pods may be deprecated in the future.
Deployments
DaemonSets are similar to Deployments in that
they both create Pods, and those Pods have processes which are not expected to terminate (e.g. web servers,
storage servers).
Use a Deployment for stateless services, like frontends, where scaling up and down the
number of replicas and rolling out updates are more important than controlling exactly which host
the Pod runs on. Use a DaemonSet when it is important that a copy of a Pod always run on
all or certain hosts, if the DaemonSet provides node-level functionality that allows other Pods to run correctly on that particular node.
For example, network plugins often include a component that runs as a DaemonSet. The DaemonSet component makes sure that the node where it's running has working cluster networking.
DaemonSet is a top-level resource in the Kubernetes REST API.
Read the
DaemonSet
object definition to understand the API for daemon sets.
2.5 - Jobs
A Job creates one or more Pods and will continue to retry execution of the Pods until a specified number of them successfully terminate.
As pods successfully complete, the Job tracks the successful completions. When a specified number
of successful completions is reached, the task (ie, Job) is complete. Deleting a Job will clean up
the Pods it created. Suspending a Job will delete its active Pods until the Job
is resumed again.
A simple case is to create one Job object in order to reliably run one Pod to completion.
The Job object will start a new Pod if the first Pod fails or is deleted (for example
due to a node hardware failure or a node reboot).
You can also use a Job to run multiple Pods in parallel.
If you want to run a Job (either a single task, or several in parallel) on a schedule,
see CronJob.
Running an example Job
Here is an example Job config. It computes π to 2000 places and prints it out.
It takes around 10s to complete.
Name: pi
Namespace: default
Selector: controller-uid=c9948307-e56d-4b5d-8302-ae2d7b7da67c
Labels: controller-uid=c9948307-e56d-4b5d-8302-ae2d7b7da67c
job-name=pi
Annotations: kubectl.kubernetes.io/last-applied-configuration:
{"apiVersion":"batch/v1","kind":"Job","metadata":{"annotations":{},"name":"pi","namespace":"default"},"spec":{"backoffLimit":4,"template":...
Parallelism: 1
Completions: 1
Start Time: Mon, 02 Dec 2019 15:20:11 +0200
Completed At: Mon, 02 Dec 2019 15:21:16 +0200
Duration: 65s
Pods Statuses: 0 Running / 1 Succeeded / 0 Failed
Pod Template:
Labels: controller-uid=c9948307-e56d-4b5d-8302-ae2d7b7da67c
job-name=pi
Containers:
pi:
Image: perl
Port: <none>
Host Port: <none>
Command:
perl
-Mbignum=bpi
-wle
print bpi(2000)
Environment: <none>
Mounts: <none>
Volumes: <none>
Events:
Type Reason Age From Message
---- ------ ---- ---- -------
Normal SuccessfulCreate 14m job-controller Created pod: pi-5rwd7
To view completed Pods of a Job, use kubectl get pods.
To list all the Pods that belong to a Job in a machine readable form, you can use a command like this:
pods=$(kubectl get pods --selector=job-name=pi --output=jsonpath='{.items[*].metadata.name}')echo$pods
The output is similar to this:
pi-5rwd7
Here, the selector is the same as the selector for the Job. The --output=jsonpath option specifies an expression
with the name from each Pod in the returned list.
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 Job must specify appropriate
labels (see pod selector) and an appropriate restart policy.
Only a RestartPolicy equal to Never or OnFailure is allowed.
Pod selector
The .spec.selector field is optional. In almost all cases you should not specify it.
See section specifying your own pod selector.
Parallel execution for Jobs
There are three main types of task suitable to run as a Job:
Non-parallel Jobs
normally, only one Pod is started, unless the Pod fails.
the Job is complete as soon as its Pod terminates successfully.
Parallel Jobs with a fixed completion count:
specify a non-zero positive value for .spec.completions.
the Job represents the overall task, and is complete when there are .spec.completions successful Pods.
when using .spec.completionMode="Indexed", each Pod gets a different index in the range 0 to .spec.completions-1.
Parallel Jobs with a work queue:
do not specify .spec.completions, default to .spec.parallelism.
the Pods must coordinate amongst themselves or an external service to determine what each should work on. For example, a Pod might fetch a batch of up to N items from the work queue.
each Pod is independently capable of determining whether or not all its peers are done, and thus that the entire Job is done.
when any Pod from the Job terminates with success, no new Pods are created.
once at least one Pod has terminated with success and all Pods are terminated, then the Job is completed with success.
once any Pod has exited with success, no other Pod should still be doing any work for this task or writing any output. They should all be in the process of exiting.
For a non-parallel Job, you can leave both .spec.completions and .spec.parallelism unset. When both are
unset, both are defaulted to 1.
For a fixed completion count Job, you should set .spec.completions to the number of completions needed.
You can set .spec.parallelism, or leave it unset and it will default to 1.
For a work queue Job, you must leave .spec.completions unset, and set .spec.parallelism to
a non-negative integer.
For more information about how to make use of the different types of job, see the job patterns section.
Controlling parallelism
The requested parallelism (.spec.parallelism) can be set to any non-negative value.
If it is unspecified, it defaults to 1.
If it is specified as 0, then the Job is effectively paused until it is increased.
Actual parallelism (number of pods running at any instant) may be more or less than requested
parallelism, for a variety of reasons:
For fixed completion count Jobs, the actual number of pods running in parallel will not exceed the number of
remaining completions. Higher values of .spec.parallelism are effectively ignored.
For work queue Jobs, no new Pods are started after any Pod has succeeded -- remaining Pods are allowed to complete, however.
If the Job controller failed to create Pods for any reason (lack of ResourceQuota, lack of permission, etc.),
then there may be fewer pods than requested.
The Job controller may throttle new Pod creation due to excessive previous pod failures in the same Job.
When a Pod is gracefully shut down, it takes time to stop.
Completion mode
FEATURE STATE:Kubernetes v1.22 [beta]
Jobs with fixed completion count - that is, jobs that have non null
.spec.completions - can have a completion mode that is specified in .spec.completionMode:
NonIndexed (default): the Job is considered complete when there have been
.spec.completions successfully completed Pods. In other words, each Pod
completion is homologous to each other. Note that Jobs that have null
.spec.completions are implicitly NonIndexed.
Indexed: the Pods of a Job get an associated completion index from 0 to
.spec.completions-1. The index is available through three mechanisms:
The Pod annotation batch.kubernetes.io/job-completion-index.
As part of the Pod hostname, following the pattern $(job-name)-$(index).
When you use an Indexed Job in combination with a
Service, Pods within the Job can use
the deterministic hostnames to address each other via DNS.
From the containarized task, in the environment variable JOB_COMPLETION_INDEX.
The Job is considered complete when there is one successfully completed Pod
for each index. For more information about how to use this mode, see
Indexed Job for Parallel Processing with Static Work Assignment.
Note that, although rare, more than one Pod could be started for the same
index, but only one of them will count towards the completion count.
Handling Pod and container failures
A container in a Pod may fail for a number of reasons, such as because the process in it exited with
a non-zero exit code, or the container was killed for exceeding a memory limit, etc. If this
happens, and the .spec.template.spec.restartPolicy = "OnFailure", then the Pod stays
on the node, but the container is re-run. Therefore, your program needs to handle the case when it is
restarted locally, or else specify .spec.template.spec.restartPolicy = "Never".
See pod lifecycle for more information on restartPolicy.
An entire Pod can also fail, for a number of reasons, such as when the pod is kicked off the node
(node is upgraded, rebooted, deleted, etc.), or if a container of the Pod fails and the
.spec.template.spec.restartPolicy = "Never". When a Pod fails, then the Job controller
starts a new Pod. This means that your application needs to handle the case when it is restarted in a new
pod. In particular, it needs to handle temporary files, locks, incomplete output and the like
caused by previous runs.
Note that even if you specify .spec.parallelism = 1 and .spec.completions = 1 and
.spec.template.spec.restartPolicy = "Never", the same program may
sometimes be started twice.
If you do specify .spec.parallelism and .spec.completions both greater than 1, then there may be
multiple pods running at once. Therefore, your pods must also be tolerant of concurrency.
Pod backoff failure policy
There are situations where you want to fail a Job after some amount of retries
due to a logical error in configuration etc.
To do so, set .spec.backoffLimit to specify the number of retries before
considering a Job as failed. The back-off limit is set by default to 6. Failed
Pods associated with the Job are recreated by the Job controller with an
exponential back-off delay (10s, 20s, 40s ...) capped at six minutes. The
back-off count is reset when a Job's Pod is deleted or successful without any
other Pods for the Job failing around that time.
Note: If your job has restartPolicy = "OnFailure", keep in mind that your Pod running the Job
will be terminated once the job backoff limit has been reached. This can make debugging the Job's executable more difficult. We suggest setting
restartPolicy = "Never" when debugging the Job or using a logging system to ensure output
from failed Jobs is not lost inadvertently.
Job termination and cleanup
When a Job completes, no more Pods are created, but the Pods are usually not deleted either.
Keeping them around
allows you to still view the logs of completed pods to check for errors, warnings, or other diagnostic output.
The job object also remains after it is completed so that you can view its status. It is up to the user to delete
old jobs after noting their status. Delete the job with kubectl (e.g. kubectl delete jobs/pi or kubectl delete -f ./job.yaml). When you delete the job using kubectl, all the pods it created are deleted too.
By default, a Job will run uninterrupted unless a Pod fails (restartPolicy=Never) or a Container exits in error (restartPolicy=OnFailure), at which point the Job defers to the
.spec.backoffLimit described above. Once .spec.backoffLimit has been reached the Job will be marked as failed and any running Pods will be terminated.
Another way to terminate a Job is by setting an active deadline.
Do this by setting the .spec.activeDeadlineSeconds field of the Job to a number of seconds.
The activeDeadlineSeconds applies to the duration of the job, no matter how many Pods are created.
Once a Job reaches activeDeadlineSeconds, all of its running Pods are terminated and the Job status will become type: Failed with reason: DeadlineExceeded.
Note that a Job's .spec.activeDeadlineSeconds takes precedence over its .spec.backoffLimit. Therefore, a Job that is retrying one or more failed Pods will not deploy additional Pods once it reaches the time limit specified by activeDeadlineSeconds, even if the backoffLimit is not yet reached.
Note that both the Job spec and the Pod template spec within the Job have an activeDeadlineSeconds field. Ensure that you set this field at the proper level.
Keep in mind that the restartPolicy applies to the Pod, and not to the Job itself: there is no automatic Job restart once the Job status is type: Failed.
That is, the Job termination mechanisms activated with .spec.activeDeadlineSeconds and .spec.backoffLimit result in a permanent Job failure that requires manual intervention to resolve.
Clean up finished jobs automatically
Finished Jobs are usually no longer needed in the system. Keeping them around in
the system will put pressure on the API server. If the Jobs are managed directly
by a higher level controller, such as
CronJobs, the Jobs can be
cleaned up by CronJobs based on the specified capacity-based cleanup policy.
TTL mechanism for finished Jobs
FEATURE STATE:Kubernetes v1.23 [stable]
Another way to clean up finished Jobs (either Complete or Failed)
automatically is to use a TTL mechanism provided by a
TTL controller for
finished resources, by specifying the .spec.ttlSecondsAfterFinished field of
the Job.
When the TTL controller cleans up the Job, it will delete the Job cascadingly,
i.e. delete its dependent objects, such as Pods, together with the Job. Note
that when the Job is deleted, its lifecycle guarantees, such as finalizers, will
be honored.
The Job pi-with-ttl will be eligible to be automatically deleted, 100
seconds after it finishes.
If the field is set to 0, the Job will be eligible to be automatically deleted
immediately after it finishes. If the field is unset, this Job won't be cleaned
up by the TTL controller after it finishes.
Note:
It is recommended to set ttlSecondsAfterFinished field because unmanaged jobs
(Jobs that you created directly, and not indirectly through other workload APIs
such as CronJob) have a default deletion
policy of orphanDependents causing Pods created by an unmanaged Job to be left around
after that Job is fully deleted.
Even though the control plane eventually
garbage collects
the Pods from a deleted Job after they either fail or complete, sometimes those
lingering pods may cause cluster performance degradation or in worst case cause the
cluster to go offline due to this degradation.
You can use LimitRanges and
ResourceQuotas to place a
cap on the amount of resources that a particular namespace can
consume.
Job patterns
The Job object can be used to support reliable parallel execution of Pods. The Job object is not
designed to support closely-communicating parallel processes, as commonly found in scientific
computing. It does support parallel processing of a set of independent but related work items.
These might be emails to be sent, frames to be rendered, files to be transcoded, ranges of keys in a
NoSQL database to scan, and so on.
In a complex system, there may be multiple different sets of work items. Here we are just
considering one set of work items that the user wants to manage together — a batch job.
There are several different patterns for parallel computation, each with strengths and weaknesses.
The tradeoffs are:
One Job object for each work item, vs. a single Job object for all work items. The latter is
better for large numbers of work items. The former creates some overhead for the user and for the
system to manage large numbers of Job objects.
Number of pods created equals number of work items, vs. each Pod can process multiple work items.
The former typically requires less modification to existing code and containers. The latter
is better for large numbers of work items, for similar reasons to the previous bullet.
Several approaches use a work queue. This requires running a queue service,
and modifications to the existing program or container to make it use the work queue.
Other approaches are easier to adapt to an existing containerised application.
The tradeoffs are summarized here, with columns 2 to 4 corresponding to the above tradeoffs.
The pattern names are also links to examples and more detailed description.
When you specify completions with .spec.completions, each Pod created by the Job controller
has an identical spec. This means that
all pods for a task will have the same command line and the same
image, the same volumes, and (almost) the same environment variables. These patterns
are different ways to arrange for pods to work on different things.
This table shows the required settings for .spec.parallelism and .spec.completions for each of the patterns.
Here, W is the number of work items.
When a Job is created, the Job controller will immediately begin creating Pods
to satisfy the Job's requirements and will continue to do so until the Job is
complete. However, you may want to temporarily suspend a Job's execution and
resume it later, or start Jobs in suspended state and have a custom controller
decide later when to start them.
To suspend a Job, you can update the .spec.suspend field of
the Job to true; later, when you want to resume it again, update it to false.
Creating a Job with .spec.suspend set to true will create it in the suspended
state.
When a Job is resumed from suspension, its .status.startTime field will be
reset to the current time. This means that the .spec.activeDeadlineSeconds
timer will be stopped and reset when a Job is suspended and resumed.
Remember that suspending a Job will delete all active Pods. When the Job is
suspended, your Pods will be terminated
with a SIGTERM signal. The Pod's graceful termination period will be honored and
your Pod must handle this signal in this period. This may involve saving
progress for later or undoing changes. Pods terminated this way will not count
towards the Job's completions count.
An example Job definition in the suspended state can be like so:
The Job condition of type "Suspended" with status "True" means the Job is
suspended; the lastTransitionTime field can be used to determine how long the
Job has been suspended for. If the status of that condition is "False", then the
Job was previously suspended and is now running. If such a condition does not
exist in the Job's status, the Job has never been stopped.
Events are also created when the Job is suspended and resumed:
kubectl describe jobs/myjob
Name: myjob
...
Events:
Type Reason Age From Message
---- ------ ---- ---- -------
Normal SuccessfulCreate 12m job-controller Created pod: myjob-hlrpl
Normal SuccessfulDelete 11m job-controller Deleted pod: myjob-hlrpl
Normal Suspended 11m job-controller Job suspended
Normal SuccessfulCreate 3s job-controller Created pod: myjob-jvb44
Normal Resumed 3s job-controller Job resumed
The last four events, particularly the "Suspended" and "Resumed" events, are
directly a result of toggling the .spec.suspend field. In the time between
these two events, we see that no Pods were created, but Pod creation restarted
as soon as the Job was resumed.
Mutable Scheduling Directives
FEATURE STATE:Kubernetes v1.23 [beta]
Note: In order to use this behavior, you must enable the JobMutableNodeSchedulingDirectivesfeature gate
on the API server.
It is enabled by default.
In most cases a parallel job will want the pods to run with constraints,
like all in the same zone, or all either on GPU model x or y but not a mix of both.
The suspend field is the first step towards achieving those semantics. Suspend allows a
custom queue controller to decide when a job should start; However, once a job is unsuspended,
a custom queue controller has no influence on where the pods of a job will actually land.
This feature allows updating a Job's scheduling directives before it starts, which gives custom queue
controllers the ability to influence pod placement while at the same time offloading actual
pod-to-node assignment to kube-scheduler. This is allowed only for suspended Jobs that have never
been unsuspended before.
The fields in a Job's pod template that can be updated are node affinity, node selector,
tolerations, labels and annotations.
Specifying your own Pod selector
Normally, when you create a Job object, you do not specify .spec.selector.
The system defaulting logic adds this field when the Job is created.
It picks a selector value that will not overlap with any other jobs.
However, in some cases, you might need to override this automatically set selector.
To do this, you can specify the .spec.selector of the Job.
Be very careful when doing this. If you specify a label selector which is not
unique to the pods of that Job, and which matches unrelated Pods, then pods of the unrelated
job may be deleted, or this Job may count other Pods as completing it, or one or both
Jobs may refuse to create Pods or run to completion. If a non-unique selector is
chosen, then other controllers (e.g. ReplicationController) and their Pods may behave
in unpredictable ways too. Kubernetes will not stop you from making a mistake when
specifying .spec.selector.
Here is an example of a case when you might want to use this feature.
Say Job old is already running. You want existing Pods
to keep running, but you want the rest of the Pods it creates
to use a different pod template and for the Job to have a new name.
You cannot update the Job because these fields are not updatable.
Therefore, you delete Job old but leave its pods
running, using kubectl delete jobs/old --cascade=orphan.
Before deleting it, you make a note of what selector it uses:
Then you create a new Job with name new and you explicitly specify the same selector.
Since the existing Pods have label controller-uid=a8f3d00d-c6d2-11e5-9f87-42010af00002,
they are controlled by Job new as well.
You need to specify manualSelector: true in the new Job since you are not using
the selector that the system normally generates for you automatically.
The new Job itself will have a different uid from a8f3d00d-c6d2-11e5-9f87-42010af00002. Setting
manualSelector: true tells the system that you know what you are doing and to allow this
mismatch.
Job tracking with finalizers
FEATURE STATE:Kubernetes v1.23 [beta]
Note:
In order to use this behavior, you must enable the JobTrackingWithFinalizersfeature gate
on the API server
and the controller manager.
It is enabled by default.
When enabled, the control plane tracks new Jobs using the behavior described
below. Jobs created before the feature was enabled are unaffected. As a user,
the only difference you would see is that the control plane tracking of Job
completion is more accurate.
When this feature isn't enabled, the Job Controller
relies on counting the Pods that exist in the cluster to track the Job status,
that is, to keep the counters for succeeded and failed Pods.
However, Pods can be removed for a number of reasons, including:
The garbage collector that removes orphan Pods when a Node goes down.
The garbage collector that removes finished Pods (in Succeeded or Failed
phase) after a threshold.
Human intervention to delete Pods belonging to a Job.
An external controller (not provided as part of Kubernetes) that removes or
replaces Pods.
If you enable the JobTrackingWithFinalizers feature for your cluster, the
control plane keeps track of the Pods that belong to any Job and notices if any
such Pod is removed from the API server. To do that, the Job controller creates Pods with
the finalizer batch.kubernetes.io/job-tracking. The controller removes the
finalizer only after the Pod has been accounted for in the Job status, allowing
the Pod to be removed by other controllers or users.
The Job controller uses the new algorithm for new Jobs only. Jobs created
before the feature is enabled are unaffected. You can determine if the Job
controller is tracking a Job using Pod finalizers by checking if the Job has the
annotation batch.kubernetes.io/job-tracking. You should not manually add
or remove this annotation from Jobs.
Alternatives
Bare Pods
When the node that a Pod is running on reboots or fails, the pod is terminated
and will not be restarted. However, a Job will create new Pods to replace terminated ones.
For this reason, we recommend that you use a Job rather than a bare Pod, even if your application
requires only a single Pod.
Replication Controller
Jobs are complementary to Replication Controllers.
A Replication Controller manages Pods which are not expected to terminate (e.g. web servers), and a Job
manages Pods that are expected to terminate (e.g. batch tasks).
As discussed in Pod Lifecycle, Job is only appropriate
for pods with RestartPolicy equal to OnFailure or Never.
(Note: If RestartPolicy is not set, the default value is Always.)
Single Job starts controller Pod
Another pattern is for a single Job to create a Pod which then creates other Pods, acting as a sort
of custom controller for those Pods. This allows the most flexibility, but may be somewhat
complicated to get started with and offers less integration with Kubernetes.
One example of this pattern would be a Job which starts a Pod which runs a script that in turn
starts a Spark master controller (see spark example), runs a spark
driver, and then cleans up.
An advantage of this approach is that the overall process gets the completion guarantee of a Job
object, but maintains complete control over what Pods are created and how work is assigned to them.
Job is part of the Kubernetes REST API.
Read the
Job
object definition to understand the API for jobs.
Read about CronJob, which you
can use to define a series of Jobs that will run based on a schedule, similar to
the Unix tool cron.
2.6 - Automatic Clean-up for Finished Jobs
FEATURE STATE:Kubernetes v1.23 [stable]
TTL-after-finished controller provides a
TTL (time to live) mechanism to limit the lifetime of resource objects that
have finished execution. TTL controller only handles
Jobs.
TTL-after-finished Controller
The TTL-after-finished controller is only supported for Jobs. A cluster operator can use this feature to clean
up finished Jobs (either Complete or Failed) automatically by specifying the
.spec.ttlSecondsAfterFinished field of a Job, as in this
example.
The TTL-after-finished controller will assume that a job is eligible to be cleaned up
TTL seconds after the job has finished, in other words, when the TTL has expired. When the
TTL-after-finished controller cleans up a job, it will delete it cascadingly, that is to say it will delete
its dependent objects together with it. Note that when the job is deleted,
its lifecycle guarantees, such as finalizers, will be honored.
The TTL seconds can be set at any time. Here are some examples for setting the
.spec.ttlSecondsAfterFinished field of a Job:
Specify this field in the job manifest, so that a Job can be cleaned up
automatically some time after it finishes.
Set this field of existing, already finished jobs, to adopt this new
feature.
Use a
mutating admission webhook
to set this field dynamically at job creation time. Cluster administrators can
use this to enforce a TTL policy for finished jobs.
Use a
mutating admission webhook
to set this field dynamically after the job has finished, and choose
different TTL values based on job status, labels, etc.
Caveat
Updating TTL Seconds
Note that the TTL period, e.g. .spec.ttlSecondsAfterFinished field of Jobs,
can be modified after the job is created or has finished. However, once the
Job becomes eligible to be deleted (when the TTL has expired), the system won't
guarantee that the Jobs will be kept, even if an update to extend the TTL
returns a successful API response.
Time Skew
Because TTL-after-finished controller uses timestamps stored in the Kubernetes jobs to
determine whether the TTL has expired or not, this feature is sensitive to time
skew in the cluster, which may cause TTL-after-finish controller to clean up job objects
at the wrong time.
Clocks aren't always correct, but the difference should be
very small. Please be aware of this risk when setting a non-zero TTL.
If your control plane runs the kube-controller-manager in Pods or bare
containers, the timezone set for the kube-controller-manager container determines the timezone
that the cron job controller uses.
Caution:
The v1 CronJob API
does not officially support setting timezone as explained above.
Setting variables such as CRON_TZ or TZ is not officially supported by the Kubernetes project.
CRON_TZ or TZ is an implementation detail of the internal library being used
for parsing and calculating the next Job creation time. Any usage of it is not
recommended in a production cluster.
When creating the manifest for a CronJob resource, make sure the name you provide
is a valid DNS subdomain name.
The name must be no longer than 52 characters. This is because the CronJob controller will automatically
append 11 characters to the job name provided and there is a constraint that the
maximum length of a Job name is no more than 63 characters.
CronJob
CronJobs are meant for performing regular scheduled actions such as backups,
report generation, and so on. Each of those tasks should be configured to recur
indefinitely (for example: once a day / week / month); you can define the point
in time within that interval when the job should start.
Example
This example CronJob manifest prints the current time and a hello message every minute:
# ┌───────────── minute (0 - 59)
# │ ┌───────────── hour (0 - 23)
# │ │ ┌───────────── day of the month (1 - 31)
# │ │ │ ┌───────────── month (1 - 12)
# │ │ │ │ ┌───────────── day of the week (0 - 6) (Sunday to Saturday;
# │ │ │ │ │ 7 is also Sunday on some systems)
# │ │ │ │ │ OR sun, mon, tue, wed, thu, fri, sat
# │ │ │ │ │
# * * * * *
Entry
Description
Equivalent to
@yearly (or @annually)
Run once a year at midnight of 1 January
0 0 1 1 *
@monthly
Run once a month at midnight of the first day of the month
0 0 1 * *
@weekly
Run once a week at midnight on Sunday morning
0 0 * * 0
@daily (or @midnight)
Run once a day at midnight
0 0 * * *
@hourly
Run once an hour at the beginning of the hour
0 * * * *
For example, the line below states that the task must be started every Friday at midnight, as well as on the 13th of each month at midnight:
0 0 13 * 5
To generate CronJob schedule expressions, you can also use web tools like crontab.guru.
CronJob limitations
A cron job creates a job object about once per execution time of its schedule. We say "about" because there
are certain circumstances where two jobs might be created, or no job might be created. We attempt to make these rare,
but do not completely prevent them. Therefore, jobs should be idempotent.
If startingDeadlineSeconds is set to a large value or left unset (the default)
and if concurrencyPolicy is set to Allow, the jobs will always run
at least once.
Caution: If startingDeadlineSeconds is set to a value less than 10 seconds, the CronJob may not be scheduled. This is because the CronJob controller checks things every 10 seconds.
For every CronJob, the CronJob Controller checks how many schedules it missed in the duration from its last scheduled time until now. If there are more than 100 missed schedules, then it does not start the job and logs the error
Cannot determine if job needs to be started. Too many missed start time (> 100). Set or decrease .spec.startingDeadlineSeconds or check clock skew.
It is important to note that if the startingDeadlineSeconds field is set (not nil), the controller counts how many missed jobs occurred from the value of startingDeadlineSeconds until now rather than from the last scheduled time until now. For example, if startingDeadlineSeconds is 200, the controller counts how many missed jobs occurred in the last 200 seconds.
A CronJob is counted as missed if it has failed to be created at its scheduled time. For example, If concurrencyPolicy is set to Forbid and a CronJob was attempted to be scheduled when there was a previous schedule still running, then it would count as missed.
For example, suppose a CronJob is set to schedule a new Job every one minute beginning at 08:30:00, and its
startingDeadlineSeconds field is not set. If the CronJob controller happens to
be down from 08:29:00 to 10:21:00, the job will not start as the number of missed jobs which missed their schedule is greater than 100.
To illustrate this concept further, suppose a CronJob is set to schedule a new Job every one minute beginning at 08:30:00, and its
startingDeadlineSeconds is set to 200 seconds. If the CronJob controller happens to
be down for the same period as the previous example (08:29:00 to 10:21:00,) the Job will still start at 10:22:00. This happens as the controller now checks how many missed schedules happened in the last 200 seconds (ie, 3 missed schedules), rather than from the last scheduled time until now.
The CronJob is only responsible for creating Jobs that match its schedule, and
the Job in turn is responsible for the management of the Pods it represents.
Controller version
Starting with Kubernetes v1.21 the second version of the CronJob controller
is the default implementation. To disable the default CronJob controller
and use the original CronJob controller instead, one pass the CronJobControllerV2feature gate
flag to the kube-controller-manager,
and set this flag to false. For example:
--feature-gates="CronJobControllerV2=false"
What's next
Learn about Pods and
Jobs, two concepts
that CronJobs rely upon.
Read about the format
of CronJob .spec.schedule fields.
CronJob is part of the Kubernetes REST API.
Read the
CronJob
object definition to understand the API for Kubernetes cron jobs.
2.8 - ReplicationController
Note: A Deployment that configures a ReplicaSet is now the recommended way to set up replication.
A ReplicationController ensures that a specified number of pod replicas are running at any one
time. In other words, a ReplicationController makes sure that a pod or a homogeneous set of pods is
always up and available.
How a ReplicationController Works
If there are too many pods, the ReplicationController terminates the extra pods. If there are too few, the
ReplicationController starts more pods. Unlike manually created pods, the pods maintained by a
ReplicationController are automatically replaced if they fail, are deleted, or are terminated.
For example, your pods are re-created on a node after disruptive maintenance such as a kernel upgrade.
For this reason, you should use a ReplicationController even if your application requires
only a single pod. A ReplicationController is similar to a process supervisor,
but instead of supervising individual processes on a single node, the ReplicationController supervises multiple pods
across multiple nodes.
ReplicationController is often abbreviated to "rc" in discussion, and as a shortcut in
kubectl commands.
A simple case is to create one ReplicationController object to reliably run one instance of
a Pod indefinitely. A more complex use case is to run several identical replicas of a replicated
service, such as web servers.
Running an example ReplicationController
This example ReplicationController config runs three copies of the nginx web server.
To list all the pods that belong to the ReplicationController in a machine readable form, you can use a command like this:
pods=$(kubectl get pods --selector=app=nginx --output=jsonpath={.items..metadata.name})echo$pods
The output is similar to this:
nginx-3ntk0 nginx-4ok8v nginx-qrm3m
Here, the selector is the same as the selector for the ReplicationController (seen in the
kubectl describe output), and in a different form in replication.yaml. The --output=jsonpath option
specifies an expression with the name from each pod in the returned list.
Writing a ReplicationController Spec
As with all other Kubernetes config, a ReplicationController needs apiVersion, kind, and metadata fields.
The name of a ReplicationController object must be a valid
DNS subdomain name.
For general information about working with configuration files, see object management.
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 ReplicationController must specify appropriate
labels and an appropriate restart policy. For labels, make sure not to overlap with other controllers. See pod selector.
For local container restarts, ReplicationControllers delegate to an agent on the node,
for example the Kubelet or Docker.
Labels on the ReplicationController
The ReplicationController can itself have labels (.metadata.labels). Typically, you
would set these the same as the .spec.template.metadata.labels; if .metadata.labels is not specified
then it defaults to .spec.template.metadata.labels. However, they are allowed to be
different, and the .metadata.labels do not affect the behavior of the ReplicationController.
Pod Selector
The .spec.selector field is a label selector. A ReplicationController
manages all the pods with labels that match the selector. It does not distinguish
between pods that it created or deleted and pods that another person or process created or
deleted. This allows the ReplicationController to be replaced without affecting the running pods.
If specified, the .spec.template.metadata.labels must be equal to the .spec.selector, or it will
be rejected by the API. If .spec.selector is unspecified, it will be defaulted to
.spec.template.metadata.labels.
Also you should not normally create any pods whose labels match this selector, either directly, with
another ReplicationController, or with another controller such as Job. If you do so, the
ReplicationController thinks that it created the other pods. Kubernetes does not stop you
from doing this.
If you do end up with multiple controllers that have overlapping selectors, you
will have to manage the deletion yourself (see below).
Multiple Replicas
You can specify how many pods should run concurrently by setting .spec.replicas to the number
of pods you would like to have running concurrently. The number running at any time may be higher
or lower, such as if the replicas were just increased or decreased, or if a pod is gracefully
shutdown, and a replacement starts early.
If you do not specify .spec.replicas, then it defaults to 1.
Working with ReplicationControllers
Deleting a ReplicationController and its Pods
To delete a ReplicationController and all its pods, use kubectl delete. Kubectl will scale the ReplicationController to zero and wait
for it to delete each pod before deleting the ReplicationController itself. If this kubectl
command is interrupted, it can be restarted.
When using the REST API or Go client library, you need to do the steps explicitly (scale replicas to
0, wait for pod deletions, then delete the ReplicationController).
Deleting only a ReplicationController
You can delete a ReplicationController without affecting any of its pods.
Using kubectl, specify the --cascade=orphan option to kubectl delete.
When using the REST API or Go client library, you can delete the ReplicationController object.
Once the original is deleted, you can create a new ReplicationController to replace it. As long
as the old and new .spec.selector are the same, then the new one will adopt the old pods.
However, it will not make any effort to make existing pods match a new, different pod template.
To update pods to a new spec in a controlled way, use a rolling update.
Isolating pods from a ReplicationController
Pods may be removed from a ReplicationController's target set by changing their labels. This technique may be used to remove pods from service for debugging and data recovery. Pods that are removed in this way will be replaced automatically (assuming that the number of replicas is not also changed).
Common usage patterns
Rescheduling
As mentioned above, whether you have 1 pod you want to keep running, or 1000, a ReplicationController will ensure that the specified number of pods exists, even in the event of node failure or pod termination (for example, due to an action by another control agent).
Scaling
The ReplicationController enables scaling the number of replicas up or down, either manually or by an auto-scaling control agent, by updating the replicas field.
Rolling updates
The ReplicationController is designed to facilitate rolling updates to a service by replacing pods one-by-one.
As explained in #1353, the recommended approach is to create a new ReplicationController with 1 replica, scale the new (+1) and old (-1) controllers one by one, and then delete the old controller after it reaches 0 replicas. This predictably updates the set of pods regardless of unexpected failures.
Ideally, the rolling update controller would take application readiness into account, and would ensure that a sufficient number of pods were productively serving at any given time.
The two ReplicationControllers would need to create pods with at least one differentiating label, such as the image tag of the primary container of the pod, since it is typically image updates that motivate rolling updates.
Multiple release tracks
In addition to running multiple releases of an application while a rolling update is in progress, it's common to run multiple releases for an extended period of time, or even continuously, using multiple release tracks. The tracks would be differentiated by labels.
For instance, a service might target all pods with tier in (frontend), environment in (prod). Now say you have 10 replicated pods that make up this tier. But you want to be able to 'canary' a new version of this component. You could set up a ReplicationController with replicas set to 9 for the bulk of the replicas, with labels tier=frontend, environment=prod, track=stable, and another ReplicationController with replicas set to 1 for the canary, with labels tier=frontend, environment=prod, track=canary. Now the service is covering both the canary and non-canary pods. But you can mess with the ReplicationControllers separately to test things out, monitor the results, etc.
Using ReplicationControllers with Services
Multiple ReplicationControllers can sit behind a single service, so that, for example, some traffic
goes to the old version, and some goes to the new version.
A ReplicationController will never terminate on its own, but it isn't expected to be as long-lived as services. Services may be composed of pods controlled by multiple ReplicationControllers, and it is expected that many ReplicationControllers may be created and destroyed over the lifetime of a service (for instance, to perform an update of pods that run the service). Both services themselves and their clients should remain oblivious to the ReplicationControllers that maintain the pods of the services.
Writing programs for Replication
Pods created by a ReplicationController are intended to be fungible and semantically identical, though their configurations may become heterogeneous over time. This is an obvious fit for replicated stateless servers, but ReplicationControllers can also be used to maintain availability of master-elected, sharded, and worker-pool applications. Such applications should use dynamic work assignment mechanisms, such as the RabbitMQ work queues, as opposed to static/one-time customization of the configuration of each pod, which is considered an anti-pattern. Any pod customization performed, such as vertical auto-sizing of resources (for example, cpu or memory), should be performed by another online controller process, not unlike the ReplicationController itself.
Responsibilities of the ReplicationController
The ReplicationController ensures that the desired number of pods matches its label selector and are operational. Currently, only terminated pods are excluded from its count. In the future, readiness and other information available from the system may be taken into account, we may add more controls over the replacement policy, and we plan to emit events that could be used by external clients to implement arbitrarily sophisticated replacement and/or scale-down policies.
The ReplicationController is forever constrained to this narrow responsibility. It itself will not perform readiness nor liveness probes. Rather than performing auto-scaling, it is intended to be controlled by an external auto-scaler (as discussed in #492), which would change its replicas field. We will not add scheduling policies (for example, spreading) to the ReplicationController. Nor should it verify that the pods controlled match the currently specified template, as that would obstruct auto-sizing and other automated processes. Similarly, completion deadlines, ordering dependencies, configuration expansion, and other features belong elsewhere. We even plan to factor out the mechanism for bulk pod creation (#170).
The ReplicationController is intended to be a composable building-block primitive. We expect higher-level APIs and/or tools to be built on top of it and other complementary primitives for user convenience in the future. The "macro" operations currently supported by kubectl (run, scale) are proof-of-concept examples of this. For instance, we could imagine something like Asgard managing ReplicationControllers, auto-scalers, services, scheduling policies, canaries, etc.
API Object
Replication controller is a top-level resource in the Kubernetes REST API. More details about the
API object can be found at:
ReplicationController API object.
Alternatives to ReplicationController
ReplicaSet
ReplicaSet is the next-generation ReplicationController that supports the new set-based label selector.
It's mainly used by Deployment as a mechanism to orchestrate pod creation, deletion and updates.
Note that we recommend using Deployments instead of directly using Replica Sets, unless you require custom update orchestration or don't require updates at all.
Deployment (Recommended)
Deployment is a higher-level API object that updates its underlying Replica Sets and their Pods. Deployments are recommended if you want the rolling update functionality, because they are declarative, server-side, and have additional features.
Bare Pods
Unlike in the case where a user directly created pods, a ReplicationController replaces pods that are deleted or terminated for any reason, such as in the case of node failure or disruptive node maintenance, such as a kernel upgrade. For this reason, we recommend that you use a ReplicationController even if your application requires only a single pod. Think of it similarly to a process supervisor, only it supervises multiple pods across multiple nodes instead of individual processes on a single node. A ReplicationController delegates local container restarts to some agent on the node (for example, Kubelet or Docker).
Job
Use a Job instead of a ReplicationController for pods that are expected to terminate on their own
(that is, batch jobs).
DaemonSet
Use a DaemonSet instead of a ReplicationController for pods that provide a
machine-level function, such as machine monitoring or machine logging. These pods have a lifetime that is tied
to a machine lifetime: the pod needs to be running on the machine before other pods start, and are
safe to terminate when the machine is otherwise ready to be rebooted/shutdown.
Learn about Deployment, the replacement
for ReplicationController.
ReplicationController is part of the Kubernetes REST API.
Read the
ReplicationController
object definition to understand the API for replication controllers.