Embedding Generative AI as a digital capability into a year-long skills program.
DOI:
https://doi.org/10.53761/fh6q4v89Keywords:
Generative AI, Artificial Intelligence, GenAI, Assessment, Process base assessment, Curriculum design, Skills Development, Competency Base Assessment, Higher EducationAbstract
The arrival of Generative Artificial Intelligence (GenAI) into higher education has significantly transformed assessment practices and pedagogical approaches. Large Language Models (LLMs) powered by GenAI present unprecedented opportunities for personalised learning journeys. However, the emergence of GenAI in higher education raises concerns regarding academic integrity and the development of essential cognitive and creative skills among students. Critics worry about the potential decline in academic standards and the perpetuation of biases inherent in the training sets used for LLMs. Addressing these concerns requires clear frameworks and continual evaluation and updating of assessment practices to leverage GenAI's capabilities while preserving academic integrity. Here, we evaluated the integration of GenAI into a year-long MSc program to enhance student understanding and confidence in using GenAI. Approaching GenAI as a digital competency, its use was integrated into core skills modules across two semesters, focusing on ethical considerations, prompt engineering, and tool usage. The assessment tasks were redesigned to incorporate GenAI, which takes a process-based assessment approach. Students' perceptions were evaluated alongside skills audits, and they reported increased confidence in using GenAI. Thematic analysis of one-to-one interviews revealed a cyclical relationship between students' usage of GenAI, experience, ethical considerations, and learning adaptation.
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Data Availability Statement
The datasets generated and/or analysed during the current study are not publicly available due to the confidential nature of the transcripts generated, but they are available from the corresponding author upon reasonable request.
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Copyright (c) 2025 Prof David P. Smith, Dami Sokoya , Skye Moore, Chinenye Okonkwo , Charlotte Boyd , Dr Melissa M. Lacey, Dr Nigel J. Francis

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