Skip to main content

Pythonic wrapper for the Google Sheets API

Project description

Latest PyPI Version License Supported Python Versions Format Readthedocs

Travis Codecov

gsheets is a small wrapper around the Google Sheets API (v4) to provide more convenient access to Google Sheets from Python scripts.

Turn on the API, download an OAuth client ID as JSON file, and create a Sheets object from it. Use its index access (__getitem__) to retrieve SpreadSheet objects by their id, or use .get() with a sheet URL. Iterate over the Sheets object for all spreadsheets, or fetch spreadsheets by title with the .find() and .findall() methods.

SpreadSheet objects are collections of WorkSheets, which provide access to the cell values via spreadsheet coordinates/slices (e.g. ws['A1']) and zero-based cell position (e.g. ws.at(0, 1)).

Save WorkSheets (or all from a SpreadSheet) as CSV files with the .to_csv()-method. Create pandas.DataFrames from worksheet with the .to_frame()-method.

Installation

This package runs under Python 2.7, and 3.4+, use pip to install:

$ pip install gsheets

This will also install google-api-python-client and its dependencies, notably httplib2 and oauth2client, as required dependencies.

Quickstart

Log into the Google Developers Console with the Google account whose spreadsheets you want to access. Create (or select) a project and enable the Drive API and Sheets API (under Google Apps APIs).

Go to the Credentials for your project and create New credentials > OAuth client ID > of type Other. In the list of your OAuth 2.0 client IDs click Download JSON for the Client ID you just created. Save the file as client_secrets.json in your home directory (user directory). Another file, named storage.json in this example, will be created after successful authorization to cache OAuth data.

On you first usage of gsheets with this file (holding the client secrets), your webbrowser will be opened, asking you to log in with your Google account to authorize this client read access to all its Google Drive files and Google Sheets.

Create a sheets object:

>>> from gsheets import Sheets

>>> sheets = Sheets.from_files('~/client_secrets.json', '~/storage.json')
>>> sheets  #doctest: +ELLIPSIS
<gsheets.api.Sheets object at 0x...>

Fetch a spreadsheet by id or url:

# id only
>>> sheets['1dR13B3Wi_KJGUJQ0BZa2frLAVxhZnbz0hpwCcWSvb20']
<SpreadSheet 1dR13...20 u'Spam'>

# id or url
>>> url = 'https://docs.google.com/spreadsheets/d/1dR13B3Wi_KJGUJQ0BZa2frLAVxhZnbz0hpwCcWSvb20'
>>> s = sheets.get(url)
>>> s
<SpreadSheet 1dR13...20 u'Spam'>

Access worksheets and their values:

# first worksheet with title
>>> s.find('Tabellenblatt2')
<WorkSheet 1747240182 u'Tabellenblatt2' (10x2)>

# worksheet by position, cell value by index
>>> s.sheets[0]['A1']
u'spam'

# worksheet by id, cell value by position
>>> s[1747240182].at(row=1, col=1)
1

Dump a worksheet to a CSV file:

>>> s.sheets[1].to_csv('Spam.csv', encoding='utf-8', dialect='excel')

Dump all worksheet to a CSV file (deriving filenames from spreadsheet and worksheet title):

>>> csv_name = lambda title, sheet, dialect: '%s - %s.csv' % (title, sheet)
>>> s.to_csv(make_filename=csv_name)

Load the worksheet data into a pandas DataFrame (requires pandas):

>>> s.find('Tabellenblatt2').to_frame(index_col='spam')
      eggs
spam
spam  eggs
...

WorkSheet.to_frame() passes its kwargs on to pandas.read_csv()

See also

  • gsheets.py – self-containd script to dump all worksheets of a Google Spreadsheet to CSV or convert any subsheet to a pandas DataFrame (Python 2 prototype for this library)

  • gspread – Google Spreadsheets Python API (more mature and featureful Python wrapper, currently using the XML-based legacy v3 API)

  • example Jupyter notebook using gspread to fetch a sheet into a pandas DataFrame

  • df2gspread – Transfer data between Google Spreadsheets and Pandas (build upon gspread, currently Python 2 only, GPL)

  • pygsheets – Google Spreadsheets Python API v4 (v4 port of gspread providing further extensions)

  • gspread-pandas – Interact with Google Spreadsheet through Pandas DataFrames

  • pgsheets – Manipulate Google Sheets Using Pandas DataFrames (independent bidirectional transfer library, using the legacy v3 API, Python 3 only)

  • PyDrive – Google Drive API made easy (google-api-python-client wrapper for the Google Drive API, currently v2)

License

This package is distributed under the MIT license.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

gsheets-0.3.1.zip (37.1 kB view details)

Uploaded Source

Built Distribution

gsheets-0.3.1-py2.py3-none-any.whl (19.1 kB view details)

Uploaded Python 2 Python 3

File details

Details for the file gsheets-0.3.1.zip.

File metadata

  • Download URL: gsheets-0.3.1.zip
  • Upload date:
  • Size: 37.1 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No

File hashes

Hashes for gsheets-0.3.1.zip
Algorithm Hash digest
SHA256 d63b7d395c4f896474249ff1b5a80a05cbc772ca5cd1107183d218f2fe6c6e75
MD5 cbbb4201413f1c3e6b420f3b530cd8e2
BLAKE2b-256 d56078220d70aba5e35e6777f8381a2c7120db333d4a35aff09928eaf20945a0

See more details on using hashes here.

File details

Details for the file gsheets-0.3.1-py2.py3-none-any.whl.

File metadata

File hashes

Hashes for gsheets-0.3.1-py2.py3-none-any.whl
Algorithm Hash digest
SHA256 921c24f3bfc2c57b0adeaafd17da3ae9d4f45ac72cf670139ab6a0b16d33adf7
MD5 8c363c672095d6145ecadcf7c13610b9
BLAKE2b-256 73c7f8d76ae7b95ccaae94072cef757d1616ed0ddf014ce16feb103b78fc6192

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page