‹ 首页

notebooklm

@teng-lin · 收录于 1 周前 · 上游提交 今天

Complete API for Google NotebookLM - full programmatic access including features not in the web UI. Create notebooks, add sources, generate all artifact types, download in multiple formats. Activates on explicit /notebooklm or intent like "create a podcast about X"

适合你,如果想通过API批量生成NotebookLM音频内容

/ 通过 npx 安装 校验哈希
npx oh-my-skill add teng-lin/notebooklm-py/notebooklm
/ 通过 bash 安装
curl -fsSL https://oh-my-skill.com/install.sh | bash -s -- teng-lin/notebooklm-py/notebooklm
/ 已经装过?验证本机副本,不用重装
npx oh-my-skill verify teng-lin/notebooklm-py/notebooklm
安装目标可用 --agent / --scope 或 --to 明确指定;省略时只会在唯一已存在的 agent 目录上自动选择,零命中或多命中会停止并提示。content_hash 缺失或不一致均拒装。
17830GitHub stars
~8.7K最小装载
~8.7K含声明引用
~2753.9K文本包总量
索引托管

怎么用

商店整理自技能原文 · 版本 aa9cb9b · 表述以原文为准
它做什么

安装后,Claude 可以调用 Google NotebookLM 的全部功能,包括创建笔记本、添加来源(网址、YouTube、PDF、音频、视频、图片)、生成播客、测验、闪卡、视频讲解、信息图、思维导图等,并以多种格式下载。

什么时候触发

当用户明确提到“/notebooklm”或“使用 NotebookLM”,或者表达“创建一个关于 X 的播客”、“总结这些网址/文档”等意图时触发。

装好后可以这样说
Claude 会添加来源并生成测验。
Claude 会添加 PDF 来源并生成思维导图。
技能原文 SKILL.md作者撰写 · MIT · aa9cb9b

NotebookLM Automation

Complete programmatic access to Google NotebookLM—including capabilities not exposed in the web UI. Create notebooks, add sources (URLs, YouTube, PDFs, audio, video, images), chat with content, generate all artifact types, and download results in multiple formats.

Installation

From PyPI (Recommended for AI agents — Python-version-aware):

pip install "notebooklm-py[browser]"   # mandatory; errors must propagate

# [cookies] (rookiepy) is optional and known to FAIL TO BUILD on Python 3.13+.
# Skip it deliberately on 3.13+ rather than swallowing the error — that lets
# *real* install failures (typos, network, PyPI outages) surface for the agent.
if python -c "import sys; sys.exit(0 if sys.version_info < (3, 13) else 1)"; then
    pip install "notebooklm-py[cookies]"   # errors propagate
else
    echo "Skipping [cookies] on Python 3.13+ (rookiepy unavailable). Use 'notebooklm login' interactively."
fi
Full install matrix (extras, headless servers, contributor flow): Installation guide on GitHub.

From GitHub (use latest release tag, NOT main branch):

# Get the latest release tag (requires curl + jq)
if ! command -v jq >/dev/null; then
    echo "jq is required to read the latest release tag" >&2
    exit 1
fi
LATEST_TAG=$(
    curl -fsSL https://api.github.com/repos/teng-lin/notebooklm-py/releases/latest |
    jq -r '.tag_name'
)
# Includes [browser] so the interactive `notebooklm login` flow works.
pip install "notebooklm-py[browser] @ git+https://github.com/teng-lin/notebooklm-py@${LATEST_TAG}"

⚠️ DO NOT install from main branch (pip install git+https://github.com/teng-lin/notebooklm-py). The main branch may contain unreleased/unstable changes. Always use PyPI or a specific release tag, unless you are testing unreleased features.

Skill install methods:

  • notebooklm skill install installs this skill into the supported local agent directories managed by the CLI.
  • npx skills add teng-lin/notebooklm-py installs this skill from the GitHub repository into compatible agent skill directories.
  • If you are already reading this file inside an agent skill directory, the skill is already installed. You only need the Python package and authentication below.

CLI-managed install:

notebooklm skill install
Prerequisites

IMPORTANT: Before using any command, you MUST authenticate:

notebooklm login          # Opens browser for Google OAuth
notebooklm list           # Verify authentication works

If commands fail with authentication errors, re-run notebooklm login.

CI/CD, Multiple Accounts, and Parallel Agents

For automated environments, multiple accounts, or parallel agent workflows:

| Variable | Purpose | |----------|---------| | NOTEBOOKLM_HOME | Custom config directory (default: ~/.notebooklm) | | NOTEBOOKLM_PROFILE | Active profile name (default: default) | | NOTEBOOKLM_AUTH_JSON | Inline auth JSON - no file writes needed |

CI/CD setup: Set NOTEBOOKLM_AUTH_JSON from a secret containing your storage_state.json contents.

Multiple accounts: Use named profiles (notebooklm profile create work, then notebooklm -p work login). Alternatively, use different NOTEBOOKLM_HOME directories per account.

Parallel agents: The CLI stores notebook context per profile (~/.notebooklm/profiles/<profile>/context.json, with a legacy fallback to ~/.notebooklm/context.json for the implicit default profile). Multiple concurrent agents that share a profile and use notebooklm use can overwrite each other's context — use one of the isolation strategies below.

Solutions for parallel workflows:

  1. Always use explicit notebook ID (recommended): Pass -n <notebook_id> / --notebook <notebook_id> on notebook-scoped commands instead of relying on use
  2. Per-agent isolation via profiles: export NOTEBOOKLM_PROFILE=agent-$ID (each profile gets its own context file)
  3. Per-agent isolation via home: Set unique NOTEBOOKLM_HOME per agent: export NOTEBOOKLM_HOME=/tmp/agent-$ID
  4. Use full UUIDs: Avoid partial IDs in automation (they can become ambiguous)
Sandboxed Agents (Claude Cowork / Headless)

Sandboxed, no-display agent environments — Claude Cowork (Anthropic's desktop agent for non-developers) and similar headless sandboxes — can't run notebooklm login (it needs a browser), and they reset between sessions. Everything else works with two adjustments:

  1. Bootstrap each session. The sandbox resets, so install at the start of every session. You do not need [browser]/Playwright here — that extra exists only for the interactive login flow, which you run on a host machine, not in the sandbox. Chat, sources, generation, and download all run on the base install: ```bash pip install notebooklm-py # no [browser] needed for queries/generation ``` (This is the one place the mandatory [browser] install at the top of this file does not apply — you are reusing auth, not logging in here.)
  2. Reuse a host-generated storage_state.json. Log in once on a machine with a display (notebooklm login), then bring the resulting storage_state.json into a sandbox-accessible folder and point at it either way: ```bash # Per-invocation root flag (a persistent, sandbox-accessible path): notebooklm --storage /path/to/storage_state.json list # OR inline via env var (no file needed — e.g. from a Cowork-stored secret): export NOTEBOOKLM_AUTH_JSON="$(cat /path/to/storage_state.json)" notebooklm list ```
⚠️ storage_state.json / NOTEBOOKLM_AUTH_JSON are bearer credentials — anyone holding them can act as your Google account. Keep the file 0600, load it from the sandbox's secret store rather than a committed file, never print or log it, and unset NOTEBOOKLM_AUTH_JSON when finished.

Verify as in [Agent Setup Verification](#agent-setup-verification) below — e.g. notebooklm --storage <path> auth check --test --json (require "status": "ok" AND "checks.token_fetch": true).

Context does not survive a reset either: the selected-notebook context (context.json) is gone each session, so pass an explicit -n/--notebook <id> on notebook-scoped commands instead of relying on notebooklm use.

If Cowork reads ~/.claude/skills/, notebooklm skill install registers this skill there automatically; otherwise build the uploadable archive on the host with notebooklm skill package (writes notebooklm-skill.zip) and add it via Claude Settings → Capabilities. Full recipe (extras matrix, headless auth, CI env-var notes): installation.md § AI Agent.

Agent Setup Verification

Before starting workflows, verify auth is in place. Use --test --json (not bare --json) — bare --json only proves the cookie file parses; --test makes a network call and proves the cookies still authenticate against Google.

  1. notebooklm auth check --test --json → require BOTH "status": "ok" AND "checks.token_fetch": true. Bare "status": "ok" (without --test) is a false-positive trap — a stale cookie file passes the parse check.
  2. notebooklm list --json → expect valid JSON (may be empty for new accounts).
  3. If auth fails or is missing → run notebooklm login first. This is the primary auth path: opens a browser, the user signs in to Google once, and the resulting storage_state.json is reused on every subsequent run. Works on any environment with a display.
  4. For headless contexts where opening a browser is not feasible, use notebooklm login --browser-cookies <browser> instead — extracts the user's already-logged-in cookies from Chrome/Firefox/etc. (requires the [cookies] extra; rookiepy may not install on Python 3.13+). Use chrome::<profile-name-or-directory> to target one Chromium user-profile, or firefox::<container-name> / firefox::none to target one Firefox container.
  5. To survey signed-in Google accounts before picking one: notebooklm auth inspect --browser <browser> (read-only; pass -v to see which Chromium user-profile each account came from, or --json for tooling). Scoped forms such as notebooklm auth inspect --browser 'chrome::Profile 1' inspect only that browser profile.
  6. Re-run step 1 after login to confirm.
  7. If auth was working but cookies went stale (Google rotated SIDTS, or you signed in fresh in the browser) → refresh the active profile in place instead of full re-login:
  8. notebooklm auth refresh — server-side SIDTS refresh against the existing storage_state.json. Cheap and silent; safe to run on a schedule (cron / launchd / systemd) at 15–20 min cadence to keep an unattended profile warm.
  9. notebooklm auth refresh --browser-cookies <browser> — re-extract cookies from a running browser and match them back to the profile's recorded email in context.json. Use when the on-disk storage_state.json is too stale for the server-side refresh path but you've just signed back into Google in the browser. For Chromium-family browsers with multiple user-profiles (Chrome's Default, Profile 1, …), refresh fans out across all profiles to find the email — same path as auth inspect (issue #571). Use chrome::<profile-name-or-directory> when you already know the exact browser profile.
  10. Both forms preserve the same --profile (no new profile is created).
Note: notebooklm status reports context state (selected notebook); do not use it to verify auth.
When This Skill Activates

Explicit: User says "/notebooklm", "use notebooklm", or mentions the tool by name

Intent detection: Recognize requests like:

  • "Create a podcast about [topic]"
  • "Summarize these URLs/documents"
  • "Generate a quiz from my research"
  • "Turn this into an audio overview"
  • "Create flashcards for studying"
  • "Generate a video explainer"
  • "Make an infographic"
  • "Create a mind map of the concepts"
  • "Download the quiz as markdown"
  • "Add these sources to NotebookLM"
Autonomy Rules

Run automatically (no confirmation):

  • notebooklm status - check context
  • notebooklm auth check - diagnose auth issues
  • notebooklm auth inspect - list Google accounts visible to a browser (read-only)
  • notebooklm auth refresh - server-side SIDTS refresh of the active profile (no new profile, no destructive writes)
  • notebooklm auth refresh --browser-cookies <browser> - re-extract cookies from a browser into the active profile (rebuilds storage_state.json for the same --profile, not a new one)
  • notebooklm list - list notebooks
  • notebooklm source list - list sources
  • notebooklm artifact list - list artifacts
  • notebooklm language list - list supported languages
  • notebooklm language get - get current language
  • notebooklm language set - set language (global setting)
  • notebooklm artifact wait - wait for artifact completion (in subagent context)
  • notebooklm source wait - wait for source processing (in subagent context)
  • notebooklm research status - check research status
  • notebooklm research wait - wait for research (in subagent context)
  • notebooklm use <id> - set context (⚠️ SINGLE-AGENT ONLY - use -n flag in parallel workflows)
  • notebooklm create - create notebook
  • notebooklm ask "..." - chat queries (without --save-as-note)
  • notebooklm suggest-prompts - AI-suggested prompts for a notebook (read-only, no state change)
  • notebooklm history - display conversation history (read-only)
  • notebooklm source add - add sources
  • notebooklm profile list - list profiles
  • notebooklm profile create - create profile
  • notebooklm profile switch - switch active profile
  • notebooklm doctor - check environment health

Ask before running:

  • notebooklm delete, source delete, source delete-by-title, source clean, note delete, artifact delete, label delete, share remove, auth logout, clear, profile delete, or ask --new - destructive or state-changing. Once approved, pass --yes/-y where the command supports it. Most destructive --json commands still require explicit --yes and otherwise return a structured confirmation error (CONFIRM_REQUIRED or VALIDATION_ERROR, depending on the command family); current exceptions include share remove --json and ask --new --json, which skip the prompt for non-interactive callers.
  • notebooklm generate * - long-running, may fail
  • notebooklm download * - writes to filesystem
  • notebooklm artifact wait - long-running (when in main conversation)
  • notebooklm source wait - long-running (when in main conversation)
  • notebooklm research wait - long-running (when in main conversation)
  • notebooklm research cancel <run_id> - state-changing; cancels a running research job (an in-progress job transitions to FAILED). Fire-and-forget: it does not confirm success — re-check with notebooklm research status.
  • notebooklm ask "..." --save-as-note - writes a note
  • notebooklm history --save - writes a note
Quick Reference

| Task | Command | |------|---------| | Authenticate | notebooklm login | | Authenticate from browser cookies | notebooklm login --browser-cookies <browser> | | Authenticate from one Chromium profile | notebooklm login --browser-cookies 'chrome::Profile 1' | | Authenticate from one Firefox container | notebooklm login --browser-cookies 'firefox::Work' | | Import every signed-in account into its own profile | notebooklm login --browser-cookies <browser> --all-accounts | | Inspect signed-in accounts (read-only, by email) | notebooklm auth inspect --browser <browser> | | Inspect one browser profile/container | notebooklm auth inspect --browser 'chrome::Profile 1' | | Diagnose auth issues | notebooklm auth check | | Diagnose auth (full) | notebooklm auth check --test | | Refresh active profile in place (server-side) | notebooklm auth refresh | | Refresh active profile from a re-signed-in browser | notebooklm auth refresh --browser-cookies <browser> | | Refresh from one Chromium profile | notebooklm auth refresh --browser-cookies 'chrome::Profile 1' | | One-shot cookie keepalive (for cron) | notebooklm auth refresh --quiet | | List notebooks | notebooklm list | | Create notebook | notebooklm create "Title" | | Set context | notebooklm use <notebook_id> | | Show context | notebooklm status | | Add URL source | notebooklm source add "https://..." | | Add file | notebooklm source add ./file.pdf | | Add YouTube | notebooklm source add "https://youtube.com/..." | | List sources | notebooklm source list | | List sources in a label | notebooklm source list --label <label_id_or_name> | | Delete source by ID | notebooklm source delete <source_id> | | Delete source by exact title | notebooklm source delete-by-title "Exact Title" | | Wait for source processing | notebooklm source wait <source_id> | | List labels | notebooklm label list | | Expand label to sources | notebooklm label sources <label_id_or_name> | | Generate labels | notebooklm label generate --scope unlabeled | | Create label | notebooklm label create "Topic" | | Add sources to label | notebooklm label add <label_id_or_name> <source_id>... | | Remove sources from label | notebooklm label remove <label_id_or_name> <source_id>... | | Delete label | notebooklm label delete <label_id_or_name> --yes | | Web research (fast) | notebooklm source add-research "query" | | Web research (deep) | notebooklm source add-research "query" --mode deep --no-wait | | Web research (query from file) | notebooklm source add-research --prompt-file research_query.txt --mode deep | | Check research status | notebooklm research status | | Wait for research | notebooklm research wait --import-all | | Cancel research | notebooklm research cancel <run_id> (run_id = the task_id from research status) | | Suggest questions to ask | notebooklm suggest-prompts | | Chat | notebooklm ask "question" | | Chat (long prompt from file) | notebooklm ask --prompt-file question.txt | | Chat (specific sources) | notebooklm ask "question" -s src_id1 -s src_id2 | | Chat (with references) | notebooklm ask "question" --json | | Chat (save answer as note) | notebooklm ask "question" --save-as-note | | Chat (save with title) | notebooklm ask "question" --save-as-note --note-title "Title" | | Show conversation history | notebooklm history | | Save all history as note | notebooklm history --save | | Continue specific conversation | notebooklm ask "question" -c <conversation_id> | | Save history with title | notebooklm history --save --note-title "My Research" | | Get source fulltext | notebooklm source fulltext <source_id> | | Get source guide | notebooklm source guide <source_id> | | Generate podcast | notebooklm generate audio "instructions" | | Generate (long prompt from file) | notebooklm generate audio --prompt-file instructions.txt | | Generate podcast (JSON) | notebooklm generate audio --json | | Generate podcast (specific sources) | notebooklm generate audio -s src_id1 -s src_id2 | | Generate video | notebooklm generate video "instructions" | | Generate report | notebooklm generate report --format briefing-doc | | Generate report (append instructions) | notebooklm generate report --format study-guide --append "Target audience: beginners" | | Generate quiz | notebooklm generate quiz | | Revise a slide | notebooklm generate revise-slide "prompt" --artifact <id> --slide 0 | | Check artifact status | notebooklm artifact list | | Wait for completion | notebooklm artifact wait <artifact_id> | | Delete artifact | notebooklm artifact delete <artifact_id> --yes | | Download audio | notebooklm download audio ./output.mp3 | | Download video | notebooklm download video ./output.mp4 | | Download cinematic video | notebooklm download cinematic-video ./cinematic.mp4 (alias for download video) | | Download infographic | notebooklm download infographic ./infographic.png | | Download slide deck (PDF) | notebooklm download slide-deck ./slides.pdf | | Download slide deck (PPTX) | notebooklm download slide-deck ./slides.pptx --format pptx | | Download report | notebooklm download report ./report.md | | Download mind map | notebooklm download mind-map ./map.json | | Download data table | notebooklm download data-table ./data.csv | | Download quiz | notebooklm download quiz quiz.json | | Download quiz (markdown) | notebooklm download quiz --format markdown quiz.md | | Download flashcards | notebooklm download flashcards cards.json | | Download flashcards (markdown) | notebooklm download flashcards --format markdown cards.md | | Delete notebook | notebooklm delete -n <id> (add --yes to skip the prompt non-interactively) | | List languages | notebooklm language list | | Get language | notebooklm language get | | Set language | notebooklm language set zh_Hans | | List profiles | notebooklm profile list | | Create profile | notebooklm profile create work | | Switch profile | notebooklm profile switch work | | Delete profile | notebooklm profile delete old --yes (-y; --confirm is a deprecated alias) | | Rename profile | notebooklm profile rename old new | | Use profile (one-off) | notebooklm -p work list | | Health check | notebooklm doctor | | Health check (auto-fix) | notebooklm doctor --fix |

Parallel safety: Use explicit notebook IDs in parallel workflows. Notebook-scoped commands broadly support -n/--notebook (ask/history, source, artifact, generate, download, note, label, share, research, and notebook delete/rename/summary/metadata). Download commands also support -a/--artifact. For chat, use -c <conversation_id> to target a specific conversation.

Partial IDs: Use first 6+ characters of UUIDs. Must be unique prefix (fails if ambiguous). Works for ID-based commands such as use, source delete, and wait. For exact source-title deletion, use source delete-by-title "Title". For automation, prefer full UUIDs to avoid ambiguity.

Command Output Formats

Commands with --json return structured data for parsing:

Create notebook:

$ notebooklm create "Research" --json
{"notebook": {"id": "abc123de-...", "title": "Research", "created_at": null}}
# parse with: jq -r .notebook.id

Add source:

$ notebooklm source add "https://example.com" --json
{"source": {"id": "def456...", "title": "Example", "type": "web_page", "url": "https://example.com"}}
# parse with: jq -r .source.id
# Note: no `status` field on add — use `source list --json` or `source wait` to check processing state.

Generate artifact:

$ notebooklm generate audio "Focus on key points" --json
{"task_id": "xyz789...", "status": "pending"}
# When run with --wait, completed status also includes a `url` field.

Chat with references:

$ notebooklm ask "What is X?" --json
{"answer": "X is... [1] [2]", "conversation_id": "...", "turn_number": 1, "is_follow_up": false, "references": [{"source_id": "abc123...", "citation_number": 1, "cited_text": "Relevant passage from source..."}, {"source_id": "def456...", "citation_number": 2, "cited_text": "Another passage..."}]}

Source fulltext (get indexed content):

$ notebooklm source fulltext <source_id> --json
{"source_id": "...", "title": "...", "kind": "web_page", "content": "Full indexed text...", "url": null, "char_count": 12345}

Understanding citations: The cited_text in references is often a snippet or section header, not the full quoted passage. The start_char/end_char positions reference NotebookLM's internal chunked index, not the raw fulltext. Use SourceFulltext.find_citation_context() to locate citations:

fulltext = await client.sources.get_fulltext(notebook_id, ref.source_id)
matches = fulltext.find_citation_context(ref.cited_text)  # Returns list[(context, position)]
if matches:
    context, pos = matches[0]  # First match; check len(matches) > 1 for duplicates

Extract IDs: Singular endpoints wrap their result in an envelope — parse .notebook.id (from create), .source.id (from source add), or .task_id (from generate *). The chat --json references list uses .references[].source_id.

Generation Types

Common generate options vary by subcommand:

  • -n, --notebook targets the notebook.
  • -s, --source limits generation to specific source(s) on content generators (not revise-slide).
  • --language sets output language where supported (defaults to configured language or en).
  • --wait, --timeout, and --interval are shared polling controls where waiting is supported.
  • --json returns machine-readable output.
  • --retry N automatically retries rate limits on supported subcommands (not mind-map).
  • --prompt-file PATH reads description/query text from a file on ask, generation subcommands except mind-map, and source add-research.

| Type | Command | Options | Download | |------|---------|---------|----------| | Podcast | generate audio | --format [deep-dive\|brief\|critique\|debate], --length [short\|default\|long] | .mp3 | | Video | generate video | --format [explainer\|brief\|cinematic\|short] (⁴), --style [auto\|custom\|classic\|whiteboard\|kawaii\|anime\|watercolor\|retro-print\|heritage\|paper-craft], --style-prompt with --style custom | .mp4 | | Slide Deck | generate slide-deck | --format [detailed\|presenter], --length [default\|short] (²) | .pdf / .pptx | | Slide Revision | generate revise-slide "prompt" --artifact <id> --slide N | --wait, --notebook | (re-downloads parent deck) | | Infographic | generate infographic | --orientation [landscape\|portrait\|square], --detail [concise\|standard\|detailed], --style [auto\|sketch-note\|professional\|bento-grid\|editorial\|instructional\|bricks\|clay\|anime\|kawaii\|scientific] | .png | | Report | generate report | --format [briefing-doc\|study-guide\|blog-post\|custom], --append "extra instructions" (¹) | .md | | Mind Map | generate mind-map | --kind [interactive\|note-backed] (³) (default: interactive) | .json | | Data Table | generate data-table | description required | .csv | | Quiz | generate quiz | --difficulty [easy\|medium\|hard], --quantity [fewer\|standard\|more] | .json/.md/.html | | Flashcards | generate flashcards | --difficulty [easy\|medium\|hard], --quantity [fewer\|standard\|more] | .json/.md/.html |

¹ --append only customizes the built-in templates. With --format custom, pass the prompt as the positional DESCRIPTION argument (notebooklm generate report "PROMPT" --format custom); --append is silently ignored in that mode (the CLI prints a warning).

³ Two kinds of mind map (issue #1256). generate mind-map --kind interactive (the default) creates the interactive studio artifact (what the web app now makes); it is polled to completion. generate mind-map --kind note-backed creates the note-backed kind — a JSON node tree, generated synchronously. Both emit the same {mind_map, note_id, kind} JSON, list under artifact list --type mind-map, and export via download mind-map. --instructions applies only to the note-backed kind.

Cinematic video (Veo 3). generate video --format cinematic generates AI documentary footage via Veo 3; it ignores --style, takes ~30-40 min, and requires a Google AI Ultra subscription. Also exposed as the generate cinematic-video alias (which forces --format cinematic and a longer default timeout). Download with download video or the download cinematic-video alias.

² Portrait / vertical slide decks via prompt. Slide-deck has no --orientation flag (unlike infographic). Treat portrait decks as skill-level prompt guidance, not a typed CLI/API contract: NotebookLM currently honors orientation cues written into the DESCRIPTION positional argument. Including phrases like "9:16 portrait", "vertical layout", "portrait mobile format", or "vertical 9:16 layout" can make NotebookLM render each slide as a 9:16 portrait image. Empirically:

  • The .pptx canvas itself may stay 16:9, but each slide's embedded image can be rendered as 9:16 portrait — useful for vertical/mobile video material extracted via python-pptx.
  • Orientation is steered once at generation time. generate revise-slide edits content within an existing slide but does not change its orientation; if a slide falls back to landscape (occasional inconsistency), regenerate the whole deck rather than revising the single page.
  • Combine with an explicit page count in the prompt (e.g. "Create exactly 8 pages, using a vertical 9:16 portrait layout") for the most predictable output.
# Skill prompt hint: ask NotebookLM to render each slide as a 9:16 portrait image
notebooklm generate slide-deck "Create an 8-page deck in 9:16 portrait orientation for mobile viewing" --length default
Features Beyond the Web UI

These capabilities are available via CLI but not in NotebookLM's web interface:

| Feature | Command | Description | |---------|---------|-------------| | Batch downloads | download <type> --all | Download all artifacts of a type at once | | Quiz/Flashcard export | download quiz --format json | Export as JSON, Markdown, or HTML (web UI only shows interactive view) | | Mind map extraction | download mind-map | Export hierarchical JSON for visualization tools | | Data table export | download data-table | Download structured tables as CSV | | Slide deck as PPTX | download slide-deck --format pptx | Download slide deck as editable .pptx (web UI only offers PDF) | | Slide revision | generate revise-slide "prompt" --artifact <id> --slide N | Modify individual slides with a natural-language prompt | | Report template append | generate report --format study-guide --append "..." | Append custom instructions to built-in format templates without losing the format type | | Source fulltext | source fulltext <id> | Retrieve the indexed text content of any source | | Save chat to note | ask "..." --save-as-note / history --save | Save Q&A answers or conversation history as notebook notes | | Programmatic sharing | share commands | Manage sharing permissions without the UI |

Common Workflows
Research to Podcast (Interactive)

Time: 5-10 minutes total

  1. notebooklm create "Research: [topic]"if fails: check auth with notebooklm login
  2. notebooklm source add for each URL/document — if one fails: log warning, continue with others
  3. Wait for sources: notebooklm source list --json until all status=READY — required before generation
  4. notebooklm generate audio "Focus on [specific angle]" (confirm when asked) — if rate limited: wait 5 min, retry once
  5. Note the artifact ID returned
  6. Check notebooklm artifact list later for status
  7. notebooklm download audio ./podcast.mp3 when complete (confirm when asked)
Research to Podcast (Automated with Subagent)

Time: 5-10 minutes, but continues in background

When user wants full automation (generate and download when ready):

  1. Create notebook and add sources as usual
  2. Wait for sources to be ready (use source wait or check source list --json)
  3. Run notebooklm generate audio "..." --json → parse task_id from output
  4. Spawn a background agent using Task tool: ```python Task( prompt="Wait for artifact {task_id} in notebook {notebook_id} to complete, then download. Use: notebooklm artifact wait {task_id} -n {notebook_id} --timeout 1200 Then: notebooklm download audio ./podcast.mp3 -a {task_id} -n {notebook_id}", subagent_type="general-purpose" ) ```
  5. Main conversation continues while agent waits

Error handling in subagent:

  • If artifact wait returns exit code 2 (timeout): Report timeout, suggest checking artifact list
  • If download fails: Check if artifact status is COMPLETED first

Benefits: Non-blocking, user can do other work, automatic download on completion

Document Analysis

Time: 1-2 minutes

  1. notebooklm create "Analysis: [project]"
  2. notebooklm source add ./doc.pdf (or URLs)
  3. notebooklm ask "Summarize the key points"
  4. notebooklm ask "What are the main arguments?"
  5. Continue chatting as needed
Bulk Import

Time: Varies by source count

  1. notebooklm create "Collection: [name]"
  2. Add multiple sources: ```bash notebooklm source add "https://url1.com" notebooklm source add "https://url2.com" notebooklm source add ./local-file.pdf ```
  3. notebooklm source list to verify

Source limits: Varies by plan—Standard: 50, Plus: 100, Pro: 300, Ultra: 600 sources per notebook. See NotebookLM plans for details. The CLI does not enforce these limits; they are applied by your NotebookLM account. Supported types: PDFs, YouTube URLs, web URLs, Google Docs, text files, Markdown, Word docs, EPUB, audio files, video files, images

Bulk Import with Source Waiting (Subagent Pattern)

Time: Varies by source count

When adding multiple sources and needing to wait for processing before chat/generation:

  1. Add sources with --json to capture IDs (parse with jq -r .source.id): ```bash notebooklm source add "https://url1.com" --json # → {"source": {"id": "abc...", ...}} notebooklm source add "https://url2.com" --json # → {"source": {"id": "def...", ...}} ```
  2. Spawn a background agent to wait for all sources: ``` Task( prompt="Wait for sources {source_ids} in notebook {notebook_id} to be ready. For each: notebooklm source wait {id} -n {notebook_id} --timeout 600 Report when all ready or if any fail.", subagent_type="general-purpose" ) ```
  3. Main conversation continues while agent waits
  4. Once sources are ready, proceed with chat or generation

Why wait for sources? Sources must be indexed before chat or generation. Takes ~30 seconds to several minutes per source (see the processing-times table below).

Deep Web Research (Subagent Pattern)

Time: 15-30+ minutes, runs in background

Deep research finds and analyzes web sources on a topic:

  1. Create notebook: notebooklm create "Research: [topic]"
  2. Start deep research (non-blocking): ```bash notebooklm source add-research "topic query" --mode deep --no-wait ```
  3. Spawn a background agent to wait and import: ``` Task( prompt="Wait for research in notebook {notebook_id} to complete and import sources. Use: notebooklm research wait -n {notebook_id} --import-all --timeout 1800 Report how many sources were imported.", subagent_type="general-purpose" ) ```
  4. Main conversation continues while agent waits
  5. When agent completes, sources are imported automatically

Alternative (blocking): For simple cases, omit --no-wait:

notebooklm source add-research "topic" --mode deep --import-all
# Blocks until research completes (deep mode: 15-30+ min)

When to use each mode:

  • --mode fast: Specific topic, quick overview needed (5-10 sources, seconds)
  • --mode deep: Broad topic, comprehensive analysis needed (20+ sources, 15-30+ min)

Research sources:

  • --from web: Search the web (default)
  • --from drive: Search Google Drive
Output Style

Progress updates: Brief status for each step

  • "Creating notebook 'Research: AI'..."
  • "Adding source: https://example.com..."
  • "Starting audio generation... (task ID: abc123)"

Fire-and-forget for long operations:

  • Start generation, return artifact ID immediately
  • Do NOT poll or wait in main conversation - generation takes 5-45 minutes (see timing table)
  • User checks status manually, OR use subagent with artifact wait

JSON output: Use --json flag for machine-readable output:

notebooklm list --json
notebooklm auth check --test --json   # use --test for network-validated auth (see § Agent Setup Verification)
notebooklm source list --json
notebooklm artifact list --json

JSON schemas (key fields):

notebooklm list --json:

{"notebooks": [{"index": 1, "id": "...", "title": "...", "is_owner": true, "created_at": "..."}], "count": 1}

notebooklm auth check --test --json (use --test to drive the network token-fetch — bare --json would leave "token_fetch": null):

{"status": "ok", "checks": {"storage_exists": true, "json_valid": true, "cookies_present": true, "sid_cookie": true, "token_fetch": true}, "details": {"storage_path": "...", "auth_source": "file", "cookies_found": ["SID", "HSID", "..."], "cookie_domains": [".google.com"]}}

notebooklm source list --json:

{"notebook_id": "...", "notebook_title": "...", "sources": [{"index": 1, "id": "...", "title": "...", "type": "web_page", "url": "...", "status": "ready|processing|error", "status_id": 1, "created_at": "..."}], "count": 1}

notebooklm artifact list --json:

{"notebook_id": "...", "notebook_title": "...", "artifacts": [{"index": 1, "id": "...", "title": "...", "type": "Audio", "type_id": 1, "status": "in_progress|pending|completed|unknown", "status_id": 1, "created_at": "..."}], "count": 1}

Status values:

  • Sources: processingready (or error)
  • Artifacts: pending or in_progresscompleted (or unknown)
Error Handling

On failure, offer the user a choice:

  1. Retry the operation
  2. Skip and continue with something else
  3. Investigate the error

Error decision tree:

| Error | Cause | Action | |-------|-------|--------| | Auth/cookie error | Session expired | Run notebooklm auth check then notebooklm login | | "No notebook context" | Context not set | Use -n <id> or --notebook <id> flag (parallel), or notebooklm use <id> (single-agent) | | "No result found for RPC ID" | Rate limiting | Wait 5-10 min, retry | | GENERATION_FAILED | Google rate limit | Wait and retry later | | Download fails | Generation incomplete | Check artifact list for status | | Invalid notebook/source ID | Wrong ID | Run notebooklm list to verify | | RPC protocol error | Google changed APIs | May need CLI update |

Exit Codes

All commands use consistent exit codes:

| Code | Meaning | Action | |------|---------|--------| | 0 | Success | Continue | | 1 | Error (not found, processing failed) | Check stderr, see Error Handling | | 2 | Timeout (wait commands only) | Extend timeout or check status manually |

Examples:

  • source wait returns 1 if source not found or processing failed
  • artifact wait returns 2 if timeout reached before completion
  • generate returns 1 if rate limited (check stderr for details)
Long Prompts

When a prompt or query exceeds shell command-line length limits, use --prompt-file to read it from a file:

notebooklm ask --prompt-file ./long_question.txt
notebooklm generate report --prompt-file ./custom_report_prompt.txt
notebooklm source add-research --prompt-file ./research_query.txt --mode deep

--prompt-file is mutually exclusive with the positional text argument. The file is read as UTF-8 with trailing whitespace stripped. Supported on: ask, all generate subcommands (except mind-map), and source add-research.

Note: --prompt-file reads a prompt/query text file, not a source document. To upload a file as a notebook source, use source add ./file.pdf.
Known Limitations

Rate limiting: Audio, video, quiz, flashcards, infographic, and slide deck generation may fail due to Google's rate limits. This is an API limitation, not a bug.

Reliable operations: These always work:

  • Notebooks (list, create, delete, rename)
  • Sources (add, list, delete)
  • Chat/queries
  • Mind-map, study-guide, report, data-table generation

Unreliable operations: These may fail with rate limiting:

  • Audio (podcast) generation
  • Video generation
  • Quiz and flashcard generation
  • Infographic and slide deck generation

Workaround: If generation fails:

  1. Check status: notebooklm artifact list
  2. Retry after 5-10 minutes
  3. Use the NotebookLM web UI as fallback

Processing times vary significantly. Use the subagent pattern for long operations:

| Operation | Typical time | Suggested timeout | |-----------|--------------|-------------------| | Source processing | 30s - 10 min | 600s | | Research (fast) | 30s - 2 min | 180s | | Research (deep) | 15 - 30+ min | 1800s | | Notes | instant | n/a | | Mind-map | instant (sync) | n/a | | Quiz, flashcards | 5 - 15 min | 900s | | Report, data-table | 5 - 15 min | 900s | | Audio generation | 10 - 20 min | 1200s | | Video generation | 15 - 45 min | 2700s |

Polling intervals: When checking status manually, poll every 15-30 seconds to avoid excessive API calls.

Language Configuration

Language setting controls the output language for generated artifacts (audio, video, etc.).

Important: Language is a GLOBAL setting that affects all notebooks in your account.

# List all 80+ supported languages with native names
notebooklm language list

# Show current language setting
notebooklm language get

# Set language for artifact generation
notebooklm language set zh_Hans  # Simplified Chinese
notebooklm language set ja       # Japanese
notebooklm language set en       # English (default)

Common language codes: | Code | Language | |------|----------| | en | English | | zh_Hans | 中文(简体) - Simplified Chinese | | zh_Hant | 中文(繁體) - Traditional Chinese | | ja | 日本語 - Japanese | | ko | 한국어 - Korean | | es | Español - Spanish | | fr | Français - French | | de | Deutsch - German | | pt_BR | Português (Brasil) |

Override per command: Use --language flag on generate commands:

notebooklm generate audio --language ja   # Japanese podcast
notebooklm generate video --language zh_Hans  # Chinese video

Offline mode: Use --local flag to skip server sync:

notebooklm language set zh_Hans --local  # Save locally only
notebooklm language get --local  # Read local config only
Troubleshooting
notebooklm --help              # Main commands
notebooklm auth check          # Diagnose auth issues
notebooklm auth check --test   # Full auth validation with network test
notebooklm source --help       # Source management
notebooklm research --help     # Research status/wait/cancel
notebooklm generate --help     # Content generation
notebooklm artifact --help     # Artifact management
notebooklm download --help     # Download content
notebooklm language --help     # Language settings

Diagnose auth: notebooklm auth check - shows cookie domains, storage path, validation status Re-authenticate: notebooklm login Check version: notebooklm --version Refresh a CLI-managed install: notebooklm skill install

按 MIT 许可原样转载,未经改动 · 在 GitHub 查看 →

评论

登录即可评论;带「已验证安装」的,是发布者名下有本店的安装或持有记录。