7

We're currently encountering an issue where Spark jobs are seeing a number of containers being killed for exceeding memory limits when running on YARN.

16/11/18 17:58:52 WARN TaskSetManager: Lost task 53.0 in stage 49.0 (TID 32715, XXXXXXXXXX): 
  ExecutorLostFailure (executor 23 exited caused by one of the running tasks) 
  Reason: Container killed by YARN for exceeding memory limits. 12.4 GB of 12 GB physical memory used. 
    Consider boosting spark.yarn.executor.memoryOverhead.

The following arguments are being passed via spark-submit:

--executor-memory=6G
--driver-memory=4G
--conf "spark.yarn.executor.memoryOverhead=6G"`

I am using Spark 2.0.1.

We have increased the memoryOverhead to this value after reading several posts about YARN killing containers (e.g. How to avoid Spark executor from getting lost and yarn container killing it due to memory limit?).

Given my parameters and the log message it does seem that "Yarn kills executors when its memory usage is larger than (executor-memory + executor.memoryOverhead)".

It is not practical to continue increasing this overhead in the hope that eventually we find a value at which these errors do not occur. We are seeing this issue on several different jobs. I would appreciate any suggestions as to parameters I should change, things I should check, where I should start looking to debug this etc. Am able to provide further config options etc.

7
  • Do you use Spark SQL? Nov 21, 2016 at 9:38
  • When you use huge Datasets, then you can try to increase spark.default.parallelism and spark.sql.shuffle.partitions in spark-defaults.conf to a higher value. This would reduce the memory usage. Nov 21, 2016 at 10:13
  • Ok, I'll give that a go Nov 21, 2016 at 10:17
  • 2
    Well, Spark 2.x definitely uses more off-heap memory than before so memoryOverhead needs to be set a lot higher than what we have been used to. I used to go by the rule that if my memoryOverhead had to be set to more than 1/3 of my available memory, something was wrong and I needed to repartition my data, but nowadays we have jobs running with memoryOverhead taking 2/3 of available memory, leaving only a small fraction for executor-memory. I'm afraid that all our memory settings are based to some extend on trial-and-error and intuition though... Nov 21, 2016 at 10:17
  • 1
    We had that issue too, and we solved that changing to spark dynamic allocation. Just adding 2G as overhead. Nov 21, 2016 at 11:09

1 Answer 1

13

You can reduce the memory usage with the following configurations in spark-defaults.conf:

spark.default.parallelism
spark.sql.shuffle.partitions

And there is a difference when you use more than 2000 partitions for spark.sql.shuffle.partitions. You can see it in the code of spark on Github:

private[spark] object MapStatus {

  def apply(loc: BlockManagerId, uncompressedSizes: Array[Long]): MapStatus = {
    if (uncompressedSizes.length > 2000) {
      HighlyCompressedMapStatus(loc, uncompressedSizes)
    } else {
      new CompressedMapStatus(loc, uncompressedSizes)
    }
}

I recommend to try to use more than 2000 Partitions for a test. It could be faster some times, when you use very huge datasets. And according to this your tasks can be short as 200 ms. The correct configuration is not easy to find, but depending on your workload it can make a difference of hours.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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