pandas.Series.reset_index#
- Series.reset_index(level=None, *, drop=False, name=<no_default>, inplace=False, allow_duplicates=False)[source]#
- Generate a new DataFrame or Series with the index reset. - This is useful when the index needs to be treated as a column, or when the index is meaningless and needs to be reset to the default before another operation. - Parameters:
- levelint, str, tuple, or list, default optional
- For a Series with a MultiIndex, only remove the specified levels from the index. Removes all levels by default. 
- dropbool, default False
- Just reset the index, without inserting it as a column in the new DataFrame. 
- nameobject, optional
- The name to use for the column containing the original Series values. Uses - self.nameby default. This argument is ignored when drop is True.
- inplacebool, default False
- Modify the Series in place (do not create a new object). 
- allow_duplicatesbool, default False
- Allow duplicate column labels to be created. - Added in version 1.5.0. 
 
- Returns:
- Series or DataFrame or None
- When drop is False (the default), a DataFrame is returned. The newly created columns will come first in the DataFrame, followed by the original Series values. When drop is True, a Series is returned. In either case, if - inplace=True, no value is returned.
 
 - See also - DataFrame.reset_index
- Analogous function for DataFrame. 
 - Examples - >>> s = pd.Series([1, 2, 3, 4], name='foo', ... index=pd.Index(['a', 'b', 'c', 'd'], name='idx')) - Generate a DataFrame with default index. - >>> s.reset_index() idx foo 0 a 1 1 b 2 2 c 3 3 d 4 - To specify the name of the new column use name. - >>> s.reset_index(name='values') idx values 0 a 1 1 b 2 2 c 3 3 d 4 - To generate a new Series with the default set drop to True. - >>> s.reset_index(drop=True) 0 1 1 2 2 3 3 4 Name: foo, dtype: int64 - The level parameter is interesting for Series with a multi-level index. - >>> arrays = [np.array(['bar', 'bar', 'baz', 'baz']), ... np.array(['one', 'two', 'one', 'two'])] >>> s2 = pd.Series( ... range(4), name='foo', ... index=pd.MultiIndex.from_arrays(arrays, ... names=['a', 'b'])) - To remove a specific level from the Index, use level. - >>> s2.reset_index(level='a') a foo b one bar 0 two bar 1 one baz 2 two baz 3 - If level is not set, all levels are removed from the Index. - >>> s2.reset_index() a b foo 0 bar one 0 1 bar two 1 2 baz one 2 3 baz two 3