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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.

1 Answer 1

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It's correct that your aggregation will keep a count for each key forever. However, "sub-stream" are on a per-partition basis and hence, each sub-stream should always contain some data.

Closing parts of the topology is not possible.

If you are worried about unbounded grows of the store of the KTable, you can either consider to (1) use a windowed store that will evict old data eventually, (2) use an aggregate() instead of count: by default aggregate() would just count, but if an order is complete, the UDF can return null -- this would delete the key-value pair for the order from the store. (3) Or you consider to not use the DSL but the Processor API that provides more control/flexibility to main a state store (you might also consider the usage of "punctuations").

You might also be interested in: https://issues.apache.org/jira/browse/KAFKA-4212

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