4

When running a python job in AWS Glue I get the error:

Reason: Container killed by YARN for exceeding memory limits. 5.6 GB of 5.5 GB physical memory used. Consider boosting spark.yarn.executor.memoryOverhead

When running this in the beginning of the script:

print '--- Before Conf --'
print 'spark.yarn.driver.memory', sc._conf.get('spark.yarn.driver.memory')
print 'spark.yarn.driver.cores', sc._conf.get('spark.yarn.driver.cores')
print 'spark.yarn.executor.memory', sc._conf.get('spark.yarn.executor.memory')
print 'spark.yarn.executor.cores', sc._conf.get('spark.yarn.executor.cores')
print "spark.yarn.executor.memoryOverhead", sc._conf.get("spark.yarn.executor.memoryOverhead")

print '--- Conf --'
sc._conf.setAll([('spark.yarn.executor.memory', '15G'),('spark.yarn.executor.memoryOverhead', '10G'),('spark.yarn.driver.cores','5'),('spark.yarn.executor.cores', '5'), ('spark.yarn.cores.max', '5'), ('spark.yarn.driver.memory','15G')])

print '--- After Conf ---'
print 'spark.driver.memory', sc._conf.get('spark.driver.memory')
print 'spark.driver.cores', sc._conf.get('spark.driver.cores')
print 'spark.executor.memory', sc._conf.get('spark.executor.memory')
print 'spark.executor.cores', sc._conf.get('spark.executor.cores')
print "spark.executor.memoryOverhead", sc._conf.get("spark.executor.memoryOverhead")

I get following output:

--- Before Conf --

spark.yarn.driver.memory None

spark.yarn.driver.cores None

spark.yarn.executor.memory None

spark.yarn.executor.cores None

spark.yarn.executor.memoryOverhead None

--- Conf --

--- After Conf ---

spark.yarn.driver.memory 15G

spark.yarn.driver.cores 5

spark.yarn.executor.memory 15G

spark.yarn.executor.cores 5

spark.yarn.executor.memoryOverhead 10G

It seems like the spark.yarn.executor.memoryOverhead is set but why is it not recognized? I still get the same error.

I have seen other posts regarding problems with setting the spark.yarn.executor.memoryOverhead but not when it seems to be set and not working?

3
  • Open Glue > Jobs > Edit your Job > Script libraries and job parameters (optional) > Job parameters near the bottom

  • Set the following > key: --conf value: spark.yarn.executor.memoryOverhead=1024

| improve this answer | |
  • This seemed to help my case, but just want to point out the following for upcoming Spark versions: WARN SparkConf: The configuration key 'spark.yarn.executor.memoryOverhead' has been deprecated as of Spark 2.3 and may be removed in the future. Please use the new key 'spark.executor.memoryOverhead' instead. – garromark Sep 11 '19 at 16:08
1

Unfortunately the current version of the Glue doesn't support this functionality. You cannot set other parameters than using UI. In your case, instead of using AWS Glue, you can use AWS EMR service.

When I had the similar problem I tried to reduce the number of shuffles and the amount of data shuffled, and increase DPU. During the work on this problem I based on the following articles. I hope they will be useful.

http://blog.cloudera.com/blog/2015/03/how-to-tune-your-apache-spark-jobs-part-1/

https://www.indix.com/blog/engineering/lessons-from-using-spark-to-process-large-amounts-of-data-part-i/

https://umbertogriffo.gitbooks.io/apache-spark-best-practices-and-tuning/content/sparksqlshufflepartitions_draft.html


Updated: 2019-01-13

Amazon added lately new section to AWS Glue documentation which describes how to monitor and optimize Glue jobs. I think it is very useful thing to understand where is the problem related to memory issue and how to avoid it.

https://docs.aws.amazon.com/glue/latest/dg/monitor-profile-glue-job-cloudwatch-metrics.html

| improve this answer | |

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.