The right information to act upon begins not with a solution but with a dilemma. A dilemma is really the issue or question that has to be answered. It forms the basis of the whole process and prepares everything that comes after.
First: Identify the Problem
The starting point of the data to action process creates a dilemma. Ask yourself, instead of assuming things, what is the actual pain point? Who’s your audience? What possibilities and constraints exist? If someone remarks, “We need AI,” for instance, the answer should be, “Why do we need AI? What problem are we trying to solve?”
Focusing on the difficulty helps you pinpoint the actual problems that require attention and create well defined objectives and expected results. This phase also entails spotting organizational champions with a taste for creativity who can move the process along.
Second: Data Discovery
Data discovery comes after the pain point is revealed. This involves compiling measurable data and insights that accurately represent the situation. Data discovery is the study, cleaning, and extracting of useful insights from the accessible data. Though it should be enough to guide decision-making, it’s important to keep in mind that the data might not always present a flawless picture of reality.
In addition to numbers, data discovery includes other reality captures such as conversations, experiences, art, and other information. This all-encompassing approach helps the business have a more complete understanding of the circumstances before moving to the next step.
Third: Action
You should enter the action phase only after careful investigation of the problem and the facts. Here you present your story—a narrative linking the insights to actionable next steps. The narrative might develop as an email, a chat, a presentation, or perhaps a dashboard. Whatever the style, the narrative should succinctly highlight the problem, offer the evidence-based analysis, and outline doable objectives.
Remember that the narrative is a conversation starter; it is not the end. Good data to action strategies result in dialogues that lead to decisions, plans, and actual action. It’s an iterative process whereby comments on first steps could take you back to re-examining the facts or honing the original question.