I work on a dataframe with two column, mvv and count.

| 1 |  5  |
| 2 |  9  |
| 3 |  3  |
| 4 |  1  |

i would like to obtain two list containing mvv values and count value. Something like

mvv = [1,2,3,4]
count = [5,9,3,1]

So, I tried the following code: The first line should return a python list of row. I wanted to see the first value:

mvv_list = mvv_count_df.select('mvv').collect()
firstvalue = mvv_list[0].getInt(0)

But I get an error message with the second line:

AttributeError: getInt


See, why this way that you are doing is not working. First, you are trying to get integer from a Row Type, the output of your collect is like this:

>>> mvv_list = mvv_count_df.select('mvv').collect()
>>> mvv_list[0]
Out: Row(mvv=1)

If you take something like this:

>>> firstvalue = mvv_list[0].mvv
Out: 1

You will get the mvv value. If you want all the information of the array you can take something like this:

>>> mvv_array = [int(row.mvv) for row in mvv_list.collect()]
>>> mvv_array
Out: [1,2,3,4]

But if you try the same for the other column, you get:

>>> mvv_count = [int(row.count) for row in mvv_list.collect()]
Out: TypeError: int() argument must be a string or a number, not 'builtin_function_or_method'

This happens because count is a built-in method. And the column has the same name as count. A workaround to do this is change the column name of count to _count:

>>> mvv_list = mvv_list.selectExpr("mvv as mvv", "count as _count")
>>> mvv_count = [int(row._count) for row in mvv_list.collect()]

But this workaround is not needed, as you can access the column using the dictionary syntax:

>>> mvv_array = [int(row['mvv']) for row in mvv_list.collect()]
>>> mvv_count = [int(row['count']) for row in mvv_list.collect()]

And it will finally work!

  • it works great for the first column, but it does not work for the column count i think because of (the function count of spark) – a.moussa Jul 27 '16 at 12:16
  • Can you add what are you doing with the count? Add here in the comments. – Thiago Baldim Jul 27 '16 at 12:19
  • thanks for your response So this line work mvv_list = [int(i.mvv) for i in mvv_count.select('mvv').collect()] but not this one count_list = [int(i.count) for i in mvv_count.select('count').collect()] return invalid syntax – a.moussa Jul 27 '16 at 12:19
  • Don't need to add this select('count') use like this: count_list = [int(i.count) for i in mvv_list.collect()] I will add the example to the response. – Thiago Baldim Jul 27 '16 at 12:28
  • 1
    @a.moussa [i.['count'] for i in mvv_list.collect()] works to make it explicit to use the column named 'count' and not the count function – user989762 Aug 28 '18 at 10:21

Following one liner gives the list you want.

mvv = mvv_count_df.select("mvv").rdd.flatMap(lambda x: x).collect()
  • 1
    Performance wise this solution is much faster than your solution mvv_list = [int(i.mvv) for i in mvv_count.select('mvv').collect()] – Chanaka Fernando Dec 21 '18 at 19:29

This will give you all the elements as a list.

mvv_list = list(

The following code will help you

mvv_count_df.select('mvv').rdd.map(lambda row : row[0]).collect()
  • 1
    This should be the accepted answer. the reason is that you are staying in a spark context throughout the process and then you collect at the end as opposed to getting out of the spark context earlier which may cause a larger collect depending on what you are doing. – Donald Vetal Jan 18 at 17:30

On my data I got these benchmarks:

>>> data.select(col).rdd.flatMap(lambda x: x).collect()

0.52 sec

>>> [row[col] for row in data.collect()]

0.271 sec

>>> list(data.select(col).toPandas()[col])

0.427 sec

The result is the same


If you get the error below :

AttributeError: 'list' object has no attribute 'collect'

This code will solve your issues :

mvv_list = mvv_count_df.select('mvv').collect()

mvv_array = [int(i.mvv) for i in mvv_list]
  • I got that error too and this solution solved the problem. But why did I get the error? (Many others don't seem to get that!) – bikashg May 1 at 12:23

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