The ExtensionArray of the data backing this Series or Index.
An ExtensionArray of the values stored within. For extension types, this is the actual array. For NumPy native types, this is a thin (no copy) wrapper around numpy.ndarray.
.array differs from .values, which may require converting the data to a different form.
See also
Index.to_numpySimilar method that always returns a NumPy array.
Series.to_numpySimilar method that always returns a NumPy array.
Notes
This table lays out the different array types for each extension dtype within pandas.
dtype | array type |
|---|---|
category | Categorical |
period | PeriodArray |
interval | IntervalArray |
IntegerNA | IntegerArray |
string | StringArray |
boolean | BooleanArray |
datetime64[ns, tz] | DatetimeArray |
For any 3rd-party extension types, the array type will be an ExtensionArray.
For all remaining dtypes .array will be a arrays.NumpyExtensionArray wrapping the actual ndarray stored within. If you absolutely need a NumPy array (possibly with copying / coercing data), then use Series.to_numpy() instead.
Examples
For regular NumPy types like int, and float, a NumpyExtensionArray is returned.
>>> pd.Series([1, 2, 3]).array
<NumpyExtensionArray>
[1, 2, 3]
Length: 3, dtype: int64
For extension types, like Categorical, the actual ExtensionArray is returned
>>> ser = pd.Series(pd.Categorical(['a', 'b', 'a']))
>>> ser.array
['a', 'b', 'a']
Categories (2, object): ['a', 'b']
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https://pandas.pydata.org/pandas-docs/version/2.3.0/reference/api/pandas.Series.array.html