Aurora logo
§ Agent · Aurora

The Amazon Aurora data agent that acts the way you would.

It watches the business metrics you compute from your Aurora tables, on a schedule you set or whenever fresh data lands. When a number breaks trend or a load comes up short, it tells you and hands off to Fi to investigate, or acts the way you'd want.

D
DefiniteAPP9:14 AM · #data-alerts
⚠️ Row counts on public.orders dropped 38% overnight, 3 downstream models stale

Last night's CDC sync wrote 9,400 rows against a trailing-7-day baseline of ~15,200/day. The revenue model, the cohort rollup, and the exec dashboard all read from this table and are now computing on a partial load. Looks like the replication slot fell behind after the Aurora failover at 02:14 UTC.

Review & approve Dismiss
Amazon Aurora tables (public.orders) · reconciled against warehouse load history · audit log

How an agent works

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.

◄ repeats on the schedule you set ►

You stay in control

An agent does what you'd do, and only what you've authorized.

The same trusted numbers

It acts on the same governed metrics as your dashboards, and every action is logged and traceable.

You approve anything that writes

It alerts and recommends on its own; anything that changes data is yours to approve.

Try it on a test channel first

Point a new agent at a throwaway channel and watch its judgment before it touches anything real.

No false alarms

It remembers what it already flagged and waits before acting again, so it won't alert you about the same thing twice.

What you can put an agent on

ReconcileACROSS YOUR SOURCES

Tie your Aurora tables to the rest of the warehouse

It reconciles the rows landing from Aurora against the same entities in your other sources and your dbt models, and flags the gaps before they reach a dashboard. You find out the source-of-record and the warehouse disagree while it's still a sync problem, not a number someone already presented.

TableViewSchema Catalog
Freshness

Catch a stale or partial load before it ships downstream

When row counts, load timing, or null rates on a table break their trend, it tells you which table is affected and what reads from it, then looks at why the load came up short. You hear about a broken replication slot from the agent, not from someone staring at a dashboard that is quietly wrong.

TableView
Schema drift

Flag a schema change before it breaks a model

When a column gets added, dropped, or retyped, or a view definition shifts under you, it surfaces the change and the models and dashboards that depend on it before the next run fails. The drift that usually shows up as a red pipeline at 6am becomes a heads-up you can act on.

Schema CatalogView
Custom

Run any Python it needs to get the job done

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.

Why not just build it yourself?

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:

  • The cross-source join: not one tool's data, but it reconciled against the rest of your stack
  • A trusted, consistent metric: the same number your dashboards use
  • The investigation into why, when something fires
  • A full audit trail of everything it did
  • The upkeep, when the schema drifts or the script breaks at 2am

The data it works from

Every Aurora object, modeled and query-ready the moment you connect.

Table
general_data_storage
View
general_data_storage
Schema Catalog
general_data_storage

It runs on your real Aurora schema (whatever your application writes, however it's structured, including the JSONB columns nobody documented), not a clean demo. You define the metric once as governed SQL and it watches that.

Where it acts

Slack

A message in the channel you choose, with the context and a button to act on it.

Email

A summary in the inbox of the people who need to see it.

Webhook

A payload to your own systems, to wire the agent into whatever you already run.

Warehouse write-back

A flag written back to your warehouse for everything downstream to pick up.

Hand off to Fi

Kick the question to Fi to investigate the why and propose the fix.

MCP

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.

Build your agents with Fi

Fi is your AI analyst. It helps you build and customize everything in Definite, including the agents that watch and act.

Fi

Your AI analyst. Ask questions in plain English, and let it help you build and customize everything in Definite, including your agents.

Meet Fi →

Agents

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 →

Get started

  1. 1Connect Aurora, and the sources it needs to reconcile against. Synced and modeled in an afternoon.
  2. 2See the numbers tie out to what you already trust.
  3. 3Put an agent on one thing you can't afford to miss. Fi helps you build it.
§ FAQ

Common questions

You set the schedule, and it also re-checks whenever fresh Aurora data lands. Each agent watches the one thing you point it at, nothing else.
It alerts and recommends on its own. Anything that writes, whether to a tool, your warehouse, or a customer, is yours to approve. You can also point a new agent at a test channel first and watch its judgment before it touches anything real.
When something fires, it can hand off to Fi to investigate, drilling into the data it has across your connected sources to find what's behind the move, and showing its work.

Your answer engine
is one afternoon away.

Book a 30-minute call and watch us build your first dashboard live, with your own data.