This question already has an answer here:

I have a RDD:

myRDD = [(u'9973', u'Group 1'), (u'9890', u'Group 2'), (u'98728', u'Round of 
16'), (u'98270', u'Group 1'), (u'9794', u'Group 4'), (u'96924', u'Final'), 
(u'9624', u'Group 2'), (u'9624', u'Group 2'), (u'9622', u'Group 1'), 
(u'96000', u'Group A'), (u'9591', u'Group 2'), (u'95261', u'Group 1'), 
(u'9511', u'Group 2'), (u'95000', u'Group 3'), (u'94493', u'Semi-finals'), 
(u'94194', u'Final'), (u'93869', u'Group A'), (u'93869', u'Group A'), 
(u'93194', u'Group B'), (u'92570', u'Group 1')]

This displays the top 20 elements of the RDD. I have already sorted the RDD as

myRDD.sortByKey(True) and also tried myRDD.sortBy(lambda x: x[0])

But still, the values are not being ordered by descending order.

Any idea what I might be doing wrong?

Also, how can I achieve the same in the data frame?

marked as duplicate by user8371915, Ramesh Maharjan, eliasah apache-spark May 29 '18 at 11:40

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.


sortByKey sorts the Keys and not the values, sortByKey(True) for ascending order of keys, False for descending. If you need only the values you can use "values" transformation of pair RDD, so then you can takeOrdered with an order provided by yourself. With Dataframe I think that you can usa spark.sql and write a sql-like query to get the result in descending order. I don't use spark with python, but the logic is the same.

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