Data Engineering for Data Analytics: A Classification of the Issues, and Case Studies

04/27/2020
by   Alfredo Nazabal, et al.
0

Consider the situation where a data analyst wishes to carry out an analysis on a given dataset. It is widely recognized that most of the analyst's time will be taken up with data engineering tasks such as acquiring, understanding, cleaning and preparing the data. In this paper we provide a description and classification of such tasks into high-levels groups, namely data organization, data quality and feature engineering. We also make available four datasets and example analyses that exhibit a wide variety of these problems, to help encourage the development of tools and techniques to help reduce this burden and push forward research towards the automation or semi-automation of the data engineering process.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset