Client
Banks that have merged or acquired new businesses.
Goal
Manage migration and integration complexity post M&A.
Tools and technologies
The Iris business acquisition playbook for banks.
BUSINESS CHALLENGE
Solution
- Consolidate multiple acquisition playbooks to create a single standardized framework for their lending business
- Define insourcing steps for business and technology teams and create a migration strategy with quantifiable recommendations and a reusable checklist for insourcing activities.
- Assess capability and readiness and help them choose from insourcing options:
- Achieve full migration of data and systems
- Achieve partial migration of systems and data migration and integration
- Manage data integration and connectivity for lending business.
Outcomes
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Get in touchAnti-money laundering: managing regulatory risks
Client
A leading global bank with operations in over 100 countries
Goal
Address data quality and cost challenges of legacy AML application infrastructure
Tools and technologies
Hadoop, Hive, Talend, Kafka, Spark, ETL
BUSINESS CHALLENGE
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.
SOLUTION
Iris developed and implemented multiple AML Trade Surveillance applications and Big Data capabilities. The team designed a centralized data hub with Cloudera Hadoop for AML business processes and migrated application data to the big data analytical platform in the client’s private cloud. Switching from a rule-based approach to algorithmic analytical models, we incorporated a data lake with logical layers and developed a metadata-driven data quality monitoring solution. We 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.
OUTCOMES
The implemented solution delivered tangible outcomes, including:
- Centralized data hub capable of handling 100+ PB of data and ~5,000 users across 18 regional hubs for several countries
- 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 30%
- 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
Related Stories
Gen AI summarization solution aids lending app users
Custom summarization solution using Gen AI eases lenders’ information access, complex app usage, and new user onboarding.
Conversational assistant boosts AML product assurance
Gen AI-powered responses enhance the operational efficiency of the AML global product assurance team and reduce cost.
Automated financial analysis reduces manual effort
Analysts in commercial lending and credit risk units are able to source intelligent information across multiple documents.
Contact
Our experts can help you find the right solutions to meet your needs.
Get in touch