For example, the result of this:

df.filter("project = 'en'").select("title","count").groupBy("title").sum()

would return an Array.

How to save a spark DataFrame as a csv file on disk ?

  • 6
    btw this doesn't return an array, but a DataFrame! reference here
    – eliasah
    Oct 16, 2015 at 20:42
  • If the answer given solves your question, please accept it and up-vote so we can class this question as resolved!
    – eliasah
    Sep 8, 2020 at 15:36

4 Answers 4


Apache Spark does not support native CSV output on disk.

You have four available solutions though:

  1. You can convert your Dataframe into an RDD :

    def convertToReadableString(r : Row) = ???
    df.rdd.map{ convertToReadableString }.saveAsTextFile(filepath)

    This will create a folder filepath. Under the file path, you'll find partitions files (e.g part-000*)

    What I usually do if I want to append all the partitions into a big CSV is

    cat filePath/part* > mycsvfile.csv

    Some will use coalesce(1,false) to create one partition from the RDD. It's usually a bad practice, since it may overwhelm the driver by pulling all the data you are collecting to it.

    Note that df.rdd will return an RDD[Row].

  2. With Spark <2, you can use databricks spark-csv library:

    • Spark 1.4+:

    • Spark 1.3:

  3. With Spark 2.x the spark-csv package is not needed as it's included in Spark.

  4. You can convert to local Pandas data frame and use to_csv method (PySpark only).

Note: Solutions 1, 2 and 3 will result in CSV format files (part-*) generated by the underlying Hadoop API that Spark calls when you invoke save. You will have one part- file per partition.

  • 1
    I think that spark-csv is preferred solution. It is not easy to create a correct csv line from scratch. All dialects and proper escaping can be quite tricky.
    – zero323
    Oct 16, 2015 at 15:58
  • 1
    In PySpark you can also convert small table to Pandas and save locally. but it probably a Scala question.
    – zero323
    Oct 16, 2015 at 16:00
  • If you feel like adding the information to the answer @zero323, please feel free to do so!
    – eliasah
    Oct 16, 2015 at 16:01
  • 3
    Guys do you know if it is possible to avoid the hadoopish format and store data to a file under a file name or s3 key name of my choice instead of the directory with _SUCCES and part-* ?
    – lisak
    May 19, 2016 at 20:40
  • I posted solution using spark-csv
    – Ajk
    Aug 12, 2016 at 8:28

Writing dataframe to disk as csv is similar read from csv. If you want your result as one file, you can use coalesce.


If your result is an array you should use language specific solution, not spark dataframe api. Because all these kind of results return driver machine.

  • this is WRONG!! and Dangerous! you should use .save() not .csv()!!!
    – Sam
    Mar 5, 2023 at 21:38
  • 1
    You can either use format and save or directly use csv, parquet, etc. All same. Mar 7, 2023 at 6:10
  • 1
    overwrite mode (with csv()) will delete all content of a folder if it exists
    – Sam
    Mar 7, 2023 at 7:37
  • Of course, it will. This is just an example out of tens possibilities. Mar 10, 2023 at 13:47

I had similar issue where i had to save the contents of the dataframe to a csv file of name which i defined. df.write("csv").save("<my-path>") was creating directory than file. So have to come up with the following solutions. Most of the code is taken from the following dataframe-to-csv with little modifications to the logic.

def saveDfToCsv(df: DataFrame, tsvOutput: String, sep: String = ",", header: Boolean = false): Unit = {
    val tmpParquetDir = "Posts.tmp.parquet"

        option("header", header.toString).
        option("delimiter", sep).

    val dir = new File(tmpParquetDir)
    val newFileRgex = tmpParquetDir + File.separatorChar + ".part-00000.*.csv"
    val tmpTsfFile = dir.listFiles.filter(_.toPath.toString.matches(newFileRgex))(0).toString
    (new File(tmpTsvFile)).renameTo(new File(tsvOutput))

    dir.listFiles.foreach( f => f.delete )

I had similar problem. I needed to write down csv file on driver while I was connect to cluster in client mode.

I wanted to reuse the same CSV parsing code as Apache Spark to avoid potential errors.

I checked spark-csv code and found code responsible for converting dataframe into raw csv RDD[String] in com.databricks.spark.csv.CsvSchemaRDD.

Sadly it is hardcoded with sc.textFile and the end of relevant method.

I copy-pasted that code and removed last lines with sc.textFile and returned RDD directly instead.

My code:

  This is copypasta from com.databricks.spark.csv.CsvSchemaRDD
  Spark's code has perfect method converting Dataframe -> raw csv RDD[String]
  But in last lines of that method it's hardcoded against writing as text file -
  for our case we need RDD.
object DataframeToRawCsvRDD {

  val defaultCsvFormat = com.databricks.spark.csv.defaultCsvFormat

  def apply(dataFrame: DataFrame, parameters: Map[String, String] = Map())
           (implicit ctx: ExecutionContext): RDD[String] = {
    val delimiter = parameters.getOrElse("delimiter", ",")
    val delimiterChar = if (delimiter.length == 1) {
    } else {
      throw new Exception("Delimiter cannot be more than one character.")

    val escape = parameters.getOrElse("escape", null)
    val escapeChar: Character = if (escape == null) {
    } else if (escape.length == 1) {
    } else {
      throw new Exception("Escape character cannot be more than one character.")

    val quote = parameters.getOrElse("quote", "\"")
    val quoteChar: Character = if (quote == null) {
    } else if (quote.length == 1) {
    } else {
      throw new Exception("Quotation cannot be more than one character.")

    val quoteModeString = parameters.getOrElse("quoteMode", "MINIMAL")
    val quoteMode: QuoteMode = if (quoteModeString == null) {
    } else {

    val nullValue = parameters.getOrElse("nullValue", "null")

    val csvFormat = defaultCsvFormat

    val generateHeader = parameters.getOrElse("header", "false").toBoolean
    val headerRdd = if (generateHeader) {
        csvFormat.format(dataFrame.columns.map(_.asInstanceOf[AnyRef]): _*)
    } else {

    val rowsRdd = dataFrame.rdd.map(row => {
      csvFormat.format(row.toSeq.map(_.asInstanceOf[AnyRef]): _*)

    headerRdd union rowsRdd


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.