16

I'm launching a pyspark program:

$ export SPARK_HOME=
$ export PYTHONPATH=$SPARK_HOME/python:$SPARK_HOME/python/lib/py4j-0.9-src.zip
$ python

And the py code:

from pyspark import SparkContext, SparkConf

SparkConf().setAppName("Example").setMaster("local[2]")
sc = SparkContext(conf=conf)

How do I add jar dependencies such as the Databricks csv jar? Using the command line, I can add the package like this:

$ pyspark/spark-submit --packages com.databricks:spark-csv_2.10:1.3.0 

But I'm not using any of these. The program is part of a larger workflow that is not using spark-submit I should be able to run my ./foo.py program and it should just work.

  • I know you can set the spark properties for extraClassPath but you have to copy JAR files to each node?
  • Tried conf.set("spark.jars", "jar1,jar2") that didn't work too with a py4j CNF exception
23

There are many approaches here (setting ENV vars, adding to $SPARK_HOME/conf/spark-defaults.conf, etc...) some of the answers already cover these. I wanted to add an additional answer for those specifically using Jupyter Notebooks and creating the Spark session from within the notebook. Here's the solution that worked best for me (in my case I wanted the Kafka package loaded):

spark = SparkSession.builder.appName('my_awesome')\
    .config('spark.jars.packages', 'org.apache.spark:spark-sql-kafka-0-10_2.11:2.2.0')\
    .getOrCreate()

Using this line of code I didn't need to do anything else (no ENVs or conf file changes).

2019-10-30 Update: The above line of code is still working great but I wanted to note a couple of things for new people seeing this answer:

  • You'll need to change the version at the end to match your Spark version, so for Spark 2.4.4 you'll need: org.apache.spark:spark-sql-kafka-0-10_2.11:2.4.4
  • The newest version of this jar spark-sql-kafka-0-10_2.12is crashing for me (Mac Laptop), so if you get a crash when invoking 'readStream' revert to 2.11.
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  • 1
    This option seems often ignored/undocumented elsewhere... as stated, this is a good solution for jupyter users. – Luke W Nov 20 '17 at 23:04
  • 3
    for jars, use 'spark.jars' – Saksham Aug 16 '18 at 12:12
  • This answer is perfect for anyone who is launching a Spark environment from code in general and needs to pull a jar during runtime. I'm successfully using this to load a GraphFrames jar onto some very limited-access systems which provide no way to build a custom SparkConf file. Thanks for the clear example! – bsplosion Dec 27 '18 at 20:31
  • 1
    @briford-wylie But did you have to download and place a jar file somewhere? I did a jar -tvf fileName.jar | grep -i kafka for each jar in the Spark .../jars/ directory, and found nothing for kafka. Where was yours located? I'm not necessarily interested in kafka per-se; I'm just following your example to try to generalize it. – NYCeyes Dec 27 '18 at 23:37
12

Any dependencies can be passed using spark.jars.packages (setting spark.jars should work as well) property in the $SPARK_HOME/conf/spark-defaults.conf. It should be a comma separated list of coordinates.

And packages or classpath properties have to be set before JVM is started and this happens during SparkConf initialization. It means that SparkConf.set method cannot be used here.

Alternative approach is to set PYSPARK_SUBMIT_ARGS environment variable before SparkConf object is initialized:

import os
from pyspark import SparkConf

SUBMIT_ARGS = "--packages com.databricks:spark-csv_2.11:1.2.0 pyspark-shell"
os.environ["PYSPARK_SUBMIT_ARGS"] = SUBMIT_ARGS

conf = SparkConf()
sc = SparkContext(conf=conf)
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  • 2
    This solution seems not to work for me, at least within the notebook; I still get class-not-found errors. In fact, none of the environment variables I set seem to get picked up by Spark. It seems like os.environ sets the environment only for the process in which the python kernel is running, but any subprocesses don't pick up those environment variables. In other words, it's not doing the equivalent of export .... Any thoughts? – santon Mar 4 '16 at 0:27
  • subprocess.Popen takes env argument where you can pass a copy of the current environment. – zero323 Mar 4 '16 at 0:34
5

I encountered a similar issue for a different jar ("MongoDB Connector for Spark", mongo-spark-connector), but the big caveat was that I installed Spark via pyspark in conda (conda install pyspark). Therefore, all the assistance for Spark-specific answers weren't exactly helpful. For those of you installing with conda, here is the process that I cobbled together:

1) Find where your pyspark/jars are located. Mine were in this path: ~/anaconda2/pkgs/pyspark-2.3.0-py27_0/lib/python2.7/site-packages/pyspark/jars.

2) Download the jar file into the path found in step 1, from this location.

3) Now you should be able to run something like this (code taken from MongoDB official tutorial, using Briford Wylie's answer above):

from pyspark.sql import SparkSession

my_spark = SparkSession \
    .builder \
    .appName("myApp") \
    .config("spark.mongodb.input.uri", "mongodb://127.0.0.1:27017/spark.test_pyspark_mbd_conn") \
    .config("spark.mongodb.output.uri", "mongodb://127.0.0.1:27017/spark.test_pyspark_mbd_conn") \
    .config('spark.jars.packages', 'org.mongodb.spark:mongo-spark-connector_2.11:2.2.2') \
    .getOrCreate()

Disclaimers:

1) I don't know if this answer is the right place/SO question to put this; please advise of a better place and I will move it.

2) If you think I have errored or have improvements to the process above, please comment and I will revise.

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  • how would you deal with "spark.jars.packages" not using maven? – Brian Nov 7 '19 at 14:37
  • What do you mean? Is there a stack trace you want to post if this is an error? – ximiki Nov 7 '19 at 20:54
3

Finally found the answer after a multiple tries. The answer is specific to using spark-csv jar. Create a folder in you hard drive say D:\Spark\spark_jars. Place the following jars there:

  1. spark-csv_2.10-1.4.0.jar (this is the version I am using)
  2. commons-csv-1.1.jar
  3. univocity-parsers-1.5.1.jar

2 and 3 are dependencies required by spark-csv, hence those two files need to be downloaded too. Go to your conf directory where you have downloaded Spark. In the spark-defaults.conf file add the line:

spark.driver.extraClassPath D:/Spark/spark_jars/*

The asterisk should include all the jars. Now run Python, create SparkContext, SQLContext as you normally would. Now you should be able to use spark-csv as

sqlContext.read.format('com.databricks.spark.csv').\
options(header='true', inferschema='true').\
load('foobar.csv')
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0
import os
import sys
spark_home = os.environ.get('SPARK_HOME', None)
sys.path.insert(0, spark_home + "/python")
sys.path.insert(0, os.path.join(spark_home, 'python/lib/py4j-0.10.4-src.zip'))

Here it comes....

sys.path.insert(0, <PATH TO YOUR JAR>)

Then...

import pyspark
import numpy as np

from pyspark import SparkContext

sc = SparkContext("local[1]")
.
.
.
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  • sys.path is for python packages not for jars – iggy Sep 16 '19 at 19:23

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