AutomationFlowsAI & RAG › Extract & Summarize Wikipedia Data with Bright Data and Gemini AI (lm Chat…

Extract & Summarize Wikipedia Data with Bright Data and Gemini AI (lm Chat…

Original n8n title: Extract & Summarize Wikipedia Data with Bright Data and Gemini AI (lm Chat Google Gemini) (lm Chat Google Gemini)

ByRanjan Dailata @ranjancse on n8n.io

This workflow automates the process of Wikipedia data extraction using the Bright Data Web Unlocker, parsing and cleaning the data, and then sending the results to a specified webhook URL for downstream processing, reporting, or integration. Researchers who need structured…

Event trigger★★★★☆ complexityAI-powered12 nodesGoogle Gemini ChatHTTP RequestChain LlmChain Summarization
AI & RAG Trigger: Event Nodes: 12 Complexity: ★★★★☆ AI nodes: yes Added:

This workflow corresponds to n8n.io template #3539 — we link there as the canonical source.

This workflow follows the Chainllm → Chainsummarization recipe pattern — see all workflows that pair these two integrations.

The workflow JSON

Copy or download the full n8n JSON below. Paste it into a new n8n workflow, add your credentials, activate. Full import guide →

Download .json

  

Credentials you'll need

Each integration node will prompt for credentials when you import. We strip credential IDs before publishing — you'll add your own.

Pro

For the full experience including quality scoring and batch install features for each workflow upgrade to Pro

About this workflow

This workflow automates the process of Wikipedia data extraction using the Bright Data Web Unlocker, parsing and cleaning the data, and then sending the results to a specified webhook URL for downstream processing, reporting, or integration. Researchers who need structured…

Source: https://n8n.io/workflows/3539/ — original creator credit. Request a take-down →

More AI & RAG workflows → · Browse all categories →

Related workflows

Workflows that share integrations, category, or trigger type with this one. All free to copy and import.

AI & RAG

The Brand Content Extract, Summarization & Sentiment Analysis workflow is designed for professionals and teams who need to monitor, understand, and act on public brand perception at scale.

Chain Llm, Information Extractor, HTTP Request +3
AI & RAG

Indeed Company Data Scraper & Summarization with Airtable, Bright Data and Google Gemini. Uses manualTrigger, lmChatGoogleGemini, toolHttpRequest, stickyNote. Event-driven trigger; 19 nodes.

Google Gemini Chat, Tool Http Request, HTTP Request +4
AI & RAG

Indeed Data Scraper & Summarization with Airtable, Bright Data and Google Gemini is an automated workflow that extracts company profile information from Indeed using Bright Data Web Unlocker, transfor

Google Gemini Chat, Tool Http Request, HTTP Request +4
AI & RAG

The Google Trend Data Extract & Summarization workflow is ideal for trend researchers, digital marketers, content strategists, and AI developers who want to automate the extraction, summarization, and

Chain Llm, HTTP Request, Google Gemini Chat +4
AI & RAG

Extract & Summarize Indeed Company Info with Bright Data and Google Gemini. Uses manualTrigger, lmChatGoogleGemini, stickyNote, httpRequest. Event-driven trigger; 15 nodes.

Google Gemini Chat, HTTP Request, Agent +3