bundled/skills/create-plan/SKILL.md
Create a concise plan. Use when a user explicitly asks for a plan related to a coding task.
npx skillsauth add foryourhealth111-pixel/vco-skills-codex create-planInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Turn a user prompt into a single, actionable plan delivered in the final assistant message.
Throughout the entire workflow, operate in read-only mode. Do not write or update files.
Scan context quickly
README.md and any obvious docs (docs/, CONTRIBUTING.md, ARCHITECTURE.md).Ask follow-ups only if blocking
Create a plan using the template below
Do not preface the plan with meta explanations; output only the plan as per template
# Plan
<1–3 sentences: what we're doing, why, and the high-level approach.>
## Scope
- In:
- Out:
## Action items
[ ] <Step 1>
[ ] <Step 2>
[ ] <Step 3>
[ ] <Step 4>
[ ] <Step 5>
[ ] <Step 6>
## Open questions
- <Question 1>
- <Question 2>
- <Question 3>
Good checklist items:
Avoid:
development
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