kube-state-metrics is a simple service that listens to the Kubernetes API server and generates metrics about the state of the objects. (See examples in the Metrics section below.) It is not focused on the health of the individual Kubernetes components, but rather on the health of the various objects inside, such as deployments, nodes and pods.
kube-state-metrics is about generating metrics from Kubernetes API objects without modification. This ensures that features provided by kube-state-metrics have the same grade of stability as the Kubernetes API objects themselves. In turn, this means that kube-state-metrics in certain situations may not show the exact same values as kubectl, as kubectl applies certain heuristics to display comprehensible messages. kube-state-metrics exposes raw data unmodified from the Kubernetes API, this way users have all the data they require and perform heuristics as they see fit.
The metrics are exported on the HTTP endpoint /metrics
on the listening port
(default 8080). They are served as plaintext. They are designed to be consumed
either by Prometheus itself or by a scraper that is compatible with scraping a
Prometheus client endpoint. You can also open /metrics
in a browser to see
the raw metrics.
- Versioning
- Metrics Documentation
- Kube-state-metrics self metrics
- Resource recommendation
- A note on costing
- kube-state-metrics vs. metrics-server
- Scaling kube-state-metrics
- Setup
- Usage
kube-state-metrics uses client-go
to talk with
Kubernetes clusters. The supported Kubernetes cluster version is determined by client-go
.
The compatibility matrix for client-go and Kubernetes cluster can be found
here.
All additional compatibility is only best effort, or happens to still/already be supported.
At most, 5 kube-state-metrics and 5 kubernetes releases will be recorded below.
kube-state-metrics | Kubernetes 1.13 | Kubernetes 1.14 | Kubernetes 1.15 | Kubernetes 1.16 | Kubernetes 1.17 |
---|---|---|---|---|---|
v1.6.0 | ✓ | - | - | - | - |
v1.7.2 | ✓ | ✓ | - | - | - |
v1.8.0 | ✓ | ✓ | ✓ | - | - |
v1.9.5 | ✓ | ✓ | ✓ | ✓ | - |
master | ✓ | ✓ | ✓ | ✓ | ✓ |
✓
Fully supported version range.-
The Kubernetes cluster has features the client-go library can't use (additional API objects, etc).
Resources in Kubernetes can evolve, i.e., the group version for a resource may change from alpha to beta and finally GA in different Kubernetes versions. For now, kube-state-metrics will only use the oldest API available in the latest release.
The latest container image can be found at:
quay.io/coreos/kube-state-metrics:v1.9.5
k8s.gcr.io/kube-state-metrics:v1.9.5
Note:
The recommended docker registry for kube-state-metrics is quay.io
. kube-state-metrics on
gcr.io
is only maintained on best effort as it requires external help from Google employees.
There are many more metrics we could report, but this first pass is focused on those that could be used for actionable alerts. Please contribute PR's for additional metrics!
WARNING: THESE METRIC/TAG NAMES ARE UNSTABLE AND MAY CHANGE IN A FUTURE RELEASE. For now, the following metrics and resources
metrics
kube_pod_container_resource_requests_nvidia_gpu_devices
kube_pod_container_resource_limits_nvidia_gpu_devices
kube_node_status_capacity_nvidia_gpu_cards
kube_node_status_allocatable_nvidia_gpu_cards
are removed in kube-state-metrics v1.4.0.
Any resources and metrics based on alpha Kubernetes APIs are excluded from any stability guarantee, which may be changed at any given release.
See the docs
directory for more information on the exposed metrics.
kube-state-metrics exposes its own general process metrics under --telemetry-host
and --telemetry-port
(default 8081).
kube-state-metrics also exposes list and watch success and error metrics. These can be used to calculate the error rate of list or watch resources. If you encounter those errors in the metrics, it is most likely a configuration or permission issue, and the next thing to investigate would be looking at the logs of kube-state-metrics.
Example of the above mentioned metrics:
kube_state_metrics_list_total{resource="*v1.Node",result="success"} 1
kube_state_metrics_list_total{resource="*v1.Node",result="error"} 52
kube_state_metrics_watch_total{resource="*v1beta1.Ingress",result="success"} 1
Note: These recommendations are based on scalability tests done over a year ago. They may differ significantly today.
Resource usage for kube-state-metrics changes with the Kubernetes objects (Pods/Nodes/Deployments/Secrets etc.) size of the cluster. To some extent, the Kubernetes objects in a cluster are in direct proportion to the node number of the cluster.
As a general rule, you should allocate
- 200MiB memory
- 0.1 cores
For clusters of more than 100 nodes, allocate at least
- 2MiB memory per node
- 0.001 cores per node
These numbers are based on scalability tests at 30 pods per node.
Note that if CPU limits are set too low, kube-state-metrics' internal queues will not be able to be worked off quickly enough, resulting in increased memory consumption as the queue length grows. If you experience problems resulting from high memory allocation, try increasing the CPU limits.
By default, kube-state-metrics exposes several metrics for events across your cluster. If you have a large number of frequently-updating resources on your cluster, you may find that a lot of data is ingested into these metrics. This can incur high costs on some cloud providers. Please take a moment to configure what metrics you'd like to expose, as well as consult the documentation for your Kubernetes environment in order to avoid unexpectedly high costs.
The metrics-server is a project that has been inspired by Heapster and is implemented to serve the goals of core metrics pipelines in Kubernetes monitoring architecture. It is a cluster level component which periodically scrapes metrics from all Kubernetes nodes served by Kubelet through Summary API. The metrics are aggregated, stored in memory and served in Metrics API format. The metric-server stores the latest values only and is not responsible for forwarding metrics to third-party destinations.
kube-state-metrics is focused on generating completely new metrics from Kubernetes' object state (e.g. metrics based on deployments, replica sets, etc.). It holds an entire snapshot of Kubernetes state in memory and continuously generates new metrics based off of it. And just like the metric-server it too is not responsibile for exporting its metrics anywhere.
Having kube-state-metrics as a separate project also enables access to these metrics from monitoring systems such as Prometheus.
In order to scale kube-state-metrics horizontally, some automated sharding capabilities have been implemented. It is configured with the following flags:
--shard
(zero indexed)--total-shards
Sharding is done by taking an md5 sum of the Kubernetes Object's UID and performing a modulo operation on it, with the total number of shards. The configured shard decides whether the object is handled by the respective instance of kube-state-metrics or not. Note that this means all instances of kube-state-metrics even if sharded will have the network traffic and the resource consumption for unmarshaling objects for all objects, not just the ones it is responsible for. To optimize this further, the Kubernetes API would need to support sharded list/watch capabilities. Overall memory consumption should be 1/n th of each shard compared to an unsharded setup. Typically, kube-state-metrics needs to be memory and latency optimized in order for it to return its metrics rather quickly to Prometheus.
Sharding should be used carefully, and additional monitoring should be set up in order to ensure that sharding is set up and functioning as expected (eg. instances for each shard out of the total shards are configured).
There is also an experimental feature, that allows kube-state-metrics to auto discover its nominal position if it is deployed in a StatefulSet, in order to automatically configure sharding. This is an experimental feature and may be broken or removed without notice.
To enable automated sharding kube-state-metrics must be run by a StatefulSet
and the pod names and namespace must be handed to the kube-state-metrics process via the --pod
and --pod-namespace
flags.
There are example manifests demonstrating the autosharding functionality in /examples/autosharding
.
Install this project to your $GOPATH
using go get
:
go get k8s.io/kube-state-metrics
Simply run the following command in this root folder, which will create a self-contained, statically-linked binary and build a Docker image:
make container
Simply build and run kube-state-metrics inside a Kubernetes pod which has a service account token that has read-only access to the Kubernetes cluster.
To deploy this project, you can simply run kubectl apply -f examples/standard
and a
Kubernetes service and deployment will be created. (Note: Adjust the apiVersion of some resource if your kubernetes cluster's version is not 1.8+, check the yaml file for more information).
To have Prometheus discover kube-state-metrics instances it is advised to create a specific Prometheus scrape config for kube-state-metrics that picks up both metrics endpoints. Annotation based discovery is discouraged as only one of the endpoints would be able to be selected, plus kube-state-metrics in most cases has special authentication and authorization requirements as it essentially grants read access through the metrics endpoint to most information available to it.
Note: Google Kubernetes Engine (GKE) Users - GKE has strict role permissions that will prevent the kube-state-metrics roles and role bindings from being created. To work around this, you can give your GCP identity the cluster-admin role by running the following one-liner:
kubectl create clusterrolebinding cluster-admin-binding --clusterrole=cluster-admin --user=$(gcloud info --format='value(config.account)')
Note that your GCP identity is case sensitive but gcloud info
as of Google Cloud SDK 221.0.0 is not. This means that if your IAM member contains capital letters, the above one-liner may not work for you. If you have 403 forbidden responses after running the above command and kubectl apply -f examples/standard
, check the IAM member associated with your account at https://console.cloud.google.com/iam-admin/iam?project=PROJECT_ID. If it contains capital letters, you may need to set the --user flag in the command above to the case-sensitive role listed at https://console.cloud.google.com/iam-admin/iam?project=PROJECT_ID.
After running the above, if you see Clusterrolebinding "cluster-admin-binding" created
, then you are able to continue with the setup of this service.
If you want to run kube-state-metrics in an environment where you don't have cluster-reader role, you can:
- create a serviceaccount
apiVersion: v1
kind: ServiceAccount
metadata:
name: kube-state-metrics
namespace: your-namespace-where-kube-state-metrics-will-deployed
- give it
view
privileges on specific namespaces (using roleBinding) (note: you can add this roleBinding to all the NS you want your serviceaccount to access)
apiVersion: rbac.authorization.k8s.io/v1
kind: RoleBinding
metadata:
name: kube-state-metrics
namespace: project1
roleRef:
apiGroup: rbac.authorization.k8s.io
kind: ClusterRole
name: view
subjects:
- kind: ServiceAccount
name: kube-state-metrics
namespace: your-namespace-where-kube-state-metrics-will-deployed
- then specify a set of namespaces (using the
--namespace
option) and a set of kubernetes objects (using the--collectors
) that your serviceaccount has access to in thekube-state-metrics
deployment configuration
spec:
template:
spec:
containers:
- name: kube-state-metrics
args:
- '--collectors=pods'
- '--namespace=project1'
For the full list of arguments available, see the documentation in docs/cli-arguments.md
When developing, test a metric dump against your local Kubernetes cluster by running:
Users can override the apiserver address in KUBE-CONFIG file with
--apiserver
command line.
go install
kube-state-metrics --port=8080 --telemetry-port=8081 --kubeconfig=<KUBE-CONFIG> --apiserver=<APISERVER>
Then curl the metrics endpoint
curl localhost:8080/metrics
To run the e2e tests locally see the documentation in tests/README.md.
When developing, there are certain code patterns to follow to better your contributing experience and likelihood of e2e and other ci tests to pass. To learn more about them, see the documentation in docs/developer/guide.md.