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optimize
Optimize strategy parameters using VectorBT. Tests parameter combinations and generates heatmaps.
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
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Optimize strategy parameters using VectorBT. Tests parameter combinations and generates heatmaps.
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
SOC 職業分類に基づく
Quick backtest a strategy on a symbol. Creates a complete .py script with data fetch, signals, backtest, stats, and plots.
VectorBT backtesting expert. Use when user asks to backtest strategies, create entry/exit signals, analyze portfolio performance, optimize parameters, fetch historical data, use VectorBT/vectorbt, compare strategies, position sizing, equity curves, drawdown charts, or trade analysis. Also triggers for openalgo.ta helpers (exrem, crossover, crossunder, flip, donchian, supertrend).
Quickly fetch data and print key backtest stats for a symbol with a default EMA crossover strategy. No file creation needed - runs inline in a notebook cell or prints to console.
Set up the Python backtesting environment. Detects OS, creates virtual environment, installs dependencies (openalgo, ta-lib, vectorbt, plotly), and creates the backtesting folder structure.
Compare multiple strategies or directions (long vs short vs both) on the same symbol. Generates side-by-side stats table.
| name | optimize |
| description | Optimize strategy parameters using VectorBT. Tests parameter combinations and generates heatmaps. |
| argument-hint | [strategy] [symbol] [exchange] [interval] |
| allowed-tools | Read, Write, Edit, Bash, Glob, Grep |
Create a parameter optimization script for a VectorBT strategy.
Parse $ARGUMENTS as: strategy symbol exchange interval
$0 = strategy name (e.g., ema-crossover, rsi, donchian). Default: ema-crossover$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: DIf no arguments, ask the user which strategy to optimize.
backtesting/{strategy_name}/ directory if it doesn't exist (on-demand).py file in backtesting/{strategy_name}/ named {symbol}_{strategy}_optimize.py.env from project root using find_dotenv() and fetch data via OpenAlgo client.history()duckdb.connect(path, read_only=True). See vectorbt-expert rules/duckdb-data.md.openalgo.ta is not importable (standalone DuckDB), use inline exrem() fallback.ta.exrem() to clean signals (always .fillna(False) before exrem)tqdm for progress barsfees=0.00111, fixed_fees=20 for delivery equitytemplate="plotly_dark")min_size=65, size_granularity=65min_size=30, size_granularity=30| Strategy | Parameter 1 | Parameter 2 |
|---|---|---|
| ema-crossover | fast EMA: 5-50 | slow EMA: 10-60 |
| rsi | window: 5-30 | oversold: 20-40 |
| donchian | period: 5-50 | - |
| supertrend | period: 5-30 | multiplier: 1.0-5.0 |
/optimize ema-crossover RELIANCE NSE D
/optimize rsi SBIN