28

I am writing a User Defined Function which will take all the columns except the first one in a dataframe and do sum (or any other operation). Now the dataframe can sometimes have 3 columns or 4 columns or more. It will vary.

I know I can hard code 4 column names as pass in the UDF but in this case it will vary so I would like to know how to get it done?

Here are two examples in the first one we have two columns to add and in the second one we have three columns to add.

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29

If all columns you want to pass to UDF have the same data type you can use array as input parameter, for example:

>>> from pyspark.sql.types import IntegerType
>>> from pyspark.sql.functions import udf, array
>>> sum_cols = udf(lambda arr: sum(arr), IntegerType())
>>> spark.createDataFrame([(101, 1, 16)], ['ID', 'A', 'B']) \
...     .withColumn('Result', sum_cols(array('A', 'B'))).show()
+---+---+---+------+
| ID|  A|  B|Result|
+---+---+---+------+
|101|  1| 16|    17|
+---+---+---+------+

>>> spark.createDataFrame([(101, 1, 16, 8)], ['ID', 'A', 'B', 'C'])\
...     .withColumn('Result', sum_cols(array('A', 'B', 'C'))).show()
+---+---+---+---+------+
| ID|  A|  B|  C|Result|
+---+---+---+---+------+
|101|  1| 16|  8|    25|
+---+---+---+---+------+
  • Also works in Scala: myUdf(array($"col1",$"col2")) – Josiah Yoder Jun 7 '17 at 14:32
  • 4
    how it can be implemented for columns with different types? – constructor Aug 9 '17 at 9:08
  • 1
    @constructor you can use array if sum numbers of different types also (i.e. integer and double -> both will be casted to double) – Mariusz Aug 9 '17 at 10:38
16

Use struct instead of array

from pyspark.sql.types import IntegerType
from pyspark.sql.functions import udf, struct
sum_cols = udf(lambda x: x[0]+x[1], IntegerType())
a=spark.createDataFrame([(101, 1, 16)], ['ID', 'A', 'B'])
a.show()
a.withColumn('Result', sum_cols(struct('A', 'B'))).show()
  • 3
    Can you explain why one would use struct instead of array? I'm guessing that this is to handle columns of different types? – scottlittle May 11 '18 at 19:20
11

Another simple way without Array and Struct.

from pyspark.sql.types import IntegerType
from pyspark.sql.functions import udf, struct

def sum(x, y):
    return x + y

sum_cols = udf(sum, IntegerType())

a=spark.createDataFrame([(101, 1, 16)], ['ID', 'A', 'B'])
a.show()
a.withColumn('Result', sum_cols('A', 'B')).show()
0

This is the way I tried and seemed to work:

colsToSum = df.columns[1:]
df_sum = df.withColumn("rowSum", sum([df[col] for col in colsToSum]))

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