Deploying with kubectl
To install with kubectl
, you need to get the Kubernetes configuration
files.
They have the required metadata set for service discovery needed by the different applications and services deployed. To check out the code, enter the following commands:
git clone https://github.com/spring-cloud/spring-cloud-dataflow
cd spring-cloud-dataflow
git checkout v2.8.4
If you use Minikube, see Setting Minikube Resources for details on CPU and RAM resource requirements.
Choose a Message Broker
For deployed applications to communicate with each other, you need to select a message broker. The sample deployment and service YAML files provide configurations for RabbitMQ and Kafka. You need to configure only one message broker.
-
RabbitMQ
Run the following command to start the RabbitMQ service:
kubectl create -f src/kubernetes/rabbitmq/
You can use
kubectl get all -l app=rabbitmq
to verify that the deployment, pod, and service resources are running. Usekubectl delete all -l app=rabbitmq
to clean up afterwards. -
Kafka
Run the following command to start the Kafka service:
kubectl create -f src/kubernetes/kafka/
You can use
kubectl get all -l app=kafka
to verify that the deployment, pod, and service resources are running. Usekubectl delete all -l app=kafka
to clean up afterwards.
Deploy Services, Skipper, and Data Flow
You must deploy a number of services and the Data Flow server. The following subsections describe how to do so:
- Deploy MySQL
- Enable Monitoring
- Create Data Flow Role Bindings and Service Account
- Deploy Skipper
- Deploy the Data Flow Server
Deploy MySQL
We use MySQL for this guide, but you could use a Postgres or H2 database instead. We include JDBC drivers for all three of these databases. To use a database other than MySQL, you must adjust the database URL and driver class name settings.
Password Management
You can modify the password in the src/kubernetes/mysql/mysql-deployment.yaml
files if you prefer to be more secure.
If you do modify the password, you must also provide it as base64-encoded string in the src/kubernetes/mysql/mysql-secrets.yaml
file.
Run the following command to start the MySQL service:
kubectl create -f src/kubernetes/mysql/
You can use kubectl get all -l app=mysql
to verify that the
deployment, pod, and service resources are running. You can use
kubectl delete all,pvc,secrets -l app=mysql
to clean up afterwards.
Enable Monitoring
How to enable monitoring varies by monitoring platform:
Prometheus and Grafana
The Prometheus RSocket implementation lets you establish persistent bidirectional RSocket
connections between all Stream and Task applications and one or more Prometheus RSocket Proxy
instances.
Prometheus is configured to scrape each proxy instance.
Proxies, in turn, use the connection to pull metrics from each application.
The scraped metrics are viewable through Grafana dashboards.
Out of the box, the Grafana dashboard comes pre-configured with a Prometheus data-source connection along with Data Flow-specific dashboards to monitor the streaming and task applications in a data pipeline.
Memory Resources
If you use Minikube, see Setting Minikube Resources for details on CPU and RAM resource requirements.
To run Prometheus and Grafana, you need at least an additional 2GB to 3GB of Memory.
Run the following commands to create the cluster role, binding, and service account:
kubectl create -f src/kubernetes/prometheus/prometheus-clusterroles.yaml
kubectl create -f src/kubernetes/prometheus/prometheus-clusterrolebinding.yaml
kubectl create -f src/kubernetes/prometheus/prometheus-serviceaccount.yaml
Run the following commands to deploy Prometheus RSocket Proxy:
kubectl create -f src/kubernetes/prometheus-proxy/
You can use kubectl get all -l app=prometheus-proxy
to verify that the deployment, pod, and service resources are running. You can use kubectl delete all,cm,svc -l app=prometheus-proxy
to clean up afterwards. To cleanup roles, bindings, and the service account for the Prometheus proxy, run the following command:
kubectl delete clusterrole,clusterrolebinding,sa -l app=prometheus-proxy
Run the following commands to deploy Prometheus:
kubectl create -f src/kubernetes/prometheus/prometheus-configmap.yaml
kubectl create -f src/kubernetes/prometheus/prometheus-deployment.yaml
kubectl create -f src/kubernetes/prometheus/prometheus-service.yaml
You can use kubectl get all -l app=prometheus
to verify that the
deployment, pod, and service resources are running. You can use
kubectl delete all,cm,svc -l app=prometheus
to clean up afterwards. To
cleanup roles, bindings, and the service account for Prometheus, run the
following command:
kubectl delete clusterrole,clusterrolebinding,sa -l app=prometheus
Run the following command to deploy Grafana:
kubectl create -f src/kubernetes/grafana/
You can use kubectl get all -l app=grafana
to verify that the deployment, pod, and service resources are running. You can use kubectl delete all,cm,svc,secrets -l app=grafana
to clean up afterwards.
You should replace the url
attribute value shown in the following example (from src/kubernetes/server/server-config.yaml
) to reflect the address and port on which Grafana runs.
On Minikube, you can obtain the value by running minikube service --url grafana
.
This configuration is needed for Grafana links to be accessible when accessing the dashboard from a web browser.
spring:
cloud:
dataflow:
metrics.dashboard:
url: 'https://grafana:3000'
The default Grafana dashboard credentials are a username of admin
and a password of password
. You can change these defaults by modifying the src/kubernetes/grafana/grafana-secret.yaml
file.
To enable Prometheus for Spring Cloud Skipper Server, mirror the Data Flow configuration to the Skipper's configuration file (src/kubernetes/skipper/skipper-config-{kafka|rabbit}.yaml
):
management:
metrics:
export:
prometheus:
enabled: true
rsocket:
enabled: true
host: prometheus-proxy
port: 7001
If you do not want to deploy Prometheus and Grafana for metrics and monitoring, you should remove the following section of src/kubernetes/server/server-config.yaml
:
management:
metrics:
export:
prometheus:
enabled: true
rsocket:
enabled: true
host: prometheus-proxy
port: 7001
spring:
cloud:
dataflow:
metrics.dashboard:
url: 'https://grafana:3000'
Wavefront
Metrics for the Spring Cloud Data Flow server along with deployed streams and tasks can be sent to the Wavefront service. Before enabling Wavefront, ensure you have your Wavefront URL and API token.
First, create a secret (to encode your API token) in a file called wavefront-secret.yaml
:
apiVersion: v1
kind: Secret
metadata:
name: wavefront-api
labels:
app: wavefront
data:
wavefront-api-token: bXl0b2tlbg==
The value of wavefront-api-token
is a base64-encoded string that represents your API token. For more information on Secrets, see the Kubernetes Documentation.
Create the secret:
kubectl create -f wavefront-secret.yaml
To mount the secret and make it available to Spring Cloud Data Flow, modify the src/kubernetes/server/server-deployment.yaml
file, making the following additions:
The secret mountPath should be within the same path as SPRING_CLOUD_KUBERNETES_SECRETS_PATHS
.
spec:
containers:
- name: scdf-server
volumeMounts:
- name: wavefront-api
mountPath: /etc/secrets/wavefront-api
readOnly: true
volumes:
- name: wavefront-api
secret:
secretName: wavefront-api
You can enable Wavefront for Spring Cloud Data Flow server, streams, or tasks based on your needs. Each is configured independently, letting one or all be configured.
To enable Wavefront for Spring Cloud Data Flow Server, modify the src/kubernetes/server/server-config.yaml
file, making the following additions:
data:
application.yaml: |-
management:
metrics:
export:
wavefront:
enabled: true
api-token: ${wavefront-api-token}
uri: https://yourwfuri.wavefront.com
source: yoursourcename
Changing the values of uri
and source
to those matching your setup.
The api-token
value is automatically resolved from the secret.
By default, the above configuration is applied automatically to the deployed Streams and Tasks as well, and metrics from them are sent to Wavefront. Use the applicationProperties.stream.*
and applicationProperties.task.*
to alter the defaults.
To enable Wavefront for Spring Cloud Skipper Server, mirror the Data Flow configuration to the Skipper's configuration file (src/kubernetes/skipper/skipper-config-{kafka|rabbit}.yaml
) and add the wavefront-api
volume to the src/kubernetes/skipper/skipper-deployment.yaml
file.
You should replace the url
attribute value in the following example in src/kubernetes/server/server-config.yaml
to reflect the address and port the Wavefront dashboards are running on.
This configuration is needed for Wavefront links to be accessible when accessing the dashboard from a web browser.
spring:
cloud:
dataflow:
metrics.dashboard:
url: 'https://yourwfuri.wavefront.com'
type: 'WAVEFRONT'
Create Data Flow Role Bindings and Service Account
To create Role Bindings and Service account, run the following commands:
kubectl create -f src/kubernetes/server/server-roles.yaml
kubectl create -f src/kubernetes/server/server-rolebinding.yaml
kubectl create -f src/kubernetes/server/service-account.yaml
You can use kubectl get roles
and kubectl get sa
to list the
available roles and service accounts.
To cleanup roles, bindings and the service account, use the following commands:
kubectl delete role scdf-role
kubectl delete rolebinding scdf-rb
kubectl delete serviceaccount scdf-sa
Deploy Skipper
Data Flow delegates the streams lifecycle management to Skipper. You need to deploy Skipper to enable the stream management features.
The deployment is defined in the
src/kubernetes/skipper/skipper-deployment.yaml
file. To control what
version of Skipper gets deployed, you can modify the tag used for the
Docker image in the container specification, as follows:
spec:
containers:
- name: skipper
image: springcloud/spring-cloud-skipper-server:2.7.4 #
- You can change the version as you like.
Multiple platform support
Skipper includes the concept of platforms, so it is important to define the "accounts" based on the project preferences.
To use RabbitMQ as the messaging middleware, run the following command:
kubectl create -f src/kubernetes/skipper/skipper-config-rabbit.yaml
To use Apache Kafka as the messaging middleware, run the following command:
kubectl create -f src/kubernetes/skipper/skipper-config-kafka.yaml
Additionally, to use the Apache Kafka Streams
Binder,
update the environmentVariables
attribute to include the Kafka Streams
Binder configuraton in
src/kubernetes/skipper/skipper-config-kafka.yaml
, as follows:
environmentVariables: 'SPRING_CLOUD_STREAM_KAFKA_BINDER_BROKERS=kafka-broker:9092,SPRING_CLOUD_STREAM_KAFKA_BINDER_ZK_NODES=${KAFKA_ZK_SERVICE_HOST}:${KAFKA_ZK_SERVICE_PORT}, SPRING_CLOUD_STREAM_KAFKA_STREAMS_BINDER_BROKERS=kafka-broker:9092,SPRING_CLOUD_STREAM_KAFKA_STREAMS_BINDER_ZK_NODES=${KAFKA_ZK_SERVICE_HOST}:${KAFKA_ZK_SERVICE_PORT}'
Run the following commands to start Skipper as the companion server for Spring Cloud Data Flow:
kubectl create -f src/kubernetes/skipper/skipper-deployment.yaml
kubectl create -f src/kubernetes/skipper/skipper-svc.yaml
You can use kubectl get all -l app=skipper
to verify that the
deployment, pod, and service resources are running. You can use
kubectl delete all,cm -l app=skipper
to clean up afterwards.
Deploy Data Flow Server
The deployment is defined in the
src/kubernetes/server/server-deployment.yaml
file. To control which
version of Spring Cloud Data Flow server gets deployed, modify the tag
used for the Docker image in the container specification, as follows:
spec:
containers:
- name: scdf-server
image: springcloud/spring-cloud-dataflow-server:2.8.4
You must specify the version of Spring Cloud Data Flow server that you want to deploy.
To do so, xhange the version as you like. This document is based on the 2.8.4
release. You can use the docker latest
tag for BUILD-SNAPSHOT
releases.
The Skipper service should be running and the SPRING_CLOUD_SKIPPER_CLIENT_SERVER_URI
property in src/kubernetes/server/server-deployment.yaml
should point to it.
The Data Flow Server uses the Fabric8 Java client library to connect to the Kubernetes cluster.
There are several ways to configure the client to connect the cluster.
We use environment variables to set the values needed when deploying the Data Flow server to Kubernetes. We also use
the Spring Cloud Kubernetes library to access the Kubernetes
ConfigMap
and
Secrets
settings.
The ConfigMap
settings for RabbitMQ are specified in the src/kubernetes/skipper/skipper-config-rabbit.yaml
file and for Kafka in
the src/kubernetes/skipper/skipper-config-kafka.yaml
file.
MySQL secrets are located in the src/kubernetes/mysql/mysql-secrets.yaml
file.
If you modified the password for MySQL, you should change it in the src/kubernetes/mysql/mysql-secrets.yaml
file.
Any secrets have to be provided in base64 encoding.
To create the configuration map with the default settings, run the following command:
kubectl create -f src/kubernetes/server/server-config.yaml
Now you need to create the server deployment, by running the following commands:
kubectl create -f src/kubernetes/server/server-svc.yaml
kubectl create -f src/kubernetes/server/server-deployment.yaml
You can use kubectl get all -l app=scdf-server
to verify that the
deployment, pod, and service resources are running. You can use
kubectl delete all,cm -l app=scdf-server
to clean up afterwards.
You can use the kubectl get svc scdf-server
command to locate the
EXTERNAL_IP
address assigned to scdf-server
. You can use that
address later to connect from the shell. The following example (with
output) shows how to do so:
kubectl get svc scdf-server
NAME CLUSTER-IP EXTERNAL-IP PORT(S) AGE
scdf-server 10.103.246.82 130.211.203.246 80/TCP 4m
In this case, the URL you need to use is https://130.211.203.246
.
If you use Minikube, you do not have an external load balancer, and the
EXTERNAL_IP
shows as <pending>
. You need to use the NodePort
assigned for the scdf-server
service. You can use the following
command (shown with its output) to look up the URL to use:
minikube service --url scdf-server
https://192.168.99.100:31991