Case Study
Industry
Banking
Location
Global
Our Contributions
AML Transformation, Fraud Detection, Compliance Automation
Technologies
Machine Learning, Behavioral Analytics, Fuzzy Matching
Coforge partnered with a global bank to enhance its Anti-Money Laundering (AML) and compliance capabilities by reducing false positives and improving detection accuracy. The objective was to move beyond traditional rule-based systems and enable intelligent, data-driven monitoring of suspicious activities.
By leveraging machine learning and advanced analytics, Coforge implemented an AI-powered AML solution that improved alert precision, strengthened compliance monitoring, and enhanced operational efficiency. The transformation enabled the bank to detect complex behavioral patterns more effectively while ensuring alignment with regulatory requirements.

The bank’s AML processes were heavily reliant on rule-based detection systems, resulting in a high volume of false positives and inefficient investigation workflows. Complex customer behavior patterns were difficult to detect using static rules, limiting the effectiveness of fraud detection.
Additionally, the lack of advanced analytics and behavioral insights made it challenging to identify suspicious activities accurately. Compliance monitoring required integration with multiple regulatory databases, adding further complexity to the process.
The organization required a more intelligent, scalable solution to reduce false positives, improve detection accuracy, and strengthen compliance capabilities while optimizing operational efficiency.
-72%
Reduction in False Positives
+6%
Improvement in Fraud Detection Rate
Improved
AML Investigation Efficiency
Enhanced
Compliance Monitoring Accuracy