> AFAIK, current the 2GB limit is still there. as a workaround, maybe you can reduce the state size. If this can not be done using the window operator, can the keyedprocessfunction[1] be ok for you?
I'll see if I can introduce it to the code. > if you do, the ProcessWindowFunction is getting as argument an Iterable with ALL elements collected along the session. This will make the state per key potentially huge (like you're experiencing). Thanks for noticing that. It's indeed true that we do this. The reason is the nature of the computation, which cannot be done incrementally unfortunately. It's not a classic avg(), max(), last() etc. computation which can be reduced in each step. I'm thinking of a way to cap the volume of the state per key using an aggregate function that limits the number of elements and returns a list of the collected events. class CappingAggregator(limit: Int) extends AggregateFunction[Event, Vector[Event], Vector[Event]] { override def createAccumulator(): Vector[Event] = Vector.empty override def add(value: Event, acc: Vector[Event]): Vector[Event] = if (acc.size < limit) acc :+ value else acc override def getResult(acc: Vector[Event]): Vector[Event] = Vector(acc: _*) override def merge(a: Vector[Event], b: Vector[Event]): Vector[Event] = (a ++ b).slice(0, limit) } My only problem is with merge(). I'm not sure if b is always later elements than a's or if I must sort and only then slice. On Sat, Jul 11, 2020 at 10:16 PM Rafi Aroch <rafi.ar...@gmail.com> wrote: > Hi Ori, > > In your code, are you using the process() API? > > .process(new MyProcessWindowFunction()); > > if you do, the ProcessWindowFunction is getting as argument an Iterable > with ALL elements collected along the session. This will make the state per > key potentially huge (like you're experiencing). > > As Aljoscha Krettek suggested in the JIRA, if you can use the aggregate() > API and store in state only an aggregate that is getting incrementally > updated on every incoming event (this could be ONE Class / Map / Tuple / > etc) rather than keeping ALL elements. > > See example here: > https://ci.apache.org/projects/flink/flink-docs-stable/dev/stream/operators/windows.html#incremental-window-aggregation-with-aggregatefunction > > Thanks, > Rafi > > > On Sat, Jul 11, 2020 at 10:29 AM Congxian Qiu <qcx978132...@gmail.com> > wrote: > >> Hi Ori >> >> AFAIK, current the 2GB limit is still there. as a workaround, maybe you >> can reduce the state size. If this can not be done using the window >> operator, can the keyedprocessfunction[1] be ok for you? >> >> [1] >> https://ci.apache.org/projects/flink/flink-docs-release-1.11/dev/stream/operators/process_function.html#the-keyedprocessfunction >> >> Best, >> Congxian >> >> >> Ori Popowski <ori....@gmail.com> 于2020年7月8日周三 下午8:30写道: >> >>> I've asked this question in >>> https://issues.apache.org/jira/browse/FLINK-9268 but it's been inactive >>> for two years so I'm not sure it will be visible. >>> >>> While creating a savepoint I get a >>> org.apache.flink.util.SerializedThrowable: >>> java.lang.NegativeArraySizeException. It's happening because some of my >>> windows have a keyed state of more than 2GiB, hitting RocksDB memory limit. >>> >>> How can I prevent this? >>> >>> As I understand it, I need somehow to limit the accumulated size of the >>> window I'm using, which is EventTimeWindow. However, I have no way of >>> doing so, because the WindowOperator manages its state on its own. >>> >>> Below is a full stack trace. >>> >>> org.apache.flink.util.SerializedThrowable: Could not materialize >>> checkpoint 139 for operator Window(EventTimeSessionWindows(1800000), >>> EventTimeTrigger, ScalaProcessWindowFunctionWrapper) -> Flat Map -> Sink: >>> Unnamed (23/189). >>> at >>> org.apache.flink.streaming.runtime.tasks.StreamTask$AsyncCheckpointRunnable.handleExecutionException(StreamTask.java:1238) >>> at >>> org.apache.flink.streaming.runtime.tasks.StreamTask$AsyncCheckpointRunnable.run(StreamTask.java:1180) >>> at >>> java.util.concurrent.ThreadPoolExecutor.runWorker(ThreadPoolExecutor.java:1149) >>> at >>> java.util.concurrent.ThreadPoolExecutor$Worker.run(ThreadPoolExecutor.java:624) >>> at java.lang.Thread.run(Thread.java:748) >>> Caused by: org.apache.flink.util.SerializedThrowable: >>> java.lang.NegativeArraySizeException >>> at java.util.concurrent.FutureTask.report(FutureTask.java:122) >>> at java.util.concurrent.FutureTask.get(FutureTask.java:192) >>> at >>> org.apache.flink.runtime.concurrent.FutureUtils.runIfNotDoneAndGet(FutureUtils.java:461) >>> at >>> org.apache.flink.streaming.api.operators.OperatorSnapshotFinalizer.<init>(OperatorSnapshotFinalizer.java:47) >>> at >>> org.apache.flink.streaming.runtime.tasks.StreamTask$AsyncCheckpointRunnable.run(StreamTask.java:1143) >>> ... 3 common frames omitted >>> Caused by: org.apache.flink.util.SerializedThrowable: null >>> at org.rocksdb.RocksIterator.value0(Native Method) >>> at org.rocksdb.RocksIterator.value(RocksIterator.java:50) >>> at >>> org.apache.flink.contrib.streaming.state.RocksIteratorWrapper.value(RocksIteratorWrapper.java:102) >>> at >>> org.apache.flink.contrib.streaming.state.iterator.RocksStatesPerKeyGroupMergeIterator.value(RocksStatesPerKeyGroupMergeIterator.java:168) >>> at >>> org.apache.flink.contrib.streaming.state.snapshot.RocksFullSnapshotStrategy$SnapshotAsynchronousPartCallable.writeKVStateData(RocksFullSnapshotStrategy.java:366) >>> at >>> org.apache.flink.contrib.streaming.state.snapshot.RocksFullSnapshotStrategy$SnapshotAsynchronousPartCallable.writeSnapshotToOutputStream(RocksFullSnapshotStrategy.java:256) >>> at >>> org.apache.flink.contrib.streaming.state.snapshot.RocksFullSnapshotStrategy$SnapshotAsynchronousPartCallable.callInternal(RocksFullSnapshotStrategy.java:221) >>> at >>> org.apache.flink.contrib.streaming.state.snapshot.RocksFullSnapshotStrategy$SnapshotAsynchronousPartCallable.callInternal(RocksFullSnapshotStrategy.java:174) >>> at >>> org.apache.flink.runtime.state.AsyncSnapshotCallable.call(AsyncSnapshotCallable.java:75) >>> at java.util.concurrent.FutureTask.run(FutureTask.java:266) >>> at >>> org.apache.flink.runtime.concurrent.FutureUtils.runIfNotDoneAndGet(FutureUtils.java:458) >>> ... 5 common frames omitted >>> >>