modin.pandas.DataFrame.std¶
- DataFrame.std(axis: Axis | None = None, skipna: bool = True, ddof: int = 1, numeric_only: bool = False, **kwargs)[source] (https://github.com/snowflakedb/snowpark-python/blob/v1.23.0/src/snowflake/snowpark/modin/plugin/extensions/base_overrides.py#L817-L837)¶
- Return sample standard deviation over requested axis. - Normalized by N-1 by default. This can be changed using the ddof argument. - Parameters:
- axis ({index (0), columns (1)}) – For Series this parameter is unused and defaults to 0. 
- skipna (bool, default True) – Exclude NA/null values. If an entire row/column is NA, the result will be NA. 
- ddof (int, default 1) – Delta Degrees of Freedom. The divisor used in calculations is N - ddof, where N represents the number of elements. 
- numeric_only (bool, default False) – If True, Include only float, int, boolean columns. Not implemented for Series. 
 
- Return type:
 - Notes - To have the same behaviour as numpy.std, use ddof=0 (instead of the default ddof=1) - Examples - >>> df = pd.DataFrame({'person_id': [0, 1, 2, 3], ... 'age': [21, 25, 62, 43], ... 'height': [1.61, 1.87, 1.49, 2.01]} ... ).set_index('person_id') >>> df age height person_id 0 21 1.61 1 25 1.87 2 62 1.49 3 43 2.01 - The standard deviation of the columns can be found as follows: - >>> df.std() age 18.786076 height 0.237417 dtype: float64 - Alternatively, ddof=0 can be set to normalize by N instead of N-1: - >>> df.std(ddof=0) age 16.269219 height 0.205609 dtype: float64