25

How to get all the column names in a spark dataframe into a Seq variable .

Input Data & Schema

val dataset1 = Seq(("66", "a", "4"), ("67", "a", "0"), ("70", "b", "4"), ("71", "d", "4")).toDF("KEY1", "KEY2", "ID")

dataset1.printSchema()
root
|-- KEY1: string (nullable = true)
|-- KEY2: string (nullable = true)
|-- ID: string (nullable = true)

I need to store all the column names in variable using scala programming . I have tried as below , but its not working.

val selectColumns = dataset1.schema.fields.toSeq

selectColumns: Seq[org.apache.spark.sql.types.StructField] = WrappedArray(StructField(KEY1,StringType,true),StructField(KEY2,StringType,true),StructField(ID,StringType,true))

Expected output:

val selectColumns = Seq(
  col("KEY1"),
  col("KEY2"),
  col("ID")
)

selectColumns: Seq[org.apache.spark.sql.Column] = List(KEY1, KEY2, ID)

5 Answers 5

30

You can use the following command:

val selectColumns = dataset1.columns.toSeq

scala> val dataset1 = Seq(("66", "a", "4"), ("67", "a", "0"), ("70", "b", "4"), ("71", "d", "4")).toDF("KEY1", "KEY2", "ID")
dataset1: org.apache.spark.sql.DataFrame = [KEY1: string, KEY2: string ... 1 more field]

scala> val selectColumns = dataset1.columns.toSeq
selectColumns: Seq[String] = WrappedArray(KEY1, KEY2, ID)
3
  • the output should be Seq[org.apache.spark.sql.Column] , instead of List[String].
    – RaAm
    Oct 15, 2017 at 7:01
  • @raam - what would you like to do with the output/column names? why do you need it to be of type Columns?
    – Yaron
    Oct 15, 2017 at 7:03
  • I need this logic to be implemented in by intermediate result.so i need that output of columns
    – RaAm
    Oct 15, 2017 at 7:16
12
val selectColumns = dataset1.columns.toList.map(col(_))
7

I use the columns property like so

val cols = dataset1.columns.toSeq

and then if you are selecting all the columns later on in the order of the Sequence from head to tail you can use

val orderedDF = dataset1.select(cols.head, cols.tail:_ *)
3

we can get the column names of a dataset / table into a Sequence variable in following ways.

from Dataset,

val col_seq:Seq[String] = dataset.columns.toSeq

from table,

val col_seq:Seq[String] = spark.table("tablename").columns.toSeq
                           or
val col_seq:Seq[String] = spark.catalog.listColumns("tablename").select('name).collect.map(col=>col.toString).toSeq
3

The columns can be fetched from schema too.

val dataset1 = Seq(("66", "a", "4"), ("67", "a", "0"), ("70", "b", "4"), ("71", "d", "4")).toDF("KEY1", "KEY2", "ID")
dataset1.printSchema()
root
 |-- KEY1: string (nullable = true)
 |-- KEY2: string (nullable = true)
 |-- ID: string (nullable = true)

val selectColumns = dataset1.schema.fieldNames
selectColumns: Array[String] = Array(KEY1, KEY2, ID)

val selectColumns2 = dataset1.schema.fieldNames.toSeq 
selectColumns2: Seq[String] = WrappedArray(KEY1, KEY2, ID)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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