Version 1.6.0.M1
© 2012-2018 Pivotal Software, Inc.
Copies of this document may be made for your own use and for distribution to others, provided that you do not charge any fee for such copies and further provided that each copy contains this Copyright Notice, whether distributed in print or electronically.
Getting Started
Spring Cloud Data Flow is a toolkit for building data integration and real-time data processing pipelines.
Pipelines consist of Spring Boot apps, built using the Spring Cloud Stream or Spring Cloud Task microservice frameworks. This makes Spring Cloud Data Flow suitable for a range of data processing use cases, from import/export to event streaming and predictive analytics.
This project provides support for using Spring Cloud Data Flow with Kubernetes as the runtime for these pipelines with apps packaged as Docker images.
1. Installation
In this section we will install the Spring Cloud Data Flow Server on a Kubernetes cluster. Spring Cloud Data Flow depends on a few services and their availability. For example, we need an RDBMS service for the app registry, stream/task repositories and task management. For streaming pipelines, we also need a transport option such as Apache Kafka or Rabbit MQ. In addition to this, we need a Redis service if the analytics features are in use.
This guide describes setting up an environment for testing Spring Cloud Data Flow on Google Kubernetes Engine and is not meant to be a definitive guide for setting up a production environment. Feel free to adjust the suggestions to fit your test set-up. Please remember that a production environment requires much more consideration for persistent storage of message queues, high availability, security etc. |
Currently, only apps registered with a Note that we do support Maven resources for the E.g. the below app registration is valid:
but any app registered with a Maven, HTTP or File resource for the executable jar (using a |
1.1. Kubernetes Compatibility
The Spring Cloud Data Flow implementation for Kubernetes uses Spring Cloud Deployer Kubernetes library for orchestration. Before you begin setting up Kubermetes cluster, refer to the compatibility-matrix to learn more about the deployer/server compatibility against Kubernetes release versions.
1.2. Create a Kubernetes cluster
The Kubernetes Picking the Right Solution guide lets you choose among many options so you can pick one that you are most comfortable using.
All our testing is done using the Google Kubernetes Engine that is part of the Google Cloud Platform. That is a also the target platform for this section. We have also successfully deployed using Minikube and we will note where you need to adjust for deploying on Minikube.
When starting Minikube you should allocate some extra resources since we will be deploying several services. We have used minikube start --cpus=4 --memory=4096 to start.
|
The rest of this getting started guide assumes that you have a working Kubernetes cluster and a kubectl
command line utility. See the docs for installation instructions: Installing and Setting up kubectl.
1.3. Deploying using kubectl
-
Get the Kubernetes configuration files.
There are sample deployment and service YAML files in the https://github.com/spring-cloud/spring-cloud-dataflow-server-kubernetes repository that you can use as a starting point. They have the required metadata set for service discovery by the different apps and services deployed. To check out the code enter the following commands:
$ git clone https://github.com/spring-cloud/spring-cloud-dataflow-server-kubernetes $ cd spring-cloud-dataflow-server-kubernetes $ git checkout v1.6.0.M1
-
Deploy Rabbit MQ.
The Rabbit MQ service will be used for messaging between modules in the stream. You could also use Kafka, but, in order to simplify, we only show the Rabbit MQ configurations in this guide.
Run the following commands to start the Rabbit MQ service:
$ kubectl create -f src/kubernetes/rabbitmq/
You can use the command
kubectl get all -l app=rabbitmq
to verify that the deployment, pod and service resources are running. Use the commandkubectl delete all -l app=rabbitmq
to clean up afterwards. -
Deploy MySQL.
We are using MySQL for this guide, but you could use Postgres or H2 database instead. We include JDBC drivers for all three of these databases, you would just have to adjust the database URL and driver class name settings.
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 will also have to provide it base64 encoded in thesrc/kubernetes/mysql/mysql-secrets.yaml
file.Run the following commands to start the MySQL service:
$ kubectl create -f src/kubernetes/mysql/
You can use the command
kubectl get all -l app=mysql
to verify that the deployment, pod and service resources are running. Use the commandkubectl delete all,pvc,secrets -l app=mysql
to clean up afterwards. -
Deploy Redis.
The Redis service will be used for the analytics functionality. Run the following commands to start the Redis service:
$ kubectl create -f src/kubernetes/redis/
If you don’t need the analytics functionality you can turn this feature off by changing SPRING_CLOUD_DATAFLOW_FEATURES_ANALYTICS_ENABLED
to false in thesrc/kubernetes/server/server-deployment.yaml
file. If you don’t install the Redis service then you should also remove the Redis configuration settings insrc/kubernetes/server/server-config-kafka.yaml
mentioned below.You can use the command
kubectl get all -l app=redis
to verify that the deployment, pod and service resources are running. Use the commandkubectl delete all -l app=redis
to clean up afterwards. -
Deploy the Metrics Collector.
The Metrics Collector will provide message rates for all deployed stream apps. These message rates will be visible in the Dashboard UI. Run the following commands to start the Metrics Collector:
$ kubectl create -f src/kubernetes/metrics/metrics-deployment-rabbit.yaml $ kubectl create -f src/kubernetes/metrics/metrics-svc.yaml
You can use the command
kubectl get all -l app=metrics
to verify that the deployment, pod and service resources are running. Use the commandkubectl delete all -l app=metrics
to clean up afterwards. -
Deploy Skipper
Optionally, you can deploy Skipper to leverage the features of upgrading and rolling back Streams since Data Flow delegates to Skipper for those features. For more details, review Spring Cloud Skipper’s reference guide for a complete overview and its feature capabilities.
You should specify the version Skipper that you want to deploy. The deployment is defined in the
src/kubernetes/skipper/skipper-deployment.yaml
file. To control what version of Skipper that gets deployed you should modify the tag used for the Docker image in the container spec:spec: containers: - name: skipper image: springcloud/spring-cloud-skipper-server:1.0.7.RELEASE (1) imagePullPolicy: Always
1 You may change the version as you like. Skipper includes the concept of platforms, so it is important to define the "accounts" based on the project preferences. In the above YAML file, the accounts map to minikube
as the platform. This can be modified, and of course, you can have any number of platform definitions. More details are in Spring Cloud Skipper reference guide.If you’d like to orchestrate stream processing pipelines with Apache Kafka as the messaging middleware using Skipper, you must change the values in the
SPRING_APPLICATION_JSON
environment variable:"{\"spring.cloud.skipper.server.platform.kubernetes.accounts.minikube.environmentVariables\" : \"SPRING_CLOUD_STREAM_KAFKA_BINDER_BROKERS=${KAFKA_SERVICE_HOST}:${KAFKA_SERVICE_PORT}, SPRING_CLOUD_STREAM_KAFKA_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 the command
kubectl get all -l app=skipper
to verify that the deployment, pod and service resources are running. Use the commandkubectl delete all -l app=skipper
to clean up afterwards. -
Deploy the Data Flow Server.
You should specify the version of the Spring Cloud Data Flow server that you want to deploy. The deployment is defined in the
src/kubernetes/server/server-deployment.yaml
file. To control what version of the Spring Cloud Data Flow server that gets deployed you should modify the tag used for the Docker image in the container spec:spec: containers: - name: scdf-server image: springcloud/spring-cloud-dataflow-server-kubernetes:1.6.0.M1 (1) imagePullPolicy: Always
1 Change the version as you like. This document is based on the 1.6.0.M1
release. The docker taglatest
can be used forBUILD-SNAPSHOT
releases.To use Skipper, you must uncomment the following properties to
src/kubernetes/server/server-deployment.yaml
. under theenv:
section- name: SPRING_CLOUD_SKIPPER_CLIENT_SERVER_URI value: 'http://${SKIPPER_SERVICE_HOST}/api' - name: SPRING_CLOUD_DATAFLOW_FEATURES_SKIPPER_ENABLED value: 'true'
The Data Flow Server uses the Fabric8 Java client library to connect to the Kubernetes cluster. We are using environment variables to set the values needed when deploying the Data Flow server to Kubernetes. We are also using the Fabric8 Spring Cloud integration with Kubernetes library to access Kubernetes ConfigMap and Secrets settings. The ConfigMap settings are specified in the
src/kubernetes/server/server-config-rabbit.yaml
file and the secrets are in thesrc/kubernetes/mysql/mysql-secrets.yaml
file. If you modified the password for MySQL you should have changed it in thesrc/kubernetes/mysql/mysql-secrets.yaml
file. Any secrets have to be provided base64 encoded.We are now configuring the Data Flow server with file based security and the default user is 'user' with a password of 'password'. Feel free to change this in the src/kubernetes/server/server-config-rabbit.yaml
file.The default memory for the pods is set to 1024Mi. Update the value in the src/kubernetes/server/server-deployment.yaml
file if you expect most of your apps to require more memory.The latest releases of kubernetes have enabled RBAC on the api-server. If your target platform has RBAC enabled you must ask a cluster-admin
to create theroles
androle-bindings
for you before deploying the dataflow server. They associate the dataflow service account with the roles it needs to be run with.$ 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 $ kubectl create -f src/kubernetes/server/server-config-rabbit.yaml $ kubectl create -f src/kubernetes/server/server-svc.yaml $ kubectl create -f src/kubernetes/server/server-deployment.yaml
You can use the command
kubectl get all -l app=scdf-server
to verify that the deployment, pod and service resources are running. Use the commandkubectl delete all,cm -l app=scdf-server
to clean up afterwards. 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
Use the
kubectl get svc scdf-server
command to locate the EXTERNAL_IP address assigned toscdf-server
, we will use that later to connect from the shell.$ 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
So the URL you need to use is in this case 130.211.203.246
If you are using Minikube then you don’t have an external load balancer and the EXTERNAL-IP will show as
<pending>
. You need to use the NodePort assigned for thescdf-server
service. Use this command to look up the URL to use:$ minikube service --url scdf-server http://192.168.99.100:31991
2. Helm Installation
Spring Cloud DataFlow offers a Helm Chart for deploying the Spring Cloud Data Flow server and its required services to a Kubernetes Cluster.
The helm chart is available since the 1.2 GA release of Spring Cloud Data Flow for Kubernetes. |
The following instructions cover how to initialize Helm
and install Spring Cloud Data Flow on a Kubernetes cluster.
-
Installing Helm
Helm
is comprised of two components: one is the client (Helm) the other is the server (Tiller). TheHelm
client is run on your local machine and can be installed using the following instructions found here. If Tiller has not been installed on your cluster, execute the followingHelm
client command:$ helm init
To verify that the Tiller
pod is running execute the following command:kubectl get pod --namespace kube-system
and you should see theTiller
pod running. -
Installing the Spring Cloud Data Flow Server and required services.
Before we can run the Spring Cloud Data Flow Chart, we need to access the incubator repository where it currently resides. To add this repository to our
Helm
install, execute the following commands:helm repo add incubator https://kubernetes-charts-incubator.storage.googleapis.com helm repo update
To install Spring Cloud Data Flow and its required services execute the following:
helm install --name my-release incubator/spring-cloud-data-flow
If you are running on a Kubernetes cluster without a load balancer, such as in Minikube, then you should override the service type to use NodePort. Add the
--set server.service.type=NodePort
override:helm install --name my-release --set server.service.type=NodePort \ incubator/spring-cloud-data-flow
If you are running on a Kubernetes cluster without RBAC, such as in minikube, then you should override
rbac.create
tofalse
. By default, it is set totrue
based on best practices. Add the--set rbac.create=false
override:helm install --name my-release --set server.service.type=NodePort \ --set rbac.create=false \ incubator/spring-cloud-data-flow
If you wish to specify a different version of Spring Cloud Data Flow besides the current GA release, you can set the
server.version
as shown below:helm install --name my-release incubator/spring-cloud-data-flow --set server.version=<version-you-want>
To see all of the settings that can be configured on the Spring Cloud Data Flow chart, check out the README. Here’s Spring Cloud Data Flow’s Kubernetes version compatibility with the respective Helm Chart releases.
| SCDF-K8S-Server Version \ Chart Version | 0.1.x | 0.2.x | |-----------------------------------------|-------|-------| |1.2.x |✓ |✕ | |1.3.x |✕ |✓ | |1.4.x |✕ |✓ | |---------------------------------------------------------|
You should see the following output:
NAME: my-release LAST DEPLOYED: Sat Mar 10 11:33:29 2018 NAMESPACE: default STATUS: DEPLOYED RESOURCES: ==> v1/Secret NAME TYPE DATA AGE my-release-mysql Opaque 2 1s my-release-data-flow Opaque 2 1s my-release-redis Opaque 1 1s my-release-rabbitmq Opaque 2 1s ==> v1/ConfigMap NAME DATA AGE my-release-data-flow-server 1 1s my-release-data-flow-skipper 1 1s ==> v1/PersistentVolumeClaim NAME STATUS VOLUME CAPACITY ACCESSMODES STORAGECLASS AGE my-release-rabbitmq Bound pvc-e9ed7f55-2499-11e8-886f-08002799df04 8Gi RWO standard 1s my-release-mysql Pending standard 1s my-release-redis Pending standard 1s ==> v1/ServiceAccount NAME SECRETS AGE my-release-data-flow 1 1s ==> v1/Service NAME CLUSTER-IP EXTERNAL-IP PORT(S) AGE my-release-mysql 10.110.98.253 <none> 3306/TCP 1s my-release-data-flow-server 10.105.216.155 <pending> 80:32626/TCP 1s my-release-redis 10.111.63.33 <none> 6379/TCP 1s my-release-data-flow-metrics 10.107.157.1 <none> 80/TCP 1s my-release-rabbitmq 10.106.76.215 <none> 4369/TCP,5672/TCP,25672/TCP,15672/TCP 1s my-release-data-flow-skipper 10.100.28.64 <none> 80/TCP 1s ==> v1beta1/Deployment NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE my-release-mysql 1 1 1 0 1s my-release-rabbitmq 1 1 1 0 1s my-release-data-flow-metrics 1 1 1 0 1s my-release-data-flow-skipper 1 1 1 0 1s my-release-redis 1 1 1 0 1s my-release-data-flow-server 1 1 1 0 1s NOTES: 1. Get the application URL by running these commands: NOTE: It may take a few minutes for the LoadBalancer IP to be available. You can watch the status of the server by running 'kubectl get svc -w my-release-data-flow-server' export SERVICE_IP=$(kubectl get svc --namespace default my-release-data-flow-server -o jsonpath='{.status.loadBalancer.ingress[0].ip}') echo http://$SERVICE_IP:80
You have just created a new release in the default namespace of your Kubernetes cluster. The notes section gives instructions for connecting to the newly installed server. It takes a couple of minutes for the application and its required services to start up. You can check on the status by issuing a
kubectl get pod -w
command. Wait for the READY column to show "1/1" for all pods. Once that is done, you can connect to the Data Flow server using the external ip listed via akubectl get svc my-release-data-flow-server
command. The default username isuser
, and the password ispassword
.If you are running on Minikube then you can use the following command to get the URL for the server:
minikube service --url my-release-data-flow-server
To see what
Helm
releases you have running, you can use thehelm list
command. When it is time to delete the release, runhelm delete my-release
. This removes any resources created for the release but keeps release information so you can rollback any changes using ahelm rollback my-release 1
command. To completely delete the release and purge any release metadata, usehelm delete my-release --purge
.There is an issue with generated secrets used for the required services getting rotated on chart upgrades. To avoid this set the password for these services when installing the chart. You can use:
helm install --name my-release \ --set rabbitmq.rabbitmqPassword=rabbitpwd \ --set mysql.mysqlRootPassword=mysqlpwd \ --set redis.redisPassword=redispwd incubator/spring-cloud-data-flow
3. Deploying Streams
3.1. Create Streams without Skipper
-
Download and run the Spring Cloud Data Flow shell.
wget http://repo.spring.io/milestone/org/springframework/cloud/spring-cloud-dataflow-shell/1.6.0.M1/spring-cloud-dataflow-shell-1.6.0.M1.jar $ java -jar spring-cloud-dataflow-shell-1.6.0.M1.jar
That should give you the following startup message from the shell:
____ ____ _ __ / ___| _ __ _ __(_)_ __ __ _ / ___| | ___ _ _ __| | \___ \| '_ \| '__| | '_ \ / _` | | | | |/ _ \| | | |/ _` | ___) | |_) | | | | | | | (_| | | |___| | (_) | |_| | (_| | |____/| .__/|_| |_|_| |_|\__, | \____|_|\___/ \__,_|\__,_| ____ |_| _ __|___/ __________ | _ \ __ _| |_ __ _ | ___| | _____ __ \ \ \ \ \ \ | | | |/ _` | __/ _` | | |_ | |/ _ \ \ /\ / / \ \ \ \ \ \ | |_| | (_| | || (_| | | _| | | (_) \ V V / / / / / / / |____/ \__,_|\__\__,_| |_| |_|\___/ \_/\_/ /_/_/_/_/_/ 1.6.0.M1 Welcome to the Spring Cloud Data Flow shell. For assistance hit TAB or type "help". server-unknown:>
Configure the Data Flow server URI with the following command (use the URL determined above in the previous step) using the default user and password settings:
server-unknown:>dataflow config server --username user --password password --uri http://130.211.203.246/ Successfully targeted http://130.211.203.246/ dataflow:>
-
Register the Docker with Rabbit binder versions of the
time
andlog
apps using the shell.dataflow:>app register --type source --name time --uri docker://springcloudstream/time-source-rabbit:2.0.0.RELEASE --metadata-uri maven://org.springframework.cloud.stream.app:time-source-rabbit:jar:metadata:2.0.0.RELEASE dataflow:>app register --type sink --name log --uri docker://springcloudstream/log-sink-rabbit:2.0.0.RELEASE --metadata-uri maven://org.springframework.cloud.stream.app:log-sink-rabbit:jar:metadata:2.0.0.RELEASE
-
Alternatively, if you would like to register all out-of-the-box stream applications built with the Rabbit binder in bulk, you can with the following command. For more details, review how to register applications.
dataflow:>app import --uri http://bit.ly/Darwin-GA-stream-applications-rabbit-maven
-
Deploy a simple stream in the shell
dataflow:>stream create --name ticktock --definition "time | log" --deploy
You can use the command
kubectl get pods
to check on the state of the pods corresponding to this stream. We can run this from the shell by running it as an OS command by adding a "!" before the command.dataflow:>! kubectl get pods -l role=spring-app command is:kubectl get pods -l role=spring-app NAME READY STATUS RESTARTS AGE ticktock-log-0-qnk72 1/1 Running 0 2m ticktock-time-r65cn 1/1 Running 0 2m
Look at the logs for the pod deployed for the log sink.
dataflow:>! kubectl logs ticktock-log-0-qnk72 command is:kubectl logs ticktock-log-0-qnk72 ... 2017-07-20 04:34:37.369 INFO 1 --- [time.ticktock-1] log-sink : 07/20/17 04:34:37 2017-07-20 04:34:38.371 INFO 1 --- [time.ticktock-1] log-sink : 07/20/17 04:34:38 2017-07-20 04:34:39.373 INFO 1 --- [time.ticktock-1] log-sink : 07/20/17 04:34:39 2017-07-20 04:34:40.380 INFO 1 --- [time.ticktock-1] log-sink : 07/20/17 04:34:40 2017-07-20 04:34:41.381 INFO 1 --- [time.ticktock-1] log-sink : 07/20/17 04:34:41
-
Destroy the stream
dataflow:>stream destroy --name ticktock
A useful command to help in troubleshooting issues, such as a container that has a fatal error starting up, add the options
--previous
to view last terminated container log. You can also get more detailed information about the pods by using thekubctl describe
like:kubectl describe pods/ticktock-log-qnk72
If you need to specify any of the app specific configuration properties then you might use "long-form" of them including the app specific prefix like --jdbc.tableName=TEST_DATA
. This form is required if you didn’t register the--metadata-uri
for the Docker based starter apps. In this case you will also not see the configuration properties listed when using theapp info
command or in the Dashboard GUI.
3.2. Create Streams with Skipper
Refer to the section Streams deployed using Skipper for more information.
3.3. Accessing app from outside the cluster
If you need to be able to connect to from outside of the Kubernetes cluster to an app that you deploy, like the http-source
, then you need to use either an external load balancer for the incoming connections or you need to use a NodePort configuration that will expose a proxy port on each Kubetnetes Node. If your cluster doesn’t support external load balancers, like the Minikube, then you must use the NodePort approach. You can use deployment properties for configuring the access. Use deployer.http.kubernetes.createLoadBalancer=true
for the app to specify that you want to have a LoadBalancer with an external IP address created for your app’s service. For the NodePort configuration use deployer.http.kubernetes.createNodePort=<port>
where <port>
should be a number between 30000 and 32767.
-
Register the
http-source
, you can use the following command:dataflow:>app register --type source --name http --uri docker//springcloudstream/http-source-rabbit:2.0.0.RELEASE --metadata-uri maven://org.springframework.cloud.stream.app:http-source-rabbit:jar:metadata:2.0.0.RELEASE
-
Create the
http | log
stream without deploying it using the following command:dataflow:>stream create --name test --definition "http | log"
-
If your cluster supports an External LoadBalancer for the
http-source
, then you can use the following command to deploy the stream:dataflow:>stream deploy test --properties "deployer.http.kubernetes.createLoadBalancer=true"
Wait for the pods to be started showing 1/1 in the READY column by using this command:
dataflow:>! kubectl get pods -l role=spring-app command is:kubectl get pods -l role=spring-app NAME READY STATUS RESTARTS AGE test-http-2bqx7 1/1 Running 0 3m test-log-0-tg1m4 1/1 Running 0 3m
Now, look up the external IP address for the
http
app (it can sometimes take a minute or two for the external IP to get assigned):dataflow:>! kubectl get service test-http command is:kubectl get service test-http NAME CLUSTER-IP EXTERNAL-IP PORT(S) AGE test-http 10.103.251.157 130.211.200.96 8080/TCP 58s
-
If you are using Minikube, or any cluster that doesn’t support an External LoadBalancer, then you should deploy the stream with a NodePort in the range of 30000-32767. Use the following command to deploy it:
dataflow:>stream deploy test --properties "deployer.http.kubernetes.createNodePort=32123"
Wait for the pods to be started showing 1/1 in the READY column by using this command:
dataflow:>! kubectl get pods -l role=spring-app command is:kubectl get pods -l role=spring-app NAME READY STATUS RESTARTS AGE test-http-9obkq 1/1 Running 0 3m test-log-0-ysiz3 1/1 Running 0 3m
Now look up the URL to use with the following command:
dataflow:>! minikube service --url test-http command is:minikube service --url test-http http://192.168.99.100:32123
-
Post some data to the
test-http
app either using the EXTERNAL-IP address from above with port 8080 or the URL provided by the minikube command:dataflow:>http post --target http://130.211.200.96:8080 --data "Hello"
-
Finally, look at the logs for the
test-log
pod:dataflow:>! kubectl get pods-l role=spring-app command is:kubectl get pods-l role=spring-app NAME READY STATUS RESTARTS AGE test-http-9obkq 1/1 Running 0 2m test-log-0-ysiz3 1/1 Running 0 2m dataflow:>! kubectl logs test-log-0-ysiz3 command is:kubectl logs test-log-0-ysiz3 ... 2016-04-27 16:54:29.789 INFO 1 --- [ main] o.s.c.s.b.k.KafkaMessageChannelBinder$3 : started inbound.test.http.test 2016-04-27 16:54:29.799 INFO 1 --- [ main] o.s.c.support.DefaultLifecycleProcessor : Starting beans in phase 0 2016-04-27 16:54:29.799 INFO 1 --- [ main] o.s.c.support.DefaultLifecycleProcessor : Starting beans in phase 2147482647 2016-04-27 16:54:29.895 INFO 1 --- [ main] s.b.c.e.t.TomcatEmbeddedServletContainer : Tomcat started on port(s): 8080 (http) 2016-04-27 16:54:29.896 INFO 1 --- [ kafka-binder-] log.sink : Hello
-
Destroy the stream
dataflow:>stream destroy --name test
4. Deploying Tasks
-
Create a task and launch it
Let’s register the
timestamp
task app and create a simple task definition and launch it.dataflow:>app register --type task --name timestamp --uri docker:springcloudtask/timestamp-task:1.3.0.RELEASE --metadata-uri maven://org.springframework.cloud.task.app:timestamp-task:jar:metadata:1.3.0.RELEASE dataflow:>task create task1 --definition "timestamp" dataflow:>task launch task1
We can now list the tasks and executions using these commands:
dataflow:>task list ╔═════════╤═══════════════╤═══════════╗ ║Task Name│Task Definition│Task Status║ ╠═════════╪═══════════════╪═══════════╣ ║task1 │timestamp │running ║ ╚═════════╧═══════════════╧═══════════╝ dataflow:>task execution list ╔═════════╤══╤════════════════════════════╤════════════════════════════╤═════════╗ ║Task Name│ID│ Start Time │ End Time │Exit Code║ ╠═════════╪══╪════════════════════════════╪════════════════════════════╪═════════╣ ║task1 │1 │Fri May 05 18:12:05 EDT 2017│Fri May 05 18:12:05 EDT 2017│0 ║ ╚═════════╧══╧════════════════════════════╧════════════════════════════╧═════════╝
-
Destroy the task
dataflow:>task destroy --name task1
5. Application Configuration
This section covers how you can customize the deployment of your applications. You can use a number of deployer properties to influence settings for the applications that are deployed.
See KubernetesDeployerProperties for more of the supported options.
If you would like to override the default values for all apps that you deploy then you should modify the Spring Cloud Deployer for Kubernetes Properties for the server.
5.1. Memory and CPU Settings
The apps are deployed by default with the following "Limits" and "Requests" settings:
Limits:
cpu: 500m
memory: 512Mi
Requests:
cpu: 500m
memory: 512Mi
You might find that the 512Mi memory limit is too low and to increase it you can provide a common spring.cloud.deployer.memory
deployer property like this (replace <app> with the name of the app you would like to set this for):
deployer.<app>.memory=640m
This property affects bot the Requests and Limits memory value set for the container.
If you would like to set the Requests and Limits values separately you would have to use the deployer properties that are specific to the Kubernetes deployer. To set the Limits to 1000m for cpu, 1024Mi for memory and Requests to 800m for cpu, 640Mi for memory you can use the following properties:
deployer.<app>.kubernetes.limits.cpu=1000m
deployer.<app>.kubernetes.limits.memory=1024Mi
deployer.<app>.kubernetes.requests.cpu=800m
deployer.<app>.kubernetes.requests.memory=640Mi
That should result in the following container settings being used:
Limits:
cpu: 1
memory: 1Gi
Requests:
cpu: 800m
memory: 640Mi
When using the common memory property you should use and m suffix for the value while when using the Kubernetes specific properties you should use the Kubernetes Mi style suffix.
|
The settings we have used so far only affect the settings for the container, they do not affect the memory setting for the JVM process in the container. If you would like to set JVM memory settings you can provide an environment variable for this, see the next section for details.
5.2. Environment Variables
To influence the environment settings for a given app, you can take advantage of the spring.cloud.deployer.kubernetes.environmentVariables
deployer property.
For example, a common requirement in production settings is to influence the JVM memory arguments.
This can be achieved by using the JAVA_TOOL_OPTIONS
environment variable:
deployer.<app>.kubernetes.environmentVariables=JAVA_TOOL_OPTIONS=-Xmx1024m
The environmentVariables property accepts a comma delimited string. If an environment variable contains a value
which is also a comma delimited string, then it must be enclosed in single quotes, e.g.,
spring.cloud.deployer.kubernetes.environmentVariables=spring.cloud.stream.kafka.binder.brokers='somehost:9092,
anotherhost:9093'
|
This overrides the JVM memory setting for the desired <app> (just replace <app> with the name of your app).
5.3. Liveness and Readiness Probes
The liveness and readiness probes are using the paths /health
and /info
respectively. They use a delay of 10 for both and a period of 60 and 10 respectively. You can change these defaults when you deploy the stream by using deployer properties.
Here is an example changing the liveness probe (just replace <app> with the name of your app):
deployer.<app>.kubernetes.livenessProbePath=/health
deployer.<app>.kubernetes.livenessProbeDelay=120
deployer.<app>.kubernetes.livenessProbePeriod=20
Similarly, swap liveness for readiness to override the default readiness settings.
By default, port 8080 is used as the probe port. You can change the defaults for both liveness and readiness probe ports by using deployer properties, for example:
deployer.<app>.kubernetes.readinessProbePort=7000
deployer.<app>.kubernetes.livenessProbePort=7000
If you intend to use Spring Boot 2.x+, please note that all Actuator endpoints in Spring Boot 2.x have been moved under
If desired, see the Spring Boot 2.0 Migration Guide for more information and how to restore the Spring Boot 1.x base path behavior. |
Probe endpoints that are secured can be accessed by using credentials stored in a Kubernetes secret. An existing Secret can be used providing the credentials are contained under the "credentials" key name of the Secret’s data
block. Probe authentication can be configured on a per application basis. When enabled, it is applied to both the liveness and readiness probe endpoints using the same credentials and authentication type. Currently only Basic
authentication is supported. A new secret can be created as follows:
Basic authentication encodes a username and password as a base64 string in the format of username:password
. First generate the base64 string with the credentials used to access the secured probe endpoints, for example:
$ echo -n "user:pass" | base64
dXNlcjpwYXNz
$
Replacing user
and pass
with the appropriate values. With the encoded credentials, create a file for example myprobesecret.yml
with the following contents:
apiVersion: v1
kind: Secret
metadata:
name: myprobesecret
type: Opaque
data:
credentials: GENERATED_BASE64_STRING
Replacing GENERATED_BASE64_STRING
with the base64 encoded value generated above. Now create the Secret using kubectl
:
$ kubectl create -f ./myprobesecret.yml
secret "myprobesecret" created
$
Then set the following deployer properties to use authentication when accessing probe endpoints:
deployer.<app>.kubernetes.probeCredentialsSecret=myprobesecret
Replacing <app> with the name of the application to apply authentication to.
5.4. Private Docker Registry
Docker images can be pulled from a private registry on a per app basis. First a Secret must be created in the cluster. Follow the Pull an Image from a Private Registry guide to create the Secret.
Once the Secret is created, use the imagePullSecret
property to set the Secret to use, for example:
deployer.<app>.kubernetes.imagePullSecret=mysecret
Replacing <app>
with the name of your app and mysecret
with the name of the Secret you created earlier.
5.5. Annotations
Annotations can be added to Kubernetes objects on a per app basis. The supported object types are pod Deployment
, Service
and Job
. Annotations are defined in a key:value
format allowing for multiple annotations separated by a comma. For more information and use cases on annotations see Annotations.
Applications can be configured as such:
deployer.<app>.kubernetes.podAnnotations=annotationName:annotationValue
deployer.<app>.kubernetes.serviceAnnotations=annotationName:annotationValue,annotationName2:annotationValue2
deployer.<app>.kubernetes.jobAnnotations=annotationName:annotationValue
Replacing <app>
with the name of your app and the value of your annotation(s).
5.6. Entry Point Style
An Entry Point Style affects how application properties are passed to the container to be deployed. Currently there are three supported styles:
-
exec
- The default Entry Point Style and passes all application properties as command line arguments -
shell
- Passes all application properties as environment variables -
boot
- Creates an environment variableSPRING_APPLICATION_JSON
containing a JSON representation of all application properties
Applications can be configured as such:
deployer.<app>.kubernetes.entryPointStyle=<Entry Point Style>
Replacing <app>
with the name of your app and the desired Entry Point Style.
Choosing an Entry Point Style of either exec
or shell
corresponds to how the ENTRYPOINT
syntax is defined in the containers Dockerfile
. For more information and uses cases on exec
vs shell
see the ENTRYPOINT section of the Docker documentation.
Using the Entry Point Style of boot
corresponds to using the exec
style ENTRYPOINT
. Command line arguments from the deployment request are passed to the container, with the addition of application properties mapped into the SPRING_APPLICATION_JSON
environment variable rather than command line arguments.
When using the boot Entry Point Style, the deployer.<app>.kubernetes.environmentVariables property must not contain SPRING_APPLICATION_JSON .
|
5.7. Deployment Service Account
A Service Account for application deployments can be configured on a per app basis. An existing Service Account can be used, or a new one can be created. One way to create a service account is by using kubectl
, for example:
$ kubectl create serviceaccount myserviceaccountname
serviceaccount "myserviceaccountname" created
Then applications can be configured as such:
deployer.<app>.kubernetes.deploymentServiceAccountName=myserviceaccountname
Replacing <app> with the name of your app to be deployed using the provided Service Account name.
A Service Account name defined on a per application basis take precedence over a configured server SPRING_CLOUD_DEPLOYER_KUBERNETES_DEPLOYMENT_SERVICE_ACCOUNT_NAME environment variable.
|
Applications
A selection of pre-built stream and task/batch starter apps for various data integration and processing scenarios to facilitate learning and experimentation. The table below includes the pre-built applications at a glance. For more details, review how to register supported applications.
6. Available Applications
Source | Processor | Sink | Task |
---|---|---|---|
task-launcher-yarn |
|||
task-launcher-local |
|||
loggregator |
|||
tasklaunchrequest-transform |
|||
task-launcher-cloudfoundry |
Architecture
7. Introduction
Spring Cloud Data Flow simplifies the development and deployment of applications focused on data processing use cases. The major concepts of the architecture are Applications, the Data Flow Server, and the target runtime.
Applications come in two flavors:
-
Long-lived Stream applications where an unbounded amount of data is consumed or produced through messaging middleware.
-
Short-lived Task applications that process a finite set of data and then terminate.
Depending on the runtime, applications can be packaged in two ways:
-
Spring Boot uber-jar that is hosted in a maven repository, file, or HTTP(S).
-
Docker image.
The runtime is the place where applications execute. The target runtimes for applications are platforms that you may already be using for other application deployments.
The supported platforms are:
-
Cloud Foundry
-
Apache YARN
-
Kubernetes
-
Apache Mesos
-
Local Server for development
There is a deployer Service Provider Interface (SPI) that lets you extend Data Flow to deploy onto other runtimes. There are community implementations of Hashicorp’s Nomad and RedHat Openshift. We look forward to working with the community for further contributions!
There are two mutually exclusive options that determine how applications are deployed to the platform.
-
Select a Spring Cloud Data Flow Server executable jar that targets a single platform.
-
Enable the Spring Cloud Data Flow Server to delegate the deployment and runtime status of applications to the Spring Cloud Skipper Server, which has the capability to deploy to multiple platforms.
Selecting the Spring Cloud Skipper option also enables the ability to update and rollback applications in a Stream at runtime.
The Data Flow server is also responsible for:
-
Interpreting and executing a stream DSL that describes the logical flow of data through multiple long-lived applications.
-
Launching a long-lived task application.
-
Interpreting and executing a composed task DSL that describes the logical flow of data through multiple short-lived applications.
-
Applying a deployment manifest that describes the mapping of applications onto the runtime - for example, to set the initial number of instances, memory requirements, and data partitioning.
-
Providing the runtime status of deployed applications.
As an example, the stream DSL to describe the flow of data from an HTTP source to an Apache Cassandra sink would be written using a Unix pipes and filter syntax " http | cassandra
". Each name in the DSL is mapped to an application that can that Maven or Docker repositories. You can also register an application to an http
location. Many source, processor, and sink applications for common use cases (such as JDBC, HDFS, HTTP, and router) are provided by the Spring Cloud Data Flow team. The pipe symbol represents the communication between the two applications through messaging middleware. The two messaging middleware brokers that are supported are:
-
Apache Kafka
-
RabbitMQ
In the case of Kafka, when deploying the stream, the Data Flow server is responsible for creating the topics that correspond to each pipe symbol and configure each application to produce or consume from the topics so the desired flow of data is achieved. Similarly for RabbitMQ, exchanges and queues are created as needed to achieve the desired flow.
The interaction of the main components is shown in the following image:
In the preceding diagram, a DSL description of a stream is POSTed to the Data Flow Server. Based on the mapping of DSL application names to Maven and Docker artifacts, the http-source and cassandra-sink applications are deployed on the target runtime. Data that is posted to the HTTP application will then be stored in Cassandra. The Samples Repository shows this use case in full detail.
8. Microservice Architectural Style
The Data Flow Server deploys applications onto the target runtime that conform to the microservice architectural style. For example, a stream represents a high-level application that consists of multiple small microservice applications each running in their own process. Each microservice application can be scaled up or down independently of the other and each has its own versioning lifecycle. Using Data Flow with Skipper enables you to independently upgrade or rollback each application at runtime.
Both Streaming and Task-based microservice applications build upon Spring Boot as the foundational library. This gives all microservice applications functionality such as health checks, security, configurable logging, monitoring, and management functionality, as well as executable JAR packaging.
It is important to emphasize that these microservice applications are 'just apps' that you can run by yourself by using java -jar
and passing in appropriate configuration properties. We provide many common microservice applications for common operations so you need not start from scratch when addressing common use cases that build upon the rich ecosystem of Spring Projects, such as Spring Integration, Spring Data, and Spring Batch. Creating your own microservice application is similar to creating other Spring Boot applications. You can start by using the Spring Initializr web site to create the basic scaffolding of either a Stream or Task-based microservice.
In addition to passing the appropriate application properties to each applications, the Data Flow server is responsible for preparing the target platform’s infrastructure so that the applications can be deployed. For example, in Cloud Foundry, it would bind specified services to the applications and execute the cf push
command for each application. For Kubernetes, it would create the replication controller, service, and load balancer.
The Data Flow Server helps simplify the deployment of multiple, relatated, applications onto a target runtime, setting up necessary input and output topics, partitions, and metrics functionality. However, one could also opt to deploy each of the microservice applications manually and not use Data Flow at all. This approach might be more appropriate to start out with for small scale deployments, gradually adopting the convenience and consistency of Data Flow as you develop more applications. Manual deployment of Stream- and Task-based microservices is also a useful educational exercise that can help you better understand some of the automatic application configuration and platform targeting steps that the Data Flow Server provides.
8.1. Comparison to Other Platform Architectures
Spring Cloud Data Flow’s architectural style is different than other Stream and Batch processing platforms. For example in Apache Spark, Apache Flink, and Google Cloud Dataflow, applications run on a dedicated compute engine cluster. The nature of the compute engine gives these platforms a richer environment for performing complex calculations on the data as compared to Spring Cloud Data Flow, but it introduces the complexity of another execution environment that is often not needed when creating data-centric applications. That does not mean you cannot do real-time data computations when using Spring Cloud Data Flow. Refer to the section Analytics, which describes the integration of Redis to handle common counting-based use cases. Spring Cloud Stream also supports using Reactive APIs such as Project Reactor and RxJava which can be useful for creating functional style applications that contain time-sliding-window and moving-average functionality. Similarly, Spring Cloud Stream also supports the development of applications in that use the Kafka Streams API.
Apache Storm, Hortonworks DataFlow, and Spring Cloud Data Flow’s predecessor, Spring XD, use a dedicated application execution cluster, unique to each product, that determines where your code should run on the cluster and performs health checks to ensure that long-lived applications are restarted if they fail. Often, framework-specific interfaces are required in order to correctly “plug in” to the cluster’s execution framework.
As we discovered during the evolution of Spring XD, the rise of multiple container frameworks in 2015 made creating our own runtime a duplication of effort. There is no reason to build your own resource management mechanics when there are multiple runtime platforms that offer this functionality already. Taking these considerations into account is what made us shift to the current architecture, where we delegate the execution to popular runtimes, which you may already be using for other purposes. This is an advantage in that it reduces the cognitive distance for creating and managing data-centric applications as many of the same skills used for deploying other end-user/web applications are applicable.
9. Data Flow Server
The Data Flow Server provides the following functionality:
9.1. Endpoints
The Data Flow Server uses an embedded servlet container and exposes REST endpoints for creating, deploying, undeploying, and destroying streams and tasks, querying runtime state, analytics, and the like. The Data Flow Server is implemented by using Spring’s MVC framework and the Spring HATEOAS library to create REST representations that follow the HATEOAS principle, as shown in the following image:
9.2. Security
The Data Flow Server executable jars support basic HTTP, LDAP(S), File-based, and OAuth 2.0 authentication to access its endpoints. Refer to the security section for more information.
10. Streams
10.1. Topologies
The Stream DSL describes linear sequences of data flowing through the system. For example, in the stream definition http | transformer | cassandra
, each pipe symbol connects the application on the left to the one on the right. Named channels can be used for routing and to fan in/fan out data to multiple messaging destinations.
The concept of a tap can be used to ‘listen’ to the data that is flowing across any of the pipe symbols. "Taps" are just other streams that use an input any one of the "pipes" in a target stream and have an independent life cycle from the target stream.
10.2. Concurrency
For an application that consumes events, Spring Cloud Stream exposes a concurrency setting that controls the size of a thread pool used for dispatching incoming messages. See the {spring-cloud-stream-docs}#_consumer_properties[Consumer properties] documentation for more information.
10.3. Partitioning
A common pattern in stream processing is to partition the data as it moves from one application to the next. Partitioning is a critical concept in stateful processing, for either performance or consistency reasons, to ensure that all related data is processed together. For example, in a time-windowed average calculation example, it is important that all measurements from any given sensor are processed by the same application instance. Alternatively, you may want to cache some data related to the incoming events so that it can be enriched without making a remote procedure call to retrieve the related data.
Spring Cloud Data Flow supports partitioning by configuring Spring Cloud Stream’s output and input bindings. Spring Cloud Stream provides a common abstraction for implementing partitioned processing use cases in a uniform fashion across different types of middleware. Partitioning can thus be used whether the broker itself is naturally partitioned (for example, Kafka topics) or not (RabbitMQ). The following image shows how data could be partitioned into two buckets, such that each instance of the average processor application consumes a unique set of data.
To use a simple partitioning strategy in Spring Cloud Data Flow, you need only set the instance count for each application in the stream and a partitionKeyExpression
producer property when deploying the stream. The partitionKeyExpression
identifies what part of the message is used as the key to partition data in the underlying middleware. An ingest
stream can be defined as http | averageprocessor | cassandra
. (Note that the Cassandra sink is not shown in the diagram above.) Suppose the payload being sent to the HTTP source was in JSON format and had a field called sensorId
. For example, consider the case of deploying the stream with the shell command stream deploy ingest --propertiesFile ingestStream.properties
where the contents of the ingestStream.properties
file are as follows:
deployer.http.count=3
deployer.averageprocessor.count=2
app.http.producer.partitionKeyExpression=payload.sensorId
The result is to deploy the stream such that all the input and output destinations are configured for data to flow through the applications but also ensure that a unique set of data is always delivered to each averageprocessor
instance. In this case, the default algorithm is to evaluate payload.sensorId % partitionCount
where the partitionCount
is the application count in the case of RabbitMQ and the partition count of the topic in the case of Kafka.
Please refer to Passing Stream Partition Properties for additional strategies to partition streams during deployment and how they map onto the underlying {spring-cloud-stream-docs}#_partitioning[Spring Cloud Stream Partitioning properties].
Also note that you cannot currently scale partitioned streams. Read Scaling at Runtime for more information.
10.4. Message Delivery Guarantees
Streams are composed of applications that use the Spring Cloud Stream library as the basis for communicating with the underlying messaging middleware product. Spring Cloud Stream also provides an opinionated configuration of middleware from several vendors, in particular providing {spring-cloud-stream-docs}#_persistent_publish_subscribe_support[persistent publish-subscribe semantics].
The {spring-cloud-stream-docs}#_binders[Binder abstraction] in Spring Cloud Stream is what connects the application to the middleware. There are several configuration properties of the binder that are portable across all binder implementations and some that are specific to the middleware.
For consumer applications, there is a retry policy for exceptions generated during message handling. The retry policy is configured by using the {spring-cloud-stream-docs}#_consumer_properties[common consumer properties] maxAttempts
, backOffInitialInterval
, backOffMaxInterval
, and backOffMultiplier
. The default values of these properties retry the callback method invocation 3 times and wait one second for the first retry. A backoff multiplier of 2 is used for the second and third attempts.
When the number of retry attempts has exceeded the maxAttempts
value, the exception and the failed message become the payload of a message and are sent to the application’s error channel. By default, the default message handler for this error channel logs the message. You can change the default behavior in your application by creating your own message handler that subscribes to the error channel.
Spring Cloud Stream also supports a configuration option for both Kafka and RabbitMQ binder implementations that sends the failed message and stack trace to a dead letter queue. The dead letter queue is a destination and its nature depends on the messaging middleware (for example, in the case of Kafka, it is a dedicated topic). To enable this for RabbitMQ set the republishtoDlq
and autoBindDlq
{spring-cloud-stream-docs}#_rabbitmq_consumer_properties[consumer properties] and the autoBindDlq
{spring-cloud-stream-docs}#_rabbit_producer_properties[producer property] to true when deploying the stream. To always apply these producer and consumer properties when deploying streams, configure them as common application properties when starting the Data Flow server.
Additional messaging delivery guarantees are those provided by the underlying messaging middleware that is chosen for the application for both producing and consuming applications. Refer to the Kafka {spring-cloud-stream-docs}#_kafka_consumer_properties[Consumer] and {spring-cloud-stream-docs}#_kafka_producer_properties[Producer] and Rabbit {spring-cloud-stream-docs}#_rabbitmq_consumer_properties[Consumer] and {spring-cloud-stream-docs}#_rabbit_producer_properties[Producer] documentation for more details. You can find extensive declarative support for all the native QOS options.
11. Stream Programming Models
While Spring Boot provides the foundation for creating DevOps-friendly microservice applications, other libraries in the Spring ecosystem help create Stream-based microservice applications. The most important of these is Spring Cloud Stream.
The essence of the Spring Cloud Stream programming model is to provide an easy way to describe multiple inputs and outputs of an application that communicate over messaging middleware. These input and outputs map onto Kafka topics or Rabbit exchanges and queues. Common application configuration for a Source that generates data, a Processor that consumes and produces data, and a Sink that consumes data is provided as part of the library.
11.1. Imperative Programming Model
Spring Cloud Stream is most closely integrated with Spring Integration’s imperative "one event at a time" programming model. This means you write code that handles a single event callback, as shown in the following example,
@EnableBinding(Sink.class)
public class LoggingSink {
@StreamListener(Sink.INPUT)
public void log(String message) {
System.out.println(message);
}
}
In this case, the String
payload of a message coming on the input channel is handed to the log
method. The @EnableBinding
annotation is used to tie the input channel to the external middleware.
11.2. Functional Programming Model
However, Spring Cloud Stream can support other programming styles, such as reactive APIs, where incoming and outgoing data is handled as continuous data flows and how each individual message should be handled is defined. With many reactive AOIs, you can also use operators that describe functional transformations from inbound to outbound data flows. Here is an example:
@EnableBinding(Processor.class)
public static class UppercaseTransformer {
@StreamListener
@Output(Processor.OUTPUT)
public Flux<String> receive(@Input(Processor.INPUT) Flux<String> input) {
return input.map(s -> s.toUpperCase());
}
}
12. Application Versioning
Application versioning within a Stream is now supported when using Data Flow together with Skipper. You can update application and deployment properties as well as the version of the application. Rolling back to a previous application version is also supported.
13. Task Programming Model
The Spring Cloud Task programming model provides:
-
Persistence of the Task’s lifecycle events and exit code status.
-
Lifecycle hooks to execute code before or after a task execution.
-
The ability to emit task events to a stream (as a source) during the task lifecycle.
-
Integration with Spring Batch Jobs.
See the Tasks section for more information.
14. Analytics
Spring Cloud Data Flow is aware of certain Sink applications that write counter data to Redis and provides a REST endpoint to read counter data. The types of counters supported are as follows:
-
Counter: Counts the number of messages it receives, optionally storing counts in a separate store such as Redis.
-
Field Value Counter: Counts occurrences of unique values for a named field in a message payload.
-
Aggregate Counter: Stores total counts but also retains the total count values for each minute, hour, day, and month.
Note that the timestamp used in the aggregate counter can come from a field in the message itself so that out-of-order messages are properly accounted.
15. Runtime
The Data Flow Server relies on the target platform for the following runtime functionality:
15.1. Fault Tolerance
The target runtimes supported by Data Flow all have the ability to restart a long-lived application. Spring Cloud Data Flow sets up health probes are required by the runtime environment when deploying the application. You also have the ability to customize the health probes.
The collective state of all applications that make up the stream is used to determine the state of the stream. If an application fails, the state of the stream changes from ‘deployed’ to ‘partial’.
15.2. Resource Management
Each target runtime lets you control the amount of memory, disk, and CPU allocated to each application. These are passed as properties in the deployment manifest by using key names that are unique to each runtime. Refer to each platform’s server documentation for more information.
15.3. Scaling at Runtime
When deploying a stream, you can set the instance count for each individual application that makes up the stream. Once the stream is deployed, each target runtime lets you control the target number of instances for each individual application. Using the APIs, UIs, or command line tools for each runtime, you can scale up or down the number of instances as required.
Currently, scaling at runtime is not supported with the Kafka binder, as well as with partitioned streams, for which the suggested workaround is redeploying the stream with an updated number of instances. Both cases require a static consumer to be set up, based on information about the total instance count and current instance index.
Server Configuration
In this section you will learn how to configure Spring Cloud Data Flow server’s features such as the relational database to use and security.
16. Feature Toggles
Data Flow server offers specific set of features that can be enabled/disabled when launching. These features include all the lifecycle operations, REST endpoints (server, client implementations including Shell and the UI) for:
-
Streams
-
Tasks
-
Analytics
You can enable or disable these features by setting the following boolean environment variables when launching the Data Flow server:
-
SPRING_CLOUD_DATAFLOW_FEATURES_STREAMS_ENABLED
-
SPRING_CLOUD_DATAFLOW_FEATURES_TASKS_ENABLED
-
SPRING_CLOUD_DATAFLOW_FEATURES_ANALYTICS_ENABLED
By default, all the features are enabled.
Since analytics feature is enabled by default, the Data Flow server is expected to have a valid Redis store available as analytic repository as we provide a default implementation of analytics based on Redis. This also means that the Data Flow server’s health depends on the redis store availability as well. If you do not want to enable HTTP endpoints to read analytics data written to Redis, then disable the analytics feature using the property mentioned above.
|
The REST endpoint /features
provides information on the features enabled/disabled.
17. General Configuration
The Spring Cloud Data Flow server for Kubernetes uses the Fabric8 spring-cloud-kubernetes
module to process both ConfigMap and Secrets settings. You just need to enable the ConfigMap support by passing in an environment variable of SPRING_CLOUD_KUBERNETES_CONFIG_NAME
and setting that to the name of the ConfigMap. Same is true for the Secrets where the environment variable is SPRING_CLOUD_KUBERNETES_SECRETS_NAME
. To use the Secrets you also need to set SPRING_CLOUD_KUBERNETES_SECRETS_ENABLE_API
to true.
Here is an example of a snippet from a deployment that sets these environment variables.
env:
- name: SPRING_CLOUD_KUBERNETES_SECRETS_ENABLE_API
value: 'true'
- name: SPRING_CLOUD_KUBERNETES_SECRETS_NAME
value: mysql
- name: SPRING_CLOUD_KUBERNETES_CONFIG_NAME
value: scdf-server
17.1. Using ConfigMap and Secrets
Configuration properties can be passed to the Data Flow Server using Kubernetes ConfigMap and Secrets.
An example configuration could look like the following where we configure Rabbit MQ, MySQL and Redis as well as basic security settings for the server:
apiVersion: v1
kind: ConfigMap
metadata:
name: scdf-server
labels:
app: scdf-server
data:
application.yaml: |-
security:
basic:
enabled: true
realm: Spring Cloud Data Flow
spring:
cloud:
dataflow:
security:
authentication:
file:
enabled: true
users:
admin: admin, ROLE_MANAGE, ROLE_VIEW
user: password, ROLE_VIEW, ROLE_CREATE
deployer:
kubernetes:
environmentVariables: 'SPRING_RABBITMQ_HOST=${RABBITMQ_SERVICE_HOST},SPRING_RABBITMQ_PORT=${RABBITMQ_SERVICE_PORT},SPRING_REDIS_HOST=${REDIS_SERVICE_HOST},SPRING_REDIS_PORT=${REDIS_SERVICE_PORT}'
datasource:
url: jdbc:mysql://${MYSQL_SERVICE_HOST}:${MYSQL_SERVICE_PORT}/mysql
username: root
password: ${mysql-root-password}
driverClassName: org.mariadb.jdbc.Driver
testOnBorrow: true
validationQuery: "SELECT 1"
redis:
host: ${REDIS_SERVICE_HOST}
port: ${REDIS_SERVICE_PORT}
We assume here that Rabbit MQ is deployed using rabbitmq
as the service name. For MySQL we assume the service name is mysql
and for Redis we assume it is redis
. Kubernetes will publish these services' host and port values as environment variables that we can use when configuring the apps we deploy.
We prefer to provide the MySQL connection password in a Secrets file:
apiVersion: v1
kind: Secret
metadata:
name: mysql
labels:
app: mysql
data:
mysql-root-password: eW91cnBhc3N3b3Jk
The password is provided as a base64 encoded value.
18. Database Configuration
Spring Cloud Data Flow provides schemas for H2, HSQLDB, MySQL, Oracle, PostgreSQL, DB2 and SQL Server that will be automatically created when the server starts.
The JDBC drivers for MySQL (via MariaDB driver), HSQLDB, PostgreSQL along with embedded H2 are available out of the box. If you are using any other database, then the corresponding JDBC driver jar needs to be on the classpath of the server.
For instance, If you are using MySQL in addition to password in the Secrets file provide the following properties in the ConfigMap:
data:
application.yaml: |-
spring:
datasource:
url: jdbc:mysql://${MYSQL_SERVICE_HOST}:${MYSQL_SERVICE_PORT}/mysql
username: root
password: ${mysql-root-password}
driverClassName: org.mariadb.jdbc.Driver
url: jdbc:mysql://${MYSQL_SERVICE_HOST}:${MYSQL_SERVICE_PORT}/test
driverClassName: org.mariadb.jdbc.Driver
For PostgreSQL:
data:
application.yaml: |-
spring:
datasource:
url: jdbc:postgresql://${PGSQL_SERVICE_HOST}:${PGSQL_SERVICE_PORT}/database
username: root
password: ${postgres-password}
driverClassName: org.postgresql.Driver
For HSQLDB:
data:
application.yaml: |-
spring:
datasource:
url: jdbc:hsqldb:hsql://${HSQLDB_SERVICE_HOST}:${HSQLDB_SERVICE_PORT}/database
username: sa
driverClassName: org.hsqldb.jdbc.JDBCDriver
There is a schema update to the Spring Cloud Data Flow datastore when upgrading from version 1.0.x to 1.1.x and from 1.1.x to 1.2.x .
Migration scripts for specific database types can be found in the spring-cloud-task repo.
|
19. Security
We are now securing the server application in the sample configurations file used in the Getting Started section.
This section covers the basic configuration settings we provide in the provided sample configuration, please refer to the core security documentation for more detailed coverage of the security configuration options for the Spring Cloud Data Flow server and shell.
The security settings in the src/kubernetes/server/server-config-rabbit.yaml
file are:
security:
basic:
enabled: true (1)
realm: Spring Cloud Data Flow (2)
spring:
cloud:
dataflow:
security:
authentication:
file:
enabled: true
users:
admin: admin, ROLE_MANAGE, ROLE_VIEW (3)
user: password, ROLE_VIEW, ROLE_CREATE (4)
1 | Enable security |
2 | Optionally set the realm, defaults to "Spring" |
3 | Create an 'admin' user with password set to 'admin' that can view apps, streams and tasks and that can also view management endpoints |
4 | Create a 'user' user with password set to 'password' than can register apps and create streams and tasks and also view them |
Feel free to change user names and passwords to suite, and also maybe move the definition of user passwords to a Kubernetes Secret.
20. Spring Cloud Deployer for Kubernetes Properties
The Spring Cloud Deployer for Kubernetes has several properties you can use to configure the apps that it deploys.
The configuration is controlled by configuration properties under the spring.cloud.deployer.kubernetes
prefix.
20.1. Using Deployments
The deployer uses Replication Controllers by default. To use Deployments instead you can set the following option as part of the container env section in a deployment YAML file. This is now the preferred setting and will be the default in future releases of the deployer.
env:
- name: SPRING_CLOUD_DEPLOYER_KUBERNETES_CREATE_DEPLOYMENT
value: 'true'
20.2. CPU and Memory Limits
You can control the default values to set the cpu
and memory
requirements for the pods that are created as part of app deployments. You can declare the following as part of the container env section in a deployment YAML file:
env:
- name: SPRING_CLOUD_DEPLOYER_KUBERNETES_CPU
value: 500m
- name: SPRING_CLOUD_DEPLOYER_KUBERNETES_MEMORY
value: 640Mi
20.3. Liveness and Rediness Probes Configurations
You can modify the settings used for the liveness and readiness probes. This might be necessary if your cluster is slower and the apps need more time to start up. Here is an example of setting the delay and period for the liveness probe:
env:
- name: SPRING_CLOUD_DEPLOYER_KUBERNETES_LIVENESS_PROBE_DELAY
value: '120'
- name: SPRING_CLOUD_DEPLOYER_KUBERNETES_LIVENESS_PROBE_PERIOD
value: '45'
See KubernetesDeployerProperties for more of the supported options.
20.4. Using SPRING_APPLICATION_JSON
Data Flow Server properties that are common across all of the Data Flow Server implementations including the configuration of maven repository settings can be set in a similar manner although the latter might be easier to set using a SPRING_APPLICATION_JSON
environment variable like:
env:
- name: SPRING_APPLICATION_JSON
value: "{ \"maven\": { \"local-repository\": null, \"remote-repositories\": { \"repo1\": { \"url\": \"https://repo.spring.io/libs-snapshot\"} } } }"
20.5. Private Docker Registry
Docker images can be pulled from a private registry on global basis. First a Secret must be created in the cluster. Follow the Pull an Image from a Private Registry guide to create the Secret.
Once the Secret is created, use the SPRING_CLOUD_DEPLOYER_KUBERNETES_IMAGE_PULL_SECRET
env variable to set the Secret to use, for example:
env:
- name: SPRING_CLOUD_DEPLOYER_KUBERNETES_IMAGE_PULL_SECRET
value: mysecret
Replacing mysecret
with the name of the Secret you created earlier.
20.6. Deployment Service Account
A Service Account to use can be configured for all deployed applications. An existing Service Account can be used, or a new one can be created. One way to create a service account is by using kubectl
, for example:
$ kubectl create serviceaccount myserviceaccountname
serviceaccount "myserviceaccountname" created
With the Service Account name, set the SPRING_CLOUD_DEPLOYER_KUBERNETES_DEPLOYMENT_SERVICE_ACCOUNT_NAME
env variable, for example:
env:
- name: SPRING_CLOUD_DEPLOYER_KUBERNETES_DEPLOYMENT_SERVICE_ACCOUNT_NAME
value: myserviceaccountname
A Service Account name defined on a per application basis takes precedence over this configuration setting. |
21. Monitoring and Management
We recommend using the kubectl
command for troubleshooting streams and tasks.
You can list all artifacts and resources used by using the following command:
kubectl get all,cm,secrets,pvc
You can list all resources used by a specific app or service by using a label to select resources. The following command list all resources used by the mysql
service:
kubectl get all -l app=mysql
You can get the logs for a specific pod by issuing:
kubectl logs pod <pod-name>
If the pod is continuously getting restarted you can add -p
as an option to see the previous log like:
kubectl logs -p <pod-name>
You can also tail or follow a log by adding an -f
option:
kubectl logs -f <pod-name>
A useful command to help in troubleshooting issues, such as a container that has a fatal error starting up, is to use the describe command like:
kubectl describe pod ticktock-log-0-qnk72
21.1. Inspecting Server Logs
You can access the server logs by using the following command (just supply the name of pod for the server):
kubectl get pod -l app=scdf=server
kubectl logs <scdf-server-pod-name>
21.2. Streams
The stream apps are deployed with the stream name followed by the name of the app and for processors and sinks there is also an instance index appended.
To see all the pods that are deployed by the Spring Cloud Data Flow server you can specify the label role=spring-app
:
kubectl get pod -l role=spring-app
To see details for a specific app deployment you can use (just supply the name of pod for the app):
kubectl describe pod <app-pod-name>
For the application logs use:
kubectl logs <app-pod-name>
If you would like to tail a log you can use:
kubectl logs -f <app-pod-name>
21.3. Tasks
Tasks are launched as bare pods without a replication controller. The pods remain after the tasks complete and this gives you an opportunity to review the logs.
To see all pods for a specific task use this command while providing the task name:
kubectl get pod -l task-name=<task-name>
To review the task logs use:
kubectl logs <task-pod-name>
You have two options to delete completed pods. You can delete them manually once they are no longer needed.
To delete the task pod use:
kubectl delete pod <task-pod-name>
You can also use the Data Flow shell command task execution cleanup
command to remove the completed pod for a task execution.
First we need to determine the ID
for the task execution:
dataflow:>task execution list
╔═════════╤══╤════════════════════════════╤════════════════════════════╤═════════╗
║Task Name│ID│ Start Time │ End Time │Exit Code║
╠═════════╪══╪════════════════════════════╪════════════════════════════╪═════════╣
║task1 │1 │Fri May 05 18:12:05 EDT 2017│Fri May 05 18:12:05 EDT 2017│0 ║
╚═════════╧══╧════════════════════════════╧════════════════════════════╧═════════╝
Next we issue the command to cleanup the execution artifacts (the completed pod):
dataflow:>task execution cleanup --id 1
Request to clean up resources for task execution 1 has been submitted
22. Debug Support
Debugging the Spring Cloud Data Flow Kubernetes Server and included components such as the Spring Cloud Kubernetes Deployer is supported through the Java Debug Wire Protocol (JDWP). This section will outline an approach to manually enable debugging and another that uses configuration files provided with Spring Cloud Data Flow Server Kubernetes to "patch" a running deployment.
JDWP itself does not use any authentication. This section assumes debugging is being done on a local development environment such as Minikube and guidance on securing the debug port is not provided. |
22.1. Enabling Debugging Manually
To manually enable JDWP, first edit src/kubernetes/server/server-deployment.yaml
and add an additional containerPort
entry under spec.template.spec.containers.ports
with a value of 5005
. Additionally add the environment variable JAVA_TOOL_OPTIONS
under spec.template.spec.containers.env
as shown below:
spec:
...
template:
...
spec:
containers:
- name: scdf-server
...
ports:
...
- containerPort: 5005
env:
- name: JAVA_TOOL_OPTIONS
value: '-agentlib:jdwp=transport=dt_socket,server=y,suspend=n,address=5005'
Port 5005 is used in this example, but it can be any number that does not conflict with another port. The chosen port number must also be the same for the added containerPort value along with the address parameter of the JAVA_TOOL_OPTIONS -agentlib flag as shown above.
|
The Spring Cloud Data Flow Kubernetes Server can now be started as normal. Once the server is up, changes from above can be verified on the scdf-server
deployment:
$ kubectl describe deployment/scdf-server
...
...
Pod Template:
...
Containers:
scdf-server:
...
Ports: 80/TCP, 5005/TCP
...
Environment:
JAVA_TOOL_OPTIONS: -agentlib:jdwp=transport=dt_socket,server=y,suspend=n,address=5005
...
With the server started and JDWP enabled, access to the port needs to be configured. In this example we will use the port-forward
subcommand of kubectl
. Exposing a local port to our debug target using port-forward
can be done as follows:
$ kubectl get pod -l app=scdf-server
NAME READY STATUS RESTARTS AGE
scdf-server-5b7cfd86f7-d8mj4 1/1 Running 0 10m
$ kubectl port-forward scdf-server-5b7cfd86f7-d8mj4 5005:5005
Forwarding from 127.0.0.1:5005 -> 5005
Forwarding from [::1]:5005 -> 5005
A debugger may now be attached by pointing it to 127.0.0.1
as the host and 5005
as the port. The port-forward
subcommand will remain running until killed with for example, CTRL+c
.
Debugging support can be removed by reverting the changes to src/kubernetes/server/server-deployment.yaml
. The reverted changes will be picked up on the next deployment of the Spring Cloud Data Flow Kubernetes Server. Manually adding debug support to the configuration comes in useful when debugging should be enabled by default each time the server is deployed.
22.2. Enabling Debugging with Patching
Rather than manually changing the server-deployment.yaml
, created Kubernetes Objects can be "patched" in place. For convenience patch files are included that provide the same configuration as the manual approach. To enable debugging by patching, enter the following:
$ kubectl patch deployment scdf-server -p "$(cat src/kubernetes/server/server-deployment-debug.yaml)"
Running this command will automatically add the containerPort
attribute and the JAVA_TOOL_OPTIONS
environment variable. Changes to the scdf-server
deployment can be verified by running the following command:
$ kubectl describe deployment/scdf-server
...
...
Pod Template:
...
Containers:
scdf-server:
...
Ports: 5005/TCP, 80/TCP
...
Environment:
JAVA_TOOL_OPTIONS: -agentlib:jdwp=transport=dt_socket,server=y,suspend=n,address=5005
...
To enable access to the debug port, rather than using the port-forward
subcommand of kubectl
, another option would be to patch the scdf-server
Kubernetes Service Object. Patching this object can be done as follows:
First ensure the scdf-server
Kubernetes Service Object has the proper configuration.
$ kubectl describe service/scdf-server
If the output contains the text <unset>
, for example:
Port: <unset> 80/TCP
TargetPort: 80/TCP
NodePort: <unset> 30784/TCP
Patch the service to add a name for this port:
$ kubectl patch service scdf-server -p "$(cat src/kubernetes/server/server-svc.yaml)"
A port name should only be missing if the target cluster had been created prior to debug functionality being added. Since multiple ports are being added to the scdf-server Kubernetes Service Object, each needs to have their own name.
|
Now add the debug port:
$ kubectl patch service scdf-server -p "$(cat src/kubernetes/server/server-svc-debug.yaml)"
To verify the mapping:
$ kubectl describe service scdf-server
Name: scdf-server
...
...
Port: scdf-server-jdwp 5005/TCP
TargetPort: 5005/TCP
NodePort: scdf-server-jdwp 31339/TCP
...
...
Port: scdf-server 80/TCP
TargetPort: 80/TCP
NodePort: scdf-server 30883/TCP
...
...
In the output, its shown that that container port 5005 has been mapped to the NodePort of 31339. To get the IP address of the Minikube node enter the following:
$ minikube ip
192.168.99.100
With this information a debug connection can now be created using a host of 192.168.99.100 and a port of 31339.
To disable JDWP, the following commands can be used:
$ kubectl rollout undo deployment/scdf-server
$ kubectl patch service scdf-server --type json -p='[{"op": "remove", "path": "/spec/ports/0"}]'
The Kubernetes Deployment Object is rolled back to its state prior before being patched. The Kubernetes Service Object is then patched with a remove
operation to remove port 5005 from the containerPorts
list.
kubectl rollout undo will force the pod to restart. Patching the Kubernetes Service Object will not recreate the service and the port mapping to the scdf-server deployment will remain the same.
|
See Rolling Back a Deployment for more information on deployment rollbacks including managing history and Update API Objects in Place Using kubectl Patch for more information on patching.
Shell
This section covers the options for starting the shell and more advanced functionality relating to how the shell handles white spaces, quotes, and interpretation of SpEL expressions. The introductory chapters to the Stream DSL and Composed Task DSL are good places to start for the most common usage of shell commands.
23. Shell Options
The shell is built upon the Spring Shell project. There are command line options generic to Spring Shell and some specific to Data Flow. The shell takes the following command line options
unix:>java -jar spring-cloud-dataflow-shell-1.6.0.M1.jar --help
Data Flow Options:
--dataflow.uri= Address of the Data Flow Server [default: http://localhost:9393].
--dataflow.username= Username of the Data Flow Server [no default].
--dataflow.password= Password of the Data Flow Server [no default].
--dataflow.credentials-provider-command= Executes an external command which must return an
OAuth Bearer Token (Access Token prefixed with 'Bearer '),
e.g. 'Bearer 12345'), [no default].
--dataflow.skip-ssl-validation= Accept any SSL certificate (even self-signed) [default: no].
--dataflow.proxy.uri= Address of an optional proxy server to use [no default].
--dataflow.proxy.username= Username of the proxy server (if required by proxy server) [no default].
--dataflow.proxy.password= Password of the proxy server (if required by proxy server) [no default].
--spring.shell.historySize= Default size of the shell log file [default: 3000].
--spring.shell.commandFile= Data Flow Shell executes commands read from the file(s) and then exits.
--help This message.
The spring.shell.commandFile
option can be used to point to an existing file that contains
all the shell commands to deploy one or many related streams and tasks. This is useful when creating some scripts to
help automate deployment.
Also, the following shell command helps to modularize a complex script into multiple independent files:
dataflow:>script --file <YOUR_AWESOME_SCRIPT>
24. Listing Available Commands
Typing help
at the command prompt gives a listing of all available commands.
Most of the commands are for Data Flow functionality, but a few are general purpose.
! - Allows execution of operating system (OS) commands
clear - Clears the console
cls - Clears the console
date - Displays the local date and time
exit - Exits the shell
http get - Make GET request to http endpoint
http post - POST data to http endpoint
quit - Exits the shell
system properties - Shows the shell's properties
version - Displays shell version
Adding the name of the command to help
shows additional information on how to invoke the command.
dataflow:>help stream create
Keyword: stream create
Description: Create a new stream definition
Keyword: ** default **
Keyword: name
Help: the name to give to the stream
Mandatory: true
Default if specified: '__NULL__'
Default if unspecified: '__NULL__'
Keyword: definition
Help: a stream definition, using the DSL (e.g. "http --port=9000 | hdfs")
Mandatory: true
Default if specified: '__NULL__'
Default if unspecified: '__NULL__'
Keyword: deploy
Help: whether to deploy the stream immediately
Mandatory: false
Default if specified: 'true'
Default if unspecified: 'false'
25. Tab Completion
The shell command options can be completed in the shell by pressing the TAB
key after the leading --
. For example, pressing TAB
after stream create --
results in
dataflow:>stream create --
stream create --definition stream create --name
If you type --de
and then hit tab, --definition
will be expanded.
Tab completion is also available inside the stream or composed task DSL expression for application or task properties. You can also use TAB
to get hints in a stream DSL expression for what available sources, processors, or sinks can be used.
26. White Space and Quoting Rules
It is only necessary to quote parameter values if they contain spaces or the |
character. The following example passes a SpEL expression (which is applied to any data it encounters) to a transform processor:
transform --expression='new StringBuilder(payload).reverse()'
If the parameter value needs to embed a single quote, use two single quotes, as follows:
scan --query='Select * from /Customers where name=''Smith'''
26.1. Quotes and Escaping
There is a Spring Shell-based client that talks to the Data Flow Server and is responsible for parsing the DSL. In turn, applications may have applications properties that rely on embedded languages, such as the Spring Expression Language.
The shell, Data Flow DSL parser, and SpEL have rules about how they handle quotes and how syntax escaping works. When combined together, confusion may arise. This section explains the rules that apply and provides examples of the most complicated situations you may encounter when all three components are involved.
It’s not always that complicated
If you do not use the Data Flow shell (for example, you use the REST API directly) or if application properties are not SpEL expressions, then the escaping rules are simpler. |
26.1.1. Shell rules
Arguably, the most complex component when it comes to quotes is the shell. The rules can be laid out quite simply, though:
-
A shell command is made of keys (
--something
) and corresponding values. There is a special, keyless mapping, though, which is described later. -
A value cannot normally contain spaces, as space is the default delimiter for commands.
-
Spaces can be added though, by surrounding the value with quotes (either single (
'
) or double ("
) quotes). -
Values passed inside deployment properties (e.g.
deployment <stream-name> --properties " …"
) should not be quoted again. -
If surrounded with quotes, a value can embed a literal quote of the same kind by prefixing it with a backslash (
\
). -
Other escapes are available, such as
\t
,\n
,\r
,\f
and unicode escapes of the form\uxxxx
. -
The keyless mapping is handled in a special way such that it does not need quoting to contain spaces.
For example, the shell supports the !
command to execute native shell commands. The !
accepts a single keyless argument. This is why the following works:
dataflow:>! rm something
The argument here is the whole rm something
string, which is passed as is to the underlying shell.
As another example, the following commands are strictly equivalent, and the argument value is something
(without the quotes):
dataflow:>stream destroy something dataflow:>stream destroy --name something dataflow:>stream destroy "something" dataflow:>stream destroy --name "something"
26.1.2. Property files rules
Rules are relaxed when loading the properties from files.
* The special characters used in property files (both Java and YAML) needs to be escaped. For example \
should be replaced by \\
, '\t` by \\t
and so forth.
* For Java property files (--propertiesFile
<FILE_PATH>.properties) the property values should not be surrounded by quotes! It is not needed even if they contain spaces.
filter.expression=payload > 5
-
For YAML property files (
--propertiesFile
<FILE_PATH>.yaml), though, the values need to be surrounded by double quotes.
app: filter: filter: expression: "payload > 5"
26.1.3. DSL Parsing Rules
At the parser level (that is, inside the body of a stream or task definition) the rules are as follows:
-
Option values are normally parsed until the first space character.
-
They can be made of literal strings, though, surrounded by single or double quotes.
-
To embed such a quote, use two consecutive quotes of the desired kind.
As such, the values of the --expression
option to the filter application are semantically equivalent in the following examples:
filter --expression=payload>5 filter --expression="payload>5" filter --expression='payload>5' filter --expression='payload > 5'
Arguably, the last one is more readable. It is made possible thanks to the surrounding quotes. The actual expression is payload > 5
(without quotes).
Now, imagine that we want to test against string messages. If we want to compare the payload to the SpEL literal string, "something"
, we could use the following:
filter --expression=payload=='something' (1) filter --expression='payload == ''something''' (2) filter --expression='payload == "something"' (3)
1 | This works because there are no spaces. It is not very legible, though. |
2 | This uses single quotes to protect the whole argument. Hence, the actual single quotes need to be doubled. |
3 | SpEL recognizes String literals with either single or double quotes, so this last method is arguably the most readable. |
Please note that the preceding examples are to be considered outside of the shell (for example, when calling the REST API directly). When entered inside the shell, chances are that the whole stream definition is itself inside double quotes, which would need to be escaped. The whole example then becomes the following:
dataflow:>stream create something --definition "http | filter --expression=payload='something' | log" dataflow:>stream create something --definition "http | filter --expression='payload == ''something''' | log" dataflow:>stream create something --definition "http | filter --expression='payload == \"something\"' | log"
26.1.4. SpEL Syntax and SpEL Literals
The last piece of the puzzle is about SpEL expressions. Many applications accept options that are to be interpreted as SpEL expressions, and, as seen above, String literals are handled in a special way there, too. The rules are as follows:
-
Literals can be enclosed in either single or double quotes.
-
Quotes need to be doubled to embed a literal quote. Single quotes inside double quotes need no special treatment, and the reverse is also true.
As a last example, assume you want to use the transform processor.
This processor accepts an expression
option which is a SpEL expression. It is to be evaluated against the incoming message, with a default of payload
(which forwards the message payload untouched).
It is important to understand that the following statements are equivalent:
transform --expression=payload transform --expression='payload'
However, they are different from the following (and variations upon them):
transform --expression="'payload'" transform --expression='''payload'''
The first series evaluates to the message payload, while the latter examples evaluate to the literal string, payload
, (again, without quotes).
26.1.5. Putting It All Together
As a last, complete example, consider how one could force the transformation of all messages to the string literal, hello world
, by creating a stream in the context of the Data Flow shell:
dataflow:>stream create something --definition "http | transform --expression='''hello world''' | log" (1) dataflow:>stream create something --definition "http | transform --expression='\"hello world\"' | log" (2) dataflow:>stream create something --definition "http | transform --expression=\"'hello world'\" | log" (2)
1 | In the first line, there are single quotes around the string (at the Data Flow parser level), but they need to be doubled because they are inside a string literal (started by the first single quote after the equals sign). |
2 | The second and third lines, use single and double quotes respectively to encompass the whole string at the Data Flow parser level. Consequently, the other kind of quote can be used inside the string. The whole thing is inside the --definition argument to the shell, though, which uses double quotes. Consequently, double quotes are escaped (at the shell level) |
Streams
This section goes into more detail about how you can create Streams, which are collections of Spring Cloud Stream applications. It covers topics such as creating and deploying Streams.
If you are just starting out with Spring Cloud Data Flow, you should probably read the Getting Started guide before diving into this section.
27. Introduction
A Stream is are a collection of long-lived Spring Cloud Stream applications that communicate with each other over messaging middleware. A text-based DSL defines the configuration and data flow between the applications. While many applications are provided for you to implement common use-cases, you typically create a custom Spring Cloud Stream application to implement custom business logic.
The general lifecycle of a Stream is:
-
Register applications.
-
Create a Stream Definition.
-
Deploy the Stream.
-
Undeploy or Destroy the Stream.
-
Upgrade or Rollack applications in the Stream.
If you use Skipper, you can upgrade or rollback applications in the Stream.
There are two options for deploying streams:
-
Use a Data Flow Server implementation that deploys to a single platform.
-
Configure the Data Flow Server to delegate the deployment to a new server in the Spring Cloud ecosystem named Skipper.
When using the first option, you can use the Local Data Flow Server to deploy streams to your local machine, the Data Flow Server for Cloud Foundry to deploy streams to a single org and space on Cloud Foundry. Similarly, you can use Data Flow Server for Kuberenetes to deploy a stream to a single namespace on a Kubernetes cluster. See the Spring Cloud Data Flow project page for a list of Data Flow server implementations.
When using the second option, you can configure Skipper to deploy applications to one or more Cloud Foundry orgs and spaces, one or more namespaces on a Kubernetes cluster, or to the local machine. When deploying a stream in Data Flow using Skipper, you can specify which platform to use at deployment time. Skipper also provides Data Flow with the ability to perform updates to deployed streams. There are many ways the applications in a stream can be updated, but one of the most common examples is to upgrade a processor application with new custom business logic while leaving the existing source and sink applications alone.
27.1. Stream Pipeline DSL
A stream is defined by using a unix-inspired Pipeline syntax.
The syntax uses vertical bars, also known as “pipes” to connect multiple commands.
The command ls -l | grep key | less
in Unix takes the output of the ls -l
process and pipes it to the input of the grep key
process.
The output of grep
in turn is sent to the input of the less
process.
Each |
symbol connects the standard output of the command on the left to the standard input of the command on the right.
Data flows through the pipeline from left to right.
In Data Flow, the Unix command is replaced by a Spring Cloud Stream application and each pipe symbol represents connecting the input and output of applications over messaging middleware, such as RabbitMQ or Apache Kafka.
Each Spring Cloud Stream application is registered under a simple name. The registration process specifies where the application can be obtained (for example, in a Maven Repository or a Docker registry). You can find out more information on how to register Spring Cloud Stream applications in this section. In Data Flow, we classify the Spring Cloud Stream applications as Sources, Processors, or Sinks.
As a simple example, consider the collection of data from an HTTP Source writing to a File Sink. Using the DSL, the stream description is:
http | file
A stream that involves some processing would be expressed as:
http | filter | transform | file
Stream definitions can be created by using the shell’s stream create
command, as shown in the following example:
dataflow:> stream create --name httpIngest --definition "http | file"
The Stream DSL is passed in to the --definition
command option.
The deployment of stream definitions is done through the shell’s stream deploy
command.
dataflow:> stream deploy --name ticktock
The Getting Started section shows you how to start the server and how to start and use the Spring Cloud Data Flow shell.
Note that the shell calls the Data Flow Servers' REST API. For more information on making HTTP requests directly to the server, consult the REST API Guide.
27.2. Application properties
Each application takes properties to customize its behavior. As an example, the http
source module exposes a port
setting that allows the data ingestion port to be changed from the default value.
dataflow:> stream create --definition "http --port=8090 | log" --name myhttpstream
This port
property is actually the same as the standard Spring Boot server.port
property.
Data Flow adds the ability to use the shorthand form port
instead of server.port
.
One may also specify the longhand version as well, as shown in the following example:
dataflow:> stream create --definition "http --server.port=8000 | log" --name myhttpstream
This shorthand behavior is discussed more in the section on Whitelisting application properties.
If you have registered application property metadata you can use tab completion in the shell after typing --
to get a list of candidate property names.
The shell provides tab completion for application properties. The shell command app info --name <appName> --type <appType>
provides additional documentation for all the supported properties.
Supported Stream <appType> possibilities are: source, processor, and sink.
|
28. Stream Lifecycle
The lifecycle of a stream, in "classic" mode, goes through the following stages:
28.1. Register a Stream App
You can register a Stream App with the App Registry by using the Spring Cloud Data Flow Shell
app register
command. You must provide a unique name, an application type, and a URI that can be
resolved to the app artifact. For the type, specify source
, processor
, or sink
.
Here are a few examples:
dataflow:>app register --name mysource --type source --uri maven://com.example:mysource:0.0.1-SNAPSHOT
dataflow:>app register --name myprocessor --type processor --uri file:///Users/example/myprocessor-1.2.3.jar
dataflow:>app register --name mysink --type sink --uri http://example.com/mysink-2.0.1.jar
When providing a URI with the maven
scheme, the format should conform to the following:
maven://<groupId>:<artifactId>[:<extension>[:<classifier>]]:<version>
For example, if you would like to register the snapshot versions of the http
and log
applications built with the RabbitMQ binder, you could do the following:
dataflow:>app register --name http --type source --uri maven://org.springframework.cloud.stream.app:http-source-rabbit:1.2.1.BUILD-SNAPSHOT
dataflow:>app register --name log --type sink --uri maven://org.springframework.cloud.stream.app:log-sink-rabbit:1.2.1.BUILD-SNAPSHOT
If you would like to register multiple apps at one time, you can store them in a properties file
where the keys are formatted as <type>.<name>
and the values are the URIs.
For example, if you would like to register the snapshot versions of the http
and log
applications built with the RabbitMQ binder, you could have the following in a properties file (for example, stream-apps.properties
):
source.http=maven://org.springframework.cloud.stream.app:http-source-rabbit:1.2.1.BUILD-SNAPSHOT
sink.log=maven://org.springframework.cloud.stream.app:log-sink-rabbit:1.2.1.BUILD-SNAPSHOT
Then to import the apps in bulk, use the app import
command and provide the location of the properties file with the --uri
switch, as follows:
dataflow:>app import --uri file:///<YOUR_FILE_LOCATION>/stream-apps.properties
28.1.1. Register Supported Applications and Tasks
For convenience, we have the static files with application-URIs (for both maven and docker) available for all the out-of-the-box stream and task/batch app-starters. You can point to this file and import all the application-URIs in bulk. Otherwise, as explained previously, you can register them individually or have your own custom property file with only the required application-URIs in it. It is recommended, however, to have a “focused” list of desired application-URIs in a custom property file.
The following table lists the bit.ly links to the available Stream Application Starters based on Spring Boot 1.5.x:
Artifact Type | Stable Release | SNAPSHOT Release |
---|---|---|
RabbitMQ + Maven |
bit.ly/Celsius-BUILD-SNAPSHOT-stream-applications-rabbit-maven |
|
RabbitMQ + Docker |
bit.ly/Celsius-BUILD-SNAPSHOT-stream-applications-rabbit-docker |
|
Kafka 0.10 + Maven |
bit.ly/Celsius-BUILD-SNAPSHOT-stream-applications-kafka-10-maven |
|
Kafka 0.10 + Docker |
bit.ly/Celsius-BUILD-SNAPSHOT-stream-applications-kafka-10-docker |
The following table lists the bit.ly links to the available Stream Application Starters based on Spring Boot 2.0.x:
App Starter actuator endpoints are secured by default. You can disable security by deploying streams with the property app.*.spring.autoconfigure.exclude=org.springframework.boot.autoconfigure.security.servlet.SecurityAutoConfiguration . On Kubernetes refer to the section Liveness and readiness probes to configure security for actuator endpoints.
|
Artifact Type | Stable Release | SNAPSHOT Release |
---|---|---|
RabbitMQ + Maven |
bit.ly/Darwin-BUILD-SNAPSHOT-stream-applications-rabbit-maven |
|
RabbitMQ + Docker |
bit.ly/Darwin-BUILD-SNAPSHOT-stream-applications-rabbit-docker |
|
Kafka 0.11 and above + Maven |
bit.ly/Darwin-BUILD-SNAPSHOT-stream-applications-kafka-10-maven |
|
Kafka 0.11 and above + Docker |
bit.ly/Darwin-BUILD-SNAPSHOT-stream-applications-kafka-10-docker |
The following table lists the available Task Application Starters:
Artifact Type | Stable Release | SNAPSHOT Release |
---|---|---|
Maven |
||
Docker |
You can find more information about the available task starters in the Task App Starters Project Page and related reference documentation. For more information about the available stream starters, look at the Stream App Starters Project Page and related reference documentation.
As an example, if you would like to register all out-of-the-box stream applications built with the Kafka binder in bulk, you can use the following command:
$ dataflow:>app import --uri http://bit.ly/Darwin-GA-stream-applications-kafka-10-maven
Alternatively you can register all the stream applications with the Rabbit binder, as follows:
$ dataflow:>app import --uri http://bit.ly/Darwin-GA-stream-applications-rabbit-maven
You can also pass the --local
option (which is true
by default) to indicate whether the
properties file location should be resolved within the shell process itself. If the location should
be resolved from the Data Flow Server process, specify --local false
.
When using either Note, however, that, once downloaded, applications may be cached locally on the Data Flow server, based on the resource
location. If the resource location does not change (even though the actual resource bytes may be different), then it
is not re-downloaded. When using Moreover, if a stream is already deployed and using some version of a registered app, then (forcibly) re-registering a different app has no effect until the stream is deployed again. |
In some cases, the Resource is resolved on the server side. In others, the URI is passed to a runtime container instance where it is resolved. Consult the specific documentation of each Data Flow Server for more detail. |
28.1.2. Whitelisting application properties
Stream and Task applications are Spring Boot applications that are aware of many Common Application Properties, such as server.port
but also families of properties such as those with the prefix spring.jmx
and logging
. When creating your own application, you should whitelist properties so that the shell and the UI can display them first as primary properties when presenting options through TAB completion or in drop-down boxes.
To whitelist application properties, create a file named spring-configuration-metadata-whitelist.properties
in the META-INF
resource directory. There are two property keys that can be used inside this file. The first key is named configuration-properties.classes
. The value is a comma separated list of fully qualified @ConfigurationProperty
class names. The second key is configuration-properties.names
, whose value is a comma-separated list of property names. This can contain the full name of the property, such as server.port
, or a partial name to whitelist a category of property names, such as spring.jmx
.
The Spring Cloud Stream application starters are a good place to look for examples of usage. The following example comes from the file sink’s spring-configuration-metadata-whitelist.properties
file:
configuration-properties.classes=org.springframework.cloud.stream.app.file.sink.FileSinkProperties
If we also want to add server.port
to be white listed, it would become the following line:
configuration-properties.classes=org.springframework.cloud.stream.app.file.sink.FileSinkProperties
configuration-properties.names=server.port
Make sure to add 'spring-boot-configuration-processor' as an optional dependency to generate configuration metadata file for the properties.
|
28.1.3. Creating and Using a Dedicated Metadata Artifact
You can go a step further in the process of describing the main properties that your stream or task app supports by creating a metadata companion artifact. This jar file contains only the Spring boot JSON file about configuration properties metadata and the whitelisting file described in the previous section.
The following example shows the contents of such an artifact, for the canonical log
sink:
$ jar tvf log-sink-rabbit-1.2.1.BUILD-SNAPSHOT-metadata.jar
373848 META-INF/spring-configuration-metadata.json
174 META-INF/spring-configuration-metadata-whitelist.properties
Note that the spring-configuration-metadata.json
file is quite large. This is because it contains the concatenation of all the properties that
are available at runtime to the log
sink (some of them come from spring-boot-actuator.jar
, some of them come from
spring-boot-autoconfigure.jar
, some more from spring-cloud-starter-stream-sink-log.jar
, and so on). Data Flow
always relies on all those properties, even when a companion artifact is not available, but here all have been merged
into a single file.
To help with that (you do not want to try to craft this giant JSON file by hand), you can use the following plugin in your build:
<plugin>
<groupId>org.springframework.cloud</groupId>
<artifactId>spring-cloud-app-starter-metadata-maven-plugin</artifactId>
<executions>
<execution>
<id>aggregate-metadata</id>
<phase>compile</phase>
<goals>
<goal>aggregate-metadata</goal>
</goals>
</execution>
</executions>
</plugin>
This plugin comes in addition to the spring-boot-configuration-processor that creates the individual JSON files.
Be sure to configure both.
|
The benefits of a companion artifact include:
-
Being much lighter. (The companion artifact is usually a few kilobytes, as opposed to megabytes for the actual app.) Consequently, they are quicker to download, allowing quicker feedback when using, for example,
app info
or the Dashboard UI. -
As a consequence of being lighter, they can be used in resource constrained environments (such as PaaS) when metadata is the only piece of information needed.
-
For environments that do not deal with Spring Boot uber jars directly (for example, Docker-based runtimes such as Kubernetes or Mesos), this is the only way to provide metadata about the properties supported by the app.
Remember, though, that this is entirely optional when dealing with uber jars. The uber jar itself also includes the metadata in it already.
28.1.4. Using the Companion Artifact
Once you have a companion artifact at hand, you need to make the system aware of it so that it can be used.
When registering a single app with app register
, you can use the optional --metadata-uri
option in the shell, as follows:
dataflow:>app register --name log --type sink
--uri maven://org.springframework.cloud.stream.app:log-sink-kafka-10:1.2.1.BUILD-SNAPSHOT
--metadata-uri=maven://org.springframework.cloud.stream.app:log-sink-kafka-10:jar:metadata:1.2.1.BUILD-SNAPSHOT
When registering several files by using the app import
command, the file should contain a <type>.<name>.metadata
line
in addition to each <type>.<name>
line. Strictly speaking, doing so is optional (if some apps have it but some others do not, it works), but it is best practice.
The following example shows a Dockerized app, where the metadata artifact is being hosted in a Maven repository (retrieving
it through http://
or file://
would be equally possible).
...
source.http=docker:springcloudstream/http-source-rabbit:latest
source.http.metadata=maven://org.springframework.cloud.stream.app:http-source-rabbit:jar:metadata:1.2.1.BUILD-SNAPSHOT
...
28.1.5. Creating Custom Applications
While there are out-of-the-box source, processor, sink applications available, you can extend these applications or write a custom Spring Cloud Stream application.
The process of creating Spring Cloud Stream applications with Spring Initializr is detailed in the Spring Cloud Stream {spring-cloud-stream-docs}#_getting_started[documentation]. It is possible to include multiple binders to an application. If doing so, see the instructions in Passing Spring Cloud Stream properties for how to configure them.
For supporting property whitelisting, Spring Cloud Stream applications running in Spring Cloud Data Flow may include the Spring Boot configuration-processor
as an optional dependency, as shown in the following example:
<dependencies>
<!-- other dependencies -->
<dependency>
<groupId>org.springframework.boot</groupId>
<artifactId>spring-boot-configuration-processor</artifactId>
<optional>true</optional>
</dependency>
</dependencies>
Make sure that the |
Once a custom application has been created, it can be registered as described in Register a Stream App.
28.2. Creating a Stream
The Spring Cloud Data Flow Server exposes a full RESTful API for managing the lifecycle of stream definitions, but the easiest way to use is it is through the Spring Cloud Data Flow shell. Start the shell as described in the Getting Started section.
New streams are created with the help of stream definitions. The definitions are built from a simple DSL. For example, consider what happens if we execute the following shell command:
dataflow:> stream create --definition "time | log" --name ticktock
This defines a stream named ticktock
that is based off the DSL expression time | log
. The DSL uses the "pipe" symbol (|
), to connect a source to a sink.
28.2.1. Application Properties
Application properties are the properties associated with each application in the stream. When the application is deployed, the application properties are applied to the application through command line arguments or environment variables, depending on the underlying deployment implementation.
The following stream can have application properties defined at the time of stream creation:
dataflow:> stream create --definition "time | log" --name ticktock
The shell command app info --name <appName> --type <appType>
displays the white-listed application properties for the application.
For more info on the property white listing, refer to Whitelisting application properties
The following listing shows the white_listed properties for the time
app:
dataflow:> app info --name time --type source
╔══════════════════════════════╤══════════════════════════════╤══════════════════════════════╤══════════════════════════════╗
║ Option Name │ Description │ Default │ Type ║
╠══════════════════════════════╪══════════════════════════════╪══════════════════════════════╪══════════════════════════════╣
║trigger.time-unit │The TimeUnit to apply to delay│<none> │java.util.concurrent.TimeUnit ║
║ │values. │ │ ║
║trigger.fixed-delay │Fixed delay for periodic │1 │java.lang.Integer ║
║ │triggers. │ │ ║
║trigger.cron │Cron expression value for the │<none> │java.lang.String ║
║ │Cron Trigger. │ │ ║
║trigger.initial-delay │Initial delay for periodic │0 │java.lang.Integer ║
║ │triggers. │ │ ║
║trigger.max-messages │Maximum messages per poll, -1 │1 │java.lang.Long ║
║ │means infinity. │ │ ║
║trigger.date-format │Format for the date value. │<none> │java.lang.String ║
╚══════════════════════════════╧══════════════════════════════╧══════════════════════════════╧══════════════════════════════╝
The following listing shows the white-listed properties for the log
app:
dataflow:> app info --name log --type sink
╔══════════════════════════════╤══════════════════════════════╤══════════════════════════════╤══════════════════════════════╗
║ Option Name │ Description │ Default │ Type ║
╠══════════════════════════════╪══════════════════════════════╪══════════════════════════════╪══════════════════════════════╣
║log.name │The name of the logger to use.│<none> │java.lang.String ║
║log.level │The level at which to log │<none> │org.springframework.integratio║
║ │messages. │ │n.handler.LoggingHandler$Level║
║log.expression │A SpEL expression (against the│payload │java.lang.String ║
║ │incoming message) to evaluate │ │ ║
║ │as the logged message. │ │ ║
╚══════════════════════════════╧══════════════════════════════╧══════════════════════════════╧══════════════════════════════╝
The application properties for the time
and log
apps can be specified at the time of stream
creation as follows:
dataflow:> stream create --definition "time --fixed-delay=5 | log --level=WARN" --name ticktock
Note that, in the preceding example, the fixed-delay
and level
properties defined for the apps time
and log
are the "'short-form'" property names provided by the shell completion.
These "'short-form'" property names are applicable only for the white-listed properties. In all other cases, only fully qualified property names should be used.
28.2.2. Common Application Properties
In addition to configuration through DSL, Spring Cloud Data Flow provides a mechanism for setting common properties to all
the streaming applications that are launched by it.
This can be done by adding properties prefixed with spring.cloud.dataflow.applicationProperties.stream
when starting
the server.
When doing so, the server passes all the properties, without the prefix, to the instances it launches.
For example, all the launched applications can be configured to use a specific Kafka broker by launching the Data Flow server with the following options:
--spring.cloud.dataflow.applicationProperties.stream.spring.cloud.stream.kafka.binder.brokers=192.168.1.100:9092
--spring.cloud.dataflow.applicationProperties.stream.spring.cloud.stream.kafka.binder.zkNodes=192.168.1.100:2181
Doing so causes the properties spring.cloud.stream.kafka.binder.brokers
and spring.cloud.stream.kafka.binder.zkNodes
to be passed to all the launched applications.
Properties configured with this mechanism have lower precedence than stream deployment properties.
They are overridden if a property with the same key is specified at stream deployment time (for example,
app.http.spring.cloud.stream.kafka.binder.brokers overrides the common property).
|
28.3. Deploying a Stream
This section describes how to deploy a Stream when the Spring Cloud Data Flow server is responsible for deploying the stream. The following section, Stream Lifecycle with Skipper, covers the new deployment and upgrade features when the Spring Cloud Data Flow server delegates to Skipper for stream deployment. The description of how deployment properties applies to both approaches of Stream deployment.
Give the ticktock
stream definition:
dataflow:> stream create --definition "time | log" --name ticktock
To deploy the stream, use the following shell command:
dataflow:> stream deploy --name ticktock
The Data Flow Server resolves time
and log
to maven coordinates and uses those to launch the time
and log
applications of the stream, as shown in the following listing:
2016-06-01 09:41:21.728 INFO 79016 --- [nio-9393-exec-6] o.s.c.d.spi.local.LocalAppDeployer : deploying app ticktock.log instance 0
Logs will be in /var/folders/wn/8jxm_tbd1vj28c8vj37n900m0000gn/T/spring-cloud-dataflow-912434582726479179/ticktock-1464788481708/ticktock.log
2016-06-01 09:41:21.914 INFO 79016 --- [nio-9393-exec-6] o.s.c.d.spi.local.LocalAppDeployer : deploying app ticktock.time instance 0
Logs will be in /var/folders/wn/8jxm_tbd1vj28c8vj37n900m0000gn/T/spring-cloud-dataflow-912434582726479179/ticktock-1464788481910/ticktock.time
In the preceding example, the time source sends the current time as a message each second, and the log sink outputs it by using the logging framework.
You can tail the stdout
log (which has an <instance>
suffix). The log files are located within the directory displayed in the Data Flow Server’s log output, as shown in the following listing:
$ tail -f /var/folders/wn/8jxm_tbd1vj28c8vj37n900m0000gn/T/spring-cloud-dataflow-912434582726479179/ticktock-1464788481708/ticktock.log/stdout_0.log
2016-06-01 09:45:11.250 INFO 79194 --- [ kafka-binder-] log.sink : 06/01/16 09:45:11
2016-06-01 09:45:12.250 INFO 79194 --- [ kafka-binder-] log.sink : 06/01/16 09:45:12
2016-06-01 09:45:13.251 INFO 79194 --- [ kafka-binder-] log.sink : 06/01/16 09:45:13
You can also create and deploy the stream in one step by passing the --deploy
flag when creating the stream, as follows:
dataflow:> stream create --definition "time | log" --name ticktock --deploy
However, it is not very common in real-world use cases to create and deploy the stream in one step.
The reason is that when you use the stream deploy
command, you can pass in properties that define how to map the applications onto the platform (for example, what is the memory size of the container to use, the number of each application to run, and whether to enable data partitioning features).
Properties can also override application properties that were set when creating the stream.
The next sections cover this feature in detail.
28.3.1. Deployment Properties
When deploying a stream, you can specify properties that fall into two groups:
-
Properties that control how the apps are deployed to the target platform. These properties use a
deployer
prefix and are referred to asdeployer
properties. -
Properties that set application properties or override application properties set during stream creation and are referred to as
application
properties.
The syntax for deployer
properties is deployer.<app-name>.<short-property-name>=<value>
, and the syntax for application
properties app.<app-name>.<property-name>=<value>
. This syntax is used when passing deployment properties through the shell. You may also specify them in a YAML file, which is discussed later in this chapter.
The following table shows the difference in behavior between setting deployer
and application
properties when deploying an application.
Application Properties | Deployer Properties | |
---|---|---|
Example Syntax |
|
|
What the application "sees" |
|
Nothing |
What the deployer "sees" |
Nothing |
|
Typical usage |
Passing/Overriding application properties, passing Spring Cloud Stream binder or partitioning properties |
Setting the number of instances, memory, disk, and others |
Passing Instance Count
If you would like to have multiple instances of an application in the stream, you
can include a deployer property called count
with the deploy
command:
dataflow:> stream deploy --name ticktock --properties "deployer.time.count=3"
Note that count
is the reserved property name used by the underlying deployer. Consequently, if the application also has a custom property named count
, it is not supported
when specified in 'short-form' form during stream deployment as it could conflict with the instance count
deployer property. Instead, the count
as a custom application property can be
specified in its fully qualified form (for example, app.something.somethingelse.count
) during stream deployment or it can be specified by using the 'short-form' or the fully qualified form during the stream creation,
where it is processed as an app property.
Inline Versus File-based Properties
When using the Spring Cloud Data Flow Shell, there are two ways to provide deployment properties: either inline or through a file reference. Those two ways are exclusive.
Inline properties use the --properties
shell option and list properties as a comma separated
list of key=value pairs, as shown in the following example:
stream deploy foo
--properties "deployer.transform.count=2,app.transform.producer.partitionKeyExpression=payload"
File references use the --propertiesFile
option and point it to a local .properties
, .yaml
or .yml
file
(that is, a file that resides in the filesystem of the machine running the shell). Being read
as a .properties
file, normal rules apply (ISO 8859-1 encoding, =
, <space>
or
:
delimiter, and others), although we recommend using =
as a key-value pair delimiter,
for consistency. The following example shows a stream deploy
command that uses the --propertiesFile
option:
stream deploy something --propertiesFile myprops.properties
Assume that myprops.properties
contains the following properties:
deployer.transform.count=2
app.transform.producer.partitionKeyExpression=payload
Both of the properties are passed as deployment properties for the something
stream.
If you use YAML as the format for the deployment properties, use the .yaml
or .yml
file extention when deploying the stream, as shown in the following example:
stream deploy foo --propertiesFile myprops.yaml
In that case, the myprops.yaml
file might contain the following content:
deployer:
transform:
count: 2
app:
transform:
producer:
partitionKeyExpression: payload
Passing application properties
The application properties can also be specified when deploying a stream. When specified during deployment, these application properties can either be specified as
'short-form' property names (applicable for white-listed properties) or as fully qualified property names. The application properties should have the prefix app.<appName/label>
.
For example, consider the following stream command:
dataflow:> stream create --definition "time | log" --name ticktock
The stream in the precedig example can also be deployed with application properties by using the 'short-form' property names, as shown in the following example:
dataflow:>stream deploy ticktock --properties "app.time.fixed-delay=5,app.log.level=ERROR"
Consider the following example:
stream create ticktock --definition "a: time | b: log"
When using the app label, the application properties can be defined as follows:
stream deploy ticktock --properties "app.a.fixed-delay=4,app.b.level=ERROR"
Passing Spring Cloud Stream properties
Spring Cloud Data Flow sets the required
Spring Cloud Stream properties for the applications inside the stream. Most importantly, the spring.cloud.stream.bindings.<input/output>.destination
is set internally for the apps to bind.
If you want to override any of the Spring Cloud Stream properties, they can be set with deployment properties.
For example, consider the following stream definition:
dataflow:> stream create --definition "http | transform --expression=payload.getValue('hello').toUpperCase() | log" --name ticktock
If there are multiple binders available in the classpath for each of the applications and the binder is chosen for each deployment, then the stream can be deployed with the specific Spring Cloud Stream properties, as follows:
dataflow:>stream deploy ticktock --properties "app.time.spring.cloud.stream.bindings.output.binder=kafka,app.transform.spring.cloud.stream.bindings.input.binder=kafka,app.transform.spring.cloud.stream.bindings.output.binder=rabbit,app.log.spring.cloud.stream.bindings.input.binder=rabbit"
Overriding the destination names is not recommended, because Spring Cloud Data Flow internally takes care of setting this property. |
Passing Per-binding Producer and Consumer Properties
A Spring Cloud Stream application can have producer and consumer properties set on a per-binding
basis.
While Spring Cloud Data Flow supports specifying short-hand notation for per-binding producer properties such as partitionKeyExpression
and partitionKeyExtractorClass
(as described in Passing Stream Partition Properties), all the supported Spring Cloud Stream producer/consumer properties can be set as Spring Cloud Stream properties for the app directly as well.
The consumer properties can be set for the inbound
channel name with the prefix app.[app/label name].spring.cloud.stream.bindings.<channelName>.consumer.
. The producer properties can be set for the outbound
channel name with the prefix app.[app/label name].spring.cloud.stream.bindings.<channelName>.producer.
.
Consider the following example:
dataflow:> stream create --definition "time | log" --name ticktock
The stream can be deployed with producer and consumer properties, as follows:
dataflow:>stream deploy ticktock --properties "app.time.spring.cloud.stream.bindings.output.producer.requiredGroups=myGroup,app.time.spring.cloud.stream.bindings.output.producer.headerMode=raw,app.log.spring.cloud.stream.bindings.input.consumer.concurrency=3,app.log.spring.cloud.stream.bindings.input.consumer.maxAttempts=5"
The binder
-specific producer and consumer properties can also be specified in a similar way, as shown in the following example:
dataflow:>stream deploy ticktock --properties "app.time.spring.cloud.stream.rabbit.bindings.output.producer.autoBindDlq=true,app.log.spring.cloud.stream.rabbit.bindings.input.consumer.transacted=true"
Passing Stream Partition Properties
A common pattern in stream processing is to partition the data as it is streamed. This entails deploying multiple instances of a message-consuming app and using content-based routing so that messages with a given key (as determined at runtime) are always routed to the same app instance. You can pass the partition properties during stream deployment to declaratively configure a partitioning strategy to route each message to a specific consumer instance.
The following list shows variations of deploying partitioned streams:
-
app.[app/label name].producer.partitionKeyExtractorClass: The class name of a
PartitionKeyExtractorStrategy
(default:null
) -
app.[app/label name].producer.partitionKeyExpression: A SpEL expression, evaluated against the message, to determine the partition key. Only applies if
partitionKeyExtractorClass
is null. If both are null, the app is not partitioned (default:null
) -
app.[app/label name].producer.partitionSelectorClass: The class name of a
PartitionSelectorStrategy
(default:null
) -
app.[app/label name].producer.partitionSelectorExpression: A SpEL expression, evaluated against the partition key, to determine the partition index to which the message is routed. The final partition index is the return value (an integer) modulo
[nextModule].count
. If both the class and expression are null, the underlying binder’s defaultPartitionSelectorStrategy
is applied to the key (default:null
)
In summary, an app is partitioned if its count is > 1 and the previous app has a
partitionKeyExtractorClass
or partitionKeyExpression
(partitionKeyExtractorClass
takes precedence).
When a partition key is extracted, the partitioned app instance is determined by
invoking the partitionSelectorClass
, if present, or the partitionSelectorExpression % partitionCount
.
partitionCount
is application count, in the case of RabbitMQ, or the underlying
partition count of the topic, in the case of Kafka.
If neither a partitionSelectorClass
nor a partitionSelectorExpression
is
present, the result is key.hashCode() % partitionCount
.
Passing application content type properties
In a stream definition, you can specify that the input or the output of an application must be converted to a different type.
You can use the inputType
and outputType
properties to specify the content type for the incoming data and outgoing data, respectively.
For example, consider the following stream:
dataflow:>stream create tuple --definition "http | filter --inputType=application/x-spring-tuple
--expression=payload.hasFieldName('hello') | transform --expression=payload.getValue('hello').toUpperCase()
| log" --deploy
The http
app is expected to send the data in JSON and the filter
app receives the JSON data
and processes it as a Spring Tuple.
In order to do so, we use the inputType
property on the filter app to convert the data into the expected Spring Tuple format.
The transform
application processes the Tuple data and sends the processed data to the downstream log
application.
Consider the following example of sending some data to the http
application:
dataflow:>http post --data {"hello":"world","something":"somethingelse"} --contentType application/json --target localhost:<http-port>
At the log application, you see the content as follows:
INFO 18745 --- [transform.tuple-1] log.sink : WORLD
Depending on how applications are chained, the content type conversion can be specified either as an --outputType
in the upstream app or as an --inputType
in the downstream app.
For instance, in the above stream, instead of specifying the --inputType
on the 'transform' application to convert, the option --outputType=application/x-spring-tuple
can also be specified on the 'http' application.
For the complete list of message conversion and message converters, please refer to Spring Cloud Stream {spring-cloud-stream-docs}#contenttypemanagement[documentation].
Overriding Application Properties During Stream Deployment
Application properties that are defined during deployment override the same properties defined during the stream creation.
For example, the following stream has application properties defined during stream creation:
dataflow:> stream create --definition "time --fixed-delay=5 | log --level=WARN" --name ticktock
To override these application properties, you can specify the new property values during deployment, as follows:
dataflow:>stream deploy ticktock --properties "app.time.fixed-delay=4,app.log.level=ERROR"
28.4. Destroying a Stream
You can delete a stream by issuing the stream destroy
command from the shell, as follows:
dataflow:> stream destroy --name ticktock
If the stream was deployed, it is undeployed before the stream definition is deleted.
28.5. Undeploying a Stream
Often you want to stop a stream but retain the name and definition for future use. In that case, you can undeploy
the stream by name.
dataflow:> stream undeploy --name ticktock
dataflow:> stream deploy --name ticktock
You can issue the deploy
command at a later time to restart it.
dataflow:> stream deploy --name ticktock
29. Stream Lifecycle with Skipper
An additional lifecycle stage of Stream is available if you run in "skipper" mode.
Skipper is a server that you discover Spring Boot applications and manage their lifecycle on multiple Cloud Platforms.
Applications in Skipper are bundled as packages that contain the application’s resource location, application properties and deployment properites.
You can think Skipper packages as analogous to packages found in tools such as apt-get
or brew
.
When Data Flow deploys a Stream, it will generate and upload a package to Skipper that represents the applications in the Stream. Subsequent commands to upgrade or rollback the applications within the Stream are passed through to Skipper. In addition, the Stream definition is reverse engineered from the package and the status of the Stream is also delegated to Skipper.
29.1. Register a Versioned Stream App
Skipper extends the Register a Stream App lifecycle with support of multi-versioned stream applications. This allows to upgrade or rollback those applications at runtime using the deployment properties.
Register a versioned stream application using the app register
command. You must provide a unique name, application type, and a URI that can be resolved to the app artifact.
For the type, specify "source", "processor", or "sink". The version is resolved from the URI. Here are a few examples:
dataflow:>app register --name mysource --type source --uri maven://com.example:mysource:0.0.1
dataflow:>app register --name mysource --type source --uri maven://com.example:mysource:0.0.2
dataflow:>app register --name mysource --type source --uri maven://com.example:mysource:0.0.3
dataflow:>app list --id source:mysource
╔══════════════════╤═════════╤════╤════╗
║ source │processor│sink│task║
╠══════════════════╪═════════╪════╪════╣
║> mysource-0.0.1 <│ │ │ ║
║mysource-0.0.2 │ │ │ ║
║mysource-0.0.3 │ │ │ ║
╚══════════════════╧═════════╧════╧════╝
The application URI should conform to one the following schema formats:
-
maven schema
maven://<groupId>:<artifactId>[:<extension>[:<classifier>]]:<version>
-
http schema
http://<web-path>/<artifactName>-<version>.jar
-
file schema
file:///<local-path>/<artifactName>-<version>.jar
-
docker schema
docker:<docker-image-path>/<imageName>:<version>
The URI <version> part is compulsory for the versioned stream applications
|
Multiple versions can be registered for the same applications (e.g. same name and type) but only one can be set as default. The default version is used for deploying Streams.
The first time an application is registered it will be marked as default. The default application version can be altered with the app default
command:
dataflow:>app default --id source:mysource --version 0.0.2
dataflow:>app list --id source:mysource
╔══════════════════╤═════════╤════╤════╗
║ source │processor│sink│task║
╠══════════════════╪═════════╪════╪════╣
║mysource-0.0.1 │ │ │ ║
║> mysource-0.0.2 <│ │ │ ║
║mysource-0.0.3 │ │ │ ║
╚══════════════════╧═════════╧════╧════╝
The app list --id <type:name>
command lists all versions for a given stream application.
The app unregister
command has an optional --version
parameter to specify the app version to unregister.
dataflow:>app unregister --name mysource --type source --version 0.0.1
dataflow:>app list --id source:mysource
╔══════════════════╤═════════╤════╤════╗
║ source │processor│sink│task║
╠══════════════════╪═════════╪════╪════╣
║> mysource-0.0.2 <│ │ │ ║
║mysource-0.0.3 │ │ │ ║
╚══════════════════╧═════════╧════╧════╝
If a --version
is not specified, the default version is unregistered.
All applications in a stream should have a default version set for the stream to be deployed.
Otherwise they will be treated as unregistered application during the deployment.
Use the |
app default --id source:mysource --version 0.0.3
dataflow:>app list --id source:mysource
╔══════════════════╤═════════╤════╤════╗
║ source │processor│sink│task║
╠══════════════════╪═════════╪════╪════╣
║mysource-0.0.2 │ │ │ ║
║> mysource-0.0.3 <│ │ │ ║
╚══════════════════╧═════════╧════╧════╝
The stream deploy
necessitates default app versions to be set.
The stream update
and stream rollback
commands though can use all (default and non-default) registered app versions.
dataflow:>stream create foo --definition "mysource | log"
This will create stream using the default mysource version (0.0.3). Then we can update the version to 0.0.2 like this:
dataflow:>stream update foo --properties version.mysource=0.0.2
Only pre-registered applications can be used to |
An attempt to update the mysource
to version 0.0.1
(not registered) will fail!
29.2. Creating and Deploying a Stream
You create and deploy a stream by using Skipper in two steps:
-
Creating the stream definition.
-
Deploying the stream.
The following example shows the two steps in action:
dataflow:> stream create --name httptest --definition "http --server.port=9000 | log"
dataflow:> stream deploy --name httptest
The stream info
command shows useful information about the stream, including the deployment properties, as shown (with its output) in the following example:
dataflow:>stream info httptest
╔══════════════════════════════╤══════════════════════════════╤════════════════════════════╗
║ Name │ DSL │ Status ║
╠══════════════════════════════╪══════════════════════════════╪════════════════════════════╣
║httptest │http --server.port=9000 | log │deploying ║
╚══════════════════════════════╧══════════════════════════════╧════════════════════════════╝
Stream Deployment properties: {
"log" : {
"spring.cloud.deployer.indexed" : "true",
"spring.cloud.deployer.group" : "httptest",
"maven://org.springframework.cloud.stream.app:log-sink-rabbit" : "1.1.0.RELEASE"
},
"http" : {
"spring.cloud.deployer.group" : "httptest",
"maven://org.springframework.cloud.stream.app:http-source-rabbit" : "1.1.0.RELEASE"
}
}
There is an important optional command argument (called --platformName
) to the stream deploy
command.
Skipper can be configured to deploy to multiple platforms.
Skipper is pre-configured with a platform named default
, which deploys applications to the local machine where Skipper is running.
The default value of the command line argument --platformName
is default
.
If you commonly deploy to one platform, when installing Skipper, you can override the configuration of the default
platform.
Otherwise, specify the platformName
to one of the values returned by the stream platform-list
command.
29.3. Updating a Stream
To update the stream, use the command stream update
which takes as a command argument either --properties
or --propertiesFile
.
You can pass in values to these command arguments in the same format as when deploy the stream with or without Skipper.
There is an important new top level prefix available when using Skipper, which is version
.
If the Stream http | log
was deployed, and the version of log
which registered at the time of deployment was 1.1.0.RELEASE
, the following command will update the Stream to use the 1.2.0.RELEASE
of the log application.
Before updating the stream with the specific version of the app, we need to make sure that the app is registered with that version.
dataflow:>app register --name log --type sink --uri maven://org.springframework.cloud.stream.app:log-sink-rabbit:1.2.0.RELEASE
Successfully registered application 'sink:log'
dataflow:>stream update --name httptest --properties version.log=1.2.0.RELEASE
Only pre-registered application versions can be used to |
To verify the deployment properties and the updated version, we can use stream info
, as shown (with its output) in the following example:
dataflow:>stream info httptest
╔══════════════════════════════╤══════════════════════════════╤════════════════════════════╗
║ Name │ DSL │ Status ║
╠══════════════════════════════╪══════════════════════════════╪════════════════════════════╣
║httptest │http --server.port=9000 | log │deploying ║
╚══════════════════════════════╧══════════════════════════════╧════════════════════════════╝
Stream Deployment properties: {
"log" : {
"spring.cloud.deployer.indexed" : "true",
"spring.cloud.deployer.count" : "1",
"spring.cloud.deployer.group" : "httptest",
"maven://org.springframework.cloud.stream.app:log-sink-rabbit" : "1.2.0.RELEASE"
},
"http" : {
"spring.cloud.deployer.group" : "httptest",
"maven://org.springframework.cloud.stream.app:http-source-rabbit" : "1.1.0.RELEASE"
}
}
29.4. Stream versions
Skipper keeps a history of the streams that were deployed.
After updating a Stream, there will be a second version of the stream.
You can query for the history of the versions using the command stream history --name <name-of-stream>
.
dataflow:>stream history --name httptest
╔═══════╤════════════════════════════╤════════╤════════════╤═══════════════╤════════════════╗
║Version│ Last updated │ Status │Package Name│Package Version│ Description ║
╠═══════╪════════════════════════════╪════════╪════════════╪═══════════════╪════════════════╣
║2 │Mon Nov 27 22:41:16 EST 2017│DEPLOYED│httptest │1.0.0 │Upgrade complete║
║1 │Mon Nov 27 22:40:41 EST 2017│DELETED │httptest │1.0.0 │Delete complete ║
╚═══════╧════════════════════════════╧════════╧════════════╧═══════════════╧════════════════╝
29.5. Stream Manifests
Skipper keeps a “manifest” of the all the applications, their application properties, and their deployment properties after all values have been substituted. This represents the final state of what was deployed to the platform. You can view the manifest for any of the versions of a Stream by using the following command:
stream manifest --name <name-of-stream> --releaseVersion <optional-version>
If the --releaseVersion
is not specified, the manifest for the last version is returned.
The following example shows the use of the manifest:
dataflow:>stream manifest --name httptest
Using the command results in the following output:
# Source: log.yml
apiVersion: skipper.spring.io/v1
kind: SpringCloudDeployerApplication
metadata:
name: log
spec:
resource: maven://org.springframework.cloud.stream.app:log-sink-rabbit
version: 1.2.0.RELEASE
applicationProperties:
spring.metrics.export.triggers.application.includes: integration**
spring.cloud.dataflow.stream.app.label: log
spring.cloud.stream.metrics.key: httptest.log.${spring.cloud.application.guid}
spring.cloud.stream.bindings.input.group: httptest
spring.cloud.stream.metrics.properties: spring.application.name,spring.application.index,spring.cloud.application.*,spring.cloud.dataflow.*
spring.cloud.dataflow.stream.name: httptest
spring.cloud.dataflow.stream.app.type: sink
spring.cloud.stream.bindings.input.destination: httptest.http
deploymentProperties:
spring.cloud.deployer.indexed: true
spring.cloud.deployer.group: httptest
spring.cloud.deployer.count: 1
---
# Source: http.yml
apiVersion: skipper.spring.io/v1
kind: SpringCloudDeployerApplication
metadata:
name: http
spec:
resource: maven://org.springframework.cloud.stream.app:http-source-rabbit
version: 1.2.0.RELEASE
applicationProperties:
spring.metrics.export.triggers.application.includes: integration**
spring.cloud.dataflow.stream.app.label: http
spring.cloud.stream.metrics.key: httptest.http.${spring.cloud.application.guid}
spring.cloud.stream.bindings.output.producer.requiredGroups: httptest
spring.cloud.stream.metrics.properties: spring.application.name,spring.application.index,spring.cloud.application.*,spring.cloud.dataflow.*
server.port: 9000
spring.cloud.stream.bindings.output.destination: httptest.http
spring.cloud.dataflow.stream.name: httptest
spring.cloud.dataflow.stream.app.type: source
deploymentProperties:
spring.cloud.deployer.group: httptest
The majority of the deployment and application properties were set by Data Flow to enable the applications to talk to each other and to send application metrics with identifying labels.
29.6. Rollback a Stream
You can rollback to a previous version of the stream using the command stream rollback
.
dataflow:>stream rollback --name httptest
The optional --releaseVersion
command argument adds the version of the stream.
If not specified, the rollback goes to the previous stream version.
29.7. Application Count
The application count is a dynamic property of the system. If, due to scaling at runtime, the application to be upgraded has 5 instances running, then 5 instances of the upgraded application are deployed.
29.8. Skipper’s Upgrade Strategy
Skipper has a simple 'red/black' upgrade strategy. It deploys the new version of the applications, using as many instances as the currently running version, and checks the /health
endpoint of the application.
If the health of the new application is good, then the previous application is undeployed.
If the health of the new application is bad, then all new applications are undeployed and the upgrade is considered to be not successful.
The upgrade strategy is not a rolling upgrade, so if five applications of the application are running, then in a sunny-day scenario, five of the new applications are also running before the older version is undeployed.
30. Stream DSL
This section covers additional features of the Stream DSL not covered in the Stream DSL introduction.
30.1. Tap a Stream
Taps can be created at various producer endpoints in a stream. For a stream such as that defined in the following example, taps can be created at the output of http
, step1
and step2
:
stream create --definition "http | step1: transform --expression=payload.toUpperCase() | step2: transform --expression=payload+'!' | log" --name mainstream --deploy
To create a stream that acts as a 'tap' on another stream requires specifying the source destination name
for the tap stream. The syntax for the source destination name is as follows:
:<streamName>.<label/appName>
To create a tap at the output of http
in the preceding stream, the source destination name is mainstream.http
To create a tap at the output of the first transform app in the stream above, the source destination name is mainstream.step1
The tap stream DSL resembles the following:
stream create --definition ":mainstream.http > counter" --name tap_at_http --deploy
stream create --definition ":mainstream.step1 > jdbc" --name tap_at_step1_transformer --deploy
Note the colon (:
) prefix before the destination names. The colon lets the parser recognize this as a destination name instead of an app name.
30.2. Using Labels in a Stream
When a stream is made up of multiple apps with the same name, they must be qualified with labels:
stream create --definition "http | firstLabel: transform --expression=payload.toUpperCase() | secondLabel: transform --expression=payload+'!' | log" --name myStreamWithLabels --deploy
30.3. Named Destinations
Instead of referencing a source or sink application, you can use a named destination.
A named destination corresponds to a specific destination name in the middleware broker (Rabbit, Kafka, and others).
When using the |
symbol, applications are connected to each other with messaging middleware destination names created by the Data Flow server.
In keeping with the Unix analogy, one can redirect standard input and output using the less-than (<
) and greater-than (>
) characters.
To specify the name of the destination, prefix it with a colon (:
).
For example, the following stream has the destination name in the source
position:
dataflow:>stream create --definition ":myDestination > log" --name ingest_from_broker --deploy
This stream receives messages from the destination called myDestination
, located at the broker, and connects it to the log
app. You can also create additional streams that consume data from the same named destination.
The following stream has the destination name in the sink
position:
dataflow:>stream create --definition "http > :myDestination" --name ingest_to_broker --deploy
It is also possible to connect two different destinations (source
and sink
positions) at the broker in a stream, as shown in the following example:
dataflow:>stream create --definition ":destination1 > :destination2" --name bridge_destinations --deploy
In the precding stream, both the destinations (destination1
and destination2
) are located in the broker. The messages flow from the source destination to the sink destination over a bridge
app that connects them.
30.4. Fan-in and Fan-out
By using named destinations, you can support fan-in and fan-out use cases. Fan-in use cases are when multiple sources all send data to the same named destination, as shown in the following example:
s3 > :data
ftp > :data
http > :data
The preceding example directs the data payloads from the Amazon S3, FTP, and HTTP sources to the same named destination called data
. Then an additional stream created with the following DSL expression would have all the data from those three sources sent to the file sink:
:data > file
The fan-out use case is when you determine the destination of a stream based on some information that is only known at runtime. In this case, the Router Application can be used to specify how to direct the incoming message to one of N named destinations.
A nice Video showing Fan-in and Fan-out behavior is also available.
31. Stream Java DSL
Instead of using the shell to create and deploy streams, you can use the Java-based DSL provided by the spring-cloud-dataflow-rest-client
module.
The Java DSL is a convenient wrapper around the DataFlowTemplate
class that enables creating and deploying streams programmatically.
To get started, you need to add the following dependency to your project, as follows:
<dependency>
<groupId>org.springframework.cloud</groupId>
<artifactId>spring-cloud-dataflow-rest-client</artifactId>
<version>1.6.0.M1</version>
</dependency>
A complete sample can be found in the Spring Cloud Data Flow Samples Repository. |
31.1. Overview
The classes at the heart of the Java DSL are StreamBuilder
, StreamDefinition
, Stream
, StreamApplication
, and DataFlowTemplate
.
The entry point is a builder
method on Stream
that takes an instance of a DataFlowTemplate
.
To create an instance of a DataFlowTemplate
, you need to provide a URI
location of the Data Flow Server.
Spring Boot auto-configuration for StreamBuilder
and DataFlowTemplate
is also available. The properties in DataFlowClientProperties can be used to configure the connection to the Data Flow server. The common property to start using is spring.cloud.dataflow.client.uri
Consider the following example, using the definition
style.
URI dataFlowUri = URI.create("http://localhost:9393");
DataFlowOperations dataFlowOperations = new DataFlowTemplate(dataFlowUri);
dataFlowOperations.appRegistryOperations().importFromResource(
"http://bit.ly/Darwin-GA-stream-applications-rabbit-maven", true);
StreamDefinition streamDefinition = Stream.builder(dataFlowOperations)
.name("ticktock")
.definition("time | log")
.create();
The create
method returns an instance of a StreamDefinition
representing a Stream that has been created but not deployed.
This is called the definition
style since it takes a single string for the stream definition, same as in the shell.
If applications have not yet been registered in the Data Flow server, you can use the DataFlowOperations
class to register them.
With the StreamDefinition
instance, you have methods available to deploy
or destory
the stream.
Stream stream = streamDefinition.deploy();
The Stream
instance provides getStatus
, destroy
and undeploy
methods to control and query the stream.
If you are going to immediately deploy the stream, there is no need to create a separate local variable of the type StreamDefinition
. You can just chain the calls together, as follows:
Stream stream = Stream.builder(dataFlowOperations)
.name("ticktock")
.definition("time | log")
.create()
.deploy();
The deploy
method is overloaded to take a java.util.Map
of deployment properties.
The StreamApplication
class is used in the 'fluent' Java DSL style and is discussed in the next section. The StreamBuilder
class is returned from the method Stream.builder(dataFlowOperations)
. In larger applications, it is common to create a single instance of the StreamBuilder
as a Spring @Bean
and share it across the application.
31.2. Java DSL styles
The Java DSL offers two styles to create Streams.
-
The
definition
style keeps the feel of using the pipes and filters textual DSL in the shell. This style is selected by using thedefinition
method after setting the stream name - for example,Stream.builder(dataFlowOperations).name("ticktock").definition(<definition goes here>)
. -
The
fluent
style lets you chain together sources, processors, and sinks by passing in an instance of aStreamApplication
. This style is selected by using thesource
method after setting the stream name - for example,Stream.builder(dataFlowOperations).name("ticktock").source(<stream application instance goes here>)
. You then chain togetherprocessor()
andsink()
methods to create a stream definition.
To demonstrate both styles, we include a simple stream that uses both approaches. A complete sample for you to get started can be found in the Spring Cloud Data Flow Samples Repository.
The following example demonstrates the definition approach:
public void definitionStyle() throws Exception{
DataFlowOperations dataFlowOperations = createDataFlowOperations();
Map<String, String> deploymentProperties = createDeploymentProperties();
Stream woodchuck = Stream.builder(dataFlowOperations)
.name("woodchuck")
.definition("http --server.port=9900 | splitter --expression=payload.split(' ') | log")
.create()
.deploy(deploymentProperties);
waitAndDestroy(woodchuck)
}
The following example demonstrates the fluent approach:
public void fluentStyle() throws Exception {
DataFlowOperations dataFlowOperations = createDataFlowOperations();
StreamApplication source = new StreamApplication("http").addProperty("server.port", 9900);
StreamApplication processor = new StreamApplication("splitter")
.addProperty("producer.partitionKeyExpression", "payload");
StreamApplication sink = new StreamApplication("log")
.addDeploymentProperty("count", 2);
Stream woodchuck = Stream.builder(dataFlowOperations).name("woodchuck")
.source(source)
.processor(processor)
.sink(sink)
.create()
.deploy(deploymentProperties);
waitAndDestroy(woodchuck)
}
The waitAndDestroy
method uses the getStatus
method to poll for the stream’s status, as shown in the following example:
private void waitAndDestroy(Stream stream) throws InterruptedException {
while(!stream.getStatus().equals("deployed")){
System.out.println("Wating for deployment of stream.");
Thread.sleep(5000);
}
System.out.println("Letting the stream run for 2 minutes.");
// Let the stream run for 2 minutes
Thread.sleep(120000);
System.out.println("Destroying stream");
stream.destroy();
}
When using the definition style, the deployment properties are specified as a java.util.Map
in the same manner as using the shell. The createDeploymentProperties
method is defined as follows:
private Map<String, String> createDeploymentProperties() {
Map<String, String> deploymentProperties = new HashMap<>();
deploymentProperties.put("app.splitter.producer.partitionKeyExpression", "payload");
deploymentProperties.put("deployer.log.memory","512");
deploymentProperties.put("deployer.log.count", "2");
return deploymentProperties;
}
Is this case, application properties are also overridden at deployment time in addition to setting the deployer property count
for the log application.
When using the fluent style, the deployment properties are added by using the method addDeploymentProperty
(for example, new StreamApplication("log").addDeploymentProperty("count", 2)
), and you do not need to prefix the property with deployer.<app_name>
.
In order to create and deploy your streams, you need to make sure that the corresponding apps have been registered in the DataFlow server first.
Attempting to create or deploy a stream that contains an unknown app throws an exception. You can register your application by using the DataFlowTemplate , as follows:
|
dataFlowOperations.appRegistryOperations().importFromResource(
"http://bit.ly/Darwin-GA-stream-applications-rabbit-maven", true);
The Stream applications can also be beans within your application that are injected in other classes to create Streams.
There are many ways to structure Spring applications, but one way is to have an @Configuration
class define the StreamBuilder
and StreamApplications
, as shown in the following example:
@Configuration
public StreamConfiguration {
@Bean
public StreamBuilder builder() {
return Stream.builder(new DataFlowTemplate(URI.create("http://localhost:9393")));
}
@Bean
public StreamApplication httpSource(){
return new StreamApplication("http");
}
@Bean
public StreamApplication logSink(){
return new StreamApplication("log");
}
}
Then in another class you can @Autowire
these classes and deploy a stream.
@Component
public MyStreamApps {
@Autowired
private StreamBuilder streamBuilder;
@Autowired
private StreamApplication httpSource;
@Autowired
private StreamApplication logSink;
public void deploySimpleStream() {
Stream simpleStream = streamBuilder.name("simpleStream")
.source(httpSource);
.sink(logSink)
.create()
.deploy();
}
}
This style lets you share StreamApplications
across multiple Streams.
31.3. Using the DeploymentPropertiesBuilder
Regardless of style you choose, the deploy(Map<String, String> deploymentProperties)
method allows customization of how your streams will be deployed. We made it a easier to create a map with properties by using a builder style, as well as creating static methods for some properties so you don’t need to remember the name of such properties. If you take the previous example of createDeploymentProperties
it could be rewritten as:
private Map<String, String> createDeploymentProperties() {
return new DeploymentPropertiesBuilder()
.count("log", 2)
.memory("log", 512)
.put("app.splitter.producer.partitionKeyExpression", "payload")
.build();
}
This utility class is meant to help with the creation of a Map and adds a few methods to assist with defining pre-defined properties.
32. Deploying using Skipper
If you desire to deploy your streams using Skipper, you need to pass certain properties to the server specific to a Skipper based deployment, for example selecting the target platfrom.
The SkipperDeploymentPropertiesBuilder
provides you all the properties in DeploymentPropertiesBuilder
and adds those needed for Skipper.
private Map<String, String> createDeploymentProperties() {
return new SkipperDeploymentPropertiesBuilder()
.count("log", 2)
.memory("log", 512)
.put("app.splitter.producer.partitionKeyExpression", "payload")
.platformName("pcf")
.build();
}
33. Stream Applications with Multiple Binder Configurations
In some cases, a stream can have its applications bound to multiple spring cloud stream binders when they are required to connect to different messaging middleware configurations. In those cases, it is important to make sure the applications are configured appropriately with their binder configurations. For example, consider the following stream:
http | transform --expression=payload.toUpperCase() | log
In this stream, each application connects to messaging middleware in the following way:
-
The HTTP source sends events to RabbitMQ (
rabbit1
). -
The Transform processor receives events from RabbitMQ (
rabbit1
) and sends the processed events into Kafka (kafka1
). -
The log sink receives events from Kafka (
kafka1
).
Here, rabbit1
and kafka1
are the binder names given in the spring cloud stream application properties.
Based on this setup, the applications have the following binder(s) in their classpath with the appropriate configuration:
-
HTTP: Rabbit binder
-
Transform: Both Kafka and Rabbit binders
-
Log: Kafka binder
The spring-cloud-stream binder
configuration properties can be set within the applications themselves.
If not, they can be passed through deployment
properties when the stream is deployed as shown in the following example:
dataflow:>stream create --definition "http | transform --expression=payload.toUpperCase() | log" --name mystream
dataflow:>stream deploy mystream --properties "app.http.spring.cloud.stream.bindings.output.binder=rabbit1,app.transform.spring.cloud.stream.bindings.input.binder=rabbit1,
app.transform.spring.cloud.stream.bindings.output.binder=kafka1,app.log.spring.cloud.stream.bindings.input.binder=kafka1"
One can override any of the binder configuration properties by specifying them through deployment properties.
34. Examples
This chapter includes the following examples:
You can find links to more samples in the “[dataflow-samples]” chapter.
34.1. Simple Stream Processing
As an example of a simple processing step, we can transform the payload of the HTTP posted data to upper case by using the following stream definition:
http | transform --expression=payload.toUpperCase() | log
To create this stream enter the following command in the shell
dataflow:> stream create --definition "http | transform --expression=payload.toUpperCase() | log" --name mystream --deploy
The following example uses a shell command to post some data:
dataflow:> http post --target localhost:1234 --data "hello"
The preceding example results in an upper-case 'HELLO' in the log, as follows:
2016-06-01 09:54:37.749 INFO 80083 --- [ kafka-binder-] log.sink : HELLO
34.2. Stateful Stream Processing
To demonstrate the data partitioning functionality, the following listing deploys a stream with Kafka as the binder:
dataflow:>stream create --name words --definition "http --server.port=9900 | splitter --expression=payload.split(' ') | log"
Created new stream 'words'
dataflow:>stream deploy words --properties "app.splitter.producer.partitionKeyExpression=payload,deployer.log.count=2"
Deployed stream 'words'
dataflow:>http post --target http://localhost:9900 --data "How much wood would a woodchuck chuck if a woodchuck could chuck wood"
> POST (text/plain;Charset=UTF-8) http://localhost:9900 How much wood would a woodchuck chuck if a woodchuck could chuck wood
> 202 ACCEPTED
You should then see the following in the server logs:
2016-06-05 18:33:24.982 INFO 58039 --- [nio-9393-exec-9] o.s.c.d.spi.local.LocalAppDeployer : deploying app words.log instance 0
Logs will be in /var/folders/c3/ctx7_rns6x30tq7rb76wzqwr0000gp/T/spring-cloud-dataflow-694182453710731989/words-1465176804970/words.log
2016-06-05 18:33:24.988 INFO 58039 --- [nio-9393-exec-9] o.s.c.d.spi.local.LocalAppDeployer : deploying app words.log instance 1
Logs will be in /var/folders/c3/ctx7_rns6x30tq7rb76wzqwr0000gp/T/spring-cloud-dataflow-694182453710731989/words-1465176804970/words.log
When you review the words.log instance 0
logs, you should see the following:
2016-06-05 18:35:47.047 INFO 58638 --- [ kafka-binder-] log.sink : How
2016-06-05 18:35:47.066 INFO 58638 --- [ kafka-binder-] log.sink : chuck
2016-06-05 18:35:47.066 INFO 58638 --- [ kafka-binder-] log.sink : chuck
When you review the words.log instance 1
logs, you shoul see the following:
2016-06-05 18:35:47.047 INFO 58639 --- [ kafka-binder-] log.sink : much
2016-06-05 18:35:47.066 INFO 58639 --- [ kafka-binder-] log.sink : wood
2016-06-05 18:35:47.066 INFO 58639 --- [ kafka-binder-] log.sink : would
2016-06-05 18:35:47.066 INFO 58639 --- [ kafka-binder-] log.sink : a
2016-06-05 18:35:47.066 INFO 58639 --- [ kafka-binder-] log.sink : woodchuck
2016-06-05 18:35:47.067 INFO 58639 --- [ kafka-binder-] log.sink : if
2016-06-05 18:35:47.067 INFO 58639 --- [ kafka-binder-] log.sink : a
2016-06-05 18:35:47.067 INFO 58639 --- [ kafka-binder-] log.sink : woodchuck
2016-06-05 18:35:47.067 INFO 58639 --- [ kafka-binder-] log.sink : could
2016-06-05 18:35:47.067 INFO 58639 --- [ kafka-binder-] log.sink : wood
This example has shown that payload splits that contain the same word are routed to the same application instance.
34.3. Other Source and Sink Application Types
This example shows something a bit more complicated: swapping out the time
source for something else. Another supported source type is http
, which accepts data for ingestion over HTTP POSTs. Note that the http
source accepts data on a different port from the Data Flow Server (default 8080). By default, the port is randomly assigned.
To create a stream using an http
source but still using the same log
sink, we would change the original command in the Simple Stream Processing example to the following:
`dataflow:> stream create --definition "http | log" --name myhttpstream --deploy
The preceding command produces the following output from the server:
2016-06-01 09:47:58.920 INFO 79016 --- [io-9393-exec-10] o.s.c.d.spi.local.LocalAppDeployer : deploying app myhttpstream.log instance 0
Logs will be in /var/folders/wn/8jxm_tbd1vj28c8vj37n900m0000gn/T/spring-cloud-dataflow-912434582726479179/myhttpstream-1464788878747/myhttpstream.log
2016-06-01 09:48:06.396 INFO 79016 --- [io-9393-exec-10] o.s.c.d.spi.local.LocalAppDeployer : deploying app myhttpstream.http instance 0
Logs will be in /var/folders/wn/8jxm_tbd1vj28c8vj37n900m0000gn/T/spring-cloud-dataflow-912434582726479179/myhttpstream-1464788886383/myhttpstream.http
Note that we do not see any other output this time until we actually post some data (by using a shell command). In order to see the randomly assigned port on which the http source is listening, run the following command:
dataflow:> runtime apps
You should see that the corresponding http
source has a url
property containing the host and port information on which it is listening. You are now ready to post to that url, as shown in the following example:
dataflow:> http post --target http://localhost:1234 --data "hello"
dataflow:> http post --target http://localhost:1234 --data "goodbye"
The stream then funnels the data from the http source to the output log implemented by the log sink, yielding output similar to the following:
2016-06-01 09:50:22.121 INFO 79654 --- [ kafka-binder-] log.sink : hello
2016-06-01 09:50:26.810 INFO 79654 --- [ kafka-binder-] log.sink : goodbye
We could also change the sink implementation. You could pipe the output to a file (file
), to hadoop (hdfs
), or to any of the other sink applications that are available. You can also define your own applications.
Streams deployed using Skipper
We will proceed with the assumption that Spring Cloud Data Flow, Spring Cloud Skipper, RDBMS, and desired messaging middleware is up and running in minikube.
$ kubectl get all
NAME READY STATUS RESTARTS AGE
po/mysql-777890292-z0dsw 1/1 Running 0 38m
po/rabbitmq-317767540-2qzrr 1/1 Running 0 38m
po/redis-4054078334-37m0l 1/1 Running 0 38m
po/scdf-server-2734071167-bjd3g 1/1 Running 0 48s
po/skipper-2408247821-50z31 1/1 Running 0 3m
...
...
To start the Data Flow Shell for the Data Flow server running in skipper
mode:
$ java -jar spring-cloud-dataflow-shell-1.6.0.M1.jar --dataflow.mode=skipper
If the Data Flow Server and shell are not running on the same host, point the shell to the Data Flow server URL.
Use the kubectl get svc scdf-server
command to locate the EXTERNAL_IP address assigned to scdf-server
, we will use that to connect from the shell.
$ 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
So the URL you need to use is in this case 130.211.203.246
If you are using Minikube then you don’t have an external load balancer and the EXTERNAL-IP will show as <pending>
. You need to use the NodePort assigned for the skipper
service. Use this command to look up the URL to use:
$ minikube service --url scdf-server
http://192.168.99.100:31991
Configure the Data Flow server URI with the following command using the default user and password settings:
server-unknown:>dataflow config server --username user --password password --uri http://130.211.203.246
Successfully targeted http://130.211.203.246
dataflow:>
Alternatively, pass in the command line option --dataflow.uri
. The shell’s command line option --help
shows what is available.
Verify the registered platforms in Skipper.
dataflow:>stream platform-list
╔════════╤══════════╤════════════════════════════════════════════════════════════════════════════════════════════════╗
║ Name │ Type │ Description ║
╠════════╪══════════╪════════════════════════════════════════════════════════════════════════════════════════════════╣
║minikube│kubernetes│master url = [https://kubernetes.default.svc/], namespace = [default], api version = [v1] ║
╚════════╧══════════╧════════════════════════════════════════════════════════════════════════════════════════════════╝
Let’s start with deploying a stream with the time-source
pointing to 1.3.0.RELEASE and log-sink
pointing
to 1.2.0.RELEASE. The goal is to rolling upgrade the log-sink
application to 1.3.0.RELEASE.
dataflow:>app register --type source --name time --uri docker://springcloudstream/time-source-rabbit:1.3.0.RELEASE --metadata-uri maven://org.springframework.cloud.stream.app:time-source-rabbit:jar:metadata:1.3.0.RELEASE
Successfully registered application 'source:time'
dataflow:>app register --type sink --name log --uri docker://springcloudstream/log-sink-rabbit:1.2.0.RELEASE --metadata-uri maven://org.springframework.cloud.stream.app:log-sink-rabbit:jar:metadata:1.2.0.RELEASE
Successfully registered application 'sink:log'
dataflow:>app info source:time
Information about source application 'time':
Version: '1.3.0.RELEASE':
Default application version: 'true':
Resource URI: docker://springcloudstream/time-source-rabbit:1.3.0.RELEASE
╔══════════════════════════════╤══════════════════════════════╤══════════════════════════════╤══════════════════════════════╗
║ Option Name │ Description │ Default │ Type ║
╠══════════════════════════════╪══════════════════════════════╪══════════════════════════════╪══════════════════════════════╣
║trigger.time-unit │The TimeUnit to apply to delay│<none> │java.util.concurrent.TimeUnit ║
║ │values. │ │ ║
║trigger.fixed-delay │Fixed delay for periodic │1 │java.lang.Integer ║
║ │triggers. │ │ ║
║trigger.cron │Cron expression value for the │<none> │java.lang.String ║
║ │Cron Trigger. │ │ ║
║trigger.initial-delay │Initial delay for periodic │0 │java.lang.Integer ║
║ │triggers. │ │ ║
║trigger.max-messages │Maximum messages per poll, -1 │1 │java.lang.Long ║
║ │means infinity. │ │ ║
║trigger.date-format │Format for the date value. │<none> │java.lang.String ║
╚══════════════════════════════╧══════════════════════════════╧══════════════════════════════╧══════════════════════════════╝
dataflow:>app info sink:log
Information about sink application 'log':
Version: '1.2.0.RELEASE':
Default application version: 'true':
Resource URI: docker://springcloudstream/log-sink-rabbit:1.2.0.RELEASE
╔══════════════════════════════╤══════════════════════════════╤══════════════════════════════╤══════════════════════════════╗
║ Option Name │ Description │ Default │ Type ║
╠══════════════════════════════╪══════════════════════════════╪══════════════════════════════╪══════════════════════════════╣
║log.name │The name of the logger to use.│<none> │java.lang.String ║
║log.level │The level at which to log │<none> │org.springframework.integratio║
║ │messages. │ │n.handler.LoggingHandler$Level║
║log.expression │A SpEL expression (against the│payload │java.lang.String ║
║ │incoming message) to evaluate │ │ ║
║ │as the logged message. │ │ ║
╚══════════════════════════════╧══════════════════════════════╧══════════════════════════════╧══════════════════════════════╝
-
Create stream.
dataflow:>stream create foo --definition "time | log" Created new stream 'foo'
-
Deploy stream.
dataflow:>stream deploy foo --platformName minikube Deployment request has been sent for stream 'foo'
While deploying the stream, we are supplying
--platformName
and that indicates the platform repository (i.e.,minikube
) to use when deploying the stream applications via Skipper. -
List pods.
$ kubectl get pods NAME READY STATUS RESTARTS AGE foo-log-v1-0-2k4r8 1/1 Running 0 2m foo-time-v1-qhdqq 1/1 Running 0 2m mysql-777890292-z0dsw 1/1 Running 0 49m rabbitmq-317767540-2qzrr 1/1 Running 0 49m redis-4054078334-37m0l 1/1 Running 0 49m scdf-server-2734071167-bjd3g 1/1 Running 0 12m skipper-2408247821-50z31 1/1 Running 0 15m ... ...
-
Verify logs.
$ kubectl logs -f foo-log-v1-0-2k4r8 ... ... 2017-10-30 22:59:04.966 INFO 1 --- [ foo.time.foo-1] log-sink : 10/30/17 22:59:04 2017-10-30 22:59:05.968 INFO 1 --- [ foo.time.foo-1] log-sink : 10/30/17 22:59:05 2017-10-30 22:59:07.000 INFO 1 --- [ foo.time.foo-1] log-sink : 10/30/17 22:59:06
-
Verify the stream history.
dataflow:>stream history --name foo ╔═══════╤════════════════════════════╤════════╤════════════╤═══════════════╤════════════════╗ ║Version│ Last updated │ Status │Package Name│Package Version│ Description ║ ╠═══════╪════════════════════════════╪════════╪════════════╪═══════════════╪════════════════╣ ║1 │Mon Oct 30 16:18:28 PDT 2017│DEPLOYED│foo │1.0.0 │Install complete║ ╚═══════╧════════════════════════════╧════════╧════════════╧═══════════════╧════════════════╝
-
Verify the package manifest. The
log-sink
should be at 1.2.0.RELEASE.dataflow:>stream manifest --name foo --- # Source: log.yml apiVersion: skipper.spring.io/v1 kind: SpringCloudDeployerApplication metadata: "name": "log" spec: resource: "docker:springcloudstream/log-sink-rabbit" resourceMetadata: "docker:springcloudstream/log-sink-rabbit:jar:metadata:1.2.0.RELEASE" version: "1.2.0.RELEASE" applicationProperties: "spring.metrics.export.triggers.application.includes": "integration**" "spring.cloud.dataflow.stream.app.label": "log" "spring.cloud.stream.metrics.key": "foo.log.${spring.cloud.application.guid}" "spring.cloud.stream.bindings.input.group": "foo" "spring.cloud.stream.metrics.properties": "spring.application.name,spring.application.index,spring.cloud.application.*,spring.cloud.dataflow.*" "spring.cloud.stream.bindings.applicationMetrics.destination": "metrics" "spring.cloud.dataflow.stream.name": "foo" "spring.cloud.dataflow.stream.app.type": "sink" "spring.cloud.stream.bindings.input.destination": "foo.time" deploymentProperties: "spring.cloud.deployer.group": "foo" --- # Source: time.yml apiVersion: skipper.spring.io/v1 kind: SpringCloudDeployerApplication metadata: "name": "time" spec: resource: "docker:springcloudstream/time-source-rabbit" resourceMetadata: "docker:springcloudstream/time-source-rabbit:jar:metadata:1.3.0.RELEASE" version: "1.3.0.RELEASE" applicationProperties: "spring.metrics.export.triggers.application.includes": "integration**" "spring.cloud.dataflow.stream.app.label": "time" "spring.cloud.stream.metrics.key": "foo.time.${spring.cloud.application.guid}" "spring.cloud.stream.bindings.output.producer.requiredGroups": "foo" "spring.cloud.stream.metrics.properties": "spring.application.name,spring.application.index,spring.cloud.application.*,spring.cloud.dataflow.*" "spring.cloud.stream.bindings.applicationMetrics.destination": "metrics" "spring.cloud.stream.bindings.output.destination": "foo.time" "spring.cloud.dataflow.stream.name": "foo" "spring.cloud.dataflow.stream.app.type": "source" deploymentProperties: "spring.cloud.deployer.group": "foo"
-
Let’s register
log-sink
application version 1.3.0.RELEASE and update our stream to use itdataflow:>app register --name log --type sink --uri docker:springcloudstream/log-sink-rabbit:1.3.0.RELEASE --force Successfully registered application 'sink:log' dataflow:>stream update --name foo --properties version.log=1.3.0.RELEASE Update request has been sent for stream 'foo'
-
List pods.
$ kubectl get pods NAME READY STATUS RESTARTS AGE foo-log-v1-0-2k4r8 1/1 Terminating 0 3m foo-log-v2-0-fjnlt 0/1 Running 0 9s foo-time-v1-qhdqq 1/1 Running 0 3m mysql-777890292-z0dsw 1/1 Running 0 51m rabbitmq-317767540-2qzrr 1/1 Running 0 51m redis-4054078334-37m0l 1/1 Running 0 51m scdf-server-2734071167-bjd3g 1/1 Running 0 14m skipper-2408247821-50z31 1/1 Running 0 16m ... ...
Notice that there are two versions of the
log-sink
applications. Thefoo-log-v1-0-2k4r8
pod is going down and the newly spawnedfoo-log-v2-0-fjnlt
pod is bootstrapping. The version number is incremented and the version-number (v2
) is included in the new application name. -
Once the new pod is up and running, let’s verify the logs.
$ kubectl logs -f foo-log-v2-0-fjnlt ... ... 2017-10-30 23:24:30.016 INFO 1 --- [ foo.time.foo-1] log-sink : 10/30/17 23:24:30 2017-10-30 23:24:31.017 INFO 1 --- [ foo.time.foo-1] log-sink : 10/30/17 23:24:31 2017-10-30 23:24:32.018 INFO 1 --- [ foo.time.foo-1] log-sink : 10/30/17 23:24:32
-
Let’s look at the updated package manifest persisted in Skipper. We should now be seeing
log-sink
at 1.3.0.RELEASE.dataflow:>stream manifest --name foo --- # Source: log.yml apiVersion: skipper.spring.io/v1 kind: SpringCloudDeployerApplication metadata: "name": "log" spec: resource: "docker:springcloudstream/log-sink-rabbit" resourceMetadata: "docker:springcloudstream/log-sink-rabbit:jar:metadata:1.3.0.RELEASE" version: "1.3.0.RELEASE" applicationProperties: "spring.metrics.export.triggers.application.includes": "integration**" "spring.cloud.dataflow.stream.app.label": "log" "spring.cloud.stream.metrics.key": "foo.log.${spring.cloud.application.guid}" "spring.cloud.stream.bindings.input.group": "foo" "spring.cloud.stream.metrics.properties": "spring.application.name,spring.application.index,spring.cloud.application.*,spring.cloud.dataflow.*" "spring.cloud.stream.bindings.applicationMetrics.destination": "metrics" "spring.cloud.dataflow.stream.name": "foo" "spring.cloud.dataflow.stream.app.type": "sink" "spring.cloud.stream.bindings.input.destination": "foo.time" deploymentProperties: "spring.cloud.deployer.group": "foo" "spring.cloud.deployer.count": "1" --- # Source: time.yml apiVersion: skipper.spring.io/v1 kind: SpringCloudDeployerApplication metadata: "name": "time" spec: resource: "docker:springcloudstream/time-source-rabbit" resourceMetadata: "docker:springcloudstream/time-source-rabbit:jar:metadata:1.3.0.RELEASE" version: "1.3.0.RELEASE" applicationProperties: "spring.metrics.export.triggers.application.includes": "integration**" "spring.cloud.dataflow.stream.app.label": "time" "spring.cloud.stream.metrics.key": "foo.time.${spring.cloud.application.guid}" "spring.cloud.stream.bindings.output.producer.requiredGroups": "foo" "spring.cloud.stream.metrics.properties": "spring.application.name,spring.application.index,spring.cloud.application.*,spring.cloud.dataflow.*" "spring.cloud.stream.bindings.applicationMetrics.destination": "metrics" "spring.cloud.stream.bindings.output.destination": "foo.time" "spring.cloud.dataflow.stream.name": "foo" "spring.cloud.dataflow.stream.app.type": "source" deploymentProperties: "spring.cloud.deployer.group": "foo"
-
Verify stream history for the latest updates.
dataflow:>stream history --name foo ╔═══════╤════════════════════════════╤════════╤════════════╤═══════════════╤════════════════╗ ║Version│ Last updated │ Status │Package Name│Package Version│ Description ║ ╠═══════╪════════════════════════════╪════════╪════════════╪═══════════════╪════════════════╣ ║2 │Mon Oct 30 16:21:55 PDT 2017│DEPLOYED│foo │1.0.0 │Upgrade complete║ ║1 │Mon Oct 30 16:18:28 PDT 2017│DELETED │foo │1.0.0 │Delete complete ║ ╚═══════╧════════════════════════════╧════════╧════════════╧═══════════════╧════════════════╝
-
Rolling-back to the previous version is just a command away.
dataflow:>stream rollback --name foo Rollback request has been sent for the stream 'foo' ... ... dataflow:>stream history --name foo ╔═══════╤════════════════════════════╤════════╤════════════╤═══════════════╤════════════════╗ ║Version│ Last updated │ Status │Package Name│Package Version│ Description ║ ╠═══════╪════════════════════════════╪════════╪════════════╪═══════════════╪════════════════╣ ║3 │Mon Oct 30 16:22:51 PDT 2017│DEPLOYED│foo │1.0.0 │Upgrade complete║ ║2 │Mon Oct 30 16:21:55 PDT 2017│DELETED │foo │1.0.0 │Delete complete ║ ║1 │Mon Oct 30 16:18:28 PDT 2017│DELETED │foo │1.0.0 │Delete complete ║ ╚═══════╧════════════════════════════╧════════╧════════════╧═══════════════╧════════════════╝
Tasks
This section goes into more detail about how you can work with Spring Cloud Task. It covers topics such as creating and running task applications.
If you are just starting out with Spring Cloud Data Flow, you should probably read the “Getting Started” guide before diving into this section.
35. Introduction
A task executes a process on demand.
In the case of Spring Cloud Task, a task is a Spring Boot application that is annotated with @EnableTask
.
A user launches a task that performs a certain process, and, once complete, the task ends. Unlike a stream where a stream definition can have at most one deployment a single task definition can be launched multiple times simultaneously.
An example of a task would be a Spring Boot application that exports data from a JDBC repository to an HDFS instance.
Tasks record the start time and the end time as well as the boot exit code in a relational database.
The task implementation is based on the Spring Cloud Task project.
35.1. Application properties
Each application takes properties to customize its behavior. As an example, the timestamp
task format
setting establishes a output format that is different from the default value.
dataflow:> task create --definition "timestamp --format=\"yyyy\"" --name printTimeStamp
This timestamp
property is actually the same as the timestamp.format
property specified by the timestamp application.
Data Flow adds the ability to use the shorthand form format
instead of timestamp.format
.
One may also specify the longhand version as well, as shown in the following example:
dataflow:> task create --definition "timestamp --timestamp.format=\"yyyy\"" --name printTimeStamp
This shorthand behavior is discussed more in the section on Whitelisting application properties.
If you have registered application property metadata you can use tab completion in the shell after typing --
to get a list of candidate property names.
The shell provides tab completion for application properties. The shell command app info --name <appName> --type <appType>
provides additional documentation for all the supported properties.
The supported Task <appType> is task.
|
36. The Lifecycle of a Task
Before we dive deeper into the details of creating Tasks, we need to understand the typical lifecycle for tasks in the context of Spring Cloud Data Flow:
36.1. Creating a Task Application
While Spring Cloud Task does provide a number of out-of-the-box applications (at spring-cloud-task-app-starters), most task applications require custom development. To create a custom task application:
-
Use the Spring Initializer to create a new project, making sure to select the following starters:
-
Cloud Task
: This dependency is thespring-cloud-starter-task
. -
JDBC
: This dependency is thespring-jdbc
starter.
-
-
Within your new project, create a new class to serve as your main class, as follows:
@EnableTask @SpringBootApplication public class MyTask { public static void main(String[] args) { SpringApplication.run(MyTask.class, args); } }
-
With this class, you need one or more
CommandLineRunner
orApplicationRunner
implementations within your application. You can either implement your own or use the ones provided by Spring Boot (there is one for running batch jobs, for example). -
Packaging your application with Spring Boot into an über jar is done through the standard {spring-boot-docs-reference}/html/getting-started-first-application.html#getting-started-first-application-executable-jar[Spring Boot conventions]. The packaged application can be registered and deployed as noted below.
36.1.1. Task Database Configuration
When launching a task application, be sure that the database driver that is being used by Spring Cloud Data Flow is also a dependency on the task application. For example, if your Spring Cloud Data Flow is set to use Postgresql, be sure that the task application also has Postgresql as a dependency. |
When you run tasks externally (that is, from the command line) and you want Spring Cloud Data Flow to show the TaskExecutions in its UI, be sure that common datasource settings are shared among the both. By default, Spring Cloud Task uses a local H2 instance, and the execution is recorded to the database used by Spring Cloud Data Flow. |
36.2. Registering a Task Application
You can register a Task App with the App Registry by using the Spring Cloud Data Flow Shell app register
command.
You must provide a unique name and a URI that can be resolved to the app artifact. For the type, specify "task".
The following listing shows three examples:
dataflow:>app register --name task1 --type task --uri maven://com.example:mytask:1.0.2
dataflow:>app register --name task2 --type task --uri file:///Users/example/mytask-1.0.2.jar
dataflow:>app register --name task3 --type task --uri http://example.com/mytask-1.0.2.jar
When providing a URI with the maven
scheme, the format should conform to the following:
maven://<groupId>:<artifactId>[:<extension>[:<classifier>]]:<version>
If you would like to register multiple apps at one time, you can store them in a properties file where the keys are formatted as <type>.<name>
and the values are the URIs.
For example, the followinng listing would be a valid properties file:
task.foo=file:///tmp/foo.jar
task.bar=file:///tmp/bar.jar
Then you can use the app import
command and provide the location of the properties file by using the --uri
option, as follows:
app import --uri /tmp/task-apps.properties
For convenience, we have the static files with application-URIs (for both maven and docker) available for all the out-of-the-box Task app-starters. You can point to this file and import all the application-URIs in bulk. Otherwise, as explained earlier in this chapter, you can register them individually or have your own custom property file with only the required application-URIs in it. It is recommended, however, to have a “focused” list of desired application-URIs in a custom property file.
The following table lists the available static property files:
Artifact Type | Stable Release | SNAPSHOT Release |
---|---|---|
Maven |
||
Docker |
For example, if you would like to register all out-of-the-box task applications in bulk, you can do so with the following command:
dataflow:>app import --uri bit.ly/Clark-GA-task-applications-maven
You can also pass the --local
option (which is TRUE
by default) to indicate whether the properties file location should be resolved within the shell process itself.
If the location should be resolved from the Data Flow Server process, specify --local false
.
When using either app register
or app import
, if a task app is already registered with
the provided name, it is not overridden by default. If you would like to override the
pre-existing task app, then include the --force
option.
In some cases, the Resource is resolved on the server side. In other cases, the URI is passed to a runtime container instance where it is resolved. Consult the specific documentation of each Data Flow Server for more detail. |
36.3. Creating a Task Definition
You can create a task Definition from a task app by providing a definition name as well as
properties that apply to the task execution. Creating a task definition can be done through
the RESTful API or the shell. To create a task definition by using the shell, use the
task create
command to create the task definition, as shown in the following example:
dataflow:>task create mytask --definition "timestamp --format=\"yyyy\""
Created new task 'mytask'
A listing of the current task definitions can be obtained through the RESTful API or the shell.
To get the task definition list by using the shell, use the task list
command.
36.4. Launching a Task
An adhoc task can be launched through the RESTful API or the shell.
To launch an ad-hoc task through the shell, use the task launch
command, as shown in the following example:
dataflow:>task launch mytask
Launched task 'mytask'
When a task is launched, any properties that need to be passed as command line arguments to the task application can be set when launching the task, as follows:
dataflow:>task launch mytask --arguments "--server.port=8080 --custom=value"
The arguments need to be passed as space delimited values.
|
Additional properties meant for a TaskLauncher
itself can be passed in by using a --properties
option.
The format of this option is a comma-separated string of properties prefixed with app.<task definition name>.<property>
.
Properties are passed to TaskLauncher
as application properties.
It is up to an implementation to choose how those are passed into an actual task application.
If the property is prefixed with deployer
instead of app
, it is passed to TaskLauncher
as a deployment property and its meaning may be TaskLauncher
implementation specific.
dataflow:>task launch mytask --properties "deployer.timestamp.custom1=value1,app.timestamp.custom2=value2"
36.4.1. Common application properties
In addition to configuration through DSL, Spring Cloud Data Flow provides a mechanism for setting common properties to all the task applications that are launched by it.
This can be done by adding properties prefixed with spring.cloud.dataflow.applicationProperties.task
when starting the server.
When doing so, the server passes all the properties, without the prefix, to the instances it launches.
For example, all the launched applications can be configured to use the properties prop1
and prop2
by launching the Data Flow server with the following options:
--spring.cloud.dataflow.applicationProperties.task.prop1=value1
--spring.cloud.dataflow.applicationProperties.task.prop2=value2
This causes the properties, prop1=value1
and prop2=value2
, to be passed to all the launched applications.
Properties configured by using this mechanism have lower precedence than task deployment properties.
They are overridden if a property with the same key is specified at task launch time (for example, app.trigger.prop2
overrides the common property).
|
36.5. Reviewing Task Executions
Once the task is launched, the state of the task is stored in a relational DB. The state includes:
-
Task Name
-
Start Time
-
End Time
-
Exit Code
-
Exit Message
-
Last Updated Time
-
Parameters
A user can check the status of their task executions through the RESTful API or the shell.
To display the latest task executions through the shell, use the task execution list
command.
To get a list of task executions for just one task definition, add --name
and
the task definition name, for example task execution list --name foo
. To retrieve full
details for a task execution use the task execution status
command with the id of the task execution,
for example task execution status --id 549
.
36.6. Destroying a Task Definition
Destroying a Task Definition removes the definition from the definition repository.
This can be done through the RESTful API or the shell.
To destroy a task through the shell, use the task destroy
command, as shown in the following example:
dataflow:>task destroy mytask
Destroyed task 'mytask'
The task execution information for previously launched tasks for the definition remains in the task repository.
This does not stop any currently executing tasks for this definition. Instead, it removes the task definition from the database. |
37. Subscribing to Task/Batch Events
You can also tap into various task and batch events when the task is launched.
If the task is enabled to generate task or batch events (with the additional dependencies spring-cloud-task-stream
and, in the case of Kafka as the binder, spring-cloud-stream-binder-kafka
), those events are published during the task lifecycle.
By default, the destination names for those published events on the broker (Rabbit, Kafka, and others) are the event names themselves (for instance: task-events
, job-execution-events
, and so on).
dataflow:>task create myTask --definition “myBatchJob"
dataflow:>task launch myTask
dataflow:>stream create task-event-subscriber1 --definition ":task-events > log" --deploy
You can control the destination name for those events by specifying explicit names when launching the task, as follows:
dataflow:>task launch myTask --properties "spring.cloud.stream.bindings.task-events.destination=myTaskEvents"
dataflow:>stream create task-event-subscriber2 --definition ":myTaskEvents > log" --deploy
The following table lists the default task and batch event and destination names on the broker:
Event |
Destination |
Task events |
|
Job Execution events |
|
Step Execution events |
|
Item Read events |
|
Item Process events |
|
Item Write events |
|
Skip events |
|
38. Composed Tasks
Spring Cloud Data Flow lets a user create a directed graph where each node of the graph is a task application. This is done by using the DSL for composed tasks. A composed task can be created through the RESTful API, the Spring Cloud Data Flow Shell, or the Spring Cloud Data Flow UI.
38.1. Configuring the Composed Task Runner
Composed tasks are executed through a task application called the Composed Task Runner.
38.1.1. Registering the Composed Task Runner
By default, the Composed Task Runner application is not registered with Spring Cloud Data Flow. Consequently, to launch composed tasks, we must first register the Composed Task Runner as an application with Spring Cloud Data Flow, as follows:
app register --name composed-task-runner --type task --uri maven://org.springframework.cloud.task.app:composedtaskrunner-task:<DESIRED_VERSION>
You can also configure Spring Cloud Data Flow to use a different task definition name for the composed task runner.
This can be done by setting the spring.cloud.dataflow.task.composedTaskRunnerName
property to the name of your choice.
You can then register the composed task runner application with the name you set by using that property.
38.1.2. Configuring the Composed Task Runner
The Composed Task Runner application has a dataflow.server.uri
property that is used for validation and for launching child tasks.
This defaults to localhost:9393
. If you run a distributed Spring Cloud Data Flow server, as you would if you deploy the server on Cloud Foundry, YARN, or Kubernetes, you need to provide the URI that can be used to access the server.
You can either provide this dataflow.server.uri
property for the Composed Task Runner application when launching a composed task or you can provide a spring.cloud.dataflow.server.uri
property for the Spring Cloud Data Flow server when it is started.
For the latter case, the dataflow.server.uri
Composed Task Runner application property is automatically set when a composed task is launched.
In some cases, you may wish to execute an instance of the Composed Task Runner through the Task Launcher sink.
In that case, you must configure the Composed Task Runner to use the same datasource that the Spring Cloud Data Flow instance is using.
The datasource properties are set with the TaskLaunchRequest
through the use of the commandlineArguments
or the environmentProperties
switches.
This is because the Composed Task Runner monitors the task_executions
table to check the status of the tasks that it is running.
Using information from the table, it determines how it should navigate the graph.
Configuration Options
The ComposedTaskRunner task has the following options:
-
increment-instance-enabled Allows a single ComposedTaskRunner instance to be re-executed without changing the parameters. Default is false which means a ComposedTaskRunner instance can only be executed once with a given set of parameters, if true it can be re-executed. (Boolean, default: false). ComposedTaskRunner is built using Spring Batch and thus upon a successful execution the batch job is considered complete. To launch the same ComposedTaskRunner definition multiple times you must set the
increment-instance-enabled
property to true or change the parameters for the definition for each launch. -
interval-time-between-checks The amount of time in millis that the ComposedTaskRunner will wait between checks of the database to see if a task has completed. (Integer, default: 10000). ComposedTaskRunner uses the datastore to determine the status of each child tasks. This interval indicates to ComposedTaskRunner how often it should check the status its child tasks.
-
max-wait-time The maximum amount of time in millis that a individual step can run before the execution of the Composed task is failed (Integer, default: 0). Determines the maximum time each child task is allowed to run before the CTR will terminate with a failure. The default of
0
indicates no timeout. -
split-thread-allow-core-thread-timeout Specifies whether to allow split core threads to timeout. Default is false; (Boolean, default: false) Sets the policy governing whether core threads may timeout and terminate if no tasks arrive within the keep-alive time, being replaced if needed when new tasks arrive.
-
split-thread-core-pool-size Split’s core pool size. Default is 1; (Integer, default: 1) Each child task contained in a split requires a thread in order to execute. So for example a definition like:
<AAA || BBB || CCC> && <DDD || EEE>
would require a split-thread-core-pool-size of 3. This is because the largest split contains 3 child tasks. A count of 2 would mean thatAAA
andBBB
would run in parallel but CCC would wait until eitherAAA
orBBB
to finish in order to run. ThenDDD
andEEE
would run in parallel. -
split-thread-keep-alive-seconds Split’s thread keep alive seconds. Default is 60. (Integer, default: 60) If the pool currently has more than corePoolSize threads, excess threads will be terminated if they have been idle for more than the keepAliveTime.
-
split-thread-max-pool-size Split’s maximum pool size. Default is {@code Integer.MAX_VALUE} (Integer, default: <none>). Establish the maximum number of threads allowed for the thread pool.
-
split-thread-queue-capacity Capacity for Split’s BlockingQueue. Default is {@code Integer.MAX_VALUE}. (Integer, default: <none>)
-
If fewer than corePoolSize threads are running, the Executor always prefers adding a new thread rather than queuing.
-
If corePoolSize or more threads are running, the Executor always prefers queuing a request rather than adding a new thread.
-
If a request cannot be queued, a new thread is created unless this would exceed maximumPoolSize, in which case, the task will be rejected.
-
-
split-thread-wait-for-tasks-to-complete-on-shutdown Whether to wait for scheduled tasks to complete on shutdown, not interrupting running tasks and executing all tasks in the queue. Default is false; (Boolean, default: false)
Note when using the options above as environment variables, convert to uppercase, remove the dash character and replace with the underscore character. For example: increment-instance-enabled would be INCREMENT_INSTANCE_ENABLED.
38.2. The Lifecycle of a Composed Task
The lifecycle of a composed task has three parts:
38.2.1. Creating a Composed Task
The DSL for the composed tasks is used when creating a task definition through the task create command, as shown in the following example:
dataflow:> app register --name timestamp --type task --uri maven://org.springframework.cloud.task.app:timestamp-task:<DESIRED_VERSION>
dataflow:> app register --name mytaskapp --type task --uri file:///home/tasks/mytask.jar
dataflow:> task create my-composed-task --definition "mytaskapp && timestamp"
dataflow:> task launch my-composed-task
In the preceding example, we assume that the applications to be used by our composed task have not been registered yet.
Consequently, in the first two steps, we register two task applications.
We then create our composed task definition by using the task create
command.
The composed task DSL in the preceding example, when launched, runs mytaskapp and then runs the timestamp application.
But before we launch the my-composed-task
definition, we can view what Spring Cloud Data Flow generated for us.
This can be done by executing the task list command, as shown (including its output) in the following example:
dataflow:>task list
╔══════════════════════════╤══════════════════════╤═══════════╗
║ Task Name │ Task Definition │Task Status║
╠══════════════════════════╪══════════════════════╪═══════════╣
║my-composed-task │mytaskapp && timestamp│unknown ║
║my-composed-task-mytaskapp│mytaskapp │unknown ║
║my-composed-task-timestamp│timestamp │unknown ║
╚══════════════════════════╧══════════════════════╧═══════════╝
In the example, Spring Cloud Data Flow created three task definitions, one for each of the applications that makes up our composed task (my-composed-task-mytaskapp
and my-composed-task-timestamp
) as well as the composed task (my-composed-task
) definition.
We also see that each of the generated names for the child tasks is made up of the name of the composed task and the name of the application, separated by a dash -
(as in my-composed-task -
mytaskapp).
Task Application Parameters
The task applications that make up the composed task definition can also contain parameters, as shown in the following example:
dataflow:> task create my-composed-task --definition "mytaskapp --displayMessage=hello && timestamp --format=YYYY"
38.2.2. Launching a Composed Task
Launching a composed task is done the same way as launching a stand-alone task, as follows:
task launch my-composed-task
Once the task is launched, and assuming all the tasks complete successfully, you can see three task executions when executing a task execution list
, as shown in the following example:
dataflow:>task execution list
╔══════════════════════════╤═══╤════════════════════════════╤════════════════════════════╤═════════╗
║ Task Name │ID │ Start Time │ End Time │Exit Code║
╠══════════════════════════╪═══╪════════════════════════════╪════════════════════════════╪═════════╣
║my-composed-task-timestamp│713│Wed Apr 12 16:43:07 EDT 2017│Wed Apr 12 16:43:07 EDT 2017│0 ║
║my-composed-task-mytaskapp│712│Wed Apr 12 16:42:57 EDT 2017│Wed Apr 12 16:42:57 EDT 2017│0 ║
║my-composed-task │711│Wed Apr 12 16:42:55 EDT 2017│Wed Apr 12 16:43:15 EDT 2017│0 ║
╚══════════════════════════╧═══╧════════════════════════════╧════════════════════════════╧═════════╝
In the preceding example, we see that my-compose-task
launched and that it also launched the other tasks in sequential order.
All of them executed successfully with Exit Code
as 0
.
Passing properties to the child tasks
To set the properties for child tasks in a composed task graph at task launch time,
you would use the following format of app.<composed task definition name>.<child task app name>.<property>
.
Using the following Composed Task definition as an example:
dataflow:> task create my-composed-task --definition "mytaskapp && mytimestamp"
To have mytaskapp display 'HELLO' and set the mytimestamp timestamp format to 'YYYY' for the Composed Task definition, you would use the following task launch format:
task launch my-composed-task --properties "app.my-composed-task.mytaskapp.displayMessage=HELLO,app.my-composed-task.mytimestamp.timestamp.format=YYYY"
Similar to application properties, the deployer
properties can also be set for child tasks using the format format of deployer.<composed task definition name>.<child task app name>.<deployer-property>
.
task launch my-composed-task --properties "deployer.my-composed-task.mytaskapp.memory=2048m,app.my-composed-task.mytimestamp.timestamp.format=HH:mm:ss"
Launched task 'a1'
Passing arguments to the composed task runner
Command line arguments for the composed task runner can be passed using --arguments
option.
For example:
dataflow:>task create my-composed-task --definition "<aaa: timestamp || bbb: timestamp>"
Created new task 'my-composed-task'
dataflow:>task launch my-composed-task --arguments "--increment-instance-enabled=true --max-wait-time=50000 --split-thread-core-pool-size=4" --properties "app.my-composed-task.bbb.timestamp.format=dd/MM/yyyy HH:mm:ss"
Launched task 'my-composed-task'
Exit Statuses
The following list shows how the Exit Status is set for each step (task) contained in the composed task following each step execution:
-
If the
TaskExecution
has anExitMessage
, that is used as theExitStatus
. -
If no
ExitMessage
is present and theExitCode
is set to zero, then theExitStatus
for the step isCOMPLETED
. -
If no
ExitMessage
is present and theExitCode
is set to any non-zero number, theExitStatus
for the step isFAILED
.
38.2.3. Destroying a Composed Task
The command used to destroy a stand-alone task is the same as the command used to destroy a composed task.
The only difference is that destroying a composed task also destroys the child tasks associated with it.
The following example shows the task list before and after using the destroy
command:
dataflow:>task list
╔══════════════════════════╤══════════════════════╤═══════════╗
║ Task Name │ Task Definition │Task Status║
╠══════════════════════════╪══════════════════════╪═══════════╣
║my-composed-task │mytaskapp && timestamp│COMPLETED ║
║my-composed-task-mytaskapp│mytaskapp │COMPLETED ║
║my-composed-task-timestamp│timestamp │COMPLETED ║
╚══════════════════════════╧══════════════════════╧═══════════╝
...
dataflow:>task destroy my-composed-task
dataflow:>task list
╔═════════╤═══════════════╤═══════════╗
║Task Name│Task Definition│Task Status║
╚═════════╧═══════════════╧═══════════╝
38.2.4. Stopping a Composed Task
In cases where a composed task execution needs to be stopped, you can do so through the:
-
RESTful API
-
Spring Cloud Data Flow Dashboard
To stop a composed task through the dashboard, select the Jobs tab and click the Stop button next to the job execution that you want to stop.
The composed task run is stopped when the currently running child task completes.
The step associated with the child task that was running at the time that the composed task was stopped is marked as STOPPED
as well as the composed task job execution.
38.2.5. Restarting a Composed Task
In cases where a composed task fails during execution and the status of the composed task is FAILED
, the task can be restarted.
You can do so through the:
-
RESTful API
-
The shell
-
Spring Cloud Data Flow Dashboard
To restart a composed task through the shell, launch the task with the same parameters. To restart a composed task through the dashboard, select the Jobs tab and click the Restart button next to the job execution that you want to restart.
Restarting a Composed Task job that has been stopped (through the Spring Cloud Data Flow Dashboard or RESTful API) relaunches the STOPPED child task and then launches the remaining (unlaunched) child tasks in the specified order.
|
39. Composed Tasks DSL
Composed tasks can be run in three ways:
39.1. Conditional Execution
Conditional execution is expressed by using a double ampersand symbol (&&
).
This lets each task in the sequence be launched only if the previous task
successfully completed, as shown in the following example:
task create my-composed-task --definition "task1 && task2"
When the composed task called my-composed-task
is launched, it launches the task called task1
and, if it completes successfully, then the task called task2
is launched.
If task1
fails, then task2
does not launch.
You can also use the Spring Cloud Data Flow Dashboard to create your conditional execution, by using the designer to drag and drop applications that are required and connecting them together to create your directed graph, as shown in the following image:
The preceding diagram is a screen capture of the directed graph as it being created by using the Spring Cloud Data Flow Dashboard. You can see that are four components in the diagram that comprise a conditional execution:
-
Start icon: All directed graphs start from this symbol. There is only one.
-
Task icon: Represents each task in the directed graph.
-
End icon: Represents the termination of a directed graph.
-
Solid line arrow: Represents the flow conditional execution flow between:
-
Two applications.
-
The start control node and an application.
-
An application and the end control node.
-
-
End icon: All directed graphs end at this symbol.
You can view a diagram of your directed graph by clicking the Detail button next to the composed task definition on the Definitions tab. |
39.2. Transitional Execution
The DSL supports fine- grained control over the transitions taken during the execution of the directed graph.
Transitions are specified by providing a condition for equality based on the exit status of the previous task.
A task transition is represented by the following symbol ->
.
39.2.1. Basic Transition
A basic transition would look like the following:
task create my-transition-composed-task --definition "foo 'FAILED' → bar 'COMPLETED' → baz"
In the preceding example, foo
would launch, and, if it had an exit status of FAILED
, the bar
task would launch.
If the exit status of foo
was COMPLETED
, baz
would launch.
All other statuses returned by foo
have no effect, and the task would terminate normally.
Using the Spring Cloud Data Flow Dashboard to create the same " basic transition
" would resemble the following image:
The preceding diagram is a screen capture of the directed graph as it being created in the Spring Cloud Data Flow Dashboard. Notice that there are two different types of connectors:
-
Dashed line: Represents transitions from the application to one of the possible destination applications.
-
Solid line: Connects applications in a conditional execution or a connection between the application and a control node (start or end).
To create a transitional connector:
-
When creating a transition, link the application to each possible destination by using the connector.
-
Once complete, go to each connection and select it by clicking it.
-
A bolt icon appears.
-
Click that icon.
-
Enter the exit status required for that connector.
-
The solid line for that connector turns to a dashed line.
39.2.2. Transition With a Wildcard
Wildcards are supported for transitions by the DSL, as shown in the following:
task create my-transition-composed-task --definition "foo 'FAILED' → bar '*' → baz"
In the preceding example, foo
would launch, and, if it had an exit status of FAILED
, the bar
task would launch.
For any exit status of foo
other than FAILED
, baz
would launch.
Using the Spring Cloud Data Flow Dashboard to create the same “transition with wildcard” would resemble the following image:
39.2.3. Transition With a Following Conditional Execution
A transition can be followed by a conditional execution so long as the wildcard is not used, as shown in the following example:
task create my-transition-conditional-execution-task --definition "foo 'FAILED' → bar 'UNKNOWN' → baz && qux && quux"
In the preceding example, foo
would launch, and, if it had an exit status of FAILED
, the bar
task would launch.
If foo
had an exit status of UNKNOWN
, baz
would launch.
For any exit status of foo
other than FAILED
or UNKNOWN
, qux
would launch and, upon successful completion, quux
would launch.
Using the Spring Cloud Data Flow Dashboard to create the same “transition with conditional execution” would resemble the following image:
In this diagram we see the dashed line (transition) connecting the foo application to the target applications, but a solid line connecting the conditional executions between foo , qux , and quux .
|
39.3. Split Execution
Splits allow multiple tasks within a composed task to be run in parallel.
It is denoted by using angle brackets (<>
) to group tasks and flows that are to be run in parallel.
These tasks and flows are separated by the double pipe ||
symbol, as shown in the following example:
task create my-split-task --definition "<foo || bar || baz>"
The preceding example above launches tasks foo
, bar
and baz
in parallel.
Using the Spring Cloud Data Flow Dashboard to create the same “split execution” would resemble the following image:
With the task DSL, a user may also execute multiple split groups in succession, as shown in the following example:
`task create my-split-task --definition "<foo || bar || baz> && <qux || quux>"'
In the preceding example, tasks foo
, bar
, and baz
are launched in parallel.
Once they all complete, then tasks qux
and quux
are launched in parallel.
Once they complete, the composed task ends.
However, if foo
, bar
, or baz
fails, the split containing qux
and quux
does not launch.
Using the Spring Cloud Data Flow Dashboard to create the same “split with multiple groups” would resemble the following image:
Notice that there is a SYNC
control node that is inserted by the designer when
connecting two consecutive splits.
39.3.1. Split Containing Conditional Execution
A split can also have a conditional execution within the angle brackets, as shown in the following example:
task create my-split-task --definition "<foo && bar || baz>"
In the preceding example, we see that foo
and baz
are launched in parallel.
However, bar
does not launch until foo
completes successfully.
Using the Spring Cloud Data Flow Dashboard to create the same " split containing conditional execution
" resembles the following image:
40. Launching Tasks from a Stream
You can launch a task from a stream by using one of the available task-launcher
sinks. Currently the platforms supported by the task-launcher
sinks are:
task-launcher-local is meant for development purposes only.
|
A task-launcher
sink expects a message containing a TaskLaunchRequest object in its payload.
From the TaskLaunchRequest
object, the task-launcher
obtains the URI of the artifact to be launched, as well as the environment properties, command line arguments, deployment properties, and application name to be used by the task.
The task-launcher-local can be added to the available sinks by executing the app register command, as follows (for the Rabbit Binder, in this case):
app register --name task-launcher-local --type sink --uri maven://org.springframework.cloud.stream.app:task-launcher-local-sink-rabbit:jar:1.2.0.RELEASE
In the case of a Maven-based task that is to be launched, the task-launcher
application is responsible for downloading the artifact.
You must configure the task-launcher
with the appropriate configuration of Maven Properties, such as --maven.remote-repositories.repo1.url=http://repo.spring.io/libs-milestone"
to resolve artifacts (in this case against a milestone repo). Note that this repostory can be different than the one used to register the task-launcher
application itself.
40.1. TriggerTask
One way to launch a task with the task-launcher
is to use the triggertask source.
The triggertask
source emits a message with a TaskLaunchRequest
object that contains the required launch information.
The triggertask
can be added to the available sources by running the app register command, as follows (for the Rabbit Binder, in this case):
app register --type source --name triggertask --uri maven://org.springframework.cloud.stream.app:triggertask-source-rabbit:1.2.0.RELEASE
For example, to launch the timestamp task once every 60 seconds, the stream implementation would be as follows:
stream create foo --definition "triggertask --triggertask.uri=maven://org.springframework.cloud.task.app:timestamp-task:jar:1.2.0.RELEASE --trigger.fixed-delay=60 --triggertask.environment-properties=spring.datasource.url=jdbc:h2:tcp://localhost:19092/mem:dataflow,spring.datasource.username=sa | task-launcher-local --maven.remote-repositories.repo1.url=http://repo.spring.io/libs-release" --deploy
If you run runtime apps
, you can find the log file for the task launcher sink.
By using the tail
command on that file, you can find the log file for the launched tasks.
Setting of triggertask.environment-properties
establishes the Data Flow Server’s H2 Database as the database where the task executions will be recorded.
You can then see the list of task executions by using the shell command task execution list
, as shown (with its output) in the following example:
dataflow:>task execution list
╔════════════════════╤══╤════════════════════════════╤════════════════════════════╤═════════╗
║ Task Name │ID│ Start Time │ End Time │Exit Code║
╠════════════════════╪══╪════════════════════════════╪════════════════════════════╪═════════╣
║timestamp-task_26176│4 │Tue May 02 12:13:49 EDT 2017│Tue May 02 12:13:49 EDT 2017│0 ║
║timestamp-task_32996│3 │Tue May 02 12:12:49 EDT 2017│Tue May 02 12:12:49 EDT 2017│0 ║
║timestamp-task_58971│2 │Tue May 02 12:11:50 EDT 2017│Tue May 02 12:11:50 EDT 2017│0 ║
║timestamp-task_13467│1 │Tue May 02 12:10:50 EDT 2017│Tue May 02 12:10:50 EDT 2017│0 ║
╚════════════════════╧══╧════════════════════════════╧════════════════════════════╧═════════╝
40.2. TaskLaunchRequest-transform
Another way to start a task with the task-launcher
would be to create a stream by using the
Tasklaunchrequest-transform processor to translate a message payload to a TaskLaunchRequest
.
The tasklaunchrequest-transform
can be added to the available processors by executing the app register command, as follows (for the Rabbit Binder, in this case):
app register --type processor --name tasklaunchrequest-transform --uri maven://org.springframework.cloud.stream.app:tasklaunchrequest-transform-processor-rabbit:1.2.0.RELEASE
The following example shows the creation of a task that includes the tasklaunchrequest-transform
:
stream create task-stream --definition "http --port=9000 | tasklaunchrequest-transform --uri=maven://org.springframework.cloud.task.app:timestamp-task:jar:1.2.0.RELEASE | task-launcher-local --maven.remote-repositories.repo1.url=http://repo.spring.io/libs-release"
40.3. Launching a Composed Task From a Stream
A composed task can be launched with one of the task-launcher
sinks as discussed here.
Since we use the ComposedTaskRunner
directly, we need to set up the task definitions it uses prior to the creation of the composed task launching stream.
Suppose we wanted to create the following composed task definition: AAA && BBB
.
The first step would be to create the task definitions, as shown in the following example:
task create AAA --definition "timestamp"
task create BBB --definition "timestamp"
Now that the task definitions we need for composed task definition are ready, we need to create a stream that launches ComposedTaskRunner
.
So, in this case, we create a stream with
-
A trigger that emits a message once every 30 seconds
-
A transformer that creates a
TaskLaunchRequest
for each message received -
A
task-launcher-local
sink that launches a theComposedTaskRunner
on our local machine
The stream should resemble the following:
stream create ctr-stream --definition "time --fixed-delay=30 | tasklaunchrequest-transform --uri=maven://org.springframework.cloud.task.app:composedtaskrunner-task:<current release> --command-line-arguments='--graph=AAA&&BBB --increment-instance-enabled=true --spring.datasource.url=...' | task-launcher-local"
In the preceding example, we see that the tasklaunchrequest-transform
is establishing two primary components:
-
uri: The URI of the
ComposedTaskRunner
that is used -
command-line-arguments: To configure the
ComposedTaskRunner
For now, we focus on the configuration that is required to launch the ComposedTaskRunner
:
-
graph: this is the graph that is to be executed by the
ComposedTaskRunner
. In this case it isAAA&&BBB
. -
increment-instance-enabled: This lets each execution of
ComposedTaskRunner
be unique.ComposedTaskRunner
is built by using Spring Batch. Thus, we want a new Job Instance for each launch of theComposedTaskRunner
. To do this, we setincrement-instance-enabled
to betrue
. -
spring.datasource.*: The datasource that is used by Spring Cloud Data Flow, which lets the user track the tasks launched by the
ComposedTaskRunner
and the state of the job execution. Also, this is so that theComposedTaskRunner
can track the state of the tasks it launched and update its state.
Releases of ComposedTaskRunner can be found
here.
|
41. Sharing Spring Cloud Data Flow’s Datastore with Tasks
As discussed in the Tasks documentation Spring Cloud Data Flow allows a user to view Spring Cloud Task App executions. So in this section we will discuss what is required by a Task Application and Spring Cloud Data Flow to share the task execution information.
41.1. A Common DataStore Dependency
Spring Cloud Data Flow supports many database types out-of-the-box,
so all the user typically has to do is declare the spring_datasource_*
environment variables
to establish what data store Spring Cloud Data Flow will need.
So whatever database you decide to use for Spring Cloud Data Flow make sure that the your task also
includes that database dependency in its pom.xml
or gradle.build
file. If the database dependency
that is used by Spring Cloud Data Flow is not present in the Task Application, the task will fail
and the task execution will not be recorded.
41.2. A Common Data Store
Spring Cloud Data Flow and your task application must access the same datastore instance. This is so that the task executions recorded by the task application can be read by Spring Cloud Data Flow to list them in the Shell and Dashboard views. Also the task app must have read & write privileges to the task data tables that are used by Spring Cloud Data Flow.
Given the understanding of Datasource dependency between Task apps and Spring Cloud Data Flow, let’s review how to apply them in various Task orchestration scenarios.
41.2.1. Simple Task Launch
When launching a task from Spring Cloud Data Flow, Data Flow adds its datasource
properties (spring.datasource.url
, spring.datasource.driverClassName
, spring.datasource.username
, spring.datasource.password
)
to the app properties of the task being launched. Thus a task application
will record its task execution information to the Spring Cloud Data Flow repository.
41.2.2. Task Launcher Sink
The Task Launcher Sink allows tasks to be launched via a stream as discussed here. Since tasks launched by the Task Launcher Sink may not want their task executions recorded to the same datastore as Spring Cloud Data Flow, each TaskLaunchRequest received by the Task Launcher Sink must have the required datasource information established as app properties or command line arguments. Both TaskLaunchRequest-Transform and TriggerTask Source are examples of how a source and a processor allow a user to set the datasource properties via the app properties or command line arguments.
41.2.3. Composed Task Runner
Spring Cloud Data Flow allows a user to create a directed graph where each node
of the graph is a task application and this is done via the
Composed Task Runner.
In this case the rules that applied to a Simple Task Launch
or Task Launcher Sink apply to the composed task runner as well.
All child apps must also have access to the datastore that is being used by the composed task runner
Also, All child apps must have the same database dependency as the composed task runner enumerated in their pom.xml
or gradle.build
file.
41.2.4. Launching a task externally from Spring Cloud Data Flow
Users may wish to launch Spring Cloud Task applications via another method (scheduler for example) but still track the task execution via Spring Cloud Data Flow. This can be done so long as the task applications observe the rules specified here and here.
If a user wishes to use Spring Cloud Data Flow to view their
Spring Batch jobs, the user must make sure that
their batch application use the @EnableTask annotation and follow the rules enumerated here and here.
More information is available here.
|
Dashboard
This section describes how to use the dashboard of Spring Cloud Data Flow.
42. Introduction
Spring Cloud Data Flow provides a browser-based GUI called the dashboard to manage the following information:
-
Apps: The Apps tab lists all available applications and provides the controls to register/unregister them.
-
Runtime: The Runtime tab provides the list of all running applications.
-
Streams: The Streams tab lets you list, design, create, deploy, and destroy Stream Definitions.
-
Tasks: The Tasks tab lets you list, create, launch and, destroy Task Definitions.
-
Jobs: The Jobs tab lets you perform batch job related functions.
-
Analytics: The Analytics tab lets you create data visualizations for the various analytics applications.
Upon starting Spring Cloud Data Flow, the dashboard is available at:
For example, if Spring Cloud Data Flow is running locally, the dashboard is available at http://localhost:9393/dashboard
.
If you have enabled https, then the dashboard will be located at https://localhost:9393/dashboard
.
If you have enabled security, a login form is available at http://localhost:9393/dashboard/#/login
.
The default Dashboard server port is 9393 .
|
The following image shows the opening page of the Spring Cloud Data Flow dashboard:
43. Apps
The Apps section of the dashboard lists all the available applications and provides the controls to register and unregister them (if applicable). It is possible to import a number of applications at once by using the Bulk Import Applications action.
The following image shows a typical list of available apps within the dashboard:
43.1. Bulk Import of Applications
The Bulk Import Applications page provides numerous options for defining and importing a set of applications all at once. For bulk import, the application definitions are expected to be expressed in a properties style, as follows:
<type>.<name> = <coordinates>
The following examples show a typical application definitions:
task.timestamp=maven://org.springframework.cloud.task.app:timestamp-task:1.2.0.RELEASE
processor.transform=maven://org.springframework.cloud.stream.app:transform-processor-rabbit:1.2.0.RELEASE
At the top of the bulk import page, a URI can be specified that points to a properties file stored elsewhere, it should contain properties formatted as shown in the previous example. Alternatively, by using the textbox labeled “Apps as Properties”, you can directly list each property string. Finally, if the properties are stored in a local file, the “Select Properties File” option opens a local file browser to select the file. After setting your definitions through one of these routes, click Import.
The following image shows the Bulk Import Applications page:
44. Runtime
The Runtime section of the Dashboard application shows the list of all running applications. For each runtime app, the state of the deployment and the number of deployed instances is shown. A list of the used deployment properties is available by clicking on the App Id.
The following image shows an example of the Runtime tab in use:
45. Streams
The Streams tab has two child tabs: Definitions and Create Stream. The following topics describe how to work with each one:
45.1. Working with Stream Definitions
The Streams section of the Dashboard includes the Definitions tab that provides a listing of Stream definitions. There you have the option to deploy or undeploy those stream definitions. Additionally, you can remove the definition by clicking on Destroy. Each row includes an arrow on the left, which you can click to see a visual representation of the definition. Hovering over the boxes in the visual representation shows more details about the apps, including any options passed to them.
In the following screenshot, the timer
stream has been expanded to show the visual representation:
If you click the details button, the view changes to show a visual representation of that stream and any related streams.
In the preceding example, if you click details for the timer
stream, the view changes to the following view, which clearly shows the relationship between the three streams (two of them are tapping into the timer
stream):
45.2. Creating a Stream
The Streams section of the Dashboard includes the Create Stream tab, which makes available the Spring Flo designer: a canvas application that offers an interactive graphical interface for creating data pipelines.
In this tab, you can:
-
Create, manage, and visualize stream pipelines using DSL, a graphical canvas, or both
-
Write pipelines via DSL with content-assist and auto-complete
-
Use auto-adjustment and grid-layout capabilities in the GUI for simpler and interactive organization of pipelines
You should watch this screencast that highlights some of the "Flo for Spring Cloud Data Flow" capabilities. The Spring Flo wiki includes more detailed content on core Flo capabilities.
The following image shows the Flo designer in use:
45.3. Deploying a Stream
The stream deploy page includes tabs that provide different ways to setup the deployment properties and deploy the stream.
The following screenshots show the stream deploy page for foobar
(time | log
).
You can define deployments properties using:
-
Form builder tab: a builder which help you to define deployment properties (deployer, application properties…)
-
Free text tab: a free textarea (key/value pairs)
You can switch between the both views, the form builder provides a more stronger validation of the inputs.
45.4. Creating Fan-In/Fan-Out Streams
In chapter Fan-in and Fan-out you learned how we can support fan-in and fan-out use cases using named destinations. The UI provides dedicated support for named destinations as well:
In this example we have data from an HTTP Source and a JDBC Source that is being sent to the sharedData channel which represents a Fan-in use case. On the other end we have a Cassandra Sink and a File Sink subscribed to the sharedData channel which represents a Fan-out use case.
45.5. Creating a Tap Stream
Creating Taps using the Dashboard is straightforward. Let’s say you have stream consisting of an HTTP Source and a File Sink and you would like to tap into the stream to also send data to a JDBC Sink. In order to create the tap stream simply connect the output connector of the HTTP Source to the JDBC Sink. The connection will be displayed as a dotted line, indicating that you created a tap stream.
The primary stream (HTTP Source to File Sink) will be automatically named, in case you did not provide a name for the stream, yet. When creating tap streams, the primary stream must always be explicitly named. In the picture above, the primary stream was named HTTP_INGEST.
Using the Dashboard, you can also switch the primary stream to become the secondary tap stream.
Simply hover over the existing primary stream, the line between HTTP Source and File Sink. Several control icons will appear, and by clicking on the icon labeled Switch to/from tap, you change the primary stream into a tap stream. Do the same for the tap stream and switch it to a primary stream.
When interacting directly with named destinations, there can be "n" combinations (Inputs/Outputs). This allows you to create complex topologies involving a wide variety of data sources and destinations. |
46. Tasks
The Tasks section of the Dashboard currently has three tabs:
46.1. Apps
Each app encapsulates a unit of work into a reusable component. Within the Data Flow runtime environment, apps let users create definitions for streams as well as tasks. Consequently, the Apps tab within the Tasks section lets users create task definitions.
You can also use this tab to create Batch Jobs. |
The following image shows a typical list of task apps:
On this screen, you can perform the following actions:
-
View details, such as the task app options.
-
Create a task definition from the respective app.
46.1.1. View Task App Details
On this page you can view the details of a selected task app, including the list of available options (properties) for that app.
46.1.2. Create a Task Definition
At a minimum, you must provide a name for the new definition. You also have the option to specify various properties that are used during the deployment of the app.
Each parameter is included only if the Include checkbox is selected. |
46.2. Definitions
This page lists the Data Flow task definitions and provides actions to launch or destroy those tasks. It also provides a shortcut operation to define one or more tasks with simple textual input, indicated by the Bulk Define Tasks button.
The following image shows the Definitions page:
46.2.1. Creating Composed Task Definitions
The dashboard includes the Create Composed Task tab, which provides an interactive graphical interface for creating composed tasks.
In this tab, you can:
-
Create and visualize composed tasks using DSL, a graphical canvas, or both.
-
Use auto-adjustment and grid-layout capabilities in the GUI for simpler and interactive organization of the composed task.
On the Create Composed Task screen, you can define one or more task parameters by entering both the parameter key and the parameter value.
Task parameters are not typed. |
The following image shows the composed task designer:
46.2.2. Launching Tasks
Once the task definition has been created, the tasks can be launched through the dashboard.
To do so, click the Definitions tab and select the task you want to launch by pressing Launch
.
46.3. Executions
The Executions tab shows the current running and completed tasks.
The following image shows the Executions tab:
47. Jobs
The Jobs section of the Dashboard lets you inspect batch jobs. The main section of the screen provides a list of job executions. Batch jobs are tasks that each execute one or more batch jobs. Each job execution has a reference to the task execution ID (in the Task Id column).
The list of Job Executions also shows the state of the underlying Job Definition. Thus, if the underlying definition has been deleted, “No definition found” appears in the Status column.
You can take the following actions for each job:
-
Restart (for failed jobs).
-
Stop (for running jobs).
-
View execution details.
Note: Clicking the stop button actually sends a stop request to the running job, which may not immediately stop.
The following image shows the Jobs page:
47.1. Job Execution Details
After having launched a batch job, the Job Execution Details page will show information about the job.
The following image shows the Job Execution Details page:
The Job Execution Details page contains a list of the executed steps. You can further drill into the details of each step’s execution by clicking the magnifying glass icon.
47.2. Step Execution Details
The Step Execution Details page provides information about an individual step within a job.
The following image shows the Step Execution Details page:
On the top of the page, you can see a progress indicator the respective step, with the option to refresh the indicator. A link is provided to view the step execution history.
The Step Execution Details screen provides a complete list of all Step Execution Context key/value pairs.
For exceptions, the Exit Description field contains additional error information. However, this field can have a maximum of 2500 characters. Therefore, in the case of long exception stack traces, trimming of error messages may occur. When that happens, refer to the server log files for further details. |
47.3. Step Execution Progress
On this screen, you can see a progress bar indicator in regards to the execution of the current step. Under the Step Execution History, you can also view various metrics associated with the selected step, such as duration, read counts, write counts, and others.
48. Analytics
The Analytics page of the Dashboard provides the following data visualization capabilities for the various analytics applications available in Spring Cloud Data Flow:
-
Counters
-
Field-Value Counters
-
Aggregate Counters
For example, if you create a stream with a Counter application, you can create the corresponding graph from within the Dashboard tab. To do so:
-
Under
Metric Type
, selectCounters
from the select box. -
Under
Stream
, selecttweetcount
. -
Under
Visualization
, select the desired chart option,Bar Chart
.
Using the icons to the right, you can add additional charts to the Dashboard, re-arange the order of created dashboards, or remove data visualizations.
REST API Guide
Appendices
Having trouble with Spring Cloud Data Flow, We’d like to help!
-
Ask a question - we monitor stackoverflow.com for questions tagged with
spring-cloud-dataflow
. -
Report bugs with Spring Cloud Data Flow at github.com/spring-cloud/spring-cloud-dataflow/issues.
-
Report bugs with Spring Cloud Data Flow for Kubernetes at github.com/spring-cloud/spring-cloud-dataflow-server-kubernetes/issues.
Appendix A: ‘How-to’ guides
A.1. Logging
Spring Cloud Data Flow is built upon several Spring projects, but ultimately the dataflow-server is a Spring Boot app, so the logging techniques that apply to any Spring Boot application are applicable here as well.
While troubleshooting, following are the two primary areas where enabling the DEBUG logs could be useful.
A.1.1. Deployment Logs
Spring Cloud Data Flow builds upon Spring Cloud Deployer SPI and the platform specific dataflow-server uses the respective SPI implementations. Specifically, if we were to troubleshoot deployment specific issues; such as the network errors, it’d be useful to enable the DEBUG logs at the underlying deployer and the libraries used by it.
-
For instance, if you’d like to enable DEBUG logs for the kubernetes-deployer, you’d be starting the server with following environment variable set.
LOGGING_LEVEL_ORG_SPRINGFRAMEWORK_CLOUD_DEPLOYER_SPI_KUBERNETES=DEBUG
A.1.2. Application Logs
The streaming applications in Spring Cloud Data Flow are Spring Boot applications and they can be independently setup with logging configurations.
For instance, if you’d have to troubleshoot the header
and payload
specifics that are being passed
around source, processor and sink channels, you’d be deploying the stream with the following
options.
dataflow:>stream create foo --definition "http --logging.level.org.springframework.integration=DEBUG | transform --logging.level.org.springframework.integration=DEBUG | log --logging.level.org.springframework.integration=DEBUG" --deploy
(where, org.springframework.integration
is the global package for everything Spring Integration related,
which is responsible for messaging channels)
These properties can also be specified via deployment
properties when deploying the stream.
dataflow:>stream deploy foo --properties "app.*.logging.level.org.springframework.integration=DEBUG"
Appendix B: Data Flow Template
As described in the previous chapter, Spring Cloud Data Flow’s functionality is completely exposed through REST endpoints. While you can use those endpoints directly, Spring Cloud Data Flow also provides a Java-based API, which makes using those REST endpoints even easier.
The central entry point is the DataFlowTemplate
class in the org.springframework.cloud.dataflow.rest.client
package.
This class implements the DataFlowOperations
interface and delegates to the following sub-templates that provide the specific functionality for each feature-set:
Interface | Description |
---|---|
|
REST client for stream operations |
|
REST client for counter operations |
|
REST client for field value counter operations |
|
REST client for aggregate counter operations |
|
REST client for task operations |
|
REST client for job operations |
|
REST client for app registry operations |
|
REST client for completion operations |
|
REST Client for runtime operations |
When the DataFlowTemplate
is being initialized, the sub-templates can be discovered through the REST relations, which are provided by HATEOAS.[1]
If a resource cannot be resolved, the respective sub-template results in NULL. A common cause is that Spring Cloud Data Flow offers for specific sets of features to be enabled/disabled when launching. For more information, see “Feature Toggles”. |
B.1. Using the Data Flow Template
When you use the Data Flow Template, the only needed Data Flow dependency is the Spring Cloud Data Flow Rest Client, as shown in the following Maven snippet:
<dependency>
<groupId>org.springframework.cloud</groupId>
<artifactId>spring-cloud-dataflow-rest-client</artifactId>
<version>1.6.0.M1</version>
</dependency>
With that dependency, you get the DataFlowTemplate
class as well as all the dependencies needed to make calls to a Spring Cloud Data Flow server.
When instantiating the DataFlowTemplate
, you also pass in a RestTemplate
.
Please be aware that the needed RestTemplate
requires some additional configuration to be valid in the context of the DataFlowTemplate
.
When declaring a RestTemplate
as a bean, the following configuration suffices:
@Bean
public static RestTemplate restTemplate() {
RestTemplate restTemplate = new RestTemplate();
restTemplate.setErrorHandler(new VndErrorResponseErrorHandler(restTemplate.getMessageConverters()));
for(HttpMessageConverter<?> converter : restTemplate.getMessageConverters()) {
if (converter instanceof MappingJackson2HttpMessageConverter) {
final MappingJackson2HttpMessageConverter jacksonConverter =
(MappingJackson2HttpMessageConverter) converter;
jacksonConverter.getObjectMapper()
.registerModule(new Jackson2HalModule())
.addMixIn(JobExecution.class, JobExecutionJacksonMixIn.class)
.addMixIn(JobParameters.class, JobParametersJacksonMixIn.class)
.addMixIn(JobParameter.class, JobParameterJacksonMixIn.class)
.addMixIn(JobInstance.class, JobInstanceJacksonMixIn.class)
.addMixIn(ExitStatus.class, ExitStatusJacksonMixIn.class)
.addMixIn(StepExecution.class, StepExecutionJacksonMixIn.class)
.addMixIn(ExecutionContext.class, ExecutionContextJacksonMixIn.class)
.addMixIn(StepExecutionHistory.class, StepExecutionHistoryJacksonMixIn.class);
}
}
return restTemplate;
}
Now you can instantiate the DataFlowTemplate
with the following code:
DataFlowTemplate dataFlowTemplate = new DataFlowTemplate(
new URI("http://localhost:9393/"), restTemplate); (1)
1 | The URI points to the ROOT of your Spring Cloud Data Flow Server. |
Depending on your requirements, you can now make calls to the server. For instance, if you want to get a list of currently available applications you can run the following code:
PagedResources<AppRegistrationResource> apps = dataFlowTemplate.appRegistryOperations().list();
System.out.println(String.format("Retrieved %s application(s)",
apps.getContent().size()));
for (AppRegistrationResource app : apps.getContent()) {
System.out.println(String.format("App Name: %s, App Type: %s, App URI: %s",
app.getName(),
app.getType(),
app.getUri()));
}
Appendix C: Spring XD to SCDF
This appendix describes how to migrate from Spring XD to Spring Cloud Data Flow, along with some tips and tricks that may be helpful.
C.1. Terminology Changes
The following table describes the changes in terminology from Spring XD to Spring Cloud Data Flow:
Old | New |
---|---|
XD-Admin |
Server (implementations: local, Cloud Foundry, Apache Yarn, Kubernetes, and Apache Mesos) |
XD-Container |
N/A |
Modules |
Applications |
Admin UI |
Dashboard |
Message Bus |
Binders |
Batch / Job |
Task |
C.2. Modules to Applications
If you have custom Spring XD modules, you need refactor them to use Spring Cloud Stream and Spring Cloud Task annotations. As part of that work, you need to update dependencies and build them as normal Spring Boot applications.
C.2.1. Custom Applications
As you convert custom applications, keep the following information in mind:
-
Spring XD’s stream and batch modules are refactored into the Spring Cloud Stream and Spring Cloud Task application-starters, respectively. These applications can be used as the reference while refactoring Spring XD modules.
-
There are also some samples for Spring Cloud Stream and Spring Cloud Task applications for reference.
-
If you want to create a brand new custom application, use the getting started guide for Spring Cloud Stream and Spring Cloud Task applications and as well as review the develeopment guide.
-
Alternatively, if you want to patch any of the out-of-the-box stream applications, you can follow the procedure described here.
C.2.2. Application Registration
As you register your applications, keep the following information in mind:
-
Custom Stream/Task applications require being installed to a Maven repository for local, Yarn, and Cloud Foundry implementations or, as docker images, when deploying to Kubernetes or Mesos. Other than Maven and docker resolution, you can also resolve application artifacts from
http
,file
, or ashdfs
coordinates. -
Unlike Spring XD, you do not have to upload the application bits while registering custom applications anymore. Instead, you need to register the application coordinates that are hosted in the Maven repository or by other means as discussed in the previous bullet.
-
By default, none of the out-of-the-box applications are preloaded. It is intentionally designed to provide the flexibility to register apps as you find appropriate for the given use-case requirement.
-
Depending on the binder choice, you can manually add the appropriate binder dependency to build applications specific to that binder-type. Alternatively, you can follow the Spring Initializr procedure to create an application with binder embedded in it.
C.2.3. Application Properties
As you modify your applications' properties, keep the following information in mind:
-
Counter-sink:
-
The peripheral
redis
is not required in Spring Cloud Data Flow. If you intend to use thecounter-sink
, thenredis
is required, and you need to have your own runningredis
cluster.
-
-
field-value-counter-sink:
-
The peripheral
redis
is not required in Spring Cloud Data Flow. If you intend to use thefield-value-counter-sink
, thenredis
becomes required, and you need to have your own runningredis
cluster.
-
-
Aggregate-counter-sink:
-
The peripheral
redis
is not required in Spring Cloud Data Flow. If you intend to use theaggregate-counter-sink
, thenredis
becomes required, and you need to have your own runningredis
cluster.
-
C.3. Message Bus to Binders
Terminology wise, in Spring Cloud Data Flow, the message bus implementation is commonly referred to as binders.
C.3.1. Message Bus
Similar to Spring XD, Spring Cloud Data Flow includes an abstraction that you can use to extend the binder interface. By default, we take the opinionated view of Apache Kafka and RabbitMQ as the production-ready binders. They are available as GA releases.
C.3.2. Binders
Selecting a binder requires providing the right binder dependency in the classpath. If you choose Kafka as the binder, you need to register stream applications that are pre-built with Kafka binder in it. If you to create a custom application with Kafka binder, you need add the following dependency in the classpath:
<dependency>
<groupId>org.springframework.cloud</groupId>
<artifactId>spring-cloud-stream-binder-kafka</artifactId>
<version>1.0.2.RELEASE</version>
</dependency>
-
Spring Cloud Stream supports Apache Kafka and RabbitMQ. All binder implementations are maintained and managed in their individual repositories.
-
Every Stream/Task application can be built with the binder implementation of your choice. All the out-of-the-box applications are pre-built for both Kafka and Rabbit and are readily available for use as Maven artifacts (Spring Cloud Stream or Spring Cloud Task) or as Docker images (Spring Cloud Stream or Spring Cloud Task). Changing the binder requires selecting the right binder dependency. Alternatively, you can download the pre-built application from this version of Spring Initializr with the desired “binder-starter” dependency.
C.3.3. Named Channels
Fundamentally, all the messaging channels are backed by pub/sub semantics.
Unlike Spring XD, the messaging channels are backed only by topics
or topic-exchange
and there is no representation of queues
in the new architecture.
-
${xd.module.index}
is no longer supported. Instead, you can directly interact with named destinations. -
stream.index
changes to:<stream-name>.<label/app-name>
-
For example,
ticktock.0
changes to:ticktock.time
.
-
-
“topic/queue” prefixes are not required to interact with named-channels.
-
For example,
topic:mytopic
changes to:mytopic
. -
For example,
stream create stream1 --definition ":foo > log"
.
-
C.3.4. Directed Graphs
If you build non-linear streams, you can take advantage of named destinations to build directed graphs.
Consider the following example from Spring XD:
stream create f --definition "queue:foo > transform --expression=payload+'-sample1' | log" --deploy
stream create b --definition "queue:bar > transform --expression=payload+'-sample2' | log" --deploy
stream create r --definition "http | router --expression=payload.contains('a')?'queue:sample1':'queue:sample2'" --deploy
You can do the following in Spring Cloud Data Flow:
stream create f --definition ":foo > transform --expression=payload+'-sample1' | log" --deploy
stream create b --definition ":bar > transform --expression=payload+'-sample2' | log" --deploy
stream create r --definition "http | router --expression=payload.contains('a')?'sample1':'sample2'" --deploy
C.4. Batch to Tasks
A Task, by definition, is any application that does not run forever, and they end at some point. Tasks include Spring Batch jobs. Task applications can be used for on-demand use cases, such as database migration, machine learning, scheduled operations, and others. With Spring Cloud Task, you can build Spring Batch jobs as microservice applications.
-
Spring Batch jobs from Spring XD are being refactored to Spring Boot applications, also known as Spring Cloud Task applications.
-
Unlike Spring XD, these tasks do not require explicit deployment. Instead, a task is ready to be launched directly once the definition is declared.
C.5. Shell and DSL Command Changes
The following table shows the changes to shell and DSL commands:
Old Command | New Command |
---|---|
module upload |
app register / app import |
module list |
app list |
module info |
app info |
admin config server |
dataflow config server |
job create |
task create |
job launch |
task launch |
job list |
task list |
job status |
task status |
job display |
task display |
job destroy |
task destroy |
job execution list |
task execution list |
runtime modules |
runtime apps |
C.6. REST API Changes
The following table shows the changes to the REST API:
Old API | New API |
---|---|
/modules |
/apps |
/runtime/modules |
/runtime/apps |
/runtime/modules/{moduleId} |
/runtime/apps/{appId} |
/jobs/definitions |
/task/definitions |
/jobs/deployments |
/task/deployments |
C.7. UI (including Flo)
The Admin-UI is now named Dashboard. The URI for accessing the Dashboard is changed from
localhost:9393/admin-ui
to localhost:9393/dashboard
.
-
Apps (a new view): Lists all the registered applications that are available for use. This view includes details such as the URI and the properties supported by each application. You can also register/unregister applications from this view.
-
Runtime (was Container): Container changes to Runtime. The notion of
xd-container
is gone, replaced by out-of-the-box applications running as autonomous Spring Boot applications. The Runtime tab displays the applications running in the runtime platforms (implementations: Cloud Foundry, Apache Yarn, Apache Mesos, or Kubernetes). You can click on each application to review relevant details, such as where it is running, what resources it uses, and other details. -
Spring Flo is now an OSS product. Flo for Spring Cloud Data Flow’s “Create Stream” is now the designer-tab in the Dashboard.
-
Tasks (a new view):
-
The “Modules” sub-tab is renamed to “Apps”.
-
The “Definitions” sub-tab lists all the task definitions, including Spring Batch jobs that are orchestrated as tasks.
-
The “Executions” sub-tab lists all the task execution details in a fashion similar to the listing of Spring XD’s Job executions.
-
C.8. Architecture Components
Spring Cloud Data Flow comes with a significantly simplified architecture. In fact, when compared with Spring XD, you need fewer peripherals to use Spring Cloud Data Flow.
C.8.1. ZooKeeper
ZooKeeper is not used in the new architecture.
C.8.2. RDBMS
Spring Cloud Data Flow uses an RDBMS instead of Redis for stream/task definitions, application registration, and for job repositories. The default configuration uses an embedded H2 instance, but Oracle, DB2, SqlServer, MySQL/MariaDB, PostgreSQL, H2, and HSQLDB databases are supported. To use Oracle, DB2, and SqlServer, you need to create your own Data Flow Server by using Spring Initializr and add the appropriate JDBC driver dependency.
C.8.3. Redis
Running a Redis cluster is only required for analytics functionality.
Specifically, when you use the counter-sink
, field-value-counter-sink
, or aggregate-counter-sink
applications, you also need to have a running instance of Redis cluster.
C.8.4. Cluster Topology
Spring XD’s xd-admin
and xd-container
server components are replaced by stream and task applications that are themselves running as autonomous Spring Boot applications.
The applications run natively on various platforms, including Cloud Foundry, Apache YARN, Apache Mesos, and Kubernetes.
You can develop, test, deploy, scale up or down, and interact with (Spring Boot) applications individually, and they can evolve in isolation.
C.9. Central Configuration
To support centralized and consistent management of an application’s configuration properties, Spring Cloud Config client libraries have been included in the Spring Cloud Data Flow server as well as the Spring Cloud Stream applications provided by the Spring Cloud Stream App Starters. You can also pass common application properties to all streams when the Data Flow Server starts.
C.10. Distribution
Spring Cloud Data Flow is a Spring Boot application. Depending on the platform of your choice, you can download the respective release uber jar and deploy or push it to the runtime platform (Cloud Foundry, Apache Yarn, Kubernetes, or Apache Mesos). For example, if you run Spring Cloud Data Flow on Cloud Foundry, you can download the Cloud Foundry server implementation and do a cf push
, as explained in the Cloud Foundry Reference Guide.
C.11. Hadoop Distribution Compatibility
The hdfs-sink
application builds upon Spring Hadoop 2.4.0 release, so this application is compatible
with the following Hadoop distributions:
-
Cloudera: cdh5
-
Pivotal Hadoop: phd30
-
Hortonworks Hadoop: hdp24
-
Hortonworks Hadoop: hdp23
-
Vanilla Hadoop: hadoop26
-
Vanilla Hadoop: 2.7.x (default)
C.12. YARN Deployment
Spring Cloud Data Flow can be deployed and used with Apche YARN in two different ways:
C.13. Use Case Comparison
The remainder of this appendix reviews some use cases to show the differences between Spring XD and Spring Cloud Data Flow.
C.13.1. Use Case #1: Ticktock
This use case assumes that you have already downloaded both the XD and the SCDF distributions.
Description: Simple ticktock
example using local/singlenode.
The following table describes the differences:
Spring XD | Spring Cloud Data Flow |
---|---|
Start an
|
Start a binder of your choice Start a
|
Start an
|
Start
|
Create
|
Create
|
Review |
Review |
C.13.2. Use Case #2: Stream with Custom Module or Application
This use case assumes that you have already downloaded both the XD and the SCDF distributions.
Description: Stream with custom module or application.
The following table describes the differences:
Spring XD | Spring Cloud Data Flow |
---|---|
Start an
|
Start a binder of your choice Start a
|
Start an
|
Start
|
Register a custom “processor” module to transform the payload to the desired format
|
Register custom “processor” application to transform payload to a desired format
|
Create a stream with a custom module
|
Create a stream with custom application
|
Review results in the |
Review results by using the |
C.13.3. Use Case #3: Batch Job
This use case assumes that you have already downloaded both the XD and the SCDF distributions.
Description: batch-job.
Spring XD | Spring Cloud Data Flow |
---|---|
Start an
|
Start a
|
Start an
|
Start
|
Register a custom “batch job” module
|
Register a custom “batch-job” as task application
|
Create a job with custom batch-job module
|
Create a task with a custom batch-job application
|
Deploy job
|
NA |
Launch job
|
Launch task
|
Review results in the |
Review results by using the |
Appendix D: Building
To build the source, you need to install JDK 1.8.
The build uses the Maven wrapper so that you do not have to install a specific version of Maven. To enable the tests for Redis, run the server before building. More information on how to run Redis appears later in this appendix.
The main build command is as follows:
$ ./mvnw clean install
If you like, you can add '-DskipTests' to avoid running the tests.
You can also install Maven (>=3.3.3) yourself and run the mvn command in place of ./mvnw in the examples below.
If you do that, you also might need to add -P spring if your local Maven settings do not contain repository declarations for Spring pre-release artifacts.
|
You might need to increase the amount of memory available to Maven by setting a MAVEN_OPTS environment variable with a value similar to -Xmx512m -XX:MaxPermSize=128m .
We try to cover this in the .mvn configuration, so, if you find you have to do it to make a build succeed, please raise a ticket to get the settings added to source control.
|
D.1. Documentation
There is a full
profile that generates documentation. You can build only the documentation by using the following command:
$ ./mvnw clean package -DskipTests -P full -pl spring-cloud-dataflow-server-kubernetes-docs -am
D.2. Working with the Code
If you do not have an IDE preference, we recommend that you use Spring Tools Suite or Eclipse when working with the code. We use the m2eclipse Eclipse plugin for Maven support. Other IDEs and tools generally also work without issue.
D.2.1. Importing into Eclipse with m2eclipse
We recommend the m2eclipe eclipse plugin when working with Eclipse. If you do not already have m2eclipse installed, it is available from the Eclipse marketplace.
Unfortunately, m2e does not yet support Maven 3.3.
Consequently, once the projects are imported into Eclipse, you also need to tell m2eclipse to use the .settings.xml
file for the projects.
If you do not do this, you may see many different errors related to the POMs in the projects.
To do so:
-
Open your Eclipse preferences.
-
Expand the Maven preferences.
-
Select User Settings.
-
In the User Settings field, click Browse and navigate to the Spring Cloud project you imported.
-
Select the
.settings.xml
file in that project. -
Click Apply.
-
Click OK.
Alternatively, you can copy the repository settings from Spring Cloud’s .settings.xml file into your own ~/.m2/settings.xml .
|
D.2.2. Importing into Eclipse without m2eclipse
If you prefer not to use m2eclipse, you can generate Eclipse project metadata by using the following command:
$ ./mvnw eclipse:eclipse
The generated Eclipse projects can be imported by selecting Import existing projects
from the File
menu.
Appendix E: Contributing
Spring Cloud is released under the non-restrictive Apache 2.0 license and follows a very standard Github development process, using Github tracker for issues and merging pull requests into master. If you want to contribute even something trivial, please do not hesitate, but follow the guidelines below.
E.1. Sign the Contributor License Agreement
Before we accept a non-trivial patch or pull request, we need you to sign the contributor’s agreement. Signing the contributor’s agreement does not grant anyone commit rights to the main repository, but it does mean that we can accept your contributions, and you will get an author credit if we do. Active contributors might be asked to join the core team and be given the ability to merge pull requests.
E.2. Code Conventions and Housekeeping
None of the following guidelines is essential for a pull request, but they all help your fellow developers understand and work with your code. They can also be added after the original pull request but before a merge.
-
Use the Spring Framework code format conventions. If you use Eclipse, you can import formatter settings by using the
eclipse-code-formatter.xml
file from the Spring Cloud Build project. If using IntelliJ, you can use the Eclipse Code Formatter Plugin to import the same file. -
Make sure all new
.java
files have a simple Javadoc class comment with at least an@author
tag identifying you, and preferably at least a paragraph describing the class’s purpose. -
Add the ASF license header comment to all new
.java
files (to do so, copy from existing files in the project). -
Add yourself as an
@author
to the .java files that you modify substantially (more than cosmetic changes). -
Add some Javadocs and, if you change the namespace, some XSD doc elements.
-
A few unit tests would help a lot as well. Someone has to do it, and your fellow developers appreciate the effort.
-
If no one else uses your branch, rebase it against the current master (or other target branch in the main project).
-
When writing a commit message, follow these conventions. If you fix an existing issue, add
Fixes gh-XXXX
(where XXXX is the issue number) at the end of the commit message.