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cm-deep-search
// Optional power-up — detects oversized codebases/docs and suggests tobi/qmd for local semantic search. Bridges cm-continuity (working memory) with long-term document retrieval. Zero-config detection, non-intrusive suggestion.
// Optional power-up — detects oversized codebases/docs and suggests tobi/qmd for local semantic search. Bridges cm-continuity (working memory) with long-term document retrieval. Zero-config detection, non-intrusive suggestion.
Self-learning SEO content pipeline: dashboard, multi-agent queue, token budgets, research → write → audit → publish. StoryBrand/Cialdini/JTBD-style frameworks; config-driven. Use for content factory, batch articles, or scaled publishing.
Easy-to-use conversational CLI (Codex style) for non-technical users to spawn parallel AI tasks supervised by a visual web dashboard.
Strategic analysis gate for existing products — multi-dimensional evaluation (tech, product, design, business) using Design Thinking + 9 Windows (TRIZ) + Double Diamond. Outputs 2-3 qualified options with recommendations. Use BEFORE cm-planning for complex initiatives and enhancements on existing codebases.
Full review lifecycle — request reviews, handle feedback with technical rigor, and complete branch integration. Use when completing tasks, receiving feedback, or finishing feature branches.
Unified code intelligence — Skeleton Index (zero-dep, <4s) + AST knowledge graph (CodeGraph) + architecture diagrams (Mermaid) + smart context builder. Pre-indexes code structure so AI agents understand any codebase instantly. 95% token compression for onboarding. 30% fewer tokens for deep analysis.
Working memory protocol — maintains context across sessions via CONTINUITY.md. Inspired by Loki Mode. Read at turn start, update at turn end. Captures mistakes and learnings to prevent repeating errors.
| name | cm-deep-search |
| description | Optional power-up — detects oversized codebases/docs and suggests tobi/qmd for local semantic search. Bridges cm-continuity (working memory) with long-term document retrieval. Zero-config detection, non-intrusive suggestion. |
When your project outgrows AI's context window, bring the search engine to your docs. Optional integration with tobi/qmd — BM25 + Vector + LLM re-ranking, 100% local.
This skill is NOT invoked directly. It is triggered automatically by other skills when they detect an oversized project.
During codebase scan (Phase 1a of cm-brainstorm-idea, Step 2 of cm-dockit, etc.), check:
TRIGGER if ANY of these are true:
→ docs/ folder contains >50 markdown files
→ Project has >200 source files total
→ User mentions "meeting notes", "historical PRDs", "old specs"
→ User asks "find that file that talked about X from before"
→ cm-dockit just generated >30 doc files
When threshold is met, suggest naturally — DO NOT block or force:
💡 **Pro Tip: Deep Search**
This project has [X doc files / Y source files] — quite large for AI to read directly.
You can install **[qmd](https://github.com/tobi/qmd)** to create semantic search
across all your documentation, helping AI find the right context faster.
Quick install:
\`\`\`bash
npm install -g @tobilu/qmd
qmd collection add ./docs --name project-docs
qmd context add qmd://project-docs "Project documentation for [project-name]"
qmd embed
\`\`\`
Then AI can search using: `qmd query "your question"`
# Node.js
npm install -g @tobilu/qmd
# Or Bun
bun install -g @tobilu/qmd
# Add collections
qmd collection add ./docs --name docs
qmd collection add ./src --name source --mask "**/*.{ts,tsx,js,jsx,py,go,rs}"
# Add context (helps AI understand each collection's purpose)
qmd context add qmd://docs "Technical documentation for [project-name]"
qmd context add qmd://source "Source code for [project-name]"
# Create vector embeddings
qmd embed
Add to MCP config:
{
"mcpServers": {
"qmd": {
"command": "qmd",
"args": ["mcp"]
}
}
}
Or run HTTP mode for shared server:
qmd mcp --http --daemon
# Check index
qmd status
# Test search
qmd query "authentication flow"
cm-brainstorm-idea (Phase 1: DISCOVER)When AI needs to understand the full picture of a large project:
# Find all docs related to the topic being brainstormed
qmd query "user authentication redesign" --json -n 10
# Get full content of important docs
qmd get "docs/architecture.md" --full
cm-planning (Phase A: Brainstorm)When searching for specs, PRDs, or past decisions related to the feature being planned:
qmd query "payment integration decisions" --files --min-score 0.4
cm-dockit (Post-generation)After cm-dockit finishes generating docs, index them so AI can search from any session:
qmd collection add ./docs --name project-knowledge
qmd embed
cm-continuity (Tier 4: External Memory)cm-continuity manages working memory (500 words). qmd extends it with long-term semantic search:
Tier 1: Sensory Memory → temporary variables in session (not persisted)
Tier 2: Working Memory → CONTINUITY.md (~500 words)
Tier 3: Long-Term Memory → learnings.json, decisions.json
Tier 4: External Semantic → qmd (optional, text search for large docs)
Tier 5: Structural Code → CodeGraph (optional, AST graph for code — see cm-codeintell)
qmd finds text across docs/code. CodeGraph finds symbols, call graphs, and impact. They complement each other — use both for maximum intelligence on large projects.
The biggest risk of Semantic Search is stale index / new source. If AI reads outdated docs and generates incorrect code, the consequences are severe.
CodyMaster handles this with 3 mechanisms:
Whenever AI completes a task that changes/creates a large number of files (e.g., cm-dockit generates docs, cm-execution refactors source code):
# This runs quickly because qmd only embeds changed files (incremental)
qmd embed
AI Rule: If the project has qmd enabled, AI must automatically run
qmd embedvia terminal before finishing a task.
Before starting cm-brainstorm-idea or cm-planning on a project using qmd, AI calls the MCP tool to perform a health check:
// AI auto-runs this MCP tool
{
"name": "status",
"arguments": {}
}
If status reports files pending/un-embedded, AI will run qmd embed in terminal before searching.
For 100% safety beyond AI's control (when end-user modifies code directly): AI should suggest the user install a Git Post-Commit Hook:
# Add file .git/hooks/post-commit
#!/bin/sh
qmd embed > /dev/null 2>&1 &
This ensures every commit triggers QMD to silently update the index in the background.
cm-continuity (memory) ─────────────── always active
cm-deep-search (search) ──── optional ─┤
├── feeds context to ──→ cm-brainstorm-idea
│ ──→ cm-planning
cm-dockit (generate docs) ── produces ─┤ ──→ cm-execution
| Skill | Relationship |
|---|---|
cm-continuity | COMPLEMENT: continuity = RAM, qmd = semantic disk search |
cm-brainstorm-idea | TRIGGERED BY: Phase 1a codebase scan detects large corpus |
cm-dockit | TRIGGERED AFTER: docs generated, suggest indexing |
cm-planning | CONSUMER: uses qmd results for context during planning |
cm-execution | CONSUMER: searches for related code/docs during execution |
System: macOS / Linux / Windows (WSL)
Runtime: Node.js 20+ or Bun 1.0+
VRAM: ~2-4GB for GGUF models (embedding + reranking)
Disk: ~2-5GB for models (downloaded on first run)
✅ DO:
- Suggest qmd ONLY when detection threshold is met
- Keep suggestion non-intrusive (Pro Tip format, never blocking)
- Always include context command (qmd context add) — this is qmd's killer feature
- Guide user to setup MCP server for seamless AI integration
❌ DON'T:
- Force installation on every project
- Suggest qmd for small projects (<50 docs, <200 src files)
- Replace cm-continuity — they solve DIFFERENT problems
- Assume qmd is installed — always check first
cm-continuity = "remembers what you're doing." cm-deep-search = "finds what was written before." Together = complete memory system.