I'm trying to dynamically build a row in pySpark 1.6.1, then build it into a dataframe. The general idea is to extend the results of describe to include, for example, skew and kurtosis. Here's what I thought should work:

from pyspark.sql import Row

row_dict = {'C0': -1.1990072635132698,
            'C3': 0.12605772684660232,
            'C4': 0.5760856026559944,
            'C5': 0.1951877800894315,
            'C6': 24.72378589441825,
            'summary': 'kurtosis'}

new_row = Row(row_dict)

But this returns TypeError: sequence item 0: expected string, dict found which is a fairly clear error. Then I found that if I defined the Row fields first, I could use a dict:

r = Row('summary', 'C0', 'C3', 'C4', 'C5', 'C6')
> Row(summary={'summary': 'kurtosis', 'C3': 0.12605772684660232, 'C0': -1.1990072635132698, 'C6': 24.72378589441825, 'C5': 0.1951877800894315, 'C4': 0.5760856026559944})

Which would be a fine step, except it doesn't seem like I can dynamically specify the fields in Row. I need this to work for an unknown number of rows with unknown names. According to the documentation you can actually go the other way:

>>> Row(name="Alice", age=11).asDict() == {'name': 'Alice', 'age': 11}

So it seems like I should be able to do this. It also appears there may be some deprecated features from older versions that allowed this, for example here. Is there a more current equivalent I'm missing?

2 Answers 2


You can use keyword arguments unpacking as follows:


## Row(C0=-1.1990072635132698, C3=0.12605772684660232, C4=0.5760856026559944, 
##     C5=0.1951877800894315, C6=24.72378589441825, summary='kurtosis')

It is important to note that it internally sorts data by key to address problems with older Python versions.

This behavior is likely to be removed in the upcoming releases - see SPARK-29748 Remove sorting of fields in PySpark SQL Row creation. Once it is remove you'll have to ensure that the order of values in the dict is consistent across records.

  • Is this valid from a specific version of Python or is it a general rule ? The reason I'm asking is due to your latest edit.
    – eliasah
    Oct 1, 2017 at 12:20
  • 1
    @eliasah Since Spark will always sort internally, it just doesn't matter what we do before that. And given JIRA discussion it won't change until Spark drops support for Python < 3.6 (not any time soon). OrderedDict was a bit misleading, hence I removed it.
    – zero323
    Oct 1, 2017 at 12:24
  • 1
    @eliasah I believe that my first idea was to use *args (Row implements __new__ and takes different path with positional arguments) not **kwargs constructors - this is why I included sorting, and somehow it ended up in the answer.
    – zero323
    Oct 1, 2017 at 12:30
  • @zero323 can this approach be used with python 2.7 version and nested Dictionary? My aim was to convert twitter DStream to Row RDD then to DF as I am usinf Spark 1.6 version. May 14, 2018 at 9:37

In case the dict is not flatten, you can convert dict to Row recursively.

def as_row(obj):
    if isinstance(obj, dict):
        dictionary = {k: as_row(v) for k, v in obj.items()}
        return Row(**dictionary)
    elif isinstance(obj, list):
        return [as_row(v) for v in obj]
        return obj

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