.claude/skills/brainstorming/SKILL.md
Socratic design refinement before implementation — challenges assumptions, surfaces alternatives, identifies risks before code is written
npx skillsauth add oimiragieo/agent-studio brainstormingInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Help turn ideas into fully formed designs and specs through natural collaborative dialogue.
Start by understanding the current project context, then ask questions one at a time to refine the idea. Once you understand what you're building, present the design in small sections (200-300 words), checking after each section whether it looks right so far.
Understanding the idea:
Exploring approaches:
Presenting the design:
Documentation:
docs/plans/YYYY-MM-DD-<topic>-design.mdImplementation (if continuing):
| Anti-Pattern | Why It Fails | Correct Approach | | --------------------------------------- | -------------------------------------------------- | ------------------------------------------------------- | | Proposing only one solution | Anchors user; forecloses better alternatives | Always offer 2-3 approaches with explicit trade-offs | | Accepting first requirement as complete | First articulation rarely captures all constraints | Ask at least one clarifying question about scope | | Asking 3+ questions at once | User answers the easy ones; skips the hard ones | One question per response; wait for answer | | Jumping to implementation | Design flaws found late are expensive to fix | Confirm design decisions before writing code | | Skipping YAGNI challenge | Unneeded features accumulate as tech debt | Explicitly challenge each feature not strictly required |
Before starting:
Read .claude/context/memory/learnings.md
After completing:
.claude/context/memory/learnings.md.claude/context/memory/issues.md.claude/context/memory/decisions.mdASSUME INTERRUPTION: If it's not in memory, it didn't happen.
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