Harnessing LLMs in Curricular Design: Using GPT-4 to Support Authoring of Learning Objectives
Pragnya Sridhar, Aidan Doyle, Arav Agarwal, Christopher, Bogart, Jaromir Savelka, Majd Sakr

TL;DR
This study assesses GPT-4's ability to automatically generate high-quality, measurable learning objectives for an AI course, demonstrating its potential to assist educators in course design.
Contribution
It provides an empirical evaluation of GPT-4's effectiveness in generating appropriate learning objectives aligned with Bloom's taxonomy.
Findings
Generated LOs are sensible and well-expressed.
Most LOs follow Bloom's taxonomy levels correctly.
GPT-4 can support course design efforts effectively.
Abstract
We evaluated the capability of a generative pre-trained transformer (GPT-4) to automatically generate high-quality learning objectives (LOs) in the context of a practically oriented university course on Artificial Intelligence. Discussions of opportunities (e.g., content generation, explanation) and risks (e.g., cheating) of this emerging technology in education have intensified, but to date there has not been a study of the models' capabilities in supporting the course design and authoring of LOs. LOs articulate the knowledge and skills learners are intended to acquire by engaging with a course. To be effective, LOs must focus on what students are intended to achieve, focus on specific cognitive processes, and be measurable. Thus, authoring high-quality LOs is a challenging and time consuming (i.e., expensive) effort. We evaluated 127 LOs that were automatically generated based on a…
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Taxonomy
TopicsOnline Learning and Analytics
MethodsMulti-Head Attention · Attention Is All You Need · Layer Normalization · Absolute Position Encodings · Adam · Byte Pair Encoding · Linear Layer · Label Smoothing · Position-Wise Feed-Forward Layer · Residual Connection
