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# app.py
# This is the file Hugging Face looks for automatically.
# It runs your Gradio interface and exposes the API.

import gradio as gr
import numpy as np
import pandas as pd
import joblib
import os

# ── Load all models (Hugging Face runs this once on startup) ──────────────────
print("Loading models...")

reg_model  = joblib.load("model1_regression.pkl")
cls_model  = joblib.load("model1_classifier.pkl")
m1_features = joblib.load("model1_features.pkl")

forecast_6h  = joblib.load("model2_forecast_6h.pkl")
forecast_12h = joblib.load("model2_forecast_12h.pkl")
m2_features  = joblib.load("model2_features.pkl")

print("All models loaded.")

STATUS_NAMES  = {0: "🟒 GREEN β€” Empty",  1: "🟑 YELLOW β€” Filling",  2: "πŸ”΄ RED β€” Full"}
STATUS_ACTION = {
    0: "No action needed",
    1: "Monitor β€” schedule collection soon",
    2: "DISPATCH TRUCK IMMEDIATELY"
}

# ── Shared feature builder ────────────────────────────────────────────────────
def build_row(ultrasonic, weight, fill_now, hour_of_day, day_of_week,
              bin_type, location, zone,
              fill_rate_1h=0, fill_rate_3h=0, fill_rate_6h=0,
              rolling_fill_3h=None, rolling_fill_6h=None,
              rolling_fill_12h=None, rolling_fill_24h=None,
              hours_since_collection=24, week_number=0):

    rolling_fill_3h  = rolling_fill_3h  or fill_now
    rolling_fill_6h  = rolling_fill_6h  or fill_now
    rolling_fill_12h = rolling_fill_12h or fill_now
    rolling_fill_24h = rolling_fill_24h or fill_now

    hours_to_full = max(0, min(72,
        (80 - fill_now) / fill_rate_1h if fill_rate_1h > 0.01 else 72
    ))
    fill_acceleration = fill_rate_1h - (fill_rate_3h / 3 if fill_rate_3h else 0)

    return {
        "ultrasonic":          ultrasonic,
        "weight":              weight,
        "sensor_ratio":        weight / (ultrasonic + 1e-5),
        "fill_percent":        fill_now,
        "fill_rate_1h":        fill_rate_1h,
        "fill_rate_3h":        fill_rate_3h,
        "fill_rate_6h":        fill_rate_6h,
        "fill_rate_12h":       0,
        "fill_acceleration":   fill_acceleration,
        "rolling_fill_3h":     rolling_fill_3h,
        "rolling_fill_6h":     rolling_fill_6h,
        "rolling_fill_12h":    rolling_fill_12h,
        "rolling_fill_24h":    rolling_fill_24h,
        "rolling_weight_3h":   weight,
        "hour_of_day":         hour_of_day,
        "day_of_week":         day_of_week,
        "week_number":         week_number,
        "is_weekend":          int(day_of_week >= 5),
        "is_rush_hour":        int(hour_of_day in [7,8,9,12,13,17,18,19,20]),
        "is_night":            int(hour_of_day in [0,1,2,3,4,5]),
        "sin_hour":            np.sin(2 * np.pi * hour_of_day / 24),
        "cos_hour":            np.cos(2 * np.pi * hour_of_day / 24),
        "sin_day":             np.sin(2 * np.pi * day_of_week / 7),
        "cos_day":             np.cos(2 * np.pi * day_of_week / 7),
        "hours_since_collection": hours_since_collection,
        "hours_to_full":       hours_to_full,
        "bin_type_residential":int(bin_type == "residential"),
        "bin_type_commercial": int(bin_type == "commercial"),
        "location_urban":      int(location == "urban"),
        "location_suburban":   int(location == "suburban"),
        "location_mall":       int(location == "mall"),
        "zone_north":          int(zone == "north"),
        "zone_south":          int(zone == "south"),
        "zone_east":           int(zone == "east"),
        "zone_west":           int(zone == "west"),
        "zone_central":        int(zone == "central"),
    }


def safe_predict(model, features, row_dict):
    df = pd.DataFrame([row_dict])
    for col in features:
        if col not in df.columns:
            df[col] = 0
    return model.predict(df[features])


# ── PREDICTION FUNCTION 1: Current fill status ────────────────────────────────
def predict_current_status(
    ultrasonic, weight, fill_now,
    hour_of_day, day_of_week,
    bin_type, location, zone,
    fill_rate_1h, hours_since_collection
):
    try:
        row = build_row(
            ultrasonic=ultrasonic, weight=weight, fill_now=fill_now,
            hour_of_day=int(hour_of_day), day_of_week=int(day_of_week),
            bin_type=bin_type, location=location, zone=zone,
            fill_rate_1h=fill_rate_1h,
            hours_since_collection=int(hours_since_collection)
        )

        fill_pred  = float(np.clip(safe_predict(reg_model, m1_features, row)[0], 0, 100))
        status_idx = int(safe_predict(cls_model, m1_features, row)[0])
        proba      = cls_model.predict_proba(
            pd.DataFrame([row])[[f for f in m1_features if f in row or True]]
        )[0]

        # Fix proba dataframe
        df_row = pd.DataFrame([row])
        for col in m1_features:
            if col not in df_row.columns:
                df_row[col] = 0
        proba = cls_model.predict_proba(df_row[m1_features])[0]
        confidence = float(proba.max()) * 100

        result = f"""
## πŸ“Š Current Bin Status

| Metric | Value |
|--------|-------|
| **Predicted Fill** | {fill_pred:.1f}% |
| **Status** | {STATUS_NAMES[status_idx]} |
| **Action** | {STATUS_ACTION[status_idx]} |
| **Confidence** | {confidence:.1f}% |

### Probability Breakdown
- 🟒 GREEN (Empty):   {proba[0]*100:.1f}%
- 🟑 YELLOW (Filling): {proba[1]*100:.1f}%
- πŸ”΄ RED (Full):      {proba[2]*100:.1f}%

{"⚠️ **DISPATCH TRUCK NOW**" if status_idx == 2 else "βœ… No immediate action required"}
"""
        return result

    except Exception as e:
        return f"❌ Error: {str(e)}"


# ── PREDICTION FUNCTION 2: Flow forecast ─────────────────────────────────────
def predict_forecast(
    ultrasonic, weight, fill_now,
    hour_of_day, day_of_week,
    bin_type, location, zone,
    fill_rate_1h, fill_rate_3h
):
    try:
        row = build_row(
            ultrasonic=ultrasonic, weight=weight, fill_now=fill_now,
            hour_of_day=int(hour_of_day), day_of_week=int(day_of_week),
            bin_type=bin_type, location=location, zone=zone,
            fill_rate_1h=fill_rate_1h, fill_rate_3h=fill_rate_3h
        )

        df_row = pd.DataFrame([row])
        for col in m2_features:
            if col not in df_row.columns:
                df_row[col] = 0
        df_row = df_row[m2_features]

        p6h  = float(np.clip(forecast_6h.predict(df_row)[0],  0, 100))
        p12h = float(np.clip(forecast_12h.predict(df_row)[0], 0, 100))

        # Urgency
        if p6h >= 80:
            urgency = "πŸ”΄ HIGH β€” Collect within 6 hours"
        elif p12h >= 80:
            urgency = "🟑 MEDIUM β€” Collect within 12 hours"
        else:
            urgency = "🟒 LOW β€” No collection needed soon"

        bar_now  = "β–ˆ" * int(fill_now  / 5) + "β–‘" * (20 - int(fill_now  / 5))
        bar_6h   = "β–ˆ" * int(p6h  / 5) + "β–‘" * (20 - int(p6h  / 5))
        bar_12h  = "β–ˆ" * int(p12h / 5) + "β–‘" * (20 - int(p12h / 5))

        result = f"""
## πŸ“ˆ Fill Level Forecast

| Time | Predicted Fill | Bar |
|------|---------------|-----|
| **Now** | {fill_now:.1f}% | `{bar_now}` |
| **+6 hours** | {p6h:.1f}% | `{bar_6h}` |
| **+12 hours** | {p12h:.1f}% | `{bar_12h}` |

### πŸš› Collection Urgency
**{urgency}**

### For Route Optimization
```
bin_fill_now:    {fill_now:.1f}%
bin_fill_6h:     {p6h:.1f}%
bin_fill_12h:    {p12h:.1f}%
dispatch_urgent: {str(p6h >= 80).lower()}
```
"""
        return result

    except Exception as e:
        return f"❌ Error: {str(e)}"


# ── BUILD GRADIO UI ────────────────────────────────────────────────────────────
with gr.Blocks(title="Smart Bin AI") as demo:

    gr.Markdown("""
    # πŸ—‘οΈ Smart Bin AI β€” Waste Management Intelligence
    **Model 1:** Predict current fill level (GREEN / YELLOW / RED)
    **Model 2:** Forecast fill level 6h and 12h into the future

    > Built with Random Forest + Gradient Boosting on 72,000 sensor readings
    """)

    # ── TAB 1: Current Status ─────────────────────────────────────────────────
    with gr.Tab("πŸ“‘ Current Fill Status (Model 1)"):
        gr.Markdown("### Enter live sensor readings to get current bin status")

        with gr.Row():
            with gr.Column():
                ultra1   = gr.Slider(4,  65,  value=30,  label="Ultrasonic Distance (cm) β€” lower = more full")
                weight1  = gr.Slider(0,  36,  value=15,  label="Weight (kg)")
                fill1    = gr.Slider(0,  100, value=50,  label="Current Fill % (from previous reading)")
                rate1    = gr.Slider(0,  10,  value=1.0, label="Fill Rate per hour (%/hr)", step=0.1)
                hours_sc = gr.Slider(0,  72,  value=24,  label="Hours Since Last Collection")

            with gr.Column():
                hour1    = gr.Slider(0,  23,  value=12,  label="Hour of Day (0–23)", step=1)
                day1     = gr.Slider(0,  6,   value=1,   label="Day of Week (0=Mon, 6=Sun)", step=1)
                btype1   = gr.Dropdown(["residential", "commercial"], value="commercial", label="Bin Type")
                loc1     = gr.Dropdown(["urban", "suburban", "mall"], value="urban",     label="Location")
                zone1    = gr.Dropdown(["north","south","east","west","central"], value="central", label="Zone")

        btn1    = gr.Button("πŸ” Predict Current Status", variant="primary", size="lg")
        output1 = gr.Markdown()

        btn1.click(
            fn=predict_current_status,
            inputs=[ultra1, weight1, fill1, hour1, day1, btype1, loc1, zone1, rate1, hours_sc],
            outputs=output1
        )

        gr.Examples(
            examples=[
                [55, 2.5,  8,  9, 1, "residential", "suburban", "north", 0.3, 48],
                [32, 15,  50, 13, 2, "commercial",  "urban",    "central", 2.0, 24],
                [8,  30,  90, 18, 4, "commercial",  "urban",    "central", 4.0, 6],
            ],
            inputs=[ultra1, weight1, fill1, hour1, day1, btype1, loc1, zone1, rate1, hours_sc],
            label="Try these examples"
        )

    # ── TAB 2: Flow Forecast ──────────────────────────────────────────────────
    with gr.Tab("πŸ“ˆ Fill Forecast (Model 2)"):
        gr.Markdown("### Predict how full this bin will be in 6 and 12 hours")

        with gr.Row():
            with gr.Column():
                ultra2  = gr.Slider(4,  65,  value=30,  label="Ultrasonic Distance (cm)")
                weight2 = gr.Slider(0,  36,  value=15,  label="Weight (kg)")
                fill2   = gr.Slider(0,  100, value=50,  label="Current Fill %")
                rate1h  = gr.Slider(0,  10,  value=1.5, label="Fill Rate last 1h (%/hr)",  step=0.1)
                rate3h  = gr.Slider(0,  30,  value=4.0, label="Fill Rate last 3h (total)", step=0.1)

            with gr.Column():
                hour2   = gr.Slider(0,  23,  value=12, label="Hour of Day",     step=1)
                day2    = gr.Slider(0,  6,   value=1,  label="Day of Week",     step=1)
                btype2  = gr.Dropdown(["residential","commercial"], value="commercial", label="Bin Type")
                loc2    = gr.Dropdown(["urban","suburban","mall"],  value="urban",      label="Location")
                zone2   = gr.Dropdown(["north","south","east","west","central"], value="central", label="Zone")

        btn2    = gr.Button("πŸ“ˆ Forecast Fill Level", variant="primary", size="lg")
        output2 = gr.Markdown()

        btn2.click(
            fn=predict_forecast,
            inputs=[ultra2, weight2, fill2, hour2, day2, btype2, loc2, zone2, rate1h, rate3h],
            outputs=output2
        )

        gr.Examples(
            examples=[
                [52, 4,   15, 7,  1, "residential", "suburban", "north",   0.3, 0.8],
                [30, 16,  55, 11, 2, "commercial",  "urban",    "central", 2.8, 7.5],
                [12, 27,  78, 17, 4, "commercial",  "urban",    "central", 3.5, 9.0],
            ],
            inputs=[ultra2, weight2, fill2, hour2, day2, btype2, loc2, zone2, rate1h, rate3h],
            label="Try these examples"
        )

    # ── TAB 3: API Docs for Node.js ───────────────────────────────────────────
    with gr.Tab("πŸ”Œ Node.js API Docs"):
        gr.Markdown("""
        ## Using This As a Node.js API

        Hugging Face Spaces exposes your Gradio app as a REST API automatically.
        Install the client: `npm install @gradio/client`

        ### Call Model 1 (Current Status)
        ```javascript
        const { Client } = require("@gradio/client");

        async function getBinStatus(sensorData) {
          const client = await Client.connect("YOUR_HF_USERNAME/smart-bin-ai");

          const result = await client.predict("/predict_current_status", {
            ultrasonic:            sensorData.ultrasonic,
            weight:                sensorData.weight,
            fill_now:              sensorData.fill_percent,
            hour_of_day:           new Date().getHours(),
            day_of_week:           new Date().getDay(),
            bin_type:              sensorData.bin_type || "commercial",
            location:              sensorData.location || "urban",
            zone:                  sensorData.zone || "central",
            fill_rate_1h:          sensorData.fill_rate || 0,
            hours_since_collection: sensorData.hours_since_collection || 24,
          });

          return result.data;
        }
        ```

        ### Call Model 2 (Forecast)
        ```javascript
        async function getForecast(sensorData) {
          const client = await Client.connect("YOUR_HF_USERNAME/smart-bin-ai");

          const result = await client.predict("/predict_forecast", {
            ultrasonic:   sensorData.ultrasonic,
            weight:       sensorData.weight,
            fill_now:     sensorData.fill_percent,
            hour_of_day:  new Date().getHours(),
            day_of_week:  new Date().getDay(),
            bin_type:     sensorData.bin_type || "commercial",
            location:     sensorData.location || "urban",
            zone:         sensorData.zone || "central",
            fill_rate_1h: sensorData.fill_rate_1h || 0,
            fill_rate_3h: sensorData.fill_rate_3h || 0,
          });

          return result.data;
        }
        ```

        ### Replace `YOUR_HF_USERNAME` with your actual Hugging Face username.
        ### Replace `smart-bin-ai` with your Space name if you chose a different one.
        """)

    gr.Markdown("""
    ---
    Built for Smart Waste Management | Random Forest (Model 1) + Gradient Boosting (Model 2)
    | 72,000 training rows | GroupKFold validated
    """)

# Launch
demo.launch(server_name="0.0.0.0", server_port=7860)