Most efficient way to calculate the mean of a group of columns in a pandas DataFrame

I have a DataFrame with columns like this:

``````["A_1", "A_2", "A_3", "B_1", "B_2", "B_3"]
``````

What I'd like to to do is to "collapse" the various A and B columns in a single column each, by calculating their mean value. In short, at the end of the operation I'd get:

``````["A", "B"]
``````

where "A" is the column-wise mean of all "A" columns and "B" the mean of all "B" columns.

As far as I understood, `groupby` is not suited for this task, or perhaps I'm using it incorrectly:

``````grouped = data.groupby([item for item in data if "A" not in item])
``````

If I use axis=1, all I get is an empty DataFrame when calling mean(), and if not I'm not getting the desired effect. I would like to avoid building a separate DataFrame to be fillled with the means via iteration (e.g. by calculating means separately then adding them like `new_df["A"] = mean_a`). Is there an efficient solution for this?

-

I don't know about efficient, but I might do something like this:

``````~/coding\$ cat colgroup.dat
A_1,A_2,A_3,B_1,B_2,B_3
1,2,3,4,5,6
7,8,9,10,11,12
13,14,15,16,17,18
~/coding\$ python
Python 2.7.3 (default, Apr 20 2012, 22:44:07)
[GCC 4.6.3] on linux2
>>> import pandas
>>> df
A_1  A_2  A_3  B_1  B_2  B_3
0    1    2    3    4    5    6
1    7    8    9   10   11   12
2   13   14   15   16   17   18
>>> grouped = df.groupby(lambda x: x[0], axis=1)
>>> for i, group in grouped:
...     print i, group
...
A    A_1  A_2  A_3
0    1    2    3
1    7    8    9
2   13   14   15
B    B_1  B_2  B_3
0    4    5    6
1   10   11   12
2   16   17   18
>>> grouped.mean()
key_0   A   B
0       2   5
1       8  11
2      14  17
``````

I suppose `lambda x: x.split('_')[0]` would be a little more robust.

-
It seemed to work from the initial test I did, I'll check back on Monday when I'm able to run this on the real data. – Einar Jun 30 '12 at 7:47
With my real data (that has several groups), two distinct groupby() calls fix things nicely, while the other solution is slightly slower. – Einar Jul 2 '12 at 7:13

You want to make use of the built-in `mean()` function that accepts an `axis` argument to specify row-wise means. Since you know your specific column name convention for the different means that you want, you can use the example code below to do it very efficiently. Here I chose to just make two additional columns rather than to actually destroy the existing data. I could have also put these new columns into a new data frame; it just depends on what your needs are and what's convenient for you. The same basic idea will work in either case.

``````In [1]: import pandas

In [2]: dfrm = pandas.DataFrame([[1,2,3,4,5,6],[7,8,9,10,11,12],[13,14,15,16,17,18]], columns = ['A_1', 'A_2', 'A_3', 'B_1', 'B_2', 'B_3'])

In [3]: dfrm
Out[3]:
A_1  A_2  A_3  B_1  B_2  B_3
0    1    2    3    4    5    6
1    7    8    9   10   11   12
2   13   14   15   16   17   18

In [4]: dfrm["A_mean"] = dfrm[[elem for elem in dfrm.columns if elem[0]=='A']].mean(axis=1)

In [5]: dfrm
Out[5]:
A_1  A_2  A_3  B_1  B_2  B_3  A_mean
0    1    2    3    4    5    6       2
1    7    8    9   10   11   12       8
2   13   14   15   16   17   18      14

In [6]: dfrm["B_mean"] = dfrm[[elem for elem in dfrm.columns if elem[0]=='B']].mean(axis=1)

In [7]: dfrm
Out[7]:
A_1  A_2  A_3  B_1  B_2  B_3  A_mean  B_mean
0    1    2    3    4    5    6       2       5
1    7    8    9   10   11   12       8      11
2   13   14   15   16   17   18      14      17
``````
-
Will also try this and see what's best of the two solutions, thanks. – Einar Jul 2 '12 at 6:59