177

Suppose I'm doing something like:

val df = sqlContext.load("com.databricks.spark.csv", Map("path" -> "cars.csv", "header" -> "true"))
df.printSchema()

root
 |-- year: string (nullable = true)
 |-- make: string (nullable = true)
 |-- model: string (nullable = true)
 |-- comment: string (nullable = true)
 |-- blank: string (nullable = true)

df.show()
year make  model comment              blank
2012 Tesla S     No comment
1997 Ford  E350  Go get one now th...

But I really wanted the year as Int (and perhaps transform some other columns).

The best I could come up with was

df.withColumn("year2", 'year.cast("Int")).select('year2 as 'year, 'make, 'model, 'comment, 'blank)
org.apache.spark.sql.DataFrame = [year: int, make: string, model: string, comment: string, blank: string]

which is a bit convoluted.

I'm coming from R, and I'm used to being able to write, e.g.

df2 <- df %>%
   mutate(year = year %>% as.integer,
          make = make %>% toupper)

I'm likely missing something, since there should be a better way to do this in Spark/Scala...

1
  • 1
    I like this way spark.sql("SELECT STRING(NULLIF(column,'')) as column_string") May 7, 2019 at 14:35

23 Answers 23

153

Edit: Newest newest version

Since spark 2.x you should use dataset api instead when using Scala [1]. Check docs here:

https://spark.apache.org/docs/latest/api/scala/org/apache/spark/sql/Dataset.html#withColumn(colName:String,col:org.apache.spark.sql.Column):org.apache.spark.sql.DataFrame

If working with python, even though easier, I leave the link here as it's a very highly voted question:

https://spark.apache.org/docs/latest/api/python/reference/api/pyspark.sql.DataFrame.withColumn.html

>>> df.withColumn('age2', df.age + 2).collect()
[Row(age=2, name='Alice', age2=4), Row(age=5, name='Bob', age2=7)]

[1] https://spark.apache.org/docs/latest/sql-programming-guide.html:

In the Scala API, DataFrame is simply a type alias of Dataset[Row]. While, in Java API, users need to use Dataset to represent a DataFrame.

Edit: Newest version

Since spark 2.x you can use .withColumn. Check the docs here:

https://spark.apache.org/docs/2.2.0/api/scala/index.html#org.apache.spark.sql.Dataset@withColumn(colName:String,col:org.apache.spark.sql.Column):org.apache.spark.sql.DataFrame

Oldest answer

Since Spark version 1.4 you can apply the cast method with DataType on the column:

import org.apache.spark.sql.types.IntegerType
val df2 = df.withColumn("yearTmp", df.year.cast(IntegerType))
    .drop("year")
    .withColumnRenamed("yearTmp", "year")

If you are using sql expressions you can also do:

val df2 = df.selectExpr("cast(year as int) year", 
                        "make", 
                        "model", 
                        "comment", 
                        "blank")

For more info check the docs: http://spark.apache.org/docs/1.6.0/api/scala/#org.apache.spark.sql.DataFrame

10
  • 4
    why did you used withColumn followed by drop? Isn't easier to just use withColumn with the original column name? Aug 9, 2016 at 7:29
  • 5
    there is no need to drop column followed by a rename. You can do in one line df.withColumn("ctr", temp("ctr").cast(DecimalType(decimalPrecision, decimalScale)))
    – ruhong
    Jul 25, 2017 at 3:21
  • 1
    Is an entire new dataframe copy created just to recast a column in this case? Am I missing something? Or perhaps there is some optimization behind the scenes? Aug 9, 2017 at 23:56
  • 1
    @user1814008 Maybe you want to check stackoverflow.com/questions/30691385/internal-work-of-spark/… . There you can find an in depth explanation of how spark transformations and actions work and why applying transformations won't necessarily create a new dataframe.
    – msemelman
    Sep 4, 2017 at 20:26
  • 6
    Going by the docs of Spark 2.x, df.withColumn(..) can add or replace a column depending on the colName argument May 3, 2018 at 13:02
91

[EDIT: March 2016: thanks for the votes! Though really, this is not the best answer, I think the solutions based on withColumn, withColumnRenamed and cast put forward by msemelman, Martin Senne and others are simpler and cleaner].

I think your approach is ok, recall that a Spark DataFrame is an (immutable) RDD of Rows, so we're never really replacing a column, just creating new DataFrame each time with a new schema.

Assuming you have an original df with the following schema:

scala> df.printSchema
root
 |-- Year: string (nullable = true)
 |-- Month: string (nullable = true)
 |-- DayofMonth: string (nullable = true)
 |-- DayOfWeek: string (nullable = true)
 |-- DepDelay: string (nullable = true)
 |-- Distance: string (nullable = true)
 |-- CRSDepTime: string (nullable = true)

And some UDF's defined on one or several columns:

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

val toInt    = udf[Int, String]( _.toInt)
val toDouble = udf[Double, String]( _.toDouble)
val toHour   = udf((t: String) => "%04d".format(t.toInt).take(2).toInt ) 
val days_since_nearest_holidays = udf( 
  (year:String, month:String, dayOfMonth:String) => year.toInt + 27 + month.toInt-12
 )

Changing column types or even building a new DataFrame from another can be written like this:

val featureDf = df
.withColumn("departureDelay", toDouble(df("DepDelay")))
.withColumn("departureHour",  toHour(df("CRSDepTime")))
.withColumn("dayOfWeek",      toInt(df("DayOfWeek")))              
.withColumn("dayOfMonth",     toInt(df("DayofMonth")))              
.withColumn("month",          toInt(df("Month")))              
.withColumn("distance",       toDouble(df("Distance")))              
.withColumn("nearestHoliday", days_since_nearest_holidays(
              df("Year"), df("Month"), df("DayofMonth"))
            )              
.select("departureDelay", "departureHour", "dayOfWeek", "dayOfMonth", 
        "month", "distance", "nearestHoliday")            

which yields:

scala> df.printSchema
root
 |-- departureDelay: double (nullable = true)
 |-- departureHour: integer (nullable = true)
 |-- dayOfWeek: integer (nullable = true)
 |-- dayOfMonth: integer (nullable = true)
 |-- month: integer (nullable = true)
 |-- distance: double (nullable = true)
 |-- nearestHoliday: integer (nullable = true)

This is pretty close to your own solution. Simply, keeping the type changes and other transformations as separate udf vals make the code more readable and re-usable.

5
  • 31
    This is neither safe nor efficient. Not safe because a single NULL or malformed entry will crash a whole job. Not efficient because UDFs are not transparent to Catalyst. Using UDFs for complex operations is just fine, but there is no reason to use these for basic type casting. This why we have cast method (see an answer by Martin Senne). Making things transparent to Catalyst requires more work but basic safety is just a matter of putting Try and Option to work.
    – zero323
    Mar 1, 2016 at 0:39
  • I didn't see anything related to converting string to date for example "05-APR-2015"
    – dbspace
    Apr 29, 2016 at 21:33
  • 4
    Is there a way to reduce your withColumn() section to a generic one that iterates through all columns?
    – Boern
    May 17, 2016 at 14:55
  • Thanks zero323, upon reading this I figured why the udf solution here crashes. Some comments are better than some answers on SO :)
    – user1972382
    Oct 14, 2018 at 12:11
  • Is there any way in which we can get to know the corrupt row, means records which are having columns of wrong data types during casting. As cast function makes those fields as null
    – Etisha
    Jun 24, 2019 at 8:52
71

As the cast operation is available for Spark Column's (and as I personally do not favour udf's as proposed by @Svend at this point), how about:

df.select( df("year").cast(IntegerType).as("year"), ... )

to cast to the requested type? As a neat side effect, values not castable / "convertable" in that sense, will become null.

In case you need this as a helper method, use:

object DFHelper{
  def castColumnTo( df: DataFrame, cn: String, tpe: DataType ) : DataFrame = {
    df.withColumn( cn, df(cn).cast(tpe) )
  }
}

which is used like:

import DFHelper._
val df2 = castColumnTo( df, "year", IntegerType )
4
  • 2
    Can you advice me on how to proceed, if I need to cast and rename a whole bunch of columns (I have 50 columns, and fairly new to scala, not sure what is the best way to approach it without creating a massive duplication)? Some columns should stay String, some should be cast to Float. Apr 14, 2016 at 13:03
  • how to convert a String to a Date for example "25-APR-2016" in the column and "20160302"
    – dbspace
    Apr 29, 2016 at 21:30
  • @DmitrySmirnov Did you ever get an answer? I have the same question. ;)
    – Evan Zamir
    Mar 22, 2017 at 18:33
  • @EvanZamir unfortunately not, I ended up doing a shitton of operations to be able to use data as rdd in other steps. I wonder if this became easier these days :) Mar 23, 2017 at 11:34
64

First, if you wanna cast type, then this:

import org.apache.spark.sql
df.withColumn("year", $"year".cast(sql.types.IntegerType))

With same column name, the column will be replaced with new one. You don't need to do add and delete steps.

Second, about Scala vs R.
This is the code that most similar to R I can come up with:

val df2 = df.select(
   df.columns.map {
     case year @ "year" => df(year).cast(IntegerType).as(year)
     case make @ "make" => functions.upper(df(make)).as(make)
     case other         => df(other)
   }: _*
)

Though the code length is a little longer than R's. That is nothing to do with the verbosity of the language. In R the mutate is a special function for R dataframe, while in Scala you can easily ad-hoc one thanks to its expressive power.
In word, it avoid specific solutions, because the language design is good enough for you to quickly and easy build your own domain language.


side note: df.columns is surprisingly a Array[String] instead of Array[Column], maybe they want it look like Python pandas's dataframe.

4
  • 1
    Could you please give the equivalent for pyspark? Oct 3, 2015 at 18:06
  • 1
    I am getting "illegal start of definition" .withColumn("age", $"age".cast(sql.types.DoubleType)) for my "age" field. Any suggestion? Nov 24, 2017 at 4:14
  • Do you have to .cache() the data frame if we are doing these conversions on many columns for performance reason, or is it not required as Spark optimizes them?
    – skjagini
    Mar 6, 2019 at 21:36
  • The import can be import org.apache.spark.sql.types._ and then instead of sql.types.IntegerType just IntegerType.
    – nessa.gp
    May 6, 2020 at 14:00
20

You can use selectExpr to make it a little cleaner:

df.selectExpr("cast(year as int) as year", "upper(make) as make",
    "model", "comment", "blank")
13

Java code for modifying the datatype of the DataFrame from String to Integer

df.withColumn("col_name", df.col("col_name").cast(DataTypes.IntegerType))

It will simply cast the existing(String datatype) to Integer.

4
  • 1
    There's no DataTypes in sql.types! it's DataType. Moreover, one can simply import IntegerType and cast. Jul 13, 2016 at 17:31
  • @EhsanM.Kermani actually DatyaTypes.IntegerType is a legit reference.
    – Cupitor
    Jun 21, 2017 at 22:56
  • 1
    @Cupitor DataTypes.IntegerType used to be in DeveloperAPI mode and it's stable in v.2.1.0 Jun 21, 2017 at 23:31
  • This is the best solution!
    – user1972382
    Oct 14, 2018 at 12:09
11

I think this is lot more readable for me.

import org.apache.spark.sql.types._
df.withColumn("year", df("year").cast(IntegerType))

This will convert your year column to IntegerType with creating any temporary columns and dropping those columns. If you want to convert to any other datatype, you can check the types inside org.apache.spark.sql.types package.

8

To convert the year from string to int, you can add the following option to the csv reader: "inferSchema" -> "true", see DataBricks documentation

2
  • 5
    This works nicely but the catch is that the reader must do a second pass of your file
    – beefyhalo
    Sep 1, 2015 at 17:46
  • @beefyhalo absolutely spot on, is there any way around that?
    – Ayush
    Apr 22, 2017 at 11:00
8

Generate a simple dataset containing five values and convert int to string type:

val df = spark.range(5).select( col("id").cast("string") )
6

So this only really works if your having issues saving to a jdbc driver like sqlserver, but it's really helpful for errors you will run into with syntax and types.

import org.apache.spark.sql.jdbc.{JdbcDialects, JdbcType, JdbcDialect}
import org.apache.spark.sql.jdbc.JdbcType
val SQLServerDialect = new JdbcDialect {
  override def canHandle(url: String): Boolean = url.startsWith("jdbc:jtds:sqlserver") || url.contains("sqlserver")

  override def getJDBCType(dt: DataType): Option[JdbcType] = dt match {
    case StringType => Some(JdbcType("VARCHAR(5000)", java.sql.Types.VARCHAR))
    case BooleanType => Some(JdbcType("BIT(1)", java.sql.Types.BIT))
    case IntegerType => Some(JdbcType("INTEGER", java.sql.Types.INTEGER))
    case LongType => Some(JdbcType("BIGINT", java.sql.Types.BIGINT))
    case DoubleType => Some(JdbcType("DOUBLE PRECISION", java.sql.Types.DOUBLE))
    case FloatType => Some(JdbcType("REAL", java.sql.Types.REAL))
    case ShortType => Some(JdbcType("INTEGER", java.sql.Types.INTEGER))
    case ByteType => Some(JdbcType("INTEGER", java.sql.Types.INTEGER))
    case BinaryType => Some(JdbcType("BINARY", java.sql.Types.BINARY))
    case TimestampType => Some(JdbcType("DATE", java.sql.Types.DATE))
    case DateType => Some(JdbcType("DATE", java.sql.Types.DATE))
    //      case DecimalType.Fixed(precision, scale) => Some(JdbcType("NUMBER(" + precision + "," + scale + ")", java.sql.Types.NUMERIC))
    case t: DecimalType => Some(JdbcType(s"DECIMAL(${t.precision},${t.scale})", java.sql.Types.DECIMAL))
    case _ => throw new IllegalArgumentException(s"Don't know how to save ${dt.json} to JDBC")
  }
}

JdbcDialects.registerDialect(SQLServerDialect)
2
  • Can you help me implement the same code in Java ? and how to register the customJdbcDialect into DataFrame Feb 16, 2017 at 13:47
  • Nice one I did the same with Vertica, but since spark 2.1. JDbcUtil you need to implement only the specific datatype you need. dialect.getJDBCType(dt).orElse(getCommonJDBCType(dt)).getOrElse( throw new IllegalArgumentException(s"Can't get JDBC type for ${dt.simpleString}")) Feb 18, 2018 at 16:20
5

the answers suggesting to use cast, FYI, the cast method in spark 1.4.1 is broken.

for example, a dataframe with a string column having value "8182175552014127960" when casted to bigint has value "8182175552014128100"

    df.show
+-------------------+
|                  a|
+-------------------+
|8182175552014127960|
+-------------------+

    df.selectExpr("cast(a as bigint) a").show
+-------------------+
|                  a|
+-------------------+
|8182175552014128100|
+-------------------+

We had to face a lot of issue before finding this bug because we had bigint columns in production.

3
  • 4
    psst, upgrade your spark
    – msemelman
    Aug 10, 2016 at 13:27
  • 2
    @msemelman it's ridiculous to have to upgrade to a new version of spark in production for a small bug.
    – sauraI3h
    Aug 15, 2016 at 12:39
  • don't we always upgrade everything for small bugs? :)
    – caesarsol
    May 23, 2017 at 10:22
5
df.select($"long_col".cast(IntegerType).as("int_col"))
4

You can use below code.

df.withColumn("year", df("year").cast(IntegerType))

Which will convert year column to IntegerType column.

4

Using Spark Sql 2.4.0 you can do that:

spark.sql("SELECT STRING(NULLIF(column,'')) as column_string")
2

This method will drop the old column and create new columns with same values and new datatype. My original datatypes when the DataFrame was created were:-

root
 |-- id: integer (nullable = true)
 |-- flag1: string (nullable = true)
 |-- flag2: string (nullable = true)
 |-- name: string (nullable = true)
 |-- flag3: string (nullable = true)

After this I ran following code to change the datatype:-

df=df.withColumnRenamed(<old column name>,<dummy column>) // This was done for both flag1 and flag3
df=df.withColumn(<old column name>,df.col(<dummy column>).cast(<datatype>)).drop(<dummy column>)

After this my result came out to be:-

root
 |-- id: integer (nullable = true)
 |-- flag2: string (nullable = true)
 |-- name: string (nullable = true)
 |-- flag1: boolean (nullable = true)
 |-- flag3: boolean (nullable = true)
1
  • Could you please provide your solution here. Jan 23, 2019 at 20:35
2

So many answers and not much thorough explanations

The following syntax works Using Databricks Notebook with Spark 2.4

from pyspark.sql.functions import *
df = df.withColumn("COL_NAME", to_date(BLDFm["LOAD_DATE"], "MM-dd-yyyy"))

Note that you have to specify the entry format you have (in my case "MM-dd-yyyy") and the import is mandatory as the to_date is a spark sql function

Also Tried this syntax but got nulls instead of a proper cast :

df = df.withColumn("COL_NAME", df["COL_NAME"].cast("Date"))

(Note I had to use brackets and quotes for it to be syntaxically correct though)


PS : I have to admit this is like a syntax jungle, there are many possible ways entry points, and the official API references lack proper examples.

1
  • 1
    Syntax jungle. Yes. This is the world of Spark right now.
    – conner.xyz
    Nov 5, 2019 at 22:10
2

Another solution is as follows:

1) Keep "inferSchema" as False

2) While running 'Map' functions on the row, you can read 'asString' (row.getString...)

//Read CSV and create dataset
Dataset<Row> enginesDataSet = sparkSession
            .read()
            .format("com.databricks.spark.csv")
            .option("header", "true")
            .option("inferSchema","false")
            .load(args[0]);

JavaRDD<Box> vertices = enginesDataSet
            .select("BOX","BOX_CD")
            .toJavaRDD()
            .map(new Function<Row, Box>() {
                @Override
                public Box call(Row row) throws Exception {
                    return new Box((String)row.getString(0),(String)row.get(1));
                }
            });
2

Why not just do as described under http://spark.apache.org/docs/latest/api/python/pyspark.sql.html#pyspark.sql.Column.cast

df.select(df.year.cast("int"),"make","model","comment","blank")
1

One can change data type of a column by using cast in spark sql. table name is table and it has two columns only column1 and column2 and column1 data type is to be changed. ex-spark.sql("select cast(column1 as Double) column1NewName,column2 from table") In the place of double write your data type.

1

Another way:

// Generate a simple dataset containing five values and convert int to string type

val df = spark.range(5).select( col("id").cast("string")).withColumnRenamed("id","value")
1

In case you have to rename dozens of columns given by their name, the following example takes the approach of @dnlbrky and applies it to several columns at once:

df.selectExpr(df.columns.map(cn => {
    if (Set("speed", "weight", "height").contains(cn)) s"cast($cn as double) as $cn"
    else if (Set("isActive", "hasDevice").contains(cn)) s"cast($cn as boolean) as $cn"
    else cn
}):_*)

Uncasted columns are kept unchanged. All columns stay in their original order.

0
0
    val fact_df = df.select($"data"(30) as "TopicTypeId", $"data"(31) as "TopicId",$"data"(21).cast(FloatType).as( "Data_Value_Std_Err")).rdd
    //Schema to be applied to the table
    val fact_schema = (new StructType).add("TopicTypeId", StringType).add("TopicId", StringType).add("Data_Value_Std_Err", FloatType)

    val fact_table = sqlContext.createDataFrame(fact_df, fact_schema).dropDuplicates()
0

In case if you want to change multiple columns of a specific type to another without specifying individual column names

/* Get names of all columns that you want to change type. 
In this example I want to change all columns of type Array to String*/
    val arrColsNames = originalDataFrame.schema.fields.filter(f => f.dataType.isInstanceOf[ArrayType]).map(_.name)

//iterate columns you want to change type and cast to the required type
val updatedDataFrame = arrColsNames.foldLeft(originalDataFrame){(tempDF, colName) => tempDF.withColumn(colName, tempDF.col(colName).cast(DataTypes.StringType))}

//display

updatedDataFrame.show(truncate = false)

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