With most technical fields, there exists a delay between fundamental academic research and practical industrial uptake. Whilst some sciences have robust and well-established processes for commercialisation, such as the pharmaceutical practice of regimented drug trials, other fields face transitory periods in which fundamental academic advancements diffuse gradually into the space of commerce and industry. For the still relatively young field of Automated/Autonomous Machine Learning (AutoML/AutonoML), that transitory period is under way, spurred on by a burgeoning interest from broader society. Yet, to date, little research has been undertaken to assess the current state of this dissemination and its uptake. Thus, this review makes two primary contributions to knowledge around this topic. Firstly, it provides the most up-to-date and comprehensive survey of existing AutoML tools, both open-source and commercial. Secondly, it motivates and outlines a framework for assessing whether an AutoML solution designed for real-world application is ‘performant’; this framework extends beyond the limitations of typical academic criteria, considering a variety of stakeholder needs and the human-computer interactions required to service them. Thus, additionally supported by an extensive assessment and comparison of academic and commercial case-studies, this review evaluates mainstream engagement with AutoML in the early 2020s, identifying obstacles and opportunities for accelerating future uptake.
Article navigation
18 December 2023
Research Article|
December 18 2023
The Technological Emergence of AutoML: A Survey of Performant Software and Applications in the Context of Industry
Alexander Scriven;
Alexander Scriven
Complex Adaptive Systems Lab, Data Science Institute, University of Technology Sydney
, Australia
Search for other works by this author on:
David Jacob Kedziora;
David Jacob Kedziora
Complex Adaptive Systems Lab, Data Science Institute, University of Technology Sydney
, Australia
Search for other works by this author on:
Katarzyna Musial;
Katarzyna Musial
Complex Adaptive Systems Lab, Data Science Institute, University of Technology Sydney
, Australia
Search for other works by this author on:
Bogdan Gabrys
Bogdan Gabrys
Complex Adaptive Systems Lab, Data Science Institute, University of Technology Sydney
, Australia
Search for other works by this author on:
Online ISSN: 2331-124X
Print ISSN: 2331-1231
© 2023 A. Scriven et al.
2023
A. Scriven et al.
Licensed re-use rights only
Foundations and Trends in Information Systems (2023) 7 (1-2): 1–252.
Citation
Scriven A, Kedziora DJ, Musial K, Gabrys B (2023), "The Technological Emergence of AutoML: A Survey of Performant Software and Applications in the Context of Industry". Foundations and Trends in Information Systems, Vol. 7 No. 1-2 pp. 1–252, doi: https://doi.org/10.1561/2900000030
Download citation file:
New and popular articles
Suggested Reading
Recommended for you
These recommendations are informed by your reading behaviors and indicated interests.
