23

I have such DataFrame in PySpark (this is the result of a take(3), the dataframe is very big):

sc = SparkContext()
df = [Row(owner=u'u1', a_d=0.1), Row(owner=u'u2', a_d=0.0), Row(owner=u'u1', a_d=0.3)]

the same owner will have more rows. What I need to do is summing the values of the field a_d per owner, after grouping, as

b = df.groupBy('owner').agg(sum('a_d').alias('a_d_sum'))

but this throws error

TypeError: unsupported operand type(s) for +: 'int' and 'str'

However, the schema contains double values, not strings (this comes from a printSchema()):

root
|-- owner: string (nullable = true)
|-- a_d: double (nullable = true)

So what is happening here?

3
  • are you sure that all your lines are fine? I mean, did you check that all rows have a valid a_d value?
    – mgaido
    Apr 19, 2016 at 12:55
  • @mark91 the a_d field comes from a multiplication of two double columns in another dataframe, I see no way it could be a string. Is there a way I could check this?
    – mar tin
    Apr 19, 2016 at 13:04
  • you can do something like getting the underlying RDD and filtering it using a RegExp on the field a_d.... Or you can write the result to a Hive table and look for NULLs in that column reading it through Hive... Or if you have a subset of few data which shows this problem you can even inspect it...
    – mgaido
    Apr 19, 2016 at 13:15

1 Answer 1

80

You are not using the correct sum function but the built-in function sum (by default).

So the reason why the build-in function won't work is that's it takes an iterable as an argument where as here the name of the column passed is a string and the built-in function can't be applied on a string. Ref. Python Official Documentation.

You'll need to import the proper function from pyspark.sql.functions :

from pyspark.sql import Row
from pyspark.sql.functions import sum as _sum

df = sqlContext.createDataFrame(
    [Row(owner=u'u1', a_d=0.1), Row(owner=u'u2', a_d=0.0), Row(owner=u'u1', a_d=0.3)]
)

df2 = df.groupBy('owner').agg(_sum('a_d').alias('a_d_sum'))
df2.show()

# +-----+-------+
# |owner|a_d_sum|
# +-----+-------+
# |   u1|    0.4|
# |   u2|    0.0|
# +-----+-------+
3
  • what version of spark are you using ? because I can't reproduce the error unless it's the built-in function sum. Are you running it in pyspark or submitting your script ?
    – eliasah
    Apr 19, 2016 at 13:28
  • can you write sum in your pyspark and update with the output here ?
    – eliasah
    Apr 19, 2016 at 13:30
  • Sorry, my fault, was convinced I had imported and I hadn't. Can you elaborate on why the built-in fails, where does it see a str?
    – mar tin
    Apr 19, 2016 at 14:01

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