Hi Dongwon Did you override AsyncFunction#timeout()? If so, did you call resultFuture.complete()/completeExceptionally() in your override? Not calling them can result in checkpoint timeout.
Thanks Jun > On Nov 9, 2021, at 7:37 AM, Dongwon Kim <eastcirc...@gmail.com> wrote: > > Hi David, > > There are currently no metrics for the async work-queue size (you should be > able to see the queue stats with debug logs enabled though [1]). > Thanks for the input but scraping DEBUG messages into, for example, > ElasticSearch for monitoring on Grafana is not possible in my current > environment. > I just defined two counters in RichAsyncFunction for tracking # sent requests > and # finished/failed requests, respectively, and used the two counters to > calculate the inflight requests from Prometheus. > > As far as I can tell from looking at the code, the async operator is able to > checkpoint even if the work-queue is exhausted. > Oh, I didn't know that! As you pointed out and I'm going to explain below, > the async operator might not be the source of the problem. > > I just hit the same situation and found that > - # of inflight records are zero when the backpressure is getting high > - A taskmanager complains the following error message around the time when > the backpressure is getting high (all the others don't do): > 2021-11-09 13:20:40,601 ERROR org.apache.kafka.common.utils.KafkaThread > [] - Uncaught exception in thread 'kafka-producer-network-thread > | producer-8': > java.lang.OutOfMemoryError: Direct buffer memory > at java.nio.Bits.reserveMemory(Bits.java:175) ~[?:?] > at java.nio.DirectByteBuffer.<init>(DirectByteBuffer.java:118) ~[?:?] > at java.nio.ByteBuffer.allocateDirect(ByteBuffer.java:317) ~[?:?] > at sun.nio.ch.Util.getTemporaryDirectBuffer(Util.java:242) ~[?:?] > at sun.nio.ch.IOUtil.write(IOUtil.java:164) ~[?:?] > at sun.nio.ch.IOUtil.write(IOUtil.java:130) ~[?:?] > at sun.nio.ch.SocketChannelImpl.write(SocketChannelImpl.java:493) > ~[?:?] > at java.nio.channels.SocketChannel.write(SocketChannel.java:507) > ~[?:?] > at > org.apache.kafka.common.network.PlaintextTransportLayer.write(PlaintextTransportLayer.java:152) > ~[drivinghabit-stream-calculator-2.0-SNAPSHOT.jar:?] > at > org.apache.kafka.common.network.ByteBufferSend.writeTo(ByteBufferSend.java:60) > ~[drivinghabit-stream-calculator-2.0-SNAPSHOT.jar:?] > at > org.apache.kafka.common.network.KafkaChannel.send(KafkaChannel.java:429) > ~[drivinghabit-stream-calculator-2.0-SNAPSHOT.jar:?] > at > org.apache.kafka.common.network.KafkaChannel.write(KafkaChannel.java:399) > ~[drivinghabit-stream-calculator-2.0-SNAPSHOT.jar:?] > at > org.apache.kafka.common.network.Selector.pollSelectionKeys(Selector.java:589) > ~[drivinghabit-stream-calculator-2.0-SNAPSHOT.jar:?] > at org.apache.kafka.common.network.Selector.poll(Selector.java:483) > ~[drivinghabit-stream-calculator-2.0-SNAPSHOT.jar:?] > at > org.apache.kafka.clients.NetworkClient.poll(NetworkClient.java:547) > ~[drivinghabit-stream-calculator-2.0-SNAPSHOT.jar:?] > at > org.apache.kafka.clients.producer.internals.Sender.runOnce(Sender.java:335) > ~[drivinghabit-stream-calculator-2.0-SNAPSHOT.jar:?] > at > org.apache.kafka.clients.producer.internals.Sender.run(Sender.java:244) > ~[drivinghabit-stream-calculator-2.0-SNAPSHOT.jar:?] > at java.lang.Thread.run(Thread.java:829) [?:?] > > Can it be the reason why my pipeline is stalled and ends up with the checkout > timeout? I guess all the upstream tasks might fail to send data to the failed > kafka producer and records are stacking up in buffers, which could result in > the back-pressure. If so, is there no mechanism in Flink to detect such an > error and send it to the job manager for debugging purposes? > > Best, > > Dongwon > > > On Mon, Nov 8, 2021 at 9:21 PM David Morávek <d...@apache.org > <mailto:d...@apache.org>> wrote: > Hi Dongwon, > > There are currently no metrics for the async work-queue size (you should be > able to see the queue stats with debug logs enabled though [1]). As far as I > can tell from looking at the code, the async operator is able to checkpoint > even if the work-queue is exhausted. > > Arvid can you please validate the above? (the checkpoints not being blocked > by the work queue part) > > [1] > https://github.com/apache/flink/blob/release-1.14.0/flink-streaming-java/src/main/java/org/apache/flink/streaming/api/operators/async/queue/OrderedStreamElementQueue.java#L109 > > <https://github.com/apache/flink/blob/release-1.14.0/flink-streaming-java/src/main/java/org/apache/flink/streaming/api/operators/async/queue/OrderedStreamElementQueue.java#L109> > > Best, > D. > > On Sun, Nov 7, 2021 at 10:41 AM Dongwon Kim <eastcirc...@gmail.com > <mailto:eastcirc...@gmail.com>> wrote: > Hi community, > > While using Flink's async i/o for interacting with an external system, I got > the following exception: > > 2021-11-06 10:38:35,270 INFO > org.apache.flink.runtime.checkpoint.CheckpointCoordinator [] - Triggering > checkpoint 54 (type=CHECKPOINT) @ 1636162715262 for job > f168a44ea33198cd71783824d49f9554. > 2021-11-06 10:38:47,031 INFO > org.apache.flink.runtime.checkpoint.CheckpointCoordinator [] - Completed > checkpoint 54 for job f168a44ea33198cd71783824d49f9554 (11930992707 bytes, > checkpointDuration=11722 ms, finalizationTime=47 ms). > 2021-11-06 10:58:35,270 INFO > org.apache.flink.runtime.checkpoint.CheckpointCoordinator [] - Triggering > checkpoint 55 (type=CHECKPOINT) @ 1636163915262 for job > f168a44ea33198cd71783824d49f9554. > 2021-11-06 11:08:35,271 INFO > org.apache.flink.runtime.checkpoint.CheckpointCoordinator [] - Checkpoint > 55 of job f168a44ea33198cd71783824d49f9554 expired before completing. > 2021-11-06 11:08:35,287 INFO org.apache.flink.runtime.jobmaster.JobMaster > [] - Trying to recover from a global failure. > > - FYI, I'm using 1.14.0 and enabled unaligned checkpointing and buffer > debloating > - the 55th ckpt failed to complete within 10 mins (which is the value of > execution.checkpointing.timeout) > - the below graph shows that backpressure skyrocketed around the time the > 55th ckpt began > <image.png> > > What I suspect is the capacity of the asynchronous operation because limiting > the value can cause back-pressure once the capacity is exhausted [1]. > > Although I could increase the value, I want to monitor the current in-flight > async i/o requests like the above back-pressure graph on Grafana. > [2] does not introduce any system metric specific to async i/o. > > Best, > > Dongwon > > [1] > https://ci.apache.org/projects/flink/flink-docs-master/docs/dev/datastream/operators/asyncio/#async-io-api > > <https://ci.apache.org/projects/flink/flink-docs-master/docs/dev/datastream/operators/asyncio/#async-io-api> > [2] > https://ci.apache.org/projects/flink/flink-docs-master/docs/ops/metrics/#system-metrics > > <https://ci.apache.org/projects/flink/flink-docs-master/docs/ops/metrics/#system-metrics> > >