The OpenTelemetry Operator is an implementation of a Kubernetes Operator.
The operator manages:
- OpenTelemetry Collector
- auto-instrumentation of the workloads using OpenTelemetry instrumentation libraries
To install the operator in an existing cluster, make sure you have cert-manager
installed and run:
kubectl apply -f https://github.com/open-telemetry/opentelemetry-operator/releases/latest/download/opentelemetry-operator.yaml
Once the opentelemetry-operator
deployment is ready, create an OpenTelemetry Collector (otelcol) instance, like:
kubectl apply -f - <<EOF
apiVersion: opentelemetry.io/v1alpha1
kind: OpenTelemetryCollector
metadata:
name: simplest
spec:
config: |
receivers:
otlp:
protocols:
grpc:
http:
processors:
exporters:
logging:
service:
pipelines:
traces:
receivers: [otlp]
processors: []
exporters: [logging]
EOF
WARNING: Until the OpenTelemetry Collector format is stable, changes may be required in the above example to remain compatible with the latest version of the OpenTelemetry Collector image being referenced.
This will create an OpenTelemetry Collector instance named simplest
, exposing a jaeger-grpc
port to consume spans from your instrumented applications and exporting those spans via logging
, which writes the spans to the console (stdout
) of the OpenTelemetry Collector instance that receives the span.
The config
node holds the YAML
that should be passed down as-is to the underlying OpenTelemetry Collector instances. Refer to the OpenTelemetry Collector documentation for a reference of the possible entries.
At this point, the Operator does not validate the contents of the configuration file: if the configuration is invalid, the instance will still be created but the underlying OpenTelemetry Collector might crash.
The Operator does examine the configuration file to discover configured receivers and their ports. If it finds receivers with ports, it creates a pair of kubernetes services, one headless, exposing those ports within the cluster. The headless service contains a service.beta.openshift.io/serving-cert-secret-name
annotation that will cause OpenShift to create a secret containing a certificate and key. This secret can be mounted as a volume and the certificate and key used in those receivers' TLS configurations.
As noted above, the OpenTelemetry Collector format is continuing to evolve. However, a best-effort attempt is made to upgrade all managed OpenTelemetryCollector
resources.
In certain scenarios, it may be desirable to prevent the operator from upgrading certain OpenTelemetryCollector
resources. For example, when a resource is configured with a custom .Spec.Image
, end users may wish to manage configuration themselves as opposed to having the operator upgrade it. This can be configured on a resource by resource basis with the exposed property .Spec.UpgradeStrategy
.
By configuring a resource's .Spec.UpgradeStrategy
to none
, the operator will skip the given instance during the upgrade routine.
The default and only other acceptable value for .Spec.UpgradeStrategy
is automatic
.
The CustomResource
for the OpenTelemetryCollector
exposes a property named .Spec.Mode
, which can be used to specify whether the collector should run as a DaemonSet
, Sidecar
, or Deployment
(default). Look at this sample for reference.
A sidecar with the OpenTelemetry Collector can be injected into pod-based workloads by setting the pod annotation sidecar.opentelemetry.io/inject
to either "true"
, or to the name of a concrete OpenTelemetryCollector
from the same namespace, like in the following example:
kubectl apply -f - <<EOF
apiVersion: opentelemetry.io/v1alpha1
kind: OpenTelemetryCollector
metadata:
name: sidecar-for-my-app
spec:
mode: sidecar
config: |
receivers:
jaeger:
protocols:
thrift_compact:
processors:
exporters:
logging:
service:
pipelines:
traces:
receivers: [jaeger]
processors: []
exporters: [logging]
EOF
kubectl apply -f - <<EOF
apiVersion: v1
kind: Pod
metadata:
name: myapp
annotations:
sidecar.opentelemetry.io/inject: "true"
spec:
containers:
- name: myapp
image: jaegertracing/vertx-create-span:operator-e2e-tests
ports:
- containerPort: 8080
protocol: TCP
EOF
When there are multiple OpenTelemetryCollector
resources with a mode set to Sidecar
in the same namespace, a concrete name should be used. When there's only one Sidecar
instance in the same namespace, this instance is used when the annotation is set to "true"
.
The annotation value can come either from the namespace, or from the pod. The most specific annotation wins, in this order:
- the pod annotation is used when it's set to a concrete instance name or to
"false"
- namespace annotation is used when the pod annotation is either absent or set to
"true"
, and the namespace is set to a concrete instance or to"false"
When using a pod-based workload, such as Deployment
or Statefulset
, make sure to add the annotation to the PodTemplate
part. Like:
kubectl apply -f - <<EOF
apiVersion: apps/v1
kind: Deployment
metadata:
name: my-app
labels:
app: my-app
annotations:
sidecar.opentelemetry.io/inject: "true" # WRONG
spec:
selector:
matchLabels:
app: my-app
replicas: 1
template:
metadata:
labels:
app: my-app
annotations:
sidecar.opentelemetry.io/inject: "true" # CORRECT
spec:
containers:
- name: myapp
image: jaegertracing/vertx-create-span:operator-e2e-tests
ports:
- containerPort: 8080
protocol: TCP
EOF
The operator can inject and configure OpenTelemetry auto-instrumentation libraries. Currently Java, NodeJS and Python are supported.
To use auto-instrumentation, configure an Instrumentation
resource with the configuration for the SDK and instrumentation.
kubectl apply -f - <<EOF
apiVersion: opentelemetry.io/v1alpha1
kind: Instrumentation
metadata:
name: my-instrumentation
spec:
exporter:
endpoint: http://otel-collector:4317
propagators:
- tracecontext
- baggage
- b3
sampler:
type: parentbased_traceidratio
argument: "0.25"
EOF
The above CR can be queried by kubectl get otelinst
.
Then add an annotation to a pod to enable injection. The annotation can be added to a namespace, so that all pods within that namespace wil get instrumentation, or by adding the annotation to individual PodSpec objects, available as part of Deployment, Statefulset, and other resources.
Java:
instrumentation.opentelemetry.io/inject-java: "true"
NodeJS:
instrumentation.opentelemetry.io/inject-nodejs: "true"
Python:
instrumentation.opentelemetry.io/inject-python: "true"
The possible values for the annotation can be
"true"
- inject andInstrumentation
resource from the namespace."my-instrumentation"
- name ofInstrumentation
CR instance."false"
- do not inject
By default, the operator uses upstream auto-instrumentation libraries. Custom auto-instrumentation can be configured by overriding the image fields in a CR.
apiVersion: opentelemetry.io/v1alpha1
kind: Instrumentation
metadata:
name: my-instrumentation
spec:
java:
image: your-customized-auto-instrumentation-image:java
nodejs:
image: your-customized-auto-instrumentation-image:nodejs
python:
image: your-customized-auto-instrumentation-image:python
The Dockerfiles for auto-instrumentation can be found in autoinstrumentation directory. Follow the instructions in the Dockerfiles on how to build a custom container image.
The OpenTelemetry Operator follows the same versioning as the operand (OpenTelemetry Collector) up to the minor part of the version. For example, the OpenTelemetry Operator v0.18.1 tracks OpenTelemetry Collector 0.18.0. The patch part of the version indicates the patch level of the operator itself, not that of OpenTelemetry Collector. Whenever a new patch version is released for OpenTelemetry Collector, we'll release a new patch version of the operator.
By default, the OpenTelemetry Operator ensures consistent versioning between itself and the managed OpenTelemetryCollector
resources. That is, if the OpenTelemetry Operator is based on version 0.40.0
, it will create resources with an underlying OpenTelemetry Collector at version 0.40.0
.
When a custom Spec.Image
is used with an OpenTelemetryCollector
resource, the OpenTelemetry Operator will not manage this versioning and upgrading. In this scenario, it is best practice that the OpenTelemetry Operator version should match the underlying core version. Given a OpenTelemetryCollector
resource with a Spec.Image
configured to a custom image based on underlying OpenTelemetry Collector at version 0.40.0
, it is recommended that the OpenTelemetry Operator is kept at version 0.40.0
.
We strive to be compatible with the widest range of Kubernetes versions as possible, but some changes to Kubernetes itself require us to break compatibility with older Kubernetes versions, be it because of code incompatibilities, or in the name of maintainability. Every released operator will support a specific range of Kubernetes versions, to be determined at the latest during the release.
We use cert-manager
for some features of this operator and the third column shows the versions of the cert-manager
that are known to work with this operator's versions.
The OpenTelemetry Operator might work on versions outside of the given range, but when opening new issues, please make sure to test your scenario on a supported version.
OpenTelemetry Operator | Kubernetes | Cert-Manager |
---|---|---|
v0.49.0 | v1.19 to v1.23 | 1.6.1 |
v0.48.0 | v1.19 to v1.23 | 1.6.1 |
v0.47.0 | v1.19 to v1.23 | 1.6.1 |
v0.46.0 | v1.19 to v1.23 | 1.6.1 |
v0.45.0 | v1.21 to v1.23 | 1.6.1 |
v0.44.0 | v1.21 to v1.23 | 1.6.1 |
v0.43.0 | v1.21 to v1.23 | 1.6.1 |
v0.42.0 | v1.21 to v1.23 | 1.6.1 |
v0.41.1 | v1.21 to v1.23 | 1.6.1 |
v0.41.0 | v1.20 to v1.22 | 1.6.1 |
v0.40.0 | v1.20 to v1.22 | 1.6.1 |
v0.39.0 | v1.20 to v1.22 | 1.6.1 |
v0.38.0 | v1.20 to v1.22 | 1.6.1 |
v0.37.1 | v1.20 to v1.22 | v1.4.0 to v1.6.1 |
v0.37.0 | v1.20 to v1.22 | v1.4.0 to v1.5.4 |
v0.36.0 | v1.20 to v1.22 | v1.4.0 to v1.5.4 |
v0.35.0 | v1.20 to v1.22 | v1.4.0 to v1.5.4 |
v0.34.0 | v1.20 to v1.22 | v1.4.0 to v1.5.4 |
v0.33.0 | v1.20 to v1.22 | v1.4.0 to v1.5.4 |
v0.32.0 (skipped) | n/a | n/a |
Please see CONTRIBUTING.md.
Approvers (@open-telemetry/operator-approvers):
- Dmitrii Anoshin, Splunk
Emeritus Approvers:
- Anthony Mirabella, AWS
- Jay Camp, Splunk
- James Bebbington, Google
- Owais Lone, Splunk
- Pablo Baeyens, DataDog
Maintainers (@open-telemetry/operator-maintainers):
- Juraci Paixão Kröhling, Grafana Labs
- Pavol Loffay, Red Hat
- Vineeth Pothulapati, Timescale
Emeritus Maintainers
- Alex Boten, Lightstep
- Bogdan Drutu, Splunk
- Tigran Najaryan, Splunk
Learn more about roles in the community repository.
Thanks to all the people who already contributed!