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import yfinance as yf
import pandas as pd
import numpy as np
import plotly.graph_objs as go
from sklearn.preprocessing import MinMaxScaler
from keras.src.models.sequential import Sequential
from keras.src.layers import LSTM, Dense
import streamlit as st
from keras.src.callbacks import EarlyStopping


# Fetch stock data
def fetch_data(ticker):
    return yf.download(ticker, period='6mo')

# Add indicators
def add_indicators(df):
    df['SMA_20'] = df['Close'].rolling(window=20).mean()
    df['SMA_50'] = df['Close'].rolling(window=50).mean()

    std_20 = df['Close'].rolling(window=20).std()
    std_20 = std_20.squeeze()  # ensure it's a Series

    df['BB_Upper'] = df['SMA_20'] + 2 * std_20
    df['BB_Lower'] = df['SMA_20'] - 2 * std_20

    df['RSI'] = compute_rsi(df['Close'])
    df['MACD'], df['MACD_Signal'], df['MACD_Hist'] = compute_macd(df['Close'])

    return df

# RSI calculation
def compute_rsi(series, period=14):
    delta = series.diff()
    gain = delta.clip(lower=0)
    loss = -delta.clip(upper=0)
    avg_gain = gain.rolling(period).mean()
    avg_loss = loss.rolling(period).mean()
    rs = avg_gain / avg_loss
    return 100 - (100 / (1 + rs))

# MACD calculation
def compute_macd(series):
    ema12 = series.ewm(span=12, adjust=False).mean()
    ema26 = series.ewm(span=26, adjust=False).mean()
    macd = ema12 - ema26
    signal = macd.ewm(span=9, adjust=False).mean()
    hist = macd - signal
    return macd, signal, hist

# --- Detect candlestick patterns manually ---
def detect_patterns(df, sma_period=5):
    patterns = []
    hover_texts = []

    # Calculate Simple Moving Average for trend detection
    df['SMA'] = df['Close'].rolling(window=sma_period).mean()
    sma = df.Close.rolling(window=sma_period).mean()
    # Helper functions for trend direction, with NaN handling
    def is_downtrend(i):
        sma = df.iloc[i].SMA        
        if sma is None:
            return False
        return (df['Close'].iloc[i] < df['SMA'].iloc[i]).bool()

    def is_uptrend(i):
        sma = df.iloc[i].SMA        
        if sma is None:
            return False
        return (df['Close'].iloc[i] > df['SMA'].iloc[i]).bool()

    for i in range(2, len(df)):
        # Skip if not enough data for trend analysis
        if pd.isna(df['SMA'].iloc[i]):
            patterns.append("None")
            hover_texts.append("")
            continue

        candle = df.iloc[i]    
        o = candle.Open.values
        h = candle.High.values
        l = candle.Low.values
        c = candle.Close.values  

        # Previous candle
        prev_candle = df.iloc[i-1] 
        prev_o = prev_candle.Open.values
        prev_h = prev_candle.High.values
        prev_l = prev_candle.Low.values
        prev_c = prev_candle.Close.values

        # Two candles back
        prev_candle2 = df.iloc[i-2]       
        prev2_o = prev_candle2.Open.values
        prev2_c = prev_candle2.Close.values
        prev2_h = prev_candle2.High.values
        prev2_l = prev_candle2.Low.values

        # Calculations
        body = abs(c - o)
        upper_shadow = h - max(o, c)
        lower_shadow = min(o, c) - l
        total_range = h - l if h != l else 0.0001
        prev_body = abs(prev_c - prev_o)

        pattern = ""       

        # === Pattern Detection ===
        lowShadBiggerBody = lower_shadow >= 2 * body
        upShadSmallerBody = upper_shadow <= body
        closeBiggerOpen = c > o
        openBiggerClose = c < o
        downTrend = is_downtrend(i - 1)      
        upTrend = is_uptrend(i - 1)
        upperShadBiggerBody = upper_shadow >= 2 * body
        lowShadSmallerBody = lower_shadow <= body
        prevCloseSmallerPrevOpen = prev_c < prev_o
        openBiggerPrevClose = o >= prev_c
        openSmallerPrevClose = o <= prev_c
        closeBiggerPrevOpen = c >= prev_o
        closeSmallerPrevOpen = c <= prev_o
        
        if body <= 0.1 * total_range:
            pattern = "Doji"

        elif (lowShadBiggerBody & upShadSmallerBody & closeBiggerOpen & downTrend):
            pattern = "Hammer"

        elif (upperShadBiggerBody & lowShadSmallerBody & closeBiggerOpen & downTrend):
            pattern = "Inverted Hammer"

        elif (prevCloseSmallerPrevOpen & closeBiggerOpen & openSmallerPrevClose & 
              closeBiggerPrevOpen & (body > prev_body) & downTrend):
            pattern = "Bullish Engulfing"

        elif ((prev_c > prev_o) & openBiggerClose & openBiggerPrevClose & 
              closeSmallerPrevOpen & (body > prev_body) & upTrend):
            pattern = "Bearish Engulfing"

        elif ((upper_shadow >= 1.5 * body) & (lower_shadow <= 0.2 * body) &
              openBiggerClose & upTrend):
            pattern = "Shooting Star"

        elif ((lower_shadow >= 2 * body) & (upper_shadow <= 0.2 * body) &
              openBiggerClose & upTrend):
            pattern = "Hanging Man"

        elif (openBiggerClose & (body >= 0.6 * total_range) &
              (upper_shadow <= 0.15 * total_range) & (lower_shadow <= 0.15 * total_range)):
            pattern = "Dark Pool"

        elif ((prev2_c < prev2_o) &
              (abs(prev_c - prev_o) <= 0.3 * (prev_h - prev_l)) &
              closeBiggerOpen & (c > (prev_o + prev_c) / 2) & downTrend):
            pattern = "Morning Star"

        elif ((prev2_c > prev2_o) &
              (abs(prev_c - prev_o) <= 0.3 * (prev_h - prev_l)) &
              openBiggerClose & (c < (prev_o + prev_c) / 2) & upTrend):
            pattern = "Evening Star"

        else:
            pattern = "None"

        hover_text = PATTERN_DESCRIPTIONS.get(pattern, "") if pattern != "None" else ""
        patterns.append(pattern)
        hover_texts.append(hover_text)

    # Align output with sliced data
    df = df.iloc[2:].copy()
    df['Pattern'] = patterns    
    df['HoverText'] = hover_texts
    df.drop(columns=['SMA'], inplace=True)
    return df

PATTERN_DESCRIPTIONS = {
    "Hammer": "Bullish reversal pattern after a downtrend.",
    "Inverted Hammer": "Potential bullish reversal with a long upper wick.",
    "Bullish Engulfing": "Strong bullish signal after a bearish candle.",
    "Bearish Engulfing": "Strong bearish signal after a bullish candle.",
    "Doji": "Market indecision; open and close are very close.",
    "Shooting Star": "Bearish reversal after uptrend with long upper wick.",
    "Hanging Man": "Bearish signal with long lower shadow after uptrend.",
    "Dark Pool": "Heavy bearish candle with short shadows.",
    "Morning Star": "Bullish 3-candle reversal pattern.",
    "Evening Star": "Bearish 3-candle reversal pattern."
}

# Predict next close price using LSTM
def predict_next_price(df):
    # Select features
    features = ['Close', 'SMA_20', 'SMA_50', 'RSI', 'MACD', 'MACD_Signal']

    # Drop NaNs caused by rolling indicators
    df = df[features].dropna()

    if len(df) < 25:
        return None  # not enough data

    # Scale all features
    scaler = MinMaxScaler()
    scaled_data = scaler.fit_transform(df)

    lookback = 20
    X = []
    y = []

    for i in range(lookback, len(scaled_data)):
        X.append(scaled_data[i-lookback:i])     # shape: (lookback, num_features)
        y.append(scaled_data[i, 0])              # predict 'Close'

    X = np.array(X)
    y = np.array(y)

    # ๐Ÿง  Build model that takes multiple features
    model = Sequential()
    model.add(LSTM(64, return_sequences=True, input_shape=(lookback, len(features))))
    model.add(LSTM(32))
    model.add(Dense(1))
    model.compile(optimizer='adam', loss='mean_squared_error')
    model.fit(X, y, epochs=20, batch_size=8, verbose=0)

    # Predict next day
    last_sequence = scaled_data[-lookback:]
    last_sequence = np.reshape(last_sequence, (1, lookback, len(features)))
    predicted_scaled = model.predict(last_sequence, verbose=0)

    # ๐Ÿ”„ Inverse-transform: only the 'Close' feature
    dummy = np.zeros((1, len(features)))
    dummy[0, 0] = predicted_scaled[0, 0]
    predicted_price = scaler.inverse_transform(dummy)[0, 0]

    return predicted_price

# Chart generator
def plot_chart(df, ticker):
    fig = go.Figure()
    fig.add_trace(go.Scatter(x=df.index, y=df['Close'], name='Close', line=dict(color='blue')))
    fig.add_trace(go.Scatter(x=df.index, y=df['SMA_20'], name='SMA 20', line=dict(color='orange')))
    fig.add_trace(go.Scatter(x=df.index, y=df['SMA_50'], name='SMA 50', line=dict(color='purple')))
    fig.add_trace(go.Scatter(x=df.index, y=df['BB_Upper'], name='BB Upper', line=dict(color='green', dash='dot')))
    fig.add_trace(go.Scatter(x=df.index, y=df['BB_Lower'], name='BB Lower', line=dict(color='red', dash='dot')))
    fig.update_layout(title=f"{ticker} Price with Indicators", xaxis_title="Date", yaxis_title="Price")
    return fig

def plot_macd(df):
    fig = go.Figure()
    fig.add_trace(go.Scatter(x=df.index, y=df['MACD'], name='MACD', line=dict(color='blue')))
    fig.add_trace(go.Scatter(x=df.index, y=df['MACD_Signal'], name='Signal', line=dict(color='orange')))
    fig.add_trace(go.Bar(x=df.index, y=df['MACD_Hist'], name='Histogram', marker_color='gray'))
    fig.update_layout(title='MACD line above the signal line -> (buy) signal โฌ†๏ธ, MACD line below the signal line -> (sell) signal โฌ‡๏ธ', xaxis_title='Date', yaxis_title='MACD')
    return fig

# Streamlit dashboard
st.set_page_config("๐Ÿ“ˆ Smart Stock Analyzer", layout="wide")
st.title("๐Ÿ“Š Smart Stock Analyzer with AI & Indicators")

tickers_input = st.text_input("Enter tickers (comma-separated):", value="QNTM")

tickers = [t.strip().upper() for t in tickers_input.split(",") if t.strip()]

for ticker in tickers:
    st.header(f"๐Ÿ” Analyzing {ticker}")
    try:
        df = fetch_data(ticker)        
        df = df.copy()        
        patterns = detect_patterns(df, sma_period=5)
        df = add_indicators(df)
        current_price = df['Close'].iloc[-1].values[0]   
        predicted_price = predict_next_price(df)
        

        col1, col2 = st.columns(2)
        
        with col1:
            st.write(patterns[patterns['Pattern'] != ''].tail(10))
            #st.plotly_chart(plot_chart(df, ticker), use_container_width=True)
        with col2:
            st.plotly_chart(plot_macd(df), use_container_width=True)

        st.subheader("๐Ÿ“ˆ Summary")
        rsi = df['RSI'].iloc[-1]
        st.markdown(f"- **RSI (above 70 = overbought conditions, below 30 = oversold conditions)**: {rsi:.2f} {'๐ŸŸข BUY' if rsi < 30 else '๐Ÿ”ด SELL' if rsi > 70 else '๐ŸŸก HOLD'}")
        st.markdown(f"- **SMA Crossover (potentially signaling a shift in trend direction)**: {'โฌ†๏ธ Bullish' if df['SMA_20'].iloc[-1] > df['SMA_50'].iloc[-1] else 'โฌ‡๏ธ Bearish'}")

        st.subheader("๐Ÿ”ฎ AI Price Prediction")
        st.markdown(f"- **Current Price**: ${current_price:.2f}")
        st.markdown(f"- **Predicted Next Close**: ${predicted_price:.2f}")        
        change = predicted_price - current_price        
        percent = (change / current_price) * 100
        if percent > 3:
            st.success("๐Ÿš€ AI says: Likely UP (>3%) โ€“ Consider BUYING")
        elif percent < -3:
            st.error("โš ๏ธ AI says: Likely DOWN (>3%) โ€“ Consider SELLING")
        else:
            st.info("๐Ÿ’ค AI says: Not much movement expected โ€“ HOLD")

    except Exception as e:
        st.error(f"Failed to analyze {ticker}: {e}")