I'm having difficulty getting these components to knit together properly. I have Spark installed and working successfully, I can run jobs locally, standalone, and also via YARN. I have followed the steps advised (to the best of my knowledge) here and here
I'm working on Ubuntu and the various component versions I have are
- Spark spark-1.5.1-bin-hadoop2.6
- Hadoop hadoop-2.6.1
- Mongo 2.6.10
- Mongo-Hadoop connector cloned from https://github.com/mongodb/mongo-hadoop.git
- Python 2.7.10
I had some difficulty following the various steps such as which jars to add to which path, so what I have added are
/usr/local/share/hadoop-2.6.1/share/hadoop/mapreduceI have added
- the following environment variables
My Python program is basic
from pyspark import SparkContext, SparkConf import pymongo_spark pymongo_spark.activate() def main(): conf = SparkConf().setAppName("pyspark test") sc = SparkContext(conf=conf) rdd = sc.mongoRDD( 'mongodb://username:password@localhost:27017/mydb.mycollection') if __name__ == '__main__': main()
I am running it using the command
$SPARK_HOME/bin/spark-submit --driver-class-path /usr/local/share/mongo-hadoop/spark/build/libs/ --master local ~/sparkPythonExample/SparkPythonExample.py
and I am getting the following output as a result
Traceback (most recent call last): File "/home/me/sparkPythonExample/SparkPythonExample.py", line 24, in <module> main() File "/home/me/sparkPythonExample/SparkPythonExample.py", line 17, in main rdd = sc.mongoRDD('mongodb://username:password@localhost:27017/mydb.mycollection') File "/usr/local/share/mongo-hadoop/spark/src/main/python/pymongo_spark.py", line 161, in mongoRDD return self.mongoPairRDD(connection_string, config).values() File "/usr/local/share/mongo-hadoop/spark/src/main/python/pymongo_spark.py", line 143, in mongoPairRDD _ensure_pickles(self) File "/usr/local/share/mongo-hadoop/spark/src/main/python/pymongo_spark.py", line 80, in _ensure_pickles orig_tb) py4j.protocol.Py4JError
According to here
This exception is raised when an exception occurs in the Java client code. For example, if you try to pop an element from an empty stack. The instance of the Java exception thrown is stored in the java_exception member.
Looking at the source code for
pymongo_spark.py and the line throwing the error, it says
"Error while communicating with the JVM. Is the MongoDB Spark jar on Spark's CLASSPATH? : "
So in response, I have tried to be sure the right jars are being passed, but I might be doing this all wrong, see below
$SPARK_HOME/bin/spark-submit --jars /usr/local/share/spark-1.5.1-bin-hadoop2.6/lib/mongo-hadoop-spark-1.5.0-SNAPSHOT.jar,/usr/local/share/spark-1.5.1-bin-hadoop2.6/lib/mongo-java-driver-3.0.4.jar --driver-class-path /usr/local/share/spark-1.5.1-bin-hadoop2.6/lib/mongo-java-driver-3.0.4.jar,/usr/local/share/spark-1.5.1-bin-hadoop2.6/lib/mongo-hadoop-spark-1.5.0-SNAPSHOT.jar --master local ~/sparkPythonExample/SparkPythonExample.py
I have imported
pymongo to the same python program to verify that I can at least access MongoDB using that, and I can.
I know there are quite a few moving parts here so if I can provide any more useful information please let me know.