import gradio as gr import pickle import json import numpy as np # Load model and columns with open("banglore_home_prices_model.pickle", "rb") as f: model = pickle.load(f) with open("columns.json", "r") as f: data_columns = json.load(f)["data_columns"] locations = data_columns[3:] # Extract location columns (FROM FORTH COLUMN TO END FOUND IN LOCATION) def predict_price(total_sqft, bath, bhk, location): # Prepare the input array x = np.zeros(len(data_columns)) x[0] = total_sqft x[1] = bath x[2] = bhk if location in locations: loc_index = data_columns.index(location) x[loc_index] = 1 # Make prediction return model.predict([x])[0] # Create the Gradio interface inputs = [ gr.Number(label="Total Square Feet"), gr.Number(label="Bath"), gr.Number(label="BHK"), gr.Dropdown(choices=locations, label="Location") ] outputs = gr.Textbox(label="Predicted Price (Lakh)") # Launch the interface gr.Interface(fn=predict_price, inputs=inputs, outputs=outputs, title="Real Estate Price Prediction").launch()