19

After:

val df = Seq((1, Vector(2, 3, 4)), (1, Vector(2, 3, 4))).toDF("Col1", "Col2")

I have this DataFrame in Apache Spark:

+------+---------+
| Col1 | Col2    |
+------+---------+
|  1   |[2, 3, 4]|
|  1   |[2, 3, 4]|
+------+---------+

How do I convert this into:

+------+------+------+------+
| Col1 | Col2 | Col3 | Col4 |
+------+------+------+------+
|  1   |  2   |  3   |  4   |
|  1   |  2   |  3   |  4   |
+------+------+------+------+

5 Answers 5

21

A solution that doesn't convert to and from RDD:

df.select($"Col1", $"Col2"(0) as "Col2", $"Col2"(1) as "Col3", $"Col2"(2) as "Col3")

Or arguable nicer:

val nElements = 3
df.select(($"Col1" +: Range(0, nElements).map(idx => $"Col2"(idx) as "Col" + (idx + 2)):_*))

The size of a Spark array column is not fixed, you could for instance have:

+----+------------+
|Col1|        Col2|
+----+------------+
|   1|   [2, 3, 4]|
|   1|[2, 3, 4, 5]|
+----+------------+

So there is no way to get the amount of columns and create those. If you know the size is always the same, you can set nElements like this:

val nElements = df.select("Col2").first.getList(0).size
3
  • Nice answer. is there way to use advance DataSet APIs to achieve above in more type safe way? For e.g. how can I get rid of $"Col1"? Oct 10, 2016 at 6:46
  • What do you mean exactly? I guess not getting rid of it by just not adding it to the select :) I guess you don't want to name it explicitly? But I'm not sure how you see type safety coming into play necessarily. It is probably worth it to create a new question with a minimal example of what you want to do.
    – sgvd
    Oct 10, 2016 at 14:21
  • sure i'll add another question. but what i mean is DataSet of spark provides good compile time safety. Where as $"col1" would be evaluated at run time. So if col1 is not present in dataset I get compile time error in select statement rather than getting at runtime. Oct 11, 2016 at 10:40
3

Just to give the Pyspark version of sgvd's answer. If the array column is in Col2, then this select statement will move the first nElements of each array in Col2 to their own columns:

from pyspark.sql import functions as F            
df.select([F.col('Col2').getItem(i) for i in range(nElements)])
2
  • how would you add "Col1" to the select statement?
    – user422930
    Sep 8, 2018 at 7:55
  • @user422930, thank-you for your question, sorry I only saw it now. Try doing something like: from pyspark.sql import functions as F df.select([F.col('Col1')]+[F.col('Col2').getItem(i) for i in range(nElements)]) I haven't tested it, but let me know if it works or not. Nov 24, 2018 at 22:11
1

Just add on to sgvd's solution:

If the size is not always the same, you can set nElements like this:

val nElements = df.select(size('Col2).as("Col2_count"))
                  .select(max("Col2_count"))
                  .first.getInt(0)
0

You can use a map:

df.map {
    case Row(col1: Int, col2: mutable.WrappedArray[Int]) => (col1, col2(0), col2(1), col2(2))
}.toDF("Col1", "Col2", "Col3", "Col4").show()
2
0

If you are working with SparkR, you can find my answer here where you don't need to use explode but you need SparkR::dapply and stringr::str_split_fixed.

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