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| # Import necessary libraries | |
| import numpy as np | |
| import joblib # For loading the serialized model | |
| import pandas as pd # For data manipulation | |
| from flask import Flask, request, jsonify # For creating the Flask API | |
| # Initialize Flask app with a name reflective of the project | |
| extraalearn_api = Flask("ExtLearn") | |
| # Load the trained lead conversion model (ensure the file name matches your saved model) | |
| model = joblib.load("extlearn_model.joblib") | |
| # Define a route for the home page | |
| def home(): | |
| return "Welcome to the ExtraaLearn Lead Conversion Prediction System" | |
| # Define an endpoint to predict status (converted/not converted) for a lead | |
| def predict_conversion(): | |
| # Get JSON data from the request body | |
| data = request.get_json() | |
| # Extract relevant features based on the ExtraaLearn dataset | |
| # These must match the exact feature names used during model training | |
| sample = { | |
| 'age': data['age'], | |
| 'current_occupation': data['current_occupation'], | |
| 'first_interaction': data['first_interaction'], | |
| 'profile_completed': data['profile_completed'], | |
| 'website_visits': data['website_visits'], | |
| 'time_spent_on_website': data['time_spent_on_website'], | |
| 'page_views_per_visit': data['page_views_per_visit'], | |
| 'last_activity': data['last_activity'], | |
| 'print_media_type1': data['print_media_type1'], | |
| 'print_media_type2': data['print_media_type2'], | |
| 'digital_media': data['digital_media'], | |
| 'educational_channels': data['educational_channels'], | |
| 'referral': data['referral'] | |
| } | |
| # Convert the extracted data into a DataFrame for the model pipeline | |
| input_data = pd.DataFrame([sample]) | |
| # Calculate the engineered feature 'age_time_interaction' | |
| input_data['age_time_interaction'] = input_data['age'] * input_data['time_spent_on_website'] | |
| # Make a prediction (1 for converted, 0 for not converted) | |
| prediction = int(model.predict(input_data)[0]) | |
| # Optional: Get the probability of conversion | |
| probability = model.predict_proba(input_data)[0][1] | |
| # Return the prediction and probability as a JSON response | |
| return jsonify({ | |
| 'Status_Prediction': prediction, | |
| 'Conversion_Probability': round(float(probability), 4), | |
| 'Message': 'High Potential Lead' if prediction == 1 else 'Low Potential Lead' | |
| }) | |
| # Run the Flask app | |
| if __name__ == '__main__': | |
| extraalearn_api.run(debug=True) | |