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Runtime error
Runtime error
neelsahu
commited on
Commit
•
f3d8098
1
Parent(s):
0c01d2e
new repo
Browse files- __pycache__/clean.cpython-39.pyc +0 -0
- __pycache__/language_detection.cpython-39.pyc +0 -0
- app.py +52 -0
- clean.py +23 -0
- language_detection.py +246 -0
- model_joblib.pkl +3 -0
- requirements.txt +4 -0
- tf_joblib.pkl +3 -0
__pycache__/clean.cpython-39.pyc
ADDED
Binary file (1.12 kB). View file
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__pycache__/language_detection.cpython-39.pyc
ADDED
Binary file (2.3 kB). View file
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app.py
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import gradio as gr
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from gradio.components import Text
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import joblib
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import clean
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import numpy as np
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import language_detection
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print("all imports worked")
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# Load pre-trained model
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model = joblib.load('model_joblib.pkl')
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print("model load ")
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tf = joblib.load('tf_joblib.pkl')
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print("tfidf load ")
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# Define function to predict whether sentence is abusive or not
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def predict_abusive_lang(text):
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print("original text ", text)
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lang = language_detection.en_hi_detection(text)
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print("language detected ", lang)
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if lang=='eng':
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cleaned_text = clean.text_cleaning(text)
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print("cleaned text ", text)
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text = tf.transform([cleaned_text])
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print("tfidf transformation ", text)
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prediction = model.predict(text)
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print("prediction ", prediction)
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if len(prediction)!=0 and prediction[0]==0:
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return ["Not Abusive", cleaned_text]
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elif len(prediction)!=0 and prediction[0]==1:
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return ["Abusive",cleaned_text]
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else :
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return ["Please write something in the comment box..","No cleaned text"]
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elif lang=='hi':
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print("using hugging face api")
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return ["Hindi Text abusive part coming soon.....","No cleaned text"]
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else :
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return ["Unknown language","No cleaned text"]
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# text = '":::::: 128514 - & % ! @ # $ % ^ & * ( ) _ + I got blocked for 30 minutes, you got blocked for more than days. You is lost. www.google.com, #happydiwali, @amangupta And I don\'t even know who the fuck are you. It\'s a zero! \n"'
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# predict_abusive_lang(text)
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# Define the GRADIO output interfaces
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output_interfaces = [
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gr.outputs.Textbox(label="Result"),
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gr.outputs.Textbox(label="Cleaned text")
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]
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app = gr.Interface(predict_abusive_lang, inputs='text', outputs=output_interfaces, title="Abuse Classifier", description="Enter a sentence and the model will predict whether it is abusive or not.")
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#Start the GRADIO app
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app.launch()
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clean.py
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@@ -0,0 +1,23 @@
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from string import punctuation
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import re
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def text_cleaning(text):
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# Remove URLs starting with http, https and www, as well as quotes
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result = re.sub(r'http\S+|www\S+|\"', '', text)
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# Split the text into a list of words
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words = result.split()
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# Remove mentions and hashtags
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words = [word for word in words if not word.startswith(('@', '#'))]
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# Remove leading/trailing punctuation, and individual punctuation marks
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words = [word.strip(punctuation) for word in words if word not in punctuation]
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filtered_list = [item for item in words if item != '']
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# Remove words starting with digits
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words = [word for word in filtered_list if not word[0].isdigit()]
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# Convert all words to lowercase
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words = [w.lower() for w in words]
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return " ".join(words)
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language_detection.py
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@@ -0,0 +1,246 @@
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import nltk
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from nltk.corpus import wordnet
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import re
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from nltk.stem import WordNetLemmatizer
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stop_words = ['i',
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'me',
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'my',
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'myself',
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'we',
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'our',
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'ours',
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'ourselves',
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'you',
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"you're",
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"you've",
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"you'll",
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"you'd",
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'your',
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'yours',
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'yourself',
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'yourselves',
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'he',
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'him',
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'his',
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'himself',
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'she',
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"she's",
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'her',
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'hers',
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'herself',
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'it',
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"it's",
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'its',
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'itself',
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'they',
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'them',
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'their',
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'theirs',
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'themselves',
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'what',
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'which',
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'who',
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'whom',
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'this',
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'that',
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"that'll",
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'these',
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'those',
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'am',
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'is',
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'are',
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'was',
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'were',
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'be',
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'been',
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'being',
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'have',
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'has',
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'had',
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'having',
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'do',
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'does',
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'did',
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'doing',
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'a',
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'an',
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'the',
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'and',
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'but',
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'if',
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'or',
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'because',
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'as',
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'until',
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'while',
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'of',
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'at',
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'by',
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'for',
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'with',
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'about',
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'against',
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'between',
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'into',
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'through',
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'during',
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'before',
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'after',
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'above',
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'below',
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'to',
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'from',
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'up',
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'down',
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'in',
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'out',
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'on',
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100 |
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'off',
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'over',
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102 |
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'under',
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103 |
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'again',
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104 |
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'further',
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105 |
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'then',
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'once',
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107 |
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'here',
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108 |
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'there',
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109 |
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'when',
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110 |
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'where',
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111 |
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'why',
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112 |
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'how',
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113 |
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'all',
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114 |
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'any',
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'both',
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116 |
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'each',
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117 |
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'few',
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118 |
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'more',
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119 |
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'most',
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120 |
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'other',
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'some',
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122 |
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'such',
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'no',
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'nor',
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'not',
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'only',
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'own',
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'same',
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'so',
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'than',
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'too',
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'very',
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's',
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+
't',
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'can',
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'will',
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'just',
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138 |
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'don',
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"don't",
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'should',
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"should've",
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'now',
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+
'd',
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+
'll',
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+
'm',
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146 |
+
'o',
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147 |
+
're',
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148 |
+
've',
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149 |
+
'y',
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150 |
+
'ain',
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151 |
+
'aren',
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152 |
+
"aren't",
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153 |
+
'couldn',
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154 |
+
"couldn't",
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155 |
+
'didn',
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156 |
+
"didn't",
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157 |
+
'doesn',
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158 |
+
"doesn't",
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159 |
+
'hadn',
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160 |
+
"hadn't",
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161 |
+
'hasn',
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162 |
+
"hasn't",
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163 |
+
'haven',
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164 |
+
"haven't",
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165 |
+
'isn',
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166 |
+
"isn't",
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167 |
+
'ma',
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168 |
+
'mightn',
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169 |
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"mightn't",
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170 |
+
'mustn',
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171 |
+
"mustn't",
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172 |
+
'needn',
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173 |
+
"needn't",
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174 |
+
'shan',
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175 |
+
"shan't",
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176 |
+
'shouldn',
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177 |
+
"shouldn't",
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178 |
+
'wasn',
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179 |
+
"wasn't",
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180 |
+
'weren',
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181 |
+
"weren't",
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182 |
+
'won',
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183 |
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"won't",
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184 |
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'wouldn',
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185 |
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"wouldn't"]
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# Create a lemmatizer object
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lemmatizer = WordNetLemmatizer()
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188 |
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189 |
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#from english_words import get_english_words_set
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190 |
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#web2lowerset = get_english_words_set(['web2'], lower=True)
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191 |
+
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192 |
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# Define the Unicode range for Hindi letters
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HINDI_UNICODE_RANGE = (0x0900, 0x097F)
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194 |
+
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195 |
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# Function to check if a given character is a Hindi letter
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196 |
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def is_hindi_letter(c):
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return ord(c) >= HINDI_UNICODE_RANGE[0] and ord(c) <= HINDI_UNICODE_RANGE[1]
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198 |
+
|
199 |
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200 |
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# In[8]:
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201 |
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202 |
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203 |
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204 |
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def en_hi_detection(text):
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text = re.sub(r'[^\w\s]', ' ', text)
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206 |
+
|
207 |
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words = text.lower().strip().split()
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208 |
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count_en = 0
|
209 |
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# Lemmatize words for all POS
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210 |
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for word in words:
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211 |
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for pos in [wordnet.NOUN, wordnet.VERB, wordnet.ADJ, wordnet.ADV]:
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212 |
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# print(f"{word} ({pos}): {lemmatizer.lemmatize(word, pos)}")
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213 |
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lem_word = lemmatizer.lemmatize(word, pos)
|
214 |
+
if lem_word in nltk.corpus.wordnet.words():
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215 |
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count_en+=1
|
216 |
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break
|
217 |
+
elif lem_word in stop_words:
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218 |
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count_en+=1
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219 |
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break
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220 |
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#print("total english words found :", count_en)
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221 |
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#print("length of sentence :", len(words))
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222 |
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#print(count_en/len(words)*100, "% english words found")
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223 |
+
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224 |
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225 |
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count = 0
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226 |
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# Check each word for Hindi letters and print the results
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227 |
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for word in words:
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228 |
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hindi_letters = []
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229 |
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for c in word:
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230 |
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if is_hindi_letter(c):
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231 |
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hindi_letters.append(c)
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232 |
+
if hindi_letters:
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233 |
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#print(f"Word '{word}' contains Hindi letters: {' '.join(hindi_letters)}")
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234 |
+
count+=1
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235 |
+
else:
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236 |
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pass
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237 |
+
#print(f"Word '{word}' does not contain any Hindi letters.")
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238 |
+
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239 |
+
#print(count/len(words)*100, "% Hindi words found")
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240 |
+
if count_en/len(words)*100>75:
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241 |
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return "eng"
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242 |
+
elif count/len(words)*100>75:
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243 |
+
return "hi"
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244 |
+
else :
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245 |
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return "unknown"
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246 |
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model_joblib.pkl
ADDED
@@ -0,0 +1,3 @@
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1 |
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version https://git-lfs.github.com/spec/v1
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2 |
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oid sha256:6308a9d0d4eb28b3ea67bc20a2e200218a9ca2c12b2fc8e17027536d1147d20f
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3 |
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size 318919
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requirements.txt
ADDED
@@ -0,0 +1,4 @@
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1 |
+
scikit-learn==1.0.2
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2 |
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nltk==3.8.1
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3 |
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joblib==1.0.1
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4 |
+
|
tf_joblib.pkl
ADDED
@@ -0,0 +1,3 @@
|
|
|
|
|
|
|
|
|
1 |
+
version https://git-lfs.github.com/spec/v1
|
2 |
+
oid sha256:e53104db442b78f814eab3c2d081f6fc06279a4bdec6cfaea81c8221447f5dd3
|
3 |
+
size 1441403
|