Metadata-Version: 2.4
Name: project-x-py
Version: 3.1.8
Summary: High-performance Python SDK for futures trading with real-time WebSocket data, technical indicators, order management, and market depth analysis
Project-URL: Homepage, https://github.com/TexasCoding/project-x-py
Project-URL: Documentation, https://project-x-py.readthedocs.io/en/latest/
Project-URL: Repository, https://github.com/TexasCoding/project-x-py.git
Project-URL: Bug Tracker, https://github.com/TexasCoding/project-x-py/issues
Project-URL: Changelog, https://github.com/TexasCoding/project-x-py/blob/main/CHANGELOG.md
Author-email: TexasCoding <jeff10278@me.com>
Maintainer-email: TexasCoding <jeff10278@me.com>
License: MIT
License-File: LICENSE
Keywords: api-client,financial-data,futures,market-data,projectx,real-time-data,topstepx,trading
Classifier: Development Status :: 4 - Beta
Classifier: Intended Audience :: Developers
Classifier: Intended Audience :: Financial and Insurance Industry
Classifier: License :: OSI Approved :: MIT License
Classifier: Operating System :: OS Independent
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.12
Classifier: Programming Language :: Python :: 3.13
Classifier: Topic :: Office/Business :: Financial :: Investment
Classifier: Topic :: Software Development :: Libraries :: Python Modules
Classifier: Typing :: Typed
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Description-Content-Type: text/markdown

# ProjectX Python SDK

[![Python Version](https://img.shields.io/badge/python-3.12%2B-blue.svg)](https://python.org)
[![License](https://img.shields.io/badge/license-MIT-green.svg)](LICENSE)
[![Code Style](https://img.shields.io/badge/code%20style-black-000000.svg)](https://github.com/psf/black)
[![Performance](https://img.shields.io/badge/performance-optimized-brightgreen.svg)](#performance-optimizations)
[![Async](https://img.shields.io/badge/async-native-brightgreen.svg)](#async-architecture)

A **high-performance async Python SDK** for the [ProjectX Trading Platform](https://www.projectx.com/) Gateway API. This library enables developers to build sophisticated trading strategies and applications by providing comprehensive async access to futures trading operations, historical market data, real-time streaming, technical analysis, and advanced market microstructure tools with enterprise-grade performance optimizations.

> **Note**: This is a **client library/SDK**, not a trading strategy. It provides the tools and infrastructure to help developers create their own trading strategies that integrate with the ProjectX platform.

## 🎯 What is ProjectX?

[ProjectX](https://www.projectx.com/) is a cutting-edge web-based futures trading platform that provides:
- **TradingView Charts**: Advanced charting with hundreds of indicators
- **Risk Controls**: Auto-liquidation, profit targets, daily loss limits
- **Unfiltered Market Data**: Real-time depth of market data with millisecond updates
- **REST API**: Comprehensive API for custom integrations
- **Mobile & Web Trading**: Native browser-based trading platform

This Python SDK acts as a bridge between your trading strategies and the ProjectX platform, handling all the complex API interactions, data processing, and real-time connectivity.

## 🚀 v3.1.6 - Stable Production Release

**Latest Version**: v3.1.6 - Fixed critical deadlock in event handlers. See [CHANGELOG.md](CHANGELOG.md) for full release history.

### 📦 Production Stability Guarantee

Since v3.1.1, this project maintains:
- ✅ Backward compatibility between minor versions
- ✅ Deprecation warnings for at least 2 minor versions before removal  
- ✅ Breaking changes only in major releases (4.0.0+)
- ✅ Strict semantic versioning (MAJOR.MINOR.PATCH)

### Key Features

- **TradingSuite Class**: Unified entry point for simplified SDK usage
- **One-line Initialization**: `TradingSuite.create()` handles all setup
- **Feature Flags**: Easy enabling of optional components
- **Context Manager Support**: Automatic cleanup with `async with` statements
- **Unified Event Handling**: Built-in EventBus for all components
- **Performance Optimized**: Connection pooling, caching, and WebSocket batching
- **Memory Management**: Automatic overflow to disk with transparent access

### Why Async?

- **Concurrent Operations**: Execute multiple API calls simultaneously
- **Non-blocking I/O**: Handle real-time data feeds without blocking
- **Better Resource Usage**: Single thread handles thousands of concurrent operations
- **WebSocket Native**: Perfect for real-time trading applications
- **Modern Python**: Leverages Python 3.12+ async features

### Migration to v3.0+

If you're upgrading from v2.x, key changes include TradingSuite replacing factories:

```python
# Old (v2.x)
suite = await create_initialized_trading_suite(\"MNQ\", client)

# New (v3.0+)
suite = await TradingSuite.create(\"MNQ\")
```

## ✨ Key Features

### Core Trading Operations (All Async)
- **Authentication & Account Management**: Multi-account support with async session management
- **Order Management**: Place, modify, cancel orders with real-time async updates
- **Position Tracking**: Real-time position monitoring with P&L calculations
- **Market Data**: Historical and real-time data with async streaming
- **Risk Management**: Portfolio analytics and risk metrics

### Advanced Features
- **58+ Technical Indicators**: Full TA-Lib compatibility with Polars optimization including new pattern indicators
- **Level 2 OrderBook**: Depth analysis, iceberg detection, market microstructure
- **Real-time WebSockets**: Async streaming for quotes, trades, and account updates
- **Performance Optimized**: Connection pooling, intelligent caching, memory management
- **Pattern Recognition**: Fair Value Gaps, Order Blocks, and Waddah Attar Explosion indicators
- **Enterprise Error Handling**: Production-ready error handling with decorators and structured logging
- **Comprehensive Testing**: High test coverage with async-safe testing patterns

## 📦 Installation

### Using UV (Recommended)
```bash
uv add project-x-py
```

### Using pip
```bash
pip install project-x-py
```

### Development Installation
```bash
git clone https://github.com/yourusername/project-x-py.git
cd project-x-py
uv sync  # or: pip install -e ".[dev]"
```

## 🚀 Quick Start

### Basic Usage

```python
import asyncio
from project_x_py import TradingSuite

async def main():
    suite = await TradingSuite.create(\"MNQ\")
    
    print(f\"Connected to account: {suite.client.account_info.name}\")
    
    print(f\"Trading {suite.instrument.name} - Tick size: ${suite.instrument.tickSize}\")
    
    data = await suite.client.get_bars(\"MNQ\", days=5)
    print(f\"Retrieved {len(data)} bars\")
    
    positions = await suite.positions.get_all_positions()
    for position in positions:
        print(f\"Position: {position.size} @ ${position.averagePrice}\")
    
    await suite.disconnect()

if __name__ == \"__main__\":
    asyncio.run(main())
```

### Trading Suite (NEW in v3.0+)

The easiest way to get started with a complete trading setup:

```python
import asyncio
from project_x_py import TradingSuite, EventType

async def main():
    suite = await TradingSuite.create(
        \"MNQ\",
        timeframes=[\"5min\", \"15min\", \"1hr\"],
        features=[\"orderbook\", \"risk_manager\"]
    )
    
    # Register event handlers
    async def on_new_bar(event):
        # Access bar data directly from event
        print(f\"New {event.data['timeframe']} bar: {event.data['data']['close']}\")
    
    async def on_trade(event):
        print(f\"Trade: {event.data['size']} @ {event.data['price']}\")
    
    # Register the handlers
    await suite.on(EventType.NEW_BAR, on_new_bar)
    await suite.on(EventType.TRADE_TICK, on_trade)
    
    # Access components
    data = await suite.data.get_data(\"5min\")
    orderbook = suite.orderbook  # Available since feature enabled
    order_manager = suite.orders
    position_manager = suite.positions
    
    await suite.disconnect()

if __name__ == \"__main__\":
    asyncio.run(main())
```

### Real-time Trading Example

```python
import asyncio
from project_x_py import TradingSuite

async def on_tick(tick_data):
    print(f\"Price: ${tick_data['price']}\")

async def main():
    suite = await TradingSuite.create(\"MNQ\")
    
    suite.data.add_tick_callback(on_tick)
    
    current_price = await suite.data.get_current_price()
    
    response = await suite.orders.place_bracket_order(
        contract_id=suite.instrument.id,
        side=0,  # Buy
        size=1,
        entry_price=current_price,
        stop_loss_price=current_price - 10,
        take_profit_price=current_price + 15
    )
    
    print(f\"Order placed: {response}\")
    
    await asyncio.sleep(60)
    await suite.disconnect()

if __name__ == \"__main__\":
    asyncio.run(main())
```

## ⚡ Event Handling Best Practices

### Avoiding Deadlocks (Fixed in v3.1.6)

Prior to v3.1.6, calling `suite.data` methods from within event handlers could cause deadlocks. This has been fixed, but for best performance:

```python
# Best: Use event data directly
async def on_new_bar(event):
    # Bar data is provided in the event
    bar = event.data['data']
    print(f"Close: {bar['close']}, Volume: {bar['volume']}")

# Register the handler
await suite.on(EventType.NEW_BAR, on_new_bar)

# Also OK (v3.1.6+): Access data methods if needed
async def on_new_bar_with_context(event):
    # Safe in v3.1.6+, but slightly slower
    current_price = await suite.data.get_current_price()
    historical = await suite.data.get_data("5min", bars=20)

await suite.on(EventType.NEW_BAR, on_new_bar_with_context)
```

## 📚 Documentation

### Authentication

Set environment variables:
```bash
export PROJECT_X_API_KEY="your_api_key"
export PROJECT_X_USERNAME="your_username"
```

Or use a config file (`~/.config/projectx/config.json`):
```json
{
    "api_key": "your_api_key",
    "username": "your_username",
    "api_url": "https://api.topstepx.com/api",
    "websocket_url": "wss://api.topstepx.com",
    "timezone": "US/Central"
}
```

### Component Overview

#### ProjectX Client
The underlying async client, accessible via suite.client:
```python
suite = await TradingSuite.create(\"MNQ\")
# Use suite.client for direct API operations
```

#### OrderManager
Async order management via suite.orders:
```python
await suite.orders.place_market_order(suite.instrument.id, side=0, size=1)
await suite.orders.modify_order(order_id, new_price=100.50)
await suite.orders.cancel_order(order_id)
```

#### PositionManager
Async position tracking and analytics:
```python
position_manager = suite["position_manager"]
positions = await position_manager.get_all_positions()
pnl = await position_manager.get_portfolio_pnl()
await position_manager.close_position(contract_id)
```

#### RealtimeDataManager
Async multi-timeframe data management:
```python
data_manager = suite["data_manager"]
await data_manager.initialize(initial_days=5)
data = await data_manager.get_data("15min")
current_price = await data_manager.get_current_price()
```

#### OrderBook
Async Level 2 market depth analysis:
```python
orderbook = suite["orderbook"]
spread = await orderbook.get_bid_ask_spread()
imbalance = await orderbook.get_market_imbalance()
icebergs = await orderbook.detect_iceberg_orders()
```

### Technical Indicators

All 58+ indicators work with async data pipelines:
```python
import polars as pl
from project_x_py.indicators import RSI, SMA, MACD, FVG, ORDERBLOCK, WAE

# Get data - multiple ways
data = await client.get_bars("ES", days=30)  # Last 30 days

# Or use specific time range (v3.1.5+)
from datetime import datetime
start = datetime(2025, 1, 1, 9, 30)
end = datetime(2025, 1, 10, 16, 0)
data = await client.get_bars("ES", start_time=start, end_time=end)

# Apply traditional indicators
data = data.pipe(SMA, period=20).pipe(RSI, period=14)

# Apply pattern recognition indicators
data_with_fvg = FVG(data, min_gap_size=0.001, check_mitigation=True)
data_with_ob = ORDERBLOCK(data, min_volume_percentile=70)
data_with_wae = WAE(data, sensitivity=150)

# Or use class-based interface
from project_x_py.indicators import OrderBlock, FVG, WAE
ob = OrderBlock()
data_with_ob = ob.calculate(data, use_wicks=True)
```

#### New Pattern Indicators (v2.0.2)
- **Fair Value Gap (FVG)**: Identifies price imbalance areas
- **Order Block**: Detects institutional order zones
- **Waddah Attar Explosion (WAE)**: Strong trend and breakout detection

## 🏗️ Examples

The `examples/` directory contains comprehensive async examples:

1. **01_basic_client_connection.py** - Async authentication and basic operations
2. **02_order_management.py** - Async order placement and management
3. **03_position_management.py** - Async position tracking and P&L
4. **04_realtime_data.py** - Real-time async data streaming
5. **05_orderbook_analysis.py** - Async market depth analysis
6. **06_multi_timeframe_strategy.py** - Async multi-timeframe trading
7. **07_technical_indicators.py** - Using indicators with async data
8. **08_order_and_position_tracking.py** - Integrated async monitoring
9. **09_get_check_available_instruments.py** - Interactive async instrument search
10. **12_simplified_strategy.py** - NEW: Simplified strategy using auto-initialization
11. **13_factory_comparison.py** - NEW: Comparison of factory function approaches

## 🔧 Configuration

### TradingSuiteConfig Options

Use parameters in TradingSuite.create()

### Performance Tuning

Configure caching and memory limits:
```python
# In OrderBook
orderbook = OrderBook(
    instrument="ES",
    max_trades=10000,  # Trade history limit
    max_depth_entries=1000,  # Depth per side
    cache_ttl=300  # 5 minutes
)

# In RealtimeDataManager
data_manager = RealtimeDataManager(
    instrument="NQ",
    max_bars_per_timeframe=1000,
    tick_buffer_size=1000
)
```

## 🔍 Error Handling & Logging (v2.0.5+)

### Structured Error Handling

All async operations use typed exceptions with automatic retry and logging:

```python
from project_x_py.exceptions import (
    ProjectXAuthenticationError,
    ProjectXOrderError,
    ProjectXRateLimitError
)
from project_x_py.utils import configure_sdk_logging

# Configure logging for production
configure_sdk_logging(
    level=logging.INFO,
    format_json=True,  # JSON logs for production
    log_file="/var/log/projectx/trading.log"
)

try:
    async with ProjectX.from_env() as client:
        await client.authenticate()  # Automatic retry on network errors
except ProjectXAuthenticationError as e:
    # Structured error with context
    print(f"Authentication failed: {e}")
except ProjectXRateLimitError as e:
    # Automatic backoff already attempted
    print(f"Rate limit exceeded: {e}")
```

### Error Handling Decorators

The SDK uses decorators for consistent error handling:

```python
# All API methods have built-in error handling
@handle_errors("place order")
@retry_on_network_error(max_attempts=3)
@validate_response(required_fields=["orderId"])
async def place_order(self, ...):
    # Method implementation
```

## 🔧 Troubleshooting

### Common Issues with Factory Functions

#### JWT Token Not Available
```python
# Error: "JWT token is required but not available from client"
# Solution: Ensure client is authenticated before creating suite
async with ProjectX.from_env() as client:
    await client.authenticate()  # Don't forget this!
    suite = await create_initialized_trading_suite("MNQ", client)
```

#### Instrument Not Found
```python
# Error: "Instrument MNQ not found"
# Solution: Verify instrument symbol is correct
# Common symbols: "MNQ", "MES", "MGC", "ES", "NQ"
```

#### Connection Timeouts
```python
# If initialization times out, try manual setup with error handling:
try:
    suite = await create_trading_suite(
        instrument="MNQ",
        project_x=client,
        auto_connect=False
    )
    await suite["realtime_client"].connect()
except Exception as e:
    print(f"Connection failed: {e}")
```

#### Memory Issues with Long-Running Strategies
```python
# The suite automatically manages memory, but for long-running strategies:
# 1. Use reasonable initial_days (3-7 is usually sufficient)
# 2. The data manager automatically maintains sliding windows
# 3. OrderBook has built-in memory limits
```

#### Rate Limiting
```python
# The SDK handles rate limiting automatically, but if you encounter issues:
# 1. Reduce concurrent API calls
# 2. Add delays between operations
# 3. Use batch operations where available
```

## 📌 Versioning Policy

As of v3.1.1, this project follows strict [Semantic Versioning](https://semver.org/):

- **PATCH** (x.x.N): Bug fixes only, no API changes
- **MINOR** (x.N.x): New features, backward compatible, deprecation warnings added
- **MAJOR** (N.x.x): Breaking changes allowed, deprecated features removed

### Deprecation Policy
- Features marked as deprecated will include clear migration instructions
- Deprecated features maintained for at least 2 minor versions
- Removal only occurs in major version releases

## 🤝 Contributing

We welcome contributions! Please see [CONTRIBUTING.md](CONTRIBUTING.md) for guidelines.

### Development Setup
```bash
# Clone repository
git clone https://github.com/yourusername/project-x-py.git
cd project-x-py

# Install with dev dependencies
uv sync

# Run tests
uv run pytest

# Format code
uv run ruff format .

# Lint
uv run ruff check .
```

## 📄 License

This project is licensed under the MIT License - see [LICENSE](LICENSE) file for details.

## 🔗 Resources

- [ProjectX Platform](https://www.projectx.com/)
- [API Documentation](https://documenter.getpostman.com/view/24500417/2s9YRCXrKF)
- [GitHub Repository](https://github.com/yourusername/project-x-py)
- [PyPI Package](https://pypi.org/project/project-x-py/)

## ⚠️ Disclaimer

This SDK is for educational and development purposes. Trading futures involves substantial risk of loss and is not suitable for all investors. Past performance is not indicative of future results. Always test your strategies thoroughly before using real funds.