mirror of
https://github.com/oobabooga/text-generation-webui.git
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198 lines
7.3 KiB
Python
198 lines
7.3 KiB
Python
"""
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This module contains utils for preprocessing the text before converting it to embeddings.
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- TextPreprocessorBuilder preprocesses individual strings.
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* lowering cases
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* converting numbers to words or characters
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* merging and stripping spaces
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* removing punctuation
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* removing stop words
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* lemmatizing
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* removing specific parts of speech (adverbs and interjections)
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- TextSummarizer extracts the most important sentences from a long string using text-ranking.
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"""
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import math
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import re
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import string
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import nltk
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import spacy
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from nltk.corpus import stopwords
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from nltk.stem import WordNetLemmatizer
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from num2words import num2words
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class TextPreprocessorBuilder:
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# Define class variables as None initially
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_stop_words = set(stopwords.words('english'))
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_lemmatizer = WordNetLemmatizer()
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# Some of the functions are expensive. We cache the results.
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_lemmatizer_cache = {}
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_pos_remove_cache = {}
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def __init__(self, text: str):
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self.text = text
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def to_lower(self):
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# Match both words and non-word characters
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tokens = re.findall(r'\b\w+\b|\W+', self.text)
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for i, token in enumerate(tokens):
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# Check if token is a word
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if re.match(r'^\w+$', token):
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# Check if token is not an abbreviation or constant
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if not re.match(r'^[A-Z]+$', token) and not re.match(r'^[A-Z_]+$', token):
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tokens[i] = token.lower()
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self.text = "".join(tokens)
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return self
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def num_to_word(self, min_len: int = 1):
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# Match both words and non-word characters
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tokens = re.findall(r'\b\w+\b|\W+', self.text)
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for i, token in enumerate(tokens):
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# Check if token is a number of length `min_len` or more
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if token.isdigit() and len(token) >= min_len:
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# This is done to pay better attention to numbers (e.g. ticket numbers, thread numbers, post numbers)
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# 740700 will become "seven hundred and forty thousand seven hundred".
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tokens[i] = num2words(int(token)).replace(",", "") # Remove commas from num2words.
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self.text = "".join(tokens)
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return self
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def num_to_char_long(self, min_len: int = 1):
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# Match both words and non-word characters
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tokens = re.findall(r'\b\w+\b|\W+', self.text)
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for i, token in enumerate(tokens):
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# Check if token is a number of length `min_len` or more
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if token.isdigit() and len(token) >= min_len:
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# This is done to pay better attention to numbers (e.g. ticket numbers, thread numbers, post numbers)
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# 740700 will become HHHHHHEEEEEAAAAHHHAAA
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def convert_token(token):
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return ''.join((chr(int(digit) + 65) * (i + 1)) for i, digit in enumerate(token[::-1]))[::-1]
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tokens[i] = convert_token(tokens[i])
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self.text = "".join(tokens)
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return self
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def num_to_char(self, min_len: int = 1):
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# Match both words and non-word characters
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tokens = re.findall(r'\b\w+\b|\W+', self.text)
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for i, token in enumerate(tokens):
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# Check if token is a number of length `min_len` or more
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if token.isdigit() and len(token) >= min_len:
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# This is done to pay better attention to numbers (e.g. ticket numbers, thread numbers, post numbers)
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# 740700 will become HEAHAA
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tokens[i] = ''.join(chr(int(digit) + 65) for digit in token)
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self.text = "".join(tokens)
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return self
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def merge_spaces(self):
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self.text = re.sub(' +', ' ', self.text)
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return self
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def strip(self):
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self.text = self.text.strip()
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return self
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def remove_punctuation(self):
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self.text = self.text.translate(str.maketrans('', '', string.punctuation))
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return self
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def remove_stopwords(self):
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self.text = "".join([word for word in re.findall(r'\b\w+\b|\W+', self.text) if word not in TextPreprocessorBuilder._stop_words])
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return self
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def remove_specific_pos(self):
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"""
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In the English language, adverbs and interjections rarely provide meaningul information.
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Removing them improves the embedding precision. Don't tell JK Rowling, though.
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"""
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processed_text = TextPreprocessorBuilder._pos_remove_cache.get(self.text)
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if processed_text:
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self.text = processed_text
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return self
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# Match both words and non-word characters
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tokens = re.findall(r'\b\w+\b|\W+', self.text)
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# Exclude adverbs and interjections
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excluded_tags = ['RB', 'RBR', 'RBS', 'UH']
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for i, token in enumerate(tokens):
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# Check if token is a word
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if re.match(r'^\w+$', token):
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# Part-of-speech tag the word
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pos = nltk.pos_tag([token])[0][1]
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# If the word's POS tag is in the excluded list, remove the word
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if pos in excluded_tags:
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tokens[i] = ''
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new_text = "".join(tokens)
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TextPreprocessorBuilder._pos_remove_cache[self.text] = new_text
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self.text = new_text
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return self
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def lemmatize(self):
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processed_text = TextPreprocessorBuilder._lemmatizer_cache.get(self.text)
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if processed_text:
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self.text = processed_text
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return self
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new_text = "".join([TextPreprocessorBuilder._lemmatizer.lemmatize(word) for word in re.findall(r'\b\w+\b|\W+', self.text)])
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TextPreprocessorBuilder._lemmatizer_cache[self.text] = new_text
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self.text = new_text
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return self
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def build(self):
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return self.text
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class TextSummarizer:
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_nlp_pipeline = None
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_cache = {}
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@staticmethod
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def _load_nlp_pipeline():
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# Lazy-load it.
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if TextSummarizer._nlp_pipeline is None:
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TextSummarizer._nlp_pipeline = spacy.load('en_core_web_sm')
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TextSummarizer._nlp_pipeline.add_pipe("textrank", last=True)
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return TextSummarizer._nlp_pipeline
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@staticmethod
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def process_long_text(text: str, min_num_sent: int) -> list[str]:
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"""
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This function applies a text summarization process on a given text string, extracting
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the most important sentences based on the principle that 20% of the content is responsible
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for 80% of the meaning (the Pareto Principle).
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Returns:
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list: A list of the most important sentences
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"""
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# Attempt to get the result from cache
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cache_key = (text, min_num_sent)
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cached_result = TextSummarizer._cache.get(cache_key, None)
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if cached_result is not None:
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return cached_result
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nlp_pipeline = TextSummarizer._load_nlp_pipeline()
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doc = nlp_pipeline(text)
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num_sent = len(list(doc.sents))
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result = []
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if num_sent >= min_num_sent:
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limit_phrases = math.ceil(len(doc._.phrases) * 0.20) # 20% of the phrases, rounded up
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limit_sentences = math.ceil(num_sent * 0.20) # 20% of the sentences, rounded up
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result = [str(sent) for sent in doc._.textrank.summary(limit_phrases=limit_phrases, limit_sentences=limit_sentences)]
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else:
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result = [text]
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# Store the result in cache before returning it
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TextSummarizer._cache[cache_key] = result
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return result
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