.. currentmodule:: geopandas .. ipython:: python :suppress: import geopandas Indexing and selecting data =========================== GeoPandas inherits the standard pandas_ methods for indexing/selecting data. This includes label based indexing with :attr:`~pandas.DataFrame.loc` and integer position based indexing with :attr:`~pandas.DataFrame.iloc`, which apply to both :class:`GeoSeries` and :class:`GeoDataFrame` objects. For more information on indexing/selecting, see the pandas_ documentation. .. _pandas: http://pandas.pydata.org/pandas-docs/stable/indexing.html In addition to the standard pandas_ methods, GeoPandas also provides coordinate based indexing with the :attr:`~GeoDataFrame.cx` indexer, which slices using a bounding box. Geometries in the :class:`GeoSeries` or :class:`GeoDataFrame` that intersect the bounding box will be returned. Using the ``geoda.chile_labor`` dataset, you can use this functionality to quickly select parts of Chile whose boundaries extend south of the -50 degrees latitude. You can first check the original GeoDataFrame. .. ipython:: python import geodatasets chile = geopandas.read_file(geodatasets.get_path('geoda.chile_labor')) @savefig chile.png chile.plot(figsize=(8, 8)); And then select only the southern part of the country. .. ipython:: python southern_chile = chile.cx[:, :-50] @savefig chile_southern.png southern_chile.plot(figsize=(8, 8));