Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a list of csv files ("file1", "file2", ...") that have two columns but do not have header labels. I'd like to assign them header labels and them as a DataFrame which is indexed by file and then indexed by those column labels. For example, I tried:

import pandas

mydict = {}
labels = ["col1", "col2"]
for myfile in ["file1", "file2"]:
  my_df = pandas.read_table(myfile, names=labels)
  # build dictionary of dataframe records
  mydict[myfile] = my_df

test = pandas.DataFrame(mydict)

this produces a DataFrame, test, indexed by "myfile1", "myfile2"... however, I'd like each of those to be indexed by "col1" and "col2" as well. My questions are:

  1. how can I make it so the first index is file, and second index are columns I assigned (in the variable labels)? So that I can write:

    test["myfile1"]["col1"]

right now, test["myfile1"] only gives me a series of records.

  1. also, how can I then reindex things so that the first indices are the column labels of each file and the second is the filename? So that I can write:

    test["col1"]["myfile1"]

or print test["col1"] and then see the value of "col1" shown for myfile1, myfile2, etc.

share|improve this question
    
A DataFrame is a 2D data structure, with columns and rows. I'm not quite clear what your data looks like, but consider using a Panel, which is the 3D structure. pandas.sourceforge.net/dsintro.html#panel –  Thomas K Jan 18 '12 at 18:09
add comment

1 Answer

up vote 6 down vote accepted

If you're using pandas >= 0.7.0 (currently only available in the GitHub repository, though I'll be making a release imminently!), you can concatenate your dict of DataFrames:

http://pandas.sourceforge.net/merging.html#more-concatenating-with-group-keys

In [6]: data
Out[6]: 
{'file1.csv':    A       B     
0  1.0914 -1.3538
1  0.5775 -0.2392
2 -0.2157 -0.2253
3 -2.4924  1.0896
4  0.6910  0.8992
5 -1.6196  0.3009
6 -1.5500  0.1360
7 -0.2156  0.4530
8  1.7018  1.1169
9 -1.7378 -0.3373,
 'file2.csv':    A       B      
0 -0.4948 -0.15551
1  0.6987  0.85838
2 -1.3949  0.25995
3  1.5314  1.25364
4  1.8582  0.09912
5 -1.1717 -0.21276
6 -0.2603 -1.78605
7 -3.3247  1.26865
8  0.7741 -2.25362
9 -0.6956  1.08774}


In [10]: cdf = concat(data, axis=1)

In [11]: cdf
O    ut[11]: 
   file1.csv          file2.csv         
   A          B       A          B      
0  1.0914    -1.3538 -0.4948    -0.15551
1  0.5775    -0.2392  0.6987     0.85838
2 -0.2157    -0.2253 -1.3949     0.25995
3 -2.4924     1.0896  1.5314     1.25364
4      0.6910     0.8992  1.8582     0.09912
5 -1.6196     0.3009 -1.1717    -0.21276
6 -1.5500     0.1360 -0.2603    -1.78605
7 -0.2156     0.4530 -3.3247     1.26865
8  1.7018     1.1169  0.7741    -2.25362
9 -1.7378    -0.3373 -0.6956     1.08774

Then if you wish to switch the order of the column indexes, you can do:

In [14]: cdf.swaplevel(0, 1, axis=1)
Out[14]: 
   A          B          A          B        
   file1.csv  file1.csv  file2.csv  file2.csv
0  1.0914    -1.3538    -0.4948    -0.15551  
1  0.5775    -0.2392     0.6987     0.85838  
2 -0.2157    -0.2253    -1.3949     0.25995  
3 -2.4924     1.0896     1.5314     1.25364  
4  0.6910     0.8992     1.8582     0.09912  
5 -1.6196     0.3009    -1.1717    -0.21276  
6 -1.5500     0.1360    -0.2603    -1.78605  
7 -0.2156     0.4530    -3.3247     1.26865  
8  1.7018     1.1169     0.7741    -2.25362  
9 -1.7378    -0.3373    -0.6956     1.08774  

Alternately, and perhaps a bit straightforwardly, you can use a Panel:

In [16]: p = Panel(data)

In [17]: p
Out[17]: 
<class 'pandas.core.panel.Panel'>
Dimensions: 2 (items) x 10 (major) x 2 (minor)
Items: file1.csv to file2.csv
Major axis: 0 to 9
Minor axis: A to B

In [18]: p = p.swapaxes(0, 2)

In [19]: p
Out[19]: 
<class 'pandas.core.panel.Panel'>
Dimensions: 2 (items) x 10 (major) x 2 (minor)
Items: A to B
Major axis: 0 to 9
Minor axis: file1.csv to file2.csv

In [20]: p['A']
Out[20]: 
   file1.csv  file2.csv
0  1.0914    -0.4948   
1  0.5775     0.6987   
2 -0.2157    -1.3949   
3 -2.4924     1.5314   
4  0.6910     1.8582   
5 -1.6196    -1.1717   
6 -1.5500    -0.2603   
7 -0.2156    -3.3247   
8  1.7018     0.7741   
9 -1.7378    -0.6956   
share|improve this answer
add comment

Your Answer

 
discard

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

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