| Using BigQuery with Pandas |
| ~~~~~~~~~~~~~~~~~~~~~~~~~~ |
|
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| Retrieve BigQuery data as a Pandas DataFrame |
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ |
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| As of version 0.29.0, you can use the |
| :func:`~google.cloud.bigquery.table.RowIterator.to_dataframe` function to |
| retrieve query results or table rows as a :class:`pandas.DataFrame`. |
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|
| First, ensure that the :mod:`pandas` library is installed by running: |
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| .. code-block:: bash |
|
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| pip install --upgrade pandas |
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|
| Alternatively, you can install the BigQuery Python client library with |
| :mod:`pandas` by running: |
|
|
| .. code-block:: bash |
|
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| pip install --upgrade 'google-cloud-bigquery[pandas]' |
|
|
| To retrieve query results as a :class:`pandas.DataFrame`: |
|
|
| .. literalinclude:: ../snippets.py |
| :language: python |
| :dedent: 4 |
| :start-after: [START bigquery_query_results_dataframe] |
| :end-before: [END bigquery_query_results_dataframe] |
|
|
| To retrieve table rows as a :class:`pandas.DataFrame`: |
|
|
| .. literalinclude:: ../snippets.py |
| :language: python |
| :dedent: 4 |
| :start-after: [START bigquery_list_rows_dataframe] |
| :end-before: [END bigquery_list_rows_dataframe] |
|
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| The following data types are used when creating a pandas DataFrame. |
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|
| .. list-table:: Pandas Data Type Mapping |
| :header-rows: 1 |
|
|
| * - BigQuery |
| - pandas |
| - Notes |
| * - BOOL |
| - boolean |
| - |
| * - DATETIME |
| - datetime64[ns], object |
| - The object dtype is used when there are values not representable in a |
| pandas nanosecond-precision timestamp. |
| * - DATE |
| - dbdate, object |
| - The object dtype is used when there are values not representable in a |
| pandas nanosecond-precision timestamp. |
|
|
| Requires the ``db-dtypes`` package. See the `db-dtypes usage guide |
| <https://googleapis.dev/python/db-dtypes/latest/usage.html>`_ |
| * - FLOAT64 |
| - float64 |
| - |
| * - INT64 |
| - Int64 |
| - |
| * - TIME |
| - dbtime |
| - Requires the ``db-dtypes`` package. See the `db-dtypes usage guide |
| <https://googleapis.dev/python/db-dtypes/latest/usage.html>`_ |
|
|
| Retrieve BigQuery GEOGRAPHY data as a GeoPandas GeoDataFrame |
| ------------------------------------------------------------ |
|
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| `GeoPandas <https://geopandas.org/>`_ adds geospatial analytics |
| capabilities to Pandas. To retrieve query results containing |
| GEOGRAPHY data as a :class:`geopandas.GeoDataFrame`: |
|
|
| .. literalinclude:: ../samples/geography/to_geodataframe.py |
| :language: python |
| :dedent: 4 |
| :start-after: [START bigquery_query_results_geodataframe] |
| :end-before: [END bigquery_query_results_geodataframe] |
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| Load a Pandas DataFrame to a BigQuery Table |
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ |
|
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| As of version 1.3.0, you can use the |
| :func:`~google.cloud.bigquery.client.Client.load_table_from_dataframe` function |
| to load data from a :class:`pandas.DataFrame` to a |
| :class:`~google.cloud.bigquery.table.Table`. To use this function, in addition |
| to :mod:`pandas`, you will need to install the :mod:`pyarrow` library. You can |
| install the BigQuery Python client library with :mod:`pandas` and |
| :mod:`pyarrow` by running: |
|
|
| .. code-block:: bash |
|
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| pip install --upgrade google-cloud-bigquery[pandas,pyarrow] |
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| The following example demonstrates how to create a :class:`pandas.DataFrame` |
| and load it into a new table: |
|
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| .. literalinclude:: ../samples/load_table_dataframe.py |
| :language: python |
| :dedent: 4 |
| :start-after: [START bigquery_load_table_dataframe] |
| :end-before: [END bigquery_load_table_dataframe] |
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|