Facing an endless stream of information, it’s harder than ever for processors to access the right insights and identify the right opportunities. Not all segments of the value chain capture data in a standardized way. This leads to siloed data in multiple formats, using different units of measurement, which can cause a lot of confusion.
In this scenario, people have to spend more time cleansing and aligning their data to prepare it for their use cases. Often, teams can spend too much time wrangling and prepping their data and not enough time leveraging it to inform business decisions.
Beyond this surface-level messiness and short-term frustration, there is a deeper problem. When data isn’t organized well, it can’t be used well. Making business decisions based on data that is incomplete, inaccurate and ungoverned can be a costly mistake.
For example, take sustainability data. Your organization is trying to answer what seems like a basic question: On average, how much carbon is emitted to get one bushel of wheat to our grain processing facility?
But, after many acquisitions and little data governance, every region of your business has its own way of collecting, storing and organizing data. So, the answer is not a simple average. Rather, it’s an effort looking across 100 different enterprise resource planning (ERP) systems, each with its own distinct setup.
To get real, actionable insights out of a poorly organized data, time and energy must be invested into unpeeling layers, organizing data and getting everything in the same format.
Only by building robust data foundations can leaders start to make better, data-driven decisions.