Claude-skill-registry debugging-agent
install
source · Clone the upstream repo
git clone https://github.com/majiayu000/claude-skill-registry
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/majiayu000/claude-skill-registry "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/data/debugging-agent" ~/.claude/skills/majiayu000-claude-skill-registry-debugging-agent && rm -rf "$T"
manifest:
skills/data/debugging-agent/SKILL.mdsource content
Debugging Agent
Self-Improving Agent System의 핵심 컴포넌트
다른 모든 agent의 로그를 분석하여 문제를 발견하고 개선안을 제안합니다.
📋 Core Workflow
1. Log Collection (로그 수집)
python backend/ai/skills/system/debugging-agent/scripts/log_reader.py \ --days 1 \ --categories system,war-room,analysis
수집 대상:
backend/ai/skills/logs/*/*/execution-*.jsonlbackend/ai/skills/logs/*/*/errors-*.jsonlbackend/ai/skills/logs/*/*/performance-*.jsonl
Output:
{ "agents": ["signal-consolidation", "war-room-debate", ...], "total_executions": 50, "total_errors": 3, "time_range": "2025-12-25 to 2025-12-26" }
2. Pattern Detection (패턴 감지)
python backend/ai/skills/system/debugging-agent/scripts/pattern_detector.py \ --input logs_summary.json \ --output patterns.json
감지 패턴:
A. Recurring Errors (반복 에러)
- 조건: 동일한 error type이 24시간 내 3회 이상
- 예시:
(3회)TypeError: missing required positional argument - 우선순위: HIGH
B. Performance Degradation (성능 저하)
- 조건: duration_ms가 baseline 대비 2배 이상
- 예시: 평균 1000ms → 최근 2500ms
- 우선순위: MEDIUM
C. High Error Rate (높은 에러율)
- 조건: error rate > 5%
- 예시: 50 executions, 4 errors = 8%
- 우선순위: CRITICAL
D. API Rate Limits (API 제한)
- 조건: "rate limit" 관련 에러 5회 이상
- 우선순위: HIGH
Output:
{ "patterns": [ { "type": "recurring_error", "agent": "war-room-debate", "error_type": "TypeError", "count": 3, "impact": "CRITICAL", "first_seen": "2025-12-25T18:30:00", "last_seen": "2025-12-26T09:15:00" } ] }
3. Context Synthesis (맥락 통합)
관련 agent의
SKILL.md를 읽어서 컨텍스트 파악:
# Read related skills cat backend/ai/skills/war-room/war-room-debate/SKILL.md cat backend/api/war_room_router.py
파악 내용:
- Agent의 역할과 책임
- 입력/출력 형식
- 의존성 (DB, APIs, etc.)
- 최근 변경사항
4. Improvement Proposal (개선안 생성)
python backend/ai/skills/system/debugging-agent/scripts/improvement_proposer.py \ --patterns patterns.json \ --output proposals/proposal-20251226-100822.md
Proposal 포맷:
# Improvement Proposal: Fix War Room TypeError **Generated**: 2025-12-26 10:08:22 **Agent**: war-room-debate **Priority**: CRITICAL **Confidence**: 87% --- ## 🔍 Issue Summary **Pattern Detected**: Recurring Error (3 occurrences in 24h) **Error**: ``` TypeError: missing required positional argument for AIDebateSession ``` **Impact**: - War Room debates failing - No trading signals generated - User experience degraded --- ## 📊 Root Cause Analysis **Evidence**: 1. Error occurs in `war_room_router.py:L622` 2. `AIDebateSession.__init__()` called with missing argument 3. Recent code change added new required field **Root Cause**: Schema mismatch between `AIDebateSession` model and router code. --- ## 💡 Proposed Solution ### Option 1: Add Missing Argument (Recommended) **File**: `backend/api/war_room_router.py` ```python # Line 622 - Add missing argument session = AIDebateSession( ticker=ticker, consensus_action=pm_decision["consensus_action"], # ... existing fields ... dividend_risk_vote=next((v["action"] for v in votes if v["agent"] == "dividend_risk"), None), # ← ADD THIS created_at=datetime.now() ) ``` **Confidence**: 90% (high evidence) ### Option 2: Make Field Optional Alternatively, update the model to make the field optional. **Confidence**: 70% (lower impact but safer) --- ## 🎯 Expected Impact - ✅ Eliminates TypeError - ✅ War Room debates resume - ✅ Trading signals restored - ⚠️ Requires testing with all agents --- ## 🧪 Verification Plan 1. Apply fix to `war_room_router.py` 2. Run War Room debate: `POST /api/war-room/debate {"ticker": "AAPL"}` 3. Verify no TypeError 4. Check logs for successful execution --- ## 📝 Risk Assessment **Risk Level**: LOW **Potential Issues**: - May need to update other agent votes similarly - Database migration if schema changed **Rollback Plan**: - Revert commit if issues arise - Monitor error logs for 24h --- **Confidence Breakdown**: - Error Reproducibility: 100% (3/3 occurrences) - Historical Success: 80% (similar fixes worked) - Impact Clarity: 90% (clear user impact) - Root Cause Evidence: 85% (stack trace clear) - Solution Simplicity: 85% (1-line fix) **Overall Confidence**: 87%
🎯 Confidence Scoring (5 Metrics)
Proposal confidence는 5가지 메트릭의 가중 평균:
-
Error Reproducibility (30%)
- 100% if error occurs every time
- 0% if random/sporadic
-
Historical Success (25%)
- Similar fixes worked before?
- Based on past proposals
-
Impact Clarity (20%)
- Clear user/system impact?
- Measurable consequences?
-
Root Cause Evidence (15%)
- Stack trace available?
- Clear error message?
-
Solution Simplicity (10%)
- Simple 1-line fix vs complex refactor
- Lower risk = higher confidence
Formula:
confidence = ( reproducibility * 0.30 + historical_success * 0.25 + impact_clarity * 0.20 + root_cause_evidence * 0.15 + solution_simplicity * 0.10 )
🔄 Usage Examples
Manual Trigger
# Analyze recent logs python backend/ai/skills/system/debugging-agent/scripts/log_reader.py --days 1 # Detect patterns python backend/ai/skills/system/debugging-agent/scripts/pattern_detector.py # Generate proposals python backend/ai/skills/system/debugging-agent/scripts/improvement_proposer.py
Scheduled Execution (via orchestrator)
# scripts/run_debugging_agent.py import schedule def run_debugging_agent(): subprocess.run(["python", "backend/ai/skills/system/debugging-agent/scripts/log_reader.py"]) subprocess.run(["python", "backend/ai/skills/system/debugging-agent/scripts/pattern_detector.py"]) subprocess.run(["python", "backend/ai/skills/system/debugging-agent/scripts/improvement_proposer.py"]) schedule.every(30).minutes.do(run_debugging_agent)
📁 Output Structure
backend/ai/skills/logs/system/debugging-agent/ ├── execution-2025-12-26.jsonl # Debugging agent's own logs ├── errors-2025-12-26.jsonl └── proposals/ ├── proposal-20251226-100822.md # Improvement proposal ├── proposal-20251226-103045.md └── accepted/ └── proposal-20251226-100822.md # User accepted
⚠️ Important Notes
- Read-Only Access: Debugging Agent는 로그만 읽고 코드는 수정하지 않음
- User Approval Required: 모든 제안은 사용자 승인 필요
- Audit Trail: 모든 제안과 결과는 proposals/ 디렉토리에 보관
- Safety First: Confidence < 70%인 제안은 경고 표시
🚀 Next Steps
After Phase 2 complete:
- Phase 3: Skill Orchestrator (scheduling, notifications)
- (Optional) Phase 4: CI/CD Integration (auto-apply patches)
Created: 2025-12-26
Version: 1.0
Status: In Development