Most analytic modelers wait until after they’ve built a model to consider deployment. Doing so practically ensures project failure. Their motivations are typically sincere but misplaced. In many cases, analysts want to first ensure that there is something worth deploying. However, there are very specific design issues that must be resolved before meaningful data exploration, data preparation and modeling can begin. The most obvious of many considerations to address ahead of modeling is whether senior management truly desires a deployed model. Perhaps the perceived purpose of the model is insight and not deployment at all. There is a myth that a model that manages to provide insight will also have the characteristics desirable in a deployed model. It is simply not true. No one benefits from this lack of foresight and communication. This session will convey imperative preparatory considerations to arrive at accountable, deployable and adoptable projects and Keith will share carefully chosen project design case studies and how deployment is a critical design consideration.
“Longer sessions created room for more depth and dialogue. That is what I appreciate about this summit.”
“Inspiring summit with excellent speakers, covering the topics well and from different angles. Organization and venue: very good!”
“Inspiring and well-organized conference. Present-day topics with many practical guidelines, best practices and do's and don'ts regarding information architecture such as big data, data lakes, data virtualisation and a logical data warehouse.”
“A fun event and you learn a lot!”
“As a BI Consultant I feel inspired to recommend this conference to everyone looking for practical tools to implement a long term BI Customer Service.”
“Very good, as usual!”