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