The column names in this example from spark-sql come from the case class Person.

case class Person(name: String, age: Int)

val people: RDD[Person] = ... // An RDD of case class objects, from the previous example.

// The RDD is implicitly converted to a SchemaRDD by createSchemaRDD, allowing it to be stored using Parquet.


However in many cases the parameter names may be changed. This would cause columns to not be found if the file has not been updated to reflect the change.

How can I specify an appropriate mapping?

I am thinking something like:

  val schema = StructType(Seq(
    StructField("name", StringType, nullable = false),
    StructField("age", IntegerType, nullable = false)

  val ps: Seq[Person] = ???

  val personRDD = sc.parallelize(ps)

  // Apply the schema to the RDD.
  val personDF: DataFrame = sqlContext.createDataFrame(personRDD, schema)
  • Unfortunately, it is not clear what you want. 1. Write parquet with arbitrary names? 2. Change the parquet column names afterwards? 3. Read a parquet with arbitrary column names and "match"/map it to field of case class? – Martin Senne Sep 12 '15 at 8:31
  • @MartinSenne How so? I want to set column names manually and map case class params to these columns. – BAR Sep 12 '15 at 8:32
  • But you intent to have them matched automatically? – Martin Senne Sep 12 '15 at 8:39
  • @MartinSenne please expand on that. Like i said i want to match manually. – BAR Sep 12 '15 at 8:40

Basically, all the mapping you need to do can be achieved with DataFrame.select(...). (Here, I assume, that no type conversions need to be done.) Given the forward- and backward-mapping as maps, the essential part is

val mapping = from.map{ (x:(String, String)) => personsDF(x._1).as(x._2) }.toArray
// personsDF your original dataframe  
val mappedDF = personsDF.select( mapping: _* )

where mapping is an array of Columns with alias.

Example code

object Example {   

  import org.apache.spark.rdd.RDD
  import org.apache.spark.{SparkContext, SparkConf}

  case class Person(name: String, age: Int)

  object Mapping {
    val from = Map("name" -> "a", "age" -> "b")
    val to = Map("a" -> "name", "b" -> "age")

  def main(args: Array[String]) : Unit = {
    // init
    val conf = new SparkConf()
      .setAppName( "Example." )
      .setMaster( "local[*]")

    val sc = new SparkContext(conf)
    val sqlContext = new SQLContext(sc)
    import sqlContext.implicits._

    // create persons
    val persons = Seq(Person("bob", 35), Person("alice", 27))
    val personsRDD = sc.parallelize(persons, 4)
    val personsDF = personsRDD.toDF

    writeParquet( personsDF, "persons.parquet", sc, sqlContext)

    val otherPersonDF = readParquet( "persons.parquet", sc, sqlContext )

  def writeParquet(personsDF: DataFrame, path:String, sc: SparkContext, sqlContext: SQLContext) : Unit = {
    import Mapping.from

    val mapping = from.map{ (x:(String, String)) => personsDF(x._1).as(x._2) }.toArray

    val mappedDF = personsDF.select( mapping: _* )
    mappedDF.write.parquet("/output/path.parquet") // parquet with columns "a" and "b"

  def readParquet(path: String, sc: SparkContext, sqlContext: SQLContext) : Unit = {
    import Mapping.to
    val df = sqlContext.read.parquet(path) // this df has columns a and b

    val mapping = to.map{ (x:(String, String)) => df(x._1).as(x._2) }.toArray
    df.select( mapping: _* )


If you need to convert a dataframe back to an RDD[Person], then

val rdd : RDD[Row] = personsDF.rdd
val personsRDD : Rdd[Person] = rdd.map { r: Row => 
  Person( r.getAs("person"), r.getAs("age") )


Have also a look at How to convert spark SchemaRDD into RDD of my case class?

  • Nice approach. Do you think this would impact performance, or should it not a be factor since this is compiled and optimized once in the internal pipeline? – BAR Sep 12 '15 at 21:55
  • 2
    I assume the latter. First, as there is Catalyst optimization / compilation. Second, selects (with alias) don't seem to be expensive operations. Though, would be interested to see some performance measurements .... – Martin Senne Sep 13 '15 at 10:15
  • @BAR can we use jave here ? for the example given? In java dataset select method doesn't have capability to take a map? – Asiri Liyana Arachchi Apr 9 at 3:52

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