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The following is a simple toy example of the type of operation I want to do.

Suppose that I have two Pandas DataFrames df0 and df1, like these:

In [2]: df0
Out[2]: 
   A   B  C
0  v  67  7
1  u  30  8
2  v  71  9
3  u  31  1
4  u  27  1
5  v  60  7
6  v  78  9
7  u  41  7

In [3]: df1
Out[3]: 
   A   B
0  u  20
1  v  10

Note that all the columns of df1 are in df0. Also note that, the values in df1['A'] are unique, and in fact they represent all the values that appear (with repeats) in df0['A'].

I want to subtract df1['B'] from df0['B'] in place, by broadcasting df0['B'] into the right shape according to the value of the A column. (With the end result that 20 gets subtracted from the B field of all the rows of df0 that have u in their A field; and likewise, 10 gets subtracted from the B field of all the rows of df0 that have v in their A field).

The goal is to end up with df0 looking like the following:

In [4]: df0
Out[4]: 
   A   B  C
0  v  57  7
1  u  10  8
2  v  61  9
3  u  11  1
4  u   7  1
5  v  50  7
6  v  68  9
7  u  21  7

As I said at the beginning, this is just a toy example. I'm interested in doing this sort of key-restricted updating with more operations than just subtraction.

What is the simplest way to do this sort of thing with Pandas?

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2 Answers 2

up vote 1 down vote accepted

This can also be done using apply, no need to sort.

In [188]: def f(s):
   .....:     s['B'] -= df1.loc[df1.A == 'v', 'B'].iat[0]
   .....:     return s
   .....: 


In [189]: df0.apply(f, axis=1)
Out[189]: 
   A   B  C
0  v  57  7
1  u  20  8
2  v  61  9
3  u  21  1
4  u  17  1
5  v  50  7
6  v  68  9
7  u  31  7
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I'm not sure if this will be robust enough to handle any situation you might dream up, but indexing by column "A" will provide you the match/operation functionality.

df0.set_index("A", inplace=True)
df1.set_index("A", inplace=True)

df2 = df0.sort()

df2["B"] = df2["B"] - df1["B"]
share|improve this answer
    
(see my EDIT)... –  kjo Apr 30 '13 at 16:26
    
Sorry, didn't get to test this, sorting should take care of it. –  bdiamante Apr 30 '13 at 16:27

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