Courtesy of
David Norris of IT Director
Last year I looked at how IBM had been successful in acquiring
and integrating the multiple components of its portfolio in the
Business Analytics and Optimisation space, this time I have been
given the opportunity to look at how those acquisitions are being
deployed to provide solutions to their clients' problems. The first
thing to note is that, in addressing the issues of Big Data, with
its volume, variety and volatility, it is clear that, for IBM, most
of the solutions are created by amalgamating strands from its
portfolio and using then in a coordinated fashion that creates the
right solution. So, for those who think that Big Data is just about
Hadoop, IBM very rightly are saying no, it takes more than that to
address many of the problems that need to be addressed. So what you
see is that Hadoop may be used as the centre piece to address the
volume and variety of the data required to obtain an insight, but
that their streaming platform is used to detect patterns, and
remove much of the noise, in the data that is volatile. This is
done whilst it is streaming into the analytics hub, and the data
warehouse, which is now going to be more often than not a Netezza
one, is still collating the various indicators and is the place
where the really deep actionable insights are produced on an
ongoing basis.
Another thing that struck me was that in the briefing I had last
year the one component that did not seem to be so prominent was the
Cognos element. This year I am pleased to be able to report that
Cognos 10 was very prominent in its role in many of the solutions
being presented. Cognos Insight, Express and Enterprise are now
looking like a very well thought through and executed family of
tools able to report, analyse, model, plan and offer collaboration
capabilities across all of the platforms and devices that are
required to use and expose the data to the widest range of end
users.
I also, for the first time, saw how Watson, as well as winning
quiz shows, was now being used to address real issues with the same
astonishing breadth of data and ability to assign credibility to
the sources in their search to find support for a given hypothesis.
Watson is now being used to assist in healthcare with vital things
such as cancer diagnosis and treatment. For those of us with money
purchase pensions I was pleased to see that they are tackling
investment planning, and they are also looking at applications in
the health insurance market. There are also Watson applications for
the contact centre and, by the end of the year, for industry.
What impressed me most about the IBM approach to Watson
deployment is that they know that this is a solution that will only
work once an organisation has reached a level of maturity in its
ability to use to and exploit what Watson can provide. They have
therefore devised an assessment of the maturity of candidates and,
for those who have not yet reached a level where it would make
sense to deploy Watson, there is a roadmap to help them focus on
the actions required to drive up the maturity in their use of
informatics to enable them to exploit it meaningfully in the
future.
At present, so much of the activity in the Big Data space is
being conducted very much on the far side of the chasm from full
scale commercial adoption. It has a Heath Robinson air about so
much that is being done to deliver value, and many of the early
adopters come from anything but a traditional BI and enterprise IT
background. IBM, more than any other vendor I have spoken to, is
taking very large steps to help this whole extension to the
capability of analytics to cross the chasm into mainstream
usability, whilst ensuring that the drive and enthusiasm of the
innovation is not lost along the way. I would point to their drive
to add veracity to the Big Data 3 Vs (volume, variety and
volatility) as being key; for instance if things like Master Data
Management are important in traditional solutions, it is even more
critical with Big Data, where so much data is coming in from
outside of an enterprise. The development of accelerators to help
to automate the donkey work to get to value is another important
innovation. People talk glibly about exploiting Facebook and
Twitter, but building the lexicon to identify what is being said
and the sentiment behind it is far from trivial, and it is things
like that that IBM is automating. Another example would be how they
are ensuring that the actual deployment of the data on a Hadoop
cluster is managed so it is optimised, for the workload, in a
dynamic fashion.
Big Data has the potential to be highly disruptive, and those
with the most to lose are the established players. Of those big
players, the one that would appear to be in the best place to ride
out the wave of disruption, because it is being equally innovative
and cost effective, looks to be IBM.