Beyond Uniform Experts: Cost-Aware Expert Execution for Efficient Multi-Device MoE Inference
摘要
Mixture-of-Experts (MoE) architectures enable language models to achieve unprecedented scale via sparse activation. However, their inference performance is often limited by data movement bottlenecks. Two coupled challenges exacerbate this limtation: (1) Importance-Agnostic Cost: Low-contribution experts incur nearly uniform memory and transfer costs, resulting in a low cost-to-benefit ratio and wasting critical bandwidth; (2) System-Level Imbalance: Multi-device deployments are universally bottlenecked by the slowest device, meaning that local reductions on one device may yield no improvement in end-to-end latency. We propose Cost-Aware Expert Execution (CAEE), a hardware-guided runtime framework that jointly optimizes for token-level expert importance and system-level execution cost. CAEE uses lightweight, calibrated cost models to estimate hardware overhead, selectively prunes low-importance, high-cost experts, and redistributes their contributions via a low-overhead compensation mechanism, avoiding extra data movement. Evaluations on the 671B DeepSeek-R1 model show that CAEE can reduce end-to-end inference latency by 8\%-18\% across diverse deployment settings, including expert offloading and on-device execution on multi-device systems, while maintaining a model accuracy drop of less than 1\%.
引用
@article{arxiv.2606.29982,
title = {Beyond Uniform Experts: Cost-Aware Expert Execution for Efficient Multi-Device MoE Inference},
author = {Hui Zang and Pengfei Xia and Hong Liu and Jiajia Chu and Tuo Hao and Minghao Chen and Rui Zhang and Ziyang Zhang},
journal= {arXiv preprint arXiv:2606.29982},
year = {2026}
}