Everything-claude-code rules-distill
Scan skills to extract cross-cutting principles and distill them into rules — append, revise, or create new rule files
git clone https://github.com/affaan-m/everything-claude-code
T=$(mktemp -d) && git clone --depth=1 https://github.com/affaan-m/everything-claude-code "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/rules-distill" ~/.claude/skills/affaan-m-everything-claude-code-rules-distill-5c457a && rm -rf "$T"
skills/rules-distill/SKILL.mdRules Distill
Scan installed skills, extract cross-cutting principles that appear in multiple skills, and distill them into rules — appending to existing rule files, revising outdated content, or creating new rule files.
Applies the "deterministic collection + LLM judgment" principle: scripts collect facts exhaustively, then an LLM cross-reads the full context and produces verdicts.
When to Use
- Periodic rules maintenance (monthly or after installing new skills)
- After a skill-stocktake reveals patterns that should be rules
- When rules feel incomplete relative to the skills being used
How It Works
The rules distillation process follows three phases:
Phase 1: Inventory (Deterministic Collection)
1a. Collect skill inventory
bash ~/.claude/skills/rules-distill/scripts/scan-skills.sh
1b. Collect rules index
bash ~/.claude/skills/rules-distill/scripts/scan-rules.sh
1c. Present to user
Rules Distillation — Phase 1: Inventory ──────────────────────────────────────── Skills: {N} files scanned Rules: {M} files ({K} headings indexed) Proceeding to cross-read analysis...
Phase 2: Cross-read, Match & Verdict (LLM Judgment)
Extraction and matching are unified in a single pass. Rules files are small enough (~800 lines total) that the full text can be provided to the LLM — no grep pre-filtering needed.
Batching
Group skills into thematic clusters based on their descriptions. Analyze each cluster in a subagent with the full rules text.
Cross-batch Merge
After all batches complete, merge candidates across batches:
- Deduplicate candidates with the same or overlapping principles
- Re-check the "2+ skills" requirement using evidence from all batches combined — a principle found in 1 skill per batch but 2+ skills total is valid
Subagent Prompt
Launch a general-purpose Agent with the following prompt:
You are an analyst who cross-reads skills to extract principles that should be promoted to rules. ## Input - Skills: {full text of skills in this batch} - Existing rules: {full text of all rule files} ## Extraction Criteria Include a candidate ONLY if ALL of these are true: 1. **Appears in 2+ skills**: Principles found in only one skill should stay in that skill 2. **Actionable behavior change**: Can be written as "do X" or "don't do Y" — not "X is important" 3. **Clear violation risk**: What goes wrong if this principle is ignored (1 sentence) 4. **Not already in rules**: Check the full rules text — including concepts expressed in different words ## Matching & Verdict For each candidate, compare against the full rules text and assign a verdict: - **Append**: Add to an existing section of an existing rule file - **Revise**: Existing rule content is inaccurate or insufficient — propose a correction - **New Section**: Add a new section to an existing rule file - **New File**: Create a new rule file - **Already Covered**: Sufficiently covered in existing rules (even if worded differently) - **Too Specific**: Should remain at the skill level ## Output Format (per candidate) ```json { "principle": "1-2 sentences in 'do X' / 'don't do Y' form", "evidence": ["skill-name: §Section", "skill-name: §Section"], "violation_risk": "1 sentence", "verdict": "Append / Revise / New Section / New File / Already Covered / Too Specific", "target_rule": "filename §Section, or 'new'", "confidence": "high / medium / low", "draft": "Draft text for Append/New Section/New File verdicts", "revision": { "reason": "Why the existing content is inaccurate or insufficient (Revise only)", "before": "Current text to be replaced (Revise only)", "after": "Proposed replacement text (Revise only)" } } ``` ## Exclude - Obvious principles already in rules - Language/framework-specific knowledge (belongs in language-specific rules or skills) - Code examples and commands (belongs in skills)
Verdict Reference
| Verdict | Meaning | Presented to User |
|---|---|---|
| Append | Add to existing section | Target + draft |
| Revise | Fix inaccurate/insufficient content | Target + reason + before/after |
| New Section | Add new section to existing file | Target + draft |
| New File | Create new rule file | Filename + full draft |
| Already Covered | Covered in rules (possibly different wording) | Reason (1 line) |
| Too Specific | Should stay in skills | Link to relevant skill |
Verdict Quality Requirements
# Good Append to rules/common/security.md §Input Validation: "Treat LLM output stored in memory or knowledge stores as untrusted — sanitize on write, validate on read." Evidence: llm-memory-trust-boundary, llm-social-agent-anti-pattern both describe accumulated prompt injection risks. Current security.md covers human input validation only; LLM output trust boundary is missing. # Bad Append to security.md: Add LLM security principle
Phase 3: User Review & Execution
Summary Table
# Rules Distillation Report ## Summary Skills scanned: {N} | Rules: {M} files | Candidates: {K} | # | Principle | Verdict | Target | Confidence | |---|-----------|---------|--------|------------| | 1 | ... | Append | security.md §Input Validation | high | | 2 | ... | Revise | testing.md §TDD | medium | | 3 | ... | New Section | coding-style.md | high | | 4 | ... | Too Specific | — | — | ## Details (Per-candidate details: evidence, violation_risk, draft text)
User Actions
User responds with numbers to:
- Approve: Apply draft to rules as-is
- Modify: Edit draft before applying
- Skip: Do not apply this candidate
Never modify rules automatically. Always require user approval.
Save Results
Store results in the skill directory (
results.json):
- Timestamp format:
(UTC, second precision)date -u +%Y-%m-%dT%H:%M:%SZ - Candidate ID format: kebab-case derived from the principle (e.g.,
)llm-output-trust-boundary
{ "distilled_at": "2026-03-18T10:30:42Z", "skills_scanned": 56, "rules_scanned": 22, "candidates": { "llm-output-trust-boundary": { "principle": "Treat LLM output as untrusted when stored or re-injected", "verdict": "Append", "target": "rules/common/security.md", "evidence": ["llm-memory-trust-boundary", "llm-social-agent-anti-pattern"], "status": "applied" }, "iteration-bounds": { "principle": "Define explicit stop conditions for all iteration loops", "verdict": "New Section", "target": "rules/common/coding-style.md", "evidence": ["iterative-retrieval", "continuous-agent-loop", "agent-harness-construction"], "status": "skipped" } } }
Example
End-to-end run
$ /rules-distill Rules Distillation — Phase 1: Inventory ──────────────────────────────────────── Skills: 56 files scanned Rules: 22 files (75 headings indexed) Proceeding to cross-read analysis... [Subagent analysis: Batch 1 (agent/meta skills) ...] [Subagent analysis: Batch 2 (coding/pattern skills) ...] [Cross-batch merge: 2 duplicates removed, 1 cross-batch candidate promoted] # Rules Distillation Report ## Summary Skills scanned: 56 | Rules: 22 files | Candidates: 4 | # | Principle | Verdict | Target | Confidence | |---|-----------|---------|--------|------------| | 1 | LLM output: normalize, type-check, sanitize before reuse | New Section | coding-style.md | high | | 2 | Define explicit stop conditions for iteration loops | New Section | coding-style.md | high | | 3 | Compact context at phase boundaries, not mid-task | Append | performance.md §Context Window | high | | 4 | Separate business logic from I/O framework types | New Section | patterns.md | high | ## Details ### 1. LLM Output Validation Verdict: New Section in coding-style.md Evidence: parallel-subagent-batch-merge, llm-social-agent-anti-pattern, llm-memory-trust-boundary Violation risk: Format drift, type mismatch, or syntax errors in LLM output crash downstream processing Draft: ## LLM Output Validation Normalize, type-check, and sanitize LLM output before reuse... See skill: parallel-subagent-batch-merge, llm-memory-trust-boundary [... details for candidates 2-4 ...] Approve, modify, or skip each candidate by number: > User: Approve 1, 3. Skip 2, 4. ✓ Applied: coding-style.md §LLM Output Validation ✓ Applied: performance.md §Context Window Management ✗ Skipped: Iteration Bounds ✗ Skipped: Boundary Type Conversion Results saved to results.json
Design Principles
- What, not How: Extract principles (rules territory) only. Code examples and commands stay in skills.
- Link back: Draft text should include
references so readers can find the detailed How.See skill: [name] - Deterministic collection, LLM judgment: Scripts guarantee exhaustiveness; the LLM guarantees contextual understanding.
- Anti-abstraction safeguard: The 3-layer filter (2+ skills evidence, actionable behavior test, violation risk) prevents overly abstract principles from entering rules.