11

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)
15

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)
  • the output should be Seq[org.apache.spark.sql.Column] , instead of List[String]. – RaAm Oct 15 '17 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 '17 at 7:03
  • I need this logic to be implemented in by intermediate result.so i need that output of columns – RaAm Oct 15 '17 at 7:16
7
val selectColumns = dataset1.columns.toList.map(col(_))
4

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:_ *)
1

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

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