FANVATIC · AGINT AGINT CAPITAL · INTELLIGENCE DIVISION
NFL Intelligence Infrastructure

The graph beneath your model.

AGINT is a structured intelligence graph for NFL prediction modeling: thirteen seasons of game data, line movements, injury context, weather, and settlements, processed through a seven-agent architecture that answers the questions models actually need answered. Audit your edge against it. Train on it. Feed your live pipeline from it. Or query the intelligence directly. Most engagements start with a calibration audit.

The foundation

One graph. Thirteen seasons. Seven agents.

Everything AGINT offers sits on the same foundation: a graph that does not just store NFL data, it interprets it. Collection is organized around Priority Intelligence Requirements (PIRs), the specific questions a model needs answered. Each agent writes a direct answer to its PIR, timestamped to the moment it was known and scored for confidence. What comes out is not raw rows but resolved intelligence.

13
seasons of structured history
7
collection agents, each PIR-driven
PIR
answers, timestamped and confidence-scored
NFL
single-sport depth, no dilution

The graph captures game data, line movements, injury context, weather, and bet settlements across thirteen seasons, then layers agent outputs on top: direct answers to questions like starter-availability confidence or whether a line move broke from consensus.

That is the difference between a dataset and an intelligence graph. You are not buying rows to clean. You are buying answers your model can consume, with no look-ahead leakage and a confidence weight on every call.

GAME DATA LINE MOVEMENT INJURY CONTEXT WEATHER SETTLEMENTS PIR OUTPUTS
The engagement ladder

Four ways to put the graph to work

These are not four separate products competing for your attention. They are rungs. Most relationships start with an audit and climb as the graph proves its value inside your operation.

01

Analyze Available now

Where does your model actually have edge?

An independent, statistically rigorous calibration audit of your NFL model. Fifteen analyses that find where your edge concentrates, whether your CLV is real, whether your sample can support it, and whether it has quietly decayed, every finding labeled by the confidence it earns. The wedge: prove the graph's value before you build on it.

from $4,950Snapshot · Audit $25K
View Analyze ›
02

Build Engagement-scoped

Why build the pipeline when the foundation exists?

Train your model on thirteen seasons of structured intelligence plus PIR outputs from every agent, instead of spending a year assembling and cleaning that pipeline yourself. Backtest against resolved answers, not raw data you have to interpret first.

Historical foundation access. Scoped to your modeling needs.
How Build works ›
03

Deploy Seasonal

Can the graph feed production in real time?

During the live NFL season the graph feeds your production pipeline two ways: pull the data your model needs on your own schedule, or receive push notifications the moment something matters: line movements, injury updates, and timing signals.

In-season query and push access. Seasonal engagement.
How Deploy works ›
04

Explore In development

What if you could just ask the graph?

A direct interface to the intelligence itself. Dig into specific questions, starter confidence, line behavior, situational history, through a GUI powered by the same AGINT intelligence that drives every other rung. Currently being scoped.

Roadmap. Talk to us if this is what you need.
Register interest ›
Rung 02
Build
Train on the foundation instead of building it.

The hardest part of an NFL model is rarely the model. It is the pipeline underneath: collecting, structuring, and reconciling years of game data, line movements, injuries, weather, and settlements into something you can train on. Build hands you that foundation.

You train and backtest against thirteen seasons of structured intelligence, with the agent layer included, so your features can lean on resolved answers rather than raw signals you have to derive:

  • Thirteen seasons of game data, line movements, injury context, weather, and settlements
  • PIR outputs from each agent: starter-availability confidence, consensus-breaking line movement, and more
  • Structured for training and walk-forward backtesting, not for cleaning
  • The same foundation Analyze audits against, so a Build naturally follows an audit

Scope and terms depend on what you are training. Start a conversation and we will size it.

Rung 03
Deploy
The graph in your live pipeline.

A foundation you trained on is only half the value. Deploy keeps the graph feeding your model during the live season, as new data flows in, so production runs on the same intelligence your backtest did.

Two modes, used together or separately:

  • Query: pull the data your model needs, on your own schedule, into your pipeline
  • Push: webhook notifications for events that matter, line movements, injury updates, and timing signals, the moment they happen

The result is a production pipeline that does not go stale between your batch jobs and does not miss the move while you are not looking. Seasonal engagement, scoped to your access pattern.

Start where it makes sense

For most operators that is a calibration audit: a low-commitment way to see what the graph can tell you about your own model before you build anything on it. One conversation, no deck.

mj@fanvatic.com
Or read the Analyze methodology in full ›

AGINT offers customer-funded intelligence and diagnostic services (Analyze, Build, Deploy, and Explore) built on a foundation of publicly sourced NFL data. These services are separate from AGINT Capital fund operations and do not provide picks, wagering selections, or investment advice. AGINT does not disclose its fund's models, signals, or performance through these services. Not financial advice.