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import gradio as gr
import pandas as pd
import numpy as np
import plotly.graph_objects as go
from datetime import datetime, timedelta
import yfinance as yf
from statsmodels.tsa.arima.model import ARIMA
from prophet import Prophet
import warnings
warnings.filterwarnings('ignore')

# NO PRE-TRAINED MODELS - Train on demand with user's data
# This avoids the 50GB storage limit issue

def fetch_stock_data(ticker, days=730):
    """Fetch stock data from Yahoo Finance"""
    try:
        end_date = datetime.now()
        start_date = end_date - timedelta(days=days)
        df = yf.download(ticker, start=start_date, end=end_date, progress=False)
        if df.empty:
            return None, f"No data found for ticker: {ticker}"
        df = df[['Close']].copy()
        df.columns = ['Price']
        df = df.dropna()
        return df, None
    except Exception as e:
        return None, str(e)

def make_arima_forecast(data, days):
    """Train ARIMA and make forecast"""
    try:
        # Train ARIMA model on-the-fly
        model = ARIMA(data['Price'], order=(1, 1, 1))
        fitted = model.fit()
        forecast = fitted.forecast(steps=days)
        return forecast.values
    except Exception as e:
        print(f"ARIMA Error: {e}")
        return None

def make_prophet_forecast(data, days):
    """Train Prophet and make forecast"""
    try:
        # Prepare data for Prophet
        prophet_data = pd.DataFrame({
            'ds': data.index,
            'y': data['Price'].values
        })
        
        # Create and train model on-the-fly
        model = Prophet(
            daily_seasonality=False,
            weekly_seasonality=True,
            yearly_seasonality=True,
            changepoint_prior_scale=0.05,
            seasonality_mode='multiplicative'
        )
        model.fit(prophet_data)
        
        # Make forecast
        future = model.make_future_dataframe(periods=days)
        forecast = model.predict(future)
        return forecast['yhat'].tail(days).values
    except Exception as e:
        print(f"Prophet Error: {e}")
        return None

def make_simple_ml_forecast(data, days):
    """Simple exponential smoothing forecast (lightweight alternative to LSTM)"""
    try:
        from statsmodels.tsa.holtwinters import ExponentialSmoothing
        
        # Train exponential smoothing model
        model = ExponentialSmoothing(
            data['Price'], 
            seasonal_periods=30,
            trend='add',
            seasonal='add'
        )
        fitted = model.fit()
        forecast = fitted.forecast(steps=days)
        return forecast.values
    except Exception as e:
        print(f"ML Forecast Error: {e}")
        return None

def calculate_moving_average_forecast(data, days, window=20):
    """Simple moving average forecast"""
    try:
        ma = data['Price'].rolling(window=window).mean().iloc[-1]
        trend = (data['Price'].iloc[-1] - data['Price'].iloc[-window]) / window
        forecast = [ma + trend * i for i in range(1, days + 1)]
        return np.array(forecast)
    except Exception as e:
        print(f"MA Error: {e}")
        return None

def create_forecast_plot(historical_data, forecasts, ticker, model_names):
    """Create interactive plotly chart"""
    fig = go.Figure()
    
    # Show last 90 days of historical data for clarity
    recent_data = historical_data.tail(90)
    
    # Historical data
    fig.add_trace(go.Scatter(
        x=recent_data.index,
        y=recent_data['Price'],
        mode='lines',
        name='Historical Price',
        line=dict(color='blue', width=2)
    ))
    
    # Generate future dates
    last_date = historical_data.index[-1]
    future_dates = pd.date_range(start=last_date + timedelta(days=1), 
                                  periods=len(forecasts[0]))
    
    # Plot forecasts
    colors = ['red', 'purple', 'orange', 'green']
    for i, (forecast, name) in enumerate(zip(forecasts, model_names)):
        if forecast is not None:
            fig.add_trace(go.Scatter(
                x=future_dates,
                y=forecast,
                mode='lines+markers',
                name=f'{name} Forecast',
                line=dict(color=colors[i], width=2, dash='dash'),
                marker=dict(size=4)
            ))
    
    # Add vertical line at prediction start
    fig.add_vline(
        x=last_date, 
        line_dash="dash", 
        line_color="gray",
        annotation_text="Forecast Start"
    )
    
    fig.update_layout(
        title=f'{ticker} Stock Price Forecast',
        xaxis_title='Date',
        yaxis_title='Price ($)',
        hovermode='x unified',
        template='plotly_white',
        height=600,
        showlegend=True,
        legend=dict(
            yanchor="top",
            y=0.99,
            xanchor="left",
            x=0.01,
            bgcolor="rgba(255, 255, 255, 0.8)"
        )
    )
    
    return fig

def predict_stock(ticker, forecast_days, model_choice):
    """Main prediction function"""
    # Validate inputs
    if not ticker:
        return None, "โŒ Please enter a stock ticker symbol", None
    
    ticker = ticker.upper().strip()
    
    # Show loading message
    status_msg = f"๐Ÿ”„ Fetching data for {ticker}..."
    
    # Fetch data (2 years for better training)
    data, error = fetch_stock_data(ticker, days=730)
    if error:
        return None, f"โŒ Error: {error}", None
    
    if len(data) < 60:
        return None, f"โŒ Insufficient data for {ticker}. Need at least 60 days of history.", None
    
    status_msg += f"\nโœ… Found {len(data)} days of data\n๐Ÿ”„ Training models..."
    
    # Make forecasts based on model choice
    forecasts = []
    model_names = []
    
    if model_choice in ["All Models", "ARIMA"]:
        arima_forecast = make_arima_forecast(data, forecast_days)
        if arima_forecast is not None:
            forecasts.append(arima_forecast)
            model_names.append("ARIMA")
    
    if model_choice in ["All Models", "Prophet"]:
        prophet_forecast = make_prophet_forecast(data, forecast_days)
        if prophet_forecast is not None:
            forecasts.append(prophet_forecast)
            model_names.append("Prophet")
    
    if model_choice in ["All Models", "Exp. Smoothing"]:
        ml_forecast = make_simple_ml_forecast(data, forecast_days)
        if ml_forecast is not None:
            forecasts.append(ml_forecast)
            model_names.append("Exp. Smoothing")
    
    if model_choice in ["All Models", "Moving Average"]:
        ma_forecast = calculate_moving_average_forecast(data, forecast_days)
        if ma_forecast is not None:
            forecasts.append(ma_forecast)
            model_names.append("Moving Average")
    
    if not forecasts:
        return None, "โŒ Failed to generate forecasts. Please try again.", None
    
    # Create plot
    fig = create_forecast_plot(data, forecasts, ticker, model_names)
    
    # Create forecast table
    future_dates = pd.date_range(
        start=data.index[-1] + timedelta(days=1), 
        periods=forecast_days
    )
    
    forecast_df = pd.DataFrame({'Date': future_dates.strftime('%Y-%m-%d')})
    for forecast, name in zip(forecasts, model_names):
        forecast_df[f'{name} ($)'] = np.round(forecast, 2)
    
    # Calculate statistics
    current_price = data['Price'].iloc[-1]
    avg_forecast = np.mean([f[-1] for f in forecasts])
    avg_change = ((avg_forecast - current_price) / current_price) * 100
    
    # Summary statistics
    summary = f"""
## ๐Ÿ“Š Forecast Summary for **{ticker}**

### Current Information
- **Current Price**: ${current_price:.2f}
- **Data Points**: {len(data)} days
- **Last Updated**: {data.index[-1].strftime('%Y-%m-%d')}

### Forecast Details
- **Forecast Period**: {forecast_days} days
- **Models Used**: {', '.join(model_names)}
- **End Date**: {future_dates[-1].strftime('%Y-%m-%d')}

### Predicted Prices (Day {forecast_days})
"""
    
    for forecast, name in zip(forecasts, model_names):
        final_price = forecast[-1]
        change = ((final_price - current_price) / current_price) * 100
        emoji = "๐Ÿ“ˆ" if change > 0 else "๐Ÿ“‰"
        summary += f"\n{emoji} **{name}**: ${final_price:.2f} ({change:+.2f}%)"
    
    summary += f"""

### Average Prediction
- **Average Price**: ${avg_forecast:.2f}
- **Expected Change**: {avg_change:+.2f}%

---
โš ๏ธ **Risk Warning**: Past performance does not guarantee future results. Use for research only.
"""
    
    return fig, summary, forecast_df

# Create Gradio Interface
with gr.Blocks(title="Stock Price Forecasting", theme=gr.themes.Soft()) as demo:
    gr.Markdown(
        """
        # ๐Ÿ“ˆ AI Stock Price Forecasting
        
        ### Predict future stock prices using multiple time-series models
        
        This app trains models **in real-time** using the latest stock data. No pre-trained models needed!
        
        **โœจ Features:**
        - Real-time data from Yahoo Finance
        - Multiple forecasting algorithms
        - Interactive visualizations
        - No storage limits - models train on demand
        
        ---
        """
    )
    
    with gr.Row():
        with gr.Column(scale=1):
            gr.Markdown("### ๐ŸŽฏ Input Parameters")
            
            ticker_input = gr.Textbox(
                label="๐Ÿ“Š Stock Ticker Symbol",
                placeholder="e.g., AAPL, GOOGL, TSLA, MSFT",
                value="AAPL",
                info="Enter any valid stock ticker"
            )
            
            forecast_days = gr.Slider(
                minimum=7,
                maximum=90,
                value=30,
                step=1,
                label="๐Ÿ“… Forecast Period (Days)",
                info="Number of days to forecast"
            )
            
            model_choice = gr.Radio(
                choices=["All Models", "ARIMA", "Prophet", "Exp. Smoothing", "Moving Average"],
                value="All Models",
                label="๐Ÿค– Select Model(s)",
                info="Choose which forecasting model to use"
            )
            
            predict_btn = gr.Button(
                "๐Ÿ”ฎ Generate Forecast", 
                variant="primary", 
                size="lg",
                scale=1
            )
            
            gr.Markdown(
                """
                ### ๐Ÿ’ก Quick Tips
                - Use 30 days for short-term
                - Use 60-90 days for trends
                - "All Models" shows comparison
                """
            )
        
        with gr.Column(scale=2):
            output_plot = gr.Plot(label="๐Ÿ“ˆ Forecast Visualization")
    
    with gr.Row():
        with gr.Column():
            output_summary = gr.Markdown(label="๐Ÿ“‹ Analysis Summary")
    
    with gr.Row():
        output_table = gr.Dataframe(
            label="๐Ÿ“Š Detailed Forecast Table",
            wrap=True,
            interactive=False,
            height=400
        )
    
    # Examples
    gr.Markdown("### ๐ŸŽฏ Try These Examples")
    gr.Examples(
        examples=[
            ["AAPL", 30, "All Models"],
            ["GOOGL", 14, "Prophet"],
            ["TSLA", 60, "ARIMA"],
            ["MSFT", 45, "Exp. Smoothing"],
            ["NVDA", 30, "All Models"],
        ],
        inputs=[ticker_input, forecast_days, model_choice],
        label="Popular Stocks"
    )
    
    # Connect the button to the function
    predict_btn.click(
        fn=predict_stock,
        inputs=[ticker_input, forecast_days, model_choice],
        outputs=[output_plot, output_summary, output_table]
    )
    
    gr.Markdown(
        """
        ---
        ## ๐Ÿ“š About the Models
        
        | Model | Best For | Speed | Accuracy |
        |-------|----------|-------|----------|
        | **ARIMA** | Short-term, stationary data | โšกโšกโšก Fast | โญโญโญ |
        | **Prophet** | Seasonality, trends | โšกโšก Medium | โญโญโญโญ |
        | **Exp. Smoothing** | Smooth trends | โšกโšกโšก Fast | โญโญโญ |
        | **Moving Average** | Simple baseline | โšกโšกโšกโšก Very Fast | โญโญ |
        
        ## โš ๏ธ Important Disclaimer
        
        **This tool is for educational and research purposes only.**
        
        - Stock predictions are inherently uncertain
        - Past performance โ‰  future results
        - Always do your own research
        - Consult financial advisors before investing
        - Never invest more than you can afford to lose
        
        ## ๐Ÿ”’ Privacy & Data
        
        - No data is stored permanently
        - Models train fresh for each prediction
        - Stock data fetched from Yahoo Finance API
        - No personal information collected
        
        ---
        
        **Made with โค๏ธ using Gradio & Python**
        """
    )

# Launch the app
if __name__ == "__main__":
    demo.launch(
        share=False,
        show_error=True,
        server_name="0.0.0.0",
        server_port=7860
    )