![how to excel in art of deduction how to excel in art of deduction](https://i0.wp.com/arthikdisha.com/wp-content/uploads/2021/02/Income-Tax-Slab-for-FY-2021-22-Old-Tax-Regime.png)
For one, the tools used to do the science include visualization functionality. How could this song remain the same for more than a century? Like anything else this deeply rooted, the last-mile problem’s origins are multiple. Consider that 105 years ago, before coding and computers, Willard Brinton began his landmark book Graphic Methods for Presenting Facts by describing the last-mile problem: “Time after time it happens that some ignorant or presumptuous member of a committee or a board of directors will upset the carefully-thought-out plan of a man who knows the facts, simply because the man with the facts cannot present his facts readily enough to overcome the opposition….As the cathedral is to its foundation so is an effective presentation of facts to the data.”Įxecutives complain that data science doesn’t provide the guidance they hoped for.
![how to excel in art of deduction how to excel in art of deduction](http://www.hrmthread.com/wp-content/themes/hrthread/images/post5.png)
Gaps between business and technology types aren’t new, but this divide runs deeper. They don’t see tangible results because the results aren’t communicated in their language. Executives, meanwhile, complain about how much money they invest in data science operations that don’t provide the guidance they hoped for. They say decision makers misunderstand or oversimplify their analysis and expect them to do magic, to provide the right answers to all their questions. Data teams know they’re sitting on valuable insights but can’t sell them. In my work lecturing and consulting with large organizations on data visualization (dataviz) and persuasive presentations, I hear both data scientists and executives vent their frustration. In a question on Kaggle’s 2017 survey of data scientists, to which more than 7,000 people responded, four of the top seven “barriers faced at work” were related to last-mile issues, not technical ones: “lack of management/financial support,” “lack of clear questions to answer,” “results not used by decision makers,” and “explaining data science to others.” Those results are consistent with what the data scientist Hugo Bowne-Anderson found interviewing 35 data scientists for his podcast as he wrote in a 2018 HBR.org article, “The vast majority of my guests tell that the key skills for data scientists are….the abilities to learn on the fly and to communicate well in order to answer business questions, explaining complex results to nontechnical stakeholders.” Efforts fall short in the last mile, when it comes time to explain the stuff to decision makers. Even well-run operations that generate strong analysis fail to capitalize on their insights. Data has begun to change our relationship to fields as varied as language translation, retail, health care, and basketball.īut despite the success stories, many companies aren’t getting the value they could from data science. Over the past five years companies have invested billions to get the most-talented data scientists to set up shop, amass zettabytes of material, and run it through their deduction machines to find signals in the unfathomable volume of noise.