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Job sharing between human professionals and chatbots: How should ‘handovers’ happen?

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posted on 2025-08-26, 01:34 authored by Alistair KnottAlistair Knott
Job sharing between humans and artificial intelligence (AI) systems is likely to become increasingly common in several domains of work. In this paper, we examine mechanisms for managing job sharing for one particular class of AI system: human–machine dialogue systems, or chatbots. This is a useful case to consider, as several mechanisms for managing job sharing are already emerging in these systems, and these mechanisms draw on those that human professionals already use to share work among themselves. A key concept in this domain is that of a ‘handover’, where a client is passed from one worker to another. We identify different types of handover, for human and AI workers, and discuss a range of issues that govern how these should take place for effective job sharing. We identify several questions that arise for engineers designing dialogue systems that support handover functionality, relating to timing and transparency. We conclude by arguing that handovers provide a useful way for structuring discussions of job sharing between humans and AI systems, in dialogue-based domains and perhaps beyond.

History

Preferred citation

Knott, A. (2023). Job sharing between human professionals and chatbots: How should ‘handovers’ happen? Journal of AI, Robotics & Workplace Automation, 2(2), 121-121. https://doi.org/10.69554/qwwq7223

Journal title

Journal of AI, Robotics & Workplace Automation

Volume

2

Issue

2

Publication date

2023-01-01

Pagination

121-121

Publisher

Henry Stewart Publications

Publication status

Published online

Online publication date

2023-12-01

ISSN

2633-562X

eISSN

2633-5638

Article number

AIRWA-vol2-iss2-pg121

Language

en

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