Opening Cross: Utilities Will Get Data Management Out of the Closet… And to the Dry Cleaners
Why duplicate efforts that don't add value?
In fact, it was at APFIC a few years ago that a panel of data professionals clearly enunciated why they so often get stuck with tasks relating to new regulations and compliance requirements, rather than their colleagues in risk management or compliance. The reason, they said, is that regulatory issues are generally data issues, and functions such as reporting and proving compliance are straight-up data issues, where a firm must delve into its databases, capture the correct data points and present them in a usable way. To do this for the plethora of complex regulations out there, firms can’t rely on manual processes—that’s simply too repetitive and time-consuming. What they need is better data governance strategies to ensure data is not just stored, but also properly managed, indexed, cross-referenced, etc., to make it usable. It’s one thing to meet a requirement that data must be stored indefinitely, but quite another that the data should be usable and that you should be able to present specific data points within a set time.
This kind of governance structure isn’t just a requirement for regulatory compliance, though that may have driven most of the spend in these areas over the past few years; it’s also a necessity to be able to leverage Big Data and the kinds of analytics now becoming more commonplace in different areas of the financial markets (see Charles Fiori’s Open Platform elsewhere in this issue). Think of all your data as an enormous collection of clothes in a tiny closet: without a good structure for organizing them, how can you expect to find an item, let alone find the matching sets, or to create a properly coordinated outfit?
However, there are many aspects of data management that don’t add any competitive advantage, such as basic instrument data management, and cleansing and scrubbing. Think of these as your dry cleaning: it’s inefficient for most people to have a massive dry cleaning machine at home, so we have someone else do it. And the data world is now becoming more open to sending out its cleaning—quite literally—with the emergence of the new Securities Product Reference Data initiative, spearheaded by SmartStream Technologies, Goldman Sachs, JP Morgan and Morgan Stanley.
For a detailed discussion of SPReD and other utility-related issues, check out the special report on the topic that will be distributed with the November edition of Inside Reference Data. The argument for a utility approach is that a single entity can perform the same role that is currently duplicated across each and every financial firm—all of whom have to ensure clean and accurate instrument data and have to prepare data for regulators—but can leverage economies of scale and eliminate those duplicative efforts and costs. These tasks are non-competitive, and add no revenue stream, so why keep them in-house? The challenge to a utility achieving its aims will be how open data providers are to implementing flexible commercial models to reflect a utility rather than many individual consumers. But either way, firms should still save on the cost of resources.
So in future, regional offices with smaller budgets and staff should be able to take advantage of utilities to focus on other initiatives—either making money from new product development, or saving money through cost management—that do make a difference to their bottom line.
Only users who have a paid subscription or are part of a corporate subscription are able to print or copy content.
To access these options, along with all other subscription benefits, please contact info@waterstechnology.com or view our subscription options here: https://subscriptions.waterstechnology.com/subscribe
You are currently unable to print this content. Please contact info@waterstechnology.com to find out more.
You are currently unable to copy this content. Please contact info@waterstechnology.com to find out more.
Copyright Infopro Digital Limited. All rights reserved.
As outlined in our terms and conditions, https://www.infopro-digital.com/terms-and-conditions/subscriptions/ (point 2.4), printing is limited to a single copy.
If you would like to purchase additional rights please email info@waterstechnology.com
Copyright Infopro Digital Limited. All rights reserved.
You may share this content using our article tools. As outlined in our terms and conditions, https://www.infopro-digital.com/terms-and-conditions/subscriptions/ (clause 2.4), an Authorised User may only make one copy of the materials for their own personal use. You must also comply with the restrictions in clause 2.5.
If you would like to purchase additional rights please email info@waterstechnology.com
More on Data Management
Where have four years of Cusip legal drama gone?
The IMD Wrap: The antitrust case against Cusip Global Services has been a long, winding road. Reb recaps what you might have missed.
LSEG files second motion to dismiss lawsuit with MayStreet co-founder
Exchange group has denied abandoning the MayStreet business in a new filing, responding to allegations put forward by former MayStreet CEO Patrick Flannery.
‘The end of the beginning’: Brown Brothers Harriman re-invents itself
Voice of the CDO: Firms who want to use AI successfully better start with their metadata, says BBH’s Mike McGovern and Kevin Welch.
Editor’s Picks: Our best from 2025
Anthony Malakian picks out 10 stories from the past 12 months that set the stage for the new year.
Market data costs defy cyclicality
Trading firms continue to grapple with escalating market data costs. Can innovative solutions and strategic approaches bring relief?
LSEG partners with Citi, DTCC goes on-chain, AI on the brain, and more
The Waters Cooler: Trading Technologies buys OpenGamma, CT Plan updates, and the beginning of benchmarking in this week’s news roundup.
AI & data enablement: A looming reality or pipe dream?
Waters Wrap: The promise of AI and agents is massive, and real-world success stories are trickling out. But Anthony notes that firms still need to be hyper-focused on getting the data foundation correct before adding layers.
Data managers worry lack of funding, staffing will hinder AI ambitions
Nearly two-thirds of respondents to WatersTechnology’s data benchmark survey rated the pressure they’re receiving from senior executives and the board as very high. But is the money flowing for talent and data management?