Automating Data Science: Prospects and Challenges

05/12/2021
by   Tijl De Bie, et al.
84

Given the complexity of typical data science projects and the associated demand for human expertise, automation has the potential to transform the data science process. Key insights: * Automation in data science aims to facilitate and transform the work of data scientists, not to replace them. * Important parts of data science are already being automated, especially in the modeling stages, where techniques such as automated machine learning (AutoML) are gaining traction. * Other aspects are harder to automate, not only because of technological challenges, but because open-ended and context-dependent tasks require human interaction.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset