Score: 0

DiEP: Adaptive Mixture-of-Experts Compression through Differentiable Expert Pruning

Published: September 19, 2025 | arXiv ID: 2509.16105v1

By: Sikai Bai , Haoxi Li , Jie Zhang and more

Potential Business Impact:

Makes big AI models smaller without losing smarts.

Business Areas:
A/B Testing Data and Analytics

Despite the significant breakthrough of Mixture-of-Experts (MoE), the increasing scale of these MoE models presents huge memory and storage challenges. Existing MoE pruning methods, which involve reducing parameter size with a uniform sparsity across all layers, often lead to suboptimal outcomes and performance degradation due to varying expert redundancy in different MoE layers. To address this, we propose a non-uniform pruning strategy, dubbed \textbf{Di}fferentiable \textbf{E}xpert \textbf{P}runing (\textbf{DiEP}), which adaptively adjusts pruning rates at the layer level while jointly learning inter-layer importance, effectively capturing the varying redundancy across different MoE layers. By transforming the global discrete search space into a continuous one, our method handles exponentially growing non-uniform expert combinations, enabling adaptive gradient-based pruning. Extensive experiments on five advanced MoE models demonstrate the efficacy of our method across various NLP tasks. Notably, \textbf{DiEP} retains around 92\% of original performance on Mixtral 8$\times$7B with only half the experts, outperforming other pruning methods by up to 7.1\% on the challenging MMLU dataset.

Country of Origin
🇭🇰 Hong Kong

Page Count
18 pages

Category
Computer Science:
Computation and Language