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abeltennyson

Backtest Expert

by AbelTennyson · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ✓ Security Clean
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/install abe-backtest-expert
Description
Expert guidance for systematic backtesting of trading strategies. Use when developing, testing, stress-testing, or validating quantitative trading strategies...
README (SKILL.md)

Backtest Expert

Systematic approach to backtesting trading strategies based on professional methodology that prioritizes robustness over optimistic results.

Core Philosophy

Goal: Find strategies that "break the least", not strategies that "profit the most" on paper.

Principle: Add friction, stress test assumptions, and see what survives. If a strategy holds up under pessimistic conditions, it's more likely to work in live trading.

When to Use This Skill

Use this skill when:

  • Developing or validating systematic trading strategies
  • Evaluating whether a trading idea is robust enough for live implementation
  • Troubleshooting why a backtest might be misleading
  • Learning proper backtesting methodology
  • Avoiding common pitfalls (curve-fitting, look-ahead bias, survivorship bias)
  • Assessing parameter sensitivity and regime dependence
  • Setting realistic expectations for slippage and execution costs

Backtesting Workflow

1. State the Hypothesis

Define the edge in one sentence.

Example: "Stocks that gap up >3% on earnings and pull back to previous day's close within first hour provide mean-reversion opportunity."

If you can't articulate the edge clearly, don't proceed to testing.

2. Codify Rules with Zero Discretion

Define with complete specificity:

  • Entry: Exact conditions, timing, price type
  • Exit: Stop loss, profit target, time-based exit
  • Position sizing: Fixed $$, % of portfolio, volatility-adjusted
  • Filters: Market cap, volume, sector, volatility conditions
  • Universe: What instruments are eligible

Critical: No subjective judgment allowed. Every decision must be rule-based and unambiguous.

3. Run Initial Backtest

Test over:

  • Minimum 5 years (preferably 10+)
  • Multiple market regimes (bull, bear, high/low volatility)
  • Realistic costs: Commissions + conservative slippage

Examine initial results for basic viability. If fundamentally broken, iterate on hypothesis.

4. Stress Test the Strategy

This is where 80% of testing time should be spent.

Parameter sensitivity:

  • Test stop loss at 50%, 75%, 100%, 125%, 150% of baseline
  • Test profit target at 80%, 90%, 100%, 110%, 120% of baseline
  • Vary entry/exit timing by ±15-30 minutes
  • Look for "plateaus" of stable performance, not narrow spikes

Execution friction:

  • Increase slippage to 1.5-2x typical estimates
  • Model worst-case fills (buy at ask+1 tick, sell at bid-1 tick)
  • Add realistic order rejection scenarios
  • Test with pessimistic commission structures

Time robustness:

  • Analyze year-by-year performance
  • Require positive expectancy in majority of years
  • Ensure strategy doesn't rely on 1-2 exceptional periods
  • Test in different market regimes separately

Sample size:

  • Absolute minimum: 30 trades
  • Preferred: 100+ trades
  • High confidence: 200+ trades

5. Out-of-Sample Validation

Walk-forward analysis:

  1. Optimize on training period (e.g., Year 1-3)
  2. Test on validation period (Year 4)
  3. Roll forward and repeat
  4. Compare in-sample vs out-of-sample performance

Warning signs:

  • Out-of-sample \x3C50% of in-sample performance
  • Need frequent parameter re-optimization
  • Parameters change dramatically between periods

6. Evaluate Results

Questions to answer:

  • Does edge survive pessimistic assumptions?
  • Is performance stable across parameter variations?
  • Does strategy work in multiple market regimes?
  • Is sample size sufficient for statistical confidence?
  • Are results realistic, not "too good to be true"?

Decision criteria:

  • Deploy: Survives all stress tests with acceptable performance
  • 🔄 Refine: Core logic sound but needs parameter adjustment
  • Abandon: Fails stress tests or relies on fragile assumptions

Key Testing Principles

Punish the Strategy

Add friction everywhere:

  • Commissions higher than reality
  • Slippage 1.5-2x typical
  • Worst-case fills
  • Order rejections
  • Partial fills

Rationale: Strategies that survive pessimistic assumptions often outperform in live trading.

Seek Plateaus, Not Peaks

Look for parameter ranges where performance is stable, not optimal values that create performance spikes.

Good: Strategy profitable with stop loss anywhere from 1.5% to 3.0% Bad: Strategy only works with stop loss at exactly 2.13%

Stable performance indicates genuine edge; narrow optima suggest curve-fitting.

Test All Cases, Not Cherry-Picked Examples

Wrong approach: Study hand-picked "market leaders" that worked Right approach: Test every stock that met criteria, including those that failed

Selective examples create survivorship bias and overestimate strategy quality.

Separate Idea Generation from Validation

Intuition: Useful for generating hypotheses Validation: Must be purely data-driven

Never let attachment to an idea influence interpretation of test results.

Common Failure Patterns

Recognize these patterns early to save time:

  1. Parameter sensitivity: Only works with exact parameter values
  2. Regime-specific: Great in some years, terrible in others
  3. Slippage sensitivity: Unprofitable when realistic costs added
  4. Small sample: Too few trades for statistical confidence
  5. Look-ahead bias: "Too good to be true" results
  6. Over-optimization: Many parameters, poor out-of-sample results

See references/failed_tests.md for detailed examples and diagnostic framework.

Available Reference Documentation

Methodology Reference

File: references/methodology.md

When to read: For detailed guidance on specific testing techniques.

Contents:

  • Stress testing methods
  • Parameter sensitivity analysis
  • Slippage and friction modeling
  • Sample size requirements
  • Market regime classification
  • Common biases and pitfalls (survivorship, look-ahead, curve-fitting, etc.)

Failed Tests Reference

File: references/failed_tests.md

When to read: When strategy fails tests, or learning from past mistakes.

Contents:

  • Why failures are valuable
  • Common failure patterns with examples
  • Case study documentation framework
  • Red flags checklist for evaluating backtests

Critical Reminders

Time allocation: Spend 20% generating ideas, 80% trying to break them.

Context-free requirement: If strategy requires "perfect context" to work, it's not robust enough for systematic trading.

Red flag: If backtest results look too good (>90% win rate, minimal drawdowns, perfect timing), audit carefully for look-ahead bias or data issues.

Tool limitations: Understand your backtesting platform's quirks (interpolation methods, handling of low liquidity, data alignment issues).

Statistical significance: Small edges require large sample sizes to prove. 5% edge per trade needs 100+ trades to distinguish from luck.

Discretionary vs Systematic Differences

This skill focuses on systematic/quantitative backtesting where:

  • All rules are codified in advance
  • No discretion or "feel" in execution
  • Testing happens on all historical examples, not cherry-picked cases
  • Context (news, macro) is deliberately stripped out

Discretionary traders study differently—this skill may not apply to setups requiring subjective judgment.

Usage Guidance
This skill is a content-only backtesting guide and appears coherent with its stated purpose. Before installing or enabling it: (1) confirm you are comfortable granting the agent access to use instruction-only skills (the skill does not request credentials), (2) do not paste sensitive account credentials or proprietary datasets into the chat when asking for help, and (3) if you plan to have the agent run code or backtests, review any generated code before executing it in your environment. If you want extra caution, keep autonomous invocation disabled and invoke the skill only when needed.
Capability Analysis
Type: OpenClaw Skill Name: abe-backtest-expert Version: 1.0.0 The skill bundle consists entirely of Markdown documentation and instructions for systematic trading strategy backtesting. It contains no executable code, network requests, or instructions to access sensitive data. The content in SKILL.md, references/methodology.md, and references/failed_tests.md is strictly aligned with its stated purpose of providing expert guidance on robustness testing and bias prevention in quantitative finance.
Capability Tags
crypto
Capability Assessment
Purpose & Capability
Name, description, and included documents (methodology and failed-tests) all focus on backtesting methodology; nothing requested (no env vars, binaries, or config paths) is unrelated to that purpose.
Instruction Scope
SKILL.md contains step-by-step guidance for hypothesis formulation, testing, stress tests, and validation. It does not instruct the agent to read system files, access credentials, or send data to external endpoints beyond providing advice.
Install Mechanism
No install spec and no code files — instruction-only; nothing will be downloaded or written to disk as part of an install.
Credentials
The skill declares no required environment variables, credentials, or config paths; there are no disproportionate or unexplained secret requests.
Persistence & Privilege
always is false and the skill is user-invocable (standard). Model invocation is allowed (default) but that is expected and not combined with other high-risk factors.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install abe-backtest-expert
  3. After installation, invoke the skill by name or use /abe-backtest-expert
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
Initial release providing structured, professional guidance on robust systematic backtesting for trading strategies. - Covers end-to-end workflow: hypothesis, codification, robust testing, and evaluation. - Emphasizes stress-testing with pessimistic assumptions, parameter sensitivity, and bias prevention. - Offers guidance on avoiding overfitting, ensuring sample size, and handling multiple market regimes. - Includes references for methodology and common failure patterns. - Prioritizes realistic, non-optimistic strategy assessment to increase live trading success.
Metadata
Slug abe-backtest-expert
Version 1.0.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is Backtest Expert?

Expert guidance for systematic backtesting of trading strategies. Use when developing, testing, stress-testing, or validating quantitative trading strategies... It is an AI Agent Skill for Claude Code / OpenClaw, with 71 downloads so far.

How do I install Backtest Expert?

Run "/install abe-backtest-expert" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Backtest Expert free?

Yes, Backtest Expert is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Backtest Expert support?

Backtest Expert is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Backtest Expert?

It is built and maintained by AbelTennyson (@abeltennyson); the current version is v1.0.0.

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