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import streamlit as st
import pandas as pd
import numpy as np
import plotly.express as px
import plotly.graph_objects as go
from datetime import datetime, timedelta
from joblib import load
import requests
import pytz
import time


# Constants
SUPABASE_URL = "https://ubbyirdtynaerjodadal.supabase.co"
SUPABASE_API_KEY = "eyJhbGciOiJIUzI1NiIsInR5cCI6IkpXVCJ9.eyJpc3MiOiJzdXBhYmFzZSIsInJlZiI6InViYnlpcmR0eW5hZXJqb2RhZGFsIiwicm9sZSI6ImFub24iLCJpYXQiOjE3NTI0OTIyNjcsImV4cCI6MjA2ODA2ODI2N30.iTHJ18BZED_gE5VyZrBp7YWiy6NNzsA1YdqeazFtxZI"
TABLE = "smart_meter_readings_1year"
TIMEZONE = pytz.timezone("Europe/London")
now = pd.Timestamp.now(TIMEZONE)

def auto_refresh(interval_seconds=60):
    time.sleep(interval_seconds)
    st.rerun()

st.set_page_config(page_title="Electric Grid Dashboard", layout="wide")

@st.cache_data(ttl=120)
def load_data():
    url = f"{SUPABASE_URL}/rest/v1/{TABLE}?timestamp=lt.{datetime.now().isoformat()}"
    headers = {
        "apikey": SUPABASE_API_KEY,
        "Authorization": f"Bearer {SUPABASE_API_KEY}"
    }
    res = requests.get(url, headers=headers)
    if res.status_code != 200:
        st.error(f"Failed to fetch data: {res.status_code}")
        st.stop()
    df = pd.DataFrame(res.json())
    df['datetime'] = pd.to_datetime(df['timestamp'], utc=True)
    df['hour_of_day'] = df['datetime'].dt.hour
    df = df.set_index('datetime')
    df.sort_index(inplace=True)
    df['date'] = df.index.date
    df['week'] = df.index.isocalendar().week
    df['day_of_week'] = df.index.day_name()
    df['hour_sin'] = np.sin(2 * np.pi * df['hour_of_day'] / 24)
    df['hour_cos'] = np.cos(2 * np.pi * df['hour_of_day'] / 24)
    df['lag_30mins'] = df['power_consumption_kwh'].shift(1)
    df['lag_1hr'] = df['power_consumption_kwh'].shift(2)
    df['roll_mean_1hr'] = df['power_consumption_kwh'].shift(1).rolling(2).mean()
    df['roll_mean_2hr'] = df['power_consumption_kwh'].shift(1).rolling(4).mean()
    df[['lag_30mins', 'lag_1hr', 'roll_mean_1hr', 'roll_mean_2hr']] = df[[
        'lag_30mins', 'lag_1hr', 'roll_mean_1hr', 'roll_mean_2hr'
    ]].ffill().fillna(0)
        

    df = df.drop(columns=['date', 'hour_of_day'])
    df = pd.get_dummies(df, columns=['region', 'property_type', 'day_of_week'], drop_first=False)
    df = df.astype({col: 'int' for col in df.select_dtypes('bool').columns})
    return df

def main():
    # Load data and model
    data = load_data()
    model = load('rf_model.pkl')
    
    # Generate forecasts
    features = data.drop(columns=['power_consumption_kwh', 'timestamp'], errors='ignore')
    data['forecast'] = model.predict(features[model.feature_names_in_])
    
    # Calculate performance metrics
    latest_data = data.loc[data.index > pd.Timestamp.now(TIMEZONE) - pd.Timedelta('1D')]
    rmse = np.sqrt((latest_data['power_consumption_kwh'] - latest_data['forecast'])**2).mean()
    mae = (latest_data['power_consumption_kwh'] - latest_data['forecast']).abs().mean()
    current_error = (data['power_consumption_kwh'].iloc[-1] - data['forecast'].iloc[-1]) / data['power_consumption_kwh'].iloc[-1] * 100
    
    # Title and description
    st.title("๐ŸŒก๏ธ Real-Time Energy  Dashboard")
    st.markdown("Monitoring power consumption, environmental factors, and forecast accuracy across regions")
    
    # Sidebar filters
    st.sidebar.header("Filter Options")
    # Build readable region and property_type filters
    region_columns = list(data.filter(like='region_').columns)
    region_labels = ['All'] + [col.replace('region_', '') for col in region_columns]
    region = st.sidebar.selectbox("Region", region_labels)

    property_columns = list(data.filter(like='property_type_').columns)
    property_labels = ['All'] + [col.replace('property_type_', '') for col in property_columns]
    property_selection = st.sidebar.selectbox("Property Type", property_labels)

    time_range = st.sidebar.select_slider("Time Range", 
                                      options=['1h', '6h', '12h', '1D', '1W'],
                                      value='12h')
    filtered_data = data.copy()

    # Apply region filter
    if region != 'All':
        region_col = f"region_{region}"
        if region_col in filtered_data.columns:
            filtered_data = filtered_data[filtered_data[region_col] == 1]

    # Apply property_type filter
    if property_selection != 'All':
        property_col = f"property_type_{property_selection}"
        if property_col in filtered_data.columns:
            filtered_data = filtered_data[filtered_data[property_col] == 1]

    # Apply time filter
    filtered_data = filtered_data.loc[filtered_data.index > now - pd.Timedelta(time_range)]
    #filtered_data = filtered_data.loc[filtered_data.index > pd.Timestamp.now(tz='UTC') - pd.Timedelta(time_range)]
    
    # Current metrics
    current = filtered_data.iloc[-1]
    # show metrics here
    st.subheader("๐Ÿ“Š Current Energy Status")
    col1, col2, col3, col4 = st.columns(4)
    col1.metric("Power Consumption", f"{current['power_consumption_kwh']:.2f} kWh", 
               delta=f"{current_error:.1f}% error", delta_color="inverse")
    col2.metric("Voltage", f"{current['voltage']:.1f} V")
    col3.metric("Temperature", f"{current['temperature_c']:.1f}ยฐC")
    col4.metric("Humidity", f"{current['humidity_pct']:.1f}%")
    
        # --- 2-Hour Forecast ---
    st.subheader("๐Ÿ”ฎ Next 2 Hours Forecast")

    latest_row = data.iloc[-1:].copy()
    forecast_steps = []
    timestamps = []

    for i in range(1, 5):  # 4 steps = next 2 hours (30-min intervals)
        future_time = latest_row.index[0] + timedelta(minutes=30 * i)
        timestamps.append(future_time)

        hour = future_time.hour
        hour_sin = np.sin(2 * np.pi * hour / 24)
        hour_cos = np.cos(2 * np.pi * hour / 24)

        new_row = latest_row.copy()
        new_row.index = [future_time]
        new_row['hour_sin'] = hour_sin
        new_row['hour_cos'] = hour_cos

        # Lags and rolling values
        if i == 1:
            lag_30 = latest_row['power_consumption_kwh'].values[0]
            lag_1hr = latest_row['lag_30mins'].values[0]
            roll_1hr = np.mean([lag_30, lag_1hr])
            roll_2hr = np.mean([lag_30, lag_1hr, latest_row['lag_1hr'].values[0], latest_row['roll_mean_1hr'].values[0]])
        else:
            lag_30 = forecast_steps[-1]
            lag_1hr = forecast_steps[-2] if i > 2 else latest_row['power_consumption_kwh'].values[0]
            roll_1hr = np.mean([lag_30, lag_1hr])
            roll_2hr = np.mean(forecast_steps[-3:] + [lag_1hr]) if i > 3 else roll_1hr

        new_row['lag_30mins'] = lag_30
        new_row['lag_1hr'] = lag_1hr
        new_row['roll_mean_1hr'] = roll_1hr
        new_row['roll_mean_2hr'] = roll_2hr

        X_future = new_row[model.feature_names_in_]
        y_pred = model.predict(X_future)[0]
        forecast_steps.append(y_pred)

    # Format forecast results
    forecast_df = pd.DataFrame({
        "datetime": timestamps,
        "forecast_kwh": forecast_steps
    }).set_index("datetime")

    # --- Display 30 min / 1 hr / 2 hr Forecast ---
    col1, col2, col3 = st.columns(3)
    col1.metric("In 30 mins", f"{forecast_steps[0]:.2f} kWh", timestamps[0].strftime('%H:%M'))
    col2.metric("In 1 hour", f"{forecast_steps[1]:.2f} kWh", timestamps[1].strftime('%H:%M'))
    col3.metric("In 2 hours", f"{forecast_steps[3]:.2f} kWh", timestamps[3].strftime('%H:%M'))

    # Plot forecast
    fig_forecast = go.Figure()
    fig_forecast.add_trace(go.Scatter(x=forecast_df.index, y=forecast_df['forecast_kwh'],
                                      mode='lines+markers', name="Forecast"))
    fig_forecast.update_layout(title="2-Hour Ahead Forecast", xaxis_title="Time", yaxis_title="kWh")
    st.plotly_chart(fig_forecast, use_container_width=True)

    # Performance metrics
    # Model Performance: Current and 12-Hour Highs/Lows ---
    st.subheader("๐Ÿ“ Model Performance (Last 12 Hours, 30-Min Intervals)")

    # Step 1: Prepare error columns
    perf_df = data[['power_consumption_kwh', 'forecast']].copy()
    perf_df['error'] = perf_df['power_consumption_kwh'] - perf_df['forecast']
    perf_df['abs_error'] = perf_df['error'].abs()
    perf_df['squared_error'] = perf_df['error']**2

    # Step 2: Resample into 30-min intervals
    interval_perf = perf_df.resample('30min').agg({
        'squared_error': 'mean',
        'abs_error': 'mean'
    }).dropna()

    # Limit to last 12 hours
    end_time = interval_perf.index.max()
    start_time = end_time -timedelta(hours=12)
    last_12h_perf = interval_perf.loc[start_time:end_time].copy()
    last_12h_perf['RMSE'] = np.sqrt(last_12h_perf['squared_error'])
    last_12h_perf['MAE'] = last_12h_perf['abs_error']
    last_12h_perf = last_12h_perf[['RMSE', 'MAE']]

    # Step 3: Current metrics
    current_rmse = last_12h_perf['RMSE'].iloc[-1]
    current_mae = last_12h_perf['MAE'].iloc[-1]
    current_time = last_12h_perf.index[-1].strftime('%Y-%m-%d %H:%M')

    # Step 4: Highs and lows
    lowest_rmse = last_12h_perf['RMSE'].min()
    lowest_rmse_time = last_12h_perf['RMSE'].idxmin().strftime('%Y-%m-%d %H:%M')

    highest_rmse = last_12h_perf['RMSE'].max()
    highest_rmse_time = last_12h_perf['RMSE'].idxmax().strftime('%Y-%m-%d %H:%M')

    lowest_mae = last_12h_perf['MAE'].min()
    lowest_mae_time = last_12h_perf['MAE'].idxmin().strftime('%Y-%m-%d %H:%M')

    highest_mae = last_12h_perf['MAE'].max()
    highest_mae_time = last_12h_perf['MAE'].idxmax().strftime('%Y-%m-%d %H:%M')

    # Step 5: Display
    col1, col2 = st.columns(2)
    col1.metric("Current RMSE", f"{current_rmse:.3f} kWh", current_time)
    col2.metric("Current MAE", f"{current_mae:.3f} kWh", current_time)

    col3, col4, col5, col6 = st.columns(4)
    col3.metric("๐Ÿ”ฝ Lowest RMSE (12h)", f"{lowest_rmse:.3f} kWh", lowest_rmse_time)
    col4.metric("๐Ÿ”ผ Highest RMSE (12h)", f"{highest_rmse:.3f} kWh", highest_rmse_time)
    col5.metric("๐Ÿ”ฝ Lowest MAE (12h)", f"{lowest_mae:.3f} kWh", lowest_mae_time)
    col6.metric("๐Ÿ”ผ Highest MAE (12h)", f"{highest_mae:.3f} kWh", highest_mae_time)

    
    st.subheader("๐Ÿ“ˆ RMSE and MAE over the Last 12 Hours")
    fig_errors = px.line(
    last_12h_perf,
    x=last_12h_perf.index,
    y=['RMSE', 'MAE'],
    labels={'value': 'Error (kWh)', 'variable': 'Metric', 'datetime': 'Time'},
    title="Model Error Metrics (30-Min Intervals)"
    )
    fig_errors.update_layout(
    xaxis_title="Time",
    yaxis_title="kWh",
    template="plotly_white",
    legend_title="Metric",
    height=350
    )
    st.plotly_chart(fig_errors, use_container_width=True)

    # Main content tabs
    tab1, tab2, tab3 = st.tabs(["Consumption Trends", "Regional Analysis", "Environmental Factors"])
    
    with tab1:
        fig1 = px.line(filtered_data, x=filtered_data.index, 
                      y=['power_consumption_kwh', 'forecast'],
                      title="Power Consumption vs Forecast")
        st.plotly_chart(fig1, use_container_width=True)
        
        # Hourly pattern
        numeric_cols = filtered_data.select_dtypes(include=[np.number]).columns
        hourly = filtered_data[numeric_cols].groupby(filtered_data.index.hour).mean()
        fig2 = px.bar(hourly, x=hourly.index, y='power_consumption_kwh',
                      title="Average Hourly Consumption Pattern")
        st.plotly_chart(fig2, use_container_width=True)
    
    with tab2:
        if 'region' in data.columns:
            region_breakdown = data.groupby('region')['power_consumption_kwh'].sum().reset_index()
            fig3 = px.pie(region_breakdown, names='region', values='power_consumption_kwh',
                         title="Regional Consumption Share")
            st.plotly_chart(fig3, use_container_width=True)
        
        # Regional comparison
        if len(data.filter(like='region_').columns) > 0:
            region_cols = data.filter(like='region_').columns
            region_avg = data[region_cols].mean().reset_index()
            region_avg.columns = ['Region', 'Avg Consumption']
            fig4 = px.bar(region_avg, x='Region', y='Avg Consumption',
                         title="Average Consumption by Region")
            st.plotly_chart(fig4, use_container_width=True)
    
    with tab3:
        fig5 = px.line(filtered_data, x=filtered_data.index,
                      y=['temperature_c', 'humidity_pct'],
                      title="Temperature & Humidity Trends")
        st.plotly_chart(fig5, use_container_width=True)
        
        fig6 = px.scatter(filtered_data, x='temperature_c', y='power_consumption_kwh',
                         color='voltage', size='humidity_pct',
                         title="Consumption vs Temperature (Colored by Voltage)")
        st.plotly_chart(fig6, use_container_width=True)
    

    # Footer
    st.markdown("---")
    st.markdown('Developed by Opeyemi Abodunrin')
    st.markdown(f"Last updated: {datetime.now(TIMEZONE).strftime('%Y-%m-%d %H:%M:%S')}")
    st.markdown("ยฉ 2025 Electric Forecast (Demonstration Purpose)")

if __name__ == "__main__":
    main()
    auto_refresh(60)