Pod Topology Spread Constraints
Kubernetes v1.19 [stable]
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:
apiVersion: v1
kind: Pod
metadata:
name: mypod
spec:
topologySpreadConstraints:
- maxSkew: <integer>
topologyKey: <string>
whenUnsatisfiable: <string>
labelSelector: <object>
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.
- when
- 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:
kind: Pod
apiVersion: v1
metadata:
name: mypod
labels:
foo: bar
spec:
topologySpreadConstraints:
- maxSkew: 1
topologyKey: zone
whenUnsatisfiable: DoNotSchedule
labelSelector:
matchLabels:
foo: bar
containers:
- name: pause
image: k8s.gcr.io/pause:3.1
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, ifmaxSkew
remains "1", the incoming Pod can only be placed onto "node4". - Change
whenUnsatisfiable: DoNotSchedule
towhenUnsatisfiable: 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:
kind: Pod
apiVersion: v1
metadata:
name: mypod
labels:
foo: bar
spec:
topologySpreadConstraints:
- maxSkew: 1
topologyKey: zone
whenUnsatisfiable: DoNotSchedule
labelSelector:
matchLabels:
foo: bar
- maxSkew: 1
topologyKey: node
whenUnsatisfiable: DoNotSchedule
labelSelector:
matchLabels:
foo: bar
containers:
- name: pause
image: k8s.gcr.io/pause:3.1
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.
kind: Pod
apiVersion: v1
metadata:
name: mypod
labels:
foo: bar
spec:
topologySpreadConstraints:
- maxSkew: 1
topologyKey: zone
whenUnsatisfiable: DoNotSchedule
labelSelector:
matchLabels:
foo: bar
affinity:
nodeAffinity:
requiredDuringSchedulingIgnoredDuringExecution:
nodeSelectorTerms:
- matchExpressions:
- key: zone
operator: NotIn
values:
- zoneC
containers:
- name: pause
image: k8s.gcr.io/pause:3.1
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".
- the Pods located on those nodes do not impact
-
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'stopologySpreadConstraints[*].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.
An example configuration might look like follows:
apiVersion: kubescheduler.config.k8s.io/v1beta3
kind: KubeSchedulerConfiguration
profiles:
- schedulerName: default-scheduler
pluginConfig:
- name: PodTopologySpread
args:
defaultConstraints:
- maxSkew: 1
topologyKey: topology.kubernetes.io/zone
whenUnsatisfiable: ScheduleAnyway
defaultingType: List
SelectorSpread
plugin.
It is recommended that you disable this plugin in the scheduling profile when
using default constraints for PodTopologySpread
.
Internal default constraints
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:
defaultConstraints:
- maxSkew: 3
topologyKey: "kubernetes.io/hostname"
whenUnsatisfiable: ScheduleAnyway
- maxSkew: 5
topologyKey: "topology.kubernetes.io/zone"
whenUnsatisfiable: ScheduleAnyway
Also, the legacy SelectorSpread
plugin, which provides an equivalent behavior,
is disabled.
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 both kubernetes.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:
apiVersion: kubescheduler.config.k8s.io/v1beta3
kind: KubeSchedulerConfiguration
profiles:
- schedulerName: default-scheduler
pluginConfig:
- name: PodTopologySpread
args:
defaultConstraints: []
defaultingType: List
Comparison with PodAffinity/PodAntiAffinity
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
What's next
- Blog: Introducing PodTopologySpread
explains
maxSkew
in details, as well as bringing up some advanced usage examples.