Detect suspicious, potential money laundering activity faster and more precisely with AI.
Focuses on retail and commercial banking
Designed to support model governance requirements in financial services
Explainable to analysts, risk managers, and auditors
Adopted in production as system of record in multiple jurisdictions for transaction monitoring
Supports customer extensible data and features
Benefits
Increased risk detection
Detect nearly 2-4x1 more confirmed suspicious activity, strengthening your anti-money laundering program.
1As measured by HSBC
Lower operational costs
Eliminate over 60% of false positives1 and focus investigation time on high-risk, actionable alerts.
1As measured by HSBC
Robust governance and defensibility
Gain auditable and explainable outputs to support regulatory compliance and internal risk management.
Key features
AI-powered transaction monitoring can replace the manually defined, rules-based approach and harness the power of financial institutions’ own data to train advanced machine learning (ML) models to provide a comprehensive view of risk scores.
Tapping into a holistic view of your data, the model directs you to the highest weighted money laundering risks by examining transaction, account, customer relationship, company, and other data to identify patterns, instances, groups, anomalies, and networks for retail and commercial banks.
Each score provides a breakdown of key risk indicators, enabling business users to easily explain risk scores, expedite the investigation workflow, and facilitate reporting across risk typologies.
What's new
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Documentation
AML AI is designed with your customers' data in mind. It supports security features like data residency and access transparency.
AML AI provides a simple JSON HTTP interface that you can call directly.
Learn more about the schema and data input requirements for AML AI.
Pricing
Anti Money Laundering AI has two pricing components:
1) AML risk scoring is based on the number of banking customers the service is used for, billed on a daily basis
2) Model training and tuning is based on the number of banking customers used in the input datasets
Contact sales for full pricing details.
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