Advanced search
2 files | 2.17 MB Add to list

Implementing artificial intelligence across task types : constraints of automation and affordances of augmentation

(2024) INFORMATION TECHNOLOGY & PEOPLE. 37(7). p.2411-2440
Author
Organization
Abstract
PurposeThis study aims to uncover the constraints of automation and the affordances of augmentation related to implementing artificial intelligence (AI)-powered systems across different task types: mechanical, thinking and feeling.Design/methodology/approachQualitative study involving 45 interviews with various stakeholders in artistic gymnastics, for which AI-powered systems for the judging process are currently developed and tested. Stakeholders include judges, gymnasts, coaches and a technology vendor.FindingsWe identify perceived constraints of automation, such as too much mechanization, preciseness and inability of the system to evaluate artistry or to provide human interaction. Moreover, we find that the complexity and impreciseness of the rules prevent automation. In addition, we identify affordances of augmentation such as speedier, fault-less, more accurate and objective evaluation. Moreover, augmentation affords to provide an explanation, which in turn may decrease the number of decision disputes.Research limitations/implicationsWhile the unique context of our study is revealing, the generalizability of our specific findings still needs to be established. However, the approach of considering task types is readily applicable in other contexts.Practical implicationsOur research provides useful insights for organizations that consider implementing AI for evaluation in terms of possible constraints, risks and implications of automation for the organizational practices and human agents while suggesting augmented AI-human work as a more beneficial approach in the long term.Originality/valueOur granular approach provides a novel point of view on AI implementation, as our findings challenge the notion of full automation of mechanical and partial automation of thinking tasks. Therefore, we put forward augmentation as the most viable AI implementation approach. In addition, we developed a rich understanding of the perception of various stakeholders with a similar institutional background, which responds to recent calls in socio-technical research.
Keywords
Artificial intelligence, Affordances and constraints, Automation, Augmentation, Task types, Evaluation, Sports digitalization, ORGANIZATIONS, MACHINE, DISCIPLINE, TOOLS, AI

Downloads

  • ITP Constraints of Automation and Affordances of Augmentation AAM.pdf
    • full text (Accepted manuscript)
    • |
    • open access
    • |
    • PDF
    • |
    • 1.66 MB
  • (...).pdf
    • full text (Published version)
    • |
    • UGent only
    • |
    • PDF
    • |
    • 506.92 KB

Citation

Please use this url to cite or link to this publication:

MLA
Mazurova, Elena, and Willem Standaert. “Implementing Artificial Intelligence across Task Types : Constraints of Automation and Affordances of Augmentation.” INFORMATION TECHNOLOGY & PEOPLE, vol. 37, no. 7, 2024, pp. 2411–40, doi:10.1108/itp-11-2022-0915.
APA
Mazurova, E., & Standaert, W. (2024). Implementing artificial intelligence across task types : constraints of automation and affordances of augmentation. INFORMATION TECHNOLOGY & PEOPLE, 37(7), 2411–2440. https://doi.org/10.1108/itp-11-2022-0915
Chicago author-date
Mazurova, Elena, and Willem Standaert. 2024. “Implementing Artificial Intelligence across Task Types : Constraints of Automation and Affordances of Augmentation.” INFORMATION TECHNOLOGY & PEOPLE 37 (7): 2411–40. https://doi.org/10.1108/itp-11-2022-0915.
Chicago author-date (all authors)
Mazurova, Elena, and Willem Standaert. 2024. “Implementing Artificial Intelligence across Task Types : Constraints of Automation and Affordances of Augmentation.” INFORMATION TECHNOLOGY & PEOPLE 37 (7): 2411–2440. doi:10.1108/itp-11-2022-0915.
Vancouver
1.
Mazurova E, Standaert W. Implementing artificial intelligence across task types : constraints of automation and affordances of augmentation. INFORMATION TECHNOLOGY & PEOPLE. 2024;37(7):2411–40.
IEEE
[1]
E. Mazurova and W. Standaert, “Implementing artificial intelligence across task types : constraints of automation and affordances of augmentation,” INFORMATION TECHNOLOGY & PEOPLE, vol. 37, no. 7, pp. 2411–2440, 2024.
@article{01JHGV8VAGHBBCWF4ZJYJNERE8,
  abstract     = {{PurposeThis study aims to uncover the constraints of automation and the affordances of augmentation related to implementing artificial intelligence (AI)-powered systems across different task types: mechanical, thinking and feeling.Design/methodology/approachQualitative study involving 45 interviews with various stakeholders in artistic gymnastics, for which AI-powered systems for the judging process are currently developed and tested. Stakeholders include judges, gymnasts, coaches and a technology vendor.FindingsWe identify perceived constraints of automation, such as too much mechanization, preciseness and inability of the system to evaluate artistry or to provide human interaction. Moreover, we find that the complexity and impreciseness of the rules prevent automation. In addition, we identify affordances of augmentation such as speedier, fault-less, more accurate and objective evaluation. Moreover, augmentation affords to provide an explanation, which in turn may decrease the number of decision disputes.Research limitations/implicationsWhile the unique context of our study is revealing, the generalizability of our specific findings still needs to be established. However, the approach of considering task types is readily applicable in other contexts.Practical implicationsOur research provides useful insights for organizations that consider implementing AI for evaluation in terms of possible constraints, risks and implications of automation for the organizational practices and human agents while suggesting augmented AI-human work as a more beneficial approach in the long term.Originality/valueOur granular approach provides a novel point of view on AI implementation, as our findings challenge the notion of full automation of mechanical and partial automation of thinking tasks. Therefore, we put forward augmentation as the most viable AI implementation approach. In addition, we developed a rich understanding of the perception of various stakeholders with a similar institutional background, which responds to recent calls in socio-technical research.}},
  author       = {{Mazurova, Elena and Standaert, Willem}},
  issn         = {{0959-3845}},
  journal      = {{INFORMATION TECHNOLOGY & PEOPLE}},
  keywords     = {{Artificial intelligence,Affordances and constraints,Automation,Augmentation,Task types,Evaluation,Sports digitalization,ORGANIZATIONS,MACHINE,DISCIPLINE,TOOLS,AI}},
  language     = {{eng}},
  number       = {{7}},
  pages        = {{2411--2440}},
  title        = {{Implementing artificial intelligence across task types : constraints of automation and affordances of augmentation}},
  url          = {{http://doi.org/10.1108/itp-11-2022-0915}},
  volume       = {{37}},
  year         = {{2024}},
}

Altmetric
View in Altmetric
Web of Science
Times cited: