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"""
Gradio UI for Vehicle Diagnostics Agent - Hugging Face Space
"""
import gradio as gr
import sys
from pathlib import Path
import pandas as pd
import plotly.graph_objects as go
import os

# Add src directory to path
sys.path.append(str(Path(__file__).parent / 'src'))

from src.orchestrator import VehicleDiagnosticOrchestrator
from src.agents.data_ingestion_agent import DataIngestionAgent

# Initialize components
orchestrator = VehicleDiagnosticOrchestrator()
ingestion_agent = DataIngestionAgent()

# Load available vehicles
test_df = ingestion_agent.load_test_data()
available_vehicles = sorted(test_df['vehicle_id'].unique().tolist())


def run_diagnostic(vehicle_id, n_readings):
    """Run diagnostic for a vehicle"""
    try:
        vehicle_id = int(vehicle_id)
        n_readings = int(n_readings) if n_readings else None
        
        # Run diagnostic
        result = orchestrator.diagnose_vehicle(vehicle_id, n_readings)
        
        if not result['success']:
            return f"❌ Error: {result.get('error')}", "", "", None
        
        # Extract results
        anomaly_result = result.get('anomaly_result', {})
        report = result.get('report', {})
        
        # Status summary
        if anomaly_result.get('anomaly_detected'):
            status = f"""
## 🚨 ALERT: Anomalies Detected

**Vehicle ID:** {vehicle_id}  
**Anomaly Score:** {anomaly_result.get('overall_score', 0):.3f}  
**Anomalous Readings:** {anomaly_result.get('num_anomalies', 0)} / {len(anomaly_result.get('anomaly_predictions', []))} ({anomaly_result.get('anomaly_rate', 0):.1%})  
**Status:** ⚠️ Requires Attention
"""
        else:
            status = f"""
## βœ… Vehicle Healthy

**Vehicle ID:** {vehicle_id}  
**Status:** 🟒 All Systems Normal  
**Anomaly Score:** {anomaly_result.get('overall_score', 0):.3f}
"""
        
        # Natural language summary
        nl_summary = report.get('natural_language_summary', 'No summary available')
        
        # Full report
        full_report = report.get('full_report', 'No report available')
        
        # Create visualization
        fig = create_anomaly_visualization(anomaly_result)
        
        return status, nl_summary, full_report, fig
        
    except Exception as e:
        return f"❌ Error: {str(e)}", "", "", None


def create_anomaly_visualization(anomaly_result):
    """Create visualization of anomaly detection results"""
    try:
        import numpy as np
        
        timestamps = anomaly_result.get('timestamps', [])
        predictions = anomaly_result.get('anomaly_predictions', [])
        scores = anomaly_result.get('anomaly_scores', [])
        
        # Convert numpy arrays to lists if needed
        if isinstance(timestamps, np.ndarray):
            timestamps = timestamps.tolist()
        if isinstance(predictions, np.ndarray):
            predictions = predictions.tolist()
        if isinstance(scores, np.ndarray):
            scores = scores.tolist()
        
        if len(timestamps) == 0 or len(predictions) == 0:
            return None
        
        # Create index-based x-axis for better visualization
        x_values = list(range(len(predictions)))
        
        # Create figure with secondary y-axis
        fig = go.Figure()
        
        # Add anomaly predictions as filled area
        fig.add_trace(go.Scatter(
            x=x_values,
            y=predictions,
            mode='lines',
            name='Anomaly Detected',
            line=dict(color='red', width=2),
            fill='tozeroy',
            fillcolor='rgba(255, 0, 0, 0.3)',
            hovertemplate='Reading: %{x}<br>Anomaly: %{y}<extra></extra>'
        ))
        
        # Add anomaly scores
        fig.add_trace(go.Scatter(
            x=x_values,
            y=scores,
            mode='lines',
            name='Anomaly Score',
            line=dict(color='orange', width=2, dash='dot'),
            yaxis='y2',
            hovertemplate='Reading: %{x}<br>Score: %{y:.3f}<extra></extra>'
        ))
        
        # Update layout
        fig.update_layout(
            title='Anomaly Detection Over Time',
            xaxis_title='Reading Index',
            yaxis_title='Anomaly Detected (0/1)',
            yaxis=dict(
                range=[-0.1, 1.1],
                tickvals=[0, 1],
                ticktext=['Normal', 'Anomaly']
            ),
            yaxis2=dict(
                title='Anomaly Score',
                overlaying='y',
                side='right',
                range=[0, 1]
            ),
            hovermode='x unified',
            template='plotly_white',
            height=450,
            showlegend=True,
            legend=dict(
                yanchor="top",
                y=0.99,
                xanchor="left",
                x=0.01
            )
        )
        
        return fig
        
    except Exception as e:
        print(f"Visualization error: {e}")
        import traceback
        traceback.print_exc()
        return None


def get_vehicle_info(vehicle_id):
    """Get basic info about a vehicle"""
    try:
        vehicle_id = int(vehicle_id)
        vehicle_data = test_df[test_df['vehicle_id'] == vehicle_id]
        
        if len(vehicle_data) == 0:
            return "Vehicle not found"
        
        num_readings = len(vehicle_data)
        has_anomalies = vehicle_data['anomaly'].sum() > 0
        num_anomalies = vehicle_data['anomaly'].sum()
        
        info = f"""
### Vehicle Information

**Vehicle ID:** {vehicle_id}  
**Total Readings:** {num_readings}  
**Known Anomalies:** {num_anomalies} ({num_anomalies/num_readings:.1%})  
**Status:** {'⚠️ Has anomalies' if has_anomalies else 'βœ… Healthy'}
"""
        return info
        
    except Exception as e:
        return f"Error: {str(e)}"


def list_vehicles_with_anomalies():
    """List vehicles that have anomalies"""
    vehicles_with_anomalies = []
    
    for vid in available_vehicles[:50]:  # Limit to first 50
        vehicle_data = test_df[test_df['vehicle_id'] == vid]
        if vehicle_data['anomaly'].sum() > 0:
            vehicles_with_anomalies.append({
                'Vehicle ID': vid,
                'Total Readings': len(vehicle_data),
                'Anomalies': int(vehicle_data['anomaly'].sum()),
                'Anomaly Rate': f"{vehicle_data['anomaly'].sum()/len(vehicle_data):.1%}"
            })
    
    if vehicles_with_anomalies:
        df = pd.DataFrame(vehicles_with_anomalies)
        return df
    else:
        return pd.DataFrame({'Message': ['No vehicles with anomalies found']})


# Create Gradio interface
with gr.Blocks(title="Vehicle Diagnostics Agent", theme=gr.themes.Soft()) as demo:
    gr.Markdown("""
    # πŸš— Vehicle Diagnostics Agent
    ### Multi-Agent AI System for Predictive Vehicle Diagnostics
    
    This system uses advanced AI agents to analyze vehicle sensor data, detect anomalies, 
    identify root causes, and provide actionable maintenance recommendations.
    
    **Powered by:** LSTM Neural Networks, LangGraph Multi-Agent Orchestration, PyTorch
    """)
    
    with gr.Tab("πŸ” Single Vehicle Diagnostic"):
        gr.Markdown("### Analyze a single vehicle")
        
        with gr.Row():
            with gr.Column(scale=1):
                vehicle_id_input = gr.Dropdown(
                    choices=available_vehicles,
                    label="Select Vehicle ID",
                    value=available_vehicles[0] if available_vehicles else None
                )
                n_readings_input = gr.Number(
                    label="Number of Recent Readings (optional)",
                    value=200,
                    precision=0
                )
                
                diagnose_btn = gr.Button("πŸ”¬ Run Diagnostic", variant="primary", size="lg")
                
                gr.Markdown("---")
                vehicle_info_output = gr.Markdown(label="Vehicle Info")
                
                # Auto-update vehicle info when selection changes
                vehicle_id_input.change(
                    fn=get_vehicle_info,
                    inputs=[vehicle_id_input],
                    outputs=[vehicle_info_output]
                )
        
            with gr.Column(scale=2):
                status_output = gr.Markdown(label="Diagnostic Status")
                summary_output = gr.Textbox(
                    label="πŸ“‹ Summary",
                    lines=5,
                    max_lines=10
                )
                
        with gr.Row():
            anomaly_plot = gr.Plot(label="Anomaly Detection Visualization")
        
        with gr.Row():
            full_report_output = gr.Textbox(
                label="πŸ“„ Full Diagnostic Report",
                lines=20,
                max_lines=30
            )
        
        diagnose_btn.click(
            fn=run_diagnostic,
            inputs=[vehicle_id_input, n_readings_input],
            outputs=[status_output, summary_output, full_report_output, anomaly_plot]
        )
    
    with gr.Tab("πŸ“Š Vehicle Overview"):
        gr.Markdown("### Vehicles with Known Anomalies")
        
        refresh_btn = gr.Button("πŸ”„ Refresh List", variant="secondary")
        vehicles_table = gr.Dataframe(
            value=list_vehicles_with_anomalies(),
            label="Vehicles Requiring Attention"
        )
        
        refresh_btn.click(
            fn=list_vehicles_with_anomalies,
            inputs=[],
            outputs=[vehicles_table]
        )
    
    with gr.Tab("ℹ️ About"):
        gr.Markdown("""
        ## About Vehicle Diagnostics Agent
        
        ### System Architecture
        
        This system employs a multi-agent architecture with the following components:
        
        1. **Data Ingestion Agent** - Loads and prepares vehicle sensor data
        2. **Anomaly Detection Agent** - Uses LSTM neural networks to detect unusual patterns (99.53% accuracy)
        3. **Root Cause Analysis Agent** - Identifies the underlying causes of anomalies
        4. **Maintenance Recommendation Agent** - Provides actionable maintenance steps with cost estimates
        5. **Report Generation Agent** - Creates comprehensive diagnostic reports
        
        ### Technology Stack
        
        - **ML Framework:** PyTorch (LSTM-based anomaly detection)
        - **Orchestration:** LangGraph for multi-agent coordination
        - **Backend:** FastAPI for REST API
        - **Frontend:** Gradio for interactive UI
        - **Data Processing:** Pandas, NumPy, Scikit-learn
        
        ### Features
        
        - βœ… Real-time anomaly detection with 99.53% validation accuracy
        - βœ… Root cause analysis with OBD-II fault code mapping
        - βœ… Maintenance cost estimation
        - βœ… Natural language summaries for non-technical users
        - βœ… Interactive visualizations
        - βœ… Batch processing support
        
        ### Dataset
        
        The system analyzes synthetic vehicle sensor data including:
        - Engine temperature, RPM, speed
        - Battery voltage and health
        - Oil and fuel pressure
        - Tire pressure (all four wheels)
        - Vibration levels
        - Coolant temperature
        - And more...
        
        ### Model Performance
        
        - **Validation Accuracy:** 99.53%
        - **Training Loss:** 0.0003 (final epoch)
        - **Validation Loss:** 0.0409 (best)
        - **Dataset:** 50,000 records from 100 vehicles
        
        ---
        
        **Version:** 1.0.0  
        **GitHub:** [VehicleDiagnosticsAgent](https://github.com/saadmann18/VehicleDiagnosticsAgent)  
        **License:** MIT
        """)

# Launch the app
if __name__ == "__main__":
    demo.launch()