LGMar 3, 2025

DeRS: Towards Extremely Efficient Upcycled Mixture-of-Experts Models

arXiv:2503.01359v18 citationsh-index: 17CVPR
Originality Incremental advance
AI Analysis

This addresses parameter inefficiency for users of upcycled MoE models, offering incremental improvements in compression and training efficiency.

The paper tackles parameter inefficiency in upcycled Mixture-of-Experts models by proposing the DeRS paradigm, which decomposes experts into shared and lightweight delta weights, achieving extreme parameter efficiency while maintaining performance across three tasks.

Upcycled Mixture-of-Experts (MoE) models have shown great potential in various tasks by converting the original Feed-Forward Network (FFN) layers in pre-trained dense models into MoE layers. However, these models still suffer from significant parameter inefficiency due to the introduction of multiple experts. In this work, we propose a novel DeRS (Decompose, Replace, and Synthesis) paradigm to overcome this shortcoming, which is motivated by our observations about the unique redundancy mechanisms of upcycled MoE experts. Specifically, DeRS decomposes the experts into one expert-shared base weight and multiple expert-specific delta weights, and subsequently represents these delta weights in lightweight forms. Our proposed DeRS paradigm can be applied to enhance parameter efficiency in two different scenarios, including: 1) DeRS Compression for inference stage, using sparsification or quantization to compress vanilla upcycled MoE models; and 2) DeRS Upcycling for training stage, employing lightweight sparse or low-rank matrixes to efficiently upcycle dense models into MoE models. Extensive experiments across three different tasks show that the proposed methods can achieve extreme parameter efficiency while maintaining the performance for both training and compression of upcycled MoE models.

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