LGAISep 10, 2025

Accelerating Mixture-of-Expert Inference with Adaptive Expert Split Mechanism

arXiv:2509.08342v16 citationsh-index: 16
Originality Incremental advance
AI Analysis

This work addresses a critical bottleneck for deploying large MoE models efficiently, offering significant performance improvements for AI practitioners and researchers, though it is incremental as it builds on existing offloading and caching techniques.

The paper tackles the problem of high GPU memory demands in Mixture-of-Experts (MoE) large language models by proposing MoEpic, an inference system that uses an adaptive expert split mechanism to improve cache hit rates and reduce loading latency, resulting in about half the GPU cost savings and 37.51%-65.73% lower inference latency compared to baselines.

Mixture-of-Experts (MoE) has emerged as a promising architecture for modern large language models (LLMs). However, massive parameters impose heavy GPU memory (i.e., VRAM) demands, hindering the widespread adoption of MoE LLMs. Offloading the expert parameters to CPU RAM offers an effective way to alleviate the VRAM requirements for MoE inference. Existing approaches typically cache a small subset of experts in VRAM and dynamically prefetch experts from RAM during inference, leading to significant degradation in inference speed due to the poor cache hit rate and substantial expert loading latency. In this work, we propose MoEpic, an efficient MoE inference system with a novel expert split mechanism. Specifically, each expert is vertically divided into two segments: top and bottom. MoEpic caches the top segment of hot experts, so that more experts will be stored under the limited VRAM budget, thereby improving the cache hit rate. During each layer's inference, MoEpic predicts and prefetches the activated experts for the next layer. Since the top segments of cached experts are exempt from fetching, the loading time is reduced, which allows efficient transfer-computation overlap. Nevertheless, the performance of MoEpic critically depends on the cache configuration (i.e., each layer's VRAM budget and expert split ratio). To this end, we propose a divide-and-conquer algorithm based on fixed-point iteration for adaptive cache configuration. Extensive experiments on popular MoE LLMs demonstrate that MoEpic can save about half of the GPU cost, while lowering the inference latency by about 37.51%-65.73% compared to the baselines.

Foundations

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

Your Notes