Slash command at custom-skills/31-notion-organizer/commands/notion-search.md documents the CLI surface and JSON output schema. CLAUDE.md gains a Semantic Search section explaining the 4-stage pipeline and env var requirements. requirements.txt notes the optional anthropic SDK dependency (the skill falls back to the claude CLI if missing). Final task of Phase 3b-i. 30 tests passing. Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
4.4 KiB
CLAUDE.md
Overview
Notion workspace management toolkit for database organization, schema migration, and bulk operations.
Quick Start
pip install -r scripts/requirements.txt
# Schema migration
python scripts/schema_migrator.py --source [DB_ID] --target [DB_ID] --dry-run
# Async bulk operations
python scripts/async_organizer.py --database [DB_ID] --action cleanup
Semantic Search
# Default browse mode (terminal table)
python scripts/notion_search.py "AI agents in 2026"
# JSON output for piping
python scripts/notion_search.py "AI agents" --json | jq '.[].id'
# Constrain to specific databases
python scripts/notion_search.py "MCP" --databases f8f19ede-32bd-43ac-9f60-0651f6f40afe
# Property filter
python scripts/notion_search.py "MCP" --databases ID \
--filter '{"Status": "Done", "Topic": "AI"}'
# Fast mode (skip LLM stages)
python scripts/notion_search.py "exact term" --no-rerank --no-expand
The search runs four stages:
- Expand — Claude Haiku generates up to 5 query variants (synonyms + cross-language KR↔EN)
- Search — Notion API searched per variant; results unioned + deduped at 30 candidates
- Enrich — title, properties, and 200-char excerpt fetched per candidate
- Rerank — Claude Haiku scores candidates against the original query; top N returned
Results are cached for 24h (SHA256 of query + candidate IDs). Bypass with --no-cache.
Requirements
| Env var | Purpose |
|---|---|
NOTION_API_KEY (or legacy NOTION_TOKEN) |
Notion integration token |
ANTHROPIC_API_KEY (optional) |
Use Claude SDK directly. If missing, the skill falls back to claude -p CLI. |
Scripts
| Script | Purpose |
|---|---|
schema_migrator.py |
Migrate data between databases with property mapping |
async_organizer.py |
Async bulk operations (cleanup, restructure, archive) |
Schema Migrator
# Dry run (preview changes)
python scripts/schema_migrator.py \
--source abc123 \
--target def456 \
--mapping mapping.json \
--dry-run
# Execute migration
python scripts/schema_migrator.py \
--source abc123 \
--target def456 \
--mapping mapping.json
Mapping File Format
{
"properties": {
"OldName": "NewName",
"Status": "Status"
},
"transforms": {
"Date": "date_to_iso"
}
}
Async Organizer
# Cleanup empty/stale pages
python scripts/async_organizer.py --database [ID] --action cleanup
# Archive old pages
python scripts/async_organizer.py --database [ID] --action archive --days 90
# Restructure hierarchy
python scripts/async_organizer.py --database [ID] --action restructure
Rate Limits
| Limit | Value |
|---|---|
| Requests/second | 3 max |
| Items per request | 100 max |
| Retry on 429 | Exponential backoff |
Configuration
Environment variables:
# Preferred (matches 32-notion-writer)
NOTION_API_KEY=secret_xxx
# Legacy fallback also accepted
# NOTION_TOKEN=secret_xxx
The scripts read NOTION_TOKEN first, then fall back to NOTION_API_KEY. Use NOTION_API_KEY for new setups so the same .env works across all Notion skills.
Notes
- Always use
--dry-runfirst for destructive operations - Large operations (1000+ pages) use async with progress reporting
- Scripts implement automatic rate limiting
Roadmap (Phase 3)
The current scripts cover schema migration and async bulk ops. Two larger goals are parked for a future iteration:
Goal 1 — Metadata-aware page move/integration
Search source pages, compare their property metadata against a target database schema, and move/migrate while transforming property values to fit. Beyond the existing schema_migrator.py (which expects a hand-written mapping file), this would:
- Auto-suggest property mappings using name + type similarity
- Surface unmappable properties before the move (no silent data loss)
- Support cross-database moves (not just same-schema migrations)
Goal 2 — Notion as personal RAG source
Treat Notion as a small, personal knowledge base for AI agents:
- Search pages by query across databases, filter by property
- Merge results into a single context (with source citations back to page URLs)
- Summarize / distill via LLM into agent-ready snippets
- Export as JSONL or markdown for fine-tuning or RAG indexing
This dovetails with 90-reference-curator (which does the same for web sources) — Phase 3 would make Notion a first-class source type for that pipeline.