My Apache Spark cluster is running an application that is giving me lots of executor timeouts:

10:23:30,761 ERROR ~ Lost executor 5 on slave2.cluster: Executor heartbeat timed out after 177005 ms
10:23:30,806 ERROR ~ Lost executor 1 on slave4.cluster: Executor heartbeat timed out after 176991 ms
10:23:30,812 ERROR ~ Lost executor 4 on slave6.cluster: Executor heartbeat timed out after 176981 ms
10:23:30,816 ERROR ~ Lost executor 6 on slave3.cluster: Executor heartbeat timed out after 176984 ms
10:23:30,820 ERROR ~ Lost executor 0 on slave5.cluster: Executor heartbeat timed out after 177004 ms
10:23:30,835 ERROR ~ Lost executor 3 on slave7.cluster: Executor heartbeat timed out after 176982 ms

However, in my configuration I can confirm I successfully increased the executor heartbeat interval: enter image description here

When I visit the logs of executors marked as EXITED (i.e.: the driver removed them when it couldn't get a heartbeat), it appears that executors killed themselves because they didn't receive any tasks from the driver:

16/05/16 10:11:26 ERROR TransportChannelHandler: Connection to / has been quiet for 120000 ms while there are outstanding requests. Assuming connection is dead; please adjust spark.network.timeout if this is wrong.
16/05/16 10:11:26 ERROR CoarseGrainedExecutorBackend: Cannot register with driver: spark://CoarseGrainedScheduler@

How can I turn off heartbeats and/or prevent the executors from timing out?


Missing heartbeats and executors being killed by YARN is nearly always due to OOMs. You should inspect the logs on the individual executors (look for the text "running beyond physical memory"). If you have many executors and find it cumbersome to inspect all of the logs manually, I recommend monitoring your job in the Spark UI while it runs. As soon as a task fails, it will report the cause in the UI, so it's easy to see. Note that some tasks will report failure due to missing executors that have already been killed, so make sure you look at causes for each of the individual failing tasks.

Note also that most OOM problems can be solved quickly by simply repartitioning your data at appropriate places in your code (again look at the Spark UI for hints as to where there might be a need for a call to repartition). Otherwise, you might want to scale up your machines to accommodate the need for memory.

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    I had the same problem and repartition did the trick. Thanks – Martin Seeler Nov 30 '17 at 18:32
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    Unless you're application jar is 150MB and you have 200 executors trying to dowload it from the AM. Spark isnt smart enough to treat an active jar download as a non-dead node. And its heartbeat pings are blocked by the download. – Scott Carey Oct 31 '18 at 21:41
  • @ScottCarey's point was really useful for deciding whether I should increase timeout or increase memory. When I have a large application to download increasing the network timeout should be the right thing to do. – groceryheist Sep 2 at 18:22

The answer was rather simple. In my spark-defaults.conf I set the spark.network.timeout to a higher value. Heartbeat interval was somewhat irrelevant to the problem (though tuning is handy).

When using spark-submit I was also able to set the timeout as follows:

$SPARK_HOME/bin/spark-submit --conf spark.network.timeout 10000000 --class myclass.neuralnet.TrainNetSpark --master spark://master.cluster:7077 --driver-memory 30G --executor-memory 14G --num-executors 7 --executor-cores 8 --conf spark.driver.maxResultSize=4g --conf spark.executor.heartbeatInterval=10000000 path/to/my.jar
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    Heartbeats let the driver know that the executor is still alive and update it with metrics for in-progress tasks. spark.executor.heartbeatInterval should be significantly less than spark.network.timeout - spark.apache.org/docs/latest/configuration.html – evgenii Feb 5 '17 at 21:39
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    this didn't work for me, I had to use --conf spark.network.timeout=10000000 – nEO Dec 23 '17 at 1:16
  • With identical values for spark.network.timeout and spark.executor.heartbeatInterval, I received the following error java.lang.IllegalArgumentException: requirement failed: The value of spark.network.timeout=10000000s must be no less than the value of spark.executor.heartbeatInterval=10000000s. Increasing spark.network.timeout to 100000001 resolved this. However note @evgenii's comment above referencing spark.apache.org/docs/latest/configuration.html – Ashutosh Jindal Jan 17 at 8:43
  • do you know how to set it in Zeppelin? – wwwwan Apr 8 at 4:22
  • Setting spark.network.timeout higher will give more time to executors to come back to driver and report its heartbeats. While spark.executor.heartbeatInterval is the interval at executor reports its heartbeats to driver. So in case if GC is taking more time in executor then spark.network.timeout should help driver waiting to get response from executor before it marked it as lost and start new. Refer this - (github.com/rjagerman/mammoth/wiki/…) – Anil Savaliya Apr 15 at 23:08

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