mirror of
https://github.com/oobabooga/text-generation-webui.git
synced 2024-11-27 10:09:14 +01:00
209 lines
9.4 KiB
Python
209 lines
9.4 KiB
Python
"""
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This module is responsible for processing the corpus and feeding it into chromaDB. It will receive a corpus of text.
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It will then split it into chunks of specified length. For each of those chunks, it will append surrounding context.
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It will only include full words.
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"""
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import re
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import bisect
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import extensions.superboogav2.parameters as parameters
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from .data_preprocessor import TextPreprocessorBuilder, TextSummarizer
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from .chromadb import ChromaCollector
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def preprocess_text_no_summary(text) -> str:
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builder = TextPreprocessorBuilder(text)
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if parameters.should_to_lower():
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builder.to_lower()
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if parameters.should_remove_punctuation():
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builder.remove_punctuation()
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if parameters.should_remove_specific_pos():
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builder.remove_specific_pos()
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if parameters.should_remove_stopwords():
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builder.remove_stopwords
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if parameters.should_lemmatize():
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builder.lemmatize()
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if parameters.should_merge_spaces():
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builder.merge_spaces
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if parameters.should_strip():
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builder.strip()
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if parameters.get_num_conversion_strategy():
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if parameters.get_num_conversion_strategy() == parameters.NUM_TO_WORD_METHOD:
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builder.num_to_word(parameters.get_min_num_length())
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elif parameters.get_num_conversion_strategy() == parameters.NUM_TO_CHAR_METHOD:
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builder.num_to_char(parameters.get_min_num_length())
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elif parameters.get_num_conversion_strategy() == parameters.NUM_TO_CHAR_LONG_METHOD:
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builder.num_to_char_long(parameters.get_min_num_length())
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return builder.build()
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def preprocess_text(text) -> list[str]:
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important_sentences = TextSummarizer.process_long_text(text, parameters.get_min_num_sentences())
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return [preprocess_text_no_summary(sent) for sent in important_sentences]
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def _create_chunks_with_context(corpus, chunk_len, context_left, context_right):
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"""
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This function takes a corpus of text and splits it into chunks of a specified length,
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then adds a specified amount of context to each chunk. The context is added by first
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going backwards from the start of the chunk and then going forwards from the end of the
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chunk, ensuring that the context includes only whole words and that the total context length
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does not exceed the specified limit. This function uses binary search for efficiency.
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Returns:
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chunks (list of str): The chunks of text.
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chunks_with_context (list of str): The chunks of text with added context.
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chunk_with_context_start_indices (list of int): The starting indices of each chunk with context in the corpus.
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"""
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words = re.split('(\\s+)', corpus)
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word_start_indices = [0]
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current_index = 0
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for word in words:
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current_index += len(word)
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word_start_indices.append(current_index)
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chunks, chunk_lengths, chunk_start_indices, chunk_with_context_start_indices = [], [], [], []
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current_length = 0
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current_index = 0
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chunk = []
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for word in words:
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if current_length + len(word) > chunk_len:
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chunks.append(''.join(chunk))
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chunk_lengths.append(current_length)
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chunk_start_indices.append(current_index - current_length)
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chunk = [word]
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current_length = len(word)
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else:
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chunk.append(word)
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current_length += len(word)
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current_index += len(word)
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if chunk:
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chunks.append(''.join(chunk))
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chunk_lengths.append(current_length)
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chunk_start_indices.append(current_index - current_length)
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chunks_with_context = []
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for start_index, chunk_length in zip(chunk_start_indices, chunk_lengths):
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context_start_index = bisect.bisect_right(word_start_indices, start_index - context_left)
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context_end_index = bisect.bisect_left(word_start_indices, start_index + chunk_length + context_right)
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# Combine all the words in the context range (before, chunk, and after)
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chunk_with_context = ''.join(words[context_start_index:context_end_index])
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chunks_with_context.append(chunk_with_context)
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# Determine the start index of the chunk with context
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chunk_with_context_start_index = word_start_indices[context_start_index]
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chunk_with_context_start_indices.append(chunk_with_context_start_index)
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return chunks, chunks_with_context, chunk_with_context_start_indices
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def _clear_chunks(data_chunks, data_chunks_with_context, data_chunk_starting_indices):
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distinct_data_chunks = []
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distinct_data_chunks_with_context = []
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distinct_data_chunk_starting_indices = []
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seen_chunks = dict()
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for chunk, context, index in zip(data_chunks, data_chunks_with_context, data_chunk_starting_indices):
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# Skip the chunk if it does not contain any alphanumeric characters
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if not any(char.isalnum() for char in chunk):
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continue
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seen_chunk_start = seen_chunks.get(chunk)
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if seen_chunk_start:
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# If we've already seen this exact chunk, and the context around it it very close to the seen chunk, then skip it.
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if abs(seen_chunk_start-index) < parameters.get_delta_start():
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continue
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distinct_data_chunks.append(chunk)
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distinct_data_chunks_with_context.append(context)
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distinct_data_chunk_starting_indices.append(index)
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seen_chunks[chunk] = index
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return distinct_data_chunks, distinct_data_chunks_with_context, distinct_data_chunk_starting_indices
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def process_and_add_to_collector(corpus: str, collector: ChromaCollector, clear_collector_before_adding: bool, metadata: dict):
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# Defining variables
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chunk_lens = [int(len.strip()) for len in parameters.get_chunk_len().split(',')]
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context_len = [int(len.strip()) for len in parameters.get_context_len().split(',')]
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if len(context_len) >= 3:
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raise f"Context len has too many values: {len(context_len)}"
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if len(context_len) == 2:
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context_left = context_len[0]
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context_right = context_len[1]
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else:
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context_left = context_right = context_len[0]
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data_chunks = []
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data_chunks_with_context = []
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data_chunk_starting_indices = []
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# Handling chunk_regex
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if parameters.get_chunk_regex():
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if parameters.get_chunk_separator():
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cumulative_length = 0 # This variable will store the length of the processed corpus
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sections = corpus.split(parameters.get_chunk_separator())
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for section in sections:
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special_chunks = list(re.finditer(parameters.get_chunk_regex(), section))
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for match in special_chunks:
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chunk = match.group(0)
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start_index = match.start()
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end_index = start_index + len(chunk)
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context = section[max(0, start_index - context_left):min(len(section), end_index + context_right)]
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data_chunks.append(chunk)
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data_chunks_with_context.append(context)
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data_chunk_starting_indices.append(cumulative_length + max(0, start_index - context_left))
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cumulative_length += len(section) + len(parameters.get_chunk_separator()) # Update the length of the processed corpus
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else:
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special_chunks = list(re.finditer(parameters.get_chunk_regex(), corpus))
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for match in special_chunks:
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chunk = match.group(0)
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start_index = match.start()
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end_index = start_index + len(chunk)
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context = corpus[max(0, start_index - context_left):min(len(corpus), end_index + context_right)]
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data_chunks.append(chunk)
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data_chunks_with_context.append(context)
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data_chunk_starting_indices.append(max(0, start_index - context_left))
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for chunk_len in chunk_lens:
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# Breaking the data into chunks and adding those to the db
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if parameters.get_chunk_separator():
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cumulative_length = 0 # This variable will store the length of the processed corpus
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sections = corpus.split(parameters.get_chunk_separator())
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for section in sections:
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chunks, chunks_with_context, context_start_indices = _create_chunks_with_context(section, chunk_len, context_left, context_right)
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context_start_indices = [cumulative_length + i for i in context_start_indices] # Add the length of the processed corpus to each start index
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data_chunks.extend(chunks)
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data_chunks_with_context.extend(chunks_with_context)
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data_chunk_starting_indices.extend(context_start_indices)
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cumulative_length += len(section) + len(parameters.get_chunk_separator()) # Update the length of the processed corpus
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else:
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chunks, chunks_with_context, context_start_indices = _create_chunks_with_context(corpus, chunk_len, context_left, context_right)
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data_chunks.extend(chunks)
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data_chunks_with_context.extend(chunks_with_context)
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data_chunk_starting_indices.extend(context_start_indices)
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data_chunks = [preprocess_text_no_summary(chunk) for chunk in data_chunks]
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data_chunks, data_chunks_with_context, data_chunk_starting_indices = _clear_chunks(
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data_chunks, data_chunks_with_context, data_chunk_starting_indices
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)
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if clear_collector_before_adding:
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collector.clear()
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collector.add(data_chunks, data_chunks_with_context, data_chunk_starting_indices, [metadata]*len(data_chunks) if metadata is not None else None) |