that can be applied to any activity to facilitate EM integration ● A strategy to address stakeholder concernsAI AcknowledgementThis proposal was originally written as two separate proposals by the workshop presenters withno support from generative AI. ChatGPT was used to combine the two original proposals into asingle proposal and the resulting description was edited for clarity and accuracy.
-a = 0.25 -x = 4 ::Numeric Precision:: -x = 0 What is the density of water at room temperature in kg/m³? ::Numeric Precision:: [!Numeric!] [1000+-5] How many km in a marathon? ::Numeric Range:: [!Numeric!] [42.2+-0.1] What is the typical range of efficiency (%) for a modern gas turbine? ::Numeric Range:: [!Numeric!] [30 40] Normal body temp in Celsius? [!Numeric!] [36.5 37.5]Figure 2. Example of an input prompt used to generate quiz questions (left) and the resultingoutput generated by ChatGPT (right).Preliminary Results and DiscussionInitial trials
capture how frequently pairs of codes appeared within the samestudent response. For this analysis, we isolated the 24 codes related to students’professional goals and examined their relationship to students’ intended majors. Majorswith limited representation in the dataset—including biological systems engineering,building construction, construction engineering management, ocean engineering, andmaterial science engineering—were excluded to avoid unreliable clustering. We thenused k-means clustering, assisted by ChatGPT, to identify patterns in the distribution ofgoal codes across majors. Based on silhouette scoring (= 0.193), six clusters wereidentified. For each cluster, we extracted the most frequent goal codes associated withthe majors it