About a-team Marketing Services
The knowledge platform for the financial technology industry
The knowledge platform for the financial technology industry

A-Team Insight Blogs

ASG Announces New Model for Data Intelligence

Subscribe to our newsletter

ASG Technologies, at its annual EVOLVE customer conference held in Florida last week, announced a dynamic new trust scoring capability for ASG Data Intelligence, its metadata management solution, designed to help Chief Data Officers provide self-service access to trusted data.

With a (patent pending) trust model, the new solution will help data consumers to identify and understand available data and evaluate its potential fit and value for both human and artificial intelligence/machine learning-driven analytics.

As part of its process to develop the new product, the firm conducted market research to explore how organizations think about trust, which factors are the most objective and relevant for measuring trust, and which barriers make understanding data difficult.

Trust historically relies on data quality measures, stakeholder collaboration and crowdsourced reviews. While relevant, this can lead to a partial and even biased understanding of data, where the business impact of trying to use data that is of poor quality or fit isn’t realized until well into the analytics.

“Our analysis concluded, among other things, that trust is multi-faceted, it’s organic and evolves over time, and a “one size fits all” approach for enterprises and their data is impractical,” says ASG.

Instead, the firm attempted to define a next-generation trust model for data understanding – where a data item’s trust is dynamically computed based on the value of one or more facets whose values are determined by logic and metrics within (or external to) the Data Intelligence solution.  Trust scores are measured over time and rich policies drive automated actions such as instantiating workflow when a score falls below (or rises above) a threshold.

“Data management leaders are investing in people, processes, and technologies serving both offensive and defensive data strategies,” says Marcus MacNeill, Senior Vice President of Product Management at ASG. “Data consumers, from data analysts to data scientists with diverse analytics goals and data literacy skills, need to confidently understand and assess available data.”

Subscribe to our newsletter

Related content

WEBINAR

Recorded Webinar: End-to-End Lineage for Financial Services: The Missing Link for Both Compliance and AI Readiness

The importance of complete robust end-to-end data lineage in financial services and capital markets cannot be overstated. Without the ability to trace and verify data across its lifecycle, many critical workflows – from trade reconciliation to risk management – cannot be executed effectively. At the top of the list is regulatory compliance. Regulators demand a...

BLOG

Aumni Acquisition Thrusts CUSIP into Private Markets Space

CUSIP Global Services (CGS) has agreed a deal with data provider Aumni to bring yet more transparency to rapidly growing and economically important private markets. The venerable provider of issuer and asset identifiers will use Aumni’s data, drawn from charter documents for venture capital firms, to create a set of its CUSIP identification codes for...

EVENT

TradingTech Summit New York

Our TradingTech Briefing in New York is aimed at senior-level decision makers in trading technology, electronic execution, trading architecture and offers a day packed with insight from practitioners and from innovative suppliers happy to share their experiences in dealing with the enterprise challenges facing our marketplace.

GUIDE

Regulatory Data Handbook 2025 – Thirteenth Edition

Welcome to the thirteenth edition of A-Team Group’s Regulatory Data Handbook, a unique and practical guide to capital markets regulation, regulatory change, and the data and data management requirements of compliance across Europe, the UK, US and Asia-Pacific. This year’s edition lands at a moment of accelerating regulatory divergence and intensifying data focused supervision. Inside,...