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app.py
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65 lines (53 loc) · 2.42 KB
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import streamlit as st
import pickle
import numpy as np
# Judul aplikasi
st.title("Aplikasi Prediksi Status Performa Mahasiswa")
import streamlit as st
# Input fitur-fitur
Curricular_units_1st_sem_enrolled = st.number_input("Jumlah SKS yang Didaftarkan Mahasiswa pada Semester 1", min_value=0.0, max_value=26.0, value=0.0)
Curricular_units_1st_sem_approved = st.number_input("Jumlah SKS yang Lulus Mahasiswa pada Semester 1", min_value=0.0, max_value=40.0, value=0.0)
Curricular_units_1st_sem_grade = st.number_input("Nilai Semester 1", min_value=0.0, max_value=4.0, value=0.0)
Curricular_units_2nd_sem_enrolled = st.number_input("Jumlah SKS yang Didaftarkan Mahasiswa pada Semester 2", min_value=0.0, max_value=26.0, value=0.0)
Curricular_units_2nd_sem_approved = st.number_input("Jumlah SKS yang Lulus Mahasiswa pada Semester 2", min_value=0.0, max_value=40.0, value=0.0)
Curricular_units_2nd_sem_grade = st.number_input("Nilai Semester 2", min_value=0.0, max_value=4.0, value=0.0)
# 1 Yes 0 No
Tuition_fees_up_to_date = st.radio("Pelunasan Uang Pendidikan (Iya (1); Tidak (0))", ("1", "0"))
# 1 Yes 0 No
Scholarship_holder = st.radio("Penerima Beasiswa (Iya (1); Tidak (0))", ("1", "0"))
Admission_grade = st.number_input("Nilai Penerimaan", min_value=0.0, max_value=200.0, value=0.0)
Displaced = st.radio("Apakah Mahasiswa Orang Terlantar? (Iya (1); Tidak (0))", ("1", "0"))
# Data dalam bentuk list
data = [
[
Curricular_units_2nd_sem_approved,
Curricular_units_2nd_sem_grade,
Curricular_units_1st_sem_approved,
Curricular_units_1st_sem_grade,
Tuition_fees_up_to_date,
Scholarship_holder,
Curricular_units_2nd_sem_enrolled,
Curricular_units_1st_sem_enrolled,
Admission_grade,
Displaced
]
]
# Load model dan skaler yang telah disimpan sebelumnya
scaler = pickle.load(open('scaler.pkl', 'rb'))
best_model = pickle.load(open('model_rf.pkl', 'rb'))
# Ketika tombol "Prediksi" ditekan
if st.button("Prediksi"):
# Standardisasi data
data_scaled = scaler.transform(data)
# Prediksi hasil Status
hasil_prediksi = best_model.predict(data_scaled)
hasil_prediksi = int(hasil_prediksi)
# Mapping hasil prediksi ke label yang sesuai
if hasil_prediksi == 0:
status = "Dropout"
elif hasil_prediksi == 1:
status = "Enrolled"
else:
status = "Graduate"
# Menampilkan hasil prediksi
st.write(f"Hasil Prediksi Status: {status}")