English

Sub-Linear Memory: How to Make Performers SLiM

Machine Learning 2020-12-22 v1

Abstract

The Transformer architecture has revolutionized deep learning on sequential data, becoming ubiquitous in state-of-the-art solutions for a wide variety of applications. Yet vanilla Transformers are notoriously resource-expensive, requiring O(L2)O(L^2) in serial time and memory as functions of input length LL. Recent works proposed various linear self-attention mechanisms, scaling only as O(L)O(L) for serial computation. We perform a thorough analysis of recent Transformer mechanisms with linear self-attention, Performers, in terms of overall computational complexity. We observe a remarkable computational flexibility: forward and backward propagation can be performed with no approximations using sublinear memory as a function of LL (in addition to negligible storage for the input sequence), at a cost of greater time complexity in the parallel setting. In the extreme case, a Performer consumes only O(1)O(1) memory during training, and still requires O(L)O(L) time. This discovered time-memory tradeoff can be used for training or, due to complete backward-compatibility, for fine-tuning on a low-memory device, e.g. a smartphone or an earlier-generation GPU, thus contributing towards decentralized and democratized deep learning.

Keywords

Cite

@article{arxiv.2012.11346,
  title  = {Sub-Linear Memory: How to Make Performers SLiM},
  author = {Valerii Likhosherstov and Krzysztof Choromanski and Jared Davis and Xingyou Song and Adrian Weller},
  journal= {arXiv preprint arXiv:2012.11346},
  year   = {2020}
}
R2 v1 2026-06-23T21:07:52.647Z