+
HGS Launches AI-Powered AMLens For Faster AML Operations
Technology

HGS Launches AI-Powered AMLens For Faster AML Operations

HGS, a provider of digital experience, business process management and digital media services, has launched AMLens, an AI-powered solution aimed at transforming and accelerating anti-money laundering operations for financial institutions.

AMLens integrates machine learning and natural language processing to reduce case analysis time and false positives, helping banks meet stringent regulatory requirements while improving investigator productivity. The platform is designed to treat artificial intelligence as an evolving practice rather than a static system, addressing industry challenges such as manual case resolution, alert fatigue and gaps in regulatory alignment.

The solution supports AML teams across detection, triage, contextualisation and summarisation through a modular and explainable AI framework. It automates the collection and consolidation of fragmented data, ranging from structured transaction records to unstructured notes and external public sources, into a single, analyst-friendly view.

Built on a modular, API-first architecture, AMLens can be integrated with existing client systems and is targeted at financial services segments including retail and consumer banking, payments and fintech, credit cards and lending, and wealth management.

Commenting on the launch, Eric Purdum, Head of Sales – Americas at HGS, said legacy AML systems overwhelm analysts with false positives and fragmented information, limiting their ability to act quickly. He added that AMLens combines explainable AI with human-in-the-loop validation to automate routine tasks such as transaction monitoring, sanctions screening and customer due diligence, enabling analysts to focus on high-priority investigations.

Early client deployments have demonstrated strong performance improvements. Case analysis time has been reduced by around 75 per cent, from approximately two hours to about 30 minutes, while false positives have fallen by more than 60 per cent, from about 18 per cent to 7 per cent. Investigator productivity has increased threefold, from an average of eight cases per day to 24 cases per day, with overall turnaround times improving by 75 per cent, from 48 hours to 12 hours.

A key feature of AMLens is its integration of AI-generated narratives with human oversight. When a third-party system flags suspicious activity, AMLens applies risk categorisation, enables analysts to request additional information within the workflow, and supports escalation through AI-assisted suspicious activity report preparation. This approach preserves human judgement while streamlining workflows, reducing end-to-end case resolution time to under an hour.

HGS, a provider of digital experience, business process management and digital media services, has launched AMLens, an AI-powered solution aimed at transforming and accelerating anti-money laundering operations for financial institutions. AMLens integrates machine learning and natural language processing to reduce case analysis time and false positives, helping banks meet stringent regulatory requirements while improving investigator productivity. The platform is designed to treat artificial intelligence as an evolving practice rather than a static system, addressing industry challenges such as manual case resolution, alert fatigue and gaps in regulatory alignment. The solution supports AML teams across detection, triage, contextualisation and summarisation through a modular and explainable AI framework. It automates the collection and consolidation of fragmented data, ranging from structured transaction records to unstructured notes and external public sources, into a single, analyst-friendly view. Built on a modular, API-first architecture, AMLens can be integrated with existing client systems and is targeted at financial services segments including retail and consumer banking, payments and fintech, credit cards and lending, and wealth management. Commenting on the launch, Eric Purdum, Head of Sales – Americas at HGS, said legacy AML systems overwhelm analysts with false positives and fragmented information, limiting their ability to act quickly. He added that AMLens combines explainable AI with human-in-the-loop validation to automate routine tasks such as transaction monitoring, sanctions screening and customer due diligence, enabling analysts to focus on high-priority investigations. Early client deployments have demonstrated strong performance improvements. Case analysis time has been reduced by around 75 per cent, from approximately two hours to about 30 minutes, while false positives have fallen by more than 60 per cent, from about 18 per cent to 7 per cent. Investigator productivity has increased threefold, from an average of eight cases per day to 24 cases per day, with overall turnaround times improving by 75 per cent, from 48 hours to 12 hours. A key feature of AMLens is its integration of AI-generated narratives with human oversight. When a third-party system flags suspicious activity, AMLens applies risk categorisation, enables analysts to request additional information within the workflow, and supports escalation through AI-assisted suspicious activity report preparation. This approach preserves human judgement while streamlining workflows, reducing end-to-end case resolution time to under an hour.

Next Story
Infrastructure Transport

Lucknow Metro East-West Corridor Consultancy Contract Awarded

The Uttar Pradesh Metro Rail Corporation has awarded the first construction-related consultancy contract for the Lucknow Metro East West Corridor to a joint venture of AYESA Ingenieria Arquitectura SAU and AYESA India Pvt Ltd. The firm was declared the lowest bidder for the Detailed Design Consultant contract for Lucknow Metro Line-2 under Phase 1B and the contract was recommended following the financial bid. The contract is valued at Rs 159.0 million (mn), covering design services for the corridor. Lucknow Metro Line-2 envisages the construction of an 11.165 kilometre corridor connecting Cha..

Next Story
Infrastructure Urban

Div Com Kashmir Urges Fast Tracking Of Jhelum Water Transport Project

The Divisional Commissioner of Kashmir has called for the fast-tracking of the Jhelum water transport project, urging district administrations and relevant agencies to accelerate planning and clearances. In a meeting convened at the divisional headquarters, the commissioner instructed officials from irrigation, public health engineering and municipal departments to prioritise the project and coordinate survey and design work. The directive emphasised removal of administrative bottlenecks and close monitoring to ensure timely mobilisation of resources and contractors. Officials were told to in..

Next Story
Infrastructure Urban

Interarch Reports Strong Q3 And Nine Month Results

Interarch Building Solutions Limited reported unaudited results for the third quarter and nine months ended 31 December 2025, recording strong revenue growth driven by execution and a robust order book. Net revenue for the third quarter rose by 43.7 per cent to Rs 5.225 billion (bn), compared with Rs 3.636 bn a year earlier, reflecting heightened demand in pre-engineered building projects. The company’s total order book as at 31 January 2026 stood at Rs 16.85 bn, supporting near-term visibility. EBITDA excluding other income for the quarter increased by 43.2 per cent to Rs 503 million (mn),..

Advertisement

Subscribe to Our Newsletter

Get daily newsletters around different themes from Construction world.

STAY CONNECTED

Advertisement

Advertisement

Advertisement

Open In App