ARTIFICIAL INTELLIGENCE · FINTECH

FinTech AI Fraud Detection Platform

A leading financial services group in the Middle East engaged
Modgenix to design and deploy an enterprise AI fraud detection
and financial risk intelligence platform. The client — whose
identity is protected under a strict confidentiality agreement
— processes over $2.4 billion in transactions annually across
retail banking, corporate lending, and digital payment services.
Their existing rule-based fraud detection system was generating
unacceptable false positive rates, blocking legitimate customer
transactions and damaging customer satisfaction scores while
simultaneously missing increasingly sophisticated fraud patterns.

Modgenix delivered a custom machine learning fraud detection
system that learns continuously from transaction patterns,
adapts to emerging fraud techniques in real time, and reduces
false positives by 78% while simultaneously improving actual
fraud detection accuracy by 94%. The platform processes
over 50,000 transactions per second at sub-50ms latency —
meeting the most demanding real-time banking requirements.

Name:

Private Client — FinTech Enterprise

Categories:

AI & Machine Learning · FinTech · Cloud

Location:

Confidential — Middle East

Date:

January 2025

Status:

Ongoing Partnership

Duration:

08 Months

Working Process

Challenge of this Case


The core challenge was building an AI system accurate enough
to detect sophisticated fraud patterns — including synthetic
identity fraud, account takeover, and coordinated transaction
laundering — while dramatically reducing the false positive
rate that was blocking legitimate customer transactions and
generating significant customer service overhead.

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Services Delivered ​

Key Results​

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FAQ

Frequently asked questions

Everything you need to know about working with Modgenix — from how we engage to how we deliver results across every service we offer.

Financial institutions in the Middle East often require strict confidentiality agreements for technology partnerships involving core banking systems and fraud infrastructure — both for competitive reasons and to prevent malicious actors from gaining knowledge of specific detection capabilities. Modgenix respects and fully honours all client confidentiality agreements as a core operating principle.
The fraud detection system uses an ensemble approach combining XGBoost gradient boosting for structured transaction feature scoring, a deep neural network for sequential transaction pattern recognition, and a graph neural network for detecting coordinated fraud rings through relationship analysis across account networks — all combined through a meta-learner that optimizes the final risk score.
The platform includes a continuous learning pipeline that ingests newly confirmed fraud cases weekly and retrains relevant model components on a rolling basis. Additionally, our fraud intelligence team monitors global financial crime trends and proactively updates the feature engineering pipeline when new fraud techniques are identified — keeping the detection capability ahead of evolving criminal methods.
The entire platform architecture was designed from the ground up for PCI DSS Level 1, GDPR, and local Central Bank data residency requirements. All transaction data is processed and stored within the client's designated geographic boundary, encrypted at rest and in transit, and subject to comprehensive access audit logging with tamper-evident storage.
Yes — explainability was a non-negotiable requirement. Every risk score generated by the system is accompanied by a ranked list of the top contributing risk factors in plain language — allowing fraud analysts to immediately understand why a transaction was flagged, make informed override decisions, and provide compliant documentation for regulatory examination of fraud prevention processes.