Data-pushed projects: the role of anomalies to build design processes for subsequent exploration

DS 122: Proceedings of the Design Society: 24th International Conference on Engineering Design (ICED23)

Year: 2023
Editor: Kevin Otto, Boris Eisenbart, Claudia Eckert, Benoit Eynard, Dieter Krause, Josef Oehmen, Nad
Author: Bordas, Antoine; Le Masson, Pascal; Weil, Benoit
Series: ICED
Institution: Mines Paris, PSL University, Centre for management science (CGS), i3 UMR CNRS, 75006 Paris, France
Section: Design Methods
Page(s): 1137-1146
DOI number: https://doi.org/10.1017/pds.2023.114
ISBN: -
ISSN: -

Abstract

Data-pushed projects are common in companies and consist in the design of a model in order to deliver a desirable output. The design of data science models appears at the intersection of optimisation and creativity logic, with in both cases the presence of anomalies to a various extent but no clear design process.

This paper therefore proposes to study the possible design processes in data-pushed projects, highlighting distinct knowledge exploration logics and the role of anomalies in each. This research introduces a theoretical framework to study data-pushed projects and is based on design theory. Three case studies complete this theoretical work to examine each of the processes and test our hypothesis.

As a result, this paper derives three design processes adapted to data-pushed projects and put forward for each of them: 1) the various knowledge leveraged and generated and 2) the specific role of anomalies.

Keywords: Design theory, Design process, Big data, Data-pushed projects, Anomaly management

Please sign in to your account

This site uses cookies and other tracking technologies to assist with navigation and your ability to provide feedback, analyse your use of our products and services, assist with our promotional and marketing efforts, and provide content from third parties. Privacy Policy.