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DOC: Add punctuation to basics.rst in User Guide #61167

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12 changes: 6 additions & 6 deletions doc/source/user_guide/basics.rst
Original file line number Diff line number Diff line change
Expand Up @@ -36,7 +36,7 @@ of elements to display is five, but you may pass a custom number.
Attributes and underlying data
------------------------------

pandas objects have a number of attributes enabling you to access the metadata
pandas objects have a number of attributes enabling you to access the metadata.

* **shape**: gives the axis dimensions of the object, consistent with ndarray
* Axis labels
Expand All @@ -59,7 +59,7 @@ NumPy's type system to add support for custom arrays
(see :ref:`basics.dtypes`).

To get the actual data inside a :class:`Index` or :class:`Series`, use
the ``.array`` property
the ``.array`` property.

.. ipython:: python

Expand Down Expand Up @@ -88,18 +88,18 @@ NumPy doesn't have a dtype to represent timezone-aware datetimes, so there
are two possibly useful representations:

1. An object-dtype :class:`numpy.ndarray` with :class:`Timestamp` objects, each
with the correct ``tz``
with the correct ``tz``.
2. A ``datetime64[ns]`` -dtype :class:`numpy.ndarray`, where the values have
been converted to UTC and the timezone discarded
been converted to UTC and the timezone discarded.

Timezones may be preserved with ``dtype=object``
Timezones may be preserved with ``dtype=object``:

.. ipython:: python

ser = pd.Series(pd.date_range("2000", periods=2, tz="CET"))
ser.to_numpy(dtype=object)

Or thrown away with ``dtype='datetime64[ns]'``
Or thrown away with ``dtype='datetime64[ns]'``:

.. ipython:: python

Expand Down
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