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@thricedotted
Created May 5, 2015 14:16
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7on7 bot response
import codecs
import random
import pyttsx
from nltk.corpus import wordnet as wn
from pattern.en import parsetree, conjugate, pprint
class NoDefinitionError(Exception):
pass
# clean the output file
with open('output.txt', 'w') as f:
f.write('')
# start voice engine
engine = pyttsx.init()
engine.setProperty('voice', 'english-us')
engine.setProperty('rate', 150)
engine.startLoop(False)
def print_message(msg, msg_type=None):
if msg_type is None:
msg_type = 'BOT'
with open('output.txt', 'a') as f:
line = u"[{}] {}\n".format(msg_type.upper(), msg)
f.write(line)
def verb_response(sentence):
verbs = [w for w in sentence
if w.pos.startswith('VB')
and w.lemma != 'be']
print_message('Extracted verbs: {}'.format(' - '.join(w.lemma for w in verbs)))
objects = list(set(w for v in verbs
for w in v.chunk.related
if w.role == 'OBJ'))
if len(objects) > 0:
print_message('Extracted objects: {}'.format(' - '.join(w.string for w in objects)))
else:
print_message('Extracted objects: none')
subjects = list(set(w for v in verbs
for w in v.chunk.related
if w.role == 'SBJ'))
if len(subjects) > 0:
print_message('Extracted subjects: {}'.format(' - '.join(w.string for w in subjects)))
else:
print_message('Extracted subjects: none')
random.shuffle(verbs)
synsets = []
for verb in verbs:
synsets = wn.synsets(verb.lemma)
if len(synsets) > 0:
break
else:
raise NoDefinitionError
print_message('Choosing random verb: {}'.format(verb.lemma))
print_message('Getting dictionary defintion')
verb_synset = random.choice(synsets)
definition = verb_synset.definition()
print_message('Forming response')
template = "{} {} {}.".format(
" and ".join(s.string for s in subjects),
definition,
" and ".join(o.string for o in objects))
return template
def noun_response(sentence):
noun_words = [w.lemma for w in sentence
if w.pos.startswith('NN')]
print_message('Extracted nouns: {}'.format(' - '.join(noun_words)))
#noun = random.choice(noun_words)
#synsets = wn.synsets(noun)
random.shuffle(noun_words)
for noun in noun_words:
synsets = wn.synsets(noun)
if len(synsets) > 0:
break
else:
raise NoDefinitionError
print_message('Choosing random noun: {}'.format(noun))
templates = ["That is {}.",
"Like {}."]
print_message('Getting dictionary definition')
definition = random.choice(synsets).definition()
print_message('Forming response')
return random.choice(templates).format(definition)
def word_response(sentence):
synsets = [s for w in sentence for s in wn.synsets(w.lemma)]
if len(synsets) == 0:
raise NoDefinitionError
return random.choice(synsets).definition()
def any_response(sentence):
for fn in (verb_response, noun_response, word_response):
try:
return fn(sentence)
except NoDefinitionError:
pass
return "I don't know."
def process_text(text):
paragraph = parsetree(text, relations=True, lemmata=True)[:-1]
sentences = random.sample(paragraph, min(len(paragraph), 4))
responses = [any_response(s) for s in sentences]
denial = ["No.", "I don't.", "I don't understand."]
engine.say(random.choice(denial))
engine.iterate()
for r in responses:
response = r[0].upper() + ' '.join(r[1:].split())
print_message('"{}"'.format(response))
engine.say(r)
engine.iterate()
print_message('Done\n')
if __name__ == '__main__':
while True:
speech = raw_input('> ')
process_text(speech)
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