1

This question already has an answer here:

I am running a spark job and I am setting the following configurations in the spark-defaults.sh. I have the following changes in the name node. I have 1 data node. And I am working on data of 2GB.

spark.master                     spark://master:7077
spark.executor.memory            5g
spark.eventLog.enabled           true
spark.eventLog.dir               hdfs://namenode:8021/directory
spark.serializer                 org.apache.spark.serializer.KryoSerializer
spark.driver.memory              5g
spark.executor.extraJavaOptions  -XX:+PrintGCDetails -Dkey=value -Dnumbers="one two three"

But I am getting an error saying GC limit exceeded.

Here is the code I am working on.

import os
import sys
import unicodedata
from operator import add 

try:
    from pyspark import SparkConf
    from pyspark import SparkContext
except ImportError as e:
    print ("Error importing Spark Modules", e)
    sys.exit(1)


# delimeter function
def findDelimiter(text):
    sD = text[1] 
    eD = text[2] 
    return (eD, sD) 

def tokenize(text):
    sD = findDelimiter(text)[1]
    eD = findDelimiter(text)[0]
    arrText = text.split(sD)
    text = ""
    seg = arrText[0].split(eD)
    arrText=""
    senderID = seg[6].strip()
    yield (senderID, 1)


conf = SparkConf()
sc = SparkContext(conf=conf)

textfile = sc.textFile("hdfs://my_IP:9000/data/*/*.txt")

rdd = textfile.flatMap(tokenize)
rdd = rdd.reduceByKey(lambda a,b: a+b)
rdd.coalesce(1).saveAsTextFile("hdfs://my_IP:9000/data/total_result503")

I even tried groupByKey instead of also. But I am getting the same error. But when I tried removing the reduceByKey or groupByKey I am getting outputs. Can some one help me with this error.

Should I also increase the size of GC in hadoop. And as I said earlier I have set driver.memory to 5gb, I did it in the name node. Should I do that in data node as well?

marked as duplicate by Ravindra babu, Community Jun 27 '16 at 12:31

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • What is the size of data and the number of nodes in the cluster? – Sachin Janani Jun 22 '16 at 5:26
  • Number if nodes is 1 and size is around 2GB. – Baradwaj Aryasomayajula Jun 22 '16 at 12:12
  • I believe you have more than 10 GB of RAM on your node as you are assigning 5 gb to driver and 5gb to executor.Can you try setting spark.driver.memory to something 2GB – Sachin Janani Jun 22 '16 at 12:31
  • What different would it make? – Baradwaj Aryasomayajula Jun 22 '16 at 12:33
  • And if I do that should I do that in datanode as well.. Because all the above configurations I did was in namenode alone.... – Baradwaj Aryasomayajula Jun 22 '16 at 12:34
2

Try to add below setting for your spark-defaults.sh:

spark.driver.extraJavaOptions -XX:+UseG1GC

spark.executor.extraJavaOptions -XX:+UseG1GC

Tuning jvm garbage collection might be tricky, but "G1GC" seems works pretty good. Worth trying!!

0

The code you have should have worked with your configuration . As suggested earlier try using G1GC . Also try reducing storage memory fraction . By default its 60% . Try reducing it to 40% or less. You can set it by adding spark.storage.memoryFraction 0.4

0

I was able to solve the problem. I was running my hadoop in the root user of the master node. But I configured the hadoop in a different user in the datanodes. Now I configured them in the root user of the data node and increased the executor and driver memory it worked fine.

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