2

I am running a spark job on a 2 node yarn cluster. My dataset is not large (< 100MB) just for testing and the worker is getting killed because it is asking for too much virtual memory. The amounts here are absurd. 2GB out of 11GB physical memory used, 300GB virtual memory used.

16/02/12 05:49:43 WARN scheduler.TaskSetManager: Lost task 0.0 in stage 2.1 (TID 22, ip-172-31-6-141.ec2.internal): ExecutorLostFailure (executor 2 exited caused by one of the running tasks) Reason: Container marked as failed: container_1455246675722_0023_01_000003 on host: ip-172-31-6-141.ec2.internal. Exit status: 143. Diagnostics: Container [pid=23206,containerID=container_1455246675722_0023_01_000003] is running beyond virtual memory limits. Current usage: 2.1 GB of 11 GB physical memory used; 305.3 GB of 23.1 GB virtual memory used. Killing container. Dump of the process-tree for container_1455246675722_0023_01_000003 : |- PID PPID PGRPID SESSID CMD_NAME USER_MODE_TIME(MILLIS) SYSTEM_TIME(MILLIS) VMEM_USAGE(BYTES) RSSMEM_USAGE(PAGES) FULL_CMD_LINE |- 23292 23213 23292 23206 (python) 15 3 101298176 5514 python -m pyspark.daemon |- 23206 1659 23206 23206 (bash) 0 0 11431936 352 /bin/bash -c /usr/lib/jvm/java-7-openjdk-amd64/bin/java -server -XX:OnOutOfMemoryError='kill %p' -Xms10240m -Xmx10240m -Djava.io.tmpdir=/tmp/hadoop-root/nm-local-dir/usercache/root/appcache/application_1455246675722_0023/container_1455246675722_0023_01_000003/tmp '-Dspark.driver.port=37386' -Dspark.yarn.app.container.log.dir=/mnt/yarn/logs/application_1455246675722_0023/container_1455246675722_0023_01_000003 -XX:MaxPermSize=256m org.apache.spark.executor.CoarseGrainedExecutorBackend --driver-url spark://CoarseGrainedScheduler@172.31.0.92:37386 --executor-id 2 --hostname ip-172-31-6-141.ec2.internal --cores 8 --app-id application_1455246675722_0023 --user-class-path file:/tmp/hadoop-root/nm-local-dir/usercache/root/appcache/application_1455246675722_0023/container_1455246675722_0023_01_000003/app.jar 1> /mnt/yarn/logs/application_1455246675722_0023/container_1455246675722_0023_01_000003/stdout 2> /mnt/yarn/logs/application_1455246675722_0023/container_1455246675722_0023_01_000003/stderr |- 23341 23292 23292 23206 (python) 87 8 39464374272 23281 python -m pyspark.daemon |- 23350 23292 23292 23206 (python) 86 7 39463976960 24680 python -m pyspark.daemon |- 23329 23292 23292 23206 (python) 90 6 39464521728 23281 python -m pyspark.daemon |- 23213 23206 23206 23206 (java) 1168 61 11967115264 359820 /usr/lib/jvm/java-7-openjdk-amd64/bin/java -server -XX:OnOutOfMemoryError=kill %p -Xms10240m -Xmx10240m -Djava.io.tmpdir=/tmp/hadoop-root/nm-local-dir/usercache/root/appcache/application_1455246675722_0023/container_1455246675722_0023_01_000003/tmp -Dspark.driver.port=37386 -Dspark.yarn.app.container.log.dir=/mnt/yarn/logs/application_1455246675722_0023/container_1455246675722_0023_01_000003 -XX:MaxPermSize=256m org.apache.spark.executor.CoarseGrainedExecutorBackend --driver-url spark://CoarseGrainedScheduler@172.31.0.92:37386 --executor-id 2 --hostname ip-172-31-6-141.ec2.internal --cores 8 --app-id application_1455246675722_0023 --user-class-path file:/tmp/hadoop-root/nm-local-dir/usercache/root/appcache/application_1455246675722_0023/container_1455246675722_0023_01_000003/app.jar |- 23347 23292 23292 23206 (python) 87 10 39464783872 23393 python -m pyspark.daemon |- 23335 23292 23292 23206 (python) 83 9 39464112128 23216 python -m pyspark.daemon |- 23338 23292 23292 23206 (python) 81 9 39463714816 24614 python -m pyspark.daemon |- 23332 23292 23292 23206 (python) 86 6 39464374272 24812 python -m pyspark.daemon |- 23344 23292 23292 23206 (python) 85 30 39464374272 23281 python -m pyspark.daemon Container killed on request. Exit code is 143

Does anyone know why this might be happening? I've been trying modifying various yarn and spark configurations, but I know something is deeply wrong for it to be asking for this much vmem.

  • Please provide the details about the command used to submit the job and the environment details. from Error it seems that you are submitting some python job see -Xms10240m in the Error - 101298176 5514 python -m pyspark.daemon |- 23206 1659 23206 23206 (bash) 0 0 11431936 352 /bin/bash -c /usr/lib/jvm/java-7-openjdk-amd64/bin/java -server -XX:OnOutOfMemoryError='kill %p' -Xms10240m -Xmx10240m -Djava.io.tmpdir=/tmp/hadoop-root/nm-local-dir/usercache/root/appcache/application_1455246675722_0023/container_1455246675722_0023_01_000003/tmp – Sumit Feb 12 '16 at 7:14
7

The command I was running was

spark-submit --executor-cores 8 ...

It turns out the executor-cores flag doesn't do what I thought it does. It makes 8 copies of the pyspark.daemon process, running 8 copies of the worker process to run jobs. Each process was using 38GB of virtual memory, which is unnecessarily large, but 8 * 38 ~ 300, so that explains that.

It's actually a very poorly named flag. If I set executor-cores to 1, it makes one daemon, but the daemon will use multiple cores, as seen via htop.

  • Then, it should be named 'number of daemon processes per executor'. I want to avoid executor failures, so do you recommend to use 1 daemon per executor or several? (My physical servers have 24 cores per server) – Carlos AG Sep 22 '16 at 10:31
  • I think it depends a lot on what you are trying to do. The question is do you want to multiplex at the executor layer or the daemon layer. I think if you have one machine it shouldn't make a big difference, so I would do daemon per executor and num-executors == 24/num-cores-used-per-executor. I'm not sure it will affect your executor failure rate, tho... – syzygy Sep 23 '16 at 3:07

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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