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

Kavach 4.0 Commissioned on Delhi–Mumbai and Delhi–Howrah

"Kavach version four has been commissioned on 1,452 route km, covering the high density Delhi–Mumbai and Delhi–Howrah corridors. The rollout included laying 8,570 km of optical fibre, installation of 1,100 telecom towers, deployment of trackside equipment over 6,776 RKm and establishment of 767 station data centres. Trackside implementation has been taken up on 24,427 RKm covering Golden Quadrilateral, Golden Diagonal and High Density Network sections. The programme aims to strengthen signalling and train protection on key routes.Kavach is an indigenously developed automatic train protecti..

Next Story
Infrastructure Transport

Railways Advance Kalyan–Murbad Line And Mumbai Capacity Expansion

"Indian Railways is advancing multiple rail infrastructure projects in Maharashtra, including the sanctioned Kalyan–Murbad new line and sizable investments under the Mumbai Urban Transport Project and the Mumbai–Ahmedabad High Speed Rail project. The Kalyan–Murbad 28 km new line has been sanctioned at Rs 8.36 billion (bn) on a 50:50 cost-sharing basis with the Government of Maharashtra and has been declared a Special Railway Project for land acquisition; proposals covering 214 hectares are at various stages of acquisition. Budgetary outlay for projects falling fully or partly in Maharash..

Next Story
Infrastructure Urban

Parliamentary Panel Flags Funding Gaps in Heavy Industries

"The Department-Related Parliamentary Standing Committee on Industry (Rajya Sabha) presented its 332nd report on the Demands for Grants 2026-27 of the Ministry of Heavy Industries (MHI). Figures converted from crore and lakh are expressed in million (mn). The Budget Estimates 2026-27 for the Ministry stand at Rs 79,399 mn against a projected requirement of Rs 94,843.2 mn, a shortfall of about 16 per cent, with revenue at Rs 79,370.8 mn and capital compressed to Rs 28.2 mn from Rs 5,020 mn.The committee flagged recurring BE-to-RE compression and declining revised estimate utilisation, and calle..

Advertisement

Subscribe to Our Newsletter

Get daily newsletters around different themes from Construction world.

STAY CONNECTED

Advertisement

Advertisement

Advertisement