skills/davila7/claude-code-templates/deep-research-notebooklm

deep-research-notebooklm

Installation
SKILL.md

Deep Research via NotebookLM

Research $ARGUMENTS deeply using the NotebookLM MCP server and deliver a structured research brief. Optionally generate studio artifacts (slides, audio podcasts, videos, infographics, reports, mind maps) from the research.

Prerequisites

  • NotebookLM MCP server must be configured. Install via: nlm setup add claude-code
  • If NotebookLM MCP tools are not available, tell the user to run the setup command and restart their session.

Research Workflow

Step 1: Define Scope

Determine the research type based on the user's request:

Type Focus
Market Research Industry trends, market sizing, opportunities, TAM/SAM/SOM
Competitive Intel Competitor analysis, positioning gaps, feature comparisons
Client/Prospect Research Company background, pain points, decision makers, recent news
Trend Analysis Technology trends, adoption patterns, forecasts, emerging players
Proposal Research Background for proposals, sector-specific data, case studies
Academic/Technical Papers, frameworks, methodologies, state of the art

Tell the user what you plan to research and confirm the angle:

"I'll research [topic]. My angle: [specific focus]. I'll investigate: [2-3 specific questions]. Sound right, or should I adjust?"

Wait for confirmation before proceeding.

Step 2: Create NotebookLM Notebook

Use notebook_create to create a notebook named: Research: [Topic] - [YYYY-MM-DD]

Step 3: Add Context Sources

Use source_add to seed the notebook with relevant context:

  • Add any URLs the user provides (articles, company pages, reports)
  • Add any documents or files the user references
  • Add text summaries of relevant background if no URLs are available
  • If researching a company, add their website, LinkedIn, recent press

Step 4: Run Research

Use research_start with a well-crafted query based on the topic and context.

Mode selection:

  • Default: "fast" (~60 seconds, ~10 sources) -- good for most queries
  • Use "deep" only if the user explicitly asks for exhaustive research (can take 10+ minutes and may stall at 0 sources)

Tip: Run direct WebSearch calls in parallel with NotebookLM for faster initial data gathering while the research engine works.

Poll research_status until complete. Use the query parameter as fallback matching -- task IDs can change between research_start and research_status calls.

Step 5: Import Discovered Sources

Use research_import to bring discovered sources into the notebook for deeper analysis.

Step 6: Query for Insights

Use notebook_query to ask 3-5 targeted questions based on the research type:

  1. Overview: "What are the key findings about [topic]?"
  2. Opportunities: "What opportunities or gaps exist in this space?"
  3. Actions: "What are the most actionable insights from this research?"
  4. Risks: "What are the main risks, challenges, or counterarguments?"
  5. Custom: A question specific to the research type (e.g., "Who are the top 5 competitors and how do they differentiate?" for competitive intel)

Step 7: Write Research Brief

Save the findings to a local file using the research brief template:

File path: research/[topic-slug]-[YYYY-MM-DD].md

Use the template from research-brief-template.md to structure the output. Create the research/ directory if it does not exist.

Step 8: Present Takeaways

After saving, present the user with:

  • 3-5 headline findings (bullets, direct, no filler)
  • 1-2 recommended actions connected to the user's stated goals
  • Surprises or contrarian findings -- anything that challenges assumptions
  • The file path where the full brief is saved
  • The NotebookLM notebook URL so the user can explore sources directly

Step 9 (Optional): Generate Studio Artifacts

Ask the user: "Want me to generate any artifacts from this research? Options: slides, audio (podcast), video, infographic, report, mind map."

If yes, use studio_create with the notebook_id from Step 2.

Available artifact types and recommended settings:

Type Key params Best for
slide_deck slide_format: detailed_deck or presenter_slides; slide_length: short or default Executive presentations, client pitches
audio audio_format: deep_dive, brief, critique, or debate; audio_length: short, default, long Podcast-style deep dives, learning on the go
video video_format: explainer, brief, cinematic; visual_style: auto_select, classic, whiteboard, etc. Visual explainers, social media content
infographic orientation: landscape, portrait, square; infographic_style: professional, bento_grid, etc. One-pagers, social sharing
report report_format: Briefing Doc, Study Guide, Blog Post, Create Your Own Written deliverables, summaries
mind_map title Visual knowledge mapping

Common params for all artifact types:

  • language: Set to the user's preferred language (e.g., "en", "es", "pt")
  • focus_prompt: A clear directive about what to emphasize in the artifact
  • confirm: Must be true to proceed with generation

After creating an artifact:

  1. Poll studio_status until completed (audio/video: 5-15 min; slides/infographics: 2-5 min)
  2. Use download_artifact to save locally if needed
  3. Provide the notebook URL so the user can access artifacts directly

Tips:

  • audio with deep_dive format produces the best podcast-style analysis
  • slide_deck with detailed_deck format works best for standalone reading; presenter_slides is better when accompanied by speaker notes
  • Audio status may show "unknown" once completed -- check for audio_url presence instead of waiting for a "completed" status

Notes

  • Fast mode is recommended as the default. Deep mode is powerful but can take 10+ minutes and occasionally stalls.
  • Always confirm the research scope with the user before starting -- a well-scoped query produces dramatically better results.
  • The research brief template ensures consistent, actionable output across all research types.

Additional Resources

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Apr 2, 2026