I learned that by default Structured Streaming supports HDFSBackedStateStoreProvider. It means that all the state related information is being stored at a HDFS location.

Does it ensures that no data is stored In-memory which could cause long GC pauses?

Reason for this question is that the job I am running stops processing data during high traffic volume and catches up after 15-20 minutes of delay.


You were right that Spark structured streaming does have support for HDFSBackedStateStoreProvider.

However, it doesn't ensure that no data is stored in-memory. It uses HDFS to store checkpoints at regular intervals as write ahead logs. It is done in such a way that if your stream goes down the last known state can be restored from HDFS and the next stream would be able to re-process the data from where the previous stream left-off.

Regarding long GC pauses, you might want to have a look at following article:

  1. https://databricks.com/blog/2015/05/28/tuning-java-garbage-collection-for-spark-applications.html

Does it ensures that no data is stored In-memory which could cause long GC pauses?

Spark maintains some versions of state in executors' memory to avoid re-reading previous state per each batch.

Btw, which version of Spark you're using? In Spark 2.4.0 there're some improvements on memory usage in HDFS state store provider which will heavily reduce memory usage on long-running structured streaming applications. So if you're not using Spark 2.4.0, worth to check it out.

  • Thanks @Jungtaek Lim This is very helpful. Unfortunately I am stuck with Spark 2.2.0. Pushing my organization to upgrade to 2.4.0 but I don't see that is happening in near future. – Himanshu Yadav Dec 10 '18 at 14:15

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.