Survey on Large Scale Neural Network Training
Julia Gusak
Daria Cherniuk
Alena Shilova
A. Katrutsa
Daniel Bershatsky
Xunyi Zhao
Lionel Eyraud-Dubois
Oleg Shlyazhko
Denis Dimitrov
Ivan V. Oseledets
Olivier Beaumont

Abstract
Modern Deep Neural Networks (DNNs) require significant memory to store weight, activations, and other intermediate tensors during training. Hence, many models do not fit one GPU device or can be trained using only a small per-GPU batch size. This survey provides a systematic overview of the approaches that enable more efficient DNNs training. We analyze techniques that save memory and make good use of computation and communication resources on architectures with a single or several GPUs. We summarize the main categories of strategies and compare strategies within and across categories. Along with approaches proposed in the literature, we discuss available implementations.
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