2021
DOI: 10.48550/arxiv.2106.06998
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Low-memory stochastic backpropagation with multi-channel randomized trace estimation

Abstract: Thanks to the combination of state-of-the-art accelerators and highly optimized open software frameworks, there has been tremendous progress in the performance of deep neural networks. While these developments have been responsible for many breakthroughs, progress towards solving large-scale problems, such as video encoding and semantic segmentation in 3D, is hampered because access to on-premise memory is often limited. Instead of relying on (optimal) checkpointing or invertibility of the network layers-to re… Show more

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