SOTAVerified

Transformer Quality in Linear Time

2022-02-21Code Available1· sign in to hype

Weizhe Hua, Zihang Dai, Hanxiao Liu, Quoc V. Le

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

We revisit the design choices in Transformers, and propose methods to address their weaknesses in handling long sequences. First, we propose a simple layer named gated attention unit, which allows the use of a weaker single-head attention with minimal quality loss. We then propose a linear approximation method complementary to this new layer, which is accelerator-friendly and highly competitive in quality. The resulting model, named FLASH, matches the perplexity of improved Transformers over both short (512) and long (8K) context lengths, achieving training speedups of up to 4.9 on Wiki-40B and 12.1 on PG-19 for auto-regressive language modeling, and 4.8 on C4 for masked language modeling.

Tasks

Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
Wiki-40BFLASH-Quad-8kPerplexity15Unverified

Reproductions