- +10
🧑🏻🫱🏻🫲🏻🤖 Humans and Robots alike.
This workflow can be used as a Chat Trigger, as well as a Workflow Trigger.
It will take a natural language request, and then generate a SQL
query. The resulting query
parameter will contain the query, and a sqloutput
parameter will contain the results of executing such query.
This template is most useful paired with other workflows that extract e-mail information and store it in a structured Postgres table, and use LLMs to understand inquiries about information contained in an e-mail inbox and formulate questions that needs answering.
Plus, the prompt can be easily adapted to formulate SQL queries over any kind of structured database.
As LLM provider I'm using Ollama locally, as I consider my e-mail extremely sensitive information. As model, phi4-mini
does an excellent job balancing quality and efficiency.
Upon running for the first time, this workflow will automatically trigger a sub-section to read all tables and extract their schema into a local file.
Then, either by chatting with the workflow in n8n's interface or by using it as a sub-workflow, you will get a query
and a sqloutput
response.
If you want to work with just one particular table yet keep edits at bay, append a condition to the List all tables in a database
step, like so:
WHERE table_schema='public' AND table_name='my_emails_table_name'
To repurpose this workflow to work with any other data corpus in a structured database, inspect the AI Agent
user and system prompts and edit them accordingly.