12

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:

[(u'1',u'n'),(u'2',u'n')]

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? – user1767754 Sep 18 '14 at 6:24
  • You can convert it to a set, then everything is only there once – user1767754 Sep 18 '14 at 6:25
  • Resilient Distributed Dataset. – COSTA Sep 18 '14 at 6:26
  • In spark its different, can you elaborate it please? – COSTA Sep 18 '14 at 6:27
18

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.

  • 1
    dataset.distinct() solved the problem.Thanks..:) – COSTA Sep 18 '14 at 17:42
8

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 '16 at 22:06
  • Good catch @pavopax. I've fixed the typo. – jsears Jul 25 '16 at 17:41
4

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.

aka

df.dropDuplicates(['value']).show()
  • 1
    This requires you to turn the rdd to dataframe beforehand, I wonder how we can do that only using rdd – innovatism May 21 '16 at 9:25

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