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Home / Proceedings / Proceedings of the AAAI Conference on Artificial Intelligence, 33 / No. 1: AAAI-19, IAAI-19, EAAI-20

Parallel Restarted SGD with Faster Convergence and Less Communication: Demystifying Why Model Averaging Works for Deep Learning

February 1, 2023

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Abstract:

In distributed training of deep neural networks, parallel minibatch SGD is widely used to speed up the training process by using multiple workers. It uses multiple workers to sample local stochastic gradients in parallel, aggregates all gradients in a single server to obtain the average, and updates each worker’s local model using a SGD update with the averaged gradient. Ideally, parallel mini-batch SGD can achieve a linear speed-up of the training time (with respect to the number of workers) compared with SGD over a single worker. However, such linear scalability in practice is significantly limited by the growing demand for gradient communication as more workers are involved. Model averaging, which periodically averages individual models trained over parallel workers, is another common practice used for distributed training of deep neural networks since (Zinkevich et al. 2010) (McDonald, Hall, and Mann 2010). Compared with parallel mini-batch SGD, the communication overhead of model averaging is significantly reduced. Impressively, tremendous experimental works have verified that model averaging can still achieve a good speed-up of the training time as long as the averaging interval is carefully controlled. However, it remains a mystery in theory why such a simple heuristic works so well. This paper provides a thorough and rigorous theoretical study on why model averaging can work as well as parallel mini-batch SGD with significantly less communication overhead.

Authors

Hao Yu

Alibaba Group


Sen Yang

Alibaba Group


Shenghuo Zhu

Alibaba Group


DOI:

10.1609/aaai.v33i01.33015693


Topics: AAAI

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HOW TO CITE:

Hao Yu||Sen Yang||Shenghuo Zhu Parallel Restarted SGD with Faster Convergence and Less Communication: Demystifying Why Model Averaging Works for Deep Learning Proceedings of the AAAI Conference on Artificial Intelligence, 33 (2019) 5693-5700.

Hao Yu||Sen Yang||Shenghuo Zhu Parallel Restarted SGD with Faster Convergence and Less Communication: Demystifying Why Model Averaging Works for Deep Learning AAAI 2019, 5693-5700.

Hao Yu||Sen Yang||Shenghuo Zhu (2019). Parallel Restarted SGD with Faster Convergence and Less Communication: Demystifying Why Model Averaging Works for Deep Learning. Proceedings of the AAAI Conference on Artificial Intelligence, 33, 5693-5700.

Hao Yu||Sen Yang||Shenghuo Zhu. Parallel Restarted SGD with Faster Convergence and Less Communication: Demystifying Why Model Averaging Works for Deep Learning. Proceedings of the AAAI Conference on Artificial Intelligence, 33 2019 p.5693-5700.

Hao Yu||Sen Yang||Shenghuo Zhu. 2019. Parallel Restarted SGD with Faster Convergence and Less Communication: Demystifying Why Model Averaging Works for Deep Learning. "Proceedings of the AAAI Conference on Artificial Intelligence, 33". 5693-5700.

Hao Yu||Sen Yang||Shenghuo Zhu. (2019) "Parallel Restarted SGD with Faster Convergence and Less Communication: Demystifying Why Model Averaging Works for Deep Learning", Proceedings of the AAAI Conference on Artificial Intelligence, 33, p.5693-5700

Hao Yu||Sen Yang||Shenghuo Zhu, "Parallel Restarted SGD with Faster Convergence and Less Communication: Demystifying Why Model Averaging Works for Deep Learning", AAAI, p.5693-5700, 2019.

Hao Yu||Sen Yang||Shenghuo Zhu. "Parallel Restarted SGD with Faster Convergence and Less Communication: Demystifying Why Model Averaging Works for Deep Learning". Proceedings of the AAAI Conference on Artificial Intelligence, 33, 2019, p.5693-5700.

Hao Yu||Sen Yang||Shenghuo Zhu. "Parallel Restarted SGD with Faster Convergence and Less Communication: Demystifying Why Model Averaging Works for Deep Learning". Proceedings of the AAAI Conference on Artificial Intelligence, 33, (2019): 5693-5700.

Hao Yu||Sen Yang||Shenghuo Zhu. Parallel Restarted SGD with Faster Convergence and Less Communication: Demystifying Why Model Averaging Works for Deep Learning. AAAI[Internet]. 2019[cited 2023]; 5693-5700.


ISSN: 2374-3468


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