scale-game

Test your approach at extreme scales to find what breaks and what surprisingly survives.

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Install skill "scale-game" with this command: npx skills add fimoklei/pm-ai-playbook/fimoklei-pm-ai-playbook-scale-game

Scale Game

Overview

Test your approach at extreme scales to find what breaks and what surprisingly survives.

Core principle: Extremes expose fundamental truths hidden at normal scales.

Quick Reference

Scale Dimension Test At Extremes What It Reveals

Volume 1 item vs 1B items Algorithmic complexity limits

Speed Instant vs 1 year Async requirements, caching needs

Users 1 user vs 1B users Concurrency issues, resource limits

Duration Milliseconds vs years Memory leaks, state growth

Failure rate Never fails vs always fails Error handling adequacy

Process

  • Pick dimension - What could vary extremely?

  • Test minimum - What if this was 1000x smaller/faster/fewer?

  • Test maximum - What if this was 1000x bigger/slower/more?

  • Note what breaks - Where do limits appear?

  • Note what survives - What's fundamentally sound?

Examples

Example 1: Error Handling

Normal scale: "Handle errors when they occur" works fine At 1B scale: Error volume overwhelms logging, crashes system Reveals: Need to make errors impossible (type systems) or expect them (chaos engineering)

Example 2: Synchronous APIs

Normal scale: Direct function calls work At global scale: Network latency makes synchronous calls unusable Reveals: Async/messaging becomes survival requirement, not optimization

Example 3: In-Memory State

Normal duration: Works for hours/days At years: Memory grows unbounded, eventual crash Reveals: Need persistence or periodic cleanup, can't rely on memory

Red Flags You Need This

  • "It works in dev" (but will it work in production?)

  • No idea where limits are

  • "Should scale fine" (without testing)

  • Surprised by production behavior

Remember

  • Extremes reveal fundamentals

  • What works at one scale fails at another

  • Test both directions (bigger AND smaller)

  • Use insights to validate architecture early

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