AutomationFlowsAI & RAG › AI Chatbot with Ollama and Supabase

AI Chatbot with Ollama and Supabase

Original n8n title: Insightslm - Chat (lm Chat Ollama)

InsightsLM - Chat. Uses lmChatOllama, outputParserStructured, chainLlm, vectorStoreSupabase. Webhook trigger; 19 nodes.

Webhook trigger★★★★☆ complexityAI-powered19 nodesOllama ChatOutput Parser StructuredChain LlmSupabase Vector StoreOllama EmbeddingsSupabase
AI & RAG Trigger: Webhook Nodes: 19 Complexity: ★★★★☆ AI nodes: yes Added:

This workflow follows the Chainllm → Outputparserstructured 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

InsightsLM - Chat. Uses lmChatOllama, outputParserStructured, chainLlm, vectorStoreSupabase. Webhook trigger; 19 nodes.

Source: https://github.com/theaiautomators/insights-lm-local-package/blob/5eabf72ff727ff613e546cde752abb9ef863c7e8/n8n/InsightsLM___Chat.json — 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

Search Worflow Docker Complete. Uses documentDefaultDataLoader, textSplitterCharacterTextSplitter, vectorStoreSupabase, embeddingsOllama. Scheduled trigger; 71 nodes.

Document Default Data Loader, Text Splitter Character Text Splitter, Supabase Vector Store +14
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

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

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

Supabase, Agent, Anthropic Chat +10