A growing fintech company operating a real-time digital wallet and checkout API faced escalating fraud threats. Fraudsters were exploiting:
To combat this, the client had a basic rule-based fraud engine. But it had two key issues:
Additionally, the system couldn’t keep up with:
The client needed a smarter, faster, and more adaptive fraud detection system.
DataPro was brought in to design a fraud engine capable of detecting both known and novel fraud patterns, in real time and at scale.
We built an ensemble-based detection platform combining:
All these models worked in unison to output a single fraud risk score for each transaction within 50 milliseconds.
We first re-architected the client’s data ingestion pipeline to capture the right signals, such as:
These were engineered into real-time features and historical aggregates for downstream models.
✅ Result: Built a deep feature matrix combining identity, behavior, and network signals.
Fraud doesn’t happen in isolation. We used graph analytics to expose hidden connections:
This layer was especially effective at catching:
✅ Result: Uncovered fraud groups not visible through flat transaction-level data.
Some fraud behaviors only stand out over time. We built models to track:
We used:
✅ Result: Detected novel fraud types before they hit high frequency.
To catch known fraud patterns with high precision, we trained multiple classifiers on labeled data:
All models were continuously retrained with new fraud cases, and feature importance was monitored to avoid concept drift.
✅ Result: Maintained high recall on known fraud types with stable performance over time.
We combined all models into a single risk scoring engine that produced a normalized fraud score per transaction.
✅ Result: Reduced false positives by 30%, allowing genuine users to transact without interruption.
We deployed the detection engine as a low-latency microservice using:
✅ Result: End-to-end fraud check per transaction in under 50ms without slowing down checkout flows.
Within the first quarter of deployment:
Fraud analyst workload was cut in half, thanks to better triage and visibility
This wasn’t just a “plug-and-play” fraud tool. It succeeded because we:
And critically, we set up feedback loops so the system kept learning and improving.
DataPro is now working with the client to:
Fraud is constantly evolving. Static rules or single ML models won’t keep up.
By combining graph intelligence, behavioral modeling, and machine learning all optimized for speed DataPro delivered a next-generation fraud detection platform that actually stays ahead of attackers.
If your platform handles financial transactions or customer data, don’t wait for fraud to cost you. Get proactive. Get intelligent. Get DataPro.