kaizen-improvement
Kaizen Improvement
Transform analysis findings from .planning/kaizen/ into actionable improvements — hooks, agent patches, skill refinements, CLAUDE.md updates, and automation scripts.
Prerequisite: Analysis findings must exist in .planning/kaizen/ (generated by the transcript-analysis skill).
Improvement Types
Five categories of output, each with a delegation template:
- Hook generation — PreToolUse deny/redirect, SubagentStart context injection, Stop quality gates
- Agent prompt refinement — surgical fixes to agent system prompts via @subagent-refactorer
- Skill patches — add missing knowledge to skills via /plugin-creator:skill-creator
- CLAUDE.md updates — project-wide behavioral rules
- Script automation — replace repeated manual workflows with scripts or skills
For detailed templates and examples, see Improvement Templates.
For the Autonomous Refinement Loop (ARL) knowledge base — Layer 3 implementation details, prerequisites, and research synthesis — see ARL Knowledge.
Workflow
flowchart TD
Start([Read analysis findings]) --> Parse[Extract anti-patterns with frequency and evidence]
Parse --> Score[Score by frequency × impact]
Score --> Top[Select top findings]
Top --> Type{Improvement type?}
Type -->|Repeated tool misuse| Hook[Generate hook — deny/redirect]
Type -->|Agent behavior issue| Agent[Generate agent patch instruction set]
Type -->|Knowledge gap| Skill[Generate skill patch instruction set]
Type -->|Project-wide issue| Claude[Generate CLAUDE.md addition]
Type -->|Manual workflow| Script[Generate automation proposal]
Hook --> Output[Write to .planning/kaizen/improvements/]
Agent --> Output
Skill --> Output
Claude --> Output
Script --> Output
Output --> Install{--install flag?}
Install -->|Yes| Apply[Write hooks to settings, apply patches]
Install -->|No| Draft[Leave as proposals for review]
Hook Generation
Read findings → generate hook configuration + optional script. For patterns mapped to each anti-pattern type, guidelines, and examples, see Hook Patterns.
Delegation Protocol
Improvements are instruction sets for specialist agents, not direct edits. Follow outcome-focused delegation:
- Describe the problem with evidence (session IDs, tool calls, frequency)
- State the desired outcome
- Let the specialist agent determine the implementation approach
- Never prescribe specific code changes in the delegation prompt
Output Modes
Draft mode (default)
Write all proposals to .planning/kaizen/improvements/ as markdown files. Each file contains:
- Finding summary with evidence
- Proposed improvement
- Delegation prompt for the appropriate specialist agent
- Priority score
Install mode (--install flag)
For hooks only — write directly to .claude/settings.json or hooks/hooks.json. Other improvement types always produce delegation prompts (never direct edits).
Priority Scoring
Rank improvements by:
- Frequency × Impact — occurrences across sessions × cost per occurrence
- Automation potential — hooks > scripts > documentation
- Blast radius — project-wide > single-agent > single-session
- Implementation cost — hook (minutes) < CLAUDE.md (minutes) < skill (hours) < agent (days)
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