pandas.Series.compare#
- Series.compare(other, align_axis=1, keep_shape=False, keep_equal=False, result_names=('self', 'other'))[source]#
- Compare to another Series and show the differences. - Parameters:
- otherSeries
- Object to compare with. 
- align_axis{0 or ‘index’, 1 or ‘columns’}, default 1
- Determine which axis to align the comparison on. - 0, or ‘index’Resulting differences are stacked vertically
- with rows drawn alternately from self and other. 
 
- 1, or ‘columns’Resulting differences are aligned horizontally
- with columns drawn alternately from self and other. 
 
 
- keep_shapebool, default False
- If true, all rows and columns are kept. Otherwise, only the ones with different values are kept. 
- keep_equalbool, default False
- If true, the result keeps values that are equal. Otherwise, equal values are shown as NaNs. 
- result_namestuple, default (‘self’, ‘other’)
- Set the dataframes names in the comparison. - Added in version 1.5.0. 
 
- Returns:
- Series or DataFrame
- If axis is 0 or ‘index’ the result will be a Series. The resulting index will be a MultiIndex with ‘self’ and ‘other’ stacked alternately at the inner level. - If axis is 1 or ‘columns’ the result will be a DataFrame. It will have two columns namely ‘self’ and ‘other’. 
 
 - See also - DataFrame.compare
- Compare with another DataFrame and show differences. 
 - Notes - Matching NaNs will not appear as a difference. - Examples - >>> s1 = pd.Series(["a", "b", "c", "d", "e"]) >>> s2 = pd.Series(["a", "a", "c", "b", "e"]) - Align the differences on columns - >>> s1.compare(s2) self other 1 b a 3 d b - Stack the differences on indices - >>> s1.compare(s2, align_axis=0) 1 self b other a 3 self d other b dtype: object - Keep all original rows - >>> s1.compare(s2, keep_shape=True) self other 0 NaN NaN 1 b a 2 NaN NaN 3 d b 4 NaN NaN - Keep all original rows and also all original values - >>> s1.compare(s2, keep_shape=True, keep_equal=True) self other 0 a a 1 b a 2 c c 3 d b 4 e e