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I have a pandas Dataframe with N columns representing the coordinates of a vector (for example X, Y, Z, but could be more than 3D).

I would like to aggregate the dataframe along the rows with an arbitrary function that combines the columns, for example the norm: (X^2 + Y^2 + Y^2).

I want to do something similar to what is done here and here and here but I want to keep it general enough that the number of columns can change and it behaves like

DataFrame.mean(axis = 1)

or

DataFrame.sum(axis = 1)
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3 Answers 3

You are looking for apply. Your example would look like this:

>> df = pd.DataFrame([[1, 1, 0], [1, 0, 0]], columns=['X', 'Y', 'Z'])
     X   Y   Z
0    1   1   0
1    1   0   0

>>> df.apply(lambda x: np.sqrt(x.dot(x)), axis=1)
0    1.414214
1    1.000000
dtype: float64

This works for any number of dimensions.

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Thanks! I just stumbled upon a faster solution: np.sqrt(np.square(df).sum(axis=1)) –  Fra Feb 5 at 22:11

filter the columns by name

cols = ['X','Y','Z']
df[cols].mean(axis=1)
df[cols].sum(axis=1)
df[cols].apply(lambda values: sum([v**2 for v in values]), axis=1)
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up vote 0 down vote accepted

I found a faster solution than what @elyase suggested:

np.sqrt(np.square(df).sum(axis=1))
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