home / skills / jeremylongshore / claude-code-plugins-plus-skills / backtesting-trading-strategies

This skill backtests crypto and traditional trading strategies on historical data, computing metrics, optimizing parameters, and generating actionable insights.

This is most likely a fork of the backtesting-trading-strategies skill from openclaw
npx playbooks add skill jeremylongshore/claude-code-plugins-plus-skills --skill backtesting-trading-strategies

Review the files below or copy the command above to add this skill to your agents.

Files (10)
SKILL.md
6.2 KB
---
name: backtesting-trading-strategies
description: |
  Backtest crypto and traditional trading strategies against historical data.
  Calculates performance metrics (Sharpe, Sortino, max drawdown), generates equity curves,
  and optimizes strategy parameters. Use when user wants to test a trading strategy,
  validate signals, or compare approaches.
  Trigger with phrases like "backtest strategy", "test trading strategy", "historical performance",
  "simulate trades", "optimize parameters", or "validate signals".
allowed-tools: Read, Write, Edit, Grep, Glob, Bash(python:*)
version: 2.0.0
author: Jeremy Longshore <[email protected]>
license: MIT
---

# Backtesting Trading Strategies

## Overview

Validate trading strategies against historical data before risking real capital. This skill provides a complete backtesting framework with 8 built-in strategies, comprehensive performance metrics, and parameter optimization.

**Key Features:**
- 8 pre-built trading strategies (SMA, EMA, RSI, MACD, Bollinger, Breakout, Mean Reversion, Momentum)
- Full performance metrics (Sharpe, Sortino, Calmar, VaR, max drawdown)
- Parameter grid search optimization
- Equity curve visualization
- Trade-by-trade analysis

## Prerequisites

Install required dependencies:

```bash
pip install pandas numpy yfinance matplotlib
```

Optional for advanced features:
```bash
pip install ta-lib scipy scikit-learn
```

## Instructions

### Step 1: Fetch Historical Data

```bash
python {baseDir}/scripts/fetch_data.py --symbol BTC-USD --period 2y --interval 1d
```

Data is cached to `{baseDir}/data/{symbol}_{interval}.csv` for reuse.

### Step 2: Run Backtest

Basic backtest with default parameters:

```bash
python {baseDir}/scripts/backtest.py --strategy sma_crossover --symbol BTC-USD --period 1y
```

Advanced backtest with custom parameters:

```bash
# Example: backtest with specific date range
python {baseDir}/scripts/backtest.py \
  --strategy rsi_reversal \
  --symbol ETH-USD \
  --period 1y \
  --capital 10000 \
  --params '{"period": 14, "overbought": 70, "oversold": 30}'
```

### Step 3: Analyze Results

Results are saved to `{baseDir}/reports/` including:
- `*_summary.txt` - Performance metrics
- `*_trades.csv` - Trade log
- `*_equity.csv` - Equity curve data
- `*_chart.png` - Visual equity curve

### Step 4: Optimize Parameters

Find optimal parameters via grid search:

```bash
python {baseDir}/scripts/optimize.py \
  --strategy sma_crossover \
  --symbol BTC-USD \
  --period 1y \
  --param-grid '{"fast_period": [10, 20, 30], "slow_period": [50, 100, 200]}'
```

## Output

### Performance Metrics

| Metric | Description |
|--------|-------------|
| Total Return | Overall percentage gain/loss |
| CAGR | Compound annual growth rate |
| Sharpe Ratio | Risk-adjusted return (target: >1.5) |
| Sortino Ratio | Downside risk-adjusted return |
| Calmar Ratio | Return divided by max drawdown |

### Risk Metrics

| Metric | Description |
|--------|-------------|
| Max Drawdown | Largest peak-to-trough decline |
| VaR (95%) | Value at Risk at 95% confidence |
| CVaR (95%) | Expected loss beyond VaR |
| Volatility | Annualized standard deviation |

### Trade Statistics

| Metric | Description |
|--------|-------------|
| Total Trades | Number of round-trip trades |
| Win Rate | Percentage of profitable trades |
| Profit Factor | Gross profit divided by gross loss |
| Expectancy | Expected value per trade |

### Example Output

```
================================================================================
                    BACKTEST RESULTS: SMA CROSSOVER
                    BTC-USD | [start_date] to [end_date]
================================================================================
 PERFORMANCE                          | RISK
 Total Return:        +47.32%         | Max Drawdown:      -18.45%
 CAGR:                +47.32%         | VaR (95%):         -2.34%
 Sharpe Ratio:        1.87            | Volatility:        42.1%
 Sortino Ratio:       2.41            | Ulcer Index:       8.2
--------------------------------------------------------------------------------
 TRADE STATISTICS
 Total Trades:        24              | Profit Factor:     2.34
 Win Rate:            58.3%           | Expectancy:        $197.17
 Avg Win:             $892.45         | Max Consec. Losses: 3
================================================================================
```

## Supported Strategies

| Strategy | Description | Key Parameters |
|----------|-------------|----------------|
| `sma_crossover` | Simple moving average crossover | `fast_period`, `slow_period` |
| `ema_crossover` | Exponential MA crossover | `fast_period`, `slow_period` |
| `rsi_reversal` | RSI overbought/oversold | `period`, `overbought`, `oversold` |
| `macd` | MACD signal line crossover | `fast`, `slow`, `signal` |
| `bollinger_bands` | Mean reversion on bands | `period`, `std_dev` |
| `breakout` | Price breakout from range | `lookback`, `threshold` |
| `mean_reversion` | Return to moving average | `period`, `z_threshold` |
| `momentum` | Rate of change momentum | `period`, `threshold` |

## Configuration

Create `{baseDir}/config/settings.yaml`:

```yaml
data:
  provider: yfinance
  cache_dir: ./data

backtest:
  default_capital: 10000
  commission: 0.001     # 0.1% per trade
  slippage: 0.0005      # 0.05% slippage

risk:
  max_position_size: 0.95
  stop_loss: null       # Optional fixed stop loss
  take_profit: null     # Optional fixed take profit
```

## Error Handling

See `{baseDir}/references/errors.md` for common issues and solutions.

## Examples

See `{baseDir}/references/examples.md` for detailed usage examples including:
- Multi-asset comparison
- Walk-forward analysis
- Parameter optimization workflows

## Files

| File | Purpose |
|------|---------|
| `scripts/backtest.py` | Main backtesting engine |
| `scripts/fetch_data.py` | Historical data fetcher |
| `scripts/strategies.py` | Strategy definitions |
| `scripts/metrics.py` | Performance calculations |
| `scripts/optimize.py` | Parameter optimization |

## Resources

- [yfinance](https://github.com/ranaroussi/yfinance) - Yahoo Finance data
- [TA-Lib](https://ta-lib.org/) - Technical analysis library
- [QuantStats](https://github.com/ranaroussi/quantstats) - Portfolio analytics

Overview

This skill backtests crypto and traditional trading strategies against historical market data to validate ideas before risking capital. It runs built-in strategies, computes comprehensive performance and risk metrics, generates equity curves, and can optimize strategy parameters via grid search. Results include trade logs, summary metrics, and visual charts for quick evaluation.

How this skill works

Fetch historical price data (CSV or provider like yfinance), simulate entry and exit signals for selected strategies, and apply capital, commission, and slippage rules to generate trade-by-trade P&L. The engine calculates performance metrics (Sharpe, Sortino, CAGR), risk statistics (max drawdown, VaR, CVaR) and creates equity curves and summaries. Parameter optimization runs a grid search across specified ranges and ranks results by chosen objective.

When to use it

  • Validate a new trading idea on historical data before live trading
  • Compare multiple strategies or parameter sets to pick robust approaches
  • Estimate risk and return characteristics (Sharpe, drawdown, expectancy)
  • Generate equity curves and trade logs for performance review
  • Perform parameter optimization or walk-forward-style analysis

Best practices

  • Use out-of-sample or walk-forward testing to avoid overfitting
  • Normalize data frequency and handle corporate actions or forks for accuracy
  • Include realistic commissions, slippage, and position sizing rules
  • Test a range of market regimes (bull, bear, sideways) for robustness
  • Prioritize risk-adjusted metrics (Sortino, Calmar) over raw returns

Example use cases

  • Backtest an SMA crossover on BTC-USD over the last 2 years and export trade log and equity curve
  • Optimize fast and slow moving average periods for an EMA crossover using grid search
  • Validate an RSI reversal signal on ETH-USD, measuring max drawdown and expectancy
  • Compare momentum vs mean-reversion strategies across multiple symbols
  • Run a sensitivity analysis of stop-loss and take-profit settings to assess risk control

FAQ

What inputs are required to run a backtest?

You need historical price data for the symbol, a selected strategy, capital and risk settings, and optional strategy parameters or parameter grid.

How are transaction costs handled?

Set commission and slippage parameters; the engine applies them per trade to produce realistic P&L and metrics.

Can I add my own strategy?

Yes. Implement entry/exit logic following the strategy interface and plug it into the backtest engine to generate metrics and reports.