game-design-option-generation

Generate multiple game design solution paths before committing to one direction. Use when a feature, live-ops idea, UX problem, economy issue, or design challenge feels too quickly narrowed, when a team is looping around one favorite answer, or when you need several credible options with tradeoffs instead of a single premature recommendation.

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Install skill "game-design-option-generation" with this command: npx skills add stanestane/game-design-option-generation

Game Design Option Generation

Generate multiple credible ways forward before choosing one.

Use this skill to expand the solution space around a game design problem, feature pitch, or design goal. Keep the work practical. The aim is not random brainstorming. The aim is to produce several plausible options, clarify what makes them different, and expose tradeoffs early.

Read references/family-conventions.md when you need the shared conventions for this GROW-derived skill family.

What to produce

Generate:

  1. Problem framing - what needs solving
  2. Option set - at least 3 credible solution paths
  3. Tradeoff summary - player value, business value, cost, risk, strategic fit
  4. Recommendation - which path is strongest and why

Process

1. Frame the problem

Clarify:

  • what outcome is desired
  • what constraint or tension matters most
  • what existing system context cannot be ignored

2. Generate multiple options

Always produce several options before deciding.

Use one or more of these lenses:

  • Five-options - compare several existing ideas
  • Obstacle - imagine the main blocker removed, then derive paths around it
  • Ideal outcome - work backward from the best player-facing result
  • Transformative reuse - adapt or extend what already exists
  • Outside-the-box - deliberately include non-obvious options

3. Compare options

For each option, describe:

  • summary
  • strengths
  • weaknesses
  • likely player effect
  • implementation burden
  • strategic fit

4. Recommend a path

Choose the strongest option, or recommend a sequence such as test one now, hold one in reserve, discard the rest.

Response structure

Problem Framing

  • ...

Options

  1. ...
  2. ...
  3. ...

Tradeoffs

  • Option A: ...
  • Option B: ...
  • Option C: ...

Recommendation

  • ...

Fast mode

  • What problem are we actually solving?
  • What are 3-5 plausible ways to solve it?
  • Which one is best now, and why?

Working principle

Do not confuse the first decent answer with the best available direction.

Source Transparency

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game-design-option-generation | V50.AI