add tokenizer
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# tokenizer
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import re
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import torch
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from transformers import PreTrainedTokenizer
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try:
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from unidecode import unidecode
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except:
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print("unidecode is not installed")
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pass
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try:
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import inflect
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except:
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print("inflect is not installed")
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pass
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valid_symbols = [
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'AA', 'AA0', 'AA1', 'AA2', 'AE', 'AE0', 'AE1', 'AE2', 'AH', 'AH0', 'AH1', 'AH2',
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'AO', 'AO0', 'AO1', 'AO2', 'AW', 'AW0', 'AW1', 'AW2', 'AY', 'AY0', 'AY1', 'AY2',
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'B', 'CH', 'D', 'DH', 'EH', 'EH0', 'EH1', 'EH2', 'ER', 'ER0', 'ER1', 'ER2', 'EY',
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'EY0', 'EY1', 'EY2', 'F', 'G', 'HH', 'IH', 'IH0', 'IH1', 'IH2', 'IY', 'IY0', 'IY1',
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'IY2', 'JH', 'K', 'L', 'M', 'N', 'NG', 'OW', 'OW0', 'OW1', 'OW2', 'OY', 'OY0',
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'OY1', 'OY2', 'P', 'R', 'S', 'SH', 'T', 'TH', 'UH', 'UH0', 'UH1', 'UH2', 'UW',
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'UW0', 'UW1', 'UW2', 'V', 'W', 'Y', 'Z', 'ZH'
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]
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_valid_symbol_set = set(valid_symbols)
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def intersperse(lst, item):
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# Adds blank symbol
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result = [item] * (len(lst) * 2 + 1)
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result[1::2] = lst
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return result
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class CMUDict:
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def __init__(self, file_or_path, keep_ambiguous=True):
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if isinstance(file_or_path, str):
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with open(file_or_path, encoding='latin-1') as f:
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entries = _parse_cmudict(f)
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else:
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entries = _parse_cmudict(file_or_path)
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if not keep_ambiguous:
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entries = {word: pron for word, pron in entries.items() if len(pron) == 1}
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self._entries = entries
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def __len__(self):
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return len(self._entries)
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def lookup(self, word):
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return self._entries.get(word.upper())
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_alt_re = re.compile(r'\([0-9]+\)')
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def _parse_cmudict(file):
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cmudict = {}
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for line in file:
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if len(line) and (line[0] >= 'A' and line[0] <= 'Z' or line[0] == "'"):
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parts = line.split(' ')
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word = re.sub(_alt_re, '', parts[0])
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pronunciation = _get_pronunciation(parts[1])
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if pronunciation:
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if word in cmudict:
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cmudict[word].append(pronunciation)
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else:
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cmudict[word] = [pronunciation]
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return cmudict
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def _get_pronunciation(s):
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parts = s.strip().split(' ')
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for part in parts:
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if part not in _valid_symbol_set:
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return None
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return ' '.join(parts)
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_whitespace_re = re.compile(r'\s+')
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_abbreviations = [(re.compile('\\b%s\\.' % x[0], re.IGNORECASE), x[1]) for x in [
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('mrs', 'misess'),
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('mr', 'mister'),
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('dr', 'doctor'),
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('st', 'saint'),
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('co', 'company'),
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('jr', 'junior'),
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('maj', 'major'),
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('gen', 'general'),
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('drs', 'doctors'),
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('rev', 'reverend'),
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('lt', 'lieutenant'),
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('hon', 'honorable'),
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('sgt', 'sergeant'),
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('capt', 'captain'),
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('esq', 'esquire'),
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('ltd', 'limited'),
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('col', 'colonel'),
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('ft', 'fort'),
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]]
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def expand_abbreviations(text):
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for regex, replacement in _abbreviations:
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text = re.sub(regex, replacement, text)
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return text
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def expand_numbers(text):
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return normalize_numbers(text)
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def lowercase(text):
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return text.lower()
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def collapse_whitespace(text):
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return re.sub(_whitespace_re, ' ', text)
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def convert_to_ascii(text):
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return unidecode(text)
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def basic_cleaners(text):
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text = lowercase(text)
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text = collapse_whitespace(text)
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return text
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def transliteration_cleaners(text):
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text = convert_to_ascii(text)
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text = lowercase(text)
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text = collapse_whitespace(text)
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return text
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def english_cleaners(text):
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text = convert_to_ascii(text)
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text = lowercase(text)
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text = expand_numbers(text)
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text = expand_abbreviations(text)
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text = collapse_whitespace(text)
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return text
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_inflect = inflect.engine()
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_comma_number_re = re.compile(r'([0-9][0-9\,]+[0-9])')
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_decimal_number_re = re.compile(r'([0-9]+\.[0-9]+)')
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_pounds_re = re.compile(r'£([0-9\,]*[0-9]+)')
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_dollars_re = re.compile(r'\$([0-9\.\,]*[0-9]+)')
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_ordinal_re = re.compile(r'[0-9]+(st|nd|rd|th)')
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_number_re = re.compile(r'[0-9]+')
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def _remove_commas(m):
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return m.group(1).replace(',', '')
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def _expand_decimal_point(m):
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return m.group(1).replace('.', ' point ')
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def _expand_dollars(m):
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match = m.group(1)
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parts = match.split('.')
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if len(parts) > 2:
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return match + ' dollars'
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dollars = int(parts[0]) if parts[0] else 0
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cents = int(parts[1]) if len(parts) > 1 and parts[1] else 0
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if dollars and cents:
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dollar_unit = 'dollar' if dollars == 1 else 'dollars'
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cent_unit = 'cent' if cents == 1 else 'cents'
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return '%s %s, %s %s' % (dollars, dollar_unit, cents, cent_unit)
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elif dollars:
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dollar_unit = 'dollar' if dollars == 1 else 'dollars'
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return '%s %s' % (dollars, dollar_unit)
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elif cents:
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cent_unit = 'cent' if cents == 1 else 'cents'
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return '%s %s' % (cents, cent_unit)
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else:
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return 'zero dollars'
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def _expand_ordinal(m):
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return _inflect.number_to_words(m.group(0))
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def _expand_number(m):
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num = int(m.group(0))
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if num > 1000 and num < 3000:
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if num == 2000:
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return 'two thousand'
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elif num > 2000 and num < 2010:
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return 'two thousand ' + _inflect.number_to_words(num % 100)
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elif num % 100 == 0:
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return _inflect.number_to_words(num // 100) + ' hundred'
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else:
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return _inflect.number_to_words(num, andword='', zero='oh',
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group=2).replace(', ', ' ')
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else:
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return _inflect.number_to_words(num, andword='')
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def normalize_numbers(text):
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text = re.sub(_comma_number_re, _remove_commas, text)
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text = re.sub(_pounds_re, r'\1 pounds', text)
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text = re.sub(_dollars_re, _expand_dollars, text)
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text = re.sub(_decimal_number_re, _expand_decimal_point, text)
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text = re.sub(_ordinal_re, _expand_ordinal, text)
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text = re.sub(_number_re, _expand_number, text)
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return text
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""" from https://github.com/keithito/tacotron """
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_pad = '_'
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_punctuation = '!\'(),.:;? '
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_special = '-'
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_letters = 'ABCDEFGHIJKLMNOPQRSTUVWXYZabcdefghijklmnopqrstuvwxyz'
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# Prepend "@" to ARPAbet symbols to ensure uniqueness:
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_arpabet = ['@' + s for s in valid_symbols]
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# Export all symbols:
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symbols = [_pad] + list(_special) + list(_punctuation) + list(_letters) + _arpabet
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_symbol_to_id = {s: i for i, s in enumerate(symbols)}
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_id_to_symbol = {i: s for i, s in enumerate(symbols)}
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_curly_re = re.compile(r'(.*?)\{(.+?)\}(.*)')
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def get_arpabet(word, dictionary):
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word_arpabet = dictionary.lookup(word)
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if word_arpabet is not None:
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return "{" + word_arpabet[0] + "}"
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else:
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return word
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def text_to_sequence(text, cleaner_names=[english_cleaners], dictionary=None):
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'''Converts a string of text to a sequence of IDs corresponding to the symbols in the text.
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The text can optionally have ARPAbet sequences enclosed in curly braces embedded
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in it. For example, "Turn left on {HH AW1 S S T AH0 N} Street."
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Args:
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text: string to convert to a sequence
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cleaner_names: names of the cleaner functions to run the text through
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dictionary: arpabet class with arpabet dictionary
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Returns:
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List of integers corresponding to the symbols in the text
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'''
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sequence = []
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space = _symbols_to_sequence(' ')
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# Check for curly braces and treat their contents as ARPAbet:
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while len(text):
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m = _curly_re.match(text)
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if not m:
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clean_text = _clean_text(text, cleaner_names)
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if dictionary is not None:
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clean_text = [get_arpabet(w, dictionary) for w in clean_text.split(" ")]
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for i in range(len(clean_text)):
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t = clean_text[i]
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if t.startswith("{"):
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sequence += _arpabet_to_sequence(t[1:-1])
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else:
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sequence += _symbols_to_sequence(t)
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sequence += space
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else:
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sequence += _symbols_to_sequence(clean_text)
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break
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sequence += _symbols_to_sequence(_clean_text(m.group(1), cleaner_names))
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sequence += _arpabet_to_sequence(m.group(2))
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text = m.group(3)
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# remove trailing space
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if dictionary is not None:
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sequence = sequence[:-1] if sequence[-1] == space[0] else sequence
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return sequence
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def sequence_to_text(sequence):
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'''Converts a sequence of IDs back to a string'''
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result = ''
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for symbol_id in sequence:
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if symbol_id in _id_to_symbol:
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s = _id_to_symbol[symbol_id]
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# Enclose ARPAbet back in curly braces:
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if len(s) > 1 and s[0] == '@':
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s = '{%s}' % s[1:]
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result += s
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return result.replace('}{', ' ')
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def _clean_text(text, cleaner_names):
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for cleaner in cleaner_names:
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text = cleaner(text)
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return text
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def _symbols_to_sequence(symbols):
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return [_symbol_to_id[s] for s in symbols if _should_keep_symbol(s)]
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def _arpabet_to_sequence(text):
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return _symbols_to_sequence(['@' + s for s in text.split()])
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def _should_keep_symbol(s):
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return s in _symbol_to_id and s != '_' and s != '~'
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VOCAB_FILES_NAMES = {
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"dict_file": "merges.txt",
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}
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class GradTTSTokenizer(PreTrainedTokenizer):
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vocab_files_names = VOCAB_FILES_NAMES
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def __init__(self, dict_file, **kwargs):
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super().__init__(**kwargs)
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self.cmu = CMUDict(dict_file)
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def __call__(self, text):
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x = torch.LongTensor(intersperse(text_to_sequence(text, dictionary=self.cmu), len(symbols)))[None]
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x_lengths = torch.LongTensor([x.shape[-1]])
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return x.shape, x_lengths
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