# How to find the difference, mean, sum between all pairs of rows in pandas dataframe?

I have the following pandas DataFrame.

``````import pandas as pd

print(df)

dog      A         B           C
0     dog1    0.787575  0.159330    0.053095
1     dog10   0.770698  0.169487    0.059815
2     dog11   0.792689  0.152043    0.055268
3     dog12   0.785066  0.160361    0.054573
4     dog13   0.795455  0.150464    0.054081
5     dog14   0.794873  0.150700    0.054426
..    ....
8     dog19   0.811585  0.140207    0.048208
9     dog2    0.797202  0.152033    0.050765
10    dog20   0.801607  0.145137    0.053256
11    dog21   0.792689  0.152043    0.055268
....
``````

I want to find the absolute difference of `A` between all rows. How does one do this (keeping in mind the data grows very quickly)?

One way to "pair" the data is to try:

``````df1 = df.set_index("dog")

from itertools import combinations
cc = list(combinations(df,2))

out = pd.DataFrame([df1.loc[c,:].sum() for c in cc], index=cc)
``````

However, this is only summing. How do you do multiple operations?

Consider the following dataframe:

``````import numpy as np
import pandas as pd

df = pd.DataFrame({'Dog': list('ABCDEFG'), 'A': range(7)})[['Dog', 'A']]
df
`````` Use numpy's subtract.outer function then take the absolute value.

``````df1 = pd.DataFrame(np.abs(np.subtract.outer(df.A, df.A)), df.Dog, df.Dog)
df1
`````` to get a list of combination tuples:

``````stacked = df1.stack()
pd.DataFrame({'Dogs': stacked.index.to_series(), 'Diff': stacked})[['Dogs', 'Diff']].reset_index(drop=True)
`````` • Thanks. How would you put this in a "paired format", i.e. (dog A, dog A) = 0, (dog A, dog B) = 1, etc. ? – ShanZhengYang Jul 6 '16 at 16:06
• @ShanZhengYang if you found this answer satisfying then please accept it. This will mark the question as answered and encourage people to answer your future questions. – limbo Jul 6 '16 at 16:48