""" Google BigQuery support """ def _try_import(): # since pandas is a dependency of pandas-gbq # we need to import on first use try: import pandas_gbq except ImportError: # give a nice error message raise ImportError("Load data from Google BigQuery\n" "\n" "the pandas-gbq package is not installed\n" "see the docs: https://pandas-gbq.readthedocs.io\n" "\n" "you can install via pip or conda:\n" "pip install pandas-gbq\n" "conda install pandas-gbq -c conda-forge\n") return pandas_gbq def read_gbq(query, project_id=None, index_col=None, col_order=None, reauth=False, verbose=None, private_key=None, dialect='legacy', **kwargs): """ Load data from Google BigQuery. This function requires the `pandas-gbq package `__. Authentication to the Google BigQuery service is via OAuth 2.0. - If "private_key" is not provided: By default "application default credentials" are used. If default application credentials are not found or are restrictive, user account credentials are used. In this case, you will be asked to grant permissions for product name 'pandas GBQ'. - If "private_key" is provided: Service account credentials will be used to authenticate. Parameters ---------- query : str SQL-Like Query to return data values. project_id : str Google BigQuery Account project ID. index_col : str, optional Name of result column to use for index in results DataFrame. col_order : list(str), optional List of BigQuery column names in the desired order for results DataFrame. reauth : boolean, default False Force Google BigQuery to reauthenticate the user. This is useful if multiple accounts are used. private_key : str, optional Service account private key in JSON format. Can be file path or string contents. This is useful for remote server authentication (eg. Jupyter/IPython notebook on remote host). dialect : str, default 'legacy' SQL syntax dialect to use. Value can be one of: ``'legacy'`` Use BigQuery's legacy SQL dialect. For more information see `BigQuery Legacy SQL Reference `__. ``'standard'`` Use BigQuery's standard SQL, which is compliant with the SQL 2011 standard. For more information see `BigQuery Standard SQL Reference `__. verbose : boolean, deprecated *Deprecated in Pandas-GBQ 0.4.0.* Use the `logging module to adjust verbosity instead `__. kwargs : dict Arbitrary keyword arguments. configuration (dict): query config parameters for job processing. For example: configuration = {'query': {'useQueryCache': False}} For more information see `BigQuery SQL Reference `__ Returns ------- df: DataFrame DataFrame representing results of query. See Also -------- pandas_gbq.read_gbq : This function in the pandas-gbq library. pandas.DataFrame.to_gbq : Write a DataFrame to Google BigQuery. """ pandas_gbq = _try_import() return pandas_gbq.read_gbq( query, project_id=project_id, index_col=index_col, col_order=col_order, reauth=reauth, verbose=verbose, private_key=private_key, dialect=dialect, **kwargs) def to_gbq(dataframe, destination_table, project_id, chunksize=None, verbose=None, reauth=False, if_exists='fail', private_key=None, auth_local_webserver=False, table_schema=None): pandas_gbq = _try_import() return pandas_gbq.to_gbq( dataframe, destination_table, project_id, chunksize=chunksize, verbose=verbose, reauth=reauth, if_exists=if_exists, private_key=private_key, auth_local_webserver=auth_local_webserver, table_schema=table_schema)