ai-debug
AI Debug
Figure out why an existing AI feature is broken.
Works with:
- Linear MCP - Pull issue/bug details
- Manual - Describe the symptoms
Entry Point
When this skill is invoked, start with:
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AI DEBUG
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When AI fails, teams blame the model.
But 90% of failures are context failures.
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