A framework for building interactive twitterbots which respond to mentions/DMs. See ebooks_example for a fully-fledged bot definition.
- About 80% less memory and storage use for models
- Bots run in their own threads (no eventmachine), and startup is parallelized
- Bots start with
ebooks start
, and no longer die on unhandled exceptions ebooks auth
command will create new access tokens, for running multiple botsebooks console
starts a ruby interpreter with bots loaded (see Ebooks::Bot.all)- Replies are slightly rate-limited to prevent infinite bot convos
- Non-participating users in a mention chain will be dropped after a few tweets
- API documentation and tests
Note that 3.0 is not backwards compatible with 2.x, so upgrade carefully! In particular, make sure to regenerate your models since the storage format changed.
Requires Ruby 2.0+
gem install twitter_ebooks
Run ebooks new <reponame>
to generate a new repository containing a sample bots.rb file, which looks like this:
# This is an example bot definition with event handlers commented out
# You can define and instantiate as many bots as you like
class MyBot < Ebooks::Bot
# Configuration here applies to all MyBots
def configure
# Consumer details come from registering an app at https://dev.twitter.com/
# Once you have consumer details, use "ebooks auth" for new access tokens
self.consumer_key = "" # Your app consumer key
self.consumer_secret = "" # Your app consumer secret
# Users to block instead of interacting with
self.blacklist = ['tnietzschequote']
# Range in seconds to randomize delay when bot.delay is called
self.delay_range = 1..6
end
def on_startup
scheduler.every '24h' do
# Tweet something every 24 hours
# See https://github.com/jmettraux/rufus-scheduler
# tweet("hi")
# pictweet("hi", "cuteselfie.jpg")
end
end
def on_message(dm)
# Reply to a DM
# reply(dm, "secret secrets")
end
def on_follow(user)
# Follow a user back
# follow(user.screen_name)
end
def on_mention(tweet)
# Reply to a mention
# reply(tweet, meta(tweet).reply_prefix + "oh hullo")
end
def on_timeline(tweet)
# Reply to a tweet in the bot's timeline
# reply(tweet, meta(tweet).reply_prefix + "nice tweet")
end
end
# Make a MyBot and attach it to an account
MyBot.new("abby_ebooks") do |bot|
bot.access_token = "" # Token connecting the app to this account
bot.access_token_secret = "" # Secret connecting the app to this account
end
ebooks start
will run all defined bots in their own threads. The easiest way to run bots in a semi-permanent fashion is with Heroku; just make an app, push the bot repository to it, enable a worker process in the web interface and it ought to chug along merrily forever.
The underlying streaming and REST clients from the twitter gem can be accessed at bot.stream
and bot.twitter
respectively.
twitter_ebooks comes with a syncing tool to download and then incrementally update a local json archive of a user's tweets (in this case, my good friend @0xabad1dea):
➜ ebooks archive 0xabad1dea corpus/0xabad1dea.json
Currently 20209 tweets for 0xabad1dea
Received 67 new tweets
The first time you'll run this, it'll ask for auth details to connect with. Due to API limitations, for users with high numbers of tweets it may not be possible to get their entire history in the initial download. However, so long as you run it frequently enough you can maintain a perfect copy indefinitely into the future.
In order to use the included text modeling, you'll first need to preprocess your archive into a more efficient form:
➜ ebooks consume corpus/0xabad1dea.json
Reading json corpus from corpus/0xabad1dea.json
Removing commented lines and sorting mentions
Segmenting text into sentences
Tokenizing 7075 statements and 17947 mentions
Ranking keywords
Corpus consumed to model/0xabad1dea.model
Notably, this works with both json tweet archives and plaintext files (based on file extension), so you can make a model out of any kind of text.
Text files use newlines and full stops to seperate statements.
Once you have a model, the primary use is to produce statements and related responses to input, using a pseudo-Markov generator:
> model = Ebooks::Model.load("model/0xabad1dea.model")
> model.make_statement(140)
=> "My Terrible Netbook may be the kind of person who buys Starbucks, but this Rackspace vuln is pretty straight up a backdoor"
> model.make_response("The NSA is coming!", 130)
=> "Hey - someone who claims to be an NSA conspiracy"
The secondary function is the "interesting keywords" list. For example, I use this to determine whether a bot wants to fav/retweet/reply to something in its timeline:
top100 = model.keywords.take(100)
tokens = Ebooks::NLP.tokenize(tweet.text)
if tokens.find { |t| top100.include?(t) }
favorite(tweet)
end
twitter_ebooks will drop bystanders from mentions for you and avoid infinite bot conversations, but it won't prevent you from doing a lot of other spammy things. Make sure your bot is a good and polite citizen!