I'm using tweepy to datamine the public stream of tweets for keywords. This is pretty straightforward and has been described in multiple places:



Copying code directly from the second link:

#Import the necessary methods from tweepy library
from tweepy.streaming import StreamListener
from tweepy import OAuthHandler
from tweepy import Stream

#Variables that contains the user credentials to access Twitter API 
access_token = "ENTER YOUR ACCESS TOKEN"
access_token_secret = "ENTER YOUR ACCESS TOKEN SECRET"
consumer_key = "ENTER YOUR API KEY"
consumer_secret = "ENTER YOUR API SECRET"

#This is a basic listener that just prints received tweets to stdout.
class StdOutListener(StreamListener):

    def on_data(self, data):
        print data
        return True

    def on_error(self, status):
        print status

if __name__ == '__main__':

    #This handles Twitter authetification and the connection to Twitter Streaming API
    l = StdOutListener()
    auth = OAuthHandler(consumer_key, consumer_secret)
    auth.set_access_token(access_token, access_token_secret)
    stream = Stream(auth, l)

    #This line filter Twitter Streams to capture data by the keywords: 'python', 'javascript', 'ruby'
    stream.filter(track=['python', 'javascript', 'ruby'])

What I can't figure out is how can I stream this data into a python variable? Instead of printing it to the screen... I'm working in an ipython notebook and want to capture the stream in some variable, foo after streaming for a minute or so. Furthermore, how do I get the stream to timeout? It runs indefinitely in this manner.


Using tweepy to access Twitter's Streaming API


Yes, in the post, @Adil Moujahid mentions that his code ran for 3 days. I adapted the same code and for initial testing, did the following tweaks:

a) Added a location filter to get limited tweets instead of universal tweets containing the keyword. See How to add a location filter to tweepy module. From here, you can create an intermediate variable in the above code as follows:

stream_all = Stream(auth, l)

Suppose we, select San Francisco area, we can add:

stream_SFO = stream_all.filter(locations=[-122.75,36.8,-121.75,37.8])  

It is assumed that the time to filter for location is lesser than filter for the keywords.

(b) Then you can filter for the keywords:

tweet_iter = stream_SFO.filter(track=['python', 'javascript', 'ruby']) 

(c) You can then write it to file as follows:

with open('file_name.json', 'w') as f:

This should take much lesser time. I co-incidently wanted to address the same question that you have posted today. Hence, I don't have the execution time.

Hope this helps.

  • Ok cool, let me play around with this some. Have you done anything in regard to streaming in a subprocess so it doesn't freeze out the program for 3 days while running? – Adam Hughes Feb 24 '15 at 19:38
  • Yes, what I used to do is to run the python program with nohup as follows: nohup python python_file.py & exit See [unix.stackexchange.com/questions/479/…. Later, if there are problems and if you want to kill the process, try: ps -ef |grep nohup and use that process id to kill the process started with nohup: Such as: kill -9 1787 787 See [stackoverflow.com/questions/17385794/… – KarthikS Feb 24 '15 at 19:50
  • You can also use Mosh from MIT, which is essentially a persistent SSH that works on mobile devices. – Adam Erickson Aug 16 '16 at 10:33

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