session-intelligence-harvester
Session Intelligence Harvester
Overview
Transform session learnings into permanent organizational intelligence by implementing updates across RII components. After productive sessions involving corrections, discoveries, or pattern identification, systematically extract what was learned, route it to the correct component, and apply the changes.
Why this matters: One-time fixes that aren't encoded into RII components will recur. The Chapter N skill format drift happened because no check existed to prevent it. After harvesting, that failure mode is encoded in 4 files—future sessions automatically benefit.
When to Use This Skill
Automatic Triggers (proactively suggest harvesting):
- Session corrected format drift (wrong file structure, YAML, invocation)
- Session added missing checks to orchestration files
- Session identified failure mode worth preventing
- Session touched 3+ files with similar pattern corrections
- PHR was created documenting significant learning
Manual Triggers (user requests):
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