This command works with HiveQL:

insert overwrite directory '/data/home.csv' select * from testtable;

But with Spark SQL I'm getting an error with an org.apache.spark.sql.hive.HiveQl stack trace:

java.lang.RuntimeException: Unsupported language features in query:
    insert overwrite directory '/data/home.csv' select * from testtable

Please guide me to write export to CSV feature in Spark SQL.

  • This question/answer not solves the problem for Spark 2.x... the real problem is to export to standard CSV format. Please answer here. Sep 28 '19 at 0:40

You can use below statement to write the contents of dataframe in CSV format df.write.csv("/data/home/csv")

If you need to write the whole dataframe into a single CSV file, then use df.coalesce(1).write.csv("/data/home/sample.csv")

For spark 1.x, you can use spark-csv to write the results into CSV files

Below scala snippet would help

import org.apache.spark.sql.hive.HiveContext
// sc - existing spark context
val sqlContext = new HiveContext(sc)
val df = sqlContext.sql("SELECT * FROM testtable")

To write the contents into a single file

import org.apache.spark.sql.hive.HiveContext
// sc - existing spark context
val sqlContext = new HiveContext(sc)
val df = sqlContext.sql("SELECT * FROM testtable")
  • 2
    I tried the coalesce thing you mentioned. It creates a directory at the specified path with a "part" file and a file called "_SUCCESS". Do you know of a way to actually only get the one file? Jan 19 '18 at 1:24
  • No, I think there is no way to do it.
    – sag
    Jan 19 '18 at 8:43
  • 1
    it will not be local file but hdfs file
    – Alex B
    Sep 4 '18 at 18:53
  • I found a bug in this code, my original directory with partitions csv has 1 extra column when compared to the single csv generated by this code. I know the code works for trivial cases but my last 2 columns were of the format concat('"', concat_ws(",", collect_list(some_column)), '"') which worked fine on insert overwrite but not when I selected all the columns and wrote to this format, even the header was correct but it incorrectly identified the second last column values to fill both and ignored the rest
    – devssh
    Sep 6 '18 at 19:41
  • This is how my csv partitons looked before "USR",0,0,""css","shell","html","python","javascript"","381534,3960,1683,229869,1569090" and this is how they look like now "\"USR\"",0,0,"\"\"css\"","\"shell\""
    – devssh
    Sep 6 '18 at 19:48

Since Spark 2.X spark-csv is integrated as native datasource. Therefore, the necessary statement simplifies to (windows)

  .option("header", "true")


  .option("header", "true")

Notice: as the comments say, it is creating the directory by that name with the partitions in it, not a standard CSV file. This, however, is most likely what you want since otherwise your either crashing your driver (out of RAM) or you could be working with a non distributed environment.

  • 1
    Hi all, Is there a way to replace the file as it fails when it tries to rewrite the file. Jun 14 '17 at 9:53
  • 5
    Sure ! .mode("overwrite").csv("/var/out.csv")
    – Boern
    Jun 14 '17 at 11:46
  • 2
    In Spark 2.x it is creating the directory by that name. Any help? Feb 18 '19 at 13:53
  • 1
    My guess is that your partitions are inside that directory.
    – Boern
    Feb 18 '19 at 14:10
  • But it is not a standard CSV file, it is producing a folder with strange files (!). See stackoverflow.com/q/58142220/287948 Sep 28 '19 at 0:29

The answer above with spark-csv is correct but there is an issue - the library creates several files based on the data frame partitioning. And this is not what we usually need. So, you can combine all partitions to one:

    option("header", "true").

and rename the output of the lib (name "part-00000") to a desire filename.

This blog post provides more details: https://fullstackml.com/2015/12/21/how-to-export-data-frame-from-apache-spark/

  • 2
    Should it be df.repartition.write instead of df.write.repartition ?
    – Cedric H.
    Aug 26 '16 at 14:30
  • @Cedric you are right, thank you! Repartition first! Edited. Aug 27 '16 at 19:55
  • 2
    One can add model as well, if one wishes to keep writing to an existing file. resultDF.repartition(1).write.mode("append").format("com.databricks.spark.csv").option("header", "true").save("s3://...")
    – Pramit
    Sep 15 '16 at 17:38
  • 5
    coalesce(1) requires the dataset to fit into the heap of a single machine and will most likely cause issues when working with large datasets
    – Boern
    Feb 16 '17 at 8:22
  • @DmitryPetrov Do we need to mention write.format("com...") option when including coalesce option ?
    – JKC
    Aug 21 '17 at 7:16

The simplest way is to map over the DataFrame's RDD and use mkString:


As of Spark 1.5 (or even before that) df.map(r=>r.mkString(",")) would do the same if you want CSV escaping you can use apache commons lang for that. e.g. here's the code we're using

 def DfToTextFile(path: String,
                   df: DataFrame,
                   delimiter: String = ",",
                   csvEscape: Boolean = true,
                   partitions: Int = 1,
                   compress: Boolean = true,
                   header: Option[String] = None,
                   maxColumnLength: Option[Int] = None) = {

    def trimColumnLength(c: String) = {
      val col = maxColumnLength match {
        case None => c
        case Some(len: Int) => c.take(len)
      if (csvEscape) StringEscapeUtils.escapeCsv(col) else col
    def rowToString(r: Row) = {
      val st = r.mkString("~-~").replaceAll("[\\p{C}|\\uFFFD]", "") //remove control characters

    def addHeader(r: RDD[String]) = {
      val rdd = for (h <- header;
                     if partitions == 1; //headers only supported for single partitions
                     tmpRdd = sc.parallelize(Array(h))) yield tmpRdd.union(r).coalesce(1)

    val rdd = df.map(rowToString).repartition(partitions)
    val headerRdd = addHeader(rdd)

    if (compress)
      headerRdd.saveAsTextFile(path, classOf[GzipCodec])
  • 2
    While this is the simplest answer (and a good one), if you're text has double-quotes, you'll have to account for them. Aug 12 '15 at 5:05
  • Simply getting the error after create RDD for the table scala> df.rdd.map(x=>x.mkString(",")); <console>:18: error: value rdd is not a member of org.apache.spark.sql.SchemaRDD df.rdd.map(x=>x.mkString(","));
    – shashankS
    Aug 28 '15 at 10:47

The error message suggests this is not a supported feature in the query language. But you can save a DataFrame in any format as usual through the RDD interface (df.rdd.saveAsTextFile). Or you can check out https://github.com/databricks/spark-csv.

  • scala> df.write.format("com.databricks.spark.csv").save("/data/home.csv") <console>:18: error: value write is not a member of org.apache.spark.sql.SchemaRDD Do I need to build current jar with databricks package again?
    – shashankS
    Aug 28 '15 at 10:49
  • DataFrame.write was added in Apache Spark 1.4.0. Aug 28 '15 at 12:47

With the help of spark-csv we can write to a CSV file.

val dfsql = sqlContext.sql("select * from tablename")
  • No, it is not a real CSV file, the result output.csv is a folder. Sep 28 '19 at 0:46

enter code here IN DATAFRAME:

val p=spark.read.format("csv").options(Map("header"->"true","delimiter"->"^")).load("filename.csv")

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