Consider this df

|   0|   TF1|
|   1|   TF1|
|   1|   TNT|

I would like to apply this withColumn instruction but only on rows having cond == 1:

df.withColumn("New", when($"chaine" === "TF1", "YES!"))
  .withColumn("New2", when($"chaine" === "TF1", "YES2!"))
  .withColumn("New3", when($"chaine" === "TF1", "YES3!"))
  .withColumn("New4", when($"chaine" === "TF1", "YES4!"))

I can't use .filter because I still want to have rows with cond =!= 1 in output.

I can do it by adding my condition inside every where in code:

df.withColumn("New", when($"chaine" === "TF1" AND $"cond" === 1, "YES!"))
  .withColumn("New2", when($"chaine" === "TF1" AND $"cond" === 1, "YES2!"))
  .withColumn("New3", when($"chaine" === "TF1" AND $"cond" === 1, "YES3!"))
  .withColumn("New4", when($"chaine" === "TF1" AND $"cond" === 1, "YES4!"))

but the problem is that I have a lot of new columns and I want a better solution (like a global confition ?)

Thank you.

2 Answers 2


Some simple syntactic ideas:

def whenCondIs(n: Int)(condition: Column, value: Any): Column =
  when(condition && $"cond" === n, value)

def whenOne(condition: Column, value: Any): Column  = 
  whenCondIs(1)(condition, value)

and then:

df.withColumn("New", whenOne($"chaine" === "TF1", "YES2!"))
  .withColumn("New2", whenOne($"chaine" === "TF1", "YES2!"))

You can have the mapping between conditions and the new columns to create, in a list and use foldLeft to add them in into your dataframe. Something like this:

val newCols = Seq(
  ("New", "chaine='TF1'", "YES!"),
  ("New2", "chaine='TF1'", "YES2!"),
  ("New3", "chaine='TF1'", "YES3!"),
  ("New4", "chaine='TF1'", "YES4!")

val df1 = newCols.foldLeft(df)((acc, x) =>
  acc.withColumn(x._1, when(expr(x._2) && col("cond")===1, lit(x._3)))

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.