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I want to create a dummy data frame in Spark using Scala which looks like this -

+-----------+----+
|channel_set|rate|
+-----------+----+
|     [A, D]| 0.0|
|        [C]| 0.0|
|        [D]| 1.0|
|     [B, A]| 0.5|
+-----------+----+

I have tried below code to do that -

val b = Array((Set("A","D"),0.0) , (Set("C"),0.0), (Set("D"),1.0), (Set("B","A"),0.5) )
val dummy_data = sc.parallelize(b).toDF("channel_set", "rate")

But facing an error -

scala> val dummy_data = sc.parallelize(b).toDF("channel_set", "rate")
java.lang.UnsupportedOperationException: No Encoder found for scala.collection.immutable.Set[java.lang.String]
- field (class: "scala.collection.immutable.Set", name: "_1")
- root class: "scala.Tuple2"

Kindly help.

  • val b = Array((List("A","D"),0.0) , (List("C"),0.0), (List("D"),1.0), (List("B","A"),0.5) ) val dummy_data = sc.parallelize(b).toDF("channel_set", "rate") This works. Is it the correct approach ? – Regressor Feb 21 '18 at 17:05
2

Array is a mutable object and dataframes/datasets should have static schema i.e. fixed dataTypes. So use of Seq or List should work for you as they are immutables.

val df = Seq(
  (Array("A","D"),0.0),
  (Array("C"),0.0),
  (Array("D"),1.0),
  (Array("B","A"),0.5)
).toDF("channel_set", "rate")

df.show(false)

You should have dataframe as

+-----------+----+
|channel_set|rate|
+-----------+----+
|[A, D]     |0.0 |
|[C]        |0.0 |
|[D]        |1.0 |
|[B, A]     |0.5 |
+-----------+----+
  • can u explain where I was going wrong and why can't I create a Dataframe from Array ?? – Regressor Feb 21 '18 at 17:08
  • I need my "channel_set" column to contain sets of channels. – Regressor Feb 21 '18 at 17:09
  • Arrays are mutables so can be used as elements only and not to create dataTypes. Thats why arrays won't work. And what do you mean by sets of channels? doesn't my answer helped you ? – Ramesh Maharjan Feb 21 '18 at 17:13
  • You can use List instead of Seq as Lists are immutables as Seq. :) – Ramesh Maharjan Feb 21 '18 at 17:22
  • sure, thank u for your answer :) – Regressor Feb 21 '18 at 17:23
2

If you look at your error message, it's the Set type that Spark's SQL/DataFrame API doesn't support:

java.lang.UnsupportedOperationException:
  No Encoder found for scala.collection.immutable.Set[java.lang.String]

Here's the data types supported by Spark SQL/DataFrame. That said, you can use Set within a UDF, if needed.

In creating a DataFrame, Spark handles Seq, List, Array in a similar fashion. If you do a printSchema and show on the following 3 DataFrames, you'll see that they're identical.

sc.parallelize(Array(
    (Array("A","D"),0.0) , (Array("C"),0.0), (Array("D"),1.0), (Array("B","A"),0.5)
  )).toDF("channel_set", "rate")

sc.parallelize(List(
    (List("A","D"),0.0) , (List("C"),0.0), (List("D"),1.0), (List("B","A"),0.5)
  )).toDF("channel_set", "rate")

sc.parallelize(Seq(
    (Seq("A","D"),0.0) , (Seq("C"),0.0), (Seq("D"),1.0), (Seq("B","A"),0.5)
  )).toDF("channel_set", "rate")

// res.printSchema
// root
//  |-- channel_set: array (nullable = true)
//  |    |-- element: string (containsNull = true)
//  |-- rate: double (nullable = false)

// res.show
// +-----------+----+
// |channel_set|rate|
// +-----------+----+
// |     [A, D]| 0.0|
// |        [C]| 0.0|
// |        [D]| 1.0|
// |     [B, A]| 0.5|
// +-----------+----+
  • This is the correct answer. – philantrovert Feb 22 '18 at 7:36

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