CVAIOct 13, 2025

AndesVL Technical Report: An Efficient Mobile-side Multimodal Large Language Model

arXiv:2510.11496v23 citationsh-index: 4Has Code
Originality Incremental advance
AI Analysis

It addresses the problem of deploying efficient multimodal AI on edge devices like mobile phones, which is incremental as it adapts existing methods for mobile constraints.

This paper introduces AndesVL, a suite of mobile-side multimodal large language models with 0.6B to 4B parameters, which achieves first-tier performance across various benchmarks compared to similar-scale models, and demonstrates deployment optimizations including a 6.7x peak decoding speedup and up to 30.9% memory reduction on mobile chips.

In recent years, while cloud-based MLLMs such as QwenVL, InternVL, GPT-4o, Gemini, and Claude Sonnet have demonstrated outstanding performance with enormous model sizes reaching hundreds of billions of parameters, they significantly surpass the limitations in memory, power consumption, and computing capacity of edge devices such as mobile phones. This paper introduces AndesVL, a suite of mobile-side MLLMs with 0.6B to 4B parameters based on Qwen3's LLM and various visual encoders. We comprehensively outline the model architectures, training pipeline, and training data of AndesVL, which achieves first-tier performance across a wide range of open-source benchmarks, including fields such as text-rich image understanding, reasoning and math, multi-image comprehension, general VQA, hallucination mitigation, multilingual understanding, and GUI-related tasks when compared with state-of-the-art models of a similar scale. Furthermore, we introduce a 1+N LoRA architecture alongside a Quantization-Aware LoRA Fine-Tuning (QALFT) framework to facilitate efficient task adaptation and model compression during mobile-side deployment of AndesVL. Moreover, utilizing our cache eviction algorithm -- OKV -- along with customized speculative decoding and compression strategies, we achieve a 6.7x peak decoding speedup ratio, up to 30.9% memory reduction, and 1.8 bits-per-weight when deploying AndesVL-4B on MediaTek Dimensity 9500 chips. We release all models on https://huggingface.co/OPPOer.

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