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import gradio as gr
import numpy as np
import pandas as pd
from datetime import datetime
import random
from collections import defaultdict
import math
import os
import traceback

# ==================== কনফিগারেশন ====================
CONFIG = {
    "HISTORY_LIMIT": 1000,
    "PINK_THRESHOLD": 3.0,
    "BIG_PINK_THRESHOLD": 5.0,
}

# ==================== টাইম-ভিত্তিক পরিসংখ্যান (V6) ====================
TIME_STATS = None
def load_time_statistics():
    global TIME_STATS
    try:
        if os.path.exists('aviator_Rounds_history_scrp.xlsx'):
            df = pd.read_excel('aviator_Rounds_history_scrp.xlsx', sheet_name='scarping rounds crash')
            df = df[['ROUNDS', 'TIME ROUND']].dropna()
            df['multiplier'] = pd.to_numeric(df['ROUNDS'], errors='coerce')
            df = df.dropna()
            df['hour'] = pd.to_datetime(df['TIME ROUND'], format='%H:%M').dt.hour
            stats = df.groupby('hour')['multiplier'].agg(['mean', 'std', 'count']).to_dict('index')
            for h in range(24):
                if h not in stats:
                    stats[h] = {'mean': 1.8, 'std': 1.0, 'count': 0}
            TIME_STATS = stats
            print(f"✅ সময় পরিসংখ্যান লোড হয়েছে। মোট রেকর্ড: {len(df)}")
        else:
            print("⚠️ এক্সেল ফাইল পাওয়া যায়নি। ডিফল্ট পরিসংখ্যান ব্যবহার করা হবে।")
            TIME_STATS = {h: {'mean': 1.8, 'std': 1.0, 'count': 100} for h in range(24)}
    except Exception as e:
        print(f"ডেটা লোড করতে সমস্যা: {e}")
        TIME_STATS = {h: {'mean': 1.8, 'std': 1.0, 'count': 100} for h in range(24)}

load_time_statistics()

# ==================== স্ট্যাটিস্টিক্যাল মডেল V1-V5 (আগের মতো) ====================
class StatisticalModelV1:
    def predict(self, history):
        recent = history[:15]
        if len(recent) < 3:
            return {'prediction': 1.5, 'confidence': 0.3}
        q1, q3 = np.percentile(recent, [25, 75])
        iqr = q3 - q1
        filtered = [x for x in recent if (q1 - 1.5*iqr) <= x <= (q3 + 1.5*iqr)]
        if len(filtered) < 3:
            filtered = recent
        x = np.arange(len(filtered))
        weights = np.linspace(1.5, 0.5, len(filtered))
        weights /= weights.sum()
        weighted_mean_x = np.average(x, weights=weights)
        weighted_mean_y = np.average(filtered, weights=weights)
        numerator = np.sum(weights * (x - weighted_mean_x) * (filtered - weighted_mean_y))
        denominator = np.sum(weights * (x - weighted_mean_x)**2)
        trend = numerator / denominator if denominator != 0 else 0
        prediction = np.median(filtered) + trend * 1.5
        cv = np.std(filtered) / (np.mean(filtered) + 0.1)
        confidence = min(0.85, 0.5 + len(filtered)/len(recent)*0.3 - cv*0.2)
        return {'prediction': float(prediction), 'confidence': float(confidence)}

class StatisticalModelV2:
    def predict(self, history):
        timeframes = {'short': history[:5], 'medium': history[:10], 'long': history[:20]}
        preds, confs = [], []
        for name, data in timeframes.items():
            if len(data) < 3:
                continue
            ma_3 = np.mean(data[:3]) if len(data)>=3 else np.mean(data)
            ma_5 = np.mean(data[:5]) if len(data)>=5 else ma_3
            ema = data[0]
            alpha = 0.3
            for v in data[1:]:
                ema = alpha*v + (1-alpha)*ema
            x = np.arange(len(data))
            trend = np.polyfit(x, data, 1)[0]
            base = np.mean([ma_3, ma_5, ema])
            preds.append(base + trend * len(data) / 10)
            confs.append(min(0.9, 0.5 + len(data)/40))
        if not preds:
            return {'prediction': 1.5, 'confidence': 0.3}
        weights = {'short':0.5, 'medium':0.3, 'long':0.2}
        final_pred = 0
        total_weight = 0
        for i, name in enumerate(timeframes.keys()):
            if i < len(preds):
                w = weights.get(name, 0.2) * confs[i]
                final_pred += preds[i] * w
                total_weight += w
        final_pred /= total_weight if total_weight else 1
        confidence = np.mean(confs) * 0.9
        return {'prediction': float(final_pred), 'confidence': float(confidence)}

class StatisticalModelV3:
    def detect_cycles(self, history):
        if len(history) < 10:
            return None
        cycles = []
        for period in range(3, 7):
            corrs = []
            for i in range(len(history) - period*2):
                seg1 = history[i:i+period]
                seg2 = history[i+period:i+period*2]
                if len(seg1) == len(seg2):
                    corr = np.corrcoef(seg1, seg2)[0,1]
                    if not np.isnan(corr):
                        corrs.append(abs(corr))
            if corrs and np.mean(corrs) > 0.6:
                cycles.append({'period': period, 'strength': float(np.mean(corrs))})
        return cycles if cycles else None
    def predict(self, history):
        recent = history[:20]
        cycles = self.detect_cycles(recent)
        cycle_pred = None
        if cycles:
            best = max(cycles, key=lambda x: x['strength'])
            period = best['period']
            if len(recent) > period:
                next_val = recent[period:period+1]
                if next_val:
                    cycle_pred = next_val[0] * (1 + best['strength'] * 0.1)
        base_pred = np.median(recent)
        if cycle_pred:
            base_pred = (base_pred + cycle_pred) / 2
        prediction = max(1.05, min(10000.0, base_pred))   # ক্যাপ বাড়ানো হয়েছে
        confidence = min(0.9, 0.5 + len(recent)/40 + (0.15 if cycles else 0))
        return {'prediction': float(prediction), 'confidence': float(confidence)}

class StatisticalModelV4:
    def __init__(self):
        self.performance = []
        self.bias = 0
        self.volatility_regime = 'normal'
    def detect_volatility(self, history):
        if len(history) < 10:
            return 'normal'
        recent_vol = np.std(history[:5])
        long_vol = np.std(history[:20]) if len(history)>=20 else recent_vol
        if recent_vol > long_vol * 1.5:
            return 'high'
        elif recent_vol < long_vol * 0.5:
            return 'low'
        else:
            return 'normal'
    def predict(self, history):
        recent = history[:15]
        self.volatility_regime = self.detect_volatility(history)
        mean_val, median_val = np.mean(recent), np.median(recent)
        x = np.arange(len(recent))
        weights = np.exp(-0.2 * x)
        weights /= weights.sum()
        weighted_mean_x = np.average(x, weights=weights)
        weighted_mean_y = np.average(recent, weights=weights)
        numerator = np.sum(weights * (x - weighted_mean_x) * (recent - weighted_mean_y))
        denominator = np.sum(weights * (x - weighted_mean_x)**2)
        trend = numerator / denominator if denominator != 0 else 0
        preds = {'mean': mean_val, 'median': median_val, 'trend': median_val + trend * len(recent) * 0.5}
        w = {'mean': 0.3, 'median': 0.4, 'trend': 0.3}
        if self.volatility_regime == 'high':
            w['median'] *= 1.5
        elif self.volatility_regime == 'low':
            w['trend'] *= 1.3
        total = sum(w.values())
        for k in w:
            w[k] /= total
        prediction = sum(preds[k] * w[k] for k in preds) + self.bias
        confidence = 0.5 + len(recent)/30
        if self.volatility_regime == 'high':
            confidence *= 0.8
        elif self.volatility_regime == 'low':
            confidence *= 1.2
        if self.performance:
            recent_perf = np.mean(self.performance[-10:]) if len(self.performance)>=10 else np.mean(self.performance)
            confidence *= (1 + recent_perf * 0.1)
        confidence = min(0.9, confidence)
        return {'prediction': float(max(1.05, min(10000.0, prediction))), 'confidence': float(confidence)}
    def update(self, actual, predicted):
        error = abs(actual - predicted) / actual
        acc = max(0, 1 - error)
        self.performance.append(acc)
        if len(self.performance) > 100:
            self.performance = self.performance[-100:]
        self.bias += (actual - predicted) * 0.01

class StatisticalModelV5:
    def __init__(self):
        self.n_estimators = 10
    def predict(self, history):
        if len(history) < 10:
            return {'prediction': 1.5, 'confidence': 0.5}
        recent = history[:10]
        trees = []
        for _ in range(self.n_estimators):
            idx = np.random.choice(len(recent), size=len(recent), replace=True)
            sample = [recent[i] for i in idx]
            if np.random.random() > 0.5:
                trees.append(np.mean(sample))
            else:
                trees.append(np.median(sample))
        pred = float(np.mean(trees))
        return {'prediction': pred, 'confidence': 0.7}

class StatisticalModelV6:
    def __init__(self, time_stats):
        self.time_stats = time_stats
    def predict(self, history, current_hour=None):
        if current_hour is None:
            current_hour = datetime.now().hour
        stats = self.time_stats.get(current_hour, {'mean': 1.8, 'std': 1.0})
        base_pred = np.median(history[:5]) if len(history)>=5 else 1.5
        alpha = 0.3
        prediction = base_pred * (1 - alpha) + stats['mean'] * alpha
        confidence = min(0.85, 0.5 + stats.get('count', 100) / 500)
        return {'prediction': float(prediction), 'confidence': float(confidence), 'hour': current_hour}

# ==================== রিপোজিটরি থেকে নেওয়া ML মডেলসমূহ (Python পোর্ট) ====================
# (JavaScript Tampermonkey script থেকে অনুবাদিত)

class NeuralNetwork:
    def __init__(self):
        self.weights = {
            'input': np.random.randn(15) * 0.1,
            'hidden': np.random.randn(10) * 0.1,
            'output': np.random.randn(5) * 0.1
        }
        self.performance_history = []
    def extract_features(self, history):
        recent = history[:12]
        features = []
        for val in recent:
            features.append(math.log(val + 0.1) / math.log(10))
        mean_val = np.mean(recent) if recent else 1.5
        std_val = np.std(recent) if recent else 0.2
        features.append(mean_val)
        features.append(std_val / (mean_val + 0.1))
        if len(recent) >= 3:
            trend = (recent[0] - recent[-1]) / len(recent)
            features.append(trend)
        else:
            features.append(0)
        pink_count = sum(1 for v in recent if v >= CONFIG["PINK_THRESHOLD"])
        features.append(pink_count / len(recent) if recent else 0)
        while len(features) < 15:
            features.append(0)
        return np.array(features[:15])
    def predict(self, history):
        if len(history) < 5:
            return {'prediction': 1.5, 'confidence': 0.3}
        features = self.extract_features(history)
        hidden = np.tanh(np.dot(features, self.weights['input'][:len(features)]))
        output = np.tanh(hidden * np.mean(self.weights['hidden']))
        prediction = 1.5 + (output * 3.0)
        prediction = max(1.05, min(10000.0, prediction))
        confidence = min(0.9, 0.5 + (len(history) / 200) + abs(output) * 0.2)
        analysis = "Neural: strong" if output > 0.6 else "Neural: weak"
        return {'prediction': float(prediction), 'confidence': float(confidence), 'analysis': analysis}

class SequenceAnalyzer:
    def __init__(self):
        self.max_pattern_length = 6
    def find_patterns(self, history):
        patterns = []
        for length in range(2, min(self.max_pattern_length, len(history) // 2)):
            for i in range(len(history) - length * 2):
                pattern = history[i:i+length]
                next_seq = history[i+length:i+length*2]
                similarity = self.calculate_similarity(pattern, next_seq)
                if similarity > 0.6:
                    patterns.append({'pattern': pattern, 'next': next_seq, 'similarity': similarity, 'length': length})
        return patterns
    def calculate_similarity(self, seq1, seq2):
        if len(seq1) != len(seq2) or len(seq1) == 0:
            return 0
        diffs = [abs(seq1[i] - seq2[i]) / (max(seq1[i], seq2[i]) + 0.1) for i in range(len(seq1))]
        avg_diff = np.mean(diffs) if diffs else 1
        return max(0, 1 - avg_diff)
    def predict(self, history):
        if len(history) < 4:
            return {'prediction': 1.5, 'confidence': 0.3}
        patterns = self.find_patterns(history)
        if not patterns:
            return {'prediction': 1.5, 'confidence': 0.4}
        best = max(patterns, key=lambda p: p['similarity'] * p['length'])
        trend = (best['pattern'][-1] - best['pattern'][0]) / len(best['pattern'])
        prediction = best['pattern'][-1] + trend
        prediction = max(1.05, min(10000.0, prediction))
        confidence = best['similarity'] * 0.8
        return {'prediction': float(prediction), 'confidence': float(confidence)}

class MarkovChain:
    def __init__(self):
        self.transition_matrix = defaultdict(lambda: defaultdict(float))
        self.states = ['very_low', 'low', 'medium', 'high', 'pink']
    def discretize(self, value):
        if value < 1.3:
            return 'very_low'
        elif value < 1.8:
            return 'low'
        elif value < 2.5:
            return 'medium'
        elif value < CONFIG["PINK_THRESHOLD"]:
            return 'high'
        else:
            return 'pink'
    def build_model(self, history):
        self.transition_matrix.clear()
        for i in range(len(history) - 1):
            current = self.discretize(history[i])
            next_state = self.discretize(history[i+1])
            self.transition_matrix[current][next_state] += 1
        for state in self.transition_matrix:
            total = sum(self.transition_matrix[state].values())
            if total > 0:
                for next_state in self.transition_matrix[state]:
                    self.transition_matrix[state][next_state] /= total
    def predict(self, history):
        if len(history) < 2:
            return {'prediction': 1.5, 'confidence': 0.3}
        self.build_model(history)
        current_state = self.discretize(history[0])
        probs = self.transition_matrix.get(current_state, {})
        if not probs:
            probs = {'very_low':0.2, 'low':0.4, 'medium':0.25, 'high':0.1, 'pink':0.05}
        state_values = {'very_low':1.15, 'low':1.5, 'medium':2.2, 'high':2.8, 'pink':4.5}
        prediction = sum(state_values[s] * probs.get(s,0) for s in self.states) / (sum(probs.values()) or 1)
        confidence = max(probs.values()) * 0.9 if probs else 0.3
        return {'prediction': float(prediction), 'confidence': float(confidence)}

class StatisticalPredictor:
    def predict(self, history):
        recent = history[:15]
        mean_val = np.mean(recent)
        median_val = np.median(recent)
        x = np.arange(len(recent))
        trend = np.polyfit(x, recent, 1)[0] if len(recent) > 1 else 0
        std_val = np.std(recent)
        prediction = median_val + trend * 1.5
        if std_val > 1.0:
            prediction += random.uniform(-0.5, 0.5)
        prediction = max(1.05, min(10000.0, prediction))
        confidence = min(0.8, 0.5 + (len(history)/200) - (std_val/10))
        return {'prediction': float(prediction), 'confidence': float(confidence)}

class RepositoryEnsemble:
    """রিপোজিটরির এনসেম্বল মডেল (পোর্টেড)"""
    def __init__(self):
        self.models = {
            'neural': NeuralNetwork(),
            'sequence': SequenceAnalyzer(),
            'markov': MarkovChain(),
            'stat': StatisticalPredictor()
        }
        self.weights = {'neural':0.35, 'sequence':0.30, 'markov':0.20, 'stat':0.15}
        self.performance = defaultdict(list)
    def predict(self, history):
        if len(history) < 5:
            return {'prediction': 1.5, 'confidence': 0.3}
        preds = {}
        confs = {}
        for name, model in self.models.items():
            res = model.predict(history)
            preds[name] = res['prediction']
            confs[name] = res['confidence']
        total_weight = 0
        weighted_sum = 0
        for name, pred in preds.items():
            w = self.weights.get(name, 0.2) * confs[name]
            weighted_sum += pred * w
            total_weight += w
        final_pred = weighted_sum / total_weight if total_weight > 0 else 1.5
        final_pred = max(1.05, min(10000.0, final_pred))
        confidence = np.mean(list(confs.values())) * 0.9
        return {'prediction': float(final_pred), 'confidence': float(confidence)}

# ==================== চূড়ান্ত এনসেম্বল (V1-V6 + Repository) ====================
class EnsemblePredictorV7:
    def __init__(self, time_stats):
        self.models = {
            'v1': StatisticalModelV1(),
            'v2': StatisticalModelV2(),
            'v3': StatisticalModelV3(),
            'v4': StatisticalModelV4(),
            'v5': StatisticalModelV5(),
            'v6': StatisticalModelV6(time_stats),
            'repo': RepositoryEnsemble()
        }
        self.ensemble_weights = {'v1':0.15, 'v2':0.15, 'v3':0.1, 'v4':0.1, 'v5':0.1, 'v6':0.1, 'repo':0.3}
        self.performance = defaultdict(list)
    def predict(self, history):
        if len(history) < 5:
            return self._default_prediction(f"মাত্র {len(history)}টি রাউন্ড, ৫টি প্রয়োজন")
        current_hour = datetime.now().hour
        preds = {}
        confs = {}
        for name, model in self.models.items():
            if name == 'v6':
                res = model.predict(history, current_hour)
            else:
                res = model.predict(history)
            preds[name] = res['prediction']
            confs[name] = res.get('confidence', 0.5)
        # ওয়েট আপডেট (পারফরমেন্স ভিত্তিক)
        for name in self.ensemble_weights:
            if name in self.performance and self.performance[name]:
                recent_acc = np.mean(self.performance[name][-20:]) if len(self.performance[name])>=20 else np.mean(self.performance[name])
                self.ensemble_weights[name] = 0.1 + recent_acc * 0.8
        total = sum(self.ensemble_weights.values())
        for name in self.ensemble_weights:
            self.ensemble_weights[name] /= total
        final_pred = 0
        total_weight = 0
        for name, pred in preds.items():
            weight = self.ensemble_weights.get(name, 0.2) * confs[name]
            final_pred += pred * weight
            total_weight += weight
        final_pred /= total_weight if total_weight else 1
        # মার্কেট স্টেট
        recent = history[:10]
        vol = np.std(recent) / (np.mean(recent)+0.1)
        if vol > 0.5:
            state = "অস্থির 🌪️"
        elif vol < 0.2:
            state = "স্থিতিশীল ✨"
        else:
            state = "সাধারণ ➡️"
        confidence = np.mean(list(confs.values())) * 0.9
        if vol < 0.2:
            confidence *= 1.1
        elif vol > 0.5:
            confidence *= 0.9
        confidence = min(0.95, confidence)
        all_preds = list(preds.values())
        std = np.std(all_preds) if len(all_preds)>1 else 0.2
        spread = std * (2 - confidence)
        spread = max(0.1, min(1.5, spread))
        interval = (max(1.01, final_pred - spread/2), final_pred + spread/2)
        # ডিসিশন
        if final_pred > 3.0:
            decision = "বড় 🚀"
        elif final_pred > 1.8:
            decision = "মাঝারি 💪"
        else:
            decision = "ছোট 🎯"
        hour_stats = TIME_STATS.get(current_hour, {'mean':1.8, 'count':0})
        time_info = f"বর্তমান ঘণ্টা: {current_hour}:00 – ঐতিহাসিক গড়: {hour_stats['mean']:.2f}x (ডাটা: {hour_stats['count']}টি)"
        summary = (
            f"🎯 **প্রেডিকশন ইন্টারভ্যাল**: {interval[0]:.2f}x – {interval[1]:.2f}x\n"
            f"📊 **এক্সপেক্টেড মাল্টিপ্লায়ার**: {final_pred:.2f}x\n"
            f"📈 **কনফিডেন্স**: {confidence*100:.1f}%\n"
            f"⚡ **মার্কেট স্টেট**: {state}\n"
            f"🎲 **ডিসিশন**: {decision}\n"
            f"⏰ **টাইম ফিচার**: {time_info}\n"
            f"📌 **ডাটা পয়েন্ট**: {len(history)}টি রাউন্ড"
        )
        return {
            'summary': summary,
            'prediction': final_pred,
            'interval': interval,
            'confidence': confidence,
            'decision': decision,
            'analysis': state,
            'hour': current_hour
        }
    def _default_prediction(self, msg):
        return {
            'summary': f"⚠️ {msg}\n\n📊 ডিফল্ট প্রেডিকশন: 1.50x (কনফিডেন্স 30%)",
            'prediction': 1.5,
            'interval': (1.3, 1.7),
            'confidence': 0.3,
            'decision': 'ছোট 🎯',
            'analysis': 'অপ্রতুল ডাটা'
        }

# ==================== অ্যাপ্লিকেশন ক্লাস ====================
class AviatorPredictorApp:
    def __init__(self):
        self.history = []
        self.model = EnsemblePredictorV7(TIME_STATS)
    def add_round(self, multiplier):
        if multiplier <= 0:
            return self.get_all_outputs(error="ইনভ্যালিড মাল্টিপ্লায়ার (১.০ এর বেশি দিন)")
        self.history.insert(0, float(multiplier))
        if len(self.history) > CONFIG["HISTORY_LIMIT"]:
            self.history = self.history[:CONFIG["HISTORY_LIMIT"]]
        return self.get_all_outputs()
    def reset(self):
        self.history = []
        for _ in range(20):
            self.history.append(round(random.uniform(1.0, 3.5), 2))
        self.history.sort(reverse=True)
        return self.get_all_outputs()
    def get_all_outputs(self, error=None):
        if error:
            table = [[i+1, "?.??x"] for i in range(min(20, len(self.history)))] or [[1, "1.00x"]]
            return [table, f"⚠️ {error}"]
        pred_result = self.model.predict(self.history)
        table = [[i+1, f"{val:.2f}x"] for i, val in enumerate(self.history[:50])]
        return [table, pred_result['summary']]

# ==================== কাস্টম CSS ====================
CUSTOM_CSS = """
.gradio-container {
    background: #0a0a0f !important;
    color: #ffffff !important;
    font-family: 'Inter', sans-serif !important;
}
footer {visibility: hidden}
h1 { color: #00d4ff !important; text-align: center; margin-bottom: 20px; text-shadow: 0 0 10px #00d4ff; }
.gr-box { border: 1px solid #333 !important; background: rgba(255,255,255,0.05) !important; }
.gr-button-primary { background: linear-gradient(135deg, #00d4ff, #0088ff) !important; border: none !important; }
.gr-button-secondary { background: rgba(255,255,255,0.1) !important; border: 1px solid #00d4ff !important; margin-top: 20px !important; }
.gr-dataframe { background: rgba(255,255,255,0.05) !important; }
"""

# ==================== গ্র্যাডিও ইন্টারফেস ====================
app = AviatorPredictorApp()
app.reset()  # শুরুতে ২০টি র‍্যান্ডম রাউন্ড

with gr.Blocks(css=CUSTOM_CSS, theme='dark', title="AVOLD V7 Predictor") as demo:
    gr.HTML("""
    <div style="text-align: center; margin-bottom: 20px;">
        <h1 style="color: #00d4ff; font-size: 48px; margin: 0;">✈️ AVOLD V7</h1>
        <p style="color: #888; font-size: 14px;">হাইব্রিড এনসেম্বল – আপনার স্ট্যাটিস্টিক্যাল মডেল + রিপোজিটরি ML</p>
    </div>
    """)

    with gr.Row():
        inp = gr.Number(label="নতুন মাল্টিপ্লায়ার (যেকোনো মান)", value=1.0, step=0.1, minimum=1.0, maximum=None)
        add_btn = gr.Button("➕ যোগ করুন", variant="primary")

    prediction_box = gr.Textbox(label="🧠 প্রেডিকশন রিপোর্ট", lines=10, interactive=False)
    rounds_table = gr.Dataframe(label="📜 শেষ ৫০ রাউন্ড", headers=["রাউন্ড", "মাল্টিপ্লায়ার"], row_count=10)
    reset_btn = gr.Button("🔄 রিসেট ডাটা", variant="secondary")

    add_btn.click(
        fn=app.add_round,
        inputs=inp,
        outputs=[rounds_table, prediction_box]
    )
    reset_btn.click(
        fn=app.reset,
        outputs=[rounds_table, prediction_box]
    )
    demo.load(
        fn=app.get_all_outputs,
        outputs=[rounds_table, prediction_box]
    )

if __name__ == "__main__":
    demo.launch(server_name="0.0.0.0", server_port=7860)