Design for Artificial Intelligence: Proposing a Conceptual Framework Grounded in Data Wrangling

Author:

Williams Glen1,Meisel Nicholas A.2,Simpson Timothy W.1,McComb Christopher3

Affiliation:

1. The Pennsylvania State University Department of Mechanical Engineering, , 137 Reber Building, University Park, PA 16802

2. The Pennsylvania State University School of Engineering Design, Technology, and Professional Programs, , 213 Hammond Building, University Park, PA 16802

3. Carnegie Mellon University Department of Mechanical Engineering, , 5000 Forbes Ave, Pittsburgh, PA 15213

Abstract

Abstract The intersection between engineering design, manufacturing, and artificial intelligence offers countless opportunities for breakthrough improvements in how we develop new technology. However, achieving this synergy between the physical and the computational worlds involves overcoming a core challenge: few specialists educated today are trained in both engineering design and artificial intelligence. This fact, combined with the recency of both fields’ adoption and the antiquated state of many institutional data management systems, results in an industrial landscape that is relatively devoid of high-quality data and individuals who can rapidly use that data for machine learning and artificial intelligence development. In order to advance the fields of engineering design and manufacturing to the next level of preparedness for the development of effective artificially intelligent, data-driven analytical and generative tools, a new design for X principle must be established: design for artificial intelligence (DfAI). In this paper, a conceptual framework for DfAI is presented and discussed in the context of the contemporary field and the personas which drive it.

Funder

Division of Civil, Mechanical and Manufacturing Innovation

Publisher

ASME International

Subject

Industrial and Manufacturing Engineering,Computer Graphics and Computer-Aided Design,Computer Science Applications,Software

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