import gradio as gr import requests import json import plotly def predict_fraud(selected_model, step, transaction_type, amount, oldbalanceOrg): # URL of the Flask API deployed on Heroku url = "https://xaifraudsense-04ba19097287.herokuapp.com/predict_and_explain" # Prepare the data in the format expected by the Flask API data = { 'selected_model': selected_model, 'step': step, 'transaction_type': transaction_type, 'amount': amount, 'oldbalanceOrg': oldbalanceOrg } # Send a POST request to the Flask API response = requests.post(url, json=data) if response.status_code == 200: # Extract the response data result = response.json() prediction_text = result['prediction_text'] lime_explanation = result['lime_explanation'] # Parse the JSON strings back into Plotly figures radial_plot_json = result['radial_plot'] bar_chart_json = result['bar_chart'] radial_plot = plotly.graph_objs.Figure(json.loads(radial_plot_json)) bar_chart = plotly.graph_objs.Figure(json.loads(bar_chart_json)) narrative = result['narrative'] # Return the results return prediction_text, radial_plot, bar_chart, lime_explanation, narrative else: return "Error: " + response.text, None, None, None, None # Organizing inputs and outputs with enhanced styling with gr.Blocks() as iface: gr.Markdown("

FraudSenseXAI - Advanced Fraud Detection

") gr.Markdown("

Predict and analyze fraudulent transactions.

", elem_id="description") with gr.Row(): with gr.Column(): gr.Markdown("#### Input Parameters") model_selection = gr.Dropdown(['Random Forest', 'Gradient Boost', 'Neural Network'], label="Model Selection") step = gr.Number(value=1, label="Step") transaction_type = gr.Dropdown(['Transfer', 'Payment', 'Cash Out', 'Cash In'], label="Transaction Type") transaction_amount = gr.Number(label="Transaction Amount") old_balance_org = gr.Number(label="Old Balance Org") submit_button = gr.Button("Submit", variant="primary") prediction_text = gr.Text(label="Prediction") lime_explanation_text = gr.Text(label="LIME Explanation") with gr.Column(): gr.Markdown("#### Visualization") radial_plot = gr.Plot(label="Radial Plot") bar_chart = gr.Plot(label="Bar Chart") narrative_text = gr.Text(label="Narrative") # Placed in the same column submit_button.click( predict_fraud, inputs=[model_selection, step, transaction_type, transaction_amount, old_balance_org], outputs=[prediction_text, radial_plot, bar_chart, lime_explanation_text, narrative_text] ) iface.launch(share=True)