I'm using pyspark, loading a large csv file into a dataframe with spark-csv, and as a pre-processing step I need to apply a variety of operations to the data available in one of the columns (that contains a json string). That will return X values, each of which needs to be stored in their own separate column.

That functionality will be implemented in a UDF. However, I am not sure how to return a list of values from that UDF and feed these into individual columns. Below is a simple example:

from pyspark.sql.functions import udf
def udf_test(n):
    return [n/2, n%2]


df.select('amount','trans_date').withColumn("test", test_udf("amount")).show(4)

That produces the following:

|amount|trans_date|                test|
|  28.0|2016-02-07|         [14.0, 0.0]|
| 31.01|2016-02-07|[15.5050001144409...|
| 13.41|2016-02-04|[6.70499992370605...|
| 307.7|2015-02-17|[153.850006103515...|
| 22.09|2016-02-05|[11.0450000762939...|
only showing top 5 rows

What would be the best way to store the two (in this example) values being returned by the udf on separate columns? Right now they are being typed as strings:

df.select('amount','trans_date').withColumn("test", test_udf("amount")).printSchema()

 |-- amount: float (nullable = true)
 |-- trans_date: string (nullable = true)
 |-- test: string (nullable = true)

It is not possible to create multiple top level columns from a single UDF call but you can create a new struct. It requires an UDF with specified returnType:

from pyspark.sql.functions import udf
from pyspark.sql.types import StructType, StructField, FloatType

schema = StructType([
    StructField("foo", FloatType(), False),
    StructField("bar", FloatType(), False)

def udf_test(n):
    return (n / 2, n % 2) if n and n != 0.0 else (float('nan'), float('nan'))

test_udf = udf(udf_test, schema)
df = sc.parallelize([(1, 2.0), (2, 3.0)]).toDF(["x", "y"])

foobars = df.select(test_udf("y").alias("foobar"))
## root
##  |-- foobar: struct (nullable = true)
##  |    |-- foo: float (nullable = false)
##  |    |-- bar: float (nullable = false)

You further flatten the schema with simple select:

foobars.select("foobar.foo", "foobar.bar").show()
## +---+---+
## |foo|bar|
## +---+---+
## |1.0|0.0|
## |1.5|1.0|
## +---+---+

See also Derive multiple columns from a single column in a Spark DataFrame

  • Fantastic! This works very well for what I needed. I was most of the way there, but was feeding the StructType schema incorrectly to the udf, which was causing my new column to end up as StringType instead. Thanks a bunch! Feb 10 '16 at 20:06
  • Thanks!! This was exactly what I was looking for. :)
    – dksahuji
    Oct 4 '16 at 14:26
  • 4
    You could also do foobars.select("foobar.*") instead of naming each column individually.
    – pault
    Apr 4 '18 at 16:43
  • 2
    You can also "mix" both original columns and these from the UDF, in a two step process: df.select("x", test_udf("y").alias("foobar")).select("x", "foobar.*")
    – mjv
    Jul 5 '18 at 9:38
  • 1
    from pyspark.sql.types import StructType, StructField, FloatType Nov 5 '20 at 10:48

you can use flatMap to get the column the desired dataframe in one go

df4=df.select('udf_results').rdd.flatMap(lambda x:x).toDF(schema=your_new_schema)

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