The client’s legacy AML application infrastructure was leading to data acquisition, quality assurance, data processing, AML rules management and reporting challenges. High data volume and rules-based algorithms were generating high numbers of false positives. Multiple instances of legacy vendor platforms were also adding to cost and complexity
- The team designed a centralized data hub with Cloudera Hadoop for AML business processes and migrated application data to the big data analytical platform on private cloud.
- Switching from a rule-based approach to algorithmic analytical models.
- Incorporated a data lake with logical layers and developed a metadata-driven data quality monitoring solution.
- Enabled the support for AML model development, execution and testing/validation, and integration with case management.
- Our data experts also deployed a custom metadata management tool and UI to manage data quality.
- Data visualization and dashboards were implemented for alerts, monitoring performance, and tracking money laundering activities.
- Centralized and uniformed data hub capable of handling 100+Pb of data and ~5,000 users across 18 regional hubs for several countries
- Data Ingestion of 30+ million transactions per day from different sources
- Greater insights with scanning of 1.5+ Billion transactions every month
- False positives reduced by over 40%
- AML data storage cost reduced to <10 cents per GB per year
- Extended support to multiple countries and business lines across six global regions; legacy instances reduced from 30+ to <10