Date
Publisher
arXiv
Education materials for K-12 students often consist of multiple modalities,
such as text and images, posing challenges for models to fully understand
nuanced information in these materials. In this paper, we propose a unified
language and vision assistant UniEDU designed for various educational
applications, including knowledge recommendation, knowledge tracing, time cost
prediction, and user answer prediction, all within a single model. Unlike
conventional task-specific models, UniEDU offers a unified solution that excels
across multiple educational tasks while maintaining strong generalization
capabilities. Its adaptability makes it well-suited for real-world deployment
in diverse learning environments. Furthermore, UniEDU is optimized for
industry-scale deployment by significantly reducing computational
overhead-achieving approximately a 300\% increase in efficiency-while
maintaining competitive performance with minimal degradation compared to fully
fine-tuned models. This work represents a significant step toward creating
versatile AI systems tailored to the evolving demands of education.
What is the application?
Who is the user?
Why use AI?
Study design
