birdy
birdy
is a super awesome Twitter API client for Python in just a little under 400 LOC.
TL;DR
Features
- Future proof dynamic API with full REST and Streaming API coverage
- OAuth1 (user) and OAuth2 (app) authentication workflows
- Automatic JSON decoding, JSONObject
- ApiResponse, StreamResponse objects
- Informative exceptions
- Easily customizable through subclassing
- Built on top of the excellent requests and requests-ouathlib libraries
Installation
The easiest and recommended way to install birdy
is from PyPI
pip install birdy
Usage
Import client and initialize it:
from birdy.twitter import UserClient
client = UserClient(CONSUMER_KEY,
CONSUMER_SECRET,
ACCESS_TOKEN,
ACCESS_TOKEN_SECRET)
GET example (GET users/show):
response = client.api.users.show.get(screen_name='twitter')
response.data
POST example (POST statuses/update):
response = client.api.statuses.update.post(status='Hello @pybirdy!')
Dynamic URL example (POST statuses/destroy/:id):
response = client.api.statuses.destroy['240854986559455234'].post()
Streaming API example (Public Stream POST statuses/filter):
response = client.stream.statuses.filter.post(track='twitter')
for data in response.stream():
print data
Supported Python version
birdy
works with both python2
(2.7+) and python3
(3.4+).
Why another Python Twitter API client? Aren't there enough?
The concept behind birdy
is so simple and awesome that it just had to be done, and the result is a super light weight and easy to use API
client, that covers the whole Twitter REST API in just a little under 400 lines of code.
To achieve this, birdy
relies on established, battle tested python libraries like requests
and requests-ouathlib
to do the heavy
lifting, but more importantly it relies on Python's dynamic nature to automatically construct API calls (no individual wrapper functions for API resources needed). This allows birdy
to cover all existing Twitter API resources and any future additions, without the need to update birdy
itself.
Includes full support for both OAuth1 (user) and OAuth2 (application) authentication workflows.
Finally, birdy
is simple and explicit by design, besides error handling and JSON decoding it doesn't process the returned data in any way, that is left for you to handle (who'd know better what to do with it).
OK, I'm sold, but how do I use it? How does this dynamic API construction work?
The easiest way to show you is by example. Lets say you want to query Twitter for @twitter user information. The Twitter API resource for this is GET users/show (Twitter docs).
First you will need to import a client, here we import UserClient (OAuth1) and than initialize it.
from birdy.twitter import UserClient
client = UserClient(CONSUMER_KEY,
CONSUMER_SECRET,
ACCESS_TOKEN,
ACCESS_TOKEN_SECRET)
To query the GET /users/show API resource and pass in the parameter screen_name='twitter' you do this.
resource = client.api.users.show
response = resource.get(screen_name='twitter')
What happens here is very simple, birdy
translates the users.show
part after client.api
into the appropriate API resource path
('users/show'). Then when you call get() on the resource, birdy
constructs a full resource URL, appends any parameters passed to get() to it and makes a GET request to that URL and returns the result.
Usually the above example would be shortened to just one line like this.
response = client.api.users.show.get(screen_name='twitter')
Making a post request is similar, if for example, you would like to post a status update, this is how to do it. The API resource is POST statuses/update (Twitter docs).
response = client.api.statuses.update.post(status='Hello @pybirdy!')
Like before the part after client.api
gets converted to the correct path, only this time post() is called instead of get(), so birdy
makes a POST request and pass parameters (and files) as part of the request body.
For cases when dynamic values are part of the API resource URL, like when deleting a tweet at POST statuses/destroy/:id (Twitter
docs), birdy
supports an alternative, dictionary lookup like, syntax. For example, deleting a tweet with id '240854986559455234' looks like this.
response = client.api.statuses.destroy['240854986559455234'].post()
By now it should be clear what happens above, birdy
builds the API resource path and than makes a POST request, the only difference is that part of the API path is provided like a dictionary key lookup.
Actually any call can be written in this alternative syntax, use whichever you prefer. Both syntax forms can be freely combined as in the example above. Some more examples:
response = client.api['users/show'].get(screen_name='twitter')
response = client.api['users']['show'].get(screen_name='twitter')
response = client.api['statuses/destroy']['240854986559455234'].post()
Is Streaming API supported as well?
Sure, since version 0.2, birdy
comes with full support for Streaming API out of the box. Access to the Streaming API is provided by a special StreamClient
.
StreamClient
can't be used to obtain access tokens, but you can useUserClient
to get them.
To work with the Streaming API, first import the client and initialize it.
from birdy.twitter import StreamClient
client = StreamClient(CONSUMER_KEY,
CONSUMER_SECRET,
ACCESS_TOKEN,
ACCESS_TOKEN_SECRET)
To access resources on the Public stream, like POST statuses/filter (Twitter docs)
resource = client.stream.statuses.filter.post(track='twitter')
For User stream resource GET user (Twitter docs)
resource = client.userstream.user.get()
And for Site stream resource GET site (Twitter docs)
resource = client.sitestream.site.get()
To access the data in the stream you iterate over resource.stream()
like this
for data in resource.stream():
print data
Great, what about authorization? How do I get my access tokens?
birdy
supports both OAuth1 and OAuth2 authentication workflows by providing two different clients, a UserClient
and AppClient
respectively. While requests to API resources, like in above examples are the same in both clients, the workflow for obtaining access tokens is slightly different.
Before you get started, you will need to register your application with Twitter, to obtain your application's
CONSUMER_KEY
andCONSUMER_SECRET
.
OAuth1 workflow for user authenticated requests (UserClient)
Step 1: Creating a client instance
First you need to import the UserClient
and create an instance with your apps CONSUMER_KEY
and CONSUMER_SECRET
.
from birdy.twitter import UserClient
CONSUMER_KEY = 'YOUR_APPS_CONSUMER_KEY'
CONSUMER_SECRET = 'YOUR_APPS_CONSUMER_SECRET'
CALLBACK_URL = 'https://127.0.0.1:8000/callback'
client = UserClient(CONSUMER_KEY, CONSUMER_SECRET)
Step 2: Get request token and authorization URL
Pass
callback_url
only if you have a Web app, Desktop and Mobile apps do not require it.
Next you need to fetch request token from Twitter. If you are building a Sign-in with Twitter type application it's done like this.
token = client.get_signin_token(CALLBACK_URL)
Otherwise like this.
token = client.get_authorize_token(CALLBACK_URL)
Save token.oauth_token
and token.oauth_token_secret
for later user, as this are not the final token and secret.
ACCESS_TOKEN = token.oauth_token
ACCESS_TOKEN_SECRET = token.oauth_token_secret
Direct the user to Twitter authorization url obtained from token.auth_url
.
Step 3: OAuth verification
If you have a Desktop or Mobile app,
OAUTH_VERIFIER
is the PIN code, you can skip the part about extraction.
After authorizing your application on Twitter, the user will be redirected back to the callback_url
provided during client initialization in Step 1.
You will need to extract the OAUTH_VERIFIER
from the URL. Most web frameworks provide an easy way of doing this or you can parse the URL yourself using urlparse
module (if that is your thing).
Django and Flask examples:
#Django
OAUTH_VERIFIER = request.GET['oauth_verifier']
#Flash
OAUTH_VERIFIER = request.args.get('oauth_verifier')
Once you have the OAUTH_VERIFIER
you can use it to obtain the final access token and secret. To do that you will need to create a new instance of UserClient
, this time also passing in ACCESS_TOKEN
and ACCESS_TOKEN_SECRET
obtained in Step 2 and then fetch the tokens.
client = UserClient(CONSUMER_KEY, CONSUMER_SECRET,
ACCESS_TOKEN, ACCESS_TOKEN_SECRET)
token = client.get_access_token(OAUTH_VERIFIER)
Now that you have the final access token and secret you can save token.oauth_token
and token.oauth_token_secret
to the database for later use, also you can use the client to start making API request immediately. For example, you can retrieve the users home timeline like this.
response = client.api.statuses.home_timeline.get()
response.data
That's it you have successfully authorized the user, retrieved the tokens and can now make API calls on their behalf.
OAuth2 workflow for app authenticated requests (AppClient)
Step 1: Creating a client instance
For OAuth2 you will be using the AppClient
, so first you need to import it and create an instance with your apps CONSUMER_KEY
and CONSUMER_SECRET
.
from birdy.twitter import AppClient
CONSUMER_KEY = 'YOUR_APPS_CONSUMER_KEY'
CONSUMER_SECRET = 'YOUR_APPS_CONSUMER_SECRET'
client = AppClient(CONSUMER_KEY, CONSUMER_SECRET)
Step 2: Getting the access token
OAuth2 workflow is much simpler compared to OAuth1, to obtain the access token you simply do this.
access_token = client.get_access_token()
That's it, you can start using the client immediately to make API request on behalf of the app. It's recommended you save the access_token
for later use. You initialize the client with a saved token like this.
client = AppClient(CONSUMER_KEY, CONSUMER_SECRET, SAVED_ACCESS_TOKEN)
Keep in mind that OAuth2 authenticated requests are read-only and not all API resources are available. Check Twitter docs for more information.
Any other useful features I should know about?
Of course, birdy
comes with some handy features, to ease your development, right out of the box. Lets take a look at some of the
goodies.
Automatic JSON decoding
JSON data returned by the REST and Streaming API is automatically decoded to native Python objects, no extra coding necessary, start using the data right away.
JSONObject
When decoding JSON data, objects
are, instead of a regular Python dictionary, converted to a JSONObject
, which is dictionary
subclass with attribute style access in addition to regular dictionary lookup style, for convenience. The following code produces the same
result
followers_count = response.data['followers_count']
followers_count = response.data.followers_count
ApiResponse
Calls to REST API resources return a ApiResponse
, which in addition to returned data, also gives you access to response headers (useful for checking rate limits) and resource URL.
response.data # decoded JSON data
response.resource_url # resource URL
response.headers # dictionary containing response HTTP headers
StreamResponse
StreamResponse
is returned when calling Streaming API resources and provides the stream() method which returns an iterator used to
receive JSON decoded streaming data. Like ApiResponse
it also gives you access to response headers and resource URL.
response.stream() # a generator method used to iterate over the stream
for data in response.stream():
print data
Informative exceptions
There are 4 types of exceptions in birdy
all subclasses of base BirdyException
(which is never directly raised).
TwitterClientError
raised for connection and access token retrieval errorsTwitterApiError
raised when Twitter returns an errorTwitterAuthError
raised when authentication fails,TwitterApiError
subclassTwitterRateLimitError
raised when rate limit for resource is reached,TwitterApiError
subclass
TwitterApiError
and TwitterClientError
instances (exepct for access token retrieval errors) provide a informative error description which includes the resource URL and request method used (very handy when tracking errors in logs), also available is the following:
exception.request_method # HTTP method used to make the request (GET or POST)
exception.resource_url # URL of the API resource called
exception.status_code # HTTP status code returned by Twitter
exception.error_code # error code returned by Twitter
exception.headers # dictionary containing response HTTP headers
Customize and extend through subclassing
birdy
was built with subclassing in mind, if you wish to change the way it works, all you have to do is subclass one of the clients and override some methods and you are good to go.
Subclassing a client and then using the subclass instance in your codeis actually the recommended way of using
birdy
.
For example, if you don't wish to use JSONObject
you have to override get_json_object_hook() method.
from birdy.twitter import UserClient
class MyClient(UserClient):
@staticmethod
def get_json_object_hook(data):
return data
client = MyClient(...)
response = client.api.users.show.get(screen_name='twitter')
Or maybe, if you want global error handling for common errors, just override handle_response() method.
class MyClient(UserClient):
def handle_response(self, method, response):
try:
response = super(MyClient, self).handle_response(method, response)
except TwitterApiError, e:
...
# Your error handling code
...
return response
Another use of subclassing is configuration of requests.Session
instance (docs) used to make HTTP requests, to configure it, you override the
configure_oauth_session() method.
class MyClient(UserClient):
def configure_oauth_session(self, session):
session = super(MyClient, self).configure_oauth_session(session)
session.proxies = {'http': 'foo.bar:3128'}
return session
Do you accept contributions and feature requests?
Yes, both contributions (including feedback) and feature requests are welcome, the proper way in both cases is to first open an issue on GitHub and we will take if from there.
Keep in mind that I work on this project on my free time, so I might not be able to respond right way.
Credits
birdy
would not exists if not for the excellent requests and requests-oauthlib libraries and the wonderful Python programing language.
Question, comments, ...
If you need to contact me, you can find me on Twitter (@sect2k).