skills/blog-notebooklm/SKILL.md
Query Google NotebookLM notebooks for source-grounded, citation-backed answers from user-uploaded documents. Manages notebook library, handles Google authentication, and supports smart discovery. Works standalone via /blog notebooklm or internally from blog-write and blog-researcher for Tier 1 research data. Falls back gracefully when not configured. Use when user says "notebooklm", "notebook", "query notebook", "ask notebook", "notebook research", "source grounded research", "document query", "notebook library".
npx skillsauth add agricidaniel/claude-blog blog-notebooklmInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Query Google NotebookLM notebooks directly from Claude Code for citation-backed answers from Gemini. Each question opens a headless browser session, retrieves the answer exclusively from your uploaded documents, and closes. Responses are Tier 1 quality (user's own primary sources): zero hallucination risk. Answers satisfy the FLOW evidence triple: use the returned source title as the inline citation and the notebook URL plus retrieval date as the bibliography entry. This is the highest-confidence path to meeting the "verified source" bar that FLOW requires before any statistic goes public.
| Command | What it does |
|---------|-------------|
| /blog notebooklm ask <question> | Query a notebook for source-grounded answers |
| /blog notebooklm discover <url> | Smart-discover notebook content before cataloging |
| /blog notebooklm library list | List all notebooks in library |
| /blog notebooklm library add <url> | Add a notebook to library |
| /blog notebooklm library search <query> | Search notebooks by keyword |
| /blog notebooklm library remove <id> | Remove a notebook from library |
| /blog notebooklm setup | One-time Google authentication (browser visible) |
| /blog notebooklm status | Check authentication status |
| /blog notebooklm cleanup | Clean browser state (preserves library) |
run.py)NEVER call scripts directly. ALWAYS use python3 scripts/run.py [script]:
# CORRECT:
python3 scripts/run.py auth_manager.py status
python3 scripts/run.py ask_question.py --question "..."
# WRONG -- fails without venv:
python3 scripts/auth_manager.py status
The run.py wrapper automatically creates .venv, installs dependencies,
sets up Chrome, and executes the target script.
Before any query operation, check authentication:
python3 scripts/run.py auth_manager.py status
/blog notebooklm setup to authenticate."For /blog notebooklm setup:
# Opens a visible browser for manual Google login (one-time)
python3 scripts/run.py auth_manager.py setup
Tell the user: "A browser window will open. Please log in to your Google account." Authentication persists via browser profile + cookie injection (hybrid approach).
Other auth commands:
python3 scripts/run.py auth_manager.py status # Check auth
python3 scripts/run.py auth_manager.py reauth # Re-authenticate
python3 scripts/run.py auth_manager.py clear # Clear all auth data
For /blog notebooklm ask <question>:
Run auth check (see gate pattern above). If not authenticated, guide to setup.
Determine which notebook to query:
--notebook-url provided: use directly--notebook-id provided: look up in library# Basic query (uses active notebook)
python3 scripts/run.py ask_question.py --question "Your question here"
# Query specific notebook by ID
python3 scripts/run.py ask_question.py --question "..." --notebook-id notebook-id
# Query by URL directly
python3 scripts/run.py ask_question.py --question "..." --notebook-url "https://..."
# JSON output (for internal/programmatic use)
python3 scripts/run.py ask_question.py --question "..." --json
# Show browser for debugging
python3 scripts/run.py ask_question.py --question "..." --show-browser
Every response ends with a follow-up prompt. Required behavior:
For /blog notebooklm discover <url>:
When adding a notebook without knowing its content, query it first:
# Step 1: Discover content
python3 scripts/run.py ask_question.py \
--question "What is the content of this notebook? What topics are covered? Provide a complete overview briefly and concisely" \
--notebook-url "<URL>"
# Step 2: Add with discovered metadata
python3 scripts/run.py notebook_manager.py add \
--url "<URL>" \
--name "<Based on content>" \
--description "<Based on content>" \
--topics "<Extracted topics>"
NEVER guess or use generic descriptions. Always discover or ask the user.
# List all notebooks
python3 scripts/run.py notebook_manager.py list
# Add notebook (all params required -- discover or ask user!)
python3 scripts/run.py notebook_manager.py add \
--url "https://notebooklm.google.com/notebook/..." \
--name "Descriptive Name" \
--description "What this notebook contains" \
--topics "topic1,topic2,topic3"
# Search by keyword
python3 scripts/run.py notebook_manager.py search --query "keyword"
# Set active notebook
python3 scripts/run.py notebook_manager.py activate --id notebook-id
# Remove notebook
python3 scripts/run.py notebook_manager.py remove --id notebook-id
# Library statistics
python3 scripts/run.py notebook_manager.py stats
When invoked as a Task subagent from blog-write or blog-researcher:
Input (provided by calling skill):
question: Research question relevant to the blog topicnotebook_id or notebook_url: Which notebook to querycontext: "internal" (signals graceful fallback mode)Process:
Output (returned to calling skill):
### NotebookLM Research
- **Source:** [Notebook name]
- **Question:** [What was asked]
- **Answer:** [Source-grounded response from user's documents]
- **Source Quality:** Tier 1 (user-uploaded primary documents)
Graceful fallback: If auth is missing or query fails, return immediately with no error. The calling workflow continues with WebSearch-based research. Never block blog-write or blog-rewrite because NotebookLM is unavailable.
All data stored inside the skill directory:
scripts/data/library.json: Notebook metadata and libraryscripts/data/auth_info.json: Authentication statusscripts/data/browser_state/: Chrome profile with cookiesSecurity: All data directories are gitignored. Never commit auth or browser state.
| Error | Resolution |
|-------|-----------|
| Not authenticated | Run /blog notebooklm setup |
| ModuleNotFoundError | Always use run.py wrapper |
| Browser crash | cleanup_manager.py --confirm --preserve-library, then re-auth |
| Rate limit (50/day) | Wait until midnight PST or switch Google account |
| Notebook not found | Check with notebook_manager.py list |
| Query timeout (120s) | Retry with simpler question or --show-browser to debug |
| MCP unavailable (internal) | Return silently: writing workflow uses WebSearch |
Load on-demand: do NOT load all at startup:
references/commands.md: Full CLI commands, parameters, and workflow patternsreferences/troubleshooting.md: Error solutions, recovery procedures, debuggingdevelopment
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