Date
Publisher
arXiv
We present a method for generating large numbers of isomorphic physics
problems using generative AI services such as ChatGPT, through prompt chaining
and tool use. This approach enables precise control over structural
variations-such as numeric values and spatial relations-while supporting
diverse contextual variations in the problem body. By utilizing the Python code
interpreter, the method supports automatic solution validation and simple
diagram generation, addressing key limitations in existing LLM-based methods.
We generated two example isomorphic problem banks and compared the outcome
against two simpler prompt-based approaches. Results show that prompt-chaining
produces significantly higher quality and more consistent outputs than simpler,
non-chaining prompts. We also show that GenAI services can be used to validate
the quality of the generated isomorphic problems. This work demonstrates a
promising method for efficient and scalable problem creation accessible to the
average instructor, which opens new possibilities for personalized adaptive
testing and automated content development.
What is the application?
Who is the user?
Who age?
Why use AI?
Study design
