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arXiv 提交日期: 2026-05-26
📄 Abstract - MobileMoE: Scaling On-Device Mixture of Experts

Mixture-of-Experts (MoE) has become the de facto architecture for hundred-billion-parameter language models, yet its advantages at sub-billion scales for on-device deployment remain largely unexplored. To close this gap, we present MobileMoE, a family of on-device MoE language models with sub-billion active parameters (0.3-0.9B active and 1.3-5.3B total) that establish a new Pareto frontier for on-device LLMs. We first formulate an on-device MoE scaling law that jointly optimizes MoE architecture under mobile memory and compute constraints, identifying an on-device sweet spot - moderate sparsity with fine-grained and shared experts - that is simultaneously memory and compute-optimal. Building on the derived architectures, we train MobileMoE with a four-stage recipe covering pre-training, mid-training, instruction fine-tuning, and quantization-aware training, all on open-source datasets. Across 14 benchmarks, MobileMoE matches or exceeds leading on-device dense LLMs with 2-4$\times$ fewer inference FLOPs, and matches or surpasses the state-of-the-art MoE OLMoE-1B-7B with up to 60% fewer parameters. To bridge the last mile to mobile deployment, we provide the first efficient MoE inference on commodity smartphones with comprehensive on-device profiling. At comparable INT4 weight memory, MobileMoE-S delivers $1.8$-$3.8\times$ faster prefill and $2.2$-$3.4\times$ faster decode than the dense baseline MobileLLM-Pro.

顶级标签: llm systems model training
详细标签: mixture of experts on-device deployment scaling law inference efficiency mobile llm 或 搜索:

MobileMoE:面向移动端的混合专家模型扩展 / MobileMoE: Scaling On-Device Mixture of Experts


1️⃣ 一句话总结

本文提出了MobileMoE,一种在手机上高效运行的轻量级混合专家模型,通过研究发现并运用了一种兼顾内存和计算效率的最佳架构(适度稀疏、细粒度与共享专家),使得参数量仅0.3-0.9亿的模型在性能上超越或媲美现有主流大模型,同时在手机端推理速度提升2-4倍。

源自 arXiv: 2605.27358