272 lines
12 KiB
Markdown
272 lines
12 KiB
Markdown
---
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name: skill-optimizer
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description: "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."
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risk: safe
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source: hqhq1025/skill-optimizer (MIT)
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date_added: "2026-04-11"
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---
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## When to Use This Skill
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- Use when skills are not triggering as expected or seem broken
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- Use when you want to audit and improve your skill library's quality
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- Use when you want to understand which skills are underperforming or wasting context tokens
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## Rules
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- **Read-only**: never modify skill files. Only output report.
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- **All 8 dimensions**: do not skip any. If data is insufficient, report "N/A — insufficient session data" rather than omitting.
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- **Quantify**: "you had 12 research tasks last week but the skill never triggered" beats "you often do research".
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- **Suggest, don't prescribe**: give specific wording suggestions for description improvements, but frame as suggestions.
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- **Show evidence**: for undertrigger claims, quote the actual user message that should have triggered the skill.
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- **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").
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## Overview
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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.
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CSO (Claude/Agent Search Optimization) = writing skill descriptions so agents select the right skill at the right time. This skill checks for CSO violations.
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## Usage
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- `/optimize-skill` → scan all skills
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- `/optimize-skill my-skill` → single skill
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- `/optimize-skill skill-a skill-b` → multiple specified skills
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## Data Sources
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Auto-detect the current agent platform and scan the corresponding paths:
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| Source | Claude Code | Codex | Shared |
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|--------|------------|-------|--------|
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| Session transcripts | `~/.claude/projects/**/*.jsonl` | `~/.codex/sessions/**/*.jsonl` | — |
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| Skill files | `~/.claude/skills/*/SKILL.md` | `~/.codex/skills/*/SKILL.md` | `~/.agents/skills/*/SKILL.md` |
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**Platform detection:** Check which directories exist. Scan all available sources — a user may have both Claude Code and Codex installed.
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## Workflow
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```
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Identify target skills
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↓
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Collect session data (python3 scripts scan JSONL transcripts)
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↓
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Run 8 analysis dimensions
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↓
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Compute composite scores
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↓
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Output report with P0/P1/P2
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```
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### Step 1: Identify Target Skills
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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:
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- name, description (from YAML frontmatter)
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- trigger keywords (from description field)
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- defined workflow steps (Step 1/2/3... or ### sections under Workflow)
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- word count
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If user specified skill names, filter to only those.
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### Step 2: Collect Session Data
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Use python3 scripts via Bash to scan session JSONL files. Extract:
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**Claude Code sessions** (`~/.claude/projects/**/*.jsonl`):
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- `Skill` tool_use calls (which skills were invoked)
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- User messages (full text)
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- Assistant messages after skill invocation (for workflow tracking)
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- User messages after skill invocation (for reaction analysis)
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**Codex sessions** (`~/.codex/sessions/**/*.jsonl`):
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- `session_meta` events → extract `base_instructions` for skill loading evidence
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- `response_item` events → assistant outputs (workflow tracking)
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- `event_msg` events → tool execution and skill-related events
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- User messages from `turn_context` events (for reaction analysis)
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**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.
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**Aggregated:**
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- Per-skill: invocation count, trigger keyword match count
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- Per-skill: user reaction sentiment after invocation
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- Per-skill: workflow step completion markers
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### Step 3: Run 8 Analysis Dimensions
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**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.
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#### 4.1 Trigger Rate
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Count how many times each skill was actually invoked vs how many times its trigger keywords appeared in user messages.
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**Claude Code:** count `Skill` tool_use calls in transcripts.
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**Codex:** count sessions where the agent produced output following the skill's workflow markers (not merely loaded in context).
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**Diagnose:**
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- Never triggered → skill may be useless or trigger words wrong
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- Keywords match >> actual invocations → undertrigger problem, description needs work
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- High frequency → core skill, worth optimizing
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#### 4.2 Post-Invocation User Reaction
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**This dimension is critical and easy to skip. Do not skip it.**
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After a skill is invoked in a session, read the user's next 3 messages. Classify:
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- **Negative**: "no", "wrong", "never mind", "not what I wanted", user interrupts
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- **Correction**: user re-describes their intent, manually overrides skill output
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- **Positive**: "good", "ok", "continue", "nice", user follows the workflow
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- **Silent switch**: user changes topic entirely (likely false positive trigger)
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Report per-skill satisfaction rate.
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#### 4.3 Workflow Completion Rate
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**This dimension is critical and easy to skip. Do not skip it.**
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For each skill invocation found in session data:
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1. Extract the skill's defined steps from SKILL.md
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2. Search the assistant messages in that session for step markers (Step N, specific output formats defined in the skill)
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3. Calculate: how far did execution get?
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Report: `{skill-name} (N steps): avg completed Step X/N (Y%)`
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If a specific step is frequently where execution stops, flag it.
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#### 4.4 Static Quality Analysis
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Check each SKILL.md against these 14 rules:
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| Check | Pass Criteria |
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|-------|--------------|
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| Frontmatter format | Only `name` + `description`, total < 1024 chars |
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| Name format | Letters, numbers, hyphens only |
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| Description trigger | Starts with "Use when..." or has explicit trigger conditions |
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| Description workflow leak | Description does NOT summarize the skill's workflow steps (CSO violation) |
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| Description pushiness | Description actively claims scenarios where it should be used, not just passive |
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| Overview section | Present |
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| Rules section | Present |
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| MUST/NEVER density | Count ALL-CAPS directive words; >5 per 100 words = flag |
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| Word count | < 500 words (flag if over) |
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| Narrative anti-pattern | No "In session X, we found..." storytelling |
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| YAML quoting safety | description containing `: ` must be wrapped in double quotes |
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| Critical info position | Core trigger conditions and primary actions must be in the first 20% of SKILL.md |
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| Description 250-char check | Primary trigger keywords must appear within the first 250 characters of description |
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| Trigger condition count | ≤ 2 trigger conditions in description is ideal |
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#### 4.5a False Positive Rate (Overtrigger)
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Skill was invoked but user immediately rejected or ignored it.
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#### 4.5b Undertrigger Detection
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**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.
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Report: which user messages SHOULD have triggered the skill but didn't, and suggest description improvements.
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**Compounding Risk Assessment:**
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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.
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#### 4.6 Cross-Skill Conflicts
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Compare all skill pairs:
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- Trigger keyword overlap (same keywords in two descriptions)
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- Workflow overlap (two skills teach similar processes)
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- Contradictory guidance
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#### 4.7 Environment Consistency
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For each skill, extract referenced:
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- File paths → check if they exist (`test -e`)
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- CLI tools → check if installed (`which`)
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- Directories → check if they exist
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Flag any broken references.
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#### 4.8 Token Economics
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**This dimension is critical and easy to skip. Do not skip it.**
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For each skill:
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- Word count (from Step 1)
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- Trigger frequency (from 4.1)
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- Cost-effectiveness = trigger count / word count
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- Flag: large + never-triggered skills as candidates for removal or compression
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**Progressive Disclosure Tier Check:**
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Evaluate each skill against the 3-tier loading model:
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- Tier 1 (frontmatter): ~100 tokens. Check: is description ≤ 1024 chars?
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- Tier 2 (SKILL.md body): <500 lines recommended. Check: word count.
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- Tier 3 (reference files): loaded on demand. Check: does skill use reference files for detailed content, or cram everything into SKILL.md?
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Flag skills that put 500+ words in SKILL.md without using reference files as "poor progressive disclosure".
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### Step 4: Composite Score
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Rate each skill on a 5-point scale:
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| Score | Meaning |
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|-------|---------|
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| 5 | Healthy: high trigger rate, positive reactions, complete workflows, clean static |
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| 4 | Good: minor issues in 1-2 dimensions |
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| 3 | Needs attention: significant gap in 1 dimension or minor gaps in 3+ |
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| 2 | Problematic: never triggered, or negative user reactions, or major static issues |
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| 1 | Broken: doesn't work, references missing, or fundamentally misaligned |
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**Scored dimensions** (weighted average):
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- Trigger rate: 25%
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- User reaction: 20%
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- Workflow completion: 15%
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- Static quality: 15%
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- Undertrigger: 15%
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- Token economics: 10%
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**Qualitative dimensions** (reported but not scored):
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- 4.5a Overtrigger: reported as count + examples
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- 4.6 Cross-Skill Conflicts: reported as conflict pairs
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- 4.7 Environment Consistency: reported as pass/fail per reference
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## Report Format
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```markdown
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# Skill Optimization Report
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**Date**: {date}
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**Scope**: {all / specified skills}
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**Session data**: {N} sessions, {date range}
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## Overview
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| Skill | Triggers | Reaction | Completion | Static | Undertrigger | Token | Score |
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|-------|----------|----------|------------|--------|--------------|-------|-------|
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| example-skill | 2 | 100% | 86% | B+ | 1 miss | 486w | 4/5 |
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## P0 Fixes (blocking usage)
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1. ...
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## P1 Improvements (better experience)
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1. ...
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## P2 Optional Optimizations
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1. ...
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## Per-Skill Diagnostics
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### {skill-name}
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#### 4.1 Trigger Rate
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...
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#### 4.2 User Reaction
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...
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(all 8 dimensions)
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```
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## Research Background
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The analysis dimensions in this report are grounded in the following research:
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- **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
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- **Description quality**: MCP Description Quality (arXiv:2602.18914) — well-written descriptions achieve 72% tool selection rate vs. 20% random baseline (3.6x improvement)
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- **Information position**: Lost in the Middle (Liu et al., TACL 2024) — U-shaped LLM attention curve
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- **Format impact**: He et al. (arXiv:2411.10541) — format changes alone can cause 9-40% performance variance
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- **Instruction compliance**: IFEval (arXiv:2311.07911) — LLMs struggle with multi-constraint prompts
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## Limitations
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- Use this skill only when the task clearly matches the scope described above.
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- Do not treat the output as a substitute for environment-specific validation, testing, or expert review.
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- Stop and ask for clarification if required inputs, permissions, safety boundaries, or success criteria are missing.
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