Generative AI in Self-Directed Learning: a thematic scoping review
Jasper Roe, Mike Perkins
Abstract
This thematic scoping review examines and analyses the current body of knowledge at the intersection of Generative Artificial Intelligence (GenAI) and Self-Directed Learning (SDL). An exhaustive search strategy was used to identify 18 relevant studies published from 2020 to 2024 (N = 18). These studies were analysed using an inductive thematic analytical approach, leading to the development of four themes that typify the current field of research. This includes GenAI as a Potential Enhancement for SDL, The Educator as a GenAI Guide, Personalisation of Learning, and Approaching with Caution. Our findings suggest that GenAI tools, including ChatGPT and other Large Language Models (LLMs) show promise in potentially supporting SDL through on-demand, personalised assistance. At the same time, the literature emphasises that educators are as important and central to the learning process as ever before, although their role may continue to shift as technologies develop. Our review reveals that there are still significant gaps in understanding the long-term impacts of GenAI on SDL outcomes, and there is a further need for longitudinal empirical studies that explore not only text-based chatbots but also emerging multimodal applications.