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Main Authors: Zhu, Qipeng, Chen, Yanzhe, Zhong, Huasong, Li, Yan, Chen, Jie, Zhang, Zhixin, Zhang, Junping, Yang, Zhenheng
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.17890
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author Zhu, Qipeng
Chen, Yanzhe
Zhong, Huasong
Li, Yan
Chen, Jie
Zhang, Zhixin
Zhang, Junping
Yang, Zhenheng
author_facet Zhu, Qipeng
Chen, Yanzhe
Zhong, Huasong
Li, Yan
Chen, Jie
Zhang, Zhixin
Zhang, Junping
Yang, Zhenheng
contents Prompting is fundamental to unlocking the full potential of large language models. To automate and enhance this process, automatic prompt optimization (APO) has been developed, demonstrating effectiveness primarily in text-only input scenarios. However, extending existing APO methods to multimodal tasks, such as video-language generation introduces two core challenges: (i) visual token inflation, where long visual token sequences restrict context capacity and result in insufficient feedback signals; (ii) a lack of process-level supervision, as existing methods focus on outcome-level supervision and overlook intermediate supervision, limiting prompt optimization. We present UniAPO: Unified Multimodal Automated Prompt Optimization, the first framework tailored for multimodal APO. UniAPO adopts an EM-inspired optimization process that decouples feedback modeling and prompt refinement, making the optimization more stable and goal-driven. To further address the aforementioned challenges, we introduce a short-long term memory mechanism: historical feedback mitigates context limitations, while historical prompts provide directional guidance for effective prompt optimization. UniAPO achieves consistent gains across text, image, and video benchmarks, establishing a unified framework for efficient and transferable prompt optimization.
format Preprint
id arxiv_https___arxiv_org_abs_2508_17890
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle UniAPO: Unified Multimodal Automated Prompt Optimization
Zhu, Qipeng
Chen, Yanzhe
Zhong, Huasong
Li, Yan
Chen, Jie
Zhang, Zhixin
Zhang, Junping
Yang, Zhenheng
Computer Vision and Pattern Recognition
Prompting is fundamental to unlocking the full potential of large language models. To automate and enhance this process, automatic prompt optimization (APO) has been developed, demonstrating effectiveness primarily in text-only input scenarios. However, extending existing APO methods to multimodal tasks, such as video-language generation introduces two core challenges: (i) visual token inflation, where long visual token sequences restrict context capacity and result in insufficient feedback signals; (ii) a lack of process-level supervision, as existing methods focus on outcome-level supervision and overlook intermediate supervision, limiting prompt optimization. We present UniAPO: Unified Multimodal Automated Prompt Optimization, the first framework tailored for multimodal APO. UniAPO adopts an EM-inspired optimization process that decouples feedback modeling and prompt refinement, making the optimization more stable and goal-driven. To further address the aforementioned challenges, we introduce a short-long term memory mechanism: historical feedback mitigates context limitations, while historical prompts provide directional guidance for effective prompt optimization. UniAPO achieves consistent gains across text, image, and video benchmarks, establishing a unified framework for efficient and transferable prompt optimization.
title UniAPO: Unified Multimodal Automated Prompt Optimization
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2508.17890