It was a sunny spring day. I just received my coveted birthday present. A Sony Walkman. It was revolutionary. Small, lightweight, beautiful, it was music on the go. And it was the essence of Japanese ingenuity.
W. Edward Deming knew a few things about counting: He was the son of a chicken farmer in Iowa, USA. A trained mathematician, he worked as a census consultant to the post-war Japanese government.
While there, he was asked to hold a short seminar by the Japanese Union of Scientists and Engineers. He taught statistical process control and concepts of quality.
Deming called his system of thought “System of Profound Knowledge”. His message to Japan's chief executives: Improving quality will reduce expenses while increasing productivity and market share.
Many more seminars followed, with one of the attendants being Akio Morita, the cofounder of Sony.
Deming’s methods profoundly transformed the industrial processes in Japan. It’s time to apply these same concepts to data analytics.
74% of firms say they want to be “data-driven”, reports Forrester. Yet only 29% are actually successful at connecting analytics to action.
Rajeev Ronanki et al. of Deloitte Consulting pointed in a recent blog post to some of the reasons for this apparent contradiction. They outline:
“Advances in distributed data architecture, in-memory processing, machine learning, visualization, natural language processing, and cognitive analytics have unleashed powerful tools that can answer questions and identify valuable patterns and insights that would have seemed unimaginable only a few years ago. Against this backdrop, it seems almost illogical that few companies are making the investments needed to harness data and analytics at scale. Where we should be seeing systemic capabilities, sustained programs, and focused innovation efforts, we see instead one-off studies, toe-in-the-water projects, and exploratory investments.”
It’s time to change and a good place to start are Deming’s methods. Deming advocated in his System of Profound Knowledge four key points:
Let’s apply these four points in turn to data analytics.
Example: One of our customers is rolling out our Service Insights solution. The key goal: optimize their call center response times by up to 30% (in fact deploying the pilot results across the entire call center). As part of the initial project setup we involved the call center agents in the actual design of the solution.
The effect: the agents were driving the project. It was no longer a management imposed efficiency initiative but a team effort to improve their workplace The team made use of data to transform their organization. In a way they made data human.