Back to Catalog

⚑AI-powered YouTube video summarization & analysis

Joseph LePageJoseph LePage
106903 views
2/3/2026
Official Page

-- Disclaimer: This workflow uses a community node and therefore only works for self-hosted n8n users --

image.png

Transform YouTube videos into comprehensive summaries and structured analysis instantly. This n8n workflow automatically extracts, processes, and analyzes video transcripts to deliver clear, organized insights without watching the entire video.

Time-Saving Features πŸš€ Instant Processing Simply provide a YouTube URL and receive a structured summary within seconds, eliminating the need to watch lengthy videos. Perfect for research, learning, or content analysis.

πŸ€– AI-Powered Analysis Leverages GPT-4o-mini to analyze video transcripts, organizing key concepts and insights into a clear, hierarchical structure with main topics and essential points.

Smart Processing Pipeline πŸ“ Automated Transcript Extraction

  • Supports public YouTube video
  • Handles multiple URL formats
  • Extracts complete video transcripts automatically

🧠 Intelligent Content Organization

  • Breaks down content into main topics
  • Highlights key concepts and terminology
  • Maintains technical accuracy while improving clarity
  • Structures information logically with markdown formatting

Perfect For πŸ“š Researchers & Students Quick comprehension of educational content and lectures without watching entire videos.

πŸ’Ό Business Professionals Efficient analysis of industry talks, presentations, and training materials.

🎯 Content Creators Rapid research and competitive analysis of video content in your niche.

Technical Implementation πŸ”„ Workflow Components

  • Webhook endpoint for URL submission
  • YouTube API integration for video details
  • Transcript extraction system
  • GPT-4 powered analysis engine
  • Telegram notification system (optional)

Transform your video content consumption with an intelligent system that delivers structured, comprehensive summaries while saving hours of viewing time.

AI-Powered YouTube Video Summarization and Analysis

This n8n workflow automates the process of extracting, summarizing, and analyzing YouTube video content using AI, then delivers the summary via Telegram. It's designed to quickly provide key insights from YouTube videos without requiring manual viewing.

What it does:

  1. Receives YouTube Video URL: The workflow is triggered by an incoming webhook, expecting a YouTube video URL as input.
  2. Extracts Video Transcript: It fetches the transcript of the provided YouTube video.
  3. Splits Transcript for Processing: The transcript is split into manageable chunks to accommodate AI model token limits.
  4. Summarizes Each Chunk: Each chunk of the transcript is sent to an OpenAI Chat Model (via a Basic LLM Chain) to generate a summary.
  5. Aggregates Summaries: All the individual chunk summaries are then combined into a single, comprehensive summary.
  6. Analyzes the Summary: The combined summary is further processed by the OpenAI Chat Model to extract key topics and potential action items.
  7. Formats Output: The extracted topics, action items, and the full summary are formatted for clear presentation.
  8. Sends Telegram Message: The final summary, topics, and action items are sent as a message to a specified Telegram chat.
  9. Responds to Webhook: A confirmation response is sent back to the triggering webhook, indicating successful processing.

Prerequisites/Requirements:

  • n8n Instance: A running n8n instance to host the workflow.
  • OpenAI API Key: An API key for OpenAI to power the summarization and analysis (configured as an n8n credential for the "OpenAI Chat Model" node).
  • Telegram Bot Token & Chat ID: A Telegram bot token and the chat ID where the summaries should be sent (configured as an n8n credential for the "Telegram" node).
  • YouTube Data API Key: (Implicitly required by the YouTube node, often covered by n8n's Google OAuth credential for YouTube). You might need to set up a Google OAuth credential with YouTube scope.

Setup/Usage:

  1. Import the Workflow: Download the provided JSON and import it into your n8n instance.
  2. Configure Credentials:
    • OpenAI: Create an OpenAI credential in n8n and link it to the "OpenAI Chat Model" node.
    • Telegram: Create a Telegram credential in n8n with your bot token and link it to the "Telegram" node. Ensure you know the Chat ID where the bot should send messages.
    • YouTube: If not already configured, set up a Google OAuth credential with access to YouTube and link it to the "YouTube" node.
  3. Activate the Webhook: Once imported and configured, activate the "Webhook" trigger node. n8n will provide a unique URL for this webhook.
  4. Trigger the Workflow: Send a POST request to the webhook URL with a JSON body containing the YouTube video URL.
    • Example JSON Payload:
      {
        "youtubeUrl": "https://www.youtube.com/watch?v=YOUR_VIDEO_ID"
      }
      
    • Replace YOUR_VIDEO_ID with the actual YouTube video ID.
  5. Receive Summary: The workflow will process the video and send the summary, topics, and action items to your configured Telegram chat.

Related Templates

Track competitor SEO keywords with Decodo + GPT-4.1-mini + Google Sheets

This workflow automates competitor keyword research using OpenAI LLM and Decodo for intelligent web scraping. Who this is for SEO specialists, content strategists, and growth marketers who want to automate keyword research and competitive intelligence. Marketing analysts managing multiple clients or websites who need consistent SEO tracking without manual data pulls. Agencies or automation engineers using Google Sheets as an SEO data dashboard for keyword monitoring and reporting. What problem this workflow solves Tracking competitor keywords manually is slow and inconsistent. Most SEO tools provide limited API access or lack contextual keyword analysis. This workflow solves that by: Automatically scraping any competitor’s webpage with Decodo. Using OpenAI GPT-4.1-mini to interpret keyword intent, density, and semantic focus. Storing structured keyword insights directly in Google Sheets for ongoing tracking and trend analysis. What this workflow does Trigger β€” Manually start the workflow or schedule it to run periodically. Input Setup β€” Define the website URL and target country (e.g., https://dev.to, france). Data Scraping (Decodo) β€” Fetch competitor web content and metadata. Keyword Analysis (OpenAI GPT-4.1-mini) Extract primary and secondary keywords. Identify focus topics and semantic entities. Generate a keyword density summary and SEO strength score. Recommend optimization and internal linking opportunities. Data Structuring β€” Clean and convert GPT output into JSON format. Data Storage (Google Sheets) β€” Append structured keyword data to a Google Sheet for long-term tracking. Setup Prerequisites If you are new to Decode, please signup on this link visit.decodo.com n8n account with workflow editor access Decodo API credentials OpenAI API key Google Sheets account connected via OAuth2 Make sure to install the Decodo Community node. Create a Google Sheet Add columns for: primarykeywords, seostrengthscore, keyworddensity_summary, etc. Share with your n8n Google account. Connect Credentials Add credentials for: Decodo API credentials - You need to register, login and obtain the Basic Authentication Token via Decodo Dashboard OpenAI API (for GPT-4o-mini) Google Sheets OAuth2 Configure Input Fields Edit the β€œSet Input Fields” node to set your target site and region. Run the Workflow Click Execute Workflow in n8n. View structured results in your connected Google Sheet. How to customize this workflow Track Multiple Competitors β†’ Use a Google Sheet or CSV list of URLs; loop through them using the Split In Batches node. Add Language Detection β†’ Add a Gemini or GPT node before keyword analysis to detect content language and adjust prompts. Enhance the SEO Report β†’ Expand the GPT prompt to include backlink insights, metadata optimization, or readability checks. Integrate Visualization β†’ Connect your Google Sheet to Looker Studio for SEO performance dashboards. Schedule Auto-Runs β†’ Use the Cron Node to run weekly or monthly for competitor keyword refreshes. Summary This workflow automates competitor keyword research using: Decodo for intelligent web scraping OpenAI GPT-4.1-mini for keyword and SEO analysis Google Sheets for live tracking and reporting It’s a complete AI-powered SEO intelligence pipeline ideal for teams that want actionable insights on keyword gaps, optimization opportunities, and content focus trends, without relying on expensive SEO SaaS tools.

Ranjan DailataBy Ranjan Dailata
161

Generate song lyrics and music from text prompts using OpenAI and Fal.ai Minimax

Spark your creativity instantly in any chatβ€”turn a simple prompt like "heartbreak ballad" into original, full-length lyrics and a professional AI-generated music track, all without leaving your conversation. πŸ“‹ What This Template Does This chat-triggered workflow harnesses AI to generate detailed, genre-matched song lyrics (at least 600 characters) from user messages, then queues them for music synthesis via Fal.ai's minimax-music model. It polls asynchronously until the track is ready, delivering lyrics and audio URL back in chat. Crafts original, structured lyrics with verses, choruses, and bridges using OpenAI Submits to Fal.ai for melody, instrumentation, and vocals aligned to the style Handles long-running generations with smart looping and status checks Returns complete song package (lyrics + audio link) for seamless sharing πŸ”§ Prerequisites n8n account (self-hosted or cloud with chat integration enabled) OpenAI account with API access for GPT models Fal.ai account for AI music generation πŸ”‘ Required Credentials OpenAI API Setup Go to platform.openai.com β†’ API keys (sidebar) Click "Create new secret key" β†’ Name it (e.g., "n8n Songwriter") Copy the key and add to n8n as "OpenAI API" credential type Test by sending a simple chat completion request Fal.ai HTTP Header Auth Setup Sign up at fal.ai β†’ Dashboard β†’ API Keys Generate a new API key β†’ Copy it In n8n, create "HTTP Header Auth" credential: Name="Fal.ai", Header Name="Authorization", Header Value="Key [Your API Key]" Test with a simple GET to their queue endpoint (e.g., /status) βš™οΈ Configuration Steps Import the workflow JSON into your n8n instance Assign OpenAI API credentials to the "OpenAI Chat Model" node Assign Fal.ai HTTP Header Auth to the "Generate Music Track", "Check Generation Status", and "Fetch Final Result" nodes Activate the workflowβ€”chat trigger will appear in your n8n chat interface Test by messaging: "Create an upbeat pop song about road trips" 🎯 Use Cases Content Creators: YouTubers generating custom jingles for videos on the fly, streamlining production from idea to audio export Educators: Music teachers using chat prompts to create era-specific folk tunes for classroom discussions, fostering interactive learning Gift Personalization: Friends crafting anniversary R&B tracks from shared memories via quick chats, delivering emotional audio surprises Artist Brainstorming: Songwriters prototyping hip-hop beats in real-time during sessions, accelerating collaboration and iteration ⚠️ Troubleshooting Invalid JSON from AI Agent: Ensure the system prompt stresses valid JSON; test the agent standalone with a sample query Music Generation Fails (401/403): Verify Fal.ai API key has minimax-music access; check usage quotas in dashboard Status Polling Loops Indefinitely: Bump wait time to 45-60s for complex tracks; inspect fal.ai queue logs for bottlenecks Lyrics Under 600 Characters: Tweak agent prompt to enforce fuller structures like [V1][C][V2][B][C]; verify output length in executions

Daniel NkenchoBy Daniel Nkencho
601

Automate invoice processing with OCR, GPT-4 & Salesforce opportunity creation

PDF Invoice Extractor (AI) End-to-end pipeline: Watch Drive ➜ Download PDF ➜ OCR text ➜ AI normalize to JSON ➜ Upsert Buyer (Account) ➜ Create Opportunity ➜ Map Products ➜ Create OLI via Composite API ➜ Archive to OneDrive. --- Node by node (what it does & key setup) 1) Google Drive Trigger Purpose: Fire when a new file appears in a specific Google Drive folder. Key settings: Event: fileCreated Folder ID: google drive folder id Polling: everyMinute Creds: googleDriveOAuth2Api Output: Metadata { id, name, ... } for the new file. --- 2) Download File From Google Purpose: Get the file binary for processing and archiving. Key settings: Operation: download File ID: ={{ $json.id }} Creds: googleDriveOAuth2Api Output: Binary (default key: data) and original metadata. --- 3) Extract from File Purpose: Extract text from PDF (OCR as needed) for AI parsing. Key settings: Operation: pdf OCR: enable for scanned PDFs (in options) Output: JSON with OCR text at {{ $json.text }}. --- 4) Message a model (AI JSON Extractor) Purpose: Convert OCR text into strict normalized JSON array (invoice schema). Key settings: Node: @n8n/n8n-nodes-langchain.openAi Model: gpt-4.1 (or gpt-4.1-mini) Message role: system (the strict prompt; references {{ $json.text }}) jsonOutput: true Creds: openAiApi Output (per item): $.message.content β†’ the parsed JSON (ensure it’s an array). --- 5) Create or update an account (Salesforce) Purpose: Upsert Buyer as Account using an external ID. Key settings: Resource: account Operation: upsert External Id Field: taxid_c External Id Value: ={{ $json.message.content.buyer.tax_id }} Name: ={{ $json.message.content.buyer.name }} Creds: salesforceOAuth2Api Output: Account record (captures Id) for downstream Opportunity. --- 6) Create an opportunity (Salesforce) Purpose: Create Opportunity linked to the Buyer (Account). Key settings: Resource: opportunity Name: ={{ $('Message a model').item.json.message.content.invoice.code }} Close Date: ={{ $('Message a model').item.json.message.content.invoice.issue_date }} Stage: Closed Won Amount: ={{ $('Message a model').item.json.message.content.summary.grand_total }} AccountId: ={{ $json.id }} (from Upsert Account output) Creds: salesforceOAuth2Api Output: Opportunity Id for OLI creation. --- 7) Build SOQL (Code / JS) Purpose: Collect unique product codes from AI JSON and build a SOQL query for PricebookEntry by Pricebook2Id. Key settings: pricebook2Id (hardcoded in script): e.g., 01sxxxxxxxxxxxxxxx Source lines: $('Message a model').first().json.message.content.products Output: { soql, codes } --- 8) Query PricebookEntries (Salesforce) Purpose: Fetch PricebookEntry.Id for each Product2.ProductCode. Key settings: Resource: search Query: ={{ $json.soql }} Creds: salesforceOAuth2Api Output: Items with Id, Product2.ProductCode (used for mapping). --- 9) Code in JavaScript (Build OLI payloads) Purpose: Join lines with PBE results and Opportunity Id ➜ build OpportunityLineItem payloads. Inputs: OpportunityId: ={{ $('Create an opportunity').first().json.id }} Lines: ={{ $('Message a model').first().json.message.content.products }} PBE rows: from previous node items Output: { body: { allOrNone:false, records:[{ OpportunityLineItem... }] } } Notes: Converts discount_total ➜ per-unit if needed (currently commented for standard pricing). Throws on missing PBE mapping or empty lines. --- 10) Create Opportunity Line Items (HTTP Request) Purpose: Bulk create OLIs via Salesforce Composite API. Key settings: Method: POST URL: https://<your-instance>.my.salesforce.com/services/data/v65.0/composite/sobjects Auth: salesforceOAuth2Api (predefined credential) Body (JSON): ={{ $json.body }} Output: Composite API results (per-record statuses). --- 11) Update File to One Drive Purpose: Archive the original PDF in OneDrive. Key settings: Operation: upload File Name: ={{ $json.name }} Parent Folder ID: onedrive folder id Binary Data: true (from the Download node) Creds: microsoftOneDriveOAuth2Api Output: Uploaded file metadata. --- Data flow (wiring) Google Drive Trigger β†’ Download File From Google Download File From Google β†’ Extract from File β†’ Update File to One Drive Extract from File β†’ Message a model Message a model β†’ Create or update an account Create or update an account β†’ Create an opportunity Create an opportunity β†’ Build SOQL Build SOQL β†’ Query PricebookEntries Query PricebookEntries β†’ Code in JavaScript Code in JavaScript β†’ Create Opportunity Line Items --- Quick setup checklist πŸ” Credentials: Connect Google Drive, OneDrive, Salesforce, OpenAI. πŸ“‚ IDs: Drive Folder ID (watch) OneDrive Parent Folder ID (archive) Salesforce Pricebook2Id (in the JS SOQL builder) 🧠 AI Prompt: Use the strict system prompt; jsonOutput = true. 🧾 Field mappings: Buyer tax id/name β†’ Account upsert fields Invoice code/date/amount β†’ Opportunity fields Product name must equal your Product2.ProductCode in SF. βœ… Test: Drop a sample PDF β†’ verify: AI returns array JSON only Account/Opportunity created OLI records created PDF archived to OneDrive --- Notes & best practices If PDFs are scans, enable OCR in Extract from File. If AI returns non-JSON, keep β€œReturn only a JSON array” as the last line of the prompt and keep jsonOutput enabled. Consider adding validation on parsing.warnings to gate Salesforce writes. For discounts/taxes in OLI: Standard OLI fields don’t support per-line discount amounts directly; model them in UnitPrice or custom fields. Replace the Composite API URL with your org’s domain or use the Salesforce node’s Bulk Upsert for simplicity.

Le NguyenBy Le Nguyen
942