position-sizer
Calculate risk-based position sizes for long stock trades. Use when user asks about position sizing, how many shares to buy, risk per trade, Kelly criterion, ATR-based sizing, fractional-share sizing, or portfolio risk allocation. Supports stop-loss distance calculation, volatility scaling, and sector concentration checks.
How do I install this agent skill?
npx skills add https://github.com/tradermonty/claude-trading-skills --skill position-sizerIs this agent skill safe to install?
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This skill is a position sizing calculator for stock trading that uses standard risk management methodologies. It runs entirely locally using Python's standard library, performs thorough input validation, and generates reports in JSON and Markdown formats. Security analysis found no evidence of malicious behavior, data exfiltration, or dangerous command execution.
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What does this agent skill do?
Position Sizer
Overview
Calculate the optimal number of shares to buy for a long stock trade based on risk management principles. Supports three sizing methods:
- Fixed Fractional: Risk a fixed percentage of account equity per trade (default: 1%)
- ATR-Based: Use Average True Range to set volatility-adjusted stop distances
- Kelly Criterion: Calculate mathematically optimal risk allocation from historical win/loss statistics
All methods apply portfolio constraints (max position %, max sector %) and output a final recommended share count with full risk breakdown. The default output is whole shares. Use --fractional only when the user's broker supports fractional shares for the security and order type.
When to Use
- User asks "how many shares should I buy?"
- User wants to calculate position size for a specific trade setup
- User mentions risk per trade, stop-loss sizing, or portfolio allocation
- User asks about Kelly Criterion or ATR-based position sizing
- User has a small account where whole-share rounding would under-deploy a defined risk budget
- User wants to check if a position fits within portfolio concentration limits
Prerequisites
- No API keys required
- Python 3.9+ with standard library only
Workflow
Step 1: Gather Trade Parameters
Collect from the user:
- Required: Account size (total equity)
- Mode A (Fixed Fractional): Entry price, stop price, risk percentage (default 1%)
- Mode B (ATR-Based): Entry price, ATR value, ATR multiplier (default 2.0x), risk percentage
- Mode C (Kelly Criterion): Win rate, average win, average loss; optionally entry and stop for share calculation
- Optional constraints: Max position % of account, max sector %, current sector exposure
- Optional share mode: Whole shares by default, or fractional shares with
--fractional --share-precision Nwhen supported by the broker
If the user provides a stock ticker but not specific prices, use available tools to look up the current price and suggest entry/stop levels based on technical analysis.
Step 2: Execute Position Sizer Script
Run the position sizing calculation:
# Fixed Fractional (most common)
python3 skills/position-sizer/scripts/position_sizer.py \
--account-size 100000 \
--entry 155 \
--stop 148.50 \
--risk-pct 1.0 \
--output-dir reports/
# Fractional shares for small accounts or high-priced stocks
python3 skills/position-sizer/scripts/position_sizer.py \
--account-size 1000 \
--entry 155 \
--stop 148.50 \
--risk-pct 1.0 \
--fractional \
--share-precision 4 \
--output-dir reports/
# ATR-Based
python3 skills/position-sizer/scripts/position_sizer.py \
--account-size 100000 \
--entry 155 \
--atr 3.20 \
--atr-multiplier 2.0 \
--risk-pct 1.0 \
--output-dir reports/
# Kelly Criterion (budget mode - no entry)
python3 skills/position-sizer/scripts/position_sizer.py \
--account-size 100000 \
--win-rate 0.55 \
--avg-win 2.5 \
--avg-loss 1.0 \
--output-dir reports/
# Kelly Criterion (shares mode - with entry/stop)
python3 skills/position-sizer/scripts/position_sizer.py \
--account-size 100000 \
--entry 155 \
--stop 148.50 \
--win-rate 0.55 \
--avg-win 2.5 \
--avg-loss 1.0 \
--output-dir reports/
Step 3: Load Methodology Reference
Read references/sizing_methodologies.md to provide context on the chosen method, risk guidelines, and portfolio constraint best practices.
Step 4: Calculate Multiple Scenarios
If the user has not specified a single method, run multiple scenarios for comparison:
- Fixed Fractional at 0.5%, 1.0%, and 1.5% risk
- ATR-based at 1.5x, 2.0x, and 3.0x multipliers
- Present a comparison table showing shares, position value, and dollar risk for each
Step 5: Apply Portfolio Constraints and Determine Final Size
Add constraints if the user has portfolio context:
python3 skills/position-sizer/scripts/position_sizer.py \
--account-size 100000 \
--entry 155 \
--stop 148.50 \
--risk-pct 1.0 \
--max-position-pct 10 \
--max-sector-pct 30 \
--current-sector-exposure 22 \
--output-dir reports/
Explain which constraint is binding and why it limits the position.
Step 6: Generate Position Report
Present the final recommendation including:
- Method used and rationale
- Exact share count and position value
- Dollar risk and percentage of account
- Stop-loss price
- Any binding constraints
- Risk management reminders (portfolio heat, loss-cutting discipline)
- Small-account reminders: fractional shares do not remove broker minimums, spread/slippage, commissions/fees, margin limits, borrow availability, or day-trading controls
Output Format
JSON Report
{
"schema_version": "1.0",
"mode": "shares",
"parameters": {
"entry_price": 155.0,
"account_size": 100000,
"stop_price": 148.50,
"risk_pct": 1.0
},
"calculations": {
"fixed_fractional": {
"method": "fixed_fractional",
"shares": 153,
"risk_per_share": 6.50,
"dollar_risk": 1000.0,
"stop_price": 148.50
},
"atr_based": null,
"kelly": null
},
"constraints_applied": [],
"final_recommended_shares": 153,
"final_position_value": 23715.0,
"final_risk_dollars": 994.50,
"final_risk_pct": 0.99,
"binding_constraint": null
}
Markdown Report
Generated automatically alongside the JSON report. Contains:
- Parameters summary
- Calculation details for the active method
- Constraints analysis (if any)
- Final recommendation with shares, value, and risk
Reports are saved to reports/ with filenames position_sizer_YYYY-MM-DD_HHMMSS.json and .md.
Resources
references/sizing_methodologies.md: Comprehensive guide to Fixed Fractional, ATR-based, and Kelly Criterion methods with examples, comparison table, and risk management principlesscripts/position_sizer.py: Main calculation script (CLI interface)
Key Principles
- Survival first: Position sizing is about surviving losing streaks, not maximizing winners
- The 1% rule: Default to 1% risk per trade; never exceed 2% without exceptional reason
- Default to whole shares: Existing workflows remain integer-share by default
- Floor, never round up: Whole-share mode floors to an integer; fractional mode floors to the requested precision so risk and concentration budgets are not exceeded
- Strictest constraint wins: When multiple limits apply, the tightest one determines final size
- Half Kelly: Never use full Kelly in practice; half Kelly captures 75% of growth with far less risk
- Portfolio heat: Total open risk should not exceed 6-8% of account equity
- Intraday rules are broker-specific: FINRA replaced the old pattern-day-trader day-count and $25,000 minimum-equity requirements with intraday margin standards effective 2026-06-04, with broker phase-in allowed through 2027-10-20. Check the broker's current rules before repeated same-day trading in a margin account.
- Asymmetry of losses: A 50% loss requires a 100% gain to recover; size accordingly
How can the creator link this skill?
Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.
<a href="https://skillzs.dev/skills/tradermonty/claude-trading-skills/position-sizer">View position-sizer on skillZs</a>