skills$openclaw/qmd
lifecoacher9.0k

by lifecoacher

qmd – OpenClaw Skill

qmd is an OpenClaw Skills integration for ai ml workflows. Local hybrid search for markdown notes and docs. Use when searching notes, finding related content, or retrieving documents from indexed collections.

9.0k stars4.1k forksSecurity L1
Updated Feb 7, 2026Created Feb 7, 2026ai ml

Skill Snapshot

nameqmd
descriptionLocal hybrid search for markdown notes and docs. Use when searching notes, finding related content, or retrieving documents from indexed collections. OpenClaw Skills integration.
ownerlifecoacher
repositorylifecoacher/qmd-skill-2
languageMarkdown
licenseMIT
topics
securityL1
installopenclaw add @lifecoacher/qmd-skill-2
last updatedFeb 7, 2026

Maintainer

lifecoacher

lifecoacher

Maintains qmd in the OpenClaw Skills directory.

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SKILL.md
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SKILL.md

qmd - Quick Markdown Search

Local search engine for Markdown notes, docs, and knowledge bases. Index once, search fast.

When to use (trigger phrases)

  • "search my notes / docs / knowledge base"
  • "find related notes"
  • "retrieve a markdown document from my collection"
  • "search local markdown files"

Default behavior (important)

  • Prefer qmd search (BM25). It's typically instant and should be the default.
  • Use qmd vsearch only when keyword search fails and you need semantic similarity (can be very slow on a cold start).
  • Avoid qmd query unless the user explicitly wants the highest quality hybrid results and can tolerate long runtimes/timeouts.

Prerequisites

  • Bun >= 1.0.0
  • macOS: brew install sqlite (SQLite extensions)
  • Ensure PATH includes: $HOME/.bun/bin

Install Bun (macOS): brew install oven-sh/bun/bun

Install

bun install -g https://github.com/tobi/qmd

Setup

qmd collection add /path/to/notes --name notes --mask "**/*.md"
qmd context add qmd://notes "Description of this collection"  # optional
qmd embed  # one-time to enable vector + hybrid search

What it indexes

  • Intended for Markdown collections (commonly **/*.md).
  • In our testing, "messy" Markdown is fine: chunking is content-based (roughly a few hundred tokens per chunk), not strict heading/structure based.
  • Not a replacement for code search; use code search tools for repositories/source trees.

Search modes

  • qmd search (default): fast keyword match (BM25)
  • qmd vsearch (last resort): semantic similarity (vector). Often slow due to local LLM work before the vector lookup.
  • qmd query (generally skip): hybrid search + LLM reranking. Often slower than vsearch and may timeout.

Performance notes

  • qmd search is typically instant.
  • qmd vsearch can be ~1 minute on some machines because query expansion may load a local model (e.g., Qwen3-1.7B) into memory per run; the vector lookup itself is usually fast.
  • qmd query adds LLM reranking on top of vsearch, so it can be even slower and less reliable for interactive use.
  • If you need repeated semantic searches, consider keeping the process/model warm (e.g., a long-lived qmd/MCP server mode if available in your setup) rather than invoking a cold-start LLM each time.

Common commands

qmd search "query"             # default
qmd vsearch "query"
qmd query "query"
qmd search "query" -c notes     # Search specific collection
qmd search "query" -n 10        # More results
qmd search "query" --json       # JSON output
qmd search "query" --all --files --min-score 0.3

Useful options

  • -n <num>: number of results
  • -c, --collection <name>: restrict to a collection
  • --all --min-score <num>: return all matches above a threshold
  • --json / --files: agent-friendly output formats
  • --full: return full document content

Retrieve

qmd get "path/to/file.md"       # Full document
qmd get "#docid"                # By ID from search results
qmd multi-get "journals/2025-05*.md"
qmd multi-get "doc1.md, doc2.md, #abc123" --json

Maintenance

qmd status                      # Index health
qmd update                      # Re-index changed files
qmd embed                       # Update embeddings

Keeping the index fresh

Automate indexing so results stay current as you add/edit notes.

  • For keyword search (qmd search), qmd update is usually enough (fast).
  • If you rely on semantic/hybrid search (vsearch/query), you may also want qmd embed, but it can be slow.

Example schedules (cron):

# Hourly incremental updates (keeps BM25 fresh):
0 * * * * export PATH="$HOME/.bun/bin:$PATH" && qmd update

# Optional: nightly embedding refresh (can be slow):
0 5 * * * export PATH="$HOME/.bun/bin:$PATH" && qmd embed

If your Clawdbot/agent environment supports a built-in scheduler, you can run the same commands there instead of system cron.

  • Uses local GGUF models; first run auto-downloads them.
  • Default cache: ~/.cache/qmd/models/ (override with XDG_CACHE_HOME).
  • qmd searches your local files (notes/docs) that you explicitly index into collections.
  • Clawdbot's memory_search searches agent memory (saved facts/context from prior interactions).
  • Use both: memory_search for "what did we decide/learn before?", qmd for "what's in my notes/docs on disk?".
README.md

No README available.

Permissions & Security

Security level L1: Low-risk skills with minimal permissions. Review inputs and outputs before running in production.

Requirements

- Bun >= 1.0.0 - macOS: `brew install sqlite` (SQLite extensions) - Ensure PATH includes: `$HOME/.bun/bin` Install Bun (macOS): `brew install oven-sh/bun/bun`

FAQ

How do I install qmd?

Run openclaw add @lifecoacher/qmd-skill-2 in your terminal. This installs qmd into your OpenClaw Skills catalog.

Does this skill run locally or in the cloud?

OpenClaw Skills execute locally by default. Review the SKILL.md and permissions before running any skill.

Where can I verify the source code?

The source repository is available at https://github.com/openclaw/skills/tree/main/skills/lifecoacher/qmd-skill-2. Review commits and README documentation before installing.