Skip to main content

Onboarding journey

1

Scope the engagement

Contact your Avra representative at sales@avra.ai. We start by understanding the decisions you want to improve, the data you have, and the integration shape — API, batch, or embeddings — that fits your operation.
2

Provision your workspace

Avra provisions a tenant-isolated workspace. You receive credentials for app.avra.ai and access to your Data Contract — the agreed schema for the relational data you will send.
3

Send your data

Stream or upload your relational data through API, connectors, or SFTP. Every event is validated against your data contract; deviations trigger a notification, not a silent failure.
4

Train your Relational Foundation Model

Avra pre-trains your RFM on your relational schema and temporal business data. For managed deployments, this runs in your tenant-isolated environment. For on-premise deployments, this runs inside your perimeter.
5

Train downstream models

Task-specific models — credit, fraud, growth, custom — are trained on top of your RFM and the Graph Foundation Model. Each training run feeds signal back into your RFM, making the next iteration sharper.
6

Promote to production

Validate offline against your holdouts. Mirror against production traffic. Promote when you meet your performance bar. Roll back with one alias reassignment if anything regresses.

Once you are live

Dashboard

Monitor usage, manage models and versions, and govern access

API Reference

Real-time predictions, model discovery, and version control

Batch Inference

Score entire portfolios on a schedule

Embeddings

Use Avra representations as features in your own ML models

Where to go from here

Read Why Avra, then the Platform Architecture — the three layers, the flywheel, and how they compose.
Start with the API Reference for authentication, endpoints, and integration patterns.