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

The Opportunities and Challenges of Entity Data Quality

Subscribe to our newsletter

The challenges and opportunities of entity data quality were discussed during a recent A-Team Group webinar entitled ‘Four categories of entity data quality management’. The webinar was sponsored by Kingland Systems, moderated by A-Team editor Sarah Underwood, and joined by Sean Taylor, executive director at Canaccord Genuity Group; Tony Brownlee, a partner at Kingland; and John Yelle, executive director of enterprise data management at DTCC.

The webinar kicked off with an audience poll questioning how well organisations understand the scale of their entity data quality challenge. The results of the poll showed 21% of respondents understanding very well and having a systematic approach to measuring entity data quality, 19% having no means to measure entity data quality, and a large percentage hovering in the middle having completed a one-off assessment.

Considering these responses, the panel went on to discuss the importance of entity data quality to firms’ strategies and revenues, but also to wider financial stability. Looking at the challenges of entity data quality, it noted data inconsistency, duplication, coverage and classification, as well as problems caused by legacy systems and difficulties around managing and maintaining entity hierarchy data.

Moving on, the conversation turned to issues around managing multiple entity identifiers, including Legal Entity Identifiers (LEIs), and cross-referencing them with other identifiers and securities. The panel saw a solution to these issues if the LEI is adopted across the industry and also suggested much can be achieved through good governance and control.

Addressing new approaches to entity data quality measurement and management, the panel suggested firms that have executed Know Your Customer (KYC) and client onboarding processes well have a good foundation to build on. An ongoing process of assessing, remediating, enriching and maintaining entity data was also noted as a means of improving quality, along with emerging technologies such as cognitive processing, robotics and artificial intelligence.

A final audience poll considered the benefits of entity data quality measurement and management. The results showed the majority of respondents achieving some business and operational benefits, and a minority achieving significant benefits.

Listen to the webinar to find out more about:

  • Requirements for entity data quality
  • Challenges of achieving quality
  • Approaches to improvement
  • Technology support
  • Beneficial outcomes

You can also find out more by reading the Kingland White Paper Entity Data Quality: New Approaches and the Four Categories of Data Quality Management here.

Subscribe to our newsletter

Related content

WEBINAR

Recorded Webinar: Unlocking value: Harnessing modern data platforms for data integration, advanced investment analytics, visualisation and reporting

Modern data platforms are bringing efficiencies, scalability and powerful new capabilities to institutions and their data pipelines. They are enabling the use of new automation and analytical technologies that are also helping firms to derive more value from their data and reduce costs. Use cases of specific importance to the finance sector, such as data...

BLOG

Growing Modern Data Platforms Adoption Seen as Benefits Become Apparent: Webinar Review

Take-up of modern data platforms (MDPs) is expected to accelerate in the next few years as financial institutions realise the greater agility, scalability and deeper insights offered by the innovation. Organisations that have so far been relatively slow to adopt the streamlined platforms – because they have been unsure of the technologies’ benefits – will...

EVENT

AI in Data Management Summit New York City

Following the success of the 15th Data Management Summit NYC, A-Team Group are excited to announce our new event: AI in Data Management Summit NYC!

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,...