CVAug 30, 2025

LightVLM: Acceleraing Large Multimodal Models with Pyramid Token Merging and KV Cache Compression

arXiv:2509.00419v13 citationsh-index: 11
Originality Incremental advance
AI Analysis

This addresses efficiency bottlenecks for deploying large VLMs in real-world applications, though it is incremental as it builds upon existing models.

The paper tackles the problem of slow inference in Vision-Language Models (VLMs) by introducing LightVLM, a training-free method that accelerates both encoding and decoding stages, resulting in up to 3.65x faster prefilling time and 2.02x higher network throughput while maintaining near-original performance.

In this paper, we introduce LightVLM, a simple but effective method that can be seamlessly deployed upon existing Vision-Language Models (VLMs) to greatly accelerate the inference process in a training-free manner. We divide the inference procedure of VLMs into two stages, i.e., encoding and decoding, and propose to simultaneously accelerate VLMs in both stages to largely improve model efficiency. During encoding, we propose pyramid token merging to reduce tokens of different LLM layers in a hierarchical manner by finally only keeping a few dominant tokens to achieve high efficiency. During decoding, aimed at reducing the high latency of outputting long sequences, we propose KV Cache compression to remove unnecessary caches to increase the network throughput. Experimental results show that LightVLM successfully retains 100% performance when only preserving 35% image tokens, and maintains around 98% performance when keeping only 3% image tokens. LightVLM could 2.02$\times$ the network throughput and reduce the prefilling time by 3.65$\times$. LightVLM also makes large VLMs faster again by enabling a heavy model (e.g., InternVL2.5 26B) to infer faster than significantly smaller models (e.g., InternVL2.5 8B), hopefully facilitating the real-world deployment. When generating long text sequences (e.g., 4096 tokens), LightVLM could reduce the inference time by 3.21$\times$, largely outperforming existing methods.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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