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API Priority and Fairness
Kubernetes v1.29 [stable]
Controlling the behavior of the Kubernetes API server in an overload situation
is a key task for cluster administrators. The kube-apiserver has some controls available
(i.e. the --max-requests-inflight
and --max-mutating-requests-inflight
command-line flags) to limit the amount of outstanding work that will be
accepted, preventing a flood of inbound requests from overloading and
potentially crashing the API server, but these flags are not enough to ensure
that the most important requests get through in a period of high traffic.
The API Priority and Fairness feature (APF) is an alternative that improves upon aforementioned max-inflight limitations. APF classifies and isolates requests in a more fine-grained way. It also introduces a limited amount of queuing, so that no requests are rejected in cases of very brief bursts. Requests are dispatched from queues using a fair queuing technique so that, for example, a poorly-behaved controller need not starve others (even at the same priority level).
This feature is designed to work well with standard controllers, which use informers and react to failures of API requests with exponential back-off, and other clients that also work this way.
Caution:
Some requests classified as "long-running"—such as remote command execution or log tailing—are not subject to the API Priority and Fairness filter. This is also true for the--max-requests-inflight
flag without the API Priority and Fairness
feature enabled. API Priority and Fairness does apply to watch
requests. When API Priority and Fairness is disabled, watch requests
are not subject to the --max-requests-inflight
limit.Enabling/Disabling API Priority and Fairness
The API Priority and Fairness feature is controlled by a command-line flag
and is enabled by default. See
Options
for a general explanation of the available kube-apiserver command-line
options and how to enable and disable them. The name of the
command-line option for APF is "--enable-priority-and-fairness". This feature
also involves an API Group
with: (a) a stable v1
version, introduced in 1.29, and
enabled by default (b) a v1beta3
version, enabled by default, and
deprecated in v1.29. You can
disable the API group beta version v1beta3
by adding the
following command-line flags to your kube-apiserver
invocation:
kube-apiserver \
--runtime-config=flowcontrol.apiserver.k8s.io/v1beta3=false \
# …and other flags as usual
The command-line flag --enable-priority-and-fairness=false
will disable the
API Priority and Fairness feature.
Recursive server scenarios
API Priority and Fairness must be used carefully in recursive server scenarios. These are scenarios in which some server A, while serving a request, issues a subsidiary request to some server B. Perhaps server B might even make a further subsidiary call back to server A. In situations where Priority and Fairness control is applied to both the original request and some subsidiary ones(s), no matter how deep in the recursion, there is a danger of priority inversions and/or deadlocks.
One example of recursion is when the kube-apiserver
issues an
admission webhook call to server B, and while serving that call,
server B makes a further subsidiary request back to the
kube-apiserver
. Another example of recursion is when an APIService
object directs the kube-apiserver
to delegate requests about a
certain API group to a custom external server B (this is one of the
things called "aggregation").
When the original request is known to belong to a certain priority
level, and the subsidiary controlled requests are classified to higher
priority levels, this is one possible solution. When the original
requests can belong to any priority level, the subsidiary controlled
requests have to be exempt from Priority and Fairness limitation. One
way to do that is with the objects that configure classification and
handling, discussed below. Another way is to disable Priority and
Fairness on server B entirely, using the techniques discussed above. A
third way, which is the simplest to use when server B is not
kube-apisever
, is to build server B with Priority and Fairness
disabled in the code.
Concepts
There are several distinct features involved in the API Priority and Fairness feature. Incoming requests are classified by attributes of the request using FlowSchemas, and assigned to priority levels. Priority levels add a degree of isolation by maintaining separate concurrency limits, so that requests assigned to different priority levels cannot starve each other. Within a priority level, a fair-queuing algorithm prevents requests from different flows from starving each other, and allows for requests to be queued to prevent bursty traffic from causing failed requests when the average load is acceptably low.
Priority Levels
Without APF enabled, overall concurrency in the API server is limited by the
kube-apiserver
flags --max-requests-inflight
and
--max-mutating-requests-inflight
. With APF enabled, the concurrency limits
defined by these flags are summed and then the sum is divided up among a
configurable set of priority levels. Each incoming request is assigned to a
single priority level, and each priority level will only dispatch as many
concurrent requests as its particular limit allows.
The default configuration, for example, includes separate priority levels for leader-election requests, requests from built-in controllers, and requests from Pods. This means that an ill-behaved Pod that floods the API server with requests cannot prevent leader election or actions by the built-in controllers from succeeding.
The concurrency limits of the priority levels are periodically adjusted, allowing under-utilized priority levels to temporarily lend concurrency to heavily-utilized levels. These limits are based on nominal limits and bounds on how much concurrency a priority level may lend and how much it may borrow, all derived from the configuration objects mentioned below.
Seats Occupied by a Request
The above description of concurrency management is the baseline story. Requests have different durations but are counted equally at any given moment when comparing against a priority level's concurrency limit. In the baseline story, each request occupies one unit of concurrency. The word "seat" is used to mean one unit of concurrency, inspired by the way each passenger on a train or aircraft takes up one of the fixed supply of seats.
But some requests take up more than one seat. Some of these are list requests that the server estimates will return a large number of objects. These have been found to put an exceptionally heavy burden on the server. For this reason, the server estimates the number of objects that will be returned and considers the request to take a number of seats that is proportional to that estimated number.
Execution time tweaks for watch requests
API Priority and Fairness manages watch requests, but this involves a couple more excursions from the baseline behavior. The first concerns how long a watch request is considered to occupy its seat. Depending on request parameters, the response to a watch request may or may not begin with create notifications for all the relevant pre-existing objects. API Priority and Fairness considers a watch request to be done with its seat once that initial burst of notifications, if any, is over.
The normal notifications are sent in a concurrent burst to all relevant watch response streams whenever the server is notified of an object create/update/delete. To account for this work, API Priority and Fairness considers every write request to spend some additional time occupying seats after the actual writing is done. The server estimates the number of notifications to be sent and adjusts the write request's number of seats and seat occupancy time to include this extra work.
Queuing
Even within a priority level there may be a large number of distinct sources of traffic. In an overload situation, it is valuable to prevent one stream of requests from starving others (in particular, in the relatively common case of a single buggy client flooding the kube-apiserver with requests, that buggy client would ideally not have much measurable impact on other clients at all). This is handled by use of a fair-queuing algorithm to process requests that are assigned the same priority level. Each request is assigned to a flow, identified by the name of the matching FlowSchema plus a flow distinguisher — which is either the requesting user, the target resource's namespace, or nothing — and the system attempts to give approximately equal weight to requests in different flows of the same priority level. To enable distinct handling of distinct instances, controllers that have many instances should authenticate with distinct usernames
After classifying a request into a flow, the API Priority and Fairness feature then may assign the request to a queue. This assignment uses a technique known as shuffle sharding, which makes relatively efficient use of queues to insulate low-intensity flows from high-intensity flows.
The details of the queuing algorithm are tunable for each priority level, and allow administrators to trade off memory use, fairness (the property that independent flows will all make progress when total traffic exceeds capacity), tolerance for bursty traffic, and the added latency induced by queuing.
Exempt requests
Some requests are considered sufficiently important that they are not subject to any of the limitations imposed by this feature. These exemptions prevent an improperly-configured flow control configuration from totally disabling an API server.
Resources
The flow control API involves two kinds of resources. PriorityLevelConfigurations define the available priority levels, the share of the available concurrency budget that each can handle, and allow for fine-tuning queuing behavior. FlowSchemas are used to classify individual inbound requests, matching each to a single PriorityLevelConfiguration.
PriorityLevelConfiguration
A PriorityLevelConfiguration represents a single priority level. Each PriorityLevelConfiguration has an independent limit on the number of outstanding requests, and limitations on the number of queued requests.
The nominal concurrency limit for a PriorityLevelConfiguration is not
specified in an absolute number of seats, but rather in "nominal
concurrency shares." The total concurrency limit for the API Server is
distributed among the existing PriorityLevelConfigurations in
proportion to these shares, to give each level its nominal limit in
terms of seats. This allows a cluster administrator to scale up or
down the total amount of traffic to a server by restarting
kube-apiserver
with a different value for --max-requests-inflight
(or --max-mutating-requests-inflight
), and all
PriorityLevelConfigurations will see their maximum allowed concurrency
go up (or down) by the same fraction.
Caution:
In the versions beforev1beta3
the relevant
PriorityLevelConfiguration field is named "assured concurrency shares"
rather than "nominal concurrency shares". Also, in Kubernetes release
1.25 and earlier there were no periodic adjustments: the
nominal/assured limits were always applied without adjustment.The bounds on how much concurrency a priority level may lend and how much it may borrow are expressed in the PriorityLevelConfiguration as percentages of the level's nominal limit. These are resolved to absolute numbers of seats by multiplying with the nominal limit / 100.0 and rounding. The dynamically adjusted concurrency limit of a priority level is constrained to lie between (a) a lower bound of its nominal limit minus its lendable seats and (b) an upper bound of its nominal limit plus the seats it may borrow. At each adjustment the dynamic limits are derived by each priority level reclaiming any lent seats for which demand recently appeared and then jointly fairly responding to the recent seat demand on the priority levels, within the bounds just described.
Caution:
With the Priority and Fairness feature enabled, the total concurrency limit for the server is set to the sum of--max-requests-inflight
and
--max-mutating-requests-inflight
. There is no longer any distinction made
between mutating and non-mutating requests; if you want to treat them
separately for a given resource, make separate FlowSchemas that match the
mutating and non-mutating verbs respectively.When the volume of inbound requests assigned to a single
PriorityLevelConfiguration is more than its permitted concurrency level, the
type
field of its specification determines what will happen to extra requests.
A type of Reject
means that excess traffic will immediately be rejected with
an HTTP 429 (Too Many Requests) error. A type of Queue
means that requests
above the threshold will be queued, with the shuffle sharding and fair queuing techniques used
to balance progress between request flows.
The queuing configuration allows tuning the fair queuing algorithm for a priority level. Details of the algorithm can be read in the enhancement proposal, but in short:
-
Increasing
queues
reduces the rate of collisions between different flows, at the cost of increased memory usage. A value of 1 here effectively disables the fair-queuing logic, but still allows requests to be queued. -
Increasing
queueLengthLimit
allows larger bursts of traffic to be sustained without dropping any requests, at the cost of increased latency and memory usage. -
Changing
handSize
allows you to adjust the probability of collisions between different flows and the overall concurrency available to a single flow in an overload situation.Note:
A largerhandSize
makes it less likely for two individual flows to collide (and therefore for one to be able to starve the other), but more likely that a small number of flows can dominate the apiserver. A largerhandSize
also potentially increases the amount of latency that a single high-traffic flow can cause. The maximum number of queued requests possible from a single flow ishandSize * queueLengthLimit
.
Following is a table showing an interesting collection of shuffle sharding configurations, showing for each the probability that a given mouse (low-intensity flow) is squished by the elephants (high-intensity flows) for an illustrative collection of numbers of elephants. See https://play.golang.org/p/Gi0PLgVHiUg , which computes this table.
HandSize | Queues | 1 elephant | 4 elephants | 16 elephants |
---|---|---|---|---|
12 | 32 | 4.428838398950118e-09 | 0.11431348830099144 | 0.9935089607656024 |
10 | 32 | 1.550093439632541e-08 | 0.0626479840223545 | 0.9753101519027554 |
10 | 64 | 6.601827268370426e-12 | 0.00045571320990370776 | 0.49999929150089345 |
9 | 64 | 3.6310049976037345e-11 | 0.00045501212304112273 | 0.4282314876454858 |
8 | 64 | 2.25929199850899e-10 | 0.0004886697053040446 | 0.35935114681123076 |
8 | 128 | 6.994461389026097e-13 | 3.4055790161620863e-06 | 0.02746173137155063 |
7 | 128 | 1.0579122850901972e-11 | 6.960839379258192e-06 | 0.02406157386340147 |
7 | 256 | 7.597695465552631e-14 | 6.728547142019406e-08 | 0.0006709661542533682 |
6 | 256 | 2.7134626662687968e-12 | 2.9516464018476436e-07 | 0.0008895654642000348 |
6 | 512 | 4.116062922897309e-14 | 4.982983350480894e-09 | 2.26025764343413e-05 |
6 | 1024 | 6.337324016514285e-16 | 8.09060164312957e-11 | 4.517408062903668e-07 |
FlowSchema
A FlowSchema matches some inbound requests and assigns them to a
priority level. Every inbound request is tested against FlowSchemas,
starting with those with the numerically lowest matchingPrecedence
and
working upward. The first match wins.
Caution:
Only the first matching FlowSchema for a given request matters. If multiple FlowSchemas match a single inbound request, it will be assigned based on the one with the highestmatchingPrecedence
. If multiple FlowSchemas with equal
matchingPrecedence
match the same request, the one with lexicographically
smaller name
will win, but it's better not to rely on this, and instead to
ensure that no two FlowSchemas have the same matchingPrecedence
.A FlowSchema matches a given request if at least one of its rules
matches. A rule matches if at least one of its subjects
and at least
one of its resourceRules
or nonResourceRules
(depending on whether the
incoming request is for a resource or non-resource URL) match the request.
For the name
field in subjects, and the verbs
, apiGroups
, resources
,
namespaces
, and nonResourceURLs
fields of resource and non-resource rules,
the wildcard *
may be specified to match all values for the given field,
effectively removing it from consideration.
A FlowSchema's distinguisherMethod.type
determines how requests matching that
schema will be separated into flows. It may be ByUser
, in which one requesting
user will not be able to starve other users of capacity; ByNamespace
, in which
requests for resources in one namespace will not be able to starve requests for
resources in other namespaces of capacity; or blank (or distinguisherMethod
may be
omitted entirely), in which all requests matched by this FlowSchema will be
considered part of a single flow. The correct choice for a given FlowSchema
depends on the resource and your particular environment.
Defaults
Each kube-apiserver maintains two sorts of APF configuration objects: mandatory and suggested.
Mandatory Configuration Objects
The four mandatory configuration objects reflect fixed built-in guardrail behavior. This is behavior that the servers have before those objects exist, and when those objects exist their specs reflect this behavior. The four mandatory objects are as follows.
-
The mandatory
exempt
priority level is used for requests that are not subject to flow control at all: they will always be dispatched immediately. The mandatoryexempt
FlowSchema classifies all requests from thesystem:masters
group into this priority level. You may define other FlowSchemas that direct other requests to this priority level, if appropriate. -
The mandatory
catch-all
priority level is used in combination with the mandatorycatch-all
FlowSchema to make sure that every request gets some kind of classification. Typically you should not rely on this catch-all configuration, and should create your own catch-all FlowSchema and PriorityLevelConfiguration (or use the suggestedglobal-default
priority level that is installed by default) as appropriate. Because it is not expected to be used normally, the mandatorycatch-all
priority level has a very small concurrency share and does not queue requests.
Suggested Configuration Objects
The suggested FlowSchemas and PriorityLevelConfigurations constitute a reasonable default configuration. You can modify these and/or create additional configuration objects if you want. If your cluster is likely to experience heavy load then you should consider what configuration will work best.
The suggested configuration groups requests into six priority levels:
-
The
node-high
priority level is for health updates from nodes. -
The
system
priority level is for non-health requests from thesystem:nodes
group, i.e. Kubelets, which must be able to contact the API server in order for workloads to be able to schedule on them. -
The
leader-election
priority level is for leader election requests from built-in controllers (in particular, requests forendpoints
,configmaps
, orleases
coming from thesystem:kube-controller-manager
orsystem:kube-scheduler
users and service accounts in thekube-system
namespace). These are important to isolate from other traffic because failures in leader election cause their controllers to fail and restart, which in turn causes more expensive traffic as the new controllers sync their informers. -
The
workload-high
priority level is for other requests from built-in controllers. -
The
workload-low
priority level is for requests from any other service account, which will typically include all requests from controllers running in Pods. -
The
global-default
priority level handles all other traffic, e.g. interactivekubectl
commands run by nonprivileged users.
The suggested FlowSchemas serve to steer requests into the above priority levels, and are not enumerated here.
Maintenance of the Mandatory and Suggested Configuration Objects
Each kube-apiserver
independently maintains the mandatory and
suggested configuration objects, using initial and periodic behavior.
Thus, in a situation with a mixture of servers of different versions
there may be thrashing as long as different servers have different
opinions of the proper content of these objects.
Each kube-apiserver
makes an initial maintenance pass over the
mandatory and suggested configuration objects, and after that does
periodic maintenance (once per minute) of those objects.
For the mandatory configuration objects, maintenance consists of ensuring that the object exists and, if it does, has the proper spec. The server refuses to allow a creation or update with a spec that is inconsistent with the server's guardrail behavior.
Maintenance of suggested configuration objects is designed to allow
their specs to be overridden. Deletion, on the other hand, is not
respected: maintenance will restore the object. If you do not want a
suggested configuration object then you need to keep it around but set
its spec to have minimal consequences. Maintenance of suggested
objects is also designed to support automatic migration when a new
version of the kube-apiserver
is rolled out, albeit potentially with
thrashing while there is a mixed population of servers.
Maintenance of a suggested configuration object consists of creating
it --- with the server's suggested spec --- if the object does not
exist. OTOH, if the object already exists, maintenance behavior
depends on whether the kube-apiservers
or the users control the
object. In the former case, the server ensures that the object's spec
is what the server suggests; in the latter case, the spec is left
alone.
The question of who controls the object is answered by first looking
for an annotation with key apf.kubernetes.io/autoupdate-spec
. If
there is such an annotation and its value is true
then the
kube-apiservers control the object. If there is such an annotation
and its value is false
then the users control the object. If
neither of those conditions holds then the metadata.generation
of the
object is consulted. If that is 1 then the kube-apiservers control
the object. Otherwise the users control the object. These rules were
introduced in release 1.22 and their consideration of
metadata.generation
is for the sake of migration from the simpler
earlier behavior. Users who wish to control a suggested configuration
object should set its apf.kubernetes.io/autoupdate-spec
annotation
to false
.
Maintenance of a mandatory or suggested configuration object also
includes ensuring that it has an apf.kubernetes.io/autoupdate-spec
annotation that accurately reflects whether the kube-apiservers
control the object.
Maintenance also includes deleting objects that are neither mandatory
nor suggested but are annotated
apf.kubernetes.io/autoupdate-spec=true
.
Health check concurrency exemption
The suggested configuration gives no special treatment to the health
check requests on kube-apiservers from their local kubelets --- which
tend to use the secured port but supply no credentials. With the
suggested config, these requests get assigned to the global-default
FlowSchema and the corresponding global-default
priority level,
where other traffic can crowd them out.
If you add the following additional FlowSchema, this exempts those requests from rate limiting.
Caution:
Making this change also allows any hostile party to then send health-check requests that match this FlowSchema, at any volume they like. If you have a web traffic filter or similar external security mechanism to protect your cluster's API server from general internet traffic, you can configure rules to block any health check requests that originate from outside your cluster.apiVersion: flowcontrol.apiserver.k8s.io/v1
kind: FlowSchema
metadata:
name: health-for-strangers
spec:
matchingPrecedence: 1000
priorityLevelConfiguration:
name: exempt
rules:
- nonResourceRules:
- nonResourceURLs:
- "/healthz"
- "/livez"
- "/readyz"
verbs:
- "*"
subjects:
- kind: Group
group:
name: "system:unauthenticated"
Observability
Metrics
Note:
In versions of Kubernetes before v1.20, the labelsflow_schema
and
priority_level
were inconsistently named flowSchema
and priorityLevel
,
respectively. If you're running Kubernetes versions v1.19 and earlier, you
should refer to the documentation for your version.When you enable the API Priority and Fairness feature, the kube-apiserver exports additional metrics. Monitoring these can help you determine whether your configuration is inappropriately throttling important traffic, or find poorly-behaved workloads that may be harming system health.
Maturity level BETA
-
apiserver_flowcontrol_rejected_requests_total
is a counter vector (cumulative since server start) of requests that were rejected, broken down by the labelsflow_schema
(indicating the one that matched the request),priority_level
(indicating the one to which the request was assigned), andreason
. Thereason
label will be one of the following values:queue-full
, indicating that too many requests were already queued.concurrency-limit
, indicating that the PriorityLevelConfiguration is configured to reject rather than queue excess requests.time-out
, indicating that the request was still in the queue when its queuing time limit expired.cancelled
, indicating that the request is not purge locked and has been ejected from the queue.
-
apiserver_flowcontrol_dispatched_requests_total
is a counter vector (cumulative since server start) of requests that began executing, broken down byflow_schema
andpriority_level
. -
apiserver_flowcontrol_current_inqueue_requests
is a gauge vector holding the instantaneous number of queued (not executing) requests, broken down bypriority_level
andflow_schema
. -
apiserver_flowcontrol_current_executing_requests
is a gauge vector holding the instantaneous number of executing (not waiting in a queue) requests, broken down bypriority_level
andflow_schema
. -
apiserver_flowcontrol_current_executing_seats
is a gauge vector holding the instantaneous number of occupied seats, broken down bypriority_level
andflow_schema
. -
apiserver_flowcontrol_request_wait_duration_seconds
is a histogram vector of how long requests spent queued, broken down by the labelsflow_schema
,priority_level
, andexecute
. Theexecute
label indicates whether the request has started executing.Note:
Since each FlowSchema always assigns requests to a single PriorityLevelConfiguration, you can add the histograms for all the FlowSchemas for one priority level to get the effective histogram for requests assigned to that priority level. -
apiserver_flowcontrol_nominal_limit_seats
is a gauge vector holding each priority level's nominal concurrency limit, computed from the API server's total concurrency limit and the priority level's configured nominal concurrency shares.
Maturity level ALPHA
-
apiserver_current_inqueue_requests
is a gauge vector of recent high water marks of the number of queued requests, grouped by a label namedrequest_kind
whose value ismutating
orreadOnly
. These high water marks describe the largest number seen in the one second window most recently completed. These complement the olderapiserver_current_inflight_requests
gauge vector that holds the last window's high water mark of number of requests actively being served. -
apiserver_current_inqueue_seats
is a gauge vector of the sum over queued requests of the largest number of seats each will occupy, grouped by labels namedflow_schema
andpriority_level
. -
apiserver_flowcontrol_read_vs_write_current_requests
is a histogram vector of observations, made at the end of every nanosecond, of the number of requests broken down by the labelsphase
(which takes on the valueswaiting
andexecuting
) andrequest_kind
(which takes on the valuesmutating
andreadOnly
). Each observed value is a ratio, between 0 and 1, of the number of requests divided by the corresponding limit on the number of requests (queue volume limit for waiting and concurrency limit for executing). -
apiserver_flowcontrol_request_concurrency_in_use
is a gauge vector holding the instantaneous number of occupied seats, broken down bypriority_level
andflow_schema
. -
apiserver_flowcontrol_priority_level_request_utilization
is a histogram vector of observations, made at the end of each nanosecond, of the number of requests broken down by the labelsphase
(which takes on the valueswaiting
andexecuting
) andpriority_level
. Each observed value is a ratio, between 0 and 1, of a number of requests divided by the corresponding limit on the number of requests (queue volume limit for waiting and concurrency limit for executing). -
apiserver_flowcontrol_priority_level_seat_utilization
is a histogram vector of observations, made at the end of each nanosecond, of the utilization of a priority level's concurrency limit, broken down bypriority_level
. This utilization is the fraction (number of seats occupied) / (concurrency limit). This metric considers all stages of execution (both normal and the extra delay at the end of a write to cover for the corresponding notification work) of all requests except WATCHes; for those it considers only the initial stage that delivers notifications of pre-existing objects. Each histogram in the vector is also labeled withphase: executing
(there is no seat limit for the waiting phase). -
apiserver_flowcontrol_request_queue_length_after_enqueue
is a histogram vector of queue lengths for the queues, broken down bypriority_level
andflow_schema
, as sampled by the enqueued requests. Each request that gets queued contributes one sample to its histogram, reporting the length of the queue immediately after the request was added. Note that this produces different statistics than an unbiased survey would.Note:
An outlier value in a histogram here means it is likely that a single flow (i.e., requests by one user or for one namespace, depending on configuration) is flooding the API server, and being throttled. By contrast, if one priority level's histogram shows that all queues for that priority level are longer than those for other priority levels, it may be appropriate to increase that PriorityLevelConfiguration's concurrency shares. -
apiserver_flowcontrol_request_concurrency_limit
is the same asapiserver_flowcontrol_nominal_limit_seats
. Before the introduction of concurrency borrowing between priority levels, this was always equal toapiserver_flowcontrol_current_limit_seats
(which did not exist as a distinct metric). -
apiserver_flowcontrol_lower_limit_seats
is a gauge vector holding the lower bound on each priority level's dynamic concurrency limit. -
apiserver_flowcontrol_upper_limit_seats
is a gauge vector holding the upper bound on each priority level's dynamic concurrency limit. -
apiserver_flowcontrol_demand_seats
is a histogram vector counting observations, at the end of every nanosecond, of each priority level's ratio of (seat demand) / (nominal concurrency limit). A priority level's seat demand is the sum, over both queued requests and those in the initial phase of execution, of the maximum of the number of seats occupied in the request's initial and final execution phases. -
apiserver_flowcontrol_demand_seats_high_watermark
is a gauge vector holding, for each priority level, the maximum seat demand seen during the last concurrency borrowing adjustment period. -
apiserver_flowcontrol_demand_seats_average
is a gauge vector holding, for each priority level, the time-weighted average seat demand seen during the last concurrency borrowing adjustment period. -
apiserver_flowcontrol_demand_seats_stdev
is a gauge vector holding, for each priority level, the time-weighted population standard deviation of seat demand seen during the last concurrency borrowing adjustment period. -
apiserver_flowcontrol_demand_seats_smoothed
is a gauge vector holding, for each priority level, the smoothed enveloped seat demand determined at the last concurrency adjustment. -
apiserver_flowcontrol_target_seats
is a gauge vector holding, for each priority level, the concurrency target going into the borrowing allocation problem. -
apiserver_flowcontrol_seat_fair_frac
is a gauge holding the fair allocation fraction determined in the last borrowing adjustment. -
apiserver_flowcontrol_current_limit_seats
is a gauge vector holding, for each priority level, the dynamic concurrency limit derived in the last adjustment. -
apiserver_flowcontrol_request_execution_seconds
is a histogram vector of how long requests took to actually execute, broken down byflow_schema
andpriority_level
. -
apiserver_flowcontrol_watch_count_samples
is a histogram vector of the number of active WATCH requests relevant to a given write, broken down byflow_schema
andpriority_level
. -
apiserver_flowcontrol_work_estimated_seats
is a histogram vector of the number of estimated seats (maximum of initial and final stage of execution) associated with requests, broken down byflow_schema
andpriority_level
. -
apiserver_flowcontrol_request_dispatch_no_accommodation_total
is a counter vector of the number of events that in principle could have led to a request being dispatched but did not, due to lack of available concurrency, broken down byflow_schema
andpriority_level
. -
apiserver_flowcontrol_epoch_advance_total
is a counter vector of the number of attempts to jump a priority level's progress meter backward to avoid numeric overflow, grouped bypriority_level
andsuccess
.
Good practices for using API Priority and Fairness
When a given priority level exceeds its permitted concurrency, requests can experience increased latency or be dropped with an HTTP 429 (Too Many Requests) error. To prevent these side effects of APF, you can modify your workload or tweak your APF settings to ensure there are sufficient seats available to serve your requests.
To detect whether requests are being rejected due to APF, check the following metrics:
- apiserver_flowcontrol_rejected_requests_total: the total number of requests rejected per FlowSchema and PriorityLevelConfiguration.
- apiserver_flowcontrol_current_inqueue_requests: the current number of requests queued per FlowSchema and PriorityLevelConfiguration.
- apiserver_flowcontrol_request_wait_duration_seconds: the latency added to requests waiting in queues.
- apiserver_flowcontrol_priority_level_seat_utilization: the seat utilization per PriorityLevelConfiguration.
Workload modifications
To prevent requests from queuing and adding latency or being dropped due to APF, you can optimize your requests by:
- Reducing the rate at which requests are executed. A fewer number of requests over a fixed period will result in a fewer number of seats being needed at a given time.
- Avoid issuing a large number of expensive requests concurrently. Requests can be optimized to use fewer seats or have lower latency so that these requests hold those seats for a shorter duration. List requests can occupy more than 1 seat depending on the number of objects fetched during the request. Restricting the number of objects retrieved in a list request, for example by using pagination, will use less total seats over a shorter period. Furthermore, replacing list requests with watch requests will require lower total concurrency shares as watch requests only occupy 1 seat during its initial burst of notifications. If using streaming lists in versions 1.27 and later, watch requests will occupy the same number of seats as a list request for its initial burst of notifications because the entire state of the collection has to be streamed. Note that in both cases, a watch request will not hold any seats after this initial phase.
Keep in mind that queuing or rejected requests from APF could be induced by either an increase in the number of requests or an increase in latency for existing requests. For example, if requests that normally take 1s to execute start taking 60s, it is possible that APF will start rejecting requests because requests are occupying seats for a longer duration than normal due to this increase in latency. If APF starts rejecting requests across multiple priority levels without a significant change in workload, it is possible there is an underlying issue with control plane performance rather than the workload or APF settings.
Priority and fairness settings
You can also modify the default FlowSchema and PriorityLevelConfiguration objects or create new objects of these types to better accommodate your workload.
APF settings can be modified to:
- Give more seats to high priority requests.
- Isolate non-essential or expensive requests that would starve a concurrency level if it was shared with other flows.
Give more seats to high priority requests
- If possible, the number of seats available across all priority levels for a
particular
kube-apiserver
can be increased by increasing the values for themax-requests-inflight
andmax-mutating-requests-inflight
flags. Alternatively, horizontally scaling the number ofkube-apiserver
instances will increase the total concurrency per priority level across the cluster assuming there is sufficient load balancing of requests. - You can create a new FlowSchema which references a PriorityLevelConfiguration
with a larger concurrency level. This new PriorityLevelConfiguration could be an
existing level or a new level with its own set of nominal concurrency shares.
For example, a new FlowSchema could be introduced to change the
PriorityLevelConfiguration for your requests from global-default to workload-low
to increase the number of seats available to your user. Creating a new
PriorityLevelConfiguration will reduce the number of seats designated for
existing levels. Recall that editing a default FlowSchema or
PriorityLevelConfiguration will require setting the
apf.kubernetes.io/autoupdate-spec
annotation to false. - You can also increase the NominalConcurrencyShares for the PriorityLevelConfiguration which is serving your high priority requests. Alternatively, for versions 1.26 and later, you can increase the LendablePercent for competing priority levels so that the given priority level has a higher pool of seats it can borrow.
Isolate non-essential requests from starving other flows
For request isolation, you can create a FlowSchema whose subject matches the user making these requests or create a FlowSchema that matches what the request is (corresponding to the resourceRules). Next, you can map this FlowSchema to a PriorityLevelConfiguration with a low share of seats.
For example, suppose list event requests from Pods running in the default namespace are using 10 seats each and execute for 1 minute. To prevent these expensive requests from impacting requests from other Pods using the existing service-accounts FlowSchema, you can apply the following FlowSchema to isolate these list calls from other requests.
Example FlowSchema object to isolate list event requests:
apiVersion: flowcontrol.apiserver.k8s.io/v1
kind: FlowSchema
metadata:
name: list-events-default-service-account
spec:
distinguisherMethod:
type: ByUser
matchingPrecedence: 8000
priorityLevelConfiguration:
name: catch-all
rules:
- resourceRules:
- apiGroups:
- '*'
namespaces:
- default
resources:
- events
verbs:
- list
subjects:
- kind: ServiceAccount
serviceAccount:
name: default
namespace: default
- This FlowSchema captures all list event calls made by the default service account in the default namespace. The matching precedence 8000 is lower than the value of 9000 used by the existing service-accounts FlowSchema so these list event calls will match list-events-default-service-account rather than service-accounts.
- The catch-all PriorityLevelConfiguration is used to isolate these requests. The catch-all priority level has a very small concurrency share and does not queue requests.
What's next
- You can visit flow control reference doc to learn more about troubleshooting.
- For background information on design details for API priority and fairness, see the enhancement proposal.
- You can make suggestions and feature requests via SIG API Machinery or the feature's slack channel.