11

I'm trying to do a pivot of a table containing strings as results.

import pandas as pd

df1 = pd.DataFrame({'index' : range(8),
'variable1' : ["A","A","B","B","A","B","B","A"],
'variable2' : ["a","b","a","b","a","b","a","b"],
'variable3' : ["x","x","x","y","y","y","x","y"],
'result': ["on","off","off","on","on","off","off","on"]})

df1.pivot_table(values='result',rows='index',cols=['variable1','variable2','variable3'])

But I get: DataError: No numeric types to aggregate.

This works as intended when I change result values to numbers:

df2 = pd.DataFrame({'index' : range(8),
'variable1' : ["A","A","B","B","A","B","B","A"],
'variable2' : ["a","b","a","b","a","b","a","b"],
'variable3' : ["x","x","x","y","y","y","x","y"],
'result': [1,0,0,1,1,0,0,1]})

df2.pivot_table(values='result',rows='index',cols=['variable1','variable2','variable3'])

And I get what I need:

variable1   A               B    
variable2   a       b       a   b
variable3   x   y   x   y   x   y
index                            
0           1 NaN NaN NaN NaN NaN
1         NaN NaN   0 NaN NaN NaN
2         NaN NaN NaN NaN   0 NaN
3         NaN NaN NaN NaN NaN   1
4         NaN   1 NaN NaN NaN NaN
5         NaN NaN NaN NaN NaN   0
6         NaN NaN NaN NaN   0 NaN
7         NaN NaN NaN   1 NaN NaN

I know I can map the strings to numerical values and then reverse the operation, but maybe there is a more elegant solution?

2 Answers 2

26

My original reply was based on Pandas 0.14.1, and since then, many things changed in the pivot_table function (rows --> index, cols --> columns... )

Additionally, it appears that the original lambda trick I posted no longer works on Pandas 0.18. You have to provide a reducing function (even if it is min, max or mean). But even that seemed improper - because we are not reducing the data set, just transforming it.... So I looked harder at unstack...

import pandas as pd

df1 = pd.DataFrame({'index' : range(8),
'variable1' : ["A","A","B","B","A","B","B","A"],
'variable2' : ["a","b","a","b","a","b","a","b"],
'variable3' : ["x","x","x","y","y","y","x","y"],
'result': ["on","off","off","on","on","off","off","on"]})

# these are the columns to end up in the multi-index columns.
unstack_cols = ['variable1', 'variable2', 'variable3']

First, set an index on the data using the index + the columns you want to stack, then call unstack using the level arg.

df1.set_index(['index'] + unstack_cols).unstack(level=unstack_cols)

Resulting dataframe is below.

enter image description here

5
  • Finally a solution for replacing the pivot() changes in pandas 0.17.1 Commented Jan 22, 2016 at 18:55
  • @RandallGoodwin, I realize this question is two years old, but I am getting the error "ValueError: Function does not reduce" using your lambda, off the top of your head would you know why? Commented Aug 9, 2016 at 18:26
  • 1
    Another idea: if you will potentially have multiple values that appear, you could concat strings by making your aggfunc = lambda x: " ".join([str(y) for y in x])
    – dllahr
    Commented Aug 18, 2016 at 21:04
  • 1
    @dllahr Same idea, but you can also use a variety of string accessors. e.g. aggfunc=lambda x: x.str.cat() FWIW, I used in an answer here: stackoverflow.com/questions/40229444/…
    – JohnE
    Commented Oct 25, 2016 at 2:35
  • @RustyShackleford see comment by me or dllahr
    – JohnE
    Commented Oct 25, 2016 at 2:40
2

I think the best compromise is to replace on/off with True/False, which will enable pandas to "understand" the data better and act in an intelligent, expected way.

df2 = df1.replace({'on': True, 'off': False})

You essentially conceded this in your question. My answer is, I don't think there's a better way, and you should replace 'on'/'off' anyway for whatever comes next.

As Andy Hayden points out in the comments, you'll get better performance if you replace on/off with 1/0.

1
  • 1
    +1, though may be better to use 1 and 0 so as DataFrame has float rather than object dtype :) Commented Oct 9, 2013 at 18:03

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.