| import streamlit as st |
| import joblib |
| import pandas as pd |
| import pickle |
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| model_path = 'joblibmodel_rfbest_pipe_rfbest_pipe_rfbest_pipe_rf.pkl' |
| with open(model_path, 'rb') as file: |
| model = joblib.load(file) |
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| st.title("Prediksi Churn Pelanggan") |
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| st.subheader("Masukkan Data Pelanggan") |
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| gender = st.selectbox('Gender', ['Female', 'Male']) |
| senior_citizen = st.selectbox('Senior Citizen', [0, 1]) |
| partner = st.selectbox('Partner', ['Yes', 'No']) |
| dependents = st.selectbox('Dependents', ['Yes', 'No']) |
| tenure = st.number_input('Tenure (bulan)', min_value=0, max_value=72, value=45) |
| phone_service = st.selectbox('Phone Service', ['Yes', 'No']) |
| multiple_lines = st.selectbox('Multiple Lines', ['Yes', 'No']) |
| internet_service = st.selectbox('Internet Service', ['DSL', 'Fiber optic', 'No']) |
| online_security = st.selectbox('Online Security', ['Yes', 'No']) |
| online_backup = st.selectbox('Online Backup', ['Yes', 'No']) |
| device_protection = st.selectbox('Device Protection', ['Yes', 'No']) |
| tech_support = st.selectbox('Tech Support', ['Yes', 'No']) |
| streaming_tv = st.selectbox('Streaming TV', ['Yes', 'No']) |
| streaming_movies = st.selectbox('Streaming Movies', ['Yes', 'No']) |
| contract = st.selectbox('Contract', ['Month-to-month', 'One year', 'Two year']) |
| paperless_billing = st.selectbox('Paperless Billing', ['Yes', 'No']) |
| payment_method = st.selectbox('Payment Method', ['Electronic check', 'Mailed check', 'Bank transfer (automatic)', 'Credit card (automatic)']) |
| monthly_charges = st.number_input('Monthly Charges', min_value=0.0, value=70.35) |
| total_charges = st.number_input('Total Charges', min_value=0.0, value=346.45) |
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| data_baru = { |
| 'gender': [gender], |
| 'SeniorCitizen': [senior_citizen], |
| 'Partner': [partner], |
| 'Dependents': [dependents], |
| 'tenure': [tenure], |
| 'PhoneService': [phone_service], |
| 'MultipleLines': [multiple_lines], |
| 'InternetService': [internet_service], |
| 'OnlineSecurity': [online_security], |
| 'OnlineBackup': [online_backup], |
| 'DeviceProtection': [device_protection], |
| 'TechSupport': [tech_support], |
| 'StreamingTV': [streaming_tv], |
| 'StreamingMovies': [streaming_movies], |
| 'Contract': [contract], |
| 'PaperlessBilling': [paperless_billing], |
| 'PaymentMethod': [payment_method], |
| 'MonthlyCharges': [monthly_charges], |
| 'TotalCharges': [total_charges] |
| } |
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| df_baru = pd.DataFrame(data_baru) |
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| categorical_columns = df_baru.select_dtypes(include=['object']).columns |
| df_baru = pd.get_dummies(df_baru, columns=categorical_columns, drop_first=True) |
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| st.subheader("Data Pelanggan yang Dimasukkan:") |
| st.write(df_baru) |
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| if st.button('Prediction'): |
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| prediksi = model.predict(df_baru) |
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| if prediksi[0] == 1: |
| hasil = 'Yes' |
| else: |
| hasil = 'No' |
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| st.subheader(f"Hasil Prediksi Churn: {hasil}") |
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| probabilitas = model.predict_proba(df_baru)[:, 1] |
| st.subheader(f"Probabilitas Churn: {probabilitas[0]:.2f}") |
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