Spark has SQL function percentile_approx(), and its Scala counterpart is df.stat.approxQuantile().

However, the Scala counterpart cannot be used on grouped datasets, something like df.groupby("foo").stat.approxQuantile(), as answered here: https://stackoverflow.com/a/51933027.

But it's possible to do both grouping and percentiles in SQL syntax. So I'm wondering, maybe I can define an UDF from SQL percentile_approx function and use it on my grouped dataset?


Spark >= 3.1

Corresponding SQL functions have been added in Spark 3.1 - see SPARK-30569.

Spark < 3.1

While you cannot use approxQuantile in an UDF, and you there is no Scala wrapper for percentile_approx it is not hard to implement one yourself:

import org.apache.spark.sql.functions._
import org.apache.spark.sql.Column
import org.apache.spark.sql.catalyst.expressions.aggregate.ApproximatePercentile

object PercentileApprox {
  def percentile_approx(col: Column, percentage: Column, accuracy: Column): Column = {
    val expr = new ApproximatePercentile(
      col.expr,  percentage.expr, accuracy.expr
    new Column(expr)
  def percentile_approx(col: Column, percentage: Column): Column = percentile_approx(
    col, percentage, lit(ApproximatePercentile.DEFAULT_PERCENTILE_ACCURACY)

Example usage:

import PercentileApprox._

val df = (Seq.fill(100)("a") ++ Seq.fill(100)("b")).toDF("group").withColumn(
  "value", when($"group" === "a", randn(1) + 10).otherwise(randn(3))

df.groupBy($"group").agg(percentile_approx($"value", lit(0.5))).show
|group|percentile_approx(value, 0.5, 10000)|
|    b|                -0.06336346702250675|
|    a|                   9.818985618591595|
  percentile_approx($"value", typedLit(Seq(0.1, 0.25, 0.75, 0.9)))
|group|percentile_approx(value, [0.1,0.25,0.75,0.9], 10000)                              |
|b    |[-1.2098351202406483, -0.6640768986666159, 0.6778253126144265, 1.3255676906697658]|
|a    |[8.902067202468098, 9.290417382259626, 10.41767257153993, 11.067087075488068]     |

Once this is on the JVM classpath you can also add PySpark wrapper, using logic similar to built-in functions.


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