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			280 строки
		
	
	
		
			11 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
			
		
		
	
	
			280 строки
		
	
	
		
			11 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
| from google.cloud import vision
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| from google.auth.exceptions import DefaultCredentialsError
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| from googletrans import Translator
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| import spacy
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| import io
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| from ammico.utils import AnalysisMethod
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| import grpc
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| import pandas as pd
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| from bertopic import BERTopic
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| from transformers import pipeline
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| 
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| 
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| class TextDetector(AnalysisMethod):
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|     def __init__(self, subdict: dict, analyse_text: bool = False) -> None:
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|         """Init text detection class.
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| 
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|         Args:
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|             subdict (dict): Dictionary containing file name/path, and possibly previous
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|             analysis results from other modules.
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|             analyse_text (bool, optional): Decide if extracted text will be further subject
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|             to analysis. Defaults to False.
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|         """
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|         super().__init__(subdict)
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|         self.subdict.update(self.set_keys())
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|         self.translator = Translator()
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|         self.analyse_text = analyse_text
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| 
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|     def set_keys(self) -> dict:
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|         """Set the default keys for text analysis.
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| 
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|         Returns:
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|             dict: The dictionary with default text keys.
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|         """
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|         params = {"text": None, "text_language": None, "text_english": None}
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|         return params
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| 
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|     def analyse_image(self) -> dict:
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|         """Perform text extraction and analysis of the text.
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| 
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|         Returns:
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|             dict: The updated dictionary with text analysis results.
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|         """
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|         self.get_text_from_image()
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|         self.translate_text()
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|         self.remove_linebreaks()
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|         if self.analyse_text:
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|             self.text_summary()
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|             self.text_sentiment_transformers()
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|             self.text_ner()
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|         return self.subdict
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| 
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|     def get_text_from_image(self):
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|         """Detect text on the image using Google Cloud Vision API."""
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|         path = self.subdict["filename"]
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|         try:
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|             client = vision.ImageAnnotatorClient()
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|         except DefaultCredentialsError:
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|             raise DefaultCredentialsError(
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|                 "Please provide credentials for google cloud vision API, see https://cloud.google.com/docs/authentication/application-default-credentials."
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|             )
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|         with io.open(path, "rb") as image_file:
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|             content = image_file.read()
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|         image = vision.Image(content=content)
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|         # check for usual connection errors and retry if necessary
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|         try:
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|             response = client.text_detection(image=image)
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|         except grpc.RpcError as exc:
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|             print("Cloud vision API connection failed")
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|             print("Skipping this image ..{}".format(path))
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|             print("Connection failed with code {}: {}".format(exc.code(), exc))
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|         # here check if text was found on image
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|         if response:
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|             texts = response.text_annotations[0].description
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|             self.subdict["text"] = texts
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|         if response.error.message:
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|             print("Google Cloud Vision Error")
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|             raise ValueError(
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|                 "{}\nFor more info on error messages, check: "
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|                 "https://cloud.google.com/apis/design/errors".format(
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|                     response.error.message
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|                 )
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|             )
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| 
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|     def translate_text(self):
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|         """Translate the detected text to English using the Translator object."""
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|         translated = self.translator.translate(self.subdict["text"])
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|         self.subdict["text_language"] = translated.src
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|         self.subdict["text_english"] = translated.text
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| 
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|     def remove_linebreaks(self):
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|         """Remove linebreaks from original and translated text."""
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|         if self.subdict["text"]:
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|             self.subdict["text"] = self.subdict["text"].replace("\n", " ")
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|             self.subdict["text_english"] = self.subdict["text_english"].replace(
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|                 "\n", " "
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|             )
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| 
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|     def text_summary(self):
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|         """Generate a summary of the text using the Transformers pipeline."""
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|         # use the transformers pipeline to summarize the text
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|         # use the current default model - 03/2023
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|         model_name = "sshleifer/distilbart-cnn-12-6"
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|         model_revision = "a4f8f3e"
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|         max_number_of_characters = 3000
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|         pipe = pipeline(
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|             "summarization",
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|             model=model_name,
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|             revision=model_revision,
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|             min_length=5,
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|             max_length=20,
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|         )
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|         try:
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|             summary = pipe(self.subdict["text_english"][0:max_number_of_characters])
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|             self.subdict["text_summary"] = summary[0]["summary_text"]
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|         except IndexError:
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|             print(
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|                 "Cannot provide summary for this object - please check that the text has been translated correctly."
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|             )
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|             print("Image: {}".format(self.subdict["filename"]))
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|             self.subdict["text_summary"] = None
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| 
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|     def text_sentiment_transformers(self):
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|         """Perform text classification for sentiment using the Transformers pipeline."""
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|         # use the transformers pipeline for text classification
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|         # use the current default model - 03/2023
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|         model_name = "distilbert-base-uncased-finetuned-sst-2-english"
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|         model_revision = "af0f99b"
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|         pipe = pipeline(
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|             "text-classification",
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|             model=model_name,
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|             revision=model_revision,
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|             truncation=True,
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|         )
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|         result = pipe(self.subdict["text_english"])
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|         self.subdict["sentiment"] = result[0]["label"]
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|         self.subdict["sentiment_score"] = round(result[0]["score"], 2)
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| 
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|     def text_ner(self):
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|         """Perform named entity recognition on the text using the Transformers pipeline."""
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|         # use the transformers pipeline for named entity recognition
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|         # use the current default model - 03/2023
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|         model_name = "dbmdz/bert-large-cased-finetuned-conll03-english"
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|         model_revision = "f2482bf"
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|         pipe = pipeline(
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|             "token-classification",
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|             model=model_name,
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|             revision=model_revision,
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|             aggregation_strategy="simple",
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|         )
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|         result = pipe(self.subdict["text_english"])
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|         self.subdict["entity"] = []
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|         self.subdict["entity_type"] = []
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|         for entity in result:
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|             self.subdict["entity"].append(entity["word"])
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|             self.subdict["entity_type"].append(entity["entity_group"])
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| 
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| 
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| class PostprocessText:
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|     def __init__(
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|         self,
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|         mydict: dict = None,
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|         use_csv: bool = False,
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|         csv_path: str = None,
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|         analyze_text: str = "text_english",
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|     ) -> None:
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|         """
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|         Initializes the PostprocessText class that handles the topic analysis.
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| 
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|         Args:
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|             mydict (dict, optional): Dictionary with textual data. Defaults to None.
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|             use_csv (bool, optional): Flag indicating whether to use a CSV file. Defaults to False.
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|             csv_path (str, optional): Path to the CSV file. Required if `use_csv` is True. Defaults to None.
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|             analyze_text (str, optional): Key for the text field to analyze. Defaults to "text_english".
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|         """
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|         self.use_csv = use_csv
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|         if mydict:
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|             print("Reading data from dict.")
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|             self.mydict = mydict
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|             self.list_text_english = self.get_text_dict(analyze_text)
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|         elif self.use_csv:
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|             print("Reading data from df.")
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|             self.df = pd.read_csv(csv_path, encoding="utf8")
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|             self.list_text_english = self.get_text_df(analyze_text)
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|         else:
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|             raise ValueError(
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|                 "Please provide either dictionary with textual data or \
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|                               a csv file by setting `use_csv` to True and providing a \
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|                              `csv_path`."
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|             )
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|         # initialize spacy
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|         self._initialize_spacy()
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| 
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|     def _initialize_spacy(self):
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|         try:
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|             self.nlp = spacy.load(
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|                 "en_core_web_md",
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|                 exclude=["tagger", "parser", "ner", "attribute_ruler", "lemmatizer"],
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|             )
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|         except Exception:
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|             spacy.cli.download("en_core_web_md")
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|             self.nlp = spacy.load(
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|                 "en_core_web_md",
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|                 exclude=["tagger", "parser", "ner", "attribute_ruler", "lemmatizer"],
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|             )
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| 
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|     def analyse_topic(self, return_topics: int = 3) -> tuple:
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|         """
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|         Performs topic analysis using BERTopic.
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| 
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|         Args:
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|             return_topics (int, optional): Number of topics to return. Defaults to 3.
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| 
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|         Returns:
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|             tuple: A tuple containing the topic model, topic dataframe, and most frequent topics.
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|         """
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|         try:
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|             # unfortunately catching exceptions does not work here - need to figure out why
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|             self.topic_model = BERTopic(embedding_model=self.nlp)
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|         except TypeError:
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|             print("BERTopic excited with an error - maybe your dataset is too small?")
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|         self.topics, self.probs = self.topic_model.fit_transform(self.list_text_english)
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|         # return the topic list
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|         topic_df = self.topic_model.get_topic_info()
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|         # return the most frequent return_topics
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|         most_frequent_topics = []
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|         if len(topic_df) < return_topics:
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|             print("You requested more topics than are identified in your dataset -")
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|             print(
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|                 "Returning only {} topics as these are all that have been found.".format(
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|                     len(topic_df)
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|                 )
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|             )
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|         for i in range(min(return_topics, len(topic_df))):
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|             most_frequent_topics.append(self.topic_model.get_topic(i))
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|         return self.topic_model, topic_df, most_frequent_topics
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| 
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|     def get_text_dict(self, analyze_text: str) -> list:
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|         """
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|         Extracts text from the provided dictionary.
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| 
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|         Args:
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|             analyze_text (str): Key for the text field to analyze.
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| 
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|         Returns:
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|             list: A list of text extracted from the dictionary.
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|         """
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|         # use dict to put text_english or text_summary in list
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|         list_text_english = []
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|         for key in self.mydict.keys():
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|             if analyze_text not in self.mydict[key]:
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|                 raise ValueError(
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|                     "Please check your provided dictionary - \
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|                 no {} text data found.".format(
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|                         analyze_text
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|                     )
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|                 )
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|             list_text_english.append(self.mydict[key][analyze_text])
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|         return list_text_english
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| 
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|     def get_text_df(self, analyze_text: str) -> list:
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|         """
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|         Extracts text from the provided dataframe.
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| 
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|         Args:
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|             analyze_text (str): Column name for the text field to analyze.
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| 
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|         Returns:
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|             list: A list of text extracted from the dataframe.
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|         """
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|         # use csv file to obtain dataframe and put text_english or text_summary in list
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|         # check that "text_english" or "text_summary" is there
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|         if analyze_text not in self.df:
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|             raise ValueError(
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|                 "Please check your provided dataframe - \
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|                                 no {} text data found.".format(
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|                     analyze_text
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|                 )
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|             )
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|         return self.df[analyze_text].tolist()
 | 
