Date
Publisher
arXiv
As artificial intelligence becomes increasingly integrated into digital
learning environments, the personalization of learning content to reflect
learners' individual career goals offers promising potential to enhance
engagement and long-term motivation. In our study, we investigate how career
goal-based content adaptation in learning systems based on generative AI
(GenAI) influences learner engagement, satisfaction, and study efficiency. The
mixed-methods experiment involved more than 4,000 learners, with one group
receiving learning scenarios tailored to their career goals and a control
group. Quantitative results show increased session duration, higher
satisfaction ratings, and a modest reduction in study duration compared to
standard content. Qualitative analysis highlights that learners found the
personalized material motivating and practical, enabling deep cognitive
engagement and strong identification with the content. These findings
underscore the value of aligning educational content with learners' career
goals and suggest that scalable AI personalization can bridge academic
knowledge and workplace applicability.
What is the application?
Who is the user?
Who age?
Study design
