AutomationFlowsAI & RAG › Vector Store Ingest

Vector Store Ingest workflows.

Vector Store Ingest workflows in the AI & RAG category. 859 curated automations — all importable into your n8n instance in one click.

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

Supercharge your trading decisions with this end-to-end AI automation that connects market intelligence, technical analysis, and automated trade execution — all without manual intervention.

Tool Think, Supabase Vector Store, OpenAI Embeddings +14
AI & RAG

Camila IA. Uses postgres, crypto, redis, agent. Webhook trigger; 92 nodes.

Postgres, Crypto, Redis +13
AI & RAG

Api Schema Extractor. Uses manualTrigger, httpRequest, splitOut, textSplitterRecursiveCharacterTextSplitter. Event-driven trigger; 88 nodes.

HTTP Request, Text Splitter Recursive Character Text Splitter, Document Default Data Loader +9
AI & RAG

Wait Splitout. Uses manualTrigger, httpRequest, splitOut, textSplitterRecursiveCharacterTextSplitter. Event-driven trigger; 88 nodes.

HTTP Request, Text Splitter Recursive Character Text Splitter, Document Default Data Loader +9
AI & RAG

This workflow automates the process of discovering and extracting APIs from various services, followed by generating custom schemas. It works in three distinct stages: research, extraction, and schema

HTTP Request, Text Splitter Recursive Character Text Splitter, Document Default Data Loader +9
AI & RAG

A lightweight, self-hosted AI assistant built entirely in n8n. Multi-channel messaging (Telegram, WhatsApp, Gmail), persistent memory, task management, and autonomous work — all in a single visual wor

Telegram Trigger, OpenRouter Chat, Data Table +20
AI & RAG

WooriFisa. Uses agent, httpRequest, documentDefaultDataLoader, vectorStorePinecone. Scheduled trigger; 86 nodes.

Agent, HTTP Request, Document Default Data Loader +14
AI & RAG

This workflow implements an advanced AI automation agent (OpenClaw Agent) that interacts with users through Telegram and integrates multiple AI models, external tools, and cloud services to automate c

Telegram Trigger, Telegram, OpenAI +21
AI & RAG

This workflow acts as a 24/7 sales agent, engaging leads across WhatsApp, Instagram, Facebook, Telegram, and your website. It intelligently transcribes audio messages, answers questions using a knowle

Chat Trigger, Memory Postgres Chat, Tool Workflow +20
AI & RAG

📌 Overview

Redis, WhatsApp, OpenAI Chat +12
AI & RAG

Your AI workforce is ready. Are you?

Google Sheets Tool, Mcp Trigger, Google Drive +29
AI & RAG

This comprehensive workflow bundle is designed as a powerful starter kit, enabling you to build a multi-functional AI assistant on Telegram. It seamlessly integrates AI-powered voice interactions, an

Telegram Trigger, Telegram, OpenAI +19
AI & RAG

Hi! I’m Amanda, a creator of intelligent automations using n8n and Make. I’ve been building AI-powered workflows for over 2 years, always focused on usability and innovation. This one here is very spe

OpenAI Chat, Redis, OpenAI +11
AI & RAG

• Create a Google Drive folder to watch. • Connect your Google Drive account in n8n and authorize access. • Point the Google Drive Trigger node to this folder (new/modified files trigger the flow).

Agent, Chat Trigger, Memory Buffer Window +14
AI & RAG

This intelligent chatbot leverages cutting-edge financial APIs and AI-driven analysis to deliver comprehensive stock research reports. Get instant access to professional-grade investment analysis that

Tool Think, Supabase Vector Store, OpenAI Embeddings +15
AI & RAG

RAG_Ingest. Uses httpRequest, vectorStoreSupabase, documentDefaultDataLoader, textSplitterRecursiveCharacterTextSplitter. Event-driven trigger; 73 nodes.

HTTP Request, Supabase Vector Store, Document Default Data Loader +4
AI & RAG

⚡AI-Powered YouTube Playlist & Video Summarization and Analysis v2. Uses lmChatGoogleGemini, agent, splitOut, chainLlm. Chat trigger; 72 nodes.

Google Gemini Chat, Agent, Chain Llm +11
AI & RAG

This n8n workflow transforms entire YouTube playlists or single videos into interactive knowledge bases you can chat with. Ask questions and get summaries without needing to watch hours of content. 🔗

Google Gemini Chat, Agent, Chain Llm +11
AI & RAG

This advanced n8n workflow automates the full lead enrichment, qualification, and personalized outreach process tailored specifically for the B2B real estate sector. Integrating top platforms like Api

N8N Nodes Fillout, OpenAI Chat, Pinecone Vector Store +11
AI & RAG

The "WhatsApp Productivity Assistant with Memory and AI Imaging" is a comprehensive n8n workflow that transforms your WhatsApp into a powerful, multi-talented AI assistant. It's designed to handle a w

WhatsApp Trigger, Agent, HTTP Request +20
AI & RAG

This workflow automates patient communication for medical clinics using the WhatsApp Business API. It supports appointment booking, rescheduling, service inquiries, follow-ups, and document submission

Google Sheets, Data Table, Data Table Tool +12
AI & RAG

WooriFisa 최종. Uses memoryMongoDbChat, agent, httpRequest, documentDefaultDataLoader. Scheduled trigger; 68 nodes.

Memory Mongo Db Chat, Agent, HTTP Request +14
AI & RAG

This n8n template automatically classifies incoming emails (Sales, Support, Internal, Finance, Promotions) and routes them to a dedicated OpenAI LLM Agent for processing. Depending on the category, th

OpenAI, Gmail, Text Classifier +16
AI & RAG

This workflow is designed for sales professionals, recruiters, and researchers who need to: Build comprehensive profiles of individuals from public sources Understand communication and personality sty

Humantic Ai, Hunter, HTTP Request Tool +11
AI & RAG

Who is this for? This workflow is ideal for HR teams, startups, and enterprises that want to handle employee interactions through WhatsApp and automate responses using LLM (OpenAI) and intelligent rou

WhatsApp Trigger, OpenAI, OpenAI Chat +13
AI & RAG

crawl4 ai. Uses documentDefaultDataLoader, textSplitterCharacterTextSplitter, vectorStoreSupabase, embeddingsOllama. Scheduled trigger; 65 nodes.

Document Default Data Loader, Text Splitter Character Text Splitter, Supabase Vector Store +12
AI & RAG

Automate Outreach Prospect automates finding, enriching, and messaging potential partners (like restaurants, malls, and bars) using Apify Google Maps scraping, Perplexity enrichment, OpenAI LLMs, Goog

@Devlikeapro/N8N Nodes Waha, Google Drive Trigger, @Apify/N8N Nodes Apify +14
AI & RAG

main_workflow. Uses agent, n8n-nodes-upstage, documentDefaultDataLoader, textSplitterCharacterTextSplitter. Webhook trigger; 63 nodes.

Agent, N8N Nodes Upstage, Document Default Data Loader +4
AI & RAG

This simple philosophy changes the way we think about automated sales agents. Context changes everything. In this 4-part workflow, we start by creating a knowledge base that will act as context across

Pinecone Vector Store, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +12
AI & RAG

Build a powerful, customizable AI chatbot for your WordPress website that intelligently retrieves posts, answers questions, and engages in natural conversations. This complete solution handles content

Qdrant Vector Store, OpenAI Embeddings, Document Default Data Loader +10
AI & RAG

Chat with docs - 5minAI New version. Uses httpRequest, documentDefaultDataLoader, textSplitterRecursiveCharacterTextSplitter, embeddingsOpenAi. Event-driven trigger; 62 nodes.

HTTP Request, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +10
AI & RAG

I prepared a detailed guide that illustrates the entire process of building an AI agent using Supabase and Google Drive within N8N workflows.

HTTP Request, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +10
AI & RAG

I originally started to template to ask questions on the "n8n @ scale office-hours" livestream videos but then extended it to include the latest videos on the official channel.

HTTP Request, Qdrant Vector Store, Document Default Data Loader +7
AI & RAG

This workflow automates customer support across multiple channels (Email, Live Chat, WhatsApp, Slack, Discord) using AI-powered responses enhanced with Retrieval Augmented Generation (RAG) and your pr

Email Read Imap, WhatsApp Trigger, Slack Trigger +12
AI & RAG

This workflow is designed for researchers, investigators, and analysts who need to: Build comprehensive profiles of organizations from public sources Research court cases, legislation, and government

HTTP Request Tool, Tool Http Request, Tool Think +8
AI & RAG

Turn unstructured pitch decks and investment memos into polished Due Diligence PDF reports automatically. This n8n workflow handles everything from document ingestion to final delivery, combining inte

HTTP Request, Pinecone Vector Store, OpenAI Embeddings +7
AI & RAG

Transform raw investment memorandums and financial decks into comprehensive, professional Due Diligence (DD) PDF reports. This workflow automates document parsing via LlamaParse, enriches internal dat

HTTP Request, Pinecone Vector Store, OpenAI Embeddings +7
AI & RAG

This workflow automates multi-channel AI-driven sales engagement for lead qualification, service information delivery, and consultation booking. It integrates WhatsApp, Facebook Messenger, Instagram D

Agent, OpenAI Embeddings, OpenAI Chat +11
AI & RAG

This n8n workflow is built for AI and automation agencies to promote their workflows through an interactive demo that prospects can try themselves. The featured system is a deep personalized email dem

Telegram Trigger, HTTP Request, OpenAI +10
AI & RAG

Click here to access this Workflow for free.

HTTP Request, OpenAI Chat, Memory Buffer Window +4
AI & RAG

Auto repost job with RAG is a workflow designed to automatically extract, process, and publish job listings from monitored sources using Google Drive, OpenAI, Supabase, and WordPress. This integration

Google Drive, Supabase Vector Store, OpenAI Embeddings +12
AI & RAG

YouTube Agent. Uses supabase, agent, lmChatAnthropic, outputParserStructured. Webhook trigger; 56 nodes.

Supabase, Agent, Anthropic Chat +10
AI & RAG

RAG AI Agent Template V5. Uses lmChatOpenAi, documentDefaultDataLoader, embeddingsOpenAi, googleDrive. Event-driven trigger; 56 nodes.

OpenAI Chat, Document Default Data Loader, OpenAI Embeddings +12
AI & RAG

Final. Uses chatTrigger, agent, n8n-nodes-upstage, httpRequest. Chat trigger; 55 nodes.

Chat Trigger, Agent, N8N Nodes Upstage +10
AI & RAG

This template is a complete, hands-on tutorial for building a RAG (Retrieval-Augmented Generation) pipeline. In simple terms, you'll teach an AI to become an expert on a specific topic—in this case, t

Memory Buffer Window, Supabase Vector Store, Document Default Data Loader +8
AI & RAG

Unleash the full potential of your HighLevel CRM by adding an intelligent GPT-5 Agent that does more than just follow commands — it understands context, retrieves the right data, and executes actions

High Level Tool, Mcp Trigger, Chat Trigger +21
AI & RAG

Wordpress Ai Chatbot To Enhance User Experience With Supabase And Openai. Uses manualTrigger, embeddingsOpenAi, documentDefaultDataLoader, textSplitterTokenSplitter. Event-driven trigger; 53 nodes.

OpenAI Embeddings, Document Default Data Loader, Text Splitter Token Splitter +9
AI & RAG

RAG & GenAI App With WordPress Content. Uses manualTrigger, embeddingsOpenAi, documentDefaultDataLoader, textSplitterTokenSplitter. Event-driven trigger; 53 nodes.

OpenAI Embeddings, Document Default Data Loader, Text Splitter Token Splitter +9
AI & RAG

Tech Radar. Uses googleDrive, documentDefaultDataLoader, stickyNote, mySql. Scheduled trigger; 53 nodes.

Google Drive, Document Default Data Loader, MySQL +15
AI & RAG

RAG & GenAI App With WordPress Content. Uses manualTrigger, embeddingsOpenAi, documentDefaultDataLoader, textSplitterTokenSplitter. Event-driven trigger; 53 nodes.

OpenAI Embeddings, Document Default Data Loader, Text Splitter Token Splitter +9
AI & RAG

This project is built on top of the famous open source ThoughtWorks Tech Radar.

Google Drive, Document Default Data Loader, MySQL +15
AI & RAG

Automatically extract job listings from any website URL, format them with AI, and publish directly to WordPress. Just send a URL via Telegram, and watch as the workflow scrapes the job details, enhanc

Google Drive, Supabase Vector Store, OpenAI Embeddings +8
AI & RAG

On my never-ending quest to find the best embeddings model, I was intrigued to come across Voyage-Context-3 by MongoDB and was excited to give it a try.

HTTP Request, Execute Workflow Trigger, MongoDB +6
AI & RAG

OIL Rag. Uses lmChatOpenAi, embeddingsOpenAi, agent, telegramTrigger. Event-driven trigger; 53 nodes.

OpenAI Chat, OpenAI Embeddings, Agent +12
AI & RAG

/billing - For payment and invoice questions /tech-support - For technical assistance /return-policy - For returns and refunds Command-based routing Direct department access via slash commands Tracks

Telegram, Pinecone Vector Store, Google Drive Trigger +9
AI & RAG

This n8n workflow turns your Telegram bot into a smart, multi-modal AI assistant that accepts text, documents, images, and audio messages, interprets them using OpenAI models, and responds instantly w

Telegram Trigger, Telegram, OpenAI +10
AI & RAG

This is an ultimate AI assistant: Handle emails, schedule meetings, search the web, take notes, post to social media, and retrieve information from your knowledge base, all through simple Telegram com

Telegram Trigger, OpenAI, Agent +12
AI & RAG

Code Extractfromfile. Uses manualTrigger, sort, httpRequest, compression. Event-driven trigger; 50 nodes.

HTTP Request, Compression, Edit Image +15
AI & RAG

🤖 AI Powered RAG Chatbot for Your Docs + Google Drive + Gemini + Qdrant. Uses documentDefaultDataLoader, textSplitterTokenSplitter, vectorStoreQdrant, splitInBatches. Event-driven trigger; 50 nodes.

Document Default Data Loader, Text Splitter Token Splitter, Qdrant Vector Store +10
AI & RAG

BambooHR AI-Powered Company Policies and Benefits Chatbot. Uses manualTrigger, documentDefaultDataLoader, embeddingsOpenAi, textSplitterRecursiveCharacterTextSplitter. Event-driven trigger; 50 nodes.

Document Default Data Loader, OpenAI Embeddings, Text Splitter Recursive Character Text Splitter +14
AI & RAG

BambooHR AI-Powered Company Policies and Benefits Chatbot. Uses manualTrigger, documentDefaultDataLoader, embeddingsOpenAi, textSplitterRecursiveCharacterTextSplitter. Event-driven trigger; 50 nodes.

Document Default Data Loader, OpenAI Embeddings, Text Splitter Recursive Character Text Splitter +14
AI & RAG

2464. Uses httpRequest, compression, editImage, documentDefaultDataLoader. Event-driven trigger; 50 nodes.

HTTP Request, Compression, Edit Image +15
AI & RAG

Workflow 2464. Uses httpRequest, compression, editImage, documentDefaultDataLoader. Event-driven trigger; 50 nodes.

HTTP Request, Compression, Edit Image +15
AI & RAG

This workflow creates a powerful RAG (Retrieval-Augmented Generation) chatbot that can process, store, and interact with documents from Google Drive using Qdrant vector storage and Google's Gemini AI.

Document Default Data Loader, Text Splitter Token Splitter, Qdrant Vector Store +10
AI & RAG

Are you a popular tech startup accelerator (named after a particular higher order function) overwhelmed with 1000s of pitch decks on a daily basis? Wish you could filter through them quickly using AI

HTTP Request, Compression, Edit Image +15
AI & RAG

This workflow enables companies to provide instant HR support by automating responses to employee queries about policies and benefits: Retrieves company policies, benefits, and HR documents from Bambo

Document Default Data Loader, OpenAI Embeddings, Text Splitter Recursive Character Text Splitter +14
AI & RAG

This workflow automates end-to-end customer journey management by intelligently routing queries through multiple AI models (OpenAI, Claude) based on complexity and context. Designed for customer succe

HTTP Request, Agent, OpenAI Chat +7
AI & RAG

Turn your docs into an AI-powered internal or public-facing assistant. This chatbot workflow uses RAG (Retrieval-Augmented Generation) with Supabase vector search to answer employee or customer questi

Supabase Vector Store, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +11
AI & RAG

Streamline client onboarding and lay the groundwork for future Retrieval-Augmented Generation (RAG) capabilities by automatically transforming Slack messages into structured data using GPT-4o, Google

Google Drive Trigger, Google Drive, Pinecone Vector Store +11
AI & RAG

Reranks #1. Uses googleDrive, vectorStoreSupabase, embeddingsOpenAi, documentDefaultDataLoader. Event-driven trigger; 48 nodes.

Google Drive, Supabase Vector Store, OpenAI Embeddings +12
AI & RAG

Telegram dummy_client. Uses telegramTrigger, agent, lmChatOpenAi, telegram. Event-driven trigger; 48 nodes.

Telegram Trigger, Agent, OpenAI Chat +12
AI & RAG

This workflow contains community nodes that are only compatible with the self-hosted version of n8n.

Google Drive, Supabase Vector Store, OpenAI Embeddings +12
AI & RAG

This template is a complete, hands-on tutorial for building a RAG (Retrieval-Augmented Generation) pipeline. In simple terms, you'll teach an AI to become an expert on a specific topic—in this case, t

Memory Buffer Window, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +7
AI & RAG

This workflow transforms your Telegram bot into J.A.R.V.I.S., a powerful, multimodal AI assistant. It can understand and process text, voice messages, images, and documents. The assistant can search t

Telegram Trigger, Telegram, Memory Buffer Window +11
AI & RAG

AI Multi-Document Analyzer with Smart Recommendations & Reporting

Crypto, Agent, OpenAI Chat +8
AI & RAG

AI-powered workflow that transforms any article URL into platform-optimized social media posts for LinkedIn, Twitter (X), and Reddit. Uses Mozilla Readability for content extraction, multi-agent AI wi

OpenAI Chat, Supabase Vector Store, OpenAI Embeddings +8
AI & RAG

AI Email Agent - Complete System. Uses gmailTrigger, gmail, vectorStorePGVector, embeddingsOpenAi. Event-driven trigger; 47 nodes.

Gmail Trigger, Gmail, Vector Store Pgvector +8
AI & RAG

Ditch the endless scroll for AI trends. Meet Archi, your personal AI research assistant that hits you up once a week with everyone you need to know. 🧑🏽‍🔬

Weaviate Vector Store, Document Default Data Loader, HTTP Request +8
AI & RAG

This n8n workflow automates the process of ingesting files from Google Drive into a Supabase database, preparing them for a knowledge base system. It supports text-based files (PDF, DOCX, TXT, etc.) a

Google Drive Trigger, Postgres, Supabase +11
AI & RAG

This workflow automates the early-stage job application process using AI.

Pinecone Vector Store, Document Default Data Loader, Google Drive +9
AI & RAG

This template creates a comprehensive, production-ready Retrieval-Augmented Generation (RAG) system. It builds a sophisticated AI agent that can answer questions based on documents stored in a specifi

Reranker Cohere, Supabase Vector Store, Agent +10
AI & RAG

Splitout Code. Uses stickyNote, toolWorkflow, mcpTrigger, executeWorkflowTrigger. Event-driven trigger; 44 nodes.

Tool Workflow, Mcp Trigger, Execute Workflow Trigger +5
AI & RAG

This n8n implementation exposes other cool API features from Qdrant such as facet search, grouped search and recommendations APIs. With this, we can build an easily customisable and maintainable Qdran

Tool Workflow, Mcp Trigger, Execute Workflow Trigger +5
AI & RAG

use cases: research stock market in Indonesia. analyze the performance of companies belonging to certain subsectors or company comparing financial metrics between BBCA and BBRI providing technical ana

Chat Trigger, Chat, Telegram Trigger +10
AI & RAG

Template name Smart AI Support Assistant for Telegram

Telegram Trigger, Telegram, Pinecone Vector Store +3
AI & RAG

Dynamic Models. Uses lmChatOpenRouter, agent, gmailTool, airtableTool. Event-driven trigger; 43 nodes.

OpenRouter Chat, Agent, Gmail Tool +12
AI & RAG

This n8n workflow enables an AI agent to interact with users through GoHighLevel SMS, leveraging a knowledgebase dynamically built by scraping the company's website.

In-Memory Vector Store, OpenAI Embeddings, Document Default Data Loader +8
AI & RAG

Survey Insights With Qdrant, Python And Information Extractor. Uses embeddingsOpenAi, documentDefaultDataLoader, textSplitterRecursiveCharacterTextSplitter, googleSheets. Event-driven trigger; 42 node

OpenAI Embeddings, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +6
AI & RAG

Breakdown Documents Into Study Notes Using Templating Mistralai And Qdrant. Uses localFileTrigger, documentDefaultDataLoader, textSplitterRecursiveCharacterTextSplitter, embeddingsMistralCloud. Event-

Local File Trigger, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +9
AI & RAG

Splitout Code. Uses embeddingsOpenAi, documentDefaultDataLoader, textSplitterRecursiveCharacterTextSplitter, googleSheets. Event-driven trigger; 42 nodes.

OpenAI Embeddings, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +6
AI & RAG

Localfile Wait. Uses localFileTrigger, documentDefaultDataLoader, textSplitterRecursiveCharacterTextSplitter, embeddingsMistralCloud. Event-driven trigger; 42 nodes.

Local File Trigger, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +9
AI & RAG

Ultimate Agentic RAG AI Agent Template. Uses lmChatOpenAi, documentDefaultDataLoader, embeddingsOpenAi, stickyNote. Event-driven trigger; 42 nodes.

OpenAI Chat, Document Default Data Loader, OpenAI Embeddings +10
AI & RAG

Workflow 2339. Uses localFileTrigger, documentDefaultDataLoader, textSplitterRecursiveCharacterTextSplitter, embeddingsMistralCloud. Event-driven trigger; 42 nodes.

Local File Trigger, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +9
AI & RAG

This n8n workflow takes in a document such as a research paper, marketing or sales deck or company filings, and breaks them down into 3 templates: study guide, briefing doc and timeline.

Local File Trigger, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +9
AI & RAG

Imagine having a personal AI secretary accessible right from your Telegram, ready to assist you with information and remember everything you discuss. This n8n workflow transforms Telegram into your in

Telegram Trigger, OpenAI, Agent +9
AI & RAG

This n8n template is one of a 3-part series exploring use-cases for clustering vector embeddings: Survey Insights Customer Insights Community Insights

OpenAI Embeddings, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +6
AI & RAG

Turn your cluttered inbox into a smart, autonomous assistant that categorizes emails, replies to leads, checks your calendar, and notifies you on Telegram—all without lifting a finger.

Gmail Trigger, Text Classifier, OpenAI Chat +11
AI & RAG

This n8n template demonstrates how to automate comprehensive web research using multiple AI models to find, analyze, and extract insights from authoritative sources.

HTTP Request, Execute Workflow Trigger, Output Parser Structured +7
AI & RAG

This workflow automates business intelligence reporting by aggregating data from multiple sources, processing it through AI models, and delivering formatted dashboards via email. Designed for business

HTTP Request, Postgres, Google Drive +5
AI & RAG

This workflow automates intellectual property (IP) monitoring, conflict detection, and governance reporting for IP counsel, legal operations teams, and compliance officers. It eliminates the manual ef

Agent, OpenAI Chat, Memory Buffer Window +9
AI & RAG

V3 Local Agentic RAG AI Agent. Uses documentDefaultDataLoader, memoryPostgresChat, chatTrigger, agent. Webhook trigger; 41 nodes.

Document Default Data Loader, Memory Postgres Chat, Chat Trigger +9
AI & RAG

Author: Jadai kongolo

Document Default Data Loader, Memory Postgres Chat, Chat Trigger +9
AI & RAG

This workflow implements a self-healing Retrieval-Augmented Generation (RAG) maintenance system that automatically updates document embeddings, evaluates retrieval quality, detects embedding drift, an

HTTP Request, Postgres, OpenAI Embeddings +5
AI & RAG

Collects cybersecurity news from trusted RSS feeds and uses OpenAI’s Retrieval-Augmented Generation (RAG) capabilities with Pinecone to filter for content that is directly relevant to your organizatio

RSS Feed Read, OpenAI Chat, Agent +7
AI & RAG

🤖📈 This workflow is my personal solution for the Agentic Arena Community Contest, where the goal is to build a Retrieval-Augmented Generation (RAG) AI agent capable of answering questions based on a p

Evaluation, Evaluation Trigger, Chat +11
AI & RAG

This workflow demonstrates how to use AI text classifier to classify incoming emails, and uses a multi-agent architecture to respond for each email category respectively.

Gmail Trigger, OpenAI Embeddings, Gmail +7
AI & RAG

This workflow automates end-to-end e-commerce order processing from intake through fulfillment by orchestrating multiple AI-powered validation stages and external system integrations. Designed for e-c

HTTP Request, Agent, OpenAI Chat +10
AI & RAG

The workflow operates through a three-step process that handles incoming chat messages with intelligent tool orchestration: Message Trigger: The node triggers whenever a user message arrives and passe

Chat Trigger, Memory Postgres Chat, OpenAI Embeddings +16
AI & RAG

Unlock adaptive, context-aware AI chat in your automations—no coding required!

Agent, Chat Trigger, Google Gemini Chat +4
AI & RAG

Description This workflow automatically classifies user queries and retrieves the most relevant information based on the query type. 🌟 It uses adaptive strategies like; Factual, Analytical, Opinion, a

Agent, Chat Trigger, Google Gemini Chat +4
AI & RAG

This template crawls a website from its sitemap, deduplicates URLs in Supabase, scrapes pages with Crawl4AI, cleans and validates the text, then stores content + metadata in a Supabase vector store us

HTTP Request, XML, Document Default Data Loader +5
AI & RAG

This workflow builds a dual-system that connects automated document ingestion with a live product catalog chatbot powered by Mistral AI and Supabase.

Google Drive, Document Default Data Loader, Text Splitter Character Text Splitter +6
AI & RAG

This workflow automates academic research processing by routing queries through specialized AI models while maintaining contextual memory. Designed for researchers, faculty, and graduate students, it

HTTP Request, Agent, OpenAI Chat +7
AI & RAG

Advanced Ai Demo Presented At Ai Developers 14 Meetup. Uses slack, stickyNote, textSplitterRecursiveCharacterTextSplitter, embeddingsOpenAi. Chat trigger; 39 nodes.

Slack, Text Splitter Recursive Character Text Splitter, OpenAI Embeddings +14
AI & RAG

Advanced Ai Demo (Presented At Ai Developers #14 Meetup). Uses slack, stickyNote, textSplitterRecursiveCharacterTextSplitter, embeddingsOpenAi. Chat trigger; 39 nodes.

Slack, Text Splitter Recursive Character Text Splitter, OpenAI Embeddings +14
AI & RAG

Adaptive RAG. Uses agent, chatTrigger, lmChatGoogleGemini, memoryBufferWindow. Chat trigger; 39 nodes.

Agent, Chat Trigger, Google Gemini Chat +4
AI & RAG

Workflow 2358. Uses slack, textSplitterRecursiveCharacterTextSplitter, embeddingsOpenAi, documentDefaultDataLoader. Chat trigger; 39 nodes.

Slack, Text Splitter Recursive Character Text Splitter, OpenAI Embeddings +14
AI & RAG

2358. Uses slack, textSplitterRecursiveCharacterTextSplitter, embeddingsOpenAi, documentDefaultDataLoader. Chat trigger; 39 nodes.

Slack, Text Splitter Recursive Character Text Splitter, OpenAI Embeddings +14
AI & RAG

This workflow was presented at the AI Developers meet up in San Fransico on 24 July, 2024. Categorize incoming Gmail emails and assign custom Gmail labels. This example uses the Text Classifier node,

Slack, Text Splitter Recursive Character Text Splitter, OpenAI Embeddings +14
AI & RAG

This workflow transforms a Google Drive folder into an intelligent, searchable knowledge base and provides a chat agent to query it. It’s composed of two distinct flows: An ingestion pipeline to proce

OpenAI Embeddings, OpenAI Chat, Tool Http Request +10
AI & RAG

This n8n workflow implements a version of the Adaptive Retrieval-Augmented Generation (RAG) framework. It recognizes that the best way to retrieve information often depends on the type of question ask

Agent, Chat Trigger, Google Gemini Chat +4
AI & RAG

📺 Full walkthrough video: https://youtu.be/r5kN_la0O7I

Document Default Data Loader, OpenAI Embeddings, Google Drive +6
AI & RAG

Upload a construction photo via web form → get a detailed cost estimate with work breakdown, resource costs, and professional HTML report. Powered by GPT-4 Vision and the open-source DDC CWICR databas

Form Trigger, Chain Llm, OpenAI Chat +2
AI & RAG

Streamline M&A due diligence with AI. This n8n workflow automatically parses financial documents using LlamaIndex, embeds data into Pinecone, and generates comprehensive, AI-driven reports with GPT-5-

HTTP Request, Pinecone Vector Store, OpenAI Embeddings +6
AI & RAG

This workflow helps users find the most relevant n8n templates using AI.

HTTP Request, Qdrant Vector Store, Google Gemini Embeddings +5
AI & RAG

local_RAG. Uses documentDefaultDataLoader, textSplitterRecursiveCharacterTextSplitter, chatTrigger, memoryBufferWindow. Event-driven trigger; 39 nodes.

Document Default Data Loader, Text Splitter Recursive Character Text Splitter, Chat Trigger +9
AI & RAG

Wait Splitout. Uses manualTrigger, embeddingsMistralCloud, documentDefaultDataLoader, textSplitterRecursiveCharacterTextSplitter. Event-driven trigger; 38 nodes.

Embeddings Mistral Cloud, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +9
AI & RAG

Wait Splitout. Uses manualTrigger, embeddingsMistralCloud, documentDefaultDataLoader, textSplitterRecursiveCharacterTextSplitter. Event-driven trigger; 38 nodes.

Embeddings Mistral Cloud, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +9
AI & RAG

Think Agents. Uses agent, chatTrigger, toolThink, lmChatAnthropic. Chat trigger; 38 nodes.

Agent, Chat Trigger, Tool Think +11
AI & RAG

Boost your productivity with this AI-powered email and calendar assistant:

Chat Trigger, OpenAI Chat, Memory Buffer Window +13
AI & RAG

Every company has documents sitting in Google Drive that nobody reads. HR policies, sales playbooks, product FAQs, financial guidelines — all written once, never found again. This workflow turns all o

Google Sheets, Gmail, Google Drive +5
AI & RAG

This n8n workflows builds another example of creating a knowledgebase assistant but demonstrates how a more deliberate and targeted approach to ingesting the data can produce much better results for y

Embeddings Mistral Cloud, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +9
AI & RAG

The benefits being (1) the vision model doesn't need to keep all document scans in context (expensive) and (2) ability to query on graphical content such as charts, graphs and tables. Page extracts fr

HTTP Request, N8N Nodes Qdrant, Chat Trigger +7
AI & RAG

This workflow creates an intelligent document assistant called "Mookie" that can answer questions based on your uploaded documents. Here's how it operates: Document Ingestion: The system can automatic

Document Default Data Loader, Lm Chat Azure Open Ai, Agent +9
AI & RAG

📝 Description This workflow helps automatically classify incoming emails using a combination of conditional logic and minimal AI-based classification. The system checks email content, performs sentime

Email Read Imap, Chain Llm, Groq Chat +9
AI & RAG

This workflow acts as an autonomous Tier 2 Customer Support Agent. It doesn't just answer questions; it manages the entire lifecycle of a support ticket—from triage to resolution with Guardrails to de

Guardrails, Agent, Tool Workflow +11
AI & RAG

Every day at 8 AM, the workflow automatically retrieves the latest F1 data—including driver standings, qualifying results, race schedules, and circuit information. All sources are merged into a unifie

HTTP Request, Agent, OpenAI Chat +9
AI & RAG

This n8n workflow builds a self-improving AI agent for handling email responses. It integrates Gmail for incoming messages, uses an AI agent with a Supabase vector store for knowledge retrieval, draft

OpenAI Embeddings, Supabase Vector Store, OpenAI Chat +10
AI & RAG

An end-to-end Retrieval-Augmented Generation (RAG) customer support workflow for n8n, using a cache-first strategy (LangCache) combined with a Redis vector store powered by OpenAI embeddings. This tem

Chat Trigger, Agent, Output Parser Structured +7
AI & RAG

> Note: This template requires an Apify account, an OpenAI account, and a Pinecone database.

Telegram, Telegram Trigger, OpenAI Embeddings +7
AI & RAG

🛠️ How It Works: System Architecture Workflow ini bekerja melalui empat lapisan proses utama yang terintegrasi secara otomatis: Input Processing & Routing Telegram Trigger: Menangkap setiap pesan masu

Telegram Trigger, HTTP Request, Telegram +13
AI & RAG

Customer Insights With Qdrant, Python And Information Extractor. Uses manualTrigger, html, splitOut, documentDefaultDataLoader. Event-driven trigger; 37 nodes.

Document Default Data Loader, Text Splitter Recursive Character Text Splitter, OpenAI Embeddings +6
AI & RAG

Splitout Code Export. Uses manualTrigger, html, splitOut, documentDefaultDataLoader. Event-driven trigger; 37 nodes.

Document Default Data Loader, Text Splitter Recursive Character Text Splitter, OpenAI Embeddings +6
AI & RAG

Generate Exam Questions. Uses manualTrigger, vectorStoreQdrant, httpRequest, embeddingsOpenAi. Event-driven trigger; 37 nodes.

Qdrant Vector Store, HTTP Request, OpenAI Embeddings +12
AI & RAG

Tetra_Blind_Eval_RAG_TEST+Ejentum_Harness. Uses embeddingsGoogleGemini, vectorStoreQdrant, httpRequestTool, agent. Event-driven trigger; 37 nodes.

Google Gemini Embeddings, Qdrant Vector Store, HTTP Request Tool +4
AI & RAG

This Workflow simulates an AI-powered phone agent with RetellAI with two main functions: 📅 Appointment Booking – It can schedule appointments directly into Google Calendar. 🧠 RAG-based Information Ret

OpenAI Chat, Output Parser Structured, Qdrant Vector Store +10
AI & RAG

This pipeline is the first part of "Hybrid Search with Qdrant & n8n, Legal AI"*. The second part, "Hybrid Search with Qdrant & n8n, Legal AI: Retrieval", covers retrieval and simple evaluation.*

N8N Nodes Qdrant, HTTP Request
AI & RAG

This n8n template is one of a 3-part series exploring use-cases for clustering vector embeddings: Survey Insights Customer Insights Community Insights

Document Default Data Loader, Text Splitter Recursive Character Text Splitter, OpenAI Embeddings +6
AI & RAG

This workflow automates the creation of exam questions (both open-ended and multiple-choice) from educational content stored in Google Docs, using AI-powered analysis and vector database retrieval

Qdrant Vector Store, HTTP Request, OpenAI Embeddings +12
AI & RAG

This workflow is designed for Business Analysts, Project Managers, and Operations Teams who need to automate the creation, tracking, and delivery of Business Requirements Documents (BRDs) from submitt

Form Trigger, In-Memory Vector Store, Document Default Data Loader +8
AI & RAG

This RAG workflow allows you to build a smart chat assistant that can answer user questions based on any collection of documents you provide. It automatically imports and processes files from Google D

Agent, OpenAI Chat, Supabase Vector Store +7
AI & RAG

My workflow 3. Uses formTrigger, splitInBatches, lmChatGoogleGemini, httpRequest. Event-driven trigger; 36 nodes.

Form Trigger, Google Gemini Chat, HTTP Request +10
AI & RAG

AI Phone Agent with RetellAI. Uses lmChatOpenAi, outputParserStructured, vectorStoreQdrant, embeddingsOpenAi. Webhook trigger; 36 nodes.

OpenAI Chat, Output Parser Structured, Qdrant Vector Store +10
AI & RAG

Splitout Schedule. Uses scheduleTrigger, embeddingsOpenAi, documentDefaultDataLoader, textSplitterRecursiveCharacterTextSplitter. Scheduled trigger; 36 nodes.

OpenAI Embeddings, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +5
AI & RAG

Splitout Code. Uses manualTrigger, hackerNews, splitOut, vectorStoreQdrant. Event-driven trigger; 36 nodes.

Hacker News, Qdrant Vector Store, OpenAI Embeddings +7
AI & RAG

Indexation. Uses formTrigger, embeddingsOllama, textSplitterRecursiveCharacterTextSplitter, modelSelector. Event-driven trigger; 36 nodes.

Form Trigger, Ollama Embeddings, Text Splitter Recursive Character Text Splitter +10
AI & RAG

Indoor Farming Agent. Uses lmChatOpenAi, documentDefaultDataLoader, embeddingsOpenAi, toolVectorStore. Webhook trigger; 36 nodes.

OpenAI Chat, Document Default Data Loader, OpenAI Embeddings +16
AI & RAG

This n8n template is one of a 3-part series exploring use-cases for clustering vector embeddings: Survey Insights Customer Insights Community Insights

Hacker News, Qdrant Vector Store, OpenAI Embeddings +7
AI & RAG

This workflow is perfect for: Businesses and teams who need an automated solution to organize, analyze, and retrieve insights from their internal documents. Researchers who want to quickly analyze and

Document Default Data Loader, Google Drive Trigger, Text Splitter Character Text Splitter +10
AI & RAG

How it works Automates systematic literature review by downloading papers from Google Drive, extracting text, and evaluating them against strict inclusion/exclusion criteria using LLM agents Routes in

Google Drive, Document Default Data Loader, Google Gemini Embeddings +6
AI & RAG

This can be one way to help reduce the amount of manual work in managing the issue backlog for busy teams with little effort. This template contains 2 separate flows which run continuously via schedul

OpenAI Embeddings, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +5
AI & RAG

This workflow contains community nodes that are only compatible with the self-hosted version of n8n.

Telegram Trigger, HTTP Request, Agent +9
AI & RAG

This workflow empowers you to automatically process PDF documents, intelligently identify or generate a hierarchical Table of Contents (ToC), and then segment the entire document's content based on th

Google Gemini Chat, Output Parser Structured, Output Parser Autofixing +6
AI & RAG

Scheduled triggers initiate automated contract reviews. The system fetches documents from cloud storage and email, then uses AI to extract key terms, obligations, and compliance requirements. Multi-mo

Gmail Trigger, HTTP Request, Text Splitter Recursive Character Text Splitter +8
AI & RAG

This workflow is a complete AI-powered customer support automation for e-commerce businesses.

Qdrant Vector Store, HTTP Request, Google Drive +12
AI & RAG

Personal Portfolio Resume CV Chatbot. Uses embeddingsGoogleGemini, stickyNote, scheduleTrigger, lmChatGoogleGemini. Scheduled trigger; 35 nodes.

Google Gemini Embeddings, Google Gemini Chat, Google Drive Trigger +9
AI & RAG

4827. Uses agent, lmChatOpenAi, embeddingsOpenAi, memoryBufferWindow. Event-driven trigger; 35 nodes.

Agent, OpenAI Chat, OpenAI Embeddings +9
AI & RAG

FAQs Embeddings. Uses googleDocs, openAi, supabase, httpRequest. Event-driven trigger; 35 nodes.

Google Docs, OpenAI, Supabase +8
AI & RAG

This template is designed for internal support teams, product specialists, and knowledge managers in technology companies who want to automate ingestion of product documentation and enable AI-driven,

Agent, OpenAI Chat, OpenAI Embeddings +9
AI & RAG

This n8n workflow implements a fully automated Retrieval-Augmented Generation (RAG) pipeline powered by Google Drive, OpenAI embeddings, and Pinecone.

Pinecone Vector Store, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +10
AI & RAG

This template is perfect for:

Google Gemini Embeddings, Google Gemini Chat, Google Drive Trigger +9
AI & RAG

Featherless.ai is an inference provider with a different pricing model - they charge a flat subscription fee (starting from $10) and allows for unlimited token usage instead. If you're typically spend

N8N Nodes Featherless, HTTP Request, N8N Nodes Qdrant +6
AI & RAG

This n8n workflow automates the process of ingesting documents from multiple sources (Google Drive and web forms) into a Qdrant vector database for semantic search capabilities. It handles batch proce

Google Drive, Qdrant Vector Store, OpenAI Embeddings +8
AI & RAG

This workflow creates a conversational assistant that can answer questions based on your Google Drive documents. It automatically processes various file types and uses Retrieval-Augmented Generation (

OpenAI Chat, Document Default Data Loader, OpenAI Embeddings +9
AI & RAG

This n8n workflow automates the entire process, from learning based on your website data, documents to a multi-channel chatbot with automated ticket creation. It's the perfect solution for businesses

Chat Trigger, Agent, Form Trigger +10
AI & RAG

FAQs Embeddings. Uses googleDocs, openAi, supabase, httpRequest. Event-driven trigger; 35 nodes.

Google Docs, OpenAI, Supabase +8
AI & RAG

Upsert Huge Documents In A Vector Store With Supabase And Notion. Uses embeddingsOpenAi, textSplitterTokenSplitter, splitInBatches, chainRetrievalQa. Chat trigger; 34 nodes.

OpenAI Embeddings, Text Splitter Token Splitter, Chain Retrieval Qa +8
AI & RAG

Webhook Schedule. Uses manualTrigger, stickyNote, agent, lmChatOpenAi. Event-driven trigger; 34 nodes.

Agent, OpenAI Chat, Memory Buffer Window +7
AI & RAG

RAG on living data. Uses embeddingsOpenAi, textSplitterTokenSplitter, splitInBatches, chainRetrievalQa. Chat trigger; 34 nodes.

OpenAI Embeddings, Text Splitter Token Splitter, Chain Retrieval Qa +8
AI & RAG

Build a Chatbot, Voice Agent and Phone Agent with Voiceflow, Google Calendar and RAG. Uses googleCalendar, lmChatOpenAi, chainLlm, vectorStoreQdrant. Webhook trigger; 34 nodes.

Google Calendar, OpenAI Chat, Chain Llm +9
AI & RAG

Bitrix24 Open Chanel RAG Chatbot Application Workflow example with Webhook Integration. Uses httpRequest, noOp, respondToWebhook, documentDefaultDataLoader. Webhook trigger; 34 nodes.

HTTP Request, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +6
AI & RAG

This workflow is designed to process PDF documents using Mistral's OCR capabilities, store the extracted text in a Qdrant vector database, and enable Retrieval-Augmented Generation (RAG) for answering

HTTP Request, OpenAI Embeddings, Document Default Data Loader +9
AI & RAG

Voiceflow is a no-code platform that allows you to design, prototype, and deploy conversational assistants across multiple channels—such as chat, voice, and phone—with advanced logic and natural langu

Google Calendar, OpenAI Chat, Chain Llm +9
AI & RAG

This workflow adds the capability to build a RAG on living data. In this case Notion is used as a Knowledge Base. Whenever a page is updated, the embeddings get upserted in a Supabase Vector Store.

OpenAI Embeddings, Text Splitter Token Splitter, Chain Retrieval Qa +8
AI & RAG

This workflow implements a complete Voice AI Chatbot system for Wordress that integrates speech recognition, guardrails for safety, retrieval-augmented generation (RAG), Qdrant vector search, and audi

OpenAI Chat, Memory Buffer Window, Tool Calculator +10
AI & RAG

Transform your Bitrix24 Open Line channels with an intelligent chatbot that leverages Retrieval-Augmented Generation (RAG) technology to provide accurate, document-based responses to customer inquirie

HTTP Request, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +6
AI & RAG

https://n8n-tools.streamlit.app/

Agent, OpenAI Chat, Memory Buffer Window +7
AI & RAG

Automate AI-Powered RAG System with Contextual Q&A, Google Sheets Integration, and Glide Frontend—Powered by n8n, OpenAI, Supabase, and Google Apps Script.

Google Calendar, OpenAI Chat, Chain Llm +9
AI & RAG

This workflow is built for individuals, teams, and businesses that receive regular inquiries via email and want to automate responses in a way that’s intelligent, brand-aligned, and always up to date.

OpenAI Chat, Tool Vector Store, Pinecone Vector Store +14
AI & RAG

Ai Agent To Chat With Files In Supabase Storage. Uses httpRequest, documentDefaultDataLoader, textSplitterRecursiveCharacterTextSplitter, extractFromFile. Event-driven trigger; 33 nodes.

HTTP Request, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +7
AI & RAG

Wait Code Export. Uses manualTrigger, httpRequest, html, embeddingsMistralCloud. Event-driven trigger; 33 nodes.

HTTP Request, Embeddings Mistral Cloud, Document Default Data Loader +7
AI & RAG

Ai Agent To Chat With Files In Supabase Storage. Uses httpRequest, documentDefaultDataLoader, textSplitterRecursiveCharacterTextSplitter, extractFromFile. Event-driven trigger; 33 nodes.

HTTP Request, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +7
AI & RAG

supabase. Uses httpRequest, documentDefaultDataLoader, textSplitterRecursiveCharacterTextSplitter, embeddingsOpenAi. Event-driven trigger; 33 nodes.

HTTP Request, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +7
AI & RAG

This workflow implements a complete Retrieval-Augmented Generation (RAG) system for document ingestion and intelligent querying.

Text Splitter Recursive Character Text Splitter, Document Default Data Loader, OpenAI Embeddings +5
AI & RAG

Need to turn a one-line chat request into a fully-wired n8n workflow template—complete with AI agents, RAG, and web-search super-powers—without lifting a finger? That’s exactly what Agent Builder auto

Chat Trigger, Agent, OpenAI Embeddings +7
AI & RAG

I prepared a detailed guide explaining how to set up and implement this scenario, enabling you to chat with your documents stored in Supabase using n8n.

HTTP Request, Document Default Data Loader, Text Splitter Recursive Character Text Splitter +7
AI & RAG

This n8n workflow demonstrates creating a recipe recommendation chatbot using the Qdrant vector store recommendation API.

HTTP Request, Embeddings Mistral Cloud, Document Default Data Loader +7
AI & RAG

This workflow implements a Retrieval-Augmented Generation (RAG) system that integrates Google Drive and Qdrant.

OpenAI Embeddings, Document Default Data Loader, HTTP Request +8
AI & RAG

This workflow contains community nodes that are only compatible with the self-hosted version of n8n.

Memory Postgres Chat, OpenRouter Chat, Pinecone Vector Store +2
AI & RAG

This n8n template demonstrates how to build an intelligent entity research system that automatically discovers, researches, and creates comprehensive profiles for business entities, concepts, and term

Execute Workflow Trigger, OpenAI Chat, Tool Wikipedia +8

200 of 859 workflows on page 1 of 5 · Browse all →

FAQ

What is in the Vector Store Ingest (AI & RAG) category?

All n8n workflows in the AutomationFlows catalog that automate vector store ingest (ai & rag) use cases. 859 workflows live here, each integration-tagged and importable into a self-hosted or cloud n8n instance.

How do I use a Vector Store Ingest (AI & RAG) workflow?

Open any workflow detail page, click 'Copy JSON', then in n8n go to Workflows → Import from File or paste into a new workflow. Add your credentials (the catalog strips them before publishing) and activate.

Are these workflows free?

Yes — the entire catalog is free to browse and copy. Pro adds a multi-signal QualityScore on every workflow plus bulk JSON download.