IDX-Chronos-API / utils.py
omniverse1's picture
Update utils.py
326ddbe verified
raw
history blame
13.3 kB
import yfinance as yf
import pandas as pd
import numpy as np
import torch
from datetime import datetime, timedelta
import plotly.graph_objects as go
import plotly.express as px
from plotly.subplots import make_subplots
import spaces
from chronos import BaseChronosPipeline
def get_indonesian_stocks():
return {
"BBCA.JK": "Bank Central Asia",
"BBRI.JK": "Bank BRI",
"BBNI.JK": "Bank BNI",
"BMRI.JK": "Bank Mandiri",
"TLKM.JK": "Telkom Indonesia",
"UNVR.JK": "Unilever Indonesia",
"ASII.JK": "Astra International",
"INDF.JK": "Indofood Sukses Makmur",
"KLBF.JK": "Kalbe Farma",
"HMSP.JK": "HM Sampoerna",
"GGRM.JK": "Gudang Garam",
"ADRO.JK": "Adaro Energy",
"PGAS.JK": "Perusahaan Gas Negara",
"JSMR.JK": "Jasa Marga",
"WIKA.JK": "Wijaya Karya",
"PTBA.JK": "Tambang Batubara Bukit Asam",
"ANTM.JK": "Aneka Tambang",
"SMGR.JK": "Semen Indonesia",
"INTP.JK": "Indocement Tunggal Prakasa",
"ITMG.JK": "Indo Tambangraya Megah"
}
def calculate_technical_indicators(data):
indicators = {}
def calculate_rsi(prices, period=14):
delta = prices.diff()
gain = (delta.where(delta > 0, 0)).rolling(window=period).mean()
loss = (-delta.where(delta < 0, 0)).rolling(window=period).mean()
rs = gain / loss
rsi = 100 - (100 / (1 + rs))
return rsi
indicators['rsi'] = {
'current': calculate_rsi(data['Close']).iloc[-1],
'values': calculate_rsi(data['Close'])
}
def calculate_macd(prices, fast=12, slow=26, signal=9):
exp1 = prices.ewm(span=fast).mean()
exp2 = prices.ewm(span=slow).mean()
macd = exp1 - exp2
signal_line = macd.ewm(span=signal).mean()
histogram = macd - signal_line
return macd, signal_line, histogram
macd, signal_line, histogram = calculate_macd(data['Close'])
indicators['macd'] = {
'macd': macd.iloc[-1],
'signal': signal_line.iloc[-1],
'histogram': histogram.iloc[-1],
'signal_text': 'BUY' if histogram.iloc[-1] > 0 else 'SELL',
'macd_values': macd,
'signal_values': signal_line
}
def calculate_bollinger_bands(prices, period=20, std_dev=2):
sma = prices.rolling(window=period).mean()
std = prices.rolling(window=period).std()
upper_band = sma + (std * std_dev)
lower_band = sma - (std * std_dev)
return upper_band, sma, lower_band
upper, middle, lower = calculate_bollinger_bands(data['Close'])
current_price = data['Close'].iloc[-1]
bb_position = (current_price - lower.iloc[-1]) / (upper.iloc[-1] - lower.iloc[-1])
indicators['bollinger'] = {
'upper': upper.iloc[-1],
'middle': middle.iloc[-1],
'lower': lower.iloc[-1],
'position': 'UPPER' if bb_position > 0.8 else 'LOWER' if bb_position < 0.2 else 'MIDDLE'
}
sma_20_series = data['Close'].rolling(20).mean()
sma_50_series = data['Close'].rolling(50).mean()
indicators['moving_averages'] = {
'sma_20': sma_20_series.iloc[-1],
'sma_50': sma_50_series.iloc[-1],
'sma_200': data['Close'].rolling(200).mean().iloc[-1],
'ema_12': data['Close'].ewm(span=12).mean().iloc[-1],
'ema_26': data['Close'].ewm(span=26).mean().iloc[-1],
'sma_20_values': sma_20_series,
'sma_50_values': sma_50_series
}
indicators['volume'] = {
'current': data['Volume'].iloc[-1],
'avg_20': data['Volume'].rolling(20).mean().iloc[-1],
'ratio': data['Volume'].iloc[-1] / data['Volume'].rolling(20).mean().iloc[-1]
}
return indicators
def generate_trading_signals(data, indicators):
signals = {}
current_price = data['Close'].iloc[-1]
buy_signals = 0
sell_signals = 0
signal_details = []
rsi = indicators['rsi']['current']
if rsi < 30:
buy_signals += 1
signal_details.append(f"✅ RSI ({rsi:.1f}) - Oversold - BUY signal")
elif rsi > 70:
sell_signals += 1
signal_details.append(f"❌ RSI ({rsi:.1f}) - Overbought - SELL signal")
else:
signal_details.append(f"⚪ RSI ({rsi:.1f}) - Neutral")
macd_hist = indicators['macd']['histogram']
if macd_hist > 0:
buy_signals += 1
signal_details.append(f"✅ MACD Histogram ({macd_hist:.4f}) - Positive - BUY signal")
else:
sell_signals += 1
signal_details.append(f"❌ MACD Histogram ({macd_hist:.4f}) - Negative - SELL signal")
bb_position = indicators['bollinger']['position']
if bb_position == 'LOWER':
buy_signals += 1
signal_details.append(f"✅ Bollinger Bands - Near lower band - BUY signal")
elif bb_position == 'UPPER':
sell_signals += 1
signal_details.append(f"❌ Bollinger Bands - Near upper band - SELL signal")
else:
signal_details.append("⚪ Bollinger Bands - Middle position")
sma_20 = indicators['moving_averages']['sma_20']
sma_50 = indicators['moving_averages']['sma_50']
if current_price > sma_20 > sma_50:
buy_signals += 1
signal_details.append(f"✅ Price above MA(20,50) - Bullish - BUY signal")
elif current_price < sma_20 < sma_50:
sell_signals += 1
signal_details.append(f"❌ Price below MA(20,50) - Bearish - SELL signal")
else:
signal_details.append("⚪ Moving Averages - Mixed signals")
volume_ratio = indicators['volume']['ratio']
if volume_ratio > 1.5:
buy_signals += 0.5
signal_details.append(f"✅ High volume ({volume_ratio:.1f}x avg) - Strengthens BUY signal")
elif volume_ratio < 0.5:
sell_signals += 0.5
signal_details.append(f"❌ Low volume ({volume_ratio:.1f}x avg) - Weakens SELL signal")
else:
signal_details.append(f"⚪ Normal volume ({volume_ratio:.1f}x avg)")
total_signals = buy_signals + sell_signals
signal_strength = (buy_signals / max(total_signals, 1)) * 100
if buy_signals > sell_signals:
overall_signal = "BUY"
elif sell_signals > buy_signals:
overall_signal = "SELL"
else:
overall_signal = "HOLD"
recent_high = data['High'].tail(20).max()
recent_low = data['Low'].tail(20).min()
signals = {
'overall': overall_signal,
'strength': signal_strength,
'details': '\n'.join(signal_details),
'support': recent_low,
'resistance': recent_high,
'stop_loss': recent_low * 0.95 if overall_signal == "BUY" else recent_high * 1.05
}
return signals
def get_fundamental_data(stock):
try:
info = stock.info
history = stock.history(period="1d")
fundamental_info = {
'name': info.get('longName', 'N/A'),
'current_price': history['Close'].iloc[-1] if not history.empty else 0,
'market_cap': info.get('marketCap', 0),
'pe_ratio': info.get('forwardPE', 0),
'dividend_yield': info.get('dividendYield', 0) * 100 if info.get('dividendYield') else 0,
'volume': history['Volume'].iloc[-1] if not history.empty else 0,
'info': f"""
Sector: {info.get('sector', 'N/A')}
Industry: {info.get('industry', 'N/A')}
Market Cap: {format_large_number(info.get('marketCap', 0))}
52 Week High: {info.get('fiftyTwoWeekHigh', 'N/A')}
52 Week Low: {info.get('fiftyTwoWeekLow', 'N/A')}
Beta: {info.get('beta', 'N/A')}
EPS: {info.get('forwardEps', 'N/A')}
Book Value: {info.get('bookValue', 'N/A')}
Price to Book: {info.get('priceToBook', 'N/A')}
""".strip()
}
return fundamental_info
except Exception as e:
print(f"Error getting fundamental data: {e}")
return {
'name': 'N/A',
'current_price': 0,
'market_cap': 0,
'pe_ratio': 0,
'dividend_yield': 0,
'volume': 0,
'info': 'Unable to fetch fundamental data'
}
def format_large_number(num):
if num >= 1e12:
return f"{num/1e12:.2f}T"
elif num >= 1e9:
return f"{num/1e9:.2f}B"
elif num >= 1e6:
return f"{num/1e6:.2f}M"
elif num >= 1e3:
return f"{num/1e3:.2f}K"
else:
return f"{num:.2f}"
@spaces.GPU(duration=120)
def predict_prices(data, model=None, tokenizer=None, prediction_days=30):
try:
prices = data['Close'].values.astype(np.float32)
pipeline = BaseChronosPipeline.from_pretrained("amazon/chronos-bolt-base", device_map="auto")
with torch.no_grad():
forecast = pipeline.predict(context=torch.tensor(prices), prediction_length=prediction_days)
mean_forecast = forecast.mean(dim=1).squeeze().cpu().numpy()
pred_len = len(mean_forecast)
last_price = prices[-1]
predicted_high = np.max(mean_forecast)
predicted_low = np.min(mean_forecast)
predicted_mean = np.mean(mean_forecast)
change_pct = ((predicted_mean - last_price) / last_price) * 100
return {
'values': mean_forecast,
'dates': pd.date_range(start=data.index[-1] + timedelta(days=1), periods=pred_len, freq='D'),
'high_30d': predicted_high,
'low_30d': predicted_low,
'mean_30d': predicted_mean,
'change_pct': change_pct,
'summary': f"""
AI Model: Amazon Chronos-Bolt (Base)
Prediction Period: {pred_len} days
Expected Change: {change_pct:.2f}%
Confidence: Medium
Note: AI predictions are for reference only and not financial advice
""".strip()
}
except Exception as e:
print(f"Error in prediction: {e}")
return {
'values': [],
'dates': [],
'high_30d': 0,
'low_30d': 0,
'mean_30d': 0,
'change_pct': 0,
'summary': f'Prediction unavailable due to model error: {e}'
}
def create_price_chart(data, indicators):
fig = make_subplots(rows=3, cols=1, shared_xaxes=True, vertical_spacing=0.05, subplot_titles=('Price & Moving Averages', 'RSI', 'MACD'), row_width=[0.2, 0.2, 0.7])
fig.add_trace(go.Candlestick(x=data.index, open=data['Open'], high=data['High'], low=data['Low'], close=data['Close'], name='Price'), row=1, col=1)
fig.add_trace(go.Scatter(x=data.index, y=indicators['moving_averages']['sma_20_values'], name='SMA 20', line=dict(color='orange', width=1)), row=1, col=1)
fig.add_trace(go.Scatter(x=data.index, y=indicators['moving_averages']['sma_50_values'], name='SMA 50', line=dict(color='blue', width=1)), row=1, col=1)
fig.add_trace(go.Scatter(x=data.index, y=indicators['rsi']['values'], name='RSI', line=dict(color='purple')), row=2, col=1)
fig.add_hline(y=70, line_dash="dash", line_color="red", row=2, col=1)
fig.add_hline(y=30, line_dash="dash", line_color="green", row=2, col=1)
fig.add_trace(go.Scatter(x=data.index, y=indicators['macd']['macd_values'], name='MACD', line=dict(color='blue')), row=3, col=1)
fig.add_trace(go.Scatter(x=data.index, y=indicators['macd']['signal_values'], name='Signal', line=dict(color='red')), row=3, col=1)
fig.update_layout(title='Technical Analysis Dashboard', height=900, showlegend=True, xaxis_rangeslider_visible=False)
return fig
def create_technical_chart(data, indicators):
fig = make_subplots(rows=2, cols=2, subplot_titles=('Bollinger Bands', 'Volume', 'Price vs MA', 'RSI Analysis'), specs=[[{"secondary_y": False}, {"secondary_y": False}], [{"secondary_y": False}, {"secondary_y": False}]])
fig.add_trace(go.Scatter(x=data.index, y=data['Close'], name='Price', line=dict(color='black')), row=1, col=1)
fig.add_trace(go.Bar(x=data.index, y=data['Volume'], name='Volume', marker_color='lightblue'), row=1, col=2)
fig.add_trace(go.Scatter(x=data.index, y=data['Close'], name='Price', line=dict(color='black')), row=2, col=1)
fig.add_trace(go.Scatter(x=data.index, y=indicators['moving_averages']['sma_20_values'], name='SMA 20', line=dict(color='orange', dash='dash')), row=2, col=1)
fig.update_layout(title='Technical Indicators Overview', height=600, showlegend=False)
return fig
def create_prediction_chart(data, predictions):
if not len(predictions['values']):
return go.Figure()
fig = go.Figure()
fig.add_trace(go.Scatter(x=data.index[-60:], y=data['Close'].values[-60:], name='Historical Price', line=dict(color='blue', width=2)))
fig.add_trace(go.Scatter(x=predictions['dates'], y=predictions['values'], name='AI Prediction', line=dict(color='red', width=2, dash='dash')))
pred_std = np.std(predictions['values'])
upper_band = predictions['values'] + (pred_std * 1.96)
lower_band = predictions['values'] - (pred_std * 1.96)
fig.add_trace(go.Scatter(x=predictions['dates'], y=upper_band, name='Upper Band', line=dict(color='lightcoral', width=1), fill=None))
fig.add_trace(go.Scatter(x=predictions['dates'], y=lower_band, name='Lower Band', line=dict(color='lightcoral', width=1), fill='tonexty', fillcolor='rgba(255,182,193,0.2)'))
fig.update_layout(title=f'Price Prediction - Next {len(predictions["dates"])} Days', xaxis_title='Date', yaxis_title='Price (IDR)', hovermode='x unified', height=500)
return fig