Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I have a Pandas dataframe with hierarchical index. It is entirely composed of integers (and potentially NaNs). For each level in the index, and for some of the columns, I have a dictionary that maps every integer to a different string, and I want to present the dataframe with the strings and not the columns. I'm testing code as shown below:

import pandas as pd
import numpy as np
mappings = {'ace': {0:'a', 1:'b', 2:'c', 3:'d', 4:'e'},
            'algo': {0:'x', 1:'y', 2:'z', 3:'w', 4:'v'},
            'lucky': {0:'str0', 1:'str1', 2:'str2', 3:'str3', 4:'str4'}}
df = pd.DataFrame( np.random.randint(0, 5, (100, 5)), 
                   columns=('ace', 'spade', 'lucky', 'algo', 'boo') )
_a = df.set_index(['ace', 'algo'])
_b = df.groupby(['ace', 'algo']).size()
groups_small = _b[_b <= _b.quantile(0.7)].index
df_out = _a.drop(groups_small)

So for example, if df_out is:

          spade  lucky  boo
ace algo
0   1         3      0    0
    4         0      0    1
1   4         0      4    3
3   3         1      4    4
    3         2      1    1
2   0         0      3    1
0   4         2      2    1
    1         0      4    2
    1         3      3    3

I want it to be transformed into:

          spade  lucky  boo
ace algo
a   y         3   str0    0
    v         0   str0    1
b   v         0   str4    3
d   w         1   str4    4
    w         2   str1    1
c   x         0   str3    1
a   v         2   str2    1
    y         0   str4    2
    y         3   str3    3

By means of mappings. Which operations do I have to perform?

share|improve this question
1  
Why not just perform the mappings prior to groupby? e.g. df.algo = df.algo.map(mappings['algo']) etc.. – EdChum Oct 2 '13 at 10:20
    
Thanks @EdChum! That works, but the real table will be several thousand rows long, and the operation will happen several times per second, so that's why I want to show the strings only in the condensed output. – Luis E. Oct 2 '13 at 11:49
1  
I still think it is better to have your data in the form you want prior to the grouping if this is ultimately what you want anyway. You can update the lucky column in the df_out but I don't think you can modify the index in the way you want without it being an expensive operation. If you retained the columns as indexing, e.g. _a = df.set_index(['ace', 'algo'], drop=False) then you could still perform the mapping on the final df_out and then switch the index using set_index again. – EdChum Oct 2 '13 at 12:03
    
You again on the spot @EdChum! So the solution after doing set_index with drop=False makes me perform the following loop: for field, mapping in mappings.iteritems(): df_out[field] = df_out[field].map(mapping). That gets the job done, but maybe there is already a function that does this... – Luis E. Oct 2 '13 at 12:25
    
I think calling map is the fastest method as this will vectorize the operation without performing an expensive loop iteration. Personally I would create the DataFrame with the correct data in the first place rather than using integer values which then need to be converted into strings, several thousand rows is not a lot so it should be quick to perform the mapping prior to grouping – EdChum Oct 2 '13 at 12:46

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Browse other questions tagged or ask your own question.