| name | backtest |
| description | Quick backtest a strategy on a symbol. Creates a complete .py script with data fetch, signals, backtest, stats, and plots. |
| argument-hint | [strategy] [symbol] [exchange] [interval] |
| allowed-tools | Read, Write, Edit, Bash, Glob, Grep |
Create a complete VectorBT backtest script for the user.
Arguments
Parse $ARGUMENTS as: strategy symbol exchange interval
$0 = strategy name (e.g., ema-crossover, rsi, donchian, supertrend, macd, sda2, momentum)
$1 = symbol (e.g., SBIN, RELIANCE, NIFTY). Default: SBIN
$2 = exchange (e.g., NSE, NFO). Default: NSE
$3 = interval (e.g., D, 1h, 5m). Default: D
If no arguments, ask the user which strategy they want.
Instructions
- Read the vectorbt-expert skill rules for reference patterns
- Create
backtesting/{strategy_name}/ directory if it doesn't exist (on-demand)
- Create a
.py file in backtesting/{strategy_name}/ named {symbol}_{strategy}_backtest.py
- Use the matching template from
rules/assets/{strategy}/backtest.py as the starting point
- The script must:
- Load
.env from the project root using find_dotenv() (walks up from script dir automatically)
- Fetch data via
client.history() from OpenAlgo
- If user provides a DuckDB path, load data directly via
duckdb.connect(path, read_only=True) instead of OpenAlgo API. Auto-detect format: Historify (market_data table, epoch timestamps) vs custom (ohlcv table, date+time). See vectorbt-expert rules/duckdb-data.md.
- If
openalgo.ta is not importable (standalone DuckDB), use inline exrem() fallback.
- Use TA-Lib for ALL indicators (EMA, SMA, RSI, MACD, BBands, ATR, ADX, STDDEV, MOM)
- Use OpenAlgo ta for specialty indicators (Supertrend, Donchian, Ichimoku, HMA, KAMA, ALMA)
- Use
ta.exrem() to clean duplicate signals (always .fillna(False) before exrem)
- Run
vbt.Portfolio.from_signals() with min_size=1, size_granularity=1
- Indian delivery fees:
fees=0.00111, fixed_fees=20 for delivery equity
- Fetch NIFTY benchmark via OpenAlgo (
symbol="NIFTY", exchange="NSE_INDEX")
- Print full
pf.stats()
- Print Strategy vs Benchmark comparison table (Total Return, Sharpe, Sortino, Max DD, Win Rate, Trades, Profit Factor)
- Explain the backtest report in plain language for normal traders
- Generate QuantStats HTML tearsheet if
quantstats is available
- Plot equity curve + drawdown using Plotly (
template="plotly_dark")
- Export trades to CSV
- Never use icons/emojis in code or logger output
- For futures symbols (NIFTY, BANKNIFTY), use lot-size-aware sizing:
- NIFTY:
min_size=65, size_granularity=65 (effective 31 Dec 2025)
- BANKNIFTY:
min_size=30, size_granularity=30
- Use
fees=0.00018, fixed_fees=20 for F&O futures
Available Strategies
| Strategy | Keyword | Template |
|---|
| EMA Crossover | ema-crossover | assets/ema_crossover/backtest.py |
| RSI | rsi | assets/rsi/backtest.py |
| Donchian Channel | donchian | assets/donchian/backtest.py |
| Supertrend | supertrend | assets/supertrend/backtest.py |
| MACD Breakout | macd | assets/macd/backtest.py |
| SDA2 | sda2 | assets/sda2/backtest.py |
| Momentum | momentum | assets/momentum/backtest.py |
| Dual Momentum | dual-momentum | assets/dual_momentum/backtest.py |
| Buy & Hold | buy-hold | assets/buy_hold/backtest.py |
| RSI Accumulation | rsi-accumulation | assets/rsi_accumulation/backtest.py |
Benchmark Rules
- Default: NIFTY 50 via OpenAlgo (
symbol="NIFTY", exchange="NSE_INDEX")
- If user specifies a different benchmark, use that instead
- For yfinance: use
^NSEI for India, ^GSPC (S&P 500) for US markets
- Always compare: Total Return, Sharpe, Sortino, Max Drawdown
Example Usage
/backtest ema-crossover RELIANCE NSE D
/backtest rsi SBIN
/backtest supertrend NIFTY NFO 5m