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Update pages/✨first.py
Browse files- pages/✨first.py +46 -110
pages/✨first.py
CHANGED
@@ -1,112 +1,48 @@
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import streamlit as st
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import base64
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import streamlit as st
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import plotly.express as px
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df = px.data.iris()
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@st.cache_data
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def get_img_as_base64(file):
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with open(file, "rb") as f:
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data = f.read()
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return base64.b64encode(data).decode()
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page_bg_img = f"""
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<style>
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[data-testid="stAppViewContainer"] > .main {{
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background-image: url("https://wallpapercave.com/wp/wp6480460.jpg");
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background-size: 115%;
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background-position: top left;
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background-repeat: no-repeat;
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background-attachment: local;
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}}
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[data-testid="stSidebar"] > div:first-child {{
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background-image: url("https://ibb.co/ZBkdJRg");
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background-size: 115%;
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background-position: center;
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background-repeat: no-repeat;
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background-attachment: fixed;
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}}
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[data-testid="stHeader"] {{
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background: rgba(0,0,0,0);
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}}
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[data-testid="stToolbar"] {{
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right: 2rem;
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}}
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div.css-1n76uvr.e1tzin5v0 {{
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background-color: rgba(238, 238, 238, 0.5);
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border: 10px solid #EEEEEE;
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padding: 5% 5% 5% 10%;
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border-radius: 5px;
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}}
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</style>
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"""
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st.markdown(page_bg_img, unsafe_allow_html=True)
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import tensorflow as tf
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from tensorflow import keras
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import numpy as np
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import matplotlib.pyplot as plt
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################################################################################################
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#Тут нужно будет добаить модель. Ниже пример:
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# # Загрузка модели
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# model = keras.models.load_model('cgan_model.h5')
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# # Задание размерностей входных данных модели
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# latent_dim = 128
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# num_classes = 10
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# # Функция для генерации изображения
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# def generate_image(number):
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# random_latent_vector = tf.random.normal(shape=(1, latent_dim))
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# one_hot_label = tf.one_hot([number], num_classes)
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# input_data = tf.concat([random_latent_vector, one_hot_label], axis=1)
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# generated_image = model.predict(input_data)
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# generated_image = generated_image.reshape(28, 28)
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# generated_image = tf.image.resize(generated_image[None, ...], (28, 28))[0] # Добавлено [None, ...] для добавления измерения
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# return generated_image
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################################################################################################
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#Оформление
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col1, col2, col3 = st.columns([1,5,1])
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with col2:
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st.title('Название модели')
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col1, col2, col3 = st.columns([2,5,2])
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with col2:
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number = st.slider('Выберите число:', 0, 9, step=1)
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################################################################################################
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# Часть, отображаемая на странице
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# number = st.slider('Выберите число:', 0, 9, step=1)
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# #col1.subheader("Гистограмма total_bill:")
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# # Генерация и отображение изображения
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# generated_image = generate_image(number)
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# generated_image_np = generated_image.numpy() # Преобразование в массив NumPy
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# fig, ax = plt.subplots()
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# ax.scatter([1, 2], [1, 2], color='black')
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# plt.imshow(generated_image_np, cmap='gray')
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# plt.axis('off')
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# fig.set_size_inches(3, 3)
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# st.pyplot(fig)
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rom sklearn.feature_extraction.text import CountVectorizer
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from sklearn.linear_model import LogisticRegression
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import re
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import string
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import pickle
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import streamlit as st
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# Функция очистки текста
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def clean(text):
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text = text.lower() # нижний регистр
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text = re.sub(r'http\S+', " ", text) # удаляем ссылки
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text = re.sub(r'@\w+',' ',text) # удаляем упоминания пользователей
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text = re.sub(r'#\w+', ' ', text) # удаляем хэштеги
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text = re.sub(r'\d+', ' ', text) # удаляем числа
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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 = '/home/nika/ds-phase-2/10-nlp/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 = '/home/nika/ds-phase-2/10-nlp/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.")
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st.write("Whether you want to know if a review is positive or negative, CritiSense has got you covered.")
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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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prediction = model.predict(user_features)
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st.write("Review:", user_review)
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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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