Towards scalable curriculum mapping

Comparing human and GenAI alignment of CLOs to professional standards

Authors

  • Zachery Quince Southern Cross University

DOI:

https://doi.org/10.65106/apubs.2025.2661

Keywords:

Curriculum mapping, Generative AI, Engineers Australia, Accreditation, Engineering

Abstract

Curriculum mapping is a critical component of accreditation and continuous improvement in education. However, aligning Course Learning Outcomes (CLOs) to professional standards such as Engineers Australia’s Stage 1 Competency Standard remains time-consuming and labour-intensive. This study evaluates the potential of generative AI (GenAI) to support curriculum mapping by comparing automated outputs with expert human judgement. A stratified sample of 141 (10%) first-year CLOs from a national dataset was analysed using both manual review and GenAI (ChatGPT 4o). Each CLO was mapped to the 16 EA Stage 1 Competencies, and outcomes were classified as Match, Manual Only, GenAI Only, or Neither. Overall agreement was 81.2% with particularly strong alignment in professional and personal attributes. Mismatches were most common in technical competencies, where GenAI over-mapped based on keywords or under-mapped due to limited contextual understanding. These findings suggest GenAI can support curriculum review at scale but requires expert oversight for nuanced or discipline-specific outcomes. The work in progress study contributes to the growing literature on AI in education and offers practical insights into hybrid approaches for accreditation and curriculum design.

 

 

Downloads

Published

2025-11-28

Issue

Section

ASCILITE Conference - Concise Papers

Categories