Researchers at Penn State have developed new approaches to improve the efficiency and usefulness of AI systems. Their methods optimize prompt engineering and automate prompt generation, allowing AI to produce better responses. The research aims to refine the outputs of AI systems like ChatGPT and Microsoft Copilot by providing more specific and goal-oriented prompts. The findings have been presented at various conferences and are available on the arXiv preprint server.
Penn State researchers have made significant strides in enhancing the efficiency and usefulness of AI systems by developing innovative approaches to prompt engineering and automating prompt generation. The findings, presented at various conferences and available on the arXiv preprint server, aim to refine the outputs of AI systems like ChatGPT and Microsoft Copilot by providing more specific and goal-oriented prompts.
The research team, led by Rui Zhang, assistant professor of computer science and engineering, has authored three papers introducing new methods for processing high-resolution images and automatically generating better responses from AI systems. The papers were presented at the 63rd Annual Meeting of the Association for Computational Linguistics, the 2025 International Conference on Computer Vision, and the 13th International Conference on Learning Representations.
One of the key innovations is the GReaTer method, which uses gradient-based optimization to automatically generate and refine prompts. This method, along with the GReaTerPrompt toolkit, allows AI systems to adapt to new tasks with less human input, improving accuracy and saving time. The researchers evaluated GReaTer on various tasks, including language reasoning and mathematical problem-solving, and found that it significantly enhanced performance compared to standard prompting.
The research also introduces the HRScene benchmark, which evaluates how well modern vision-language models can understand high-resolution, information-dense images. This is crucial for real-world applications that require detailed visual interpretation, such as radiology, plant phenotyping, remote sensing, and astronomy.
These advancements in prompt engineering and automated prompt generation have the potential to revolutionize how AI systems interact with users, making them more adaptable and effective in a wide range of applications. The open-source nature of the GReaTerPrompt toolkit ensures that these improvements are accessible to all interested users, further democratizing the benefits of AI.
References:
[1] https://techxplore.com/news/2025-07-optimize-ai-science.html
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