20

I figured out these two methods. Is there a better one?

>>> import pandas as pd
>>> df = pd.DataFrame({'A': [5, 6, 7], 'B': [7, 8, 9]})
>>> print df.sum().sum()
42
>>> print df.values.sum()
42

Just want to make sure I'm not missing something more obvious.

  • 1
    Be careful, because if there are nan values df.sum().sum() ignores the nan and returns a float whereas df.values.sum() returns nan. So the 2 methods are not equivalent. – Ramon Crehuet Jan 28 at 13:39
32

Updated for Pandas 0.24+

df.to_numpy().sum()

Prior to Pandas 0.24+

df.values

Is the underlying numpy array

df.values.sum()

Is the numpy sum method and is faster

  • Thanks. That's what I thought! – Bill Aug 3 '16 at 2:53
  • 1
    Is it faster purely because one function calls the other or is there some more fundamental difference? – kuanb Feb 10 '17 at 1:08
  • 2
    @kuanb two reasons. One, df.values.sum() is a numpy operation and most of the time, numpy is more performant. Two, numpy sums over all elements in an array regardless of dimensionality. pandas requires two separate calls to sum one for each dimension. – piRSquared Feb 10 '17 at 9:53

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