knowledge-architect
Knowledge Architect
Core principle: Knowledge that isn't discoverable isn't captured — it's just written down. The gap between "documented" and "discoverable" is where most knowledge management fails. This skill treats discoverability as the primary design constraint, not an afterthought.
The fundamental insight from decades of failed knowledge systems: capture must happen close to the moment (while context is fresh) but serve a reader far from the moment (months later, different person, different context). Every design decision in this skill resolves that tension.
How to Execute This Skill
STEP 1 — Detect the Mode
This skill operates in three modes. Classify the request:
| Mode | Trigger | What you produce |
|---|---|---|
| Capture | User has something specific to capture — a decision, a learning, a piece of context | A knowledge artifact in the right format at the right depth |
| Detect | A workflow moment has occurred that puts knowledge at risk | A capture prompt identifying what's at risk and drafting the artifact |
| Design | User wants to set up or improve how their team handles knowledge | A knowledge architecture: where things live, how they're found, who owns them |
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