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I'm trying to multiply (add/divide/etc.) two dataframes that have different column labels.

I'm sure this is possible, but what's the best way to do it? I've tried using rename to change the columns on one df first, but (1) I'd rather not do that and (2) my real data has a multiindex on the columns (where only one layer of the multiindex is differently labeled), and rename seems tricky for that case...

So to try and generalize my question, how can I get df1 * df2 using map to define the columns to multiply together?

df1 = pd.DataFrame([1,2,3], index=['1', '2', '3'], columns=['a', 'b', 'c'])
df2 = pd.DataFrame([4,5,6], index=['1', '2', '3'], columns=['d', 'e', 'f'])
map = {'a': 'e', 'b': 'd', 'c': 'f'}

df1 * df2 = ?
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In the question you say 'different columns', but your example has 'different index'. Which one is it? –  Avaris Sep 21 '12 at 1:14
    
Good catch, I clarified the original question. –  jmloser Sep 21 '12 at 3:25

3 Answers 3

up vote 0 down vote accepted

Assuming the index is already aligned, you probably just want to align the columns in both DataFrame in the right order and divide the .values of both DataFrames.

Supposed mapping = {'a' : 'e', 'b' : 'd', 'c' : 'f'}:

v1 = df1.reindex(columns=['a', 'b', 'c']).values
v2 = df2.reindex(columns=['e', 'd', 'f']).values
rs = DataFrame(v1 / v2, index=v1.index, columns=['a', 'b', 'c'])
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Was hoping there was a "cleaner" solution than directly manipulating the values and constructing a new dataframe. Perhaps not. –  jmloser Sep 22 '12 at 0:48

I just stumbled onto the same problem. It seems like pandas wants both the column and row index to be aligned to do the element-wise multiplication, so you can just rename with your mapping during the multiplication:

>>> df1 = pd.DataFrame([[1,2,3]], index=['1', '2', '3'], columns=['a', 'b', 'c'])
>>> df2 = pd.DataFrame([[4,5,6]], index=['1', '2', '3'], columns=['d', 'e', 'f'])
>>> df1
   a  b  c
1  1  2  3
2  1  2  3
3  1  2  3
>>> df2
   d  e  f
1  4  5  6
2  4  5  6
3  4  5  6
>>> mapping = {'a' : 'e', 'b' : 'd', 'c' : 'f'}
>>> df1.rename(columns=mapping) * df2
   d  e   f
1  8  5  18
2  8  5  18
3  8  5  18

If you want the 'natural' order of columns, you can create a mapping on the fly like:

>>> df1 * df2.rename(columns=dict(zip(df2.columns, df1.columns)))

for example to do the "Frobenius inner product" of the two matrices, you could do:

>>> (df1 * df2.rename(columns=dict(zip(df2.columns, df1.columns)))).sum().sum()
96
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I was also troubled by this problem. It seems that the pandas requires matrix multiply needs both dataframes has same column names.

I searched a lot and found the example in the setting enlargement is add one column to the dataframe.

For your question,

rs = pd.np.multiply(ds2, ds1)

The rs will have the same column names as ds2.

Suppose we want to multiply several columns with other serveral columns in the same dataframe and append these results into the original dataframe.

For example ds1,ds2 are in the same dataframe ds. We can

ds[['r1', 'r2', 'r3']] = pd.np.multiply(ds[['a', 'b', 'c']], ds[['d', 'e', 'f']])

I hope these will help.

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