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Pod Lifecycle
This page describes the lifecycle of a Pod. Pods follow a defined lifecycle, starting
in the Pending
phase, 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.
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 run on nodes where they remain until termination (according to restart policy) or deletion. If a Node dies, the Pods running on (or scheduled to run on) that node are marked for deletion. The control plane marks the Pods for removal after a timeout period.
Pod lifetime
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; assigning a Pod to a specific node is called binding, and the process of selecting which node to use is called scheduling. Once a Pod has been scheduled and is bound to a node, Kubernetes tries to run that Pod on the node. The Pod runs on that node until it stops, or until the Pod is terminated; if Kubernetes isn't able start the Pod on the selected node (for example, if the node crashes before the Pod starts), then that particular Pod never starts.
You can use Pod Scheduling Readiness to delay scheduling for a Pod until all its scheduling gates are removed. For example, you might want to define a set of Pods but only trigger scheduling once all the Pods have been created.
Pods and fault recovery
If one of the containers in the Pod fails, then Kubernetes may try to restart that specific container. Read How Pods handle problems with containers to learn more.
Pods can however fail in a way that the cluster cannot recover from, and in that case Kubernetes does not attempt to heal the Pod further; instead, Kubernetes deletes the Pod and relies on other components to provide automatic healing.
If a Pod is scheduled to a node and that node then fails, the Pod is treated as unhealthy and Kubernetes eventually deletes the Pod. 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. If you make a replacement Pod, it can
even have same name (as in .metadata.name
) that the old Pod had, but the replacement
would have a different .metadata.uid
from the old Pod.
Kubernetes does not guarantee that a replacement for an existing Pod would be scheduled to the same node as the old Pod that was being replaced.
Associated lifetimes
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.
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, and is not set for automatic restarting. |
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 asTerminating
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.Since Kubernetes 1.27, the kubelet transitions deleted Pods, except for
static Pods and
force-deleted Pods
without a finalizer, to a terminal phase (Failed
or Succeeded
depending on
the exit statuses of the pod containers) before their deletion from the API server.
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.
How Pods handle problems with containers
Kubernetes manages container failures within Pods using a restartPolicy
defined in the Pod spec
. This policy determines how Kubernetes reacts to containers exiting due to errors or other reasons, which falls in the following sequence:
- Initial crash: Kubernetes attempts an immediate restart based on the Pod
restartPolicy
. - Repeated crashes: After the initial crash Kubernetes applies an exponential
backoff delay for subsequent restarts, described in
restartPolicy
. This prevents rapid, repeated restart attempts from overloading the system. - CrashLoopBackOff state: This indicates that the backoff delay mechanism is currently in effect for a given container that is in a crash loop, failing and restarting repeatedly.
- Backoff reset: If a container runs successfully for a certain duration (e.g., 10 minutes), Kubernetes resets the backoff delay, treating any new crash as the first one.
In practice, a CrashLoopBackOff
is a condition or event that might be seen as output
from the kubectl
command, while describing or listing Pods, when a container in the Pod
fails to start properly and then continually tries and fails in a loop.
In other words, when a container enters the crash loop, Kubernetes applies the exponential backoff delay mentioned in the Container restart policy. This mechanism prevents a faulty container from overwhelming the system with continuous failed start attempts.
The CrashLoopBackOff
can be caused by issues like the following:
- Application errors that cause the container to exit.
- Configuration errors, such as incorrect environment variables or missing configuration files.
- Resource constraints, where the container might not have enough memory or CPU to start properly.
- Health checks failing if the application doesn't start serving within the expected time.
- Container liveness probes or startup probes returning a
Failure
result as mentioned in the probes section.
To investigate the root cause of a CrashLoopBackOff
issue, a user can:
- Check logs: Use
kubectl logs <name-of-pod>
to check the logs of the container. This is often the most direct way to diagnose the issue causing the crashes. - Inspect events: Use
kubectl describe pod <name-of-pod>
to see events for the Pod, which can provide hints about configuration or resource issues. - Review configuration: Ensure that the Pod configuration, including environment variables and mounted volumes, is correct and that all required external resources are available.
- Check resource limits: Make sure that the container has enough CPU and memory allocated. Sometimes, increasing the resources in the Pod definition can resolve the issue.
- Debug application: There might exist bugs or misconfigurations in the application code. Running this container image locally or in a development environment can help diagnose application specific issues.
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
for a Pod applies to app containers
in the Pod and to regular init containers.
Sidecar containers
ignore the Pod-level restartPolicy
field: in Kubernetes, a sidecar is defined as an
entry inside initContainers
that has its container-level restartPolicy
set to Always
.
For init containers that exit with an error, the kubelet restarts the init container if
the Pod level restartPolicy
is either OnFailure
or Always
:
Always
: Automatically restarts the container after any termination.OnFailure
: Only restarts the container if it exits with an error (non-zero exit status).Never
: Does not automatically restart the terminated container.
When the kubelet is handling container restarts according to the configured restart
policy, that only applies to restarts that make replacement containers inside the
same Pod and running on the same node. After containers in a Pod exit, the kubelet
restarts them with an exponential backoff delay (10s, 20s, 40s, …), that is capped at
300 seconds (5 minutes). Once a container has executed for 10 minutes without any
problems, the kubelet resets the restart backoff timer for that container.
Sidecar containers and Pod lifecycle
explains the behaviour of init containers
when specify restartpolicy
field on it.
Pod conditions
A Pod has a PodStatus, which has an array of PodConditions through which the Pod has or has not passed. Kubelet manages the following PodConditions:
PodScheduled
: the Pod has been scheduled to a node.PodReadyToStartContainers
: (beta feature; enabled by default) the Pod sandbox has been successfully created and networking configured.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
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 PodCondition
status: "False"
lastProbeTime: null
lastTransitionTime: 2018-01-01T00:00:00Z
- type: "www.example.com/feature-1" # an extra PodCondition
status: "False"
lastProbeTime: null
lastTransitionTime: 2018-01-01T00:00:00Z
containerStatuses:
- 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
areTrue
.
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
.
Pod network readiness
Kubernetes v1.29 [beta]
Note:
During its early development, this condition was namedPodHasNetwork
.After a Pod gets scheduled on a node, it needs to be admitted by the kubelet and
to have any required storage volumes mounted. Once these phases are complete,
the kubelet works with
a container runtime (using Container runtime interface (CRI)) to set up a
runtime sandbox and configure networking for the Pod. If the
PodReadyToStartContainersCondition
feature gate is enabled
(it is enabled by default for Kubernetes 1.30), the
PodReadyToStartContainers
condition will be added to the status.conditions
field of a Pod.
The PodReadyToStartContainers
condition is set to False
by the Kubelet when it detects a
Pod does not have a runtime sandbox with networking configured. This occurs in
the following scenarios:
- Early in the lifecycle of the Pod, when the kubelet has not yet begun to set up a sandbox for the Pod using the container runtime.
- Later in the lifecycle of the Pod, when the Pod sandbox has been destroyed due to either:
- the node rebooting, without the Pod getting evicted
- for container runtimes that use virtual machines for isolation, the Pod sandbox virtual machine rebooting, which then requires creating a new sandbox and fresh container network configuration.
The PodReadyToStartContainers
condition is set to True
by the kubelet after the
successful completion of sandbox creation and network configuration for the Pod
by the runtime plugin. The kubelet can start pulling container images and create
containers after PodReadyToStartContainers
condition has been set to True
.
For a Pod with init containers, the kubelet sets the Initialized
condition to
True
after the init containers have successfully completed (which happens
after successful sandbox creation and network configuration by the runtime
plugin). For a Pod without init containers, the kubelet sets the Initialized
condition to True
before sandbox creation and network configuration starts.
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 isSERVING
. 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.
Caution:
Unlike the other mechanisms,exec
probe's implementation involves the creation/forking of multiple processes each time when executed.
As a result, in case of the clusters having higher pod densities, lower intervals of initialDelaySeconds
, periodSeconds
, configuring any probe with exec mechanism might introduce an overhead on the cpu usage of the node.
In such scenarios, consider using the alternative probe mechanisms to avoid the overhead.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 isSuccess
. 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
.
For more information about how to set up a liveness, readiness, or startup probe, see Configure Liveness, Readiness and Startup Probes.
When should you use a liveness probe?
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?
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?
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, with this graceful termination of the pod, kubelet makes requests to the container runtime to attempt to stop the containers in the pod by first sending a TERM (aka. SIGTERM) signal, with a grace period timeout, to the main process in each container. The requests to stop the containers are processed by the container runtime asynchronously. There is no guarantee to the order of processing for these requests. Many container runtimes respect the STOPSIGNAL
value defined in the container image and, if different, send the container image configured STOPSIGNAL 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.
Pod termination flow, illustrated with an example:
-
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 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
preStop
hook and theterminationGracePeriodSeconds
in the Pod spec is not set to 0, the kubelet runs that hook inside of the container. The defaultterminationGracePeriodSeconds
setting is 30 seconds.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 thepreStop
hook needs longer to complete than the default grace period allows, you must modifyterminationGracePeriodSeconds
to suit this. -
The kubelet triggers the container runtime to send a TERM signal to process 1 inside each container.
There is special ordering if the Pod has any sidecar containers defined. Otherwise, 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 (or switch to using sidecar containers).
-
-
At the same time as the kubelet is starting graceful shutdown of the Pod, the control plane evaluates whether to remove that shutting-down Pod from EndpointSlice (and Endpoints) objects, where those objects 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 should not continue to serve regular traffic and should start terminating and finish processing open connections. Some applications need to go beyond finishing open connections and need more graceful termination, for example, session draining and completion.
Any endpoints that represent the terminating Pods are not immediately removed from EndpointSlices, and a status indicating terminating state is exposed from the EndpointSlice API (and the legacy Endpoints API). Terminating endpoints always have their
ready
status asfalse
(for backward compatibility with versions before 1.26), so load balancers will not use it for regular traffic.If traffic draining on terminating Pod is needed, the actual readiness can be checked as a condition
serving
. You can find more details on how to implement connections draining in the tutorial Pods And Endpoints Termination Flow -
The kubelet ensures the Pod is shut down and terminated
- When the grace period expires, if there is still any container running in the Pod, 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 hiddenpause
container if that container runtime uses one. - The kubelet transitions the Pod into a terminal phase (
Failed
orSucceeded
depending on the end state of its containers). - The kubelet triggers forcible removal of the 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.
- When the grace period expires, if there is still any container running in the Pod, the
kubelet triggers forcible shutdown.
The container runtime sends
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.
Using kubectl, 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.
Caution:
Immediate deletion does not wait for confirmation that the running resource has been terminated. The resource may continue to run on the cluster indefinitely.If you need to force-delete Pods that are part of a StatefulSet, refer to the task documentation for deleting Pods from a StatefulSet.
Pod shutdown and sidecar containers
If your Pod includes one or more sidecar containers (init containers with an Always restart policy), the kubelet will delay sending the TERM signal to these sidecar containers until the last main container has fully terminated. The sidecar containers will be terminated in the reverse order they are defined in the Pod spec. This ensures that sidecar containers continue serving the other containers in the Pod until they are no longer needed.
This means that slow termination of a main container will also delay the termination of the sidecar containers. If the grace period expires before the termination process is complete, the Pod may enter forced termination. In this case, all remaining containers in the Pod will be terminated simultaneously with a short grace period.
Similarly, if the Pod has a preStop
hook that exceeds the termination grace period, emergency termination may occur.
In general, if you have used preStop
hooks to control the termination order without sidecar containers, you can now
remove them and allow the kubelet to manage sidecar termination automatically.
Garbage collection of Pods
For failed Pods, the API objects remain in the cluster's API until a human or controller process explicitly removes them.
The Pod garbage collector (PodGC), which is a controller in 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.
Additionally, PodGC cleans up any Pods which satisfy any of the following conditions:
- are orphan Pods - bound to a node which no longer exists,
- are unscheduled terminating Pods,
- are terminating Pods, bound to a non-ready node tainted with
node.kubernetes.io/out-of-service
, when theNodeOutOfServiceVolumeDetach
feature gate is enabled.
When the PodDisruptionConditions
feature gate is enabled, along with
cleaning up the Pods, PodGC will also mark them as failed if they are in a non-terminal
phase. Also, PodGC adds a Pod disruption condition when cleaning up an orphan Pod.
See Pod disruption conditions
for more details.
What's next
-
Get hands-on experience attaching handlers to container lifecycle events.
-
Get hands-on experience configuring Liveness, Readiness and Startup Probes.
-
Learn more about container lifecycle hooks.
-
Learn more about sidecar containers.
-
For detailed information about Pod and container status in the API, see the API reference documentation covering
status
for Pod.