SaviAnna osanchik commited on
Commit
5707064
1 Parent(s): 98a5d62

Added buttons (#2)

Browse files

- added more buttons (a0723f4fe139c6fa47d5c226f25f7ebb9f3a7755)


Co-authored-by: Osana Babayan <osanchik@users.noreply.huggingface.co>

Files changed (1) hide show
  1. pages/📷 CritiSense.py +78 -24
pages/📷 CritiSense.py CHANGED
@@ -16,20 +16,51 @@ def clean(text):
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  text = text.translate(str.maketrans('', '', string.punctuation))
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  return text
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- # Загрузка весов модели
 
 
 
 
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- model_filename = 'model_weights.pkl'
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- with open(model_filename, 'rb') as file:
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- model = pickle.load(file)
 
 
 
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- # Загрузка весов векторизатора
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- vectorizer = CountVectorizer()
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- vectorizer_filename = 'vectorizer_weights.pkl'
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- with open(vectorizer_filename, 'rb') as file:
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- vectorizer = pickle.load(file)
 
 
 
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- # Само приложение
 
 
 
 
 
 
 
 
 
 
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  st.title("CritiSense")
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  st.subheader("Movie Review Sentiment Analyzer")
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  st.write("CritiSense is a powerful app that analyzes the sentiment of movie reviews.")
@@ -37,21 +68,44 @@ st.write("Whether you want to know if a review is positive or negative, CritiSen
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  st.write("Just enter the review, and our app will provide you with instant sentiment analysis.")
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  st.write("Make informed decisions about movies with CritiSense!")
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  user_review = st.text_input("Enter your review:", "")
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- user_review_clean = clean(user_review)
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- user_features = vectorizer.transform([user_review_clean])
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- start_ml=time.time()
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- prediction = model.predict(user_features)
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- end_ml=time.time()
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- st.write("Review:", user_review)
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- ml_time=end_ml-start_ml
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-
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- execution_time_container = st.empty() # Создаем пустой контейнер для отображения времени выполнения
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-
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- if st.button("Analyze Sentiment"):
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- if prediction == 1:
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
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  st.markdown("<p style='color: green;'>Sentiment: Positive</p>", unsafe_allow_html=True)
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  else:
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  st.markdown("<p style='color: red;'>Sentiment: Negative</p>", unsafe_allow_html=True)
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- st.markdown(f"Execution Time: {ml_time:.5f} seconds")
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- execution_time_container.text(f"Execution Time: {ml_time:.5f} seconds")
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  text = text.translate(str.maketrans('', '', string.punctuation))
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  return text
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+ # Загрузка весов модели и векторизатора
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+ def load_model_ml() : # return model
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+ model_filename = 'model_weights.pkl'
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+ with open(model_filename, 'rb') as file:
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+ model = pickle.load(file)
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+ vectorizer = CountVectorizer()
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+ vectorizer_filename = 'vectorizer_weights.pkl'
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+ with open(vectorizer_filename, 'rb') as file:
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+ vectorizer = pickle.load(file)
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+
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+ return model, vectorizer
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+ def predict_ml(model, vectorizer, user_review) :
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+ user_review_clean = clean(user_review)
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+ user_features = vectorizer.transform([user_review_clean])
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+ start_ml=time.time()
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+ prediction = model.predict(user_features)
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+ end_ml=time.time()
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+ st.write("Review:", user_review)
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+ ml_time=end_ml-start_ml
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+ return prediction, ml_time
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+
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+ #Placeholder for RNN
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+ def load_model_rnn() : # return model
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+ return # model
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+
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+ #Placeholder for RNN
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+ def predict_rnn(model, user_review) :
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+ prediction = 1
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+ time = 0
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+ return prediction, time
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+ #Placeholder for BERT
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+ def load_model_bert() : # return model
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+ return # model
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+
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+ #Placeholder for BERT
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+ def predict_bert(model, user_review) :
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+ prediction = 1
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+ time = 0
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+ return prediction, time
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+
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+ # Само приложение
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  st.title("CritiSense")
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  st.subheader("Movie Review Sentiment Analyzer")
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  st.write("CritiSense is a powerful app that analyzes the sentiment of movie reviews.")
 
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  st.write("Just enter the review, and our app will provide you with instant sentiment analysis.")
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  st.write("Make informed decisions about movies with CritiSense!")
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  user_review = st.text_input("Enter your review:", "")
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+
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+ # Создаем пустой контейнер для отображения времени выполнения
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+ execution_time_container = st.empty()
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+ if st.button("Analyze Sentiment using ML"):
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+ ml_model, ml_vectorizer = load_model_ml()
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+ ml_prediction, ml_time = predict_ml(ml_model, ml_vectorizer, user_review)
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+
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+ if ml_prediction == 1:
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+ st.markdown("<p style='color: green;'>Sentiment: Positive</p>", unsafe_allow_html=True)
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+ else:
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+ st.markdown("<p style='color: red;'>Sentiment: Negative</p>", unsafe_allow_html=True)
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+
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+ st.markdown(f"Execution Time: {ml_time:.5f} seconds")
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+ execution_time_container.text(f"Execution Time: {ml_time:.5f} seconds")
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+
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+ st.divider()
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+
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+ if st.button("Analyze Sentiment using RNN"):
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+ rnn_model = load_model_rnn()
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+ rnn_prediction, rnn_time = predict_rnn(rnn_model, user_review)
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+
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+ if rnn_prediction == 1:
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+ st.markdown("<p style='color: green;'>Sentiment: Positive</p>", unsafe_allow_html=True)
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+ else:
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+ st.markdown("<p style='color: red;'>Sentiment: Negative</p>", unsafe_allow_html=True)
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+ st.markdown(f"Execution Time: {rnn_time:.5f} seconds")
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+ execution_time_container.text(f"Execution Time: {rnn_time:.5f} seconds")
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+
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+ st.divider()
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+
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+ if st.button("Analyze Sentiment using Bert"):
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+ bert_model = load_model_bert()
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+ bert_prediction, bert_time = predict_bert(bert_model, user_review)
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+
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+ if bert_prediction == 1:
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  st.markdown("<p style='color: green;'>Sentiment: Positive</p>", unsafe_allow_html=True)
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  else:
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  st.markdown("<p style='color: red;'>Sentiment: Negative</p>", unsafe_allow_html=True)
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+ st.markdown(f"Execution Time: {bert_time:.5f} seconds")
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+ execution_time_container.text(f"Execution Time: {bert_time:.5f} seconds")
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