I tried to understand the difference between dense rank and row number.Each new window partition both is starting from 1. Does rank of a row is not always start from 1 ? Any help would be appreciated
2 Answers
The difference is when there are "ties" in the ordering column. Check the example below:
import org.apache.spark.sql.expressions.Window
import org.apache.spark.sql.functions._
val df = Seq(("a", 10), ("a", 10), ("a", 20)).toDF("col1", "col2")
val windowSpec = Window.partitionBy("col1").orderBy("col2")
df
.withColumn("rank", rank().over(windowSpec))
.withColumn("dense_rank", dense_rank().over(windowSpec))
.withColumn("row_number", row_number().over(windowSpec)).show
++++++
col1col2rankdense_rankrow_number
++++++
 a 10 1 1 1
 a 10 1 1 2
 a 20 3 2 3
++++++
Note that the value "10" exists twice in col2
within the same window (col1 = "a"
). That's when you see a difference between the three functions.

6@daniel This is an excellent answer with a great visual element to drive the point home. Feb 1, 2018 at 4:51

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1Also, using this it's possible to get unique row numbers without having to partition by any specific column: df.withColumn('row_num' , row_number().over(Window.partitionBy().orderBy(col('some_df_col')))– VaibhavApr 3, 2020 at 16:06
I'm showing @Daniel's answer in Python and I'm adding a comparison with count('*')
that can be used if you want to get topn at most rows per group.
from pyspark.sql.session import SparkSession
from pyspark.sql import Window
from pyspark.sql import functions as F
spark = SparkSession.builder.getOrCreate()
df = spark.createDataFrame([
['a', 10], ['a', 20], ['a', 30],
['a', 40], ['a', 40], ['a', 40], ['a', 40],
['a', 50], ['a', 50], ['a', 60]], ['part_col', 'order_col'])
window = Window.partitionBy("part_col").orderBy("order_col")
df = (df
.withColumn("rank", F.rank().over(window))
.withColumn("dense_rank", F.dense_rank().over(window))
.withColumn("row_number", F.row_number().over(window))
.withColumn("count", F.count('*').over(window))
)
df.show()
+++++++
part_colorder_colrankdense_rankrow_numbercount
+++++++
 a 10 1 1 1 1
 a 20 2 2 2 2
 a 30 3 3 3 3
 a 40 4 4 4 7
 a 40 4 4 5 7
 a 40 4 4 6 7
 a 40 4 4 7 7
 a 50 8 5 8 9
 a 50 8 5 9 9
 a 60 10 6 10 10
+++++++
For example if you want to take at most 4 without randomly picking one of the 4 "40" of the sorting column:
df.where("count <= 4").show()
+++++++
part_colorder_colrankdense_rankrow_numbercount
+++++++
 a 10 1 1 1 1
 a 20 2 2 2 2
 a 30 3 3 3 3
+++++++
In summary, if you filter <= n
those columns you will get:
rank
at least n rowsdense_rank
at least n different order_col valuesrow_number
exactly n rowscount
at most n rows