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agent-introspection-debugging
Structured self-debugging workflow for AI agent failures using capture, diagnosis, contained recovery, and introspection reports.
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Structured self-debugging workflow for AI agent failures using capture, diagnosis, contained recovery, and introspection reports.
Basierend auf der SOC-Berufsklassifikation
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Use when a brand needs to discover or articulate its identity through structured multi-session interviews. Covers purpose, positioning, audience, personality, voice, narrative, and founder-brand tension across 8 modules using laddering, 5 Whys, and projective techniques. Produces a resumable session with disk-persisted state and a master brandbook (90_SYNTHESIS.md).
| name | agent-introspection-debugging |
| description | Structured self-debugging workflow for AI agent failures using capture, diagnosis, contained recovery, and introspection reports. |
| metadata | {"origin":"ECC"} |
Use this skill when an agent run is failing repeatedly, consuming tokens without progress, looping on the same tools, or drifting away from the intended task.
This is a workflow skill, not a hidden runtime. It teaches the agent to debug itself systematically before escalating to a human.
Activate this skill for:
Do not use this skill as the primary source for:
verification-loopBefore trying to recover, record the failure precisely.
Capture:
Minimum capture template:
## Failure Capture
- Session / task:
- Goal in progress:
- Error:
- Last successful step:
- Last failed tool / command:
- Repeated pattern seen:
- Environment assumptions to verify:
Match the failure to a known pattern before changing anything.
| Pattern | Likely Cause | Check |
|---|---|---|
| Maximum tool calls / repeated same command | loop or no-exit observer path | inspect the last N tool calls for repetition |
| Context overflow / degraded reasoning | unbounded notes, repeated plans, oversized logs | inspect recent context for duplication and low-signal bulk |
ECONNREFUSED / timeout | service unavailable or wrong port | verify service health, URL, and port assumptions |
429 / quota exhaustion | retry storm or missing backoff | count repeated calls and inspect retry spacing |
| file missing after write / stale diff | race, wrong cwd, or branch drift | re-check path, cwd, git status, and actual file existence |
| tests still failing after “fix” | wrong hypothesis | isolate the exact failing test and re-derive the bug |
Diagnosis questions:
Recover with the smallest action that changes the diagnosis surface.
Safe recovery actions:
Do not claim unsupported auto-healing actions like “reset agent state” or “update harness config” unless you are actually doing them through real tools in the current environment.
Contained recovery checklist:
## Recovery Action
- Diagnosis chosen:
- Smallest action taken:
- Why this is safe:
- What evidence would prove the fix worked:
End with a report that makes the recovery legible to the next agent or human.
## Agent Self-Debug Report
- Session / task:
- Failure:
- Root cause:
- Recovery action:
- Result: success | partial | blocked
- Token / time burn risk:
- Follow-up needed:
- Preventive change to encode later:
Prefer these interventions in order:
Bad pattern:
Good pattern:
verification-loop after recovery if code was changed.continuous-learning-v2 when the failure pattern is worth turning into an instinct or later skill.council when the issue is not technical failure but decision ambiguity.workspace-surface-audit if the failure came from conflicting local state or repo drift.When this skill is active, do not end with “I fixed it” alone.
Always provide: