CLLGApr 8, 2020

DynaBERT: Dynamic BERT with Adaptive Width and Depth

arXiv:2004.04037v2384 citationsHas Code
AI Analysis

This addresses the problem of deploying efficient NLP models on diverse edge devices, offering a flexible solution rather than incremental improvements.

The paper tackles the computational and memory inefficiency of pre-trained language models like BERT by proposing DynaBERT, a dynamic model that adapts width and depth to meet varying hardware constraints, achieving performance comparable to BERT-base at full size and outperforming existing compression methods at smaller sizes.

The pre-trained language models like BERT, though powerful in many natural language processing tasks, are both computation and memory expensive. To alleviate this problem, one approach is to compress them for specific tasks before deployment. However, recent works on BERT compression usually compress the large BERT model to a fixed smaller size. They can not fully satisfy the requirements of different edge devices with various hardware performances. In this paper, we propose a novel dynamic BERT model (abbreviated as DynaBERT), which can flexibly adjust the size and latency by selecting adaptive width and depth. The training process of DynaBERT includes first training a width-adaptive BERT and then allowing both adaptive width and depth, by distilling knowledge from the full-sized model to small sub-networks. Network rewiring is also used to keep the more important attention heads and neurons shared by more sub-networks. Comprehensive experiments under various efficiency constraints demonstrate that our proposed dynamic BERT (or RoBERTa) at its largest size has comparable performance as BERT-base (or RoBERTa-base), while at smaller widths and depths consistently outperforms existing BERT compression methods. Code is available at https://github.com/huawei-noah/Pretrained-Language-Model/tree/master/DynaBERT.

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