Streaming tweets with Twitter API: Difference between revisions
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(venv) $ pip install tweepy | (venv) $ pip install tweepy | ||
'''Task 1:''' Run the following minimal boilerplate code to connect to Twitter's API and start downloading a stream of tweets (the code takes a few seconds to connect): | '''Task 1:''' Run the following minimal boilerplate code '''tweet_harvester.py''' to connect to Twitter's API and start downloading a stream of tweets (the code takes a few seconds to connect): | ||
import json | import json | ||
import time | |||
import tweepy | import tweepy | ||
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streaming_client.on_data = on_data | streaming_client.on_data = on_data | ||
streaming_client.sample(threaded=True) | streaming_client.sample(threaded=True) | ||
sleep(DURATION) | time.sleep(DURATION) | ||
streaming_client.disconnect() | streaming_client.disconnect() | ||
Note how, every time a new tweet is received, tweepy calls the '''on_data()'''-function, which prints the tweeted text to the screen. | Note how, every time a new tweet is received, tweepy calls the '''on_data()'''-function, which prints the tweeted text to the screen. This is just a simple example to get started. In Session 1 we will look at many other ways to access the Twitter API V2 through tweepy. | ||
'''Task 2:''' | '''Task 2:''' Change the code to save the tweets to a file (for example as JSON or CSV). Create a subfolder for tweet files to keep your ''info319-exercise2'' folder tidy. | ||
'''Task 3:''' Change the code so you download and save additional information about each tweet, for example the handle (user name) of the tweeter, whether it is a retweet of another id, and perhaps the date and time. | '''Task 3:''' Change the code so you download and save additional information about each tweet, for example the handle (user name) of the tweeter, whether it is a retweet of another id, and perhaps the date and time. | ||
'''Task 4:''' Refactor the code to prepare for cleaner termination | '''Task 4:''' Refactor the code to prepare for cleaner termination by creating a new '''on_finish()'''-function, which disconnects the streaming client, closes open files, and performs any other needed termination tasks. Remove '''time.sleep(DURATION)''', and instead make the '''on_data()'''-function call '''on_finish()''' when a given number of tweets (say 100 to start) has been received. | ||
== Streaming tweets to a socket == | == Streaming tweets to a socket == | ||
'''Task 5:''' Change the code to write the stream of tweets to a [https://en.wikipedia.org/wiki/Network_socket network socket] instead. Think of a socket as an internal internet connection from your machine back to itself. Different programs on your computer can use this socket to communicate using the regular internet APIs. | '''Task 5:''' Change the code to write the stream of tweets to a [https://en.wikipedia.org/wiki/Network_socket network socket] instead. Think of a socket as an internal internet connection from your machine back to itself. Different programs on your computer can use this socket to communicate using the regular internet APIs. | ||
Here are some critical pieces of code you need to include in your program: | Here are some critical pieces of code you need to include in your program (loosely based on [https://realpython.com/python-sockets/ this example]): | ||
import socket | import socket | ||
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tweet_count = 0 | tweet_count = 0 | ||
To open a socket for output | To open a socket for output): | ||
socket = socket.socket(socket.AF_INET, socket.SOCK_STREAM) | socket = socket.socket(socket.AF_INET, socket.SOCK_STREAM) | ||
socket.bind((HOST, PORT)) | socket.bind((HOST, PORT)) | ||
socket.listen() | socket.listen() | ||
connection, address = socket.accept() | connection, address = socket.accept() | ||
Hence, on the output side the program is a server that sends tweets through the socket while, on the input side, it is a client that receives data from Twitter. | |||
To send data | To send data through the socket: | ||
def on_data(json_data): | def on_data(json_data): | ||
json_obj = json.loads(json_data.decode()) | json_obj = json.loads(json_data.decode()) | ||
json_str = json.dumps(json_obj['data']['text'])+'\r\n' | |||
connection.sendall( | connection.sendall(json_str.encode()) | ||
if tweet_count >= NUM_TWEETS: | if tweet_count >= NUM_TWEETS: | ||
...close the socket etc... | ...close the socket etc... | ||
To close the socket on termination: | |||
socket.close() | |||
For testing, you can use the '''nc''' utility to receive data from the socket. From another console window (inside or outside VS Code, a virtual environment is not needed): | |||
$ apt install nc | $ apt install nc | ||
$ nc localhost 65000 # you must start the tweet stream ''before'' you run this command | $ nc localhost 65000 # you must start the tweet stream ''before'' you run this command | ||
'''IMPORTANT:''' When you debug, the socket will often remain open after your program has crashed, or if you | '''IMPORTANT:''' When you debug, the socket will often remain open after your program has crashed, or if you have not closed the Jupyter notebook. So you may have to change PORT number often in the StreamingClient and the test code line (65001, 65002, ...). | ||
== | == Receive tweets from a socket with streaming Spark == | ||
Streaming Spark is the topic of Session 3, but you can run the following script '''spark_receiver.py''' to receive tweets from the socket as a Spark stream: | Streaming Spark is the topic of Session 3, but you can run the following script '''spark_receiver.py''' to receive tweets from the socket as a Spark stream (loosely based on [https://sparkbyexamples.com/spark/spark-streaming-from-tcp-socket/ this example]): | ||
import os | import os | ||
import findspark | import findspark | ||
from pyspark.sql import SparkSession | from pyspark.sql import SparkSession | ||
HOST = | HOST = 'localhost' | ||
PORT = | PORT = 65000 # for example | ||
findspark.init() | findspark.init() | ||
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.awaitTermination() | .awaitTermination() | ||
Start '''tweet_harvester.py''' first and then '''spark_receiver.py''' in another window. | |||
Instead of using '''import findspark; findspark.init()''' you can set the '''$SPARK_HOME''' environment variable, for example: | Instead of using '''import findspark; findspark.init()''' you can set the '''$SPARK_HOME''' environment variable, for example: | ||
export SPARK_HOME=${PWD}/venv/lib/python3.8/site-packages/pyspark | export SPARK_HOME=${PWD}/venv/lib/python3.8/site-packages/pyspark | ||
Add this line to the end of your '''~/.bashrc''' file if you want to make it permanent. It is safer than '''findspark''' when you have several Spark installations on the same machine. | Add this line to the end of your '''~/.bashrc''' file if you want to make it permanent. It is safer than '''findspark''' when you have several Spark installations on the same machine. |
Latest revision as of 17:41, 16 September 2022
Get Twitter API account
This was suggested preparations before the course started: ...head over to the Twitter Developer page and apply for a Developer Account. Get "Essential" access first. Then you can go on to apply for wider "Academic Research" access (but: that is mainly for Master students who have started the thesis work, so I am not sure what Twitter will say...). It is not mandatory to use Twitter data in the course, but it will be a convenient way to get started.
The simple Essential account is a fine start and offers a lot of opportunities. When you have defined a more concrete project, you can apply for an Academic Research account that gives even wider access. Then it is up to Twitter whether they will grant you access.
Usually, a project that gives Essential access will be granted quickly. Twitter offers several ways to authenticate yourself, but the easiest was is to use the Bearer Token. You can find it from your Twitter project page, under Keys and tokens. In your info319-exercises folder, create a keys/bearer_token file that only you can read:
(venv) $ mkdir keys (venv) $ chmod 700 keys (venv) $ touch keys/bearer_token (venv) $ chmod 600 keys/bearer_token (venv) $ echo "...the long alpha-numeric token string goes here..." > keys/bearer_token
If you use git, you can add the line /keys/ to your .gitignore file as well. You do not want it uploaded to an external repository.
Saving tweets to file
Install the tweepy API:
(venv) $ pip install tweepy
Task 1: Run the following minimal boilerplate code tweet_harvester.py to connect to Twitter's API and start downloading a stream of tweets (the code takes a few seconds to connect):
import json import time import tweepy KEY_FILE = './keys/bearer_token' DURATION = 10 # how many seconds to run for, including connection time def on_data(json_data): """Tweepy calls this when it receives data from Twitter""" json_obj = json.loads(json_data.decode()) print('Received tweet:', json_obj) # Initiate the tweepy client and start the sampling thread. bearer_token = open(KEY_FILE).read().strip() streaming_client = tweepy.StreamingClient(bearer_token) streaming_client.on_data = on_data streaming_client.sample(threaded=True) time.sleep(DURATION) streaming_client.disconnect()
Note how, every time a new tweet is received, tweepy calls the on_data()-function, which prints the tweeted text to the screen. This is just a simple example to get started. In Session 1 we will look at many other ways to access the Twitter API V2 through tweepy.
Task 2: Change the code to save the tweets to a file (for example as JSON or CSV). Create a subfolder for tweet files to keep your info319-exercise2 folder tidy.
Task 3: Change the code so you download and save additional information about each tweet, for example the handle (user name) of the tweeter, whether it is a retweet of another id, and perhaps the date and time.
Task 4: Refactor the code to prepare for cleaner termination by creating a new on_finish()-function, which disconnects the streaming client, closes open files, and performs any other needed termination tasks. Remove time.sleep(DURATION), and instead make the on_data()-function call on_finish() when a given number of tweets (say 100 to start) has been received.
Streaming tweets to a socket
Task 5: Change the code to write the stream of tweets to a network socket instead. Think of a socket as an internal internet connection from your machine back to itself. Different programs on your computer can use this socket to communicate using the regular internet APIs.
Here are some critical pieces of code you need to include in your program (loosely based on this example):
import socket HOST = 'localhost' PORT = 65000 # for example NUM_TWEETS = 100 tweet_count = 0
To open a socket for output):
socket = socket.socket(socket.AF_INET, socket.SOCK_STREAM) socket.bind((HOST, PORT)) socket.listen() connection, address = socket.accept()
Hence, on the output side the program is a server that sends tweets through the socket while, on the input side, it is a client that receives data from Twitter.
To send data through the socket:
def on_data(json_data): json_obj = json.loads(json_data.decode()) json_str = json.dumps(json_obj['data']['text'])+'\r\n' connection.sendall(json_str.encode()) if tweet_count >= NUM_TWEETS: ...close the socket etc...
To close the socket on termination:
socket.close()
For testing, you can use the nc utility to receive data from the socket. From another console window (inside or outside VS Code, a virtual environment is not needed):
$ apt install nc $ nc localhost 65000 # you must start the tweet stream before you run this command
IMPORTANT: When you debug, the socket will often remain open after your program has crashed, or if you have not closed the Jupyter notebook. So you may have to change PORT number often in the StreamingClient and the test code line (65001, 65002, ...).
Receive tweets from a socket with streaming Spark
Streaming Spark is the topic of Session 3, but you can run the following script spark_receiver.py to receive tweets from the socket as a Spark stream (loosely based on this example):
import os import findspark from pyspark.sql import SparkSession HOST = 'localhost' PORT = 65000 # for example findspark.init() spark = SparkSession.builder.appName('SparkTest').getOrCreate() spark.sparkContext.setLogLevel('ERROR') # incoming stream incoming_df = spark.readStream \ .format('socket') \ .option('host', HOST) \ .option('port', PORT) \ .load() # outgoing stream outgoing_df = incoming_df.select('value').writeStream \ .format('console') \ .outputMode('update') \ .start() \ .awaitTermination()
Start tweet_harvester.py first and then spark_receiver.py in another window.
Instead of using import findspark; findspark.init() you can set the $SPARK_HOME environment variable, for example:
export SPARK_HOME=${PWD}/venv/lib/python3.8/site-packages/pyspark
Add this line to the end of your ~/.bashrc file if you want to make it permanent. It is safer than findspark when you have several Spark installations on the same machine.