I'm using Spark 1.6.1 and encountering a strange behaviour: I'm running an UDF with some heavy computations (a physics simulations) on a dataframe containing some input data, and building up a result-Dataframe containing many columns (~40).

Strangely, my UDF is called more than once per Record of my input Dataframe in this case (1.6 times more often), which I find unacceptable because its very expensive. If I reduce the number of columns (e.g. to 20), then this behavior disappears.

I managed to write down a small script which demonstrates this:

import org.apache.spark.sql.SQLContext
import org.apache.spark.{SparkConf, SparkContext}
import org.apache.spark.sql.functions.udf

object Demo {

  case class Result(a: Double)

  def main(args: Array[String]): Unit = {

    val sc = new SparkContext(new SparkConf().setAppName("Demo").setMaster("local[*]"))
    val sqlContext = new SQLContext(sc)
    import sqlContext.implicits._

    val numRuns = sc.accumulator(0) // to count the number of udf calls

    val myUdf = udf((i:Int) => {numRuns.add(1);Result(i.toDouble)})

    val data = sc.parallelize((1 to 100), numSlices = 5).toDF("id")

    // get results of UDF
    var results = data
      .withColumn("tmp", myUdf($"id"))
      .withColumn("result", $"tmp.a")

    // add many columns to dataframe (must depend on the UDF's result)
    for (i <- 1 to 42) {

    // trigger action
    val res = results.collect()
    println(res.size) // prints 100

    println(numRuns.value) // prints 160


Now, is there a way to solve this without reducing the number of columns?

3 Answers 3


I can't really explain this behavior - but obviously the query plan somehow chooses a path where some of the records are calculated twice. This means that if we cache the intermediate result (right after applying the UDF) we might be able to "force" Spark not to recompute the UDF. And indeed, once caching is added it behaves as expected - UDF is called exactly 100 times:

// get results of UDF
var results = data
  .withColumn("tmp", myUdf($"id"))
  .withColumn("result", $"tmp.a").cache()

Of course, caching has its own costs (memory...), but it might end up beneficial in your case if it saves many UDF calls.

  • This actually works! I still wait with accepting the answer, maybe someone has a comprehensive answer Oct 31, 2016 at 7:56
  • Yeah, I'm curious too - perfectly OK with you not accepting :) Oct 31, 2016 at 7:57

We had this same problem about a year ago and spent a lot of time till we finally figured out what was the problem.

We also had a very expensive UDF to calculate and we found out that it gets calculated again and again for every time we refer to its column. Its just happened to us again a few days ago, so I decided to open a bug on this: SPARK-18748

We also opened a question here then, but now I see the title wasn't so good: Trying to turn a blob into multiple columns in Spark

I agree with Tzach about somehow "forcing" the plan to calculate the UDF. We did it uglier, but we had to, because we couldn't cache() the data - it was too big:

val df = data.withColumn("tmp", myUdf($"id"))
val results = sqlContext.createDataFrame(df.rdd, df.schema)
             .withColumn("result", $"tmp.a")


Now I see that my jira ticket was linked to another one: SPARK-17728, which still didn't really handle this issue the right way, but it gives one more optional work around:

val results = data.withColumn("tmp", explode(array(myUdf($"id"))))
                  .withColumn("result", $"tmp.a")

In newer spark verion (2.3+) we can mark UDFs as non-deterministic: https://spark.apache.org/docs/latest/api/scala/org/apache/spark/sql/expressions/UserDefinedFunction.html#asNondeterministic():org.apache.spark.sql.expressions.UserDefinedFunction

i.e. use

val myUdf = udf(...).asNondeterministic()

This makes sure the UDF is only called once

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