| name | setup |
| description | Set up the Python backtesting environment. Detects OS, creates virtual environment, installs dependencies (openalgo, ta-lib, vectorbt, plotly), and creates the backtesting folder structure. |
| argument-hint | [python-version] |
| allowed-tools | Bash, Read, Write, Glob, AskUserQuestion |
Set up the complete Python backtesting environment for VectorBT + OpenAlgo.
Arguments
$0 = Python version (optional, default: python3). Examples: python3.12, python3.13
Steps
Step 1: Detect Operating System
Run the following to detect the OS:
uname -s 2>/dev/null || echo "Windows"
Map the result:
Darwin = macOS
Linux = Linux
MINGW* or CYGWIN* or Windows = Windows
Print the detected OS to the user.
Step 2: Create Virtual Environment
Create a Python virtual environment in the current working directory:
macOS / Linux:
python3 -m venv venv
source venv/bin/activate
pip install --upgrade pip
Windows:
python -m venv venv
venv\Scripts\activate
pip install --upgrade pip
If the user specified a Python version argument, use that instead of python3:
$PYTHON_VERSION -m venv venv
Step 3: TA-Lib System Dependency (Optional)
OpenAlgo ta (from openalgo import ta) is the default indicator library for this project - it ships 100+ indicators and needs no separate system dependency. TA-Lib is only needed if the user wants to be able to say "use talib" for a specific backtest.
Ask the user with AskUserQuestion:
- "Do you also want TA-Lib installed for when you explicitly request it in a backtest? (Optional - OpenAlgo ta already covers the same indicators plus 90+ more)"
- Yes, install TA-Lib too
- No, skip it (recommended - install it later if ever needed)
If the user skips it, skip this entire step and omit ta-lib from the Step 4 pip install. If the user wants it, TA-Lib requires a C library installed at the OS level BEFORE pip install ta-lib.
macOS:
brew install ta-lib
Linux (Debian/Ubuntu):
sudo apt-get update
sudo apt-get install -y build-essential wget
wget http://prdownloads.sourceforge.net/ta-lib/ta-lib-0.4.0-src.tar.gz
tar -xzf ta-lib-0.4.0-src.tar.gz
cd ta-lib/
./configure --prefix=/usr
make
sudo make install
cd ..
rm -rf ta-lib ta-lib-0.4.0-src.tar.gz
Linux (RHEL/CentOS/Fedora):
sudo yum groupinstall -y "Development Tools"
wget http://prdownloads.sourceforge.net/ta-lib/ta-lib-0.4.0-src.tar.gz
tar -xzf ta-lib-0.4.0-src.tar.gz
cd ta-lib/
./configure --prefix=/usr
make
sudo make install
cd ..
rm -rf ta-lib ta-lib-0.4.0-src.tar.gz
Windows:
pip install ta-lib
If that fails, download the appropriate .whl file from https://github.com/cgohlke/talib-build/releases and install with:
pip install TA_Lib-0.4.32-cp312-cp312-win_amd64.whl
Step 4: Install Python Packages
Install all required packages (latest versions). openstatz replaces QuantStats for tearsheets - always install it, never quantstats:
pip install openalgo vectorbt plotly anywidget nbformat pandas numpy yfinance python-dotenv tqdm scipy numba nbformat ipywidgets openstatz ccxt duckdb psutil
If the user opted into TA-Lib in Step 3, append ta-lib to this install command (after the C library is installed).
Step 5: Create Backtesting Folder
Create only the top-level backtesting directory. Strategy subfolders are created on-demand when a backtest script is generated (by the /backtest skill).
mkdir -p backtesting
Do NOT pre-create strategy subfolders.
Step 6: Configure .env File
6a. Check if .env.sample exists at the project root. If it does, use it as a template.
6b. Ask the user which markets they will be backtesting using AskUserQuestion:
- Indian Markets (OpenAlgo) — requires OpenAlgo API key
- Indian Markets (DuckDB) — direct database loading, no API needed
- US Markets (yfinance) — no API key needed
- Crypto Markets (CCXT) — optional API key for private data
6c. If the user selected Indian Markets, ask for their OpenAlgo API key:
- Ask: "Enter your OpenAlgo API key (from the OpenAlgo dashboard):"
- If the user provides a key, store it in
.env
- If the user skips, write a placeholder
6d. If the user selected Indian Markets (DuckDB), ask for the DuckDB database path:
- Ask: "Enter the path to your DuckDB database file (e.g., D:/data/market_data.duckdb):"
- Auto-detect format: If the database has a
market_data table with symbol, exchange, interval, timestamp columns, it is OpenAlgo Historify format (store as HISTORIFY_DB_PATH). Otherwise store as DUCKDB_PATH.
- If the user also has OpenAlgo Historify, ask: "Is this an OpenAlgo Historify database? (y/n)"
6e. If the user selected Crypto Markets, ask if they want to configure exchange API keys:
- Ask: "Do you have exchange API keys for authenticated data? (Optional — public OHLCV data works without keys)"
- If yes, ask for API key and secret key, store in
.env
- If no, leave them blank in
.env
6f. Write the .env file in the project root directory. Use this template, filling in any keys/paths the user provided:
# Indian Markets (OpenAlgo)
OPENALGO_API_KEY={user_provided_key or "your_openalgo_api_key_here"}
OPENALGO_HOST=http://127.0.0.1:5000
# DuckDB Data Sources (direct database loading - fastest)
# Custom DuckDB (user-created with OHLCV table)
DUCKDB_PATH={user_provided_path or ""}
# OpenAlgo Historify DuckDB (market_data table with epoch timestamps)
HISTORIFY_DB_PATH={user_provided_path or ""}
# Crypto Markets (CCXT) - Optional
CRYPTO_API_KEY={user_provided_key or ""}
CRYPTO_SECRET_KEY={user_provided_key or ""}
6g. Add .env to .gitignore if it exists (never commit secrets):
Scripts use find_dotenv() to automatically walk up and find the single root .env, so no copies are needed in subdirectories.
grep -qxF '.env' .gitignore 2>/dev/null || echo '.env' >> .gitignore
Step 7: Verify Installation
Run a quick verification:
python -c "
import vectorbt as vbt
from openalgo import ta
import plotly
import duckdb
import anywidget
import nbformat
import openstatz
from dotenv import load_dotenv
print('All packages installed successfully')
print(f' vectorbt: {vbt.__version__}')
print(f' plotly: {plotly.__version__}')
print(f' duckdb: {duckdb.__version__}')
print(f' nbformat: {nbformat.__version__}')
print(f' openstatz: {openstatz.__version__}')
print(f' OpenAlgo ta: available (default indicator library)')
print(f' python-dotenv: available')
"
If the user opted into TA-Lib, also verify with python -c "import talib; print('TA-Lib available')". If that import fails, inform the user that the C library needs to be installed first (see Step 3).
Step 8: Print Summary
Print a summary showing:
- Detected OS
- Python version used
- Virtual environment path
- Installed packages and versions
- Backtesting folder created (strategy subfolders created on-demand by
/backtest)
.env file status (configured with keys / placeholder) — single file at project root
- Reminder: "Run
cp .env.sample .env and fill in API keys if you skipped configuration"
Important Notes
- Never install packages globally — always use the virtual environment
- TA-Lib C library installation requires admin/sudo privileges on Linux
- On macOS, Homebrew must be installed for
brew install ta-lib
- If the user already has a virtual environment, ask before creating a new one
- The backtesting/ folder is where all generated backtest scripts will be saved
- NEVER commit
.env files — they contain secrets. Always use .gitignore.
- If the user provides an API key during setup, write it directly to
.env — do not ask them to edit the file manually
python-dotenv is included in the pip install and must be used by all scripts to load .env