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I am trying to apply the groupBy() clause over a dataframe to group equal instances, but I want it to be applied only if there can be created groups of more than 3 elements. I mean, if I have 2 equal instances, I don't want to group them, but if I have more than 2 equal instances I want to create a group of them.

I am using this code to create the groups but I don't know how to change it to solve the problem I am facing:

dataframe_grouped = dataframe.groupBy(columns)
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Dataframe for example

>>> a = [("foo",3),("foo",11),("foo",22),("bar",3),("foo",5)]
>>> df = spark.createDataFrame(a,["name","value"])
>>> df.show()
+----+-----+
|name|value|
+----+-----+
| foo|    3|
| foo|   11|
| foo|   22|
| bar|    3|
| foo|    5|
+----+-----+

Apply a filter on the number of occurence after your groupBy()

>>> df2 = df.groupBy(df.name).count().filter("count>3").show()
>>> df2.show()
+----+-----+
|name|count|
+----+-----+
| foo|    4|
+----+-----+

Then you can use elements of the column "name" of df2 and join them with the elements of the column "name" of df1. So df3 will be a dataframe with only the elements that have equal instances higher than 3.

>>> df3 = df.join(df2, df.name == df2.name).select(df2.name, df.value)
>>> df3.show()
+----+-----+
|name|value|
+----+-----+
| foo|    3|
| foo|   11|
| foo|   22|
| foo|    5|
+----+-----+

If you work on df3 you can use groupBy() and you will have groupedData that will have more than 3 elements for each "name".

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  • Great answer! Thank you! – jartymcfly Jun 15 '17 at 15:01
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Do one thing extract that columns by

 SeriesName = dataframe_grouped['column_name']

Now check the occurrence of that particular string in that series . Find the syntax from here

From the count you will get the number of sequence and those which have more than 2 , put those in a different series and then add that series in the dataframe.

dataframe_grouped['new_column'] = newSeries

and then perform a group by on that new columndataframe.groupBy(new_column)

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