The Model Mastery Lifecycle: A Framework for Designing Human-AI Interaction
Mark Chignell, Mu-Huan Miles Chung, Jaturong Kongmanee, Khilan Jerath, and Abhay Raman

TL;DR
This paper introduces the AI Mastery Lifecycle framework to guide effective human-AI task allocation and interaction design, addressing challenges as AI capabilities evolve across various tasks.
Contribution
The paper presents a novel AI Mastery Lifecycle framework that aids in designing human-AI interactions and task allocation amidst AI progress.
Findings
Framework guides human-AI task allocation over AI mastery levels
Identifies a zone of uncertainty for human-AI interaction challenges
Provides implications for interface design as AI capabilities improve
Abstract
The utilization of AI in an increasing number of fields is the latest iteration of a long process, where machines and systems have been replacing humans, or changing the roles that they play, in various tasks. Although humans are often resistant to technological innovation, especially in workplaces, there is a general trend towards increasing automation, and more recently, AI. AI is now capable of carrying out, or assisting with, many tasks that used to be regarded as exclusively requiring human expertise. In this paper we consider the case of tasks that could be performed either by human experts or by AI and locate them on a continuum running from exclusively human task performance at one end to AI autonomy on the other, with a variety of forms of human-AI interaction between those extremes. Implementation of AI is constrained by the context of the systems and workflows that it will be…
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Taxonomy
TopicsHuman-Automation Interaction and Safety · Business Process Modeling and Analysis · Explainable Artificial Intelligence (XAI)
