Own up! Who wants to take on ownership of data?

April 24, 2013

In a recent blog data governance is not data management I recounted some interesting insights from a panel I sat on at TSAM 2013 in London. On the same panel there was also some other interesting topics discussed – one that sticks out related to ownership of data and where is should sit in an organization, be that from a management or governance perspective..

Steve Clark had some interesting take away’s, he stressed how it is important to have “different owners for different (data) types” or domains of responsibility. Specifically he referenced the need for IT ownership and involvement of technology teams in taking ownership for the movement and delivery of data from source to consumer, while at the same time requiring ownership from business for the semantics of the data. This ties in well with my own well published views on ownership and stewardship models. In my opinion it is not just about driving ownership to data source. Today in asset management firms I am firmly of the opinion that the ownership and stewardship models need to be multi-tiered. As data passes through the firm from back-, to middle- to front- office, it starts to snowball in terms of added meaning, enrichment, added value  and increased importance. Typical operating models I see today have owners and stewards ranging from; IT for data delivery to schedule and agreed formats, to data domain specialists for specific data domains across many products, to product specialists that work across multiple data domains for single products, on to front-office specialists such as portfolio managers, or indeed distribution IT specialists involved in delivering data to market. So in effect ownership and accountability needs to follow the nested layers within the back to front publication cycles that so often permeate asset management firms.

Phil Tattersall had some interesting points too – he stressed the importance of “establishing the concept of data ownership” early, and how important it is in the overall scheme of setting up an effective governance structure. Another interesting anecdote from Phil was “ownership helps shift the attitude towards data management” – this was specifically with reference to getting C-Level engagement. My own view here is that ownership top-down is as important as bottom-up, i.e. you cannot neglect one to the detriment of the other. You cannot gain any traction in driving ownership if you are not working it top-down and gaining C-level buy-in and engagement, at the same time you need to be working the process bottom-up to reach the parts of the organization that are handling and managing data as their one and only focus.

I think it is fair to say all the  panellists agreed that getting ownership and accountability is one of the toughest tasks in any program of governance you are trying to gain traction with. The key problem being finding people who WANT to own data. A couple of pointers came up – it is your job to sell the reasons why ownership will help drive the program forward, you need to find those people in your organization that eat, breath and live data and do not fear ownership – but most importantly you need to break down the perceived fears people associate with data ownership!


Data governance is not data management

April 17, 2013

I was on a panel at the recent TSAM UK 2013 conference in London – where the topic was “Good data governance – the challenges for the business“.

On the panel I was joined by Phil Tattersall (Simitas), Steve Clark (KPMG) and Andrew Barnett (Friends Life Investments), our moderator was Chris Johnson of HSBC Security Services.

One of the topics we discussed on the day was around governance frameworks, what had we seen in practice that worked and to what extent was governance being driven by business (as opposed to IT).

One of Phil’s comments still resonates with me today “Data governance is not data management” – why so? …unfortunately the perception that governance = management is something I come across too often. Data governance is what ensures that data management happens properly i.e. in a way that is aligned with the original goals and terms of reference for the initiative under way. Data management professionals need to clearly understand the difference between governance, stewardship and architecture!

Another of Phil’s points was also very salient  ”treat data as an asset”  any of you that read the recent Citisoft white paper “Data is the new oil” will see the connection – data is something we need to value, it can often be presented in a very raw form, and like oil, it requires careful refinement to extract maximum value. I am fan of the data and oil metaphor myself – from a slightly different angle though, I often refer to data being the oil in the distribution engine for investment managers – feed the engine with poor quality oil (data) and within a short space of time that engine will seize up.

Steve also had some good points in the above discussion, he stressed the importance of setting out the “policy and procedures in governance” and the criticality in “defining good data quality” and the measurement and feedback that should exist in your process management framework to drive improvement.

With respect to whether governance should be driven by business or IT, Andrew indicated that in his business “data teams are made up of business people” – myself and the rest of the panellists agreed that data governance initiatives should be driven by business, but that clearly IT have a role to play and their involvement will always help.

My own view was that frameworks for governance are important, in the sense a framework is anything that providers structure and guidance to the application of governance to any data management initiative. This ‘structure and guidance’ can take the form of technology that assists the empowering of the stewards to manage data in line with the stated strategies and principles as laid out by governance.  Technology can also assist in  driving ownership, accountability and transparency into the process. The key point though is not to overly rely on technology. Technology does not fix bad quality data – that is what good data management professionals do – we just need to enable them to do their job more effectively.


Thoughts on Data Governance

June 21, 2012

Last month I participated at a panel discussion at Osney Media’s Data Management North America conference in New York. I always enjoy these panel discussions, as they present an opportunity to meet industry peers and also to find out what people in the industry are concerned about. My fellow panelists at the event included:

Lee Kenyon, Vice President, Data Governance, Eaton Vance Management Inc.
Nick Eisenlau, Senior Consultant, Cutter Associates
David Bates, Principal, Citisoft
Danielle Newland, Data Management Product Manager, Eagle Investment Systems

and the discussion was moderated by John Bottega, Chief Data Officer, Bank of America

After the initial introductions, John went round the table asking what data governance meant to different people. Overall, there was a consensus that the definition of governance was establishing a framework for decision-making process and authority in order to implement data strategy. It should be treated as a project not a program and so it needs constant adaptation. Anyone who treats it as a project will fail…

John went on to ask opinions about how data management had changed from being technology driven to being more business driven. The main reason for this is around business risk – if C level start getting different information from different sources, they may begin to wonder if they know what’s really going on in the organisation. Historically, IT drove data management initiatives. There was a huge spend in the past but did the business benefit  at all? Technology is important but you also have to demonstrate the business value and technology should support rather than drive the business.

So now that we had defined data governance and the drivers, we started talking about how you create a sustainable data governance program?

The best approach is to not try to do everything at once..  pick a project and start with that. But you need to get people bought in. You need involvement across the business, and you can do this by making it about them achieving their business goals and linking it to risk, rewards and returns. We then began to talk about the carrot and the stick approach… the problem is that we know the sticks are out there but we don’t know how big they are or how close they are. For example, people are gearing up for regulation but as many of the regulations haven’t been implemented yet, they are not sure what the impact will be.

And of course, you need to think about who should be responsible for running data governance. Should it be business, technology or operations? Most of the panel agreed that it should be the business .. they are responsible for revenue growth and also for managing risk.  But many organisations still don’t have formal data governance in place – the panel agreed that if regulatory controls are enforced you will see a bigger trend towards data governance. I agree with that and am somewhat cynical that people are taking governance seriously. Not enough people are walking the walk but lots of people are talking about it. Solvency II in Europe is really driving data governance though and will definitely set trends for the future.


Thoughts from TSAM (Part 2)

March 26, 2012

Following my most recent blog on the panel discussion held at TSAM in London recently, I thought I would add some further notes on the discussion. We had talked about buzzwords used and then about data governance… The theme of the discussion then switched to the risks you’re exposed to from miscommunication of information or data – the commentary is really as you would expect:

• Fines from regulators

• …which can lead to brand damage

• …which can lead to loss of clients and mandates

• …which does lead to outflows

• …which does directly impact your bottom line

Of course, the point was made that you do not need be fined by the regulator to incur the spectre of spectacular outflows – poor data quality in client communications is enough to trigger this alone.

I related a specific story I had been told by a director of institutional sales at a prospect I met in not too distant past, who earlier that month had got through the RFP process for a serious eleven figure mandate, which would generate many tens of millions in fees. So having got through the RFP process, this manager clearly had the right risk/performance figures to meet the minimum hurdle for inclusion in the beauty parade process. The deal was lost though on one critical point – the data presented at the beauty parade on the sales deck was completely at odds with the strategy performance as listed in the RFP response, and yes, they did not win the mandate. If you are handing someone billions and billions to manage you need to build a relationship based on trust and transparency and having inconsistent/inaccurate data leads to total breakdown in trust.

The topic switched again at this point to how can we get IT and business working together more effectively on data management projects. This topic generated lots of interesting viewpoints, which I have summarized here in bullet form:

• Business often gets involved too late – something specific to IT led projects

• There is general consensus that business-led projects are more successful mainly as the requirements are understood earlier in the process

• The project analysts and the project manager need to have strong business domain expertise with a really good understanding of technology to bridge the gaps between two teams

• It is not easy to find analysts with good understanding of IT and business – panelists agreed that the more successful people are those who start in IT and move over to business side.

At this point the discussion started to wrap up after a few questions from the audience and each panelist gave their final thoughts on overcoming the challenges. My own thoughts were that the driver of data management projects is changing, it is no longer fear of fines, it is sales and distribution demanding timely and accurate data. Another viewpoint was that we have to do a better job to remove artificial differences between IT knowledge and business knowledge, greater effort is required to try and get people to understand each other’s point of view. As data management projects are getting more complex, clear objectives and accountability are key success factors, we have to get the right stakeholders involved and use the right language. Finally, one of the panelists said we should not see data governance as a cost!

It was a great session, and I really enjoyed sharing views with the other participants on the panel. I look forward to the next one in New York on May 16th.


Recent Panel Discussion at TSAM USA

July 29, 2011

July has been a busy month with client engagements and travel but I wanted to add a blog about the event I attended in New York in mid July.

Many people will be familiar with TSAM, the annual buy-side technology and operations event, which is usually attended by senior operations, marketing and IT executives. I always enjoy these industry events as they offer a great opportunity to network and catch up with people in the industry as well as finding out about the latest trends and developments.

I had the pleasure of participating in a panel discussion on “Critical issues in data management” together with industry veterans: Regina Trach, VP Marketing Services at J.P. Morgan Asset Management, Gerard Walsh, Head of Delivery, Global Strategic Solutions at Schroder Investment Management, and David Bates, Principal at Citisoft. The discussion was moderated by Uday Singh, CEO of Osney Media. It was only supposed to go on for 30 minutes but ended up stretching into an hour as there were so many questions and such a lot to talk about.

Initially, we focused on what the key issues were in the data management area, with most of the panel agreeing that drivers for data management projects centred around managing risk, complying with regulation and also managing the data “overload” – what to push out, when, and to whom. Gerard from Schroders said that as clients became ever more demanding, they needed to get timely and accurate data as fast as possible in whatever way they wanted it whether in person, in a report, on a web page or as an app on an iPad. J.P. Morgan recently launched an iPad app for advisers and feedback has been phenomenal. But, getting information to devices is a major data and integration challenge.

In terms of regulation, one of the concerns is that asset managers know there will be demands for transparency but don’t know what they will be. They are wary of the SEC and FINRA and what they will actually be looking for. The SEC is likely to take information and fact sheets from an organization’s website and compare it – and will want to ensure it’s all accurate. They will also want to know historical information e.g.”can you show me what your website looked like on April 11th, 2009″? Asset managers still have a business to run and the wall of regulation can be a challenge – but they must be compliant.

We then went on to talk about the amount of data that is available and how accessible it needs to be… With large global asset managers averaging 4.5 million items of data each month, it’s hard to answer the question “Do you know how good the quality of your data is?”  You really need to work out what to push out to your various audiences… this is where using segmentation/ audience management is very powerful. If you have a contact strategy where you test email open and click thru rates, track website visitors and monitor Twitter, you will know who is listening to you and find out what they want to hear. 

We then went on to talk about what is the right material to push out? Should we be reviewing what we need to report on. What do customers need?  We also need to focus on the consistency of information across the organisation e.g. surveys, web presentations. Separate areas of the business are generating data and enabling it to get out. I talked here about how marketing ops have not been well served by IT and there are lots of manual processes involved in getting data to market. If data points are managed on spreadsheets, you have to have proof readers coming in to get material out to market and you have a much higher risk of error. Setting up a data governance process and ensuring that data is corrected at source will help greatly and you won’t end up with marketing teams chasing, checking and keying data at the last minute.  Also, if you automate the process, you will significantly reduce your fact sheet production time.

Then we talked about actually getting data management projects off the ground. It can be quite difficult as often times C level doesn’t realise there is anything wrong with the data. It might be easier to focus on a smaller project first and try building it out from there. For example, for Schroders, the web was a big driver and they wanted to provide their sales force with tools that can help people make investment decisions – having timely, accurate and consistent data available on the web was a key influencer.

The other key influencer will be cloud computing– not just on the entire IT area but on other areas within the organisation e.g. Salesforce.com.  Asset managers are more likely to outsource if it’s not a strategic advantage to do it themselves.

 


Recent Panel discussion at TSAM UK

April 26, 2011

Apologies that I haven’t been blogging for a while… I’ve been travelling a lot and working on some exciting new customer projects (which of course I can’t talk about yet!) but there are a few things I’ve been wanting to post.

About a month ago, I attended Osney Media’s TSAM UK conference in London (March 8th). TSAM has been running for a number of years in the UK and is generally seen as the leading buy-side technology conference. Where possible I enjoy sitting in on panel discussions and this time I participated in one called “Critical Issues for Data Management” – the title is vague enough that the discussion can really go anywhere depending on questions from the audience or an individual panel member’s hobby horse, but I think this one did address many of the key issues that the industry is facing today.

Besides myself, the illustrious panel included: Markus Kohn, Head, Data Management EMEA, UBS Global Asset Management; Jonathan Hammond, Business Technology Practice Leader, Knadel; John Mason, COO, Netik and Jean Williams, VP of Software Solutions, Asset Control.

The session started off with a discussion of the impact of poor data and the answers ranged from a discussion on why data is poor in the first place – e.g. mergers and acquisitions create data problems or data being the poor relation to cost to lack of understanding of data.

Ultimately, most people were in agreement about the impact of poor data – there will be errors and cost implications. The front and middle office depend on getting accurate information to the end client and there could be friction or lack of trust across departments if data is not managed in an efficient manner. Inaccurate data poses a regulatory and reputational risk and any damage to the brand resulting from inaccurate data could be very difficult to repair.  Costs will be driven up – either the cost of fines as a result of publishing incorrect data or the cost of reprints if the data errors are discovered after a report/ factsheet goes to print. Data quality management has a much higher profile across the enterprise nowadays as firms are realising just how important it is.

The discussion then went on to talking about getting buy-in from a senior level to implement a data management programme. Personally, I think it is really important to get buy-in at an early stage – sometimes C level is not aware there is a data problem in the organisation. I think there was general agreement amongst the panellists that a quantifiable business case needs to be put together to convince C level that a data management project is worth the investment. It really is around growing revenue or reducing costs, although increasingly the argument around compliance and regulation is gaining traction. Many large organisations have had to deal with failed IT projects and there is often reluctance to implement large scale IT programs that may be seen to be time-consuming and costly.

The moderator then went on to talking about keeping data management strategic and the best way of doing that – again, people agreed that governance and vision is important but I think that strategy and tactics go hand in hand and that governance and stewardship are very tightly linked. Stakeholders need to see quick wins and want to know the goals of the projects.

Then we talked about different operating models and what might be the best one. Ideally, daily tasks should be off-shored and if you do outsource your data management, you should really be looking at partnership with your provider (or what I often call “with-sourcing). People want to keep control so it is important that the relationship with the vendor does not make them lose that control. We then talked about the ownership process around moving to a different operating model and everyone felt that full transparency was needed as well as governance rules being in place to ensure everyone knows what to expect. Data stewardship needs to be at different level within the organisation but ownership needs to be very clear.

Our final area of discussion was how to solve the meta-data problem. I always talk about the importance of establishing a data dictionary upfront and making sure that everyone is talking about the same language.

 I hope you find this quick summary of the panel discussion interesting, overall it was a great conference and I’m looking forward to participating in the next TSAM event in New York in July.


The survey says…..

June 22, 2010

Over the past six months the team here in MoneyMate carried out a survey which focused on data management issues and challenges facing asset managers. This survey was designed to be a “pulse-check” of the asset management community and examined their attitudes towards a number of issues, in particular data management and outsourcing The survey was primarily run at a number of key industry events including TSAM UK, NICSA’s Annual Conference and ICI’s General Membership Meeting where senior executives gathered to discuss and debate the latest trends..

Survey respondents included executives in various positions at leading asset management firms, including Operations, IT, Distribution and Compliance. The majority (74.2%) of respondents work at organizations managing more than 100 funds.

We issued a press release about the survey results last week and I thought I’d share some of the results on this blog too, as I think it’s quite interesting. The main findings were:

• 50% of respondents named manual processes as the greatest challenge in bringing their product data to market

• 80.7% of respondents are already considering, or would consider outsourcing their data management processes

• 33.3% feel they are currently paying too much to bring their product data to market

The results show the importance of bringing automation into the investment product data management space in order to ensure that timely and accurate data is always available.

I think that the survey results are very much in line with what we are hearing in the market . When I go to events or meet with customers, I am constantly hearing that data quality management is a real issue and that asset managers are frustrated with the time, costs and manual processes involved on a monthly, weekly or quarterly basis. The problem with manual processes is that they are very prone to inaccuracies and inconsistencies and there is no way of guaranteeing that no errors go out to the market. Asset managers are very concerned with potential damage to their reputation if data on their products available in the marketplace is not of the highest possible quality.

Another big driver is regulation. You’ll have seen previous blog posts where I talked about the impact of regulatory scrutiny on data management. We’re definitely seeing evidence that people are really concerned about exposure to the regulator and they want to be able to prove that they have streamlined and watertight processes for all their data management.

Asset managers are showing more willingness to outsource their data management processes also – many recognise that data management is not a core competency. The benefit of outsourcing is that you can outsource to an expert in the field who has done this work for other companies and can offer you an “out of the box” solution that is also easily customisable.

The full press release on the survey is posted on the MoneyMate website.


TSAM 2010: the changing shape of regulatory requirements and the implications for the buy-side

April 1, 2010

As promised in the previous post, here is a synopsis of the second panel I sat on at TSAM recently.

The discussion centered on the changing shape of regulatory requirements and the implications for the buy-side – with specific emphasis on the following points;


TSAM 2010: How to get the message across internally that investment in data management should be done

March 16, 2010

I was at the TSAM (UK) 2010 event that was held on March 9th in London and was lucky enough to get myself onto two of the panel discussions on the data management stream.

The following is a synopsis of discussion one – “How to get the message across internally that investment in data management should be done” – the theme for the discussion was broadly around the following topics

Getting buy-in from the business to enable generation of value for business, where and how?

  • How to get action plans signed off and accepted through the ranks
  • The impact of data quality on exposure to risk, client satisfaction, costs and audit overhead
  • Considerations around outsourcing / off-shoring to create a utility for data management and the cost factor
  • What are the implications of delivering poor quality data to the market?

The panelists were:

  • Hans Lux, Enterprise Data Architect, UBS Global Asset Management
  • Shannon Walker, IT Architect, Deutsche Bank
  • Ronan Brennan, Chief Technology Officer, MoneyMate
  • Colin Close, President, Netik
  • Gerard Walsh, Head of Change Management, Web and CRM, Schroders
  • Danielle Newland, Product Manager, Data Management, Eagle Investment Systems
  • Abbey Shasore, Chief Executive Officer, Factbook

The key focus of the discussion centered on how you should go about getting buy-in from the business that investment in data quality management needed to be made. Some of the key points made in the discussion were as follows….

One panelists view was that you have to prove you are getting value for the business.

It is challenging as you have to get funding to fix the problem and a lot of the time, more people are “thrown” at the problem.

“C-Level” do not necessarily care how much time people are spending on this area – they are more concerned with whether it is happening.

Clear viewpoints were expressed that – to assist the selling process you need to provide metrics to support the buy-in request e.g.

  • How many adjustments do you make each month to your reports
  • How can you report to a client on e.g. what is my exposure to “x” (where x is a troubled company)

Senior management often do not realize just how much work goes into data cleansing.

Also, sometimes people in the middle-office are hardest to convince – they are used to current practices and “it’s the way we’ve always done it”.  People “in the trenches” can be convinced more easily as they know exactly what is involved and how much pain they go through to get their data to market.

Another panelist was of the opinion that oftentimes data management is not the main project, often the main project will be around outsourcing or client reporting. The difficulty is sometimes building the case and showing that data management is a necessity. The “audit argument”  can be your best friend – where you can demonstrate audit trails for all of your data points.

My own view here was that the likelihood of getting buy-in would be directly correlated to how well data governance is managed within the organization already. If the organization does not have an existing governance structure, be it an data czar regime or committee led, then it is unlikely that data management and data quality are high up on the C-Level agenda and this will make life harder.

My point here was that if a culture of ownership and accountability for data quality does not pre-exist then this is in fact your first challenge and you need to get the messages across vis-a-vis the relative advantages and disadvantages that strong data governance delivers.

Additionally, I tried to make the point that there is no point selling just a positive or a negative story – you need to have a really well-balanced argument that is quantifiable in either how it will drive costs down, or make the business more efficient – balanced with the great upside stories of client retention, satisfaction and inflows – counter balanced with the risk mitigation scare stories – or as Colin Close eloquently referred to them as “the accident that has not happened yet”.

One of the other panelist’s view was that ideally projects should not be positioned as data management – if you go to your COO and say there’s a problem with our data they will respond – “what’s wrong with it and why haven’t you fixed it already” – which to be honest is not very far from many people’s reality. The key is to demonstrate that you will either generate more revenue or reduce costs – or preferably both!

There was a question from floor: “how do I get my Finance Director to sign off an investment of half a million dollars in a problem they don’t recognize?”. This obviously generated some stimulating debate along the lines of..

  • It’s back to generating revenue, attracting more customers or else reducing costs.
  • Data management is a “secret” strategy – it might be perceived as a “nice to have” – always bring it back to costs, performance etc.
  • Vendors must prove value and benefits achieved – and – demonstrate real ROI.

In summary though the panelists views were fairly clear – ensure you have very clear ROI and a real business case.

To whatever extent possible deliver real world cost-benefits – be subjective if you have to – but do not over sell on fear – if your case is built on clear quantifiable measures the proposal will sell itself.

Next the discussion moved onto considerations around offshore and outsource and particularly how each could impact data management.

Again the panel had clear and common view points – data ownership, accountability and transparency are all key aspects you must get right before you engage.

Don’t try to push your existing issues over the proverbial “fence” – this was also a key element of a later talk presented by Invesco.

Gerard from Schroders made an interesting aside at this stage which is worth sharing: “what piece of data is never wrong?”

!Payroll!

Which is a really excellent point and this goes back to ownership – find the person responsible for each piece of data – make sure they are accountable, and make sure that their ownership is transparent – i.e. track and measure quality – ensure MIS is centralized and visible to all players, albeit at different levels of ‘depth’.

Another panelist thought that – when outsourcing, the client must have a very clear picture of what they want to do and where they want to go.

While one of the other speakers had the view that – you can’t completely outsource data management as the client needs to be heavily involved in all parts of the process but you can outsource parts of it.

My own view point here was that if you’re looking to outsource or offshore aspects of the data management process it must be done in a with-source model, this is ‘MoneyMate-ism” we use to explain our own ‘outsource’ model which is not truly outsourced, but rather it is very much partner-oriented. My view is that your outsourcer must actually be working with you on a partnership-oriented relationship – it cannot be supplier-client – it must be equal, with shared risks and rewards. Cost should never be the core driver in a partnership but obviously cost-control should be!

In my own experience certain things really help in getting “with-source” to work

  • A partnership approach as opposed to client-supplier
  • Service Level Agreements should not be a fixed schedule in a contract. They need to be designated as working documents, they should be reviewed and amended at least quarterly
  • Data dictionaries should be defined as the first step in the BA discovery phase to mitigate mis-communication risks

One of the panelists had an interesting point here – “Trust is good, control is better.”

Another’s view was – “if you outsource a bad process, you will be even worse off.”

There were also discussions on the impact of data quality on exposure to risk, client satisfaction and overhead.

Again the viewpoints were fairly consistent – and in summary

  • Risk: fairly obvious answers here were that reputational damage was the key risk, the financial world is built on reputation and you should take whatever reasonable means possible to prevent tarnishing your brand. Clearly there are also financial risks, be they penalties from regulators, loss of major clients, or outflows.
  • Client service: good data means better trust – bad data leads to lack of trust – lack of trust will damage client relationships and lead to loss of clients and outflows
  • Overhead: there are really clear overhead benefits, be that direct cost savings, resource refocus or process efficiency to be achieved. Obviously getting rid of manual error prone processes was the key benefit, but also audit overhead costs should be driven down.

To round off the moderator asked what the top 3-ways to get buy-in for investment in this area – naturally not everyone had the same top 3-ways, but the following were recurring themes:

  • Present a case with quantifiable upsides and cost savings – ensure the cost benefits are clear and tangible
  • Promote benefits of governance, (de-centralized) ownership, accountability, (centralized) oversight and transparency
  • Mitigation of serious risk – get across the message about the accident that has not happened yet. Use real-world case studies – do not ignore potential exposure to risk.

Other points made were;

Data management needs to be looked at an enterprise level. It is a strategic play, not just business level or departmental level.

Vendors should sell pain, sell gain and take advantage of opportunities. Don’t just sell negatives – look at ROI and quantify it.

Front, middle and back office don’t understand each other and don’t work together. Organizations need to build up the ethos of “we’re all in the same lifeboat trying to get to the same shore!”.

Initiatives like this are COO level and COOs are the people that need to be convinced!


Forget the glossies, you need to get the data right first!

January 29, 2010

There is a definite trend evolving in the industry around the whole client reporting and marketing documentation production fronts. In 2008 and 2009 I saw a strong investment trend in client reporting solutions and automation of marketing documentation – in 2010 you can expect to see increased focus on the core data that goes into the documents.

It may have seemed blindingly obvious to sort out the data quality before investing in the document’s gloss factor, but this is what happened. There is a plethora of super glossy brochures in the re-cycle bin today because the content was either inaccurate, inconsistent or out of date – the result of this is massive reprint cost or if discovered by the client reputational damage.

The leading asset managers are now investing heavily in data quality initiatives. I heard a great expression at FIMA in London at the end of last year where Sean Taylor from Deutsche described the situation as GIGOLO – garbage in garbage out low ownership.

I have attended and/or  spoken at various conferences in the last 6 months and in each of them there was a very clear message around the emergence of the importance of data quality. The traditional client reporting conferences now have streams dedicated to data management and data quality – TSAM is a good example.

I note that the NICSA annual conference also has a stream/round table on the emergence of the investment product master – this is a really encouraging development.

Based on the discussions I am having personally with asset management companies as well as the analyst/consultant community there are going to be some very serious initiatives in 2010 across the industry with respect to sorting out the quality of information being distributed to the market.


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