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I load a some machine learning data from a csv file. The first 2 columns are observations and the remaining columns are features.

Currently, I do the following :

data = pandas.read_csv('mydata.csv')

which gives something like:

data = pandas.DataFrame(np.random.rand(10,5), columns = list('abcde'))

I'd like to slice this dataframe in two dataframes: one containing the columns a and b and one containing the columns c, d and e.

It is not possible to write something like

observations = data[:'c']
features = data['c':]

I'm not sure what the best method is. Do I need a panel?

By the way, I find dataframe indexing pretty inconsistent: data['a'] is permitted, but data[0] is not. On the other side, data['a':] is not permitted but data[0:] is. Is there a practical reason for this? This is really confusing if columns are indexed by Int, given that data[0] != data[0:1]

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1  
DataFrame is inherently a dict-like object when you do df[...], however some conveniences, e.g. df[5:10] were added for selecting rows (pandas.pydata.org/pandas-docs/stable/…) –  Wes McKinney May 19 '12 at 16:52
1  
So what this inconsistency is a design decision in favor of convenience? Alright, but it definitely needs to be more explicit for beginners! –  cpa May 19 '12 at 21:59
    
The design consideration of supporting convenience makes the learning curve much steep. I wish that there are better documentation for the beginning just presenting a consistent interface. For example, just focus on the ix interface. –  Yu Shen Jan 4 at 23:02

3 Answers 3

up vote 27 down vote accepted

The DataFrame.ix index is what you want to be accessing. It's a little confusing (I agree that Pandas indexing is perplexing at times!), but the following seems to do what you want:

>>> df = DataFrame(np.random.rand(4,5), columns = list('abcde'))
>>> df.ix[:,'b':]
      b         c         d         e
0  0.418762  0.042369  0.869203  0.972314
1  0.991058  0.510228  0.594784  0.534366
2  0.407472  0.259811  0.396664  0.894202
3  0.726168  0.139531  0.324932  0.906575

where .ix[row slice, column slice] is what is being interpreted. More on Pandas indexing here: http://pandas.pydata.org/pandas-docs/stable/indexing.html#indexing-advanced

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Indeed, that's what I wanted! Thanks. –  cpa May 21 '12 at 9:56
    
Careful that ranges in pandas include both end points, ie >>>data.ix[:, 'a':'c'] a b c 0 0.859192 0.881433 0.843624 1 0.744979 0.427986 0.177159 –  Caroline Alexiou Nov 1 '13 at 13:02
    
Multiple columns cab be passed like this df.ix[:,[0,3,4]] –  user602599 Apr 11 at 14:19

You can slice along the columns of a DataFrame by referring to the names of each column in a list, like so:

data = pandas.DataFrame(np.random.rand(10,5), columns = list('abcde'))
data_ab = data[list('ab')]
data_cde = data[list('cde')]
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So if I want all the data starting from column 'b', I need to find the index of 'b' in data.columns and do data[data.columns[1:]] ? That's the canonical way to operate? –  cpa May 19 '12 at 15:40
    
You mean you want to select all the columns from 'b' onwards? –  Brendan Wood May 19 '12 at 16:19
    
Yes, or selecting all the columns in a given range. –  cpa May 19 '12 at 21:56
    
I'm pretty new to pandas myself, so I can't speak as to what's considered canonical. I would do it like you said, but use the get_loc function on data.columns to determine the index of column 'b' or whatever. –  Brendan Wood May 20 '12 at 2:12

Also, Given a DataFrame

data

as in your example, if you would like to extract column a and d only (e.i. the 1st and the 4th column), iloc mothod from the pandas dataframe is what you need and could be used very effectively. All you need to know is the index of the columns you would like to extract. For example:

>>> data.iloc[:,[0,3]]

will give you

          a         d
0  0.883283  0.100975
1  0.614313  0.221731
2  0.438963  0.224361
3  0.466078  0.703347
4  0.955285  0.114033
5  0.268443  0.416996
6  0.613241  0.327548
7  0.370784  0.359159
8  0.692708  0.659410
9  0.806624  0.875476
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