Whenever I speak with successful analytics people—and I do that all the time—it’s usually not long before they mention the phrase “telling a story with data.” It may seem obvious that anyone who is doing data analysis would want to create a narrative of the process and outcome, but to many data analysts it’s not obvious at all. So in this essay I’ll describe five reasons why data and analytics-based stories are important to organizations, and four reasons why so many people and organizations do it badly or not at all.
Here’s why I think people who love data and analytics also need to be people who love stories and tell them well:
Despite these compelling reasons for the importance of stories, most quantitative analysts are not very good at creating or telling them. The implications of this are profound—it means that analytical initiatives don’t have the impact on decisions and actions that they should. It means that time and money spent on acquiring and managing data and analyzing it are effectively wasted.
So why are individuals and organizations so bad at telling stories with data? Let us count the reasons:
So there are several reasons why storytelling with data is critical to success with analytics programs, and several reasons why it doesn’t work very well. I’ve constructed this story so that there are more reasons to tell good stories than there are obstacles to the objective, so the story ends happily.