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Autori principali: Shi, Kean, Chen, Liang, Zhao, Haozhe, Chang, Baobao
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2509.18150
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author Shi, Kean
Chen, Liang
Zhao, Haozhe
Chang, Baobao
author_facet Shi, Kean
Chen, Liang
Zhao, Haozhe
Chang, Baobao
contents Multimodal Large Language Models (MLLMs) have demonstrated outstanding performance across a variety of domains. However, training MLLMs is often inefficient, as much of the computation is redundant due to the long input sequences from multimodal data and underutilized inter-layer operations. Notably, such redundancy is not static but varies across different stages of training. Building on this observation, we shift the focus to the training process itself and propose a training-efficient framework based on sparse representations, termed the Sparse Training Scheme (STS). Instead of applying a uniform sparsity strategy, STS adopts a stage-aware design that adapts to different sources of redundancy during training. Specifically, the framework consists of two complementary components: the Visual Token Compressor, which reduces the information load by compressing visual tokens during modality alignment, and the Layer Dynamic Skipper, which mitigates computational overhead by dynamically skipping unnecessary layers during instruction tuning. Our approach is broadly applicable to diverse MLLM architectures and has been extensively evaluated on multiple benchmarks, demonstrating its effectiveness and efficiency.
format Preprint
id arxiv_https___arxiv_org_abs_2509_18150
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Improving MLLM Training Efficiency via Stage-Aware Sparsity
Shi, Kean
Chen, Liang
Zhao, Haozhe
Chang, Baobao
Machine Learning
Artificial Intelligence
Multimodal Large Language Models (MLLMs) have demonstrated outstanding performance across a variety of domains. However, training MLLMs is often inefficient, as much of the computation is redundant due to the long input sequences from multimodal data and underutilized inter-layer operations. Notably, such redundancy is not static but varies across different stages of training. Building on this observation, we shift the focus to the training process itself and propose a training-efficient framework based on sparse representations, termed the Sparse Training Scheme (STS). Instead of applying a uniform sparsity strategy, STS adopts a stage-aware design that adapts to different sources of redundancy during training. Specifically, the framework consists of two complementary components: the Visual Token Compressor, which reduces the information load by compressing visual tokens during modality alignment, and the Layer Dynamic Skipper, which mitigates computational overhead by dynamically skipping unnecessary layers during instruction tuning. Our approach is broadly applicable to diverse MLLM architectures and has been extensively evaluated on multiple benchmarks, demonstrating its effectiveness and efficiency.
title Improving MLLM Training Efficiency via Stage-Aware Sparsity
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2509.18150