In Scala I can do get(#) or getAs[Type](#) to get values out of a dataframe. How should I do it in pyspark?

I have a two columns DataFrame: item(string) and salesNum(integers). I do a groupby and mean to get a mean of those numbers like this:


and it works. Now I have the mean in a dataframe with one value.

How can I get that value out of the dataframe to get the mean as a float number?

3 Answers 3


collect() returns your results as a python list. To get the value out of the list you just need to take the first element like this:

  • 3
    Thanks, and in the case for RDD it is a two dimensional list so I could use [0][0]?
    – M.Rez
    Jun 28, 2016 at 9:10
  • developing in ipython doesn't give me code traversing so I can learn more by going into the source code or something similar to what an ide offers.
    – M.Rez
    Jun 28, 2016 at 9:12

To be precise, collect returns a list whose elements are of type class 'pyspark.sql.types.Row'.

In your case to extract the real value you should do:


where yourColumnName is the name of the column you are taking the mean of (pyspark, when applying mean, renames the resulting column in this way by default).

As an example, I ran the following code. Look at the types and outputs of each step.

>>> columns = ['id', 'dogs', 'cats', 'nation']
>>> vals = [
...      (2, 0, 1, 'italy'),
...      (1, 2, 0, 'italy'),
...      (3, 4, 0, 'france')
... ]
>>> df = sqlContext.createDataFrame(vals, columns)
>>> df.groupBy("nation").mean("dogs").collect()
[Row(nation=u'france', avg(dogs)=4.0), Row(nation=u'italy', avg(dogs)=1.0)]
>>> df.groupBy("nation").mean("dogs").collect()[0]
Row(nation=u'france', avg(dogs)=4.0))
>>> df.groupBy("nation").mean("dogs").collect()[0]["avg(dogs)"]
>>> type(df.groupBy("nation").mean("dogs").collect())
<type 'list'>
>>> type(df.groupBy("nation").mean("dogs").collect()[0])
<class 'pyspark.sql.types.Row'>
>>> type(df.groupBy("nation").mean("dogs").collect()[0]["avg(dogs)"])
<type 'float'>

we can use first() also here.


Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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