ne_stacked is a
pd.Series that consists of
False values that indicate where
df2 are not equal.
ne_stacked[boolean_array] is a way to filter the series
ne_stacked by eliminating the rows of
False and keeping the rows of
It so happens that
ne_stacked is also a boolean array and so can be used to filter itself. Why would be want to do this? So we can see what the values of the index are after we've filtered.
ne_stacked[ne_stacked] is a subset of
ne_stacked with only
np.where does two things, if you only pass a conditional like in
np.where(df1 != df2), you get a
tuple of arrays where the first is a reference of all row indices to be used in conjunction with the second element of the
tuple that is a reference to all column indices. I usually use it like this
i, j = np.where(df1 != df2)
Now I can get at all elements of
df2 in which there are differences like
Or I can assign to those cells
df.values[i, j] = -99
Or lots of other useful things.
You can also use
np.where as an if, then, else for arrays
np.where(df1 != df2, -99, 99)
To produce an array the same size as
df2 where you have
-99 in all the places where
df1 != df2 and
99 in the rest.
On the other hand
df.where evaluates the first argument of boolean values and returns an object of equal size to
df where the cells that evaluated to
True are kept and the rest are either
np.nan or the values passed in the second argument of
df1.where(df1 != df2)
df1.where(df1 != df2, -99)
are they the same?
Clearly they are not the "same". But you can use them similarly
np.where(df1 != df2, df1, -99)
Should be the same as
df1.where(df1 != df2, -99).values