pandas.Series.skew#
- Series.skew(*, axis=0, skipna=True, numeric_only=False, **kwargs)[source]#
Return unbiased skew over requested axis.
Normalized by N-1.
- Parameters:
- axis{index (0)}
Axis for the function to be applied on. For Series this parameter is unused and defaults to 0.
For DataFrames, specifying
axis=Nonewill apply the aggregation across both axes.Added in version 2.0.0.
- skipnabool, default True
Exclude NA/null values when computing the result.
- numeric_onlybool, default False
Include only float, int, boolean columns.
- **kwargs
Additional keyword arguments to be passed to the function.
- Returns:
- scalar or scalar
Value containing the calculation referenced in the description.
See also
Series.skewReturn unbiased skew over requested axis.
Series.varReturn unbiased variance over requested axis.
Series.stdReturn unbiased standard deviation over requested axis.
Examples
>>> s = pd.Series([1, 2, 3]) >>> s.skew() 0.0
With a DataFrame
>>> df = pd.DataFrame({'a': [1, 2, 3], 'b': [2, 3, 4], 'c': [1, 3, 5]}, ... index=['tiger', 'zebra', 'cow']) >>> df a b c tiger 1 2 1 zebra 2 3 3 cow 3 4 5 >>> df.skew() a 0.0 b 0.0 c 0.0 dtype: float64
Using axis=1
>>> df.skew(axis=1) tiger 1.732051 zebra -1.732051 cow 0.000000 dtype: float64
In this case, numeric_only should be set to True to avoid getting an error.
>>> df = pd.DataFrame({'a': [1, 2, 3], 'b': ['T', 'Z', 'X']}, ... index=['tiger', 'zebra', 'cow']) >>> df.skew(numeric_only=True) a 0.0 dtype: float64