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auto-skill-extractor
Automatically learn from your AI's work and turn repeated subagent tasks into reusable skills
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
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Automatically learn from your AI's work and turn repeated subagent tasks into reusable skills
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
基于 SOC 职业分类
| name | auto-skill-extractor |
| description | Automatically learn from your AI's work and turn repeated subagent tasks into reusable skills |
Turn your agent's work into reusable skills. Automatically.
✅ You run complex subagent tasks repeatedly
✅ You want to build a skill library without manual authoring
✅ You run multi-domain tasks (files + system + web)
✅ You want your agent to learn from its own patterns
❌ Simple 1-2 tool tasks (not worth skilling)
❌ One-off exploratory work
❌ You prefer manually authoring every skill
clawhub install auto-skill-extractor
mkdir -p skills/auto-draft skills/auto skills/manual
Add to AGENTS.md after subagent completion:
# Auto-skill extraction trigger
import subprocess
import json
# Write trigger input
trigger_data = {
"completion_status": "success",
"tool_calls": tool_call_count, # from subagent result
"transcript_summary": brief_summary, # Keep brief, avoid secrets
"session_id": session_key,
"multi_domain": True # if applicable
}
# RECOMMENDED: Pipe via stdin (no file on disk)
result = subprocess.run(
["python3", "scripts/auto-skill-trigger.py"],
input=json.dumps(trigger_data),
capture_output=True,
text=True
)
# ALTERNATIVE: File-based (delete immediately after)
# with open("/tmp/trigger.json", "w") as f:
# json.dump(trigger_data, f)
# result = subprocess.run(
# ["python3", "scripts/auto-skill-trigger.py", "/tmp/trigger.json"],
# capture_output=True, text=True
# )
# os.remove("/tmp/trigger.json") # SECURITY: Delete after use
output = json.loads(result.stdout)
if output.get("action") == "extract":
print(f"🔄 Created DRAFT skill: {output['skill_name']}")
Run a subagent with complex work:
Spawn subagent to analyze codebase...
- Read 5 config files ✓
- Check processes ✓
- Write summary report ✓
Result: skills/auto-draft/codebase-analyzer-abc123/ created automatically
After every subagent completion:
| Check | Must Pass |
|---|---|
| Status | success |
| Tool calls | ≥ 3 |
| Complexity | ≥ 4 |
Base: tool_calls × 0.7 (max 5 pts)
3 tools = 2 pts, 5 tools = 4 pts
Bonus: +2 multi-domain (files + system + web)
+2 error recovery (retry logic)
+1 fail-then-succeed
Threshold: 4 points = extract
skills/auto-draft/my-skill-abc123/
├── SKILL.md ← Template with metadata
└── meta.json ← Invocation tracking
meta.jsonskills/auto/Promoted skills are:
/skills auto listEdit scripts/auto-skill-trigger.py:
COMPLEXITY_THRESHOLD = 4 # Lower = more drafts, more curation
MAX_QUEUE_SIZE = 50 # Pending extraction limit
PROMOTE_THRESHOLD = 3 # Invocations before promotion
Ignore thresholds:
#skill: force
python3 scripts/skill-lifecycle.py drafts
python3 scripts/skill-lifecycle.py promote my-skill-name
python3 scripts/skill-lifecycle.py process
# Removes drafts unused for 7+ days
../../../etc → blockedCheck extraction worked:
# See recent DRAFTs
ls -la skills/auto-draft/
# Check extraction queue
cat scripts/skill-extraction-queue.json
# View specific skill
cat skills/auto-draft/my-skill-abc123/SKILL.md
| Problem | Cause | Fix |
|---|---|---|
| No DRAFTs created | Threshold too high | Lower COMPLEXITY_THRESHOLD |
| Too many DRAFTs | Threshold too low | Raise threshold, manually curate |
| Promotion never happens | Not using DRAFTs | Run /skills promote manually |
| Skills not useful | Noise in extraction | Tune thresholds, review DRAFTs weekly |
Subagent completes
↓
auto-skill-trigger.py
↓
Score complexity (0-10)
↓
If ≥ 4: Create DRAFT
↓
skill-lifecycle.py
↓
After 3 uses: PROMOTE → skills/auto/
↓
After 7 days: ARCHIVE