Metadata-Version: 2.4
Name: antback
Version: 0.0.5
Summary: Antback: Lightweight Backtesting with Heavyweight Insight
Project-URL: Homepage, https://github.com/ts-kontakt/antback
Project-URL: Issues, https://github.com/ts-kontakt/antback/issues
Author-email: Tomasz Sługocki <ts.kontakt@gmail.com>
License-Expression: MIT
Requires-Dist: numpy
Requires-Dist: pandas
Description-Content-Type: text/markdown

# Antback
[![PyPI version](https://img.shields.io/pypi/v/antback.svg)](https://pypi.org/project/antback/)

**Antback: Fast, Transparent, and Debuggable Backtesting**

A lightweight, event-loop-style backtest engine that allows a function-driven imperative style using efficient stateful helper functions and data containers.

## Key Features
- **Transparency**: Every step is visible and debuggable. No black-box logic.
- **Balances simplicity with robustness** - ideal for rapid strategy prototyping.
- **Interactive HTML Reports**: Detailed reports with sorting and filtering capabilities via DataTables.
- **High Performance**: Optimized data structures for speed - very fast.
- **Easy to use with different data sources** - only needs `date` and `price` values.
-  **Avoids Lookahead Bias**: by processing data sequentially. Use wait functions to enforce delays between signals.


## Installation

A key feature is the generation of interactive HTML reports, which allow for easy inspection of trades. The lightweight [df2tables](https://github.com/ts-kontakt/df2tables) module is used for this purpose. For Excel reports, [xlreport](https://github.com/ts-kontakt/xlreport) is used.

So the full install command is:
```bash
pip install antback df2tables xlreport
```

### Demo
```python
import antback as ab
ab.demo()
```
The demo feature generates random trades of several stocks at random prices and generates an interactive report. A profit is slightly more likely than a loss - *it's a demo, after all*.

## Quick Start

### Simple SMA Crossover Strategy

```python
import numpy as np
import yfinance as yf

import antback as ab

symbol = "QQQ"
data = yf.Ticker(symbol).history(period="10y")

port = ab.Portfolio(10_000, single=True)
fast, slow = 10, 30

prices = ab.RollingList(maxlen=slow)
cross = ab.new_cross_func()

for date, price in data["Close"].items():
    prices.append(price)
    price_history = prices.values()
    signal = "update"  # Reset signal - just update portfolio position

    if len(price_history) >= slow:
        fast_ma = np.mean(price_history[-fast:]) 
        slow_ma = np.mean(price_history[-slow:])
        direction = cross(fast_ma, slow_ma)  # active crosses  passive
        if direction == "up":
            signal = "buy"
        elif direction == "down":
            signal = "sell"
    port.process(signal, symbol, date, price)

port.basic_report(show=True)

port.full_report(outfile=f"Porfolio_report.html", title=f"SMA Crossover on {symbol}")
```
### Full report screenshot (html)
*Excel version is also avaliable*

![Report](https://github.com/ts-kontakt/antback/blob/main/antback-report.png?raw=true)

**Interactive filtering trades** (default html report)

<img src="https://github.com/ts-kontakt/antback/blob/main/filter_trades.gif?raw=true" alt="Interactive trade filtering demo" width="600" height="auto">

### Generate excel report
```
port.full_report('excel', outfile=f'{descr}_report.xlsx', title=descr)
```
See detailed [excel report](https://github.com/ts-kontakt/antback/blob/main/examples/portfolio-report.xlsx) generated with above example.

> **Note**: The implementation above is not the most efficient because ```np.mean``` is called separately for each new row of data. See alternative, faster versions in: [examples/10_simple_benchmark.py](https://github.com/ts-kontakt/antback/blob/main/examples/10_simple_benchmark.py)
>
> **Optimization**: In fact, the average lengths in this case are slightly optimized; see: [examples/08_optimization.py](https://github.com/ts-kontakt/antback/blob/main/examples/07_optimization.py).
> The results may be even better if [trailing ATR stop](https://github.com/ts-kontakt/antback/blob/main/examples/04_atr_stop.py) is used for the sell signal instead of the averages.

## Core Components
### Portfolio Class

The main trading engine that handles position management, trade execution, and performance tracking:

```python
port = ab.Portfolio(
    cash=10_000,              
    single=True,     # Single asset mode - default
    warn=False,               
    allow_fractional=False,   
    fees=0.0015              
)
```

**Trading Patterns:**
- ```port.process(signal, symbol, date, price)```

Signal can be `buy`, `sell` or `None` (also explicit `update`)

Example:
```python
...
if direction == "up":
    signal = 'buy'
elif direction == "down":
    signal = 'sell'
port.process(signal, symbol, date, price)
```
Methods can be also called directly: `port.buy()`, `port.sell()`, `port.update()` 

See [06_simple_2_assets_rotation.py](https://github.com/ts-kontakt/antback/blob/main/examples/06_simple_2_assets_rotation.py).

**Important Notes**
- **No re-buying or re-selling**: Duplicate signals are ignored (set `warn=True` to see warnings)
- **Multi-position support** - Currently supported with manual trade sizing via `fixed_val` parameter. (set single=False, [example](https://github.com/ts-kontakt/antback/blob/main/examples/07_faber_assets_rotation.py) ). 
- **Long-only**: Currently, only long positions are possible.

### CFDAccount Class

Trading engine for CFD  and FX trading with margin requirements, leverage, and both long/short positions:

```python
cfd = ab.CFDAccount(
    cash=50_000,              
    margin_requirement=0.1,   # Required margin as fraction (0.1 = 10%)
    leverage=2,               
    warn=False,               
    allow_fractional=True,    
    fees=0.00015,           
    margin_call_level=0.5 
)
```
 [long/short example - intraday BTC 15min](https://github.com/ts-kontakt/antback/blob/main/examples/09_intraday_long_short_btc.py)


**CFD Trading Patterns:**
```python
# Long position
cfd.process("long", symbol, date, price)

# Short position  
cfd.process("short", symbol, date, price)

# Close current position
cfd.process("close", symbol, date, price)

# Update position value
cfd.process(None, symbol, date, price)  # or "update"
```
**Key CFD Features:**
- **Long and short positions**
- **Only single position at time is supported**
- **Margin trading**: backtest with leverage while managing margin requirements

## More Examples & Use Cases
Explore the [examples](examples/) to see Antback in action - from basic strategies to  multi-asset rotations.

## Useful functions
### Cross Function

```new_cross_func()``` returns a stateful crossover detector function that tracks when one time series crosses another.

> **ℹ️ Note:** In most cases, the **active** series is a *shorter time frame* indicator compared to the **passive** series. This means it reacts faster to changes, making crossovers more responsive.

The returned function compares an **active** and **passive** series value at each call and returns:
- **`up`** when the **active** value moves from below to above the **passive** value
- **`down`** when the **active** value moves from above to below the **passive** value
- `None` if there's no crossover or insufficient data

### Wait Functions - Preventing Lookahead Bias

Example use of a wait function.

```python
sell_timer = ab.new_wait_n_bars(4) # wait 4 bars, then sell

for date, price in data:
    signal = None
    ready_to_sell = sell_timer(bar=date)
    if ready_to_sell:
        signal = 'sell'
    if buy_conditon:
        signal = 'buy'
        sell_timer(start=True)
    port.process(signal, symbol, date, price)
```
See examples [05_easter_effect_test.py](https://github.com/ts-kontakt/antback/blob/main/examples/05_easter_effect_test.py).

There is also a per-ticker wait version (new_multi_ticker_wait) that creates separate functions for each symbol:
[wait demo](https://github.com/ts-kontakt/antback/blob/main/examples/12_wait_example.py)


### Optimized Data Structures

#### RollingArray
Fast numpy-based rolling window  (Uses manual slice assignment ([:] = [...])	In-place operation; avoids temporary memory allocations. 
can be 2 to 10 times faster than np.roll. Best suited for numeric data.
```python
prices = ab.RollingArray(window_size=50)
prices.append(new_price)
price_history = prices.values()
```

#### RollingList  
An efficient, deque-based container for arbitrary objects (e.g., candle objects):
```python
prices = ab.RollingList(maxlen=30)
prices.append(price_data)
recent_prices = prices.values()
```
#### Multi-ticker strategies

For more advanced multi-ticker strategies or those using machine learning, it's often necessary to track more than a few dozen rolling features. The ```NamedRollingArrays``` and ```PerTickerNamedRollingArrays``` classes are available for this purpose ([rolling demo](https://github.com/ts-kontakt/antback/blob/main/examples/13_demo_rolling.py)).


### Performance & Technical Indicators

Antback does not include its own indicators (except for clousure based SMA and ATR functions), but you can use any technical analysis (TA) library. Antback is most suitable with event-driven technical indicators. For optimal performance, [talipp](https://github.com/nardew/talipp) indicators, which is designed for streaming data may be used:

```python
from talipp.indicators import SMA

fast_sma, slow_sma = SMA(period=10), SMA(period=30)

for date, price in data.items():
    fast_sma.add(price)
    slow_sma.add(price)
    
    if fast_sma[-1] and slow_sma[-1]:  # Check if indicators have valid data
        signal = determine_signal(fast_sma[-1], slow_sma[-1])
```
### Performance

Although Antback was not specifically designed for speed, it is **surprisingly fast**. Run the benchmark included with the examples (30-year SPY moving average crossover and BTC-USD intraday 10min).

- [benchmark EOD](https://github.com/ts-kontakt/antback/blob/main/examples/10_simple_benchmark.py) 
- [benchmark intraday](https://github.com/ts-kontakt/antback/blob/main/examples/11_intraday_benchmark_vectorbt.py)

### Disclaimer & Warning

This library is provided for educational and research purposes only. It is not intended for live trading or financial advice.

**Backtesting results are hypothetical and do not guarantee future performance.** Markets are unpredictable, and using this library may result in financial losses.

Use this library at your own risk — the author is not responsible for any losses or damages.


## License
MIT

---
*Perfect for teaching, prototyping, and production backtesting. Excellent clarity and control per bar.*
