计算机科学
变压器
交错
人工智能
土狼
理论计算机科学
算法
模式识别(心理学)
生态学
量子力学
生物
操作系统
物理
电压
作者
Michael Poli,Stefano Massaroli,Éric Nguyen,Daniel Y. Fu,Tri Dao,Stephen A. Baccus,Yoshua Bengio,Stefano Ermon,Christopher Ré
出处
期刊:Cornell University - arXiv
日期:2023-01-01
被引量:23
标识
DOI:10.48550/arxiv.2302.10866
摘要
Recent advances in deep learning have relied heavily on the use of large Transformers due to their ability to learn at scale. However, the core building block of Transformers, the attention operator, exhibits quadratic cost in sequence length, limiting the amount of context accessible. Existing subquadratic methods based on low-rank and sparse approximations need to be combined with dense attention layers to match Transformers, indicating a gap in capability. In this work, we propose Hyena, a subquadratic drop-in replacement for attention constructed by interleaving implicitly parametrized long convolutions and data-controlled gating. In recall and reasoning tasks on sequences of thousands to hundreds of thousands of tokens, Hyena improves accuracy by more than 50 points over operators relying on state-spaces and other implicit and explicit methods, matching attention-based models. We set a new state-of-the-art for dense-attention-free architectures on language modeling in standard datasets (WikiText103 and The Pile), reaching Transformer quality with a 20% reduction in training compute required at sequence length 2K. Hyena operators are twice as fast as highly optimized attention at sequence length 8K, and 100x faster at sequence length 64K.
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