I am currently using Spark 1.4.1 and can't convert a dict with nested dict to a Spark DataFrame. I convert the nested dict to a Row, but it seems to not accept my schema.

Here is the code to reproduce my error:

from pyspark.sql import Row, SQLContext, types as pst
sqlContext = SQLContext(sc)

example_dict = Row(**{"name": "Mike", "data": Row(**{"age": 10, "like": True})})

example_rdd = sc.parallelize([example_dict])

nested_fields = [pst.StructField("age", pst.IntegerType(), True), 
                 pst.StructField("like", pst.BooleanType(), True)]

schema = pst.StructType([
               pst.StructField("data", pst.StructType(nested_fields), True),
               pst.StructField("name", pst.StringType(), True)

df = sqlContext.createDataFrame(example_rdd, schema)

TypeError: StructType(List(StructField(age,IntegerType,true),StructField(like,BooleanType,true))) can not accept object in type <class 'pyspark.sql.types.Row'>

I am not sure why I receive this error. Here are the objects rdd and schema:

>>> example_rdd.first()
Row(data=Row(age=10, like=True), name='Mike')

>>> schema

I am not sure if I am missing something, but it appears that the schema matches the object. Is there a reason why Spark 1.4.1 will not accept Row within a Row?

As a note: this is not an issue in Spark 2.0.2, but unfortunately I am on a shared resource using Spark 1.4.1, so I need to find a work around for the time being :(. Any help would be appreciated, thanks in advance!


This happens because Row is not accepted as StructType in Spark 1.4. Accepted types are:

(tuple, list)

and Spark makes a naive check:

type(obj) not in _acceptable_types[_type]

which obviously won't work for Row object. Correct condition, which is equivalent to what happens in the current version, would be:

isinstance(obj, _acceptable_types[_type])

If you want to use nested columns you can use plain Python tuple:

Row(**{"name": "Mike", "data": (10, True)})


((10, True), "Mike")

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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