The events, transactions, and sessions datasets have not received new files since yesterday at 14:22 UTC. Your warehouse models downstream ran on schedule but are now 18 hours behind production. Row counts in the transactions dataset also dropped 12% versus the prior extract, suggesting a partial export.
An agent watches one thing and acts on it. Not a workflow, just a standing watch that usually does nothing and acts the moment it should.
An agent does what you'd do, and only what you've authorized.
It acts on the same governed metrics as your dashboards, and every action is logged and traceable.
It alerts and recommends on its own; anything that changes data is yours to approve.
Point a new agent at a throwaway channel and watch its judgment before it touches anything real.
It remembers what it already flagged and waits before acting again, so it won't alert you about the same thing twice.
It compares record counts and column distributions in your Parquet datasets against what landed in the warehouse, flags gaps or duplicates before your dbt models run on stale data, and surfaces the discrepancy so you can fix the export instead of debugging a dashboard.
When a Parquet dataset stops updating or a file lands hours late, it tells you which datasets are affected and how far behind the warehouse has drifted, so you can intervene before the lag becomes a data quality incident your stakeholders notice first.
When an upstream system changes its export schema, new fields appear in your Parquet files without warning. The agent scans Fields for columns your pipeline does not expect, flags the change with the dataset and approximate time window, and routes it to you before it breaks a downstream model.
Beyond alerts and write-backs, an agent can run arbitrary Python, so it can do whatever the task actually requires: call an API, kick off a job, reshape the data, or wire into your own tooling. The action space is yours to define.
You could rig one of these with a cron job and a Slack webhook in an afternoon. The watching is the easy part. Here's what you'd own forever, and don't, here:
Every Parquet object, modeled and query-ready the moment you connect.
It runs on your real Parquet files (partial exports, nested columns, mismatched schemas between batches and all), not a tidy demo.
A message in the channel you choose, with the context and a button to act on it.
A summary in the inbox of the people who need to see it.
A payload to your own systems, to wire the agent into whatever you already run.
A flag written back to your warehouse for everything downstream to pick up.
Kick the question to Fi to investigate the why and propose the fix.
Expose it to your own agents and tools over MCP, and drive it from your stack.
Run it in your own VPC or fully self-hosted. Everything it does is pure SQL and Python you can inspect.
Fi is your AI analyst. It helps you build and customize everything in Definite, including the agents that watch and act.
Your AI analyst. Ask questions in plain English, and let it help you build and customize everything in Definite, including your agents.
Meet Fi →The watchers and actors. Once you've built one, it runs on its own, keeping an eye on what matters and acting the way you would.
Autonomous agents →