The conversation has shifted from trying to define what Big Data is but we’re stuck in the layers. Is Big Data fun like eating an orange full of vitamin c? Or is it more like an onion? where you cry when you try to peel it off but contrary it’s so sweet when you cook it properly? I tend to lean more towards an orange, and I will tell you why.
One important area is the learning curve. We are seeing efforts taking six months+ without even having addressed any of the use cases let alone having to figure them out. There is a lot of innovation at the moment but with that comes a lot of new terminologies that also require some effort to be informed. More important is the use case. How are we going to evaluate what we need without knowing what the use cases are? A real-time data streaming scenario is much different than scenarios where the speed is not of importance as we can afford to see the results the next day.
Three Steps to get started with Big Data
- Start by identifying your vertical and finding what the demands are and who you serve as your customer. This will guide you on how to decide the Proof-of-Concept PoC(s) and therefore the use case(s). As a follow-up step, we then look at the technological assets that we will need. From there the next steps is how to launch the Proof-of-Concept (PoC) quickly. For companies that think their data is sensitive follow this rule: decide what data you can live with by having it in the cloud as you’re only testing the hypothesis at this stage and is the fastest route.
- Seamless integration. At this stage, you need a solution that is responsive. Why because multiple business units will come with requirements. You need to be able to accommodate such demands. I can’t stress enough the managed services approach until you can support it internally. Why because it’s a huge learning curve and the return on investment (ROI) is far better. Many fall into the loop that because they see what a super enterprise is doing, then it’s feasible to have the same approach. This approach will only yield frustration as it will take longer. At Orzota BigForce we’re working hard to accelerate this stage.
- Insights. At the end of the day, you are doing all this for the insights but more specifically for the predictive and the hidden potential. Most likely you have a ton of reporting going on. Reports it’s not the issue here. If you cannot get the proper reports right now, then you need some serious help. Insights can be discovered internally but also externally, so kindly remind your hardest critics that is not about how much data you have but how much is out there that you can derive these very crucial insights for your business. A good example to put this argument to bed is Social listening and therefore Sentiment Analysis.
In conclusion, if you think about it, there isn’t much overlap if you start from the use case and Proof-of-Concept (PoC) approach while following the above steps. Starting small will also allow you to get buy-in and then expand. Partners may seem in the beginning that they offer similar services but at the pole position, you need to get more with less. Lastly, always keep in mind that for the majority the dynamics are different as there isn’t much Data Analysis talent out there thus with a managed services approach or a hybrid approach you can accelerate your environment and team. Finally, the orange correlation in 3 easy steps: pick, peel and consume. You can enjoy it getting all the vitamin C and its benefits.