Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am trying to run the simply app in spark tutorial on my single machine cluster. I have Hadoop 2.2 running on my machine. I am using mac with 8GB RAM.

steven@eva-2 /o/s/a/t/scala-2.10> jps
6160 Jps
5841 Worker
4005 SecondaryNameNode
1460 NailgunRunner
3828 NameNode
3907 DataNode
4106 ResourceManager
5751 Master
4185 NodeManager

Also, I am able to access the Web UI (able to see the program is finished but killed). The problem is when I run this programm:

import org.apache.spark.SparkContext
import org.apache.spark.SparkConf

object SimplyApp extends App {
  val logFile = "/opt/spark-0.9.0-incubating-bin-hadoop2/README.md"

  val conf = new SparkConf()
    .setAppName("Simple App")
    .set("spark.executor.memory", "1g")

  val sc = new SparkContext(conf)

  val logData = sc.textFile(logFile, 2).cache()
  val numAs = logData.filter(line => line.contains("a")).count()
  val numBs = logData.filter(line => line.contains("b")).count()
  println("Lines with a: %s, Lines with b: %s".format(numAs, numBs))

The error is:

14/06/03 20:46:19 INFO storage.BlockManagerMasterActor$BlockManagerInfo: Registering block manager with 589.2 MB RAM
14/06/03 20:46:20 WARN scheduler.TaskSetManager: Lost TID 1 (task 0.0:1)
14/06/03 20:46:20 WARN scheduler.TaskSetManager: Loss was due to java.lang.OutOfMemoryError
java.lang.OutOfMemoryError: Java heap space

I tried to give it more memory, but still the same problem. Does anyone know how to handle this? Thank you.

share|improve this question
have you tried with setMaster("local[4]") ? That's local mode. It looks like your slave is misconfigured. The sample file is quite small to generate this error. Also not to overlook the obvious: do you have enough free mem on your machine? –  maasg Jun 3 '14 at 13:50
how are you starting the local cluster? –  maasg Jun 3 '14 at 14:16
@maasg Hey. I just start the cluster (weird, change IP and the launch script works). Now, I am trying to use your solution. I changed the memory to a small number, but still face the problem. Than I set master as local[4], it works. But what I want to do is to use the spark URL to set the master, since I can test locally and deploy to the cluster conveniently. Am I right? –  hakunami Jun 4 '14 at 1:31
How many workers are you deploying alongside the master? How much memory do they have? –  maasg Jun 4 '14 at 14:15
@maasg I only use one worker on my machine. And it has the default memory(since I don't change spark-env.sh) which is system memory minus 1GB –  hakunami Jun 5 '14 at 6:18

1 Answer 1

This is a shot in the dark, as I'd need to know the cluster config to pin-point the issue, but most probably is in these lines:

spark.executor.memory is the amount of memory that the executor requires. It's an application setting. On the other hand, if you are running in an standalone cluster (as you're using a master url) the memory available to the workers is defined by the env var: SPARK_WORKER_MEMORY. It follows: spark.executor.memory < SPARK_WORKER_MEMORY.

Given you're processing a file of few Kb, try lowering spark.executor.memory to ~100Mb or so. The hint is to lower the spark.executor.memory setting, not to increase it.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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