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Control CPU Management Policies on the Node
Kubernetes v1.26 [stable]
Kubernetes keeps many aspects of how pods execute on nodes abstracted from the user. This is by design. However, some workloads require stronger guarantees in terms of latency and/or performance in order to operate acceptably. The kubelet provides methods to enable more complex workload placement policies while keeping the abstraction free from explicit placement directives.
For detailed information on resource management, please refer to the Resource Management for Pods and Containers documentation.
Before you begin
You need to have a Kubernetes cluster, and the kubectl command-line tool must be configured to communicate with your cluster. It is recommended to run this tutorial on a cluster with at least two nodes that are not acting as control plane hosts. If you do not already have a cluster, you can create one by using minikube or you can use one of these Kubernetes playgrounds:
Your Kubernetes server must be at or later than version v1.26. To check the version, enterkubectl version
.
If you are running an older version of Kubernetes, please look at the documentation for the version you are actually running.
CPU Management Policies
By default, the kubelet uses CFS quota to enforce pod CPU limits. When the node runs many CPU-bound pods, the workload can move to different CPU cores depending on whether the pod is throttled and which CPU cores are available at scheduling time. Many workloads are not sensitive to this migration and thus work fine without any intervention.
However, in workloads where CPU cache affinity and scheduling latency significantly affect workload performance, the kubelet allows alternative CPU management policies to determine some placement preferences on the node.
Configuration
The CPU Manager policy is set with the --cpu-manager-policy
kubelet
flag or the cpuManagerPolicy
field in KubeletConfiguration.
There are two supported policies:
none
: the default policy.static
: allows pods with certain resource characteristics to be granted increased CPU affinity and exclusivity on the node.
The CPU manager periodically writes resource updates through the CRI in
order to reconcile in-memory CPU assignments with cgroupfs. The reconcile
frequency is set through a new Kubelet configuration value
--cpu-manager-reconcile-period
. If not specified, it defaults to the same
duration as --node-status-update-frequency
.
The behavior of the static policy can be fine-tuned using the --cpu-manager-policy-options
flag.
The flag takes a comma-separated list of key=value
policy options.
If you disable the CPUManagerPolicyOptions
feature gate
then you cannot fine-tune CPU manager policies. In that case, the CPU manager
operates only using its default settings.
In addition to the top-level CPUManagerPolicyOptions
feature gate, the policy options are split
into two groups: alpha quality (hidden by default) and beta quality (visible by default).
The groups are guarded respectively by the CPUManagerPolicyAlphaOptions
and CPUManagerPolicyBetaOptions
feature gates. Diverging from the Kubernetes standard, these
feature gates guard groups of options, because it would have been too cumbersome to add a feature
gate for each individual option.
Changing the CPU Manager Policy
Since the CPU manager policy can only be applied when kubelet spawns new pods, simply changing from "none" to "static" won't apply to existing pods. So in order to properly change the CPU manager policy on a node, perform the following steps:
- Drain the node.
- Stop kubelet.
- Remove the old CPU manager state file. The path to this file is
/var/lib/kubelet/cpu_manager_state
by default. This clears the state maintained by the CPUManager so that the cpu-sets set up by the new policy won’t conflict with it. - Edit the kubelet configuration to change the CPU manager policy to the desired value.
- Start kubelet.
Repeat this process for every node that needs its CPU manager policy changed. Skipping this process will result in kubelet crashlooping with the following error:
could not restore state from checkpoint: configured policy "static" differs from state checkpoint policy "none", please drain this node and delete the CPU manager checkpoint file "/var/lib/kubelet/cpu_manager_state" before restarting Kubelet
None policy
The none
policy explicitly enables the existing default CPU
affinity scheme, providing no affinity beyond what the OS scheduler does
automatically. Limits on CPU usage for
Guaranteed pods and
Burstable pods
are enforced using CFS quota.
Static policy
The static
policy allows containers in Guaranteed
pods with integer CPU
requests
access to exclusive CPUs on the node. This exclusivity is enforced
using the cpuset cgroup controller.
cpu_manager_state
in the kubelet root directory.
This policy manages a shared pool of CPUs that initially contains all CPUs in the
node. The amount of exclusively allocatable CPUs is equal to the total
number of CPUs in the node minus any CPU reservations by the kubelet --kube-reserved
or
--system-reserved
options. From 1.17, the CPU reservation list can be specified
explicitly by kubelet --reserved-cpus
option. The explicit CPU list specified by
--reserved-cpus
takes precedence over the CPU reservation specified by
--kube-reserved
and --system-reserved
. CPUs reserved by these options are taken, in
integer quantity, from the initial shared pool in ascending order by physical
core ID. This shared pool is the set of CPUs on which any containers in
BestEffort
and Burstable
pods run. Containers in Guaranteed
pods with fractional
CPU requests
also run on CPUs in the shared pool. Only containers that are
both part of a Guaranteed
pod and have integer CPU requests
are assigned
exclusive CPUs.
--kube-reserved
and/or --system-reserved
or --reserved-cpus
when
the static policy is enabled. This is because zero CPU reservation would allow the shared
pool to become empty.
As Guaranteed
pods whose containers fit the requirements for being statically
assigned are scheduled to the node, CPUs are removed from the shared pool and
placed in the cpuset for the container. CFS quota is not used to bound
the CPU usage of these containers as their usage is bound by the scheduling domain
itself. In others words, the number of CPUs in the container cpuset is equal to the integer
CPU limit
specified in the pod spec. This static assignment increases CPU
affinity and decreases context switches due to throttling for the CPU-bound
workload.
Consider the containers in the following pod specs:
spec:
containers:
- name: nginx
image: nginx
This pod runs in the BestEffort
QoS class because no resource requests
or
limits
are specified. It runs in the shared pool.
spec:
containers:
- name: nginx
image: nginx
resources:
limits:
memory: "200Mi"
requests:
memory: "100Mi"
This pod runs in the Burstable
QoS class because resource requests
do not
equal limits
and the cpu
quantity is not specified. It runs in the shared
pool.
spec:
containers:
- name: nginx
image: nginx
resources:
limits:
memory: "200Mi"
cpu: "2"
requests:
memory: "100Mi"
cpu: "1"
This pod runs in the Burstable
QoS class because resource requests
do not
equal limits
. It runs in the shared pool.
spec:
containers:
- name: nginx
image: nginx
resources:
limits:
memory: "200Mi"
cpu: "2"
requests:
memory: "200Mi"
cpu: "2"
This pod runs in the Guaranteed
QoS class because requests
are equal to limits
.
And the container's resource limit for the CPU resource is an integer greater than
or equal to one. The nginx
container is granted 2 exclusive CPUs.
spec:
containers:
- name: nginx
image: nginx
resources:
limits:
memory: "200Mi"
cpu: "1.5"
requests:
memory: "200Mi"
cpu: "1.5"
This pod runs in the Guaranteed
QoS class because requests
are equal to limits
.
But the container's resource limit for the CPU resource is a fraction. It runs in
the shared pool.
spec:
containers:
- name: nginx
image: nginx
resources:
limits:
memory: "200Mi"
cpu: "2"
This pod runs in the Guaranteed
QoS class because only limits
are specified
and requests
are set equal to limits
when not explicitly specified. And the
container's resource limit for the CPU resource is an integer greater than or
equal to one. The nginx
container is granted 2 exclusive CPUs.
Static policy options
You can toggle groups of options on and off based upon their maturity level using the following feature gates:
CPUManagerPolicyBetaOptions
default enabled. Disable to hide beta-level options.CPUManagerPolicyAlphaOptions
default disabled. Enable to show alpha-level options. You will still have to enable each option using theCPUManagerPolicyOptions
kubelet option.
The following policy options exist for the static CPUManager
policy:
full-pcpus-only
(beta, visible by default) (1.22 or higher)distribute-cpus-across-numa
(alpha, hidden by default) (1.23 or higher)align-by-socket
(alpha, hidden by default) (1.25 or higher)
If the full-pcpus-only
policy option is specified, the static policy will always allocate full physical cores.
By default, without this option, the static policy allocates CPUs using a topology-aware best-fit allocation.
On SMT enabled systems, the policy can allocate individual virtual cores, which correspond to hardware threads.
This can lead to different containers sharing the same physical cores; this behaviour in turn contributes
to the noisy neighbours problem.
With the option enabled, the pod will be admitted by the kubelet only if the CPU request of all its containers
can be fulfilled by allocating full physical cores.
If the pod does not pass the admission, it will be put in Failed state with the message SMTAlignmentError
.
If the distribute-cpus-across-numa
policy option is specified, the static
policy will evenly distribute CPUs across NUMA nodes in cases where more than
one NUMA node is required to satisfy the allocation.
By default, the CPUManager
will pack CPUs onto one NUMA node until it is
filled, with any remaining CPUs simply spilling over to the next NUMA node.
This can cause undesired bottlenecks in parallel code relying on barriers (and
similar synchronization primitives), as this type of code tends to run only as
fast as its slowest worker (which is slowed down by the fact that fewer CPUs
are available on at least one NUMA node).
By distributing CPUs evenly across NUMA nodes, application developers can more
easily ensure that no single worker suffers from NUMA effects more than any
other, improving the overall performance of these types of applications.
If the align-by-socket
policy option is specified, CPUs will be considered
aligned at the socket boundary when deciding how to allocate CPUs to a
container. By default, the CPUManager
aligns CPU allocations at the NUMA
boundary, which could result in performance degradation if CPUs need to be
pulled from more than one NUMA node to satisfy the allocation. Although it
tries to ensure that all CPUs are allocated from the minimum number of NUMA
nodes, there is no guarantee that those NUMA nodes will be on the same socket.
By directing the CPUManager
to explicitly align CPUs at the socket boundary
rather than the NUMA boundary, we are able to avoid such issues. Note, this
policy option is not compatible with TopologyManager
single-numa-node
policy and does not apply to hardware where the number of sockets is greater
than number of NUMA nodes.
The full-pcpus-only
option can be enabled by adding full-pcpus-only=true
to
the CPUManager policy options.
Likewise, the distribute-cpus-across-numa
option can be enabled by adding
distribute-cpus-across-numa=true
to the CPUManager policy options.
When both are set, they are "additive" in the sense that CPUs will be
distributed across NUMA nodes in chunks of full-pcpus rather than individual
cores.
The align-by-socket
policy option can be enabled by adding align-by-socket=true
to the CPUManager
policy options. It is also additive to the full-pcpus-only
and distribute-cpus-across-numa
policy options.