Matt Asay Massive Non-Desk Workforce is an Opportunity fo… IT + Project Management: A Love Affair Related Posts Cognitive Automation is the Immediate Future of… 3 Areas of Your Business that Need Tech Now Tags:#Big Data#Gartner#Hadoop#Wikibon Forget all the Big Data numbers you’ve seen. The reality is that no one has a clue how much Big Data adoption there is, because few actually know what Big Data means.Ian Bertram, managing vice president at Gartner, points this out, arguing that the industry is completely muddled over what Big Data means. According to Gartner research, 50% of enterprises cite data variety, not data volume, as the primary driver of Big Data adoption. In fact, “big” is hardly a factor at all. Marketo’s Jon Miller suggests that “big data is a catch-all term for data sets that are so large and complex that they necessitate new forms of processing beyond the SQL databases prevalent since the early 1980s.” Given that the term is merely a catch-all, how can we even be sure that a given application is a “Big Data application”? We can’t. That’s why I wonder how much credence we can give to surveys like this:This isn’t a Gartner problem. It’s an industry problem. We’ve invented a meaningless term that essentially means everything, and hence nothing. Hence, when Mark van Rijmenam tries to quantify the Big Data businesses of a range of vendors, it’s hard to see how they (or anyone) can truly get anywhere near the right answer:I suspect that what we’re really talking about with “Big Data” is merely data. We just mean that we’ve gained the ability to put more data to work in our applications. It’s not really a matter of “big,” though. It’s just a matter of “more.” Bertram seems to concur:The question I would like pose is—why call it “Big Data” at all, what makes it big? Rather why not call it just “data” or “Information” as aren’t we just talking about different sources and extracting value from the combination of these sources? Aren’t we trying to find patterns to build models, identify risk, understand intent and sentiment and develop networks?In other words, aren’t we just trying to do the same things that we’ve always tried to do, but with new tools like Hadoop and NoSQL that make it easier, more powerful and cost effective. The tools have changed, but the desire to put data to use has not.Image courtesy of Shutterstock.