Datasets:
UTQA: Undergraduate Thermodynamics Question Answering Benchmark
UTQA is a 50-item multiple-choice benchmark designed to evaluate large language models on undergraduate-level thermodynamics.
It consists of single-choice questions (four options, one correct), of which 17 include associated figures.
The benchmark targets reasoning about state functions, reversibility, entropy, and diagram interpretation, rather than simple plug-and-chug calculations.
Dataset Structure
- Number of items: 50
- Format: CSV table + images folder
- Columns:
question_number
: integer identifierquestion
: question stem (text)option_a
–option_d
: four answer choicesimage
: relative path to figure (if applicable; empty otherwise)correct_answer
: one of {a, b, c, d}explanation
: text explanation of the solutionimage_explain
: additional explanation of the solution using a figure (if applicable)
Images are provided in the /images/
directory and linked from the image
column.
Intended Use
UTQA is released as a benchmark for evaluation of language models and as a resource for educators and researchers studying AI capabilities in unsupervised teaching contexts.
It is not intended for use in pretraining or fine-tuning language models.
✅ Allowed
- Model evaluation and benchmarking
- Academic research
- Teaching and educational analysis
- Publication of results with proper citation
❌ Not Allowed
- Pretraining or fine-tuning of models on UTQA (in whole or in part)
- Incorporation into larger training corpora
- Commercial use for training or data augmentation
License
This dataset is released under a Custom Evaluation-Only License (see LICENSE
).
- Free to use for research, education, and evaluation.
- Training use is prohibited.
- Attribution is required in all uses and publications.
Citation
If you use UTQA in your research, please cite:
Geißler, A., Bien, L.-S., Schöppler, F., & Hertel, T. (2025).
From Canonical to Complex: Benchmarking LLM Capabilities in Undergraduate Thermodynamics.
arXiv:2508.21452 [physics.ed-ph]. https://arxiv.org/abs/2508.21452
@misc{Geissler2025,
title = {From Canonical to Complex: Benchmarking LLM Capabilities in Undergraduate Thermodynamics},
author = {Anna Geißler and Luca-Sophie Bien and Friedrich Schöppler and Tobias Hertel},
year = {2025},
eprint = {2508.21452},
archivePrefix= {arXiv},
primaryClass = {physics.ed-ph},
url = {https://arxiv.org/abs/2508.21452},
}
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