This session will expose analytic practitioners, data scientists, and those looking to get started in predictive analytics to the critical importance of properly preparing data in advance of model building. The instructor will present the critical role of feature engineering, explaining both what it is and how to do it effectively.
Emphasis will be given to those tasks that must be overseen by the modeler – and cannot be performed without the context of a specific modeling project. Data is carefully “crafted” by the modeler to improve the ability of modeling algorithms to find patterns of interest.
Data preparation is often associated with cleaning and formatting the data. While important, these tasks will not be our focus. Rather it is how the human modeler creates a dataset that is uniquely suited to the business problem.
You will learn:
“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!”