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When Attention Meets Fast Recurrence: Training Language Models with Reduced Compute

Tao Leí

2021Proceedings of the 2021 Conference on Empirical Methods in Natural Language Processing28 citationsDOIOpen Access PDF

Abstract

Large language models have become increasingly difficult to train because of the growing computation time and cost. In this work, we present SRU++, a highly-efficient architecture that combines fast recurrence and attention for sequence modeling. SRU++ exhibits strong modeling capacity and training efficiency. On standard language modeling tasks such as ENWIK8, WIKI-103 and BIL-LION WORD datasets, our model obtains better bits-per-character and perplexity while using 3x-10x less training cost compared to topperforming Transformer models. For instance, our model achieves a state-of-the-art result on the ENWIK8 dataset using 1.6 days of training on an 8-GPU machine. We further demonstrate that SRU++ requires minimal attention for near state-of-the-art performance. Our results suggest jointly leveraging fast recurrence with little attention as a promising direction for accelerating model training and inference. 1

Topics & Concepts

PerplexityLanguage modelComputer scienceInferenceComputationTransformerArtificial intelligenceTraining (meteorology)Machine learningNatural language processingAlgorithmQuantum mechanicsPhysicsMeteorologyVoltageTopic ModelingNatural Language Processing TechniquesSpeech Recognition and Synthesis
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