# 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 the Flask application store_total_sales_predictor_api = Flask("Store Total Sales Predictor") # Load the trained machine learning model model = joblib.load("store_total_sales_prediction_model_v1_0.joblib") # Define a route for the home page (GET request) @store_total_sales_predictor_api.get('/') def home(): """ This function handles GET requests to the root URL ('/') of the API. It returns a simple welcome message. """ return "Welcome to the Store Total Sales Prediction API!" # Define an endpoint for single sales prediction (POST request) @store_total_sales_predictor_api.post('/v1/storeSales') def predict_store_total_sales(): """ This function handles POST requests to the '/v1/storeSales' endpoint. It expects a JSON payload containing store details and returns the predicted total sales as a JSON response. """ # Get the JSON data from the request body store_data = request.get_json() # Extract relevant features from the JSON data sample = { 'Product_Weight': store_data['product_weight'], 'Product_Sugar_Content': store_data['product_sugar_content'], 'Product_Allocated_Area': store_data['product_allocated_area'], 'Product_Type': store_data['product_type'], 'Product_MRP': store_data['product_mrp'], 'Store_Id': store_data['store_id'], 'Store_Establishment_Year': store_data['store_establishment_year'], 'Store_Size': store_data['store_size'], 'Store_Location_City_Type': store_data['store_location_city_type'], 'Store_Type': store_data['store_type'] } # Convert the extracted data into a Pandas DataFrame input_data = pd.DataFrame([sample]) #st.write("Converted Json:", input_data.to_dict(orient='records')[0]) # Make prediction (get log_sales) predicted_log_total_sales = model.predict(input_data).tolist()[0] # Calculate actual price #predicted_total_sales = np.exp(predicted_log_total_sales) predicted_total_sales = predicted_log_total_sales # Convert predicted_price to Python float #predicted_total_sales = round(float(predicted_total_sales), 2) # The conversion above is needed as we convert the model prediction (log total sales) to actual sales using np.exp, which returns predictions as NumPy float32 values. # When we send this value directly within a JSON response, Flask's jsonify function encounters a datatype error # Return the actual price return jsonify({'Predicted_Store_Total_Sales': predicted_total_sales}) # Define an endpoint for batch prediction (POST request) @store_total_sales_predictor_api.post('/v1/storeSalesbatch') def predict_store_total_sales_batch(): """ This function handles POST requests to the '/v1/storeSalesbatch' endpoint. It expects a CSV file containing property details for multiple properties and returns the predicted rental prices as a dictionary in the JSON response. """ # Get the uploaded CSV file from the request file = request.files['file'] # Read the CSV file into a Pandas DataFrame input_data = pd.read_csv(file) # Make predictions for all properties in the DataFrame (get log_sales) predicted_log_total_sales = model.predict(input_data).tolist() # Calculate actual prices #predicted_store_total_sales = [round(float(np.exp(log_total_sales)), 2) for log_total_sales in predicted_log_total_sales] predicted_store_total_sales = predicted_log_total_sales # Create a dictionary of predictions with Product Id as Unique keys for each record product_ids = input_data['Product_Id'].tolist() # Assuming 'id' is the Product ID column output_dict = dict(zip(product_ids, predicted_store_total_sales)) # Use actual prices # Return the predictions dictionary as a JSON response return output_dict # Run the Flask application in debug mode if this script is executed directly if __name__ == '__main__': store_total_sales_predictor_api.run(debug=True)