I have a udf which returns a list of strings. this should not be too hard. I pass in the datatype when executing the udf since it returns an array of strings: ArrayType(StringType).

Now, somehow this is not working:

the dataframe i'm operating on is df_subsets_concat and looks like this:

|col1                  |
|oculunt               |
|predistposed          |
|incredulous           |
only showing top 3 rows

and the code is

from pyspark.sql.types import ArrayType, FloatType, StringType

my_udf = lambda domain: ['s','n']
label_udf = udf(my_udf, ArrayType(StringType))
df_subsets_concat_with_md = df_subsets_concat.withColumn('subset', label_udf(df_subsets_concat.col1))

and the result is

/usr/lib/spark/python/pyspark/sql/types.py in __init__(self, elementType, containsNull)
    288         False
    289         """
--> 290         assert isinstance(elementType, DataType), "elementType should be DataType"
    291         self.elementType = elementType
    292         self.containsNull = containsNull

AssertionError: elementType should be DataType

It is my understanding that this was the correct way to do this. Here are some resources: pySpark Data Frames "assert isinstance(dataType, DataType), "dataType should be DataType" How to return a "Tuple type" in a UDF in PySpark?

But neither of these have helped me resolve why this is not working. i am using pyspark 1.6.1.

How to create a udf in pyspark which returns an array of strings?

1 Answer 1


You need to initialize a StringType instance:

label_udf = udf(my_udf, ArrayType(StringType()))
#                                           ^^ 
df.withColumn('subset', label_udf(df.col1)).show()
|        col1|subset|
|     oculunt|[s, n]|
|predistposed|[s, n]|
| incredulous|[s, n]|

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.