One platform, any relational prediction task
Avra is not a single-purpose product. The Graph Foundation Model and your Relational Foundation Model produce representations that transfer to any downstream task where entity context and network structure improve predictions. Credit risk, fraud detection, and growth optimization are the most common starting points. The same platform powers churn prediction, supplier risk monitoring, portfolio segmentation, entity resolution, and any custom classification or regression target you can label on entities in the graph.If you can define a target outcome on entities in our graph, we can train a downstream model for it — and that training run will improve your RFM.
How it works
Every use case follows the same pattern:Define the target
What does “good” or “bad” mean for your business — converted vs. not, defaulted vs. not, churned vs. retained, fraud vs. legitimate.
Train the downstream model
Avra trains a task-specific model on top of the GFM and your RFM. Signal from this training run is fed back into your RFM, refining its representation of your business.
Common starting points
Credit Intelligence
Multi-horizon probability of default, credit scoring, and portfolio monitoring powered by network-aware risk signals.
Fraud Detection
Network-based fraud intelligence that catches shell entities, collusion rings, and bust-out schemes invisible to rule engines.
Growth & Sales
Lead scoring, paid media optimization, and field sales ranking driven by entity trajectories and network position.
Build Your Own Models
Use Avra’s adaptive embeddings as features in your own ML models for full control over architecture and objectives.
Beyond these use cases
The use cases above are where most customers start — they do not define the boundaries of the platform. Avra’s foundations apply to any task where entity context and network structure improve predictions:- Churn Prediction — identify at-risk customers through network deterioration signals
- Supplier Risk — monitor supply chain health through multi-hop relationship analysis
- Entity Resolution — disambiguate and link entities across fragmented data sources
- Portfolio Segmentation — cluster entities by behavioral similarity, not just firmographics
- Custom Classification — any binary or multi-class outcome you can label on entities in the graph