Library for Russian imprecise rhymes generation

Overview

TOM RHYMER

Library for Russian imprecise rhymes generation.

Quick Start

Generate rhymes by any given rhyme scheme (aabb, abab, aaccbb, etc ...):

from tom_rhymer.rhymer import Rhymer

rhymer = Rhymer.load()
for rhyme in rhymer.get_rhymes_by_scheme('abab'):
    print(str(rhyme))

# предоставленными
# отличите
# доставлена
# ограничительных

Generate rhymes word by word:

import random

from tom_rhymer.rhymer import Rhymer

rhymer = Rhymer.load()

word = random.choice(rhymer.words)
seen_words = [word]
for _ in range(8):
    rhymes = rhymer.get_rhymes(seen_words)
    rhyme = random.choice(rhymes)
    seen_words.append(rhyme)

for word in seen_words:
    print(str(word))

# матриархату
# сохатому
# патриархаты
# ухохатывались
# блатхатам
# двухатомные
# олигархат
# горбатых
# вырабатываю
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