I'm new to scala/spark and loading a file(csv) of size 2GB and it works fine on my Virtual Machine with below HEAP_SIZE.

HEAP_SIZE="-Xms8g -Xmx8g"

But when running the same code and loading the same file on IntelliJ it throws java.lang.StackOverflowError exception. Know I'm not setting the memory options correctly on IntelliJ. Could someone please help me how and where exactly I need to set this as I have enough memory on my windows machine(32GB)?

By tracing the error, it exactly comes from the below code and obviously at collect.

val lst: Array[String] = expRDD.map((c: tmpClass) => (c.objType, 0))
  .reduceByKey((x: Int, y: Int) => 0)
  .map({ (t: Tuple2[String, Int]) => t._1 })
New contributor
Leibnitz is a new contributor to this site. Take care in asking for clarification, commenting, and answering. Check out our Code of Conduct.
  • Did you try the VM Options field of the Run/Debug configuration used to start your app? – CrazyCoder Mar 16 at 2:01
  • My bad its java.lang.StackOverflowError. Yes I tried VM Options using Edit Configuration by giving the same heapsize. – Leibnitz Mar 16 at 2:46
  • Try adding -Xss4m in the VM Options. If the issue persists, it's probably caused by some infinite recursion and you will need to share the Minimal, Complete, and Verifiable example to get help. – CrazyCoder Mar 16 at 6:30
  • Thanks, this worked. Could you please put it as an answer explaining how this works so I can accept it? – Leibnitz Mar 16 at 11:16

Increasing the stack size may help. You can specify -Xss4m in the VM Options field of the corresponding Run/Debug configuration. This will set the stack size to 4M (the default stack size depends on the OS and JVM version and is usually lower than 1M). Note that it will not help if your problem is caused by the infinite recursion.

Your Answer

Leibnitz is a new contributor. Be nice, and check out our Code of Conduct.

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.