Thanks Andrey, My question is related to The FsStateBackend is encouraged for:
- Jobs with large state, long windows, large key/value states. - All high-availability setups. How large is large state without any overhead added by the framework? Best, Vishwas On Wed, Aug 26, 2020 at 12:10 PM Andrey Zagrebin <azagre...@apache.org> wrote: > Hi Vishwas, > > is this quantifiable with respect to JVM heap size on a single node >> without the node being used for other tasks ? > > > I don't quite understand this question. I believe the recommendation in > docs has the same reason: use larger state objects so that the Java object > overhead pays off. > RocksDB keeps state in memory and on disk in the serialized form. > Therefore it usually has a smaller footprint. > Other jobs in the same task manager can potentially use other state > backend depending on their state requirements. > All tasks in the same task manager share the JVM heap as the task manager > runs one JVM system process on the machine where it is deployed to. > > Best, > Andrey > > On Wed, Aug 26, 2020 at 6:52 PM Vishwas Siravara <vsirav...@gmail.com> > wrote: > >> Hi Andrey, >> Thanks for getting back to me so quickly. The screenshots are for 1GB >> heap, the keys for the state are 20 character strings(20 bytes, we don't >> have multi byte characters) . So the overhead seems to be quite large(4x) >> even in comparison to the checkpoint size(which already adds an overhead) . >> In this document [1] it says use FS/Heap backend for large states, is this >> quantifiable with respect to JVM heap size on a single node without the >> node being used for other tasks ? >> I have attached GC log for TM and JM >> >> >> >> [1] >> https://ci.apache.org/projects/flink/flink-docs-stable/ops/state/state_backends.html#the-fsstatebackend >> >> Best, >> Vishwas >> >> On Wed, Aug 26, 2020 at 11:29 AM Andrey Zagrebin <azagre...@apache.org> >> wrote: >> >>> Hi Vishwas, >>> >>> I believe the screenshots are from a heap size of 1GB? >>> >>> There are indeed many internal Flink state objects. They are overhead >>> which is required for Flink to organise and track the state on-heap. >>> Depending on the actual size of your state objects, the overhead may be >>> relatively large or compared to the actual state size. >>> For example, if you just keep integers in your state then overhead is >>> probably a couple of times larger. >>> It is not easy to estimate exactly on-heap size without through analysis. >>> >>> The checkpoint has little overhead and includes only actual state data - >>> your serialized state objects which are probably smaller than their heap >>> representation. >>> >>> So my guess is that the heap representation of the state is much bigger >>> compared to the checkpoint size. >>> >>> I also cc other people who might add more thoughts about on-heap state >>> size. >>> >>> You could also provide GC logs as Xintong suggested. >>> >>> Best, >>> Andrey >>> >>> On Wed, Aug 26, 2020 at 4:21 PM Vishwas Siravara <vsirav...@gmail.com> >>> wrote: >>> >>>> Hi Andrey and Xintong. 2.5 GB is from the flink web UI( >>>> checkpoint size). I took a heap dump and I could not find any memory leak >>>> from user code. I see the similar behaviour on smaller heap size, on a 1GB >>>> heap , the state size from checkpoint UI is 180 MB. Attaching some >>>> screenshots of heap profiles if it helps. So when the state grows GC takes >>>> a long time and sometimes the job manager removes TM slot because of >>>> 10000ms timeout and tries to restore the task in another task manager, this >>>> creates a cascading effect and affects other jobs running on the cluster. >>>> My tests were run in a single node cluster with 1 TM and 4 task slots with >>>> a parallelism of 4. >>>> >>>> Best, >>>> Vishwas >>>> >>>> On Tue, Aug 25, 2020 at 10:02 AM Andrey Zagrebin <azagre...@apache.org> >>>> wrote: >>>> >>>>> Hi Vishwas, >>>>> >>>>> If you use Flink 1.7, check the older memory model docs [1] because >>>>> you referred to the new memory model of Flink 1.10 in your reference 2. >>>>> Could you also share a screenshot where you get the state size of 2.5 >>>>> GB? Do you mean Flink WebUI? >>>>> Generally, it is quite hard to estimate the on-heap size of state java >>>>> objects. I never heard about such a Flink metric. >>>>> >>>>> Best, >>>>> Andrey >>>>> >>>>> [1] >>>>> https://ci.apache.org/projects/flink/flink-docs-release-1.9/ops/mem_setup.html >>>>> >>>>> On Mon, Aug 24, 2020 at 4:05 AM Xintong Song <tonysong...@gmail.com> >>>>> wrote: >>>>> >>>>>> Hi Vishwas, >>>>>> >>>>>> According to the log, heap space is 13+GB, which looks fine. >>>>>> >>>>>> Several reason might lead to the heap space OOM: >>>>>> >>>>>> - Memory leak >>>>>> - Not enough GC threads >>>>>> - Concurrent GC starts too late >>>>>> - ... >>>>>> >>>>>> I would suggest taking a look at the GC logs. >>>>>> >>>>>> Thank you~ >>>>>> >>>>>> Xintong Song >>>>>> >>>>>> >>>>>> >>>>>> On Fri, Aug 21, 2020 at 10:34 PM Vishwas Siravara < >>>>>> vsirav...@gmail.com> wrote: >>>>>> >>>>>>> Hi guys, >>>>>>> I use flink version 1.7.2 >>>>>>> I have a stateful streaming job which uses a keyed process function. >>>>>>> I use heap state backend. Although I set TM heap size to 16 GB, I get >>>>>>> OOM >>>>>>> error when the state size is around 2.5 GB(from dashboard I get the >>>>>>> state >>>>>>> size). I have set taskmanager.memory.fraction: 0.01 (which I believe is >>>>>>> for >>>>>>> native calls off heap). [1] . For an 8 GB TM heap setting , the OOM >>>>>>> errors >>>>>>> start showing up when the state size reaches 1 GB. This I find puzzling >>>>>>> because I would expect to get a lot more space on the heap for state >>>>>>> when I >>>>>>> change the size to 16 GB, what fraction of the heap is used by the >>>>>>> framework ?[2]. Below is the stack trace for the exception. How can I >>>>>>> increase my state size on the heap ? >>>>>>> >>>>>>> 2020-08-21 02:05:54,443 INFO >>>>>>> org.apache.flink.runtime.taskexecutor.TaskManagerRunner - Memory >>>>>>> usage stats: [HEAP: 11920/13653/13653 MB, NON HEAP: 130/154/-1 MB >>>>>>> (used/committed/max)] >>>>>>> 2020-08-21 02:05:54,444 INFO >>>>>>> org.apache.flink.runtime.taskexecutor.TaskManagerRunner - Direct >>>>>>> memory stats: Count: 32796, Total Capacity: 1074692520, Used Memory: >>>>>>> 1074692521 >>>>>>> 2020-08-21 02:05:54,444 INFO >>>>>>> org.apache.flink.runtime.taskexecutor.TaskManagerRunner - >>>>>>> Off-heap >>>>>>> pool stats: [Code Cache: 51/55/240 MB (used/committed/max)], [Metaspace: >>>>>>> 70/88/-1 MB (used/committed/max)], [Compressed Class Space: 8/11/1024 MB >>>>>>> (used/committed/max)] >>>>>>> 2020-08-21 02:05:54,444 INFO >>>>>>> org.apache.flink.runtime.taskexecutor.TaskManagerRunner - Garbage >>>>>>> collector stats: [PS Scavenge, GC TIME (ms): 481035, GC COUNT: 1770], >>>>>>> [PS >>>>>>> MarkSweep, GC TIME (ms): 8720945, GC COUNT: 265] >>>>>>> 2020-08-21 02:05:54,446 INFO >>>>>>> org.apache.flink.runtime.taskmanager.Task - >>>>>>> KeyedProcess (1/4) (23946753549293edc23e88f257980cb4) switched from >>>>>>> RUNNING >>>>>>> to FAILED. >>>>>>> java.lang.OutOfMemoryError: Java heap space >>>>>>> at java.lang.reflect.Array.newInstance(Array.java:75) >>>>>>> at java.util.Arrays.copyOf(Arrays.java:3212) >>>>>>> at java.util.Arrays.copyOf(Arrays.java:3181) >>>>>>> at >>>>>>> org.apache.flink.runtime.state.heap.AbstractHeapPriorityQueue.resizeQueueArray(AbstractHeapPriorityQueue.java:153) >>>>>>> at >>>>>>> org.apache.flink.runtime.state.heap.HeapPriorityQueue.increaseSizeByOne(HeapPriorityQueue.java:172) >>>>>>> at >>>>>>> org.apache.flink.runtime.state.heap.HeapPriorityQueue.addInternal(HeapPriorityQueue.java:83) >>>>>>> at >>>>>>> org.apache.flink.runtime.state.heap.AbstractHeapPriorityQueue.add(AbstractHeapPriorityQueue.java:73) >>>>>>> at >>>>>>> org.apache.flink.runtime.state.heap.HeapPriorityQueueSet.add(HeapPriorityQueueSet.java:121) >>>>>>> at >>>>>>> org.apache.flink.runtime.state.heap.HeapPriorityQueueSnapshotRestoreWrapper.lambda$keyGroupReader$0(HeapPriorityQueueSnapshotRestoreWrapper.java:85) >>>>>>> at >>>>>>> org.apache.flink.runtime.state.heap.HeapPriorityQueueSnapshotRestoreWrapper$$Lambda$229/674995813.consume(Unknown >>>>>>> Source) >>>>>>> at >>>>>>> org.apache.flink.runtime.state.KeyGroupPartitioner$PartitioningResultKeyGroupReader.readMappingsInKeyGroup(KeyGroupPartitioner.java:298) >>>>>>> at >>>>>>> org.apache.flink.runtime.state.heap.HeapKeyedStateBackend.readKeyGroupStateData(HeapKeyedStateBackend.java:492) >>>>>>> at >>>>>>> org.apache.flink.runtime.state.heap.HeapKeyedStateBackend.readStateHandleStateData(HeapKeyedStateBackend.java:453) >>>>>>> at >>>>>>> org.apache.flink.runtime.state.heap.HeapKeyedStateBackend.restorePartitionedState(HeapKeyedStateBackend.java:410) >>>>>>> at >>>>>>> org.apache.flink.runtime.state.heap.HeapKeyedStateBackend.restore(HeapKeyedStateBackend.java:358) >>>>>>> at >>>>>>> org.apache.flink.runtime.state.heap.HeapKeyedStateBackend.restore(HeapKeyedStateBackend.java:104) >>>>>>> at >>>>>>> org.apache.flink.streaming.api.operators.BackendRestorerProcedure.attemptCreateAndRestore(BackendRestorerProcedure.java:151) >>>>>>> at >>>>>>> org.apache.flink.streaming.api.operators.BackendRestorerProcedure.createAndRestore(BackendRestorerProcedure.java:123) >>>>>>> at >>>>>>> org.apache.flink.streaming.api.operators.StreamTaskStateInitializerImpl.keyedStatedBackend(StreamTaskStateInitializerImpl.java:284) >>>>>>> at >>>>>>> org.apache.flink.streaming.api.operators.StreamTaskStateInitializerImpl.streamOperatorStateContext(StreamTaskStateInitializerImpl.java:135) >>>>>>> at >>>>>>> org.apache.flink.streaming.api.operators.AbstractStreamOperator.initializeState(AbstractStreamOperator.java:250) >>>>>>> at >>>>>>> org.apache.flink.streaming.runtime.tasks.StreamTask.initializeState(StreamTask.java:738) >>>>>>> at >>>>>>> org.apache.flink.streaming.runtime.tasks.StreamTask.invoke(StreamTask.java:289) >>>>>>> at >>>>>>> org.apache.flink.runtime.taskmanager.Task.run(Task.java:704) >>>>>>> at java.lang.Thread.run(Thread.java:748) >>>>>>> >>>>>>> >>>>>>> >>>>>>> [1] >>>>>>> https://ci.apache.org/projects/flink/flink-docs-stable/ops/state/state_backends.html#the-fsstatebackend >>>>>>> [2] >>>>>>> https://ci.apache.org/projects/flink/flink-docs-release-1.10/ops/memory/mem_detail.html#overview >>>>>>> >>>>>>> Best, >>>>>>> Vishwas >>>>>>> >>>>>>