This page contains some statistics functions (mean, stdev, variance, etc.) but it does not contain the median. How can I calculate exact median?


You need to sort RDD and take element in the middle or average of two elements. Here is example with RDD[Int]:

  import org.apache.spark.SparkContext._

  val rdd: RDD[Int] = ???

  val sorted = rdd.sortBy(identity).zipWithIndex().map {
    case (v, idx) => (idx, v)

  val count = sorted.count()

  val median: Double = if (count % 2 == 0) {
    val l = count / 2 - 1
    val r = l + 1
    (sorted.lookup(l).head + sorted.lookup(r).head).toDouble / 2
  } else sorted.lookup(count / 2).head.toDouble
  • what is this "lookup" method ? AFAIK it does not exist in RDD. Jan 28 '15 at 10:21
  • @javadba yeah, you need to import SparkContext._ to bring PairRDD implicits in scope Jan 28 '15 at 14:21
  • 2
    p.s. I think that there are faster algorithms for finding median that don't require full sorting (en.wikipedia.org/wiki/Selection_algorithm)
    – Eran Medan
    May 20 '15 at 17:45
  • unfortunately they are not applicable to distributed RDD Oct 28 '15 at 20:57
  • 1
    Can DataFrame API be used instead of RDD API? Jul 8 '16 at 16:31

Using Spark 2.0+ and the DataFrame API you can use the approxQuantile method:

def approxQuantile(col: String, probabilities: Array[Double], relativeError: Double)

It will also work on multiple columns at the same time since Spark version 2.2. By setting probabilites to Array(0.5) and relativeError to 0, it will compute the exact median. From the documentation:

The relative target precision to achieve (greater than or equal to 0). If set to zero, the exact quantiles are computed, which could be very expensive.

Despite this, there seems to be some issues with the precision when setting relativeError to 0, see the question here. A low error close to 0 will in some instances work better (will depend on Spark version).

A small working example which calculates the median of the numbers from 1 to 99 (both inclusive) and uses a low relativeError:

val df = (1 to 99).toDF("num")
val median = df.stat.approxQuantile("num", Array(0.5), 0.001)(0)

The median returned is 50.0.

  • Monica, do you know why when I run your code, I get NameError: name 'Array' is not defined? this does not seem like it's a package i need to import Jan 2 '20 at 21:34
  • @mathlover: Are you using Scala? Maybe you overwrite the name somewhere with a variable?
    – Shaido
    Jan 3 '20 at 1:13
  • I am using PySpark Jan 3 '20 at 13:34
  • @mathlover: Then it's not surprising you can't use a Scala version straight off. You need to adapt it a bit.
    – Shaido
    Jan 3 '20 at 13:47

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.