What big data means in 2014
Few technology terms have ever been
hyped as much as big data has over the past year or so. But amid all the talk
about the business advantages that big data could bring, it's been forgotten
that many businesses have not yet taken practical steps to roll out a big data
strategy.
In a recent survey we ran at Talend, only one in ten of our sample said
they were actually engaged in large scale roll-out. That was up from just 2% a
year earlier but still disappointing.
The truth is the big data market is
still in its infancy today. We have seen a lot of interest out there in the market – and that interest is definitely growing. So what's the problem? What has held businesses back so far? And are we seeing signs of a change?
still in its infancy today. We have seen a lot of interest out there in the market – and that interest is definitely growing. So what's the problem? What has held businesses back so far? And are we seeing signs of a change?
The constraints
Two of the top three constraints we
identified in our survey were budgetary restrictions and skills shortages, both
widely recognised as key barriers to any IT endeavour.
The potential scale of most big data projects explains the financial
concerns. Also, skills are key because big data requires people to be able to
integrate any number of large and inflexible disparate data sources and skilled
data scientists to analyse the collective data streams.
You could argue these barriers are more about perception than reality.
The truth is, big data projects do not have to come with a massive price-tag.
Being able to run open source databases and integration tools over an
open-source Hadoop platform allows big data integration and analysis
applications to be run cost-effectively across commodity server clusters,
thereby reducing hardware spend. And the latest advances in technology are
helping to close the skills gap.
Analyst research firm, Gartner defines big data as "a combination
of high-volume, high-velocity and high-variety information assets that demand
cost-effective, innovative forms of information processing for enhanced insight
and decision-making." And this innovation is key in helping to hide the
underlying complexity of big data from developers and users alike.
The winds of change
Last year, we saw signs that big data
was starting to happen. It was a year of experimentation, a year where many
organisations were still carrying out proof-of-concepts. It was still an
embryonic technology.
Very few organisations had moved outside the sandbox and started
delivering productive use cases – and even fewer had any return on
nvestment or tangible results to refer to, but the promise was there.
In 2014, we are already seeing more companies 'getting their feet wet'
with big data but we will also increasingly see big data reaping the rewards of
the trials of 2013, crossing the chasm and entering into mainstream adoption.
New technologies are coming on stream that enable real-time and
operational big data; technology platforms are available that are helping
organisations' big data investments to scale.
And so, a growing number of companies are going live with big data
projects and starting to get results from their big data implementations. Big
data may still be in its infancy today, but this is the year it will start
coming of age
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