skill-optimizer
Diagnose and optimize Agent Skills (SKILL.md) with real session data and research-backed static analysis. Works with Claude Code, Codex, and any Agent Skills-compatible agent.
Best use case
skill-optimizer is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Diagnose and optimize Agent Skills (SKILL.md) with real session data and research-backed static analysis. Works with Claude Code, Codex, and any Agent Skills-compatible agent.
Teams using skill-optimizer should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/skill-optimizer/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How skill-optimizer Compares
| Feature / Agent | skill-optimizer | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Diagnose and optimize Agent Skills (SKILL.md) with real session data and research-backed static analysis. Works with Claude Code, Codex, and any Agent Skills-compatible agent.
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
Related Guides
Best AI Skills for Claude
Explore the best AI skills for Claude and Claude Code across coding, research, workflow automation, documentation, and agent operations.
ChatGPT vs Claude for Agent Skills
Compare ChatGPT and Claude for AI agent skills across coding, writing, research, and reusable workflow execution.
Best AI Skills for ChatGPT
Find the best AI skills to adapt into ChatGPT workflows for research, writing, summarization, planning, and repeatable assistant tasks.
SKILL.md Source
## When to Use This Skill
- Use when skills are not triggering as expected or seem broken
- Use when you want to audit and improve your skill library's quality
- Use when you want to understand which skills are underperforming or wasting context tokens
## Rules
- **Read-only**: never modify skill files. Only output report.
- **All 8 dimensions**: do not skip any. If data is insufficient, report "N/A — insufficient session data" rather than omitting.
- **Quantify**: "you had 12 research tasks last week but the skill never triggered" beats "you often do research".
- **Suggest, don't prescribe**: give specific wording suggestions for description improvements, but frame as suggestions.
- **Show evidence**: for undertrigger claims, quote the actual user message that should have triggered the skill.
- **Evidence-based suggestions**: when suggesting description rewrites, cite the specific research finding that motivates the change (e.g., "front-load trigger keywords — MCP study shows 3.6x selection rate improvement").
## Overview
Analyze skills using **historical session data + static quality checks**, output a diagnostic report with P0/P1/P2 prioritized fixes. Scores each skill on a 5-point composite scale across 8 dimensions.
CSO (Claude/Agent Search Optimization) = writing skill descriptions so agents select the right skill at the right time. This skill checks for CSO violations.
## Usage
- `/optimize-skill` → scan all skills
- `/optimize-skill my-skill` → single skill
- `/optimize-skill skill-a skill-b` → multiple specified skills
## Data Sources
Auto-detect the current agent platform and scan the corresponding paths:
| Source | Claude Code | Codex | Shared |
|--------|------------|-------|--------|
| Session transcripts | `~/.claude/projects/**/*.jsonl` | `~/.codex/sessions/**/*.jsonl` | — |
| Skill files | `~/.claude/skills/*/SKILL.md` | `~/.codex/skills/*/SKILL.md` | `~/.agents/skills/*/SKILL.md` |
**Platform detection:** Check which directories exist. Scan all available sources — a user may have both Claude Code and Codex installed.
## Workflow
```
Identify target skills
↓
Collect session data (python3 scripts scan JSONL transcripts)
↓
Run 8 analysis dimensions
↓
Compute composite scores
↓
Output report with P0/P1/P2
```
### Step 1: Identify Target Skills
Scan skill directories in order: `~/.claude/skills/`, `~/.codex/skills/`, `~/.agents/skills/`. Deduplicate by skill name (same name in multiple locations = same skill). For each, read `SKILL.md` and extract:
- name, description (from YAML frontmatter)
- trigger keywords (from description field)
- defined workflow steps (Step 1/2/3... or ### sections under Workflow)
- word count
If user specified skill names, filter to only those.
### Step 2: Collect Session Data
Use python3 scripts via Bash to scan session JSONL files. Extract:
**Claude Code sessions** (`~/.claude/projects/**/*.jsonl`):
- `Skill` tool_use calls (which skills were invoked)
- User messages (full text)
- Assistant messages after skill invocation (for workflow tracking)
- User messages after skill invocation (for reaction analysis)
**Codex sessions** (`~/.codex/sessions/**/*.jsonl`):
- `session_meta` events → extract `base_instructions` for skill loading evidence
- `response_item` events → assistant outputs (workflow tracking)
- `event_msg` events → tool execution and skill-related events
- User messages from `turn_context` events (for reaction analysis)
**Note:** Codex injects skills via context rather than explicit `Skill` tool calls. Skill loading (present in `base_instructions`) does NOT equal active invocation. To detect actual use, search for skill-specific workflow markers (step headers, output formats) in `response_item` content within that session. A skill is "invoked" only if the agent produced output following the skill's defined workflow.
**Aggregated:**
- Per-skill: invocation count, trigger keyword match count
- Per-skill: user reaction sentiment after invocation
- Per-skill: workflow step completion markers
### Step 3: Run 8 Analysis Dimensions
**You MUST run ALL 8 dimensions.** The baseline behavior without this skill is to skip dimensions 4.2, 4.3, 4.5b, and 4.8. These are the most valuable dimensions — do not skip them.
#### 4.1 Trigger Rate
Count how many times each skill was actually invoked vs how many times its trigger keywords appeared in user messages.
**Claude Code:** count `Skill` tool_use calls in transcripts.
**Codex:** count sessions where the agent produced output following the skill's workflow markers (not merely loaded in context).
**Diagnose:**
- Never triggered → skill may be useless or trigger words wrong
- Keywords match >> actual invocations → undertrigger problem, description needs work
- High frequency → core skill, worth optimizing
#### 4.2 Post-Invocation User Reaction
**This dimension is critical and easy to skip. Do not skip it.**
After a skill is invoked in a session, read the user's next 3 messages. Classify:
- **Negative**: "no", "wrong", "never mind", "not what I wanted", user interrupts
- **Correction**: user re-describes their intent, manually overrides skill output
- **Positive**: "good", "ok", "continue", "nice", user follows the workflow
- **Silent switch**: user changes topic entirely (likely false positive trigger)
Report per-skill satisfaction rate.
#### 4.3 Workflow Completion Rate
**This dimension is critical and easy to skip. Do not skip it.**
For each skill invocation found in session data:
1. Extract the skill's defined steps from SKILL.md
2. Search the assistant messages in that session for step markers (Step N, specific output formats defined in the skill)
3. Calculate: how far did execution get?
Report: `{skill-name} (N steps): avg completed Step X/N (Y%)`
If a specific step is frequently where execution stops, flag it.
#### 4.4 Static Quality Analysis
Check each SKILL.md against these 14 rules:
| Check | Pass Criteria |
|-------|--------------|
| Frontmatter format | Only `name` + `description`, total < 1024 chars |
| Name format | Letters, numbers, hyphens only |
| Description trigger | Starts with "Use when..." or has explicit trigger conditions |
| Description workflow leak | Description does NOT summarize the skill's workflow steps (CSO violation) |
| Description pushiness | Description actively claims scenarios where it should be used, not just passive |
| Overview section | Present |
| Rules section | Present |
| MUST/NEVER density | Count ALL-CAPS directive words; >5 per 100 words = flag |
| Word count | < 500 words (flag if over) |
| Narrative anti-pattern | No "In session X, we found..." storytelling |
| YAML quoting safety | description containing `: ` must be wrapped in double quotes |
| Critical info position | Core trigger conditions and primary actions must be in the first 20% of SKILL.md |
| Description 250-char check | Primary trigger keywords must appear within the first 250 characters of description |
| Trigger condition count | ≤ 2 trigger conditions in description is ideal |
#### 4.5a False Positive Rate (Overtrigger)
Skill was invoked but user immediately rejected or ignored it.
#### 4.5b Undertrigger Detection
**This is the highest-value dimension.** For each skill, extract its **capability keywords** (not just trigger keywords — what the skill CAN do). Then scan user messages for tasks that match those capabilities but where the skill was NOT invoked.
Report: which user messages SHOULD have triggered the skill but didn't, and suggest description improvements.
**Compounding Risk Assessment:**
For skills with chronic undertriggering (0 triggers across 5+ sessions where relevant tasks appeared), flag as "compounding risk" — undertriggered skills cannot self-improve through usage feedback, causing the gap to widen over time. Recommend immediate description rewrite as P0.
#### 4.6 Cross-Skill Conflicts
Compare all skill pairs:
- Trigger keyword overlap (same keywords in two descriptions)
- Workflow overlap (two skills teach similar processes)
- Contradictory guidance
#### 4.7 Environment Consistency
For each skill, extract referenced:
- File paths → check if they exist (`test -e`)
- CLI tools → check if installed (`which`)
- Directories → check if they exist
Flag any broken references.
#### 4.8 Token Economics
**This dimension is critical and easy to skip. Do not skip it.**
For each skill:
- Word count (from Step 1)
- Trigger frequency (from 4.1)
- Cost-effectiveness = trigger count / word count
- Flag: large + never-triggered skills as candidates for removal or compression
**Progressive Disclosure Tier Check:**
Evaluate each skill against the 3-tier loading model:
- Tier 1 (frontmatter): ~100 tokens. Check: is description ≤ 1024 chars?
- Tier 2 (SKILL.md body): <500 lines recommended. Check: word count.
- Tier 3 (reference files): loaded on demand. Check: does skill use reference files for detailed content, or cram everything into SKILL.md?
Flag skills that put 500+ words in SKILL.md without using reference files as "poor progressive disclosure".
### Step 4: Composite Score
Rate each skill on a 5-point scale:
| Score | Meaning |
|-------|---------|
| 5 | Healthy: high trigger rate, positive reactions, complete workflows, clean static |
| 4 | Good: minor issues in 1-2 dimensions |
| 3 | Needs attention: significant gap in 1 dimension or minor gaps in 3+ |
| 2 | Problematic: never triggered, or negative user reactions, or major static issues |
| 1 | Broken: doesn't work, references missing, or fundamentally misaligned |
**Scored dimensions** (weighted average):
- Trigger rate: 25%
- User reaction: 20%
- Workflow completion: 15%
- Static quality: 15%
- Undertrigger: 15%
- Token economics: 10%
**Qualitative dimensions** (reported but not scored):
- 4.5a Overtrigger: reported as count + examples
- 4.6 Cross-Skill Conflicts: reported as conflict pairs
- 4.7 Environment Consistency: reported as pass/fail per reference
## Report Format
```markdown
# Skill Optimization Report
**Date**: {date}
**Scope**: {all / specified skills}
**Session data**: {N} sessions, {date range}
## Overview
| Skill | Triggers | Reaction | Completion | Static | Undertrigger | Token | Score |
|-------|----------|----------|------------|--------|--------------|-------|-------|
| example-skill | 2 | 100% | 86% | B+ | 1 miss | 486w | 4/5 |
## P0 Fixes (blocking usage)
1. ...
## P1 Improvements (better experience)
1. ...
## P2 Optional Optimizations
1. ...
## Per-Skill Diagnostics
### {skill-name}
#### 4.1 Trigger Rate
...
#### 4.2 User Reaction
...
(all 8 dimensions)
```
## Research Background
The analysis dimensions in this report are grounded in the following research:
- **Undertrigger detection**: Memento-Skills (arXiv:2603.18743) — skills as structured files require accurate routing; unrouted skills cannot self-improve via the read-write learning loop
- **Description quality**: MCP Description Quality (arXiv:2602.18914) — well-written descriptions achieve 72% tool selection rate vs. 20% random baseline (3.6x improvement)
- **Information position**: Lost in the Middle (Liu et al., TACL 2024) — U-shaped LLM attention curve
- **Format impact**: He et al. (arXiv:2411.10541) — format changes alone can cause 9-40% performance variance
- **Instruction compliance**: IFEval (arXiv:2311.07911) — LLMs struggle with multi-constraint prompts
## Limitations
- Use this skill only when the task clearly matches the scope described above.
- Do not treat the output as a substitute for environment-specific validation, testing, or expert review.
- Stop and ask for clarification if required inputs, permissions, safety boundaries, or success criteria are missing.Related Skills
llm-prompt-optimizer
Use when improving prompts for any LLM. Applies proven prompt engineering techniques to boost output quality, reduce hallucinations, and cut token usage.
dx-optimizer
Developer Experience specialist. Improves tooling, setup, and workflows. Use PROACTIVELY when setting up new projects, after team feedback, or when development friction is noticed.
database-optimizer
Expert database optimizer specializing in modern performance tuning, query optimization, and scalable architectures.
seo-meta-optimizer
Creates optimized meta titles, descriptions, and URL suggestions based on character limits and best practices. Generates compelling, keyword-rich metadata. Use PROACTIVELY for new content.
performance-optimizer
Identifies and fixes performance bottlenecks in code, databases, and APIs. Measures before and after to prove improvements.
odoo-inventory-optimizer
Expert guide for Odoo Inventory: stock valuation (FIFO/AVCO), reordering rules, putaway strategies, routes, and multi-warehouse configuration.
aws-cost-optimizer
Comprehensive AWS cost analysis and optimization recommendations using AWS CLI and Cost Explorer
nft-standards
Master ERC-721 and ERC-1155 NFT standards, metadata best practices, and advanced NFT features.
nextjs-best-practices
Next.js App Router principles. Server Components, data fetching, routing patterns.
nextjs-app-router-patterns
Comprehensive patterns for Next.js 14+ App Router architecture, Server Components, and modern full-stack React development.
new-rails-project
Create a new Rails project
networkx
NetworkX is a Python package for creating, manipulating, and analyzing complex networks and graphs.