🧪 Skills

qmd Search

Fast local search for markdown files, notes, and docs using qmd CLI. Use instead of `find` for file discovery. Combines BM25 full-text search, vector semantic search, and LLM reranking—all running l

v1.1.0
❤️ 1
⬇️ 2.6k
👁 1
Share

Description


name: qmd description: Fast local search for markdown files, notes, and docs using qmd CLI. Use instead of find for file discovery. Combines BM25 full-text search, vector semantic search, and LLM reranking—all running locally. Use when searching for files, finding code, locating documentation, or discovering content in indexed collections.

qmd — Fast Local Markdown Search

When to Use

  • Finding files — use instead of find across large directories (avoids hangs)
  • Searching notes/docs — semantic or keyword search in indexed collections
  • Code discovery — find implementations, configs, or patterns
  • Context gathering — pull relevant snippets before answering questions

Quick Reference

Search (most common)

# Keyword search (BM25)
qmd search "alpaca API" -c projects

# Semantic search (understands meaning)
qmd vsearch "how to implement stop loss"

# Combined search with reranking (best quality)
qmd query "trading rules for breakouts"

# File paths only (fast discovery)
qmd search "config" --files -c kell

# Full document content
qmd search "pattern detection" --full --line-numbers

Collections

# List collections
qmd collection list

# Add new collection
qmd collection add /path/to/folder --name myproject --mask "*.md,*.py"

# Re-index after changes
qmd update

Get Files

# Get full file
qmd get myproject/README.md

# Get specific lines
qmd get myproject/config.py:50 -l 30

# Get multiple files by glob
qmd multi-get "*.yaml" -l 50 --max-bytes 10240

Output Formats

  • --files — paths + scores (for file discovery)
  • --json — structured with snippets
  • --md — markdown formatted
  • -n 10 — limit results

Tips

  1. Always use collections (-c name) to scope searches
  2. Run qmd update after adding new files
  3. Use qmd embed to enable vector search (one-time, takes a few minutes)
  4. Prefer qmd search --files over find for large directories

Models (auto-downloaded)

  • Embedding: embeddinggemma-300M
  • Reranking: qwen3-reranker-0.6b
  • Generation: Qwen3-0.6B

All run locally — no API keys needed.

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