skills/mcollina/skills/skill-optimizer

skill-optimizer

SKILL.md

When to use

Use this skill when you need to:

  • Improve whether a skill is actually applied by models
  • Diagnose why some criteria fail across all models
  • Prevent a skill from making outputs worse
  • Refactor skill text for stronger retrieval under context pressure
  • Build repeatable benchmark loops and release gates

Optimization loop (default workflow)

  1. Measure baseline and skill-on behavior (per model, per scenario, per criterion)
  2. Find failure pattern:
    • universal failure (0% with skill)
    • model-specific weakness
    • regression (negative delta)
  3. Edit for salience:
    • add explicit triggers
    • add concrete integrated examples
    • tighten checklists and decision rules
  4. Re-run evals and compare deltas
  5. Ship with guardrails (documented gate + run history + follow-up issues)

How to use

Read individual rule files for detailed procedures and templates:

Practical heuristics

  • Prefer few high-signal rules over many soft recommendations
  • Put fragile, high-value behaviors in top-level checklists
  • Include at least one integrated example per common scenario
  • Add explicit wording for what must not be omitted
  • Track gains/losses with with-skill vs without-skill comparisons
Weekly Installs
42
Repository
mcollina/skills
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1.4K
First Seen
4 days ago
Installed on
gemini-cli41
github-copilot41
codex41
amp41
cline41
kimi-cli41