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For the "normal" oauth2 dance, I get to specify the user and get a corresponding token. This allows me to make API calls masquerading as that user, i.e. on his behalf.

It can also allow the user to make calls masquerading as me. A use case is bigquery where I don't have to grant table access to the user and I can specify my own preferred level of control.

Using the simplified OAuth2Decorator, I don't seem to have this option. Am I right to say that? Or is there a work-around?

In general, what is the best practice? To use the proper oauth (comprising of Flow, Credentials and Storage)? Or to use OAuth2Decorator.

Thank you very much.

share|improve this question
    
Also, this page supposedly shows how to use oauth to get a token. Is this an Access Token or a Refresh Token? Does anyone have any sample codes for getting a Refresh Token and using it to get new Access Tokens? – user918081 Jul 15 '12 at 10:49

You can certainly use an OAuth2Decorator

Here is an example:

main.py

import bqclient
import httplib2
import os

from django.utils import simplejson as json
from google.appengine.api import memcache
from google.appengine.ext import webapp
from google.appengine.ext.webapp.util import run_wsgi_app
from oauth2client.appengine import oauth2decorator_from_clientsecrets

PROJECT_ID = "xxxxxxxxxxx"
DATASET = "your_dataset"

QUERY = "select columns from dataset.table"

CLIENT_SECRETS = os.path.join(os.path.dirname(__file__),'client_secrets.json')

http = httplib2.Http(memcache)
decorator = oauth2decorator_from_clientsecrets(CLIENT_SECRETS,
                  'https://www.googleapis.com/auth/bigquery')

bq = bqclient.BigQueryClient(http, decorator)

class MainHandler(webapp.RequestHandler):
    @decorator.oauth_required
    def get(self):
     data = {'data': json.dumps(bq.Query(QUERY, PROJECT_ID))}
     template = os.path.join(os.path.dirname(__file__), 'index.html')
     self.response.out.write(render(template, data))

application = webapp.WSGIApplication([('/', MainHandler),], debug=True)

def main():
    run_wsgi_app(application)

if __name__ == '__main__':
    main()

bqclient.py that gets imported in your main.py which handles BigQuery actions

from apiclient.discovery import build

class BigQueryClient(object):
    def __init__(self, http, decorator):
        """Creates the BigQuery client connection"""
        self.service = build('bigquery', 'v2', http=http)
        self.decorator = decorator

    def Query(self, query, project, timeout_ms=10):
        query_config = {
            'query': query,
            'timeoutMs': timeout_ms
         }
         decorated = self.decorator.http()
         queryReply = (self.service.jobs()
             .query(projectId=project, body=query_config)
             .execute(decorated))
         jobReference=queryReply['jobReference']
         while(not queryReply['jobComplete']):
             queryReply = self.service.jobs().getQueryResults(
                 projectId=jobReference['projectId'],
                 jobId=jobReference['jobId'],
                 timeoutMs=timeout_ms).execute(decorated)
         return queryReply

where all your authentication details are kept in a json file client_secrets.json

{
    "web": {
        "client_id": "xxxxxxxxxxxxxxx",
        "client_secret": "xxxxxxxxxxxxxxx",
        "redirect_uris": ["http://localhost:8080/oauth2callback"],
        "auth_uri": "https://accounts.google.com/o/oauth2/auth",
        "token_uri": "https://accounts.google.com/o/oauth2/token"
    }
}

finally, don't forget to add these lines to your app.yaml:

- url: /oauth2callback
  script: oauth2client/appengine.py

Hope that helps.

share|improve this answer

I am not sure I completely understand the use case, but if you are creating an application for others to use without their having to authorize access based on their own credentials, I would recommend using App Engine service accounts.

An example of this type of auth flow is described in the App Engine service accounts + Prediction API article.

Also, see this part and this part of the App Engine Datastore to BigQuery codelab, which also uses this authorization method.

The code might look something like this:

import httplib2

# Available in the google-api-python-client lib
from apiclient.discovery import build
from oauth2client.appengine import AppAssertionCredentials

# BigQuery Scope
SCOPE = 'https://www.googleapis.com/auth/bigquery'

# Instantiate and authorize a BigQuery API client
credentials = AppAssertionCredentials(scope=SCOPE)
http = credentials.authorize(httplib2.Http())
bigquery_service = build("bigquery", "v2", http=http)

# Make some calls to the API
jobs = bigquery_service.jobs()
result = jobs.insert(projectId='some_project_id',body='etc, etc')
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