modin.pandas.Index.value_counts¶
- Index.value_counts(normalize: bool = False, sort: bool = True, ascending: bool = False, bins: int | None = None, dropna: bool = True) Series[source] (https://github.com/snowflakedb/snowpark-python/blob/v1.30.0/snowpark-python/src/snowflake/snowpark/modin/plugin/extensions/index.py#L660-L677)¶
- Return a Series containing counts of unique values. - The resulting object will be in descending order so that the first element is the most frequently occurring element. Excludes NA values by default. - Parameters:
- normalize (bool, default False) – If True, then the object returned will contain the relative frequencies of the unique values. 
- sort (bool, default True) – Sort by frequencies when True. Preserve the order of the data when False. 
- ascending (bool, default False) – Sort in ascending order. 
- bins (int, optional) – Rather than count values, group them into half-open bins, a convenience for - pd.cut, only works with numeric data. bins is not yet supported.
- dropna (bool, default True) – Don’t include counts of NaN. 
 
- Returns:
- A Series containing counts of unique values. 
- Return type:
 - See also - Series.count
- Number of non-NA elements in a Series. 
- DataFrame.count
- Number of non-NA elements in a DataFrame. 
- DataFrame.value_counts
- Equivalent method on DataFrames. 
 - Examples - >>> index = pd.Index([3, 1, 2, 3, 4, np.nan]) >>> index.value_counts() 3.0 2 1.0 1 2.0 1 4.0 1 Name: count, dtype: int64 - With normalize set to True, returns the relative frequency by dividing all values by the sum of values. - >>> ind = pd.Index([3, 1, 2, 3, 4, np.nan]) >>> ind.value_counts(normalize=True) 3.0 0.4 1.0 0.2 2.0 0.2 4.0 0.2 Name: proportion, dtype: float64 - bins - Bins can be useful for going from a continuous variable to a categorical variable; instead of counting unique apparitions of values, divide the index in the specified number of half-open bins.