I'm using PySpark (Python 2.7.9/Spark 1.3.1) and have a dataframe GroupObject which I need to filter & sort in the descending order. Trying to achieve it via this piece of code.

group_by_dataframe.count().filter("`count` >= 10").sort('count', ascending=False)

But it throws the following error.

sort() got an unexpected keyword argument 'ascending'
  • unbelievably, this still exists in the spark 3.2.0. May 22, 2023 at 12:53

8 Answers 8


In PySpark 1.3 sort method doesn't take ascending parameter. You can use desc method instead:

from pyspark.sql.functions import col

    .filter("`count` >= 10")

or desc function:

from pyspark.sql.functions import desc

    .filter("`count` >= 10")

Both methods can be used with with Spark >= 1.3 (including Spark 2.x).


Use orderBy:

df.orderBy('column_name', ascending=False)

Complete answer:

group_by_dataframe.count().filter("`count` >= 10").orderBy('count', ascending=False)



By far the most convenient way is using this:


Doesn't require special imports.

  • 2
    Credit to Daniel Haviv a Solutions Architect at Databricks who showed me this way.
    – gdoron
    Dec 5, 2019 at 10:44
  • 2
    by far the best answer here.
    – born_naked
    Mar 17, 2020 at 22:35
  • 2
    This should be the accepted answer instead. Much simpeler and doesnt rely on packages (perhaps wasn't available at the time)
    – Anonymous
    May 12, 2020 at 10:30
  • 1
    I really like this answer but didn't work for me with count in spark 3.0.0. I think is because count is a function rather than a number. TypeError: Invalid argument, not a string or column: <bound method DataFrame.count of DataFrame[...]> of type <class 'method'>. For column literals, use 'lit', 'array', 'struct' or 'create_map' function. Aug 20, 2020 at 20:58
  • This orderBy (sort) works in Azure Synapse Analytics, when reading from dedicatedp1 using "spark.read.synapsesql" Mar 29, 2023 at 21:30

you can use groupBy and orderBy as follows also

dataFrameWay = df.groupBy("firstName").count().withColumnRenamed("count","distinct_name").sort(desc("count"))
  • 1
    Why are you first renaming the column and then using the old name for sorting? Renaming is not even a part of the question asked
    – Sheldore
    Jan 31, 2021 at 14:54
  • @Sheldore I am renaming the column name for the performance optimization while working with aggregation queries its difficult for Spark to maintain the metadata for the newly added column Mar 25, 2021 at 12:31

In pyspark 2.4.4

1) group_by_dataframe.count().filter("`count` >= 10").orderBy('count', ascending=False)

2) from pyspark.sql.functions import desc
   group_by_dataframe.count().filter("`count` >= 10").orderBy('count').sort(desc('count'))

No need to import in 1) and 1) is short & easy to read,
So I prefer 1) over 2)

  • 1
    Why are you using both orderBy and sort in the same answer in 2)?
    – Sheldore
    Jan 31, 2021 at 14:52

RDD.sortBy(keyfunc, ascending=True, numPartitions=None)

an example:

words =  rdd2.flatMap(lambda line: line.split(" "))
counter = words.map(lambda word: (word,1)).reduceByKey(lambda a,b: a+b)

print(counter.sortBy(lambda a: a[1],ascending=False).take(10))

PySpark added Pandas style sort operator with the ascending keyword argument in version 1.4.0. You can now use

df.sort('<col_name>', ascending = False)

Or you can use the orderBy function:

  • df.orderBy('<col_name>').desc() this gave error the first command worked Aug 1, 2023 at 18:25

You can use pyspark.sql.functions.desc instead.

from pyspark.sql.functions import desc


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