5 Telltale Signs You Don't Understand Big Data
Bernard Marr
?? Internationally Best-selling #Author?? #KeynoteSpeaker?? #Futurist?? #Business, #Tech & #Strategy Advisor
I’ll admit it: Big Data is not my favorite term. It really trivializes and summarizes the trend too far, creating misconceptions and misperceptions of what this incredible shift in our technology, culture and world actually is.
Despite the fact that I bill myself as a “big data” expert, I wish we could come up with a better term. If you’re not sure what I’m talking about, you’re not alone. Here are five of the biggest misunderstandings about big data I see regularly:
- You ignore big data.
Bad move. Data and the ability to turn data into business value will become increasingly important in any sector within a few very short years. In business, information is power, and big data is providing information we couldn’t have dreamed of collecting or analyzing just a few short years ago. Practically every field and every job within them, from untrained hourly worker all the way up to professionals, can expect the business landscape to be changed by data in the near future. Ignoring it is sticking your head in the sand; this is a trend that is not going away. - You think big data is about data.
Interestingly, it is not; it's about what you do with it. I’ve long argued that simply collecting data or even analyzing it isn’t the end game of a big data strategy. Instead, it’s about how you use the information you glean from the data. It’s about the processes you improve, the decision making you enable, the business value you add. Data for data’s sake is meaningless. Without valuable interpretation and smart implementation, big data projects are a costly and ridiculous waste of time. - You think big data is about quantity.
Big data got its name because advances in technology seemed to quite suddenly allow us to collect and analyze much greater quantities of data than ever before. But part of that was also because we gained the ability to analyze new types of data — especially unstructured data. Before, the only useable data was the kind that fit neatly into the rows and columns of a database. Today, we can analyze large blocks of text, like books and journals, video, photos, audio, health records, and more. So big data isn’t just about the volume of data; it is equally about the variety of data to which we now have access. - You think the more data you get your hands on the better.
Some companies have become data hoarders, collecting and storing as much data as they possibly can against the future chance that they might need it. But this quickly becomes a very costly enterprise. Data storage isn’t free, and as the size of your “collection” grows exponentially with every year, so does the cost. In addition, searching and analyzing those vast quantities of data become more challenging and require more resources. Instead of hoarding data, collect only what you really need and what makes business sense. I always advocate understanding the questions you want to answer before designing a big data project so that you can remain lean and focused on the outcomes. - You think big data means you need to collect and store large amounts of your own data.
Actually, no. As companies and organizations begin to view their data as the business commodity it is, a market will emerge (and is already emerging) where organizations can buy, sell, and trade data. In addition, a great deal of valuable data is being collected and shared by open government data initiatives, scientific research organizations, and and other not-for-profit agencies. Many organizations will find that the data they need already exists — or much of it already exists, greatly reducing what they specifically need to collect and store.
Hopefully, this will help clear up some of the confusions you might have about big data and its misleading name, the basic understanding of the concept and term will help you navigate the inevitable changes to come.
As always, let me know your thoughts on the topic, please share them in the comments below.
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CEO | Founder | Sustainable Inclusion Architect | Peace Ambassador | Queer Actually Autistic Leader | Worm Farmer
8 年Glad that NoSQL Digest pushed this out to their Twitter followers! Awesome!!
more data is better, except with the coastline paradox. Granularity is a bitch.
Climate change adaptation | Resilience | Data Science at Middlebury Institute of International Studies (opinions are my own)
8 年Very much so...big data is mostly about the types of relationships that you can now discover, although they were there all along...big data is about intelligence (as in data>>information>>intelligence>> wisdom)...sorry, I don't have any advice on how to achieve wisdom from intelligence... ...and no, you don't need big expenses...you just need the right people...
Credit Risk
8 年I think the confusion not only lies in the misunderstanding of BIG data, but also with the misuse of the terms "data science" and "big data". And to some extent "predictive analytics." Many use the terms "data science" and "big data" interchangeably, believing both to mean the same, but this is not the case - one seeks to create models of patterns within complex systems and the other seeks to collect and manage vast amounts of data.
Chief Engineer at S.T.Stent
8 年DATA (even it is the big one) remain only... DATA. In order to be effectively used in decision making it should be transformed into facts, "hints", "allegories" and "codes". The previously mentioned things are actually the levels of information. The higher levels are fit better for decision making than... DATA. This means that the main thing isn't DATA, but transformation algorithms that rise it (DATA) to higher information levels.