import streamlit as st import pandas as pd import numpy as np import joblib, pickle import json #Load All Files #load model dan files yang sudah di save pada framing # with open('model_rf.pkl', 'rb') as file_1: # model_rf = pickle.load(file_1) # # model_patch = 'model_rf.pkl' # model_rf = joblib.load(model_patch) # with open('list_num_cols.txt', 'r') as file_1: # list_num_cols = json.load(file_1) # with open('list_cat_cols.txt', 'r') as file_2: # list_cat_cols = json.load(file_2) with open('model_rf.pkl', 'rb') as file3: loaded_model = pickle.load(file3) def run(): with st.form('deposito_simulation'): #Field Umur Age = st.number_input('Age', min_value = 17, max_value = 75, value = 25, step = 1, help = 'Customers Age') #Field Nama Job = st.selectbox('Job', ('admin.', 'technician', 'services','management','retired','blue-collar','unemployed','entrepreneur','housemaid','unknown','self-employed','student'), index = 1) #Marital Status Marital = st.selectbox('Marital Status', ('married', 'single', 'divorced'), index = 1) #Education Status Education = st.selectbox('Education', ('secondary', 'tertiary', 'primary', 'unknown'), index = 1) #Default Status Default = st.selectbox('Default', ('no', 'yes'), index = 1, help = 'has credit in default?') #Field Pace Total Balance = st.number_input('Balance', min_value = 0, max_value=999999, value = 50) #Housing Status Housing = st.selectbox('Housing', ('yes', 'no'), index = 1, help = 'has housing loan?') #Loan Status Loan = st.selectbox('Loan', ('no', 'yes'), index = 1, help = 'has personal loan?') #Contact Status Contact = st.selectbox('Contact', ('unknown', 'cellular', 'telephone'), index = 1) #Day Day = st.number_input('Day', min_value = 1, max_value=31, value = 1, help = 'last contact day of the month') #Month Month = st.selectbox('Month', ('may', 'jun', 'jul', 'aug', 'oct', 'nov', 'dec', 'jan', 'feb', 'mar', 'apr', 'sep'), index = 1, help = 'last contact month of year') #Duration Duration = st.number_input('Duration', min_value = 0, max_value=999999, value = 50, help = 'last contact duration, in seconds') #Day Campaign = st.number_input('Campaign', min_value = 1, max_value=100, value = 1, help = 'number of contacts performed during this campaign and for this client') #pDyas Pdays = st.number_input('Pdays', min_value = -1 , max_value=9999999, value = 0, help = 'number of days that passed by after the client was last contacted from a previous campaign (numeric, -1 means client was not previously contacted') #Previous Previous = st.number_input('Previous', min_value = 0, max_value=100, value = 0, help = 'previous: number of contacts performed before this campaign and for this client') #Poutcome Status Poutcome = st.selectbox('P Outcome', ('unknown', 'other', 'failure', 'success'), index = 1, help = 'outcome of the previous marketing campaign') #bikin submit button submitted = st.form_submit_button('Predict') #Inference data_inf = { 'age' : Age, 'job' : Job, 'marital' : Marital, 'education' : Education, 'default' : Default, 'balance' : Balance, 'housing' :Housing, 'loan': Loan, 'contact' : Contact, 'day' :Day, 'month' :Month, 'duration':Duration, 'campaign': Campaign, 'pdays':Pdays, 'previous':Previous, 'poutcome': Poutcome, } data_inf = pd.DataFrame([data_inf]) st.dataframe(data_inf) #Logic ketika predic button ditekan if submitted: #predict using pipe rf model predictions = loaded_model.predict(data_inf) st.write('## Deposit : ', str(int(predictions))) if __name__ == '__main__': run()