I have the following table as a RDD:

Key Value
1    y
1    y
1    y
1    n
1    n
2    y
2    n
2    n

I want to remove all the duplicates from Value.

Output should come like this:

Key Value
1    y
1    n
2    y
2    n

While working in pyspark, output should come as list of key-value pairs like this:


I don't know how to apply for loop here. In a normal Python program it would have been very easy.

I wonder if there is some function in pyspark for the same.

  • What is RDD the abbreviation for? Sep 18, 2014 at 6:24
  • You can convert it to a set, then everything is only there once Sep 18, 2014 at 6:25
  • Resilient Distributed Dataset. Sep 18, 2014 at 6:26
  • In spark its different, can you elaborate it please? Sep 18, 2014 at 6:27

3 Answers 3


I am afraid I have no knowledge about python, so all the references and code I provide in this answer are relative to java. However, it should not be very difficult to translate it into python code.

You should take a look to the following webpage. It redirects to Spark's official web page, which provides a list of all the transformations and actions supported by Spark.

If I am not mistaken, the best approach (in your case) would be to use the distinct() transformation, which returns a new dataset that contains the distinct elements of the source dataset (taken from link). In java, it would be something like:

JavaPairRDD<Integer,String> myDataSet = //already obtained somewhere else
JavaPairRDD<Integer,String> distinctSet = myDataSet.distinct();

So that, for example:

Partition 1:

1-y | 1-y | 1-y | 2-y
2-y | 2-n | 1-n | 1-n

Partition 2:

2-g | 1-y | 2-y | 2-n
1-y | 2-n | 1-n | 1-n

Would get converted to:

Partition 1:

1-y | 2-y
1-n | 2-n 

Partition 2:

1-y | 2-g | 2-y
1-n | 2-n |

Of course, you still would have multiple RDD dataSets each wich a list of distinct elements.


This problem is simple to solve using the distinct operation of the pyspark library from Apache Spark.

from pyspark import SparkContext, SparkConf

# Set up a SparkContext for local testing
if __name__ == "__main__":
    sc = SparkContext(appName="distinctTuples", conf=SparkConf().set("spark.driver.host", "localhost"))

# Define the dataset
dataset = [(u'1',u'y'),(u'1',u'y'),(u'1',u'y'),(u'1',u'n'),(u'1',u'n'),(u'2',u'y'),(u'2',u'n'),(u'2',u'n')]

# Parallelize and partition the dataset 
# so that the partitions can be operated
# upon via multiple worker processes.
allTuplesRdd = sc.parallelize(dataset, 4)

# Filter out duplicates
distinctTuplesRdd = allTuplesRdd.distinct() 

# Merge the results from all of the workers
# into the driver process.
distinctTuples = distinctTuplesRdd.collect()

print 'Output: %s' % distinctTuples

This will output the following:

Output: [(u'1',u'y'),(u'1',u'n'),(u'2',u'y'),(u'2',u'n')]
  • typo needs fix: allTuples -> allTuplesRdd?
    – Paul
    May 12, 2016 at 22:06
  • Good catch @pavopax. I've fixed the typo.
    – jsears
    Jul 25, 2016 at 17:41

If you want to remove all duplicates from a particular column or set of columns, i.e doing a distinct on set of columns, then pyspark has the function dropDuplicates, which will accept specific set of columns to distinct on.


  • 1
    This requires you to turn the rdd to dataframe beforehand, I wonder how we can do that only using rdd
    – innovatism
    May 21, 2016 at 9:25

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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