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I'm new to Pandas so please bear with me; I have a dataframe A:

   one  two three
0    1    5     9
1    2    6    10
2    3    7    11
3    4    8    12

And a dataframe B, which represents relationships between columns in A:

      one two  # these get mutated in place
three   1   1
one     0   0

I need to use this to multiply values in-place with values in other columns. The output should be:

   one  two three
0    9   45     9
1    20  60    10
2    33  77    11
3    48  96    12

So in this case I have made the adjustments for each row:

one *= three
two *= three

Is there an efficient way to use this with Pandas / Numpy?

share|improve this question
up vote 1 down vote accepted

Take a look at here

In [37]: df
Out[37]: 
   one  two  three
0    1    5      9   
1    2    6     10  
2    3    7     11  
3    4    8     12  

In [38]: df['one'] *= df['three']

In [39]: df['two'] *= df['three']

In [40]: df
Out[40]: 
   one  two  three
0    9   45      9   
1   20   60     10  
2   33   77     11  
3   48   96     12 
share|improve this answer
    
This is great, though I suppose I was hoping for a solution that wouldn't require a loop in Python in the case that I didn't know the length of my dependency matrix ahead of time. Is this worth shooting for? – Scott May 22 '13 at 10:34
1  
Does the order matter? What if all the values in your dataframe B are all 1? – waitingkuo May 22 '13 at 10:53

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