Fraud Detection and Monitoring

We deploy AI-powered fraud detection using h2o.ai AutoML to identify risks in real-time. Our built system uses behavioral analysis to track suspicious patterns and includes explainable AI to ensure all decisions meet regulatory compliance standards.
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100+Reviews
1000+Projects Delivered

Stop Fraud in Milliseconds

550+ Engagements Since 2006 — Trusted By

khataBook
Bambu
Jupiter.Money
goosehead insurance
coinup
PayPenny
ICICI
Sprive
PayPoint
Elever
Elinvar
Bajaj
LAZYPAY
RazorPay
kane
kingsley Gate
Amana
khataBook
Bambu
Jupiter.Money
goosehead insurance
coinup
PayPenny
ICICI
Sprive
PayPoint
Elever
Elinvar
Bajaj
LAZYPAY
RazorPay
kane
kingsley Gate
Amana
khataBook
Bambu
Jupiter.Money
goosehead insurance
coinup
PayPenny
ICICI
Sprive
PayPoint
Elever
Elinvar
Bajaj
LAZYPAY
RazorPay
kane
kingsley Gate
Amana

Traditional detection relies on fixed rules that only recognize old patterns. As attackers change tactics, these rigid thresholds fail, causing false positives to climb above 20% and allowing new, sophisticated threats to slip through undetected.


We replace static rules with a machine learning model. By analyzing 200+ behavioral features, including device patterns and session velocity, the system identifies high-risk signals that single-variable rules miss. A continuous feedback loop automatically updates the model as fraud trends shift, eliminating the need for manual rule adjustments.

CUSTOMER STORIES

Client Results and Success

RESULTS DELIVERED

Business Impacts We Have Made

95%

Fraud Detection Accuracy

Ensuring that the vast majority of fraudulent attempts are identified before they impact the business.
60%

Reduction in Fraud-Related Costs

Through superior detection and automation, we saved on direct fraud losses and associated operational overhead.
100ms

Real-Time Decisioning

Allowing for instant approvals and rejections without slowing down the user journey.
<2%

False Positives

Ensuring legitimate customers enjoy a seamless experience without being incorrectly flagged or deterred.

OUR SERVICES

Our Fraud Detection and Monitoring Capabilities

Real-Time Transaction Scoring

Every transaction is scored within the authorization window — under 100ms from submission to decision. Fraud is stopped before it completes, not identified after funds have moved.

Behavioural Analysis with 200+ Features

Device identity, session velocity, transaction sequencing, cross-channel activity, and historical baseline comparisons — 200+ signals extracted per transaction. The breadth of signal is what separates a genuine customer making an unusual transaction from a fraudster making the same one.

Device Fingerprinting and Velocity Checks

Device fingerprinting tracks behavioural consistency between sessions. Velocity checks run across multiple time windows simultaneously — catching structuring patterns that fall below single-window thresholds

Gradient Boosting and Deep Learning Ensemble

Gradient Boosting performs well on structured tabular features. Deep Learning captures non-linear interaction patterns between features that tree-based models miss. H2o.ai AutoML selects and combines the architectures that perform best on your specific transaction data.

Continuous Learning Feedback Loop

Confirmed fraud outcomes and false positive corrections feed back into model retraining — so the model stays current as fraud patterns evolve without a manual rule update cycle.

TECHNICAL HIGHLIGHTS

RegTech & Compliance Automation by Engineers Who Have Delivered 1000+ Projects

h2o.ai AutoML for Model Selection

Ensure your fraud detection always uses the highest-performing algorithm for your specific transaction data without manual tuning.
h2o.ai AutoML for Model Selection

Real-Time Inference with Redis Caching 

200+ Engineered Behavioral Features 

Kafka for Event Streaming

SHAP Values for Model Explainability

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  • End-to-end digital transformation services

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WeworkSKFDardenOlive GardenGoosehead InsuranceThyrocare
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What You Need to Know

FAQs About Our Fraud Detection and Monitoring Services

Manual model configuration requires a data scientist to make architecture and hyperparameter decisions based on prior experience with similar datasets. Those decisions are reasonable starting points but are not optimized for the specific transaction distribution, fraud pattern mix, and feature set of the deployment in question. AutoML runs a systematic search across candidate architectures and hyperparameter configurations, evaluating each against held-out validation data from the actual deployment dataset. The selected configuration is the one that produces the best accuracy-to-false-positive trade-off for that specific data — not the one that performed best on a generic fraud benchmark. The difference in production accuracy between a manually configured model and an AutoML-optimized one compounds over time as the deployment dataset grows.