skill-personalizer
About
This skill audits and adapts Agent Skills to fit a specific user's environment, tools, and workflows. It's used to fix poor triggers, reduce noise, and align skills with personal directories, habits, and session history. The goal is to optimize a skill for individual use rather than for public portability.
Quick Install
Claude Code
Recommendednpx skills add hqhq1025/skill-optimizer -a claude-code/plugin add https://github.com/hqhq1025/skill-optimizergit clone https://github.com/hqhq1025/skill-optimizer.git ~/.claude/skills/skill-personalizerCopy and paste this command in Claude Code to install this skill
Documentation
Skill Personalizer
Overview
Audit and tune a skill for one user's real environment. The goal is not public portability; it is better triggering, less friction, and stronger fit with the user's actual tools, paths, style, and recurring tasks.
When To Use
- A user installs a skill from GitHub or creates one from scratch and wants it to fit their setup.
- A skill undertriggers, overtriggers, asks unnecessary questions, or misses the user's preferred workflow.
- A user asks whether an existing skill is good, broken, noisy, too long, conflicting, or worth keeping.
- Local paths, aliases, memories, CLIs, MCP tools, or repo conventions should be reflected in the skill.
Do not use when preparing a skill for public release; use skill-generalizer for that.
Workflow
- Inspect the target skill, installed copies, local memories, and real session evidence when available.
- Run the audit checks in audit-rubric.md when quality, trigger fit, or retention is unclear.
- Identify the user's recurring phrasing, expected autonomy level, tools, directories, and verification habits.
- Compare the skill's trigger conditions against real user requests that should or should not load it.
- Edit only the target skill and bundled resources needed for personalization.
- Add concrete local defaults, preferred commands, safety boundaries, and verification steps.
- Preserve useful upstream behavior; document any intentional local divergence.
- Validate with realistic prompts and a frontmatter/layout check.
Personalization Rules
- Personal details are allowed only if they improve this user's future execution.
- Do not add brittle fallbacks that hide broken local setup.
- Prefer real local evidence over generic best practices.
- Keep trigger descriptions broad enough to catch the user's natural phrasing.
- If editing an installed third-party skill, avoid changing upstream attribution or license text.
References
Read audit-rubric.md for the diagnostic pass inherited from the original optimizer.
Read personalization-rubric.md for local defaults, session evidence, and validation scenarios.
GitHub Repository
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