Skip to content

POC to parallelize long time processes using Kafka and Quarkus.

License

Notifications You must be signed in to change notification settings

felipewind/poc-kafka-quarkus

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

3 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

poc-kafka-quarkus

POC to parallelize long time processes using Kafka and Quarkus.

Imagine you have a big amount of items to process and each one takes a long time to finish.

This POC proposes one solution to diminish the overall process time.

The idea is simple, one application, the producer, publishes messages on a Kafka topic and another application, the processor, reads these messages and process them.

If the messages don't need to be processed in an ordered way, we can configure the application, using SmallRye Reactive Message, to create a pool of threads and process multiple messages simultaneously.

Kafka also allows that we consume messages from its topic from multiple instances of our application. To achieve this, we must configure the partition number of the topic. For instance, if our topic has a partition number of three and we run four instances of our application, three instances will be able to process one specific partition and the fourth will remain idle.

In this POC I use both ideas, that is I run the processing application in multiple instances and each instance has its own thread pool that processes multiple messages simultaneously.

image

POC in action

Just run the application, access the Swagger-UI to inform the quantity of items to process, execute it and check the results on the console log of the producer and the processor instances.

Swagger

The Swagger-UI is on http://localhost:8080/q/swagger-ui

image

Producer sent messages

image

Processor instances receiving and processing messages

1st instance with partition "2"

image

2nd instance with partitions "0" and "1"

image

Instructions to run

Running everything with Docker Compose

Compile the two projects

Enter the processor folder and run:

$ ./mvnw package

Enter the producer folder and run:

$ ./mvnw package

Run the Docker Compose

On the root folder, run:

$ docker-compose up

If you want to run multiple instances of the processor, just pass the scale argument:

$ docker-compose up --scale processor=2

The NUM_PARTITIONS parameter of Kafka in the docker-compose file says how many partitions the topics will have.

Running in development mode

Start producer and processor

Enter the processor folder and run:

$ mvn quarkus:dev

Enter the producer folder and run:

$ mvn quarkus:dev -Ddebug=5006

In this mode, Quarkus will automatically download one Kafka image and run it for you.

Kafka concepts

Partitions

The num.partitions parameter defines how many partitions the topic will have.

Consumer groups

The consumer group is defined by one id.

One consumer group will receive all messages sent to a topic.

One consumer group can have 'n' instances of applications running.

Each instance of the consumer group will process messages from some partitons of the topic.

Consumer groups and partitions

Each instance of the consumer group will be able to read one or more partitions of the topic.

If you have more consumers than partitions, some consumers will remain idle.

Quarkus and SmallRye Reactive Message tips

Processing messages in multiple worker threads

If the messages don't need to be processed in order, you can use the following annotation:

@Incoming("extraction-requests")
@Blocking(ordered = false, value = "my-custom-pool")
public void read(Client client) {

Inform the number of threads of your my-custom-pool in your application.properties:

smallrye.messaging.worker.my-custom-pool.max-concurrency=3

Quarkus dev mode

You can inform the number of partitions the topic will have in your Kafka test container with this parameter, informing your topic name (in this case, extraction-requests) :

quarkus.kafka.devservices.topic-partitions.extraction-requests=3

Credits

https://quarkus.io/guides/kafka

https://strimzi.io/docs/operators/latest/using.html

smallrye

https://smallrye.io/smallrye-reactive-messaging/smallrye-reactive-messaging/3.13/index.html

https://smallrye.io/smallrye-reactive-messaging/smallrye-reactive-messaging/3.1/advanced/blocking.html

https://smallrye.io/smallrye-reactive-messaging/smallrye-reactive-messaging/3.1/emitter/emitter.html#_emitter_and_channel

About

POC to parallelize long time processes using Kafka and Quarkus.

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages