TY - GEN
T1 - 3PC: Three Point Compressors for Communication-Efficient Distributed Training and a Better Theory for Lazy Aggregation
AU - Richtarik, Peter
AU - Sokolov, Igor
AU - Fatkhullin, Ilyas
AU - Gasanov, Elnur
AU - Li, Zhize
AU - Gorbunov, Eduard
N1 - KAUST Repository Item: Exported on 2023-05-23
Acknowledgements: The work of P. Richtarik, I. Sokolov, E. Gasanov and Z. Li was supported by the KAUST baseline research funding scheme. The work of E. Gorbunov was supported by Russian Science Foundation (project No. 21-71-30005). The work of I. Fatkhullin was supported by ETH AI Center doctoral fellowship.
PY - 2022
Y1 - 2022
N2 - We propose and study a new class of gradient compressors for communication-efficient training—three point compressors (3PC)—as well as efficient distributed nonconvex optimization algorithms that can take advantage of them. Unlike most established approaches, which rely on a static compressor choice (e.g., TopK), our class allows the compressors to evolve throughout the training process, with the aim of improving the theoretical communication complexity and practical efficiency of the underlying methods. We show that our general approach can recover the recently proposed state-of-the-art error feedback mechanism EF21 (Richtárik et al, 2021) and its theoretical properties as a special case, but also leads to a number of new efficient methods. Notably, our approach allows us to improve upon the state-of-the-art in the algorithmic and theoretical foundations of the lazy aggregation literature (Liu et al, 2017; Lan et al, 2017). As a by-product that may be of independent interest, we provide a new and fundamental link between the lazy aggregation and error feedback literature. A special feature of our work is that we do not require the compressors to be unbiased.
AB - We propose and study a new class of gradient compressors for communication-efficient training—three point compressors (3PC)—as well as efficient distributed nonconvex optimization algorithms that can take advantage of them. Unlike most established approaches, which rely on a static compressor choice (e.g., TopK), our class allows the compressors to evolve throughout the training process, with the aim of improving the theoretical communication complexity and practical efficiency of the underlying methods. We show that our general approach can recover the recently proposed state-of-the-art error feedback mechanism EF21 (Richtárik et al, 2021) and its theoretical properties as a special case, but also leads to a number of new efficient methods. Notably, our approach allows us to improve upon the state-of-the-art in the algorithmic and theoretical foundations of the lazy aggregation literature (Liu et al, 2017; Lan et al, 2017). As a by-product that may be of independent interest, we provide a new and fundamental link between the lazy aggregation and error feedback literature. A special feature of our work is that we do not require the compressors to be unbiased.
UR - http://hdl.handle.net/10754/677984
UR - https://proceedings.mlr.press/v162/richtarik22a.html
M3 - Conference contribution
BT - 39th International Conference on Machine Learning (ICML)
PB - arXiv
ER -