Peiqi Wang
2025
Inference Compute-Optimal Video Vision Language Models
Peiqi Wang
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ShengYun Peng
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Xuewen Zhang
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Hanchao Yu
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Yibo Yang
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Lifu Huang
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Fujun Liu
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Qifan Wang
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
This work investigates the optimal allocation of inference compute across three key scaling factors in video vision language models: language model size, frame count, and the number of visual tokens per frame. While prior works typically focuses on optimizing model efficiency or improving performance without considering resource constraints, we instead identify optimal model configuration under fixed inference compute budgets. We conduct large-scale training sweeps and careful parametric modeling of task performance to identify the inference compute-optimal frontier. Our experiments reveal how task performance depends on scaling factors and finetuning data size, as well as how changes in data size shift the compute-optimal frontier. These findings translate to practical tips for selecting these scaling factors.
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- Lifu Huang 1
- Fujun Liu 1
- ShengYun Peng 1
- Qifan Wang 1
- Yibo Yang 1
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