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 eD = text return (eD, sD) def tokenize(text): sD = findDelimiter(text) eD = findDelimiter(text) arrText = text.split(sD) text = "" seg = arrText.split(eD) arrText="" senderID = seg.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?