Monitoring, Logging & Alerting Customization
When it comes to monitoring, no approach fits all use cases. It’s expected that you will want to adjust things to your needs and this page describes the various places where customizations can be applied. In broad terms, there are four main areas that are discussed:
- customer-cluster Prometheus
- seed-cluster Prometheus
- alertmanager rules
- Grafana dashboards
You will want to familiarize yourself with the Monitoring, Logging & Alerting Architecture before reading any further.
Customer-Cluster Prometheus
The basic source of metrics is the Prometheus inside each customer cluster namespace. It will track the customer clusters control plane (IMPORTANT: it is NOT responsible for the components running in the customer clusters themselves.)
This Prometheus is deployed as part of Kubermatic Kubernetes Platform’s (KKP) cluster creation, which means you cannot directly affect its deployment.
Therefore to still allow customization of rules, KKP provides the possibility to specify rules as part of the values.yaml
which gets fed to the KKP chart.
Rules
Custom rules can be added beneath the clusterNamespacePrometheus.rules
key:
kubermatic:
clusterNamespacePrometheus:
disableDefaultRules: false
rules:
groups:
- name: my-custom-group
rules:
- alert: MyCustomAlert
annotations:
message: Something happened in {{ $labels.namespace }}
expr: |
sum(rate(machine_controller_errors_total[5m])) by (namespace) > 0.01
for: 10m
labels:
severity: warning
If you’d like to disable the default rules coming with KKP itself, you can specify the disableDefaultRules
flag:
kubermatic:
clusterNamespacePrometheus:
disableDefaultRules: false
Scraping Configs
Custom scraping configs can be specified by adding the corresponding entries beneath the clusterNamespacePrometheus.scrapingConfigs
key in the values.yaml
:
clusterNamespacePrometheus:
scrapingConfigs:
- job_name: 'schnitzel'
kubernetes_sd_configs:
- role: pod
relabel_configs:
- source_labels: [__meta_kubernetes_pod_annotation_kubermatic_scrape]
action: keep
regex: true
Also, the default KKP scraping configs can be disabled in the same way:
clusterNamespacePrometheus:
disableDefaultScrapingConfigs: true
Seed-Cluster Prometheus
This Prometheus is primarily used to collect metrics from the customer clusters and then provide those to Grafana. In contrast to the Prometheus mentioned above, this one is deployed via a Helm chart and you can use Helm’s native customization options.
Labels
To specify additional labels that are sent to the alertmanager whenever an alert occurs, you can add an externalLabels
element to your values.yaml
and list your desired labels there:
prometheus:
externalLabels:
mycustomlabel: a value
rack: rack17
location: europe
Rules
Rules include recording rules (for precomputing expensive queries) and alerts. There are three different ways of customizing them.
values.yaml
You can add our own rules by adding them to the values.yaml
like so:
prometheus:
rules:
groups:
- name: myrules
rules:
- alert: DatacenterIsOnFire
annotations:
message: |
The datacenter has gone up in flames, someone should quickly find an extinguisher.
You can reach the local emergency services by calling 0118 999 881 999 119 7253.
expr: temperature{server=~"kubernetes.+"} > 100
for: 5m
labels:
severity: critical
This will lead to them being written to a dedicated _customrules.yaml
and included in Prometheus. Use this approach if you only have a few rules that you’d like to add.
Extending the Helm Chart
If you have more than a couple of rules, you can also place new YAML files inside the rules/
directory before you deploy the Helm chart. They will be included as you would expect. To prevent maintenance headaches further down the road you should never change the existing files inside the chart. If you need to get rid of the predefined rules, see the next section on how to achieve it.
Custom ConfigMaps/Secrets
For large deployments with many independently managed rules, you can make use of custom volumes to mount your configuration into Prometheus. For this, to work, you need to create your own ConfigMap or Secret inside the monitoring
namespace. Then configure the Prometheus chart using the values.yaml
to mount those appropriately like so:
prometheus:
volumes:
- name: example-rules-volume
mountPath: /example/rules
configMap: example-rules
After mounting the files into the pod you need to make sure that Prometheus loads them by extending the ruleFiles
list:
prometheus:
ruleFiles:
- '/etc/prometheus/rules/*.yaml'
- '/example/rules/*.yaml'
Managing the ruleFiles
is also the way to disable the predefined rules by just removing the applicable item from the list. You can also keep the list completely empty to disable any and all alerts.
Alertmanager
Alertmanager configuration can be tweaked via values.yaml
like so:
alertmanager:
config:
global:
slack_api_url: https://hooks.slack.com/services/YOUR_KEYS_HERE
route:
receiver: default
repeat_interval: 1h
routes:
- receiver: blackhole
match:
severity: none
receivers:
- name: blackhole
- name: default
slack_configs:
- channel: '#alerting'
send_resolved: true
Please review the Alertmanager Configuration Guide for detailed configuration syntax.
You can review the Alerting Runbook for a reference of alerts that Kubermatic Kubernetes Platform (KKP) monitoring setup can fire, alongside a short description and steps to debug.
Grafana Dashboards
Customizing Grafana entails three different aspects:
- Datasources (like Prometheus, InfluxDB, …)
- Dashboard providers (telling Grafana where to load dashboards from)
- Dashboards themselves
In all cases, you have two general approaches: Either take the Grafana Helm chart and place additional files into the existing directory structure or leave the Helm chart as-is and use the values.yaml
and your own ConfigMaps/Secrets to hold your customizations. This is very similar to how customizing the seed-level Prometheus works, so if you read that chapter, you will feel right at home.
Datasources
To create a new datasource, you can either put a new YAML file inside the provisioning/datasources/
directory or extend your values.yaml
like so:
grafana:
provisioning:
datasources:
extra:
# list your new datasources here
- name: influxdb
type: influxdb
access: proxy
org_id: 1
url: http://influxdb.monitoring.svc.cluster.local:9090
version: 1
editable: false
You can also remove the default Prometheus datasource if you really want to by either deleting the prometheus.yaml
or pointing the source
directive inside your values.yaml
to a different, empty directory:
grafana:
provisioning:
datasources:
source: empty/
Note that by removing the default Prometheus datasource and not providing an alternative with the same name, the default dashboards will not work anymore.
Dashboard Providers
Configuring providers works much in the same way as configuring datasources: either place new files in the provisioning/dashboards/
directory or use the values.yaml
accordingly:
grafana:
provisioning:
dashboards:
extra:
# list your new datasources here
- folder: "Example Resources"
name: "example"
options:
path: /example/dashboards
org_id: 1
type: file
Customizing the providers is especially important if you want to also add your own dashboards. You can point the options.path
path to a newly mounted volume to load dashboards from (see below).
Dashboards
Just like with datasources and providers, new dashboards can be placed in the existing dashboards/
directory. Do note though that if you create a new folder (like dashboards/example/
), you also must create a new dashboard provider to tell Grafana about it. Your dashboards will be loaded and included in the default ConfigMap, but without the new provider, Grafana will not see them.
Following the example above, if you put your dashboards in dashboards/example/
, you need a dashboard provider with the options.path
set to /grafana-dashboard-definitions/example
, because the ConfigMap is mounted to /grafana-dashboard-definitions
.
You can also use your own ConfigMaps or Secrets and have the Grafana deployment mount them. This is useful for larger customizations with lots of dashboards that you want to manage independently. To use an external ConfigMap, create it like so:
- apiVersion: v1
kind: ConfigMap
metadata:
name: example-dashboards
data:
dashboard1.json: |
{ ... Grafana dashboard JSON here ... }
dashboard2.json: |
{ ... Grafana dashboard JSON here ... }
Make sure to create your ConfigMap in the monitoring
namespace and then use the volumes
directive in your values.yaml
to tell the Grafana Helm chart about your ConfigMap:
grafana:
volumes:
- name: example-dashboards-volume
mountPath: /grafana-dashboard-definitions/example
configMap: example-dashboards
Using a Secret instead of a ConfigMap works identically, just specify secretName
instead of configMap
in the volumes
section.
Remember that you still need a custom dashboard provider to make Grafana load your new dashboards.