Metabase

Build AI Agents on Metabase

Build intelligent AI Agents on top of Metabase with Peliqan, the leading data foundation for the Agentic AI world.

Let AI do the work for you

Build AI Agents on top of Metabase

Build intelligent AI Agents on top of Metabase, with Peliqan’s AI data foundation:

  • Metabase MCP Server
  • Metabase in n8n AI Agents
  • Metabase in Make
  • “Text to SQL” on Metabase data
  • Metabase RAG with out-of-the-box embeddings (vectors)
  • Metabase Graph RAG
  • Query unified 360° data combining Metabase and other data

Publish Data APIs

Metabase MCP Server

Publish a Metabase MCP Server to query data from Metabase and to take actions in Metabase such as doing updates and adding new data in Metabase.

Peliqan n8n AI Agents RAG and Text To SQL

Metabase in n8n

Build AI Chatbots and AI Agents in n8n that can perform “Text to SQL” to query Metabase data and perform RAG and Graph RAG on information from Metabase.

Let AI do the work for you

Implement a “Text to SQL” chatbot on Metabase

Implement an AI Chatbot that can answer analytical data questions on Metabase data using “Text to SQL”. 

Spreadsheet BI for business users

Implement a chatbot with RAG on Metabase

Implement RAG (retrieval-augmented generation) on Metabase data with an out-of-the-box vector store (embeddings) of all business entities and other information in Metabase.

Combine Metabase data with 250+ other sources and build 360° views

Combine data from Metabase with data from 250+ other connectors, and build 360° views of business entities such as customers, leads, products, employees etc.

Feed unified 360° data models to your AI Agents with RAG and “Text to SQL”. Allow your AI Agents to access all business data in one uniform data model.

Prepare your Metabase data for AI

Access, combine, and report on data from Metabase and all your SaaS apps instantly.

Gain valuable insights by bringing all your business data together in one place within minutes.

Spreadsheet BI for business users

Security is our priority

SOC_2_Type_2

SOC 2 Type 2 validates our security controls, ensuring your data is protected by independently audited security measures.

iso2

ISO 27001 certification (in progress) ensures enterprise-grade information security, protecting your business with globally recognized standards.

GDPR-compliant

GDPR compliance guarantees EU data protection compliance, keeping PII data secure within EU boundaries.

Peliqan Overview

Ready to get instant access to
all your company data ?

Frequently asked questions

Peliqan is an all-in-one data platform with 250+ data connectors (ERP, CRM, Accounting, ATS/HRM, cloud storage etc.) – including Metabase – and a built-in data warehouse. Peliqan allows you to unleash, prepare and combine your Metabase data for AI, including relational & non-relational data. Peliqan turns your Metabase data into 360° views that can be used in AI Agents built in n8n, Make, langChain, langGraph or any other framework. Use Peliqan to create embeddings, store them in a vector store so that your AI chatbots can use RAG and Graph RAG, combined with Text-to-SQL for analytical reasoning. Peliqan is the only platform that allows your AI Agents to combine RAG and Text-to-SQL to apply deep reasoning on your Metabase data. Use Peliqan to expose any Metabase as an MCP server to query data and to take actions.

There are different ways to build an AI agent that can query data in Metabase and take actions in Metabase. For example you can build an AI agent in n8n and use Peliqan as the data foundation. Peliqan will sync your Metabase data to its built-in data warehouse and allow the AI Agent to perform “Text to SQL” and RAG to answer questions and to perform reasoning on Metabase data, combined with data from 250+ other sources.

First sign up for a free trial on Peliqan.io, next connect Metabase in Peliqan. Once that is done, create an AI agent in n8n and use the Peliqan n8n node in your worflow. Add Peliqan as a “tool” to your AI Agent node, so that the AI agent can query your Metabase data using Text to SQL.

There are different options to use RAG (retrieval augmented generation) in your AI Agent with Metabase data. One option is to create a workflow in n8n that fetches all Metabase data from Peliqan and stores it in Supabase as a vector store, with embeddings created using e.g. OpenAI.

In Peliqan, you can set up API endpoints and expose them as MCP Server. In the API endpoint handler script, you can configure actions to be taken in Metabase such as querying data, doing lookups, adding new items or performing updates.

n8n is a great tool to build AI chatbots that use Text to SQL, to answer any analytical question on your Metabase data. Any question will be converted by the AI agent into an SQL query, which is executed by Peliqan on the Metabase data in the data warehouse.

In order to prepare your Metabase data for RAG, you need to create embeddings and store them in a vector store. This can be done by creating a workflow in n8n that fetches all Metabase data from Peliqan and stores it in Supabase as a vector store, with embeddings created using e.g. OpenAI.