para-second-brain
Use this skill when the user wants to organize, classify, or maintain a PARA-method second brain. Triggers include asking where to file something, distinguishing projects from areas, processing an inbox, setting up a new project, completing or archiving a project, running a monthly review, validating system structure, or finding stale/orphaned content.
What this skill does
# PARA Method Use this skill to help users organize and maintain a second brain using the PARA system (Projects, Areas, Resources, Archives). ## Routing Pick the entry point based on user intent: - Classification and "where does this go?" questions: read `references/decision-trees.md` - Example requests and edge-case comparisons: read `references/examples.md` - Operational process requests (inbox, review, setup, close-out, archive): read `references/workflows.md` - Troubleshooting pain points and validation guidance: read `references/common-problems.md` If the request is broad or does not clearly match one route, default to `references/decision-trees.md`. ## Output Convention - Classification guidance and Q&A: answer in chat - Validation workflows: run `scripts/validate.sh` and write report output to `PARA-validation-YYYY-MM-DD.md` in the current working directory - Installation location: out of scope for this skill; installation is handled by separate tooling ## Terminology - Use "second brain" for the user's vault/folder structure - Use "PARA system" only for the method/framework ## Validation Workflow When the user asks to validate structure or project health: 1. Read `references/common-problems.md` for interpretation guidance. 2. Run `scripts/validate.sh <path>` (or omit path to use current directory). 3. Save report output to `PARA-validation-YYYY-MM-DD.md` if user wants a file. 4. Summarize critical findings and recommended next actions.
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