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Usage:
python main.py --mode train --tickers SPY QQQ AAPL MSFT
python main.py --mode backtest --start 2020-01-01 --end 2024-01-01
python main.py --mode live --config config.yaml
"""
import argparse
import numpy as np
import pandas as pd
import torch
import warnings
warnings.filterwarnings('ignore')
from market_data import MarketDataPipeline
from alpha_model import AlphaEnsemble
from sentiment_model import SentimentAlphaModel
from volatility_model import VolatilityEngine
from portfolio_optimizer import PortfolioOptimizer
from options_pricer import MLOptionsPricer
from backtest_engine import BacktestEngine, compute_information_coefficient, RegimeDetector
def parse_args():
parser = argparse.ArgumentParser(description='AlphaForge Quant System')
parser.add_argument('--mode', type=str, default='train',
choices=['train', 'backtest', 'live', 'options'])
parser.add_argument('--tickers', type=str, nargs='+',
default=['SPY','QQQ','AAPL','MSFT','GOOGL','AMZN','META','NVDA','TSLA','JPM'])
parser.add_argument('--start', type=str, default='2020-01-01')
parser.add_argument('--end', type=str, default='2024-01-01')
parser.add_argument('--lookback', type=int, default=60)
parser.add_argument('--horizon', type=int, default=5)
parser.add_argument('--epochs', type=int, default=50)
parser.add_argument('--device', type=str, default='cpu')
parser.add_argument('--initial_capital', type=float, default=1_000_000)
parser.add_argument('--output', type=str, default='results/')
return parser.parse_args()
def train_alpha_model(args):
"""Train the multi-asset alpha model"""
print("=" * 60)
print("ALPHA FORGE - Multi-Asset Alpha Model Training")
print("=" * 60)
# Fetch data
pipeline = MarketDataPipeline(args.tickers, args.start, args.end)
data = pipeline.fetch_data()
# Create features
features_df = pipeline.create_feature_matrix()
X, y, tickers, dates = pipeline.create_sequences(
features_df, lookback=args.lookback, forecast_horizon=args.horizon
)
print(f"\nDataset: {len(X)} samples, {X.shape[2]} features, seq_len={args.lookback}")
# Train/val/test split (time-based)
n = len(X)
train_end = int(n * 0.7)
val_end = int(n * 0.85)
X_train, y_train = X[:train_end], y[:train_end]
X_val, y_val = X[train_end:val_end], y[train_end:val_end]
X_test, y_test = X[val_end:], y[val_end:]
print(f"Train: {len(X_train)}, Val: {len(X_val)}, Test: {len(X_test)}")
# Train ensemble
ensemble = AlphaEnsemble(
input_size=X.shape[2],
seq_len=args.lookback,
device=args.device
)
metrics = ensemble.fit(
X_train, y_train,
X_val, y_val,
epochs=args.epochs,
batch_size=64,
lr=1e-4
)
# Test predictions
test_pred = ensemble.predict(X_test)
test_ic = compute_information_coefficient(
pd.Series(test_pred),
pd.Series(y_test),
by_date=False
)
print(f"\nTest IC: {test_ic['mean_ic']:.4f}")
print(f"LSTM final val IC: {metrics['lstm']['val_ic'][-1]:.4f}")
print(f"Transformer final val IC: {metrics['transformer']['val_ic'][-1]:.4f}")
# Save model
torch.save(ensemble.lstm.state_dict(), f"{args.output}/lstm_model.pt")
torch.save(ensemble.transformer.state_dict(), f"{args.output}/transformer_model.pt")
return ensemble, metrics, test_ic
def run_backtest(args):
"""Run full pipeline backtest"""
print("=" * 60)
print("ALPHA FORGE - Full Pipeline Backtest")
print("=" * 60)
# Fetch data
pipeline = MarketDataPipeline(args.tickers, args.start, args.end)
data = pipeline.fetch_data()
features_df = pipeline.create_feature_matrix()
X, y, tickers_arr, dates = pipeline.create_sequences(
features_df, lookback=args.lookback, forecast_horizon=args.horizon
)
# Split
n = len(X)
train_end = int(n * 0.7)
val_end = int(n * 0.85)
X_train, y_train = X[:train_end], y[:train_end]
X_test, y_test = X[val_end:], y[val_end:]
dates_test = dates[val_end:]
tickers_test = tickers_arr[val_end:]
# Train alpha model
print("\n[1/4] Training Alpha Model...")
ensemble = AlphaEnsemble(input_size=X.shape[2], seq_len=args.lookback, device=args.device)
ensemble.fit(X_train, y_train, epochs=30, batch_size=64, lr=1e-4)
# Generate predictions
alpha_pred = ensemble.predict(X_test)
# Build prediction DataFrame
pred_df = pd.DataFrame({
'date': dates_test,
'ticker': tickers_test,
'predicted_return': alpha_pred,
'actual_return': y_test
})
# Compute IC
ic_metrics = compute_information_coefficient(
pred_df['predicted_return'],
pred_df['actual_return'],
by_date=True
)
print(f"Mean IC: {ic_metrics['mean_ic']:.4f} +/- {ic_metrics['ic_std']:.4f}")
print(f"IC IR: {ic_metrics['ic_ir']:.4f}")
# Train volatility model
print("\n[2/4] Training Volatility Model...")
vol_engine = VolatilityEngine()
# Build returns matrix for covariance
returns_dict = {}
for ticker in args.tickers:
if ticker in data:
close = data[ticker]['Close'].values.flatten()
returns_dict[ticker] = pd.Series(
np.log(close[1:] / close[:-1]),
index=data[ticker].index[1:]
)
returns_df = pd.DataFrame(returns_dict).fillna(0)
# Fit GARCH for each ticker
for ticker in args.tickers:
if ticker in returns_df.columns:
vol_engine.fit_garch(returns_df[ticker], ticker)
# Portfolio optimization and backtest
print("\n[3/4] Running Portfolio Optimization...")
# Get unique test dates
test_dates = pd.to_datetime(pred_df['date'].unique())
test_dates = sorted(test_dates)
# Rebalance every 5 days
rebalance_dates = test_dates[::5]
optimizer = PortfolioOptimizer(
max_weight=0.25,
risk_aversion=2.0,
transaction_cost=0.0003,
turnover_penalty=0.001
)
weights_history = []
for rebalance_date in rebalance_dates:
# Get predictions for this date
day_preds = pred_df[pred_df['date'] == rebalance_date]
if len(day_preds) < 3:
continue
# Build mu vector
mu = day_preds.set_index('ticker')['predicted_return'].reindex(args.tickers).fillna(0).values
# Build covariance matrix
try:
Sigma = vol_engine.build_covariance_matrix(returns_df, rebalance_date)
Sigma = Sigma.reindex(index=args.tickers, columns=args.tickers).fillna(0)
Sigma = Sigma.values
except:
Sigma = np.eye(len(args.tickers)) * 0.04
# Optimize
result = optimizer.optimize_max_sharpe(mu, Sigma)
weights_row = pd.Series(result['weights'], index=args.tickers)
weights_row.name = rebalance_date
weights_history.append(weights_row)
weights_df = pd.DataFrame(weights_history)
# Build returns for backtest
backtest_returns = returns_df.reindex(weights_df.index).fillna(0)
# Run backtest
print("\n[4/4] Running Backtest...")
engine = BacktestEngine(
initial_capital=args.initial_capital,
transaction_cost=0.0003,
slippage=0.0001
)
metrics = engine.run_backtest(
backtest_returns,
weights_df,
rebalance_dates=weights_df.index
)
# Regime detection
if 'SPY' in returns_df.columns:
regime_detector = RegimeDetector()
spy_returns = returns_df['SPY'].reindex(weights_df.index).fillna(0)
regimes = regime_detector.detect_regimes(spy_returns)
regime_stats = regime_detector.get_regime_stats(spy_returns)
print("\nRegime Statistics:")
print(regime_stats.to_string())
# Print results
print("\n" + "=" * 60)
print("BACKTEST RESULTS")
print("=" * 60)
print(f"Total Return: {metrics['total_return']*100:.2f}%")
print(f"Annualized Return: {metrics['annualized_return']*100:.2f}%")
print(f"Volatility: {metrics['volatility']*100:.2f}%")
print(f"Sharpe Ratio: {metrics['sharpe_ratio']:.3f}")
print(f"Sortino Ratio: {metrics['sortino_ratio']:.3f}")
print(f"Max Drawdown: {metrics['max_drawdown']*100:.2f}%")
print(f"Calmar Ratio: {metrics['calmar_ratio']:.3f}")
print(f"Win Rate: {metrics['win_rate']*100:.1f}%")
print(f"Alpha: {metrics['alpha']*100:.2f}%")
print(f"Beta: {metrics['beta']:.3f}")
print(f"Information Ratio: {metrics['information_ratio']:.3f}")
print(f"Avg Turnover: {metrics['avg_turnover']*100:.2f}%")
print(f"Total Costs: ${metrics['total_transaction_costs']:,.2f}")
print(f"Final Capital: ${metrics['final_capital']:,.2f}")
print(f"Trades: {metrics['n_trades']}")
# Save results
import os
os.makedirs(args.output, exist_ok=True)
results = {
'metrics': metrics,
'ic_metrics': ic_metrics,
'equity_curve': engine.get_equity_curve().to_dict(),
'weights': weights_df.to_dict()
}
import json
with open(f"{args.output}/backtest_results.json", 'w') as f:
json.dump({k: v for k, v in results.items() if k != 'weights'}, f, indent=2, default=str)
weights_df.to_csv(f"{args.output}/weights_history.csv")
print(f"\nResults saved to {args.output}/")
return metrics, engine
def train_options_model(args):
"""Train ML options pricing model"""
print("=" * 60)
print("ALPHA FORGE - Options Pricing Model")
print("=" * 60)
pricer = MLOptionsPricer(device=args.device)
# Generate synthetic training data
print("Generating synthetic option data...")
train_df = pricer.generate_synthetic_options(n_samples=50000)
val_df = pricer.generate_synthetic_options(n_samples=10000)
X_train = pricer.prepare_features(train_df)
y_train = train_df['price'].values
X_val = pricer.prepare_features(val_df)
y_val = val_df['price'].values
print(f"Training samples: {len(X_train)}, Validation: {len(X_val)}")
# Train
metrics = pricer.fit(X_train, y_train, X_val, y_val, epochs=100, batch_size=256)
# Test on a few examples
test_df = pricer.generate_synthetic_options(n_samples=5)
X_test = pricer.prepare_features(test_df)
ml_prices = pricer.predict(X_test)
bs_prices = []
for i in range(len(test_df)):
if test_df['option_type'].iloc[i] == 'call':
p = pricer.bs.call_price(
test_df['S'].iloc[i], test_df['K'].iloc[i],
test_df['T'].iloc[i], test_df['r'].iloc[i],
test_df['sigma_hist'].iloc[i]
)
else:
p = pricer.bs.put_price(
test_df['S'].iloc[i], test_df['K'].iloc[i],
test_df['T'].iloc[i], test_df['r'].iloc[i],
test_df['sigma_hist'].iloc[i]
)
bs_prices.append(p)
print("\nSample Predictions:")
print(f"{'True':>10} {'ML':>10} {'BS':>10} {'ML Err%':>10} {'BS Err%':>10}")
for i in range(len(test_df)):
true_p = test_df['price'].iloc[i]
ml_err = abs(ml_prices[i] - true_p) / true_p * 100
bs_err = abs(bs_prices[i] - true_p) / true_p * 100
print(f"{true_p:>10.2f} {ml_prices[i]:>10.2f} {bs_prices[i]:>10.2f} {ml_err:>10.2f} {bs_err:>10.2f}")
# Save
import os
os.makedirs(args.output, exist_ok=True)
torch.save(pricer.model.state_dict(), f"{args.output}/options_model.pt")
return pricer, metrics
def main():
args = parse_args()
if args.mode == 'train':
train_alpha_model(args)
elif args.mode == 'backtest':
run_backtest(args)
elif args.mode == 'options':
train_options_model(args)
else:
print("Live mode not implemented in this version")
if __name__ == '__main__':
main()
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