import streamlit as st import pandas as pd from huggingface_hub import hf_hub_download import joblib # Download and load the model model_path = hf_hub_download(repo_id="PSstark/Machine-Learning-Prediction", filename="best_prediction_model_v1.joblib") model = joblib.load(model_path) # Streamlit UI for Machine Failure Prediction st.title("Tourism Product Purchase Prediction App") st.write(""" Welcome to the **Tourism Product Purchase Prediction App**! 🌍✨ This tool predicts whether a customer is likely to purchase a tourism product based on their personal details, preferences, and interaction history. Please provide the customer information below, and the model will estimate the likelihood of them taking the product. """) # Basic demographic info age = st.number_input("Customer Age", min_value=18, max_value=80, value=35) gender = st.selectbox("Gender", ["Male", "Female"]) marital_status = st.selectbox("Marital Status", ["Single", "Married", "Divorced"]) # Contact and occupation info typeof_contact = st.selectbox("Type of Contact", ["Self Enquiry", "Company Invited"]) occupation = st.selectbox("Occupation", ["Salaried", "Small Business", "Large Business", "Free Lancer"]) # Travel and product preferences city_tier = st.selectbox("City Tier", [1, 2, 3]) product_pitched = st.selectbox("Product Pitched", ["Basic", "Deluxe", "Standard", "Super Deluxe", "King"]) designation = st.selectbox("Designation", ["Executive", "Manager", "Senior Manager", "AVP", "VP"]) # Numeric customer interaction details duration_of_pitch = st.number_input("Duration of Pitch (minutes)", min_value=0.0, max_value=100.0, value=10.0) number_of_person_visiting = st.number_input("Number of Persons Visiting", min_value=1, max_value=10, value=2) number_of_followups = st.number_input("Number of Follow-ups", min_value=0, max_value=20, value=2) preferred_property_star = st.selectbox("Preferred Property Star", [1, 2, 3, 4, 5]) number_of_trips = st.number_input("Number of Trips Taken", min_value=0, max_value=50, value=5) pitch_satisfaction_score = st.slider("Pitch Satisfaction Score", min_value=1, max_value=5, value=3) # Additional info passport = st.selectbox("Passport", [0, 1]) own_car = st.selectbox("Own Car", [0, 1,2,3]) number_of_children_visiting = st.number_input("Number of Children Visiting", min_value=0, max_value=10, value=0) monthly_income = st.number_input("Monthly Income", min_value=0.0, max_value=1000000.0, value=25000.0) # 📊 Assemble all inputs into a DataFrame input_data = pd.DataFrame([{ 'Age': age, 'TypeofContact': typeof_contact, 'CityTier': city_tier, 'DurationOfPitch': duration_of_pitch, 'Occupation': occupation, 'Gender': gender, 'NumberOfPersonVisiting': number_of_person_visiting, 'NumberOfFollowups': number_of_followups, 'ProductPitched': product_pitched, 'PreferredPropertyStar': preferred_property_star, 'MaritalStatus': marital_status, 'NumberOfTrips': number_of_trips, 'Passport': passport, 'PitchSatisfactionScore': pitch_satisfaction_score, 'OwnCar': own_car, 'NumberOfChildrenVisiting': number_of_children_visiting, 'Designation': designation, 'MonthlyIncome': monthly_income }]) # 🔮 Make prediction if st.button("Predict Purchase"): prediction = model.predict(input_data)[0] result = "✅ Customer is Likely to Purchase the Product" if prediction == 1 else "❌ Customer is Unlikely to Purchase the Product" st.subheader("Prediction Result:") st.success(result)