🧪 Skills

Qmd Memory 1.0.0

Enables local hybrid memory search using QMD with optimized collections, automatic indexing, and multi-agent sharing to reduce API costs by $50-300/month.

v1.0.0
❤️ 0
⬇️ 160
👁 1
Share

Description

QMD Memory Skill for OpenClaw

Local Hybrid Search — Save $50-300/month in API Costs

Author: As Above Technologies Version: 1.0.0 ClawHub: [Coming Soon]


💰 THE VALUE PROPOSITION

API Costs You're Paying Now

Operation API Cost Frequency Monthly Cost
memory_search (embedding) $0.02-0.05 50-200/day $30-300
Context retrieval $0.01-0.03 100+/day $30-90
Semantic queries $0.03-0.08 20-50/day $18-120
TOTAL $78-510/month

With QMD Local

Operation Cost Why
All searches $0 Runs on your machine
Embeddings $0 Local GGUF models
Re-ranking $0 Local LLM

Your savings: $50-300+/month

One-time setup. Forever free searches.


🚀 QUICK START

# Install the skill
clawhub install asabove/qmd-memory

# Run setup (installs QMD, configures collections)
openclaw skill run qmd-memory setup

# That's it. Your memory is now supercharged.

WHAT YOU GET

1. Automatic Collection Setup

Based on your workspace structure, we create optimized collections:

✓ workspace     — Core agent files (MEMORY.md, SOUL.md, etc.)
✓ daily-logs    — memory/*.md daily logs
✓ intelligence  — intelligence/*.md (if exists)
✓ projects      — projects/**/*.md (if exists)
✓ documents     — Any additional doc folders you specify

2. Smart Context Descriptions

We add context to each collection so QMD understands what's where:

qmd://workspace    → "Agent identity and configuration files"
qmd://daily-logs   → "Daily work logs and session history"
qmd://intelligence → "Analysis, research, and reference documents"

3. Pre-configured Cron Jobs

# Auto-update index (nightly at 3am)
0 3 * * * qmd update && qmd embed

# Keep your memory fresh without thinking about it

4. OpenClaw Integration

Memory search now uses QMD automatically:

  • memory_search → routes to QMD hybrid search
  • memory_get → retrieves from QMD collections
  • Results include collection context

5. Multi-Agent MCP Server (Optional)

# Start shared memory server
openclaw skill run qmd-memory serve

# All your agents can now query collective memory
# Forge, Thoth, Axis — shared knowledge base

📊 SEARCH MODES

Mode Command Best For
Keyword qmd search "query" Exact matches, fast
Semantic qmd vsearch "query" Conceptual similarity
Hybrid qmd query "query" Best quality (recommended)

Example Queries

# Find exact mentions
qmd search "Charlene" -n 5

# Find conceptually related content
qmd vsearch "how should we handle customer complaints"

# Best quality — expansion + reranking
qmd query "what decisions did we make about pricing strategy"

# Search specific collection
qmd search "API keys" -c workspace

🔧 CONFIGURATION

Add Custom Collections

openclaw skill run qmd-memory add-collection ~/Documents/research --name research

Add Context

openclaw skill run qmd-memory add-context qmd://research "Market research and competitive analysis"

Refresh Index

openclaw skill run qmd-memory refresh

💡 TEMPLATES

Trading/Investing Workspace

openclaw skill run qmd-memory template trading

Creates:

  • intelligence — Trading systems, dashboards, signals
  • market-data — Price history, analysis
  • research — Due diligence, reports
  • daily-logs — Trade journal

Content Creator Workspace

openclaw skill run qmd-memory template content

Creates:

  • articles — Published content
  • drafts — Work in progress
  • research — Source material
  • ideas — Brainstorms, notes

Developer Workspace

openclaw skill run qmd-memory template developer

Creates:

  • docs — Documentation
  • notes — Technical notes
  • decisions — ADRs, architecture decisions
  • snippets — Code snippets, examples

📈 COST SAVINGS CALCULATOR

Run this to see your estimated savings:

openclaw skill run qmd-memory calculate-savings

Output:

Your Current API Memory Costs (estimated):
  memory_search calls/day:     ~75
  Average cost per call:       $0.03
  Monthly API cost:            $67.50

With QMD Local:
  Monthly cost:                $0.00

YOUR MONTHLY SAVINGS:          $67.50
YOUR ANNUAL SAVINGS:           $810.00

ROI on skill purchase:         40x (if skill was $20)

🛠️ TECHNICAL DETAILS

Models Used (Auto-Downloaded)

Model Purpose Size
embeddinggemma-300M-Q8_0 Vector embeddings ~300MB
qwen3-reranker-0.6b-q8_0 Re-ranking results ~640MB
qmd-query-expansion-1.7B-q4_k_m Query expansion ~1.1GB

Total: ~2GB (one-time download)

System Requirements

  • Node.js >= 22
  • ~3GB disk space (models + index)
  • ~2GB RAM during embedding (then minimal)

Where Data is Stored

~/.cache/qmd/
├── index.sqlite      # Search index
├── models/           # GGUF models
└── mcp.pid           # MCP server PID (if running)

🤝 SUPPORT

Questions?

  • GitHub Issues: github.com/asabove/qmd-memory-skill
  • Discord: As Above community
  • Email: support@asabove.tech

Found it valuable?

  • Star us on ClawHub
  • Share with other OpenClaw users
  • Subscribe to our newsletter for more agent optimization tips

📜 LICENSE

MIT — Use freely, modify as needed.

QMD itself is created by Tobi Lütke (github.com/tobi/qmd). This skill provides easy OpenClaw integration.


"Stop paying for memory. Start compounding knowledge."

As Above Technologies — Agent Infrastructure for Humans

Reviews (0)

Sign in to write a review.

No reviews yet. Be the first to review!

Comments (0)

Sign in to join the discussion.

No comments yet. Be the first to share your thoughts!

Compatible Platforms

Pricing

Free

Related Configs