backtestbot
// Backtest trading strategies against historical market data with detailed performance analytics.
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stars:1,933
forks:367
updated:March 4, 2026
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SKILL.md Frontmatter
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BacktestBot
Backtest trading strategies against historical market data with detailed performance analytics.
What it does
BacktestBot enables you to define, test, and evaluate trading strategies using historical data, including:
- Strategy definition — describe strategies in natural language or structured rules (entry/exit signals, position sizing, stop losses)
- Historical simulation — run strategies against years of tick or daily data across equities, options, futures, and crypto
- Performance metrics — Sharpe ratio, max drawdown, win rate, profit factor, CAGR, and trade-level breakdown
- Risk analysis — value-at-risk, correlation to benchmarks, worst-case drawdown periods, and tail risk metrics
- Comparison — test multiple strategy variants side-by-side and rank by risk-adjusted returns
Usage
Ask your agent to backtest strategies and analyze results:
- "Backtest a mean reversion strategy on SPY using RSI below 30 as entry over the last 5 years"
- "Compare buy-and-hold vs momentum rotation across the S&P 500 sectors since 2020"
- "What is the max drawdown if I use a 2% trailing stop on AAPL swing trades?"
- "Optimize the lookback period for my moving average crossover strategy on QQQ"
Configuration
Set the following environment variables:
BACKTESTBOT_API_KEY— API key for BacktestBot. Used to authenticate requests for historical OHLCV data, strategy simulations, and performance metrics.BACKTESTBOT_DATA_DIR— (optional) local directory for cached historical data. Defaults to~/.backtestbot/data.