# Algorithmic Trading System A comprehensive algorithmic trading system with synthetic data generation, comprehensive logging, and extensive testing capabilities. ## Features ### Core Trading System - **Agent-based Architecture**: Modular design with separate strategy and execution agents - **Technical Analysis**: Built-in technical indicators (SMA, RSI, Bollinger Bands, MACD) - **Risk Management**: Position sizing and drawdown limits - **Order Execution**: Simulated broker integration with realistic execution delays ### Synthetic Data Generation - **Realistic Market Data**: Generate OHLCV data using geometric Brownian motion - **Multiple Frequencies**: Support for 1min, 5min, 1H, and 1D data - **Market Scenarios**: Normal, volatile, trending, and crash market conditions - **Tick Data**: High-frequency tick data generation for testing - **Configurable Parameters**: Volatility, trend, noise levels, and base prices ### Comprehensive Logging - **Multi-level Logging**: Console and file-based logging - **Rotating Log Files**: Automatic log rotation with size limits - **Specialized Loggers**: Separate loggers for trading, performance, and errors - **Structured Logging**: Detailed log messages with timestamps and context ### Testing Framework - **Unit Tests**: Comprehensive tests for all components - **Integration Tests**: End-to-end workflow testing - **Test Coverage**: Code coverage reporting with HTML and XML outputs - **Mock Testing**: Isolated testing with mocked dependencies ## Installation 1. Clone the repository: ```bash git clone cd algorithmic_trading ``` 2. Install dependencies: ```bash pip install -r requirements.txt ``` ## Configuration The system is configured via `config.yaml`: ```yaml # Data source configuration data_source: type: 'synthetic' # or 'csv' path: 'data/market_data.csv' # Trading parameters trading: symbol: 'AAPL' timeframe: '1min' capital: 100000 # Risk management risk: max_position: 100 max_drawdown: 0.05 # Order execution execution: broker_api: 'paper' order_size: 10 delay_ms: 100 success_rate: 0.95 # Synthetic data generation synthetic_data: base_price: 150.0 volatility: 0.02 trend: 0.001 noise_level: 0.005 generate_data: true data_path: 'data/synthetic_market_data.csv' # Logging configuration logging: log_level: 'INFO' log_dir: 'logs' enable_console: true enable_file: true max_file_size_mb: 10 backup_count: 5 ``` ## Usage ### Standard Trading Mode ```bash python -m agentic_ai_system.main ``` ### Backtest Mode ```bash python -m agentic_ai_system.main --mode backtest --start-date 2024-01-01 --end-date 2024-12-31 ``` ### Live Trading Mode ```bash python -m agentic_ai_system.main --mode live --duration 60 ``` ### Custom Configuration ```bash python -m agentic_ai_system.main --config custom_config.yaml ``` ## Running Tests ### All Tests ```bash pytest ``` ### Unit Tests Only ```bash pytest -m unit ``` ### Integration Tests Only ```bash pytest -m integration ``` ### With Coverage Report ```bash pytest --cov=agentic_ai_system --cov-report=html ``` ### Specific Test File ```bash pytest tests/test_synthetic_data_generator.py ``` ## System Architecture ### Components 1. **SyntheticDataGenerator**: Generates realistic market data for testing 2. **DataIngestion**: Loads and validates market data from various sources 3. **StrategyAgent**: Analyzes market data and generates trading signals 4. **ExecutionAgent**: Executes trading orders with broker simulation 5. **Orchestrator**: Coordinates the entire trading workflow 6. **LoggerConfig**: Manages comprehensive logging throughout the system ### Data Flow ``` Synthetic Data Generator → Data Ingestion → Strategy Agent → Execution Agent ↓ Logging System ``` ## Synthetic Data Generation ### Features - **Geometric Brownian Motion**: Realistic price movement simulation - **OHLCV Data**: Complete market data with open, high, low, close, and volume - **Market Scenarios**: Different market conditions for testing - **Configurable Parameters**: Adjustable volatility, trend, and noise levels ### Usage Examples ```python from agentic_ai_system.synthetic_data_generator import SyntheticDataGenerator # Initialize generator generator = SyntheticDataGenerator(config) # Generate OHLCV data data = generator.generate_ohlcv_data( symbol='AAPL', start_date='2024-01-01', end_date='2024-12-31', frequency='1min' ) # Generate tick data tick_data = generator.generate_tick_data( symbol='AAPL', duration_minutes=60, tick_interval_ms=1000 ) # Generate market scenarios crash_data = generator.generate_market_scenarios('crash') volatile_data = generator.generate_market_scenarios('volatile') ``` ## Logging System ### Log Files - `logs/trading_system.log`: General system logs - `logs/trading.log`: Trading-specific logs - `logs/performance.log`: Performance metrics - `logs/errors.log`: Error logs ### Log Levels - **DEBUG**: Detailed debugging information - **INFO**: General information about system operation - **WARNING**: Warning messages for potential issues - **ERROR**: Error messages for failed operations - **CRITICAL**: Critical system failures ### Usage Examples ```python import logging from agentic_ai_system.logger_config import setup_logging, get_logger # Setup logging setup_logging(config) # Get logger for specific module logger = get_logger(__name__) # Log messages logger.info("Trading signal generated") logger.warning("High volatility detected") logger.error("Order execution failed", exc_info=True) ``` ## Testing ### Test Structure ``` tests/ ├── __init__.py ├── test_synthetic_data_generator.py ├── test_strategy_agent.py ├── test_execution_agent.py ├── test_data_ingestion.py └── test_integration.py ``` ### Test Categories - **Unit Tests**: Test individual components in isolation - **Integration Tests**: Test complete workflows - **Performance Tests**: Test system performance and scalability - **Error Handling Tests**: Test error conditions and edge cases ### Running Specific Tests ```bash # Run tests with specific markers pytest -m unit pytest -m integration pytest -m slow # Run tests with coverage pytest --cov=agentic_ai_system --cov-report=html # Run tests in parallel pytest -n auto # Run tests with verbose output pytest -v ``` ## Performance Monitoring The system includes comprehensive performance monitoring: - **Execution Time Tracking**: Monitor workflow execution times - **Trade Statistics**: Track successful vs failed trades - **Performance Metrics**: Calculate returns and drawdowns - **Resource Usage**: Monitor memory and CPU usage ## Error Handling The system includes robust error handling: - **Graceful Degradation**: System continues operation despite component failures - **Error Logging**: Comprehensive error logging with stack traces - **Fallback Mechanisms**: Automatic fallback to synthetic data when CSV files are missing - **Validation**: Data validation at multiple levels ## Contributing 1. Fork the repository 2. Create a feature branch 3. Add tests for new functionality 4. Ensure all tests pass 5. Submit a pull request ## License This project is licensed under the MIT License - see the LICENSE file for details. ## Disclaimer This is a simulation system for educational and testing purposes. It is not intended for real trading and should not be used with real money. Always test thoroughly before using any trading system with real funds.