I have a dataframe that looks like:

A     B    C
A1    B1   0.8
A1    B2   0.55
A1    B3   0.43

A2    B1   0.7
A2    B2   0.5
A2    B3   0.5

A3    B1   0.2
A3    B2   0.3
A3    B3   0.4

How do I convert the column 'C' to the relative rank(higher score->better rank) per column A? Expected Output:

A     B    Rank
A1    B1   1
A1    B2   2
A1    B3   3

A2    B1   1
A2    B2   2
A2    B3   2

A3    B1   3
A3    B2   2
A3    B3   1

The ultimate state I want to reach is to aggregate column B and store the ranks for each A:


B    Ranks
B1   [1,1,3]
B2   [2,2,2]
B3   [3,2,1]

2 Answers 2


Add rank:

from pyspark.sql.functions import *
from pyspark.sql.window import Window

ranked =  df.withColumn(
  "rank", dense_rank().over(Window.partitionBy("A").orderBy(desc("C"))))

Group by:

grouped = ranked.groupBy("B").agg(collect_list(struct("A", "rank")).alias("tmp"))

Sort and select:

grouped.select("B", sort_array("tmp")["rank"].alias("ranks"))

Tested with Spark 2.1.0.

  • 2
    Where is the favourite button? Commented Jan 30, 2020 at 12:26
windowSpec = Window.partitionBy("col1").orderBy("col2")
ranked = demand.withColumn("col_rank", row_number().over(windowSpec))

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.