Compressing Large-Scale Transformer-Based Models: A Case Study on BERT

Author:

Ganesh Prakhar1,Chen Yao2,Lou Xin3,Khan Mohammad Ali4,Yang Yin5,Sajjad Hassan6,Nakov Preslav7,Chen Deming8,Winslett Marianne9

Affiliation:

1. Advanced Digital Sciences Center, Singapore. prakhar.g@adsc-create.edu.sg

2. Advanced Digital Sciences Center, Singapore. yao.chen@adsc-create.edu.sg

3. Advanced Digital Sciences Center, Singapore. lou.xin@adsc-create.edu.sg

4. Advanced Digital Sciences Center, Singapore. mohammad.k@adsc-create.edu.sg

5. College of Science and Engineering, Hamad Bin Khalifa University, Qatar. yyang@hbku.edu.qa

6. Qatar Computing Research Institute, Hamad Bin Khalifa University, Qatar. hsajjad@hbku.edu.qa

7. Qatar Computing Research Institute, Hamad Bin Khalifa University, Qatar. pnakov@hbku.edu.qa

8. University of Illinois at Urbana-Champaign, USA. dchen@illinois.edu

9. University of Illinois at Urbana-Champaign, USA. winslett@illinois.edu

Abstract

Abstract Pre-trained Transformer-based models have achieved state-of-the-art performance for various Natural Language Processing (NLP) tasks. However, these models often have billions of parameters, and thus are too resource- hungry and computation-intensive to suit low- capability devices or applications with strict latency requirements. One potential remedy for this is model compression, which has attracted considerable research attention. Here, we summarize the research in compressing Transformers, focusing on the especially popular BERT model. In particular, we survey the state of the art in compression for BERT, we clarify the current best practices for compressing large-scale Transformer models, and we provide insights into the workings of various methods. Our categorization and analysis also shed light on promising future research directions for achieving lightweight, accurate, and generic NLP models.

Publisher

MIT Press - Journals

Subject

Artificial Intelligence,Computer Science Applications,Linguistics and Language,Human-Computer Interaction,Communication

Reference82 articles.

1. Fixed- point optimization of transformer neural network;Boo,2020

2. Language models are few-shot learners;Brown,2020

3. DeFormer: Decomposing pre-trained transformers for faster question answering;Cao,2020

4. AdaBERT: Task-adaptive BERT compression with differentiable neural architecture search;Chen,2020

5. The lottery ticket hypothesis for pre-trained BERT networks;Chen,2020

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