I'm writing a Kafka Streams app in Scala and I'm worried about potential memory leaks / overall resource usage.
Is there a way to signal Kafka to "close" a specific sub-stream created by grouping/branching operation and release related resources?
To demonstrate potential issue, let's consider an e-commerce application that pushes order status change events to a Kafka topic called "my-super-input-topic". Each order is uniquely identified by OrderId, which is used as a Kafka message key.
Let's say we need to compute count of status updates per order and push the results to a "my-super-output-topic" topic. The following code snippet demonstrates how to do so in Scala:
// ...
val builder = new StreamsBuilder
val ktable = builder.stream("my-super-input-topic")
.groupByKey
.count
ktable.toStream.to("my-super-output-topic")
// ...
As I understand, .groupBy / .groupByKey divides source stream into N sub-streams (one per order in our case). Code above does not specify any retention windows, therefore even if a given order (sub-stream) receives an event after hours of inactivity - it will still be correctly processed and an update will be pushed to a sink topic, containing correct aggregated count.
Therefore I make a conclusion that Kafka maintains information about each sub-stream in some kind of internal store.
However, orders have finite lifetime, and after some time order becomes completed, which means a sub-stream related to that order will never receive further events. But Kafka still treats it as a valid one and awaits further messages, and more and more "dead" sub-streams will be accumulated as more and more orders get completed. If Kafka dedicates at least some resources to track each sub-stream, "dead" sub-streams can cause extensive memory usage, even though it is completely unnecessary.
Therefore it would be reasonable to dispose/close specific sub-streams as soon as system understands that the relevant orders are completed.
Note: this is a fictional use-case to demonstrate the specific issue, not a real task. Please don't suggest implementing it without Kafka Streams.