I have a simple Spark Program which reads a JSON file and emits a CSV file. IN the JSON data the values contain leading and trailing white spaces, when I emit the CSV the leading and trailing white spaces are gone. Is there a way I can retain the spaces. I tried many options like ignoreTrailingWhiteSpace , ignoreLeadingWhiteSpace but no luck


{"key" : "k1", "value1": "Good String", "value2": "Good String"}
{"key" : "k1", "value1": "With Spaces      ", "value2": "With Spaces      "}
{"key" : "k1", "value1": "with tab\t", "value2": "with tab\t"}


,k1,Good String,Good String
,k1,With Spaces,With Spaces
,k1,with tab,with tab


,k1,Good String,Good String
,k1,With Spaces      ,With Spaces      
,k1,with tab\t,with tab\t

my code:

public static void main(String[] args) {
    SparkSession sparkSession = SparkSession

    SparkContext context = sparkSession.sparkContext();
    SQLContext sqlCtx = sparkSession.sqlContext();
    System.out.println("Spark context established");

    List<StructField> kvFields = new ArrayList<>();
    kvFields.add(DataTypes.createStructField("_corrupt_record", DataTypes.StringType, true));
    kvFields.add(DataTypes.createStructField("key", DataTypes.StringType, true));
    kvFields.add(DataTypes.createStructField("value1", DataTypes.StringType, true));
    kvFields.add(DataTypes.createStructField("value2", DataTypes.StringType, true));
    StructType employeeSchema = DataTypes.createStructType(kvFields);

    Dataset<Row> dataset =
                    .option("inferSchema", false)

    sqlCtx.sql("select * from sourceView")
            .option("header", true)
            .save("D:\\dev\\workspace\\java\\simple-kafka\\output\\" + UUID.randomUUID().toString());


Added POM dependencies


The CSV writer trims leading and trailing spaces by default. You can turn it off with

   sqlCtx.sql("select * from sourceView").write.
       option("header", true).
       option("ignoreLeadingWhiteSpace",false). // you need this
       option("ignoreTrailingWhiteSpace",false). // and this

this works for me. If it didn't work for you, can you post what you tried, also, which spark version are you using ? They introduced this feature just last year if I remember right.

  • The code works for Spark 2.2+ but not for 2.1. I have added the POM dependencies – Manjesh Oct 30 '17 at 19:40

For Apache Spark 2.2+ you simply use "ignoreLeadingWhiteSpace" and "ignoreTrailingWhiteSpace" options (see details in @Roberto Congiu's answer)

I guess it should be default behaviour for the lower Apache Spark versions - i'm not sure though.

For Apache Spark 1.3+ you can use "univocity" parserLib in order to specify it explicitly:


Old "incorrect" answer - shows how to get rid of leading and trailing spaces and tabs in the whole data frame (in all columns)

Here is a scala solution:

Source DF:

scala> val df = spark.read.json("file:///temp/a.json")
df: org.apache.spark.sql.DataFrame = [key: string, value1: string ... 1 more field]

scala> df.show
|key|           value1|           value2|
| k1|      Good String|      Good String|
| k1|With Spaces      |With Spaces      |
| k1|        with tab   |        with tab       |


import org.apache.spark.sql.functions._

val df2 = df.select(df.columns.map(c => regexp_replace(col(c),"(^\\s+|\\s+$)","").alias(c)):_*)


scala> df2.show
|key|    value1|    value2|
| k1|GoodString|GoodString|
| k1|WithSpaces|WithSpaces|
| k1|   withtab|   withtab|

PS it should be very similar in Java Spark...

  • I don't want to remove the space .. I want to retain the spaces as it comes in JSON – Manjesh Oct 30 '17 at 18:15
  • @Manjesh, oh, i see. Roberto's solution should work - did you try it? – MaxU Oct 30 '17 at 18:30
// hope these two options can solve your question
    .option("ignoreTrailingWhiteSpace", false)

You can check the link below to get more info




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