21

I found that AWS Glue set up executor's instance with memory limit to 5 Gb --conf spark.executor.memory=5g and some times, on a big datasets it fails with java.lang.OutOfMemoryError. The same is for driver instance --spark.driver.memory=5g. Is there any option to increase this value?

7
  • I tried to run Glue job with parameters --driver-memory 8g and --executor-memory 8g but have no seen changes. Job still fails with java.lang.OutOfMemoryError trying to load data over 5gb Mar 5, 2018 at 7:37
  • Have you confirmed whether your changes been taken (in the log)? something like = --conf spark.executor.memory=8g Mar 15, 2018 at 8:54
  • Yes, in logs I see that parameter --executor-memory 8g was passed in run parameters. But, as soon I can pass only script parameters, I see 2 --executor-memory: first is part of spark job run parameters passed by Glue, and second is mine. Like this: /usr/lib/spark/bin/spark-submit --master yarn --executor-memory 5g ... /tmp/runscript.py script_2018-03-16-11-09-28.py --JOB_NAME XXX --executor-memory 8g After that, a log message like 18/03/16 11:09:31 INFO Client: Will allocate AM container, with 5632 MB memory including 512 MB overhead Mar 16, 2018 at 11:20
  • Have you been able to solve this? May 1, 2018 at 15:44
  • @TofigHasanov still not. Please try solution from Kris Bravo stackoverflow.com/questions/49034126/… and let me know. Right now I have no ability to test it. Hope it works. May 2, 2018 at 19:08

6 Answers 6

15

despite aws documentation stating that the --conf parameter should not be passed, our AWS support team told us to pass --conf spark.driver.memory=10g which corrected the issue we were having

0
11

You can override the parameters by editing the job and adding job parameters. The key and value I used are here:

Key: --conf

Value: spark.yarn.executor.memoryOverhead=7g

This seemed counterintuitive since the setting key is actually in the value, but it was recognized. So if you're attempting to set spark.yarn.executor.memory the following parameter would be appropriate:

Key: --conf

Value: spark.yarn.executor.memory=7g

4
  • Thanks Kris. I will test your solution as soon as I can. May 2, 2018 at 19:10
  • 1
    I just added the following in my job section on my CloudFormation template, in the DefaultArguments part: "--conf": "spark.yarn.executor.memory=8g" without luck. The job fails with the message Container killed by YARN for exceeding memory limits. 5.7 GB of 5.5 GB physical memory used. I can actually see the parameter in the Job Parameters.
    – Xavi
    Jul 5, 2018 at 7:22
  • 1
    I tried following setting with key as --conf and value as spark.driver.extraClassPath=s3://temp/jsch-0.1.55.jar for giving precedence to latest jar of jsch instead of the version that Glue is selecting but it doesn't work. Am I missing something. Also, as @rileyss mentioned, Glue documentation states that conf cannot be set. So, how should we go about resolving this?
    – Dwarrior
    Mar 16, 2019 at 4:31
  • 1
    @Xavi It could very well be the driver's config you need to modify. E.g "spark.driver.memory=8g"
    – selle
    May 4, 2020 at 18:43
10
  1. Open Glue> Jobs > Edit your Job> Script libraries and job parameters (optional) > Job parameters near the bottom
  2. Set the following: key: --conf value: spark.yarn.executor.memoryOverhead=1024 spark.driver.memory=10g
4

The official glue documentation suggests that glue doesn't support custom spark config.

There are also several argument names used by AWS Glue internally that you should never set:

--conf — Internal to AWS Glue. Do not set!

--debug — Internal to AWS Glue. Do not set!

--mode — Internal to AWS Glue. Do not set!

--JOB_NAME — Internal to AWS Glue. Do not set!

Any better suggestion on solving this problem?

3
  • Have you been able to figure out the resolution for this? I tried following setting with key as --conf and value as spark.driver.extraClassPath=s3://temp/jsch-0.1.55.jar for giving precedence to latest jar of jsch instead of the version that Glue is selecting but it doesn't work. Am I missing something? So, how should we go about resolving this?
    – Dwarrior
    Mar 16, 2019 at 4:32
  • 1
    @Dwarrior I'm not sure if you can customize anything about spark on Glue. It seems that Glue runs on a pre-set environment and that's why it's cheap. My solution is dividing the input data into smaller chunks and run several glue jobs. If you really need to use customized spark settings, you can try AWS EMR, which gives you much more freedom in adjusting spark parameters.
    – cozyss
    Mar 21, 2019 at 17:08
  • thanks! Will explore the other options. I fathomed from other answers that some settings did work. :)
    – Dwarrior
    Mar 22, 2019 at 13:47
1

I hit out of memory errors like this when I had a highly skewed dataset. In my case, I had a bucket of json files that contained dynamic payloads that were different based on the event type indicated in the json. I kept hitting Out of Memory errors no matter if I used the configuration flags indicated here and increased the DPUs. It turns out that my events were highly skewed to a couple of the event types being > 90% of the total data set. Once I added a "salt" to the event types and broke up the highly skewed data I did not hit any out of memory errors.

Here's a blog post for AWS EMR that talks about the same Out of Memory error with highly skewed data. https://medium.com/thron-tech/optimising-spark-rdd-pipelines-679b41362a8a

0

You can use Glue G.1X and G.2X worker types which give more memory and disk space to scale Glue jobs that need high memory and throughput. Also you can edit Glue job and set --conf value spark.yarn.executor.memoryOverhead=1024 or 2048 and spark.driver.memory=10g

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.