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GLaM: Efficient Scaling of Language Models with Mixture-of-Experts

Authors :
Du, Nan
Huang, Yanping
Dai, Andrew M.
Tong, Simon
Lepikhin, Dmitry
Xu, Yuanzhong
Krikun, Maxim
Zhou, Yanqi
Yu, Adams Wei
Firat, Orhan
Zoph, Barret
Fedus, Liam
Bosma, Maarten
Zhou, Zongwei
Wang, Tao
Wang, Yu Emma
Webster, Kellie
Pellat, Marie
Robinson, Kevin
Meier-Hellstern, Kathleen
Duke, Toju
Dixon, Lucas
Zhang, Kun
Le, Quoc V
Wu, Yonghui
Chen, Zhifeng
Cui, Claire
Publication Year :
2021

Abstract

Scaling language models with more data, compute and parameters has driven significant progress in natural language processing. For example, thanks to scaling, GPT-3 was able to achieve strong results on in-context learning tasks. However, training these large dense models requires significant amounts of computing resources. In this paper, we propose and develop a family of language models named GLaM (Generalist Language Model), which uses a sparsely activated mixture-of-experts architecture to scale the model capacity while also incurring substantially less training cost compared to dense variants. The largest GLaM has 1.2 trillion parameters, which is approximately 7x larger than GPT-3. It consumes only 1/3 of the energy used to train GPT-3 and requires half of the computation flops for inference, while still achieving better overall zero-shot and one-shot performance across 29 NLP tasks.<br />Accepted to ICML 2022

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....b5f6f1856c67d65ce2224132882d7ea4