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Benchmarking Generative Models on Computational Thinking Tests in Elementary Visual Programming

14 June 2024
Victor-Alexandru Pădurean
Adish Singla
    ELM
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Abstract

Generative models have demonstrated human-level proficiency in various benchmarks across domains like programming, natural sciences, and general knowledge. Despite these promising results on competitive benchmarks, they still struggle with seemingly simple problem-solving tasks typically carried out by elementary-level students. How do state-of-the-art models perform on standardized programming-related tests designed to assess computational thinking and problem-solving skills at schools? In this paper, we curate a novel benchmark involving computational thinking tests grounded in elementary visual programming domains. Our initial results show that state-of-the-art models like GPT-4o and Llama3 barely match the performance of an average school student. To further boost the performance of these models, we fine-tune them using a novel synthetic data generation methodology. The key idea is to develop a comprehensive dataset using symbolic methods that capture different skill levels, ranging from recognition of visual elements to multi-choice quizzes to synthesis-style tasks. We showcase how various aspects of symbolic information in synthetic data help improve fine-tuned models' performance. We will release the full implementation and datasets to facilitate further research on enhancing computational thinking in generative models.

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@article{pădurean2025_2406.09891,
  title={ Benchmarking Generative Models on Computational Thinking Tests in Elementary Visual Programming },
  author={ Victor-Alexandru Pădurean and Adish Singla },
  journal={arXiv preprint arXiv:2406.09891},
  year={ 2025 }
}
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