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import streamlit as st
import pandas as pd
import numpy as np
import joblib
st.header('FTDS Model Deployment')
st.write("""
Created by FTDS Curriculum Team
Use the sidebar to select input features.
""")
@st.cache
def fetch_data():
df = pd.read_csv('https://raw.githubusercontent.com/ardhiraka/PFDS_sources/master/campus.csv')
return df
df = fetch_data()
st.write(df)
st.sidebar.header('User Input Features')
def user_input():
gender = st.sidebar.selectbox('Gender', df['gender'].unique())
ssc = st.sidebar.number_input('Secondary School Points', value=67.00)
hsc = st.sidebar.number_input('High School Points', 0.0, value=91.0)
hsc_s = st.sidebar.selectbox('High School Spec', df['hsc_s'].unique())
degree_p = st.sidebar.number_input('Degree Points', 0.0, value=58.0)
degree_t = st.sidebar.selectbox('Degree Spec', df['degree_t'].unique())
workex = st.sidebar.selectbox('Work Experience?', df['workex'].unique())
etest_p = st.sidebar.number_input('Etest Points', 0.0, value=78.00)
spec = st.sidebar.selectbox('Specialization', df['specialisation'].unique())
mba_p = st.sidebar.number_input('MBA Points', 0.0, value=54.55)
data = {
'gender': gender,
'ssc_p': ssc,
'hsc_p': hsc,
'hsc_s': hsc_s,
'degree_p': degree_p,
'degree_t': degree_t,
'workex': workex,
'etest_p': etest_p,
'specialisation':spec,
'mba_p': mba_p
}
features = pd.DataFrame(data, index=[0])
return features
input = user_input()
st.subheader('User Input')
st.write(input)
load_model = joblib.load("model.pkl")
prediction = load_model.predict(input)
if prediction == 1:
prediction = 'Placed'
else:
prediction = 'Not Placed'
st.write('Based on user input, the placement model predicted: ')
st.write(prediction)