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| import joblib | |
| import pandas as pd | |
| from flask import Flask, request, jsonify | |
| # Initialize Flask app with a name | |
| cust_churn_predictor_api = Flask ("Customer Churn Predictor Week1") | |
| # Load the trained churn prediction model | |
| model = joblib.load ("churn_prediction_model_v2_0.joblib") | |
| # Define a route for the home page | |
| def home (): | |
| return "Welcome to the Customer Churn Prediction Week1 API!" | |
| # Define an endpoint to predict churn for a single customer | |
| def predict_churn (): | |
| # Get JSON data from the request | |
| customer_data = request.get_json () | |
| # Extract relevant customer features from the input data | |
| sample = { | |
| 'customerID' : customer_data ['customerID'], | |
| 'SeniorCitizen' : customer_data ['SeniorCitizen'], | |
| 'tenure' : customer_data ['tenure'], | |
| 'MonthlyCharges' : customer_data ['MonthlyCharges'], | |
| 'TotalCharges' : customer_data ['TotalCharges'], | |
| 'Partner' : customer_data ['Partner'], | |
| 'Dependents' : customer_data ['Dependents'], | |
| 'PhoneService' : customer_data ['PhoneService'], | |
| 'InternetService' : customer_data ['InternetService'], | |
| 'Contract' : customer_data ['Contract'], | |
| 'PaymentMethod' : customer_data ['PaymentMethod'] | |
| } | |
| # Convert the extracted data into a DataFrame | |
| input_data = pd.DataFrame ([sample]) | |
| # Make a churn prediction using the trained model | |
| prediction = model.predict (input_data).tolist ()[0] | |
| # Map prediction result to a human-readable label | |
| prediction_label = "churn" if prediction == 1 else "not churn" | |
| # Return the prediction as a JSON response | |
| return jsonify ({'Prediction': prediction_label}) | |
| # Define an endpoint to predict churn for a batch of customers | |
| def predict_churn_batch (): | |
| # Get the uploaded CSV file from the request | |
| file = request.files ['file'] | |
| # Read the file into a DataFrame | |
| input_data = pd.read_csv (file) | |
| # Make predictions for the batch data and convert raw predictions into a readable format | |
| predictions = [ | |
| 'Churn' if x == 1 | |
| else "Not Churn" | |
| for x in model.predict (input_data.drop ("customerID",axis=1)).tolist () | |
| ] | |
| cust_id_list = input_data.customerID.values.tolist () | |
| output_dict = dict(zip (cust_id_list, predictions)) | |
| return output_dict | |
| # Run the Flask app in debug mode | |
| if __name__ == '__main__': | |
| cust_churn_predictor_api.run (debug=True) | |